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523 Commits

Author SHA1 Message Date
likelovewant
cb13784a11 merge update 2025-10-18 23:03:13 +08:00
Daniel Hiltgen
bc1a818fdc contiguous input per layer (#12686)
Co-authored-by: Michael Yang <git@mxy.ng>
2025-10-17 18:39:18 -07:00
Daniel Hiltgen
ba2253dc30 win: more verbose load failures (#12683)
When loading the dynamic libraries, if something goes wrong report some
details.  Unfortunately this wont explain which dependencies are missing,
but this breadcrumb in the logs should help us diagnose GPU discovery
failures.
2025-10-17 17:13:16 -07:00
Daniel Hiltgen
68e04c7ff8 test: harden scheduler tests (#12662)
* test: harden scheduler tests

This removes reschedDelay which was stale code, and adds
a new configurable timeout for the waitForVRAMRecovery so
tests can now set the timeout to be very short to avoid the
scheduler getting stuck and hitting a test timeout.

* test: tune tests for partial loads

Give stress tests more time when the model is split between CPU/GPU
2025-10-17 08:56:44 -07:00
Daniel Hiltgen
270679932f cuda: tidy up CC settings (#12668)
8.7 is Jetpack only, so no need on x86 builds
10.3 covers [G]B300
2025-10-16 16:39:30 -07:00
Jeffrey Morgan
65fb3ff49d renderers: add global flag for setting [img] tags (#12669)
Adds a temporary global flag to renderers that causes renderers to always
render images as [img]. In a follow up change, we will consider making this
the default, and this flag could eventually be removed
2025-10-16 16:37:32 -07:00
Grace
e2a0b24435 Grace/qwen3 thinking (#12647)
* changing initial status to take into consideration prefill

* Add seperate strings for content and thinking builder

* thinking tests

* remove white space from string before closing think tag
2025-10-16 15:29:41 -07:00
Daniel Hiltgen
1813ff85a0 cuda: bring back CC 5.2 (#12666)
Forward compat on the newer driver doesn't seem to be working.
This should get 5.2 working on newer drivers again.
2025-10-16 13:07:41 -07:00
Daniel Hiltgen
b531777a66 test: add a few missing embedding models (#12661) 2025-10-16 09:36:25 -07:00
Daniel Hiltgen
fe3ec8dbf0 Revert "Workaround broken NVIDIA iGPU free VRAM data (#12490)" (#12642)
The workaround has been moved into the underlying C++ code.

This reverts commit e4340667e3.
2025-10-16 09:09:48 -07:00
Thomas Stocker
c744134287 vulkan: Get FilterID from Backend for Vulkan (#12655)
* vulkan: Get FilterID from Backend for Vulkan

* Fixing patch
2025-10-16 09:07:35 -07:00
weedge
4be41d2d45 readme: add achatbot-go to community integrations (#12629) 2025-10-15 21:54:15 -07:00
zhetaicheleba
de670570c9 fs/ggml: fix function name in comment (#12630) 2025-10-15 21:53:38 -07:00
Devon Rifkin
201d93716e Merge pull request #12651 from ollama/drifkin/oai-conversion
openai: make tool call conversion fns public
2025-10-15 21:10:30 -07:00
Devon Rifkin
160cecc8e2 openai: make tool call conversion fns public 2025-10-15 20:54:58 -07:00
Daniel Hiltgen
8b6e5baee7 CI: Set up temporary opt-out Vulkan support (#12614)
Initially Vulkan support in Ollama will require building from source.  Once it is
more thoroughly tested and we have fixed any critical bugs, then we can
bundle Vulkan into the official binary releases.
2025-10-15 14:18:01 -07:00
Daniel Hiltgen
75d17fc6c2 perf: backport cuda iGPU sched spin (#12641) 2025-10-15 11:52:14 -07:00
Santosh Bhavani
8fafc8af77 ml/backend/ggml: NVML fallback for unified memory GPUs (#12619)
* Simplify NVML fallback for unified memory GPUs

Remove device-specific checks and environment variable dependency for
NVML_ERROR_NOT_SUPPORTED fallback. When NVML doesn't support memory
queries, unconditionally use /proc/meminfo instead of checking device
names or OLLAMA_UNIFIED_MEMORY environment variable.

This provides better memory reporting by using MemAvailable which
accounts for reclaimable memory, avoiding the underreporting issue
described in NVIDIA support article a_id/5728.

Tested on NVIDIA GB10 unified memory iGPU with consistent and accurate
memory reporting across multiple model load/unload cycles.

* Add NVML fallback patch for unified memory GPUs
2025-10-15 11:40:06 -07:00
Jesse Gross
c3c85aa06c llm: Enable flash attention by default for gemma3 2025-10-15 10:42:12 -07:00
Jeffrey Morgan
0d713051a2 envconfig: default to port 443 when connecting to ollama.com (#12617) 2025-10-14 23:38:24 -07:00
Parth Sareen
c4c5a4a01e types: send index for tool calls (#12625) 2025-10-14 19:35:15 -07:00
Jesse Gross
3dcfd5f69e llm: Perform eviction when num_gpu is set with new estimates
Currently, if you set num_gpu then this forces the model to
load with that number of layers in the current configuration.
This is done regardless of any other information, which means
that no eviction is performed even if another model is loaded.

This behavior is different from the old estimates (and still
happens for models that runs on the llama engine). In those
cases, models would be evicted if needed to load at the requested
number of layers. That behavior is more useful and less surprising,
so this changes the new estimates to match.

Fixes #12580
2025-10-14 17:46:36 -07:00
Devon Rifkin
53a969d509 Merge pull request #12621 from ollama/drifkin/any-of
qwen3-coder: support anyOf when parsing tool calls
2025-10-14 15:51:24 -07:00
Devon Rifkin
08fbb60bb2 qwen3-coder: support anyOf when parsing tool calls 2025-10-14 15:33:05 -07:00
Daniel Hiltgen
850da848c5 logs: fix bogus "0 MiB free" log line (#12590)
On the llama runner, after the recent GGML bump a new log line reports
incorrect 0 MiB free after our patch to remove memory from the props.  This
adjusts the llama.cpp code to fetch the actual free memory of the active device.
2025-10-14 11:26:28 -07:00
Thomas Stocker
2aba569a2a Vulkan based on #9650 (#11835)
* implement the vulkan C backend

* add support in gpu.go

* add support in gen_linux.sh

* it builds

* fix segfault

* fix compilation

* fix free memory monitor

* fix total memory monitor

* update gpu.go

* fix build

* fix check_perfmon len

* remove cap_get_bound check

* fix vulkan handle releasing

* fix build on federa 40

* fix vulkan on windows

* making amdgpu work on arm achitecutre with vulkan

* add x86_64 lines in VulkanGlobs and capLinuxGlobs

* add aarch64 lines in vulkanGlobs and capLinuxGlobs

* Fix variable name

* Add vulkan build patch from @jmorganca

* Sync vendored ggml to add Vulkan support

* Updated dockerfile

https://github.com/whyvl/ollama-vulkan/issues/7#issuecomment-2660836871

Signed-off-by: Vadim Grinco <vadim@grinco.eu>

* Installing rocm library

Signed-off-by: Vadim Grinco <vadim@grinco.eu>

* This version works well

built based on this: https://github.com/whyvl/ollama-vulkan/issues/7#issuecomment-2660836871

Signed-off-by: Vadim Grinco <vadim@grinco.eu>

* Applied 00-fix-vulkan-building.patch

Work done by McBane87 here: https://github.com/whyvl/ollama-vulkan/issues/7#issuecomment-2660836871

Signed-off-by: Vadim Grinco <vadim@grinco.eu>

* Fixed the "detached head" issues

Signed-off-by: Vadim Grinco <vadim@grinco.eu>

* Merged in the right direction

Signed-off-by: Vadim Grinco <vadim@grinco.eu>

* Merging the latest stable (#2)

* Applied 00-fix-vulkan-building.patch

* Implemented vulkan backend based on the work done by whyvl, Dts0, McBane87 and others

Tested on AMD Ryzen 7 8845HS w/ Radeon 780M Graphics with ROCm disabled

```
[GIN-debug] POST   /v1/chat/completions      --> github.com/ollama/ollama/server.(*Server).ChatHandler-fm (6 handlers)
[GIN-debug] POST   /v1/completions           --> github.com/ollama/ollama/server.(*Server).GenerateHandler-fm (6 handlers)
[GIN-debug] POST   /v1/embeddings            --> github.com/ollama/ollama/server.(*Server).EmbedHandler-fm (6 handlers)
[GIN-debug] GET    /v1/models                --> github.com/ollama/ollama/server.(*Server).ListHandler-fm (6 handlers)
[GIN-debug] GET    /v1/models/:model         --> github.com/ollama/ollama/server.(*Server).ShowHandler-fm (6 handlers)
time=2025-03-11T13:00:40.793Z level=INFO source=gpu.go:199 msg="vulkan: load libvulkan and libcap ok"
time=2025-03-11T13:00:40.877Z level=INFO source=gpu.go:421 msg="error looking up vulkan GPU memory" error="device is a CPU"
time=2025-03-11T13:00:40.878Z level=WARN source=amd_linux.go:443 msg="amdgpu detected, but no compatible rocm library found.  Either install rocm v6, or follow manual install instructions at https://github.com/ollama/ollama/blob/main/docs/linux.md#manual-install"
time=2025-03-11T13:00:40.878Z level=WARN source=amd_linux.go:348 msg="unable to verify rocm library: no suitable rocm found, falling back to CPU"
time=2025-03-11T13:00:40.879Z level=INFO source=types.go:137 msg="inference compute" id=0 library=vulkan variant="" compute=1.3 driver=1.3 name="AMD Radeon Graphics (RADV GFX1103_R1)" total="15.6 GiB" available="15.6 GiB"
```

```
 # ollama run phi4:14b
>>> /set verbose
Set 'verbose' mode.
>>> how's it going?
Hello! I'm here to help you with any questions or tasks you have. How can I assist you today? 😊

total duration:       3.341959745s
load duration:        18.165612ms
prompt eval count:    15 token(s)
prompt eval duration: 475ms
prompt eval rate:     31.58 tokens/s
eval count:           26 token(s)
eval duration:        2.846s
eval rate:            9.14 tokens/s
>>>
```

* This is no longer needed

Signed-off-by: Vadim Grinco <vadim@grinco.eu>

* Fixes SIGSEGV: segmentation violation running gemma3 models on ollama 0.6.0 #21

Patch provided by McBane87 on https://github.com/whyvl/ollama-vulkan/issues/21

Signed-off-by: Vadim Grinco <vadim@grinco.eu>

* Applied 04-disable-mmap-vulkan.patch

From: https://github.com/whyvl/ollama-vulkan/issues/7#issuecomment-2660836871

Signed-off-by: Vadim Grinco <vadim@grinco.eu>

* Pulled new upstream code for ggml-bulkan backend

Signed-off-by: Vadim Grinco <vadim@grinco.eu>

* Merged latest ollama 0.6.2 and nasrally's Flash Attention patches (#5)

* readme: add Ellama to list of community integrations (#9800)

* readme: add screenpipe to community integrations (#9786)

* Add support for ROCm gfx1151 (#9773)

* conditionally enable parallel pipelines

* sample: make mutations in transforms explicit (#9743)

* updated minP to use early exit making use of sorted tokens

* ml/backend/ggml: allocate memory with malloc when loading model (#9822)

* runner: remove cache prompt flag from ollama runner (#9826)

We do not need to bypass the prompt caching in the ollama runner yet, as
only embedding models needed to bypass the prompt caching. When embedding
models are implemented they can skip initializing this cache completely.

* ollamarunner: Check for minBatch of context space when shifting

Models can specify that a group of inputs need to be handled a single
batch. However, context shifting didn't respect this and could trigger
a break anyways. In this case, we should instead trigger a context
shift earlier so that it occurs before the grouped batch.

Note that there still some corner cases:
 - A long prompt that exceeds the context window can get truncated
   in the middle of an image. With the current models, this will
   result in the model not recognizing the image at all, which is
   pretty much the expected result with truncation.
 - The context window is set less than the minimum batch size. The
   only solution to this is to refuse to load the model with these
   settings. However, this can never occur with current models and
   default settings.

Since users are unlikely to run into these scenarios, fixing them is
left as a follow up.

* Applied latest patches from McBane87

See this for details: https://github.com/whyvl/ollama-vulkan/issues/7#issuecomment-2708820861

Signed-off-by: Vadim Grinco <vadim@grinco.eu>

* Add ability to enable flash attention on vulkan (#4)

* discover: add flash attention handling for vulkan
* envconfig: fix typo in config.go

As part of the process some code was refactored and I added a new field
FlashAttention to GpuInfo since the previous solution didn't allow for a
granular check via vulkan extensions. As a side effect, this now allows
for granular per-device FA support checking in other places

---------

Signed-off-by: Vadim Grinco <vadim@grinco.eu>
Co-authored-by: zeo <108888572+zeozeozeo@users.noreply.github.com>
Co-authored-by: Louis Beaumont <louis.beaumont@gmail.com>
Co-authored-by: Daniel Hiltgen <dhiltgen@users.noreply.github.com>
Co-authored-by: Michael Yang <mxyng@pm.me>
Co-authored-by: Parth Sareen <parth.sareen@ollama.com>
Co-authored-by: Jeffrey Morgan <jmorganca@gmail.com>
Co-authored-by: Bruce MacDonald <brucewmacdonald@gmail.com>
Co-authored-by: Jesse Gross <jesse@ollama.com>
Co-authored-by: Nikita <50599445+nasrally@users.noreply.github.com>

* Revert Readme changes

* Revert

* Revert changes in amd_linux.go

* Revert changes in amd_linux.go

* Remove flashattention setting gpu.go

* Revert whitespace changes in gpu.go

* Revert changes in transforms_test.go

* Revert changes in runner.go

* Revert changes in Makefile.sync

* Revert some unintented changes in Dockerfile

* Revert vulkan copy changes in Dockerfile

* Update Vulkan Code to de4c07f93783a1a96456a44dc16b9db538ee1618

* Fixed duplicate sync in ggml.go

* Revert changes in ggml.go

* Revert chnages in ggml.go

* enable falsh attention on vulkan

* revert remove parenthesis

* fixed flash attention logic enabling

* vk_check_flash_attention 0 means supported

* Update gpu.go

* Add vulkan to Windows Build script

* Remove commented out code

* Enable Vulkan Flash attention in FlashAttentionSupported

* Fix logging

* Update Vulkan backend to e54d41befcc1575f4c898c5ff4ef43970cead75f

* Removed libcap related code

libcap is not directly related to Vulkan and should be added by its own PR. It adds additional library dependencies for building and also requires users to run setcap or run ollama as root, which is not ideal for easy use

* Fix Unit Test (Add Vulkan Library)

* Add vulkan to TestHomogeneousGPUs
Test

* vulkan: get GPU ID (ollama v0.11.5)

Signed-off-by: Xiaodong Ye <xiaodong.ye@mthreads.com>

* disable mmap for vulkan

* Reduce Changes remove TestHomogeneousGPUs (doesn't exist on master)

* Update vulkan version to the version used in llama.cpp

* rename gpu patch to correct number

* added Vulkan API to get correct Device UUID

current UUID from pipelineCacheUUID does not match CUDA

* Fix GPU ID Patch

* Remove Code not in llama.cpp

* modified UUID code inside ggml

* Fix Patch

* Copied minimal definition from vulkan header

* Fix compile error in Mac

Metal is preferred so we're disabling Vulkan for now

* Removed unused code

Fix linter error in CI

* Fix patches apply

* fixing lint error

* Removed unneeded function call

Somehow removing this call fixed the crashing when Vulkan header was removed

* added missing NL

* Fixed missing members in Vulkan header

also added zero clear for some structs

* Fixed wrong structure ID

* Fixed Vulkan header

More aligned with official header definition now

* buildvulkanAsSeperateFunction

* Vulkan on Windows Test

* temporarly comment out gate to run windows task

* use temporarly windows-latest for build

* Commenting out other presets to build vulkan

* reenable cpu

* commenting out error action stop

* temporarly commenting out rocm

* set vulkan path

* comment out cude for faster turnaround

* correct vulkan install

* correct vulkan silent install

* fixed install command

* revert debugging changes (vulkan builds on windows)

* revert windows-latest

* trying to build vulkan for linux

* temporarly disable cuda and rocm

* try again linux build

* fix version

* trying to fix

* trying again

* trying again

* fix version

* fixed vulkan-sdk name

* try again

* trying again

* try without version number

* try again

* add some more extra

* trying to use version 1.4.313

* revert debugging changes

* Filter out already supported gpus

* revert debug code

* Use runners for GPU discovery

This revamps how we discover GPUs in the system by leveraging the Ollama
runner.  This should eliminate inconsistency between our GPU discovery and the
runners capabilities at runtime, particularly for cases where we try to filter
out unsupported GPUs.  Now the runner does that implicitly based on the actual
device list.  In some cases free VRAM reporting can be unreliable which can
leaad to scheduling mistakes, so this also includes a patch to leverage more
reliable VRAM reporting libraries if available.

Automatic workarounds have been removed as only one GPU leveraged this, which
is now documented. This GPU will soon fall off the support matrix with the next
ROCm bump.

Additional cleanup of the scheduler and discovery packages can be done in the
future once we have switched on the new memory management code, and removed
support for the llama runner.

* timing info for runner

* WIP - wire up Vulkan with the new engine based discovery

Not a complete implementation - free VRAM is better, but not accurate on
windows

* fix - trust the library paths from discovery when starting runner

* fix index bug

* fix vulkan ids to be underlying

* fix - give bootstrapping more time on slow systems

* Test if Vulkan device is supported

* vk_check_flash_attention is not needed (coompat2 coopmapt and scalar implementation exist)

* Handle GGML_VK_VISIBLE_DEVICES

* ask for supported first

* win: fix CPU query buffer handling

Try in a short loop until we get the size right.

* test: harden integration tests for slow start

If the server takes a while to start up, block
tests from starting until it's online to avoid
setting large timeouts in individual test cases.

* gofumpt fix

* fix build

* merge fixes

* merge fixes

* fixed build

* merge fixes

* fixing build

* fixed build

* fixed formatting

* fixed build

* fix vulkan gpu id patch

* sync llama.cpp vulkan code

* update build windows script

* merge fixes

* fix format

* fixed vulkan casing

* handle igpu as gpu

* improve case

* print out unknown library

* rturn Vulkan for vulkan library

* Revert "rturn Vulkan for vulkan library"

This reverts commit 690461a12fd5e93295d174c97edefb2bc33285b1.

* fixed patch number

* return Library Name

* remvoe debug code

* return integrated in vulkan backend

* Return pci Properties

* update patch

* directly get pci proeprties without parsing

* workaround for filtering devices. Correct way is to have a LibraryPosition Parameter in the deviceInfo

* Revert "directly get pci proeprties without parsing"

This reverts commit 8e0624851f5ed7d9f74518f574dfb422e4dd4dc2.

* Set FilteredID for Environment Filtering

* ROCm Library is named ROCm

* revert changes in patch

* Create 0028-vulkan-pci-and-memory.patch

* vulkan memory patch

* casing fix

* Add more pci properties

* Added better memory management

* Added better memory managament

* fixed patch

* Fixed patch

* FilterID creation group by library

* filter out vulkan supported by other gpu

* fixing deviceid compare

* Vulkan Fix FA coopmat1 invalid array indexing

* Use everywhere the same Vulkan Version 1.4.321.1

* Remove unneeded patch

* vulkan update

* sync vulkan glsl files

* only use for vulkan the filteredid (numeric device number)

* simplify code

---------

Signed-off-by: Vadim Grinco <vadim@grinco.eu>
Signed-off-by: Xiaodong Ye <xiaodong.ye@mthreads.com>
Co-authored-by: pufferffish <github@bandersnatch.anonaddy.com>
Co-authored-by: KOISHI KOMEIJI FROM TOUHOU 11 <fuck>
Co-authored-by: DSLstandard <qgeneral35@gmail.com>
Co-authored-by: pufferffish <me@windtfw.com>
Co-authored-by: yeongbba <yeongmo.lee@logpresso.com>
Co-authored-by: tomaThomas <tomathomas@mailbox.org>
Co-authored-by: Antoine Viallon <antoine@lesviallon.fr>
Co-authored-by: Vadim Grinco <vadim@grinco.eu>
Co-authored-by: zeo <108888572+zeozeozeo@users.noreply.github.com>
Co-authored-by: Louis Beaumont <louis.beaumont@gmail.com>
Co-authored-by: Daniel Hiltgen <dhiltgen@users.noreply.github.com>
Co-authored-by: Michael Yang <mxyng@pm.me>
Co-authored-by: Parth Sareen <parth.sareen@ollama.com>
Co-authored-by: Jeffrey Morgan <jmorganca@gmail.com>
Co-authored-by: Bruce MacDonald <brucewmacdonald@gmail.com>
Co-authored-by: Jesse Gross <jesse@ollama.com>
Co-authored-by: Nikita <50599445+nasrally@users.noreply.github.com>
Co-authored-by: Masato Nakasaka <masato.nakasaka@intel.com>
Co-authored-by: Xiaodong Ye <xiaodong.ye@mthreads.com>
Co-authored-by: Daniel Hiltgen <daniel@ollama.com>
2025-10-14 10:59:58 -07:00
Devon Rifkin
fd8aa947f3 Merge pull request #12562 from ollama/drifkin/registries
add registries for parsers/renderers
2025-10-14 02:01:53 -07:00
Devon Rifkin
ddaca643d0 add registries for parsers/renderers 2025-10-14 01:13:54 -07:00
Grace
05982a95cb Qwen3VL Cloud Parser and Renderer (#12526)
* working (other than tool call is the incorrect order) for tool calls and tools

* Tests work, other than image tags (tests do not go through server) and tools (not in the correct order, but contents are the same)

* testing for qwen3vl parser - toolparser is working

* made changes to JSON tool parser, wraps the TollCallFunction with a TollCall object

* Working parser for thinking models - assumes state of thinking, emits unambiguous content in thinking, does not call tool call in thinking

* changed the parser to start with collecting content

* thinking prefill

* add hasThinkingSupport parameter to parser

* qwen3-vl -> qwen3-vl-instruct for renderer/parser

* Add hasThinkingSupport=false to QwenVLParser

---------

Co-authored-by: Devon Rifkin <drifkin@drifkin.net>
2025-10-13 16:52:33 -07:00
Gabe Goodhart
4987f13d34 Llama cpp bump (df1b612): granite docling / mamba2 optimizations / multimodal encoding fixes (#12552)
* feat: Bump llama.cpp to df1b612

Branch: LlamaCPPBump-GraniteDocling

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>

* fix(mtmd): Correctly encode text chunks during mtmd tokenization

There can be text chunks that appear interspersed with the image embeddings
that contain template delimiter tokens for some models. These need to be
correctly translated to text tokens.

Branch: LlamaCPPBump-GraniteDocling

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>

* tests: Use MtmdChunk in image_test

Branch: LlamaCPPBump-GraniteDocling

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>

* style: Fix unnecessary conversion linting

Branch: LlamaCPPBump-GraniteDocling

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>

* fix(ggml): Revert changes to ggml_hip.cpp

These changes were done largely by our code assistant and are likely wrong

Branch: LlamaCPPBump-GraniteDocling

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>

* fix: Revert changes in mem_nvml.cpp

Branch: LlamaCPPBump-GraniteDocling

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>

* feat: Update sync point to 1deee0

This brings in several more optimization commits and model support for
EmbeddingGemma

Branch: LlamaCPPBump-GraniteDocling

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>

* feat: Update patches for 1deee0

Branch: LlamaCPPBump-GraniteDocling

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>

* feat: sync for bump to 1deee0

Branch: LlamaCPPBump-GraniteDocling

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>

* fix: Bad patch updates with errant `+`

Branch: LlamaCPPBump-GraniteDocling

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>

* feat: Bump llama.cpp/ggml to 7049736

Branch: LlamaCPPBump-GraniteDocling

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>

* fix: format-patches after latest bump

Branch: LlamaCPPBump-GraniteDocling

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>

---------

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>
2025-10-13 15:26:18 -07:00
Jeffrey Morgan
e638f2acb6 runner: fix shifting on llama runner (#12604) 2025-10-13 13:46:33 -07:00
Michael Yang
18087f2ec7 Revert "use llama runner for qwen3 (#12556)"
This reverts commit 3d32249c74.
2025-10-13 13:30:30 -07:00
Michael Yang
6c833d5f8d fix(qwen3): deepseek distill
deepseek's qwen3 distill uses a different rope scheme so support both
2025-10-13 13:30:30 -07:00
Jeffrey Morgan
6544e14735 Reapply "add truncate and shift parameters" (#12582) 2025-10-11 16:06:14 -07:00
Devon Rifkin
5db8a818a1 Merge pull request #12581 from ollama/drifkin/renderer-api-generate
routes: fix built-in renderers for `api/generate`
2025-10-11 14:10:23 -07:00
Devon Rifkin
6db8da9958 routes: fix built-in renderers for api/generate
Made it so when api/generate builds up a message array and generates the
prompt it now goes through the same function as `api/chat` for
consistency. This is where we hook the optional built-in renderers to
bypass templates, which was missing for `api/generate` before this
change.

Closes: #12578
2025-10-11 13:57:43 -07:00
frob
0c68ec8d6a discover: fix typo (#12565) 2025-10-11 12:06:02 -07:00
Daniel Hiltgen
70d9e363e1 doc: remove AMD EOL GPUs (#12567) 2025-10-10 17:16:29 -07:00
Michael Yang
1a2feb2a97 ollamarunner: fix deadlock
hardErrCh will deadlock since forwardBatch is blocked on
computeStartedCh which never gets sent. since the response to
hardErrCh is to panic, just panic instead
2025-10-10 16:49:57 -07:00
Daniel Hiltgen
aab2190420 implement nvml for linux (#12517)
* implement nvml for linux

* Improve scheduler logging when VRAM doesn't recover
2025-10-10 15:15:56 -07:00
Michael Yang
629db9dc43 comment split 2025-10-10 13:25:34 -07:00
Michael Yang
e0cd511661 fix test 2025-10-10 13:25:34 -07:00
Michael Yang
207332078f fix lint 2025-10-10 13:25:34 -07:00
Michael Yang
93085127f4 convert: slice gate_up weight 2025-10-10 13:25:34 -07:00
Michael Yang
c00fa9cc2b convert: split gate_up bias 2025-10-10 13:25:34 -07:00
yajianggroup
df411c4b02 refactor: using testing.B.Loop
Signed-off-by: yajianggroup <yajianggroup@outlook.com>
2025-10-10 13:25:29 -07:00
Jeffrey Morgan
3d32249c74 use llama runner for qwen3 (#12556) 2025-10-09 19:08:21 -07:00
Patrick Devine
d681cd7c29 thinking: allow "think": false for non-thinking models (#12555) 2025-10-09 18:46:00 -07:00
shengxinjing
47298fce39 refactor: use builtin max and min 2025-10-09 16:17:52 -07:00
shengxinjing
4a48937ef1 refactor: use builtin max and min 2025-10-09 16:17:52 -07:00
Michael Yang
967a82f52f ollamarunner: measure only active time 2025-10-09 15:44:04 -07:00
Michael Yang
bbbc73d637 llamarunner: update metrics
this change updates how metrics are collected. until now, performance
metrics, specifically initial input processing and subsequent generation
durations, were collected by taking the timestamp when creating a new
sequence, the first token generation, and completing generation. the
processing duration is taken as first token generation sub sequence
creation while generation is taken as completing generation sub first
token generation.

while this approach is an accurate end-to-end metric of processing and
generation, it's not comparable to other tools which only measure the
active, i.e. decode, duration.

this change updates the metrics to only capture decode duration so it
can be more directly compared to other tools
2025-10-09 15:44:04 -07:00
Daniel Hiltgen
15e3611d3d logs: quiet down context canceled on completion and scheduler noise (#12553)
* logs: quiet down context canceled on completion

If the client closes the connection before Completion finishes, we were
logging at error level implying the runner crashed which was misleading.

time=2025-10-08T22:59:20.566-07:00 level=ERROR source=server.go:1490 msg="post predict" error="Post \"http://127.0.0.1:57736/completion\": context canceled"

* quiet down scheduler log error on expected case

Since we don't hold the lock while performing memory load calculations, other
runners can unload in parallel, so finding no runner to unload is a valid scenario
which we shouldn't log at error level.
2025-10-09 10:37:47 -07:00
Parth Sareen
77060d462c routes: structured outputs for gpt-oss (#12460) 2025-10-08 19:13:38 -07:00
Patrick Devine
1b91d4dda1 openai: change the reasonin_effort field to also take none 2025-10-08 18:21:01 -07:00
Jeffrey Morgan
7d965258ce Revert "add truncate and shift parameters (#12519)" (#12545)
This reverts commit 6a62b894c7.
2025-10-08 17:57:57 -07:00
Jeffrey Morgan
6a62b894c7 add truncate and shift parameters (#12519) 2025-10-08 17:05:05 -07:00
Patrick Devine
90d429f5a8 thinking: turn on thinking mode for all reasoning models (#12533) 2025-10-08 16:50:13 -07:00
Jesse Gross
1fc35f1260 kvcache: Clean up sliding window state with independent batches
Sliding windows models (e.g. gpt-oss, gemma3) remove tokens that
are out of the cache's window each time we start a new forward pass.

The cache storage needs to handle the window size for each sequence
plus the batch size, since the batch needs to attend to the full
window size. This means that we have greater than a window size
stored while processing the batch.

When the next batch comes, we are currently only looking at the
sequences in the incoming batch to slide the window forward.
However, we also need to clean up the other sequences that might
be occupying space in the batch processing buffer to ensure each
sequence is only using its window size of storage. Failure to do
this can result in "no kv cache slot found" errors.

Fixes: #10127
2025-10-08 16:43:14 -07:00
Jesse Gross
aa45f7ce27 discover: Disable flash attention for Jetson Xavier (CC 7.2)
GGML picks the wrong kernel and these systems fail with:
Sep 28 22:25:39 xavier ollama[48999]: //ml/backend/ggml/ggml/src/ggml-cuda/fattn-wmma-f16.cu:437:
ERROR: CUDA kernel flash_attn_ext_f16 has no device code compatible with CUDA arch 720. ggml-cuda.cu
was compiled for: __CUDA_ARCH_LIST__

Fixes #12442
2025-10-08 09:56:15 -07:00
Daniel Hiltgen
4e5d862ec4 Integration test tuning (#12492)
Remove some flaky scenarios, and switch to chat for better reliability
2025-10-08 09:51:25 -07:00
Daniel Hiltgen
303be9304c docs: improve accuracy of LLM library docs (#12530) 2025-10-07 16:21:07 -07:00
Daniel Hiltgen
bd15eba4e4 Bring back escape valve for llm libraries and fix Jetpack6 crash (#12529)
* Bring back escape valve for llm libraries

If the new discovery logic picks the wrong library, this gives users the
ability to force a specific one using the same pattern as before. This
can also potentially speed up bootstrap discovery if one of the libraries
takes a long time to load and ultimately bind to no devices.  For example
unsupported AMD iGPUS can sometimes take a while to discover and rule out.

* Bypass extra discovery on jetpack systems

On at least Jetpack6, cuda_v12 appears to expose the iGPU, but crashes later on in
cublasInit so if we detect a Jetpack, short-circuit and use that variant.
2025-10-07 16:06:14 -07:00
Devon Rifkin
bc71278670 Merge pull request #12509 from ollama/drifkin/oai-compat-refactor
openai: refactor to split compat layer and middleware
2025-10-06 16:22:08 -07:00
Daniel Hiltgen
918231931c win: fix build script (#12513) 2025-10-06 14:46:45 -07:00
Daniel Hiltgen
04c1849878 discovery: prevent dup OLLAMA_LIBRARY_PATH (#12514)
This variable isn't currently documented or intended as something the user can
override, but if the user happens to set OLLAMA_LIBRARY_PATH we were doubling
this in the subprocess environment which will cause problems with the new
bootstrap discovery logic.
2025-10-06 14:36:44 -07:00
Devon Rifkin
2c2f4deaa9 openai: refactor to split compat layer and middleware
This makes the core openai compat layer independent of the middleware
that adapts it to our particular gin routes
2025-10-05 14:18:56 -07:00
Daniel Hiltgen
292767afb4 CI: fix win arm build (#12502)
Resolve subtle erroraction stickiness difference between x86 and arm builder setup
2025-10-04 11:46:45 -07:00
Daniel Hiltgen
ae5e0f0889 CI: replace clang compiler for windows (#12495) 2025-10-04 09:18:42 -07:00
Jesse Gross
19e6796eac llm: Support KV cache quantization with gpt-oss
With the new version of GGML in #12245, KV cache quantization
no longer causes a fallback to CPU.
2025-10-03 16:31:58 -07:00
Grace
33801c1597 Fixed Deepseek2 adding nil tensor error 2025-10-03 14:20:06 -07:00
Daniel Hiltgen
e4340667e3 Workaround broken NVIDIA iGPU free VRAM data (#12490)
The CUDA APIs for reporting free VRAM are useless on NVIDIA iGPU
systems as they only return the kernels actual free memory and ignore
buff/cache allocations which on a typical system will quickly fill up
most of the free system memory.  As a result, we incorrectly think
there's very little available for GPU allocations which is wrong.
2025-10-03 12:17:21 -07:00
Patrick Devine
2fa1e92a99 test: add template error test (#12489) 2025-10-03 12:05:34 -07:00
Daniel Hiltgen
07e36761c3 ci: place rocm windows in correct runner dir (#12487) 2025-10-03 07:28:40 -07:00
Daniel Hiltgen
c29fb007c0 CI: temporarily disable clang install (#12486)
This will likely yield builds that have problems with unicode characters
but at least we can start testing the release while we try to find an
alternate clang compiler for windows, or mingw ships a fixed version.
2025-10-02 20:31:18 -07:00
Daniel Hiltgen
730ed6e9e1 ci: fix windows build (#12485) 2025-10-02 19:16:01 -07:00
Daniel Hiltgen
dc06601677 ci: fix windows build (#12484) 2025-10-02 18:59:26 -07:00
Patrick Devine
1ed2881ef0 templates: fix crash in improperly defined templates (#12483) 2025-10-02 17:25:55 -07:00
Jesse Gross
0bda72892c llm: Enable flash attention by default for qwen3 and qwen3moe 2025-10-02 17:04:10 -07:00
Daniel Hiltgen
55ca827267 AMD: block running on unsupported gfx900/gfx906 (#12481) 2025-10-02 16:53:05 -07:00
Daniel Hiltgen
c68f367ef6 Update GGML to b6646 (#12245)
Notable EOLs with this change:
- MacOS v12 and v13 are no longer supported (v14+ required)
- AMD gfx900 and gfx906 are no longer supported
2025-10-02 14:47:10 -07:00
Jesse Gross
fdb109469f llm: Allow overriding flash attention setting
As we automatically enable flash attention for more models, there
are likely some cases where we get it wrong. This allows setting
OLLAMA_FLASH_ATTENTION=0 to disable it, even for models that usually
have flash attention.
2025-10-02 12:07:20 -07:00
Daniel Hiltgen
05a43e078a fix panic on bootstrapDevices (#12475)
Wrong index variable was used.
2025-10-01 17:39:29 -07:00
Daniel Hiltgen
bc8909fb38 Use runners for GPU discovery (#12090)
This revamps how we discover GPUs in the system by leveraging the Ollama
runner.  This should eliminate inconsistency between our GPU discovery and the
runners capabilities at runtime, particularly for cases where we try to filter
out unsupported GPUs.  Now the runner does that implicitly based on the actual
device list.  In some cases free VRAM reporting can be unreliable which can
leaad to scheduling mistakes, so this also includes a patch to leverage more
reliable VRAM reporting libraries if available.

Automatic workarounds have been removed as only one GPU leveraged this, which
is now documented. This GPU will soon fall off the support matrix with the next
ROCm bump.

Additional cleanup of the scheduler and discovery packages can be done in the
future once we have switched on the new memory management code, and removed
support for the llama runner.
2025-10-01 15:12:32 -07:00
Devon Rifkin
6b50f2b9cd Merge pull request #12461 from ollama/drifkin/qwen3-coder-tweaks
qwen3-coder: fix tool definition type rendering
2025-09-30 19:47:44 -07:00
Michael Yang
35ac4eb12c fix keep alive
this reference to keep alive was missed in #12041 so chat has a
diffferent behaviour than generate
2025-09-30 17:22:28 -07:00
Jesse Gross
3d0b1734c0 ggml: Preallocate CUDA pool memory
The GGML CUDA backend allocates additional memory for intermediate
results during calculation. This memory isn't currently allocated
during worst case graph reservation and therefore not included in
scheduling. This means that as these buffers potentially grow
with context length, we could crash.

This extends the memory allocation system down layer from the GGML
graph to the CUDA layer, preallocating the worst case memory there
as well.

Fixes #11753
2025-09-30 15:04:43 -07:00
Jesse Gross
efaee8c2d6 ggml: Backport scale kernel fixes
The GGML scale kernel uses signed 32-bit ints to represent
the number of elements in the tensor. For large images,
mistral-small3.2 overflows this, triggering CUDA errors due
to negative arguments.

Currently, this can happen when the user passes a large image
to mistral-small3.2. However, with upcoming changes to reserve
CUDA memory, it happens every time mistral-small is loaded as
we reserve using a worst case batch.

This patch is part of an upstream GGML commit and should be removed
after GGML is updated past 0a1b398 "ggml: add ops for WAN video model
(cuda && cpu) (#15669)".

Fixes #10388
2025-09-30 15:04:43 -07:00
Jesse Gross
734b57da0e ggml: Remove allocation status reporting
For each memory allocation we report the size of the (attempted)
allocation and whether it succeeded or failed. The latter status
reporting proved to be not that useful in practice as systems
such as Windows can automatically overflow from VRAM into RAM,
resultings in successful allocations even when there isn't
enough memory where we wanted.

As a result, this information is only used for debug logging,
which isn't worthwhile enough for the amount of code. It
also isn't fully accurate, as multiple allocations may result
in partial failures.
2025-09-30 15:04:43 -07:00
Devon Rifkin
83021fcf0f qwen3-coder: fix tool definition type rendering 2025-09-30 15:03:15 -07:00
Michael Yang
0469861d9d build: call find_package to instantiate library paths 2025-09-30 13:12:46 -07:00
likelovewant
04431b50fa fix 2025-09-28 12:37:28 +08:00
羊撅撅
c47154c08d fix: correct condition for AMDGPU_TARGETS filtering logic (#12412) 2025-09-26 11:38:47 -07:00
Patrick Devine
b04e46da3e bugfix: restore the current runOptions if loading fails in the CLI (#12402)
There are two bugs when using `/load <model>` for a model that doesn't exist, namely:
  1. it will not restore the current model settings if the current model is a thinking model; and
  2. it will crash is the current model is a non-thinking model

This bug fix saves the current runOptions and then restores them if the model load
doesn't happen. It also fixes the crash happening for non-thinking models.
2025-09-25 18:30:45 -07:00
Devon Rifkin
34efbbd3f0 Merge pull request #12417 from ollama/drifkin/qwen3-coder-unicode
parsers: fix unicode handling for qwen3-coder
2025-09-25 15:56:34 -07:00
Devon Rifkin
05ba4ca1f4 parsers: fix unicode handling for qwen3-coder
When trimming whitespace at the end of every chunk, we were iterating
backwards over the string byte-by-byte instead of rune-by-rune.

As an example of how this can cause corruption, suppose we have the
multi-byte character  (`"\u2705"`), which is represented in utf-8 as
the three bytes `0xE2 0x9C 0x85`. It happens that `0x85` is NEL, which
passes `unicode.IsSpace()`. Because we were iterating byte-by-byte, this
caused us to mistakenly slice in the middle of the rune, removing `0x85`
and leaving `0xE2 0x9C`, which beyond being the incorrect place to
slice, is not even a valid utf-8 character.

`trailingWhitespaceLen()` was modified to count from the end in a
rune-aware way. Tests with various multibyte unicode characters were
also added.


Fixes: #12414
2025-09-25 15:47:46 -07:00
Patrick Devine
5a56ff3cf0 cli: add device signin flow when doing ollama push (#12405) 2025-09-25 15:04:43 -07:00
Gabe Goodhart
2fba04b5fb tools: handle the case where a tool call sends "arguments" or "parameters" as a serialized json string (#12413) 2025-09-25 14:37:39 -07:00
Grace
fbd82ba5bb Grace/deepseek v3 migration (#12385)
* init deepseek model file

* temp removal of flash attention implementation

* shapes and proper, can make a pass

* query, key, value have good cosine similarity, but the max diff is a bit high

* Attention block is working! ** with eager for now, have not added the mask line

* Attention block is working! ** with eager for now, have not added the mask line

* working MoE at around 0.95 cosine sim

* added cosine similarity function

* Starting end to end structure

* Trying (and failing) to get rope to work, going to test full thing on tater

* running on tater36... just not the right outputs

* we have the right values for rope... but its still not working?

* chnage Extrapolation Factor to 1

* removed adding residuals twice, removed normalization from shared expert, refactored Norms (Attention, MLP) to be outside the (Attention, MLP) blocks and in the Transformer block instead, add cache setLayer

* Temporary modelfiles for cpu

* change kpass intermediate step to kv, two layer outputs [0,1] look fine

* this calls for 16 chicken nuggets

* whoops

* cleaning up code

* delete stuff we dont need

* getting rid of debug statements for llama cpp

* working with long contexts

* fix long context view error

* reverting some changes I made for files that are not apart of pr

* Added proper tokenizer for deeepseek3

* clean up model and go test

* remove Modelfile

* not passing the tests

* whoops

* how to pass the ci tests

* resolving some of the comments

* rename

* linted and renamed deepseek3 -> deepseek2

* remove name go

* addressed changes - main change was adopting qwen3 naming scheme

* I cannot with linters

* clean up logs

* clean up logs

---------

Co-authored-by: Grace Guo <graceguo@Graces-MBP.localdomain>
Co-authored-by: Grace Guo <graceguo@Graces-MacBook-Pro.local>
Co-authored-by: graceguo <graceguo@tater36.localdomain>
2025-09-24 15:19:47 -07:00
Michael Yang
2e742544bf prefer ollama engine for qwen3moe (#12374) 2025-09-24 11:21:32 -07:00
Devon Rifkin
bbb195a6ff Merge pull request #12393 from ollama/drifkin/fix-built-ins
harmony: don't sanitize built-ins
2025-09-23 23:45:31 -07:00
Devon Rifkin
fd88cd7cb0 harmony: don't sanitize built-ins
In #11910 we started sanitizing function names, but we accidentally were
modifying built-ins like `browser.open` to `browser_open`. This was
removing the special prompt rendering for built-ins, but this wasn't
immediately apparent since the models seem to be reasonably good at
remembering the built-ins even when presented with these slightly
renamed version. This fix prevents built-ins from ever being renamed.
2025-09-23 23:34:55 -07:00
Michael Yang
e1979c571a fix: leaf alt name (#12390)
a leaf node with an alternative name gets all its alternatives names
added into the same branch rather than creating branches themselves
2025-09-23 17:50:53 -07:00
Michael Yang
bf78ed6ee9 add pre:, suf: to tags (#12274) 2025-09-23 16:08:57 -07:00
Michael Yang
a40d427bce multi-regexp pretokenizer (#12325) 2025-09-23 13:21:47 -07:00
Patrick Devine
64883e3c4c auth: fix problems with the ollama keypairs (#12373)
* auth: fix problems with the ollama keypairs

This change adds several fixes including:
  - reading in the pubkey files correctly
  - fixing the push unit test to create a keypair file in a temp directory
  - not return 500 errors for normal status error
2025-09-22 23:20:20 -07:00
Devon Rifkin
41efdd4048 Merge pull request #12339 from ollama/drifkin/harmony-refactor-to-builtin
harmony: remove special casing in routes.go
2025-09-22 13:13:40 -07:00
Daniel Hiltgen
c23e6f4cae tests: add single threaded history test (#12295)
* tests: add single threaded history test

Also tidies up some existing tests to handle more model output variation

* test: add support for testing specific architectures
2025-09-22 11:23:14 -07:00
jmorganca
af060eb250 docs: update cloud.md for cloud models 2025-09-22 13:09:17 -03:00
jmorganca
ae5c33008e docs: move turbo.md to cloud.md 2025-09-22 13:09:17 -03:00
likelovewant
000a3ec8b9 Merge branch 'ollama:main' into main 2025-09-21 10:33:39 +08:00
Devon Rifkin
3677842ff1 Merge pull request #12358 from ollama/drifkin/qwen3-coder-ampersands
parsers: fix `&`s in qwen3coder parameter values
2025-09-20 12:40:33 -07:00
Devon Rifkin
242df70a75 parsers: fix &s in qwen3coder parameter values
In <https://github.com/ollama/ollama/issues/12357> we that the model
will output tool calls such as

```
<function=shell>
<parameter=command>
pwd && ls -la
</parameter>
</function>
```

We parse this using the approach of transforming into valid xml and then
using an xml parser. While we do transform the function and parameter
names, we weren't escaping the parameter values (which in this example
are invalid since `pwd && ls -la` contains unescaped ampersands).

This has been fixed by first transforming the tags in the same way, and
then walking the transformed string and escaping the text in between the
tags. This also fixes a case where `<` in the middle of a parameter
value would cause an xml parse failure.

Fixes: #12357
2025-09-20 12:11:38 -07:00
Patrick Devine
dba39b2eee gemma: fix rope scaling for qat models (#12348)
* gemma: fix rope scaling for qat models

* gofumpt yourself
2025-09-19 15:04:40 -07:00
Michael Yang
9f3a37fd36 fix: model load for unsupported embedding models (#12311)
with #12181, there's now support for embeddings in ollama engine.
this is done by mutating the architecture and adding _embed when it
detects an embedding model. however this introduced a bug where if
an embedding model was run based on an existing ollama engine model
without an embedding implementation, e.g. llama4, it will pass the
initial arch support check but fail when actually loaded.

there's currently two entrypoints to creating a model. previously this
second entrypoint was necessary because calling model.New would also
load the model. since #11818, this is no longer th case so merge them
to reduce complexity
2025-09-18 16:11:08 -07:00
Michael Yang
7460259eb3 feat: qwen3 embed (#12301)
* cleanup

* use pooling.TypeNone

* pooling test

* qwen3 embed
2025-09-18 15:50:32 -07:00
Jeffrey Morgan
22ccdd74c2 server: add unauthorized error to remote chat handler (#12338) 2025-09-18 15:40:31 -07:00
Daniel Hiltgen
0c3d0e7533 build: avoid unbounded parallel builds (#12319)
With the addition of cuda v13, on a clean setup, the level of parallelism
was causing docker desktop to become overwhelmed and compilers
were crashing.  This limits to 8 parallel per build stage, with the ability
to override if you have many more cores available.
2025-09-18 14:57:01 -07:00
Devon Rifkin
e7f56ef3d8 harmony: remove special casing in routes.go
Now that we have a built-in parser abstraction, which was introduced in
<https://github.com/ollama/ollama/pull/12248>, we can modify our harmony
parser to match this and then get rid of nearly all of the
harmony-specific logic in routes.go. We do have a small amount of
code that turns the parser on by default if the architecture matches and
no other built-in parser was provided.

The built-in parser interface was modified in order to handle harmony's
prefill and tool name translation requirements.
2025-09-18 14:55:59 -07:00
Patrick Devine
eb0a5d4459 auth: check the permissions on the private key to see if it's readable (#12336) 2025-09-18 14:34:34 -07:00
Michael Yang
ceac416ec2 fix(integration): check truncated length (#12337) 2025-09-18 14:00:21 -07:00
Patrick Devine
2717dce6fe convert: convert bf16 vision weights to fp16 (#12324)
This change moves back to converting bf16 vision weights to fp16,
specifically if they start with the name "v." (such as v.blk.0.attn_k.weight).

This fixes a bug where converted images are failing because they are trying
to call `im2col` which doesn't have a bf16 kernel in ggml.
2025-09-17 17:43:17 -07:00
frob
9b8187b487 server: skip parsing initial <think> if provided in the prompt for /api/generate (#12289) 2025-09-17 16:39:04 -07:00
Patrick Devine
8b894933a7 engine: add remote proxy (#12307) 2025-09-17 14:40:53 -07:00
Daniel Hiltgen
9c5bf342bc fix: multi-cuda version skew (#12318)
Ensure that in a version skewed multi-cuda setup we use the lowest version for all GPUs
2025-09-17 13:05:09 -07:00
Michael Yang
564b558c92 fix(llama): other llama flavours (#12308)
* fix(llama): rope scale

* spm llama

* skip moe models

* cleanup
2025-09-17 12:12:21 -07:00
Michael Yang
a417ac97ee prefer ollama engine for qwen3 (#12310) 2025-09-17 09:48:21 -07:00
russcoss
05d53457af refactor: use the built-in max/min to simplify the code (#12280)
Signed-off-by: russcoss <russcoss@outlook.com>
2025-09-16 17:14:21 -07:00
Michael Yang
b225508c9b logutil: fix source field (#12279) 2025-09-16 16:18:07 -07:00
Devon Rifkin
fa1c987a29 Merge pull request #12248 from ollama/drifkin/qwen3-coder-parsing
add qwen3-coder tool support
2025-09-16 10:21:43 -07:00
Michael Yang
ad95d5b30b use split activations when possible (#12293)
* use ggml_*_split activations when possible

* forward qkv
2025-09-16 09:51:19 -07:00
Michael Yang
c253433d68 embed: cleanup (#12299)
* cleanup

* use pooling.TypeNone

* pooling test
2025-09-16 09:48:42 -07:00
Beshoy Girgis
a1cff89b30 fix: fix CUDA detection for older GPUs (#12300)
Prioritize GPU compute capability over driver version to ensure
Pascal GPUs (CC 6.1) use compatible CUDA v12 libraries instead of v13.
2025-09-16 07:47:06 -07:00
Daniel Hiltgen
93c64ea1b1 doc: show how to clear the cgo cache (#12298) 2025-09-15 15:45:35 -07:00
Michael Yang
3f6642f6fc model: implement bert in ollama engine (#9080)
* fix truncate

* s/SentencePieceModel/SentencePiece/

* bert

* wordpiece

* refactor pooling

* more tokenizers

* normalize embeddings
2025-09-15 15:35:59 -07:00
Michael Yang
6f7117145f batch: use tensors for outputs (#12185)
this cleans up the model interface slightly without too much impact in
other areas
2025-09-15 14:33:06 -07:00
Devon Rifkin
472feec2ff address comments 2025-09-15 11:46:25 -07:00
Devon Rifkin
47991940d4 add qwen3-coder tool support
The format qwen3-coder uses is relatively unique, both in rendering and
in parsing. To implement parsing, I wrote a custom parser in similar
style to harmony. For the rendering, I found that the logic would be
much more difficult to follow in a template, so I introduced the concept
of a built-in renderer that uses go code, rather than a template to
generate prompts.

I set us up for future built-in parsers and renderers by making it so
they can be specified in a Modelfile like so:

```
RENDERER "qwen3-coder"
PARSER "qwen3-coder"
```

These need to be provided explicitly because the architecture alone is
not enough to understand what format the model expects to receive, and
what format we expect it to output (e.g., qwen3-coder is `qwen3moe`,
which includes other qwen3-family models as well)

I haven't converted harmony to be one of these "built-ins" yet, since
some of it is in flux with the changes @ParthSareen has been making to
move harmony to the runner. It is likely that many other built-ins will
need to move to the runner as well, but I'm able to slightly defer that
decision since qwen3-coder doesn't have thinking (and therefore doesn't
need to be in the runner to make structured outputs work). I expect to
unify harmony with this approach very soon.

Whether a particular model supports tools or thinking was previously
inferred from templates, but without a template we now also use the
parser itself to declare what it supports. If we have future models that
re-use the same parsing format, but have different capabilities, we'll
want to parameterize them and give them different names to be specified
as a `PARSER`.

Misc changes:

- I worked on the renderer by diffing outputs from the reference
  implementation and ours. To make it easier to do this, I extended
  <https://github.com/ollama/ollama/pull/11875> to also support
  returning the prompt via the openai compat layer
2025-09-15 11:33:47 -07:00
likelovewant
9f3f80891d Merge branch 'ollama:main' into main 2025-09-13 10:45:51 +08:00
jmorganca
92b96d54ef Revert "runner: move harmony to runner (#12052)"
This reverts commit 1a558f98e2.
2025-09-12 20:40:14 -03:00
jmorganca
9d56e63dbf Revert "runner: simplify parser entrypoints in runner (#12233)"
This reverts commit 8d6fffaead.
2025-09-12 20:40:14 -03:00
tc-mb
053092185e Fix image cannot be seen with slice image on llama engine
Ollama's recent engine update, llama.cpp, caused all models requiring a slice schema to not display images. As a result, the value of numTokens isn't always the length of the sliced ​​image embed, but rather the end length of the schema. This causes the image embed to not be correctly included during all slice processing.
2025-09-12 16:25:12 -07:00
Daniel Hiltgen
44a6792873 tests: tighten up a few flaky tests (#12271)
Sometimes the context test results are pure emoji's
Thanksgiving has too much variability, so swap for a more straight forward prompt.
2025-09-12 13:59:34 -07:00
Daniel Hiltgen
e4ce68311a cuda: remove compression for better compatibility (#12259)
This retains compatibility with driver 531 and up at the trade-off of space.
2025-09-12 07:59:14 -07:00
Jesse Gross
26214125e8 ollamarunner: Suppress stack trace during memory allocation
Allocation failures can be a normal part of new memory estimates, so
we shouldn't print a stack trace in this case.
2025-09-11 14:30:31 -07:00
Daniel Hiltgen
61fb912ca4 CI: fix windows cuda build (#12246)
* ci: adjust cuda component list

v13 has a different breakdown of the components required to build ollama

* review comments
2025-09-11 12:25:26 -07:00
Jesse Gross
aba1575315 llm: Don't try to load split vision models in the Ollama engine
If a model with a split vision projector is loaded in the Ollama
engine, the projector will be ignored and the model will hallucinate
a response. Instead, fallback and try to load the model in the llama
engine.
2025-09-11 11:41:55 -07:00
Jesse Gross
eb10390de9 llm: Enable new memory estimates by default
New memory estimates (see #11090 for more information) are now
enabled automatically for all models running on the Ollama engine,
improving both stability and performance through more accurate sizing
and allocation. Models running on the llama engine will continue to
use the original style of memory estimation.
2025-09-11 11:21:53 -07:00
Michael Yang
feb18cd710 feat: add dimensions field to embed requests (#12242)
* feat: add field to truncate embeddings

* add openai embeddings for dimensions
2025-09-11 10:36:10 -07:00
fengyuchuanshen
8a7e2055d2 cmd: use slices.Contains to simplify code (#12249) 2025-09-11 09:57:31 -07:00
Jesse Gross
29ddfc2cab ggml: Disable flash attention for gemma2
Our new engine implementation of gemma2 doesn't support flash
attention, which means that it also doesn't support KV cache
quantization. Currently, it is possible to turn these two on,
which will result in a crash.
2025-09-10 16:40:45 -07:00
Jesse Gross
71cb86af3e llm: Remove unneeded warning with flash attention enabled
If flash attention is enabled without KV cache quanitization, we will
currently always get this warning:
level=WARN source=server.go:226 msg="kv cache type not supported by model" type=""
2025-09-10 16:40:45 -07:00
CarbonatedWater.org
5198956372 docs: add ollama-co2 to community integrations (#12230) 2025-09-10 16:37:10 -07:00
Daniel Hiltgen
17a023f34b Add v12 + v13 cuda support (#12000)
* Add support for upcoming NVIDIA Jetsons

The latest Jetsons with JetPack 7 are moving to an SBSA compatible model and
will not require building a JetPack specific variant.

* cuda: bring back dual versions

This adds back dual CUDA versions for our releases,
with v11 and v13 to cover a broad set of GPUs and
driver versions.

* win: break up native builds in build_windows.ps1

* v11 build working on windows and linux

* switch to cuda v12.8 not JIT

* Set CUDA compression to size

* enhance manual install linux docs
2025-09-10 12:05:18 -07:00
Parth Sareen
8d6fffaead runner: simplify parser entrypoints in runner (#12233) 2025-09-10 11:24:42 -07:00
Parth Sareen
20b53eaa72 tests: add tool calling integration test (#12232) 2025-09-09 14:01:11 -07:00
Daniel Hiltgen
6745182885 tests: reduce stress on CPU to 2 models (#12161)
* tests: reduce stress on CPU to 2 models

This should avoid flakes due to systems getting overloaded with 3 (or more) models running concurrently

* tests: allow slow systems to pass on timeout

If a slow system is still streaming a response, and the response
will pass validation, don't fail just because the system is slow.

* test: unload embedding models more quickly
2025-09-09 09:32:15 -07:00
Kashyap Tanuku
f810ec741c readme: add Clueless to community integrations (#12188) 2025-09-08 21:31:29 -07:00
Jesse Gross
e119783e66 llm: Clamp batch size to context size
The context must always be able to store the current batch, so
if the user requests a small context then we should also shrink
the batch to match. This also fixes the TestLongInputContext
test on the new engine. (The old engine already has this behavior.)
2025-09-08 20:40:11 -07:00
Parth Sareen
1a558f98e2 runner: move harmony to runner (#12052) 2025-09-08 15:07:59 -07:00
Gabe Goodhart
7b91c9ce51 Hybrid and recurrent memory estimates (#12186)
This PR updates the memory size estimate logic to better handle recurrent and hybrid-recurrent models which are currently being badly overestimated because the default logic assumes full attention for all layers.

The logic for the sizing of the recurrent layers comes from the llama.cpp implementation

        ggml_tensor * r = ggml_new_tensor_1d(ctx, type_r, hparams.n_embd_r()*mem_size);
        ggml_tensor * s = ggml_new_tensor_1d(ctx, type_s, hparams.n_embd_s()*mem_size);

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>
2025-09-08 14:53:22 -07:00
Daniel Hiltgen
950d33aa30 docs: show how to debug nvidia init failures (#12216)
This debug setting can help troubleshoot obscure initialization failures.
2025-09-08 11:39:00 -07:00
Michael Yang
9714e38dd0 fix: nil pointer dereference if cache is nil (#12215) 2025-09-08 09:53:59 -07:00
frob
4378ae4ffa parser: don't check the file type of safetensors to prevent false negatives. (#12176)
* Don't check the file type of safetensor to prevent false negatives.

---------

Co-authored-by: Patrick Devine <patrick@infrahq.com>
2025-09-05 16:27:40 -07:00
likelovewant
501cb38b8c Merge branch 'ollama:main' into main 2025-09-05 17:58:44 +08:00
Michael Yang
5994e8e8fd embedding gemma model (#12181)
* ollama: add embeddings
2025-09-04 09:09:07 -07:00
likelovewant
59e3a35203 Merge branch 'ollama:main' into main 2025-09-04 19:34:11 +08:00
Michael Yang
b3e6120736 more logutil.Trace (#12177) 2025-09-03 17:24:39 -07:00
Michael Yang
fb92b61754 logutil: add Trace and TraceContext helpers (#12110) 2025-09-02 13:09:12 -07:00
Jesse Gross
8149a3c86e llm: Avoid underflow in free memory logging
If a GPU's free memory is less than the reserved amount, we might get
an underflow. Since it is an unsigned uint64, we print this as a large
number rather than the more correct 0. This only affects logging, the
actual layout code already handles this correctly.

Bug #12138
2025-09-02 12:30:26 -07:00
Daniel Hiltgen
0cc90a8186 harden uncaught exception registration (#12120) 2025-09-02 09:43:55 -07:00
pxwanglu
e42300f25b ml: fix struct field name in comment (#12123) 2025-08-31 16:26:11 -07:00
alpha-nerd-nomyo
66e73809a1 readme: add NOMYO Router to community integrations (#12129) 2025-08-31 13:49:10 -07:00
likelovewant
c632fdbad8 Merge branch 'ollama:main' into main 2025-08-31 19:44:41 +08:00
Daniel Hiltgen
517807cdf2 perf: build graph for next batch async to keep GPU busy (#11863)
* perf: build graph for next batch in parallel to keep GPU busy

This refactors the main run loop of the ollama runner to perform the main GPU
intensive tasks (Compute+Floats) in a go routine so we can prepare the next
batch in parallel to reduce the amount of time the GPU stalls waiting for the
next batch of work.

* tests: tune integration tests for ollama engine

This tunes the integration tests to focus more on models supported
by the new engine.
2025-08-29 14:20:28 -07:00
Daniel Hiltgen
ead4a9a1d0 Always filter devices (#12108)
* Always filter devices

Avoid crashing on unsupported AMD iGPUs

* Remove cuda device filtering

This interferes with mixed setups
2025-08-29 12:17:31 -07:00
ofrancon
4383a3ab7a readme: add Neuro SAN to community integrations (#12109) 2025-08-28 12:27:13 -07:00
Jesse Gross
9d97e6a9f1 ggml: Avoid allocating CUDA primary context on unused GPUs
The recent memory management changes caused all GPUs to be visible
to the runner, regardless of whether they are ultimately used. This
caused CUDA devices to allocate a primary context (~300 MB VRAM) on
each GPU, for each model. This is unnecessary, so we can both avoid
touching GPUs that we exclude in the early stage of allocation and
freeing the memory for any that we touch but don't use.

The issue will continue to exist for the old engine, since it touches
all devices during initialization.
2025-08-27 16:24:18 -07:00
Michael Yang
1081532430 fix keep alive (#12041) 2025-08-27 11:51:25 -07:00
Michael Yang
59412fbb43 convert(gptoss): mxfp4 to ggml layout to avoid jit conversion (#12018)
* convert: return bytes written

* ggml flavor mxfp4

* simplify jit conversion

* comment
2025-08-26 16:41:02 -07:00
Michael Yang
86834a2797 convert: fix tensor sorting (#12015)
there's two bugs here.

1. the check for a layer id is incorrect and should be >= 0 since layer
   0 is valid
2. if both tensors have an layer identifier, it will only compare the
   layer id which will return 0 if the tensors are in the same layer.
   instead it should fallback to comparing the full tensor name
2025-08-26 13:57:46 -07:00
Michael Yang
85ccf7354d gptoss: enable flash attention by default (#11996) 2025-08-26 13:34:45 -07:00
Michael Yang
30fb7e19f8 remove extra field attr (#11205) 2025-08-25 09:58:16 -07:00
Jeffrey Morgan
d3450dd52e api: implement stringer for ToolFunctionParameters (#12038) 2025-08-22 16:26:48 -07:00
Jeffrey Morgan
4bcb04ad88 tools: avoid matching braces that are part of tool content (#12039) 2025-08-22 15:22:14 -07:00
Devon Rifkin
e3d5708754 Merge pull request #12021 from ollama/drifkin/thinking-double-emit
thinking: fix double emit when no opening tag
2025-08-22 12:01:37 -07:00
Jeffrey Morgan
4be4dc8717 server: skip parsing initial <think> if provided in the prompt (#12024) 2025-08-22 12:00:16 -07:00
zoupingshi
109d4fc3b4 chore: remove redundant words in comment (#12028)
Signed-off-by: zoupingshi <hangfachang@outlook.com>
2025-08-22 11:00:27 -07:00
Devon Rifkin
2cb0a580f3 thinking: fix double emit when no opening tag
The thinking parser will automatically transition to being a
pass-through if non-whitespace is seen before an opening tag. However,
we weren't clearing the buffer after the first non-whitespace input, so
in practice the first token would be emitted twice.

Added a test that demonstrated this, and then fixed the bug.
2025-08-21 21:03:12 -07:00
Parth Sareen
7cce5aac76 harmony: move harmony parsing into a package (#12016) 2025-08-21 13:56:22 -07:00
likelovewant
131c496340 merge upstream and fix conflicts 2025-08-21 11:24:55 +08:00
Michael Yang
4ae4f47b16 gpt-oss: convert from hugging face format (#11907) 2025-08-20 15:39:18 -07:00
Jesse Gross
073fa31df5 llm: Don't always evict models in CPU-only mode
With old memory estimates, it's currently impossible to load more
than one model at a time when no GPUs are available. This is because
the check for whether we need to evict a model looks to see if all
layers of the new model can be loaded onto GPUs, which is never true
if there are no GPUs. Before the memory management changes, there
was a special code path for CPU-only systems.

This problem does not exist with new memory estimates.

Fixes #11974
2025-08-20 14:31:02 -07:00
Michael Yang
91fc3c48e3 openai: remove reasoning as an api.Options (#11993) 2025-08-20 12:21:42 -07:00
Devon Rifkin
6de62664d9 Merge pull request #11973 from ollama/drifkin/bpe
model: fix boundary in bpe
2025-08-19 22:58:33 -07:00
Devon Rifkin
463a6caad8 model: add bpe roundtripping tests 2025-08-19 22:05:48 -07:00
Devon Rifkin
fc5fb09f51 model: fix boundary in bpe
0x007e is a tilde and was getting adjusted (+0x00a2) to 0x0120 in the
encode, but then in the decode it was getting adjusted down (-0x0100) to
0x0020. The boundary for the +0x00a2 case has been adjusted to fix this

Fixes: #11966
2025-08-19 18:34:49 -07:00
Jesse Gross
05ccb17c6e kvcache: Use Cast instead of Copy for flash attention masks
Flash attention kernels require the mask of the KV cache be a F16
rather than an F32. We can use the GGML operation ggml_cast to do
this rather than doing it ourselves, which allows reuse of a
preallocated buffer in the graph rather than allocating a new one
for each batch. This improves token generation performance with
flash attention by 10-30% (with gpt-oss). This also makes performance
with flash attention better than without it, as expected.
2025-08-19 12:36:28 -07:00
Michael Yang
f804e8a460 disable output_all (#11959) 2025-08-18 17:45:40 -07:00
Kostis
9cfbffafc5 readme: add any-agent to community integrations (#11950) 2025-08-18 14:21:36 -07:00
Ruslan Suleymanov
470d580205 readme: add Andes to community integrations (#11952) 2025-08-18 14:20:28 -07:00
Devon Rifkin
b517bb1c19 Merge pull request #11910 from ollama/drifkin/harmony-fn-names
harmony: convert fn names to be valid ts identifiers
2025-08-18 14:17:47 -07:00
Jesse Gross
e3ade453a8 llm: Check for nil memory data before printing
We dump out our best memory estimate after we complete processing
for any reason, including errors. This is helpful for finding what
what stopped us in error conditions but in some cases we might not
have gotten even the first result yet.

Fixes #11957
2025-08-18 14:05:22 -07:00
Devon Rifkin
048bd4472a harmony: convert fn names to be valid ts identifiers
In <https://github.com/ollama/ollama/issues/11704#issuecomment-3177380197>
I noticed that hyphens in function names could possibly cause the model
to become confused. Later in that issue I found other explanations, but
at a minimum tool names with spaces in them are confusing to the model
because of the prompt format.

In this change I create a mapper that converts arbitrary tool names into
valid typescript identifiers. It's a little overly strict in that it
doesn't allow all unicode characters that might be valid in ts
identifiers, but it's still very permissive. Since mappings aren't
reversible, we must temporarily store this mapping in order to unmap it
if the model comes back with a call. We also handle the case where
multiple mappings collide into the same mapping and append a counter to
the end to make them unique
2025-08-18 14:05:16 -07:00
Devon Rifkin
ec8bf5e6c5 Merge pull request #11875 from ollama/drifkin/print-template
server: add debug option for printing out prompt instead of calling model
2025-08-18 14:03:14 -07:00
Kostis
709bbb0b6d readme: add any-llm to community integrations (#11956) 2025-08-18 13:13:26 -07:00
Jody Doolittle
abeec240f9 readme: add Serene Pub to community integrations (#11946) 2025-08-18 13:12:41 -07:00
Michael Yang
df335aac09 gpt-oss: disable quantized kv cache (#11929) 2025-08-15 15:01:05 -07:00
Patrick Devine
026bc29237 cli: show the default context length env setting in online help (#11928) 2025-08-15 14:59:52 -07:00
Thomas Pelster
883d031268 docs: added missing comma in 'Ollama's Javascript library'' (#11915) 2025-08-15 14:45:01 -07:00
Daniel Hiltgen
5271ff8559 handle cgo flags in docker build (#11909)
Docker build requires build-args to be defined.  This ensures the release.yaml settings will be used.
2025-08-15 14:39:35 -07:00
Daniel Hiltgen
d6f7233a1c test: improve scheduler/concurrency stress tests (#11906)
* test: improve scheduler/concurrency stress tests

The scheduler test used to use approximate memory figures and would often
over or under shoot a systems capcity leading to flaky test results.
This should improve the reliability of this scenario by leveraging
ps output to determinie exactly how many models it takes to
trigger thrashing.

The concurrency test is also refined to target num_parallel + 1 and handle
timeouts better.

With these refinements, TestMultiModelConcurrency was redundant

* test: add parallel generate with history

TestGenerateWithHistory will help verify caching and context
are properly handled while making requests

* test: focus embed tests on embedding models

remove non-embedding models from the embedding tests
2025-08-15 14:37:54 -07:00
Devon Rifkin
8de1da4767 server: add debug option for printing out prompt instead of calling model 2025-08-15 13:52:50 -07:00
Daniel Hiltgen
d925b5350c Revert "cuda: leverage JIT for smaller footprint (#11635)" (#11913)
This reverts commit dc5a645434.
2025-08-14 21:19:23 -07:00
Daniel Hiltgen
6eaf194b85 fix arm linux build when HWCAP2_SVE2 undefined (#11908) 2025-08-14 16:38:53 -07:00
Jesse Gross
d5a0d8d904 llm: New memory management
This changes the memory allocation strategy from upfront estimation to
tracking actual allocations done by the engine and reacting to that. The
goal is avoid issues caused by both under-estimation (crashing) and
over-estimation (low performance due to under-utilized GPUs).

It is currently opt-in and can be enabled for models running on the
Ollama engine by setting OLLAMA_NEW_ESTIMATES=1. Behavior in other
cases is unchanged and will continue to use the existing estimates.
2025-08-14 15:24:01 -07:00
Michael Yang
ef7d26ba2c convert: skip reading into memory when possible (#11507)
if there's no transformation to the tensor and the input and output
types match, copy directly into the writer. also read from a bufio with
a 32K buffer
2025-08-14 15:03:57 -07:00
Michael Yang
1a19df1f3a update vendored llama.cpp and ggml (#11823)
* TEMPORARY: Update the llama.cpp upstream to my fork's Granite Four branch

This will be redone once my branch is merged upstream in llama.cpp

* feat: Update all patches

There are a number that are no longer needed at all:

- 0003-embeddings: Embeddings entirely overhauled on master
- 0008-ensure-KV-cache-is-fully-defragmented: KV caching entirely
    overhauled on master
- 0019-metal-add-mean-kernel-14267: Merged upstream
- 0020-CUDA-add-mean-operation-14313: Merged upstream

* feat: Sync llama.cpp and ggml

* fix: Update rsync-filter for all moved/new/removed files

* fix: Add files missing from sync

* fix: Update ggml rsync-filter for new ggml-cpu/arch subdirs

* fix: Add ggml files missing from sync

* fix: Narrow llama.cpp rsync-filter to not include mtmd main tool cpp files

* fix: Remove mtmd main cpp files

* fix: Add missing include in sampling_ext.cpp

* fix: Update llama.go to use mtmd instead of clip/llava

* fix: Add patch for mtmd_input_text

* chore: Ignore *.patched in the patch directory

* fix: Fix support for arch-specific ggml-cpu source files with new arrangement

In https://github.com/ggml-org/llama.cpp/pull/13892, all arch-specific
implementations were split out into a nested tree structure under
ggml-cpu/arch. This conflicts with standard CGO layout where all
arch-specific source files are expected to live in the same directory as
the parent go module and use suffixes based on GOOS and GOARCH. As such,
there were really two options for getting this to work:

1. Add a patch on top of the GGML sync to rearrange the files to match the
GO layout convention
2. Use CGO directives to conditionally include the nested source files in
the compilation units

This commit does (2) in order to minimize the set of changes needed on top
of the upstream file layout. To get this to work, there are two key things
needed:

1. In cpu.go, #cgo directives are added to explicitly set __${GOARCH}__ in
the preprocessor directives
2. In arch-impls.c|cpp, use an #ifdef | #elif defined | #endif chain to
explicitly include the .c|.cpp files for the given architecture from the
nested directory

* fix: Use mtmd_helper to correctly load the bitmap for the image

* fix: Apply patch for mtmd_text_input

* fix: Add missing stb to llama.cpp rsync-filter

* fix: Add sync'ed stb vendored header

* fix: Use c++17 and include vendor for go wrapper modules

* fix: Update patch 0015 for upstream implementation of uuid

* feat: Bump to the latest tip of the branch

* fix: Update patches for bump

* feat: Bump back to the cenral repo and point at the latest master

This includes granite 4 and a number of other model architectures!

* fix: Revert changes to ggml export GPU UUID patch

* fix: Add patch for GGML_VERSION and GGML_COMMIT constants

* feat: Sync all patched code

* build: Include cmake/common.cmake in ggml sync

* build: Add top-level include for GNUINstallDirs in CMakeLists.txt

This is used to populate CMAKE_INSTALL_BINDIR

* fix: Add a patch to avoid power throttling API on non-msvc windows builds

* fix: Sync patch changes for ggml-cpu.c

* feat: Bump llama.cpp to 4a4f42

This picks up support for Kimi K2 and PLaMO-2

* feat: Sync llama.cpp

* fix: Handle multi-chunk image encodings from mtmd

* fix: Re-number patches after merge with `main`

* feat: Bump to 41e78c in the makefile

* fix: Fix Solar and argsort/copy patches after bump

* fix: Remove Gemma3n CUDA Graphs patch

It was implemented upstream:
https://github.com/ggml-org/llama.cpp/pull/14741

* feat: Sync llama.cpp / ggml after latest bump

* build: Remove unnecessary CFLAGS definitions in cpu.go

* fix: Remove unnecessary additions in the rsync-filter

* fix: Remove unused vendored code for chat template parsing

* Revert "fix: Remove Gemma3n CUDA Graphs patch"

This reverts commit d724caced3ce21f08924d4b7801f94ce6638f6ea.

* fix: Update 0020 CUDA Graphs for gemma3n to keep both llama.cpp and ollama fixes

https://github.com/ollama/ollama/pull/11195#issuecomment-3137312394

* fix: Sync ggml-cuda.cu after keeping both style cuda graph fixes for gemma3n

* unwind mxfp4 patch

Prepare to bump ggml with their impl for mxfp4

* bump

* fix windows build error

* Convert tensors at load time

Repack the mxfp4 tensors as ggmls kernels expect them to be.

* convert mlp bf16 to f32

* buffer the conversion better

* reshape earlier

* openai swiglu

* add ids

* split qkv, gate_up

* fix nested alt tags

* fast attention

* remove debug messages

* fix lint

* remove redundant test

* remap values only if source/target are different

* add back i32->i32 copy

* refactor cpu quants

* clean up vendor

* update patch instructions

* clean up patches

* remove webgpu

* update mem

* also handle gpt-oss

* revert convert changes

---------

Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>
Co-authored-by: Gabe Goodhart <ghart@us.ibm.com>
Co-authored-by: Daniel Hiltgen <daniel@ollama.com>
2025-08-14 14:42:58 -07:00
Daniel Hiltgen
7ccfd97a93 doc: clarify both rocm and main bundle necessary (#11900)
Some users expect the rocm bundles to be self-sufficient, but are designed to be additive.
2025-08-14 12:54:55 -07:00
Daniel Hiltgen
c385ca8672 test: add valid responses (#11902)
some of the new models need a few more valid responses to pass
2025-08-14 11:07:13 -07:00
Daniel Hiltgen
837379a94c discovery: fix cudart driver version (#11614)
We prefer the nvcuda library, which reports driver versions. When we
dropped cuda v11, we added a safety check for too-old drivers.  What
we missed was the cudart fallback discovery logic didn't have driver
version wired up.  This fixes cudart discovery to expose the driver
version as well so we no longer reject all GPUs if nvcuda didn't work.
2025-08-13 15:43:33 -07:00
Daniel Hiltgen
a24f90604f int: adjust a few models for integration tests (#11872) 2025-08-13 15:42:36 -07:00
Daniel Hiltgen
dc5a645434 cuda: leverage JIT for smaller footprint (#11635)
Prior to this change our official binaries contained both JIT PTX code and
the cubin binary code for our chosen compute capabilities. This change
switches to only compile the PTX code and rely on JIT at runtime for
generating the cubin specific to the users GPU.  The cubins are cached
on the users system, so they should only see a small lag on the very
first model load for a given Ollama release.  This also adds the first
generation of Blackwell GPUs so they aren't reliant on the Hopper PTX.

This change reduces the ggml-cuda.dll from 1.2G to 460M
2025-08-13 15:42:16 -07:00
youzichuan
bb71654ebe chore: fix some inconsistent function name in comment
Signed-off-by: youzichuan <youzichuan6@outlook.com>
2025-08-13 09:50:27 -07:00
likelovewant
d4af9f04f9 Merge branch 'ollama:main' into main 2025-08-13 12:36:50 +08:00
Jesse Gross
a343ae53a4 ggml: Use ordinal IDs for AMD GPUs on Linux when UUID is unavailable
Some AMD GPUs do not provide UUIDs and report only "XX". In these
cases, we should use the ordinal ID as an alternate identifier.
This is the same as we always need to do on Windows for AMD.

In addition, this prints out the ID for each GPU when enumerating
them for easier debugging in the future.
2025-08-12 16:56:14 -07:00
Michael Yang
d0cf6c8281 fix(openai): handle reasoning_effort (#11868) 2025-08-12 11:02:01 -07:00
Jesse Gross
8f4ec9ab28 discover: CPU supports flash attention
We already run flash attention on CPUs in cases where we have
partial offloading but were disabling it if running on pure CPU,
 which is unnecessary.
2025-08-11 15:00:34 -07:00
Devon Rifkin
dbfd7bd027 Merge pull request #11861 from ollama/drifkin/fix-parsing-error
server: fix error when parsing bad harmony tool calls
2025-08-11 14:59:57 -07:00
Devon Rifkin
ee04dbba51 server: fix error when parsing bad harmony tool calls
Thanks @moll for reporting!

Fixes: #11781
2025-08-11 14:09:13 -07:00
Daniel Andersen
ea7657b54a sched: Add support for grouping GPUs (#10678)
This patch modifies Ollama to allow grouping GPUs to memory-fit to the requested model, instead of the former algorithm of using one GPU distributing over all available GPUs.

Benefits:
 - Lower amount of (PCIe-)bus communication between GPUs - especially when they are not very high speed
 - Allowing unallocated GPUs to get into power-saving mode.
 - Significantly reduce VRAM allocation when using more than 2 GPUs in a system
 - Due to the reduced memory allocation, you can run more models simultaneously.
2025-08-11 13:59:38 -07:00
Michael Vorburger
2c776f0780 CONTRIBUTING: Explicitly note docs:... as a good example (#11755) 2025-08-09 18:12:30 -07:00
Jesse Gross
79f6376f5b ggml: No-alloc mode
Callers can set a backend buffer type to be no-alloc, meaning that
it does not allocate memory for tensors or operations. This can
be used for calculating memory requirements. Tensors and graphs
must be recreated with no-alloc set to false before loading data.

Defaults to false for newly created backend buffer types.
2025-08-08 14:57:13 -07:00
Jesse Gross
756c78cfc7 ggml: Support closing backends
In order to iteratively find the best memory allocation, we need to
be able to free backend memory so we can try again.
2025-08-08 14:57:13 -07:00
Jesse Gross
d7f4f788d1 ggml: Use GGML's typedef'ed pointer types
For many backend data structures, GGML defines a typedef of a pointer
type and returns these from functions. In most cases, CGo understands
that these are interchangable but some parts of Go (such as generics)
think they are two different types. We should prefer the form that
GGML uses.
2025-08-08 14:57:13 -07:00
Daniel Hiltgen
114c3f2265 tests: add integration coverage for oss-gpt (#11696)
Also wires up support to override the default "smol" model
2025-08-07 15:06:57 -07:00
Jesse Gross
f2e9c9aff5 server: Reduce gpt-oss context length for small VRAM GPUs
gpt-oss works best with a context length of at least 8k. However,
for GPUs with limited amount of VRAM, there is a significant
performance hit to this increased context. In these cases, we
switch to the Ollama default of 4k
2025-08-07 14:23:55 -07:00
Devon Rifkin
aa9d889522 Merge pull request #11765 from ollama/drifkin/thinking-without-content
openai: always provide reasoning
2025-08-06 19:02:23 -07:00
Devon Rifkin
735c41f9ca openai: always provide reasoning
We were missing passing along thinking if content was nil (as opposed
to empty string)

Also added a test for content not being passed, which was the real cause
of <https://github.com/ollama/ollama/issues/11704>, since with the way
`Content` is typed, not passing it and empty string are distinct
2025-08-06 18:54:20 -07:00
Devon Rifkin
223a619468 Merge pull request #11761 from ollama/drifkin/openai-tool-names
openai: when converting role=tool messages, propagate the tool name
2025-08-06 17:53:25 -07:00
Devon Rifkin
759dd78dd6 openai: when converting role=tool messages, propagate the tool name
Added support for converting both `name` and `tool_call_id` fields,
which different clients might provide. `name` is a legacy field from the
OpenAI completions API. For `tool_call_id` we inspect previous messages
and look for a matching tool call ID and grab its name

Issue: https://github.com/ollama/ollama/issues/11704
2025-08-06 17:00:24 -07:00
Patrick Devine
44bc36d063 docs: update the faq (#11760) 2025-08-06 16:55:57 -07:00
Devon Rifkin
8f14e1f5f6 Merge pull request #11759 from ollama/drifkin/oai-tool-calling
openai: allow for content _and_ tool calls in the same message
2025-08-06 16:11:31 -07:00
Devon Rifkin
203c137810 openai: allow for content _and_ tool calls in the same message
Previously our OpenAI chat completions compat layer assumed that tool
calls and content would never be provided together, but this is not a
correct assumption. Content is only optional when tool calls are
present, but tool calls and content can be provided together

Fixes: https://github.com/ollama/ollama/issues/11704
2025-08-06 15:50:30 -07:00
Daniel Hiltgen
fa8be9e35c clean up debugging (#11756) 2025-08-06 13:31:22 -07:00
Gao feng
8a75e9ee15 Update downloading to pulling in api.md (#11170)
update api.md to make it consist with code.
https://github.com/ollama/ollama/blob/main/server/download.go#L447
2025-08-06 11:33:09 -07:00
likelovewant
9231379bce remove gfx900 2025-08-06 09:46:23 +08:00
likelovewant
c7ba6128b4 remove gfx900 2025-08-06 09:43:21 +08:00
likelovewant
8970233a2b add 2025-08-06 09:36:32 +08:00
likelovewant
cde948f976 fix gfx1200 2025-08-06 09:29:22 +08:00
likelovewant
7c8aba0d83 Merge branch 'ollama:main' into main 2025-08-06 09:25:22 +08:00
Parth Sareen
4742e12c23 docs: update turbo model name (#11707) 2025-08-05 17:29:08 -07:00
Devon Rifkin
2d06977ade Merge pull request #11705 from ollama/drifkin/fn-schema
tools: support anyOf types
2025-08-05 17:02:42 -07:00
Devon Rifkin
30f8a68c4c tools: support anyOf types
afaik gpt-oss is the first model that meaningfully transforms tool
function definitions in its template. We found that relatively common
definitions that include `anyOf` were not working because the template
was assuming that types were always defined via a `type` field.

anyOf allows for fully recursive types, so I exposed a
`toTypeScriptType()` function to handle this recursive logic in go and
keep the templates cleaner. The gpt-oss templates will need to be
updated to use this.

We should keep building out our function definition support to more
fully support the parts of json schema that make sense for this use
case, but in the meantime this will unblock some users (e.g., zed's
ollama integration w/ gpt-oss). Probably the most urgent is proper array
support
2025-08-05 16:46:24 -07:00
Daniel Hiltgen
e378e33421 win: static link msvc libs (#11612)
This should help reduce the runtime dependencies on windows.
2025-08-05 16:10:42 -07:00
Michael Yang
fcec04bf42 gptoss: fix memory calc (#11700) 2025-08-05 15:56:12 -07:00
Jeffrey Morgan
ee92ca3e1d docs: add docs for Ollama Turbo (#11687) 2025-08-05 13:09:10 -07:00
Jesse Gross
8253ad4d2b ggml: Prevent kv cache quanitization on gpt-oss
KV cache quantization has a dependency on the flash attention kernel.
We currently cannot use flash attention with gpt-oss as it requires
additional operations.

The model definition does not call flash attention, so it works
regardless of the setting but the cache will pick up the
quantization type. This updates the flash attention setting earlier
in the loading flow so that all downstream settings are also set correctly.

Fixes: #11671
2025-08-05 13:04:03 -07:00
Michael Yang
fa7776fd24 gpt-oss (#11672)
* bf16

* tests

* gpt-oss

* enable gptoss for engine

* rough estimate

* convert to mxfp4

* handle safetensors U8

* clamp glu/linear

* update tokenizer

* MXFP4 support

This implements the Open Compute Microscaling (MX) FP4 format
as a tensor type with backend implementations focusing
on mulmat and mulmatid on CPU, CUDA, and Metal.

* Unit tests for MXFP4 support

This exercises various operations and shapes on both CPU and GPU (if detected
on the system)

* cuda graph

* unit test adjustments

* cuda: optimize memory access

Read 4 bytes at a time (8 elements) when performing mul_mat_vec_mxfp4

* mac: fix crash on old macos versions

cblas_sgemm is only supported on v13.3 and up, however bf16 is
only supported on v14+ so we were falling back to ggml-blas and
crashing on bf16 tensors.  Checking for the function being null
seems to be the simplest way to condittionally avoid registering the
backend.

