- 03 Dec, 2025 1 commit
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Daniel Hiltgen authored
We now do a deeper probe of CUDA devices to verify the library version has the correct compute capability coverage for the device. Due to ROCm also interpreting the CUDA env var to filter AMD devices, we try to avoid setting it which leads to problems in mixed vendor systems. However without setting it for this deeper probe, each CUDA library subprocess discovers all CUDA GPUs and on systems with lots of GPUs, this can lead to hitting timeouts. The fix is to turn on the CUDA visibility env var just for this deeper probe use-case.
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- 02 Dec, 2025 1 commit
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Daniel Hiltgen authored
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- 19 Nov, 2025 5 commits
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Jesse Gross authored
We currently copy data into the KV cache in contiguous buffers using ggml_cpy(). ggml_set_rows() was introduced to allow scatter operation so that contiguous buffers are no longer required. The direct primary benefit of this is that we no longer need to perform defragmentation. However, GGML recently removed an optimization for ggml_cpy() and we picked it up in 544b6739 "ggml update to b6840 (#12791)". This caused a roughly 40% drop in token generation performance on CUDA due to CUDA graphs no longer being used. By switching to ggml_set_rows(), the original optimization is no longer necessary and CUDA performance is restored. Fixes #13112
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Jesse Gross authored
GGML requires tensors to be contiguous for reshape and if this is not the case, it will assert fail. Contiguous is an expensive operation, so it's best to do it lazily when it is actually required rather than ahead of time when it may not be needed.
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Daniel Hiltgen authored
Calling abort on windows triggers the C++ runtime to attempt a debugger attach, which causes the crashed runners to hang instead of exit, leading to a timeout instead of a fast failure during discovery.
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Michael Yang authored
cuda panics on batches larger than 1024 so skip those and fallback to cpu
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Michael Yang authored
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- 18 Nov, 2025 2 commits
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Michael Yang authored
* migrate to golangci-lint v2 * copyloopvar
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Grace authored
* Add mla for flash attention * Revert to using chunks
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- 17 Nov, 2025 1 commit
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Daniel Hiltgen authored
* build: optimize dockerfile context for iterating This moves the copy of the source into the layer AFTER doing software installs so we don't have to go through the RPM install for cuda, etc. every time you touch a source file. * amd: implement linux sysfs based VRAM lookup This adds a C++ implementation of sysfs DRM VRAM discovery for more accurate free VRAM data on linux for AMD GPUs.
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- 13 Nov, 2025 2 commits
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Michael Yang authored
* use slice/chunks * bert * llama4 * gemma3n * gptoss * mistral3 * qwen3vl * qwen25vl * deepseek2 * remove unused ops
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Michael Yang authored
* slice * chunk, chunksections
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- 12 Nov, 2025 1 commit
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Daniel Hiltgen authored
This should be reverted once we update ggml past b6897
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- 11 Nov, 2025 2 commits
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Jesse Gross authored
We currently assign model layers to GPUs according to free VRAM, which assumes that GPU performance is roughly equal. This does not work well for mixed dGPU and iGPU systems because iGPUs typically use system memory which is large but their performance is slow. This instead assigns layers to dGPUs first and then iGPUs. In the future, this could be generalized to have a more fine grained notion of GPU performance but dGPU vs. iGPU performance is the most extreme.
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Jesse Gross authored
We used to control the way that llama.cpp saw devices using CUDA_VISIBLE_DEVICES or similar. This would ensure that the layers offloaded to a device were actually the ones intended. This is particularly important because we might reorder devices based on free memory or performance. When we started explicitly scheduling layers, this logic went away but the llamarunner didn't have any way to set the correct order of devices. This meant that the correct number of layers would be assigned to a device but not necessarily the layers that were expected. This change sets up the devices correctly based on the offload information.
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- 06 Nov, 2025 2 commits
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Thomas Stocker authored
* Remove unnecessary macos 13 Patch * Remove unnecessary MacOs Version Guard patch * rename patchesw * remove again macos13 patch * rename files
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Daniel Hiltgen authored
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- 04 Nov, 2025 4 commits
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Daniel Hiltgen authored
* discovery: only retry AMD GPUs CUDA and Vulkan don't crash on unsupported devices, so retry isn't necessary. This also refactors the code to shift the Library specific logic into the ml package. * review comments
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virajwad authored
* PDH free memory skeleton * Add PDH printing * Add LUID support for Vulkan * wire luid from ggml-vulkan to mem-dxgi-pdh file * Fix to ggml-impl * Continue skeleton * Implemented ggml_dxgi_pdh_get_device_memory * fix comments * Fix - change value GB to bytes * add ifdefs to only support windows and not linux * modify error codes * Finished ggml_dxgi_pdh_init() function * completed ggml_dxgi_pdh_release() * Formatting changes, add static to functions * fix build errors * fix go build error * fix luid - now should match between dxgi and vulkan * Fix the free memory reporting (was using copy by value, change to reference) * keep only dxgi1_2.h * Modifications based on PR feedback * fix merge conflicts (2) and fix desc1.description printout * move dxgi + pdh api calls to before the vendor specific library calls * change from 3 samples to 1 sample for PDH * modify when old_mode is set * add fix for building MacOS * fix release and returns for other vendors * add patch file
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Daniel Hiltgen authored
Also adjusts the vulkan windows build pattern to match recent changes in other backends so incremental builds are faster.
