ONNX Runtime: cross-platform, high performance ML inferencing and training accelerator
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jingyanwangms cd67f12add
Move IOBinding and RunOptions to ctx (#7028)
* Liqun/ort module perf1 (#6806)

add mysql script to log perf data
Co-authored-by: liqun <liqun@OrtTrainingDev4.af05slrtruoetgaxwwjv5nsq5e.px.internal.cloudapp.net>

* Resolve HTTP Error 503: Service Unavailable for MNIST dataset (#6989)

* Reduce logging for ORTModule for the end user (#6982)

* Support none types in forward output (#7001)

* Missed test case for none type output (#7014)

* save iobinding to ctx

* save run_options to ctx

* remove debug tests

* PR comments and clean up

* add RunStateInfo

* remove whitespace edits

* PR comments

* remove test changes

* fix test failure

* Fit unit test test_nesting_forward_backward_calls

Co-authored-by: liqunfu <liqfu@microsoft.com>
Co-authored-by: baijumeswani <bmeswani@microsoft.com>
Co-authored-by: Jingyan Wang <jingywa@OrtTrainingDev3.af05slrtruoetgaxwwjv5nsq5e.px.internal.cloudapp.net>
2021-03-24 17:51:00 -07:00
.github Don't mark issues that are marked as enhancement as stale (#6134) 2020-12-14 18:57:40 -08:00
cgmanifests Post merge update for ORTModule 2021-03-16 20:11:59 -07:00
cmake cmake: support install target with generated pkg-config file (#7076) 2021-03-22 19:36:31 -07:00
csharp Add rocm execution provider to prover_list (#6306) 2021-03-12 07:51:08 -08:00
dockerfiles adding ngraph_DIR to fix build (#6975) 2021-03-22 09:43:02 -07:00
docs Add auto doc gen for ORTModule API during CI build (#7046) 2021-03-22 10:20:33 -07:00
include/onnxruntime/core Thread pool profiler (#6748) 2021-03-22 10:49:57 -07:00
java Fix broken Java API link (#6826) 2021-03-08 11:28:41 -08:00
nodejs Removed BUILD.md from master as source now lives in gh-pages (#6709) 2021-02-19 11:34:21 -08:00
onnxruntime [NNAPI EP] Fix error for QLinearAdd with an initializer as input (#7093) 2021-03-24 11:56:53 -07:00
orttraining Move IOBinding and RunOptions to ctx (#7028) 2021-03-24 17:51:00 -07:00
package/rpm Bumping up version to 1.7 (#6736) 2021-02-17 19:07:38 -08:00
samples Introduce ORTModule training API to ONNX Runtime 2021-03-10 10:48:10 -08:00
server Update ORT server build pipeline (#7030) 2021-03-16 18:02:09 -07:00
tools Move TensorRT Windows CI build to the machine pool (#7127) 2021-03-24 14:28:25 -07:00
winml Change tabs to spaces in Windows.AI.MachineLearning.idl (#7088) 2021-03-22 09:23:18 -07:00
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.flake8 Add ability to track per operator types in reduced build config. (#6428) 2021-01-29 07:59:51 +10:00
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.gitignore Add auto doc gen for ORTModule API during CI build (#7046) 2021-03-22 10:20:33 -07:00
.gitmodules Post merge update for ORTModule 2021-03-16 20:11:59 -07:00
build.amd64.1411.bat
build.bat
build.sh
CODEOWNERS Update code owners for pytorch frontend team (#6329) 2021-02-02 11:09:10 -08:00
CONTRIBUTING.md Add README for docs (#6626) 2021-03-12 15:14:40 -08:00
LICENSE Remove year from license (#6658) 2021-02-12 00:25:56 -08:00
NuGet.config Delete nuget extra configs (#6477) 2021-01-27 20:25:45 -08:00
ort.wprp
packages.config Update DirectML 1.4.1 to 1.4.2 for ORT 1.7 (#6780) 2021-02-23 10:52:10 -08:00
README.md Add direct link to build instructions on readme (#6729) 2021-02-19 10:56:50 -08:00
requirements-dev.txt Add ability to track per operator types in reduced build config. (#6428) 2021-01-29 07:59:51 +10:00
requirements-doc.txt Add auto doc gen for ORTModule API during CI build (#7046) 2021-03-22 10:20:33 -07:00
requirements-training.txt Add missing Python dependencies for ORT training (#7104) 2021-03-23 18:43:19 -07:00
requirements.txt Quantization calibration refactor (#6893) 2021-03-19 01:09:11 -07:00
setup.py Add missing Python dependencies for ORT training (#7104) 2021-03-23 18:43:19 -07:00
ThirdPartyNotices.txt Post merge update for ORTModule 2021-03-16 20:11:59 -07:00
VERSION_NUMBER Bumping up version to 1.7 (#6736) 2021-02-17 19:07:38 -08:00

ONNX Runtime is a cross-platform inference and training machine-learning accelerator compatible with deep learning frameworks, PyTorch and TensorFlow/Keras, as well as classical machine learning libraries such as scikit-learn, and more.

ONNX Runtime uses the portable ONNX computation graph format, backed by execution providers optimized for operating systems, drivers and hardware.

Common use cases for ONNX Runtime:

  • Improve inference performance for a wide variety of ML models
  • Reduce time and cost of training large models
  • Train in Python but deploy into a C#/C++/Java app
  • Run with optimized performance on different hardware and operating systems
  • Support models created in several different frameworks

ONNX Runtime inference APIs are stable and production-ready since the 1.0 release in October 2019 and can enable faster customer experiences and lower costs.

ONNX Runtime training feature was introduced in May 2020 in preview. This feature supports acceleration of PyTorch training on multi-node NVIDIA GPUs for transformer models. Additional updates for this feature are coming soon.

Get Started

http://onnxruntime.ai/

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Data/Telemetry

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.