Commit graph

664 commits

Author SHA1 Message Date
satyajandhyala
31926176ac
Support external custom operator schemas on Ubuntu (#8807)
* Expose symbols in onnx and protobuf namespaces in python when building with --enable_external_custom_op_schemas

* Add external onnx and protobuf files to wheel

* Added an example to demonstrate external custom ops use-case

* Added a Linux build pipeline to test external custom ops
2021-08-28 11:05:21 -07:00
Guoyu Wang
6a1939252f
Fix Android java API failure (#8865)
* Fix Android Package break

* Without java fix -- pipeline should fail

* With java fix, should pass now

* address CR comments
2021-08-27 15:58:56 -07:00
Chi Lo
6a477acecf
Add tensorrt_provider_factory.h to artifact (#8869) 2021-08-27 09:09:54 -07:00
Yulong Wang
e8564d6597
[js/web] update emsdk to v2.0.26 (#8653)
* update emsdk to v2.0.26

* fix pooling build warning

* fix build break

* use pragma diagnostic semantic only when __GNUC__ is defined

* fix build break

* disable AttentionPastState_dynamic
2021-08-26 15:31:34 -07:00
Chi Lo
eb8f84e2a2
Fix issue of GPU tarball/zip/java package (#8850)
* modify for test

* modify for test

* modify for test

* modify for test

* modify for test

* modify for test

* prepare for PR

* Rename cuda directory to gpu directory in tarball

* Fix gpu java package

* fix bug

* fix small bug
2021-08-26 10:16:16 -07:00
Edward Chen
0cfc4ec09d
[Objective-C] Enable static analysis (#8842)
Add Objective-C API static analysis pipeline.
2021-08-26 09:13:52 -07:00
Changming Sun
ced2d8e597
Clean up TRT docker files (#8847) 2021-08-25 22:26:31 -07:00
Guoyu Wang
613a600471
relax android ci timeout to 180 minutes (#8844) 2021-08-25 19:59:48 -07:00
Chi Lo
32ecbf4691
Create combined GPU tarball and zip file package (#8827)
* Add onnxruntime_providers_shared.dll into gpu nuget package

* Modify for test

* Temporarily remove for test

* Modify for test

* Modify for test

* Test packging Windows combined GPU

* Test packging Windows combined GPU

* Test packging Windows combined GPU

* Test packging Windows combined GPU

* modify for test

* modify for test

* fix bug

* Modify for test

* Modify for test

* Modify for test

* Modify for test

* Modify for test

* Modify for test

* Modify for test

* Modify for test

* Prepare for PR

* Prepare for PR

* Code refactor

* Rename proper Artifact name

* Rename intermediate Artifact names

* Revert Artifact Names

* Rename Artifact Names

* Modify Artifact name

* Modify Artifact name

* Modify Artifact name

* Update Java package

* Update Java package

* fix bug to change artifact name

* Fix bug for the wrong file path

* Fix no fetching correct artifact and test

* temporarily modify for test

* undo the change for test
2021-08-25 13:51:18 -07:00
Changming Sun
3837027506
Remove pyopenssl from installation (#8830) 2021-08-24 17:07:22 -07:00
Guoyu Wang
8992e31c85
Move iOS package from framework to xcframework (#8805)
* additional changes

* test package run

* minor fix

* minor fix

* minor fix

* Get around no arm64 simulator

* fix objc pod build failure

* downgrade_eigen

* update objc podspec template
2021-08-24 13:38:14 -07:00
Olivia Jain
4666a49106
Add Component Governance (#8794)
* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines
2021-08-20 17:41:18 -07:00
liqun Fu
2beb873c6b
move training CI agent pools to 1ES hosted (#8775) 2021-08-18 18:36:19 -07:00
pengwa
39059f2539
enable torch interop build (#8493)
* fix build - python.h not found

* disable --build_shared_lib for ortmodule tests

* fix

* fix the build flag

* disable --build_shared_lib for training path (not only for ortmodule)

* fix missing test model files

* disable test CApiTest.test_custom_op_library when ENABLE_TRAINING_TORCH_INTEROP is ON

* enable custom_op_library build

* fix build

* fix

* merge master and fix build failure

* build onnx_test_runner when onnxruntime_ENABLE_TRAINING_TORCH_INTEROP is ON

* resolve comments

* use --enable_training_torch_interop to replace "onnxruntime_ENABLE_TRAINING_TORCH_INTEROP=ON"
2021-08-19 09:16:32 +08:00
Chi Lo
51152e1aaa
Integrate TensorRT EP libs into existing GPU Nuget Package (Approach#1) (#8727)
* Merge CPU/GPU nuget pipeline

* Include TensorRT EP libraries into existing GPU nuget package pipeline

* modify to use correct YAML

* Modify for test

* modify for test

* Add depedance

* Add depedance (cont.)

