ONNX Runtime: cross-platform, high performance ML inferencing and training accelerator
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Chen Fu 06e684c9f2
Adding cuda kernel (optimized for sm80) for block-wise 4b quantized float 16 GEMM. (#18619)
### Description
Adding CUDA kernel for block-wise 4b quantized float 16 GEMM, this is
specially optimized for Nvidia Ampere GPUs.


### Motivation and Context
Trying to improve quantized LLM inference performance on Nvidia Ampere
GPUs

### Note:
This is implemented by extending CUTLASS, so it has a hard dependency on
CUTLASS. However, in current build system, loading of CUTLASS dependency
is guarded with:

(onnxruntime_USE_FLASH_ATTENTION OR
onnxruntime_USE_MEMORY_EFFICIENT_ATTENTION)

If both of these options are turned off, then compilation will fail.

Why CUTLASS dependency is guarded at all? It's a header file only
library that does not introduce any binary if not instantiated. What's
the downside of removing all the guards and just include CUTLASS
unconditionally?
2024-03-05 09:37:45 -08:00
.config Update tsaoptions.json: update the email alias (#13448) 2022-10-26 15:56:16 -07:00
.devcontainer
.gdn Update win-ci-pipeline.yml: enable xnnpack tests (#16244) 2023-06-14 19:12:42 -07:00
.github Update labeler.yml to change permissions (#19709) 2024-02-28 21:10:25 -08:00
.pipelines Fix a build issue: /MP was not enabled correctly (#19190) 2024-01-29 12:45:38 -08:00
.vscode disable gemm f16 on CPU (#19744) 2024-03-01 13:44:29 -08:00
cgmanifests Update google benchmark to 1.8.3. (#19734) 2024-03-01 11:01:58 -08:00
cmake Adding cuda kernel (optimized for sm80) for block-wise 4b quantized float 16 GEMM. (#18619) 2024-03-05 09:37:45 -08:00
csharp Expose SessionOtions.DisablePerSessionThreads (#19730) 2024-03-04 13:46:51 -08:00
dockerfiles [ROCm] Update dockerfile (#19661) 2024-02-29 17:51:29 +08:00
docs enable embedding sparse optimization by default (#19714) 2024-03-05 13:15:30 +08:00
include/onnxruntime/core ONNX Gelu Op in Opset 20 (#19560) 2024-02-23 11:05:16 +08:00
java [java] Adding ML program flag for CoreML (#19551) 2024-02-21 12:24:41 -08:00
js [js/web] transfer input buffer back to caller thread (#19677) 2024-03-01 14:50:06 -08:00
objectivec Add initial support for CoreML ML Program to the CoreML EP. (#19347) 2024-02-15 08:46:03 +10:00
onnxruntime Adding cuda kernel (optimized for sm80) for block-wise 4b quantized float 16 GEMM. (#18619) 2024-03-05 09:37:45 -08:00
orttraining enable embedding sparse optimization by default (#19714) 2024-03-05 13:15:30 +08:00
rust Fix rust compile issues and add GH action to run build validations and tests (#18346) 2023-11-09 04:26:02 -08:00
samples Removed all the deprecated python training code and related tests and utils (#18333) 2023-11-17 18:19:21 -08:00
tools Update copying API header files (#19736) 2024-03-02 11:33:47 +08:00
winml Diable __cpuid call for ARM64EC (#19592) 2024-02-21 15:45:44 -08:00
.clang-format Prevent GSL_SUPPRESS arguments from being modified by clang-format (#17242) 2023-08-22 18:26:53 -07:00
.clang-tidy
.dockerignore
.gitattributes
.gitignore Build onnxruntime.dll as arm64x (#18633) 2023-12-06 16:49:00 -08:00
.gitmodules update to emsdk-3.1.51 (#18844) 2024-01-12 16:04:33 -08:00
.lintrunner.toml Adding cuda kernel (optimized for sm80) for block-wise 4b quantized float 16 GEMM. (#18619) 2024-03-05 09:37:45 -08:00
build.bat try to find patch.exe in git default installation folder (#17106) 2023-08-10 21:48:13 -07:00
build.sh Upgrade old Python version in packaging pipeline (#16667) 2023-07-17 08:24:47 -07:00
build_arm64x.bat remove unnecessary environment variable (#19166) 2024-01-16 16:24:37 -08:00
CITATION.cff Fix citation author name issue (#19597) 2024-02-22 17:03:56 -08:00
CODEOWNERS Add owners for public facing API files (#15288) 2023-03-30 17:16:15 -07:00
CONTRIBUTING.md Fix link to High Level Design (#11786) 2023-02-28 11:05:54 -08:00
lgtm.yml Fix lgtm C++ error (#13613) 2022-11-10 10:06:22 -08:00
LICENSE
NuGet.config
ort.wprp ORT ETW dynamic logging that improves ORT diagnosability & performance (#18882) 2024-01-11 12:43:27 -08:00
ORT_icon_for_light_bg.png
packages.config Update DirectML nuget version to 1.13.1 (#19122) 2024-01-15 19:04:41 -08:00
pyproject.toml [ORTModule] ATen Efficient Attention and Triton Flash Attention (#17959) 2023-10-27 10:29:27 +08:00
README.md Update README.md (#18963) 2024-01-03 17:26:25 -08:00
requirements-dev.txt ONNX 1.15 integration (#17125) 2023-09-26 14:44:48 -07:00
requirements-doc.txt
requirements-lintrunner.txt Bump ruff linter to 0.2.1 (#19471) 2024-02-08 16:08:27 -08:00
requirements-training.txt ONNX 1.15 integration (#17125) 2023-09-26 14:44:48 -07:00
requirements.txt.in
SECURITY.md
setup.py [ROCm] Add excluded libs for ROCm python package (#19586) 2024-02-22 13:34:55 +08:00
ThirdPartyNotices.txt Update ThirdPartyNotices.txt: Add Intel neural-speed (#19332) 2024-01-30 12:40:30 -08:00
VERSION_NUMBER [ORT 1.17.0 release] Bump up version to 1.18.0 (#19170) 2024-01-17 11:18:32 -08:00

ONNX Runtime is a cross-platform inference and training machine-learning accelerator.

ONNX Runtime inference can enable faster customer experiences and lower costs, supporting models from deep learning frameworks such as PyTorch and TensorFlow/Keras as well as classical machine learning libraries such as scikit-learn, LightGBM, XGBoost, etc. ONNX Runtime is compatible with different hardware, drivers, and operating systems, and provides optimal performance by leveraging hardware accelerators where applicable alongside graph optimizations and transforms. Learn more →

ONNX Runtime training can accelerate the model training time on multi-node NVIDIA GPUs for transformer models with a one-line addition for existing PyTorch training scripts. Learn more →

Get Started & Resources

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System Inference Training
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Data/Telemetry

Windows distributions of this project may collect usage data and send it to Microsoft to help improve our products and services. See the privacy statement for more details.

Contributions and Feedback

We welcome contributions! Please see the contribution guidelines.

For feature requests or bug reports, please file a GitHub Issue.

For general discussion or questions, please use GitHub Discussions.

Code of Conduct

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact opencode@microsoft.com with any additional questions or comments.

License

This project is licensed under the MIT License.