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Jesse Gross authored
The initial implementation of qwen3-vl:235b exceeded the maximum graph size based on the number of tensors. Although this was later fixed through the use of the mrope operation, we are close to the limit in some cases. This updates to track the current llama.cpp usage of GGML.
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- 31 Oct, 2025 2 commits
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Jesse Gross authored
We pass invalid pointers when we check the size of the required compute graph before fitting. Some CUDA APIs validate these pointers but we can just skip them during this phase. cudaMemsetAsync is one of these that we weren't skipping but never took the code path that used it. Now that we have enabled op_offload, we can hit it in memory pressured situations.
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Daniel Hiltgen authored
In CPU only setups the LibOllamaPath was omitted causing us not to load the ggml-cpu-XXX libraries during inference.
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- 30 Oct, 2025 3 commits
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Jesse Gross authored
When a model is partially offloaded to system RAM, we can either do the calculations on the CPU or we can temporarily transfer the data to the GPU to do the calculations there. Small batches tend to be better on the CPU, large batches on the GPU. The llamarunner used the GPU in most cases and the ollamarunner used the CPU. Although the ollamarunner saw an improvement in token generation performance, there was a large performance hit in prompt processing (3-10x). There is an existing heuristic to dynamically switch between these two modes but in practice it doesn't have enough information to accurately make that decision. This adds authoritative data to make the check work to get the best of both worlds. Fixes #12037
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Michael Yang authored
* ml(ggml): mrope * interleave mrope
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Michael Yang authored
* mulmat * permute
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- 29 Oct, 2025 2 commits
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Michael Yang authored
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Michael Yang authored
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- 28 Oct, 2025 2 commits
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Daniel Hiltgen authored
* Fix vulkan PCI ID and ID handling Intel GPUs may not report PCI IDs which was leading to incorrect overlap detection. Switch to using the existing PCI IDs, however AMD GPUs claim not to report PCI IDs, but actually do, so try anyway, as this is required for ADLX to find the GPUs on Windows. Numeric IDs lead to scheduling problems, so this also switches Vulkan to use UUID based IDs. The GPU discovery patches have been squashed into a single patch to simplify future rebases. * review comments
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Michael Yang authored
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- 23 Oct, 2025 1 commit
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Daniel Hiltgen authored
* DRY out the runner lifecycle code Now that discovery uses the runners as well, this unifies the runner spawning code into a single place. This also unifies GPU discovery types with the newer ml.DeviceInfo * win: make incremental builds better Place build artifacts in discrete directories so incremental builds don't have to start fresh * Adjust sort order to consider iGPUs * handle cpu inference oom scenarios * review comments
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- 20 Oct, 2025 1 commit
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Daniel Hiltgen authored
Users on Windows without GPUs are reporting errors relating to cudaDriverGetVersion with the device set to -1. This ensures we only grab the driver once we're enumerating actual devices.
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- 18 Oct, 2025 1 commit
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Daniel Hiltgen authored
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.
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- 16 Oct, 2025 1 commit
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Thomas Stocker authored
* vulkan: Get FilterID from Backend for Vulkan * Fixing patch
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- 15 Oct, 2025 2 commits
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Daniel Hiltgen authored
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Santosh Bhavani authored
* 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
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- 14 Oct, 2025 1 commit
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Thomas Stocker authored
* 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>
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- 13 Oct, 2025 1 commit
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Gabe Goodhart authored
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>
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- 10 Oct, 2025 1 commit
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Daniel Hiltgen authored
* implement nvml for linux * Improve scheduler logging when VRAM doesn't recover
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- 02 Oct, 2025 1 commit
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Daniel Hiltgen authored
Notable EOLs with this change: - MacOS v12 and v13 are no longer supported (v14+ required) - AMD gfx900 and gfx906 are no longer supported
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