* modify for test

* Add create TensorRT nuget package

* modify for test

* modify for test

* Merge CPU/GPU nuget pipeline

* Include TensorRT EP libraries into existing GPU nuget package pipeline

* modify to use correct YAML

* Modify for test

* modify for test

* Add depedance

* Add depedance (cont.)

* modify for test

* Add create TensorRT nuget package

* modify for test

* fix merge bug

* code refactor

* code refactor

* modify for test

* modify for test

* modify for test

* modify for test

* modify for test

* modify for test

* cleanup

* modify for test

* fix bug

* modify for test

* refactor

* fix bug and test

* Modify for test

* Modify for test

* Modify for test

* Modify for test

* Prepare for PR

* Prepare for PR

* code refacotr from review

* Remove naming 'Microsoft.ML.OnnxRuntime.TensorRT' to avoid confusion

* Add linux TensorRT libraries

* Remove redundant variable in YMAL

* revert file

* undo revert file

* Modify regular expression so that it can capture the correct file

* Remove newline at end of file

* small fix

* Revert to CUDA11.1 on Windows

* Add unit tests for nuget package on Linux

Co-authored-by: Changming Sun <chasun@microsoft.com>
2021-08-18 17:26:34 -07:00
Olivia Jain
60089f7093
Cuda11.4 (#8709)
* initial update from 11.1 to 11.4

* change 11.4.1 to 11.4.0

* adjusting to match nvidia/cuda image tags

* adjusting to match nvidia/cuda image tags centos7

* correction to 11.4.0

* correction to 11.4.0

* update to cuda 11.4

* change training back to 11.1

* change training back to 11.1

* point to correct nvcr.io/nvidia/cuda 11.4.1 image

* change centos8 to centos7

* correct cudnn path

* Update linux-gpu-ci-pipeline.yml for Azure Pipelines

* Update c-api-noopenmp-packaging-pipelines.yml

* need to resolve centos images but remove space and change to 11.4

* Update linux-gpu-ci-pipeline.yml

* add cudnn to docker image

* bump devtoolset to 10

* revert cuda 11.4 change to setup_env_trt

* orttraining back to 11.1

* use nvcr.io

* Fix previous change back to cuda 11.1

* update cudnn path

* use cudnn image (revert if failure)
2021-08-17 16:36:26 -07:00
Wei-Sheng Chin
47b3ecb53b
Packaging pipeline now builds with PythonOp (aka running autograd.Function) (#8652)
This PR disable UTs in training's package pipelines 
for building packages with PythonOp (torch.autograd.Function).
2021-08-17 10:55:13 -07:00
liqun Fu
2b1f0816f8
to build cpu training packages for multiple multiple python versions (#8750)
Co-authored-by: liqun <liqun@OrtTrainingDev4.af05slrtruoetgaxwwjv5nsq5e.px.internal.cloudapp.net>
2021-08-17 10:49:44 -07:00
Changming Sun
ae6fdd3333
Bring code coverage dashboard back (#8394) 2021-08-16 20:54:39 -07:00
Changming Sun
8335d3dc0b
Fix Python Packaging Pipeline (Training Torch 1.9.0 Cuda 11.4) (#8738) 2021-08-16 14:46:43 -07:00
Olivia Jain
9cefd1303b
Integrate Anubis (#8603)
* copy over changes

* Update build_image.sh

* allow for configurable trt

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* reflect previous changes

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* model_list.json

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* checkout trt 7.1

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update post.py

* Update post.py

* Update post.py

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update model_list.json

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update post.py

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update post.py

* Update post.py

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update model_list.json

* Update post.py

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update post.py

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update post.py

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update start_job.ps1

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update run_mem_test_docker.sh

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Separate anubis files

* revert to old pipeline

* Update post.py

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* build off master Dockerfile

* Delete Dockerfile.custom-trt-perf

* Delete install_common_deps.sh

* uncomment

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml

* pass in trt container version

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update post.py

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update post.py

* remove sudo

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* add back build number

* allow python 3.8

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* python 3.8 fix trtexec

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* remove prev py38

* Update linux-gpu-tensorrt-ci-perf-pipeline.yml for Azure Pipelines

* add perf dependencies

* Update start_job.ps1
2021-08-16 13:20:28 -07:00
Changming Sun
f04a235c77
Update manylinux build scripts (#8724)
Update manylinux build scripts. Sync it with the latest upstream.
2021-08-13 12:04:00 -07:00
Edward Chen
76d21bbeb2
Update Android API level to 30. (#8717) 2021-08-12 18:01:13 -07:00
Changming Sun
5f74f198c1
Merge CPU/GPU nuget pipeline (#8683)
Merge CPU/GPU nuget pipeline. The old GPU nuget pipeline will be only for DML.