* server: Minimum context length for gptoss

This model requires a minimum context length of 8192 to function
effectively. Users can set higher values through all normal mechanisms
but lower values will be silently reset.

* ggml: Multiply by numParallel for gptoss sliding window

When computing the graph size estimate, the context size is already
multiplied by numParallel so estimates reflect that. However, since
sliding window models use a smaller, fixed context size, they need
to manually take numParallel into account.

* gpt-oss integration

includes harmony parser and thinking levels, etc.

* fix sync

* fix tests

* fix lint

---------

Co-authored-by: Daniel Hiltgen <daniel@ollama.com>
Co-authored-by: Jesse Gross <jesse@ollama.com>
Co-authored-by: Devon Rifkin <drifkin@drifkin.net>
2025-08-05 12:21:16 -07:00
Jesse Gross
0d38b66502 kvcache: Log contents of cache when unable to find a slot
There is a bug when using sliding window attention where we run
out of KV cache slots. This is likely due to not correctly removing
all of the entries as they slide out of range. This adds additional
logging when this occurs to track down the source.

Bug #10127
2025-08-04 16:59:29 -07:00
likelovewant
e5e077b4b7 Merge branch 'ollama:main' into main 2025-08-03 08:22:07 +08:00
Jesse Gross
4183bb0574 kvcache: Enable SWA to retain additional entries
Models that use sliding window attention can only resume a sequence
from the cache if it falls within the saved windows. This works well
if the next message picks up where the old one left off. However, it
generally prevents a partial prefix match unless the entire conversation
falls within the sliding window.

This can be a problem with reasoning models where the traces are
supposed to be removed from future messages, forcing the entire
history to be re-evaluated.

This change allows models to specify that a larger amount of the
history be retained in memory, to allow more partial resumption.
It still respects the window that the model was trained on for
token generation.
2025-07-31 14:48:01 -07:00
Sajal Kulshreshtha
ff89ba90bc fixing broken AMD driver link (#11579) 2025-07-30 12:02:54 -07:00
Daniel Hiltgen
6dcc5dfb9c Revert "CI: switch back to x86 macos builder" (#11588)
This reverts commit 9d071e6089319b37acf62bb739e3430dcb2ac0c3.
2025-07-30 08:56:01 -07:00
Daniel Hiltgen
25911a6e6b mac: disable bf16 on unsupported OS versions (#11585)
Support for bf16 was added in MacOS v14+ and attempting to enable
on older versions causes runtime failures.
2025-07-30 08:50:54 -07:00
Daniel Hiltgen
8afa6e83f2 CI: switch back to x86 macos builder (#11572) 2025-07-29 16:41:25 -07:00
Oliver Simons
ea85e27bbd Increase performance for Gemma3n models on NVGPUs by enabling CUDA Graph execution (#11525)
* Enable CUDA Graphs for gemma3n.

Similar to
https://github.com/ggml-org/llama.cpp/pull/14741,
though ollama has a slightly different model graph
than llama.cpp which requires different workaround
checks.

* Remove residual check by reshaping differently in gemma3n model

This should make the heuristics more robust
2025-07-29 12:37:06 -07:00
Jesse Gross
c116a7523d kvcache: Don't shift empty batches
When we context shift, we delete half the context and apply RoPE
with an offset to the other half. We used to RoPE across the entire
context in a single pass with a zero offset for the deleted
section. With the change to shifting in batches, we can skip any
batches where all of the offsets would be zero. This typically
reduces the number of operations by half.
2025-07-29 12:32:22 -07:00
Yoshi
3515cc377c docs: fix typos and remove trailing whitespaces (#11554) 2025-07-28 11:19:13 -07:00
Mayan EDMS
bbf66c0b96 readme: add Mayan EDMS to community integrations (#11543) 2025-07-27 15:02:52 -07:00
Jesse Gross
764be7480f kvcache: Group shift operations into batches
Currently, when we need to do a shift on the cache, it is one
RoPE operation on the entire size of the cache (per layer). In
some cases, this can create a compute graph that is larger than
the forward pass since the forward pass is working in batches.
Since we don't consider shifting in our memory estimates, it's
possible for this to cause a crash if we run out of memory.

By limiting the size of the RoPE calls to batch size chunks, we
ensure that the shift will never exceed the size of the forward
pass, since the forward pass will also contain a RoPE of the same
size. This does not have a sigificant impact on performance since
RoPE is a math operation that is mostly proportional to the size
of its inputs.

In theory defrag could have the same issue since it also creates a
compute graph outside of the forward pass, however, since it is
only copies, it does not require any working space.
2025-07-25 16:50:27 -07:00
Ruyut
b72e5adb14 CONTRIBUTING: fix typo in commit message example (#11528) 2025-07-25 14:24:06 -07:00
Patrick Devine
80b538e312 cli: catch upstream errors gracefully (#11512) 2025-07-23 22:16:55 -07:00
Jeffrey Morgan
4f8a0166cc tools: loosen tool argument parsing (#11509) 2025-07-23 21:21:29 -07:00
minxinyi
1e6eab5c33 server: use slices.Equal to simplify code (#11502) 2025-07-23 14:25:39 -07:00
Michael Yang
6c733bf0a6 s#x/exp/maps#maps# (#11506) 2025-07-23 13:23:32 -07:00
Patrick Devine
3bac5cba60 Fix GetModelInfo (#11496)
---------

Co-authored-by: Richard Lyons <frob@cloudstaff.com>
2025-07-22 13:40:47 -07:00
ycomiti
4151ef8cf7 Update linux.md (#11462) 2025-07-22 11:17:31 -07:00
likelovewant
e4ff6e6c0f Merge branch 'ollama:main' into main 2025-07-21 18:52:34 +08:00
Stefan Wärting
82da19c634 readme: add GMAI - Gradle Managed to community integrations (#11461) 2025-07-20 14:55:47 -07:00
Jeffrey Morgan
bdd9d22dfd tools: fix parsing issue when a tool name is a substring of another (#11456)
Co-authored-by: frob <rick+github@frob.com.au>
2025-07-20 14:55:14 -07:00
zmldndx
5fc38d042f readme: update argo description to support deep research (#11455) 2025-07-19 13:29:38 -07:00
likelovewant
475a11d08e Merge branch 'ollama:main' into main 2025-07-18 17:41:30 +08:00
Daniel Hiltgen
191d94289d ci: switch mac builder to arm64 (#11379)
The macos-13 is x86, while macos-13-xlarge is arm64
2025-07-17 07:33:44 -07:00
frob
802ad16ce4 docs: add the no-Modelfile function of ollama create (#9077) 2025-07-16 22:16:10 -07:00
frob
5e67f4f90e openai: allow openai endpoint to accept webp images (#11412)
Co-authored-by: Richard Lyons <frob@cloudstaff.com>
2025-07-16 21:31:49 -07:00
Haiyue Wang
e840ccb523 readme: update the llama.cpp github link (#11427) 2025-07-16 21:20:28 -07:00
Michael Yang
b4fe3adc0a compile bf16 support into ggml-metal (#11430) 2025-07-16 17:32:57 -07:00
Parth Sareen
d73f8aa8c3 cmd: add default assistant role to message construction (#11431) 2025-07-16 11:18:16 -07:00
Bruce MacDonald
92c2e8a56c api: fix unreachable status err (#11423)
StatusError was unreachable, the client always checked for error messages in the response body first, and the server always includes error messages with HTTP error status codes.
2025-07-16 11:03:28 -07:00
Marcelo Fornet
2e3fd86d48 docs: fix typo in macos.md (#11425) 2025-07-16 10:50:46 -07:00
先知
4261a3b0b2 docs: update modelfile.md to reflect current default num_ctx (#11189)
As in the commit 44b466eeb2, the default context length has been increased to 4096.
2025-07-11 15:15:00 -07:00
Jesse Gross
acef9b4c1b ggml: Use assigned layers when reporting loading stats
Reporting params.NumGPULayers can be misleading because it is the
requested number of layers, not the actual number that is loaded.
While they are often the same, there are cases where they might mismatch,
such as if the GPU backend is missing.
2025-07-11 14:21:50 -07:00
Jesse Gross
9a43994c45 ggml: Disable unused pipeline parallelism
We're not currently using it, even in cases where we could. Disabling
it improves generation performance by 10-30% with multiple GPUs.
2025-07-11 13:30:05 -07:00
Daniel Hiltgen
f8a6e88819 Only load supported models on new engine (#11362)
* Only load supported models on new engine

Verify the model is supported before trying to load

* int: testcase for all library models
2025-07-11 12:21:54 -07:00
Jesse Gross
35fda7b4af ggml: Report ordinal IDs for AMD GPUs on Windows
We don't get valid UUIDs for AMD GPUs on Windows, so the best option
is to use the ordinal IDs. This brings us in line with what we currently
do on the Ollama server - the only exception is AMD GPUs on Linux, which
falls back to using ordinal IDs. The GGML implementation has no fallback
but it doesn't appear to occur for any of the GPUs that we support.

It's also possible that there are collisions between ordinal IDs for
different libraries - however the only places where we use them are
AMD on Windows and Metal on Mac, which can never occur on the same
system.
2025-07-09 10:35:31 -07:00
Daniel Hiltgen
66fb8575ce doc: add MacOS docs (#11334)
also removes stale model dir instructions for windows
2025-07-08 15:38:04 -07:00
Daniel Hiltgen
20c3266e94 Reduce default parallelism to 1 (#11330)
The current scheduler algorithm of picking the paralellism based on available
VRAM complicates the upcoming dynamic layer memory allocation algorithm.  This
changes the default to 1, with the intent going forward that parallelism is
explicit and will no longer be dynamically determined.  Removal of the dynamic
logic will come in a follow up.
2025-07-08 12:08:37 -07:00
Daniel Hiltgen
34088dbcfb API/CLI context enhancements (#11331)
* API: expose context size of loaded models

* CLI: add context UX

This adds a column in the ps output to show the models context size.
2025-07-08 11:59:06 -07:00
likelovewant
e41dd73705 Merge branch 'ollama:main' into main 2025-07-08 17:07:24 +08:00
Parth Sareen
43107b15b9 add tool_name to api.md (#11326) 2025-07-07 16:53:13 -07:00
Parth Sareen
1f91cb0c8c template: add tool result compatibility (#11294) 2025-07-07 15:53:42 -07:00
Daniel Hiltgen
12d8ad0d38 ci: modularization (#11324)
switch a few constants to variables
2025-07-07 14:07:43 -07:00
Jesse Gross
592d21e7db Revert "ggml: Temporarily disable reporting UUIDs"
The root cause was an unclean upgrade - this code is fine.

This reverts commit 45f216a9c7.
2025-07-07 11:31:02 -07:00
Jeffrey Morgan
5a08b01f5b readme: update Ollama icon size 2025-07-05 17:20:42 -07:00
Daniel Hiltgen
4f473e224c int: add performance integration tests (#11173)
usage example:
  go test --tags=integration,perf -count 1 ./integration -v -timeout 1h -run TestModelsPerf 2>&1 | tee int.log
  cat int.log | grep MODEL_PERF_HEADER | cut -f2- -d: > perf.csv
  cat int.log | grep MODEL_PERF_DATA | cut -f2- -d: >> perf.csv
2025-07-05 16:07:09 -07:00
Daniel Hiltgen
9d60bb44cf doc: add NVIDIA blackwell to supported list (#11307) 2025-07-05 16:06:30 -07:00
Vincent RAMPAL
f371260e75 Update base image to Ubuntu 24.04 LTS (#9681) 2025-07-05 16:02:33 -07:00
Daniel Hiltgen
c9e6d7719e doc: Update link for mac install (#11288)
Favor the dmg now.
2025-07-03 09:48:45 -07:00
Daniel Hiltgen
2c4ce40334 mimic logs for layers on new engine (#11278)
This adds some extra logs to make the new engine a bit more consistent
with the llama engine.
2025-07-02 16:38:36 -07:00
XuKecheng
5d8c173529 readme: add NativeMind to community integrations (#11242) 2025-07-01 09:46:15 -07:00
Jeffrey Morgan
44b17d2bfa tools: fix parsing tool calls with empty arguments, missing required fields (#11233) 2025-06-30 08:59:03 -07:00
likelovewant
4ad87b58bb fix conflicts 2025-06-30 13:32:17 +08:00
Attogram Project
3b8b692218 readme: add ollama-bash-toolshed to community integrations (#11224) 2025-06-29 14:59:54 -07:00
Michael Yang
4129af9205 chore: cleanup comments + unused vars (#11225) 2025-06-27 11:45:33 -07:00
Jesse Gross
45f216a9c7 ggml: Temporarily disable reporting UUIDs
This is causing segfaults, so disable it. Currently UUIDs are only
used for debugging purposes, although they planned to be used in
additional ways in the future.

Bug #11211
2025-06-27 11:27:22 -07:00
Michael Yang
d0b32def60 skip quantizing per_layer_token_embd (#11207)
this tensor isn't compatible with cuda when quantized to q4_K so skip it
2025-06-26 21:49:35 -07:00
Daniel Hiltgen
11ffc36157 ci: multi-stage release process (#11001) 2025-06-26 10:32:48 -07:00
Jeffrey Morgan
ba04902670 fs/ggml: add multiplier in graph estimates (#11208) 2025-06-26 00:19:44 -07:00
Jeffrey Morgan
3944602f51 fs/ggml: add missing architecture to OllamaEngineRequired() (#11206) 2025-06-26 00:11:23 -07:00
Michael Yang
73b642e6f3 add new gemma model (#11204)
* update patches

* cherry pick metal mean kernel

* cherry pick cuda mean kernel

* gemma3n
2025-06-25 21:47:09 -07:00
Daniel Hiltgen
ad118d8b13 ci: arm sbsa fixes (#11194) 2025-06-24 21:00:15 -07:00
Daniel Hiltgen
f08534137b ci: include dependencies 2025-06-24 20:27:43 -07:00
Daniel Hiltgen
4b4a90f233 ci: pick up arm sbsa cuda libs (#11192) 2025-06-24 18:59:22 -07:00
Daniel Hiltgen
03274a6b2f ci: recombine linux amd64 binaries (#11188)
Glue the rocm and archive builds back together.
2025-06-24 18:45:01 -07:00
Devon Rifkin
cc6463ebca Merge pull request #10238 from ollama/drifkin/array-head-count-simple
ggml: fix crash for array head counts
2025-06-24 17:50:02 -07:00
Daniel Hiltgen
405d2f628f ci: rocm parallel builds on windows (#11187)
The preset CMAKE_HIP_FLAGS isn't getting used on Windows.
This passes the parallel flag in through the C/CXX flags, along
with suppression for some log spew warnings to quiet down the build.
2025-06-24 15:27:09 -07:00
Devon Rifkin
a3f7dd3e98 Merge branch 'main' into drifkin/array-head-count-simple 2025-06-24 14:20:05 -07:00
Daniel Hiltgen
c85c0ebf89 CI: switch windows to vs 2022 (#11184)
* CI: switch windows to vs 2022

* ci: fix regex match
2025-06-24 13:26:55 -07:00
Daniel Hiltgen
10a8e04a8d avoid context overflow (#11175)
For smaller context models, make sure we do not exceed the training size.
2025-06-23 15:52:50 -07:00
Daniel Hiltgen
1c6669e64c Re-remove cuda v11 (#10694)
* Re-remove cuda v11

Revert the revert - drop v11 support requiring drivers newer than Feb 23

This reverts commit c6bcdc4223.

* Simplify layout

With only one version of the GPU libraries, we can simplify things down somewhat.  (Jetsons still require special handling)

* distinct sbsa variant for linux arm64

This avoids accidentally trying to load the sbsa cuda libraries on
a jetson system which results in crashes.

* temporary prevent rocm+cuda mixed loading
2025-06-23 14:07:00 -07:00
Devon Rifkin
b2b270ad5d Merge branch 'main' into drifkin/array-head-count-simple 2025-06-23 10:37:31 -07:00
AJ
2bb69b40c7 readme: add ai-hub to community integrations (#11169) 2025-06-23 09:21:12 -07:00
Daniel Hiltgen
65bff664cb build speedups (#11142)
Enable parallel building of the GPU architectures.
2025-06-20 12:32:51 -07:00
Michael Yang
c088ac0e79 convert: utility for merging tensors (#11069) 2025-06-20 11:12:01 -07:00
Michael Yang
0a066cfd91 Reapply "feat: incremental gguf parser (#10822)" (#11114) (#11119)
* Reapply "feat: incremental gguf parser (#10822)" (#11114)

This reverts commit a6e64fbdf2.

* fix older ggufs
2025-06-20 11:11:40 -07:00
Jesse Gross
87b7af6cee ggml: Check return status for computation.
We don't check the return status after computing the graph, which
can silently lead to bad outputs if we try to keep going and future
computation succeeds. This appears to happens in certain cases on
Apple M2 devices.

Fixes #11070
2025-06-19 17:12:49 -07:00
Daniel Hiltgen
f2527b08fb int: add coverage for older models (#11137)
Verified these fail on 0.9.1 and pass on HEAD.
2025-06-19 12:10:19 -07:00
likelovewant
71a4057fcf Merge branch 'ollama:main' into main 2025-06-19 21:11:00 +08:00
likelovewant
5ab7422508 add 2025-06-19 21:05:38 +08:00
Jeffrey Morgan
8bcb3125c1 benchmark: remove unused benchmark test (#11120)
Removes a test under benchmark/ that is unused
2025-06-18 12:58:50 -07:00
Jeffrey Morgan
6baf1e31e2 Revert "Revert "ggml: Export GPU UUIDs" (#11115)" (#11117)
Reverts PR #11115. The original change was mistakingly reverted instead of #10822
2025-06-18 07:30:49 -07:00
Jeffrey Morgan
ed567ef43b Revert "ggml: Export GPU UUIDs" (#11115)
This reverts commit aaa7818000.
2025-06-18 05:45:00 -07:00
Jeffrey Morgan
a6e64fbdf2 Revert "feat: incremental gguf parser (#10822)" (#11114)
This reverts commit 6b04cad7e8.
2025-06-18 05:42:44 -07:00
曹家巧
60cfa2a203 cache: fix comment function name in cache.go (#11110) 2025-06-18 05:21:45 -07:00
Jeffrey Morgan
55bbf3b4a1 tools: return empty arguments object instead of null (#11113) 2025-06-18 05:20:43 -07:00
Jeffrey Morgan
6bda1d2479 tools: fix parsing tool calls without any parameters (#11101)
Fixes issue where tool calls that don't expect any parameters were
not being parsed. This also fixes two additional issues: one where
2+ tool calls would not be correctly parsed, and cases where tool calls
with invalid parameters would still get parsed
2025-06-17 10:51:43 -07:00
likelovewant
50f2219dd6 Merge branch 'ollama:main' into main 2025-06-18 00:20:43 +08:00
Jeffrey Morgan
9e125d884c model: treat 'user defined' tokens as special tokens (#11077) 2025-06-16 16:03:16 -07:00
Michael Yang
a6fbfc880c gguf: fix write order (#11068)
* ggml: test write gguf order
* ggml: fix write tensor order
2025-06-16 10:42:32 -07:00
NGC13009
502028968d readme: add ollama-launcher to community integrations (#11080) 2025-06-15 21:27:49 -07:00
Phil
5a8eb0e151 readme: add GPTranslate to community integrations (#11071) 2025-06-14 08:54:03 -07:00
Jeffrey Morgan
9f8a18ec05 tools: loosen tool parsing to allow for more formats (#11030) 2025-06-12 14:18:54 -07:00
Michael Yang
6b04cad7e8 feat: incremental gguf parser (#10822)
* incremental gguf parser
* gguf: update test to not rely on gguf on disc
* re-use existing create gguf
* read capabilities from gguf kv
* kv exists
* update tests
* s/doneFunc/successFunc/g
* new buffered reader

---------

Co-authored-by: Bruce MacDonald <brucewmacdonald@gmail.com>
2025-06-12 11:04:11 -07:00
Michael Yang
45f56355d5 feat: uneven splits (#11048)
The current splitDim function only operates on tensors that are split evenly which isn't always the case, e.g. a QKV tensor. This change allows the function to be used for arbitrary splits
2025-06-11 12:10:54 -07:00
Michael Yang
0dabb4ef6a skip tokenizer.model if possible (#11050)
if tokenizer.json is already copied, skip tokenizer.model
2025-06-11 12:10:35 -07:00
Michael Yang
2e77aa1ae7 use nn.Linear in place of ml.Tensor (#11049)
while nn.Linear.Forward isn't applicable for sparse MLP, it's still
a nice container for the tensors
2025-06-11 12:10:15 -07:00
Attogram Project
deaabe292d readme: add ollama-multirun to community integrations (#11038) 2025-06-10 14:14:51 -07:00
Jeffrey Morgan
af21a5ac39 readme: update quickstart link text to Gemma 3 2025-06-10 09:34:23 -07:00
Jeffrey Morgan
f63d7f68eb readme: update quickstart example to Gemma 3 2025-06-10 09:33:54 -07:00
Daniel Hiltgen
82ad1dbc07 mac: handle "keep" named apps (#11031)
When a user elects to keep the existing app, the
new Ollama is named `Ollama 2.app`
This fixes the app startup flow to handle this naming pattern.
2025-06-09 16:29:57 -07:00
Daniel Hiltgen
feeabdadd2 spawn desktop quickly (#11011)
Give the desktop app a hint to start fast.
2025-06-08 09:34:52 -07:00
Krzysztof Jeziorny
fc0309615e docs: update link to AMD drivers in linux.md (#10973) 2025-06-06 23:30:04 -04:00
Jeffrey Morgan
09d308d6b6 Revert "server: add model capabilities to the list endpoint (#10174)" (#11004)
This reverts commit 0943001193.
2025-06-06 23:29:14 -04:00
Daniel Hiltgen
a8ed68bd93 launch app hidden (#10962)
When starting the app in the background, start it hidden.
2025-06-06 14:06:29 -07:00
Daniel Hiltgen
2ae65ae471 win: handle more than 2048 processes (#10997)
Fix an array out of bounds crash
2025-06-06 14:06:09 -07:00
Devon Rifkin
a3b6886b7d move thinking logic into its own package (#10990)
move thinking logic into its own package
2025-06-06 12:02:20 -07:00
Hunter Wittenborn
c6a6d7294d docs: fix typo in development.md (#10998) 2025-06-06 12:07:29 -04:00
Devon Rifkin
2cf007c9d1 Merge pull request #10987 from ollama/drifkin/export-thinking-parser
export ThinkingParser
2025-06-05 12:19:14 -07:00
Devon Rifkin
0683efa637 export ThinkingParser 2025-06-05 10:22:32 -07:00
JasonHonKL
0943001193 server: add model capabilities to the list endpoint (#10174) 2025-06-04 11:39:48 -07:00
HardCodeDev
5c42800fca readme: add SimpleOllamaUnity to community integrations (#10817) 2025-05-30 19:50:16 -07:00
Parth Sareen
65f10c2823 tools: resiliency upgrade to name and arg extraction from template (#10917) 2025-05-30 15:18:09 -07:00
Jesse Gross
aaa7818000 ggml: Export GPU UUIDs
This enables matching up devices and information reported by the backend
with system management libraries such as nvml to get accurate free
memory reporting.
2025-05-29 14:01:26 -07:00
Jesse Gross
f15ffc4320 llm: Make "POST predict" error message more informative
"POST predict" basically means that the runner has crashed, which
can have many reasons. However, many people think this is a specific
error and either report only this message or group together unrelated
bugs. This replaces it with a more friendly and helpful message.
2025-05-29 09:41:19 -07:00
likelovewant
d008f108cc Merge branch 'ollama:main' into main 2025-05-29 20:58:26 +08:00
Devon Rifkin
5f57b0ef42 add thinking support to the api and cli (#10584)
- Both `/api/generate` and `/api/chat` now accept a `"think"`
  option that allows specifying whether thinking mode should be on or
  not
- Templates get passed this new option so, e.g., qwen3's template can
  put `/think` or `/no_think` in the system prompt depending on the
  value of the setting
- Models' thinking support is inferred by inspecting model templates.
  The prefix and suffix the parser uses to identify thinking support is
  also automatically inferred from templates
- Thinking control & parsing is opt-in via the API to prevent breaking
  existing API consumers. If the `"think"` option is not specified, the
  behavior is unchanged from previous versions of ollama
- Add parsing for thinking blocks in both streaming/non-streaming mode
  in both `/generate` and `/chat`
- Update the CLI to make use of these changes. Users can pass `--think`
  or `--think=false` to control thinking, or during an interactive
  session they can use the commands `/set think` or `/set nothink`
- A `--hidethinking` option has also been added to the CLI. This makes
  it easy to use thinking in scripting scenarios like
  `ollama run qwen3 --think --hidethinking "my question here"` where you
  just want to see the answer but still want the benefits of thinking
  models
2025-05-28 19:38:52 -07:00
Patrick Devine
aa25aff10d client: add request signing to the client (#10881)
If OLLAMA_AUTH is set, sign each request w/ a timestamp and pass the signature in the token header
2025-05-27 16:50:57 -07:00
Jesse Gross
ea79003180 kvcache: Skip computing causal mask for worst case graph reservation
Computing an attention mask for a large context and max batch is
expensive - over 100ms. Models like Gemma3 that have multiple types
of caches and custom attention masks need to do this 4 times, so this
adds approximately 500ms to startup time when using 128k context

When we are reserving the worst case graph, we don't need the mask,
only its shape, so we can skip this.
2025-05-27 14:25:15 -07:00
Kyle Steere
9239a254e0 server: abort download on empty digest
Signed-off-by: Kyle Steere <kyle.steere@chainguard.dev>
2025-05-27 11:28:48 -07:00
Parth Sareen
066d0f4746 tools: relax JSON parse constraints for tool calling (#10872) 2025-05-26 18:59:06 -07:00
Parth Sareen
aea6fb9b58 tools: remove newline stripping (#10869) 2025-05-26 17:16:00 -07:00
RAPID ARCHITECT
012cf65340 readme: add AWS Strands Agents SDK example to community integrations (#10865) 2025-05-26 12:05:03 -07:00
Min Yoo
a45231af47 readme: Add macLlama to community integrations (#10790)
This commit updates the README to include macLlama within the community integrations section.

macLlama is a native macOS application built for lightweight and efficient LLM interaction.  Key features include:

*   **Lightweight & Native:** Designed to be resource-friendly and perform optimally on macOS.
*   **Chat-like Interface:** Provides a user-friendly, conversational interface.
*   **Multiple Window Support:** Allows users to manage multiple conversations simultaneously.

The primary goal of macLlama is to offer a simple and easy-to-run LLM experience on macOS.
2025-05-24 13:18:32 -07:00
Daniel Hiltgen
2307fc2bcd tests: drop llama3.2-vision embedding tests (#10837) 2025-05-24 13:17:53 -07:00
frob
6623898198 docs: remove unsupported quantizations (#10842) 2025-05-24 13:17:26 -07:00
frob
eda472df1b server: add hint to the error message when model path access fails (#10843) 2025-05-24 13:17:04 -07:00
Jesse Gross
f18e0cb550 ml: Improve slog formatting for BackendMemory 2025-05-23 20:08:23 -07:00
likelovewant
68b58c5cb8 Merge branch 'ollama:main' into main 2025-05-24 09:28:53 +08:00
Parth Sareen
e8b981fa5d tools: refactor tool call parsing and enable streaming (#10415) 2025-05-23 14:19:31 -07:00
Parth Sareen
884d26093c llama: add minimum memory for grammar (#10820) 2025-05-22 18:53:31 -07:00
Jesse Gross
1f371ea92f ml: Panic rather than return error on tensor allocation failure
FromFloatSlice and FromIntSlice return an error if the shape doesn't
match the passed data or if memory can't be allocated. Since these
are inputs, the memory being allocated is system memory rather than VRAM.

In many cases, the caller can't really handle the error and panics.

Empty and Zeros directly panic if they can't allocate memory.

This makes things consistent by panicing for the first two cases,
removing a fair amount of error handling code. This is also consistent
with how Go typically handles these situations.
2025-05-22 14:38:09 -07:00
Jesse Gross
73d6a82cce ollamarunner: Memory usage reporting
This provides granular information about the backend memory allocations
required by the runner:
 - Per backend
 - Per layer
 - Weights, cache and graph
 - Allocation status

This can be used for debugging and validating memory estimates.
2025-05-22 14:38:09 -07:00
Jesse Gross
6db8a3771c ggml: Report graph memory for failed allocations
GGML has a function to report the allocated size of a backend buffer.
However, this returns 0 if we tried to allocate a buffer and it failed.
For memory management purposes, it's important to know how much we were
trying to allocate. This extends the API to report attempted sizes for
all buffers and whether it succeeeded.
2025-05-22 14:38:09 -07:00
Daniel Hiltgen
d950ff12c0 sched: fix runner leak during reloading unload (#10819)
When the same model is being reloaded rapidly with client connections
being canceled before the model finishes loading, the queued unload
event could cause a leak of runners by deleting a different runner from
the loaded list.
2025-05-22 14:31:36 -07:00
Michael Yang
adff143bcd fix: mllama quality (#10807)
* fix mllama convert

- transform attn_gate and ffn_gate
- swap attention heads for vision models

* fix mllama

the mlp gate which was applied in the wrong place
2025-05-22 11:30:49 -07:00
Bruce MacDonald
fbe6ae285a server: improve tensor quantization fallback logic (#10806)
Fall back to alternative quantization types when a tensor's dimensions aren't divisible by the block size required for the original desired quantization type. If retried quantization types fail, the system ultimately falls back to F16 (half-precision floating point) which has a block size of 1 and can handle any tensor dimension.
2025-05-22 10:48:08 -07:00
Daniel Hiltgen
fdd4d479a3 integration: add qwen2.5-vl (#10815)
Replace the older llava model with qwen2.5 for vision tests
Skip split-batch test on small VRAM systems to avoid excessive test time
2025-05-22 09:12:32 -07:00
Michael Yang
61aeaf7e81 remove support for multiple ggufs in a single file (#10722)
* remove support for multiple ggufs in a single file

this was an attempt to make it easier to import multimodal models into
ollama. this was rarely used and error prone so remove it

* fix: create fused model from blob
2025-05-21 13:55:31 -07:00
Daniel Hiltgen
7359b02707 win: detect background upgrade in progress (#10785)
Give the user a helpful error instead of showing
connection refused errors.
2025-05-21 10:46:56 -07:00
Michael Yang
c890011322 feat: port qwen2 model (#10782) 2025-05-21 10:21:24 -07:00
Michael Yang
e0ed984cde feat: qwen3 dense and sparse models (#10708)
* feat: qwen3 dense
* feat: qwen3moe
* fix llama4 moe
2025-05-21 10:21:07 -07:00
Michael Yang
139f84cf21 fix cmakelists (#10804)
this fixes an issue introduced in #10788
2025-05-21 09:52:52 -07:00
Michael Yang
375839ea2d chore: disable debug in binary libraries (#10788) 2025-05-21 09:39:38 -07:00
Michael Yang
69b2fe9282 fix: qwen25vl assign samebatch in multimodal input (#10789)
setting samebatch on the vision start token is problematic because it
will be shared with other inputs that also use images. this will cause
the input to be cached and the runner will not see SameBatch. SameBatch
will also be incorrect since it may be for a different image.

assigning samebatch to the input tokens resolves this by ensure it's
assigned correctly to inputs corresponding to the image.

not setting same batch correctly may cause panics during inference since
images are no longer guaranteed to be in the same batch.
2025-05-21 09:39:20 -07:00
Michael Yang
9ed8bf14cb ml: add more rope options (#10775) 2025-05-20 15:51:08 -07:00
DarkCaster
e6a800ca11 llama: fix incorrect initialization of C.struct_common_sampler_cparams.penalty_present (#10779) 2025-05-20 10:41:15 -07:00
Michael Yang
ff180c3466 fix llama and mistral3 models (#10774)
* fix llama model

* fix mistral3.1 model

do not set default vision layers
2025-05-19 15:06:35 -07:00
Jesse Gross
3fe74fba42 llm: Use first layer as memory buffer in estimation
This is a partial revert of 0478d44 "Fixed over vram allcation dure to
small initial layer sizes."

Previously we used the size of the first layer as an extra reserved
amount of space to buffer our memory estimates. The above commit
changed this to use the largest layer. However, this had performance
impacts on more models than the original commit was trying to fix.

There is just a heuristic without an ideal solution so this goes back
to the historic behavior.

Fixes: #10765, #10756, #10752, #10726
2025-05-19 14:03:34 -07:00
Daniel Hiltgen
1a0cfd080a avoid kv truncation during create (#10761) 2025-05-19 13:54:54 -07:00
Jesse Gross
94ab428e3f ggml: Seperate tensor load from backend creation
Currently, when the backend is created, the tensors are loaded at the
same time, which is a slow operation. This separates them to be two
steps:
 - Create backend, including enumerating tensors and memory allocation
 - Loading tensor data

This allows more flexibility in managing model loading.
2025-05-19 09:54:22 -07:00
Jesse Gross
d755577473 llm: Estimate projector memory correctly for Ollama engine
The Llama engine always places vision projectors on the first GPU
if one exists. However, the Ollama engine groups it with the output
layer, which means the projector is only offloaded if all other layers
are offloaded. The memory estimation code always assumes the former
layout - this changes it to use the correct layout based on the engine.

This addresses two impacts of the current behavior:
 - In multi-GPU setups, we can crash with OOM errors when we try to
   allocate memory on a full GPU while another still has space.
 - If the vision projector is large, it may prevent us from offloading
   anything when we could have fit some of the text layers.
2025-05-19 09:52:48 -07:00
Jesse Gross
a2cc8571c5 llm: Consistently track unassigned model data
In some cases, if we fail to assign a piece of the model to a GPU then
we lose track of this data. Although it doesn't change the memory
allocation, it does affect the total size of the model reported by
tools such as ollama ps (and also the percent offloaded).

This makes it look like setting num_gpu isn't reflected in ollama ps,
which isn't true but the offloading percent may appear to not change.

Spreading the model across more GPUs will continue to impact the
reported total size of the model.
2025-05-19 09:52:48 -07:00
Ronald Wilson
7edfdd2f5f readme: add TinyNotepad to community integrations (#10763)
This PR adds Tiny Notepad, a lightweight, notepad-like interface to chat with local LLMs via Ollama. 

- It’s designed as a simple, distraction-free alternative. 
- The app supports basic note-taking, timestamped logs, and model parameter controls. 
- Built with Tkinter, it runs entirely offline and available via PyPI.

Aims to provide a lightweight easy to run and install interface for ollama.
2025-05-18 12:43:22 -07:00
Michael Yang
333e360422 model: handle multiple eos tokens (#10577)
* get eos_token_id from generation_config.json

* refactor

* include both ids and strings in trace

* comments

* remove special case for gemma3 special vocab (#10743)
2025-05-16 13:40:23 -07:00
likelovewant
cb104a2082 Merge branch 'ollama:main' into main 2025-05-16 08:52:17 +08:00
Daniel Hiltgen
27da2cddc5 Fix lingering Q4_0 help reference (#10720) 2025-05-15 16:33:23 -07:00
Bruce MacDonald
feb8923ada cmd: add ellipses to truncated show metadata (#10717)
When a piece of information has been truncated in the show output an ellipses to indicate that more data has not been displayed
2025-05-15 15:45:52 -07:00
Jesse Gross
fe623c2cf4 ollamarunner: Multi-modal worst case graph
We currently preallocate compute graph memory for the worst case
batch of text tokens. This adds support for doing the same for
images.

Note that image models are more complicated than text models in
how they process their inputs so there may be cases where this
approach isn't completely generic for all models. It covers all
currently supported models though.
2025-05-15 13:46:20 -07:00
Jesse Gross
3c14461d5d ollamarunner: Separate text and multimodal graphs
For some multimodal models (such as gemma3), we create a single
graph that generates the image embedding and then use this in the
text model. The embedding tensor is completely opaque to the runner.

However, this doesn't work if we need to use the embedding in multiple
batches. This can arise if the embedding is larger than the batch size.
In these cases (as with llama4), we would like to create views that
are more appropriately sized. However, if we do this then the original
source tensor is used in multiple graphs, which isn't allowed. To
avoid that problem, models with this pattern compute the embedding
tensor on first use and recreate the individual views. There is no
longer a single vision and text graph.

This codifies the pattern of separating vision and text graphs. The
logic of computing tensors on demand is moved to the runner, so models
no longer have to worry about this. It also gives the runner visibility
into the multimodal tensors, which is important for memory management.
2025-05-15 13:46:20 -07:00
Jesse Gross
499ae7311f ollamarunner: Base cached tokens on current prompt
When we restore a sequence from the cache, we split the prompt into
the already used tokens (stored in the cache) and new tokens that
need to be processed. Currently, the references to the used tokens
are coming from the stored previous sequence.

However, even though we know that the used tokens are semantically
equivalent to the prefix of the prompt, tokens can contain pointers
which are no longer valid. As a result, it is better to get the
used tokens from the prompt, which has currently valid pointers.

This doesn't currently have any impact because it isn't possible
to reuse the pointers (which are tensors) anyways. However, it
becomes an issue once we can.
2025-05-15 13:46:20 -07:00
Michael Yang
ef202789fa fix pixel values padding (#10718)
* panic if trying to pad 4d

* fix pixel values padding
2025-05-15 13:44:44 -07:00
Michael Yang
55760195e6 fix mllama conversion (#10716)
cross attention Q and K projections needs to have their heads swapped, similar to non-cross attention Q and K tensors
2025-05-15 12:15:01 -07:00
Bruce MacDonald
bd68d3ae50 ggml: update qwen25vl vision size estimate (#10711) 2025-05-14 16:42:30 -07:00
Daniel Hiltgen
ff80718e9c fix crash in old clients with quantization progress (#10710)
Older clients assumed the digest was at least 19 characters long so increase the size
of the dummy digest to avoid array out of bounds crashes.
2025-05-14 14:54:18 -07:00
Bruce MacDonald
0aa8b371dd model: add Qwen2.5-VL support (#10385) 2025-05-13 20:58:02 -07:00
Michael Yang
23125648b8 chore: update mllama to use ollama engine (#10637) 2025-05-13 17:36:02 -07:00
tej
0478d440f0 Fixed over vram allcation dure to small initial layer sizes.
Co-authored-by: Tej Kiran <kiran.tej@amd.com>
Co-authored-by: Michael Yang <mxyng@pm.me>
Co-authored-by: Tej Kiran <itej89@gmailcom>
2025-05-13 16:42:39 -07:00
Parth Sareen
8cc33f4c2b llama: fix memory leak for grammar (#10696) 2025-05-13 15:39:27 -07:00
Jeffrey Morgan
f46df4e5d2 llama: fix defrag patch to defragment when no slots are available (#10695) 2025-05-13 14:02:08 -07:00
Daniel Hiltgen
c6bcdc4223 Revert "remove cuda v11 (#10569)" (#10692)
Bring back v11 until we can better warn users that their driver
is too old.

This reverts commit fa393554b9.
2025-05-13 13:12:54 -07:00
Jeffrey Morgan
4b903f088a llama: fix crash on snowflake embedding model (#10690) 2025-05-13 13:11:11 -07:00
Jeffrey Morgan
c7f4ae7b9c server: add webp image input support (#10653) 2025-05-12 20:41:42 -07:00
Michael Yang
526b2ed102 fix vocabulary (#10679) 2025-05-12 17:29:46 -07:00
Bruce MacDonald
a7240c6d63 models: remove unused qwen2vl processing (#10677) 2025-05-12 16:08:42 -07:00
Daniel Hiltgen
9d6df90805 Follow up to #10363 (#10647)
The quantization PR didn't block all unsupported file types,
which this PR fixes.  It also updates the API docs to reflect
the now reduced set of supported types.
2025-05-12 15:23:31 -07:00
Jeffrey Morgan
0cefd46f23 llama: update to commit de4c07f93 (#10655) 2025-05-12 12:17:26 -07:00
Bruce MacDonald
ad035ad595 convert: quantize from safetensors needs kv (#10675)
When creating a quantized model from safetensors we
need the array KV values to be loaded.Changing this
value to -1 loads the KV values on the returned
layer to be used and saved during quantization.
2025-05-12 12:04:20 -07:00
Michael Yang
f95a1f2bef feat: add trace log level (#10650)
reduce prompt log to trace level
2025-05-12 11:43:00 -07:00
HardCodeDev
82a9e9462a readme: add UnityCodeLama to community integrations (#10665) 2025-05-11 13:44:51 -07:00
HardCodeDev
76724e2f29 readme: add OllamaPlusPlus C++ library to community integrations (#10664) 2025-05-11 13:40:41 -07:00
frob
ecf14a220f llama: allocate grammar buffer based on schema length (#10649) 2025-05-10 11:57:30 -07:00
frob
69ce44b33c envconfig: Remove no longer supported max vram var (#10623)
Co-authored-by: Richard Lyons <frob@cloudstaff.com>
2025-05-10 11:31:04 -07:00
Michael Yang
5969674cf1 feat: add threshold to dump options (#10639)
ml.Dump will preserve default values if not specified
2025-05-10 11:27:15 -07:00
AliAhmedNada
867d75b21e readme: add ojira to community integrations (#10648) 2025-05-10 10:36:40 -07:00
Bruce MacDonald
3fa78598a1 cmd: strip single quotes from image page (#10636) 2025-05-09 18:05:43 -07:00
Michael Yang
0d6e35d3c6 fix: stream accumulator exits early (#10593)
the stream accumulator exits as soon as it sees `api.ProgressResponse(status="success")` which isn't strictly correctly
since some requests may have multiple successes, e.g. `/api/create` when the source model needs to be pulled.
2025-05-08 13:17:30 -07:00
Devon Rifkin
20c5fd39c8 Merge branch 'main' into drifkin/array-head-count-simple 2025-05-08 11:46:52 -07:00
Michael Yang
6e9a7a2568 lint: enable usetesting, disable tenv (#10594) 2025-05-08 11:42:14 -07:00
Michael Yang
b585a58121 chore: remove unused ZipReader type (#10621) 2025-05-08 11:17:41 -07:00
Jeffrey Morgan
fa9973cd7f api: remove unused sampling parameters (#10581) 2025-05-08 08:31:08 -07:00
Jesse Gross
3d9498a425 ollamarunner: Use correct constant to remove cache entries
The correct constant to remove all entries to the end of the sequence
for the Ollama engine is math.MaxInt32. -1 is used by the old engine.

The impact of this is currently minimal because it would only occur
in situations that are not supported by the implemented models or
rarely used options.
2025-05-07 17:26:15 -07:00
Daniel Hiltgen
3098c8b29b CI: trigger downstream release process (#10508) 2025-05-07 10:35:12 -07:00
Daniel Hiltgen
5e380c3b42 sched: fix race leading to orphaned runners (#10599)
If a model is loading, and the request context is canceled during the load
by a client closing the connection, and another request is inbound for the
same model with a different configuration (context size, etc.) thus requiring
a reload, two unload events can be in flight.  The first shuts down the
original model load, but the second one caused the loss of the new
reloading runner reference, thus triggering the leak.

The primary fix is detecting the duplicate unload and ignoring the second
instance.  The load routine is also hardened to ensure we detect
clobbering an already present runner and unload it with a warning.
2025-05-07 09:38:17 -07:00
Jeffrey Morgan
392de84031 api: remove unused RetrieveModelResponse type (#10603) 2025-05-06 23:08:03 -07:00
likelovewant
5d967d59b1 Merge branch 'ollama:main' into main 2025-05-07 10:52:15 +08:00
Daniel Hiltgen
af31ccefc0 fix data race in WriteGGUF (#10598)
err in the go routine should not be shared with the outer scope
2025-05-06 17:36:38 -07:00
Daniel Hiltgen
fa393554b9 remove cuda v11 (#10569)
This reduces the size of our Windows installer payloads by ~256M by dropping
support for nvidia drivers older than Feb 2023.  Hardware support is unchanged.

Linux default bundle sizes are reduced by ~600M to 1G.
2025-05-06 17:33:19 -07:00
Aharon Bensadoun
307e3b3e1d readme: add Flufy to community integrations (#9719) 2025-05-06 14:47:35 -07:00
Devon Rifkin
4090aca97b server: send 405 instead of 404 for unallowed methods (#10275)
Fixes: #5483
2025-05-06 14:45:37 -07:00
Michael Yang
92ce438de0 server: remove internal cmd (#10595) 2025-05-06 13:05:01 -07:00
Daniel Hiltgen
424810450f Move quantization to new backend (#10363)
* Move quantization logic to GGML via new backend

This moves the model aware logic to Go code and calls GGMLs quantization code for model creation.

* Remove "add model quantizations"

This is no longer needed now that quantization is implemented in Go+GGML code directly.
2025-05-06 11:20:48 -07:00
Michael Yang
95e744beeb discover: fix compiler warnings (#10572) 2025-05-06 10:49:22 -07:00
Jeffrey Morgan
3b2d2c8326 api: remove unused or unsupported api options (#10574)
Some options listed in api/types.go are not supported in
newer models, or have been deprecated in the past. This is
the first of a series of PRs to clean up the API options
2025-05-05 14:54:40 -07:00
Michael Yang
d931ee8f22 create blobs in parallel (#10135)
* default max term height
* error on out of tree files
2025-05-05 11:59:26 -07:00
Jesse Gross
7073600797 ggml: Reduce log level of "key not found"
Most of the time this is not an error.
2025-05-05 11:17:32 -07:00
Daniel Hiltgen
b1c40138da win: lint fix (#10571) 2025-05-05 11:08:12 -07:00
Ashok Gelal
17466217e5 Hide empty terminal window (#8668)
This hides the LlamaServer blank window when chatting outside of the terminal (say like with an app like Msty). This has no other side effects when invoking it the regular way.
2025-05-05 09:06:46 -07:00
Jeffrey Morgan
1703d1472e server: fix panic when runner.Options is nil (#10566) 2025-05-05 09:01:33 -07:00
Jeffrey Morgan
913905028b all: fix cgo compiler warnings on windows (#10563) 2025-05-05 08:02:39 -07:00
湛露先生
7e5c8eee5c file close check and close. (#10554)
Signed-off-by: zhanluxianshen <zhanluxianshen@163.com>
2025-05-04 15:37:59 -07:00
Daniel Hiltgen
6a74bba7e7 win: ensure ollama paths come first (#10549)
For all search path env vars make sure our dirs are first
to avoid potentially finding other incompatible libraries
on the users system.

Also fixes a minor build script glitch for windows rocm
2025-05-03 13:11:48 -07:00
Daniel Hiltgen
76ea735aaf sched: logging improvements (#10550)
This enhances our logging in the scheduler.  The initial "waiting for server" log
no longer claims an initial error state (now "not responding" which better reflects
the actual state).  Runners now have slog wiring to report more details about the
runner, including PID.
2025-05-03 12:01:56 -07:00
aritra saha
dd1d4e99e7 readme: add llama 4 models (#10530) 2025-05-02 19:45:02 -07:00
Jesse Gross
a6ef73f4f2 ggml: Fix race that resulted in "context canceled" when loading
Successfully completing processing with an errgroup cancels the
associated context. However, we also have a goroutine that is checking
for cancelation of the context. As a result, there is a race where
the goroutine can pick up the cancelation and report an error,
replacing the sucessful error message.

To avoid that, this replaces the goroutine with a cancelation check
when we are reading files. This also has the advantage of stopping
all reads relatively quickly on error and also ensuring that there are
no outstanding I/O operations when we return in this case.

The downside is that if a file read blocks forever (for example, over
the network) then cancelation of the context effectively won't be
honored. However, this is also true for other smaller files we read
and the tensors are read in small chunks (128K), so it's consistent
and better on balance overall.
2025-05-02 13:43:25 -07:00
Jesse Gross
c2f5d6662b ollamarunner: Re-enable worst case graph preallocation.
Worst case graph preallocation was disabled by a27462b
"ollamarunner: Temporarily disable worst case graph preallocation"
since it caused crashes with large batches when not using the GPU.

This backports upstream llama.cpp commit f057808
"ggml: Don't assert fail when tensor data changes (#13222)", which
fixes the underlying bug and allows reverting the previous workaround.
2025-05-02 12:22:47 -07:00
Harsh Nevse
57fb759f3c readme: update link to langchain in community integrations (#10465) 2025-05-01 23:08:51 -07:00
Jeffrey Morgan
8dd12c873d llama: update to commit e1e8e099 (#10513) 2025-05-01 18:24:09 -07:00
frob
e6d2d04121 image: add vision capability for projector-based models (#10509)
Co-authored-by: Richard Lyons <frob@cloudstaff.com>
2025-05-01 16:50:20 -07:00
Jesse Gross
074bac8447 kvcache: Log batch size if we can't find a slot
In some cases, we can't find a cache slot when using sliding window
attention. It would be helpful in this (and other cases) to know what
the batch size is.

Bug #10127
2025-05-01 16:26:36 -07:00
Jesse Gross
8e8f2c6d67 ollamarunner: Fix memory leak when processing images
The context (and therefore associated input tensors) was not being
properly closed when images were being processed. We were trying to
close them but in reality we were closing over an empty list, preventing
anything from actually being freed.

Fixes #10434
2025-05-01 15:15:24 -07:00
AliAhmedNada
938e8447e8 readme: add Jirapt project to community integrations (#10522) 2025-05-01 14:49:47 -07:00
aritra saha
d5d5f0c445 readme: change granite3.2 to granite3.3 (#10525)
Update the list for readme
2025-05-01 14:46:09 -07:00
likelovewant
5478571e92 Merge branch 'ollama:main' into main 2025-05-01 18:56:54 +08:00
Michael Yang
a7835c6716 fix: write gguf padding (#10510)
* add gguf_test

* fix padding

padding was being added to offset but not to the running count
2025-04-30 17:59:31 -07:00
Devon Rifkin
ad3c7c9bda strip out thinking tags in message history for qwen3 & r1 (#10490)
* strip out thinking tags in message history for qwen3 & r1

This is in advance of "proper" support where we'll make reasoning
configurable and we'll parse out thinking/reasoning tags and provide
them to the caller. These models expect there to be no thinking tags in
the message history, so this should improve quality

* parse model names instead of hacky prefix check
2025-04-30 13:57:45 -07:00
Daniel Hiltgen
415c8fcc3d Fix "Stopping..." scheduler hang (#10487)
* Adjust initial scheduler refCount

Ensure we only set the refCount on success

* sched: fix lock order inversion deadlock

Under certain race conditions, there was a scenario where the scheduler would
get into a deadlock while trying to update free space information while a model
was trying to unload.
2025-04-30 11:26:52 -07:00
Daniel Hiltgen
718eda1b3e Narrow set of paths we load GGML from (#10485)
Users may have other incompatible GGML installs on their systems.
This will prevent us from trying to load them from the path.
2025-04-30 11:25:22 -07:00
Shahin R
421b7edeb4 readme: add link to lumina, a lightweight React frontend client (#10378) 2025-04-30 09:50:47 -07:00
batuhankadioglu
7b68e254c2 all: update several golang.org/x packages (#10436) 2025-04-29 16:51:09 -07:00
Daniel Hiltgen
7bec2724a5 integration: fix embedding tests error handling (#10478)
The cleanup routine from InitServerconnection should run in the defer of the test case to properly detect failures and report the server logs
2025-04-29 11:57:54 -07:00
Jesse Gross
a27462b708 ollamarunner: Temporarily disable worst case graph preallocation
When we later have a large batch running purely on a CPU, this
results the error:
GGML_ASSERT(talloc->buffer_id >= 0)

Disabling this means that we will incrementally reallocate memory
as the graph grows.

Fixes #10410
2025-04-29 11:04:58 -07:00
crStiv
6bf0b8193a readme: fix typos (#10399) 2025-04-29 10:30:44 -07:00
Devon Rifkin
db428adbb8 Merge pull request #10468 from ollama/drifkin/num-parallel-1 2025-04-29 10:21:36 -07:00
Devon Rifkin
fe5b9bb21b lower default num parallel to 2
this is in part to "pay" for #10452, which doubled the default context length. The combination isn't fully neutral though, because even though the old 4x2k limit and the new 2x4k limit are memory equivalent, the 1x fallback is larger with 4k
2025-04-29 02:04:14 -07:00
Devon Rifkin
6ec71d8fb6 Merge pull request #10452 from ollama/drifkin/4096-context-length
config: update default context length to 4096
2025-04-28 17:13:51 -07:00
Devon Rifkin
44b466eeb2 config: update default context length to 4096 2025-04-28 17:03:27 -07:00
Devon Rifkin
a25f3f8260 Merge pull request #10451 from ollama/revert-10364-drifkin/context-length
Revert "increase default context length to 4096"
2025-04-28 17:02:10 -07:00
Devon Rifkin
dd93e1af85 Revert "increase default context length to 4096 (#10364)"
This reverts commit 424f648632.
2025-04-28 16:54:11 -07:00
Devon Rifkin
d2ee599dcf load arrays with up to 1024 elements when estimating
This mirrors the old behavior before #10382
2025-04-27 13:45:13 -07:00
Devon Rifkin
6ed8898590 ggml: fix crash for array head counts
If it's an array, it uses the max value in the array

If array values for head counts becomes more popular, we can consider a
more invasive change like #10225 to calculate more accurate estimates.

Fixes: #9984
2025-04-27 11:38:06 -07:00
Michael Yang
5cfc1c39f3 model: fix build (#10416) 2025-04-25 19:24:48 -07:00
Michael Yang
f0ad49ea17 memory 2025-04-25 16:59:20 -07:00
Michael Yang
7ba9fa9c7d fixes for maverick 2025-04-25 16:59:20 -07:00
Michael Yang
8bf11b84c1 chunked attention 2025-04-25 16:59:20 -07:00
Michael Yang
470af8ab89 connect vision to text 2025-04-25 16:59:20 -07:00
Michael Yang
178761aef3 image processing
Co-authored-by: Patrick Devine <patrick@infrahq.com>
2025-04-25 16:59:20 -07:00
Michael Yang
f0c66e6dea llama4 2025-04-25 16:59:20 -07:00
Michael Yang
54055a6dae fix test 2025-04-25 16:59:01 -07:00
Michael Yang
340448d2d1 explicitly decode maxarraysize 1024 2025-04-25 16:59:01 -07:00
Michael Yang
ced7d0e53d fix parameter count 2025-04-25 16:59:01 -07:00
Michael Yang
a0dba0f8ae default slice values 2025-04-25 16:59:01 -07:00
Michael Yang
5e20b170a7 update comment 2025-04-25 16:59:01 -07:00
Michael Yang
d26c18e25c fix token type 2025-04-25 16:59:01 -07:00
Michael Yang
8d376acc9b zero means zero
use a default of 1024 when asking for zero is confusing since most calls
seem to assume 0 means do not ready any data
2025-04-25 16:59:01 -07:00
Michael Yang
dc1e81f027 convert: use -1 for read all 2025-04-25 16:59:01 -07:00
Michael Yang
5d0279164c generic ggml.array 2025-04-25 16:59:01 -07:00
Michael Yang
214a7678ea fix superfluous call to WriteHeader
the first call to http.ResponseWriter.Write implicitly calls WriteHeader
with http.StatusOK if it hasn't already been called. once WriteHeader
has been called, subsequent calls has no effect. Write is called when
JSON encoding progressUpdateJSON{}. calls to
http.ResponseWriter.WriteHeader after the first encode is useless and
produces a warning:

http: superfluous response.WriteHeader call from github.com/ollama/ollama/server/internal/registry.(*statusCodeRecorder).WriteHeader (server.go:77)
2025-04-25 16:58:49 -07:00
Michael Yang
4892872c18 convert: change to colmajor 2025-04-25 15:27:39 -07:00
Michael Yang
0b9198bf47 ci: silence deprecated gpu targets warning 2025-04-25 13:37:54 -07:00
Jeffrey Morgan
e9e5f61c45 llama: update to commit 2016f07b (#10352) 2025-04-24 17:26:02 -07:00
Parth Sareen
11dde41824 server: improve spacing for JSON grammar (#10131) 2025-04-24 16:47:57 -07:00
Parth Sareen
a53d744b01 llama: remove model loading for grammar (#10096) 2025-04-24 11:51:19 -07:00
890 changed files with 380079 additions and 65528 deletions

View File

@@ -23,7 +23,7 @@ jobs:
echo GOFLAGS="'-ldflags=-w -s \"-X=github.com/ollama/ollama/version.Version=${GITHUB_REF_NAME#v}\" \"-X=github.com/ollama/ollama/server.mode=release\"'" >>$GITHUB_OUTPUT
darwin-build:
runs-on: macos-13
runs-on: macos-13-xlarge
environment: release
needs: setup-environment
strategy:
@@ -54,48 +54,6 @@ jobs:
name: build-${{ matrix.os }}-${{ matrix.arch }}
path: dist/*
darwin-sign:
runs-on: macos-13
environment: release
needs: darwin-build
steps:
- uses: actions/checkout@v4
- run: |
echo $MACOS_SIGNING_KEY | base64 --decode > certificate.p12
security create-keychain -p password build.keychain
security default-keychain -s build.keychain
security unlock-keychain -p password build.keychain
security import certificate.p12 -k build.keychain -P $MACOS_SIGNING_KEY_PASSWORD -T /usr/bin/codesign
security set-key-partition-list -S apple-tool:,apple:,codesign: -s -k password build.keychain
security set-keychain-settings -lut 3600 build.keychain
env:
MACOS_SIGNING_KEY: ${{ secrets.MACOS_SIGNING_KEY }}
MACOS_SIGNING_KEY_PASSWORD: ${{ secrets.MACOS_SIGNING_KEY_PASSWORD }}
- uses: actions/download-artifact@v4
with:
name: build-darwin-amd64
path: dist/darwin-amd64
- uses: actions/download-artifact@v4
with:
name: build-darwin-arm64
path: dist/darwin-arm64
- run: |
export VERSION=${GITHUB_REF_NAME#v}
./scripts/build_darwin.sh sign macapp
env:
APPLE_IDENTITY: ${{ secrets.APPLE_IDENTITY }}
APPLE_PASSWORD: ${{ secrets.APPLE_PASSWORD }}
APPLE_TEAM_ID: ${{ vars.APPLE_TEAM_ID }}
APPLE_ID: ${{ vars.APPLE_ID }}
SDKROOT: /Applications/Xcode_14.1.0.app/Contents/Developer/Platforms/MacOSX.platform/Developer/SDKs/MacOSX.sdk
DEVELOPER_DIR: /Applications/Xcode_14.1.0.app/Contents/Developer
- uses: actions/upload-artifact@v4
with:
name: dist-darwin
path: |
dist/Ollama-darwin.zip
dist/ollama-darwin.tgz
windows-depends:
strategy:
matrix:
@@ -103,21 +61,40 @@ jobs:
arch: [amd64]
preset: ['CPU']
include:
- os: windows
arch: amd64
preset: 'CUDA 11'
install: https://developer.download.nvidia.com/compute/cuda/11.3.1/local_installers/cuda_11.3.1_465.89_win10.exe
cuda-version: '11.3'
- os: windows
arch: amd64
preset: 'CUDA 12'
install: https://developer.download.nvidia.com/compute/cuda/12.8.0/local_installers/cuda_12.8.0_571.96_windows.exe
cuda-components:
- '"cudart"'
- '"nvcc"'
- '"cublas"'
- '"cublas_dev"'
cuda-version: '12.8'
flags: ''
runner_dir: 'cuda_v12'
- os: windows
arch: amd64
preset: 'CUDA 13'
install: https://developer.download.nvidia.com/compute/cuda/13.0.0/local_installers/cuda_13.0.0_windows.exe
cuda-components:
- '"cudart"'
- '"nvcc"'
- '"cublas"'
- '"cublas_dev"'
- '"crt"'
- '"nvvm"'
- '"nvptxcompiler"'
cuda-version: '13.0'
flags: ''
runner_dir: 'cuda_v13'
- os: windows
arch: amd64
preset: 'ROCm 6'
install: https://download.amd.com/developer/eula/rocm-hub/AMD-Software-PRO-Edition-24.Q4-WinSvr2022-For-HIP.exe
rocm-version: '6.2'
flags: '-DCMAKE_C_COMPILER=clang -DCMAKE_CXX_COMPILER=clang++ -DCMAKE_C_FLAGS="-parallel-jobs=4 -Wno-ignored-attributes -Wno-deprecated-pragma" -DCMAKE_CXX_FLAGS="-parallel-jobs=4 -Wno-ignored-attributes -Wno-deprecated-pragma"'
runner_dir: 'rocm'
runs-on: ${{ matrix.arch == 'arm64' && format('{0}-{1}', matrix.os, matrix.arch) || matrix.os }}
environment: release
env:
@@ -141,7 +118,7 @@ jobs:
$ErrorActionPreference = "Stop"
if ("${{ steps.cache-install.outputs.cache-hit }}" -ne 'true') {
Invoke-WebRequest -Uri "${{ matrix.install }}" -OutFile "install.exe"
$subpackages = @("cudart", "nvcc", "cublas", "cublas_dev") | Foreach-Object {"${_}_${{ matrix.cuda-version }}"}
$subpackages = @(${{ join(matrix.cuda-components, ', ') }}) | Foreach-Object {"${_}_${{ matrix.cuda-version }}"}
Start-Process -FilePath .\install.exe -ArgumentList (@("-s") + $subpackages) -NoNewWindow -Wait
}
@@ -160,6 +137,9 @@ jobs:
echo "$hipPath\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
echo "CC=$hipPath\bin\clang.exe" | Out-File -FilePath $env:GITHUB_ENV -Append
echo "CXX=$hipPath\bin\clang++.exe" | Out-File -FilePath $env:GITHUB_ENV -Append
echo "HIPCXX=$hipPath\bin\clang++.exe" | Out-File -FilePath $env:GITHUB_ENV -Append
echo "HIP_PLATFORM=amd" | Out-File -FilePath $env:GITHUB_ENV -Append
echo "CMAKE_PREFIX_PATH=$hipPath" | Out-File -FilePath $env:GITHUB_ENV -Append
- if: matrix.preset == 'CPU'
run: |
echo "CC=clang.exe" | Out-File -FilePath $env:GITHUB_ENV -Append
@@ -178,11 +158,12 @@ jobs:
key: ccache-${{ matrix.os }}-${{ matrix.arch }}-${{ matrix.preset }}
- name: Build target "${{ matrix.preset }}"
run: |
Import-Module 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise\Common7\Tools\Microsoft.VisualStudio.DevShell.dll'
Enter-VsDevShell -VsInstallPath 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise' -SkipAutomaticLocation -DevCmdArguments '-arch=x64 -no_logo'
cmake --preset "${{ matrix.preset }}"
Import-Module 'C:\Program Files\Microsoft Visual Studio\2022\Enterprise\Common7\Tools\Microsoft.VisualStudio.DevShell.dll'
Enter-VsDevShell -VsInstallPath 'C:\Program Files\Microsoft Visual Studio\2022\Enterprise' -SkipAutomaticLocation -DevCmdArguments '-arch=x64 -no_logo'
cmake --preset "${{ matrix.preset }}" ${{ matrix.flags }} -DOLLAMA_RUNNER_DIR="${{ matrix.runner_dir }}"
cmake --build --parallel --preset "${{ matrix.preset }}"
cmake --install build --component "${{ startsWith(matrix.preset, 'CUDA ') && 'CUDA' || startsWith(matrix.preset, 'ROCm ') && 'HIP' || 'CPU' }}" --strip --parallel 8
Remove-Item -Path dist\lib\ollama\rocm\rocblas\library\*gfx906* -ErrorAction SilentlyContinue
env:
CMAKE_GENERATOR: Ninja
- uses: actions/upload-artifact@v4
@@ -195,19 +176,19 @@ jobs:
matrix:
os: [windows]
arch: [amd64, arm64]
include:
- os: windows
arch: amd64
llvmarch: x86_64
- os: windows
arch: arm64
llvmarch: aarch64
runs-on: ${{ matrix.arch == 'arm64' && format('{0}-{1}', matrix.os, matrix.arch) || matrix.os }}
environment: release
needs: [setup-environment]
env:
GOFLAGS: ${{ needs.setup-environment.outputs.GOFLAGS }}
steps:
- name: Install AMD64 system dependencies
if: matrix.arch == 'amd64'
run: |
$ErrorActionPreference = "Stop"
Start-Process "C:\msys64\usr\bin\pacman.exe" -ArgumentList @("-S", "--noconfirm", "mingw-w64-clang-x86_64-gcc-compat", "mingw-w64-clang-x86_64-clang") -NoNewWindow -Wait
echo "C:\msys64\usr\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
echo "C:\msys64\clang64\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
- name: Install ARM64 system dependencies
if: matrix.arch == 'arm64'
run: |
@@ -219,72 +200,36 @@ jobs:
choco install -y --no-progress git gzip
echo "C:\Program Files\Git\cmd" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
Invoke-WebRequest -Uri "https://github.com/mstorsjo/llvm-mingw/releases/download/20240619/llvm-mingw-20240619-ucrt-aarch64.zip" -OutFile "${{ runner.temp }}\llvm-mingw-ucrt-aarch64.zip"
Expand-Archive -Path ${{ runner.temp }}\llvm-mingw-ucrt-aarch64.zip -DestinationPath "C:\Program Files\"
$installPath=(Resolve-Path -Path "C:\Program Files\llvm-mingw-*-ucrt-aarch64").path
echo $installPath\bin | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
- name: Install clang and gcc-compat
run: |
$ErrorActionPreference = "Stop"
Set-ExecutionPolicy Bypass -Scope Process -Force
Invoke-WebRequest -Uri "https://github.com/mstorsjo/llvm-mingw/releases/download/20240619/llvm-mingw-20240619-ucrt-${{ matrix.llvmarch }}.zip" -OutFile "${{ runner.temp }}\llvm-mingw-ucrt.zip"
Expand-Archive -Path ${{ runner.temp }}\llvm-mingw-ucrt.zip -DestinationPath "C:\Program Files\"
$installPath=(Resolve-Path -Path "C:\Program Files\llvm-mingw-*-ucrt*").path
echo "$installPath\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
- uses: actions/checkout@v4
- uses: actions/setup-go@v5
with:
go-version-file: go.mod
- name: Verify gcc is actually clang
run: |
$ErrorActionPreference='Continue'
$version=& gcc -v 2>&1
$version=$version -join "`n"
echo "gcc is $version"
if ($version -notmatch 'clang') {
echo "ERROR: GCC must be clang for proper utf16 handling"
exit 1
}
$ErrorActionPreference='Stop'
- run: |
go build -o dist/${{ matrix.os }}-${{ matrix.arch }}/ .
- if: matrix.arch == 'arm64'
run: |
Invoke-WebRequest -Uri "https://aka.ms/vs/17/release/vc_redist.arm64.exe" -OutFile "dist\windows-arm64\vc_redist.arm64.exe"
- run: |
$env:VERSION='${{ github.ref_name }}' -Replace "v(.*)", '$1'
& .\scripts\build_windows.ps1 buildApp
env:
VCToolsRedistDir: stub
- uses: actions/upload-artifact@v4
with:
name: build-${{ matrix.os }}-${{ matrix.arch }}
path: |
dist\${{ matrix.os }}-${{ matrix.arch }}\*.exe
dist\${{ matrix.os }}-${{ matrix.arch }}-app.exe
windows-sign:
runs-on: windows-2022
environment: release
needs: [windows-depends, windows-build]
steps:
- uses: actions/checkout@v4
- uses: google-github-actions/auth@v2
with:
project_id: ollama
credentials_json: ${{ secrets.GOOGLE_SIGNING_CREDENTIALS }}
- run: |
$ErrorActionPreference = "Stop"
Invoke-WebRequest -Uri "https://go.microsoft.com/fwlink/p/?LinkId=323507" -OutFile "${{ runner.temp }}\sdksetup.exe"
Start-Process "${{ runner.temp }}\sdksetup.exe" -ArgumentList @("/q") -NoNewWindow -Wait
Invoke-WebRequest -Uri "https://github.com/GoogleCloudPlatform/kms-integrations/releases/download/cng-v1.0/kmscng-1.0-windows-amd64.zip" -OutFile "${{ runner.temp }}\plugin.zip"
Expand-Archive -Path "${{ runner.temp }}\plugin.zip" -DestinationPath "${{ runner.temp }}\plugin\"
& "${{ runner.temp }}\plugin\*\kmscng.msi" /quiet
echo "${{ vars.OLLAMA_CERT }}" >ollama_inc.crt
- uses: actions/download-artifact@v4
with:
pattern: build-windows-*
path: dist\
merge-multiple: true
- uses: actions/download-artifact@v4
with:
pattern: depends-windows-amd64-*
path: dist\windows-amd64\
merge-multiple: true
- run: |
& .\scripts\build_windows.ps1 gatherDependencies sign buildInstaller distZip
env:
KEY_CONTAINER: ${{ vars.KEY_CONTAINER }}
- uses: actions/upload-artifact@v4
with:
name: dist-windows
path: |
dist\OllamaSetup.exe
dist\ollama-windows-*.zip
linux-build:
strategy:
@@ -292,13 +237,13 @@ jobs:
include:
- os: linux
arch: amd64
target: archive
target: archive_novulkan
- os: linux
arch: amd64
target: rocm
- os: linux
arch: arm64
target: archive
target: archive_novulkan
runs-on: ${{ matrix.arch == 'arm64' && format('{0}-{1}', matrix.os, matrix.arch) || matrix.os }}
environment: release
needs: setup-environment
@@ -317,21 +262,26 @@ jobs:
CGO_CFLAGS=${{ env.CGO_CFLAGS }}
CGO_CXXFLAGS=${{ env.CGO_CXXFLAGS }}
outputs: type=local,dest=dist/${{ matrix.os }}-${{ matrix.arch }}
cache-from: type=registry,ref=ollama/ollama:latest
cache-from: type=registry,ref=${{ vars.DOCKER_REPO }}:latest
cache-to: type=inline
- run: |
for COMPONENT in bin/* lib/ollama/*; do
case "$COMPONENT" in
bin/ollama) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}.tar.in ;;
lib/ollama/*.so) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}.tar.in ;;
lib/ollama/cuda_v11) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}.tar.in ;;
lib/ollama/cuda_v12) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}.tar.in ;;
lib/ollama/cuda_jetpack5) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}-jetpack5.tar.in ;;
lib/ollama/cuda_jetpack6) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}-jetpack6.tar.in ;;
lib/ollama/rocm) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}-rocm.tar.in ;;
bin/ollama) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}.tar.in ;;
lib/ollama/*.so*) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}.tar.in ;;
lib/ollama/cuda_v*) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}.tar.in ;;
lib/ollama/cuda_jetpack5) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}-jetpack5.tar.in ;;
lib/ollama/cuda_jetpack6) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}-jetpack6.tar.in ;;
lib/ollama/rocm) echo $COMPONENT >>ollama-${{ matrix.os }}-${{ matrix.arch }}-rocm.tar.in ;;
esac
done
working-directory: dist/${{ matrix.os }}-${{ matrix.arch }}
- run: |
echo "Manifests"
for ARCHIVE in dist/${{ matrix.os }}-${{ matrix.arch }}/*.tar.in ; do
echo $ARCHIVE
cat $ARCHIVE
done
- run: |
for ARCHIVE in dist/${{ matrix.os }}-${{ matrix.arch }}/*.tar.in; do
tar c -C dist/${{ matrix.os }}-${{ matrix.arch }} -T $ARCHIVE --owner 0 --group 0 | pigz -9vc >$(basename ${ARCHIVE//.*/}.tgz);
@@ -349,12 +299,14 @@ jobs:
include:
- os: linux
arch: arm64
target: novulkan
build-args: |
CGO_CFLAGS
CGO_CXXFLAGS
GOFLAGS
- os: linux
arch: amd64
target: novulkan
build-args: |
CGO_CFLAGS
CGO_CXXFLAGS
@@ -367,6 +319,14 @@ jobs:
CGO_CXXFLAGS
GOFLAGS
FLAVOR=rocm
- os: linux
arch: amd64
suffix: '-vulkan'
target: default
build-args: |
CGO_CFLAGS
CGO_CXXFLAGS
GOFLAGS
runs-on: ${{ matrix.arch == 'arm64' && format('{0}-{1}', matrix.os, matrix.arch) || matrix.os }}
environment: release
needs: setup-environment
@@ -384,9 +344,10 @@ jobs:
with:
context: .
platforms: ${{ matrix.os }}/${{ matrix.arch }}
target: ${{ matrix.target }}
build-args: ${{ matrix.build-args }}
outputs: type=image,name=ollama/ollama,push-by-digest=true,name-canonical=true,push=true
cache-from: type=registry,ref=ollama/ollama:latest
outputs: type=image,name=${{ vars.DOCKER_REPO }},push-by-digest=true,name-canonical=true,push=true
cache-from: type=registry,ref=${{ vars.DOCKER_REPO }}:latest
cache-to: type=inline
- run: |
mkdir -p ${{ matrix.os }}-${{ matrix.arch }}
@@ -418,7 +379,7 @@ jobs:
latest=false
suffix=${{ matrix.suffix }}
images: |
ollama/ollama
${{ vars.DOCKER_REPO }}
tags: |
type=ref,enable=true,priority=600,prefix=pr-,event=pr
type=semver,pattern={{version}}
@@ -428,40 +389,24 @@ jobs:
path: ${{ runner.temp }}
merge-multiple: true
- run: |
docker buildx imagetools create $(echo '${{ steps.metadata.outputs.json }}' | jq -cr '.tags | map("-t", .) | join(" ")') $(cat *-${{ matrix.suffix }}.txt | xargs printf 'ollama/ollama@%s ')
docker buildx imagetools inspect ollama/ollama:${{ steps.metadata.outputs.version }}
docker buildx imagetools create $(echo '${{ steps.metadata.outputs.json }}' | jq -cr '.tags | map("-t", .) | join(" ")') $(cat *-${{ matrix.suffix }}.txt | xargs printf '${{ vars.DOCKER_REPO }}@%s ')
docker buildx imagetools inspect ${{ vars.DOCKER_REPO }}:${{ steps.metadata.outputs.version }}
working-directory: ${{ runner.temp }}
# Aggregate all the assets and ship a release
release:
needs: [darwin-sign, windows-sign, linux-build]
runs-on: linux
# Trigger downstream release process
trigger:
runs-on: ubuntu-latest
environment: release
needs: [darwin-build, windows-build, windows-depends, linux-build]
permissions:
contents: write
env:
GH_TOKEN: ${{ github.token }}
steps:
- uses: actions/checkout@v4
- uses: actions/download-artifact@v4
with:
name: dist-darwin
path: dist
- uses: actions/download-artifact@v4
with:
name: dist-windows
path: dist
- uses: actions/download-artifact@v4
with:
pattern: dist-linux-*
path: dist
merge-multiple: true
- run: find . -type f -not -name 'sha256sum.txt' | xargs sha256sum | tee sha256sum.txt
working-directory: dist
- name: Create or update Release
- name: Create or update Release for tag
run: |
RELEASE_VERSION="$(echo ${GITHUB_REF_NAME} | cut -f1 -d-)"
echo "Looking for existing release for ${RELEASE_VERSION}"
OLD_TAG=$(gh release ls --json name,tagName | jq -r ".[] | select(.name == \"${RELEASE_VERSION}\") | .tagName")
if [ -n "$OLD_TAG" ]; then
@@ -475,5 +420,12 @@ jobs:
--generate-notes \
--prerelease
fi
echo "Uploading artifacts for tag ${GITHUB_REF_NAME}"
gh release upload ${GITHUB_REF_NAME} dist/* --clobber
- name: Trigger downstream release process
run: |
curl -L \
-X POST \
-H "Accept: application/vnd.github+json" \
-H "Authorization: Bearer ${{ secrets.RELEASE_TOKEN }}" \
-H "X-GitHub-Api-Version: 2022-11-28" \
https://api.github.com/repos/ollama/${{ vars.RELEASE_REPO }}/dispatches \
-d "{\"event_type\": \"trigger-workflow\", \"client_payload\": {\"run_id\": \"${GITHUB_RUN_ID}\", \"version\": \"${GITHUB_REF_NAME#v}\", \"origin\": \"${GITHUB_REPOSITORY}\", \"publish\": \"1\"}}"

View File

@@ -36,7 +36,7 @@ jobs:
| xargs python3 -c "import sys; from pathlib import Path; print(any(Path(x).match(glob) for x in sys.argv[1:] for glob in '$*'.split(' ')))"
}
echo changed=$(changed 'llama/llama.cpp/**' 'ml/backend/ggml/ggml/**') | tee -a $GITHUB_OUTPUT
echo changed=$(changed 'llama/llama.cpp/**/*' 'ml/backend/ggml/ggml/**/*') | tee -a $GITHUB_OUTPUT
linux:
needs: [changes]
@@ -46,12 +46,18 @@ jobs:
include:
- preset: CPU
- preset: CUDA
container: nvidia/cuda:11.8.0-devel-ubuntu22.04
container: nvidia/cuda:13.0.0-devel-ubuntu22.04
flags: '-DCMAKE_CUDA_ARCHITECTURES=87'
- preset: ROCm
container: rocm/dev-ubuntu-22.04:6.1.2
extra-packages: rocm-libs
flags: '-DAMDGPU_TARGETS=gfx1010 -DCMAKE_PREFIX_PATH=/opt/rocm'
- preset: Vulkan
container: ubuntu:22.04
extra-packages: >
mesa-vulkan-drivers vulkan-tools
libvulkan1 libvulkan-dev
vulkan-sdk cmake ccache g++ make
runs-on: linux
container: ${{ matrix.container }}
steps:
@@ -59,7 +65,19 @@ jobs:
- run: |
[ -n "${{ matrix.container }}" ] || sudo=sudo
$sudo apt-get update
# Add LunarG Vulkan SDK apt repo for Ubuntu 22.04
if [ "${{ matrix.preset }}" = "Vulkan" ]; then
$sudo apt-get install -y --no-install-recommends wget gnupg ca-certificates software-properties-common
wget -qO - https://packages.lunarg.com/lunarg-signing-key-pub.asc | $sudo gpg --dearmor -o /usr/share/keyrings/lunarg-archive-keyring.gpg
# Use signed-by to bind the repo to the installed keyring to avoid NO_PUBKEY
echo "deb [signed-by=/usr/share/keyrings/lunarg-archive-keyring.gpg] https://packages.lunarg.com/vulkan/1.4.313 jammy main" | $sudo tee /etc/apt/sources.list.d/lunarg-vulkan-1.4.313-jammy.list > /dev/null
$sudo apt-get update
fi
$sudo apt-get install -y cmake ccache ${{ matrix.extra-packages }}
# Export VULKAN_SDK if provided by LunarG package (defensive)
if [ -d "/usr/lib/x86_64-linux-gnu/vulkan" ] && [ "${{ matrix.preset }}" = "Vulkan" ]; then
echo "VULKAN_SDK=/usr" >> $GITHUB_ENV
fi
env:
DEBIAN_FRONTEND: noninteractive
- uses: actions/cache@v4
@@ -78,23 +96,35 @@ jobs:
include:
- preset: CPU
- preset: CUDA
install: https://developer.download.nvidia.com/compute/cuda/11.3.1/local_installers/cuda_11.3.1_465.89_win10.exe
install: https://developer.download.nvidia.com/compute/cuda/13.0.0/local_installers/cuda_13.0.0_windows.exe
flags: '-DCMAKE_CUDA_ARCHITECTURES=80'
cuda-components:
- '"cudart"'
- '"nvcc"'
- '"cublas"'
- '"cublas_dev"'
- '"crt"'
- '"nvvm"'
- '"nvptxcompiler"'
cuda-version: '13.0'
- preset: ROCm
install: https://download.amd.com/developer/eula/rocm-hub/AMD-Software-PRO-Edition-24.Q4-WinSvr2022-For-HIP.exe
flags: '-DAMDGPU_TARGETS=gfx1010'
flags: '-DAMDGPU_TARGETS=gfx1010 -DCMAKE_C_COMPILER=clang -DCMAKE_CXX_COMPILER=clang++ -DCMAKE_C_FLAGS="-parallel-jobs=4 -Wno-ignored-attributes -Wno-deprecated-pragma" -DCMAKE_CXX_FLAGS="-parallel-jobs=4 -Wno-ignored-attributes -Wno-deprecated-pragma"'
- preset: Vulkan
install: https://sdk.lunarg.com/sdk/download/1.4.321.1/windows/vulkansdk-windows-X64-1.4.321.1.exe
runs-on: windows
steps:
- run: |
choco install -y --no-progress ccache ninja
ccache -o cache_dir=${{ github.workspace }}\.ccache
- if: matrix.preset == 'CUDA' || matrix.preset == 'ROCm'
- if: matrix.preset == 'CUDA' || matrix.preset == 'ROCm' || matrix.preset == 'Vulkan'
id: cache-install
uses: actions/cache/restore@v4
with:
path: |
C:\Program Files\NVIDIA GPU Computing Toolkit\CUDA
C:\Program Files\AMD\ROCm
C:\VulkanSDK
key: ${{ matrix.install }}
- if: matrix.preset == 'CUDA'
name: Install CUDA ${{ matrix.cuda-version }}
@@ -102,7 +132,8 @@ jobs:
$ErrorActionPreference = "Stop"
if ("${{ steps.cache-install.outputs.cache-hit }}" -ne 'true') {
Invoke-WebRequest -Uri "${{ matrix.install }}" -OutFile "install.exe"
Start-Process -FilePath .\install.exe -ArgumentList (@("-s", "cudart_11.3", "nvcc_11.3", "cublas_11.3", "cublas_dev_11.3")) -NoNewWindow -Wait
$subpackages = @(${{ join(matrix.cuda-components, ', ') }}) | Foreach-Object {"${_}_${{ matrix.cuda-version }}"}
Start-Process -FilePath .\install.exe -ArgumentList (@("-s") + $subpackages) -NoNewWindow -Wait
}
$cudaPath = (Resolve-Path "C:\Program Files\NVIDIA GPU Computing Toolkit\CUDA\*").path
@@ -120,6 +151,21 @@ jobs:
echo "$hipPath\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
echo "CC=$hipPath\bin\clang.exe" | Out-File -FilePath $env:GITHUB_ENV -Append
echo "CXX=$hipPath\bin\clang++.exe" | Out-File -FilePath $env:GITHUB_ENV -Append
echo "HIPCXX=$hipPath\bin\clang++.exe" | Out-File -FilePath $env:GITHUB_ENV -Append
echo "HIP_PLATFORM=amd" | Out-File -FilePath $env:GITHUB_ENV -Append
echo "CMAKE_PREFIX_PATH=$hipPath" | Out-File -FilePath $env:GITHUB_ENV -Append
- if: matrix.preset == 'Vulkan'
name: Install Vulkan ${{ matrix.rocm-version }}
run: |
$ErrorActionPreference = "Stop"
if ("${{ steps.cache-install.outputs.cache-hit }}" -ne 'true') {
Invoke-WebRequest -Uri "${{ matrix.install }}" -OutFile "install.exe"
Start-Process -FilePath .\install.exe -ArgumentList "-c","--am","--al","in" -NoNewWindow -Wait
}
$vulkanPath = (Resolve-Path "C:\VulkanSDK\*").path
echo "$vulkanPath\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
echo "VULKAN_SDK=$vulkanPath" >> $env:GITHUB_ENV
- if: ${{ !cancelled() && steps.cache-install.outputs.cache-hit != 'true' }}
uses: actions/cache/save@v4
with:
@@ -133,8 +179,8 @@ jobs:
path: ${{ github.workspace }}\.ccache
key: ccache-${{ runner.os }}-${{ runner.arch }}-${{ matrix.preset }}
- run: |
Import-Module 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise\Common7\Tools\Microsoft.VisualStudio.DevShell.dll'
Enter-VsDevShell -VsInstallPath 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise' -SkipAutomaticLocation -DevCmdArguments '-arch=x64 -no_logo'
Import-Module 'C:\Program Files\Microsoft Visual Studio\2022\Enterprise\Common7\Tools\Microsoft.VisualStudio.DevShell.dll'
Enter-VsDevShell -VsInstallPath 'C:\Program Files\Microsoft Visual Studio\2022\Enterprise' -SkipAutomaticLocation -DevCmdArguments '-arch=x64 -no_logo'
cmake --preset "${{ matrix.preset }}" ${{ matrix.flags }}
cmake --build --parallel --preset "${{ matrix.preset }}"
env:

1
.gitignore vendored
View File

@@ -8,6 +8,7 @@
dist
build
.cache
.gocache
*.exe
.idea
test_data

View File

@@ -19,8 +19,8 @@ linters:
- nolintlint
- nosprintfhostport
- staticcheck
- tenv
- unconvert
- usetesting
- wastedassign
- whitespace
disable:

View File

@@ -3,6 +3,7 @@ cmake_minimum_required(VERSION 3.21)
project(Ollama C CXX)
include(CheckLanguage)
include(GNUInstallDirs)
find_package(Threads REQUIRED)
@@ -37,7 +38,7 @@ if (CMAKE_OSX_ARCHITECTURES MATCHES "x86_64")
endif()
set(OLLAMA_BUILD_DIR ${CMAKE_BINARY_DIR}/lib/ollama)
set(OLLAMA_INSTALL_DIR ${CMAKE_INSTALL_PREFIX}/lib/ollama)
set(OLLAMA_INSTALL_DIR ${CMAKE_INSTALL_PREFIX}/lib/ollama/${OLLAMA_RUNNER_DIR})
set(CMAKE_RUNTIME_OUTPUT_DIRECTORY ${OLLAMA_BUILD_DIR})
set(CMAKE_RUNTIME_OUTPUT_DIRECTORY_DEBUG ${OLLAMA_BUILD_DIR})
@@ -51,6 +52,8 @@ include_directories(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src/include
include_directories(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src/ggml-cpu)
include_directories(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src/ggml-cpu/amx)
add_compile_definitions(NDEBUG GGML_VERSION=0x0 GGML_COMMIT=0x0)
set(GGML_CPU ON)
add_subdirectory(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src)
set_property(TARGET ggml PROPERTY EXCLUDE_FROM_ALL TRUE)
@@ -76,14 +79,13 @@ if(CMAKE_CUDA_COMPILER)
find_package(CUDAToolkit)
add_subdirectory(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src/ggml-cuda)
set(OLLAMA_CUDA_INSTALL_DIR ${OLLAMA_INSTALL_DIR}/cuda_v${CUDAToolkit_VERSION_MAJOR})
install(TARGETS ggml-cuda
RUNTIME_DEPENDENCIES
DIRECTORIES ${CUDAToolkit_BIN_DIR} ${CUDAToolkit_LIBRARY_DIR}
DIRECTORIES ${CUDAToolkit_BIN_DIR} ${CUDAToolkit_BIN_DIR}/x64 ${CUDAToolkit_LIBRARY_DIR}
PRE_INCLUDE_REGEXES cublas cublasLt cudart
PRE_EXCLUDE_REGEXES ".*"
RUNTIME DESTINATION ${OLLAMA_CUDA_INSTALL_DIR} COMPONENT CUDA
LIBRARY DESTINATION ${OLLAMA_CUDA_INSTALL_DIR} COMPONENT CUDA
RUNTIME DESTINATION ${OLLAMA_INSTALL_DIR} COMPONENT CUDA
LIBRARY DESTINATION ${OLLAMA_INSTALL_DIR} COMPONENT CUDA
)
endif()
@@ -97,14 +99,17 @@ check_language(HIP)
if(CMAKE_HIP_COMPILER)
set(HIP_PLATFORM "amd")
find_package(hip REQUIRED)
if(NOT AMDGPU_TARGETS)
list(FILTER AMDGPU_TARGETS INCLUDE REGEX "^gfx(803|900(:xnack-)|902|906(:xnack-)|90c(:xnack-)|1010(:xnack-)|1011(:xnack-)|1012(:xnack-)|103[0-6]|110[0-3]|115[01]|1201)$")
elseif(WIN32 AND WINDOWS_AMDGPU_TARGETS_EXCLUDE_REGEX)
find_package(hip REQUIRED)
list(FILTER AMDGPU_TARGETS INCLUDE REGEX "^gfx(803|90[012]|906(:xnack-)|90c(:xnack-)|1010(:xnack-)|1011(:xnack-)|1012(:xnack-)|103[0-6]|110[0-3]|115[0123]|120[01])$")
endif()
if(WIN32 AND WINDOWS_AMDGPU_TARGETS_EXCLUDE_REGEX)
list(FILTER AMDGPU_TARGETS EXCLUDE REGEX ${WINDOWS_AMDGPU_TARGETS_EXCLUDE_REGEX})
endif()
if(AMDGPU_TARGETS)
find_package(hip REQUIRED)
add_subdirectory(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src/ggml-hip)
if (WIN32)
@@ -113,22 +118,37 @@ if(CMAKE_HIP_COMPILER)
target_compile_definitions(ggml-hip PRIVATE GGML_HIP_NO_VMM)
set(OLLAMA_HIP_INSTALL_DIR ${OLLAMA_INSTALL_DIR}/rocm)
install(TARGETS ggml-hip
RUNTIME_DEPENDENCIES
RUNTIME_DEPENDENCY_SET rocm
RUNTIME DESTINATION ${OLLAMA_INSTALL_DIR} COMPONENT HIP
LIBRARY DESTINATION ${OLLAMA_INSTALL_DIR} COMPONENT HIP
)
install(RUNTIME_DEPENDENCY_SET rocm
DIRECTORIES ${HIP_BIN_INSTALL_DIR} ${HIP_LIB_INSTALL_DIR}
PRE_INCLUDE_REGEXES hipblas rocblas amdhip64 rocsolver amd_comgr hsa-runtime64 rocsparse tinfo rocprofiler-register drm drm_amdgpu numa elf
PRE_EXCLUDE_REGEXES ".*"
POST_EXCLUDE_REGEXES "system32"
RUNTIME DESTINATION ${OLLAMA_HIP_INSTALL_DIR} COMPONENT HIP
LIBRARY DESTINATION ${OLLAMA_HIP_INSTALL_DIR} COMPONENT HIP
RUNTIME DESTINATION ${OLLAMA_INSTALL_DIR} COMPONENT HIP
LIBRARY DESTINATION ${OLLAMA_INSTALL_DIR} COMPONENT HIP
)
foreach(HIP_LIB_BIN_INSTALL_DIR IN ITEMS ${HIP_BIN_INSTALL_DIR} ${HIP_LIB_INSTALL_DIR})
if(EXISTS ${HIP_LIB_BIN_INSTALL_DIR}/rocblas)
install(DIRECTORY ${HIP_LIB_BIN_INSTALL_DIR}/rocblas DESTINATION ${OLLAMA_HIP_INSTALL_DIR} COMPONENT HIP)
install(DIRECTORY ${HIP_LIB_BIN_INSTALL_DIR}/rocblas DESTINATION ${OLLAMA_INSTALL_DIR} COMPONENT HIP)
break()
endif()
endforeach()
endif()
endif()
find_package(Vulkan)
if(Vulkan_FOUND)
add_subdirectory(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src/ggml-vulkan)
install(TARGETS ggml-vulkan
RUNTIME_DEPENDENCIES
PRE_INCLUDE_REGEXES vulkan
PRE_EXCLUDE_REGEXES ".*"
RUNTIME DESTINATION ${OLLAMA_INSTALL_DIR} COMPONENT Vulkan
LIBRARY DESTINATION ${OLLAMA_INSTALL_DIR} COMPONENT Vulkan
)
endif()

View File

@@ -6,7 +6,8 @@
"binaryDir": "${sourceDir}/build",
"installDir": "${sourceDir}/dist",
"cacheVariables": {
"CMAKE_BUILD_TYPE": "Release"
"CMAKE_BUILD_TYPE": "Release",
"CMAKE_MSVC_RUNTIME_LIBRARY": "MultiThreaded"
}
},
{
@@ -21,14 +22,24 @@
"name": "CUDA 11",
"inherits": [ "CUDA" ],
"cacheVariables": {
"CMAKE_CUDA_ARCHITECTURES": "50;52;53;60;61;70;75;80;86"
"CMAKE_CUDA_ARCHITECTURES": "50-virtual;60-virtual;61-virtual;70-virtual;75-virtual;80-virtual;86-virtual;87-virtual;89-virtual;90-virtual",
"CMAKE_CUDA_FLAGS": "-Wno-deprecated-gpu-targets -t 2"
}
},
{
"name": "CUDA 12",
"inherits": [ "CUDA" ],
"cacheVariables": {
"CMAKE_CUDA_ARCHITECTURES": "50;60;61;70;75;80;86;87;89;90;90a;120"
"CMAKE_CUDA_ARCHITECTURES": "50;52;60;61;70;75;80;86;89;90;90a;120",
"CMAKE_CUDA_FLAGS": "-Wno-deprecated-gpu-targets -t 2"
}
},
{
"name": "CUDA 13",
"inherits": [ "CUDA" ],
"cacheVariables": {
"CMAKE_CUDA_ARCHITECTURES": "75-virtual;80-virtual;86-virtual;87-virtual;89-virtual;90-virtual;90a-virtual;100-virtual;103-virtual;110-virtual;120-virtual;121-virtual",
"CMAKE_CUDA_FLAGS": "-t 2"
}
},
{
@@ -56,8 +67,13 @@
"name": "ROCm 6",
"inherits": [ "ROCm" ],
"cacheVariables": {
"AMDGPU_TARGETS": "gfx803;gfx902;gfx1030;gfx1031;gfx1032;gfx1034;gfx1035;gfx1036;gfx1100;gfx1101;gfx1102;gfx1103;gfx1150;gfx1201;gfx900:xnack-;gfx906:xnack-;gfx90c:xnack-;gfx1010:xnack-;gfx1011:xnack-;gfx1012:xnack-;"
"CMAKE_HIP_FLAGS": "-parallel-jobs=4",
"AMDGPU_TARGETS": "gfx940;gfx941;gfx942;gfx1010;gfx1012;gfx1030;gfx1100;gfx1101;gfx1102;gfx1151;gfx1200;gfx1201;gfx908:xnack-;gfx90a:xnack+;gfx90a:xnack-"
}
},
{
"name": "Vulkan",
"inherits": [ "Default" ]
}
],
"buildPresets": [
@@ -86,6 +102,11 @@
"inherits": [ "CUDA" ],
"configurePreset": "CUDA 12"
},
{
"name": "CUDA 13",
"inherits": [ "CUDA" ],
"configurePreset": "CUDA 13"
},
{
"name": "JetPack 5",
"inherits": [ "CUDA" ],
@@ -105,6 +126,11 @@
"name": "ROCm 6",
"inherits": [ "ROCm" ],
"configurePreset": "ROCm 6"
},
{
"name": "Vulkan",
"targets": [ "ggml-vulkan" ],
"configurePreset": "Vulkan"
}
]
}

View File

@@ -65,7 +65,8 @@ continuation of the sentence:
Examples:
llm/backend/mlx: support the llama architecture
CONTRIBUTING: provide clairity on good commit messages, and bad
CONTRIBUTING: provide clarity on good commit messages, and bad
docs: simplify manual installation with shorter curl commands
Bad Examples:

View File

@@ -1,20 +1,33 @@
# vim: filetype=dockerfile
ARG FLAVOR=${TARGETARCH}
ARG PARALLEL=8
ARG ROCMVERSION=6.3.3
ARG JETPACK5VERSION=r35.4.1
ARG JETPACK6VERSION=r36.4.0
ARG CMAKEVERSION=3.31.2
ARG VULKANVERSION=1.4.321.1
# CUDA v11 requires gcc v10. v10.3 has regressions, so the rockylinux 8.5 AppStream has the latest compatible version
# We require gcc v10 minimum. v10.3 has regressions, so the rockylinux 8.5 AppStream has the latest compatible version
FROM --platform=linux/amd64 rocm/dev-almalinux-8:${ROCMVERSION}-complete AS base-amd64
RUN yum install -y yum-utils \
&& yum-config-manager --add-repo https://dl.rockylinux.org/vault/rocky/8.5/AppStream/\$basearch/os/ \
&& rpm --import https://dl.rockylinux.org/pub/rocky/RPM-GPG-KEY-Rocky-8 \
&& dnf install -y yum-utils ccache gcc-toolset-10-gcc-10.2.1-8.2.el8 gcc-toolset-10-gcc-c++-10.2.1-8.2.el8 gcc-toolset-10-binutils-2.35-11.el8 \
&& dnf install -y ccache \
&& yum-config-manager --add-repo https://developer.download.nvidia.com/compute/cuda/repos/rhel8/x86_64/cuda-rhel8.repo
ENV PATH=/opt/rh/gcc-toolset-10/root/usr/bin:$PATH
ARG VULKANVERSION
RUN wget https://sdk.lunarg.com/sdk/download/${VULKANVERSION}/linux/vulkansdk-linux-x86_64-${VULKANVERSION}.tar.xz -O /tmp/vulkansdk-linux-x86_64-${VULKANVERSION}.tar.xz \
&& tar xvf /tmp/vulkansdk-linux-x86_64-${VULKANVERSION}.tar.xz \
&& dnf -y install ninja-build \
&& ln -s /usr/bin/python3 /usr/bin/python \
&& /${VULKANVERSION}/vulkansdk -j 8 vulkan-headers \
&& /${VULKANVERSION}/vulkansdk -j 8 shaderc
RUN cp -r /${VULKANVERSION}/x86_64/include/* /usr/local/include/ \
&& cp -r /${VULKANVERSION}/x86_64/lib/* /usr/local/lib
ENV PATH=/${VULKANVERSION}/x86_64/bin:$PATH
FROM --platform=linux/arm64 almalinux:8 AS base-arm64
# install epel-release for ccache
@@ -33,35 +46,52 @@ ENV LDFLAGS=-s
FROM base AS cpu
RUN dnf install -y gcc-toolset-11-gcc gcc-toolset-11-gcc-c++
ENV PATH=/opt/rh/gcc-toolset-11/root/usr/bin:$PATH
ARG PARALLEL
RUN --mount=type=cache,target=/root/.ccache \
cmake --preset 'CPU' \
&& cmake --build --parallel --preset 'CPU' \
&& cmake --install build --component CPU --strip --parallel 8
&& cmake --build --parallel ${PARALLEL} --preset 'CPU' \
&& cmake --install build --component CPU --strip --parallel ${PARALLEL}
FROM base AS cuda-11
ARG CUDA11VERSION=11.3
ARG CUDA11VERSION=11.8
RUN dnf install -y cuda-toolkit-${CUDA11VERSION//./-}
ENV PATH=/usr/local/cuda-11/bin:$PATH
ARG PARALLEL
RUN --mount=type=cache,target=/root/.ccache \
cmake --preset 'CUDA 11' \
&& cmake --build --parallel --preset 'CUDA 11' \
&& cmake --install build --component CUDA --strip --parallel 8
cmake --preset 'CUDA 11' -DOLLAMA_RUNNER_DIR="cuda_v11" \
&& cmake --build --parallel ${PARALLEL} --preset 'CUDA 11' \
&& cmake --install build --component CUDA --strip --parallel ${PARALLEL}
FROM base AS cuda-12
ARG CUDA12VERSION=12.8
RUN dnf install -y cuda-toolkit-${CUDA12VERSION//./-}
ENV PATH=/usr/local/cuda-12/bin:$PATH
ARG PARALLEL
RUN --mount=type=cache,target=/root/.ccache \
cmake --preset 'CUDA 12' \
&& cmake --build --parallel --preset 'CUDA 12' \
&& cmake --install build --component CUDA --strip --parallel 8
cmake --preset 'CUDA 12' -DOLLAMA_RUNNER_DIR="cuda_v12"\
&& cmake --build --parallel ${PARALLEL} --preset 'CUDA 12' \
&& cmake --install build --component CUDA --strip --parallel ${PARALLEL}
FROM base AS cuda-13
ARG CUDA13VERSION=13.0
RUN dnf install -y cuda-toolkit-${CUDA13VERSION//./-}
ENV PATH=/usr/local/cuda-13/bin:$PATH
ARG PARALLEL
RUN --mount=type=cache,target=/root/.ccache \
cmake --preset 'CUDA 13' -DOLLAMA_RUNNER_DIR="cuda_v13" \
&& cmake --build --parallel ${PARALLEL} --preset 'CUDA 13' \
&& cmake --install build --component CUDA --strip --parallel ${PARALLEL}
FROM base AS rocm-6
ENV PATH=/opt/rocm/hcc/bin:/opt/rocm/hip/bin:/opt/rocm/bin:/opt/rocm/hcc/bin:$PATH
ARG PARALLEL
RUN --mount=type=cache,target=/root/.ccache \
cmake --preset 'ROCm 6' \
&& cmake --build --parallel --preset 'ROCm 6' \
&& cmake --install build --component HIP --strip --parallel 8
cmake --preset 'ROCm 6' -DOLLAMA_RUNNER_DIR="rocm" \
&& cmake --build --parallel ${PARALLEL} --preset 'ROCm 6' \
&& cmake --install build --component HIP --strip --parallel ${PARALLEL}
RUN rm -f dist/lib/ollama/rocm/rocblas/library/*gfx90[06]*
FROM --platform=linux/arm64 nvcr.io/nvidia/l4t-jetpack:${JETPACK5VERSION} AS jetpack-5
ARG CMAKEVERSION
@@ -69,10 +99,11 @@ RUN apt-get update && apt-get install -y curl ccache \
&& curl -fsSL https://github.com/Kitware/CMake/releases/download/v${CMAKEVERSION}/cmake-${CMAKEVERSION}-linux-$(uname -m).tar.gz | tar xz -C /usr/local --strip-components 1
COPY CMakeLists.txt CMakePresets.json .
COPY ml/backend/ggml/ggml ml/backend/ggml/ggml
ARG PARALLEL
RUN --mount=type=cache,target=/root/.ccache \
cmake --preset 'JetPack 5' \
&& cmake --build --parallel --preset 'JetPack 5' \
&& cmake --install build --component CUDA --strip --parallel 8
cmake --preset 'JetPack 5' -DOLLAMA_RUNNER_DIR="cuda_jetpack5" \
&& cmake --build --parallel ${PARALLEL} --preset 'JetPack 5' \
&& cmake --install build --component CUDA --strip --parallel ${PARALLEL}
FROM --platform=linux/arm64 nvcr.io/nvidia/l4t-jetpack:${JETPACK6VERSION} AS jetpack-6
ARG CMAKEVERSION
@@ -80,10 +111,18 @@ RUN apt-get update && apt-get install -y curl ccache \
&& curl -fsSL https://github.com/Kitware/CMake/releases/download/v${CMAKEVERSION}/cmake-${CMAKEVERSION}-linux-$(uname -m).tar.gz | tar xz -C /usr/local --strip-components 1
COPY CMakeLists.txt CMakePresets.json .
COPY ml/backend/ggml/ggml ml/backend/ggml/ggml
ARG PARALLEL
RUN --mount=type=cache,target=/root/.ccache \
cmake --preset 'JetPack 6' \
&& cmake --build --parallel --preset 'JetPack 6' \
&& cmake --install build --component CUDA --strip --parallel 8
cmake --preset 'JetPack 6' -DOLLAMA_RUNNER_DIR="cuda_jetpack6" \
&& cmake --build --parallel ${PARALLEL} --preset 'JetPack 6' \
&& cmake --install build --component CUDA --strip --parallel ${PARALLEL}
FROM base AS vulkan
RUN --mount=type=cache,target=/root/.ccache \
cmake --preset 'Vulkan' -DOLLAMA_RUNNER_DIR="vulkan" \
&& cmake --build --parallel --preset 'Vulkan' \
&& cmake --install build --component Vulkan --strip --parallel 8
FROM base AS build
WORKDIR /go/src/github.com/ollama/ollama
@@ -94,31 +133,62 @@ RUN go mod download
COPY . .
ARG GOFLAGS="'-ldflags=-w -s'"
ENV CGO_ENABLED=1
ARG CGO_CFLAGS
ARG CGO_CXXFLAGS
RUN --mount=type=cache,target=/root/.cache/go-build \
go build -trimpath -buildmode=pie -o /bin/ollama .
FROM --platform=linux/amd64 scratch AS amd64
COPY --from=cuda-11 dist/lib/ollama/cuda_v11 /lib/ollama/cuda_v11
COPY --from=cuda-12 dist/lib/ollama/cuda_v12 /lib/ollama/cuda_v12
# COPY --from=cuda-11 dist/lib/ollama/ /lib/ollama/
COPY --from=cuda-12 dist/lib/ollama /lib/ollama/
COPY --from=cuda-13 dist/lib/ollama /lib/ollama/
COPY --from=vulkan dist/lib/ollama /lib/ollama/
FROM --platform=linux/arm64 scratch AS arm64
COPY --from=cuda-11 dist/lib/ollama/cuda_v11 /lib/ollama/cuda_v11
COPY --from=cuda-12 dist/lib/ollama/cuda_v12 /lib/ollama/cuda_v12
COPY --from=jetpack-5 dist/lib/ollama/cuda_v11 /lib/ollama/cuda_jetpack5
COPY --from=jetpack-6 dist/lib/ollama/cuda_v12 /lib/ollama/cuda_jetpack6
# COPY --from=cuda-11 dist/lib/ollama/ /lib/ollama/
COPY --from=cuda-12 dist/lib/ollama /lib/ollama/
COPY --from=cuda-13 dist/lib/ollama/ /lib/ollama/
COPY --from=jetpack-5 dist/lib/ollama/ /lib/ollama/
COPY --from=jetpack-6 dist/lib/ollama/ /lib/ollama/
FROM scratch AS rocm
COPY --from=rocm-6 dist/lib/ollama/rocm /lib/ollama/rocm
COPY --from=rocm-6 dist/lib/ollama /lib/ollama
FROM ${FLAVOR} AS archive
ARG VULKANVERSION
COPY --from=cpu dist/lib/ollama /lib/ollama
COPY --from=build /bin/ollama /bin/ollama
FROM ubuntu:20.04
# Temporary opt-out stages for Vulkan
FROM --platform=linux/amd64 scratch AS amd64_novulkan
# COPY --from=cuda-11 dist/lib/ollama/ /lib/ollama/
COPY --from=cuda-12 dist/lib/ollama /lib/ollama/
COPY --from=cuda-13 dist/lib/ollama /lib/ollama/
FROM arm64 AS arm64_novulkan
FROM ${FLAVOR}_novulkan AS archive_novulkan
COPY --from=cpu dist/lib/ollama /lib/ollama
COPY --from=build /bin/ollama /bin/ollama
FROM ubuntu:24.04 AS novulkan
RUN apt-get update \
&& apt-get install -y ca-certificates \
&& apt-get clean \
&& rm -rf /var/lib/apt/lists/*
COPY --from=archive_novulkan /bin /usr/bin
ENV PATH=/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin
COPY --from=archive_novulkan /lib/ollama /usr/lib/ollama
ENV LD_LIBRARY_PATH=/usr/local/nvidia/lib:/usr/local/nvidia/lib64
ENV NVIDIA_DRIVER_CAPABILITIES=compute,utility
ENV NVIDIA_VISIBLE_DEVICES=all
ENV OLLAMA_HOST=0.0.0.0:11434
EXPOSE 11434
ENTRYPOINT ["/bin/ollama"]
CMD ["serve"]
FROM ubuntu:24.04 AS default
RUN apt-get update \
&& apt-get install -y ca-certificates libvulkan1 \
&& apt-get clean \
&& rm -rf /var/lib/apt/lists/*
COPY --from=archive /bin /usr/bin
ENV PATH=/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin
COPY --from=archive /lib/ollama /usr/lib/ollama

View File

@@ -1,6 +1,6 @@
UPSTREAM=https://github.com/ggerganov/llama.cpp.git
UPSTREAM=https://github.com/ggml-org/llama.cpp.git
WORKDIR=llama/vendor
FETCH_HEAD=71e90e8813f90097701e62f7fce137d96ddf41e2
FETCH_HEAD=7049736b2dd9011bf819e298b844ebbc4b5afdc9
.PHONY: help
help:
@@ -12,31 +12,42 @@ help:
@echo " clean Clean local repository"
@echo
@echo "Example:"
@echo " make -f $(lastword $(MAKEFILE_LIST)) clean sync"
@echo " make -f $(lastword $(MAKEFILE_LIST)) clean apply-patches sync"
.PHONY: sync
sync: llama/build-info.cpp llama/llama.cpp ml/backend/ggml/ggml
sync: llama/build-info.cpp ml/backend/ggml/ggml/src/ggml-metal/ggml-metal-embed.metal
.PHONY: llama/build-info.cpp
llama/build-info.cpp: llama/build-info.cpp.in
sed -e 's|@FETCH_HEAD@|$(FETCH_HEAD)|' $< > $@
llama/build-info.cpp: llama/build-info.cpp.in llama/llama.cpp
sed -e 's|@FETCH_HEAD@|$(FETCH_HEAD)|' <$< >$@
ml/backend/ggml/ggml/src/ggml-metal/ggml-metal-embed.metal: ml/backend/ggml/ggml
go generate ./$(@D)
.PHONY: llama/llama.cpp
llama/llama.cpp: llama/vendor/
rsync -arvzc -f "merge $@/.rsync-filter" $< $@
llama/llama.cpp: llama/vendor
rsync -arvzc --delete -f "include LICENSE" -f "merge $@/.rsync-filter" $(addprefix $<,/LICENSE /) $@
.PHONY: ml/backend/ggml/ggml
ml/backend/ggml/ggml: llama/vendor/ggml/
rsync -arvzc -f "merge $@/.rsync-filter" $< $@
ml/backend/ggml/ggml: llama/vendor
rsync -arvzc --delete -f "include LICENSE" -f "merge $@/.rsync-filter" $(addprefix $<,/LICENSE /ggml/) $@
PATCHES=$(wildcard llama/patches/*.patch)
PATCHED=$(join $(dir $(PATCHES)), $(addsuffix ed, $(addprefix ., $(notdir $(PATCHES)))))
.PHONY: apply-patches
.NOTPARALLEL:
apply-patches: $(addsuffix ed, $(PATCHES))
apply-patches: $(PATCHED)
%.patched: %.patch
@if git -c user.name=nobody -c 'user.email=<>' -C $(WORKDIR) am -3 $(realpath $<); then touch $@; else git -C $(WORKDIR) am --abort; exit 1; fi
llama/patches/.%.patched: llama/patches/%.patch
@if git -c user.name=nobody -c 'user.email=<>' -C $(WORKDIR) am -3 $(realpath $<); then \
touch $@; \
else \
echo "Patch failed. Resolve any conflicts then continue."; \
echo "1. Run 'git -C $(WORKDIR) am --continue'"; \
echo "2. Run 'make -f $(lastword $(MAKEFILE_LIST)) format-patches'"; \
echo "3. Run 'make -f $(lastword $(MAKEFILE_LIST)) clean apply-patches'"; \
exit 1; \
fi
.PHONY: checkout
checkout: $(WORKDIR)
@@ -57,4 +68,5 @@ format-patches: llama/patches
.PHONE: clean
clean: checkout
$(RM) $(addsuffix ed, $(PATCHES))
@git -C $(WORKDIR) am --abort || true
$(RM) llama/patches/.*.patched

View File

@@ -1,6 +1,6 @@
<div align="center">
  <a href="https://ollama.com">
<img alt="ollama" height="200px" src="https://github.com/ollama/ollama/assets/3325447/0d0b44e2-8f4a-4e99-9b52-a5c1c741c8f7">
<img alt="ollama" width="240" src="https://github.com/ollama/ollama/assets/3325447/0d0b44e2-8f4a-4e99-9b52-a5c1c741c8f7">
</a>
</div>
@@ -10,7 +10,7 @@ Get up and running with large language models.
### macOS
[Download](https://ollama.com/download/Ollama-darwin.zip)
[Download](https://ollama.com/download/Ollama.dmg)
### Windows
@@ -62,10 +62,10 @@ The official [Ollama Docker image](https://hub.docker.com/r/ollama/ollama) `olla
## Quickstart
To run and chat with [Llama 3.2](https://ollama.com/library/llama3.2):
To run and chat with [Gemma 3](https://ollama.com/library/gemma3):
```shell
ollama run llama3.2
ollama run gemma3
```
## Model library
@@ -83,6 +83,8 @@ Here are some example models that can be downloaded:
| QwQ | 32B | 20GB | `ollama run qwq` |
| DeepSeek-R1 | 7B | 4.7GB | `ollama run deepseek-r1` |
| DeepSeek-R1 | 671B | 404GB | `ollama run deepseek-r1:671b` |
| Llama 4 | 109B | 67GB | `ollama run llama4:scout` |
| Llama 4 | 400B | 245GB | `ollama run llama4:maverick` |
| Llama 3.3 | 70B | 43GB | `ollama run llama3.3` |
| Llama 3.2 | 3B | 2.0GB | `ollama run llama3.2` |
| Llama 3.2 | 1B | 1.3GB | `ollama run llama3.2:1b` |
@@ -99,7 +101,7 @@ Here are some example models that can be downloaded:
| Code Llama | 7B | 3.8GB | `ollama run codellama` |
| Llama 2 Uncensored | 7B | 3.8GB | `ollama run llama2-uncensored` |
| LLaVA | 7B | 4.5GB | `ollama run llava` |
| Granite-3.2 | 8B | 4.9GB | `ollama run granite3.2` |
| Granite-3.3 | 8B | 4.9GB | `ollama run granite3.3` |
> [!NOTE]
> You should have at least 8 GB of RAM available to run the 7B models, 16 GB to run the 13B models, and 32 GB to run the 33B models.
@@ -307,7 +309,7 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [Bionic GPT](https://github.com/bionic-gpt/bionic-gpt)
- [HTML UI](https://github.com/rtcfirefly/ollama-ui)
- [Saddle](https://github.com/jikkuatwork/saddle)
- [TagSpaces](https://www.tagspaces.org) (A platform for file based apps, [utilizing Ollama](https://docs.tagspaces.org/ai/) for the generation of tags and descriptions)
- [TagSpaces](https://www.tagspaces.org) (A platform for file-based apps, [utilizing Ollama](https://docs.tagspaces.org/ai/) for the generation of tags and descriptions)
- [Chatbot UI](https://github.com/ivanfioravanti/chatbot-ollama)
- [Chatbot UI v2](https://github.com/mckaywrigley/chatbot-ui)
- [Typescript UI](https://github.com/ollama-interface/Ollama-Gui?tab=readme-ov-file)
@@ -334,6 +336,8 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [Ollama Basic Chat: Uses HyperDiv Reactive UI](https://github.com/rapidarchitect/ollama_basic_chat)
- [Ollama-chats RPG](https://github.com/drazdra/ollama-chats)
- [IntelliBar](https://intellibar.app/) (AI-powered assistant for macOS)
- [Jirapt](https://github.com/AliAhmedNada/jirapt) (Jira Integration to generate issues, tasks, epics)
- [ojira](https://github.com/AliAhmedNada/ojira) (Jira chrome plugin to easily generate descriptions for tasks)
- [QA-Pilot](https://github.com/reid41/QA-Pilot) (Interactive chat tool that can leverage Ollama models for rapid understanding and navigation of GitHub code repositories)
- [ChatOllama](https://github.com/sugarforever/chat-ollama) (Open Source Chatbot based on Ollama with Knowledge Bases)
- [CRAG Ollama Chat](https://github.com/Nagi-ovo/CRAG-Ollama-Chat) (Simple Web Search with Corrective RAG)
@@ -347,14 +351,14 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [RWKV-Runner](https://github.com/josStorer/RWKV-Runner) (RWKV offline LLM deployment tool, also usable as a client for ChatGPT and Ollama)
- [Ollama Grid Search](https://github.com/dezoito/ollama-grid-search) (app to evaluate and compare models)
- [Olpaka](https://github.com/Otacon/olpaka) (User-friendly Flutter Web App for Ollama)
- [Casibase](https://casibase.org) (An open source AI knowledge base and dialogue system combining the latest RAG, SSO, ollama support and multiple large language models.)
- [Casibase](https://casibase.org) (An open source AI knowledge base and dialogue system combining the latest RAG, SSO, ollama support, and multiple large language models.)
- [OllamaSpring](https://github.com/CrazyNeil/OllamaSpring) (Ollama Client for macOS)
- [LLocal.in](https://github.com/kartikm7/llocal) (Easy to use Electron Desktop Client for Ollama)
- [Shinkai Desktop](https://github.com/dcSpark/shinkai-apps) (Two click install Local AI using Ollama + Files + RAG)
- [AiLama](https://github.com/zeyoyt/ailama) (A Discord User App that allows you to interact with Ollama anywhere in discord )
- [AiLama](https://github.com/zeyoyt/ailama) (A Discord User App that allows you to interact with Ollama anywhere in Discord)
- [Ollama with Google Mesop](https://github.com/rapidarchitect/ollama_mesop/) (Mesop Chat Client implementation with Ollama)
- [R2R](https://github.com/SciPhi-AI/R2R) (Open-source RAG engine)
- [Ollama-Kis](https://github.com/elearningshow/ollama-kis) (A simple easy to use GUI with sample custom LLM for Drivers Education)
- [Ollama-Kis](https://github.com/elearningshow/ollama-kis) (A simple easy-to-use GUI with sample custom LLM for Drivers Education)
- [OpenGPA](https://opengpa.org) (Open-source offline-first Enterprise Agentic Application)
- [Painting Droid](https://github.com/mateuszmigas/painting-droid) (Painting app with AI integrations)
- [Kerlig AI](https://www.kerlig.com/) (AI writing assistant for macOS)
@@ -363,22 +367,22 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [LLMStack](https://github.com/trypromptly/LLMStack) (No-code multi-agent framework to build LLM agents and workflows)
- [BoltAI for Mac](https://boltai.com) (AI Chat Client for Mac)
- [Harbor](https://github.com/av/harbor) (Containerized LLM Toolkit with Ollama as default backend)
- [PyGPT](https://github.com/szczyglis-dev/py-gpt) (AI desktop assistant for Linux, Windows and Mac)
- [Alpaca](https://github.com/Jeffser/Alpaca) (An Ollama client application for linux and macos made with GTK4 and Adwaita)
- [PyGPT](https://github.com/szczyglis-dev/py-gpt) (AI desktop assistant for Linux, Windows, and Mac)
- [Alpaca](https://github.com/Jeffser/Alpaca) (An Ollama client application for Linux and macOS made with GTK4 and Adwaita)
- [AutoGPT](https://github.com/Significant-Gravitas/AutoGPT/blob/master/docs/content/platform/ollama.md) (AutoGPT Ollama integration)
- [Go-CREW](https://www.jonathanhecl.com/go-crew/) (Powerful Offline RAG in Golang)
- [PartCAD](https://github.com/openvmp/partcad/) (CAD model generation with OpenSCAD and CadQuery)
- [Ollama4j Web UI](https://github.com/ollama4j/ollama4j-web-ui) - Java-based Web UI for Ollama built with Vaadin, Spring Boot and Ollama4j
- [Ollama4j Web UI](https://github.com/ollama4j/ollama4j-web-ui) - Java-based Web UI for Ollama built with Vaadin, Spring Boot, and Ollama4j
- [PyOllaMx](https://github.com/kspviswa/pyOllaMx) - macOS application capable of chatting with both Ollama and Apple MLX models.
- [Cline](https://github.com/cline/cline) - Formerly known as Claude Dev is a VSCode extension for multi-file/whole-repo coding
- [Cherry Studio](https://github.com/kangfenmao/cherry-studio) (Desktop client with Ollama support)
- [ConfiChat](https://github.com/1runeberg/confichat) (Lightweight, standalone, multi-platform, and privacy focused LLM chat interface with optional encryption)
- [ConfiChat](https://github.com/1runeberg/confichat) (Lightweight, standalone, multi-platform, and privacy-focused LLM chat interface with optional encryption)
- [Archyve](https://github.com/nickthecook/archyve) (RAG-enabling document library)
- [crewAI with Mesop](https://github.com/rapidarchitect/ollama-crew-mesop) (Mesop Web Interface to run crewAI with Ollama)
- [Tkinter-based client](https://github.com/chyok/ollama-gui) (Python tkinter-based Client for Ollama)
- [LLMChat](https://github.com/trendy-design/llmchat) (Privacy focused, 100% local, intuitive all-in-one chat interface)
- [Local Multimodal AI Chat](https://github.com/Leon-Sander/Local-Multimodal-AI-Chat) (Ollama-based LLM Chat with support for multiple features, including PDF RAG, voice chat, image-based interactions, and integration with OpenAI.)
- [ARGO](https://github.com/xark-argo/argo) (Locally download and run Ollama and Huggingface models with RAG on Mac/Windows/Linux)
- [ARGO](https://github.com/xark-argo/argo) (Locally download and run Ollama and Huggingface models with RAG and deep research on Mac/Windows/Linux)
- [OrionChat](https://github.com/EliasPereirah/OrionChat) - OrionChat is a web interface for chatting with different AI providers
- [G1](https://github.com/bklieger-groq/g1) (Prototype of using prompting strategies to improve the LLM's reasoning through o1-like reasoning chains.)
- [Web management](https://github.com/lemonit-eric-mao/ollama-web-management) (Web management page)
@@ -390,7 +394,7 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [DualMind](https://github.com/tcsenpai/dualmind) (Experimental app allowing two models to talk to each other in the terminal or in a web interface)
- [ollamarama-matrix](https://github.com/h1ddenpr0cess20/ollamarama-matrix) (Ollama chatbot for the Matrix chat protocol)
- [ollama-chat-app](https://github.com/anan1213095357/ollama-chat-app) (Flutter-based chat app)
- [Perfect Memory AI](https://www.perfectmemory.ai/) (Productivity AI assists personalized by what you have seen on your screen, heard and said in the meetings)
- [Perfect Memory AI](https://www.perfectmemory.ai/) (Productivity AI assists personalized by what you have seen on your screen, heard, and said in the meetings)
- [Hexabot](https://github.com/hexastack/hexabot) (A conversational AI builder)
- [Reddit Rate](https://github.com/rapidarchitect/reddit_analyzer) (Search and Rate Reddit topics with a weighted summation)
- [OpenTalkGpt](https://github.com/adarshM84/OpenTalkGpt) (Chrome Extension to manage open-source models supported by Ollama, create custom models, and chat with models from a user-friendly UI)
@@ -408,7 +412,7 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [ChibiChat](https://github.com/CosmicEventHorizon/ChibiChat) (Kotlin-based Android app to chat with Ollama and Koboldcpp API endpoints)
- [LocalLLM](https://github.com/qusaismael/localllm) (Minimal Web-App to run ollama models on it with a GUI)
- [Ollamazing](https://github.com/buiducnhat/ollamazing) (Web extension to run Ollama models)
- [OpenDeepResearcher-via-searxng](https://github.com/benhaotang/OpenDeepResearcher-via-searxng) (A Deep Research equivent endpoint with Ollama support for running locally)
- [OpenDeepResearcher-via-searxng](https://github.com/benhaotang/OpenDeepResearcher-via-searxng) (A Deep Research equivalent endpoint with Ollama support for running locally)
- [AntSK](https://github.com/AIDotNet/AntSK) (Out-of-the-box & Adaptable RAG Chatbot)
- [MaxKB](https://github.com/1Panel-dev/MaxKB/) (Ready-to-use & flexible RAG Chatbot)
- [yla](https://github.com/danielekp/yla) (Web interface to freely interact with your customized models)
@@ -416,11 +420,23 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [1Panel](https://github.com/1Panel-dev/1Panel/) (Web-based Linux Server Management Tool)
- [AstrBot](https://github.com/Soulter/AstrBot/) (User-friendly LLM-based multi-platform chatbot with a WebUI, supporting RAG, LLM agents, and plugins integration)
- [Reins](https://github.com/ibrahimcetin/reins) (Easily tweak parameters, customize system prompts per chat, and enhance your AI experiments with reasoning model support.)
- [Flufy](https://github.com/Aharon-Bensadoun/Flufy) (A beautiful chat interface for interacting with Ollama's API. Built with React, TypeScript, and Material-UI.)
- [Ellama](https://github.com/zeozeozeo/ellama) (Friendly native app to chat with an Ollama instance)
- [screenpipe](https://github.com/mediar-ai/screenpipe) Build agents powered by your screen history
- [Ollamb](https://github.com/hengkysteen/ollamb) (Simple yet rich in features, cross-platform built with Flutter and designed for Ollama. Try the [web demo](https://hengkysteen.github.io/demo/ollamb/).)
- [Writeopia](https://github.com/Writeopia/Writeopia) (Text editor with integration with Ollama)
- [AppFlowy](https://github.com/AppFlowy-IO/AppFlowy) (AI collaborative workspace with Ollama, cross-platform and self-hostable)
- [Lumina](https://github.com/cushydigit/lumina.git) (A lightweight, minimal React.js frontend for interacting with Ollama servers)
- [Tiny Notepad](https://pypi.org/project/tiny-notepad) (A lightweight, notepad-like interface to chat with ollama available on PyPI)
- [macLlama (macOS native)](https://github.com/hellotunamayo/macLlama) (A native macOS GUI application for interacting with Ollama models, featuring a chat interface.)
- [GPTranslate](https://github.com/philberndt/GPTranslate) (A fast and lightweight, AI powered desktop translation application written with Rust and Tauri. Features real-time translation with OpenAI/Azure/Ollama.)
- [ollama launcher](https://github.com/NGC13009/ollama-launcher) (A launcher for Ollama, aiming to provide users with convenient functions such as ollama server launching, management, or configuration.)
- [ai-hub](https://github.com/Aj-Seven/ai-hub) (AI Hub supports multiple models via API keys and Chat support via Ollama API.)
- [Mayan EDMS](https://gitlab.com/mayan-edms/mayan-edms) (Open source document management system to organize, tag, search, and automate your files with powerful Ollama driven workflows.)
- [Serene Pub](https://github.com/doolijb/serene-pub) (Beginner friendly, open source AI Roleplaying App for Windows, Mac OS and Linux. Search, download and use models with Ollama all inside the app.)
- [Andes](https://github.com/aqerd/andes) (A Visual Studio Code extension that provides a local UI interface for Ollama models)
- [Clueless](https://github.com/KashyapTan/clueless) (Open Source & Local Cluely: A desktop application LLM assistant to help you talk to anything on your screen using locally served Ollama models. Also undetectable to screenshare)
- [ollama-co2](https://github.com/carbonatedWaterOrg/ollama-co2) (FastAPI web interface for monitoring and managing local and remote Ollama servers with real-time model monitoring and concurrent downloads)
### Cloud
@@ -462,8 +478,11 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [PowershAI](https://github.com/rrg92/powershai) PowerShell module that brings AI to terminal on Windows, including support for Ollama
- [DeepShell](https://github.com/Abyss-c0re/deepshell) Your self-hosted AI assistant. Interactive Shell, Files and Folders analysis.
- [orbiton](https://github.com/xyproto/orbiton) Configuration-free text editor and IDE with support for tab completion with Ollama.
- [orca-cli](https://github.com/molbal/orca-cli) Ollama Registry CLI Application - Browse, pull and download models from Ollama Registry in your terminal.
- [orca-cli](https://github.com/molbal/orca-cli) Ollama Registry CLI Application - Browse, pull, and download models from Ollama Registry in your terminal.
- [GGUF-to-Ollama](https://github.com/jonathanhecl/gguf-to-ollama) - Importing GGUF to Ollama made easy (multiplatform)
- [AWS-Strands-With-Ollama](https://github.com/rapidarchitect/ollama_strands) - AWS Strands Agents with Ollama Examples
- [ollama-multirun](https://github.com/attogram/ollama-multirun) - A bash shell script to run a single prompt against any or all of your locally installed ollama models, saving the output and performance statistics as easily navigable web pages. ([Demo](https://attogram.github.io/ai_test_zone/))
- [ollama-bash-toolshed](https://github.com/attogram/ollama-bash-toolshed) - Bash scripts to chat with tool using models. Add new tools to your shed with ease. Runs on Ollama.
### Apple Vision Pro
@@ -490,7 +509,7 @@ See the [API documentation](./docs/api.md) for all endpoints.
### Libraries
- [LangChain](https://python.langchain.com/docs/integrations/llms/ollama) and [LangChain.js](https://js.langchain.com/docs/integrations/chat/ollama/) with [example](https://js.langchain.com/docs/tutorials/local_rag/)
- [LangChain](https://python.langchain.com/docs/integrations/chat/ollama/) and [LangChain.js](https://js.langchain.com/docs/integrations/chat/ollama/) with [example](https://js.langchain.com/docs/tutorials/local_rag/)
- [Firebase Genkit](https://firebase.google.com/docs/genkit/plugins/ollama)
- [crewAI](https://github.com/crewAIInc/crewAI)
- [Yacana](https://remembersoftwares.github.io/yacana/) (User-friendly multi-agent framework for brainstorming and executing predetermined flows with built-in tool integration)
@@ -537,20 +556,25 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [Swollama for Swift](https://github.com/marcusziade/Swollama) with [DocC](https://marcusziade.github.io/Swollama/documentation/swollama/)
- [GoLamify](https://github.com/prasad89/golamify)
- [Ollama for Haskell](https://github.com/tusharad/ollama-haskell)
- [multi-llm-ts](https://github.com/nbonamy/multi-llm-ts) (A Typescript/JavaScript library allowing access to different LLM in unified API)
- [multi-llm-ts](https://github.com/nbonamy/multi-llm-ts) (A Typescript/JavaScript library allowing access to different LLM in a unified API)
- [LlmTornado](https://github.com/lofcz/llmtornado) (C# library providing a unified interface for major FOSS & Commercial inference APIs)
- [Ollama for Zig](https://github.com/dravenk/ollama-zig)
- [Abso](https://github.com/lunary-ai/abso) (OpenAI-compatible TypeScript SDK for any LLM provider)
- [Nichey](https://github.com/goodreasonai/nichey) is a Python package for generating custom wikis for your research topic
- [Ollama for D](https://github.com/kassane/ollama-d)
- [OllamaPlusPlus](https://github.com/HardCodeDev777/OllamaPlusPlus) (Very simple C++ library for Ollama)
- [any-llm](https://github.com/mozilla-ai/any-llm) (A single interface to use different llm providers by [mozilla.ai](https://www.mozilla.ai/))
- [any-agent](https://github.com/mozilla-ai/any-agent) (A single interface to use and evaluate different agent frameworks by [mozilla.ai](https://www.mozilla.ai/))
- [Neuro SAN](https://github.com/cognizant-ai-lab/neuro-san-studio) (Data-driven multi-agent orchestration framework) with [example](https://github.com/cognizant-ai-lab/neuro-san-studio/blob/main/docs/user_guide.md#ollama)
- [achatbot-go](https://github.com/ai-bot-pro/achatbot-go) a multimodal(text/audio/image) chatbot.
### Mobile
- [SwiftChat](https://github.com/aws-samples/swift-chat) (Lightning-fast Cross-platform AI chat app with native UI for Android, iOS and iPad)
- [SwiftChat](https://github.com/aws-samples/swift-chat) (Lightning-fast Cross-platform AI chat app with native UI for Android, iOS, and iPad)
- [Enchanted](https://github.com/AugustDev/enchanted)
- [Maid](https://github.com/Mobile-Artificial-Intelligence/maid)
- [Ollama App](https://github.com/JHubi1/ollama-app) (Modern and easy-to-use multi-platform client for Ollama)
- [ConfiChat](https://github.com/1runeberg/confichat) (Lightweight, standalone, multi-platform, and privacy focused LLM chat interface with optional encryption)
- [ConfiChat](https://github.com/1runeberg/confichat) (Lightweight, standalone, multi-platform, and privacy-focused LLM chat interface with optional encryption)
- [Ollama Android Chat](https://github.com/sunshine0523/OllamaServer) (No need for Termux, start the Ollama service with one click on an Android device)
- [Reins](https://github.com/ibrahimcetin/reins) (Easily tweak parameters, customize system prompts per chat, and enhance your AI experiments with reasoning model support.)
@@ -574,7 +598,7 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [Obsidian Local GPT plugin](https://github.com/pfrankov/obsidian-local-gpt)
- [Open Interpreter](https://docs.openinterpreter.com/language-model-setup/local-models/ollama)
- [Llama Coder](https://github.com/ex3ndr/llama-coder) (Copilot alternative using Ollama)
- [Ollama Copilot](https://github.com/bernardo-bruning/ollama-copilot) (Proxy that allows you to use ollama as a copilot like Github copilot)
- [Ollama Copilot](https://github.com/bernardo-bruning/ollama-copilot) (Proxy that allows you to use Ollama as a copilot like GitHub Copilot)
- [twinny](https://github.com/rjmacarthy/twinny) (Copilot and Copilot chat alternative using Ollama)
- [Wingman-AI](https://github.com/RussellCanfield/wingman-ai) (Copilot code and chat alternative using Ollama and Hugging Face)
- [Page Assist](https://github.com/n4ze3m/page-assist) (Chrome Extension)
@@ -584,8 +608,8 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [Discord-Ollama Chat Bot](https://github.com/kevinthedang/discord-ollama) (Generalized TypeScript Discord Bot w/ Tuning Documentation)
- [ChatGPTBox: All in one browser extension](https://github.com/josStorer/chatGPTBox) with [Integrating Tutorial](https://github.com/josStorer/chatGPTBox/issues/616#issuecomment-1975186467)
- [Discord AI chat/moderation bot](https://github.com/rapmd73/Companion) Chat/moderation bot written in python. Uses Ollama to create personalities.
- [Headless Ollama](https://github.com/nischalj10/headless-ollama) (Scripts to automatically install ollama client & models on any OS for apps that depends on ollama server)
- [Terraform AWS Ollama & Open WebUI](https://github.com/xuyangbocn/terraform-aws-self-host-llm) (A Terraform module to deploy on AWS a ready-to-use Ollama service, together with its front end Open WebUI service.)
- [Headless Ollama](https://github.com/nischalj10/headless-ollama) (Scripts to automatically install ollama client & models on any OS for apps that depend on ollama server)
- [Terraform AWS Ollama & Open WebUI](https://github.com/xuyangbocn/terraform-aws-self-host-llm) (A Terraform module to deploy on AWS a ready-to-use Ollama service, together with its front-end Open WebUI service.)
- [node-red-contrib-ollama](https://github.com/jakubburkiewicz/node-red-contrib-ollama)
- [Local AI Helper](https://github.com/ivostoykov/localAI) (Chrome and Firefox extensions that enable interactions with the active tab and customisable API endpoints. Includes secure storage for user prompts.)
- [vnc-lm](https://github.com/jake83741/vnc-lm) (Discord bot for messaging with LLMs through Ollama and LiteLLM. Seamlessly move between local and flagship models.)
@@ -599,10 +623,15 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [Simple-Discord-AI](https://github.com/zyphixor/simple-discord-ai)
- [LLM Telegram Bot](https://github.com/innightwolfsleep/llm_telegram_bot) (telegram bot, primary for RP. Oobabooga-like buttons, [A1111](https://github.com/AUTOMATIC1111/stable-diffusion-webui) API integration e.t.c)
- [mcp-llm](https://github.com/sammcj/mcp-llm) (MCP Server to allow LLMs to call other LLMs)
- [SimpleOllamaUnity](https://github.com/HardCodeDev777/SimpleOllamaUnity) (Unity Engine extension for communicating with Ollama in a few lines of code. Also works at runtime)
- [UnityCodeLama](https://github.com/HardCodeDev777/UnityCodeLama) (Unity Edtior tool to analyze scripts via Ollama)
- [NativeMind](https://github.com/NativeMindBrowser/NativeMindExtension) (Private, on-device AI Assistant, no cloud dependencies)
- [GMAI - Gradle Managed AI](https://gmai.premex.se/) (Gradle plugin for automated Ollama lifecycle management during build phases)
- [NOMYO Router](https://github.com/nomyo-ai/nomyo-router) (A transparent Ollama proxy with model deployment aware routing which auto-manages multiple Ollama instances in a given network)
### Supported backends
- [llama.cpp](https://github.com/ggerganov/llama.cpp) project founded by Georgi Gerganov.
- [llama.cpp](https://github.com/ggml-org/llama.cpp) project founded by Georgi Gerganov.
### Observability
- [Opik](https://www.comet.com/docs/opik/cookbook/ollama) is an open-source platform to debug, evaluate, and monitor your LLM applications, RAG systems, and agentic workflows with comprehensive tracing, automated evaluations, and production-ready dashboards. Opik supports native intergration to Ollama.

View File

@@ -24,7 +24,10 @@ import (
"net/http"
"net/url"
"runtime"
"strconv"
"time"
"github.com/ollama/ollama/auth"
"github.com/ollama/ollama/envconfig"
"github.com/ollama/ollama/format"
"github.com/ollama/ollama/version"
@@ -42,6 +45,12 @@ func checkError(resp *http.Response, body []byte) error {
return nil
}
if resp.StatusCode == http.StatusUnauthorized {
authError := AuthorizationError{StatusCode: resp.StatusCode}
json.Unmarshal(body, &authError)
return authError
}
apiError := StatusError{StatusCode: resp.StatusCode}
err := json.Unmarshal(body, &apiError)
@@ -76,6 +85,14 @@ func NewClient(base *url.URL, http *http.Client) *Client {
}
}
func getAuthorizationToken(ctx context.Context, challenge string) (string, error) {
token, err := auth.Sign(ctx, []byte(challenge))
if err != nil {
return "", err
}
return token, nil
}
func (c *Client) do(ctx context.Context, method, path string, reqData, respData any) error {
var reqBody io.Reader
var data []byte
@@ -97,6 +114,21 @@ func (c *Client) do(ctx context.Context, method, path string, reqData, respData
}
requestURL := c.base.JoinPath(path)
var token string
if envconfig.UseAuth() || c.base.Hostname() == "ollama.com" {
now := strconv.FormatInt(time.Now().Unix(), 10)
chal := fmt.Sprintf("%s,%s?ts=%s", method, path, now)
token, err = getAuthorizationToken(ctx, chal)
if err != nil {
return err
}
q := requestURL.Query()
q.Set("ts", now)
requestURL.RawQuery = q.Encode()
}
request, err := http.NewRequestWithContext(ctx, method, requestURL.String(), reqBody)
if err != nil {
return err
@@ -106,6 +138,10 @@ func (c *Client) do(ctx context.Context, method, path string, reqData, respData
request.Header.Set("Accept", "application/json")
request.Header.Set("User-Agent", fmt.Sprintf("ollama/%s (%s %s) Go/%s", version.Version, runtime.GOARCH, runtime.GOOS, runtime.Version()))
if token != "" {
request.Header.Set("Authorization", token)
}
respObj, err := c.http.Do(request)
if err != nil {
return err
@@ -143,6 +179,22 @@ func (c *Client) stream(ctx context.Context, method, path string, data any, fn f
}
requestURL := c.base.JoinPath(path)
var token string
if envconfig.UseAuth() || c.base.Hostname() == "ollama.com" {
var err error
now := strconv.FormatInt(time.Now().Unix(), 10)
chal := fmt.Sprintf("%s,%s?ts=%s", method, path, now)
token, err = getAuthorizationToken(ctx, chal)
if err != nil {
return err
}
q := requestURL.Query()
q.Set("ts", now)
requestURL.RawQuery = q.Encode()
}
request, err := http.NewRequestWithContext(ctx, method, requestURL.String(), buf)
if err != nil {
return err
@@ -152,6 +204,10 @@ func (c *Client) stream(ctx context.Context, method, path string, data any, fn f
request.Header.Set("Accept", "application/x-ndjson")
request.Header.Set("User-Agent", fmt.Sprintf("ollama/%s (%s %s) Go/%s", version.Version, runtime.GOARCH, runtime.GOOS, runtime.Version()))
if token != "" {
request.Header.Set("Authorization", token)
}
response, err := c.http.Do(request)
if err != nil {
return err
@@ -164,7 +220,8 @@ func (c *Client) stream(ctx context.Context, method, path string, data any, fn f
scanner.Buffer(scanBuf, maxBufferSize)
for scanner.Scan() {
var errorResponse struct {
Error string `json:"error,omitempty"`
Error string `json:"error,omitempty"`
SigninURL string `json:"signin_url,omitempty"`
}
bts := scanner.Bytes()
@@ -172,11 +229,13 @@ func (c *Client) stream(ctx context.Context, method, path string, data any, fn f
return fmt.Errorf("unmarshal: %w", err)
}
if errorResponse.Error != "" {
return errors.New(errorResponse.Error)
}
if response.StatusCode >= http.StatusBadRequest {
if response.StatusCode == http.StatusUnauthorized {
return AuthorizationError{
StatusCode: response.StatusCode,
Status: response.Status,
SigninURL: errorResponse.SigninURL,
}
} else if response.StatusCode >= http.StatusBadRequest {
return StatusError{
StatusCode: response.StatusCode,
Status: response.Status,
@@ -184,6 +243,10 @@ func (c *Client) stream(ctx context.Context, method, path string, data any, fn f
}
}
if errorResponse.Error != "" {
return errors.New(errorResponse.Error)
}
if err := fn(bts); err != nil {
return err
}
@@ -378,3 +441,21 @@ func (c *Client) Version(ctx context.Context) (string, error) {
return version.Version, nil
}
// Signout will signout a client for a local ollama server.
func (c *Client) Signout(ctx context.Context) error {
return c.do(ctx, http.MethodPost, "/api/signout", nil, nil)
}
// Disconnect will disconnect an ollama instance from ollama.com.
func (c *Client) Disconnect(ctx context.Context, encodedKey string) error {
return c.do(ctx, http.MethodDelete, fmt.Sprintf("/api/user/keys/%s", encodedKey), nil, nil)
}
func (c *Client) Whoami(ctx context.Context) (*UserResponse, error) {
var resp UserResponse
if err := c.do(ctx, http.MethodPost, "/api/me", nil, &resp); err != nil {
return nil, err
}
return &resp, nil
}

View File

@@ -1,7 +1,6 @@
package api
import (
"context"
"encoding/json"
"fmt"
"net/http"
@@ -90,6 +89,16 @@ func TestClientStream(t *testing.T) {
},
wantErr: "mid-stream error",
},
{
name: "http status error takes precedence over general error",
responses: []any{
testError{
message: "custom error message",
statusCode: http.StatusInternalServerError,
},
},
wantErr: "500",
},
{
name: "successful stream completion",
responses: []any{
@@ -137,7 +146,7 @@ func TestClientStream(t *testing.T) {
client := NewClient(&url.URL{Scheme: "http", Host: ts.Listener.Addr().String()}, http.DefaultClient)
var receivedChunks []ChatResponse
err := client.stream(context.Background(), http.MethodPost, "/v1/chat", nil, func(chunk []byte) error {
err := client.stream(t.Context(), http.MethodPost, "/v1/chat", nil, func(chunk []byte) error {
var resp ChatResponse
if err := json.Unmarshal(chunk, &resp); err != nil {
return fmt.Errorf("failed to unmarshal chunk: %w", err)
@@ -223,7 +232,7 @@ func TestClientDo(t *testing.T) {
ID string `json:"id"`
Success bool `json:"success"`
}
err := client.do(context.Background(), http.MethodPost, "/v1/messages", nil, &resp)
err := client.do(t.Context(), http.MethodPost, "/v1/messages", nil, &resp)
if tc.wantErr != "" {
if err == nil {

View File

@@ -11,6 +11,8 @@ import (
"strings"
"time"
"github.com/google/uuid"
"github.com/ollama/ollama/envconfig"
"github.com/ollama/ollama/types/model"
)
@@ -36,6 +38,19 @@ func (e StatusError) Error() string {
}
}
type AuthorizationError struct {
StatusCode int
Status string
SigninURL string `json:"signin_url"`
}
func (e AuthorizationError) Error() string {
if e.Status != "" {
return e.Status
}
return "something went wrong, please see the ollama server logs for details"
}
// ImageData represents the raw binary data of an image file.
type ImageData []byte
@@ -83,6 +98,25 @@ type GenerateRequest struct {
// Options lists model-specific options. For example, temperature can be
// set through this field, if the model supports it.
Options map[string]any `json:"options"`
// Think controls whether thinking/reasoning models will think before
// responding. Can be a boolean (true/false) or a string ("high", "medium", "low")
// for supported models. Needs to be a pointer so we can distinguish between false
// (request that thinking _not_ be used) and unset (use the old behavior
// before this option was introduced)
Think *ThinkValue `json:"think,omitempty"`
// Truncate is a boolean that, when set to true, truncates the chat history messages
// if the rendered prompt exceeds the context length limit.
Truncate *bool `json:"truncate,omitempty"`
// Shift is a boolean that, when set to true, shifts the chat history
// when hitting the context length limit instead of erroring.
Shift *bool `json:"shift,omitempty"`
// DebugRenderOnly is a debug option that, when set to true, returns the rendered
// template instead of calling the model.
DebugRenderOnly bool `json:"_debug_render_only,omitempty"`
}
// ChatRequest describes a request sent by [Client.Chat].
@@ -108,6 +142,23 @@ type ChatRequest struct {
// Options lists model-specific options.
Options map[string]any `json:"options"`
// Think controls whether thinking/reasoning models will think before
// responding. Can be a boolean (true/false) or a string ("high", "medium", "low")
// for supported models.
Think *ThinkValue `json:"think,omitempty"`
// Truncate is a boolean that, when set to true, truncates the chat history messages
// if the rendered prompt exceeds the context length limit.
Truncate *bool `json:"truncate,omitempty"`
// Shift is a boolean that, when set to true, shifts the chat history
// when hitting the context length limit instead of erroring.
Shift *bool `json:"shift,omitempty"`
// DebugRenderOnly is a debug option that, when set to true, returns the rendered
// template instead of calling the model.
DebugRenderOnly bool `json:"_debug_render_only,omitempty"`
}
type Tools []Tool
@@ -126,10 +177,14 @@ func (t Tool) String() string {
// role ("system", "user", or "assistant"), the content and an optional list
// of images.
type Message struct {
Role string `json:"role"`
Content string `json:"content"`
Role string `json:"role"`
Content string `json:"content"`
// Thinking contains the text that was inside thinking tags in the
// original model output when ChatRequest.Think is enabled.
Thinking string `json:"thinking,omitempty"`
Images []ImageData `json:"images,omitempty"`
ToolCalls []ToolCall `json:"tool_calls,omitempty"`
ToolName string `json:"tool_name,omitempty"`
}
func (m *Message) UnmarshalJSON(b []byte) error {
@@ -149,7 +204,7 @@ type ToolCall struct {
}
type ToolCallFunction struct {
Index int `json:"index,omitempty"`
Index int `json:"index"`
Name string `json:"name"`
Arguments ToolCallFunctionArguments `json:"arguments"`
}
@@ -209,21 +264,76 @@ func (pt PropertyType) String() string {
return fmt.Sprintf("%v", []string(pt))
}
type ToolProperty struct {
AnyOf []ToolProperty `json:"anyOf,omitempty"`
Type PropertyType `json:"type,omitempty"`
Items any `json:"items,omitempty"`
Description string `json:"description,omitempty"`
Enum []any `json:"enum,omitempty"`
}
// ToTypeScriptType converts a ToolProperty to a TypeScript type string
func (tp ToolProperty) ToTypeScriptType() string {
if len(tp.AnyOf) > 0 {
var types []string
for _, anyOf := range tp.AnyOf {
types = append(types, anyOf.ToTypeScriptType())
}
return strings.Join(types, " | ")
}
if len(tp.Type) == 0 {
return "any"
}
if len(tp.Type) == 1 {
return mapToTypeScriptType(tp.Type[0])
}
var types []string
for _, t := range tp.Type {
types = append(types, mapToTypeScriptType(t))
}
return strings.Join(types, " | ")
}
// mapToTypeScriptType maps JSON Schema types to TypeScript types
func mapToTypeScriptType(jsonType string) string {
switch jsonType {
case "string":
return "string"
case "number", "integer":
return "number"
case "boolean":
return "boolean"
case "array":
return "any[]"
case "object":
return "Record<string, any>"
case "null":
return "null"
default:
return "any"
}
}
type ToolFunctionParameters struct {
Type string `json:"type"`
Defs any `json:"$defs,omitempty"`
Items any `json:"items,omitempty"`
Required []string `json:"required"`
Properties map[string]ToolProperty `json:"properties"`
}
func (t *ToolFunctionParameters) String() string {
bts, _ := json.Marshal(t)
return string(bts)
}
type ToolFunction struct {
Name string `json:"name"`
Description string `json:"description"`
Parameters struct {
Type string `json:"type"`
Defs any `json:"$defs,omitempty"`
Items any `json:"items,omitempty"`
Required []string `json:"required"`
Properties map[string]struct {
Type PropertyType `json:"type"`
Items any `json:"items,omitempty"`
Description string `json:"description"`
Enum []any `json:"enum,omitempty"`
} `json:"properties"`
} `json:"parameters"`
Name string `json:"name"`
Description string `json:"description,omitempty"`
Parameters ToolFunctionParameters `json:"parameters"`
}
func (t *ToolFunction) String() string {
@@ -234,16 +344,38 @@ func (t *ToolFunction) String() string {
// ChatResponse is the response returned by [Client.Chat]. Its fields are
// similar to [GenerateResponse].
type ChatResponse struct {
Model string `json:"model"`
CreatedAt time.Time `json:"created_at"`
Message Message `json:"message"`
DoneReason string `json:"done_reason,omitempty"`
// Model is the model name that generated the response.
Model string `json:"model"`
// RemoteModel is the name of the upstream model that generated the response.
RemoteModel string `json:"remote_model,omitempty"`
// RemoteHost is the URL of the upstream Ollama host that generated the response.
RemoteHost string `json:"remote_host,omitempty"`
// CreatedAt is the timestamp of the response.
CreatedAt time.Time `json:"created_at"`
// Message contains the message or part of a message from the model.
Message Message `json:"message"`
// Done specifies if the response is complete.
Done bool `json:"done"`
// DoneReason is the reason the model stopped generating text.
DoneReason string `json:"done_reason,omitempty"`
DebugInfo *DebugInfo `json:"_debug_info,omitempty"`
Metrics
}
// DebugInfo contains debug information for template rendering
type DebugInfo struct {
RenderedTemplate string `json:"rendered_template"`
ImageCount int `json:"image_count,omitempty"`
}
type Metrics struct {
TotalDuration time.Duration `json:"total_duration,omitempty"`
LoadDuration time.Duration `json:"load_duration,omitempty"`
@@ -271,9 +403,6 @@ type Options struct {
RepeatPenalty float32 `json:"repeat_penalty,omitempty"`
PresencePenalty float32 `json:"presence_penalty,omitempty"`
FrequencyPenalty float32 `json:"frequency_penalty,omitempty"`
Mirostat int `json:"mirostat,omitempty"`
MirostatTau float32 `json:"mirostat_tau,omitempty"`
MirostatEta float32 `json:"mirostat_eta,omitempty"`
Stop []string `json:"stop,omitempty"`
}
@@ -283,12 +412,7 @@ type Runner struct {
NumBatch int `json:"num_batch,omitempty"`
NumGPU int `json:"num_gpu,omitempty"`
MainGPU int `json:"main_gpu,omitempty"`
LowVRAM bool `json:"low_vram,omitempty"`
F16KV bool `json:"f16_kv,omitempty"` // Deprecated: This option is ignored
LogitsAll bool `json:"logits_all,omitempty"`
VocabOnly bool `json:"vocab_only,omitempty"`
UseMMap *bool `json:"use_mmap,omitempty"`
UseMLock bool `json:"use_mlock,omitempty"`
NumThread int `json:"num_thread,omitempty"`
}
@@ -304,8 +428,12 @@ type EmbedRequest struct {
// this request.
KeepAlive *Duration `json:"keep_alive,omitempty"`
// Truncate truncates the input to fit the model's max sequence length.
Truncate *bool `json:"truncate,omitempty"`
// Dimensions truncates the output embedding to the specified dimension.
Dimensions int `json:"dimensions,omitempty"`
// Options lists model-specific options.
Options map[string]any `json:"options"`
}
@@ -343,18 +471,47 @@ type EmbeddingResponse struct {
// CreateRequest is the request passed to [Client.Create].
type CreateRequest struct {
Model string `json:"model"`
Stream *bool `json:"stream,omitempty"`
// Model is the model name to create.
Model string `json:"model"`
// Stream specifies whether the response is streaming; it is true by default.
Stream *bool `json:"stream,omitempty"`
// Quantize is the quantization format for the model; leave blank to not change the quantization level.
Quantize string `json:"quantize,omitempty"`
From string `json:"from,omitempty"`
Files map[string]string `json:"files,omitempty"`
Adapters map[string]string `json:"adapters,omitempty"`
Template string `json:"template,omitempty"`
License any `json:"license,omitempty"`
System string `json:"system,omitempty"`
Parameters map[string]any `json:"parameters,omitempty"`
Messages []Message `json:"messages,omitempty"`
// From is the name of the model or file to use as the source.
From string `json:"from,omitempty"`
// RemoteHost is the URL of the upstream ollama API for the model (if any).
RemoteHost string `json:"remote_host,omitempty"`
// Files is a map of files include when creating the model.
Files map[string]string `json:"files,omitempty"`
// Adapters is a map of LoRA adapters to include when creating the model.
Adapters map[string]string `json:"adapters,omitempty"`
// Template is the template used when constructing a request to the model.
Template string `json:"template,omitempty"`
// License is a string or list of strings for licenses.
License any `json:"license,omitempty"`
// System is the system prompt for the model.
System string `json:"system,omitempty"`
// Parameters is a map of hyper-parameters which are applied to the model.
Parameters map[string]any `json:"parameters,omitempty"`
// Messages is a list of messages added to the model before chat and generation requests.
Messages []Message `json:"messages,omitempty"`
Renderer string `json:"renderer,omitempty"`
Parser string `json:"parser,omitempty"`
// Info is a map of additional information for the model
Info map[string]any `json:"info,omitempty"`
// Deprecated: set the model name with Model instead
Name string `json:"name"`
@@ -392,8 +549,12 @@ type ShowResponse struct {
Parameters string `json:"parameters,omitempty"`
Template string `json:"template,omitempty"`
System string `json:"system,omitempty"`
Renderer string `json:"renderer,omitempty"`
Parser string `json:"parser,omitempty"`
Details ModelDetails `json:"details,omitempty"`
Messages []Message `json:"messages,omitempty"`
RemoteModel string `json:"remote_model,omitempty"`
RemoteHost string `json:"remote_host,omitempty"`
ModelInfo map[string]any `json:"model_info,omitempty"`
ProjectorInfo map[string]any `json:"projector_info,omitempty"`
Tensors []Tensor `json:"tensors,omitempty"`
@@ -452,30 +613,26 @@ type ProcessResponse struct {
// ListModelResponse is a single model description in [ListResponse].
type ListModelResponse struct {
Name string `json:"name"`
Model string `json:"model"`
ModifiedAt time.Time `json:"modified_at"`
Size int64 `json:"size"`
Digest string `json:"digest"`
Details ModelDetails `json:"details,omitempty"`
Name string `json:"name"`
Model string `json:"model"`
RemoteModel string `json:"remote_model,omitempty"`
RemoteHost string `json:"remote_host,omitempty"`
ModifiedAt time.Time `json:"modified_at"`
Size int64 `json:"size"`
Digest string `json:"digest"`
Details ModelDetails `json:"details,omitempty"`
}
// ProcessModelResponse is a single model description in [ProcessResponse].
type ProcessModelResponse struct {
Name string `json:"name"`
Model string `json:"model"`
Size int64 `json:"size"`
Digest string `json:"digest"`
Details ModelDetails `json:"details,omitempty"`
ExpiresAt time.Time `json:"expires_at"`
SizeVRAM int64 `json:"size_vram"`
}
type RetrieveModelResponse struct {
Id string `json:"id"`
Object string `json:"object"`
Created int64 `json:"created"`
OwnedBy string `json:"owned_by"`
Name string `json:"name"`
Model string `json:"model"`
Size int64 `json:"size"`
Digest string `json:"digest"`
Details ModelDetails `json:"details,omitempty"`
ExpiresAt time.Time `json:"expires_at"`
SizeVRAM int64 `json:"size_vram"`
ContextLength int `json:"context_length"`
}
type TokenResponse struct {
@@ -487,12 +644,22 @@ type GenerateResponse struct {
// Model is the model name that generated the response.
Model string `json:"model"`
// RemoteModel is the name of the upstream model that generated the response.
RemoteModel string `json:"remote_model,omitempty"`
// RemoteHost is the URL of the upstream Ollama host that generated the response.
RemoteHost string `json:"remote_host,omitempty"`
// CreatedAt is the timestamp of the response.
CreatedAt time.Time `json:"created_at"`
// Response is the textual response itself.
Response string `json:"response"`
// Thinking contains the text that was inside thinking tags in the
// original model output when ChatRequest.Think is enabled.
Thinking string `json:"thinking,omitempty"`
// Done specifies if the response is complete.
Done bool `json:"done"`
@@ -504,6 +671,10 @@ type GenerateResponse struct {
Context []int `json:"context,omitempty"`
Metrics
ToolCalls []ToolCall `json:"tool_calls,omitempty"`
DebugInfo *DebugInfo `json:"_debug_info,omitempty"`
}
// ModelDetails provides details about a model.
@@ -516,6 +687,18 @@ type ModelDetails struct {
QuantizationLevel string `json:"quantization_level"`
}
// UserResponse provides information about a user.
type UserResponse struct {
ID uuid.UUID `json:"id"`
Email string `json:"email"`
Name string `json:"name"`
Bio string `json:"bio,omitempty"`
AvatarURL string `json:"avatarurl,omitempty"`
FirstName string `json:"firstname,omitempty"`
LastName string `json:"lastname,omitempty"`
Plan string `json:"plan,omitempty"`
}
// Tensor describes the metadata for a given tensor.
type Tensor struct {
Name string `json:"name"`
@@ -660,9 +843,6 @@ func DefaultOptions() Options {
RepeatPenalty: 1.1,
PresencePenalty: 0.0,
FrequencyPenalty: 0.0,
Mirostat: 0,
MirostatTau: 5.0,
MirostatEta: 0.1,
Seed: -1,
Runner: Runner{
@@ -671,13 +851,118 @@ func DefaultOptions() Options {
NumBatch: 512,
NumGPU: -1, // -1 here indicates that NumGPU should be set dynamically
NumThread: 0, // let the runtime decide
LowVRAM: false,
UseMLock: false,
UseMMap: nil,
},
}
}
// ThinkValue represents a value that can be a boolean or a string ("high", "medium", "low")
type ThinkValue struct {
// Value can be a bool or string
Value interface{}
}
// IsValid checks if the ThinkValue is valid
func (t *ThinkValue) IsValid() bool {
if t == nil || t.Value == nil {
return true // nil is valid (means not set)
}
switch v := t.Value.(type) {
case bool:
return true
case string:
return v == "high" || v == "medium" || v == "low"
default:
return false
}
}
// IsBool returns true if the value is a boolean
func (t *ThinkValue) IsBool() bool {
if t == nil || t.Value == nil {
return false
}
_, ok := t.Value.(bool)
return ok
}
// IsString returns true if the value is a string
func (t *ThinkValue) IsString() bool {
if t == nil || t.Value == nil {
return false
}
_, ok := t.Value.(string)
return ok
}
// Bool returns the value as a bool (true if enabled in any way)
func (t *ThinkValue) Bool() bool {
if t == nil || t.Value == nil {
return false
}
switch v := t.Value.(type) {
case bool:
return v
case string:
// Any string value ("high", "medium", "low") means thinking is enabled
return v == "high" || v == "medium" || v == "low"
default:
return false
}
}
// String returns the value as a string
func (t *ThinkValue) String() string {
if t == nil || t.Value == nil {
return ""
}
switch v := t.Value.(type) {
case string:
return v
case bool:
if v {
return "medium" // Default level when just true
}
return ""
default:
return ""
}
}
// UnmarshalJSON implements json.Unmarshaler
func (t *ThinkValue) UnmarshalJSON(data []byte) error {
// Try to unmarshal as bool first
var b bool
if err := json.Unmarshal(data, &b); err == nil {
t.Value = b
return nil
}
// Try to unmarshal as string
var s string
if err := json.Unmarshal(data, &s); err == nil {
// Validate string values
if s != "high" && s != "medium" && s != "low" {
return fmt.Errorf("invalid think value: %q (must be \"high\", \"medium\", \"low\", true, or false)", s)
}
t.Value = s
return nil
}
return fmt.Errorf("think must be a boolean or string (\"high\", \"medium\", \"low\", true, or false)")
}
// MarshalJSON implements json.Marshaler
func (t *ThinkValue) MarshalJSON() ([]byte, error) {
if t == nil || t.Value == nil {
return []byte("null"), nil
}
return json.Marshal(t.Value)
}
type Duration struct {
time.Duration
}
@@ -702,7 +987,7 @@ func (d *Duration) UnmarshalJSON(b []byte) (err error) {
if t < 0 {
d.Duration = time.Duration(math.MaxInt64)
} else {
d.Duration = time.Duration(int(t) * int(time.Second))
d.Duration = time.Duration(t * float64(time.Second))
}
case string:
d.Duration, err = time.ParseDuration(t)

View File

@@ -17,6 +17,11 @@ func TestKeepAliveParsingFromJSON(t *testing.T) {
req string
exp *Duration
}{
{
name: "Unset",
req: `{ }`,
exp: nil,
},
{
name: "Positive Integer",
req: `{ "keep_alive": 42 }`,
@@ -25,7 +30,7 @@ func TestKeepAliveParsingFromJSON(t *testing.T) {
{
name: "Positive Float",
req: `{ "keep_alive": 42.5 }`,
exp: &Duration{42 * time.Second},
exp: &Duration{42500 * time.Millisecond},
},
{
name: "Positive Integer String",
@@ -293,6 +298,30 @@ func TestToolFunction_UnmarshalJSON(t *testing.T) {
}
}
func TestToolCallFunction_IndexAlwaysMarshals(t *testing.T) {
fn := ToolCallFunction{
Name: "echo",
Arguments: ToolCallFunctionArguments{"message": "hi"},
}
data, err := json.Marshal(fn)
require.NoError(t, err)
raw := map[string]any{}
require.NoError(t, json.Unmarshal(data, &raw))
require.Contains(t, raw, "index")
assert.Equal(t, float64(0), raw["index"])
fn.Index = 3
data, err = json.Marshal(fn)
require.NoError(t, err)
raw = map[string]any{}
require.NoError(t, json.Unmarshal(data, &raw))
require.Contains(t, raw, "index")
assert.Equal(t, float64(3), raw["index"])
}
func TestPropertyType_UnmarshalJSON(t *testing.T) {
tests := []struct {
name string
@@ -372,3 +401,114 @@ func TestPropertyType_MarshalJSON(t *testing.T) {
})
}
}
func TestThinking_UnmarshalJSON(t *testing.T) {
tests := []struct {
name string
input string
expectedThinking *ThinkValue
expectedError bool
}{
{
name: "true",
input: `{ "think": true }`,
expectedThinking: &ThinkValue{Value: true},
},
{
name: "false",
input: `{ "think": false }`,
expectedThinking: &ThinkValue{Value: false},
},
{
name: "unset",
input: `{ }`,
expectedThinking: nil,
},
{
name: "string_high",
input: `{ "think": "high" }`,
expectedThinking: &ThinkValue{Value: "high"},
},
{
name: "string_medium",
input: `{ "think": "medium" }`,
expectedThinking: &ThinkValue{Value: "medium"},
},
{
name: "string_low",
input: `{ "think": "low" }`,
expectedThinking: &ThinkValue{Value: "low"},
},
{
name: "invalid_string",
input: `{ "think": "invalid" }`,
expectedThinking: nil,
expectedError: true,
},
}
for _, test := range tests {
t.Run(test.name, func(t *testing.T) {
var req GenerateRequest
err := json.Unmarshal([]byte(test.input), &req)
if test.expectedError {
require.Error(t, err)
} else {
require.NoError(t, err)
if test.expectedThinking == nil {
assert.Nil(t, req.Think)
} else {
require.NotNil(t, req.Think)
assert.Equal(t, test.expectedThinking.Value, req.Think.Value)
}
}
})
}
}
func TestToolFunctionParameters_String(t *testing.T) {
tests := []struct {
name string
params ToolFunctionParameters
expected string
}{
{
name: "simple object with string property",
params: ToolFunctionParameters{
Type: "object",
Required: []string{"name"},
Properties: map[string]ToolProperty{
"name": {
Type: PropertyType{"string"},
Description: "The name of the person",
},
},
},
expected: `{"type":"object","required":["name"],"properties":{"name":{"type":"string","description":"The name of the person"}}}`,
},
{
name: "marshal failure returns empty string",
params: ToolFunctionParameters{
Type: "object",
Defs: func() any {
// Create a cycle that will cause json.Marshal to fail
type selfRef struct {
Self *selfRef
}
s := &selfRef{}
s.Self = s
return s
}(),
Properties: map[string]ToolProperty{},
},
expected: "",
},
}
for _, test := range tests {
t.Run(test.name, func(t *testing.T) {
result := test.params.String()
assert.Equal(t, test.expected, result)
})
}
}

View File

@@ -0,0 +1,142 @@
package api
import (
"testing"
)
func TestToolParameterToTypeScriptType(t *testing.T) {
tests := []struct {
name string
param ToolProperty
expected string
}{
{
name: "single string type",
param: ToolProperty{
Type: PropertyType{"string"},
},
expected: "string",
},
{
name: "single number type",
param: ToolProperty{
Type: PropertyType{"number"},
},
expected: "number",
},
{
name: "integer maps to number",
param: ToolProperty{
Type: PropertyType{"integer"},
},
expected: "number",
},
{
name: "boolean type",
param: ToolProperty{
Type: PropertyType{"boolean"},
},
expected: "boolean",
},
{
name: "array type",
param: ToolProperty{
Type: PropertyType{"array"},
},
expected: "any[]",
},
{
name: "object type",
param: ToolProperty{
Type: PropertyType{"object"},
},
expected: "Record<string, any>",
},
{
name: "null type",
param: ToolProperty{
Type: PropertyType{"null"},
},
expected: "null",
},
{
name: "multiple types as union",
param: ToolProperty{
Type: PropertyType{"string", "number"},
},
expected: "string | number",
},
{
name: "string or null union",
param: ToolProperty{
Type: PropertyType{"string", "null"},
},
expected: "string | null",
},
{
name: "anyOf with single types",
param: ToolProperty{
AnyOf: []ToolProperty{
{Type: PropertyType{"string"}},
{Type: PropertyType{"number"}},
},
},
expected: "string | number",
},
{
name: "anyOf with multiple types in each branch",
param: ToolProperty{
AnyOf: []ToolProperty{
{Type: PropertyType{"string", "null"}},
{Type: PropertyType{"number"}},
},
},
expected: "string | null | number",
},
{
name: "nested anyOf",
param: ToolProperty{
AnyOf: []ToolProperty{
{Type: PropertyType{"boolean"}},
{
AnyOf: []ToolProperty{
{Type: PropertyType{"string"}},
{Type: PropertyType{"number"}},
},
},
},
},
expected: "boolean | string | number",
},
{
name: "empty type returns any",
param: ToolProperty{
Type: PropertyType{},
},
expected: "any",
},
{
name: "unknown type maps to any",
param: ToolProperty{
Type: PropertyType{"unknown_type"},
},
expected: "any",
},
{
name: "multiple types including array",
param: ToolProperty{
Type: PropertyType{"string", "array", "null"},
},
expected: "string | any[] | null",
},
}
for _, tt := range tests {
t.Run(tt.name, func(t *testing.T) {
result := tt.param.ToTypeScriptType()
if result != tt.expected {
t.Errorf("ToTypeScriptType() = %q, want %q", result, tt.expected)
}
})
}
}

View File

@@ -4,20 +4,14 @@ import (
"fmt"
"log/slog"
"os"
"path/filepath"
"strconv"
"strings"
"github.com/ollama/ollama/envconfig"
"github.com/ollama/ollama/logutil"
)
func InitLogging() {
level := slog.LevelInfo
if envconfig.Debug() {
level = slog.LevelDebug
}
var logFile *os.File
var err error
// Detect if we're a GUI app on windows, and if not, send logs to console
@@ -33,20 +27,8 @@ func InitLogging() {
return
}
}
handler := slog.NewTextHandler(logFile, &slog.HandlerOptions{
Level: level,
AddSource: true,
ReplaceAttr: func(_ []string, attr slog.Attr) slog.Attr {
if attr.Key == slog.SourceKey {
source := attr.Value.Any().(*slog.Source)
source.File = filepath.Base(source.File)
}
return attr
},
})
slog.SetDefault(slog.New(handler))
slog.SetDefault(logutil.NewLogger(logFile, envconfig.LogLevel()))
slog.Info("ollama app started")
}

View File

@@ -18,21 +18,13 @@ import (
const defaultPrivateKey = "id_ed25519"
func keyPath() (string, error) {
func GetPublicKey() (string, error) {
home, err := os.UserHomeDir()
if err != nil {
return "", err
}
return filepath.Join(home, ".ollama", defaultPrivateKey), nil
}
func GetPublicKey() (string, error) {
keyPath, err := keyPath()
if err != nil {
return "", err
}
keyPath := filepath.Join(home, ".ollama", defaultPrivateKey)
privateKeyFile, err := os.ReadFile(keyPath)
if err != nil {
slog.Info(fmt.Sprintf("Failed to load private key: %v", err))
@@ -59,11 +51,12 @@ func NewNonce(r io.Reader, length int) (string, error) {
}
func Sign(ctx context.Context, bts []byte) (string, error) {
keyPath, err := keyPath()
home, err := os.UserHomeDir()
if err != nil {
return "", err
}
keyPath := filepath.Join(home, ".ollama", defaultPrivateKey)
privateKeyFile, err := os.ReadFile(keyPath)
if err != nil {
slog.Info(fmt.Sprintf("Failed to load private key: %v", err))