TODO: the result GPU package contains PDB files for some of the DLLs, but not all. It is due to the refactoring of CUDA EP to pluggable DLLs. At that time we forgot to copy the PDB files. However, I can't add them in now. Because currently the package is already 220MB large. If the missed PDB files were added, then it will be oversize. nuget.org doesn't accept >250MB packages.
2021-08-12 13:21:29 -07:00
liqun Fu
bec24ca4c1
create packaging pipeline to support cuda11.4 (#8663) 2021-08-11 17:44:57 -07:00
Edward Chen
20f006c580
Remove flake8 check from CMake build. (#8662) 2021-08-09 14:10:36 -07:00
Edward Chen
baf8c39a8d
Add Python checks pipeline (#7032)
This change adds a new pipeline for checking Python code. Currently this pipeline only runs flake8.
flake8 is also run as part of the CMake project builds, but we can switch over completely to the new pipeline later.
The .flake8 config file was also updated to make it easier to run standalone (flake8 --config ./.flake8) and some Python formatting issues were addressed in files that were not previously scanned.
2021-08-09 10:37:05 -07:00
liqun Fu
eab6c51413
to create a training cpu package for torch-ort documentation (#7845) 2021-08-05 16:43:37 -07:00
Changming Sun
0458821944
Delete linux-ort-srv-ci-pipeline.yml (#8628) 2021-08-05 15:06:07 -07:00
Edward Chen
1041fa34f4
Specify timeout for iOS packaging pipeline (#8616) 2021-08-04 11:17:50 -07:00
Changming Sun
6c69baf78e
Disable Training Windows GPU Debug build because it is failing (#8608) 2021-08-04 09:24:27 -07:00
Edward Chen
717627775a
Increase build timeout (#8583) 2021-08-02 14:50:01 -07:00
stevenlix
ee99fb400c
Upgrade TensorRT to v8.0.1 (#8512)
* update onnx-tensorrt parser to master

* disable unsupported tests

* add cuda sm 75 for T4

* update tensorrt pipeline

* update trt pipelines

* update trt pipelines

* Update linux-gpu-tensorrt-ci-pipeline.yml

* update trt cid pipeline

* Update linux-gpu-tensorrt-ci-pipeline.yml

* Update Tensorrt Windows build pool and TensorRT/CUDA/CuDNN version

* update to cuda11.4 in trt ci pipeline

* update base image to cuda11.4

* update packaging pipeline to cuda11.4

* clean up

* remove cuda11.1 and cuda11.3 docker file

* disable unsupported tensorrt tests at runtime

* Update linux-multi-gpu-tensorrt-ci-pipeline.yml
2021-08-02 11:20:31 -07:00
Changming Sun
49a6ff75e6
Update py-packaging-stage.yml (#8569) 2021-08-02 09:17:15 -07:00
Changming Sun
0510688411
Update compliance tasks in python packaging pipeline and fix some compile warnings (#8471)
1. Update SDLNativeRules from v2 to v3. The new one allows us setting excluded paths.
2. Update TSAUpload from v1 to v2. And add a config file ".gdn/.gdntsa" for it.
3. Fix some parentheses warnings
4. Update cmake to the latest.
5. Remove "--x86" build option from pipeline yaml files. Now we can auto-detect cpu architecture from python. So we don't need to ask user to specify it.
2021-07-30 17:16:37 -07:00
Ye Wang
ad093b94b9
Restore transformers tests and disable some tests (#8530)
* restore transformers tests and disable some tests

* test

* update

* pass pep8 check

* update
2021-07-29 14:09:36 -07:00
Changming Sun
6f5bf8b8f2
Update Linux Training CPU CI pipeline (#8518) 2021-07-28 10:25:52 -07:00
Edward Chen
421c4059c0
[iOS Packaging] Update build definition (#8503)
* Add build number into version.

* Add parameter for archive upload.
2021-07-27 08:16:02 -07:00
Adam Pocock
55b26b6951
[Java] Adds support for DNNL, OpenVINO, TensorRT shared providers and refactors the CUDA shared provider loader (#8013) 2021-07-20 22:33:15 -07:00
Ryan Hill
cc9f793b48
Move one function from cuda_provider_factory.h (#8407) 2021-07-19 17:55:59 -07:00
Guoyu Wang
3e7fcd8c92
Fix iOS packaging pipeline failure (#8433) 2021-07-19 17:42:58 -07:00
Maajid khan
1686e8ff57
[OpenVINO-EP] 2021.4 Release (#8369)
* Changes to ensure the openvino-ep-2021.4 branch is created
* Fix failing cpp and python unit tests
* Fixed Myriad Tests for Ov_2021.4
* Disabled failing python tests for myriad
* Fixes models which were breaking w.r.t 2021.4
* Added fixes to Fix tinyyolov3 working on Myriad
and MaskRcnn, FasterRcnn using GPU_FP32
* Added FP16 output data type support for ngraph
* Implemented ReadNetwork() method

->Using Core::ReadNetwork() method for reading and creating a CNNNework

->Since OpenVINO™ 2020.4 version, Inference Engine enables reading ONNX models
  via the Inference Engine Core API and there is no need to use directly the low-level
  ONNX* Importer API anymore. To read ONNX* models, it's recommended to use the
  Core::ReadNetwork() method that provide a uniform way to read models from ONNX format.