View File

@@ -1,178 +0,0 @@
package benchmark
import (
"context"
"flag"
"fmt"
"testing"
"time"
"github.com/ollama/ollama/api"
)
// Command line flags
var modelFlag string
func init() {
flag.StringVar(&modelFlag, "m", "", "Name of the model to benchmark")
flag.Lookup("m").DefValue = "model"
}
// modelName returns the model name from flags, failing the test if not set
func modelName(b *testing.B) string {
if modelFlag == "" {
b.Fatal("Error: -m flag is required for benchmark tests")
}
return modelFlag
}
type TestCase struct {
name string
prompt string
maxTokens int
}
// runGenerateBenchmark contains the common generate and metrics logic
func runGenerateBenchmark(b *testing.B, ctx context.Context, client *api.Client, req *api.GenerateRequest) {
start := time.Now()
var ttft time.Duration
var metrics api.Metrics
err := client.Generate(ctx, req, func(resp api.GenerateResponse) error {
if ttft == 0 && resp.Response != "" {
ttft = time.Since(start)
}
if resp.Done {
metrics = resp.Metrics
}
return nil
})
// Report custom metrics as part of the benchmark results
b.ReportMetric(float64(ttft.Milliseconds()), "ttft_ms")
b.ReportMetric(float64(metrics.LoadDuration.Milliseconds()), "load_ms")
// Token throughput metrics
promptThroughput := float64(metrics.PromptEvalCount) / metrics.PromptEvalDuration.Seconds()
genThroughput := float64(metrics.EvalCount) / metrics.EvalDuration.Seconds()
b.ReportMetric(promptThroughput, "prompt_tok/s")
b.ReportMetric(genThroughput, "gen_tok/s")
// Token counts
b.ReportMetric(float64(metrics.PromptEvalCount), "prompt_tokens")
b.ReportMetric(float64(metrics.EvalCount), "gen_tokens")
if err != nil {
b.Fatal(err)
}
}
// BenchmarkColdStart runs benchmarks with model loading from cold state
func BenchmarkColdStart(b *testing.B) {
client := setup(b)
tests := []TestCase{
{"short_prompt", "Write a long story", 100},
{"medium_prompt", "Write a detailed economic analysis", 500},
{"long_prompt", "Write a comprehensive AI research paper", 1000},
}
m := modelName(b)
for _, tt := range tests {
b.Run(fmt.Sprintf("%s/cold/%s", m, tt.name), func(b *testing.B) {
ctx := context.Background()
// Set number of tokens as our throughput metric
b.SetBytes(int64(tt.maxTokens))
for b.Loop() {
b.StopTimer()
// Ensure model is unloaded before each iteration
unload(client, m, b)
b.StartTimer()
req := &api.GenerateRequest{
Model: m,
Prompt: tt.prompt,
Options: map[string]any{"num_predict": tt.maxTokens, "temperature": 0.1},
}
runGenerateBenchmark(b, ctx, client, req)
}
})
}
}
// BenchmarkWarmStart runs benchmarks with pre-loaded model
func BenchmarkWarmStart(b *testing.B) {
client := setup(b)
tests := []TestCase{
{"short_prompt", "Write a long story", 100},
{"medium_prompt", "Write a detailed economic analysis", 500},
{"long_prompt", "Write a comprehensive AI research paper", 1000},
}
m := modelName(b)
for _, tt := range tests {
b.Run(fmt.Sprintf("%s/warm/%s", m, tt.name), func(b *testing.B) {
ctx := context.Background()
// Pre-warm the model
warmup(client, m, tt.prompt, b)
// Set number of tokens as our throughput metric
b.SetBytes(int64(tt.maxTokens))
for b.Loop() {
req := &api.GenerateRequest{
Model: m,
Prompt: tt.prompt,
Options: map[string]any{"num_predict": tt.maxTokens, "temperature": 0.1},
}
runGenerateBenchmark(b, ctx, client, req)
}
})
}
}
// setup verifies server and model availability
func setup(b *testing.B) *api.Client {
client, err := api.ClientFromEnvironment()
if err != nil {
b.Fatal(err)
}
if _, err := client.Show(context.Background(), &api.ShowRequest{Model: modelName(b)}); err != nil {
b.Fatalf("Model unavailable: %v", err)
}
return client
}
// warmup ensures the model is loaded and warmed up
func warmup(client *api.Client, model string, prompt string, b *testing.B) {
for range 3 {
err := client.Generate(
context.Background(),
&api.GenerateRequest{
Model: model,
Prompt: prompt,
Options: map[string]any{"num_predict": 50, "temperature": 0.1},
},
func(api.GenerateResponse) error { return nil },
)
if err != nil {
b.Logf("Error during model warm-up: %v", err)
}
}
}
// unload forces model unloading using KeepAlive: 0 parameter
func unload(client *api.Client, model string, b *testing.B) {
req := &api.GenerateRequest{
Model: model,
KeepAlive: &api.Duration{Duration: 0},
}
if err := client.Generate(context.Background(), req, func(api.GenerateResponse) error { return nil }); err != nil {
b.Logf("Unload error: %v", err)
}
time.Sleep(1 * time.Second)
}

View File

@@ -31,6 +31,7 @@ import (
"github.com/olekukonko/tablewriter"
"github.com/spf13/cobra"
"golang.org/x/crypto/ssh"
"golang.org/x/sync/errgroup"
"golang.org/x/term"
"github.com/ollama/ollama/api"
@@ -38,12 +39,31 @@ import (
"github.com/ollama/ollama/format"
"github.com/ollama/ollama/parser"
"github.com/ollama/ollama/progress"
"github.com/ollama/ollama/readline"
"github.com/ollama/ollama/runner"
"github.com/ollama/ollama/server"
"github.com/ollama/ollama/types/model"
"github.com/ollama/ollama/types/syncmap"
"github.com/ollama/ollama/version"
)
const ConnectInstructions = "To sign in, navigate to:\n %s\n\n"
// ensureThinkingSupport emits a warning if the model does not advertise thinking support
func ensureThinkingSupport(ctx context.Context, client *api.Client, name string) {
if name == "" {
return
}
resp, err := client.Show(ctx, &api.ShowRequest{Model: name})
if err != nil {
return
}
if slices.Contains(resp.Capabilities, model.CapabilityThinking) {
return
}
fmt.Fprintf(os.Stderr, "warning: model %q does not support thinking output\n", name)
}
var errModelfileNotFound = errors.New("specified Modelfile wasn't found")
func getModelfileName(cmd *cobra.Command) (string, error) {
@@ -106,7 +126,7 @@ func CreateHandler(cmd *cobra.Command, args []string) error {
}
spinner.Stop()
req.Name = args[0]
req.Model = args[0]
quantize, _ := cmd.Flags().GetString("quantize")
if quantize != "" {
req.Quantize = quantize
@@ -117,34 +137,54 @@ func CreateHandler(cmd *cobra.Command, args []string) error {
return err
}
if len(req.Files) > 0 {
fileMap := map[string]string{}
for f, digest := range req.Files {
var g errgroup.Group
g.SetLimit(max(runtime.GOMAXPROCS(0)-1, 1))
files := syncmap.NewSyncMap[string, string]()
for f, digest := range req.Files {
g.Go(func() error {
if _, err := createBlob(cmd, client, f, digest, p); err != nil {
return err
}
fileMap[filepath.Base(f)] = digest
}
req.Files = fileMap
// TODO: this is incorrect since the file might be in a subdirectory
// instead this should take the path relative to the model directory
// but the current implementation does not allow this
files.Store(filepath.Base(f), digest)
return nil
})
}
if len(req.Adapters) > 0 {
fileMap := map[string]string{}
for f, digest := range req.Adapters {
adapters := syncmap.NewSyncMap[string, string]()
for f, digest := range req.Adapters {
g.Go(func() error {
if _, err := createBlob(cmd, client, f, digest, p); err != nil {
return err
}
fileMap[filepath.Base(f)] = digest
}
req.Adapters = fileMap
// TODO: same here
adapters.Store(filepath.Base(f), digest)
return nil
})
}
if err := g.Wait(); err != nil {
return err
}
req.Files = files.Items()
req.Adapters = adapters.Items()
bars := make(map[string]*progress.Bar)
fn := func(resp api.ProgressResponse) error {
if resp.Digest != "" {
bar, ok := bars[resp.Digest]
if !ok {
bar = progress.NewBar(fmt.Sprintf("pulling %s...", resp.Digest[7:19]), resp.Total, resp.Completed)
msg := resp.Status
if msg == "" {
msg = fmt.Sprintf("pulling %s...", resp.Digest[7:19])
}
bar = progress.NewBar(msg, resp.Total, resp.Completed)
bars[resp.Digest] = bar
p.Add(resp.Digest, bar)
}
@@ -213,7 +253,7 @@ func createBlob(cmd *cobra.Command, client *api.Client, path string, digest stri
}
}()
if err = client.CreateBlob(cmd.Context(), digest, io.TeeReader(bin, &pw)); err != nil {
if err := client.CreateBlob(cmd.Context(), digest, io.TeeReader(bin, &pw)); err != nil {
return "", err
}
return digest, nil
@@ -243,9 +283,22 @@ func loadOrUnloadModel(cmd *cobra.Command, opts *runOptions) error {
req := &api.GenerateRequest{
Model: opts.Model,
KeepAlive: opts.KeepAlive,
// pass Think here so we fail before getting to the chat prompt if the model doesn't support it
Think: opts.Think,
}
return client.Generate(cmd.Context(), req, func(api.GenerateResponse) error { return nil })
return client.Generate(cmd.Context(), req, func(r api.GenerateResponse) error {
if r.RemoteModel != "" && opts.ShowConnect {
p.StopAndClear()
if strings.HasPrefix(r.RemoteHost, "https://ollama.com") {
fmt.Fprintf(os.Stderr, "Connecting to '%s' on 'ollama.com' ⚡\n", r.RemoteModel)
} else {
fmt.Fprintf(os.Stderr, "Connecting to '%s' on '%s'\n", r.RemoteModel, r.RemoteHost)
}
}
return nil
})
}
func StopHandler(cmd *cobra.Command, args []string) error {
@@ -266,9 +319,10 @@ func RunHandler(cmd *cobra.Command, args []string) error {
interactive := true
opts := runOptions{
Model: args[0],
WordWrap: os.Getenv("TERM") == "xterm-256color",
Options: map[string]any{},
Model: args[0],
WordWrap: os.Getenv("TERM") == "xterm-256color",
Options: map[string]any{},
ShowConnect: true,
}
format, err := cmd.Flags().GetString("format")
@@ -277,6 +331,34 @@ func RunHandler(cmd *cobra.Command, args []string) error {
}
opts.Format = format
thinkFlag := cmd.Flags().Lookup("think")
if thinkFlag.Changed {
thinkStr, err := cmd.Flags().GetString("think")
if err != nil {
return err
}
// Handle different values for --think
switch thinkStr {
case "", "true":
// --think or --think=true
opts.Think = &api.ThinkValue{Value: true}
case "false":
opts.Think = &api.ThinkValue{Value: false}
case "high", "medium", "low":
opts.Think = &api.ThinkValue{Value: thinkStr}
default:
return fmt.Errorf("invalid value for --think: %q (must be true, false, high, medium, or low)", thinkStr)
}
} else {
opts.Think = nil
}
hidethinking, err := cmd.Flags().GetBool("hidethinking")
if err != nil {
return err
}
opts.HideThinking = hidethinking
keepAlive, err := cmd.Flags().GetString("keepalive")
if err != nil {
return err
@@ -298,6 +380,7 @@ func RunHandler(cmd *cobra.Command, args []string) error {
}
prompts = append([]string{string(in)}, prompts...)
opts.ShowConnect = false
opts.WordWrap = false
interactive = false
}
@@ -340,6 +423,11 @@ func RunHandler(cmd *cobra.Command, args []string) error {
return err
}
opts.Think, err = inferThinkingOption(&info.Capabilities, &opts, thinkFlag.Changed)
if err != nil {
return err
}
opts.MultiModal = slices.Contains(info.Capabilities, model.CapabilityVision)
// TODO: remove the projector info and vision info checks below,
@@ -359,6 +447,15 @@ func RunHandler(cmd *cobra.Command, args []string) error {
if interactive {
if err := loadOrUnloadModel(cmd, &opts); err != nil {
var sErr api.AuthorizationError
if errors.As(err, &sErr) && sErr.StatusCode == http.StatusUnauthorized {
fmt.Printf("You need to be signed in to Ollama to run Cloud models.\n\n")
if sErr.SigninURL != "" {
fmt.Printf(ConnectInstructions, sErr.SigninURL)
}
return nil
}
return err
}
@@ -379,6 +476,59 @@ func RunHandler(cmd *cobra.Command, args []string) error {
return generate(cmd, opts)
}
func SigninHandler(cmd *cobra.Command, args []string) error {
client, err := api.ClientFromEnvironment()
if err != nil {
return err
}
user, err := client.Whoami(cmd.Context())
if err != nil {
var aErr api.AuthorizationError
if errors.As(err, &aErr) && aErr.StatusCode == http.StatusUnauthorized {
fmt.Println("You need to be signed in to Ollama to run Cloud models.")
fmt.Println()
if aErr.SigninURL != "" {
fmt.Printf(ConnectInstructions, aErr.SigninURL)
}
return nil
}
return err
}
if user != nil && user.Name != "" {
fmt.Printf("You are already signed in as user '%s'\n", user.Name)
fmt.Println()
return nil
}
return nil
}
func SignoutHandler(cmd *cobra.Command, args []string) error {
client, err := api.ClientFromEnvironment()
if err != nil {
return err
}
err = client.Signout(cmd.Context())
if err != nil {
var aErr api.AuthorizationError
if errors.As(err, &aErr) && aErr.StatusCode == http.StatusUnauthorized {
fmt.Println("You are not signed in to ollama.com")
fmt.Println()
return nil
} else {
return err
}
}
fmt.Println("You have signed out of ollama.com")
fmt.Println()
return nil
}
func PushHandler(cmd *cobra.Command, args []string) error {
client, err := api.ClientFromEnvironment()
if err != nil {
@@ -390,6 +540,25 @@ func PushHandler(cmd *cobra.Command, args []string) error {
return err
}
n := model.ParseName(args[0])
if strings.HasSuffix(n.Host, ".ollama.ai") || strings.HasSuffix(n.Host, ".ollama.com") {
_, err := client.Whoami(cmd.Context())
if err != nil {
var aErr api.AuthorizationError
if errors.As(err, &aErr) && aErr.StatusCode == http.StatusUnauthorized {
fmt.Println("You need to be signed in to push models to ollama.com.")
fmt.Println()
if aErr.SigninURL != "" {
fmt.Printf(ConnectInstructions, aErr.SigninURL)
}
return nil
}
return err
}
}
p := progress.NewProgress(os.Stderr)
defer p.Stop()
@@ -426,12 +595,12 @@ func PushHandler(cmd *cobra.Command, args []string) error {
request := api.PushRequest{Name: args[0], Insecure: insecure}
n := model.ParseName(args[0])
if err := client.Push(cmd.Context(), &request, fn); err != nil {
if spinner != nil {
spinner.Stop()
}
if strings.Contains(err.Error(), "access denied") {
errStr := strings.ToLower(err.Error())
if strings.Contains(errStr, "access denied") || strings.Contains(errStr, "unauthorized") {
return errors.New("you are not authorized to push to this namespace, create the model under a namespace you own")
}
return err
@@ -465,7 +634,14 @@ func ListHandler(cmd *cobra.Command, args []string) error {
for _, m := range models.Models {
if len(args) == 0 || strings.HasPrefix(strings.ToLower(m.Name), strings.ToLower(args[0])) {
data = append(data, []string{m.Name, m.Digest[:12], format.HumanBytes(m.Size), format.HumanTime(m.ModifiedAt, "Never")})
var size string
if m.RemoteModel != "" {
size = "-"
} else {
size = format.HumanBytes(m.Size)
}
data = append(data, []string{m.Name, m.Digest[:12], size, format.HumanTime(m.ModifiedAt, "Never")})
}
}
@@ -519,12 +695,13 @@ func ListRunningHandler(cmd *cobra.Command, args []string) error {
} else {
until = format.HumanTime(m.ExpiresAt, "Never")
}
data = append(data, []string{m.Name, m.Digest[:12], format.HumanBytes(m.Size), procStr, until})
ctxStr := strconv.Itoa(m.ContextLength)
data = append(data, []string{m.Name, m.Digest[:12], format.HumanBytes(m.Size), procStr, ctxStr, until})
}
}
table := tablewriter.NewWriter(os.Stdout)
table.SetHeader([]string{"NAME", "ID", "SIZE", "PROCESSOR", "UNTIL"})
table.SetHeader([]string{"NAME", "ID", "SIZE", "PROCESSOR", "CONTEXT", "UNTIL"})
table.SetHeaderAlignment(tablewriter.ALIGN_LEFT)
table.SetAlignment(tablewriter.ALIGN_LEFT)
table.SetHeaderLine(false)
@@ -549,8 +726,8 @@ func DeleteHandler(cmd *cobra.Command, args []string) error {
KeepAlive: &api.Duration{Duration: 0},
}
if err := loadOrUnloadModel(cmd, opts); err != nil {
if !strings.Contains(err.Error(), "not found") {
return fmt.Errorf("unable to stop existing running model \"%s\": %s", args[0], err)
if !strings.Contains(strings.ToLower(err.Error()), "not found") {
fmt.Fprintf(os.Stderr, "Warning: unable to stop model '%s'\n", args[0])
}
}
@@ -661,12 +838,36 @@ func showInfo(resp *api.ShowResponse, verbose bool, w io.Writer) error {
}
tableRender("Model", func() (rows [][]string) {
if resp.RemoteHost != "" {
rows = append(rows, []string{"", "Remote model", resp.RemoteModel})
rows = append(rows, []string{"", "Remote URL", resp.RemoteHost})
}
if resp.ModelInfo != nil {
arch := resp.ModelInfo["general.architecture"].(string)
rows = append(rows, []string{"", "architecture", arch})
rows = append(rows, []string{"", "parameters", format.HumanNumber(uint64(resp.ModelInfo["general.parameter_count"].(float64)))})
rows = append(rows, []string{"", "context length", strconv.FormatFloat(resp.ModelInfo[fmt.Sprintf("%s.context_length", arch)].(float64), 'f', -1, 64)})
rows = append(rows, []string{"", "embedding length", strconv.FormatFloat(resp.ModelInfo[fmt.Sprintf("%s.embedding_length", arch)].(float64), 'f', -1, 64)})
var paramStr string
if resp.Details.ParameterSize != "" {
paramStr = resp.Details.ParameterSize
} else if v, ok := resp.ModelInfo["general.parameter_count"]; ok {
if f, ok := v.(float64); ok {
paramStr = format.HumanNumber(uint64(f))
}
}
rows = append(rows, []string{"", "parameters", paramStr})
if v, ok := resp.ModelInfo[fmt.Sprintf("%s.context_length", arch)]; ok {
if f, ok := v.(float64); ok {
rows = append(rows, []string{"", "context length", strconv.FormatFloat(f, 'f', -1, 64)})
}
}
if v, ok := resp.ModelInfo[fmt.Sprintf("%s.embedding_length", arch)]; ok {
if f, ok := v.(float64); ok {
rows = append(rows, []string{"", "embedding length", strconv.FormatFloat(f, 'f', -1, 64)})
}
}
} else {
rows = append(rows, []string{"", "architecture", resp.Details.Family})
rows = append(rows, []string{"", "parameters", resp.Details.ParameterSize})
@@ -725,11 +926,38 @@ func showInfo(resp *api.ShowResponse, verbose bool, w io.Writer) error {
case float64:
v = fmt.Sprintf("%g", vData)
case []any:
n := 3
if len(vData) < n {
n = len(vData)
targetWidth := 10 // Small width where we are displaying the data in a column
var itemsToShow int
totalWidth := 1 // Start with 1 for opening bracket
// Find how many we can fit
for i := range vData {
itemStr := fmt.Sprintf("%v", vData[i])
width := runewidth.StringWidth(itemStr)
// Add separator width (", ") for all items except the first
if i > 0 {
width += 2
}
// Check if adding this item would exceed our width limit
if totalWidth+width > targetWidth && i > 0 {
break
}
totalWidth += width
itemsToShow++
}
// Format the output
if itemsToShow < len(vData) {
v = fmt.Sprintf("%v", vData[:itemsToShow])
v = strings.TrimSuffix(v, "]")
v += fmt.Sprintf(" ...+%d more]", len(vData)-itemsToShow)
} else {
v = fmt.Sprintf("%v", vData)
}
v = fmt.Sprintf("%v", vData[:n])
default:
v = fmt.Sprintf("%T", vData)
}
@@ -750,10 +978,19 @@ func showInfo(resp *api.ShowResponse, verbose bool, w io.Writer) error {
head := func(s string, n int) (rows [][]string) {
scanner := bufio.NewScanner(strings.NewReader(s))
for scanner.Scan() && (len(rows) < n || n < 0) {
if text := scanner.Text(); text != "" {
rows = append(rows, []string{"", strings.TrimSpace(text)})
count := 0
for scanner.Scan() {
text := strings.TrimSpace(scanner.Text())
if text == "" {
continue
}
count++
if n < 0 || count <= n {
rows = append(rows, []string{"", text})
}
}
if n >= 0 && count > n {
rows = append(rows, []string{"", "..."})
}
return
}
@@ -865,17 +1102,65 @@ func PullHandler(cmd *cobra.Command, args []string) error {
type generateContextKey string
type runOptions struct {
Model string
ParentModel string
Prompt string
Messages []api.Message
WordWrap bool
Format string
System string
Images []api.ImageData
Options map[string]any
MultiModal bool
KeepAlive *api.Duration
Model string
ParentModel string
Prompt string
Messages []api.Message
WordWrap bool
Format string
System string
Images []api.ImageData
Options map[string]any
MultiModal bool
KeepAlive *api.Duration
Think *api.ThinkValue
HideThinking bool
ShowConnect bool
}
func (r runOptions) Copy() runOptions {
var messages []api.Message
if r.Messages != nil {
messages = make([]api.Message, len(r.Messages))
copy(messages, r.Messages)
}
var images []api.ImageData
if r.Images != nil {
images = make([]api.ImageData, len(r.Images))
copy(images, r.Images)
}
var opts map[string]any
if r.Options != nil {
opts = make(map[string]any, len(r.Options))
for k, v := range r.Options {
opts[k] = v
}
}
var think *api.ThinkValue
if r.Think != nil {
cThink := *r.Think
think = &cThink
}
return runOptions{
Model: r.Model,
ParentModel: r.ParentModel,
Prompt: r.Prompt,
Messages: messages,
WordWrap: r.WordWrap,
Format: r.Format,
System: r.System,
Images: images,
Options: opts,
MultiModal: r.MultiModal,
KeepAlive: r.KeepAlive,
Think: think,
HideThinking: r.HideThinking,
ShowConnect: r.ShowConnect,
}
}
type displayResponseState struct {
@@ -914,10 +1199,11 @@ func displayResponse(content string, wordWrap bool, state *displayResponseState)
}
switch ch {
case ' ':
case ' ', '\t':
state.wordBuffer = ""
case '\n':
case '\n', '\r':
state.lineLength = 0
state.wordBuffer = ""
default:
state.wordBuffer += string(ch)
}
@@ -931,6 +1217,26 @@ func displayResponse(content string, wordWrap bool, state *displayResponseState)
}
}
func thinkingOutputOpeningText(plainText bool) string {
text := "Thinking...\n"
if plainText {
return text
}
return readline.ColorGrey + readline.ColorBold + text + readline.ColorDefault + readline.ColorGrey
}
func thinkingOutputClosingText(plainText bool) string {
text := "...done thinking.\n\n"
if plainText {
return text
}
return readline.ColorGrey + readline.ColorBold + text + readline.ColorDefault
}
func chat(cmd *cobra.Command, opts runOptions) (*api.Message, error) {
client, err := api.ClientFromEnvironment()
if err != nil {
@@ -955,19 +1261,55 @@ func chat(cmd *cobra.Command, opts runOptions) (*api.Message, error) {
}()
var state *displayResponseState = &displayResponseState{}
var thinkingContent strings.Builder
var latest api.ChatResponse
var fullResponse strings.Builder
var role string
var thinkTagOpened bool = false
var thinkTagClosed bool = false
role := "assistant"
fn := func(response api.ChatResponse) error {
p.StopAndClear()
if response.Message.Content != "" || !opts.HideThinking {
p.StopAndClear()
}
latest = response
role = response.Message.Role
if response.Message.Thinking != "" && !opts.HideThinking {
if !thinkTagOpened {
fmt.Print(thinkingOutputOpeningText(false))
thinkTagOpened = true
thinkTagClosed = false
}
thinkingContent.WriteString(response.Message.Thinking)
displayResponse(response.Message.Thinking, opts.WordWrap, state)
}
content := response.Message.Content
if thinkTagOpened && !thinkTagClosed && (content != "" || len(response.Message.ToolCalls) > 0) {
if !strings.HasSuffix(thinkingContent.String(), "\n") {
fmt.Println()
}
fmt.Print(thinkingOutputClosingText(false))
thinkTagOpened = false
thinkTagClosed = true
state = &displayResponseState{}
}
// purposefully not putting thinking blocks in the response, which would
// only be needed if we later added tool calling to the cli (they get
// filtered out anyway since current models don't expect them unless you're
// about to finish some tool calls)
fullResponse.WriteString(content)
if response.Message.ToolCalls != nil {
toolCalls := response.Message.ToolCalls
if len(toolCalls) > 0 {
fmt.Print(renderToolCalls(toolCalls, false))
}
}
displayResponse(content, opts.WordWrap, state)
return nil
@@ -982,6 +1324,7 @@ func chat(cmd *cobra.Command, opts runOptions) (*api.Message, error) {
Messages: opts.Messages,
Format: json.RawMessage(opts.Format),
Options: opts.Options,
Think: opts.Think,
}
if opts.KeepAlive != nil {
@@ -992,6 +1335,14 @@ func chat(cmd *cobra.Command, opts runOptions) (*api.Message, error) {
if errors.Is(err, context.Canceled) {
return nil, nil
}
// this error should ideally be wrapped properly by the client
if strings.Contains(err.Error(), "upstream error") {
p.StopAndClear()
fmt.Println("An error occurred while processing your message. Please try again.")
fmt.Println()
return nil, nil
}
return nil, err
}
@@ -1043,15 +1394,49 @@ func generate(cmd *cobra.Command, opts runOptions) error {
}()
var state *displayResponseState = &displayResponseState{}
var thinkingContent strings.Builder
var thinkTagOpened bool = false
var thinkTagClosed bool = false
plainText := !term.IsTerminal(int(os.Stdout.Fd()))
fn := func(response api.GenerateResponse) error {
p.StopAndClear()
latest = response
content := response.Response
if response.Response != "" || !opts.HideThinking {
p.StopAndClear()
}
if response.Thinking != "" && !opts.HideThinking {
if !thinkTagOpened {
fmt.Print(thinkingOutputOpeningText(plainText))
thinkTagOpened = true
thinkTagClosed = false
}
thinkingContent.WriteString(response.Thinking)
displayResponse(response.Thinking, opts.WordWrap, state)
}
if thinkTagOpened && !thinkTagClosed && (content != "" || len(response.ToolCalls) > 0) {
if !strings.HasSuffix(thinkingContent.String(), "\n") {
fmt.Println()
}
fmt.Print(thinkingOutputClosingText(plainText))
thinkTagOpened = false
thinkTagClosed = true
state = &displayResponseState{}
}
displayResponse(content, opts.WordWrap, state)
if response.ToolCalls != nil {
toolCalls := response.ToolCalls
if len(toolCalls) > 0 {
fmt.Print(renderToolCalls(toolCalls, plainText))
}
}
return nil
}
@@ -1075,6 +1460,7 @@ func generate(cmd *cobra.Command, opts runOptions) error {
System: opts.System,
Options: opts.Options,
KeepAlive: opts.KeepAlive,
Think: opts.Think,
}
if err := client.Generate(ctx, &request, fn); err != nil {
@@ -1178,11 +1564,11 @@ func checkServerHeartbeat(cmd *cobra.Command, _ []string) error {
return err
}
if err := client.Heartbeat(cmd.Context()); err != nil {
if !strings.Contains(err.Error(), " refused") {
if !(strings.Contains(err.Error(), " refused") || strings.Contains(err.Error(), "could not connect")) {
return err
}
if err := startApp(cmd.Context(), client); err != nil {
return errors.New("could not connect to ollama app, is it running?")
return fmt.Errorf("ollama server not responding - %w", err)
}
}
return nil
@@ -1253,14 +1639,14 @@ func NewCLI() *cobra.Command {
createCmd := &cobra.Command{
Use: "create MODEL",
Short: "Create a model from a Modelfile",
Short: "Create a model",
Args: cobra.ExactArgs(1),
PreRunE: checkServerHeartbeat,
RunE: CreateHandler,
}
createCmd.Flags().StringP("file", "f", "", "Name of the Modelfile (default \"Modelfile\"")
createCmd.Flags().StringP("quantize", "q", "", "Quantize model to this level (e.g. q4_0)")
createCmd.Flags().StringP("file", "f", "", "Name of the Modelfile (default \"Modelfile\")")
createCmd.Flags().StringP("quantize", "q", "", "Quantize model to this level (e.g. q4_K_M)")
showCmd := &cobra.Command{
Use: "show MODEL",
@@ -1290,6 +1676,9 @@ func NewCLI() *cobra.Command {
runCmd.Flags().Bool("insecure", false, "Use an insecure registry")
runCmd.Flags().Bool("nowordwrap", false, "Don't wrap words to the next line automatically")
runCmd.Flags().String("format", "", "Response format (e.g. json)")
runCmd.Flags().String("think", "", "Enable thinking mode: true/false or high/medium/low for supported models")
runCmd.Flags().Lookup("think").NoOptDefVal = "true"
runCmd.Flags().Bool("hidethinking", false, "Hide thinking output (if provided)")
stopCmd := &cobra.Command{
Use: "stop MODEL",
@@ -1327,6 +1716,22 @@ func NewCLI() *cobra.Command {
pushCmd.Flags().Bool("insecure", false, "Use an insecure registry")
signinCmd := &cobra.Command{
Use: "signin",
Short: "Sign in to ollama.com",
Args: cobra.ExactArgs(0),
PreRunE: checkServerHeartbeat,
RunE: SigninHandler,
}
signoutCmd := &cobra.Command{
Use: "signout",
Short: "Sign out from ollama.com",
Args: cobra.ExactArgs(0),
PreRunE: checkServerHeartbeat,
RunE: SignoutHandler,
}
listCmd := &cobra.Command{
Use: "list",
Aliases: []string{"ls"},
@@ -1341,7 +1746,6 @@ func NewCLI() *cobra.Command {
PreRunE: checkServerHeartbeat,
RunE: ListRunningHandler,
}
copyCmd := &cobra.Command{
Use: "cp SOURCE DESTINATION",
Short: "Copy a model",
@@ -1394,6 +1798,7 @@ func NewCLI() *cobra.Command {
appendEnvDocs(cmd, []envconfig.EnvVar{
envVars["OLLAMA_DEBUG"],
envVars["OLLAMA_HOST"],
envVars["OLLAMA_CONTEXT_LENGTH"],
envVars["OLLAMA_KEEP_ALIVE"],
envVars["OLLAMA_MAX_LOADED_MODELS"],
envVars["OLLAMA_MAX_QUEUE"],
@@ -1407,7 +1812,6 @@ func NewCLI() *cobra.Command {
envVars["OLLAMA_LLM_LIBRARY"],
envVars["OLLAMA_GPU_OVERHEAD"],
envVars["OLLAMA_LOAD_TIMEOUT"],
envVars["OLLAMA_CONTEXT_LENGTH"],
})
default:
appendEnvDocs(cmd, envs)
@@ -1422,6 +1826,8 @@ func NewCLI() *cobra.Command {
stopCmd,
pullCmd,
pushCmd,
signinCmd,
signoutCmd,
listCmd,
psCmd,
copyCmd,
@@ -1431,3 +1837,70 @@ func NewCLI() *cobra.Command {
return rootCmd
}
// If the user has explicitly set thinking options, either through the CLI or
// through the `/set think` or `set nothink` interactive options, then we
// respect them. Otherwise, we check model capabilities to see if the model
// supports thinking. If the model does support thinking, we enable it.
// Otherwise, we unset the thinking option (which is different than setting it
// to false).
//
// If capabilities are not provided, we fetch them from the server.
func inferThinkingOption(caps *[]model.Capability, runOpts *runOptions, explicitlySetByUser bool) (*api.ThinkValue, error) {
if explicitlySetByUser {
return runOpts.Think, nil
}
if caps == nil {
client, err := api.ClientFromEnvironment()
if err != nil {
return nil, err
}
ret, err := client.Show(context.Background(), &api.ShowRequest{
Model: runOpts.Model,
})
if err != nil {
return nil, err
}
caps = &ret.Capabilities
}
thinkingSupported := false
for _, cap := range *caps {
if cap == model.CapabilityThinking {
thinkingSupported = true
}
}
if thinkingSupported {
return &api.ThinkValue{Value: true}, nil
}
return nil, nil
}
func renderToolCalls(toolCalls []api.ToolCall, plainText bool) string {
out := ""
formatExplanation := ""
formatValues := ""
if !plainText {
formatExplanation = readline.ColorGrey + readline.ColorBold
formatValues = readline.ColorDefault
out += formatExplanation
}
for i, toolCall := range toolCalls {
argsAsJSON, err := json.Marshal(toolCall.Function.Arguments)
if err != nil {
return ""
}
if i > 0 {
out += "\n"
}
// all tool calls are unexpected since we don't currently support registering any in the CLI
out += fmt.Sprintf(" Model called a non-existent function '%s()' with arguments: %s", formatValues+toolCall.Function.Name+formatExplanation, formatValues+string(argsAsJSON)+formatExplanation)
}
if !plainText {
out += readline.ColorDefault
}
return out
}

View File

@@ -2,12 +2,13 @@ package cmd
import (
"bytes"
"context"
"encoding/json"
"fmt"
"io"
"net/http"
"net/http/httptest"
"os"
"reflect"
"strings"
"testing"
"time"
@@ -226,6 +227,7 @@ Weigh anchor!
System
You are a pirate!
Ahoy, matey!
...
`
if diff := cmp.Diff(expect, b.String()); diff != "" {
@@ -304,6 +306,8 @@ func TestDeleteHandler(t *testing.T) {
w.WriteHeader(http.StatusOK)
} else {
w.WriteHeader(http.StatusNotFound)
errPayload := `{"error":"model '%s' not found"}`
w.Write([]byte(fmt.Sprintf(errPayload, req.Name)))
}
return
}
@@ -337,7 +341,7 @@ func TestDeleteHandler(t *testing.T) {
t.Cleanup(mockServer.Close)
cmd := &cobra.Command{}
cmd.SetContext(context.TODO())
cmd.SetContext(t.Context())
if err := DeleteHandler(cmd, []string{"test-model"}); err != nil {
t.Fatalf("DeleteHandler failed: %v", err)
}
@@ -346,7 +350,7 @@ func TestDeleteHandler(t *testing.T) {
}
err := DeleteHandler(cmd, []string{"test-model-not-found"})
if err == nil || !strings.Contains(err.Error(), "unable to stop existing running model \"test-model-not-found\"") {
if err == nil || !strings.Contains(err.Error(), "model 'test-model-not-found' not found") {
t.Fatalf("DeleteHandler failed: expected error about stopping non-existent model, got %v", err)
}
}
@@ -399,11 +403,6 @@ func TestGetModelfileName(t *testing.T) {
var expectedFilename string
if tt.fileExists {
tempDir, err := os.MkdirTemp("", "modelfiledir")
defer os.RemoveAll(tempDir)
if err != nil {
t.Fatalf("temp modelfile dir creation failed: %v", err)
}
var fn string
if tt.modelfileName != "" {
fn = tt.modelfileName
@@ -411,7 +410,7 @@ func TestGetModelfileName(t *testing.T) {
fn = "Modelfile"
}
tempFile, err := os.CreateTemp(tempDir, fn)
tempFile, err := os.CreateTemp(t.TempDir(), fn)
if err != nil {
t.Fatalf("temp modelfile creation failed: %v", err)
}
@@ -493,9 +492,35 @@ func TestPushHandler(t *testing.T) {
w.(http.Flusher).Flush()
}
},
"/api/me": func(w http.ResponseWriter, r *http.Request) {
if r.Method != http.MethodPost {
t.Errorf("expected POST request, got %s", r.Method)
}
},
},
expectedOutput: "\nYou can find your model at:\n\n\thttps://ollama.com/test-model\n",
},
{
name: "not signed in push",
modelName: "notsignedin-model",
serverResponse: map[string]func(w http.ResponseWriter, r *http.Request){
"/api/me": func(w http.ResponseWriter, r *http.Request) {
if r.Method != http.MethodPost {
t.Errorf("expected POST request, got %s", r.Method)
}
w.Header().Set("Content-Type", "application/json")
w.WriteHeader(http.StatusUnauthorized)
err := json.NewEncoder(w).Encode(map[string]string{
"error": "unauthorized",
"signin_url": "https://somethingsomething",
})
if err != nil {
t.Fatal(err)
}
},
},
expectedOutput: "You need to be signed in to push",
},
{
name: "unauthorized push",
modelName: "unauthorized-model",
@@ -504,12 +529,17 @@ func TestPushHandler(t *testing.T) {
w.Header().Set("Content-Type", "application/json")
w.WriteHeader(http.StatusUnauthorized)
err := json.NewEncoder(w).Encode(map[string]string{
"error": "access denied",
"error": "403: {\"errors\":[{\"code\":\"ACCESS DENIED\", \"message\":\"access denied\"}]}",
})
if err != nil {
t.Fatal(err)
}
},
"/api/me": func(w http.ResponseWriter, r *http.Request) {
if r.Method != http.MethodPost {
t.Errorf("expected POST request, got %s", r.Method)
}
},
},
expectedError: "you are not authorized to push to this namespace, create the model under a namespace you own",
},
@@ -527,10 +557,14 @@ func TestPushHandler(t *testing.T) {
defer mockServer.Close()
t.Setenv("OLLAMA_HOST", mockServer.URL)
tmpDir := t.TempDir()
t.Setenv("HOME", tmpDir)
t.Setenv("USERPROFILE", tmpDir)
initializeKeypair()
cmd := &cobra.Command{}
cmd.Flags().Bool("insecure", false, "")
cmd.SetContext(context.TODO())
cmd.SetContext(t.Context())
// Redirect stderr to capture progress output
oldStderr := os.Stderr
@@ -562,7 +596,7 @@ func TestPushHandler(t *testing.T) {
t.Errorf("expected no error, got %v", err)
}
if tt.expectedOutput != "" {
if got := string(stdout); got != tt.expectedOutput {
if got := string(stdout); !strings.Contains(got, tt.expectedOutput) {
t.Errorf("expected output %q, got %q", tt.expectedOutput, got)
}
}
@@ -635,7 +669,7 @@ func TestListHandler(t *testing.T) {
t.Setenv("OLLAMA_HOST", mockServer.URL)
cmd := &cobra.Command{}
cmd.SetContext(context.TODO())
cmd.SetContext(t.Context())
// Capture stdout
oldStdout := os.Stdout
@@ -690,7 +724,7 @@ func TestCreateHandler(t *testing.T) {
return
}
if req.Name != "test-model" {
if req.Model != "test-model" {
t.Errorf("expected model name 'test-model', got %s", req.Name)
}
@@ -730,7 +764,7 @@ func TestCreateHandler(t *testing.T) {
}))
t.Setenv("OLLAMA_HOST", mockServer.URL)
t.Cleanup(mockServer.Close)
tempFile, err := os.CreateTemp("", "modelfile")
tempFile, err := os.CreateTemp(t.TempDir(), "modelfile")
if err != nil {
t.Fatal(err)
}
@@ -750,7 +784,7 @@ func TestCreateHandler(t *testing.T) {
}
cmd.Flags().Bool("insecure", false, "")
cmd.SetContext(context.TODO())
cmd.SetContext(t.Context())
// Redirect stderr to capture progress output
oldStderr := os.Stderr
@@ -920,3 +954,286 @@ func TestNewCreateRequest(t *testing.T) {
})
}
}
func TestRunOptions_Copy(t *testing.T) {
// Setup test data
originalKeepAlive := &api.Duration{Duration: 5 * time.Minute}
originalThink := &api.ThinkValue{Value: "test reasoning"}
original := runOptions{
Model: "test-model",
ParentModel: "parent-model",
Prompt: "test prompt",
Messages: []api.Message{
{Role: "user", Content: "hello"},
{Role: "assistant", Content: "hi there"},
},
WordWrap: true,
Format: "json",
System: "system prompt",
Images: []api.ImageData{
[]byte("image1"),
[]byte("image2"),
},
Options: map[string]any{
"temperature": 0.7,
"max_tokens": 1000,
"top_p": 0.9,
},
MultiModal: true,
KeepAlive: originalKeepAlive,
Think: originalThink,
HideThinking: false,
ShowConnect: true,
}
// Test the copy
copied := original.Copy()
// Test 1: Verify the copy is not the same instance
if &copied == &original {
t.Error("Copy should return a different instance")
}
// Test 2: Verify all fields are copied correctly
tests := []struct {
name string
got interface{}
want interface{}
}{
{"Model", copied.Model, original.Model},
{"ParentModel", copied.ParentModel, original.ParentModel},
{"Prompt", copied.Prompt, original.Prompt},
{"WordWrap", copied.WordWrap, original.WordWrap},
{"Format", copied.Format, original.Format},
{"System", copied.System, original.System},
{"MultiModal", copied.MultiModal, original.MultiModal},
{"HideThinking", copied.HideThinking, original.HideThinking},
{"ShowConnect", copied.ShowConnect, original.ShowConnect},
}
for _, tt := range tests {
if !reflect.DeepEqual(tt.got, tt.want) {
t.Errorf("%s mismatch: got %v, want %v", tt.name, tt.got, tt.want)
}
}
// Test 3: Verify Messages slice is deeply copied
if len(copied.Messages) != len(original.Messages) {
t.Errorf("Messages length mismatch: got %d, want %d", len(copied.Messages), len(original.Messages))
}
if len(copied.Messages) > 0 && &copied.Messages[0] == &original.Messages[0] {
t.Error("Messages should be different instances")
}
// Modify original to verify independence
if len(original.Messages) > 0 {
originalContent := original.Messages[0].Content
original.Messages[0].Content = "modified"
if len(copied.Messages) > 0 && copied.Messages[0].Content == "modified" {
t.Error("Messages should be independent after copy")
}
// Restore for other tests
original.Messages[0].Content = originalContent
}
// Test 4: Verify Images slice is deeply copied
if len(copied.Images) != len(original.Images) {
t.Errorf("Images length mismatch: got %d, want %d", len(copied.Images), len(original.Images))
}
if len(copied.Images) > 0 && &copied.Images[0] == &original.Images[0] {
t.Error("Images should be different instances")
}
// Modify original to verify independence
if len(original.Images) > 0 {
originalImage := original.Images[0]
original.Images[0] = []byte("modified")
if len(copied.Images) > 0 && string(copied.Images[0]) == "modified" {
t.Error("Images should be independent after copy")
}
// Restore for other tests
original.Images[0] = originalImage
}
// Test 5: Verify Options map is deeply copied
if len(copied.Options) != len(original.Options) {
t.Errorf("Options length mismatch: got %d, want %d", len(copied.Options), len(original.Options))
}
if len(copied.Options) > 0 && &copied.Options == &original.Options {
t.Error("Options map should be different instances")
}
// Modify original to verify independence
if len(original.Options) > 0 {
originalTemp := original.Options["temperature"]
original.Options["temperature"] = 0.9
if copied.Options["temperature"] == 0.9 {
t.Error("Options should be independent after copy")
}
// Restore for other tests
original.Options["temperature"] = originalTemp
}
// Test 6: Verify KeepAlive pointer is copied (shallow copy)
if copied.KeepAlive != original.KeepAlive {
t.Error("KeepAlive pointer should be the same (shallow copy)")
}
// Test 7: Verify Think pointer creates a new instance
if original.Think != nil && copied.Think == original.Think {
t.Error("Think should be a different instance")
}
if original.Think != nil && copied.Think != nil {
if !reflect.DeepEqual(copied.Think.Value, original.Think.Value) {
t.Errorf("Think.Value mismatch: got %v, want %v", copied.Think.Value, original.Think.Value)
}
}
// Test 8: Test with zero values
zeroOriginal := runOptions{}
zeroCopy := zeroOriginal.Copy()
if !reflect.DeepEqual(zeroCopy, zeroOriginal) {
fmt.Printf("orig: %#v\ncopy: %#v\n", zeroOriginal, zeroCopy)
t.Error("Copy of zero value should equal original zero value")
}
}
func TestRunOptions_Copy_EmptySlicesAndMaps(t *testing.T) {
// Test with empty slices and maps
original := runOptions{
Messages: []api.Message{},
Images: []api.ImageData{},
Options: map[string]any{},
}
copied := original.Copy()
if copied.Messages == nil {
t.Error("Empty Messages slice should remain empty, not nil")
}
if copied.Images == nil {
t.Error("Empty Images slice should remain empty, not nil")
}
if copied.Options == nil {
t.Error("Empty Options map should remain empty, not nil")
}
if len(copied.Messages) != 0 {
t.Error("Empty Messages slice should remain empty")
}
if len(copied.Images) != 0 {
t.Error("Empty Images slice should remain empty")
}
if len(copied.Options) != 0 {
t.Error("Empty Options map should remain empty")
}
}
func TestRunOptions_Copy_NilPointers(t *testing.T) {
// Test with nil pointers
original := runOptions{
KeepAlive: nil,
Think: nil,
}
copied := original.Copy()
if copied.KeepAlive != nil {
t.Error("Nil KeepAlive should remain nil")
}
if copied.Think != nil {
t.Error("Nil Think should remain nil")
}
}
func TestRunOptions_Copy_ThinkValueVariants(t *testing.T) {
tests := []struct {
name string
think *api.ThinkValue
}{
{"nil Think", nil},
{"bool true", &api.ThinkValue{Value: true}},
{"bool false", &api.ThinkValue{Value: false}},
{"string value", &api.ThinkValue{Value: "reasoning text"}},
{"int value", &api.ThinkValue{Value: 42}},
{"nil value", &api.ThinkValue{Value: nil}},
}
for _, tt := range tests {
t.Run(tt.name, func(t *testing.T) {
original := runOptions{Think: tt.think}
copied := original.Copy()
if tt.think == nil {
if copied.Think != nil {
t.Error("Nil Think should remain nil")
}
return
}
if copied.Think == nil {
t.Error("Non-nil Think should not become nil")
return
}
if copied.Think == original.Think {
t.Error("Think should be a different instance")
}
if !reflect.DeepEqual(copied.Think.Value, original.Think.Value) {
t.Errorf("Think.Value mismatch: got %v, want %v", copied.Think.Value, original.Think.Value)
}
})
}
}
func TestRunOptions_Copy_Independence(t *testing.T) {
// Test that modifications to original don't affect copy
originalThink := &api.ThinkValue{Value: "original"}
original := runOptions{
Model: "original-model",
Messages: []api.Message{{Role: "user", Content: "original"}},
Options: map[string]any{"key": "value"},
Think: originalThink,
}
copied := original.Copy()
// Modify original
original.Model = "modified-model"
if len(original.Messages) > 0 {
original.Messages[0].Content = "modified"
}
original.Options["key"] = "modified"
if original.Think != nil {
original.Think.Value = "modified"
}
// Verify copy is unchanged
if copied.Model == "modified-model" {
t.Error("Copy Model should not be affected by original modification")
}
if len(copied.Messages) > 0 && copied.Messages[0].Content == "modified" {
t.Error("Copy Messages should not be affected by original modification")
}
if copied.Options["key"] == "modified" {
t.Error("Copy Options should not be affected by original modification")
}
if copied.Think != nil && copied.Think.Value == "modified" {
t.Error("Copy Think should not be affected by original modification")
}
}

View File

@@ -44,7 +44,7 @@ func generateInteractive(cmd *cobra.Command, opts runOptions) error {
fmt.Fprintln(os.Stderr, "Use \"\"\" to begin a multi-line message.")
if opts.MultiModal {
fmt.Fprintf(os.Stderr, "Use %s to include .jpg or .png images.\n", filepath.FromSlash("/path/to/file"))
fmt.Fprintf(os.Stderr, "Use %s to include .jpg, .png, or .webp images.\n", filepath.FromSlash("/path/to/file"))
}
fmt.Fprintln(os.Stderr, "")
@@ -62,6 +62,8 @@ func generateInteractive(cmd *cobra.Command, opts runOptions) error {
fmt.Fprintln(os.Stderr, " /set noformat Disable formatting")
fmt.Fprintln(os.Stderr, " /set verbose Show LLM stats")
fmt.Fprintln(os.Stderr, " /set quiet Disable LLM stats")
fmt.Fprintln(os.Stderr, " /set think Enable thinking")
fmt.Fprintln(os.Stderr, " /set nothink Disable thinking")
fmt.Fprintln(os.Stderr, "")
}
@@ -128,6 +130,7 @@ func generateInteractive(cmd *cobra.Command, opts runOptions) error {
var sb strings.Builder
var multiline MultilineState
var thinkExplicitlySet bool = opts.Think != nil
for {
line, err := scanner.Readline()
@@ -192,11 +195,27 @@ func generateInteractive(cmd *cobra.Command, opts runOptions) error {
fmt.Println("Usage:\n /load <modelname>")
continue
}
origOpts := opts.Copy()
opts.Model = args[1]
opts.Messages = []api.Message{}
fmt.Printf("Loading model '%s'\n", opts.Model)
opts.Think, err = inferThinkingOption(nil, &opts, thinkExplicitlySet)
if err != nil {
if strings.Contains(err.Error(), "not found") {
fmt.Printf("Couldn't find model '%s'\n", opts.Model)
opts = origOpts.Copy()
continue
}
return err
}
if err := loadOrUnloadModel(cmd, &opts); err != nil {
if strings.Contains(err.Error(), "not found") {
fmt.Printf("Couldn't find model '%s'\n", opts.Model)
opts = origOpts.Copy()
continue
}
if strings.Contains(err.Error(), "does not support thinking") {
fmt.Printf("error: %v\n", err)
continue
}
@@ -260,6 +279,35 @@ func generateInteractive(cmd *cobra.Command, opts runOptions) error {
return err
}
fmt.Println("Set 'quiet' mode.")
case "think":
thinkValue := api.ThinkValue{Value: true}
var maybeLevel string
if len(args) > 2 {
maybeLevel = args[2]
}
if maybeLevel != "" {
// TODO(drifkin): validate the level, could be model dependent
// though... It will also be validated on the server once a call is
// made.
thinkValue.Value = maybeLevel
}
opts.Think = &thinkValue
thinkExplicitlySet = true
if client, err := api.ClientFromEnvironment(); err == nil {
ensureThinkingSupport(cmd.Context(), client, opts.Model)
}
if maybeLevel != "" {
fmt.Printf("Set 'think' mode to '%s'.\n", maybeLevel)
} else {
fmt.Println("Set 'think' mode.")
}
case "nothink":
opts.Think = &api.ThinkValue{Value: false}
thinkExplicitlySet = true
if client, err := api.ClientFromEnvironment(); err == nil {
ensureThinkingSupport(cmd.Context(), client, opts.Model)
}
fmt.Println("Set 'nothink' mode.")
case "format":
if len(args) < 3 || args[2] != "json" {
fmt.Println("Invalid or missing format. For 'json' mode use '/set format json'")
@@ -358,18 +406,21 @@ func generateInteractive(cmd *cobra.Command, opts runOptions) error {
case "modelfile":
fmt.Println(resp.Modelfile)
case "parameters":
fmt.Println("Model defined parameters:")
if resp.Parameters == "" {
fmt.Println("No parameters were specified for this model.")
fmt.Println(" No additional parameters were specified for this model.")
} else {
if len(opts.Options) > 0 {
fmt.Println("User defined parameters:")
for k, v := range opts.Options {
fmt.Printf("%-*s %v\n", 30, k, v)
}
fmt.Println()
for _, l := range strings.Split(resp.Parameters, "\n") {
fmt.Printf(" %s\n", l)
}
fmt.Println("Model defined parameters:")
fmt.Println(resp.Parameters)
}
fmt.Println()
if len(opts.Options) > 0 {
fmt.Println("User defined parameters:")
for k, v := range opts.Options {
fmt.Printf(" %-*s %v\n", 30, k, v)
}
fmt.Println()
}
case "system":
switch {
@@ -448,6 +499,12 @@ func generateInteractive(cmd *cobra.Command, opts runOptions) error {
assistant, err := chat(cmd, opts)
if err != nil {
if strings.Contains(err.Error(), "does not support thinking") ||
strings.Contains(err.Error(), "invalid think value") {
fmt.Printf("error: %v\n", err)
sb.Reset()
continue
}
return err
}
if assistant != nil {
@@ -511,7 +568,7 @@ func extractFileNames(input string) []string {
// Regex to match file paths starting with optional drive letter, / ./ \ or .\ and include escaped or unescaped spaces (\ or %20)
// and followed by more characters and a file extension
// This will capture non filename strings, but we'll check for file existence to remove mismatches
regexPattern := `(?:[a-zA-Z]:)?(?:\./|/|\\)[\S\\ ]+?\.(?i:jpg|jpeg|png)\b`
regexPattern := `(?:[a-zA-Z]:)?(?:\./|/|\\)[\S\\ ]+?\.(?i:jpg|jpeg|png|webp)\b`
re := regexp.MustCompile(regexPattern)
return re.FindAllString(input, -1)
@@ -531,6 +588,8 @@ func extractFileData(input string) (string, []api.ImageData, error) {
return "", imgs, err
}
fmt.Fprintf(os.Stderr, "Added image '%s'\n", nfp)
input = strings.ReplaceAll(input, "'"+nfp+"'", "")
input = strings.ReplaceAll(input, "'"+fp+"'", "")
input = strings.ReplaceAll(input, fp, "")
imgs = append(imgs, data)
}
@@ -551,7 +610,7 @@ func getImageData(filePath string) ([]byte, error) {
}
contentType := http.DetectContentType(buf)
allowedTypes := []string{"image/jpeg", "image/jpg", "image/png"}
allowedTypes := []string{"image/jpeg", "image/jpg", "image/png", "image/webp"}
if !slices.Contains(allowedTypes, contentType) {
return nil, fmt.Errorf("invalid image type: %s", contentType)
}

View File

@@ -1,6 +1,8 @@
package cmd
import (
"os"
"path/filepath"
"testing"
"github.com/stretchr/testify/assert"
@@ -10,14 +12,17 @@ func TestExtractFilenames(t *testing.T) {
// Unix style paths
input := ` some preamble
./relative\ path/one.png inbetween1 ./not a valid two.jpg inbetween2 ./1.svg
/unescaped space /three.jpeg inbetween3 /valid\ path/dir/four.png "./quoted with spaces/five.JPG`
/unescaped space /three.jpeg inbetween3 /valid\ path/dir/four.png "./quoted with spaces/five.JPG
/unescaped space /six.webp inbetween6 /valid\ path/dir/seven.WEBP`
res := extractFileNames(input)
assert.Len(t, res, 5)
assert.Len(t, res, 7)
assert.Contains(t, res[0], "one.png")
assert.Contains(t, res[1], "two.jpg")
assert.Contains(t, res[2], "three.jpeg")
assert.Contains(t, res[3], "four.png")
assert.Contains(t, res[4], "five.JPG")
assert.Contains(t, res[5], "six.webp")
assert.Contains(t, res[6], "seven.WEBP")
assert.NotContains(t, res[4], '"')
assert.NotContains(t, res, "inbetween1")
assert.NotContains(t, res, "./1.svg")
@@ -28,10 +33,12 @@ func TestExtractFilenames(t *testing.T) {
/absolute/nospace/three.jpeg inbetween3 /absolute/with space/four.png inbetween4
./relative\ path/five.JPG inbetween5 "./relative with/spaces/six.png inbetween6
d:\path with\spaces\seven.JPEG inbetween7 c:\users\jdoe\eight.png inbetween8
d:\program files\someplace\nine.png inbetween9 "E:\program files\someplace\ten.PNG some ending
d:\program files\someplace\nine.png inbetween9 "E:\program files\someplace\ten.PNG
c:/users/jdoe/eleven.webp inbetween11 c:/program files/someplace/twelve.WebP inbetween12
d:\path with\spaces\thirteen.WEBP some ending
`
res = extractFileNames(input)
assert.Len(t, res, 10)
assert.Len(t, res, 13)
assert.NotContains(t, res, "inbetween2")
assert.Contains(t, res[0], "one.png")
assert.Contains(t, res[0], "c:")
@@ -49,4 +56,31 @@ d:\path with\spaces\seven.JPEG inbetween7 c:\users\jdoe\eight.png inbetween8
assert.Contains(t, res[8], "d:")
assert.Contains(t, res[9], "ten.PNG")
assert.Contains(t, res[9], "E:")
assert.Contains(t, res[10], "eleven.webp")
assert.Contains(t, res[10], "c:")
assert.Contains(t, res[11], "twelve.WebP")
assert.Contains(t, res[11], "c:")
assert.Contains(t, res[12], "thirteen.WEBP")
assert.Contains(t, res[12], "d:")
}
// Ensure that file paths wrapped in single quotes are removed with the quotes.
func TestExtractFileDataRemovesQuotedFilepath(t *testing.T) {
dir := t.TempDir()
fp := filepath.Join(dir, "img.jpg")
data := make([]byte, 600)
copy(data, []byte{
0xff, 0xd8, 0xff, 0xe0, 0x00, 0x10, 'J', 'F', 'I', 'F',
0x00, 0x01, 0x01, 0x01, 0x00, 0x00, 0x00, 0x00, 0x00, 0x00,
0xff, 0xd9,
})
if err := os.WriteFile(fp, data, 0o600); err != nil {
t.Fatalf("failed to write test image: %v", err)
}
input := "before '" + fp + "' after"
cleaned, imgs, err := extractFileData(input)
assert.NoError(t, err)
assert.Len(t, imgs, 1)
assert.Equal(t, cleaned, "before after")
}

View File

@@ -5,7 +5,7 @@ import (
"errors"
"os"
"os/exec"
"strings"
"regexp"
"github.com/ollama/ollama/api"
)
@@ -19,11 +19,12 @@ func startApp(ctx context.Context, client *api.Client) error {
if err != nil {
return err
}
if !strings.Contains(link, "Ollama.app") {
r := regexp.MustCompile(`^.*/Ollama\s?\d*.app`)
m := r.FindStringSubmatch(link)
if len(m) != 1 {
return errors.New("could not find ollama app")
}
path := strings.Split(link, "Ollama.app")
if err := exec.Command("/usr/bin/open", "-a", path[0]+"Ollama.app").Run(); err != nil {
if err := exec.Command("/usr/bin/open", "-j", "-a", m[0], "--args", "--fast-startup").Run(); err != nil {
return err
}
return waitForServer(ctx, client)

View File

@@ -4,17 +4,27 @@ import (
"context"
"errors"
"fmt"
"log/slog"
"os"
"os/exec"
"path"
"path/filepath"
"strings"
"syscall"
"unsafe"
"github.com/ollama/ollama/api"
"golang.org/x/sys/windows"
)
const (
Installer = "OllamaSetup.exe"
)
func startApp(ctx context.Context, client *api.Client) error {
// log.Printf("XXX Attempting to find and start ollama app")
if len(isProcRunning(Installer)) > 0 {
return fmt.Errorf("upgrade in progress...")
}
AppName := "ollama app.exe"
exe, err := os.Executable()
if err != nil {
@@ -35,14 +45,11 @@ func startApp(ctx context.Context, client *api.Client) error {
}
}
}
// log.Printf("XXX attempting to start app %s", appExe)
cmd_path := "c:\\Windows\\system32\\cmd.exe"
cmd := exec.Command(cmd_path, "/c", appExe)
// TODO - these hide flags aren't working - still pops up a command window for some reason
cmd := exec.Command(cmd_path, "/c", appExe, "--hide", "--fast-startup")
cmd.SysProcAttr = &syscall.SysProcAttr{CreationFlags: 0x08000000, HideWindow: true}
// TODO this didn't help either...
cmd.Stdin = strings.NewReader("")
cmd.Stdout = os.Stdout
cmd.Stderr = os.Stderr
@@ -56,3 +63,50 @@ func startApp(ctx context.Context, client *api.Client) error {
}
return waitForServer(ctx, client)
}
func isProcRunning(procName string) []uint32 {
pids := make([]uint32, 2048)
var ret uint32
if err := windows.EnumProcesses(pids, &ret); err != nil || ret == 0 {
slog.Debug("failed to check for running installers", "error", err)
return nil
}
if ret > uint32(len(pids)) {
pids = make([]uint32, ret+10)
if err := windows.EnumProcesses(pids, &ret); err != nil || ret == 0 {
slog.Debug("failed to check for running installers", "error", err)
return nil
}
}
if ret < uint32(len(pids)) {
pids = pids[:ret]
}
var matches []uint32
for _, pid := range pids {
if pid == 0 {
continue
}
hProcess, err := windows.OpenProcess(windows.PROCESS_QUERY_INFORMATION|windows.PROCESS_VM_READ, false, pid)
if err != nil {
continue
}
defer windows.CloseHandle(hProcess)
var module windows.Handle
var cbNeeded uint32
cb := (uint32)(unsafe.Sizeof(module))
if err := windows.EnumProcessModules(hProcess, &module, cb, &cbNeeded); err != nil {
continue
}
var sz uint32 = 1024 * 8
moduleName := make([]uint16, sz)
cb = uint32(len(moduleName)) * (uint32)(unsafe.Sizeof(uint16(0)))
if err := windows.GetModuleBaseName(hProcess, module, &moduleName[0], cb); err != nil && err != syscall.ERROR_INSUFFICIENT_BUFFER {
continue
}
exeFile := path.Base(strings.ToLower(syscall.UTF16ToString(moduleName)))
if strings.EqualFold(exeFile, procName) {
matches = append(matches, pid)
}
}
return matches
}

63
cmd/warn_thinking_test.go Normal file
View File

@@ -0,0 +1,63 @@
package cmd
import (
"encoding/json"
"io"
"net/http"
"net/http/httptest"
"os"
"strings"
"testing"
"github.com/ollama/ollama/api"
"github.com/ollama/ollama/types/model"
)
// Test that a warning is printed when thinking is requested but not supported.
func TestWarnMissingThinking(t *testing.T) {
cases := []struct {
capabilities []model.Capability
expectWarn bool
}{
{capabilities: []model.Capability{model.CapabilityThinking}, expectWarn: false},
{capabilities: []model.Capability{}, expectWarn: true},
}
for _, tc := range cases {
srv := httptest.NewServer(http.HandlerFunc(func(w http.ResponseWriter, r *http.Request) {
if r.URL.Path != "/api/show" || r.Method != http.MethodPost {
t.Fatalf("unexpected request to %s %s", r.URL.Path, r.Method)
}
var req api.ShowRequest
if err := json.NewDecoder(r.Body).Decode(&req); err != nil {
t.Fatalf("decode request: %v", err)
}
resp := api.ShowResponse{Capabilities: tc.capabilities}
if err := json.NewEncoder(w).Encode(resp); err != nil {
t.Fatalf("encode response: %v", err)
}
}))
defer srv.Close()
t.Setenv("OLLAMA_HOST", srv.URL)
client, err := api.ClientFromEnvironment()
if err != nil {
t.Fatal(err)
}
oldStderr := os.Stderr
r, w, _ := os.Pipe()
os.Stderr = w
ensureThinkingSupport(t.Context(), client, "m")
w.Close()
os.Stderr = oldStderr
out, _ := io.ReadAll(r)
warned := strings.Contains(string(out), "warning:")
if tc.expectWarn && !warned {
t.Errorf("expected warning, got none")
}
if !tc.expectWarn && warned {
t.Errorf("did not expect warning, got: %s", string(out))
}
}
}

View File

@@ -1,25 +1,26 @@
package convert
import (
"cmp"
"encoding/json"
"errors"
"fmt"
"io"
"io/fs"
"log/slog"
"os"
"slices"
"strings"
"github.com/ollama/ollama/fs/ggml"
)
type ModelParameters struct {
Architectures []string `json:"architectures"`
VocabSize uint32 `json:"vocab_size"`
TextModel TextParameters `json:"text_config"`
}
Architectures []string `json:"architectures"`
VocabSize uint32 `json:"vocab_size"`
type TextParameters struct {
VocabSize uint32 `json:"vocab_size"`
TextModel struct {
VocabSize uint32 `json:"vocab_size"`
} `json:"text_config"`
}
type AdapterParameters struct {
@@ -52,8 +53,11 @@ func (ModelParameters) KV(t *Tokenizer) ggml.KV {
}
for _, sv := range t.SpecialVocabulary {
kv[fmt.Sprintf("tokenizer.ggml.%s_token_id", sv.Key())] = uint32(sv.ID)
kv[fmt.Sprintf("tokenizer.ggml.add_%s_token", sv.Key())] = sv.AddToken
kv[fmt.Sprintf("tokenizer.ggml.%s_token_id", sv.Key())] = uint32(sv.ID)
if len(sv.IDs) > 0 {
kv[fmt.Sprintf("tokenizer.ggml.%s_token_ids", sv.Key())] = sv.IDs
}
}
return kv
@@ -84,27 +88,17 @@ func (ModelParameters) specialTokenTypes() []string {
}
}
func (ModelParameters) writeFile(ws io.WriteSeeker, kv ggml.KV, ts []ggml.Tensor) error {
return ggml.WriteGGUF(ws, kv, ts)
}
func (AdapterParameters) writeFile(ws io.WriteSeeker, kv ggml.KV, ts []ggml.Tensor) error {
return ggml.WriteGGUF(ws, kv, ts)
}
type ModelConverter interface {
// KV maps parameters to LLM key-values
KV(*Tokenizer) ggml.KV
// Tensors maps input tensors to LLM tensors. Model specific modifications can be done here.
Tensors([]Tensor) []ggml.Tensor
Tensors([]Tensor) []*ggml.Tensor
// Replacements returns a list of string pairs to replace in tensor names.
// See [strings.Replacer](https://pkg.go.dev/strings#Replacer) for details
Replacements() []string
// specialTokenTypes returns any special token types the model uses
specialTokenTypes() []string
// writeFile writes the model to the provided io.WriteSeeker
writeFile(io.WriteSeeker, ggml.KV, []ggml.Tensor) error
}
type moreParser interface {
@@ -115,15 +109,13 @@ type AdapterConverter interface {
// KV maps parameters to LLM key-values
KV(ggml.KV) ggml.KV
// Tensors maps input tensors to LLM tensors. Adapter specific modifications can be done here.
Tensors([]Tensor) []ggml.Tensor
Tensors([]Tensor) []*ggml.Tensor
// Replacements returns a list of string pairs to replace in tensor names.
// See [strings.Replacer](https://pkg.go.dev/strings#Replacer) for details
Replacements() []string
writeFile(io.WriteSeeker, ggml.KV, []ggml.Tensor) error
}
func ConvertAdapter(fsys fs.FS, ws io.WriteSeeker, baseKV ggml.KV) error {
func ConvertAdapter(fsys fs.FS, f *os.File, baseKV ggml.KV) error {
bts, err := fs.ReadFile(fsys, "adapter_config.json")
if err != nil {
return err
@@ -158,14 +150,14 @@ func ConvertAdapter(fsys fs.FS, ws io.WriteSeeker, baseKV ggml.KV) error {
return err
}
return conv.writeFile(ws, conv.KV(baseKV), conv.Tensors(ts))
return writeFile(f, conv.KV(baseKV), conv.Tensors(ts))
}
// Convert writes an Ollama compatible model to the provided io.WriteSeeker based on configurations
// and files it finds in the input path.
// Supported input model formats include safetensors.
// Supported input tokenizers files include tokenizer.json (preferred) and tokenizer.model.
func ConvertModel(fsys fs.FS, ws io.WriteSeeker) error {
func ConvertModel(fsys fs.FS, f *os.File) error {
bts, err := fs.ReadFile(fsys, "config.json")
if err != nil {
return err
@@ -184,6 +176,10 @@ func ConvertModel(fsys fs.FS, ws io.WriteSeeker) error {
switch p.Architectures[0] {
case "LlamaForCausalLM":
conv = &llamaModel{}
case "MllamaForConditionalGeneration":
conv = &mllamaModel{}
case "Llama4ForConditionalGeneration":
conv = &llama4Model{}
case "Mistral3ForConditionalGeneration":
conv = &mistral3Model{}
case "MixtralForCausalLM":
@@ -194,14 +190,20 @@ func ConvertModel(fsys fs.FS, ws io.WriteSeeker) error {
conv = &gemma2Model{}
case "Gemma3ForCausalLM", "Gemma3ForConditionalGeneration":
conv = &gemma3Model{Architecture: p.Architectures[0]}
case "Gemma3nForConditionalGeneration":
conv = &gemma3nModel{}
case "Phi3ForCausalLM":
conv = &phi3Model{}
case "Qwen2ForCausalLM":
conv = &qwen2Model{}
case "Qwen2_5_VLForConditionalGeneration":
conv = &qwen25VLModel{}
case "BertModel":
conv = &bertModel{}
case "CohereForCausalLM":
conv = &commandrModel{}
case "GptOssForCausalLM":
conv = &gptossModel{}
default:
return fmt.Errorf("unsupported architecture %q", p.Architectures[0])
}
@@ -221,24 +223,22 @@ func ConvertModel(fsys fs.FS, ws io.WriteSeeker) error {
return err
}
vocabSize := int(p.VocabSize)
if vocabSize == 0 {
tVocabSize := int(p.TextModel.VocabSize)
vocabSize = tVocabSize
}
vocabSize := int(cmp.Or(p.VocabSize, p.TextModel.VocabSize))
switch {
case vocabSize == 0:
slog.Warn("vocabulary size was not explicitly set by the model", "default size", len(t.Vocabulary.Tokens))
slog.Debug("vocabulary size was not explicitly set by the model", "default size", len(t.Vocabulary.Tokens))
case vocabSize > len(t.Vocabulary.Tokens):
slog.Warn("vocabulary is smaller than expected, padding with dummy tokens", "expect", vocabSize, "actual", len(t.Vocabulary.Tokens))
slog.Debug("vocabulary is smaller than expected, padding with dummy tokens", "expect", vocabSize, "actual", len(t.Vocabulary.Tokens))
for i := range vocabSize - len(t.Vocabulary.Tokens) {
t.Vocabulary.Tokens = append(t.Vocabulary.Tokens, fmt.Sprintf("[PAD%d]", i))
t.Vocabulary.Scores = append(t.Vocabulary.Scores, -1)
t.Vocabulary.Types = append(t.Vocabulary.Types, tokenTypeUserDefined)
}
case vocabSize < len(t.Vocabulary.Tokens):
return fmt.Errorf("vocabulary is larger than expected '%d' instead of '%d'", len(t.Vocabulary.Tokens), vocabSize)
slog.Debug("vocabulary is larger than expected", "want", vocabSize, "got", len(t.Vocabulary.Tokens))
p.VocabSize = uint32(len(t.Vocabulary.Tokens))
p.TextModel.VocabSize = uint32(len(t.Vocabulary.Tokens))
default:
slog.Debug("vocabulary", "size", len(t.Vocabulary.Tokens))
}
@@ -248,5 +248,13 @@ func ConvertModel(fsys fs.FS, ws io.WriteSeeker) error {
return err
}
return conv.writeFile(ws, conv.KV(t), conv.Tensors(ts))
return writeFile(f, conv.KV(t), conv.Tensors(ts))
}
func writeFile(f *os.File, kv ggml.KV, ts []*ggml.Tensor) error {
for i := range ts {
ts[i].Shape = slices.Clone(ts[i].Shape)
slices.Reverse(ts[i].Shape)
}
return ggml.WriteGGUF(f, kv, ts)
}

View File

@@ -28,6 +28,7 @@ type bertModel struct {
LayerNormEPS float32 `json:"layer_norm_eps"`
LayerNormEpsilon float32 `json:"layer_norm_epsilon"`
NormEpsilon float32 `json:"norm_epsilon"`
normalizeEmbeddings bool
PoolingType uint32
}
@@ -54,9 +55,11 @@ func (p *bertModel) parseMore(fsys fs.FS) error {
var pooling string
for _, m := range modules {
if m.Type == "sentence_transformers.models.Pooling" {
switch m.Type {
case "sentence_transformers.models.Pooling":
pooling = m.Path
break
case "sentence_transformers.models.Normalize":
p.normalizeEmbeddings = true
}
}
@@ -90,6 +93,7 @@ func (p *bertModel) KV(t *Tokenizer) ggml.KV {
kv["general.architecture"] = "bert"
kv["bert.attention.causal"] = false
kv["bert.pooling_type"] = p.PoolingType
kv["bert.normalize_embeddings"] = p.normalizeEmbeddings
kv["bert.block_count"] = cmp.Or(p.NLayers, p.NumHiddenLayers, p.NLayer)
@@ -132,8 +136,8 @@ func (p *bertModel) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p *bertModel) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (p *bertModel) Tensors(ts []Tensor) []*ggml.Tensor {
var out []*ggml.Tensor
for _, t := range ts {
if slices.Contains([]string{
"embeddings.position_ids",
@@ -143,7 +147,7 @@ func (p *bertModel) Tensors(ts []Tensor) []ggml.Tensor {
continue
}
out = append(out, ggml.Tensor{
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),

View File

@@ -43,10 +43,10 @@ func (p *commandrModel) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p *commandrModel) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (p *commandrModel) Tensors(ts []Tensor) []*ggml.Tensor {
var out []*ggml.Tensor
for _, t := range ts {
out = append(out, ggml.Tensor{
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),

View File

@@ -42,14 +42,14 @@ func (p *gemmaModel) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p *gemmaModel) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (p *gemmaModel) Tensors(ts []Tensor) []*ggml.Tensor {
var out []*ggml.Tensor
for _, t := range ts {
if !strings.HasPrefix(t.Name(), "v.") && strings.HasSuffix(t.Name(), "_norm.weight") {
t.SetRepacker(p.addOne)
}
out = append(out, ggml.Tensor{
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),

View File

@@ -21,8 +21,8 @@ func (p *gemma2Adapter) KV(baseKV ggml.KV) ggml.KV {
return kv
}
func (p *gemma2Adapter) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (p *gemma2Adapter) Tensors(ts []Tensor) []*ggml.Tensor {
var out []*ggml.Tensor
for _, t := range ts {
shape := t.Shape()
if (strings.HasSuffix(t.Name(), "weight.lora_a") && shape[0] > shape[1]) ||
@@ -31,7 +31,7 @@ func (p *gemma2Adapter) Tensors(ts []Tensor) []ggml.Tensor {
t.SetRepacker(p.repack)
}
out = append(out, ggml.Tensor{
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),

165
convert/convert_gemma3n.go Normal file
View File

@@ -0,0 +1,165 @@
package convert
import (
"slices"
"strings"
"github.com/ollama/ollama/fs/ggml"
"github.com/pdevine/tensor"
"github.com/pdevine/tensor/native"
"gonum.org/v1/gonum/stat/distuv"
)
type gemma3nModel struct {
ModelParameters
TextModel struct {
ActivationSparsityPattern []float32 `json:"activation_sparsity_pattern"`
AltupActiveIdx uint32 `json:"altup_active_idx"`
AltupCoefClip float32 `json:"altup_coef_clip"`
AltupCorrectScale bool `json:"altup_correct_scale"`
AltupLRMultiplier float32 `json:"altup_lr_multiplier"`
AltupNumInputs uint32 `json:"altup_num_inputs"`
HeadDim uint32 `json:"head_dim"`
HiddenSize uint32 `json:"hidden_size"`
HiddenSizePerLayerInput uint32 `json:"hidden_size_per_layer_input"`
IntermediateSize uint32 `json:"intermediate_size"`
MaxPositionEmbeddings uint32 `json:"max_position_embeddings"`
NumAttentionHeads uint32 `json:"num_attention_heads"`
NumHiddenLayers uint32 `json:"num_hidden_layers"`
NumKeyValueHeads uint32 `json:"num_key_value_heads"`
NumKVSharedLayers uint32 `json:"num_kv_shared_layers"`
RMSNormEPS float32 `json:"rms_norm_eps"`
RopeLocalBaseFreq float32 `json:"rope_local_base_freq"`
RopeTheta float32 `json:"rope_theta"`
SlidingWindow uint32 `json:"sliding_window"`
LayerTypes []string `json:"layer_types"`
} `json:"text_config"`
VisionModel struct{} `json:"vision_config"`
}
func (m *gemma3nModel) KV(t *Tokenizer) ggml.KV {
kv := m.ModelParameters.KV(t)
kv["general.architecture"] = "gemma3n"
kv["gemma3n.activation_sparsity_scale"] = slices.Collect(func(yield func(float32) bool) {
norm := distuv.Normal{Mu: 0, Sigma: 1}
for _, v := range m.TextModel.ActivationSparsityPattern {
if !yield(float32(norm.Quantile(float64(v)))) {
break
}
}
})
kv["gemma3n.altup.active_idx"] = m.TextModel.AltupActiveIdx
kv["gemma3n.altup.correct_scale"] = m.TextModel.AltupCorrectScale
kv["gemma3n.altup.lr_multiplier"] = m.TextModel.AltupLRMultiplier
kv["gemma3n.altup.num_inputs"] = m.TextModel.AltupNumInputs
kv["gemma3n.attention.head_count_kv"] = m.TextModel.NumKeyValueHeads
kv["gemma3n.attention.head_count"] = m.TextModel.NumAttentionHeads
kv["gemma3n.attention.layer_norm_rms_epsilon"] = m.TextModel.RMSNormEPS
kv["gemma3n.attention.sliding_window"] = m.TextModel.SlidingWindow
kv["gemma3n.attention.sliding_window_pattern"] = slices.Collect(func(yield func(bool) bool) {
for _, t := range m.TextModel.LayerTypes {
if !yield(t == "sliding_attention") {
break
}
}
})
kv["gemma3n.attention.shared_kv_layers"] = m.TextModel.NumKVSharedLayers
kv["gemma3n.block_count"] = m.TextModel.NumHiddenLayers
kv["gemma3n.context_length"] = m.TextModel.MaxPositionEmbeddings
kv["gemma3n.embedding_length_per_layer_input"] = m.TextModel.HiddenSizePerLayerInput
kv["gemma3n.embedding_length"] = m.TextModel.HiddenSize
kv["gemma3n.feed_forward_length"] = m.TextModel.IntermediateSize
kv["gemma3n.head_dim"] = m.TextModel.HeadDim
kv["gemma3n.rope.freq_base_local"] = m.TextModel.RopeLocalBaseFreq
kv["gemma3n.rope.freq_base"] = m.TextModel.RopeTheta
return kv
}
func (m *gemma3nModel) Tensors(ts []Tensor) []*ggml.Tensor {
out, ts := mergeTensors(ts,
merge{"altup_proj.*.weight", "altup_proj.weight"},
merge{"altup_unembd_proj.*.weight", "altup_unembd_proj.weight"},
)
for _, t := range ts {
switch {
case strings.Contains(t.Name(), "audio_tower"),
strings.Contains(t.Name(), "embed_audio"),
strings.Contains(t.Name(), "vision_tower"),
strings.Contains(t.Name(), "embed_vision"):
// TODO: handle audio and vision towers
continue
case strings.Contains(t.Name(), "altup_predict_coef"),
strings.Contains(t.Name(), "altup_correct_coef"):
if m.TextModel.AltupCoefClip > 0 {
t.SetRepacker(func(name string, data []float32, shape []uint64) (_ []float32, err error) {
dims := make([]int, len(shape))
for i := range shape {
dims[i] = int(shape[i])
}
var t tensor.Tensor = tensor.New(tensor.WithShape(dims...), tensor.WithBacking(data))
t, err = tensor.Clamp(t, -m.TextModel.AltupCoefClip, m.TextModel.AltupCoefClip)
if err != nil {
return nil, err
}
if err := t.Reshape(t.Shape().TotalSize()); err != nil {
return nil, err
}
return native.VectorF32(t.(*tensor.Dense))
})
}
}
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),
WriterTo: t,
})
}
return out
}
func (m *gemma3nModel) Replacements() []string {
return []string{
"model.language_model.embed_tokens_per_layer", "per_layer_token_embd",
"model.language_model.embed_tokens", "token_embd",
"model.language_model.per_layer_model_projection", "per_layer_model_proj",
"model.language_model.per_layer_projection_norm", "per_layer_proj_norm", "model.language_model.altup_projections", "altup_proj",
"model.language_model.altup_unembed_projections", "altup_unembd_proj",
"model.language_model.norm", "output_norm",
"model.language_model.layers", "blk",
"input_layernorm", "attn_norm",
"self_attn.q_proj", "attn_q",
"self_attn.q_norm", "attn_q_norm",
"self_attn.k_proj", "attn_k",
"self_attn.k_norm", "attn_k_norm",
"self_attn.v_proj", "attn_v",
"self_attn.o_proj", "attn_output",
"post_attention_layernorm", "post_attention_norm",
"pre_feedforward_layernorm", "ffn_norm",
"mlp.gate_proj", "ffn_gate",
"mlp.up_proj", "ffn_up",
"mlp.down_proj", "ffn_down",
"post_feedforward_layernorm", "post_ffw_norm",
"per_layer_input_gate", "inp_gate",
"per_layer_projection", "proj",
"post_per_layer_input_norm", "post_norm",
"altup.", "altup_",
"modality_router", "router",
"prediction_coefs", "predict_coef",
"correction_coefs", "correct_coef",
"correct_output_scale", "correct_scale.weight",
"laurel.", "laurel_",
"linear_left", "l",
"linear_right", "r",
"post_laurel_norm", "post_norm",
}
}

266
convert/convert_gptoss.go Normal file
View File

@@ -0,0 +1,266 @@
package convert
import (
"bytes"
"cmp"
"encoding/binary"
"io"
"slices"
"strings"
"github.com/ollama/ollama/fs/ggml"
"github.com/pdevine/tensor"
"github.com/pdevine/tensor/native"
)
type gptossModel struct {
ModelParameters
HiddenLayers uint32 `json:"num_hidden_layers"`
MaxPositionEmbeddings uint32 `json:"max_position_embeddings"`
HiddenSize uint32 `json:"hidden_size"`
IntermediateSize uint32 `json:"intermediate_size"`
AttentionHeads uint32 `json:"num_attention_heads"`
KeyValueHeads uint32 `json:"num_key_value_heads"`
HeadDim uint32 `json:"head_dim"`
Experts uint32 `json:"num_experts"`
LocalExperts uint32 `json:"num_local_experts"`
ExpertsPerToken uint32 `json:"experts_per_token"`
RMSNormEpsilon float32 `json:"rms_norm_eps"`
InitialContextLength uint32 `json:"initial_context_length"`
RopeTheta float32 `json:"rope_theta"`
RopeScalingFactor float32 `json:"rope_scaling_factor"`
RopeScaling struct {
Factor float32 `json:"factor"`
} `json:"rope_scaling"`
SlidingWindow uint32 `json:"sliding_window"`
}
var _ ModelConverter = (*gptossModel)(nil)
func (m *gptossModel) KV(t *Tokenizer) ggml.KV {
kv := m.ModelParameters.KV(t)
kv["general.architecture"] = "gptoss"
kv["general.file_type"] = uint32(4)
kv["gptoss.context_length"] = cmp.Or(m.MaxPositionEmbeddings, uint32(m.RopeScalingFactor*float32(m.InitialContextLength)))
kv["gptoss.block_count"] = m.HiddenLayers
kv["gptoss.embedding_length"] = m.HiddenSize
kv["gptoss.feed_forward_length"] = m.IntermediateSize
kv["gptoss.expert_count"] = cmp.Or(m.Experts, m.LocalExperts)
kv["gptoss.expert_used_count"] = m.ExpertsPerToken
kv["gptoss.attention.head_count"] = m.AttentionHeads
kv["gptoss.attention.head_count_kv"] = m.KeyValueHeads
kv["gptoss.attention.key_length"] = m.HeadDim
kv["gptoss.attention.value_length"] = m.HeadDim
kv["gptoss.attention.layer_norm_rms_epsilon"] = cmp.Or(m.RMSNormEpsilon, 1e-5)
kv["gptoss.attention.sliding_window"] = m.SlidingWindow
kv["gptoss.rope.freq_base"] = m.RopeTheta
kv["gptoss.rope.scaling.factor"] = cmp.Or(m.RopeScalingFactor, m.RopeScaling.Factor)
kv["gptoss.rope.scaling.original_context_length"] = m.InitialContextLength
kv["tokenizer.ggml.bos_token_id"] = uint32(199998) // <|startoftext|>
kv["tokenizer.ggml.add_bos_token"] = false
kv["tokenizer.ggml.eos_token_id"] = uint32(199999) // <|endoftext|>
kv["tokenizer.ggml.eos_token_ids"] = []int32{
199999, /* <|endoftext|> */
200002, /* <|return|> */
200012, /* <|call|> */
}
kv["tokenizer.ggml.add_eos_token"] = false
return kv
}
func (m *gptossModel) Tensors(ts []Tensor) []*ggml.Tensor {
var out []*ggml.Tensor
mxfp4s := make(map[string]*mxfp4)
for _, t := range ts {
if strings.HasSuffix(t.Name(), ".blocks") || strings.HasSuffix(t.Name(), ".scales") {
dot := strings.LastIndex(t.Name(), ".")
name, suffix := t.Name()[:dot], t.Name()[dot+1:]
if _, ok := mxfp4s[name]; !ok {
mxfp4s[name] = &mxfp4{}
}
switch suffix {
case "blocks":
mxfp4s[name].blocks = t
case "scales":
mxfp4s[name].scales = t
}
} else if strings.HasSuffix(t.Name(), "gate_up_exps.bias") {
// gate_up_exps is interleaved, need to split into gate_exps and up_exps
// e.g. gate_exps, up_exps = gate_up_exps[:, 0::2, ...], gate_up_exps[:, 1::2, ...]
out = append(out, slices.Collect(splitDim(t, 1,
split{
Replacer: strings.NewReplacer("gate_up_exps", "gate_exps"),
slices: []tensor.Slice{nil, tensor.S(0, int(t.Shape()[1]), 2)},
},
split{
Replacer: strings.NewReplacer("gate_up_exps", "up_exps"),
slices: []tensor.Slice{nil, tensor.S(1, int(t.Shape()[1]), 2)},
},
))...)
} else {
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),
WriterTo: t,
})
}
}
for name, mxfp4 := range mxfp4s {
dims := mxfp4.blocks.Shape()
if strings.Contains(name, "ffn_down_exps") {
out = append(out, &ggml.Tensor{
Name: name + ".weight",
Kind: uint32(ggml.TensorTypeMXFP4),
Shape: []uint64{dims[0], dims[1], dims[2] * dims[3] * 2},
WriterTo: mxfp4,
})
} else if strings.Contains(name, "ffn_gate_up_exps") {
// gate_up_exps is interleaved, need to split into gate_exps and up_exps
// e.g. gate_exps, up_exps = gate_up_exps[:, 0::2, ...], gate_up_exps[:, 1::2, ...]
out = append(out, &ggml.Tensor{
Name: strings.Replace(name, "gate_up", "gate", 1) + ".weight",
Kind: uint32(ggml.TensorTypeMXFP4),
Shape: []uint64{dims[0], dims[1] / 2, dims[2] * dims[3] * 2},
WriterTo: mxfp4.slice(1, 0, int(dims[1]), 2),
}, &ggml.Tensor{
Name: strings.Replace(name, "gate_up", "up", 1) + ".weight",
Kind: uint32(ggml.TensorTypeMXFP4),
Shape: []uint64{dims[0], dims[1] / 2, dims[2] * dims[3] * 2},
WriterTo: mxfp4.slice(1, 1, int(dims[1]), 2),
})
}
}
return out
}
func (m *gptossModel) Replacements() []string {
var replacements []string
if m.MaxPositionEmbeddings > 0 {
// hf flavored model
replacements = []string{
"lm_head", "output",
"model.embed_tokens", "token_embd",
"model.layers", "blk",
"input_layernorm", "attn_norm",
"self_attn.q_proj", "attn_q",
"self_attn.k_proj", "attn_k",
"self_attn.v_proj", "attn_v",
"self_attn.o_proj", "attn_out",
"self_attn.sinks", "attn_sinks",
"post_attention_layernorm", "ffn_norm",
"mlp.router", "ffn_gate_inp",
"mlp.experts.gate_up_proj_", "ffn_gate_up_exps.",
"mlp.experts.down_proj_", "ffn_down_exps.",
"model.norm", "output_norm",
}
} else {
replacements = []string{
// noop replacements so other replacements will not be applied
".blocks", ".blocks",
".scales", ".scales",
// real replacements
"block", "blk",
"attn.norm", "attn_norm",
"attn.qkv", "attn_qkv",
"attn.sinks", "attn_sinks",
"attn.out", "attn_out",
"mlp.norm", "ffn_norm",
"mlp.gate", "ffn_gate_inp",
"mlp.mlp1_", "ffn_gate_up_exps.",
"mlp.mlp2_", "ffn_down_exps.",
"embedding", "token_embd",
"norm", "output_norm",
"unembedding", "output",
"scale", "weight",
}
}
return replacements
}
type mxfp4 struct {
slices []tensor.Slice
blocks, scales Tensor
}
func (m *mxfp4) slice(dim, start, end, step int) *mxfp4 {
slice := slices.Repeat([]tensor.Slice{nil}, len(m.blocks.Shape()))
slice[dim] = tensor.S(start, end, step)
return &mxfp4{
slices: slice,
blocks: m.blocks,
scales: m.scales,
}
}
func (m *mxfp4) WriteTo(w io.Writer) (int64, error) {
var b bytes.Buffer
if _, err := m.blocks.WriteTo(&b); err != nil {
return 0, err
}
blocksDims := make([]int, len(m.blocks.Shape()))
for i, d := range m.blocks.Shape() {
blocksDims[i] = int(d)
}
bts := b.Bytes()
var tmp [16]byte
for i := 0; i < b.Len(); i += 16 {
for j := range 8 {
// transform a1b2c3 ... x7y8z9 -> 71xa82yb93zc
a, b := bts[i+j], bts[i+j+8]
tmp[2*j+0] = (a & 0x0F) | (b << 4)
tmp[2*j+1] = (a >> 4) | (b & 0xF0)
}
copy(bts[i:i+16], tmp[:])
}
var blocks tensor.Tensor = tensor.New(tensor.WithShape(blocksDims...), tensor.WithBacking(bts))
var s bytes.Buffer
if _, err := m.scales.WriteTo(&s); err != nil {
return 0, err
}
scalesDims := slices.Repeat([]int{1}, len(m.blocks.Shape()))
for i, d := range m.scales.Shape() {
scalesDims[i] = int(d)
}
var scales tensor.Tensor = tensor.New(tensor.WithShape(scalesDims...), tensor.WithBacking(s.Bytes()))
out, err := tensor.Concat(3, scales, blocks)
if err != nil {
return 0, err
}
if len(m.slices) > 0 {
out, err = out.Slice(m.slices...)
if err != nil {
return 0, err
}
}
out = tensor.Materialize(out)
if err := out.Reshape(out.Shape().TotalSize()); err != nil {
return 0, err
}
u8s, err := native.VectorU8(out.(*tensor.Dense))
if err != nil {
return 0, err
}
if err := binary.Write(w, binary.LittleEndian, u8s); err != nil {
return 0, err
}
return int64(len(u8s)), nil
}

View File

@@ -42,6 +42,8 @@ type llamaModel struct {
LayerNormEpsilon float32 `json:"layer_norm_epsilon"`
NormEpsilon float32 `json:"norm_epsilon"`
HeadDim uint32 `json:"head_dim"`
skipRepack bool
}
var _ ModelConverter = (*llamaModel)(nil)
@@ -70,6 +72,10 @@ func (p *llamaModel) KV(t *Tokenizer) ggml.KV {
kv["llama.rope.dimension_count"] = p.HiddenSize / headCount
}
if p.HeadDim > 0 {
kv["llama.attention.head_dim"] = p.HeadDim
}
if p.RopeTheta > 0 {
kv["llama.rope.freq_base"] = p.RopeTheta
}
@@ -120,11 +126,11 @@ func (p *llamaModel) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p *llamaModel) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (p *llamaModel) Tensors(ts []Tensor) []*ggml.Tensor {
var out []*ggml.Tensor
if p.RopeScaling.factors != nil {
out = append(out, ggml.Tensor{
out = append(out, &ggml.Tensor{
Name: "rope_freqs.weight",
Kind: 0,
Shape: []uint64{uint64(len(p.RopeScaling.factors))},
@@ -133,12 +139,14 @@ func (p *llamaModel) Tensors(ts []Tensor) []ggml.Tensor {
}
for _, t := range ts {
if strings.HasSuffix(t.Name(), "attn_q.weight") ||
strings.HasSuffix(t.Name(), "attn_k.weight") {
t.SetRepacker(p.repack)
if strings.HasSuffix(t.Name(), "attn_q.weight") || strings.HasSuffix(t.Name(), "attn_k.weight") ||
strings.HasSuffix(t.Name(), "attn_q_proj.weight") || strings.HasSuffix(t.Name(), "attn_k_proj.weight") {
if !p.skipRepack {
t.SetRepacker(p.repack)
}
}
out = append(out, ggml.Tensor{
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),
@@ -174,9 +182,9 @@ func (p *llamaModel) repack(name string, data []float32, shape []uint64) ([]floa
}
var heads uint32
if strings.HasSuffix(name, "attn_q.weight") {
if strings.HasSuffix(name, "attn_q.weight") || strings.HasSuffix(name, "attn_q_proj.weight") {
heads = p.NumAttentionHeads
} else if strings.HasSuffix(name, "attn_k.weight") {
} else if strings.HasSuffix(name, "attn_k.weight") || strings.HasSuffix(name, "attn_k_proj.weight") {
heads = cmp.Or(p.NumKeyValueHeads, p.NumAttentionHeads)
} else {
return nil, fmt.Errorf("unknown tensor for repack: %s", name)

169
convert/convert_llama4.go Normal file
View File

@@ -0,0 +1,169 @@
package convert
import (
"slices"
"strings"
"github.com/pdevine/tensor"
"github.com/pdevine/tensor/native"
"github.com/ollama/ollama/fs/ggml"
)
type llama4Model struct {
ModelParameters
TextModel struct {
llamaModel
NumExpertsPerToken uint32 `json:"num_experts_per_tok"`
NumLocalExperts uint32 `json:"num_local_experts"`
InterleaveMOELayerStep uint32 `json:"interleave_moe_layer_step"`
UseQKNorm bool `json:"use_qk_norm"`
IntermediateSizeMLP uint32 `json:"intermediate_size_mlp"`
AttentionChunkSize uint32 `json:"attention_chunk_size"`
} `json:"text_config"`
VisionModel struct {
NumHiddenLayers uint32 `json:"num_hidden_layers"`
HiddenSize uint32 `json:"hidden_size"`
IntermediateSize uint32 `json:"intermediate_size"`
NumAttentionHeads uint32 `json:"num_attention_heads"`
ImageSize uint32 `json:"image_size"`
PatchSize uint32 `json:"patch_size"`
RopeTheta float32 `json:"rope_theta"`
NormEpsilon float32 `json:"norm_eps"`
PixelShuffleRatio float32 `json:"pixel_shuffle_ratio"`
} `json:"vision_config"`
}
// KV implements ModelConverter.
func (p *llama4Model) KV(t *Tokenizer) ggml.KV {
kv := p.ModelParameters.KV(t)
kv["general.architecture"] = "llama4"
for k, v := range p.TextModel.KV(t) {
if strings.HasPrefix(k, "llama.") {
kv[strings.ReplaceAll(k, "llama.", "llama4.")] = v
}
}
kv["llama4.feed_forward_length"] = p.TextModel.IntermediateSizeMLP
kv["llama4.expert_feed_forward_length"] = p.TextModel.IntermediateSize
kv["llama4.expert_count"] = p.TextModel.NumLocalExperts
kv["llama4.expert_used_count"] = p.TextModel.NumExpertsPerToken
kv["llama4.interleave_moe_layer_step"] = p.TextModel.InterleaveMOELayerStep
kv["llama4.use_qk_norm"] = p.TextModel.UseQKNorm
kv["llama4.attention.chunk_size"] = p.TextModel.AttentionChunkSize
kv["llama4.vision.block_count"] = p.VisionModel.NumHiddenLayers
kv["llama4.vision.embedding_length"] = p.VisionModel.HiddenSize
kv["llama4.vision.feed_forward_length"] = p.VisionModel.IntermediateSize
kv["llama4.vision.attention.head_count"] = p.VisionModel.NumAttentionHeads
kv["llama4.vision.image_size"] = p.VisionModel.ImageSize
kv["llama4.vision.patch_size"] = p.VisionModel.PatchSize
kv["llama4.vision.rope.freq_base"] = p.VisionModel.RopeTheta
kv["llama4.vision.layer_norm_epsilon"] = p.VisionModel.NormEpsilon
kv["llama4.vision.pixel_shuffle_ratio"] = p.VisionModel.PixelShuffleRatio
return kv
}
// Replacements implements ModelConverter.
func (p *llama4Model) Replacements() []string {
return append(
p.TextModel.Replacements(),
"language_model.", "",
"vision_model", "v",
"multi_modal_projector", "mm",
"feed_forward.down_proj", "ffn_down",
"feed_forward.up_proj", "ffn_up",
"feed_forward.gate_proj", "ffn_gate",
"feed_forward.", "ffn_",
"shared_expert.down_proj", "down_shexp",
"shared_expert.gate_proj", "gate_shexp",
"shared_expert.up_proj", "up_shexp",
"experts.down_proj", "down_exps.weight",
"experts.gate_up_proj", "gate_up_exps.weight",
"router", "gate_inp",
"patch_embedding.linear", "patch_embedding",
)
}
// Tensors implements ModelConverter.
func (p *llama4Model) Tensors(ts []Tensor) []*ggml.Tensor {
var out []*ggml.Tensor
var textTensors []Tensor
for _, t := range ts {
if strings.HasPrefix(t.Name(), "v.") || strings.HasPrefix(t.Name(), "mm.") {
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),
WriterTo: t,
})
} else if strings.Contains(t.Name(), "ffn_gate_up_exps") {
// gate and up projectors are fused
// dims[1], dims[2] must be swapped
// [experts, hidden_size, intermediate_size * 2] --> [experts, intermediate_size, hidden_size]
halfDim := int(t.Shape()[2]) / 2
newShape := slices.Clone(t.Shape())
newShape[1], newShape[2] = newShape[2]/2, newShape[1]
for i, name := range []string{"ffn_gate_exps", "ffn_up_exps"} {
// clone tensor since we need separate repackers
tt := t.Clone()
tt.SetRepacker(p.repack(nil, nil, tensor.S(i*halfDim, (i+1)*halfDim)))
out = append(out, &ggml.Tensor{
Name: strings.ReplaceAll(tt.Name(), "ffn_gate_up_exps", name),
Kind: tt.Kind(),
Shape: newShape,
WriterTo: tt,
})
}
} else if strings.Contains(t.Name(), "ffn_down_exps") {
// dims[1], dims[2] must be swapped
// [experts, intermediate_size, hidden_size] --> [experts, hidden_size, intermediate_size]
t.SetRepacker(p.repack())
newShape := slices.Clone(t.Shape())
newShape[1], newShape[2] = newShape[2], newShape[1]
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: newShape,
WriterTo: t,
})
} else {
textTensors = append(textTensors, t)
}
}
p.TextModel.skipRepack = true
out = append(out, p.TextModel.Tensors(textTensors)...)
return out
}
func (p *llama4Model) repack(slice ...tensor.Slice) Repacker {
return func(name string, data []float32, shape []uint64) ([]float32, error) {
dims := make([]int, len(shape))
for i, dim := range shape {
dims[i] = int(dim)
}
var t tensor.Tensor = tensor.New(tensor.WithShape(dims...), tensor.WithBacking(data))
t, err := t.Slice(slice...)
if err != nil {
return nil, err
}
if err := t.T(0, 2, 1); err != nil {
return nil, err
}
t = tensor.Materialize(t)
// flatten tensor so it can be return as a vector
if err := t.Reshape(t.Shape().TotalSize()); err != nil {
return nil, err
}
return native.VectorF32(t.(*tensor.Dense))
}
}

View File

@@ -29,8 +29,8 @@ func (p *llamaAdapter) KV(baseKV ggml.KV) ggml.KV {
return kv
}
func (p *llamaAdapter) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (p *llamaAdapter) Tensors(ts []Tensor) []*ggml.Tensor {
var out []*ggml.Tensor
for _, t := range ts {
shape := t.Shape()
if (strings.HasSuffix(t.Name(), "weight.lora_a") && shape[0] > shape[1]) ||
@@ -41,7 +41,7 @@ func (p *llamaAdapter) Tensors(ts []Tensor) []ggml.Tensor {
t.SetRepacker(p.repack)
}
out = append(out, ggml.Tensor{
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: shape,

View File

@@ -89,8 +89,8 @@ func (p *mistral3Model) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p *mistral3Model) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (p *mistral3Model) Tensors(ts []Tensor) []*ggml.Tensor {
var out []*ggml.Tensor
for _, t := range ts {
if !strings.HasPrefix(t.Name(), "v.") {
@@ -100,7 +100,7 @@ func (p *mistral3Model) Tensors(ts []Tensor) []ggml.Tensor {
}
}
out = append(out, ggml.Tensor{
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),

View File

@@ -2,9 +2,6 @@ package convert
import (
"fmt"
"io"
"slices"
"strings"
"github.com/ollama/ollama/fs/ggml"
)
@@ -29,66 +26,39 @@ func (p *mixtralModel) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p *mixtralModel) Tensors(ts []Tensor) []ggml.Tensor {
oldnew := []string{
"model.layers", "blk",
"w1", "ffn_gate_exps",
"w2", "ffn_down_exps",
"w3", "ffn_up_exps",
}
for i := range p.NumLocalExperts {
oldnew = append(oldnew, fmt.Sprintf(".block_sparse_moe.experts.%d.", i), ".")
}
// group experts of the same layer (model.layers.%d) and type (w[123]) into a single tensor
namer := strings.NewReplacer(oldnew...)
experts := make(map[string]experts)
// merge experts into a single tensor while removing them from ts
ts = slices.DeleteFunc(ts, func(t Tensor) bool {
if !strings.Contains(t.Name(), ".block_sparse_moe.experts.") {
return false
}
name := namer.Replace(t.Name())
experts[name] = append(experts[name], t)
return true
})
var out []ggml.Tensor
for n, e := range experts {
// TODO(mxyng): sanity check experts
out = append(out, ggml.Tensor{
Name: n,
Kind: e[0].Kind(),
Shape: append([]uint64{uint64(len(e))}, e[0].Shape()...),
WriterTo: e,
func (p *mixtralModel) Tensors(ts []Tensor) []*ggml.Tensor {
merges := make([]merge, 0, p.NumHiddenLayers*6)
for i := range p.NumHiddenLayers {
merges = append(merges, merge{
fmt.Sprintf("blk.%d.*.w1.weight", i),
fmt.Sprintf("blk.%d.ffn_gate_exps.weight", i),
}, merge{
fmt.Sprintf("blk.%d.*.w1.bias", i),
fmt.Sprintf("blk.%d.ffn_gate_exps.bias", i),
}, merge{
fmt.Sprintf("blk.%d.*.w2.weight", i),
fmt.Sprintf("blk.%d.ffn_up_exps.weight", i),
}, merge{
fmt.Sprintf("blk.%d.*.w2.bias", i),
fmt.Sprintf("blk.%d.ffn_up_exps.bias", i),
}, merge{
fmt.Sprintf("blk.%d.*.w3.weight", i),
fmt.Sprintf("blk.%d.ffn_down_exps.weight", i),
}, merge{
fmt.Sprintf("blk.%d.*.w3.bias", i),
fmt.Sprintf("blk.%d.ffn_down_exps.bias", i),
})
}
out, ts := mergeTensors(ts, merges...)
return append(out, p.llamaModel.Tensors(ts)...)
}
func (p *mixtralModel) Replacements() []string {
return append(
p.llamaModel.Replacements(),
"model.layers", "blk",
"block_sparse_moe.gate", "ffn_gate_inp",
"block_sparse_moe.experts.", ".",
)
}
type experts []Tensor
func (e experts) WriteTo(w io.Writer) (int64, error) {
// TODO(mxyng): experts _should_ be numerically sorted by expert but this should check
for _, t := range e {
// the canonical merged experts tensor stacks all experts along a new, 0 axis,
// e.g. `tensor.Stack(0, e[0], e[1:]...)`, which requires allocating temporary buffers
// this accomplishes the same thing by writing each expert tensor in sequence
if _, err := t.WriteTo(w); err != nil {
return 0, err
}
}
return 0, nil
}

179
convert/convert_mllama.go Normal file
View File

@@ -0,0 +1,179 @@
package convert
import (
"strings"
"github.com/ollama/ollama/fs/ggml"
"github.com/pdevine/tensor"
"github.com/pdevine/tensor/native"
)
type mllamaModel struct {
ModelParameters
TextModel struct {
llamaModel
CrossAttentionLayers []int32 `json:"cross_attention_layers"`
} `json:"text_config"`
VisionModel struct {
NumHiddenLayers uint32 `json:"num_hidden_layers"`
NumGlobalLayers uint32 `json:"num_global_layers"`
IntermediateLayersIndices []int32 `json:"intermediate_layers_indices"`
HiddenSize uint32 `json:"hidden_size"`
IntermediateSize uint32 `json:"intermediate_size"`
AttentionHeads uint32 `json:"attention_heads"`
ImageSize uint32 `json:"image_size"`
PatchSize uint32 `json:"patch_size"`
NumChannels uint32 `json:"num_channels"`
MaxNumTiles uint32 `json:"max_num_tiles"`
NormEpsilon float32 `json:"norm_eps"`
RopeTheta float32 `json:"rope.freq_base"`
} `json:"vision_config"`
}
func (m *mllamaModel) KV(t *Tokenizer) ggml.KV {
kv := m.ModelParameters.KV(t)
kv["general.architecture"] = "mllama"
for k, v := range m.TextModel.KV(t) {
if strings.HasPrefix(k, "llama.") {
kv[strings.ReplaceAll(k, "llama.", "mllama.")] = v
}
}
kv["mllama.attention.cross_attention_layers"] = m.TextModel.CrossAttentionLayers
kv["mllama.vision.block_count"] = m.VisionModel.NumHiddenLayers
kv["mllama.vision.global.block_count"] = m.VisionModel.NumGlobalLayers
kv["mllama.vision.intermediate_layers_indices"] = m.VisionModel.IntermediateLayersIndices
kv["mllama.vision.embedding_length"] = m.VisionModel.HiddenSize
kv["mllama.vision.feed_forward_length"] = m.VisionModel.IntermediateSize
kv["mllama.vision.attention.head_count"] = m.VisionModel.AttentionHeads
kv["mllama.vision.attention.layer_norm_epsilon"] = m.VisionModel.NormEpsilon
kv["mllama.vision.image_size"] = m.VisionModel.ImageSize
kv["mllama.vision.patch_size"] = m.VisionModel.PatchSize
kv["mllama.vision.max_num_tiles"] = m.VisionModel.MaxNumTiles
kv["mllama.vision.num_channels"] = m.VisionModel.NumChannels
return kv
}
func (m *mllamaModel) Replacements() []string {
return append(
m.TextModel.Replacements(),
"language_model.", "",
"gate_attn", "attn_gate",
"gate_ffn", "ffn_gate",
"cross_attn.", "cross_attn_",
"vision_model", "v",
"class_embedding", "class_embd",
"patch_embedding", "patch_embd",
"gated_positional_embedding.tile_embedding", "tile_position_embd",
"gated_positional_embedding.embedding", "position_embd.weight",
"gated_positional_embedding", "position_embd",
"embedding.weight", "weight",
"pre_tile_positional_embedding", "pre_tile_position_embd",
"post_tile_positional_embedding", "post_tile_position_embd",
"layernorm_pre", "pre_ln",
"layernorm_post", "post_ln",
"global_transformer.layers", "global.blk",
"transformer.layers", "blk",
"mlp.fc1", "ffn_up",
"mlp.fc2", "ffn_down",
"multi_modal_projector", "mm.0",
)
}
func (m *mllamaModel) Tensors(ts []Tensor) []*ggml.Tensor {
var out []*ggml.Tensor
var text []Tensor
for _, t := range ts {
if !strings.HasPrefix(t.Name(), "v.") && !strings.HasPrefix(t.Name(), "mm.") {
text = append(text, t)
} else if t.Name() == "v.position_embd.gate" {
for _, name := range []string{"v.position_embd.gate", "v.tile_position_embd.gate"} {
tt := t.Clone()
tt.SetRepacker(m.repack(name))
out = append(out, &ggml.Tensor{
Name: name,
Kind: t.Kind(),
Shape: t.Shape(),
WriterTo: tt,
})
}
} else {
if t.Name() == "v.pre_tile_position_embd.gate" || t.Name() == "v.post_tile_position_embd.gate" {
t.SetRepacker(m.repack(t.Name()))
} else if strings.HasSuffix(t.Name(), "attn_q.weight") || strings.HasSuffix(t.Name(), "attn_k.weight") {
t.SetRepacker(m.repack(t.Name()))
} else if strings.HasSuffix(t.Name(), "attn_gate") || strings.HasSuffix(t.Name(), "ffn_gate") {
t.SetRepacker(m.repack(t.Name()))
}
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),
WriterTo: t,
})
}
}
return append(out, m.TextModel.Tensors(text)...)
}
func (m *mllamaModel) repack(name string) Repacker {
return func(_ string, data []float32, shape []uint64) (_ []float32, err error) {
dims := make([]int, len(shape))
for i, dim := range shape {
dims[i] = int(dim)
}
var t tensor.Tensor = tensor.New(tensor.WithShape(dims...), tensor.WithBacking(data))
if strings.HasSuffix(name, "attn_q.weight") || strings.HasSuffix(name, "attn_k.weight") {
heads := m.VisionModel.AttentionHeads
if err := t.Reshape(append([]int{int(heads), 2, dims[0] / int(heads) / 2}, dims[1:]...)...); err != nil {
return nil, err
}
if err := t.T(0, 2, 1, 3); err != nil {
return nil, err
}
if err := t.Reshape(dims...); err != nil {
return nil, err
}
if err := t.Transpose(); err != nil {
return nil, err
}
} else {
t, err = tensor.Tanh(t)
if err != nil {
return nil, err
}
if name == "v.position_embd.gate" {
t, err = tensor.Sub(float32(1), t)
if err != nil {
return nil, err
}
}
}
t = tensor.Materialize(t)
// flatten tensor so it can be return as a vector
if err := t.Reshape(t.Shape().TotalSize()); err != nil {
return nil, err
}
return native.VectorF32(t.(*tensor.Dense))
}
}

View File

@@ -68,19 +68,19 @@ func (p *phi3Model) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p *phi3Model) Tensors(ts []Tensor) []ggml.Tensor {
func (p *phi3Model) Tensors(ts []Tensor) []*ggml.Tensor {
var addRopeFactors sync.Once
out := make([]ggml.Tensor, 0, len(ts)+2)
out := make([]*ggml.Tensor, 0, len(ts)+2)
for _, t := range ts {
if strings.HasPrefix(t.Name(), "blk.0.") {
addRopeFactors.Do(func() {
out = append(out, ggml.Tensor{
out = append(out, &ggml.Tensor{
Name: "rope_factors_long.weight",
Kind: 0,
Shape: []uint64{uint64(len(p.RopeScaling.LongFactor))},
WriterTo: p.RopeScaling.LongFactor,
}, ggml.Tensor{
}, &ggml.Tensor{
Name: "rope_factors_short.weight",
Kind: 0,
Shape: []uint64{uint64(len(p.RopeScaling.ShortFactor))},
@@ -89,7 +89,7 @@ func (p *phi3Model) Tensors(ts []Tensor) []ggml.Tensor {
})
}
out = append(out, ggml.Tensor{
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),

View File

@@ -15,6 +15,7 @@ type qwen2Model struct {
Type string `json:"type"`
Factor ropeFactor `json:"factor"`
OriginalMaxPositionEmbeddings uint32 `json:"original_max_position_embeddings"`
MropeSection []int32 `json:"mrope_section"`
} `json:"rope_scaling"`
RMSNormEPS float32 `json:"rms_norm_eps"`
}
@@ -39,16 +40,18 @@ func (q *qwen2Model) KV(t *Tokenizer) ggml.KV {
case "yarn":
kv["qwen2.rope.scaling.type"] = q.RopeScaling.Type
kv["qwen2.rope.scaling.factor"] = q.RopeScaling.Factor
case "mrope", "default":
kv["qwen2.rope.mrope_section"] = q.RopeScaling.MropeSection
default:
panic("unknown rope scaling type")
}
return kv
}
func (q *qwen2Model) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (q *qwen2Model) Tensors(ts []Tensor) []*ggml.Tensor {
var out []*ggml.Tensor
for _, t := range ts {
out = append(out, ggml.Tensor{
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),

102
convert/convert_qwen25vl.go Normal file
View File

@@ -0,0 +1,102 @@
package convert
import (
"cmp"
"slices"
"strings"
"github.com/ollama/ollama/fs/ggml"
)
type qwen25VLModel struct {
qwen2Model
VisionModel struct {
Depth uint32 `json:"depth"`
HiddenSize uint32 `json:"hidden_size"`
NumHeads uint32 `json:"num_heads"`
InChannels uint32 `json:"in_chans"`
PatchSize uint32 `json:"patch_size"`
SpatialMergeSize uint32 `json:"spatial_merge_size"`
SpatialPatchSize uint32 `json:"spatial_patch_size"`
WindowSize uint32 `json:"window_size"`
RMSNormEps float32 `json:"layer_norm_epsilon"`
RopeTheta float32 `json:"rope_theta"`
FullAttentionBlocks []int32 `json:"fullatt_block_indexes"`
TemporalPatchSize uint32 `json:"temporal_patch_size"`
} `json:"vision_config"`
}
var _ ModelConverter = (*qwen25VLModel)(nil)
func (q *qwen25VLModel) KV(t *Tokenizer) ggml.KV {
kv := q.ModelParameters.KV(t)
kv["general.architecture"] = "qwen25vl"
for k, v := range q.qwen2Model.KV(t) {
if strings.HasPrefix(k, "qwen2.") {
kv[strings.Replace(k, "qwen2.", "qwen25vl.", 1)] = v
}
}
if q.VisionModel.FullAttentionBlocks == nil {
kv["qwen25vl.vision.fullatt_block_indexes"] = []int32{7, 15, 23, 31}
}
kv["qwen25vl.vision.block_count"] = cmp.Or(q.VisionModel.Depth, 32)
kv["qwen25vl.vision.embedding_length"] = q.VisionModel.HiddenSize
kv["qwen25vl.vision.attention.head_count"] = cmp.Or(q.VisionModel.NumHeads, 16)
kv["qwen25vl.vision.num_channels"] = q.VisionModel.InChannels
kv["qwen25vl.vision.patch_size"] = cmp.Or(q.VisionModel.PatchSize, 14)
kv["qwen25vl.vision.spatial_merge_size"] = cmp.Or(q.VisionModel.SpatialMergeSize, 2)
kv["qwen25vl.vision.spatial_patch_size"] = q.VisionModel.SpatialPatchSize
kv["qwen25vl.vision.window_size"] = cmp.Or(q.VisionModel.WindowSize, 112)
kv["qwen25vl.vision.attention.layer_norm_epsilon"] = cmp.Or(q.VisionModel.RMSNormEps, 1e-6)
kv["qwen25vl.vision.rope.freq_base"] = cmp.Or(q.VisionModel.RopeTheta, 1e4)
kv["qwen25vl.vision.fullatt_block_indexes"] = q.VisionModel.FullAttentionBlocks
kv["qwen25vl.vision.temporal_patch_size"] = cmp.Or(q.VisionModel.TemporalPatchSize, 2)
return kv
}
func (q *qwen25VLModel) Tensors(ts []Tensor) []*ggml.Tensor {
var out []*ggml.Tensor
for _, t := range ts {
if strings.Contains(t.Name(), "patch_embed.proj") {
for t := range splitDim(t, 2,
split{Replacer: strings.NewReplacer("patch_embed.proj", "patch_embd_0")},
split{Replacer: strings.NewReplacer("patch_embed.proj", "patch_embd_1")},
) {
t.Shape = slices.DeleteFunc(t.Shape, func(i uint64) bool { return i == 1 })
out = append(out, t)
}
} else if strings.Contains(t.Name(), "attn.qkv") {
out = append(out, slices.Collect(splitDim(t, 0,
split{Replacer: strings.NewReplacer("attn.qkv", "attn_q")},
split{Replacer: strings.NewReplacer("attn.qkv", "attn_k")},
split{Replacer: strings.NewReplacer("attn.qkv", "attn_v")},
))...)
} else {
out = append(out, &ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),
WriterTo: t,
})
}
}
return out
}
func (p *qwen25VLModel) Replacements() []string {
return append(
p.qwen2Model.Replacements(),
"visual", "v",
"blocks", "blk",
"attn.proj", "attn_out",
"norm1", "ln1",
"norm2", "ln2",
)
}

View File

@@ -11,15 +11,13 @@ import (
"io"
"io/fs"
"log/slog"
"math"
"maps"
"os"
"path/filepath"
"slices"
"strings"
"testing"
"golang.org/x/exp/maps"
"github.com/ollama/ollama/fs/ggml"
)
@@ -48,7 +46,7 @@ func convertFull(t *testing.T, fsys fs.FS) (*os.File, ggml.KV, ggml.Tensors) {
}
t.Cleanup(func() { r.Close() })
m, _, err := ggml.Decode(r, math.MaxInt)
m, err := ggml.Decode(r, -1)
if err != nil {
t.Fatal(err)
}
@@ -131,15 +129,14 @@ func TestConvertModel(t *testing.T) {
if err != nil {
t.Fatal(err)
}
defer expectFile.Close()
var expect map[string]string
if err := json.NewDecoder(expectFile).Decode(&expect); err != nil {
t.Fatal(err)
}
keys := maps.Keys(expect)
slices.Sort(keys)
for _, k := range keys {
for _, k := range slices.Sorted(maps.Keys(expect)) {
if v, ok := actual[k]; !ok {
t.Errorf("missing %s", k)
} else if v != expect[k] {
@@ -332,7 +329,7 @@ func TestConvertAdapter(t *testing.T) {
}
defer r.Close()
m, _, err := ggml.Decode(r, math.MaxInt)
m, err := ggml.Decode(r, -1)
if err != nil {
t.Fatal(err)
}
@@ -343,9 +340,7 @@ func TestConvertAdapter(t *testing.T) {
actual := generateResultsJSON(t, r, m.KV(), m.Tensors())
keys := maps.Keys(c.Expected)
slices.Sort(keys)
for _, k := range keys {
for _, k := range slices.Sorted(maps.Keys(c.Expected)) {
if v, ok := actual[k]; !ok {
t.Errorf("missing %s", k)
} else if v != c.Expected[k] {

View File

@@ -1,58 +0,0 @@
package convert
import (
"archive/zip"
"errors"
"io"
"io/fs"
"os"
"path/filepath"
)
type ZipReader struct {
r *zip.Reader
p string
// limit is the maximum size of a file that can be read directly
// from the zip archive. Files larger than this size will be extracted
limit int64
}
func NewZipReader(r *zip.Reader, p string, limit int64) fs.FS {
return &ZipReader{r, p, limit}
}
func (z *ZipReader) Open(name string) (fs.File, error) {
r, err := z.r.Open(name)
if err != nil {
return nil, err
}
defer r.Close()
if fi, err := r.Stat(); err != nil {
return nil, err
} else if fi.Size() < z.limit {
return r, nil
}
if !filepath.IsLocal(name) {
return nil, zip.ErrInsecurePath
}
n := filepath.Join(z.p, name)
if _, err := os.Stat(n); errors.Is(err, os.ErrNotExist) {
w, err := os.Create(n)
if err != nil {
return nil, err
}
defer w.Close()
if _, err := io.Copy(w, r); err != nil {
return nil, err
}
} else if err != nil {
return nil, err
}
return os.Open(n)
}

View File

@@ -11,14 +11,15 @@ type Tensor interface {
Name() string
Shape() []uint64
Kind() uint32
SetRepacker(repacker)
SetRepacker(Repacker)
WriteTo(io.Writer) (int64, error)
Clone() Tensor
}
type tensorBase struct {
name string
shape []uint64
repacker
name string
shape []uint64
repacker Repacker
}
func (t tensorBase) Name() string {
@@ -30,32 +31,39 @@ func (t tensorBase) Shape() []uint64 {
}
const (
tensorKindF32 uint32 = iota
tensorKindF16
tensorKindFP32 uint32 = iota
tensorKindFP16
tensorKindBF16 = 30
tensorKindMXFP4 = 39
)
func (t tensorBase) Kind() uint32 {
if strings.HasSuffix(t.name, ".ffn_gate_inp.weight") ||
t.name == "token_types.weight" {
strings.HasSuffix(t.name, ".bias") ||
t.name == "token_types.weight" ||
t.name == "v.positional_embedding_vlm" ||
t.name == "v.tile_position_embd.weight" ||
t.name == "v.pre_tile_position_embd.weight" ||
t.name == "v.post_tile_position_embd.weight" {
// these tensors are always F32
return 0
return tensorKindFP32
}
switch len(t.shape) {
case 0:
panic("invalid tensor shape")
case 1:
return tensorKindF32
return tensorKindFP32
default:
return tensorKindF16
return tensorKindFP16
}
}
func (t *tensorBase) SetRepacker(fn repacker) {
func (t *tensorBase) SetRepacker(fn Repacker) {
t.repacker = fn
}
type repacker func(string, []float32, []uint64) ([]float32, error)
type Repacker func(string, []float32, []uint64) ([]float32, error)
func parseTensors(fsys fs.FS, replacer *strings.Replacer) ([]Tensor, error) {
patterns := []struct {

View File

@@ -1,6 +1,7 @@
package convert
import (
"bufio"
"bytes"
"encoding/binary"
"encoding/json"
@@ -8,12 +9,12 @@ import (
"fmt"
"io"
"io/fs"
"maps"
"slices"
"strings"
"github.com/d4l3k/go-bfloat16"
"github.com/x448/float16"
"golang.org/x/exp/maps"
)
type safetensorMetadata struct {
@@ -46,8 +47,7 @@ func parseSafetensors(fsys fs.FS, replacer *strings.Replacer, ps ...string) ([]T
return nil, err
}
keys := maps.Keys(headers)
slices.Sort(keys)
keys := slices.Sorted(maps.Keys(headers))
names := make(map[string]struct{}, len(keys))
@@ -94,6 +94,30 @@ type safetensor struct {
*tensorBase
}
func (st safetensor) Kind() uint32 {
kind := st.tensorBase.Kind()
if !strings.HasPrefix(st.name, "v.") && st.dtype == "BF16" && kind != tensorKindFP32 {
kind = tensorKindBF16
}
return kind
}
func (st safetensor) Clone() Tensor {
return &safetensor{
fs: st.fs,
path: st.path,
dtype: st.dtype,
offset: st.offset,
size: st.size,
tensorBase: &tensorBase{
name: st.name,
repacker: st.repacker,
shape: slices.Clone(st.shape),
},
}
}
func (st safetensor) WriteTo(w io.Writer) (int64, error) {
f, err := st.fs.Open(st.path)
if err != nil {
@@ -101,26 +125,41 @@ func (st safetensor) WriteTo(w io.Writer) (int64, error) {
}
defer f.Close()
if seeker, ok := f.(io.Seeker); ok {
if _, err := seeker.Seek(st.offset, io.SeekStart); err != nil {
return 0, err
}
} else {
if _, err := io.CopyN(io.Discard, f, st.offset); err != nil {
return 0, err
r, err := func() (io.Reader, error) {
if readerAt, ok := f.(io.ReaderAt); ok {
return io.NewSectionReader(readerAt, st.offset, st.size), nil
} else if seeker, ok := f.(io.Seeker); ok {
_, err := seeker.Seek(st.offset, io.SeekStart)
return f, err
} else {
_, err := io.CopyN(io.Discard, f, st.offset)
return f, err
}
}()
if err != nil {
return 0, err
}
br := bufio.NewReaderSize(r, min(32<<10, int(st.size)))
// special case when input and output are same type and the
// tensor doesn't need repacking
if (st.repacker == nil) &&
((st.dtype == "F32" && st.Kind() == tensorKindFP32) ||
(st.dtype == "F16" && st.Kind() == tensorKindFP16) ||
(st.dtype == "U8")) {
return io.CopyN(w, br, st.size)
}
var f32s []float32
switch st.dtype {
case "F32":
f32s = make([]float32, st.size/4)
if err = binary.Read(f, binary.LittleEndian, f32s); err != nil {
if err = binary.Read(br, binary.LittleEndian, f32s); err != nil {
return 0, err
}
case "F16":
u16s := make([]uint16, st.size/2)
if err = binary.Read(f, binary.LittleEndian, u16s); err != nil {
if err = binary.Read(br, binary.LittleEndian, u16s); err != nil {
return 0, err
}
@@ -131,7 +170,7 @@ func (st safetensor) WriteTo(w io.Writer) (int64, error) {
case "BF16":
u8s := make([]uint8, st.size)
if err = binary.Read(f, binary.LittleEndian, u8s); err != nil {
if err = binary.Read(br, binary.LittleEndian, u8s); err != nil {
return 0, err
}
@@ -148,15 +187,18 @@ func (st safetensor) WriteTo(w io.Writer) (int64, error) {
}
switch st.Kind() {
case tensorKindF32:
return 0, binary.Write(w, binary.LittleEndian, f32s)
case tensorKindF16:
case tensorKindFP32:
return int64(len(f32s) * 4), binary.Write(w, binary.LittleEndian, f32s)
case tensorKindFP16:
f16s := make([]uint16, len(f32s))
for i := range f32s {
f16s[i] = float16.Fromfloat32(f32s[i]).Bits()
}
return 0, binary.Write(w, binary.LittleEndian, f16s)
return int64(len(f16s) * 2), binary.Write(w, binary.LittleEndian, f16s)
case tensorKindBF16:
u8s := bfloat16.EncodeFloat32(f32s)
return int64(len(u8s)), binary.Write(w, binary.LittleEndian, u8s)
default:
return 0, fmt.Errorf("unknown storage type: %d", st.Kind())
}

294
convert/reader_test.go Normal file
View File

@@ -0,0 +1,294 @@
package convert
import (
"bytes"
"encoding/binary"
"os"
"path/filepath"
"testing"
"github.com/d4l3k/go-bfloat16"
"github.com/google/go-cmp/cmp"
"github.com/x448/float16"
)
func TestSafetensors(t *testing.T) {
t.Parallel()
root, err := os.OpenRoot(t.TempDir())
if err != nil {
t.Fatal(err)
}
defer root.Close()
cases := []struct {
name,
dtype string
offset,
size int64
shape []uint64
setup func(*testing.T, *os.File)
want []byte
}{
{
name: "fp32-fp32",
dtype: "F32",
size: 32 * 4, // 32 floats, each 4 bytes
shape: []uint64{32},
setup: func(t *testing.T, f *os.File) {
f32s := make([]float32, 32)
for i := range f32s {
f32s[i] = float32(i)
}
if err := binary.Write(f, binary.LittleEndian, f32s); err != nil {
t.Fatal(err)
}
},
want: []byte{
0x00, 0x00, 0x00, 0x00, 0x00, 0x00, 0x80, 0x3f, 0x00, 0x00, 0x00, 0x40, 0x00, 0x00, 0x40, 0x40,
0x00, 0x00, 0x80, 0x40, 0x00, 0x00, 0xa0, 0x40, 0x00, 0x00, 0xc0, 0x40, 0x00, 0x00, 0xe0, 0x40,
0x00, 0x00, 0x00, 0x41, 0x00, 0x00, 0x10, 0x41, 0x00, 0x00, 0x20, 0x41, 0x00, 0x00, 0x30, 0x41,
0x00, 0x00, 0x40, 0x41, 0x00, 0x00, 0x50, 0x41, 0x00, 0x00, 0x60, 0x41, 0x00, 0x00, 0x70, 0x41,
0x00, 0x00, 0x80, 0x41, 0x00, 0x00, 0x88, 0x41, 0x00, 0x00, 0x90, 0x41, 0x00, 0x00, 0x98, 0x41,
0x00, 0x00, 0xa0, 0x41, 0x00, 0x00, 0xa8, 0x41, 0x00, 0x00, 0xb0, 0x41, 0x00, 0x00, 0xb8, 0x41,
0x00, 0x00, 0xc0, 0x41, 0x00, 0x00, 0xc8, 0x41, 0x00, 0x00, 0xd0, 0x41, 0x00, 0x00, 0xd8, 0x41,
0x00, 0x00, 0xe0, 0x41, 0x00, 0x00, 0xe8, 0x41, 0x00, 0x00, 0xf0, 0x41, 0x00, 0x00, 0xf8, 0x41,
},
},
{
name: "fp32-fp16",
dtype: "F32",
size: 32 * 4, // 32 floats, each 4 bytes
shape: []uint64{16, 2},
setup: func(t *testing.T, f *os.File) {
f32s := make([]float32, 32)
for i := range f32s {
f32s[i] = float32(i)
}
if err := binary.Write(f, binary.LittleEndian, f32s); err != nil {
t.Fatal(err)
}
},
want: []byte{
0x00, 0x00, 0x00, 0x3c, 0x00, 0x40, 0x00, 0x42, 0x00, 0x44, 0x00, 0x45, 0x00, 0x46, 0x00, 0x47,
0x00, 0x48, 0x80, 0x48, 0x00, 0x49, 0x80, 0x49, 0x00, 0x4a, 0x80, 0x4a, 0x00, 0x4b, 0x80, 0x4b,
0x00, 0x4c, 0x40, 0x4c, 0x80, 0x4c, 0xc0, 0x4c, 0x00, 0x4d, 0x40, 0x4d, 0x80, 0x4d, 0xc0, 0x4d,
0x00, 0x4e, 0x40, 0x4e, 0x80, 0x4e, 0xc0, 0x4e, 0x00, 0x4f, 0x40, 0x4f, 0x80, 0x4f, 0xc0, 0x4f,
},
},
{
name: "fp16-fp16",
dtype: "F16",
size: 32 * 2, // 32 floats, each 2 bytes
shape: []uint64{16, 2},
setup: func(t *testing.T, f *os.File) {
u16s := make([]uint16, 32)
for i := range u16s {
u16s[i] = float16.Fromfloat32(float32(i)).Bits()
}
if err := binary.Write(f, binary.LittleEndian, u16s); err != nil {
t.Fatal(err)
}
},
want: []byte{
0x00, 0x00, 0x00, 0x3c, 0x00, 0x40, 0x00, 0x42, 0x00, 0x44, 0x00, 0x45, 0x00, 0x46, 0x00, 0x47,
0x00, 0x48, 0x80, 0x48, 0x00, 0x49, 0x80, 0x49, 0x00, 0x4a, 0x80, 0x4a, 0x00, 0x4b, 0x80, 0x4b,
0x00, 0x4c, 0x40, 0x4c, 0x80, 0x4c, 0xc0, 0x4c, 0x00, 0x4d, 0x40, 0x4d, 0x80, 0x4d, 0xc0, 0x4d,
0x00, 0x4e, 0x40, 0x4e, 0x80, 0x4e, 0xc0, 0x4e, 0x00, 0x4f, 0x40, 0x4f, 0x80, 0x4f, 0xc0, 0x4f,
},
},
{
name: "fp16-fp32",
dtype: "F16",
size: 32 * 2, // 32 floats, each 2 bytes
shape: []uint64{32},
setup: func(t *testing.T, f *os.File) {
u16s := make([]uint16, 32)
for i := range u16s {
u16s[i] = float16.Fromfloat32(float32(i)).Bits()
}
if err := binary.Write(f, binary.LittleEndian, u16s); err != nil {
t.Fatal(err)
}
},
want: []byte{
0x00, 0x00, 0x00, 0x00, 0x00, 0x00, 0x80, 0x3f, 0x00, 0x00, 0x00, 0x40, 0x00, 0x00, 0x40, 0x40,
0x00, 0x00, 0x80, 0x40, 0x00, 0x00, 0xa0, 0x40, 0x00, 0x00, 0xc0, 0x40, 0x00, 0x00, 0xe0, 0x40,
0x00, 0x00, 0x00, 0x41, 0x00, 0x00, 0x10, 0x41, 0x00, 0x00, 0x20, 0x41, 0x00, 0x00, 0x30, 0x41,
0x00, 0x00, 0x40, 0x41, 0x00, 0x00, 0x50, 0x41, 0x00, 0x00, 0x60, 0x41, 0x00, 0x00, 0x70, 0x41,
0x00, 0x00, 0x80, 0x41, 0x00, 0x00, 0x88, 0x41, 0x00, 0x00, 0x90, 0x41, 0x00, 0x00, 0x98, 0x41,
0x00, 0x00, 0xa0, 0x41, 0x00, 0x00, 0xa8, 0x41, 0x00, 0x00, 0xb0, 0x41, 0x00, 0x00, 0xb8, 0x41,
0x00, 0x00, 0xc0, 0x41, 0x00, 0x00, 0xc8, 0x41, 0x00, 0x00, 0xd0, 0x41, 0x00, 0x00, 0xd8, 0x41,
0x00, 0x00, 0xe0, 0x41, 0x00, 0x00, 0xe8, 0x41, 0x00, 0x00, 0xf0, 0x41, 0x00, 0x00, 0xf8, 0x41,
},
},
{
name: "bf16-bf16",
dtype: "BF16",
size: 32 * 2, // 32 brain floats, each 2 bytes
shape: []uint64{16, 2},
setup: func(t *testing.T, f *os.File) {
f32s := make([]float32, 32)
for i := range f32s {
f32s[i] = float32(i)
}
if err := binary.Write(f, binary.LittleEndian, bfloat16.EncodeFloat32(f32s)); err != nil {
t.Fatal(err)
}
},
want: []byte{
0x00, 0x00, 0x80, 0x3f, 0x00, 0x40, 0x40, 0x40, 0x80, 0x40, 0xa0, 0x40, 0xc0, 0x40, 0xe0, 0x40,
0x00, 0x41, 0x10, 0x41, 0x20, 0x41, 0x30, 0x41, 0x40, 0x41, 0x50, 0x41, 0x60, 0x41, 0x70, 0x41,
0x80, 0x41, 0x88, 0x41, 0x90, 0x41, 0x98, 0x41, 0xa0, 0x41, 0xa8, 0x41, 0xb0, 0x41, 0xb8, 0x41,
0xc0, 0x41, 0xc8, 0x41, 0xd0, 0x41, 0xd8, 0x41, 0xe0, 0x41, 0xe8, 0x41, 0xf0, 0x41, 0xf8, 0x41,
},
},
{
name: "bf16-fp32",
dtype: "BF16",
size: 32 * 2, // 32 brain floats, each 2 bytes
shape: []uint64{32},
setup: func(t *testing.T, f *os.File) {
f32s := make([]float32, 32)
for i := range f32s {
f32s[i] = float32(i)
}
if err := binary.Write(f, binary.LittleEndian, bfloat16.EncodeFloat32(f32s)); err != nil {
t.Fatal(err)
}
},
want: []byte{
0x00, 0x00, 0x00, 0x00, 0x00, 0x00, 0x80, 0x3f, 0x00, 0x00, 0x00, 0x40, 0x00, 0x00, 0x40, 0x40,
0x00, 0x00, 0x80, 0x40, 0x00, 0x00, 0xa0, 0x40, 0x00, 0x00, 0xc0, 0x40, 0x00, 0x00, 0xe0, 0x40,
0x00, 0x00, 0x00, 0x41, 0x00, 0x00, 0x10, 0x41, 0x00, 0x00, 0x20, 0x41, 0x00, 0x00, 0x30, 0x41,
0x00, 0x00, 0x40, 0x41, 0x00, 0x00, 0x50, 0x41, 0x00, 0x00, 0x60, 0x41, 0x00, 0x00, 0x70, 0x41,
0x00, 0x00, 0x80, 0x41, 0x00, 0x00, 0x88, 0x41, 0x00, 0x00, 0x90, 0x41, 0x00, 0x00, 0x98, 0x41,
0x00, 0x00, 0xa0, 0x41, 0x00, 0x00, 0xa8, 0x41, 0x00, 0x00, 0xb0, 0x41, 0x00, 0x00, 0xb8, 0x41,
0x00, 0x00, 0xc0, 0x41, 0x00, 0x00, 0xc8, 0x41, 0x00, 0x00, 0xd0, 0x41, 0x00, 0x00, 0xd8, 0x41,
0x00, 0x00, 0xe0, 0x41, 0x00, 0x00, 0xe8, 0x41, 0x00, 0x00, 0xf0, 0x41, 0x00, 0x00, 0xf8, 0x41,
},
},
{
name: "u8-u8",
dtype: "U8",
size: 32, // 32 brain floats, each 1 bytes
shape: []uint64{32},
setup: func(t *testing.T, f *os.File) {
u8s := make([]uint8, 32)
for i := range u8s {
u8s[i] = uint8(i)
}
if err := binary.Write(f, binary.LittleEndian, u8s); err != nil {
t.Fatal(err)
}
},
want: []byte{
0x00, 0x01, 0x02, 0x03, 0x04, 0x05, 0x06, 0x07, 0x08, 0x09, 0x0a, 0x0b, 0x0c, 0x0d, 0x0e, 0x0f,
0x10, 0x11, 0x12, 0x13, 0x14, 0x15, 0x16, 0x17, 0x18, 0x19, 0x1a, 0x1b, 0x1c, 0x1d, 0x1e, 0x1f,
},
},
}
for _, tt := range cases {
t.Run(tt.name, func(t *testing.T) {
path := filepath.Base(t.Name())
st := safetensor{
fs: root.FS(),
path: path,
dtype: tt.dtype,
offset: tt.offset,
size: tt.size,
tensorBase: &tensorBase{
name: tt.name,
shape: tt.shape,
},
}
f, err := root.Create(path)
if err != nil {
t.Fatal(err)
}
defer f.Close()
tt.setup(t, f)
var b bytes.Buffer
if _, err := st.WriteTo(&b); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(tt.want, b.Bytes()); diff != "" {
t.Errorf("safetensor.WriteTo() mismatch (-want +got):\n%s", diff)
}
})
}
}
func TestSafetensorKind(t *testing.T) {
tests := []struct {
name string
st safetensor
expected uint32
}{
{
name: "BF16 dtype with non-v. prefix and non-FP32 base kind should return BF16",
st: safetensor{
tensorBase: &tensorBase{
name: "weight.matrix",
shape: []uint64{10, 10}, // will default to FP16
},
dtype: "BF16",
},
expected: tensorKindBF16,
},
{
name: "BF16 dtype with v. prefix should return base kind",
st: safetensor{
tensorBase: &tensorBase{
name: "v.weight.matrix",
shape: []uint64{10, 10}, // will default to FP16
},
dtype: "BF16",
},
expected: tensorKindFP16,
},
{
name: "BF16 dtype with FP32 base kind should return FP32",
st: safetensor{
tensorBase: &tensorBase{
name: "weight.matrix",
shape: []uint64{10}, // will default to FP32
},
dtype: "BF16",
},
expected: tensorKindFP32,
},
{
name: "Non-BF16 dtype should return base kind",
st: safetensor{
tensorBase: &tensorBase{
name: "weight.matrix",
shape: []uint64{10, 10}, // will default to FP16
},
dtype: "FP16",
},
expected: tensorKindFP16,
},
}
for _, tt := range tests {
t.Run(tt.name, func(t *testing.T) {
result := tt.st.Kind()
if result != tt.expected {
t.Errorf("Kind() = %d, expected %d", result, tt.expected)
}
})
}
}

View File

@@ -43,6 +43,17 @@ type torch struct {
*tensorBase
}
func (t torch) Clone() Tensor {
return torch{
storage: t.storage,
tensorBase: &tensorBase{
name: t.name,
shape: t.shape,
repacker: t.repacker,
},
}
}
func (pt torch) WriteTo(w io.Writer) (int64, error) {
return 0, nil
}

133
convert/tensor.go Normal file
View File

@@ -0,0 +1,133 @@
package convert
import (
"cmp"
"io"
"iter"
"path"
"slices"
"strings"
"github.com/pdevine/tensor"
"github.com/pdevine/tensor/native"
"github.com/ollama/ollama/fs/ggml"
)
type split struct {
*strings.Replacer
dim int
slices []tensor.Slice
// fn is an optional function to apply to the tensor after slicing
fn func(tensor.Tensor) (tensor.Tensor, error)
}
// splitDim splits a tensor along a specified dimension into multiple tensors. The dimension
// is split evenly based on the number of replacers provided unless a specific count is given.
func splitDim(t Tensor, dim int, splits ...split) iter.Seq[*ggml.Tensor] {
return func(yield func(*ggml.Tensor) bool) {
var offset int
for _, split := range splits {
t := t.Clone()
shape := slices.Clone(t.Shape())
shape[dim] = cmp.Or(uint64(split.dim), shape[dim]/uint64(len(splits)))
slice := split.slices
if len(slice) == 0 {
slice = slices.Repeat([]tensor.Slice{nil}, len(shape))
slice[dim] = tensor.S(offset, offset+int(shape[dim]))
offset += int(shape[dim])
}
t.SetRepacker(func(_ string, data []float32, shape []uint64) ([]float32, error) {
dims := make([]int, len(shape))
for i := range shape {
dims[i] = int(shape[i])
}
var tt tensor.Tensor = tensor.New(tensor.WithShape(dims...), tensor.WithBacking(data))
tt, err := tt.Slice(slice...)
if err != nil {
return nil, err
}
tt = tensor.Materialize(tt)
if split.fn != nil {
tt, err = split.fn(tt)
if err != nil {
return nil, err
}
}
// flatten tensor so it can be written as a vector
if err := tt.Reshape(tt.Shape().TotalSize()); err != nil {
return nil, err
}
return native.VectorF32(tt.(*tensor.Dense))
})
if !yield(&ggml.Tensor{
Name: split.Replace(t.Name()),
Kind: t.Kind(),
Shape: shape,
WriterTo: t,
}) {
break
}
}
}
}
type merge struct {
pattern, name string
}
// mergeTensors merges tensors that match a given pattern into a single tensor.
func mergeTensors(unmatched []Tensor, merges ...merge) (out []*ggml.Tensor, _ []Tensor) {
var matched []Tensor
for i := range merges {
matched, unmatched = slicesSplitFunc(unmatched, func(t Tensor) bool {
matched, _ := path.Match(merges[i].pattern, t.Name())
return matched
})
if len(matched) > 0 {
out = append(out, &ggml.Tensor{
Name: merges[i].name,
Kind: matched[0].Kind(),
Shape: append([]uint64{uint64(len(matched))}, matched[0].Shape()...),
WriterTo: mergeGroup(matched),
})
}
}
return out, unmatched
}
// slicesSplitFunc splits a slice into two slices based on a predicate function.
func slicesSplitFunc[S ~[]E, E comparable](s S, fn func(e E) bool) (matched, unmatched S) {
for _, e := range s {
if fn(e) {
matched = append(matched, e)
} else {
unmatched = append(unmatched, e)
}
}
return matched, unmatched
}
type mergeGroup []Tensor
func (g mergeGroup) WriteTo(w io.Writer) (int64, error) {
for _, t := range g {
if _, err := t.WriteTo(w); err != nil {
return 0, err
}
}
return 0, nil
}

953
convert/tensor_test.go Normal file
View File

@@ -0,0 +1,953 @@
package convert
import (
"bytes"
"encoding/binary"
"io"
"iter"
"slices"
"strings"
"testing"
"github.com/google/go-cmp/cmp"
"github.com/ollama/ollama/fs/ggml"
"github.com/pdevine/tensor"
)
type fakeTensor struct {
name string
shape []uint64
data []float32
repacker Repacker
}
func (f fakeTensor) Name() string {
return f.name
}
func (f fakeTensor) Shape() []uint64 {
return f.shape
}
func (f fakeTensor) Kind() uint32 {
return 0
}
func (f *fakeTensor) SetRepacker(fn Repacker) {
f.repacker = fn
}
func (f fakeTensor) Clone() Tensor {
return &fakeTensor{
name: f.name,
shape: slices.Clone(f.shape),
data: slices.Clone(f.data),
repacker: f.repacker,
}
}
func (f fakeTensor) WriteTo(w io.Writer) (n int64, err error) {
data := f.data
if f.repacker != nil {
data, err = f.repacker(f.name, data, f.shape)
if err != nil {
return 0, err
}
}
if err := binary.Write(w, binary.LittleEndian, data); err != nil {
return 0, err
}
return int64(len(data) * 4), nil
}
func mul(shape []uint64) int {
n := 1
for _, dim := range shape {
n *= int(dim)
}
return n
}
func TestSplitDim(t *testing.T) {
t.Run("2d", func(t *testing.T) {
r := fakeTensor{
name: "a.b",
shape: []uint64{3, 4},
data: []float32{0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11},
}
t.Run("no split", func(t *testing.T) {
for tt := range splitDim(&r, 0, split{Replacer: strings.NewReplacer("a", "x")}) {
if tt.Name != "x.b" {
t.Fatalf("expected name 'x', got '%s'", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 4}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
})
t.Run("even split", func(t *testing.T) {
next, stop := iter.Pull(splitDim(&r, 1,
split{Replacer: strings.NewReplacer("a", "x")},
split{Replacer: strings.NewReplacer("b", "y")},
))
defer stop()
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "x.b" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{0, 1, 4, 5, 8, 9}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.y" {
t.Fatal("expected name 'a.y', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{2, 3, 6, 7, 10, 11}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
})
t.Run("uneven split", func(t *testing.T) {
next, stop := iter.Pull(splitDim(&r, 0,
split{Replacer: strings.NewReplacer("a", "x"), dim: 2},
split{Replacer: strings.NewReplacer("b", "y"), dim: 1},
))
defer stop()
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "x.b" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{2, 4}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{0, 1, 2, 3, 4, 5, 6, 7}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.y" {
t.Fatal("expected name 'a.y', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{1, 4}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{8, 9, 10, 11}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
})
t.Run("three way split", func(t *testing.T) {
next, stop := iter.Pull(splitDim(&r, 0,
split{Replacer: strings.NewReplacer("a", "x"), dim: 1},
split{Replacer: strings.NewReplacer("b", "y"), dim: 1},
split{Replacer: strings.NewReplacer("b", "z"), dim: 1},
))
defer stop()
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "x.b" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{1, 4}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{0, 1, 2, 3}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.y" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{1, 4}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{4, 5, 6, 7}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.z" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{1, 4}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{8, 9, 10, 11}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
})
t.Run("uneven three way split", func(t *testing.T) {
next, stop := iter.Pull(splitDim(&r, 1,
split{Replacer: strings.NewReplacer("a", "x"), dim: 2},
split{Replacer: strings.NewReplacer("b", "y"), dim: 1},
split{Replacer: strings.NewReplacer("b", "z"), dim: 1},
))
defer stop()
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "x.b" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{0, 1, 4, 5, 8, 9}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.y" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 1}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{2, 6, 10}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.z" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 1}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{3, 7, 11}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
})
t.Run("split with transpose", func(t *testing.T) {
next, stop := iter.Pull(splitDim(&r, 1,
split{Replacer: strings.NewReplacer("a", "x")},
split{Replacer: strings.NewReplacer("b", "y"), fn: func(tt tensor.Tensor) (tensor.Tensor, error) {
return tensor.Transpose(tt, 1, 0)
}},
))
defer stop()
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "x.b" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{0, 1, 4, 5, 8, 9}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.y" {
t.Fatal("expected name 'a.y', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{2, 6, 10, 3, 7, 11}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
})
})
t.Run("3d", func(t *testing.T) {
r := fakeTensor{
name: "a.b",
shape: []uint64{3, 4, 2},
data: []float32{0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23},
}
t.Run("no split", func(t *testing.T) {
for tt := range splitDim(&r, 0, split{Replacer: strings.NewReplacer("a", "x")}) {
if tt.Name != "x.b" {
t.Fatalf("expected name 'x', got '%s'", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 4, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
})
t.Run("even split", func(t *testing.T) {
next, stop := iter.Pull(splitDim(&r, 1,
split{Replacer: strings.NewReplacer("a", "x")},
split{Replacer: strings.NewReplacer("b", "y")},
))
defer stop()
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "x.b" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 2, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{0, 1, 2, 3, 8, 9, 10, 11, 16, 17, 18, 19}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.y" {
t.Fatal("expected name 'a.y', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 2, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{4, 5, 6, 7, 12, 13, 14, 15, 20, 21, 22, 23}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
})
t.Run("uneven split", func(t *testing.T) {
next, stop := iter.Pull(splitDim(&r, 0,
split{Replacer: strings.NewReplacer("a", "x"), dim: 2},
split{Replacer: strings.NewReplacer("b", "y"), dim: 1},
))
defer stop()
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "x.b" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{2, 4, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.y" {
t.Fatal("expected name 'a.y', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{1, 4, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{16, 17, 18, 19, 20, 21, 22, 23}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
})
t.Run("three way split", func(t *testing.T) {
next, stop := iter.Pull(splitDim(&r, 0,
split{Replacer: strings.NewReplacer("a", "x"), dim: 1},
split{Replacer: strings.NewReplacer("b", "y"), dim: 1},
split{Replacer: strings.NewReplacer("b", "z"), dim: 1},
))
defer stop()
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "x.b" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{1, 4, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{0, 1, 2, 3, 4, 5, 6, 7}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.y" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{1, 4, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{8, 9, 10, 11, 12, 13, 14, 15}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.z" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{1, 4, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{16, 17, 18, 19, 20, 21, 22, 23}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
})
t.Run("uneven three way split", func(t *testing.T) {
next, stop := iter.Pull(splitDim(&r, 1,
split{Replacer: strings.NewReplacer("a", "x"), dim: 2},
split{Replacer: strings.NewReplacer("b", "y"), dim: 1},
split{Replacer: strings.NewReplacer("b", "z"), dim: 1},
))
defer stop()
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "x.b" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 2, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{0, 1, 2, 3, 8, 9, 10, 11, 16, 17, 18, 19}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.y" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 1, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{4, 5, 12, 13, 20, 21}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
{
tt, ok := next()
if !ok {
t.Fatal("expected at least one split")
}
if tt.Name != "a.z" {
t.Fatal("expected name 'x.b', got", tt.Name)
}
if diff := cmp.Diff(tt.Shape, []uint64{3, 1, 2}); diff != "" {
t.Errorf("unexpected shape (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := tt.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, mul(tt.Shape))
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(f32s, []float32{6, 7, 14, 15, 22, 23}); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
})
})
}
func TestMerge(t *testing.T) {
unmatched := []Tensor{
&fakeTensor{
name: "a.0.b",
shape: []uint64{5, 2},
data: []float32{10, 11, 12, 13, 14, 15, 16, 17, 18, 19},
},
&fakeTensor{
name: "a.1.b",
shape: []uint64{5, 2},
data: []float32{20, 21, 22, 23, 24, 25, 26, 27, 28, 29},
},
&fakeTensor{
name: "c.0.d",
shape: []uint64{5, 2},
data: []float32{30, 31, 32, 33, 34, 35, 36, 37, 38, 39},
},
&fakeTensor{
name: "c.1.d",
shape: []uint64{5, 2},
data: []float32{40, 41, 42, 43, 44, 45, 46, 47, 48, 49},
},
&fakeTensor{
name: "e.0.f",
shape: []uint64{5, 2},
data: []float32{50, 51, 52, 53, 54, 55, 56, 57, 58, 59},
},
}
checkMatched := func(t *testing.T, n int, matched []*ggml.Tensor) {
for i := range n {
got := matched[i]
if diff := cmp.Diff([]uint64{2, 5, 2}, got.Shape); diff != "" {
t.Errorf("unexpected (-want +got):\n%s", diff)
}
var b bytes.Buffer
if _, err := got.WriteTo(&b); err != nil {
t.Fatal(err)
}
f32s := make([]float32, 20)
if err := binary.Read(&b, binary.LittleEndian, &f32s); err != nil {
t.Fatal(err)
}
offset := 10 + (i * 20)
want := make([]float32, 20)
for j := range 20 {
want[j] = float32(offset + j)
}
if diff := cmp.Diff(want, f32s); diff != "" {
t.Errorf("unexpected data (-want +got):\n%s", diff)
}
}
}
t.Run("single merge", func(t *testing.T) {
matched, unmatched := mergeTensors(unmatched, merge{"a.*.b", "a.b"})
if len(unmatched) != 3 {
t.Error("expected 3 remaining tensors, got", len(unmatched))
}
if len(matched) != 1 {
t.Error("expected 1 merged tensor, got", len(matched))
}
checkMatched(t, 1, matched)
})
t.Run("multiple merges", func(t *testing.T) {
matched, unmatched := mergeTensors(unmatched, merge{"a.*.b", "a.b"}, merge{"c.*.d", "c.d"})
if len(unmatched) != 1 {
t.Error("expected 1 remaining tensors, got", len(unmatched))
}
if len(matched) != 2 {
t.Error("expected 2 merged tensor, got", len(matched))
}
checkMatched(t, 2, matched)
})
t.Run("no match", func(t *testing.T) {
matched, unmatched := mergeTensors(unmatched, merge{"x.*.y", "x.y"})
if len(unmatched) != 5 {
t.Error("expected 5 remaining tensors, got", len(unmatched))
}
if len(matched) != 0 {
t.Error("expected no merged tensors, got", len(matched))
}
})
}

View File

@@ -8,11 +8,10 @@ import (
"fmt"
"io/fs"
"log/slog"
"maps"
"os"
"slices"
"strings"
"golang.org/x/exp/maps"
)
const (
@@ -110,6 +109,7 @@ func parseTokenizer(fsys fs.FS, specialTokenTypes []string) (*Tokenizer, error)
}
if f, err := fsys.Open("tokenizer_config.json"); errors.Is(err, os.ErrNotExist) {
// noop
} else if err != nil {
return nil, err
} else {
@@ -171,6 +171,34 @@ func parseTokenizer(fsys fs.FS, specialTokenTypes []string) (*Tokenizer, error)
}
}
if f, err := fsys.Open("generation_config.json"); errors.Is(err, os.ErrNotExist) {
} else if err != nil {
return nil, err
} else {
defer f.Close()
var p map[string]json.RawMessage
if err := json.NewDecoder(f).Decode(&p); err != nil {
return nil, err
}
for _, st := range specialTokenTypes {
if bts, ok := p[fmt.Sprintf("%s_token_id", st)]; ok {
var ids []int32
if err := json.Unmarshal(bts, &ids); err != nil {
// value is not a list so the existing ID is used
continue
}
if i := slices.IndexFunc(t.SpecialVocabulary, func(sv *SpecialVocabulary) bool {
return sv.Type == st
}); i >= 0 {
t.SpecialVocabulary[i].IDs = ids
}
}
}
}
return t, nil
}
@@ -231,11 +259,8 @@ func parseVocabularyFromTokenizer(fsys fs.FS) (*Vocabulary, error) {
tokens[token.ID] = token
}
keys := maps.Keys(tokens)
slices.Sort(keys)
v := Vocabulary{Model: "gpt2"}
for _, k := range keys {
for _, k := range slices.Sorted(maps.Keys(tokens)) {
token := tokens[k]
v.Tokens = append(v.Tokens, token.Content)
v.Scores = append(v.Scores, float32(token.ID))
@@ -280,6 +305,9 @@ type SpecialVocabulary struct {
ID int
Content string
AddToken bool
// IDs is populated by generation_config.json
IDs []int32
}
func (sv SpecialVocabulary) Key() string {

View File

@@ -247,6 +247,67 @@ func TestParseTokenizer(t *testing.T) {
Pre: "default",
},
},
{
name: "generation config eos token ids",
fsys: createTokenizerFS(t, t.TempDir(), map[string]io.Reader{
"tokenizer.json": strings.NewReader(`{
"added_tokens": [
{
"id": 0,
"content": "<bos>",
"special": true
},
{
"id": 1,
"content": "<eos>",
"special": true
},
{
"id": 2,
"content": "<eot>",
"special": true
},
{
"id": 3,
"content": "<eom>",
"special": true
}
],
"model": {
"vocab": {
"<bos>": 0,
"<eos>": 1,
"<eot>": 2,
"<eom>": 3
}
}
}`),
"tokenizer_config.json": strings.NewReader(`{
"add_bos_token": true,
"add_eos_token": false,
"bos_token": "<bos>",
"eos_token": "<eos>"
}`),
"generation_config.json": strings.NewReader(`{
"bos_token_id": 0,
"eos_token_id": [1, 2, 3]
}`),
}),
specialTokenTypes: []string{"pad", "eos", "bos", "unk"},
want: &Tokenizer{
Vocabulary: &Vocabulary{
Model: "gpt2",
Tokens: []string{"<bos>", "<eos>", "<eot>", "<eom>"},
Scores: []float32{0, 1, 2, 3},
Types: []int32{3, 3, 3, 3},
},
SpecialVocabulary: []*SpecialVocabulary{
{Type: "eos", Content: "<eos>", ID: 1, IDs: []int32{1, 2, 3}, AddToken: false},
{Type: "bos", Content: "<bos>", ID: 0, AddToken: true},
},
Pre: "default",
},
},
}
for _, tt := range cases {

View File

@@ -1,83 +0,0 @@
//go:build linux || windows
package discover
import (
"errors"
"log/slog"
"os"
"path/filepath"
"runtime"
"strings"
)
// Determine if the given ROCm lib directory is usable by checking for existence of some glob patterns
func rocmLibUsable(libDir string) bool {
slog.Debug("evaluating potential rocm lib dir " + libDir)
for _, g := range ROCmLibGlobs {
res, _ := filepath.Glob(filepath.Join(libDir, g))
if len(res) == 0 {
return false
}
}
return true
}
func GetSupportedGFX(libDir string) ([]string, error) {
var ret []string
files, err := filepath.Glob(filepath.Join(libDir, "rocblas", "library", "TensileLibrary_lazy_gfx*.dat"))
if err != nil {
return nil, err
}
for _, file := range files {
ret = append(ret, strings.TrimSuffix(strings.TrimPrefix(filepath.Base(file), "TensileLibrary_lazy_"), ".dat"))
}
return ret, nil
}
func commonAMDValidateLibDir() (string, error) {
// Favor our bundled version
// Installer payload location if we're running the installed binary
rocmTargetDir := filepath.Join(LibOllamaPath, "rocm")
if rocmLibUsable(rocmTargetDir) {
slog.Debug("detected ROCM next to ollama executable " + rocmTargetDir)
return rocmTargetDir, nil
}
// Prefer explicit HIP env var
hipPath := os.Getenv("HIP_PATH")
if hipPath != "" {
hipLibDir := filepath.Join(hipPath, "bin")
if rocmLibUsable(hipLibDir) {
slog.Debug("detected ROCM via HIP_PATH=" + hipPath)
return hipLibDir, nil
}
}
// Scan the LD_LIBRARY_PATH or PATH
pathEnv := "LD_LIBRARY_PATH"
if runtime.GOOS == "windows" {
pathEnv = "PATH"
}
paths := os.Getenv(pathEnv)
for _, path := range filepath.SplitList(paths) {
d, err := filepath.Abs(path)
if err != nil {
continue
}
if rocmLibUsable(d) {
return d, nil
}
}
// Well known location(s)
for _, path := range RocmStandardLocations {
if rocmLibUsable(path) {
return path, nil
}
}
return "", errors.New("no suitable rocm found, falling back to CPU")
}

View File

@@ -1,147 +0,0 @@
package discover
import (
"errors"
"fmt"
"log/slog"
"syscall"
"unsafe"
"golang.org/x/sys/windows"
)
const (
hipSuccess = 0
hipErrorNoDevice = 100
)
type hipDevicePropMinimal struct {
Name [256]byte
unused1 [140]byte
GcnArchName [256]byte // gfx####
iGPU int // Doesn't seem to actually report correctly
unused2 [128]byte
}
// Wrap the amdhip64.dll library for GPU discovery
type HipLib struct {
dll windows.Handle
hipGetDeviceCount uintptr
hipGetDeviceProperties uintptr
hipMemGetInfo uintptr
hipSetDevice uintptr
hipDriverGetVersion uintptr
}
func NewHipLib() (*HipLib, error) {
// At runtime we depend on v6, so discover GPUs with the same library for a consistent set of GPUs
h, err := windows.LoadLibrary("amdhip64_6.dll")
if err != nil {
return nil, fmt.Errorf("unable to load amdhip64_6.dll, please make sure to upgrade to the latest amd driver: %w", err)
}
hl := &HipLib{}
hl.dll = h
hl.hipGetDeviceCount, err = windows.GetProcAddress(hl.dll, "hipGetDeviceCount")
if err != nil {
return nil, err
}
hl.hipGetDeviceProperties, err = windows.GetProcAddress(hl.dll, "hipGetDeviceProperties")
if err != nil {
return nil, err
}
hl.hipMemGetInfo, err = windows.GetProcAddress(hl.dll, "hipMemGetInfo")
if err != nil {
return nil, err
}
hl.hipSetDevice, err = windows.GetProcAddress(hl.dll, "hipSetDevice")
if err != nil {
return nil, err
}
hl.hipDriverGetVersion, err = windows.GetProcAddress(hl.dll, "hipDriverGetVersion")
if err != nil {
return nil, err
}
return hl, nil
}
// The hip library only evaluates the ROCR_VISIBLE_DEVICES variable at startup
// so we have to unload/reset the library after we do our initial discovery
// to make sure our updates to that variable are processed by llama.cpp
func (hl *HipLib) Release() {
err := windows.FreeLibrary(hl.dll)
if err != nil {
slog.Warn("failed to unload amdhip64.dll", "error", err)
}
hl.dll = 0
}
func (hl *HipLib) AMDDriverVersion() (driverMajor, driverMinor int, err error) {
if hl.dll == 0 {
return 0, 0, errors.New("dll has been unloaded")
}
var version int
status, _, err := syscall.SyscallN(hl.hipDriverGetVersion, uintptr(unsafe.Pointer(&version)))
if status != hipSuccess {
return 0, 0, fmt.Errorf("failed call to hipDriverGetVersion: %d %s", status, err)
}
slog.Debug("hipDriverGetVersion", "version", version)
driverMajor = version / 10000000
driverMinor = (version - (driverMajor * 10000000)) / 100000
return driverMajor, driverMinor, nil
}
func (hl *HipLib) HipGetDeviceCount() int {
if hl.dll == 0 {
slog.Error("dll has been unloaded")
return 0
}
var count int
status, _, err := syscall.SyscallN(hl.hipGetDeviceCount, uintptr(unsafe.Pointer(&count)))
if status == hipErrorNoDevice {
slog.Info("AMD ROCm reports no devices found")
return 0
}
if status != hipSuccess {
slog.Warn("failed call to hipGetDeviceCount", "status", status, "error", err)
}
return count
}
func (hl *HipLib) HipSetDevice(device int) error {
if hl.dll == 0 {
return errors.New("dll has been unloaded")
}
status, _, err := syscall.SyscallN(hl.hipSetDevice, uintptr(device))
if status != hipSuccess {
return fmt.Errorf("failed call to hipSetDevice: %d %s", status, err)
}
return nil
}
func (hl *HipLib) HipGetDeviceProperties(device int) (*hipDevicePropMinimal, error) {
if hl.dll == 0 {
return nil, errors.New("dll has been unloaded")
}
var props hipDevicePropMinimal
status, _, err := syscall.SyscallN(hl.hipGetDeviceProperties, uintptr(unsafe.Pointer(&props)), uintptr(device))
if status != hipSuccess {
return nil, fmt.Errorf("failed call to hipGetDeviceProperties: %d %s", status, err)
}
return &props, nil
}
// free, total, err
func (hl *HipLib) HipMemGetInfo() (uint64, uint64, error) {
if hl.dll == 0 {
return 0, 0, errors.New("dll has been unloaded")
}
var totalMemory uint64
var freeMemory uint64
status, _, err := syscall.SyscallN(hl.hipMemGetInfo, uintptr(unsafe.Pointer(&freeMemory)), uintptr(unsafe.Pointer(&totalMemory)))
if status != hipSuccess {
return 0, 0, fmt.Errorf("failed call to hipMemGetInfo: %d %s", status, err)
}
return freeMemory, totalMemory, nil
}