Signed-off-by: MaajidKhan <n.maajidkhan@gmail.com>

* Fixed ngraph f16 supported output type

Signed-off-by: MaajidKhan <n.maajidkhan@gmail.com>

* Added comments in data_ops.cc

Signed-off-by: MaajidKhan <n.maajidkhan@gmail.com>

* Fixed broken windows build

Signed-off-by: MaajidKhan <n.maajidkhan@gmail.com>

* Disable failing CPP tests on CPU

Some of the convtranspose tests are failing on
OpenVINO-EP CPU due to accuracy mismatch w.r.t
default CPU. so currently we are disbaling
these tests.

Signed-off-by: MaajidKhan <n.maajidkhan@gmail.com>

* Updated for ov version 2021.4

* Changes to include qdq ops in code

* Disabled failing python tests on GPU

Disabled two maxpool python tests on
GPU as they were passing but throwing
segfault

Signed-off-by: MaajidKhan <n.maajidkhan@gmail.com>

* Fix the backward compatibility issue

ReadNetwork() API has a bug and will only work
starting from OpenVINO 2021.4 version.

The previous versions will still have to use
onnx importer route

Signed-off-by: MaajidKhan <n.maajidkhan@gmail.com>

* Fix CMakeLists.txt for OpenVINO EP

If a directory with OpenVINO is sourced,
the latest OpenVINO settings have to
be imported.

Signed-off-by: MaajidKhan <n.maajidkhan@gmail.com>

Co-authored-by: sfatimar <sahar.fatima@intel/com>
Co-authored-by: sfatimar <64512376+sfatimar@users.noreply.github.com>
Co-authored-by: Aravind Gunda <aravindx.gunda@intel.com>
2021-07-19 10:40:56 -07:00
Edward Chen
16f6904232
[iOS] Packaging pipeline improvements. (#8324)
Updates to the iOS packaging pipeline:
- Make it harder to overwrite package archives accidentally when uploading (fails if the archive already exists)
- Only upload package archives for release builds
- Some clean up
2021-07-13 18:48:28 -07:00
Chi Lo
31f291f0af
Add TRT EP memory leak test into trt perf script (#8155)
* Add memory check for TRT perf

* Revise test app

* Add memory check for TRT perf

* Revise test app

* add test cases

* Modify script and add pipeline YAML

* remove redundant code

* temporarily change

* Change YAML

* revise test app

* fix minor bug

* code refactor

* small fix

* temporarily change for test

* prepare result log

* rm container when it exits

* code refactor
2021-07-13 09:39:08 -07:00
Changming Sun
530d7bb46d
Temporarily disable transformers tool test (#8360) 2021-07-12 20:31:22 -07:00
Thiago Crepaldi
9a855fe9e7
Make Torch CPP extension build optional for packaging pipelines (#8305) 2021-07-07 07:24:58 -07:00
Suffian Khan
008c5f7640
Use single builder image across Python versions for ROCm wheels (#8302)
* first attempt share docker image across python and torch versons

* set dependency between jobs

* fix yaml grammer

* remove python version from first stage

* clean deepspeed directroy

* split into two images according torch version

* fix yaml syntax

* invalidate cache

* remove DS to prevent torch 1.9.0 upgrade
2021-07-06 11:56:00 -07:00
Edward Chen
b42e7d2c78
Add iOS packaging pipeline (#8264)
Create a pipeline to produce the iOS package artifacts.
2021-07-02 06:21:59 -07:00
Guoyu Wang
9b19241b27
Disable update database for Android code coverage (#8182) 2021-06-29 18:50:16 -07:00
Thiago Crepaldi
83be3759bc
Add post-install command to build PyTorch CPP extensions from within onnxruntime package (#8027)
ORTModule requires two PyTorch CPP extensions that are currently JIT compiled. The runtime compilation can cause issues in some environments without all build requirements or in environments with multiple instances of ORTModule running in parallel

This PR creates a custom command to compile such extensions that must be manually executed before ORTModule is executed for the first time. When users try to use ORTModule before the extensions are compiled, an error with instructions are raised

PyTorch CPP Extensions for ORTModule can be compiled by running:
python -m onnxruntime.training.ortmodule.torch_cpp_extensions.install

Full build environment is needed for this
2021-06-28 18:11:58 -07:00