View File

@@ -1,538 +0,0 @@
package discover
import (
"bufio"
"errors"
"fmt"
"io"
"io/fs"
"log/slog"
"os"
"path/filepath"
"regexp"
"slices"
"sort"
"strconv"
"strings"
"github.com/ollama/ollama/envconfig"
"github.com/ollama/ollama/format"
)
// Discovery logic for AMD/ROCm GPUs
const (
DriverVersionFile = "/sys/module/amdgpu/version"
AMDNodesSysfsDir = "/sys/class/kfd/kfd/topology/nodes/"
GPUPropertiesFileGlob = AMDNodesSysfsDir + "*/properties"
// Prefix with the node dir
GPUTotalMemoryFileGlob = "mem_banks/*/properties" // size_in_bytes line
// Direct Rendering Manager sysfs location
DRMDeviceDirGlob = "/sys/class/drm/card*/device"
DRMTotalMemoryFile = "mem_info_vram_total"
DRMUsedMemoryFile = "mem_info_vram_used"
// In hex; properties file is in decimal
DRMUniqueIDFile = "unique_id"
DRMVendorFile = "vendor"
DRMDeviceFile = "device"
)
var (
// Used to validate if the given ROCm lib is usable
ROCmLibGlobs = []string{"libhipblas.so.2*", "rocblas"} // TODO - probably include more coverage of files here...
RocmStandardLocations = []string{"/opt/rocm/lib", "/usr/lib64"}
)
// Gather GPU information from the amdgpu driver if any supported GPUs are detected
// Only called once during bootstrap
func AMDGetGPUInfo() ([]RocmGPUInfo, error) {
resp := []RocmGPUInfo{}
if !AMDDetected() {
return resp, fmt.Errorf("AMD GPUs not detected")
}
// Opportunistic logging of driver version to aid in troubleshooting
driverMajor, driverMinor, err := AMDDriverVersion()
if err != nil {
// TODO - if we see users crash and burn with the upstreamed kernel this can be adjusted to hard-fail rocm support and fallback to CPU
slog.Warn("ollama recommends running the https://www.amd.com/en/support/linux-drivers", "error", err)
}
// Determine if the user has already pre-selected which GPUs to look at, then ignore the others
var visibleDevices []string
hipVD := envconfig.HipVisibleDevices() // zero based index only
rocrVD := envconfig.RocrVisibleDevices() // zero based index or UUID
gpuDO := envconfig.GpuDeviceOrdinal() // zero based index
switch {
case rocrVD != "":
visibleDevices = strings.Split(rocrVD, ",")
case hipVD != "":
visibleDevices = strings.Split(hipVD, ",")
case gpuDO != "":
visibleDevices = strings.Split(gpuDO, ",")
}
gfxOverride := envconfig.HsaOverrideGfxVersion()
var supported []string
var libDir string
// The amdgpu driver always exposes the host CPU(s) first, but we have to skip them and subtract
// from the other IDs to get alignment with the HIP libraries expectations (zero is the first GPU, not the CPU)
matches, _ := filepath.Glob(GPUPropertiesFileGlob)
sort.Slice(matches, func(i, j int) bool {
// /sys/class/kfd/kfd/topology/nodes/<number>/properties
a, err := strconv.ParseInt(filepath.Base(filepath.Dir(matches[i])), 10, 64)
if err != nil {
slog.Debug("parse err", "error", err, "match", matches[i])
return false
}
b, err := strconv.ParseInt(filepath.Base(filepath.Dir(matches[j])), 10, 64)
if err != nil {
slog.Debug("parse err", "error", err, "match", matches[i])
return false
}
return a < b
})
gpuCount := 0
for _, match := range matches {
slog.Debug("evaluating amdgpu node " + match)
fp, err := os.Open(match)
if err != nil {
slog.Debug("failed to open sysfs node", "file", match, "error", err)
continue
}
defer fp.Close()
scanner := bufio.NewScanner(fp)
isCPU := false
var major, minor, patch uint64
var vendor, device, uniqueID uint64
for scanner.Scan() {
line := strings.TrimSpace(scanner.Text())
// Note: we could also use "cpu_cores_count X" where X is greater than zero to detect CPUs
if strings.HasPrefix(line, "gfx_target_version") {
ver := strings.Fields(line)
// Detect CPUs
if len(ver) == 2 && ver[1] == "0" {
slog.Debug("detected CPU " + match)
isCPU = true
break
}
if len(ver) != 2 || len(ver[1]) < 5 {
slog.Warn("malformed "+match, "gfx_target_version", line)
// If this winds up being a CPU, our offsets may be wrong
continue
}
l := len(ver[1])
var err1, err2, err3 error
patch, err1 = strconv.ParseUint(ver[1][l-2:l], 10, 32)
minor, err2 = strconv.ParseUint(ver[1][l-4:l-2], 10, 32)
major, err3 = strconv.ParseUint(ver[1][:l-4], 10, 32)
if err1 != nil || err2 != nil || err3 != nil {
slog.Debug("malformed int " + line)
continue
}
} else if strings.HasPrefix(line, "vendor_id") {
ver := strings.Fields(line)
if len(ver) != 2 {
slog.Debug("malformed", "vendor_id", line)
continue
}
vendor, err = strconv.ParseUint(ver[1], 10, 64)
if err != nil {
slog.Debug("malformed", "vendor_id", line, "error", err)
}
} else if strings.HasPrefix(line, "device_id") {
ver := strings.Fields(line)
if len(ver) != 2 {
slog.Debug("malformed", "device_id", line)
continue
}
device, err = strconv.ParseUint(ver[1], 10, 64)
if err != nil {
slog.Debug("malformed", "device_id", line, "error", err)
}
} else if strings.HasPrefix(line, "unique_id") {
ver := strings.Fields(line)
if len(ver) != 2 {
slog.Debug("malformed", "unique_id", line)
continue
}
uniqueID, err = strconv.ParseUint(ver[1], 10, 64)
if err != nil {
slog.Debug("malformed", "unique_id", line, "error", err)
}
}
// TODO - any other properties we want to extract and record?
// vendor_id + device_id -> pci lookup for "Name"
// Other metrics that may help us understand relative performance between multiple GPUs
}
// Note: while ./mem_banks/*/used_memory exists, it doesn't appear to take other VRAM consumers
// into consideration, so we instead map the device over to the DRM driver sysfs nodes which
// do reliably report VRAM usage.
if isCPU {
continue
}
// Skip over any GPUs that are masked
if major == 0 && minor == 0 && patch == 0 {
slog.Debug("skipping gpu with gfx000")
continue
}
// Keep track of numeric IDs based on valid GPUs
gpuID := gpuCount
gpuCount += 1
// Look up the memory for the current node
totalMemory := uint64(0)
usedMemory := uint64(0)
var usedFile string
mapping := []struct {
id uint64
filename string
}{
{vendor, DRMVendorFile},
{device, DRMDeviceFile},
{uniqueID, DRMUniqueIDFile}, // Not all devices will report this
}
slog.Debug("mapping amdgpu to drm sysfs nodes", "amdgpu", match, "vendor", vendor, "device", device, "unique_id", uniqueID)
// Map over to DRM location to find the total/free memory
drmMatches, _ := filepath.Glob(DRMDeviceDirGlob)
for _, devDir := range drmMatches {
matched := true
for _, m := range mapping {
if m.id == 0 {
// Null ID means it didn't populate, so we can't use it to match
continue
}
filename := filepath.Join(devDir, m.filename)
buf, err := os.ReadFile(filename)
if err != nil {
slog.Debug("failed to read sysfs node", "file", filename, "error", err)
matched = false
break
}
// values here are in hex, strip off the lead 0x and parse so we can compare the numeric (decimal) values in amdgpu
cmp, err := strconv.ParseUint(strings.TrimPrefix(strings.TrimSpace(string(buf)), "0x"), 16, 64)
if err != nil {
slog.Debug("failed to parse sysfs node", "file", filename, "error", err)
matched = false
break
}
if cmp != m.id {
matched = false
break
}
}
if !matched {
continue
}
// Found the matching DRM directory
slog.Debug("matched", "amdgpu", match, "drm", devDir)
totalFile := filepath.Join(devDir, DRMTotalMemoryFile)
buf, err := os.ReadFile(totalFile)
if err != nil {
slog.Debug("failed to read sysfs node", "file", totalFile, "error", err)
break
}
totalMemory, err = strconv.ParseUint(strings.TrimSpace(string(buf)), 10, 64)
if err != nil {
slog.Debug("failed to parse sysfs node", "file", totalFile, "error", err)
break
}
usedFile = filepath.Join(devDir, DRMUsedMemoryFile)
usedMemory, err = getFreeMemory(usedFile)
if err != nil {
slog.Debug("failed to update used memory", "error", err)
}
break
}
var name string
// TODO - PCI ID lookup
if vendor > 0 && device > 0 {
name = fmt.Sprintf("%04x:%04x", vendor, device)
}
// Favor UUIDs if available to reduce possibility of getting the numeric IDs wrong
var ID string
if uniqueID != 0 {
ID = fmt.Sprintf("GPU-%016x", uniqueID)
} else {
ID = strconv.Itoa(gpuID)
}
gpuInfo := RocmGPUInfo{
GpuInfo: GpuInfo{
Library: "rocm",
memInfo: memInfo{
TotalMemory: totalMemory,
FreeMemory: (totalMemory - usedMemory),
},
ID: ID,
Name: name,
Compute: fmt.Sprintf("gfx%d%x%x", major, minor, patch),
MinimumMemory: rocmMinimumMemory,
DriverMajor: driverMajor,
DriverMinor: driverMinor,
},
usedFilepath: usedFile,
index: gpuID,
}
// iGPU detection, remove this check once we can support an iGPU variant of the rocm library
if totalMemory < IGPUMemLimit {
reason := "unsupported Radeon iGPU detected skipping"
slog.Info(reason, "id", gpuID, "total", format.HumanBytes2(totalMemory))
unsupportedGPUs = append(unsupportedGPUs, UnsupportedGPUInfo{
GpuInfo: gpuInfo.GpuInfo,
Reason: reason,
})
continue
}
//minVer, err := strconv.Atoi(RocmComputeMajorMin)
//if err != nil {
// slog.Error("invalid RocmComputeMajorMin setting", "value", RocmComputeMajorMin, "error", err)
//}
// if int(major) < minVer {
// reason := fmt.Sprintf("amdgpu too old gfx%d%x%x", major, minor, patch)
// slog.Warn(reason, "gpu", gpuID)
// unsupportedGPUs = append(unsupportedGPUs, UnsupportedGPUInfo{
// GpuInfo: gpuInfo.GpuInfo,
// Reason: reason,
// })
// continue
//}
slog.Debug("amdgpu memory", "gpu", gpuID, "total", format.HumanBytes2(totalMemory))
slog.Debug("amdgpu memory", "gpu", gpuID, "available", format.HumanBytes2(totalMemory-usedMemory))
// If the user wants to filter to a subset of devices, filter out if we aren't a match
if len(visibleDevices) > 0 {
include := false
for _, visible := range visibleDevices {
if visible == gpuInfo.ID || visible == strconv.Itoa(gpuInfo.index) {
include = true
break
}
}
if !include {
reason := "filtering out device per user request"
slog.Info(reason, "id", gpuInfo.ID, "visible_devices", visibleDevices)
unsupportedGPUs = append(unsupportedGPUs, UnsupportedGPUInfo{
GpuInfo: gpuInfo.GpuInfo,
Reason: reason,
})
continue
}
}
// Final validation is gfx compatibility - load the library if we haven't already loaded it
// even if the user overrides, we still need to validate the library
if libDir == "" {
libDir, err = AMDValidateLibDir()
if err != nil {
err = fmt.Errorf("unable to verify rocm library: %w", err)
slog.Warn(err.Error())
unsupportedGPUs = append(unsupportedGPUs, UnsupportedGPUInfo{
GpuInfo: gpuInfo.GpuInfo,
Reason: err.Error(),
})
return nil, err
}
}
gpuInfo.DependencyPath = []string{libDir}
if gfxOverride == "" {
// Only load supported list once
if len(supported) == 0 {
supported, err = GetSupportedGFX(libDir)
if err != nil {
err = fmt.Errorf("failed to lookup supported GFX types: %w", err)
slog.Warn(err.Error())
unsupportedGPUs = append(unsupportedGPUs, UnsupportedGPUInfo{
GpuInfo: gpuInfo.GpuInfo,
Reason: err.Error(),
})
return nil, err
}
slog.Debug("rocm supported GPUs", "types", supported)
}
gfx := gpuInfo.Compute
if !slices.Contains[[]string, string](supported, gfx) {
reason := fmt.Sprintf("amdgpu is not supported (supported types:%s)", supported)
slog.Warn(reason, "gpu_type", gfx, "gpu", gpuInfo.ID, "library", libDir)
unsupportedGPUs = append(unsupportedGPUs, UnsupportedGPUInfo{
GpuInfo: gpuInfo.GpuInfo,
Reason: reason,
})
// TODO - consider discrete markdown just for ROCM troubleshooting?
slog.Warn("See https://github.com/ollama/ollama/blob/main/docs/gpu.md#overrides for HSA_OVERRIDE_GFX_VERSION usage")
continue
} else {
slog.Info("amdgpu is supported", "gpu", gpuInfo.ID, "gpu_type", gfx)
}
} else {
slog.Info("skipping rocm gfx compatibility check", "HSA_OVERRIDE_GFX_VERSION", gfxOverride)
}
// Check for env var workarounds
if name == "1002:687f" { // Vega RX 56
gpuInfo.EnvWorkarounds = append(gpuInfo.EnvWorkarounds, [2]string{"HSA_ENABLE_SDMA", "0"})
}
// The GPU has passed all the verification steps and is supported
resp = append(resp, gpuInfo)
}
if len(resp) == 0 {
err := fmt.Errorf("no compatible amdgpu devices detected")
slog.Info(err.Error())
return nil, err
}
if err := verifyKFDDriverAccess(); err != nil {
err = fmt.Errorf("amdgpu devices detected but permission problems block access: %w", err)
slog.Error(err.Error())
return nil, err
}
return resp, nil
}
// Quick check for AMD driver so we can skip amdgpu discovery if not present
func AMDDetected() bool {
// Some driver versions (older?) don't have a version file, so just lookup the parent dir
sysfsDir := filepath.Dir(DriverVersionFile)
_, err := os.Stat(sysfsDir)
if errors.Is(err, os.ErrNotExist) {
slog.Debug("amdgpu driver not detected " + sysfsDir)
return false
} else if err != nil {
slog.Debug("error looking up amd driver", "path", sysfsDir, "error", err)
return false
}
return true
}
// Prefer to use host installed ROCm, as long as it meets our minimum requirements
// failing that, tell the user how to download it on their own
func AMDValidateLibDir() (string, error) {
libDir, err := commonAMDValidateLibDir()
if err == nil {
return libDir, nil
}
// Well known ollama installer path
installedRocmDir := "/usr/share/ollama/lib/rocm"
if rocmLibUsable(installedRocmDir) {
return installedRocmDir, nil
}
// If we still haven't found a usable rocm, the user will have to install it on their own
slog.Warn("amdgpu detected, but no compatible rocm library found. Either install rocm v6, or follow manual install instructions at https://github.com/ollama/ollama/blob/main/docs/linux.md#manual-install")
return "", errors.New("no suitable rocm found, falling back to CPU")
}
func AMDDriverVersion() (driverMajor, driverMinor int, err error) {
_, err = os.Stat(DriverVersionFile)
if err != nil {
return 0, 0, fmt.Errorf("amdgpu version file missing: %s %w", DriverVersionFile, err)
}
fp, err := os.Open(DriverVersionFile)
if err != nil {
return 0, 0, err
}
defer fp.Close()
verString, err := io.ReadAll(fp)
if err != nil {
return 0, 0, err
}
pattern := `\A(\d+)\.(\d+).*`
regex := regexp.MustCompile(pattern)
match := regex.FindStringSubmatch(string(verString))
if len(match) < 2 {
return 0, 0, fmt.Errorf("malformed version string %s", string(verString))
}
driverMajor, err = strconv.Atoi(match[1])
if err != nil {
return 0, 0, err
}
driverMinor, err = strconv.Atoi(match[2])
if err != nil {
return 0, 0, err
}
return driverMajor, driverMinor, nil
}
func (gpus RocmGPUInfoList) RefreshFreeMemory() error {
if len(gpus) == 0 {
return nil
}
for i := range gpus {
usedMemory, err := getFreeMemory(gpus[i].usedFilepath)
if err != nil {
return err
}
slog.Debug("updating rocm free memory", "gpu", gpus[i].ID, "name", gpus[i].Name, "before", format.HumanBytes2(gpus[i].FreeMemory), "now", format.HumanBytes2(gpus[i].TotalMemory-usedMemory))
gpus[i].FreeMemory = gpus[i].TotalMemory - usedMemory
}
return nil
}
func getFreeMemory(usedFile string) (uint64, error) {
buf, err := os.ReadFile(usedFile)
if err != nil {
return 0, fmt.Errorf("failed to read sysfs node %s %w", usedFile, err)
}
usedMemory, err := strconv.ParseUint(strings.TrimSpace(string(buf)), 10, 64)
if err != nil {
slog.Debug("failed to parse sysfs node", "file", usedFile, "error", err)
return 0, fmt.Errorf("failed to parse sysfs node %s %w", usedFile, err)
}
return usedMemory, nil
}
func verifyKFDDriverAccess() error {
// Verify we have permissions - either running as root, or we have group access to the driver
fd, err := os.OpenFile("/dev/kfd", os.O_RDWR, 0o666)
if err != nil {
if errors.Is(err, fs.ErrPermission) {
return fmt.Errorf("permissions not set up properly. Either run ollama as root, or add you user account to the render group. %w", err)
} else if errors.Is(err, fs.ErrNotExist) {
// Container runtime failure?
return fmt.Errorf("kfd driver not loaded. If running in a container, remember to include '--device /dev/kfd --device /dev/dri'")
}
return fmt.Errorf("failed to check permission on /dev/kfd: %w", err)
}
fd.Close()
return nil
}
func rocmGetVisibleDevicesEnv(gpuInfo []GpuInfo) (string, string) {
ids := []string{}
for _, info := range gpuInfo {
if info.Library != "rocm" {
// TODO shouldn't happen if things are wired correctly...
slog.Debug("rocmGetVisibleDevicesEnv skipping over non-rocm device", "library", info.Library)
continue
}
ids = append(ids, info.ID)
}
// There are 3 potential env vars to use to select GPUs.
// ROCR_VISIBLE_DEVICES supports UUID or numeric so is our preferred on linux
// GPU_DEVICE_ORDINAL supports numeric IDs only
// HIP_VISIBLE_DEVICES supports numeric IDs only
return "ROCR_VISIBLE_DEVICES", strings.Join(ids, ",")
}

View File

@@ -1,218 +0,0 @@
package discover
import (
"bytes"
"errors"
"fmt"
"log/slog"
"path/filepath"
"slices"
"strconv"
"strings"
"github.com/ollama/ollama/envconfig"
"github.com/ollama/ollama/format"
)
const (
// TODO We're lookinng for this exact name to detect iGPUs since hipGetDeviceProperties never reports integrated==true
iGPUName = "AMD 2099 Graphics"
)
var (
// Used to validate if the given ROCm lib is usable
ROCmLibGlobs = []string{"hipblas.dll", "rocblas"} // This is not sufficient to discern v5 vs v6
RocmStandardLocations = []string{"C:\\Program Files\\AMD\\ROCm\\6.1\\bin"} // TODO glob?
)
// Only called once during bootstrap
func AMDGetGPUInfo() ([]RocmGPUInfo, error) {
resp := []RocmGPUInfo{}
hl, err := NewHipLib()
if err != nil {
slog.Debug(err.Error())
return nil, err
}
defer hl.Release()
driverMajor, driverMinor, err := hl.AMDDriverVersion()
if err != nil {
// For now this is benign, but we may eventually need to fail compatibility checks
slog.Debug("error looking up amd driver version", "error", err)
}
// Note: the HIP library automatically handles subsetting to any *_VISIBLE_DEVICES the user specified
count := hl.HipGetDeviceCount()
if count == 0 {
err := fmt.Errorf("no compatible amdgpu devices detected")
slog.Info(err.Error())
return nil, err
}
libDir, err := AMDValidateLibDir()
if err != nil {
err = fmt.Errorf("unable to verify rocm library: %w", err)
slog.Warn(err.Error())
return nil, err
}
var supported []string
gfxOverride := envconfig.HsaOverrideGfxVersion()
if gfxOverride == "" {
supported, err = GetSupportedGFX(libDir)
if err != nil {
err = fmt.Errorf("failed to lookup supported GFX types: %w", err)
slog.Warn(err.Error())
return nil, err
}
} else {
slog.Info("skipping rocm gfx compatibility check", "HSA_OVERRIDE_GFX_VERSION", gfxOverride)
}
slog.Debug("detected hip devices", "count", count)
// TODO how to determine the underlying device ID when visible devices is causing this to subset?
for i := range count {
err = hl.HipSetDevice(i)
if err != nil {
slog.Warn("set device", "id", i, "error", err)
continue
}
props, err := hl.HipGetDeviceProperties(i)
if err != nil {
slog.Warn("get properties", "id", i, "error", err)
continue
}
n := bytes.IndexByte(props.Name[:], 0)
name := string(props.Name[:n])
// TODO is UUID actually populated on windows?
// Can luid be used on windows for setting visible devices (and is it actually set?)
n = bytes.IndexByte(props.GcnArchName[:], 0)
gfx := string(props.GcnArchName[:n])
slog.Debug("hip device", "id", i, "name", name, "gfx", gfx)
// slog.Info(fmt.Sprintf("[%d] Integrated: %d", i, props.iGPU)) // DOESN'T REPORT CORRECTLY! Always 0
// TODO Why isn't props.iGPU accurate!?
freeMemory, totalMemory, err := hl.HipMemGetInfo()
if err != nil {
slog.Warn("get mem info", "id", i, "error", err)
continue
}
gpuInfo := RocmGPUInfo{
GpuInfo: GpuInfo{
Library: "rocm",
memInfo: memInfo{
TotalMemory: totalMemory,
FreeMemory: freeMemory,
},
// Free memory reporting on Windows is not reliable until we bump to ROCm v6.2
UnreliableFreeMemory: true,
ID: strconv.Itoa(i), // TODO this is probably wrong if we specify visible devices
DependencyPath: []string{libDir},
MinimumMemory: rocmMinimumMemory,
Name: name,
Compute: gfx,
DriverMajor: driverMajor,
DriverMinor: driverMinor,
},
index: i,
}
// iGPU detection, remove this check once we can support an iGPU variant of the rocm library
if strings.EqualFold(name, iGPUName) || totalMemory < IGPUMemLimit {
reason := "unsupported Radeon iGPU detected skipping"
slog.Info(reason, "id", gpuInfo.ID, "total", format.HumanBytes2(totalMemory))
unsupportedGPUs = append(unsupportedGPUs, UnsupportedGPUInfo{
GpuInfo: gpuInfo.GpuInfo,
Reason: reason,
})
continue
}
// Strip off Target Features when comparing
if !slices.Contains[[]string, string](supported, strings.Split(gfx, ":")[0]) {
reason := fmt.Sprintf("amdgpu is not supported (supported types:%s)", supported)
slog.Warn(reason, "gpu_type", gfx, "gpu", gpuInfo.ID, "library", libDir)
unsupportedGPUs = append(unsupportedGPUs, UnsupportedGPUInfo{
GpuInfo: gpuInfo.GpuInfo,
Reason: reason,
})
// HSA_OVERRIDE_GFX_VERSION not supported on windows
continue
} else {
slog.Debug("amdgpu is supported", "gpu", i, "gpu_type", gfx)
}
slog.Debug("amdgpu memory", "gpu", i, "total", format.HumanBytes2(totalMemory))
slog.Debug("amdgpu memory", "gpu", i, "available", format.HumanBytes2(freeMemory))
resp = append(resp, gpuInfo)
}
return resp, nil
}
func AMDValidateLibDir() (string, error) {
libDir, err := commonAMDValidateLibDir()
if err == nil {
return libDir, nil
}
// Installer payload (if we're running from some other location)
rocmTargetDir := filepath.Join(LibOllamaPath, "rocm")
if rocmLibUsable(rocmTargetDir) {
slog.Debug("detected ollama installed ROCm at " + rocmTargetDir)
return rocmTargetDir, nil
}
// Should not happen on windows since we include it in the installer, but stand-alone binary might hit this
slog.Warn("amdgpu detected, but no compatible rocm library found. Please install ROCm")
return "", errors.New("no suitable rocm found, falling back to CPU")
}
func (gpus RocmGPUInfoList) RefreshFreeMemory() error {
if len(gpus) == 0 {
return nil
}
hl, err := NewHipLib()
if err != nil {
slog.Debug(err.Error())
return err
}
defer hl.Release()
for i := range gpus {
err := hl.HipSetDevice(gpus[i].index)
if err != nil {
return err
}
freeMemory, _, err := hl.HipMemGetInfo()
if err != nil {
slog.Warn("get mem info", "id", i, "error", err)
continue
}
slog.Debug("updating rocm free memory", "gpu", gpus[i].ID, "name", gpus[i].Name, "before", format.HumanBytes2(gpus[i].FreeMemory), "now", format.HumanBytes2(freeMemory))
gpus[i].FreeMemory = freeMemory
}
return nil
}
func rocmGetVisibleDevicesEnv(gpuInfo []GpuInfo) (string, string) {
ids := []string{}
for _, info := range gpuInfo {
if info.Library != "rocm" {
// TODO shouldn't happen if things are wired correctly...
slog.Debug("rocmGetVisibleDevicesEnv skipping over non-rocm device", "library", info.Library)
continue
}
ids = append(ids, info.ID)
}
// There are 3 potential env vars to use to select GPUs.
// ROCR_VISIBLE_DEVICES supports UUID or numeric but does not work on Windows
// HIP_VISIBLE_DEVICES supports numeric IDs only
// GPU_DEVICE_ORDINAL supports numeric IDs only
return "HIP_VISIBLE_DEVICES", strings.Join(ids, ",")
}

View File

@@ -1,24 +0,0 @@
package discover
import (
"os"
"path/filepath"
"runtime"
"strings"
)
func IsNUMA() bool {
if runtime.GOOS != "linux" {
// numa support in llama.cpp is linux only
return false
}
ids := map[string]any{}
packageIds, _ := filepath.Glob("/sys/devices/system/cpu/cpu*/topology/physical_package_id")
for _, packageId := range packageIds {
id, err := os.ReadFile(packageId)
if err == nil {
ids[strings.TrimSpace(string(id))] = struct{}{}
}
}
return len(ids) > 1
}

View File

@@ -4,7 +4,9 @@ import (
"bufio"
"fmt"
"io"
"log/slog"
"os"
"path/filepath"
"reflect"
"regexp"
"sort"
@@ -13,47 +15,6 @@ import (
"github.com/ollama/ollama/format"
)
var CudartGlobs = []string{
"/usr/local/cuda/lib64/libcudart.so*",
"/usr/lib/x86_64-linux-gnu/nvidia/current/libcudart.so*",
"/usr/lib/x86_64-linux-gnu/libcudart.so*",
"/usr/lib/wsl/lib/libcudart.so*",
"/usr/lib/wsl/drivers/*/libcudart.so*",
"/opt/cuda/lib64/libcudart.so*",
"/usr/local/cuda*/targets/aarch64-linux/lib/libcudart.so*",
"/usr/lib/aarch64-linux-gnu/nvidia/current/libcudart.so*",
"/usr/lib/aarch64-linux-gnu/libcudart.so*",
"/usr/local/cuda/lib*/libcudart.so*",
"/usr/lib*/libcudart.so*",
"/usr/local/lib*/libcudart.so*",
}
var NvmlGlobs = []string{}
var NvcudaGlobs = []string{
"/usr/local/cuda*/targets/*/lib/libcuda.so*",
"/usr/lib/*-linux-gnu/nvidia/current/libcuda.so*",
"/usr/lib/*-linux-gnu/libcuda.so*",
"/usr/lib/wsl/lib/libcuda.so*",
"/usr/lib/wsl/drivers/*/libcuda.so*",
"/opt/cuda/lib*/libcuda.so*",
"/usr/local/cuda/lib*/libcuda.so*",
"/usr/lib*/libcuda.so*",
"/usr/local/lib*/libcuda.so*",
}
var OneapiGlobs = []string{
"/usr/lib/x86_64-linux-gnu/libze_intel_gpu.so*",
"/usr/lib*/libze_intel_gpu.so*",
}
var (
CudartMgmtName = "libcudart.so*"
NvcudaMgmtName = "libcuda.so*"
NvmlMgmtName = "" // not currently wired on linux
OneapiMgmtName = "libze_intel_gpu.so*"
)
func GetCPUMem() (memInfo, error) {
var mem memInfo
var total, available, free, buffers, cached, freeSwap uint64
@@ -106,16 +67,17 @@ type linuxCpuInfo struct {
CoreID string `cpuinfo:"core id"`
}
func GetCPUDetails() ([]CPU, error) {
func GetCPUDetails() []CPU {
file, err := os.Open(CpuInfoFilename)
if err != nil {
return nil, err
slog.Warn("failed to get CPU details", "error", err)
return nil
}
defer file.Close()
return linuxCPUDetails(file)
}
func linuxCPUDetails(file io.Reader) ([]CPU, error) {
func linuxCPUDetails(file io.Reader) []CPU {
reColumns := regexp.MustCompile("\t+: ")
scanner := bufio.NewScanner(file)
cpuInfos := []linuxCpuInfo{}
@@ -194,5 +156,17 @@ func linuxCPUDetails(file io.Reader) ([]CPU, error) {
for _, k := range keys {
result = append(result, *socketByID[k])
}
return result, nil
return result
}
func IsNUMA() bool {
ids := map[string]any{}
packageIds, _ := filepath.Glob("/sys/devices/system/cpu/cpu*/topology/physical_package_id")
for _, packageId := range packageIds {
id, err := os.ReadFile(packageId)
if err == nil {
ids[strings.TrimSpace(string(id))] = struct{}{}
}
}
return len(ids) > 1
}

View File

@@ -2062,10 +2062,7 @@ power management:
for k, v := range testCases {
t.Run(k, func(t *testing.T) {
buf := bytes.NewBufferString(v.input)
cpus, err := linuxCPUDetails(buf)
if err != nil {
t.Fatal(err)
}
cpus := linuxCPUDetails(buf)
slog.Info("example", "scenario", k, "cpus", cpus)
si := SystemInfo{

View File

@@ -26,29 +26,6 @@ var (
GetLogicalProcessorInformationEx = k32.NewProc("GetLogicalProcessorInformationEx")
)
var CudartGlobs = []string{
"c:\\Program Files\\NVIDIA GPU Computing Toolkit\\CUDA\\v*\\bin\\cudart64_*.dll",
}
var NvmlGlobs = []string{
"c:\\Windows\\System32\\nvml.dll",
}
var NvcudaGlobs = []string{
"c:\\windows\\system*\\nvcuda.dll",
}
var OneapiGlobs = []string{
"c:\\Windows\\System32\\DriverStore\\FileRepository\\*\\ze_intel_gpu64.dll",
}
var (
CudartMgmtName = "cudart64_*.dll"
NvcudaMgmtName = "nvcuda.dll"
NvmlMgmtName = "nvml.dll"
OneapiMgmtName = "ze_intel_gpu64.dll"
)
func GetCPUMem() (memInfo, error) {
memStatus := MEMORYSTATUSEX{length: sizeofMemoryStatusEx}
r1, _, err := globalMemoryStatusExProc.Call(uintptr(unsafe.Pointer(&memStatus)))
@@ -122,27 +99,22 @@ func (pkg *winPackage) IsMember(target *GROUP_AFFINITY) bool {
}
func getLogicalProcessorInformationEx() ([]byte, error) {
buf := make([]byte, 1)
buf := make([]byte, 1024)
bufSize := len(buf)
ret, _, err := GetLogicalProcessorInformationEx.Call(
uintptr(RelationAll),
uintptr(unsafe.Pointer(&buf[0])),
uintptr(unsafe.Pointer(&bufSize)),
)
if ret != 0 {
return nil, fmt.Errorf("failed to determine size info ret:%d %w", ret, err)
var err error
for range 3 {
var ret uintptr
ret, _, err = GetLogicalProcessorInformationEx.Call(
uintptr(RelationAll),
uintptr(unsafe.Pointer(&buf[0])),
uintptr(unsafe.Pointer(&bufSize)),
)
if ret == 1 && bufSize <= len(buf) {
return buf, nil
}
buf = make([]byte, bufSize)
}
buf = make([]byte, bufSize)
ret, _, err = GetLogicalProcessorInformationEx.Call(
uintptr(RelationAll),
uintptr(unsafe.Pointer(&buf[0])),
uintptr(unsafe.Pointer(&bufSize)),
)
if ret == 0 {
return nil, fmt.Errorf("failed to gather processor information ret:%d buflen:%d %w", ret, bufSize, err)
}
return buf, nil
return nil, fmt.Errorf("unable to determine CPU details: %w", err)
}
func processSystemLogicalProcessorInforationList(buf []byte) []*winPackage {
@@ -217,10 +189,11 @@ func processSystemLogicalProcessorInforationList(buf []byte) []*winPackage {
return packages
}
func GetCPUDetails() ([]CPU, error) {
func GetCPUDetails() []CPU {
buf, err := getLogicalProcessorInformationEx()
if err != nil {
return nil, err
slog.Warn("failed to get CPU details", "error", err)
return nil
}
packages := processSystemLogicalProcessorInforationList(buf)
cpus := make([]CPU, len(packages))
@@ -230,5 +203,10 @@ func GetCPUDetails() ([]CPU, error) {
cpus[i].EfficiencyCoreCount = pkg.efficiencyCoreCount
cpus[i].ThreadCount = pkg.threadCount
}
return cpus, nil
return cpus
}
func IsNUMA() bool {
// numa support in ggml is linux only
return false
}

View File

@@ -1,65 +0,0 @@
//go:build linux || windows
package discover
import (
"log/slog"
"os"
"regexp"
"runtime"
"strconv"
"strings"
)
// Jetson devices have JETSON_JETPACK="x.y.z" factory set to the Jetpack version installed.
// Included to drive logic for reducing Ollama-allocated overhead on L4T/Jetson devices.
var CudaTegra string = os.Getenv("JETSON_JETPACK")
func cudaGetVisibleDevicesEnv(gpuInfo []GpuInfo) (string, string) {
ids := []string{}
for _, info := range gpuInfo {
if info.Library != "cuda" {
// TODO shouldn't happen if things are wired correctly...
slog.Debug("cudaGetVisibleDevicesEnv skipping over non-cuda device", "library", info.Library)
continue
}
ids = append(ids, info.ID)
}
return "CUDA_VISIBLE_DEVICES", strings.Join(ids, ",")
}
func cudaVariant(gpuInfo CudaGPUInfo) string {
if runtime.GOARCH == "arm64" && runtime.GOOS == "linux" {
if CudaTegra != "" {
ver := strings.Split(CudaTegra, ".")
if len(ver) > 0 {
return "jetpack" + ver[0]
}
} else if data, err := os.ReadFile("/etc/nv_tegra_release"); err == nil {
r := regexp.MustCompile(` R(\d+) `)
m := r.FindSubmatch(data)
if len(m) != 2 {
slog.Info("Unexpected format for /etc/nv_tegra_release. Set JETSON_JETPACK to select version")
} else {
if l4t, err := strconv.Atoi(string(m[1])); err == nil {
// Note: mapping from L4t -> JP is inconsistent (can't just subtract 30)
// https://developer.nvidia.com/embedded/jetpack-archive
switch l4t {
case 35:
return "jetpack5"
case 36:
return "jetpack6"
default:
slog.Info("unsupported L4T version", "nv_tegra_release", string(data))
}
}
}
}
}
// driver 12.0 has problems with the cuda v12 library, so run v11 on those older drivers
if gpuInfo.DriverMajor < 12 || (gpuInfo.DriverMajor == 12 && gpuInfo.DriverMinor == 0) {
return "v11"
}
return "v12"
}

View File

@@ -1,718 +1,207 @@
//go:build linux || windows
package discover
/*
#cgo linux LDFLAGS: -lrt -lpthread -ldl -lstdc++ -lm
#cgo windows LDFLAGS: -lpthread
#include "gpu_info.h"
*/
import "C"
import (
"fmt"
"context"
"log/slog"
"os"
"path/filepath"
"regexp"
"runtime"
"strconv"
"strings"
"sync"
"unsafe"
"github.com/ollama/ollama/envconfig"
"github.com/ollama/ollama/format"
"github.com/ollama/ollama/ml"
)
type cudaHandles struct {
deviceCount int
cudart *C.cudart_handle_t
nvcuda *C.nvcuda_handle_t
nvml *C.nvml_handle_t
// Jetson devices have JETSON_JETPACK="x.y.z" factory set to the Jetpack version installed.
// Included to drive logic for reducing Ollama-allocated overhead on L4T/Jetson devices.
var CudaTegra string = os.Getenv("JETSON_JETPACK")
func GetCPUInfo() GpuInfo {
mem, err := GetCPUMem()
if err != nil {
slog.Warn("error looking up system memory", "error", err)
}
return GpuInfo{
memInfo: mem,
DeviceID: ml.DeviceID{
Library: "cpu",
ID: "0",
},
}
}
type oneapiHandles struct {
oneapi *C.oneapi_handle_t
deviceCount int
func GetGPUInfo(ctx context.Context, runners []FilteredRunnerDiscovery) GpuInfoList {
devs := GPUDevices(ctx, runners)
return devInfoToInfoList(devs)
}
const (
cudaMinimumMemory = 457 * format.MebiByte
rocmMinimumMemory = 457 * format.MebiByte
// TODO OneAPI minimum memory
)
var (
gpuMutex sync.Mutex
bootstrapped bool
cpus []CPUInfo
cudaGPUs []CudaGPUInfo
nvcudaLibPath string
cudartLibPath string
oneapiLibPath string
nvmlLibPath string
rocmGPUs []RocmGPUInfo
oneapiGPUs []OneapiGPUInfo
// If any discovered GPUs are incompatible, report why
unsupportedGPUs []UnsupportedGPUInfo
// Keep track of errors during bootstrapping so that if GPUs are missing
// they expected to be present this may explain why
bootstrapErrors []error
)
// With our current CUDA compile flags, older than 5.0 will not work properly
// (string values used to allow ldflags overrides at build time)
var (
CudaComputeMajorMin = "5"
CudaComputeMinorMin = "0"
)
//change valute from 9 to 8 would release the gfx version limits ,refer to https://github.com/likelovewant/ollama-for-amd/issues/51
var RocmComputeMajorMin = "8"
// TODO find a better way to detect iGPU instead of minimum memory
const IGPUMemLimit = 1 * format.GibiByte // 512G is what they typically report, so anything less than 1G must be iGPU
// Note: gpuMutex must already be held
func initCudaHandles() *cudaHandles {
// TODO - if the ollama build is CPU only, don't do these checks as they're irrelevant and confusing
cHandles := &cudaHandles{}
// Short Circuit if we already know which library to use
// ignore bootstrap errors in this case since we already recorded them
if nvmlLibPath != "" {
cHandles.nvml, _, _ = loadNVMLMgmt([]string{nvmlLibPath})
return cHandles
}
if nvcudaLibPath != "" {
cHandles.deviceCount, cHandles.nvcuda, _, _ = loadNVCUDAMgmt([]string{nvcudaLibPath})
return cHandles
}
if cudartLibPath != "" {
cHandles.deviceCount, cHandles.cudart, _, _ = loadCUDARTMgmt([]string{cudartLibPath})
return cHandles
}
slog.Debug("searching for GPU discovery libraries for NVIDIA")
var cudartMgmtPatterns []string
// Aligned with driver, we can't carry as payloads
nvcudaMgmtPatterns := NvcudaGlobs
cudartMgmtPatterns = append(cudartMgmtPatterns, filepath.Join(LibOllamaPath, "cuda_v*", CudartMgmtName))
cudartMgmtPatterns = append(cudartMgmtPatterns, CudartGlobs...)
if len(NvmlGlobs) > 0 {
nvmlLibPaths := FindGPULibs(NvmlMgmtName, NvmlGlobs)
if len(nvmlLibPaths) > 0 {
nvml, libPath, err := loadNVMLMgmt(nvmlLibPaths)
if nvml != nil {
slog.Debug("nvidia-ml loaded", "library", libPath)
cHandles.nvml = nvml
nvmlLibPath = libPath
}
if err != nil {
bootstrapErrors = append(bootstrapErrors, err)
}
}
}
nvcudaLibPaths := FindGPULibs(NvcudaMgmtName, nvcudaMgmtPatterns)
if len(nvcudaLibPaths) > 0 {
deviceCount, nvcuda, libPath, err := loadNVCUDAMgmt(nvcudaLibPaths)
if nvcuda != nil {
slog.Debug("detected GPUs", "count", deviceCount, "library", libPath)
cHandles.nvcuda = nvcuda
cHandles.deviceCount = deviceCount
nvcudaLibPath = libPath
return cHandles
}
if err != nil {
bootstrapErrors = append(bootstrapErrors, err)
}
}
cudartLibPaths := FindGPULibs(CudartMgmtName, cudartMgmtPatterns)
if len(cudartLibPaths) > 0 {
deviceCount, cudart, libPath, err := loadCUDARTMgmt(cudartLibPaths)
if cudart != nil {
slog.Debug("detected GPUs", "library", libPath, "count", deviceCount)
cHandles.cudart = cudart
cHandles.deviceCount = deviceCount
cudartLibPath = libPath
return cHandles
}
if err != nil {
bootstrapErrors = append(bootstrapErrors, err)
}
}
return cHandles
}
// Note: gpuMutex must already be held
func initOneAPIHandles() *oneapiHandles {
oHandles := &oneapiHandles{}
// Short Circuit if we already know which library to use
// ignore bootstrap errors in this case since we already recorded them
if oneapiLibPath != "" {
oHandles.deviceCount, oHandles.oneapi, _, _ = loadOneapiMgmt([]string{oneapiLibPath})
return oHandles
}
oneapiLibPaths := FindGPULibs(OneapiMgmtName, OneapiGlobs)
if len(oneapiLibPaths) > 0 {
var err error
oHandles.deviceCount, oHandles.oneapi, oneapiLibPath, err = loadOneapiMgmt(oneapiLibPaths)
if err != nil {
bootstrapErrors = append(bootstrapErrors, err)
}
}
return oHandles
}
func GetCPUInfo() GpuInfoList {
gpuMutex.Lock()
if !bootstrapped {
gpuMutex.Unlock()
GetGPUInfo()
} else {
gpuMutex.Unlock()
}
return GpuInfoList{cpus[0].GpuInfo}
}
func GetGPUInfo() GpuInfoList {
// TODO - consider exploring lspci (and equivalent on windows) to check for
// GPUs so we can report warnings if we see Nvidia/AMD but fail to load the libraries
gpuMutex.Lock()
defer gpuMutex.Unlock()
needRefresh := true
var cHandles *cudaHandles
var oHandles *oneapiHandles
defer func() {
if cHandles != nil {
if cHandles.cudart != nil {
C.cudart_release(*cHandles.cudart)
}
if cHandles.nvcuda != nil {
C.nvcuda_release(*cHandles.nvcuda)
}
if cHandles.nvml != nil {
C.nvml_release(*cHandles.nvml)
}
}
if oHandles != nil {
if oHandles.oneapi != nil {
// TODO - is this needed?
C.oneapi_release(*oHandles.oneapi)
}
}
}()
if !bootstrapped {
slog.Info("looking for compatible GPUs")
cudaComputeMajorMin, err := strconv.Atoi(CudaComputeMajorMin)
if err != nil {
slog.Error("invalid CudaComputeMajorMin setting", "value", CudaComputeMajorMin, "error", err)
}
cudaComputeMinorMin, err := strconv.Atoi(CudaComputeMinorMin)
if err != nil {
slog.Error("invalid CudaComputeMinorMin setting", "value", CudaComputeMinorMin, "error", err)
}
bootstrapErrors = []error{}
needRefresh = false
var memInfo C.mem_info_t
mem, err := GetCPUMem()
if err != nil {
slog.Warn("error looking up system memory", "error", err)
}
details, err := GetCPUDetails()
if err != nil {
slog.Warn("failed to lookup CPU details", "error", err)
}
cpus = []CPUInfo{
{
GpuInfo: GpuInfo{
memInfo: mem,
Library: "cpu",
ID: "0",
},
CPUs: details,
},
}
// Load ALL libraries
cHandles = initCudaHandles()
// NVIDIA
for i := range cHandles.deviceCount {
if cHandles.cudart != nil || cHandles.nvcuda != nil {
gpuInfo := CudaGPUInfo{
GpuInfo: GpuInfo{
Library: "cuda",
},
index: i,
}
var driverMajor int
var driverMinor int
if cHandles.cudart != nil {
C.cudart_bootstrap(*cHandles.cudart, C.int(i), &memInfo)
} else {
C.nvcuda_bootstrap(*cHandles.nvcuda, C.int(i), &memInfo)
driverMajor = int(cHandles.nvcuda.driver_major)
driverMinor = int(cHandles.nvcuda.driver_minor)
}
if memInfo.err != nil {
slog.Info("error looking up nvidia GPU memory", "error", C.GoString(memInfo.err))
C.free(unsafe.Pointer(memInfo.err))
continue
}
gpuInfo.TotalMemory = uint64(memInfo.total)
gpuInfo.FreeMemory = uint64(memInfo.free)
gpuInfo.ID = C.GoString(&memInfo.gpu_id[0])
gpuInfo.Compute = fmt.Sprintf("%d.%d", memInfo.major, memInfo.minor)
gpuInfo.computeMajor = int(memInfo.major)
gpuInfo.computeMinor = int(memInfo.minor)
gpuInfo.MinimumMemory = cudaMinimumMemory
gpuInfo.DriverMajor = driverMajor
gpuInfo.DriverMinor = driverMinor
variant := cudaVariant(gpuInfo)
// Start with our bundled libraries
if variant != "" {
variantPath := filepath.Join(LibOllamaPath, "cuda_"+variant)
if _, err := os.Stat(variantPath); err == nil {
// Put the variant directory first in the search path to avoid runtime linking to the wrong library
gpuInfo.DependencyPath = append([]string{variantPath}, gpuInfo.DependencyPath...)
}
}
gpuInfo.Name = C.GoString(&memInfo.gpu_name[0])
gpuInfo.Variant = variant
if int(memInfo.major) < cudaComputeMajorMin || (int(memInfo.major) == cudaComputeMajorMin && int(memInfo.minor) < cudaComputeMinorMin) {
unsupportedGPUs = append(unsupportedGPUs,
UnsupportedGPUInfo{
GpuInfo: gpuInfo.GpuInfo,
})
slog.Info(fmt.Sprintf("[%d] CUDA GPU is too old. Compute Capability detected: %d.%d", i, memInfo.major, memInfo.minor))
continue
}
// query the management library as well so we can record any skew between the two
// which represents overhead on the GPU we must set aside on subsequent updates
if cHandles.nvml != nil {
uuid := C.CString(gpuInfo.ID)
defer C.free(unsafe.Pointer(uuid))
C.nvml_get_free(*cHandles.nvml, uuid, &memInfo.free, &memInfo.total, &memInfo.used)
if memInfo.err != nil {
slog.Warn("error looking up nvidia GPU memory", "error", C.GoString(memInfo.err))
C.free(unsafe.Pointer(memInfo.err))
} else {
if memInfo.free != 0 && uint64(memInfo.free) > gpuInfo.FreeMemory {
gpuInfo.OSOverhead = uint64(memInfo.free) - gpuInfo.FreeMemory
slog.Info("detected OS VRAM overhead",
"id", gpuInfo.ID,
"library", gpuInfo.Library,
"compute", gpuInfo.Compute,
"driver", fmt.Sprintf("%d.%d", gpuInfo.DriverMajor, gpuInfo.DriverMinor),
"name", gpuInfo.Name,
"overhead", format.HumanBytes2(gpuInfo.OSOverhead),
)
}
}
}
// TODO potentially sort on our own algorithm instead of what the underlying GPU library does...
cudaGPUs = append(cudaGPUs, gpuInfo)
}
}
// Intel
if envconfig.IntelGPU() {
oHandles = initOneAPIHandles()
if oHandles != nil && oHandles.oneapi != nil {
for d := range oHandles.oneapi.num_drivers {
if oHandles.oneapi == nil {
// shouldn't happen
slog.Warn("nil oneapi handle with driver count", "count", int(oHandles.oneapi.num_drivers))
continue
}
devCount := C.oneapi_get_device_count(*oHandles.oneapi, C.int(d))
for i := range devCount {
gpuInfo := OneapiGPUInfo{
GpuInfo: GpuInfo{
Library: "oneapi",
},
driverIndex: int(d),
gpuIndex: int(i),
}
// TODO - split bootstrapping from updating free memory
C.oneapi_check_vram(*oHandles.oneapi, C.int(d), i, &memInfo)
// TODO - convert this to MinimumMemory based on testing...
var totalFreeMem float64 = float64(memInfo.free) * 0.95 // work-around: leave some reserve vram for mkl lib used in ggml-sycl backend.
memInfo.free = C.uint64_t(totalFreeMem)
gpuInfo.TotalMemory = uint64(memInfo.total)
gpuInfo.FreeMemory = uint64(memInfo.free)
gpuInfo.ID = C.GoString(&memInfo.gpu_id[0])
gpuInfo.Name = C.GoString(&memInfo.gpu_name[0])
gpuInfo.DependencyPath = []string{LibOllamaPath}
oneapiGPUs = append(oneapiGPUs, gpuInfo)
}
}
}
}
rocmGPUs, err = AMDGetGPUInfo()
if err != nil {
bootstrapErrors = append(bootstrapErrors, err)
}
bootstrapped = true
if len(cudaGPUs) == 0 && len(rocmGPUs) == 0 && len(oneapiGPUs) == 0 {
slog.Info("no compatible GPUs were discovered")
}
// TODO verify we have runners for the discovered GPUs, filter out any that aren't supported with good error messages
}
// For detected GPUs, load library if not loaded
// Refresh free memory usage
if needRefresh {
mem, err := GetCPUMem()
if err != nil {
slog.Warn("error looking up system memory", "error", err)
} else {
slog.Debug("updating system memory data",
slog.Group(
"before",
"total", format.HumanBytes2(cpus[0].TotalMemory),
"free", format.HumanBytes2(cpus[0].FreeMemory),
"free_swap", format.HumanBytes2(cpus[0].FreeSwap),
),
slog.Group(
"now",
"total", format.HumanBytes2(mem.TotalMemory),
"free", format.HumanBytes2(mem.FreeMemory),
"free_swap", format.HumanBytes2(mem.FreeSwap),
),
)
cpus[0].FreeMemory = mem.FreeMemory
cpus[0].FreeSwap = mem.FreeSwap
}
var memInfo C.mem_info_t
if cHandles == nil && len(cudaGPUs) > 0 {
cHandles = initCudaHandles()
}
for i, gpu := range cudaGPUs {
if cHandles.nvml != nil {
uuid := C.CString(gpu.ID)
defer C.free(unsafe.Pointer(uuid))
C.nvml_get_free(*cHandles.nvml, uuid, &memInfo.free, &memInfo.total, &memInfo.used)
} else if cHandles.cudart != nil {
C.cudart_bootstrap(*cHandles.cudart, C.int(gpu.index), &memInfo)
} else if cHandles.nvcuda != nil {
C.nvcuda_get_free(*cHandles.nvcuda, C.int(gpu.index), &memInfo.free, &memInfo.total)
memInfo.used = memInfo.total - memInfo.free
} else {
// shouldn't happen
slog.Warn("no valid cuda library loaded to refresh vram usage")
break
}
if memInfo.err != nil {
slog.Warn("error looking up nvidia GPU memory", "error", C.GoString(memInfo.err))
C.free(unsafe.Pointer(memInfo.err))
continue
}
if memInfo.free == 0 {
slog.Warn("error looking up nvidia GPU memory")
continue
}
if cHandles.nvml != nil && gpu.OSOverhead > 0 {
// When using the management library update based on recorded overhead
memInfo.free -= C.uint64_t(gpu.OSOverhead)
}
slog.Debug("updating cuda memory data",
"gpu", gpu.ID,
"name", gpu.Name,
"overhead", format.HumanBytes2(gpu.OSOverhead),
slog.Group(
"before",
"total", format.HumanBytes2(gpu.TotalMemory),
"free", format.HumanBytes2(gpu.FreeMemory),
),
slog.Group(
"now",
"total", format.HumanBytes2(uint64(memInfo.total)),
"free", format.HumanBytes2(uint64(memInfo.free)),
"used", format.HumanBytes2(uint64(memInfo.used)),
),
)
cudaGPUs[i].FreeMemory = uint64(memInfo.free)
}
if oHandles == nil && len(oneapiGPUs) > 0 {
oHandles = initOneAPIHandles()
}
for i, gpu := range oneapiGPUs {
if oHandles.oneapi == nil {
// shouldn't happen
slog.Warn("nil oneapi handle with device count", "count", oHandles.deviceCount)
continue
}
C.oneapi_check_vram(*oHandles.oneapi, C.int(gpu.driverIndex), C.int(gpu.gpuIndex), &memInfo)
// TODO - convert this to MinimumMemory based on testing...
var totalFreeMem float64 = float64(memInfo.free) * 0.95 // work-around: leave some reserve vram for mkl lib used in ggml-sycl backend.
memInfo.free = C.uint64_t(totalFreeMem)
oneapiGPUs[i].FreeMemory = uint64(memInfo.free)
}
err = RocmGPUInfoList(rocmGPUs).RefreshFreeMemory()
if err != nil {
slog.Debug("problem refreshing ROCm free memory", "error", err)
}
}
func devInfoToInfoList(devs []ml.DeviceInfo) GpuInfoList {
resp := []GpuInfo{}
for _, gpu := range cudaGPUs {
resp = append(resp, gpu.GpuInfo)
// Our current packaging model places ggml-hip in the main directory
// but keeps rocm in an isolated directory. We have to add it to
// the [LD_LIBRARY_]PATH so ggml-hip will load properly
rocmDir := filepath.Join(LibOllamaPath, "rocm")
if _, err := os.Stat(rocmDir); err != nil {
rocmDir = ""
}
for _, gpu := range rocmGPUs {
resp = append(resp, gpu.GpuInfo)
}
for _, gpu := range oneapiGPUs {
resp = append(resp, gpu.GpuInfo)
for _, dev := range devs {
info := GpuInfo{
DeviceID: dev.DeviceID,
filterID: dev.FilteredID,
Name: dev.Description,
memInfo: memInfo{
TotalMemory: dev.TotalMemory,
FreeMemory: dev.FreeMemory,
},
// TODO can we avoid variant
DependencyPath: dev.LibraryPath,
DriverMajor: dev.DriverMajor,
DriverMinor: dev.DriverMinor,
ComputeMajor: dev.ComputeMajor,
ComputeMinor: dev.ComputeMinor,
}
if dev.Library == "CUDA" || dev.Library == "ROCm" {
info.MinimumMemory = 457 * format.MebiByte
}
if dev.Library == "ROCm" && rocmDir != "" {
info.DependencyPath = append(info.DependencyPath, rocmDir)
}
// TODO any special processing of Vulkan devices?
resp = append(resp, info)
}
if len(resp) == 0 {
resp = append(resp, cpus[0].GpuInfo)
mem, err := GetCPUMem()
if err != nil {
slog.Warn("error looking up system memory", "error", err)
}
resp = append(resp, GpuInfo{
memInfo: mem,
DeviceID: ml.DeviceID{
Library: "cpu",
ID: "0",
},
})
}
return resp
}
func FindGPULibs(baseLibName string, defaultPatterns []string) []string {
// Multiple GPU libraries may exist, and some may not work, so keep trying until we exhaust them
gpuLibPaths := []string{}
slog.Debug("Searching for GPU library", "name", baseLibName)
// search our bundled libraries first
patterns := []string{filepath.Join(LibOllamaPath, baseLibName)}
var ldPaths []string
switch runtime.GOOS {
case "windows":
ldPaths = strings.Split(os.Getenv("PATH"), string(os.PathListSeparator))
case "linux":
ldPaths = strings.Split(os.Getenv("LD_LIBRARY_PATH"), string(os.PathListSeparator))
}
// then search the system's LD_LIBRARY_PATH
for _, p := range ldPaths {
p, err := filepath.Abs(p)
if err != nil {
continue
}
patterns = append(patterns, filepath.Join(p, baseLibName))
}
// finally, search the default patterns provided by the caller
patterns = append(patterns, defaultPatterns...)
slog.Debug("gpu library search", "globs", patterns)
for _, pattern := range patterns {
// Nvidia PhysX known to return bogus results
if strings.Contains(pattern, "PhysX") {
slog.Debug("skipping PhysX cuda library path", "path", pattern)
continue
}
// Ignore glob discovery errors
matches, _ := filepath.Glob(pattern)
for _, match := range matches {
// Resolve any links so we don't try the same lib multiple times
// and weed out any dups across globs
libPath := match
tmp := match
var err error
for ; err == nil; tmp, err = os.Readlink(libPath) {
if !filepath.IsAbs(tmp) {
tmp = filepath.Join(filepath.Dir(libPath), tmp)
}
libPath = tmp
}
new := true
for _, cmp := range gpuLibPaths {
if cmp == libPath {
new = false
break
}
}
if new {
gpuLibPaths = append(gpuLibPaths, libPath)
}
}
}
slog.Debug("discovered GPU libraries", "paths", gpuLibPaths)
return gpuLibPaths
}
// Bootstrap the runtime library
// Returns: num devices, handle, libPath, error
func loadCUDARTMgmt(cudartLibPaths []string) (int, *C.cudart_handle_t, string, error) {
var resp C.cudart_init_resp_t
resp.ch.verbose = getVerboseState()
var err error
for _, libPath := range cudartLibPaths {
lib := C.CString(libPath)
defer C.free(unsafe.Pointer(lib))
C.cudart_init(lib, &resp)
if resp.err != nil {
err = fmt.Errorf("Unable to load cudart library %s: %s", libPath, C.GoString(resp.err))
slog.Debug(err.Error())
C.free(unsafe.Pointer(resp.err))
} else {
err = nil
return int(resp.num_devices), &resp.ch, libPath, err
}
}
return 0, nil, "", err
}
// Bootstrap the driver library
// Returns: num devices, handle, libPath, error
func loadNVCUDAMgmt(nvcudaLibPaths []string) (int, *C.nvcuda_handle_t, string, error) {
var resp C.nvcuda_init_resp_t
resp.ch.verbose = getVerboseState()
var err error
for _, libPath := range nvcudaLibPaths {
lib := C.CString(libPath)
defer C.free(unsafe.Pointer(lib))
C.nvcuda_init(lib, &resp)
if resp.err != nil {
// Decide what log level based on the type of error message to help users understand why
switch resp.cudaErr {
case C.CUDA_ERROR_INSUFFICIENT_DRIVER, C.CUDA_ERROR_SYSTEM_DRIVER_MISMATCH:
err = fmt.Errorf("version mismatch between driver and cuda driver library - reboot or upgrade may be required: library %s", libPath)
slog.Warn(err.Error())
case C.CUDA_ERROR_NO_DEVICE:
err = fmt.Errorf("no nvidia devices detected by library %s", libPath)
slog.Info(err.Error())
case C.CUDA_ERROR_UNKNOWN:
err = fmt.Errorf("unknown error initializing cuda driver library %s: %s. see https://github.com/ollama/ollama/blob/main/docs/troubleshooting.md for more information", libPath, C.GoString(resp.err))
slog.Warn(err.Error())
default:
msg := C.GoString(resp.err)
if strings.Contains(msg, "wrong ELF class") {
slog.Debug("skipping 32bit library", "library", libPath)
} else {
err = fmt.Errorf("Unable to load cudart library %s: %s", libPath, C.GoString(resp.err))
slog.Info(err.Error())
}
}
C.free(unsafe.Pointer(resp.err))
} else {
err = nil
return int(resp.num_devices), &resp.ch, libPath, err
}
}
return 0, nil, "", err
}
// Bootstrap the management library
// Returns: handle, libPath, error
func loadNVMLMgmt(nvmlLibPaths []string) (*C.nvml_handle_t, string, error) {
var resp C.nvml_init_resp_t
resp.ch.verbose = getVerboseState()
var err error
for _, libPath := range nvmlLibPaths {
lib := C.CString(libPath)
defer C.free(unsafe.Pointer(lib))
C.nvml_init(lib, &resp)
if resp.err != nil {
err = fmt.Errorf("Unable to load NVML management library %s: %s", libPath, C.GoString(resp.err))
slog.Info(err.Error())
C.free(unsafe.Pointer(resp.err))
} else {
err = nil
return &resp.ch, libPath, err
}
}
return nil, "", err
}
// bootstrap the Intel GPU library
// Returns: num devices, handle, libPath, error
func loadOneapiMgmt(oneapiLibPaths []string) (int, *C.oneapi_handle_t, string, error) {
var resp C.oneapi_init_resp_t
num_devices := 0
resp.oh.verbose = getVerboseState()
var err error
for _, libPath := range oneapiLibPaths {
lib := C.CString(libPath)
defer C.free(unsafe.Pointer(lib))
C.oneapi_init(lib, &resp)
if resp.err != nil {
err = fmt.Errorf("Unable to load oneAPI management library %s: %s", libPath, C.GoString(resp.err))
slog.Debug(err.Error())
C.free(unsafe.Pointer(resp.err))
} else {
err = nil
for i := range resp.oh.num_drivers {
num_devices += int(C.oneapi_get_device_count(resp.oh, C.int(i)))
}
return num_devices, &resp.oh, libPath, err
}
}
return 0, nil, "", err
}
func getVerboseState() C.uint16_t {
if envconfig.Debug() {
return C.uint16_t(1)
}
return C.uint16_t(0)
}
// Given the list of GPUs this instantiation is targeted for,
// figure out the visible devices environment variable
//
// If different libraries are detected, the first one is what we use
func (l GpuInfoList) GetVisibleDevicesEnv() (string, string) {
func (l GpuInfoList) GetVisibleDevicesEnv() []string {
if len(l) == 0 {
return "", ""
return nil
}
switch l[0].Library {
case "cuda":
return cudaGetVisibleDevicesEnv(l)
case "rocm":
return rocmGetVisibleDevicesEnv(l)
case "oneapi":
return oneapiGetVisibleDevicesEnv(l)
default:
slog.Debug("no filter required for library " + l[0].Library)
return "", ""
res := []string{}
envVar := rocmGetVisibleDevicesEnv(l)
if envVar != "" {
res = append(res, envVar)
}
envVar = vkGetVisibleDevicesEnv(l)
if envVar != "" {
res = append(res, envVar)
}
return res
}
func GetSystemInfo() SystemInfo {
gpus := GetGPUInfo()
gpuMutex.Lock()
defer gpuMutex.Unlock()
discoveryErrors := []string{}
for _, err := range bootstrapErrors {
discoveryErrors = append(discoveryErrors, err.Error())
func rocmGetVisibleDevicesEnv(gpuInfo []GpuInfo) string {
ids := []string{}
for _, info := range gpuInfo {
if info.Library != "ROCm" {
continue
}
// If the devices requires a numeric ID, for filtering purposes, we use the unfiltered ID number
if info.filterID != "" {
ids = append(ids, info.filterID)
} else {
ids = append(ids, info.ID)
}
}
if len(ids) == 0 {
return ""
}
envVar := "ROCR_VISIBLE_DEVICES="
if runtime.GOOS != "linux" {
envVar = "HIP_VISIBLE_DEVICES="
}
// There are 3 potential env vars to use to select GPUs.
// ROCR_VISIBLE_DEVICES supports UUID or numeric but does not work on Windows
// HIP_VISIBLE_DEVICES supports numeric IDs only
// GPU_DEVICE_ORDINAL supports numeric IDs only
return envVar + strings.Join(ids, ",")
}
func vkGetVisibleDevicesEnv(gpuInfo []GpuInfo) string {
ids := []string{}
for _, info := range gpuInfo {
if info.Library != "Vulkan" {
continue
}
if info.filterID != "" {
ids = append(ids, info.filterID)
} else {
ids = append(ids, info.ID)
}
}
if len(ids) == 0 {
return ""
}
envVar := "GGML_VK_VISIBLE_DEVICES="
return envVar + strings.Join(ids, ",")
}
// GetSystemInfo returns the last cached state of the GPUs on the system
func GetSystemInfo() SystemInfo {
deviceMu.Lock()
defer deviceMu.Unlock()
gpus := devInfoToInfoList(devices)
if len(gpus) == 1 && gpus[0].Library == "cpu" {
gpus = []GpuInfo{}
}
return SystemInfo{
System: cpus[0],
GPUs: gpus,
UnsupportedGPUs: unsupportedGPUs,
DiscoveryErrors: discoveryErrors,
System: CPUInfo{
CPUs: GetCPUDetails(),
GpuInfo: GetCPUInfo(),
},
GPUs: gpus,
}
}
func cudaJetpack() string {
if runtime.GOARCH == "arm64" && runtime.GOOS == "linux" {
if CudaTegra != "" {
ver := strings.Split(CudaTegra, ".")
if len(ver) > 0 {
return "jetpack" + ver[0]
}
} else if data, err := os.ReadFile("/etc/nv_tegra_release"); err == nil {
r := regexp.MustCompile(` R(\d+) `)
m := r.FindSubmatch(data)
if len(m) != 2 {
slog.Info("Unexpected format for /etc/nv_tegra_release. Set JETSON_JETPACK to select version")
} else {
if l4t, err := strconv.Atoi(string(m[1])); err == nil {
// Note: mapping from L4t -> JP is inconsistent (can't just subtract 30)
// https://developer.nvidia.com/embedded/jetpack-archive
switch l4t {
case 35:
return "jetpack5"
case 36:
return "jetpack6"
default:
// Newer Jetson systems use the SBSU runtime
slog.Debug("unrecognized L4T version", "nv_tegra_release", string(data))
}
}
}
}
}
return ""
}

View File

@@ -1,5 +1,3 @@
//go:build darwin
package discover
/*
@@ -11,7 +9,6 @@ import "C"
import (
"log/slog"
"runtime"
"syscall"
"github.com/ollama/ollama/format"
@@ -21,39 +18,6 @@ const (
metalMinimumMemory = 512 * format.MebiByte
)
func GetGPUInfo() GpuInfoList {
mem, _ := GetCPUMem()
if runtime.GOARCH == "amd64" {
return []GpuInfo{
{
Library: "cpu",
memInfo: mem,
},
}
}
info := GpuInfo{
Library: "metal",
ID: "0",
}
info.TotalMemory = uint64(C.getRecommendedMaxVRAM())
// TODO is there a way to gather actual allocated video memory? (currentAllocatedSize doesn't work)
info.FreeMemory = info.TotalMemory
info.MinimumMemory = metalMinimumMemory
return []GpuInfo{info}
}
func GetCPUInfo() GpuInfoList {
mem, _ := GetCPUMem()
return []GpuInfo{
{
Library: "cpu",
memInfo: mem,
},
}
}
func GetCPUMem() (memInfo, error) {
return memInfo{
TotalMemory: uint64(C.getPhysicalMemory()),
@@ -62,13 +26,7 @@ func GetCPUMem() (memInfo, error) {
}, nil
}
func (l GpuInfoList) GetVisibleDevicesEnv() (string, string) {
// No-op on darwin
return "", ""
}
func GetSystemInfo() SystemInfo {
mem, _ := GetCPUMem()
func GetCPUDetails() []CPU {
query := "hw.perflevel0.physicalcpu"
perfCores, err := syscall.SysctlUint32(query)
if err != nil {
@@ -81,19 +39,16 @@ func GetSystemInfo() SystemInfo {
query = "hw.logicalcpu"
logicalCores, _ := syscall.SysctlUint32(query)
return SystemInfo{
System: CPUInfo{
GpuInfo: GpuInfo{
memInfo: mem,
},
CPUs: []CPU{
{
CoreCount: int(perfCores + efficiencyCores),
EfficiencyCoreCount: int(efficiencyCores),
ThreadCount: int(logicalCores),
},
},
return []CPU{
{
CoreCount: int(perfCores + efficiencyCores),
EfficiencyCoreCount: int(efficiencyCores),
ThreadCount: int(logicalCores),
},
GPUs: GetGPUInfo(),
}
}
func IsNUMA() bool {
// numa support in ggml is linux only
return false
}

View File

@@ -1,70 +0,0 @@
#ifndef __APPLE__
#ifndef __GPU_INFO_H__
#define __GPU_INFO_H__
#include <stdint.h>
#include <stdio.h>
#include <stdlib.h>
#ifndef _WIN32
#include <dlfcn.h>
#define LOAD_LIBRARY(lib, flags) dlopen(lib, flags)
#define LOAD_SYMBOL(handle, sym) dlsym(handle, sym)
#define LOAD_ERR() strdup(dlerror())
#define UNLOAD_LIBRARY(handle) dlclose(handle)
#else
#include <windows.h>
#define LOAD_LIBRARY(lib, flags) LoadLibrary(lib)
#define LOAD_SYMBOL(handle, sym) GetProcAddress(handle, sym)
#define UNLOAD_LIBRARY(handle) FreeLibrary(handle)
#define LOAD_ERR() ({\
LPSTR messageBuffer = NULL; \
size_t size = FormatMessageA(FORMAT_MESSAGE_ALLOCATE_BUFFER | FORMAT_MESSAGE_FROM_SYSTEM | FORMAT_MESSAGE_IGNORE_INSERTS, \
NULL, GetLastError(), MAKELANGID(LANG_NEUTRAL, SUBLANG_DEFAULT), (LPSTR)&messageBuffer, 0, NULL); \
char *resp = strdup(messageBuffer); \
LocalFree(messageBuffer); \
resp; \
})
#endif
#define LOG(verbose, ...) \
do { \
if (verbose) { \
fprintf(stderr, __VA_ARGS__); \
} \
} while (0)
#ifdef __cplusplus
extern "C" {
#endif
#define GPU_ID_LEN 64
#define GPU_NAME_LEN 96
typedef struct mem_info {
char *err; // If non-nill, caller responsible for freeing
char gpu_id[GPU_ID_LEN];
char gpu_name[GPU_NAME_LEN];
uint64_t total;
uint64_t free;
uint64_t used;
// Compute Capability
int major;
int minor;
int patch;
} mem_info_t;
void cpu_check_ram(mem_info_t *resp);
#ifdef __cplusplus
}
#endif
#include "gpu_info_cudart.h"
#include "gpu_info_nvcuda.h"
#include "gpu_info_nvml.h"
#include "gpu_info_oneapi.h"
#endif // __GPU_INFO_H__
#endif // __APPLE__

View File

@@ -1,183 +0,0 @@
#ifndef __APPLE__ // TODO - maybe consider nvidia support on intel macs?
#include <string.h>
#include "gpu_info_cudart.h"
void cudart_init(char *cudart_lib_path, cudart_init_resp_t *resp) {
cudartReturn_t ret;
resp->err = NULL;
resp->num_devices = 0;
const int buflen = 256;
char buf[buflen + 1];
int i;
struct lookup {
char *s;
void **p;
} l[] = {
{"cudaSetDevice", (void *)&resp->ch.cudaSetDevice},
{"cudaDeviceSynchronize", (void *)&resp->ch.cudaDeviceSynchronize},
{"cudaDeviceReset", (void *)&resp->ch.cudaDeviceReset},
{"cudaMemGetInfo", (void *)&resp->ch.cudaMemGetInfo},
{"cudaGetDeviceCount", (void *)&resp->ch.cudaGetDeviceCount},
{"cudaDeviceGetAttribute", (void *)&resp->ch.cudaDeviceGetAttribute},
{"cudaDriverGetVersion", (void *)&resp->ch.cudaDriverGetVersion},
{"cudaGetDeviceProperties", (void *)&resp->ch.cudaGetDeviceProperties},
{NULL, NULL},
};
resp->ch.handle = LOAD_LIBRARY(cudart_lib_path, RTLD_LAZY);
if (!resp->ch.handle) {
char *msg = LOAD_ERR();
LOG(resp->ch.verbose, "library %s load err: %s\n", cudart_lib_path, msg);
snprintf(buf, buflen,
"Unable to load %s library to query for Nvidia GPUs: %s",
cudart_lib_path, msg);
free(msg);
resp->err = strdup(buf);
return;
}
for (i = 0; l[i].s != NULL; i++) {
*l[i].p = LOAD_SYMBOL(resp->ch.handle, l[i].s);
if (!*(l[i].p)) {
char *msg = LOAD_ERR();
LOG(resp->ch.verbose, "dlerr: %s\n", msg);
UNLOAD_LIBRARY(resp->ch.handle);
resp->ch.handle = NULL;
snprintf(buf, buflen, "symbol lookup for %s failed: %s", l[i].s,
msg);
free(msg);
resp->err = strdup(buf);
return;
}
}
ret = (*resp->ch.cudaSetDevice)(0);
if (ret != CUDART_SUCCESS) {
LOG(resp->ch.verbose, "cudaSetDevice err: %d\n", ret);
UNLOAD_LIBRARY(resp->ch.handle);
resp->ch.handle = NULL;
if (ret == CUDA_ERROR_INSUFFICIENT_DRIVER) {
resp->err = strdup("your nvidia driver is too old or missing. If you have a CUDA GPU please upgrade to run ollama");
return;
}
snprintf(buf, buflen, "cudart init failure: %d", ret);
resp->err = strdup(buf);
return;
}
int version = 0;
cudartDriverVersion_t driverVersion;
driverVersion.major = 0;
driverVersion.minor = 0;
// Report driver version if we're in verbose mode, ignore errors
ret = (*resp->ch.cudaDriverGetVersion)(&version);
if (ret != CUDART_SUCCESS) {
LOG(resp->ch.verbose, "cudaDriverGetVersion failed: %d\n", ret);
} else {
driverVersion.major = version / 1000;
driverVersion.minor = (version - (driverVersion.major * 1000)) / 10;
LOG(resp->ch.verbose, "CUDA driver version: %d-%d\n", driverVersion.major, driverVersion.minor);
}
ret = (*resp->ch.cudaGetDeviceCount)(&resp->num_devices);
if (ret != CUDART_SUCCESS) {
LOG(resp->ch.verbose, "cudaGetDeviceCount err: %d\n", ret);
UNLOAD_LIBRARY(resp->ch.handle);
resp->ch.handle = NULL;
snprintf(buf, buflen, "unable to get device count: %d", ret);
resp->err = strdup(buf);
return;
}
}
void cudart_bootstrap(cudart_handle_t h, int i, mem_info_t *resp) {
resp->err = NULL;
cudartMemory_t memInfo = {0,0,0};
cudartReturn_t ret;
const int buflen = 256;
char buf[buflen + 1];
if (h.handle == NULL) {
resp->err = strdup("cudart handle isn't initialized");
return;
}
ret = (*h.cudaSetDevice)(i);
if (ret != CUDART_SUCCESS) {
snprintf(buf, buflen, "cudart device failed to initialize");
resp->err = strdup(buf);
return;
}
cudaDeviceProp_t props;
ret = (*h.cudaGetDeviceProperties)(&props, i);
if (ret != CUDART_SUCCESS) {
LOG(h.verbose, "[%d] device properties lookup failure: %d\n", i, ret);
snprintf(&resp->gpu_id[0], GPU_ID_LEN, "%d", i);
resp->major = 0;
resp->minor = 0;
} else {
int allNull = 1;
for (int j = 0; j < 16; j++) {
if (props.uuid.bytes[j] != 0) {
allNull = 0;
break;
}
}
if (allNull != 0) {
snprintf(&resp->gpu_id[0], GPU_ID_LEN, "%d", i);
} else {
// GPU-d110a105-ac29-1d54-7b49-9c90440f215b
snprintf(&resp->gpu_id[0], GPU_ID_LEN,
"GPU-%02x%02x%02x%02x-%02x%02x-%02x%02x-%02x%02x-%02x%02x%02x%02x%02x%02x",
props.uuid.bytes[0],
props.uuid.bytes[1],
props.uuid.bytes[2],
props.uuid.bytes[3],
props.uuid.bytes[4],
props.uuid.bytes[5],
props.uuid.bytes[6],
props.uuid.bytes[7],
props.uuid.bytes[8],
props.uuid.bytes[9],
props.uuid.bytes[10],
props.uuid.bytes[11],
props.uuid.bytes[12],
props.uuid.bytes[13],
props.uuid.bytes[14],
props.uuid.bytes[15]
);
}
resp->major = props.major;
resp->minor = props.minor;
// TODO add other useful properties from props
}
ret = (*h.cudaMemGetInfo)(&memInfo.free, &memInfo.total);
if (ret != CUDART_SUCCESS) {
snprintf(buf, buflen, "cudart device memory info lookup failure %d", ret);
resp->err = strdup(buf);
return;
}
resp->total = memInfo.total;
resp->free = memInfo.free;
resp->used = memInfo.used;
LOG(h.verbose, "[%s] CUDA totalMem %lu\n", resp->gpu_id, resp->total);
LOG(h.verbose, "[%s] CUDA freeMem %lu\n", resp->gpu_id, resp->free);
LOG(h.verbose, "[%s] CUDA usedMem %lu\n", resp->gpu_id, resp->used);
LOG(h.verbose, "[%s] Compute Capability %d.%d\n", resp->gpu_id, resp->major, resp->minor);
}
void cudart_release(cudart_handle_t h) {
LOG(h.verbose, "releasing cudart library\n");
UNLOAD_LIBRARY(h.handle);
h.handle = NULL;
}
#endif // __APPLE__

View File

@@ -1,148 +0,0 @@
#ifndef __APPLE__
#ifndef __GPU_INFO_CUDART_H__
#define __GPU_INFO_CUDART_H__
#include "gpu_info.h"
// Just enough typedef's to dlopen/dlsym for memory information
typedef enum cudartReturn_enum {
CUDART_SUCCESS = 0,
CUDART_ERROR_INVALID_VALUE = 1,
CUDART_ERROR_MEMORY_ALLOCATION = 2,
CUDART_ERROR_INSUFFICIENT_DRIVER = 35,
// Other values omitted for now...
} cudartReturn_t;
typedef enum cudartDeviceAttr_enum {
cudartDevAttrComputeCapabilityMajor = 75,
cudartDevAttrComputeCapabilityMinor = 76,
// TODO - not yet wired up but may be useful for Jetson or other
// integrated GPU scenarios with shared memory
cudaDevAttrIntegrated = 18
} cudartDeviceAttr_t;
typedef void *cudartDevice_t; // Opaque is sufficient
typedef struct cudartMemory_st {
size_t total;
size_t free;
size_t used;
} cudartMemory_t;
typedef struct cudartDriverVersion {
int major;
int minor;
} cudartDriverVersion_t;
typedef struct cudaUUID {
unsigned char bytes[16];
} cudaUUID_t;
typedef struct cudaDeviceProp {
char name[256]; /**< ASCII string identifying device */
cudaUUID_t uuid; /**< 16-byte unique identifier */
char luid[8]; /**< 8-byte locally unique identifier. Value is undefined on TCC and non-Windows platforms */
unsigned int luidDeviceNodeMask; /**< LUID device node mask. Value is undefined on TCC and non-Windows platforms */
size_t totalGlobalMem; /**< Global memory available on device in bytes */
size_t sharedMemPerBlock; /**< Shared memory available per block in bytes */
int regsPerBlock; /**< 32-bit registers available per block */
int warpSize; /**< Warp size in threads */
size_t memPitch; /**< Maximum pitch in bytes allowed by memory copies */
int maxThreadsPerBlock; /**< Maximum number of threads per block */
int maxThreadsDim[3]; /**< Maximum size of each dimension of a block */
int maxGridSize[3]; /**< Maximum size of each dimension of a grid */
int clockRate; /**< Clock frequency in kilohertz */
size_t totalConstMem; /**< Constant memory available on device in bytes */
int major; /**< Major compute capability */
int minor; /**< Minor compute capability */
size_t textureAlignment; /**< Alignment requirement for textures */
size_t texturePitchAlignment; /**< Pitch alignment requirement for texture references bound to pitched memory */
int deviceOverlap; /**< Device can concurrently copy memory and execute a kernel. Deprecated. Use instead asyncEngineCount. */
int multiProcessorCount; /**< Number of multiprocessors on device */
int kernelExecTimeoutEnabled; /**< Specified whether there is a run time limit on kernels */
int integrated; /**< Device is integrated as opposed to discrete */
int canMapHostMemory; /**< Device can map host memory with cudaHostAlloc/cudaHostGetDevicePointer */
int computeMode; /**< Compute mode (See ::cudaComputeMode) */
int maxTexture1D; /**< Maximum 1D texture size */
int maxTexture1DMipmap; /**< Maximum 1D mipmapped texture size */
int maxTexture1DLinear; /**< Deprecated, do not use. Use cudaDeviceGetTexture1DLinearMaxWidth() or cuDeviceGetTexture1DLinearMaxWidth() instead. */
int maxTexture2D[2]; /**< Maximum 2D texture dimensions */
int maxTexture2DMipmap[2]; /**< Maximum 2D mipmapped texture dimensions */
int maxTexture2DLinear[3]; /**< Maximum dimensions (width, height, pitch) for 2D textures bound to pitched memory */
int maxTexture2DGather[2]; /**< Maximum 2D texture dimensions if texture gather operations have to be performed */
int maxTexture3D[3]; /**< Maximum 3D texture dimensions */
int maxTexture3DAlt[3]; /**< Maximum alternate 3D texture dimensions */
int maxTextureCubemap; /**< Maximum Cubemap texture dimensions */
int maxTexture1DLayered[2]; /**< Maximum 1D layered texture dimensions */
int maxTexture2DLayered[3]; /**< Maximum 2D layered texture dimensions */
int maxTextureCubemapLayered[2];/**< Maximum Cubemap layered texture dimensions */
int maxSurface1D; /**< Maximum 1D surface size */
int maxSurface2D[2]; /**< Maximum 2D surface dimensions */
int maxSurface3D[3]; /**< Maximum 3D surface dimensions */
int maxSurface1DLayered[2]; /**< Maximum 1D layered surface dimensions */
int maxSurface2DLayered[3]; /**< Maximum 2D layered surface dimensions */
int maxSurfaceCubemap; /**< Maximum Cubemap surface dimensions */
int maxSurfaceCubemapLayered[2];/**< Maximum Cubemap layered surface dimensions */
size_t surfaceAlignment; /**< Alignment requirements for surfaces */
int concurrentKernels; /**< Device can possibly execute multiple kernels concurrently */
int ECCEnabled; /**< Device has ECC support enabled */
int pciBusID; /**< PCI bus ID of the device */
int pciDeviceID; /**< PCI device ID of the device */
int pciDomainID; /**< PCI domain ID of the device */
int tccDriver; /**< 1 if device is a Tesla device using TCC driver, 0 otherwise */
int asyncEngineCount; /**< Number of asynchronous engines */
int unifiedAddressing; /**< Device shares a unified address space with the host */
int memoryClockRate; /**< Peak memory clock frequency in kilohertz */
int memoryBusWidth; /**< Global memory bus width in bits */
int l2CacheSize; /**< Size of L2 cache in bytes */
int persistingL2CacheMaxSize; /**< Device's maximum l2 persisting lines capacity setting in bytes */
int maxThreadsPerMultiProcessor;/**< Maximum resident threads per multiprocessor */
int streamPrioritiesSupported; /**< Device supports stream priorities */
int globalL1CacheSupported; /**< Device supports caching globals in L1 */
int localL1CacheSupported; /**< Device supports caching locals in L1 */
size_t sharedMemPerMultiprocessor; /**< Shared memory available per multiprocessor in bytes */
int regsPerMultiprocessor; /**< 32-bit registers available per multiprocessor */
int managedMemory; /**< Device supports allocating managed memory on this system */
int isMultiGpuBoard; /**< Device is on a multi-GPU board */
int multiGpuBoardGroupID; /**< Unique identifier for a group of devices on the same multi-GPU board */
int hostNativeAtomicSupported; /**< Link between the device and the host supports native atomic operations */
int singleToDoublePrecisionPerfRatio; /**< Ratio of single precision performance (in floating-point operations per second) to double precision performance */
int pageableMemoryAccess; /**< Device supports coherently accessing pageable memory without calling cudaHostRegister on it */
int concurrentManagedAccess; /**< Device can coherently access managed memory concurrently with the CPU */
int computePreemptionSupported; /**< Device supports Compute Preemption */
int canUseHostPointerForRegisteredMem; /**< Device can access host registered memory at the same virtual address as the CPU */
int cooperativeLaunch; /**< Device supports launching cooperative kernels via ::cudaLaunchCooperativeKernel */
int cooperativeMultiDeviceLaunch; /**< Deprecated, cudaLaunchCooperativeKernelMultiDevice is deprecated. */
size_t sharedMemPerBlockOptin; /**< Per device maximum shared memory per block usable by special opt in */
int pageableMemoryAccessUsesHostPageTables; /**< Device accesses pageable memory via the host's page tables */
int directManagedMemAccessFromHost; /**< Host can directly access managed memory on the device without migration. */
int maxBlocksPerMultiProcessor; /**< Maximum number of resident blocks per multiprocessor */
int accessPolicyMaxWindowSize; /**< The maximum value of ::cudaAccessPolicyWindow::num_bytes. */
size_t reservedSharedMemPerBlock; /**< Shared memory reserved by CUDA driver per block in bytes */
} cudaDeviceProp_t;
typedef struct cudart_handle {
void *handle;
uint16_t verbose;
cudartReturn_t (*cudaSetDevice)(int device);
cudartReturn_t (*cudaDeviceSynchronize)(void);
cudartReturn_t (*cudaDeviceReset)(void);
cudartReturn_t (*cudaMemGetInfo)(size_t *, size_t *);
cudartReturn_t (*cudaGetDeviceCount)(int *);
cudartReturn_t (*cudaDeviceGetAttribute)(int* value, cudartDeviceAttr_t attr, int device);
cudartReturn_t (*cudaDriverGetVersion) (int *driverVersion);
cudartReturn_t (*cudaGetDeviceProperties) (cudaDeviceProp_t* prop, int device);
} cudart_handle_t;
typedef struct cudart_init_resp {
char *err; // If err is non-null handle is invalid
cudart_handle_t ch;
int num_devices;
} cudart_init_resp_t;
void cudart_init(char *cudart_lib_path, cudart_init_resp_t *resp);
void cudart_bootstrap(cudart_handle_t ch, int device_id, mem_info_t *resp);
// TODO - if we keep this library longer term, add cudart_get_free
void cudart_release(cudart_handle_t ch);
#endif // __GPU_INFO_CUDART_H__
#endif // __APPLE__

View File

@@ -1,250 +0,0 @@
#ifndef __APPLE__ // TODO - maybe consider nvidia support on intel macs?
#include <string.h>
#include "gpu_info_nvcuda.h"
void nvcuda_init(char *nvcuda_lib_path, nvcuda_init_resp_t *resp) {
LOG(resp->ch.verbose, "initializing %s\n", nvcuda_lib_path);
CUresult ret;
resp->err = NULL;
resp->num_devices = 0;
resp->cudaErr = CUDA_SUCCESS;
const int buflen = 256;
char buf[buflen + 1];
int i;
struct lookup {
char *s;
void **p;
} l[] = {
{"cuInit", (void *)&resp->ch.cuInit},
{"cuDriverGetVersion", (void *)&resp->ch.cuDriverGetVersion},
{"cuDeviceGetCount", (void *)&resp->ch.cuDeviceGetCount},
{"cuDeviceGet", (void *)&resp->ch.cuDeviceGet},
{"cuDeviceGetAttribute", (void *)&resp->ch.cuDeviceGetAttribute},
{"cuDeviceGetUuid", (void *)&resp->ch.cuDeviceGetUuid},
{"cuDeviceGetName", (void *)&resp->ch.cuDeviceGetName},
{"cuCtxCreate_v3", (void *)&resp->ch.cuCtxCreate_v3},
{"cuMemGetInfo_v2", (void *)&resp->ch.cuMemGetInfo_v2},
{"cuCtxDestroy", (void *)&resp->ch.cuCtxDestroy},
{NULL, NULL},
};
resp->ch.handle = LOAD_LIBRARY(nvcuda_lib_path, RTLD_LAZY);
if (!resp->ch.handle) {
char *msg = LOAD_ERR();
LOG(resp->ch.verbose, "library %s load err: %s\n", nvcuda_lib_path, msg);
snprintf(buf, buflen,
"Unable to load %s library to query for Nvidia GPUs: %s",
nvcuda_lib_path, msg);
free(msg);
resp->err = strdup(buf);
resp->cudaErr = -1;
return;
}
for (i = 0; l[i].s != NULL; i++) {
*l[i].p = LOAD_SYMBOL(resp->ch.handle, l[i].s);
if (!*(l[i].p)) {
char *msg = LOAD_ERR();
LOG(resp->ch.verbose, "dlerr: %s\n", msg);
UNLOAD_LIBRARY(resp->ch.handle);
resp->ch.handle = NULL;
snprintf(buf, buflen, "symbol lookup for %s failed: %s", l[i].s,
msg);
free(msg);
resp->err = strdup(buf);
resp->cudaErr = -1;
return;
}
LOG(resp->ch.verbose, "dlsym: %s - %p\n", l[i].s, *l[i].p);
}
LOG(resp->ch.verbose, "calling cuInit\n");
ret = (*resp->ch.cuInit)(0);
if (ret != CUDA_SUCCESS) {
LOG(resp->ch.verbose, "cuInit err: %d\n", ret);
UNLOAD_LIBRARY(resp->ch.handle);
resp->ch.handle = NULL;
snprintf(buf, buflen, "cuda driver library init failure: %d", ret);
resp->err = strdup(buf);
resp->cudaErr = ret;
return;
}
int version = 0;
resp->ch.driver_major = 0;
resp->ch.driver_minor = 0;
// Report driver version if we're in verbose mode, ignore errors
LOG(resp->ch.verbose, "calling cuDriverGetVersion\n");
ret = (*resp->ch.cuDriverGetVersion)(&version);
if (ret != CUDA_SUCCESS) {
LOG(resp->ch.verbose, "cuDriverGetVersion failed: %d\n", ret);
} else {
LOG(resp->ch.verbose, "raw version 0x%x\n", version);
resp->ch.driver_major = version / 1000;
resp->ch.driver_minor = (version - (resp->ch.driver_major * 1000)) / 10;
LOG(resp->ch.verbose, "CUDA driver version: %d.%d\n", resp->ch.driver_major, resp->ch.driver_minor);
}
LOG(resp->ch.verbose, "calling cuDeviceGetCount\n");
ret = (*resp->ch.cuDeviceGetCount)(&resp->num_devices);
if (ret != CUDA_SUCCESS) {
LOG(resp->ch.verbose, "cuDeviceGetCount err: %d\n", ret);
UNLOAD_LIBRARY(resp->ch.handle);
resp->ch.handle = NULL;
snprintf(buf, buflen, "unable to get device count: %d", ret);
resp->err = strdup(buf);
resp->cudaErr = ret;
return;
}
LOG(resp->ch.verbose, "device count %d\n", resp->num_devices);
}
const int buflen = 256;
void nvcuda_bootstrap(nvcuda_handle_t h, int i, mem_info_t *resp) {
resp->err = NULL;
nvcudaMemory_t memInfo = {0,0};
CUresult ret;
CUdevice device = -1;
CUcontext ctx = NULL;
char buf[buflen + 1];
CUuuid uuid = {0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0};
if (h.handle == NULL) {
resp->err = strdup("cuda driver library handle isn't initialized");
return;
}
ret = (*h.cuDeviceGet)(&device, i);
if (ret != CUDA_SUCCESS) {
snprintf(buf, buflen, "cuda driver library device failed to initialize");
resp->err = strdup(buf);
return;
}
int major = 0;
int minor = 0;
ret = (*h.cuDeviceGetAttribute)(&major, CU_DEVICE_ATTRIBUTE_COMPUTE_CAPABILITY_MAJOR, device);
if (ret != CUDA_SUCCESS) {
LOG(h.verbose, "[%d] device major lookup failure: %d\n", i, ret);
} else {
ret = (*h.cuDeviceGetAttribute)(&minor, CU_DEVICE_ATTRIBUTE_COMPUTE_CAPABILITY_MINOR, device);
if (ret != CUDA_SUCCESS) {
LOG(h.verbose, "[%d] device minor lookup failure: %d\n", i, ret);
} else {
resp->minor = minor;
resp->major = major;
}
}
ret = (*h.cuDeviceGetUuid)(&uuid, device);
if (ret != CUDA_SUCCESS) {
LOG(h.verbose, "[%d] device uuid lookup failure: %d\n", i, ret);
snprintf(&resp->gpu_id[0], GPU_ID_LEN, "%d", i);
} else {
// GPU-d110a105-ac29-1d54-7b49-9c90440f215b
snprintf(&resp->gpu_id[0], GPU_ID_LEN,
"GPU-%02x%02x%02x%02x-%02x%02x-%02x%02x-%02x%02x-%02x%02x%02x%02x%02x%02x",
uuid.bytes[0],
uuid.bytes[1],
uuid.bytes[2],
uuid.bytes[3],
uuid.bytes[4],
uuid.bytes[5],
uuid.bytes[6],
uuid.bytes[7],
uuid.bytes[8],
uuid.bytes[9],
uuid.bytes[10],
uuid.bytes[11],
uuid.bytes[12],
uuid.bytes[13],
uuid.bytes[14],
uuid.bytes[15]
);
}
ret = (*h.cuDeviceGetName)(&resp->gpu_name[0], GPU_NAME_LEN, device);
if (ret != CUDA_SUCCESS) {
LOG(h.verbose, "[%d] device name lookup failure: %d\n", i, ret);
resp->gpu_name[0] = '\0';
}
// To get memory we have to set (and release) a context
ret = (*h.cuCtxCreate_v3)(&ctx, NULL, 0, 0, device);
if (ret != CUDA_SUCCESS) {
snprintf(buf, buflen, "cuda driver library failed to get device context %d", ret);
resp->err = strdup(buf);
return;
}
ret = (*h.cuMemGetInfo_v2)(&memInfo.free, &memInfo.total);
if (ret != CUDA_SUCCESS) {
snprintf(buf, buflen, "cuda driver library device memory info lookup failure %d", ret);
resp->err = strdup(buf);
// Best effort on failure...
(*h.cuCtxDestroy)(ctx);
return;
}
resp->total = memInfo.total;
resp->free = memInfo.free;
LOG(h.verbose, "[%s] CUDA totalMem %lu mb\n", resp->gpu_id, resp->total / 1024 / 1024);
LOG(h.verbose, "[%s] CUDA freeMem %lu mb\n", resp->gpu_id, resp->free / 1024 / 1024);
LOG(h.verbose, "[%s] Compute Capability %d.%d\n", resp->gpu_id, resp->major, resp->minor);
ret = (*h.cuCtxDestroy)(ctx);
if (ret != CUDA_SUCCESS) {
LOG(1, "cuda driver library failed to release device context %d", ret);
}
}
void nvcuda_get_free(nvcuda_handle_t h, int i, uint64_t *free, uint64_t *total) {
CUresult ret;
CUcontext ctx = NULL;
CUdevice device = -1;
*free = 0;
*total = 0;
ret = (*h.cuDeviceGet)(&device, i);
if (ret != CUDA_SUCCESS) {
LOG(1, "cuda driver library device failed to initialize");
return;
}
// To get memory we have to set (and release) a context
ret = (*h.cuCtxCreate_v3)(&ctx, NULL, 0, 0, device);
if (ret != CUDA_SUCCESS) {
LOG(1, "cuda driver library failed to get device context %d", ret);
return;
}
ret = (*h.cuMemGetInfo_v2)(free, total);
if (ret != CUDA_SUCCESS) {
LOG(1, "cuda driver library device memory info lookup failure %d", ret);
// Best effort on failure...
(*h.cuCtxDestroy)(ctx);
return;
}
ret = (*h.cuCtxDestroy)(ctx);
if (ret != CUDA_SUCCESS) {
LOG(1, "cuda driver library failed to release device context %d", ret);
}
}
void nvcuda_release(nvcuda_handle_t h) {
LOG(h.verbose, "releasing cuda driver library\n");
UNLOAD_LIBRARY(h.handle);
// TODO and other context release logic?
h.handle = NULL;
}
#endif // __APPLE__

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@@ -1,79 +0,0 @@
#ifndef __APPLE__
#ifndef __GPU_INFO_NVCUDA_H__
#define __GPU_INFO_NVCUDA_H__
#include "gpu_info.h"
// Just enough typedef's to dlopen/dlsym for memory information
typedef enum cudaError_enum {
CUDA_SUCCESS = 0,
CUDA_ERROR_INVALID_VALUE = 1,
CUDA_ERROR_OUT_OF_MEMORY = 2,
CUDA_ERROR_NOT_INITIALIZED = 3,
CUDA_ERROR_INSUFFICIENT_DRIVER = 35,
CUDA_ERROR_NO_DEVICE = 100,
CUDA_ERROR_SYSTEM_DRIVER_MISMATCH = 803,
CUDA_ERROR_UNKNOWN = 999,
// Other values omitted for now...
} CUresult;
typedef enum CUdevice_attribute_enum {
CU_DEVICE_ATTRIBUTE_COMPUTE_CAPABILITY_MAJOR = 75,
CU_DEVICE_ATTRIBUTE_COMPUTE_CAPABILITY_MINOR = 76,
// TODO - not yet wired up but may be useful for Jetson or other
// integrated GPU scenarios with shared memory
CU_DEVICE_ATTRIBUTE_INTEGRATED = 18
} CUdevice_attribute;
typedef void *nvcudaDevice_t; // Opaque is sufficient
typedef struct nvcudaMemory_st {
uint64_t total;
uint64_t free;
} nvcudaMemory_t;
typedef struct nvcudaDriverVersion {
int major;
int minor;
} nvcudaDriverVersion_t;
typedef struct CUuuid_st {
unsigned char bytes[16];
} CUuuid;
typedef int CUdevice;
typedef void* CUcontext;
typedef struct nvcuda_handle {
void *handle;
uint16_t verbose;
int driver_major;
int driver_minor;
CUresult (*cuInit)(unsigned int Flags);
CUresult (*cuDriverGetVersion)(int *driverVersion);
CUresult (*cuDeviceGetCount)(int *);
CUresult (*cuDeviceGet)(CUdevice* device, int ordinal);
CUresult (*cuDeviceGetAttribute)(int* pi, CUdevice_attribute attrib, CUdevice dev);
CUresult (*cuDeviceGetUuid)(CUuuid* uuid, CUdevice dev); // signature compatible with cuDeviceGetUuid_v2
CUresult (*cuDeviceGetName)(char *name, int len, CUdevice dev);
// Context specific aspects
CUresult (*cuCtxCreate_v3)(CUcontext* pctx, void *params, int len, unsigned int flags, CUdevice dev);
CUresult (*cuMemGetInfo_v2)(uint64_t* free, uint64_t* total);
CUresult (*cuCtxDestroy)(CUcontext ctx);
} nvcuda_handle_t;
typedef struct nvcuda_init_resp {
char *err; // If err is non-null handle is invalid
nvcuda_handle_t ch;
int num_devices;
CUresult cudaErr;
} nvcuda_init_resp_t;
void nvcuda_init(char *nvcuda_lib_path, nvcuda_init_resp_t *resp);
void nvcuda_bootstrap(nvcuda_handle_t ch, int device_id, mem_info_t *resp);
void nvcuda_get_free(nvcuda_handle_t ch, int device_id, uint64_t *free, uint64_t *total);
void nvcuda_release(nvcuda_handle_t ch);
#endif // __GPU_INFO_NVCUDA_H__
#endif // __APPLE__

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@@ -1,104 +0,0 @@
#ifndef __APPLE__ // TODO - maybe consider nvidia support on intel macs?
#include <string.h>
#include "gpu_info_nvml.h"
void nvml_init(char *nvml_lib_path, nvml_init_resp_t *resp) {
nvmlReturn_t ret;
resp->err = NULL;
const int buflen = 256;
char buf[buflen + 1];
int i;
struct lookup {
char *s;
void **p;
} l[] = {
{"nvmlInit_v2", (void *)&resp->ch.nvmlInit_v2},
{"nvmlShutdown", (void *)&resp->ch.nvmlShutdown},
{"nvmlDeviceGetHandleByUUID", (void *)&resp->ch.nvmlDeviceGetHandleByUUID},
{"nvmlDeviceGetMemoryInfo", (void *)&resp->ch.nvmlDeviceGetMemoryInfo},
{NULL, NULL},
};
resp->ch.handle = LOAD_LIBRARY(nvml_lib_path, RTLD_LAZY);
if (!resp->ch.handle) {
char *msg = LOAD_ERR();
LOG(resp->ch.verbose, "library %s load err: %s\n", nvml_lib_path, msg);
snprintf(buf, buflen,
"Unable to load %s library to query for Nvidia GPUs: %s",
nvml_lib_path, msg);
free(msg);
resp->err = strdup(buf);
return;
}
// TODO once we've squashed the remaining corner cases remove this log
// LOG(resp->ch.verbose, "wiring nvidia management library functions in %s\n", nvml_lib_path);
for (i = 0; l[i].s != NULL; i++) {
// TODO once we've squashed the remaining corner cases remove this log
// LOG(resp->ch.verbose, "dlsym: %s\n", l[i].s);
*l[i].p = LOAD_SYMBOL(resp->ch.handle, l[i].s);
if (!*(l[i].p)) {
resp->ch.handle = NULL;
char *msg = LOAD_ERR();
LOG(resp->ch.verbose, "dlerr: %s\n", msg);
UNLOAD_LIBRARY(resp->ch.handle);
snprintf(buf, buflen, "symbol lookup for %s failed: %s", l[i].s,
msg);
free(msg);
resp->err = strdup(buf);
return;
}
}
ret = (*resp->ch.nvmlInit_v2)();
if (ret != NVML_SUCCESS) {
LOG(resp->ch.verbose, "nvmlInit_v2 err: %d\n", ret);
UNLOAD_LIBRARY(resp->ch.handle);
resp->ch.handle = NULL;
snprintf(buf, buflen, "nvml vram init failure: %d", ret);
resp->err = strdup(buf);
return;
}
}
void nvml_get_free(nvml_handle_t h, char *uuid, uint64_t *free, uint64_t *total, uint64_t *used) {
nvmlDevice_t device;
nvmlMemory_t memInfo = {0};
nvmlReturn_t ret;
ret = (*h.nvmlDeviceGetHandleByUUID)((const char *)(uuid), &device);
if (ret != NVML_SUCCESS) {
LOG(1, "unable to get device handle %s: %d", uuid, ret);
*free = 0;
return;
}
ret = (*h.nvmlDeviceGetMemoryInfo)(device, &memInfo);
if (ret != NVML_SUCCESS) {
LOG(1, "device memory info lookup failure %s: %d", uuid, ret);
*free = 0;
return;
}
*free = memInfo.free;
*total = memInfo.total;
*used = memInfo.used;
}
void nvml_release(nvml_handle_t h) {
LOG(h.verbose, "releasing nvml library\n");
nvmlReturn_t ret;
ret = (*h.nvmlShutdown)();
if (ret != NVML_SUCCESS) {
LOG(1, "error during nvmlShutdown %d", ret);
}
UNLOAD_LIBRARY(h.handle);
h.handle = NULL;
}
#endif // __APPLE__

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@@ -1,48 +0,0 @@
#ifndef __APPLE__
#ifndef __GPU_INFO_NVML_H__
#define __GPU_INFO_NVML_H__
#include "gpu_info.h"
// Just enough typedef's to dlopen/dlsym for memory information
typedef enum nvmlReturn_enum {
NVML_SUCCESS = 0,
// Other values omitted for now...
} nvmlReturn_t;
typedef void *nvmlDevice_t; // Opaque is sufficient
typedef struct nvmlMemory_st {
unsigned long long total;
unsigned long long free;
unsigned long long used;
} nvmlMemory_t;
typedef enum nvmlBrandType_enum
{
NVML_BRAND_UNKNOWN = 0,
} nvmlBrandType_t;
typedef struct nvml_handle {
void *handle;
uint16_t verbose;
nvmlReturn_t (*nvmlInit_v2)(void);
nvmlReturn_t (*nvmlShutdown)(void);
nvmlReturn_t (*nvmlDeviceGetHandleByUUID)(const char *, nvmlDevice_t *);
nvmlReturn_t (*nvmlDeviceGetMemoryInfo)(nvmlDevice_t, nvmlMemory_t *);
} nvml_handle_t;
typedef struct nvml_init_resp {
char *err; // If err is non-null handle is invalid
nvml_handle_t ch;
} nvml_init_resp_t;
typedef struct nvml_compute_capability {
char *err;
int major;
int minor;
} nvml_compute_capability_t;
void nvml_init(char *nvml_lib_path, nvml_init_resp_t *resp);
void nvml_get_free(nvml_handle_t ch, char *uuid, uint64_t *free, uint64_t *total, uint64_t *used);
void nvml_release(nvml_handle_t ch);
#endif // __GPU_INFO_NVML_H__
#endif // __APPLE__

View File

@@ -1,259 +0,0 @@
#ifndef __APPLE__
#include "gpu_info_oneapi.h"
#include <string.h>
void oneapi_init(char *oneapi_lib_path, oneapi_init_resp_t *resp) {
ze_result_t ret;
resp->err = NULL;
resp->oh.devices = NULL;
resp->oh.num_devices = NULL;
resp->oh.drivers = NULL;
resp->oh.num_drivers = 0;
const int buflen = 256;
char buf[buflen + 1];
int i, d;
struct lookup {
char *s;
void **p;
} l[] = {
{"zesInit", (void *)&resp->oh.zesInit},
{"zesDriverGet", (void *)&resp->oh.zesDriverGet},
{"zesDeviceGet", (void *)&resp->oh.zesDeviceGet},
{"zesDeviceGetProperties", (void *)&resp->oh.zesDeviceGetProperties},
{"zesDeviceEnumMemoryModules",
(void *)&resp->oh.zesDeviceEnumMemoryModules},
{"zesMemoryGetProperties", (void *)&resp->oh.zesMemoryGetProperties},
{"zesMemoryGetState", (void *)&resp->oh.zesMemoryGetState},
{NULL, NULL},
};
resp->oh.handle = LOAD_LIBRARY(oneapi_lib_path, RTLD_LAZY);
if (!resp->oh.handle) {
char *msg = LOAD_ERR();
snprintf(buf, buflen,
"Unable to load %s library to query for Intel GPUs: %s\n",
oneapi_lib_path, msg);
free(msg);
resp->err = strdup(buf);
return;
}
// TODO once we've squashed the remaining corner cases remove this log
LOG(resp->oh.verbose,
"wiring Level-Zero management library functions in %s\n",
oneapi_lib_path);
for (i = 0; l[i].s != NULL; i++) {
// TODO once we've squashed the remaining corner cases remove this log
LOG(resp->oh.verbose, "dlsym: %s\n", l[i].s);
*l[i].p = LOAD_SYMBOL(resp->oh.handle, l[i].s);
if (!*(l[i].p)) {
resp->oh.handle = NULL;
char *msg = LOAD_ERR();
LOG(resp->oh.verbose, "dlerr: %s\n", msg);
UNLOAD_LIBRARY(resp->oh.handle);
snprintf(buf, buflen, "symbol lookup for %s failed: %s", l[i].s, msg);
free(msg);
resp->err = strdup(buf);
return;
}
}
LOG(resp->oh.verbose, "calling zesInit\n");
ret = (*resp->oh.zesInit)(0);
if (ret != ZE_RESULT_SUCCESS) {
LOG(resp->oh.verbose, "zesInit err: %x\n", ret);
snprintf(buf, buflen, "oneapi vram init failure: %x", ret);
resp->err = strdup(buf);
oneapi_release(resp->oh);
return;
}
LOG(resp->oh.verbose, "calling zesDriverGet\n");
ret = (*resp->oh.zesDriverGet)(&resp->oh.num_drivers, NULL);
if (ret != ZE_RESULT_SUCCESS) {
LOG(resp->oh.verbose, "zesDriverGet err: %x\n", ret);
snprintf(buf, buflen, "unable to get driver count: %x", ret);
resp->err = strdup(buf);
oneapi_release(resp->oh);
return;
}
LOG(resp->oh.verbose, "oneapi driver count: %d\n", resp->oh.num_drivers);
resp->oh.drivers = malloc(resp->oh.num_drivers * sizeof(zes_driver_handle_t));
resp->oh.num_devices = malloc(resp->oh.num_drivers * sizeof(uint32_t));
memset(&resp->oh.num_devices[0], 0, resp->oh.num_drivers * sizeof(uint32_t));
resp->oh.devices =
malloc(resp->oh.num_drivers * sizeof(zes_device_handle_t *));
ret = (*resp->oh.zesDriverGet)(&resp->oh.num_drivers, &resp->oh.drivers[0]);
if (ret != ZE_RESULT_SUCCESS) {
LOG(resp->oh.verbose, "zesDriverGet err: %x\n", ret);
snprintf(buf, buflen, "unable to get driver count: %x", ret);
resp->err = strdup(buf);
oneapi_release(resp->oh);
return;
}
for (d = 0; d < resp->oh.num_drivers; d++) {
LOG(resp->oh.verbose, "calling zesDeviceGet count %d: %p\n", d, resp->oh.drivers[d]);
ret = (*resp->oh.zesDeviceGet)(resp->oh.drivers[d],
&resp->oh.num_devices[d], NULL);
if (ret != ZE_RESULT_SUCCESS) {
LOG(resp->oh.verbose, "zesDeviceGet err: %x\n", ret);
snprintf(buf, buflen, "unable to get device count: %x", ret);
resp->err = strdup(buf);
oneapi_release(resp->oh);
return;
}
resp->oh.devices[d] =
malloc(resp->oh.num_devices[d] * sizeof(zes_device_handle_t));
ret = (*resp->oh.zesDeviceGet)(
resp->oh.drivers[d], &resp->oh.num_devices[d], resp->oh.devices[d]);
if (ret != ZE_RESULT_SUCCESS) {
LOG(resp->oh.verbose, "zesDeviceGet err: %x\n", ret);
snprintf(buf, buflen, "unable to get device count: %x", ret);
resp->err = strdup(buf);
oneapi_release(resp->oh);
return;
}
}
return;
}
void oneapi_check_vram(oneapi_handle_t h, int driver, int device,
mem_info_t *resp) {
ze_result_t ret;
resp->err = NULL;
uint64_t totalMem = 0;
uint64_t usedMem = 0;
const int buflen = 256;
char buf[buflen + 1];
int i, d, m;
if (h.handle == NULL) {
resp->err = strdup("Level-Zero handle not initialized");
return;
}
if (driver > h.num_drivers || device > h.num_devices[driver]) {
resp->err = strdup("driver of device index out of bounds");
return;
}
resp->total = 0;
resp->free = 0;
zes_device_ext_properties_t ext_props;
ext_props.stype = ZES_STRUCTURE_TYPE_DEVICE_EXT_PROPERTIES;
ext_props.pNext = NULL;
zes_device_properties_t props;
props.stype = ZES_STRUCTURE_TYPE_DEVICE_PROPERTIES;
props.pNext = &ext_props;
ret = (*h.zesDeviceGetProperties)(h.devices[driver][device], &props);
if (ret != ZE_RESULT_SUCCESS) {
snprintf(buf, buflen, "unable to get device properties: %d", ret);
resp->err = strdup(buf);
return;
}
snprintf(&resp->gpu_name[0], GPU_NAME_LEN, "%s", props.modelName);
// TODO this needs to map to ONEAPI_DEVICE_SELECTOR syntax
// (this is probably wrong...)
// TODO - the driver isn't included - what if there are multiple drivers?
snprintf(&resp->gpu_id[0], GPU_ID_LEN, "%d", device);
if (h.verbose) {
// When in verbose mode, report more information about
// the card we discover.
LOG(h.verbose, "[%d:%d] oneAPI device name: %s\n", driver, device,
props.modelName);
LOG(h.verbose, "[%d:%d] oneAPI brand: %s\n", driver, device,
props.brandName);
LOG(h.verbose, "[%d:%d] oneAPI vendor: %s\n", driver, device,
props.vendorName);
LOG(h.verbose, "[%d:%d] oneAPI S/N: %s\n", driver, device,
props.serialNumber);
LOG(h.verbose, "[%d:%d] oneAPI board number: %s\n", driver, device,
props.boardNumber);
}
// TODO
// Compute Capability equivalent in resp->major, resp->minor, resp->patch
uint32_t memCount = 0;
ret = (*h.zesDeviceEnumMemoryModules)(h.devices[driver][device], &memCount,
NULL);
if (ret != ZE_RESULT_SUCCESS) {
snprintf(buf, buflen, "unable to enumerate Level-Zero memory modules: %x",
ret);
resp->err = strdup(buf);
return;
}
LOG(h.verbose, "discovered %d Level-Zero memory modules\n", memCount);
zes_mem_handle_t *mems = malloc(memCount * sizeof(zes_mem_handle_t));
(*h.zesDeviceEnumMemoryModules)(h.devices[driver][device], &memCount, mems);
for (m = 0; m < memCount; m++) {
zes_mem_state_t state;
state.stype = ZES_STRUCTURE_TYPE_MEM_STATE;
state.pNext = NULL;
ret = (*h.zesMemoryGetState)(mems[m], &state);
if (ret != ZE_RESULT_SUCCESS) {
snprintf(buf, buflen, "unable to get memory state: %x", ret);
resp->err = strdup(buf);
free(mems);
return;
}
resp->total += state.size;
resp->free += state.free;
}
free(mems);
}
void oneapi_release(oneapi_handle_t h) {
int d;
LOG(h.verbose, "releasing oneapi library\n");
for (d = 0; d < h.num_drivers; d++) {
if (h.devices != NULL && h.devices[d] != NULL) {
free(h.devices[d]);
}
}
if (h.devices != NULL) {
free(h.devices);
h.devices = NULL;
}
if (h.num_devices != NULL) {
free(h.num_devices);
h.num_devices = NULL;
}
if (h.drivers != NULL) {
free(h.drivers);
h.drivers = NULL;
}
h.num_drivers = 0;
UNLOAD_LIBRARY(h.handle);
h.handle = NULL;
}
int oneapi_get_device_count(oneapi_handle_t h, int driver) {
if (h.handle == NULL || h.num_devices == NULL) {
return 0;
}
if (driver > h.num_drivers) {
return 0;
}
return (int)h.num_devices[driver];
}
#endif // __APPLE__

View File

@@ -1,203 +0,0 @@
#ifndef __APPLE__
#ifndef __GPU_INFO_ONEAPI_H__
#define __GPU_INFO_ONEAPI_H__
#include "gpu_info.h"
#define ZE_MAX_DEVICE_NAME 256
#define ZE_MAX_DEVICE_UUID_SIZE 16
#define ZES_STRING_PROPERTY_SIZE 64
#define ZE_BIT(_i) (1 << _i)
// Just enough typedef's to dlopen/dlsym for memory information
typedef enum ze_result_t {
ZE_RESULT_SUCCESS = 0,
// Other values omitted for now...
} ze_result_t;
typedef uint8_t ze_bool_t;
typedef struct _zes_driver_handle_t *zes_driver_handle_t;
typedef struct _zes_device_handle_t *zes_device_handle_t;
typedef struct _zes_mem_handle_t *zes_mem_handle_t;
typedef enum _ze_structure_type_t {
ZE_STRUCTURE_TYPE_FORCE_UINT32 = 0x7fffffff
} ze_structure_type_t;
typedef enum _zes_structure_type_t {
ZES_STRUCTURE_TYPE_DEVICE_PROPERTIES = 0x1,
ZES_STRUCTURE_TYPE_MEM_PROPERTIES = 0xb,
ZES_STRUCTURE_TYPE_MEM_STATE = 0x1e,
ZES_STRUCTURE_TYPE_DEVICE_EXT_PROPERTIES = 0x2d,
ZES_STRUCTURE_TYPE_FORCE_UINT32 = 0x7fffffff
} zes_structure_type_t;
typedef enum _zes_mem_type_t {
ZES_MEM_TYPE_FORCE_UINT32 = 0x7fffffff
} zes_mem_type_t;
typedef enum _zes_mem_loc_t {
ZES_MEM_LOC_SYSTEM = 0,
ZES_MEM_LOC_DEVICE = 1,
ZES_MEM_LOC_FORCE_UINT32 = 0x7fffffff
} zes_mem_loc_t;
typedef enum _zes_mem_health_t {
ZES_MEM_HEALTH_FORCE_UINT32 = 0x7fffffff
} zes_mem_health_t;
typedef struct _ze_device_uuid_t {
uint8_t id[ZE_MAX_DEVICE_UUID_SIZE];
} ze_device_uuid_t;
typedef struct _zes_uuid_t {
uint8_t id[ZE_MAX_DEVICE_UUID_SIZE];
} zes_uuid_t;
typedef enum _ze_device_type_t {
ZE_DEVICE_TYPE_GPU = 1,
ZE_DEVICE_TYPE_CPU = 2,
ZE_DEVICE_TYPE_FPGA = 3,
ZE_DEVICE_TYPE_MCA = 4,
ZE_DEVICE_TYPE_VPU = 5,
ZE_DEVICE_TYPE_FORCE_UINT32 = 0x7fffffff
} ze_device_type_t;
typedef enum _zes_device_type_t {
ZES_DEVICE_TYPE_GPU = 1,
ZES_DEVICE_TYPE_CPU = 2,
ZES_DEVICE_TYPE_FPGA = 3,
ZES_DEVICE_TYPE_MCA = 4,
ZES_DEVICE_TYPE_VPU = 5,
ZES_DEVICE_TYPE_FORCE_UINT32 = 0x7fffffff
} zes_device_type_t;
typedef uint32_t ze_device_property_flags_t;
typedef enum _ze_device_property_flag_t {
ZE_DEVICE_PROPERTY_FLAG_INTEGRATED = ZE_BIT(0),
ZE_DEVICE_PROPERTY_FLAG_SUBDEVICE = ZE_BIT(1),
ZE_DEVICE_PROPERTY_FLAG_ECC = ZE_BIT(2),
ZE_DEVICE_PROPERTY_FLAG_ONDEMANDPAGING = ZE_BIT(3),
ZE_DEVICE_PROPERTY_FLAG_FORCE_UINT32 = 0x7fffffff
} ze_device_property_flag_t;
typedef uint32_t zes_device_property_flags_t;
typedef enum _zes_device_property_flag_t {
ZES_DEVICE_PROPERTY_FLAG_INTEGRATED = ZE_BIT(0),
ZES_DEVICE_PROPERTY_FLAG_SUBDEVICE = ZE_BIT(1),
ZES_DEVICE_PROPERTY_FLAG_ECC = ZE_BIT(2),
ZES_DEVICE_PROPERTY_FLAG_ONDEMANDPAGING = ZE_BIT(3),
ZES_DEVICE_PROPERTY_FLAG_FORCE_UINT32 = 0x7fffffff
} zes_device_property_flag_t;
typedef struct _ze_device_properties_t {
ze_structure_type_t stype;
void *pNext;
ze_device_type_t type;
uint32_t vendorId;
uint32_t deviceId;
ze_device_property_flags_t flags;
uint32_t subdeviceId;
uint32_t coreClockRate;
uint64_t maxMemAllocSize;
uint32_t maxHardwareContexts;
uint32_t maxCommandQueuePriority;
uint32_t numThreadsPerEU;
uint32_t physicalEUSimdWidth;
uint32_t numEUsPerSubslice;
uint32_t numSubslicesPerSlice;
uint32_t numSlices;
uint64_t timerResolution;
uint32_t timestampValidBits;
uint32_t kernelTimestampValidBits;
ze_device_uuid_t uuid;
char name[ZE_MAX_DEVICE_NAME];
} ze_device_properties_t;
typedef struct _zes_device_properties_t {
zes_structure_type_t stype;
void *pNext;
ze_device_properties_t core;
uint32_t numSubdevices;
char serialNumber[ZES_STRING_PROPERTY_SIZE];
char boardNumber[ZES_STRING_PROPERTY_SIZE];
char brandName[ZES_STRING_PROPERTY_SIZE];
char modelName[ZES_STRING_PROPERTY_SIZE];
char vendorName[ZES_STRING_PROPERTY_SIZE];
char driverVersion[ZES_STRING_PROPERTY_SIZE];
} zes_device_properties_t;
typedef struct _zes_device_ext_properties_t {
zes_structure_type_t stype;
void *pNext;
zes_uuid_t uuid;
zes_device_type_t type;
zes_device_property_flags_t flags;
} zes_device_ext_properties_t;
typedef struct _zes_mem_properties_t {
zes_structure_type_t stype;
void *pNext;
zes_mem_type_t type;
ze_bool_t onSubdevice;
uint32_t subdeviceId;
zes_mem_loc_t location;
uint64_t physicalSize;
int32_t busWidth;
int32_t numChannels;
} zes_mem_properties_t;
typedef struct _zes_mem_state_t {
zes_structure_type_t stype;
const void *pNext;
zes_mem_health_t health;
uint64_t free;
uint64_t size;
} zes_mem_state_t;
typedef struct oneapi_handle {
void *handle;
uint16_t verbose;
uint32_t num_drivers;
zes_driver_handle_t *drivers;
uint32_t *num_devices;
zes_device_handle_t **devices;
// TODO Driver major, minor information
// int driver_major;
// int driver_minor;
ze_result_t (*zesInit)(int);
ze_result_t (*zesDriverGet)(uint32_t *pCount, zes_driver_handle_t *phDrivers);
ze_result_t (*zesDeviceGet)(zes_driver_handle_t hDriver, uint32_t *pCount,
zes_device_handle_t *phDevices);
ze_result_t (*zesDeviceGetProperties)(zes_device_handle_t hDevice,
zes_device_properties_t *pProperties);
ze_result_t (*zesDeviceEnumMemoryModules)(zes_device_handle_t hDevice,
uint32_t *pCount,
zes_mem_handle_t *phMemory);
ze_result_t (*zesMemoryGetProperties)(zes_mem_handle_t hMemory,
zes_mem_properties_t *pProperties);
ze_result_t (*zesMemoryGetState)(zes_mem_handle_t hMemory,
zes_mem_state_t *pState);
} oneapi_handle_t;
typedef struct oneapi_init_resp {
char *err; // If err is non-null handle is invalid
oneapi_handle_t oh;
} oneapi_init_resp_t;
typedef struct oneapi_version_resp {
ze_result_t status;
char *str; // Contains version or error string if status != 0
} oneapi_version_resp_t;
void oneapi_init(char *oneapi_lib_path, oneapi_init_resp_t *resp);
void oneapi_check_vram(oneapi_handle_t h, int driver, int device,
mem_info_t *resp);
void oneapi_release(oneapi_handle_t h);
int oneapi_get_device_count(oneapi_handle_t h, int driver);
#endif // __GPU_INFO_INTEL_H__
#endif // __APPLE__

View File

@@ -1,21 +0,0 @@
//go:build linux || windows
package discover
import (
"log/slog"
"strings"
)
func oneapiGetVisibleDevicesEnv(gpuInfo []GpuInfo) (string, string) {
ids := []string{}
for _, info := range gpuInfo {
if info.Library != "oneapi" {
// TODO shouldn't happen if things are wired correctly...
slog.Debug("oneapiGetVisibleDevicesEnv skipping over non-sycl device", "library", info.Library)
continue
}
ids = append(ids, info.ID)
}
return "ONEAPI_DEVICE_SELECTOR", "level_zero:" + strings.Join(ids, ",")
}

View File

@@ -1,60 +0,0 @@
package discover
import (
"runtime"
"testing"
"github.com/stretchr/testify/assert"
"github.com/stretchr/testify/require"
)
func TestBasicGetGPUInfo(t *testing.T) {
info := GetGPUInfo()
assert.NotEmpty(t, len(info))
assert.Contains(t, "cuda rocm cpu metal", info[0].Library)
if info[0].Library != "cpu" {
assert.Greater(t, info[0].TotalMemory, uint64(0))
assert.Greater(t, info[0].FreeMemory, uint64(0))
}
}
func TestCPUMemInfo(t *testing.T) {
info, err := GetCPUMem()
require.NoError(t, err)
switch runtime.GOOS {
case "darwin":
t.Skip("CPU memory not populated on darwin")
case "linux", "windows":
assert.Greater(t, info.TotalMemory, uint64(0))
assert.Greater(t, info.FreeMemory, uint64(0))
default:
return
}
}
func TestByLibrary(t *testing.T) {
type testCase struct {
input []GpuInfo
expect int
}
testCases := map[string]*testCase{
"empty": {input: []GpuInfo{}, expect: 0},
"cpu": {input: []GpuInfo{{Library: "cpu"}}, expect: 1},
"cpu + GPU": {input: []GpuInfo{{Library: "cpu"}, {Library: "cuda"}}, expect: 2},
"cpu + 2 GPU no variant": {input: []GpuInfo{{Library: "cpu"}, {Library: "cuda"}, {Library: "cuda"}}, expect: 2},
"cpu + 2 GPU same variant": {input: []GpuInfo{{Library: "cpu"}, {Library: "cuda", Variant: "v11"}, {Library: "cuda", Variant: "v11"}}, expect: 2},
"cpu + 2 GPU diff variant": {input: []GpuInfo{{Library: "cpu"}, {Library: "cuda", Variant: "v11"}, {Library: "cuda", Variant: "v12"}}, expect: 3},
}
for k, v := range testCases {
t.Run(k, func(t *testing.T) {
resp := (GpuInfoList)(v.input).ByLibrary()
if len(resp) != v.expect {
t.Fatalf("expected length %d, got %d => %+v", v.expect, len(resp), resp)
}
})
}
}
// TODO - add some logic to figure out card type through other means and actually verify we got back what we expected

View File

@@ -12,7 +12,7 @@ import (
// '../lib/ollama' on Linux and the executable's directory on macOS
// note: distribution builds, additional GPU-specific libraries are
// found in subdirectories of the returned path, such as
// 'cuda_v11', 'cuda_v12', 'rocm', etc.
// 'cuda_v12', 'rocm', etc.
var LibOllamaPath string = func() string {
exe, err := os.Executable()
if err != nil {

600
discover/runner.go Normal file
View File

@@ -0,0 +1,600 @@
package discover
// Runner based GPU discovery
import (
"context"
"encoding/json"
"fmt"
"io"
"log/slog"
"math/rand"
"net"
"net/http"
"os"
"os/exec"
"path/filepath"
"runtime"
"sort"
"strconv"
"strings"
"sync"
"time"
"github.com/ollama/ollama/envconfig"
"github.com/ollama/ollama/format"
"github.com/ollama/ollama/logutil"
"github.com/ollama/ollama/ml"
)
var (
deviceMu sync.Mutex
devices []ml.DeviceInfo
libDirs map[string]struct{}
rocmDir string
exe string
bootstrapped bool
)
func GPUDevices(ctx context.Context, runners []FilteredRunnerDiscovery) []ml.DeviceInfo {
deviceMu.Lock()
defer deviceMu.Unlock()
startDiscovery := time.Now()
msg := "overall device VRAM discovery took"
defer func() {
slog.Debug(msg, "duration", time.Since(startDiscovery))
}()
if !bootstrapped {
msg = "GPU bootstrap discovery took"
libDirs = make(map[string]struct{})
var err error
exe, err = os.Executable()
if err != nil {
slog.Error("unable to lookup executable path", "error", err)
return nil
}
if eval, err := filepath.EvalSymlinks(exe); err == nil {
exe = eval
}
files, err := filepath.Glob(filepath.Join(LibOllamaPath, "*", "*ggml-*"))
if err != nil {
slog.Debug("unable to lookup runner library directories", "error", err)
}
for _, file := range files {
libDirs[filepath.Dir(file)] = struct{}{}
}
// Our current packaging model places ggml-hip in the main directory
// but keeps rocm in an isolated directory. We have to add it to
// the [LD_LIBRARY_]PATH so ggml-hip will load properly
rocmDir = filepath.Join(LibOllamaPath, "rocm")
if _, err := os.Stat(rocmDir); err != nil {
rocmDir = ""
}
if len(libDirs) == 0 {
libDirs[""] = struct{}{}
}
slog.Info("discovering available GPUs...")
requested := envconfig.LLMLibrary()
jetpack := cudaJetpack()
// For our initial discovery pass, we gather all the known GPUs through
// all the libraries that were detected. This pass may include GPUs that
// are enumerated, but not actually supported.
// We run this in serial to avoid potentially initializing a GPU multiple
// times concurrently leading to memory contention
// TODO refactor so we group the lib dirs and do serial per version, but parallel for different libs
for dir := range libDirs {
var dirs []string
if dir != "" {
if requested != "" && filepath.Base(dir) != requested {
slog.Debug("skipping available library at users request", "requested", requested, "libDir", dir)
continue
} else if jetpack != "" && filepath.Base(dir) != "cuda_"+jetpack {
continue
}
}
if dir == "" {
dirs = []string{LibOllamaPath}
} else {
dirs = []string{LibOllamaPath, dir}
}
// Typically bootstrapping takes < 1s, but on some systems, with devices
// in low power/idle mode, initialization can take multiple seconds. We
// set a long timeout just for bootstrap discovery to reduce the chance
// of giving up too quickly
ctx1stPass, cancel := context.WithTimeout(ctx, 30*time.Second)
defer cancel()
// For this pass, we retain duplicates in case any are incompatible with some libraries
devices = append(devices, bootstrapDevices(ctx1stPass, dirs, nil)...)
}
// In the second pass, we more deeply initialize the GPUs to weed out devices that
// aren't supported by a given library. We run this phase in parallel to speed up discovery.
slog.Debug("filtering out unsupported or overlapping GPU library combinations", "count", len(devices))
ctx2ndPass, cancel := context.WithTimeout(ctx, 30*time.Second)
defer cancel()
var wg sync.WaitGroup
needsDelete := make([]bool, len(devices))
supportedMu := sync.Mutex{}
supported := make(map[string]map[string]map[string]int) // [Library][libDir][ID] = pre-deletion devices index
for i := range devices {
libDir := devices[i].LibraryPath[len(devices[i].LibraryPath)-1]
if devices[i].Library == "Metal" {
continue
}
slog.Debug("verifying GPU is supported", "library", libDir, "description", devices[i].Description, "compute", devices[i].Compute(), "pci_id", devices[i].PCIID)
wg.Add(1)
go func(i int) {
defer wg.Done()
var envVar string
id := devices[i].ID
if devices[i].Library == "ROCm" {
if runtime.GOOS != "linux" {
envVar = "HIP_VISIBLE_DEVICES"
} else {
envVar = "ROCR_VISIBLE_DEVICES"
}
} else if devices[i].Library == "CUDA" {
envVar = "CUDA_VISIBLE_DEVICES"
} else if devices[i].Library == "Vulkan" {
id = devices[i].FilteredID
envVar = "GGML_VK_VISIBLE_DEVICES"
} else {
slog.Error("Unknown Library:" + devices[i].Library)
}
extraEnvs := []string{
"GGML_CUDA_INIT=1", // force deep initialization to trigger crash on unsupported GPUs
envVar + "=" + id, // Filter to just this one GPU
}
if len(bootstrapDevices(ctx2ndPass, devices[i].LibraryPath, extraEnvs)) == 0 {
needsDelete[i] = true
} else {
supportedMu.Lock()
if _, ok := supported[devices[i].Library]; !ok {
supported[devices[i].Library] = make(map[string]map[string]int)
}
if _, ok := supported[devices[i].Library][libDir]; !ok {
supported[devices[i].Library][libDir] = make(map[string]int)
}
supported[devices[i].Library][libDir][devices[i].ID] = i
supportedMu.Unlock()
}
}(i)
}
wg.Wait()
logutil.Trace("supported GPU library combinations", "supported", supported)
filterOutVulkanThatAreSupportedByOtherGPU(needsDelete)
// Mark for deletion any overlaps - favoring the library version that can cover all GPUs if possible
filterOverlapByLibrary(supported, needsDelete)
// TODO if we ever support multiple ROCm library versions this algorithm will need to be adjusted to keep the rocmID numeric value correct
rocmID := 0
for i := 0; i < len(needsDelete); i++ {
if needsDelete[i] {
logutil.Trace("removing unsupported or overlapping GPU combination", "libDir", devices[i].LibraryPath[len(devices[i].LibraryPath)-1], "description", devices[i].Description, "compute", devices[i].Compute(), "pci_id", devices[i].PCIID)
devices = append(devices[:i], devices[i+1:]...)
needsDelete = append(needsDelete[:i], needsDelete[i+1:]...)
i--
} else if devices[i].Library == "ROCm" {
if _, err := strconv.Atoi(devices[i].ID); err == nil {
// Replace the numeric ID with the post-filtered IDs
devices[i].FilteredID = devices[i].ID
devices[i].ID = strconv.Itoa(rocmID)
}
rocmID++
}
}
// Now filter out any overlap with different libraries (favor CUDA/HIP over others)
for i := 0; i < len(devices); i++ {
for j := i + 1; j < len(devices); j++ {
// For this pass, we only drop exact duplicates
switch devices[i].Compare(devices[j]) {
case ml.SameBackendDevice:
// Same library and device, skip it
devices = append(devices[:j], devices[j+1:]...)
j--
continue
case ml.DuplicateDevice:
// Different library, choose based on priority
var droppedDevice ml.DeviceInfo
if devices[i].Library == "CUDA" || devices[i].Library == "ROCm" {
droppedDevice = devices[j]
} else {
droppedDevice = devices[i]
devices[i] = devices[j]
}
devices = append(devices[:j], devices[j+1:]...)
j--
typeStr := "discrete"
if droppedDevice.Integrated {
typeStr = "iGPU"
}
slog.Debug("dropping duplicate device",
"id", droppedDevice.ID,
"library", droppedDevice.Library,
"compute", droppedDevice.Compute(),
"name", droppedDevice.Name,
"description", droppedDevice.Description,
"libdirs", strings.Join(droppedDevice.LibraryPath, ","),
"driver", droppedDevice.Driver(),
"pci_id", droppedDevice.PCIID,
"type", typeStr,
"total", format.HumanBytes2(droppedDevice.TotalMemory),
"available", format.HumanBytes2(droppedDevice.FreeMemory),
)
continue
}
}
}
// Reset the libDirs to what we actually wind up using for future refreshes
libDirs = make(map[string]struct{})
for _, dev := range devices {
dir := dev.LibraryPath[len(dev.LibraryPath)-1]
if dir != LibOllamaPath {
libDirs[dir] = struct{}{}
}
}
if len(libDirs) == 0 {
libDirs[""] = struct{}{}
}
bootstrapped = true
} else {
if runtime.GOOS == "darwin" && runtime.GOARCH == "arm64" {
// metal never updates free VRAM
return devices
}
slog.Debug("refreshing free memory")
updated := make([]bool, len(devices))
allDone := func() bool {
allDone := true
for _, done := range updated {
if !done {
allDone = false
break
}
}
return allDone
}
// First try to use existing runners to refresh VRAM since they're already
// active on GPU(s)
for _, runner := range runners {
if runner == nil {
continue
}
deviceIDs := runner.GetActiveDeviceIDs()
if len(deviceIDs) == 0 {
// Skip this runner since it doesn't have active GPU devices
continue
}
// Check to see if this runner is active on any devices that need a refresh
skip := true
devCheck:
for _, dev := range deviceIDs {
for i := range devices {
if dev == devices[i].DeviceID {
if !updated[i] {
skip = false
break devCheck
}
}
}
}
if skip {
continue
}
// Typical refresh on existing runner is ~500ms but allow longer if the system
// is under stress before giving up and using stale data.
ctx, cancel := context.WithTimeout(ctx, 3*time.Second)
defer cancel()
start := time.Now()
updatedDevices := runner.GetDeviceInfos(ctx)
slog.Debug("existing runner discovery took", "duration", time.Since(start))
for _, u := range updatedDevices {
for i := range devices {
if u.DeviceID == devices[i].DeviceID {
updated[i] = true
devices[i].FreeMemory = u.FreeMemory
break
}
}
}
// Short circuit if we've updated all the devices
if allDone() {
break
}
}
if !allDone() {
slog.Debug("unable to refresh all GPUs with existing runners, performing bootstrap discovery")
// Bootstrapping may take longer in some cases (AMD windows), but we
// would rather use stale free data to get the model running sooner
ctx, cancel := context.WithTimeout(ctx, 3*time.Second)
defer cancel()
for dir := range libDirs {
updatedDevices := bootstrapDevices(ctx, []string{LibOllamaPath, dir}, nil)
for _, u := range updatedDevices {
for i := range devices {
if u.DeviceID == devices[i].DeviceID {
updated[i] = true
devices[i].FreeMemory = u.FreeMemory
break
}
}
// TODO - consider evaluating if new devices have appeared (e.g. hotplug)
}
if allDone() {
break
}
}
if !allDone() {
slog.Warn("unable to refresh free memory, using old values")
}
}
}
return devices
}
func filterOutVulkanThatAreSupportedByOtherGPU(needsDelete []bool) {
// Filter out Vulkan devices that share a PCI ID with a non-Vulkan device that is not marked for deletion
for i := range devices {
if devices[i].Library != "Vulkan" || needsDelete[i] {
continue
}
if devices[i].PCIID == "" {
continue
}
for j := range devices {
if i == j {
continue
}
if devices[j].PCIID == "" {
continue
}
if devices[j].PCIID == devices[i].PCIID && devices[j].Library != "Vulkan" && !needsDelete[j] {
needsDelete[i] = true
slog.Debug("dropping Vulkan duplicate by PCI ID",
"vulkan_id", devices[i].ID,
"vulkan_libdir", devices[i].LibraryPath[len(devices[i].LibraryPath)-1],
"pci_id", devices[i].PCIID,
"kept_library", devices[j].Library,
"kept_id", devices[j].ID,
)
break
}
}
}
}
func filterOverlapByLibrary(supported map[string]map[string]map[string]int, needsDelete []bool) {
// For multi-GPU systems, use the newest version that supports all the GPUs
for _, byLibDirs := range supported {
libDirs := make([]string, 0, len(byLibDirs))
for libDir := range byLibDirs {
libDirs = append(libDirs, libDir)
}
sort.Sort(sort.Reverse(sort.StringSlice(libDirs)))
anyMissing := false
var newest string
for _, newest = range libDirs {
for _, libDir := range libDirs {
if libDir == newest {
continue
}
if len(byLibDirs[newest]) != len(byLibDirs[libDir]) {
anyMissing = true
break
}
for dev := range byLibDirs[newest] {
if _, found := byLibDirs[libDir][dev]; !found {
anyMissing = true
break
}
}
}
if !anyMissing {
break
}
}
// Now we can mark overlaps for deletion
for _, libDir := range libDirs {
if libDir == newest {
continue
}
for dev, i := range byLibDirs[libDir] {
if _, found := byLibDirs[newest][dev]; found {
needsDelete[i] = true
}
}
}
}
}
type bootstrapRunner struct {
port int
cmd *exec.Cmd
}
func (r *bootstrapRunner) GetPort() int {
return r.port
}
func (r *bootstrapRunner) HasExited() bool {
if r.cmd != nil && r.cmd.ProcessState != nil {
return true
}
return false
}
func bootstrapDevices(ctx context.Context, ollamaLibDirs []string, extraEnvs []string) []ml.DeviceInfo {
// TODO DRY out with llm/server.go
slog.Debug("spawning runner with", "OLLAMA_LIBRARY_PATH", ollamaLibDirs, "extra_envs", extraEnvs)
start := time.Now()
defer func() {
slog.Debug("bootstrap discovery took", "duration", time.Since(start), "OLLAMA_LIBRARY_PATH", ollamaLibDirs, "extra_envs", extraEnvs)
}()
port := 0
if a, err := net.ResolveTCPAddr("tcp", "localhost:0"); err == nil {
var l *net.TCPListener
if l, err = net.ListenTCP("tcp", a); err == nil {
port = l.Addr().(*net.TCPAddr).Port
l.Close()
}
}
if port == 0 {
slog.Debug("ResolveTCPAddr failed, using random port")
port = rand.Intn(65535-49152) + 49152 // get a random port in the ephemeral range
}
params := []string{"runner", "--ollama-engine", "--port", strconv.Itoa(port)}
var pathEnv string
switch runtime.GOOS {
case "windows":
pathEnv = "PATH"
case "darwin":
pathEnv = "DYLD_LIBRARY_PATH"
default:
pathEnv = "LD_LIBRARY_PATH"
}
libraryPaths := append([]string{LibOllamaPath}, ollamaLibDirs...)
if rocmDir != "" {
libraryPaths = append(libraryPaths, rocmDir)
}
// Note: we always put our dependency paths first
// since these are the exact version we compiled/linked against
if libraryPath, ok := os.LookupEnv(pathEnv); ok {
libraryPaths = append(libraryPaths, filepath.SplitList(libraryPath)...)
}
cmd := exec.Command(exe, params...)
cmd.Env = os.Environ()
if envconfig.LogLevel() == logutil.LevelTrace {
cmd.Stdout = os.Stdout
cmd.Stderr = os.Stderr
}
// cmd.SysProcAttr = llm.LlamaServerSysProcAttr // circular dependency - bring back once refactored
pathEnvVal := strings.Join(libraryPaths, string(filepath.ListSeparator))
pathNeeded := true
ollamaPathNeeded := true
extraDone := make([]bool, len(extraEnvs))
for i := range cmd.Env {
cmp := strings.SplitN(cmd.Env[i], "=", 2)
if strings.EqualFold(cmp[0], pathEnv) {
cmd.Env[i] = pathEnv + "=" + pathEnvVal
pathNeeded = false
} else if strings.EqualFold(cmp[0], "OLLAMA_LIBRARY_PATH") {
cmd.Env[i] = "OLLAMA_LIBRARY_PATH=" + strings.Join(ollamaLibDirs, string(filepath.ListSeparator))
ollamaPathNeeded = false
} else {
for j := range extraEnvs {
if extraDone[j] {
continue
}
extra := strings.SplitN(extraEnvs[j], "=", 2)
if cmp[0] == extra[0] {
cmd.Env[i] = extraEnvs[j]
extraDone[j] = true
}
}
}
}
if pathNeeded {
cmd.Env = append(cmd.Env, pathEnv+"="+pathEnvVal)
}
if ollamaPathNeeded {
cmd.Env = append(cmd.Env, "OLLAMA_LIBRARY_PATH="+strings.Join(ollamaLibDirs, string(filepath.ListSeparator)))
}
for i := range extraDone {
if !extraDone[i] {
cmd.Env = append(cmd.Env, extraEnvs[i])
}
}
logutil.Trace("starting runner for device discovery", "env", cmd.Env, "cmd", cmd)
if err := cmd.Start(); err != nil {
slog.Warn("unable to start discovery subprocess", "cmd", cmd, "error", err)
return nil
}
go func() {
cmd.Wait() // exit status ignored
}()
defer cmd.Process.Kill()
devices, err := GetDevicesFromRunner(ctx, &bootstrapRunner{port: port, cmd: cmd})
if err != nil {
if cmd.ProcessState != nil && cmd.ProcessState.ExitCode() >= 0 {
// Expected during bootstrapping while we filter out unsupported AMD GPUs
logutil.Trace("runner exited", "OLLAMA_LIBRARY_PATH", ollamaLibDirs, "extra_envs", extraEnvs, "code", cmd.ProcessState.ExitCode())
} else {
slog.Info("failure during GPU discovery", "OLLAMA_LIBRARY_PATH", ollamaLibDirs, "extra_envs", extraEnvs, "error", err)
}
}
logutil.Trace("runner enumerated devices", "OLLAMA_LIBRARY_PATH", ollamaLibDirs, "devices", devices)
return devices
}
func GetDevicesFromRunner(ctx context.Context, runner BaseRunner) ([]ml.DeviceInfo, error) {
var moreDevices []ml.DeviceInfo
port := runner.GetPort()
tick := time.Tick(10 * time.Millisecond)
for {
select {
case <-ctx.Done():
return nil, fmt.Errorf("failed to finish discovery before timeout")
case <-tick:
r, err := http.NewRequestWithContext(ctx, http.MethodGet, fmt.Sprintf("http://127.0.0.1:%d/info", port), nil)
if err != nil {
return nil, fmt.Errorf("failed to create request: %w", err)
}
r.Header.Set("Content-Type", "application/json")
resp, err := http.DefaultClient.Do(r)
if err != nil {
// slog.Warn("failed to send request", "error", err)
if runner.HasExited() {
return nil, fmt.Errorf("runner crashed")
}
continue
}
defer resp.Body.Close()
if resp.StatusCode == http.StatusNotFound {
// old runner, fall back to bootstrapping model
return nil, fmt.Errorf("llamarunner free vram reporting not supported")
}
body, err := io.ReadAll(resp.Body)
if err != nil {
slog.Warn("failed to read response", "error", err)
continue
}
if resp.StatusCode != 200 {
logutil.Trace("runner failed to discover free VRAM", "status", resp.StatusCode, "response", body)
return nil, fmt.Errorf("runner error: %s", string(body))
}
if err := json.Unmarshal(body, &moreDevices); err != nil {
slog.Warn("unmarshal encode response", "error", err)
continue
}
return moreDevices, nil
}
}
}

108
discover/runner_test.go Normal file
View File

@@ -0,0 +1,108 @@
package discover
import (
"testing"
"github.com/ollama/ollama/app/lifecycle"
)
func init() {
lifecycle.InitLogging()
}
func TestFilterOverlapByLibrary(t *testing.T) {
type testcase struct {
name string
inp map[string]map[string]map[string]int
exp []bool
}
for _, tc := range []testcase{
{
name: "empty",
inp: map[string]map[string]map[string]int{},
exp: []bool{}, // needs deletion
},
{
name: "single no overlap",
inp: map[string]map[string]map[string]int{
"CUDA": {
"cuda_v12": {
"GPU-d7b00605-c0c8-152d-529d-e03726d5dc52": 0,
},
},
},
exp: []bool{false},
},
{
name: "100% overlap pick 2nd",
inp: map[string]map[string]map[string]int{
"CUDA": {
"cuda_v12": {
"GPU-d7b00605-c0c8-152d-529d-e03726d5dc52": 0,
"GPU-cd6c3216-03d2-a8eb-8235-2ffbf571712e": 1,
},
"cuda_v13": {
"GPU-d7b00605-c0c8-152d-529d-e03726d5dc52": 2,
"GPU-cd6c3216-03d2-a8eb-8235-2ffbf571712e": 3,
},
},
},
exp: []bool{true, true, false, false},
},
{
name: "100% overlap pick 1st",
inp: map[string]map[string]map[string]int{
"CUDA": {
"cuda_v13": {
"GPU-d7b00605-c0c8-152d-529d-e03726d5dc52": 0,
"GPU-cd6c3216-03d2-a8eb-8235-2ffbf571712e": 1,
},
"cuda_v12": {
"GPU-d7b00605-c0c8-152d-529d-e03726d5dc52": 2,
"GPU-cd6c3216-03d2-a8eb-8235-2ffbf571712e": 3,
},
},
},
exp: []bool{false, false, true, true},
},
{
name: "partial overlap pick older",
inp: map[string]map[string]map[string]int{
"CUDA": {
"cuda_v13": {
"GPU-d7b00605-c0c8-152d-529d-e03726d5dc52": 0,
},
"cuda_v12": {
"GPU-d7b00605-c0c8-152d-529d-e03726d5dc52": 1,
"GPU-cd6c3216-03d2-a8eb-8235-2ffbf571712e": 2,
},
},
},
exp: []bool{true, false, false},
},
{
name: "no overlap",
inp: map[string]map[string]map[string]int{
"CUDA": {
"cuda_v13": {
"GPU-d7b00605-c0c8-152d-529d-e03726d5dc52": 0,
},
"cuda_v12": {
"GPU-cd6c3216-03d2-a8eb-8235-2ffbf571712e": 1,
},
},
},
exp: []bool{false, false},
},
} {
t.Run(tc.name, func(t *testing.T) {
needsDelete := make([]bool, len(tc.exp))
filterOverlapByLibrary(tc.inp, needsDelete)
for i, exp := range tc.exp {
if needsDelete[i] != exp {
t.Fatalf("expected: %v\ngot: %v", tc.exp, needsDelete)
}
}
})
}
}

View File

@@ -1,10 +1,14 @@
package discover
import (
"fmt"
"context"
"log/slog"
"path/filepath"
"runtime"
"strings"
"github.com/ollama/ollama/format"
"github.com/ollama/ollama/ml"
)
type memInfo struct {
@@ -15,8 +19,8 @@ type memInfo struct {
// Beginning of an `ollama info` command
type GpuInfo struct { // TODO better name maybe "InferenceProcessor"?
ml.DeviceID
memInfo
Library string `json:"library,omitempty"`
// Optional variant to select (e.g. versions, cpu feature flags)
Variant string `json:"variant"`
@@ -27,18 +31,16 @@ type GpuInfo struct { // TODO better name maybe "InferenceProcessor"?
// Any extra PATH/LD_LIBRARY_PATH dependencies required for the Library to operate properly
DependencyPath []string `json:"lib_path,omitempty"`
// Extra environment variables specific to the GPU as list of [key,value]
EnvWorkarounds [][2]string `json:"envs,omitempty"`
// Set to true if we can NOT reliably discover FreeMemory. A value of true indicates
// the FreeMemory is best effort, and may over or under report actual memory usage
// False indicates FreeMemory can generally be trusted on this GPU
UnreliableFreeMemory bool
// GPU information
ID string `json:"gpu_id"` // string to use for selection of this specific GPU
Name string `json:"name"` // user friendly name if available
Compute string `json:"compute"` // Compute Capability or gfx
filterID string // AMD/Vulkan Workaround: The numeric ID of the device used to filter out other devices
Name string `json:"name"` // user friendly name if available
ComputeMajor int `json:"compute_major"` // Compute Capability or gfx
ComputeMinor int `json:"compute_minor"`
// Driver Information - TODO no need to put this on each GPU
DriverMajor int `json:"driver_major,omitempty"`
@@ -69,37 +71,8 @@ type CPU struct {
ThreadCount int
}
type CudaGPUInfo struct {
GpuInfo
OSOverhead uint64 // Memory overhead between the driver library and management library
index int //nolint:unused,nolintlint
computeMajor int //nolint:unused,nolintlint
computeMinor int //nolint:unused,nolintlint
}
type CudaGPUInfoList []CudaGPUInfo
type RocmGPUInfo struct {
GpuInfo
usedFilepath string //nolint:unused,nolintlint
index int //nolint:unused,nolintlint
}
type RocmGPUInfoList []RocmGPUInfo
type OneapiGPUInfo struct {
GpuInfo
driverIndex int //nolint:unused,nolintlint
gpuIndex int //nolint:unused,nolintlint
}
type OneapiGPUInfoList []OneapiGPUInfo
type GpuInfoList []GpuInfo
type UnsupportedGPUInfo struct {
GpuInfo
Reason string `json:"reason"`
}
// Split up the set of gpu info's by Library and variant
func (l GpuInfoList) ByLibrary() []GpuInfoList {
resp := []GpuInfoList{}
libs := []string{}
@@ -124,18 +97,47 @@ func (l GpuInfoList) ByLibrary() []GpuInfoList {
return resp
}
// Report the GPU information into the log an Info level
func (l GpuInfoList) LogDetails() {
for _, g := range l {
func LogDetails(devices []ml.DeviceInfo) {
for _, dev := range devices {
var libs []string
for _, dir := range dev.LibraryPath {
if strings.Contains(dir, filepath.Join("lib", "ollama")) {
libs = append(libs, filepath.Base(dir))
}
}
typeStr := "discrete"
if dev.Integrated {
typeStr = "iGPU"
}
slog.Info("inference compute",
"id", g.ID,
"library", g.Library,
"variant", g.Variant,
"compute", g.Compute,
"driver", fmt.Sprintf("%d.%d", g.DriverMajor, g.DriverMinor),
"name", g.Name,
"total", format.HumanBytes2(g.TotalMemory),
"available", format.HumanBytes2(g.FreeMemory),
"id", dev.ID,
"library", dev.Library,
"compute", dev.Compute(),
"name", dev.Name,
"description", dev.Description,
"libdirs", strings.Join(libs, ","),
"driver", dev.Driver(),
"pci_id", dev.PCIID,
"type", typeStr,
"total", format.HumanBytes2(dev.TotalMemory),
"available", format.HumanBytes2(dev.FreeMemory),
)
}
// CPU inference
if len(devices) == 0 {
dev, _ := GetCPUMem()
slog.Info("inference compute",
"id", "cpu",
"library", "cpu",
"compute", "",
"name", "cpu",
"description", "cpu",
"libdirs", "ollama",
"driver", "",
"pci_id", "",
"type", "",
"total", format.HumanBytes2(dev.TotalMemory),
"available", format.HumanBytes2(dev.FreeMemory),
)
}
}
@@ -148,16 +150,15 @@ func (a ByFreeMemory) Swap(i, j int) { a[i], a[j] = a[j], a[i] }
func (a ByFreeMemory) Less(i, j int) bool { return a[i].FreeMemory < a[j].FreeMemory }
type SystemInfo struct {
System CPUInfo `json:"system"`
GPUs []GpuInfo `json:"gpus"`
UnsupportedGPUs []UnsupportedGPUInfo `json:"unsupported_gpus"`
DiscoveryErrors []string `json:"discovery_errors"`
System CPUInfo `json:"system"`
GPUs []GpuInfo `json:"gpus"`
}
// Return the optimal number of threads to use for inference
func (si SystemInfo) GetOptimalThreadCount() int {
if len(si.System.CPUs) == 0 {
return 0
// Fall back to Go's num CPU
return runtime.NumCPU()
}
coreCount := 0
@@ -171,9 +172,11 @@ func (si SystemInfo) GetOptimalThreadCount() int {
// For each GPU, check if it does NOT support flash attention
func (l GpuInfoList) FlashAttentionSupported() bool {
for _, gpu := range l {
supportsFA := gpu.Library == "metal" ||
(gpu.Library == "cuda" && gpu.DriverMajor >= 7) ||
gpu.Library == "rocm"
supportsFA := gpu.Library == "cpu" ||
gpu.Name == "Metal" || gpu.Library == "Metal" ||
(gpu.Library == "CUDA" && gpu.DriverMajor >= 7 && !(gpu.ComputeMajor == 7 && gpu.ComputeMinor == 2)) || // We don't have kernels for Jetson Xavier
gpu.Library == "ROCm" ||
gpu.Library == "Vulkan"
if !supportsFA {
return false
@@ -181,3 +184,31 @@ func (l GpuInfoList) FlashAttentionSupported() bool {
}
return true
}
type BaseRunner interface {
// GetPort returns the localhost port number the runner is running on
GetPort() int
// HasExited indicates if the runner is no longer running. This can be used during
// bootstrap to detect if a given filtered device is incompatible and triggered an assert
HasExited() bool
}
type RunnerDiscovery interface {
BaseRunner
// GetDeviceInfos will perform a query of the underlying device libraries
// for device identification and free VRAM information
// During bootstrap scenarios, this routine may take seconds to complete
GetDeviceInfos(ctx context.Context) []ml.DeviceInfo
}
type FilteredRunnerDiscovery interface {
RunnerDiscovery
// GetActiveDeviceIDs returns the filtered set of devices actively in
// use by this runner for running models. If the runner is a bootstrap runner, no devices
// will be active yet so no device IDs are returned.
// This routine will not query the underlying device and will return immediately
GetActiveDeviceIDs() []ml.DeviceID
}

View File

@@ -4,6 +4,7 @@
* [Quickstart](../README.md#quickstart)
* [Examples](./examples.md)
* [Importing models](./import.md)
* [MacOS Documentation](./macos.md)
* [Linux Documentation](./linux.md)
* [Windows Documentation](./windows.md)
* [Docker Documentation](./docker.md)

View File

@@ -19,7 +19,7 @@
### Model names
Model names follow a `model:tag` format, where `model` can have an optional namespace such as `example/model`. Some examples are `orca-mini:3b-q4_1` and `llama3:70b`. The tag is optional and, if not provided, will default to `latest`. The tag is used to identify a specific version.
Model names follow a `model:tag` format, where `model` can have an optional namespace such as `example/model`. Some examples are `orca-mini:3b-q8_0` and `llama3:70b`. The tag is optional and, if not provided, will default to `latest`. The tag is used to identify a specific version.
### Durations
@@ -43,6 +43,7 @@ Generate a response for a given prompt with a provided model. This is a streamin
- `prompt`: the prompt to generate a response for
- `suffix`: the text after the model response
- `images`: (optional) a list of base64-encoded images (for multimodal models such as `llava`)
- `think`: (for thinking models) should the model think before responding?
Advanced parameters (optional):
@@ -394,9 +395,6 @@ curl http://localhost:11434/api/generate -d '{
"repeat_penalty": 1.2,
"presence_penalty": 1.5,
"frequency_penalty": 1.0,
"mirostat": 1,
"mirostat_tau": 0.8,
"mirostat_eta": 0.6,
"penalize_newline": true,
"stop": ["\n", "user:"],
"numa": false,
@@ -404,10 +402,7 @@ curl http://localhost:11434/api/generate -d '{
"num_batch": 2,
"num_gpu": 1,
"main_gpu": 0,
"low_vram": false,
"vocab_only": false,
"use_mmap": true,
"use_mlock": false,
"num_thread": 8
}
}'
@@ -496,28 +491,39 @@ Generate the next message in a chat with a provided model. This is a streaming e
- `model`: (required) the [model name](#model-names)
- `messages`: the messages of the chat, this can be used to keep a chat memory
- `tools`: list of tools in JSON for the model to use if supported
- `think`: (for thinking models) should the model think before responding?
The `message` object has the following fields:
- `role`: the role of the message, either `system`, `user`, `assistant`, or `tool`
- `content`: the content of the message
- `thinking`: (for thinking models) the model's thinking process
- `images` (optional): a list of images to include in the message (for multimodal models such as `llava`)
- `tool_calls` (optional): a list of tools in JSON that the model wants to use
- `tool_name` (optional): add the name of the tool that was executed to inform the model of the result
Advanced parameters (optional):
- `format`: the format to return a response in. Format can be `json` or a JSON schema.
- `format`: the format to return a response in. Format can be `json` or a JSON schema.
- `options`: additional model parameters listed in the documentation for the [Modelfile](./modelfile.md#valid-parameters-and-values) such as `temperature`
- `stream`: if `false` the response will be returned as a single response object, rather than a stream of objects
- `keep_alive`: controls how long the model will stay loaded into memory following the request (default: `5m`)
### Tool calling
Tool calling is supported by providing a list of tools in the `tools` parameter. The model will generate a response that includes a list of tool calls. See the [Chat request (Streaming with tools)](#chat-request-streaming-with-tools) example below.
Models can also explain the result of the tool call in the response. See the [Chat request (With history, with tools)](#chat-request-with-history-with-tools) example below.
[See models with tool calling capabilities](https://ollama.com/search?c=tool).
### Structured outputs
Structured outputs are supported by providing a JSON schema in the `format` parameter. The model will generate a response that matches the schema. See the [Chat request (Structured outputs)](#chat-request-structured-outputs) example below.
### Examples
#### Chat Request (Streaming)
#### Chat request (Streaming)
##### Request
@@ -572,6 +578,88 @@ Final response:
}
```
#### Chat request (Streaming with tools)
##### Request
```shell
curl http://localhost:11434/api/chat -d '{
"model": "llama3.2",
"messages": [
{
"role": "user",
"content": "what is the weather in tokyo?"
}
],
"tools": [
{
"type": "function",
"function": {
"name": "get_weather",
"description": "Get the weather in a given city",
"parameters": {
"type": "object",
"properties": {
"city": {
"type": "string",
"description": "The city to get the weather for"
}
},
"required": ["city"]
}
}
}
],
"stream": true
}'
```
##### Response
A stream of JSON objects is returned:
```json
{
"model": "llama3.2",
"created_at": "2025-07-07T20:22:19.184789Z",
"message": {
"role": "assistant",
"content": "",
"tool_calls": [
{
"function": {
"name": "get_weather",
"arguments": {
"city": "Tokyo"
}
},
}
]
},
"done": false
}
```
Final response:
```json
{
"model":"llama3.2",
"created_at":"2025-07-07T20:22:19.19314Z",
"message": {
"role": "assistant",
"content": ""
},
"done_reason": "stop",
"done": true,
"total_duration": 182242375,
"load_duration": 41295167,
"prompt_eval_count": 169,
"prompt_eval_duration": 24573166,
"eval_count": 15,
"eval_duration": 115959084
}
```
#### Chat request (No streaming)
##### Request
@@ -609,6 +697,74 @@ curl http://localhost:11434/api/chat -d '{
}
```
#### Chat request (No streaming, with tools)
##### Request
```shell
curl http://localhost:11434/api/chat -d '{
"model": "llama3.2",
"messages": [
{
"role": "user",
"content": "what is the weather in tokyo?"
}
],
"tools": [
{
"type": "function",
"function": {
"name": "get_weather",
"description": "Get the weather in a given city",
"parameters": {
"type": "object",
"properties": {
"city": {
"type": "string",
"description": "The city to get the weather for"
}
},
"required": ["city"]
}
}
}
],
"stream": false
}'
```
##### Response
```json
{
"model": "llama3.2",
"created_at": "2025-07-07T20:32:53.844124Z",
"message": {
"role": "assistant",
"content": "",
"tool_calls": [
{
"function": {
"name": "get_weather",
"arguments": {
"city": "Tokyo"
}
},
}
]
},
"done_reason": "stop",
"done": true,
"total_duration": 3244883583,
"load_duration": 2969184542,
"prompt_eval_count": 169,
"prompt_eval_duration": 141656333,
"eval_count": 18,
"eval_duration": 133293625
}
```
#### Chat request (Structured outputs)
##### Request
@@ -715,6 +871,87 @@ Final response:
}
```
#### Chat request (With history, with tools)
##### Request
```shell
curl http://localhost:11434/api/chat -d '{
"model": "llama3.2",
"messages": [
{
"role": "user",
"content": "what is the weather in Toronto?"
},
// the message from the model appended to history
{
"role": "assistant",
"content": "",
"tool_calls": [
{
"function": {
"name": "get_temperature",
"arguments": {
"city": "Toronto"
}
},
}
]
},
// the tool call result appended to history
{
"role": "tool",
"content": "11 degrees celsius",
"tool_name": "get_temperature",
}
],
"stream": false,
"tools": [
{
"type": "function",
"function": {
"name": "get_weather",
"description": "Get the weather in a given city",
"parameters": {
"type": "object",
"properties": {
"city": {
"type": "string",
"description": "The city to get the weather for"
}
},
"required": ["city"]
}
}
}
]
}'
```
##### Response
```json
{
"model": "llama3.2",
"created_at": "2025-07-07T20:43:37.688511Z",
"message": {
"role": "assistant",
"content": "The current temperature in Toronto is 11°C."
},
"done_reason": "stop",
"done": true,
"total_duration": 890771750,
"load_duration": 707634750,
"prompt_eval_count": 94,
"prompt_eval_duration": 91703208,
"eval_count": 11,
"eval_duration": 90282125
}
```
#### Chat request (with images)
##### Request
@@ -958,19 +1195,8 @@ If you are creating a model from a safetensors directory or from a GGUF file, yo
| Type | Recommended |
| --- | :-: |
| q2_K | |
| q3_K_L | |
| q3_K_M | |
| q3_K_S | |
| q4_0 | |
| q4_1 | |
| q4_K_M | * |
| q4_K_S | |
| q5_0 | |
| q5_1 | |
| q5_K_M | |
| q5_K_S | |
| q6_K | |
| q8_0 | * |
### Examples
@@ -1015,8 +1241,8 @@ Quantize a non-quantized model.
```shell
curl http://localhost:11434/api/create -d '{
"model": "llama3.1:quantized",
"from": "llama3.1:8b-instruct-fp16",
"model": "llama3.2:quantized",
"from": "llama3.2:3b-instruct-fp16",
"quantize": "q4_K_M"
}'
```
@@ -1026,12 +1252,14 @@ curl http://localhost:11434/api/create -d '{
A stream of JSON objects is returned:
```json
{"status":"quantizing F16 model to Q4_K_M"}
{"status":"creating new layer sha256:667b0c1932bc6ffc593ed1d03f895bf2dc8dc6df21db3042284a6f4416b06a29"}
{"status":"using existing layer sha256:11ce4ee3e170f6adebac9a991c22e22ab3f8530e154ee669954c4bc73061c258"}
{"status":"using existing layer sha256:0ba8f0e314b4264dfd19df045cde9d4c394a52474bf92ed6a3de22a4ca31a177"}
{"status":"quantizing F16 model to Q4_K_M","digest":"0","total":6433687776,"completed":12302}
{"status":"quantizing F16 model to Q4_K_M","digest":"0","total":6433687776,"completed":6433687552}
{"status":"verifying conversion"}
{"status":"creating new layer sha256:fb7f4f211b89c6c4928ff4ddb73db9f9c0cfca3e000c3e40d6cf27ddc6ca72eb"}
{"status":"using existing layer sha256:966de95ca8a62200913e3f8bfbf84c8494536f1b94b49166851e76644e966396"}
{"status":"using existing layer sha256:fcc5a6bec9daf9b561a68827b67ab6088e1dba9d1fa2a50d7bbcc8384e0a265d"}
{"status":"using existing layer sha256:a70ff7e570d97baaf4e62ac6e6ad9975e04caa6d900d3742d37698494479e0cd"}
{"status":"using existing layer sha256:56bb8bd477a519ffa694fc449c2413c6f0e1d3b1c88fa7e3c9d88d3ae49d4dcb"}
{"status":"creating new layer sha256:455f34728c9b5dd3376378bfb809ee166c145b0b4c1f1a6feca069055066ef9a"}
{"status":"writing manifest"}
{"status":"success"}
```
@@ -1169,29 +1397,37 @@ A single JSON object will be returned.
{
"models": [
{
"name": "codellama:13b",
"modified_at": "2023-11-04T14:56:49.277302595-07:00",
"size": 7365960935,
"digest": "9f438cb9cd581fc025612d27f7c1a6669ff83a8bb0ed86c94fcf4c5440555697",
"name": "deepseek-r1:latest",
"model": "deepseek-r1:latest",
"modified_at": "2025-05-10T08:06:48.639712648-07:00",
"size": 4683075271,
"digest": "0a8c266910232fd3291e71e5ba1e058cc5af9d411192cf88b6d30e92b6e73163",
"details": {
"parent_model": "",
"format": "gguf",
"family": "llama",
"families": null,
"parameter_size": "13B",
"quantization_level": "Q4_0"
"family": "qwen2",
"families": [
"qwen2"
],
"parameter_size": "7.6B",
"quantization_level": "Q4_K_M"
}
},
{
"name": "llama3:latest",
"modified_at": "2023-12-07T09:32:18.757212583-08:00",
"size": 3825819519,
"digest": "fe938a131f40e6f6d40083c9f0f430a515233eb2edaa6d72eb85c50d64f2300e",
"name": "llama3.2:latest",
"model": "llama3.2:latest",
"modified_at": "2025-05-04T17:37:44.706015396-07:00",
"size": 2019393189,
"digest": "a80c4f17acd55265feec403c7aef86be0c25983ab279d83f3bcd3abbcb5b8b72",
"details": {
"parent_model": "",
"format": "gguf",
"family": "llama",
"families": null,
"parameter_size": "7B",
"quantization_level": "Q4_0"
"families": [
"llama"
],
"parameter_size": "3.2B",
"quantization_level": "Q4_K_M"
}
}
]
@@ -1357,7 +1593,7 @@ Then there is a series of downloading responses. Until any of the download is co
```json
{
"status": "downloading digestname",
"status": "pulling digestname",
"digest": "digestname",
"total": 2142590208,
"completed": 241970
@@ -1472,6 +1708,7 @@ Advanced parameters:
- `truncate`: truncates the end of each input to fit within context length. Returns error if `false` and context length is exceeded. Defaults to `true`
- `options`: additional model parameters listed in the documentation for the [Modelfile](./modelfile.md#valid-parameters-and-values) such as `temperature`
- `keep_alive`: controls how long the model will stay loaded into memory following the request (default: `5m`)
- `dimensions`: number of dimensions for the embedding
### Examples

View File

@@ -1,59 +0,0 @@
# Benchmark
Go benchmark tests that measure end-to-end performance of a running Ollama server. Run these tests to evaluate model inference performance on your hardware and measure the impact of code changes.
## When to use
Run these benchmarks when:
- Making changes to the model inference engine
- Modifying model loading/unloading logic
- Changing prompt processing or token generation code
- Implementing a new model architecture
- Testing performance across different hardware setups
## Prerequisites
- Ollama server running locally with `ollama serve` on `127.0.0.1:11434`
## Usage and Examples
>[!NOTE]
>All commands must be run from the root directory of the Ollama project.
Basic syntax:
```bash
go test -bench=. ./benchmark/... -m $MODEL_NAME
```
Required flags:
- `-bench=.`: Run all benchmarks
- `-m`: Model name to benchmark
Optional flags:
- `-count N`: Number of times to run the benchmark (useful for statistical analysis)
- `-timeout T`: Maximum time for the benchmark to run (e.g. "10m" for 10 minutes)
Common usage patterns:
Single benchmark run with a model specified:
```bash
go test -bench=. ./benchmark/... -m llama3.3
```
## Output metrics
The benchmark reports several key metrics:
- `gen_tok/s`: Generated tokens per second
- `prompt_tok/s`: Prompt processing tokens per second
- `ttft_ms`: Time to first token in milliseconds
- `load_ms`: Model load time in milliseconds
- `gen_tokens`: Total tokens generated
- `prompt_tokens`: Total prompt tokens processed
Each benchmark runs two scenarios:
- Cold start: Model is loaded from disk for each test
- Warm start: Model is pre-loaded in memory
Three prompt lengths are tested for each scenario:
- Short prompt (100 tokens)
- Medium prompt (500 tokens)
- Long prompt (1000 tokens)

40
docs/cloud.md Normal file
View File

@@ -0,0 +1,40 @@
# Cloud
| Ollama's cloud is currently in preview. For full documentation, see [Ollama's documentation](https://docs.ollama.com/cloud).
## Cloud Models
[Cloud models](https://ollama.com/cloud) are a new kind of model in Ollama that can run without a powerful GPU. Instead, cloud models are automatically offloaded to Ollama's cloud while offering the same capabilities as local models, making it possible to keep using your local tools while running larger models that wouldnt fit on a personal computer.
Ollama currently supports the following cloud models, with more coming soon:
- `gpt-oss:20b-cloud`
- `gpt-oss:120b-cloud`
- `deepseek-v3.1:671b-cloud`
- `qwen3-coder:480b-cloud`
### Get started
To run a cloud model, open the terminal and run:
```
ollama run gpt-oss:120b-cloud
```
To run cloud models with integrations that work with Ollama, first download the cloud model:
```
ollama pull qwen3-coder:480b-cloud
```
Then sign in to Ollama:
```
ollama signin
```
Finally, access the model using the model name `qwen3-coder:480b-cloud` via Ollama's local API or tooling.
## Cloud API access
Cloud models can also be accessed directly on ollama.com's API. For more information, see the [docs](https://docs.ollama.com/cloud).

View File

@@ -11,6 +11,10 @@ Then build and run Ollama from the root directory of the repository:
go run . serve
```
> [!NOTE]
> Ollama includes native code compiled with CGO. From time to time these data structures can change and CGO can get out of sync resulting in unexpected crashes. You can force a full build of the native code by running `go clean -cache` first.
## macOS (Apple Silicon)
macOS Apple Silicon supports Metal which is built-in to the Ollama binary. No additional steps are required.
@@ -118,7 +122,7 @@ To run tests, use `go test`:
go test ./...
```
> NOTE: In rare cirumstances, you may nedd to change a package using the new
> NOTE: In rare circumstances, you may need to change a package using the new
> "synctest" package in go1.24.
>
> If you do not have the "synctest" package enabled, you will not see build or

View File

@@ -20,9 +20,9 @@ Please refer to the [GPU docs](./gpu.md).
## How can I specify the context window size?
By default, Ollama uses a context window size of 4096 tokens, unless you have a single GPU with <= 4 GB of VRAM, in which case it will default to 2048 tokens.
By default, Ollama uses a context window size of 4096 tokens for most models. The `gpt-oss` model has a default context window size of 8192 tokens.
This can be overridden with the `OLLAMA_CONTEXT_LENGTH` environment variable. For example, to set the default context window to 8K, use:
This can be overridden in Settings in the Windows and macOS App, or with the `OLLAMA_CONTEXT_LENGTH` environment variable. For example, to set the default context window to 8K, use:
```shell
OLLAMA_CONTEXT_LENGTH=8192 ollama serve
@@ -31,7 +31,7 @@ OLLAMA_CONTEXT_LENGTH=8192 ollama serve
To change this when using `ollama run`, use `/set parameter`:
```shell
/set parameter num_ctx 8192
/set parameter num_ctx 4096
```
When using the API, specify the `num_ctx` parameter:
@@ -41,11 +41,13 @@ curl http://localhost:11434/api/generate -d '{
"model": "llama3.2",
"prompt": "Why is the sky blue?",
"options": {
"num_ctx": 8192
"num_ctx": 4096
}
}'
```
Setting the context length higher may cause the model to not be able to fit onto the GPU which make the model run more slowly.
## How can I tell if my model was loaded onto the GPU?
Use the `ollama ps` command to see what models are currently loaded into memory.
@@ -57,8 +59,8 @@ ollama ps
> **Output**:
>
> ```
> NAME ID SIZE PROCESSOR UNTIL
> llama3:70b bcfb190ca3a7 42 GB 100% GPU 4 minutes from now
> NAME ID SIZE PROCESSOR CONTEXT UNTIL
> gpt-oss:20b 05afbac4bad6 16 GB 100% GPU 8192 4 minutes from now
> ```
The `Processor` column will show which memory the model was loaded in to:
@@ -148,9 +150,11 @@ docker build -t ollama-with-ca .
docker run -d -e HTTPS_PROXY=https://my.proxy.example.com -p 11434:11434 ollama-with-ca
```
## Does Ollama send my prompts and answers back to ollama.com?
## Does Ollama send my prompts and responses back to ollama.com?
No. Ollama runs locally, and conversation data does not leave your machine.
If you're running a model locally, your prompts and responses will always stay on your machine. Ollama Turbo in the App allows you to run your queries on Ollama's servers if you don't have a powerful enough GPU. Web search lets a model query the web, giving you more accurate and up-to-date information. Both Turbo and web search require sending your prompts and responses to Ollama.com. This data is neither logged nor stored.
If you don't want to see the Turbo and web search options in the app, you can disable them in Settings by turning on Airplane mode. In Airplane mode, all models will run locally, and your prompts and responses will stay on your machine.
## How can I expose Ollama on my network?
@@ -292,7 +296,7 @@ If too many requests are sent to the server, it will respond with a 503 error in
## How does Ollama handle concurrent requests?
Ollama supports two levels of concurrent processing. If your system has sufficient available memory (system memory when using CPU inference, or VRAM for GPU inference) then multiple models can be loaded at the same time. For a given model, if there is sufficient available memory when the model is loaded, it is configured to allow parallel request processing.
Ollama supports two levels of concurrent processing. If your system has sufficient available memory (system memory when using CPU inference, or VRAM for GPU inference) then multiple models can be loaded at the same time. For a given model, if there is sufficient available memory when the model is loaded, it can be configured to allow parallel request processing.
If there is insufficient available memory to load a new model request while one or more models are already loaded, all new requests will be queued until the new model can be loaded. As prior models become idle, one or more will be unloaded to make room for the new model. Queued requests will be processed in order. When using GPU inference new models must be able to completely fit in VRAM to allow concurrent model loads.
@@ -301,7 +305,7 @@ Parallel request processing for a given model results in increasing the context
The following server settings may be used to adjust how Ollama handles concurrent requests on most platforms:
- `OLLAMA_MAX_LOADED_MODELS` - The maximum number of models that can be loaded concurrently provided they fit in available memory. The default is 3 * the number of GPUs or 3 for CPU inference.
- `OLLAMA_NUM_PARALLEL` - The maximum number of parallel requests each model will process at the same time. The default will auto-select either 4 or 1 based on available memory.
- `OLLAMA_NUM_PARALLEL` - The maximum number of parallel requests each model will process at the same time. The default is 1, and will handle 1 request per model at a time.
- `OLLAMA_MAX_QUEUE` - The maximum number of requests Ollama will queue when busy before rejecting additional requests. The default is 512
Note: Windows with Radeon GPUs currently default to 1 model maximum due to limitations in ROCm v5.7 for available VRAM reporting. Once ROCm v6.2 is available, Windows Radeon will follow the defaults above. You may enable concurrent model loads on Radeon on Windows, but ensure you don't load more models than will fit into your GPUs VRAM.
@@ -333,3 +337,16 @@ The currently available K/V cache quantization types are:
How much the cache quantization impacts the model's response quality will depend on the model and the task. Models that have a high GQA count (e.g. Qwen2) may see a larger impact on precision from quantization than models with a low GQA count.
You may need to experiment with different quantization types to find the best balance between memory usage and quality.
## How can I stop Ollama from starting when I login to my computer
Ollama for Windows and macOS register as a login item during installation. You can disable this if you prefer not to have Ollama automatically start. Ollama will respect this setting across upgrades, unless you uninstall the application.
**Windows**
- Remove `%APPDATA%\Microsoft\Windows\Start Menu\Programs\Startup\Ollama.lnk`
**MacOS Monterey (v12)**
- Open `Settings` -> `Users & Groups` -> `Login Items` and find the `Ollama` entry, then click the `-` (minus) to remove
**MacOS Ventura (v13) and later**
- Open `Settings` and search for "Login Items", find the `Ollama` entry under "Allow in the Background`, then click the slider to disable.

View File

@@ -1,21 +1,28 @@
# GPU
## Nvidia
Ollama supports Nvidia GPUs with compute capability 5.0+.
Ollama supports Nvidia GPUs with compute capability 5.0+ and driver version 531 and newer.
Check your compute compatibility to see if your card is supported:
[https://developer.nvidia.com/cuda-gpus](https://developer.nvidia.com/cuda-gpus)
| Compute Capability | Family | Cards |
| ------------------ | ------------------- | ----------------------------------------------------------------------------------------------------------- |
| 9.0 | NVIDIA | `H200` `H100` |
| 12.0 | GeForce RTX 50xx | `RTX 5060` `RTX 5060 Ti` `RTX 5070` `RTX 5070 Ti` `RTX 5080` `RTX 5090` |
| | NVIDIA Professioal | `RTX PRO 4000 Blackwell` `RTX PRO 4500 Blackwell` `RTX PRO 5000 Blackwell` `RTX PRO 6000 Blackwell` |
| 11.0 | Jetson | `T4000` `T5000` (Requires driver 580 or newer) |
| 10.3 | NVIDIA Professioal | `B300` `GB300` (Requires driver 580 or newer) |
| 10.0 | NVIDIA Professioal | `B200` `GB200` (Requires driver 580 or newer) |
| 9.0 | NVIDIA | `H200` `H100` `GH200` |
| 8.9 | GeForce RTX 40xx | `RTX 4090` `RTX 4080 SUPER` `RTX 4080` `RTX 4070 Ti SUPER` `RTX 4070 Ti` `RTX 4070 SUPER` `RTX 4070` `RTX 4060 Ti` `RTX 4060` |
| | NVIDIA Professional | `L4` `L40` `RTX 6000` |
| 8.7 | Jetson | `Orin Nano` `Orin NX` `AGX Orin` |
| 8.6 | GeForce RTX 30xx | `RTX 3090 Ti` `RTX 3090` `RTX 3080 Ti` `RTX 3080` `RTX 3070 Ti` `RTX 3070` `RTX 3060 Ti` `RTX 3060` `RTX 3050 Ti` `RTX 3050` |
| | NVIDIA Professional | `A40` `RTX A6000` `RTX A5000` `RTX A4000` `RTX A3000` `RTX A2000` `A10` `A16` `A2` |
| 8.0 | NVIDIA | `A100` `A30` |
| 7.5 | GeForce GTX/RTX | `GTX 1650 Ti` `TITAN RTX` `RTX 2080 Ti` `RTX 2080` `RTX 2070` `RTX 2060` |
| | NVIDIA Professional | `T4` `RTX 5000` `RTX 4000` `RTX 3000` `T2000` `T1200` `T1000` `T600` `T500` |
| | Quadro | `RTX 8000` `RTX 6000` `RTX 5000` `RTX 4000` |
| 7.2 | Jetson | `Xavier NX` `AGX Xavier` (Jetpack 5) |
| 7.0 | NVIDIA | `TITAN V` `V100` `Quadro GV100` |
| 6.1 | NVIDIA TITAN | `TITAN Xp` `TITAN X` |
| | GeForce GTX | `GTX 1080 Ti` `GTX 1080` `GTX 1070 Ti` `GTX 1070` `GTX 1060` `GTX 1050 Ti` `GTX 1050` |
@@ -49,20 +56,23 @@ sudo modprobe nvidia_uvm`
Ollama supports the following AMD GPUs:
### Linux Support
| Family | Cards and accelerators |
| -------------- | ---------------------------------------------------------------------------------------------------------------------------------------------- |
| AMD Radeon RX | `7900 XTX` `7900 XT` `7900 GRE` `7800 XT` `7700 XT` `7600 XT` `7600` `6950 XT` `6900 XTX` `6900XT` `6800 XT` `6800` `Vega 64` `Vega 56` |
| AMD Radeon PRO | `W7900` `W7800` `W7700` `W7600` `W7500` `W6900X` `W6800X Duo` `W6800X` `W6800` `V620` `V420` `V340` `V320` `Vega II Duo` `Vega II` `VII` `SSG` |
| AMD Instinct | `MI300X` `MI300A` `MI300` `MI250X` `MI250` `MI210` `MI200` `MI100` `MI60` `MI50` |
| Family | Cards and accelerators |
| -------------- | -------------------------------------------------------------------------------------------------------------------- |
| AMD Radeon RX | `7900 XTX` `7900 XT` `7900 GRE` `7800 XT` `7700 XT` `7600 XT` `7600` `6950 XT` `6900 XTX` `6900XT` `6800 XT` `6800` |
| AMD Radeon PRO | `W7900` `W7800` `W7700` `W7600` `W7500` `W6900X` `W6800X Duo` `W6800X` `W6800` `V620` `V420` `V340` `V320` |
| AMD Instinct | `MI300X` `MI300A` `MI300` `MI250X` `MI250` `MI210` `MI200` `MI100` |
### Windows Support
With ROCm v6.1, the following GPUs are supported on Windows.
With ROCm v6.2, the following GPUs are supported on Windows.
| Family | Cards and accelerators |
| -------------- | ---------------------------------------------------------------------------------------------------------------------------------------------- |
| AMD Radeon RX | `7900 XTX` `7900 XT` `7900 GRE` `7800 XT` `7700 XT` `7600 XT` `7600` `6950 XT` `6900 XTX` `6900XT` `6800 XT` `6800` |
| AMD Radeon PRO | `W7900` `W7800` `W7700` `W7600` `W7500` `W6900X` `W6800X Duo` `W6800X` `W6800` `V620` |
### Known Workarounds
- The RX Vega 56 requires `HSA_ENABLE_SDMA=0` to disable SDMA
### Overrides on Linux
Ollama leverages the AMD ROCm library, which does not support all AMD GPUs. In
@@ -83,8 +93,6 @@ At this time, the known supported GPU types on linux are the following LLVM Targ
This table shows some example GPUs that map to these LLVM targets:
| **LLVM Target** | **An Example GPU** |
|-----------------|---------------------|
| gfx900 | Radeon RX Vega 56 |
| gfx906 | Radeon Instinct MI50 |
| gfx908 | Radeon Instinct MI100 |
| gfx90a | Radeon Instinct MI210 |
| gfx940 | Radeon Instinct MI300 |

View File

@@ -53,6 +53,8 @@ FROM /path/to/safetensors/directory
If you create the Modelfile in the same directory as the weights, you can use the command `FROM .`.
If you do not create the Modelfile, ollama will act as if there was a Modelfile with the command `FROM .`.
Now run the `ollama create` command from the directory where you created the `Modelfile`:
```shell
@@ -132,22 +134,12 @@ success
### Supported Quantizations
- `q4_0`
- `q4_1`
- `q5_0`
- `q5_1`
- `q8_0`
#### K-means Quantizations
- `q3_K_S`
- `q3_K_M`
- `q3_K_L`
- `q4_K_S`
- `q4_K_M`
- `q5_K_S`
- `q5_K_M`
- `q6_K`
## Sharing your model on ollama.com

View File

@@ -11,12 +11,13 @@ curl -fsSL https://ollama.com/install.sh | sh
## Manual install
> [!NOTE]
> If you are upgrading from a prior version, you should remove the old libraries with `sudo rm -rf /usr/lib/ollama` first.
> If you are upgrading from a prior version, you **MUST** remove the old libraries with `sudo rm -rf /usr/lib/ollama` first.
Download and extract the package:
```shell
curl -L https://ollama.com/download/ollama-linux-amd64.tgz -o ollama-linux-amd64.tgz
curl -LO https://ollama.com/download/ollama-linux-amd64.tgz
sudo rm -rf /usr/lib/ollama
sudo tar -C /usr -xzf ollama-linux-amd64.tgz
```
@@ -34,7 +35,11 @@ ollama -v
### AMD GPU install
If you have an AMD GPU, also download and extract the additional ROCm package:
If you have an AMD GPU, **also** download and extract the additional ROCm package:
> [!IMPORTANT]
> The ROCm tgz contains only AMD dependent libraries. You must extract **both** `ollama-linux-amd64.tgz` and `ollama-linux-amd64-rocm.tgz` into the same location.
```shell
curl -L https://ollama.com/download/ollama-linux-amd64-rocm.tgz -o ollama-linux-amd64-rocm.tgz
@@ -112,8 +117,8 @@ sudo systemctl status ollama
> While AMD has contributed the `amdgpu` driver upstream to the official linux
> kernel source, the version is older and may not support all ROCm features. We
> recommend you install the latest driver from
> https://www.amd.com/en/support/linux-drivers for best support of your Radeon
> GPU.
> [AMD](https://www.amd.com/en/support/download/linux-drivers.html) for best support
> of your Radeon GPU.
## Customizing

42
docs/macos.md Normal file
View File

@@ -0,0 +1,42 @@
# Ollama for macOS
## System Requirements
* MacOS Sonoma (v14) or newer
* Apple M series (CPU and GPU support) or x86 (CPU only)
## Filesystem Requirements
The preferred method of installation is to mount the `ollama.dmg` and drag-and-drop the Ollama application to the system-wide `Applications` folder. Upon startup, the Ollama app will verify the `ollama` CLI is present in your PATH, and if not detected, will prompt for permission to create a link in `/usr/local/bin`
Once you've installed Ollama, you'll need additional space for storing the Large Language models, which can be tens to hundreds of GB in size. If your home directory doesn't have enough space, you can change where the binaries are installed, and where the models are stored.
### Changing Install Location
To install the Ollama application somewhere other than `Applications`, place the Ollama application in the desired location, and ensure the CLI `Ollama.app/Contents/Resources/ollama` or a sym-link to the CLI can be found in your path. Upon first start decline the "Move to Applications?" request.
## Troubleshooting
Ollama on MacOS stores files in a few different locations.
- `~/.ollama` contains models and configuration
- `~/.ollama/logs` contains logs
- *app.log* contains most recent logs from the GUI application
- *server.log* contains the most recent server logs
- `<install location>/Ollama.app/Contents/Resources/ollama` the CLI binary
## Uninstall
To fully remove Ollama from your system, remove the following files and folders:
```
sudo rm -rf /Applications/Ollama.app
sudo rm /usr/local/bin/ollama
rm -rf "~/Library/Application Support/Ollama"
rm -rf "~/Library/Saved Application State/com.electron.ollama.savedState"
rm -rf ~/Library/Caches/com.electron.ollama/
rm -rf ~/Library/Caches/ollama
rm -rf ~/Library/WebKit/com.electron.ollama
rm -rf ~/.ollama
```

View File

@@ -150,10 +150,7 @@ PARAMETER <parameter> <parametervalue>
| Parameter | Description | Value Type | Example Usage |
| -------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- | ---------- | -------------------- |
| mirostat | Enable Mirostat sampling for controlling perplexity. (default: 0, 0 = disabled, 1 = Mirostat, 2 = Mirostat 2.0) | int | mirostat 0 |
| mirostat_eta | Influences how quickly the algorithm responds to feedback from the generated text. A lower learning rate will result in slower adjustments, while a higher learning rate will make the algorithm more responsive. (Default: 0.1) | float | mirostat_eta 0.1 |
| mirostat_tau | Controls the balance between coherence and diversity of the output. A lower value will result in more focused and coherent text. (Default: 5.0) | float | mirostat_tau 5.0 |
| num_ctx | Sets the size of the context window used to generate the next token. (Default: 2048) | int | num_ctx 4096 |
| num_ctx | Sets the size of the context window used to generate the next token. (Default: 4096) | int | num_ctx 4096 |
| repeat_last_n | Sets how far back for the model to look back to prevent repetition. (Default: 64, 0 = disabled, -1 = num_ctx) | int | repeat_last_n 64 |
| repeat_penalty | Sets how strongly to penalize repetitions. A higher value (e.g., 1.5) will penalize repetitions more strongly, while a lower value (e.g., 0.9) will be more lenient. (Default: 1.1) | float | repeat_penalty 1.1 |
| temperature | The temperature of the model. Increasing the temperature will make the model answer more creatively. (Default: 0.8) | float | temperature 0.7 |

View File

@@ -72,7 +72,7 @@ client = OpenAI(base_url="http://localhost:11434/v1", api_key="ollama")
# Define the schema for the response
class FriendInfo(BaseModel):
name: str
age: int
age: int
is_available: bool
class FriendList(BaseModel):

View File

@@ -9,7 +9,7 @@ cat ~/.ollama/logs/server.log
On **Linux** systems with systemd, the logs can be found with this command:
```shell
journalctl -u ollama --no-pager --follow --pager-end
journalctl -u ollama --no-pager --follow --pager-end
```
When you run Ollama in a **container**, the logs go to stdout/stderr in the container:
@@ -23,7 +23,7 @@ docker logs <container-name>
If manually running `ollama serve` in a terminal, the logs will be on that terminal.
When you run Ollama on **Windows**, there are a few different locations. You can view them in the explorer window by hitting `<cmd>+R` and type in:
- `explorer %LOCALAPPDATA%\Ollama` to view logs. The most recent server logs will be in `server.log` and older logs will be in `server-#.log`
- `explorer %LOCALAPPDATA%\Ollama` to view logs. The most recent server logs will be in `server.log` and older logs will be in `server-#.log`
- `explorer %LOCALAPPDATA%\Programs\Ollama` to browse the binaries (The installer adds this to your user PATH)
- `explorer %HOMEPATH%\.ollama` to browse where models and configuration is stored
@@ -38,26 +38,14 @@ Join the [Discord](https://discord.gg/ollama) for help interpreting the logs.
## LLM libraries
Ollama includes multiple LLM libraries compiled for different GPUs and CPU vector features. Ollama tries to pick the best one based on the capabilities of your system. If this autodetection has problems, or you run into other problems (e.g. crashes in your GPU) you can workaround this by forcing a specific LLM library. `cpu_avx2` will perform the best, followed by `cpu_avx` an the slowest but most compatible is `cpu`. Rosetta emulation under MacOS will work with the `cpu` library.
In the server log, you will see a message that looks something like this (varies from release to release):
```
Dynamic LLM libraries [rocm_v6 cpu cpu_avx cpu_avx2 cuda_v11 rocm_v5]
```
Ollama includes multiple LLM libraries compiled for different GPU libraries and versions. Ollama tries to pick the best one based on the capabilities of your system. If this autodetection has problems, or you run into other problems (e.g. crashes in your GPU) you can workaround this by forcing a specific LLM library.
**Experimental LLM Library Override**
You can set OLLAMA_LLM_LIBRARY to any of the available LLM libraries to bypass autodetection, so for example, if you have a CUDA card, but want to force the CPU LLM library with AVX2 vector support, use:
You can set OLLAMA_LLM_LIBRARY to any of the available LLM libraries to limit autodetection, so for example, if you have both CUDA and AMD GPUs, but want to force the CUDA v13 only, use:
```shell
OLLAMA_LLM_LIBRARY="cpu_avx2" ollama serve
```
You can see what features your CPU has with the following.
```shell
cat /proc/cpuinfo| grep flags | head -1
OLLAMA_LLM_LIBRARY="cuda_v13" ollama serve
```
## Installing older or pre-release versions on Linux
@@ -92,12 +80,15 @@ If none of those resolve the problem, gather additional information and file an
- Set `CUDA_ERROR_LEVEL=50` and try again to get more diagnostic logs
- Check dmesg for any errors `sudo dmesg | grep -i nvrm` and `sudo dmesg | grep -i nvidia`
You may get more details for initialization failures by enabling debug prints in the uvm driver. You should only use this temporarily while troubleshooting
- `sudo rmmod nvidia_uvm` then `sudo modprobe nvidia_uvm uvm_debug_prints=1`
## AMD GPU Discovery
On linux, AMD GPU access typically requires `video` and/or `render` group membership to access the `/dev/kfd` device. If permissions are not set up correctly, Ollama will detect this and report an error in the server log.
When running in a container, in some Linux distributions and container runtimes, the ollama process may be unable to access the GPU. Use `ls -lnd /dev/kfd /dev/dri /dev/dri/*` on the host system to determine the **numeric** group IDs on your system, and pass additional `--group-add ...` arguments to the container so it can access the required devices. For example, in the following output `crw-rw---- 1 0 44 226, 0 Sep 16 16:55 /dev/dri/card0` the group ID column is `44`
When running in a container, in some Linux distributions and container runtimes, the ollama process may be unable to access the GPU. Use `ls -lnd /dev/kfd /dev/dri /dev/dri/*` on the host system to determine the **numeric** group IDs on your system, and pass additional `--group-add ...` arguments to the container so it can access the required devices. For example, in the following output `crw-rw---- 1 0 44 226, 0 Sep 16 16:55 /dev/dri/card0` the group ID column is `44`
If you are experiencing problems getting Ollama to correctly discover or use your GPU for inference, the following may help isolate the failure.
- `AMD_LOG_LEVEL=3` Enable info log levels in the AMD HIP/ROCm libraries. This can help show more detailed error codes that can help troubleshoot problems

View File

@@ -30,20 +30,6 @@ To install the Ollama application in a location different than your home directo
OllamaSetup.exe /DIR="d:\some\location"
```
### Changing Model Location
To change where Ollama stores the downloaded models instead of using your home directory, set the environment variable `OLLAMA_MODELS` in your user account.
1. Start the Settings (Windows 11) or Control Panel (Windows 10) application and search for _environment variables_.
2. Click on _Edit environment variables for your account_.
3. Edit or create a new variable for your user account for `OLLAMA_MODELS` where you want the models stored
4. Click OK/Apply to save.
If Ollama is already running, Quit the tray application and relaunch it from the Start menu, or a new terminal started after you saved the environment variables.
## API Access
Here's a quick example showing API access from `powershell`
@@ -82,9 +68,9 @@ If you'd like to install or integrate Ollama as a service, a standalone
`ollama-windows-amd64.zip` zip file is available containing only the Ollama CLI
and GPU library dependencies for Nvidia. If you have an AMD GPU, also download
and extract the additional ROCm package `ollama-windows-amd64-rocm.zip` into the
same directory. This allows for embedding Ollama in existing applications, or
running it as a system service via `ollama serve` with tools such as
[NSSM](https://nssm.cc/).
same directory. Both zip files are necessary for a complete AMD installation.
This allows for embedding Ollama in existing applications, or running it as a
system service via `ollama serve` with tools such as [NSSM](https://nssm.cc/).
> [!NOTE]
> If you are upgrading from a prior version, you should remove the old directories first.

View File

@@ -24,6 +24,9 @@ func Host() *url.URL {
switch {
case !ok:
scheme, hostport = "http", s
if s == "ollama.com" {
scheme, hostport = "https", "ollama.com:443"
}
case scheme == "http":
defaultPort = "80"
case scheme == "https":
@@ -134,8 +137,19 @@ func LoadTimeout() (loadTimeout time.Duration) {
return loadTimeout
}
func Bool(k string) func() bool {
return func() bool {
func Remotes() []string {
var r []string
raw := strings.TrimSpace(Var("OLLAMA_REMOTES"))
if raw == "" {
r = []string{"ollama.com"}
} else {
r = strings.Split(raw, ",")
}
return r
}
func BoolWithDefault(k string) func(defaultValue bool) bool {
return func(defaultValue bool) bool {
if s := Var(k); s != "" {
b, err := strconv.ParseBool(s)
if err != nil {
@@ -145,15 +159,35 @@ func Bool(k string) func() bool {
return b
}
return false
return defaultValue
}
}
func Bool(k string) func() bool {
withDefault := BoolWithDefault(k)
return func() bool {
return withDefault(false)
}
}
// LogLevel returns the log level for the application.
// Values are 0 or false INFO (Default), 1 or true DEBUG, 2 TRACE
func LogLevel() slog.Level {
level := slog.LevelInfo
if s := Var("OLLAMA_DEBUG"); s != "" {
if b, _ := strconv.ParseBool(s); b {
level = slog.LevelDebug
} else if i, _ := strconv.ParseInt(s, 10, 64); i != 0 {
level = slog.Level(i * -4)
}
}
return level
}
var (
// Debug enabled additional debug information.
Debug = Bool("OLLAMA_DEBUG")
// FlashAttention enables the experimental flash attention feature.
FlashAttention = Bool("OLLAMA_FLASH_ATTENTION")
FlashAttention = BoolWithDefault("OLLAMA_FLASH_ATTENTION")
// KvCacheType is the quantization type for the K/V cache.
KvCacheType = String("OLLAMA_KV_CACHE_TYPE")
// NoHistory disables readline history.
@@ -169,7 +203,9 @@ var (
// Enable the new Ollama engine
NewEngine = Bool("OLLAMA_NEW_ENGINE")
// ContextLength sets the default context length
ContextLength = Int64("OLLAMA_CONTEXT_LENGTH", -1)
ContextLength = Uint("OLLAMA_CONTEXT_LENGTH", 4096)
// Auth enables authentication between the Ollama client and server
UseAuth = Bool("OLLAMA_AUTH")
)
func String(s string) func() string {
@@ -184,6 +220,7 @@ var (
CudaVisibleDevices = String("CUDA_VISIBLE_DEVICES")
HipVisibleDevices = String("HIP_VISIBLE_DEVICES")
RocrVisibleDevices = String("ROCR_VISIBLE_DEVICES")
VkVisibleDevices = String("GGML_VK_VISIBLE_DEVICES")
GpuDeviceOrdinal = String("GPU_DEVICE_ORDINAL")
HsaOverrideGfxVersion = String("HSA_OVERRIDE_GFX_VERSION")
)
@@ -204,13 +241,11 @@ func Uint(key string, defaultValue uint) func() uint {
var (
// NumParallel sets the number of parallel model requests. NumParallel can be configured via the OLLAMA_NUM_PARALLEL environment variable.
NumParallel = Uint("OLLAMA_NUM_PARALLEL", 0)
NumParallel = Uint("OLLAMA_NUM_PARALLEL", 1)
// MaxRunners sets the maximum number of loaded models. MaxRunners can be configured via the OLLAMA_MAX_LOADED_MODELS environment variable.
MaxRunners = Uint("OLLAMA_MAX_LOADED_MODELS", 0)
// MaxQueue sets the maximum number of queued requests. MaxQueue can be configured via the OLLAMA_MAX_QUEUE environment variable.
MaxQueue = Uint("OLLAMA_MAX_QUEUE", 512)
// MaxVRAM sets a maximum VRAM override in bytes. MaxVRAM can be configured via the OLLAMA_MAX_VRAM environment variable.
MaxVRAM = Uint("OLLAMA_MAX_VRAM", 0)
)
func Uint64(key string, defaultValue uint64) func() uint64 {
@@ -227,20 +262,6 @@ func Uint64(key string, defaultValue uint64) func() uint64 {
}
}
func Int64(key string, defaultValue int64) func() int64 {
return func() int64 {
if s := Var(key); s != "" {
if n, err := strconv.ParseInt(s, 10, 64); err != nil {
slog.Warn("invalid environment variable, using default", "key", key, "value", s, "default", defaultValue)
} else {
return n
}
}
return defaultValue
}
}
// Set aside VRAM per GPU
var GpuOverhead = Uint64("OLLAMA_GPU_OVERHEAD", 0)
@@ -252,8 +273,8 @@ type EnvVar struct {
func AsMap() map[string]EnvVar {
ret := map[string]EnvVar{
"OLLAMA_DEBUG": {"OLLAMA_DEBUG", Debug(), "Show additional debug information (e.g. OLLAMA_DEBUG=1)"},
"OLLAMA_FLASH_ATTENTION": {"OLLAMA_FLASH_ATTENTION", FlashAttention(), "Enabled flash attention"},
"OLLAMA_DEBUG": {"OLLAMA_DEBUG", LogLevel(), "Show additional debug information (e.g. OLLAMA_DEBUG=1)"},
"OLLAMA_FLASH_ATTENTION": {"OLLAMA_FLASH_ATTENTION", FlashAttention(false), "Enabled flash attention"},
"OLLAMA_KV_CACHE_TYPE": {"OLLAMA_KV_CACHE_TYPE", KvCacheType(), "Quantization type for the K/V cache (default: f16)"},
"OLLAMA_GPU_OVERHEAD": {"OLLAMA_GPU_OVERHEAD", GpuOverhead(), "Reserve a portion of VRAM per GPU (bytes)"},
"OLLAMA_HOST": {"OLLAMA_HOST", Host(), "IP Address for the ollama server (default 127.0.0.1:11434)"},
@@ -269,8 +290,9 @@ func AsMap() map[string]EnvVar {
"OLLAMA_ORIGINS": {"OLLAMA_ORIGINS", AllowedOrigins(), "A comma separated list of allowed origins"},
"OLLAMA_SCHED_SPREAD": {"OLLAMA_SCHED_SPREAD", SchedSpread(), "Always schedule model across all GPUs"},
"OLLAMA_MULTIUSER_CACHE": {"OLLAMA_MULTIUSER_CACHE", MultiUserCache(), "Optimize prompt caching for multi-user scenarios"},
"OLLAMA_CONTEXT_LENGTH": {"OLLAMA_CONTEXT_LENGTH", ContextLength(), "Context length to use unless otherwise specified (default 4096 or 2048 with low VRAM)"},
"OLLAMA_CONTEXT_LENGTH": {"OLLAMA_CONTEXT_LENGTH", ContextLength(), "Context length to use unless otherwise specified (default: 4096)"},
"OLLAMA_NEW_ENGINE": {"OLLAMA_NEW_ENGINE", NewEngine(), "Enable the new Ollama engine"},
"OLLAMA_REMOTES": {"OLLAMA_REMOTES", Remotes(), "Allowed hosts for remote models (default \"ollama.com\")"},
// Informational
"HTTP_PROXY": {"HTTP_PROXY", String("HTTP_PROXY")(), "HTTP proxy"},
@@ -289,6 +311,7 @@ func AsMap() map[string]EnvVar {
ret["CUDA_VISIBLE_DEVICES"] = EnvVar{"CUDA_VISIBLE_DEVICES", CudaVisibleDevices(), "Set which NVIDIA devices are visible"}
ret["HIP_VISIBLE_DEVICES"] = EnvVar{"HIP_VISIBLE_DEVICES", HipVisibleDevices(), "Set which AMD devices are visible by numeric ID"}
ret["ROCR_VISIBLE_DEVICES"] = EnvVar{"ROCR_VISIBLE_DEVICES", RocrVisibleDevices(), "Set which AMD devices are visible by UUID or numeric ID"}
ret["GGML_VK_VISIBLE_DEVICES"] = EnvVar{"GGML_VK_VISIBLE_DEVICES", VkVisibleDevices(), "Set which Vulkan devices are visible by numeric ID"}
ret["GPU_DEVICE_ORDINAL"] = EnvVar{"GPU_DEVICE_ORDINAL", GpuDeviceOrdinal(), "Set which AMD devices are visible by numeric ID"}
ret["HSA_OVERRIDE_GFX_VERSION"] = EnvVar{"HSA_OVERRIDE_GFX_VERSION", HsaOverrideGfxVersion(), "Override the gfx used for all detected AMD GPUs"}
ret["OLLAMA_INTEL_GPU"] = EnvVar{"OLLAMA_INTEL_GPU", IntelGPU(), "Enable experimental Intel GPU detection"}

View File

@@ -1,11 +1,13 @@
package envconfig
import (
"log/slog"
"math"
"testing"
"time"
"github.com/google/go-cmp/cmp"
"github.com/ollama/ollama/logutil"
)
func TestHost(t *testing.T) {
@@ -35,6 +37,7 @@ func TestHost(t *testing.T) {
"https": {"https://1.2.3.4", "https://1.2.3.4:443"},
"https port": {"https://1.2.3.4:4321", "https://1.2.3.4:4321"},
"proxy path": {"https://example.com/ollama", "https://example.com:443/ollama"},
"ollama.com": {"ollama.com", "https://ollama.com:443"},
}
for name, tt := range cases {
@@ -278,9 +281,9 @@ func TestVar(t *testing.T) {
}
func TestContextLength(t *testing.T) {
cases := map[string]int64{
"": -1,
"4096": 4096,
cases := map[string]uint{
"": 4096,
"2048": 2048,
}
for k, v := range cases {
@@ -292,3 +295,34 @@ func TestContextLength(t *testing.T) {
})
}
}
func TestLogLevel(t *testing.T) {
cases := map[string]slog.Level{
// Default to INFO
"": slog.LevelInfo,
"false": slog.LevelInfo,
"f": slog.LevelInfo,
"0": slog.LevelInfo,
// True values enable Debug
"true": slog.LevelDebug,
"t": slog.LevelDebug,
// Positive values increase verbosity
"1": slog.LevelDebug,
"2": logutil.LevelTrace,
// Negative values decrease verbosity
"-1": slog.LevelWarn,
"-2": slog.LevelError,
}
for k, v := range cases {
t.Run(k, func(t *testing.T) {
t.Setenv("OLLAMA_DEBUG", k)
if i := LogLevel(); i != v {
t.Errorf("%s: expected %d, got %d", k, v, i)
}
})
}
}

View File

@@ -8,6 +8,7 @@ type Config interface {
Bool(string, ...bool) bool
Strings(string, ...[]string) []string
Uints(string, ...[]uint32) []uint32
Ints(string, ...[]int32) []int32
Floats(string, ...[]float32) []float32
Bools(string, ...[]bool) []bool
}

View File

@@ -1,20 +1,24 @@
package ggml
import (
"cmp"
"encoding/binary"
"errors"
"fmt"
"io"
"log/slog"
"math"
"slices"
"strings"
"github.com/ollama/ollama/format"
"github.com/ollama/ollama/fs/util/bufioutil"
)
type GGML struct {
container
model
Length int64
}
type model interface {
@@ -33,15 +37,16 @@ func (kv KV) Kind() string {
}
func (kv KV) ParameterCount() uint64 {
return keyValue[uint64](kv, "general.parameter_count")
val, _ := keyValue(kv, "general.parameter_count", uint64(0))
return val
}
func (kv KV) FileType() fileType {
func (kv KV) FileType() FileType {
if t := kv.Uint("general.file_type"); t > 0 {
return fileType(t)
return FileType(t)
}
return fileTypeUnknown
return FileTypeUnknown
}
func (kv KV) BlockCount() uint64 {
@@ -52,16 +57,66 @@ func (kv KV) EmbeddingLength() uint64 {
return uint64(kv.Uint("embedding_length"))
}
func (kv KV) HeadCount() uint64 {
return uint64(kv.Uint("attention.head_count"))
func (kv KV) HeadCount() []uint64 {
headCountDefault := uint32(1)
headCount := kv.UintOrArrayValueAsArray("attention.head_count", headCountDefault)
if len(headCount) == 1 {
headCountDefault = headCount[0]
}
nLayers := int(kv.BlockCount())
if len(headCount) > nLayers {
slog.Warn("got more elements of attention.head_count than layers", "len(headCount)", len(headCount), "layers", nLayers)
}
out := make([]uint64, nLayers)
for i := range nLayers {
if i >= len(headCount) {
out[i] = uint64(headCountDefault)
} else {
out[i] = uint64(headCount[i])
}
}
return out
}
func (kv KV) HeadCountKV() uint64 {
return uint64(kv.Uint("attention.head_count_kv", 1))
func (kv KV) HeadCountMax() uint64 {
return uint64(kv.UintOrMaxArrayValue("attention.head_count", 1))
}
func (kv KV) EmbeddingHeadCount() uint64 {
if heads := kv.HeadCount(); heads > 0 {
func (kv KV) HeadCountMin() uint64 {
return uint64(kv.UintOrMinArrayValue("attention.head_count", 1))
}
func (kv KV) HeadCountKV() []uint64 {
headCountKVDefault := uint32(1)
headCountKV := kv.UintOrArrayValueAsArray("attention.head_count_kv", headCountKVDefault)
if len(headCountKV) == 1 {
headCountKVDefault = headCountKV[0]
}
nLayers := int(kv.BlockCount())
if len(headCountKV) > nLayers {
slog.Warn("got more elements of attention.head_count than layers", "len(headCountKV)", len(headCountKV), "layers", nLayers)
}
out := make([]uint64, nLayers)
for i := range nLayers {
if i >= len(headCountKV) {
out[i] = uint64(headCountKVDefault)
} else {
out[i] = uint64(headCountKV[i])
}
}
return out
}
func (kv KV) HeadCountKVMax() uint64 {
return uint64(kv.UintOrMaxArrayValue("attention.head_count_kv", 1))
}
func (kv KV) HeadCountKVMin() uint64 {
return uint64(kv.UintOrMinArrayValue("attention.head_count_kv", 1))
}
func (kv KV) EmbeddingHeadCountMax() uint64 {
if heads := kv.HeadCountMin(); heads > 0 {
return kv.EmbeddingLength() / heads
}
@@ -69,15 +124,11 @@ func (kv KV) EmbeddingHeadCount() uint64 {
}
func (kv KV) EmbeddingHeadCountK() uint64 {
return uint64(kv.Uint("attention.key_length", uint32(kv.EmbeddingHeadCount())))
return uint64(kv.Uint("attention.key_length", uint32(kv.EmbeddingHeadCountMax())))
}
func (kv KV) EmbeddingHeadCountV() uint64 {
return uint64(kv.Uint("attention.value_length", uint32(kv.EmbeddingHeadCount())))
}
func (kv KV) GQA() uint64 {
return kv.HeadCount() / kv.HeadCountKV()
return uint64(kv.Uint("attention.value_length", uint32(kv.EmbeddingHeadCountMax())))
}
func (kv KV) ContextLength() uint64 {
@@ -88,69 +139,142 @@ func (kv KV) ChatTemplate() string {
return kv.String("tokenizer.chat_template")
}
// ssm architecture parameters
func (kv KV) SSMConvKernel() uint64 {
return uint64(kv.Uint("ssm.conv_kernel"))
}
func (kv KV) SSMInnerSize() uint64 {
return uint64(kv.Uint("ssm.inner_size"))
}
func (kv KV) SSMStateSize() uint64 {
return uint64(kv.Uint("ssm.state_size"))
}
func (kv KV) SSMGroupCount() uint64 {
return uint64(kv.Uint("ssm.group_count"))
}
// general types
func (kv KV) String(key string, defaultValue ...string) string {
return keyValue(kv, key, append(defaultValue, "")...)
val, _ := keyValue(kv, key, append(defaultValue, "")...)
return val
}
func (kv KV) Uint(key string, defaultValue ...uint32) uint32 {
return keyValue(kv, key, append(defaultValue, 0)...)
val, _ := keyValue(kv, key, append(defaultValue, 0)...)
return val
}
func (kv KV) Float(key string, defaultValue ...float32) float32 {
return keyValue(kv, key, append(defaultValue, 0)...)
val, _ := keyValue(kv, key, append(defaultValue, 0)...)
return val
}
func (kv KV) Bool(key string, defaultValue ...bool) bool {
return keyValue(kv, key, append(defaultValue, false)...)
val, _ := keyValue(kv, key, append(defaultValue, false)...)
return val
}
func (kv KV) UintOrMaxArrayValue(key string, defaultValue uint32) uint32 {
_, max := kv.UintOrArrayValue(key, defaultValue)
return max
}
func (kv KV) UintOrMinArrayValue(key string, defaultValue uint32) uint32 {
min, _ := kv.UintOrArrayValue(key, defaultValue)
return min
}
func (kv KV) UintOrArrayValue(key string, defaultValue uint32) (uint32, uint32) {
arrVal := kv.UintOrArrayValueAsArray(key, defaultValue)
return slices.Min(arrVal), slices.Max(arrVal)
}
func (kv KV) UintOrArrayValueAsArray(key string, defaultValue uint32) []uint32 {
if u32, ok := keyValue(kv, key, uint32(0)); ok {
return []uint32{u32}
} else if u32s, ok := keyValue(kv, key, &array[uint32]{}); ok {
return u32s.values
} else if i32s, ok := keyValue(kv, key, &array[int32]{}); ok {
dst := make([]uint32, len(i32s.values))
for i, v := range i32s.values {
if v < 0 {
slog.Warn("array values are unexpectedly negative", "key", key, "i", i, "v", v)
}
dst[i] = uint32(v)
}
return dst
}
return []uint32{defaultValue}
}
func (kv KV) Strings(key string, defaultValue ...[]string) []string {
r := keyValue(kv, key, &array{})
s := make([]string, r.size)
for i := range r.size {
s[i] = r.values[i].(string)
}
val, _ := keyValue(kv, key, &array[string]{values: append(defaultValue, []string(nil))[0]})
return val.values
}
return s
func (kv KV) Ints(key string, defaultValue ...[]int32) []int32 {
val, _ := keyValue(kv, key, &array[int32]{values: append(defaultValue, []int32(nil))[0]})
return val.values
}
func (kv KV) Uints(key string, defaultValue ...[]uint32) []uint32 {
r := keyValue(kv, key, &array{})
s := make([]uint32, r.size)
for i := range r.size {
s[i] = uint32(r.values[i].(int32))
}
return s
val, _ := keyValue(kv, key, &array[uint32]{values: append(defaultValue, []uint32(nil))[0]})
return val.values
}
func (kv KV) Floats(key string, defaultValue ...[]float32) []float32 {
r := keyValue(kv, key, &array{})
s := make([]float32, r.size)
for i := range r.size {
s[i] = float32(r.values[i].(float32))
}
return s
val, _ := keyValue(kv, key, &array[float32]{values: append(defaultValue, []float32(nil))[0]})
return val.values
}
func (kv KV) Bools(key string, defaultValue ...[]bool) []bool {
val, _ := keyValue(kv, key, &array[bool]{values: append(defaultValue, []bool(nil))[0]})
return val.values
}
func (kv KV) OllamaEngineRequired() bool {
return slices.Contains([]string{
"gemma3",
"gemma3n",
"mistral3",
"qwen3",
"qwen3moe",
"llama4",
"mllama",
"qwen25vl",
"gptoss", "gpt-oss",
}, kv.Architecture())
}
func keyValue[T string | uint32 | uint64 | float32 | *array | bool](kv KV, key string, defaultValue ...T) T {
type valueTypes interface {
uint8 | int8 | uint16 | int16 |
uint32 | int32 | uint64 | int64 |
string | float32 | float64 | bool
}
type arrayValueTypes interface {
*array[uint8] | *array[int8] | *array[uint16] | *array[int16] |
*array[uint32] | *array[int32] | *array[uint64] | *array[int64] |
*array[string] | *array[float32] | *array[float64] | *array[bool]
}
func keyValue[T valueTypes | arrayValueTypes](kv KV, key string, defaultValue ...T) (T, bool) {
if !strings.HasPrefix(key, "tokenizer.") && !strings.HasPrefix(key, "general.") {
key = kv.Architecture() + "." + key
}
if val, ok := kv[key]; ok {
return val.(T)
if val, ok := kv[key].(T); ok {
return val, true
}
slog.Warn("key not found", "key", key, "default", defaultValue[0])
return defaultValue[0]
slog.Debug("key with type not found", "key", key, "default", defaultValue[0])
return defaultValue[0], false
}
type Tensors struct {
@@ -219,32 +343,37 @@ type Tensor struct {
func (t Tensor) block() (n int) {
if _, err := fmt.Sscanf(t.Name, "blk.%d.", &n); err != nil {
return -1
return math.MaxInt
}
return
}
func (t Tensor) blockSize() uint64 {
switch t.Kind {
return TensorType(t.Kind).BlockSize()
}
func (t TensorType) BlockSize() uint64 {
switch t {
case
0, // F32
1, // F16
24, // I8
25, // I16
26, // I32
27, // I64
28, // F64
30: // BF16
TensorTypeF32,
TensorTypeF16,
TensorTypeI8,
TensorTypeI16,
TensorTypeI32,
TensorTypeI64,
TensorTypeF64,
TensorTypeBF16:
return 1
case
2, // Q4_0
3, // Q4_1
6, // Q5_0
7, // Q5_1
8, // Q8_0
9, // Q8_1
20: // IQ4_NL
TensorTypeQ4_0,
TensorTypeQ4_1,
TensorTypeQ5_0,
TensorTypeQ5_1,
TensorTypeQ8_0,
TensorTypeQ8_1,
tensorTypeIQ4_NL,
4, TensorTypeMXFP4:
return 32
default:
return 256
@@ -252,73 +381,79 @@ func (t Tensor) blockSize() uint64 {
}
func (t Tensor) typeSize() uint64 {
blockSize := t.blockSize()
return TensorType(t.Kind).TypeSize()
}
switch t.Kind {
case 0: // FP32
func (t TensorType) TypeSize() uint64 {
blockSize := t.BlockSize()
switch t {
case TensorTypeF32:
return 4
case 1: // FP16
case TensorTypeF16:
return 2
case 2: // Q4_0
case TensorTypeQ4_0:
return 2 + blockSize/2
case 3: // Q4_1
case TensorTypeQ4_1:
return 2 + 2 + blockSize/2
case 6: // Q5_0
case TensorTypeQ5_0:
return 2 + 4 + blockSize/2
case 7: // Q5_1
case TensorTypeQ5_1:
return 2 + 2 + 4 + blockSize/2
case 8: // Q8_0
case TensorTypeQ8_0:
return 2 + blockSize
case 9: // Q8_1
case TensorTypeQ8_1:
return 2 + 2 + blockSize
case 10: // Q2_K
case TensorTypeQ2_K:
return blockSize/16 + blockSize/4 + 2 + 2
case 11: // Q3_K
case TensorTypeQ3_K:
return blockSize/8 + blockSize/4 + 12 + 2
case 12: // Q4_K
case TensorTypeQ4_K:
return 2 + 2 + 12 + blockSize/2
case 13: // Q5_K
case TensorTypeQ5_K:
return 2 + 2 + 12 + blockSize/8 + blockSize/2
case 14: // Q6_K
case TensorTypeQ6_K:
return blockSize/2 + blockSize/4 + blockSize/16 + 2
case 15: // Q8_K
case TensorTypeQ8_K:
return 4 + blockSize + 2*blockSize/16
case 16: // IQ2_XXS
case tensorTypeIQ2_XXS:
return 2 + 2*blockSize/8
case 17: // IQ2_XS
case tensorTypeIQ2_XS:
return 2 + 2*blockSize/8 + blockSize/32
case 18: // IQ3_XXS
case tensorTypeIQ3_XXS:
return 2 + blockSize/4 + blockSize/8
case 19: // IQ1_S
case tensorTypeIQ1_S:
return 2 + blockSize/8 + blockSize/16
case 20: // IQ4_NL
case tensorTypeIQ4_NL:
return 2 + blockSize/2
case 21: // IQ3_S
case tensorTypeIQ3_S:
return 2 + blockSize/4 + blockSize/8 + blockSize/32 + 4
case 22: // IQ2_S
case tensorTypeIQ2_S:
return 2 + blockSize/4 + blockSize/16
case 23: // IQ4_XS
case tensorTypeIQ4_XS:
return 2 + 2 + blockSize/2 + blockSize/64
case 24: // I8
case TensorTypeI8:
return 1
case 25: // I16
case TensorTypeI16:
return 2
case 26: // I32
case TensorTypeI32:
return 4
case 27: // I64
case TensorTypeI64:
return 8
case 28: // F64
case TensorTypeF64:
return 8
case 29: // IQ1_M
case tensorTypeIQ1_M:
return blockSize/8 + blockSize/16 + blockSize/32
case 30: // BF16
case TensorTypeBF16:
return 2
case 4, TensorTypeMXFP4:
return 1 + blockSize/2
default:
return 0
}
}
func (t Tensor) parameters() uint64 {
func (t Tensor) Elements() uint64 {
var count uint64 = 1
for _, n := range t.Shape {
count *= n
@@ -327,11 +462,11 @@ func (t Tensor) parameters() uint64 {
}
func (t Tensor) Size() uint64 {
return t.parameters() * t.typeSize() / t.blockSize()
return t.Elements() * t.typeSize() / t.blockSize()
}
func (t Tensor) Type() string {
return fileType(t.Kind).String()
return TensorType(t.Kind).String()
}
type container interface {
@@ -375,18 +510,13 @@ func DetectContentType(b []byte) string {
// Decode decodes a GGML model from the given reader.
//
// It collects array values for arrays with a size less than or equal to
// maxArraySize. If maxArraySize is 0, the default value of 1024 is used. If
// the maxArraySize is negative, all arrays are collected.
func Decode(rs io.ReadSeeker, maxArraySize int) (*GGML, int64, error) {
if maxArraySize == 0 {
maxArraySize = 1024
}
// maxArraySize. If the maxArraySize is negative, all arrays are collected.
func Decode(rs io.ReadSeeker, maxArraySize int) (*GGML, error) {
rs = bufioutil.NewBufferedSeeker(rs, 32<<10)
var magic uint32
if err := binary.Read(rs, binary.LittleEndian, &magic); err != nil {
return nil, 0, err
return nil, err
}
var c container
@@ -396,46 +526,92 @@ func Decode(rs io.ReadSeeker, maxArraySize int) (*GGML, int64, error) {
case FILE_MAGIC_GGUF_BE:
c = &containerGGUF{ByteOrder: binary.BigEndian, maxArraySize: maxArraySize}
default:
return nil, 0, errors.New("invalid file magic")
return nil, errors.New("invalid file magic")
}
model, err := c.Decode(rs)
if err != nil {
return nil, 0, err
return nil, err
}
offset, err := rs.Seek(0, io.SeekCurrent)
if err != nil {
return nil, 0, err
return nil, err
}
// final model type
return &GGML{
container: c,
model: model,
}, offset, nil
Length: offset,
}, nil
}
func (f GGML) GraphSize(context, batch uint64, numParallel int, kvCacheType string) (kv []uint64, partialOffload, fullOffload uint64) {
embedding := f.KV().EmbeddingLength()
heads := f.KV().HeadCount()
headsKV := f.KV().HeadCountKV()
vocab := uint64(f.KV()["tokenizer.ggml.tokens"].(*array).size)
func (f GGML) GraphSize(context, batch uint64, numParallel int, kvCacheType string, useFlashAttention bool) (kv []uint64, partialOffload, fullOffload uint64) {
context *= uint64(numParallel)
embeddingHeads := f.KV().EmbeddingHeadCount()
embedding := f.KV().EmbeddingLength()
heads := f.KV().HeadCountMax()
headsArr := f.KV().HeadCount()
headsKV := f.KV().HeadCountKVMax()
headsKVArr := f.KV().HeadCountKV()
vocab := uint64(f.KV()["tokenizer.ggml.tokens"].(*array[string]).size)
embeddingHeads := f.KV().EmbeddingHeadCountMax()
embeddingHeadsK := f.KV().EmbeddingHeadCountK()
embeddingHeadsV := f.KV().EmbeddingHeadCountV()
layers := f.Tensors().GroupLayers()
bytesPerElement := kvCacheBytesPerElement(kvCacheType)
// Default for models unless special-cased below. These defaults mirror the
// cache usage in llama.cpp under the assumption that models without special
// cases below will use the llamarunner and caching will be handled by the
// llama.cpp layer.
//
// This also assumes that a layer without heads or headsKV set is recurrent
// which is usually the case. Some models (eg nemotronh) use "blocks" in
// place of layers where some are MLP blocks that don't have any cache.
// Models like this will need a special case below to be accurately
// estimated.
var kvTotal uint64
kv = make([]uint64, f.KV().BlockCount())
kvSizeAttn := uint64(0)
kvSizeRecurrent := uint64(0)
for i := range kv {
kv[i] = uint64(float64(context*(embeddingHeadsK+embeddingHeadsV)*headsKV) * bytesPerElement)
headsL := headsArr[i]
headsKVL := headsKVArr[i]
if headsL > 0 && headsKVL > 0 {
// full attention layer
// NOTE: Assumes uniform values for all attn layers
kv[i] = uint64(float64(context*(embeddingHeadsK+embeddingHeadsV)*headsKVL) * bytesPerElement)
kvSizeAttn += kv[i]
} else {
// recurrent layer
ssmDConv := f.KV().SSMConvKernel()
ssmDState := f.KV().SSMStateSize()
ssmDInner := f.KV().SSMInnerSize()
ssmNGroups := f.KV().SSMGroupCount()
nEmbdR := uint64(0)
if ssmDConv > 0 {
nEmbdR = (ssmDConv - 1) * (ssmDInner + 2*ssmNGroups*ssmDState)
}
nEmbdS := ssmDState * ssmDInner
// recurrent always uses F32 in llama.cpp backend
// https://github.com/ggml-org/llama.cpp/blob/master/src/llama-model.cpp#L18644
bytesPerElementRecurrent := kvCacheBytesPerElement("f32")
kv[i] = (nEmbdR + nEmbdS) * uint64(bytesPerElementRecurrent)
kvSizeRecurrent += kv[i]
}
kvTotal += kv[i]
}
slog.Debug("default cache size estimate", "attention MiB", float32(kvSizeAttn)/(1024.*1024.), "attention bytes", kvSizeAttn, "recurrent MiB", float32(kvSizeRecurrent)/(1024.*1024.), "recurrent bytes", kvSizeRecurrent)
switch f.KV().Architecture() {
case "llama":
case "llama", "llama4":
fullOffload = max(
4*batch*(1+4*embedding+context*(1+heads)),
4*batch*(embedding+vocab),
@@ -449,7 +625,7 @@ func (f GGML) GraphSize(context, batch uint64, numParallel int, kvCacheType stri
if ffnGateExpsWeight, ok := layers["blk.0"]["ffn_gate_exps.weight"]; ok {
// mixtral 8x22b
ff := uint64(f.KV()["llama.feed_forward_length"].(uint32))
ff := uint64(f.KV().Uint("feed_forward_length"))
partialOffload = max(
3*ffnGateExpsWeight.Size()+4*batch*(2*ff+headsKV+embedding+context+embeddingHeads*headsKV),
4*(context*batch*heads+context*embeddingHeads*headsKV+batch*1024+embeddingHeads*headsKV*batch),
@@ -466,9 +642,9 @@ func (f GGML) GraphSize(context, batch uint64, numParallel int, kvCacheType stri
case "mllama":
var visionTokens, tiles uint64 = 1601, 4
crossAttentionLayers := f.KV().Uints("attention.cross_attention_layers")
crossAttentionLayers := f.KV().Ints("attention.cross_attention_layers")
for i := range kv {
if slices.Contains(crossAttentionLayers, uint32(i)) {
if slices.Contains(crossAttentionLayers, int32(i)) {
kv[i] = headsKV * (embeddingHeadsK + embeddingHeadsV) *
4 * // sizeof(float32)
visionTokens *
@@ -485,7 +661,7 @@ func (f GGML) GraphSize(context, batch uint64, numParallel int, kvCacheType stri
var ropeFreqsCount uint64
if ropeFreqs, ok := f.Tensors().GroupLayers()["rope_freqs"]; ok {
if ropeFreqsWeights, ok := ropeFreqs["weights"]; ok {
ropeFreqsCount = ropeFreqsWeights.parameters()
ropeFreqsCount = ropeFreqsWeights.Elements()
}
}
@@ -497,7 +673,7 @@ func (f GGML) GraphSize(context, batch uint64, numParallel int, kvCacheType stri
// vocab graph
4*batch*(embedding+vocab)+embedding*vocab*105/128,
)
case "gemma", "gemma2", "gemma3":
case "gemma", "gemma2", "gemma3", "gemma3n":
fullOffload = max(
4*batch*(embedding+vocab),
4*batch*(2+context+context*heads+2*embedding+2*embeddingHeadsK*heads),
@@ -510,6 +686,11 @@ func (f GGML) GraphSize(context, batch uint64, numParallel int, kvCacheType stri
embedding*embeddingHeadsK*heads*9/16,
)
if f.KV().Architecture() == "gemma3n" {
fullOffload *= 4
partialOffload *= 4
}
// Gemma2 also has sliding window attention but we only have an optimized implementation in the Ollama
// engine. Gemma3 always uses the Ollama engine.
if f.KV().Architecture() == "gemma3" {
@@ -595,6 +776,22 @@ func (f GGML) GraphSize(context, batch uint64, numParallel int, kvCacheType stri
4*qkvBias.Shape[0],
)
}
case "gptoss", "gpt-oss":
kv = make([]uint64, f.KV().BlockCount())
for i := range kv {
kv[i] = uint64(float64((embeddingHeadsK+embeddingHeadsV)*headsKV) * bytesPerElement)
if i%2 == 0 {
kv[i] *= (uint64(numParallel)*4096 + batch)
} else {
kv[i] *= context
}
}
partialOffload = 2 * f.KV().HeadCountMax() / cmp.Or(f.KV().HeadCountKVMin(), 1) * kvTotal / 6
if useFlashAttention {
// rough estimate of graph size with flash attention on
partialOffload = (4*uint64(numParallel) + context>>10 + 110) * format.MebiByte
}
}
return
@@ -645,6 +842,23 @@ func (llm GGML) VisionGraphSize() (weights, graphSize uint64) {
graphSize = 4 * (imageSize*imageSize*numChannels +
embeddingLength*patchSize +
numPatches*numPatches*headCount)
case "qwen25vl":
maxPixels := uint64(llm.KV().Uint("vision.max_pixels", 28*28*1280))
numPatches := maxPixels / (patchSize * patchSize)
graphSize = 4 * (maxPixels*numChannels + // Original image storage
// Normalized pixels
maxPixels*numChannels +
// Patches storage (numPatches * channels * patchSize^2)
numPatches*numChannels*patchSize*patchSize +
// Self-attention calculations
numPatches*numPatches*headCount +
// Additional buffer for processing
embeddingLength*numPatches)
case "llama4":
// vision graph is computed independently in the same schedule
// and is negligible compared to the worst case text graph
}
return weights, graphSize
@@ -652,7 +866,11 @@ func (llm GGML) VisionGraphSize() (weights, graphSize uint64) {
// SupportsKVCacheType checks if the requested cache type is supported
func (f GGML) SupportsKVCacheType(cacheType string) bool {
return slices.Contains([]string{"f16", "q8_0", "q4_0"}, cacheType)
if cacheType == "" || cacheType == "f16" {
return true
}
return slices.Contains([]string{"q8_0", "q4_0"}, cacheType)
}
// SupportsFlashAttention checks if the model supports flash attention
@@ -662,12 +880,26 @@ func (f GGML) SupportsFlashAttention() bool {
return false
}
if arch := f.KV().Architecture(); slices.Contains([]string{"gemma2"}, arch) {
return false
}
// Check head counts match and are non-zero
headCountK := f.KV().EmbeddingHeadCountK()
headCountV := f.KV().EmbeddingHeadCountV()
return headCountK != 0 && headCountV != 0 && headCountK == headCountV
}
// FlashAttention checks if the model should enable flash attention
func (f GGML) FlashAttention() bool {
return slices.Contains([]string{
"gemma3",
"gptoss", "gpt-oss",
"qwen3",
"qwen3moe",
}, f.KV().String("general.architecture"))
}
// kvCacheBytesPerElement returns the number of bytes per element for a given KV cache type
func kvCacheBytesPerElement(cacheType string) float64 {
switch cacheType {
@@ -675,6 +907,8 @@ func kvCacheBytesPerElement(cacheType string) float64 {
return 1 // 1/2 of fp16
case "q4_0":
return 0.5 // 1/4 of fp16
case "f32":
return 4 // f32 (default for recurrent)
default:
return 2 // f16 (default)
}

View File

@@ -2,6 +2,7 @@ package ggml
import (
"maps"
"math"
"slices"
"strconv"
"strings"
@@ -210,3 +211,91 @@ func TestTensorTypes(t *testing.T) {
})
}
}
func TestKeyValue(t *testing.T) {
kv := KV{
"general.architecture": "test",
"test.strings": &array[string]{size: 3, values: []string{"a", "b", "c"}},
"test.float32s": &array[float32]{size: 3, values: []float32{1.0, 2.0, 3.0}},
"test.int32s": &array[int32]{size: 3, values: []int32{1, 2, 3}},
"test.uint32s": &array[uint32]{size: 3, values: []uint32{1, 2, 3}},
}
if diff := cmp.Diff(kv.Strings("strings"), []string{"a", "b", "c"}); diff != "" {
t.Errorf("unexpected strings (-got +want):\n%s", diff)
}
if diff := cmp.Diff(kv.Strings("nonexistent.strings"), []string(nil)); diff != "" {
t.Errorf("unexpected strings (-got +want):\n%s", diff)
}
if diff := cmp.Diff(kv.Strings("default.strings", []string{"ollama"}), []string{"ollama"}); diff != "" {
t.Errorf("unexpected strings (-got +want):\n%s", diff)
}
if diff := cmp.Diff(kv.Floats("float32s"), []float32{1.0, 2.0, 3.0}); diff != "" {
t.Errorf("unexpected float32s (-got +want):\n%s", diff)
}
if diff := cmp.Diff(kv.Floats("nonexistent.float32s"), []float32(nil)); diff != "" {
t.Errorf("unexpected float32s (-got +want):\n%s", diff)
}
if diff := cmp.Diff(kv.Floats("default.float32s", []float32{math.MaxFloat32}), []float32{math.MaxFloat32}); diff != "" {
t.Errorf("unexpected float32s (-got +want):\n%s", diff)
}
if diff := cmp.Diff(kv.Ints("int32s"), []int32{1, 2, 3}); diff != "" {
t.Errorf("unexpected int8s (-got +want):\n%s", diff)
}
if diff := cmp.Diff(kv.Ints("nonexistent.int32s"), []int32(nil)); diff != "" {
t.Errorf("unexpected int8s (-got +want):\n%s", diff)
}
if diff := cmp.Diff(kv.Ints("default.int32s", []int32{math.MaxInt32}), []int32{math.MaxInt32}); diff != "" {
t.Errorf("unexpected int8s (-got +want):\n%s", diff)
}
if diff := cmp.Diff(kv.Uints("uint32s"), []uint32{1, 2, 3}); diff != "" {
t.Errorf("unexpected uint8s (-got +want):\n%s", diff)
}
if diff := cmp.Diff(kv.Uints("nonexistent.uint32s"), []uint32(nil)); diff != "" {
t.Errorf("unexpected uint8s (-got +want):\n%s", diff)
}
if diff := cmp.Diff(kv.Uints("default.uint32s", []uint32{math.MaxUint32}), []uint32{math.MaxUint32}); diff != "" {
t.Errorf("unexpected uint8s (-got +want):\n%s", diff)
}
}
func TestHeadCount(t *testing.T) {
valuesArray := []int32{1, 5, 3, 4}
cases := []struct {
kv KV
want uint64
}{
{
kv: KV{
"general.architecture": "abc",
"abc.attention.head_count": &array[int32]{values: valuesArray, size: len(valuesArray)},
},
want: uint64(5),
},
{
kv: KV{
"general.architecture": "abc",
"abc.attention.head_count": uint32(3),
},
want: uint64(3),
},
}
for _, tt := range cases {
got := tt.kv.HeadCountMax()
if got != tt.want {
t.Errorf("unexpected max value: got=%d want=%d", got, tt.want)
}
}
}

View File

@@ -9,8 +9,12 @@ import (
"io"
"log/slog"
"maps"
"os"
"runtime"
"slices"
"strings"
"golang.org/x/sync/errgroup"
)
type containerGGUF struct {
@@ -36,10 +40,6 @@ type containerGGUF struct {
maxArraySize int
}
func (c *containerGGUF) canCollectArray(size int) bool {
return c.maxArraySize < 0 || size <= c.maxArraySize
}
func (c *containerGGUF) Name() string {
return "gguf"
}
@@ -229,7 +229,7 @@ func (llm *gguf) Decode(rs io.ReadSeeker) error {
}
llm.tensors = append(llm.tensors, &tensor)
llm.parameters += tensor.parameters()
llm.parameters += tensor.Elements()
}
// patch KV with parameter count
@@ -295,6 +295,23 @@ func readGGUFV1String(llm *gguf, r io.Reader) (string, error) {
return b.String(), nil
}
func readGGUFV1StringsData(llm *gguf, r io.Reader, a *array[string]) (any, error) {
for i := range a.size {
if a.values != nil {
e, err := readGGUFV1String(llm, r)
if err != nil {
return nil, err
}
a.values[i] = e
} else {
discardGGUFString(llm, r)
}
}
return a, nil
}
func discardGGUFString(llm *gguf, r io.Reader) error {
buf := llm.scratch[:8]
_, err := io.ReadFull(r, buf)
@@ -352,78 +369,44 @@ func writeGGUFString(w io.Writer, s string) error {
return err
}
type array struct {
size int
values []any
}
func (a *array) MarshalJSON() ([]byte, error) {
return json.Marshal(a.values)
}
func readGGUFV1Array(llm *gguf, r io.Reader) (*array, error) {
t, err := readGGUF[uint32](llm, r)
if err != nil {
return nil, err
}
n, err := readGGUF[uint32](llm, r)
if err != nil {
return nil, err
}
a := &array{size: int(n)}
if llm.canCollectArray(int(n)) {
a.values = make([]any, 0, int(n))
}
for i := range n {
var e any
switch t {
case ggufTypeUint8:
e, err = readGGUF[uint8](llm, r)
case ggufTypeInt8:
e, err = readGGUF[int8](llm, r)
case ggufTypeUint16:
e, err = readGGUF[uint16](llm, r)
case ggufTypeInt16:
e, err = readGGUF[int16](llm, r)
case ggufTypeUint32:
e, err = readGGUF[uint32](llm, r)
case ggufTypeInt32:
e, err = readGGUF[int32](llm, r)
case ggufTypeUint64:
e, err = readGGUF[uint64](llm, r)
case ggufTypeInt64:
e, err = readGGUF[int64](llm, r)
case ggufTypeFloat32:
e, err = readGGUF[float32](llm, r)
case ggufTypeFloat64:
e, err = readGGUF[float64](llm, r)
case ggufTypeBool:
e, err = readGGUF[bool](llm, r)
case ggufTypeString:
e, err = readGGUFV1String(llm, r)
default:
return nil, fmt.Errorf("invalid array type: %d", t)
}
if err != nil {
return nil, err
}
func readGGUFStringsData(llm *gguf, r io.Reader, a *array[string]) (any, error) {
for i := range a.size {
if a.values != nil {
e, err := readGGUFString(llm, r)
if err != nil {
return nil, err
}
a.values[i] = e
} else {
discardGGUFString(llm, r)
}
}
return a, nil
}
func readGGUFArray(llm *gguf, r io.Reader) (*array, error) {
if llm.Version == 1 {
return readGGUFV1Array(llm, r)
}
type array[T any] struct {
// size is the actual size of the array
size int
// values is the array of values. this is nil if the array is larger than configured maxSize
values []T
}
func (a *array[T]) MarshalJSON() ([]byte, error) {
return json.Marshal(a.values)
}
func newArray[T any](size, maxSize int) *array[T] {
a := array[T]{size: size}
if maxSize < 0 || size <= maxSize {
a.values = make([]T, size)
}
return &a
}
func readGGUFArray(llm *gguf, r io.Reader) (any, error) {
t, err := readGGUF[uint32](llm, r)
if err != nil {
return nil, err
@@ -434,45 +417,55 @@ func readGGUFArray(llm *gguf, r io.Reader) (*array, error) {
return nil, err
}
a := &array{size: int(n)}
if llm.canCollectArray(int(n)) {
a.values = make([]any, int(n))
}
for i := range n {
var e any
switch t {
case ggufTypeUint8:
e, err = readGGUF[uint8](llm, r)
case ggufTypeInt8:
e, err = readGGUF[int8](llm, r)
case ggufTypeUint16:
e, err = readGGUF[uint16](llm, r)
case ggufTypeInt16:
e, err = readGGUF[int16](llm, r)
case ggufTypeUint32:
e, err = readGGUF[uint32](llm, r)
case ggufTypeInt32:
e, err = readGGUF[int32](llm, r)
case ggufTypeUint64:
e, err = readGGUF[uint64](llm, r)
case ggufTypeInt64:
e, err = readGGUF[int64](llm, r)
case ggufTypeFloat32:
e, err = readGGUF[float32](llm, r)
case ggufTypeFloat64:
e, err = readGGUF[float64](llm, r)
case ggufTypeBool:
e, err = readGGUF[bool](llm, r)
case ggufTypeString:
if a.values != nil {
e, err = readGGUFString(llm, r)
} else {
err = discardGGUFString(llm, r)
}
default:
return nil, fmt.Errorf("invalid array type: %d", t)
switch t {
case ggufTypeUint8:
a := newArray[uint8](int(n), llm.maxArraySize)
return readGGUFArrayData(llm, r, a)
case ggufTypeInt8:
a := newArray[int8](int(n), llm.maxArraySize)
return readGGUFArrayData(llm, r, a)
case ggufTypeUint16:
a := newArray[uint16](int(n), llm.maxArraySize)
return readGGUFArrayData(llm, r, a)
case ggufTypeInt16:
a := newArray[int16](int(n), llm.maxArraySize)
return readGGUFArrayData(llm, r, a)
case ggufTypeUint32:
a := newArray[uint32](int(n), llm.maxArraySize)
return readGGUFArrayData(llm, r, a)
case ggufTypeInt32:
a := newArray[int32](int(n), llm.maxArraySize)
return readGGUFArrayData(llm, r, a)
case ggufTypeUint64:
a := newArray[uint64](int(n), llm.maxArraySize)
return readGGUFArrayData(llm, r, a)
case ggufTypeInt64:
a := newArray[int64](int(n), llm.maxArraySize)
return readGGUFArrayData(llm, r, a)
case ggufTypeFloat32:
a := newArray[float32](int(n), llm.maxArraySize)
return readGGUFArrayData(llm, r, a)
case ggufTypeFloat64:
a := newArray[float64](int(n), llm.maxArraySize)
return readGGUFArrayData(llm, r, a)
case ggufTypeBool:
a := newArray[bool](int(n), llm.maxArraySize)
return readGGUFArrayData(llm, r, a)
case ggufTypeString:
a := newArray[string](int(n), llm.maxArraySize)
if llm.Version == 1 {
return readGGUFV1StringsData(llm, r, a)
}
return readGGUFStringsData(llm, r, a)
default:
return nil, fmt.Errorf("invalid array type: %d", t)
}
}
func readGGUFArrayData[T any](llm *gguf, r io.Reader, a *array[T]) (any, error) {
for i := range a.size {
e, err := readGGUF[T](llm, r)
if err != nil {
return nil, err
}
@@ -499,63 +492,86 @@ func writeGGUFArray[S ~[]E, E any](w io.Writer, t uint32, s S) error {
return err
}
if t == ggufTypeString {
for _, e := range any(s).([]string) {
if err := binary.Write(w, binary.LittleEndian, uint64(len(e))); err != nil {
return err
}
if err := binary.Write(w, binary.LittleEndian, []byte(e)); err != nil {
return err
}
}
return nil
}
return binary.Write(w, binary.LittleEndian, s)
}
func WriteGGUF(ws io.WriteSeeker, kv KV, ts []Tensor) error {
func WriteGGUF(f *os.File, kv KV, ts []*Tensor) error {
alignment := kv.Uint("general.alignment", 32)
if err := binary.Write(ws, binary.LittleEndian, []byte("GGUF")); err != nil {
if err := binary.Write(f, binary.LittleEndian, []byte("GGUF")); err != nil {
return err
}
if err := binary.Write(ws, binary.LittleEndian, uint32(3)); err != nil {
if err := binary.Write(f, binary.LittleEndian, uint32(3)); err != nil {
return err
}
if err := binary.Write(ws, binary.LittleEndian, uint64(len(ts))); err != nil {
if err := binary.Write(f, binary.LittleEndian, uint64(len(ts))); err != nil {
return err
}
if err := binary.Write(ws, binary.LittleEndian, uint64(len(kv))); err != nil {
if err := binary.Write(f, binary.LittleEndian, uint64(len(kv))); err != nil {
return err
}
keys := slices.Collect(maps.Keys(kv))
slices.Sort(keys)
for _, key := range keys {
if err := ggufWriteKV(ws, key, kv[key]); err != nil {
for _, key := range slices.Sorted(maps.Keys(kv)) {
if err := ggufWriteKV(f, key, kv[key]); err != nil {
return err
}
}
slices.SortStableFunc(ts, func(a, b Tensor) int {
if i, j := a.block(), b.block(); i < 0 && j > 0 {
return 1
} else if i > 0 && j < 0 {
return -1
} else {
return cmp.Compare(i, j)
}
})
slices.SortStableFunc(
ts,
func(a, b *Tensor) int {
return cmp.Or(
cmp.Compare(a.block(), b.block()),
cmp.Compare(a.Name, b.Name),
)
},
)
var s uint64
for _, t := range ts {
t.Offset = s + uint64(ggufPadding(int64(s), int64(alignment)))
if err := ggufWriteTensorInfo(ws, t); err != nil {
for i := range ts {
ts[i].Offset = s
if err := ggufWriteTensorInfo(f, ts[i]); err != nil {
return err
}
s += t.Size()
s += ts[i].Size()
s += uint64(ggufPadding(int64(s), int64(alignment)))
}
offset, err := f.Seek(0, io.SeekCurrent)
if err != nil {
return err
}
offset += ggufPadding(offset, int64(alignment))
var g errgroup.Group
g.SetLimit(runtime.GOMAXPROCS(0))
// TODO consider reducing if tensors size * gomaxprocs is larger than free memory
for _, t := range ts {
if err := ggufWriteTensor(ws, t, int64(alignment)); err != nil {
t := t
w := io.NewOffsetWriter(f, offset+int64(t.Offset))
g.Go(func() error {
_, err := t.WriteTo(w)
return err
}
})
}
return nil
return g.Wait()
}
func ggufWriteKV(ws io.WriteSeeker, k string, v any) error {
@@ -570,8 +586,10 @@ func ggufWriteKV(ws io.WriteSeeker, k string, v any) error {
var err error
switch v := v.(type) {
case uint32:
case uint32, FileType:
err = writeGGUF(ws, ggufTypeUint32, v)
case uint64:
err = writeGGUF(ws, ggufTypeUint64, v)
case float32:
err = writeGGUF(ws, ggufTypeFloat32, v)
case bool:
@@ -580,32 +598,24 @@ func ggufWriteKV(ws io.WriteSeeker, k string, v any) error {
err = writeGGUFString(ws, v)
case []int32:
err = writeGGUFArray(ws, ggufTypeInt32, v)
case *array[int32]:
err = writeGGUFArray(ws, ggufTypeInt32, v.values)
case []uint32:
err = writeGGUFArray(ws, ggufTypeUint32, v)
case *array[uint32]:
err = writeGGUFArray(ws, ggufTypeUint32, v.values)
case []float32:
err = writeGGUFArray(ws, ggufTypeFloat32, v)
case *array[float32]:
err = writeGGUFArray(ws, ggufTypeFloat32, v.values)
case []string:
if err := binary.Write(ws, binary.LittleEndian, ggufTypeArray); err != nil {
return err
}
if err := binary.Write(ws, binary.LittleEndian, ggufTypeString); err != nil {
return err
}
if err := binary.Write(ws, binary.LittleEndian, uint64(len(v))); err != nil {
return err
}
for _, e := range v {
if err := binary.Write(ws, binary.LittleEndian, uint64(len(e))); err != nil {
return err
}
if err := binary.Write(ws, binary.LittleEndian, []byte(e)); err != nil {
return err
}
}
err = writeGGUFArray(ws, ggufTypeString, v)
case *array[string]:
err = writeGGUFArray(ws, ggufTypeString, v.values)
case []bool:
err = writeGGUFArray(ws, ggufTypeBool, v)
case *array[bool]:
err = writeGGUFArray(ws, ggufTypeBool, v.values)
default:
return fmt.Errorf("improper type for '%s'", k)
}
@@ -613,7 +623,7 @@ func ggufWriteKV(ws io.WriteSeeker, k string, v any) error {
return err
}
func ggufWriteTensorInfo(ws io.WriteSeeker, t Tensor) error {
func ggufWriteTensorInfo(ws io.WriteSeeker, t *Tensor) error {
slog.Debug(t.Name, "kind", t.Kind, "shape", t.Shape, "offset", t.Offset)
if err := binary.Write(ws, binary.LittleEndian, uint64(len(t.Name))); err != nil {
return err
@@ -627,8 +637,8 @@ func ggufWriteTensorInfo(ws io.WriteSeeker, t Tensor) error {
return err
}
for i := range len(t.Shape) {
if err := binary.Write(ws, binary.LittleEndian, t.Shape[len(t.Shape)-i-1]); err != nil {
for _, n := range t.Shape {
if err := binary.Write(ws, binary.LittleEndian, n); err != nil {
return err
}
}
@@ -640,20 +650,6 @@ func ggufWriteTensorInfo(ws io.WriteSeeker, t Tensor) error {
return binary.Write(ws, binary.LittleEndian, t.Offset)
}
func ggufWriteTensor(ws io.WriteSeeker, t Tensor, alignment int64) error {
offset, err := ws.Seek(0, io.SeekCurrent)
if err != nil {
return err
}
if err := binary.Write(ws, binary.LittleEndian, bytes.Repeat([]byte{0}, int(ggufPadding(offset, alignment)))); err != nil {
return err
}
_, err = t.WriteTo(ws)
return err
}
func ggufPadding(offset, align int64) int64 {
return (align - offset%align) % align
}

83
fs/ggml/gguf_test.go Normal file
View File

@@ -0,0 +1,83 @@
package ggml
import (
"bytes"
"math/rand/v2"
"os"
"strings"
"testing"
"github.com/google/go-cmp/cmp"
)
func TestWriteGGUF(t *testing.T) {
b := bytes.NewBuffer(make([]byte, 2*3))
for range 8 {
t.Run("shuffle", func(t *testing.T) {
t.Parallel()
ts := []*Tensor{
{Name: "token_embd.weight", Shape: []uint64{2, 3}, WriterTo: b},
{Name: "blk.0.ffn_norm.weight", Shape: []uint64{2, 3}, WriterTo: b},
{Name: "blk.0.attn_norm.weight", Shape: []uint64{2, 3}, WriterTo: b},
{Name: "blk.1.ffn_up.weight", Shape: []uint64{2, 3}, WriterTo: b},
{Name: "blk.2.ffn_norm.weight", Shape: []uint64{2, 3}, WriterTo: b},
{Name: "blk.1.ffn_down.weight", Shape: []uint64{2, 3}, WriterTo: b},
{Name: "blk.0.attn_k.weight", Shape: []uint64{2, 3}, WriterTo: b},
{Name: "output_norm.weight", Shape: []uint64{3, 2}, WriterTo: b},
{Name: "output.weight", Shape: []uint64{3, 2}, WriterTo: b},
}
rand.Shuffle(len(ts), func(i, j int) {
ts[i], ts[j] = ts[j], ts[i]
})
w, err := os.CreateTemp(t.TempDir(), strings.ReplaceAll(t.Name(), "/", "_")+"*.bin")
if err != nil {
t.Fatal(err)
}
defer w.Close()
if err := WriteGGUF(w, KV{
"general.alignment": uint32(16),
}, ts); err != nil {
t.Fatal(err)
}
r, err := os.Open(w.Name())
if err != nil {
t.Fatal(err)
}
defer r.Close()
ff, err := Decode(r, 0)
if err != nil {
t.Fatal(err)
}
if diff := cmp.Diff(KV{
"general.alignment": uint32(16),
"general.parameter_count": uint64(54),
}, ff.KV()); diff != "" {
t.Errorf("Mismatch (-want +got):\n%s", diff)
}
if diff := cmp.Diff(Tensors{
Offset: 592,
items: []*Tensor{
{Name: "blk.0.attn_k.weight", Offset: 0, Shape: []uint64{2, 3}},
{Name: "blk.0.attn_norm.weight", Offset: 32, Shape: []uint64{2, 3}},
{Name: "blk.0.ffn_norm.weight", Offset: 64, Shape: []uint64{2, 3}},
{Name: "blk.1.ffn_down.weight", Offset: 96, Shape: []uint64{2, 3}},
{Name: "blk.1.ffn_up.weight", Offset: 128, Shape: []uint64{2, 3}},
{Name: "blk.2.ffn_norm.weight", Offset: 160, Shape: []uint64{2, 3}},
{Name: "output.weight", Offset: 192, Shape: []uint64{3, 2}},
{Name: "output_norm.weight", Offset: 224, Shape: []uint64{3, 2}},
{Name: "token_embd.weight", Offset: 256, Shape: []uint64{2, 3}},
},
}, ff.Tensors(), cmp.AllowUnexported(Tensors{})); diff != "" {
t.Errorf("Mismatch (-want +got):\n%s", diff)
}
})
}
}

View File

@@ -1,26 +1,31 @@
package ggml
import "fmt"
import (
"fmt"
"log/slog"
"strings"
)
type fileType uint32
// FileType is the Go equivalent to llama_ftype used for gguf file typing
type FileType uint32
const (
fileTypeF32 fileType = iota
fileTypeF16
FileTypeF32 FileType = iota
FileTypeF16
fileTypeQ4_0
fileTypeQ4_1
fileTypeQ4_1_F16
fileTypeQ4_2 // unused
fileTypeQ4_3 // unused
fileTypeQ8_0
fileTypeMXFP4 // originally fileTypeQ4_1_F16 // unused by GGML
fileTypeQ4_2 // unused by GGML
fileTypeQ4_3 // unused by GGML
FileTypeQ8_0
fileTypeQ5_0
fileTypeQ5_1
fileTypeQ2_K
fileTypeQ3_K_S
fileTypeQ3_K_M
fileTypeQ3_K_L
fileTypeQ4_K_S
fileTypeQ4_K_M
FileTypeQ4_K_S
FileTypeQ4_K_M
fileTypeQ5_K_S
fileTypeQ5_K_M
fileTypeQ6_K
@@ -37,93 +42,64 @@ const (
fileTypeIQ2_M
fileTypeIQ4_XS
fileTypeIQ1_M
fileTypeBF16
FileTypeBF16
fileTypeQ4_0_4_4 // unused by GGML
fileTypeQ4_0_4_8 // unused by GGML
fileTypeQ4_0_8_8 // unused by GGML
fileTypeTQ1_0
fileTypeTQ2_0
fileTypeUnknown
FileTypeUnknown = 1024
)
func ParseFileType(s string) (fileType, error) {
// ParseFileType parses the provided GGUF file type
// Only Ollama supported types are considered valid
func ParseFileType(s string) (FileType, error) {
switch s {
case "F32":
return fileTypeF32, nil
return FileTypeF32, nil
case "F16":
return fileTypeF16, nil
case "Q4_0":
return fileTypeQ4_0, nil
case "Q4_1":
return fileTypeQ4_1, nil
case "Q4_1_F16":
return fileTypeQ4_1_F16, nil
return FileTypeF16, nil
case "Q8_0":
return fileTypeQ8_0, nil
case "Q5_0":
return fileTypeQ5_0, nil
case "Q5_1":
return fileTypeQ5_1, nil
case "Q2_K":
return fileTypeQ2_K, nil
case "Q3_K_S":
return fileTypeQ3_K_S, nil
case "Q3_K_M":
return fileTypeQ3_K_M, nil
case "Q3_K_L":
return fileTypeQ3_K_L, nil
return FileTypeQ8_0, nil
case "Q4_K_S":
return fileTypeQ4_K_S, nil
case "Q4_K_M":
return fileTypeQ4_K_M, nil
case "Q5_K_S":
return fileTypeQ5_K_S, nil
case "Q5_K_M":
return fileTypeQ5_K_M, nil
case "Q6_K":
return fileTypeQ6_K, nil
case "IQ2_XXS":
return fileTypeIQ2_XXS, nil
case "IQ2_XS":
return fileTypeIQ2_XS, nil
case "Q2_K_S":
return fileTypeQ2_K_S, nil
case "IQ3_XS":
return fileTypeIQ3_XS, nil
case "IQ3_XXS":
return fileTypeIQ3_XXS, nil
case "IQ1_S":
return fileTypeIQ1_S, nil
case "IQ4_NL":
return fileTypeIQ4_NL, nil
case "IQ3_S":
return fileTypeIQ3_S, nil
case "IQ3_M":
return fileTypeIQ3_M, nil
case "IQ2_S":
return fileTypeIQ2_S, nil
case "IQ2_M":
return fileTypeIQ2_M, nil
case "IQ4_XS":
return fileTypeIQ4_XS, nil
case "IQ1_M":
return fileTypeIQ1_M, nil
return FileTypeQ4_K_S, nil
case "Q4_K_M", "Q4_K":
return FileTypeQ4_K_M, nil
case "BF16":
return fileTypeBF16, nil
return FileTypeBF16, nil
default:
return fileTypeUnknown, fmt.Errorf("unknown fileType: %s", s)
supportedFileTypes := []FileType{
FileTypeF32,
FileTypeF16,
FileTypeQ4_K_S,
FileTypeQ4_K_M,
FileTypeQ8_0,
// fsggml.FileTypeBF16, // TODO
}
strs := make([]string, len(supportedFileTypes))
for i := range supportedFileTypes {
strs[i] = supportedFileTypes[i].String()
}
return FileTypeUnknown, fmt.Errorf("unsupported quantization type %s - supported types are %s", s, strings.Join(strs, ", "))
}
}
func (t fileType) String() string {
func (t FileType) String() string {
// Note: this routine will return a broader set of file types for existing models
switch t {
case fileTypeF32:
case FileTypeF32:
return "F32"
case fileTypeF16:
case FileTypeF16:
return "F16"
case fileTypeQ4_0:
return "Q4_0"
case fileTypeQ4_1:
return "Q4_1"
case fileTypeQ4_1_F16:
return "Q4_1_F16"
case fileTypeQ8_0:
case fileTypeMXFP4:
return "MXFP4"
case FileTypeQ8_0:
return "Q8_0"
case fileTypeQ5_0:
return "Q5_0"
@@ -137,9 +113,9 @@ func (t fileType) String() string {
return "Q3_K_M"
case fileTypeQ3_K_L:
return "Q3_K_L"
case fileTypeQ4_K_S:
case FileTypeQ4_K_S:
return "Q4_K_S"
case fileTypeQ4_K_M:
case FileTypeQ4_K_M:
return "Q4_K_M"
case fileTypeQ5_K_S:
return "Q5_K_S"
@@ -147,39 +123,205 @@ func (t fileType) String() string {
return "Q5_K_M"
case fileTypeQ6_K:
return "Q6_K"
case fileTypeIQ2_XXS:
return "IQ2_XXS"
case fileTypeIQ2_XS:
return "IQ2_XS"
case fileTypeQ2_K_S:
return "Q2_K_S"
case fileTypeIQ3_XS:
return "IQ3_XS"
case fileTypeIQ3_XXS:
return "IQ3_XXS"
case fileTypeIQ1_S:
return "IQ1_S"
case fileTypeIQ4_NL:
return "IQ4_NL"
case fileTypeIQ3_S:
return "IQ3_S"
case fileTypeIQ3_M:
return "IQ3_M"
case fileTypeIQ2_S:
return "IQ2_S"
case fileTypeIQ4_XS:
return "IQ4_XS"
case fileTypeIQ2_M:
return "IQ2_M"
case fileTypeIQ1_M:
return "IQ1_M"
case fileTypeBF16:
case FileTypeBF16:
return "BF16"
default:
return "unknown"
}
}
func (t fileType) Value() uint32 {
func (t FileType) Value() uint32 {
return uint32(t)
}
func (ftype FileType) ToTensorType() TensorType {
switch ftype {
case FileTypeF32:
return TensorTypeF32
case FileTypeF16:
return TensorTypeF16
case fileTypeQ4_0:
return TensorTypeQ4_0
case fileTypeQ4_1:
return TensorTypeQ4_1
case FileTypeQ8_0:
return TensorTypeQ8_0
case fileTypeQ5_0:
return TensorTypeQ5_0
case fileTypeQ5_1:
return TensorTypeQ5_1
case fileTypeQ2_K:
return TensorTypeQ2_K
case fileTypeQ3_K_S:
return TensorTypeQ3_K
case fileTypeQ3_K_M:
return TensorTypeQ3_K
case fileTypeQ3_K_L:
return TensorTypeQ3_K
case FileTypeQ4_K_S:
return TensorTypeQ4_K
case FileTypeQ4_K_M:
return TensorTypeQ4_K
case fileTypeQ5_K_S:
return TensorTypeQ5_K
case fileTypeQ5_K_M:
return TensorTypeQ5_K
case fileTypeQ6_K:
return TensorTypeQ6_K
case fileTypeQ2_K_S:
return TensorTypeQ2_K
case FileTypeBF16:
return TensorTypeBF16
case fileTypeMXFP4:
return TensorTypeMXFP4
default:
slog.Warn("unsupported file type", "type", ftype)
return 0 // F32
}
}
// TensorType is equivalent to ggml_type for individual tensor types
// Note: these are not the same as FileType
type TensorType uint32
const (
TensorTypeF32 TensorType = iota
TensorTypeF16
TensorTypeQ4_0
TensorTypeQ4_1
tensorTypeQ4_2
tensorTypeQ4_3 // unused by GGML
TensorTypeQ5_0
TensorTypeQ5_1
TensorTypeQ8_0
TensorTypeQ8_1
TensorTypeQ2_K
TensorTypeQ3_K
TensorTypeQ4_K
TensorTypeQ5_K
TensorTypeQ6_K
TensorTypeQ8_K
tensorTypeIQ2_XXS // not supported by ollama
tensorTypeIQ2_XS // not supported by ollama
tensorTypeIQ3_XXS // not supported by ollama
tensorTypeIQ1_S // not supported by ollama
tensorTypeIQ4_NL // not supported by ollama
tensorTypeIQ3_S // not supported by ollama
tensorTypeIQ2_S // not supported by ollama
tensorTypeIQ4_XS // not supported by ollama
TensorTypeI8
TensorTypeI16
TensorTypeI32
TensorTypeI64
TensorTypeF64
tensorTypeIQ1_M // not supported by ollama
TensorTypeBF16
tensorTypeQ4_0_4_4 // unused by GGML
tensorTypeQ4_0_4_8 // unused by GGML
tensorTypeQ4_0_8_8 // unused by GGML
tensorTypeTQ1_0 // not supported by ollama
tensorTypeTQ2_0 // not supported by ollama
tensorTypeIQ4_NL_4_4 // unused by GGML
tensorTypeIQ4_NL_4_8 // unused by GGML
tensorTypeIQ4_NL_8_8 // unused by GGML
TensorTypeMXFP4
)
// ParseTensorType parses the provided GGUF tensor type
// Only Ollama supported types are considered valid
func ParseTensorType(s string) (TensorType, error) {
switch s {
case "F32":
return TensorTypeF32, nil
case "F16":
return TensorTypeF16, nil
case "Q4_0":
return TensorTypeQ4_0, nil
case "Q4_1":
return TensorTypeQ4_1, nil
case "Q5_0":
return TensorTypeQ5_0, nil
case "Q5_1":
return TensorTypeQ5_1, nil
case "Q8_0":
return TensorTypeQ8_0, nil
case "Q8_1":
return TensorTypeQ8_1, nil
case "Q2_K":
return TensorTypeQ2_K, nil
case "Q3_K":
return TensorTypeQ3_K, nil
case "Q4_K":
return TensorTypeQ4_K, nil
case "Q5_K":
return TensorTypeQ5_K, nil
case "Q6_K":
return TensorTypeQ6_K, nil
case "Q8_K":
return TensorTypeQ8_K, nil
case "F64":
return TensorTypeF64, nil
case "BF16":
return TensorTypeBF16, nil
case "MXFP4":
return TensorTypeMXFP4, nil
default:
return 0, fmt.Errorf("unsupported quantization type %s", s)
}
}
func (t TensorType) IsQuantized() bool {
switch t {
case TensorTypeF32, TensorTypeF16, TensorTypeBF16:
return false
default:
return true
}
}
func (t TensorType) RowSize(ne uint64) uint64 {
return t.TypeSize() * ne / t.BlockSize()
}
func (t TensorType) String() string {
switch t {
case TensorTypeF32:
return "F32"
case TensorTypeF16:
return "F16"
case TensorTypeQ4_0:
return "Q4_0"
case TensorTypeQ4_1:
return "Q4_1"
case TensorTypeQ5_0:
return "Q5_0"
case TensorTypeQ5_1:
return "Q5_1"
case TensorTypeQ8_0:
return "Q8_0"
case TensorTypeQ8_1:
return "Q8_1"
case TensorTypeQ2_K:
return "Q2_K"
case TensorTypeQ3_K:
return "Q3_K"
case TensorTypeQ4_K:
return "Q4_K"
case TensorTypeQ5_K:
return "Q5_K"
case TensorTypeQ6_K:
return "Q6_K"
case TensorTypeQ8_K:
return "Q8_K"
case TensorTypeF64:
return "F64"
case TensorTypeBF16:
return "BF16"
case 4, TensorTypeMXFP4:
return "MXFP4"
default:
return "unknown"
}
}

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