Commit graph

15 commits

Author SHA1 Message Date
Changming Sun
deea945f80
Remove openmp and scipy from build pipelines (#4305)
1. Remove openmp because the default thread pool is already good enough.
2. Remove scipy from build pipelines because it stops support python 3.5.
2020-06-23 20:18:16 -07:00
Weixing Zhang
b4b1c6440a
Enable ORT with CUDA 11 toolkit (#4168)
* ORT on CUDA 11

1. Seperate HOROVOD and MPI
2. Seperate NCCL from HOROVOD in CMakeLists.txt
2. Remove dependency on external cub
3. cudnnSetRNNDescriptor is changed in cuDNN 8.0

* polish the code about MPI/NCCL in CMakeLists.txt and build.py

* check CUDA version

* ${MPI_INCLUDE_DIRS} should be PUBLIC

* sm30, sm50 are deprecated in CUDA 11 Toolkit

* update change based on code review feedback.

* add sm_52

* improve MPI/NCCL build path

Co-authored-by: Weixing Zhang <wezhan@microsoft.com>
2020-06-15 08:47:03 -07:00
Edward Chen
e542cfd0e0 Introduce training changes. 2020-03-11 14:39:03 -07:00
Dmitri Smirnov
ce7a180f21
Import more featurizers with tests (#2685)
Advance commit to 4df80d5865a9d4e97f6d0b9304d4316115a04d9e
  Add generated code for the commit before editing.
  Import more featurizers.
  Rename Automl ops domain to mlfeaturizers.
  Rename conditional compilation macro.
  Move and rename files getting rid of automl
  Rename --use_automl build switch to --use_featurizers
  Rename CMake option accordingly. Rename automl CMake targets.
  Adjust CI and packaging pipeline switches.
  Rename namespace automl to featurizers.
2019-12-17 22:17:40 -08:00
Dmitri Smirnov
7c87070b24
Import Featurizers (#2643)
Import FeaturizerLibrary as ExternalPorject which is optional and is not registered as git submodule.
2019-12-13 16:07:12 -08:00
Adrian Tsai
4090d0d0de
Add DirectML Execution Provider (#2057)
This change adds a new execution provider powered by [DirectML](https://aka.ms/DirectML).

DirectML is a high-performance, hardware-accelerated DirectX 12 library for machine learning on Windows. DirectML provides GPU acceleration for common machine learning tasks across a broad range of supported hardware and drivers.

The DirectML execution provider is capable of greatly improving evaluation time of models using commodity GPU hardware, without sacrificing broad hardware support or requiring vendor-specific extensions to be installed.

**Note** that the DML EP code was moved verbatim from the existing WindowsAI project, which is why it doesn't yet conform to the onnxruntime coding style. This is something that can be fixed later; we would like to keep formatting/whitespace changes to a minimum for the time being to make it easier to port fixes from WindowsAI to ORT during this transition.

Summary of changes:
* Initial commit of DML EP files under onnxruntime/core/providers/dml
* Add cmake entries for building the DML EP and for pulling down the DirectML redist using nuget
* Add a submodule dependency on the Windows Implementation Library (WIL)
* Add docs under docs/execution_providers/DirectML-ExecutionProvider.md
* Add support for DML EP to provider tests and perf tests
* Add support for DML EP to fns_candy_style_transfer sample
* Add entries to the C ABI for instantiating the DML EP
2019-10-15 06:13:07 -07:00
Dmitri Smirnov
d1b1cdc5c4
Replace GSL with GSL-LITE submodule and fix up refs (#1920)
Remove gsl subodule and replace with a local copy of gsl-lite
  Refactor for onnxruntime::make_unique
  gsl::span size and index are now size_t
  Remove lambda auto argument type detection.
  Remove constexpr from fail_fast in gsl due to Linux not being happy.
  Comment out std::stream support due to MacOS std lib broken.
  Move make_unique into include/core/common so it is accessible for server builds.
  Relax requirements for onnxruntime/test/providers/cpu/ml/write_scores_test.cc
  due to x86 build.
  Add ONNXRUNTIME_ROOT to Server Lib includes so gsl is recognized
2019-10-01 12:43:29 -07:00
Dmitri Smirnov
17c8fe44e3
Integrate featurizers (#1573)
Added Sample Featurizer and Infrastructure
  Make featurizers and unit tests compile and run with GTest.
  Create definitions for the first featurizer kernel.
  Add new operator domain.
  Create datetime_transformer kernel and build.
  Move OPAQUE types definitions for featurizers kerneles out to a separate cc.
  Register them with the type system.
 Provide unit tests for new AutoML DateTimeTransformer kernel.
  Make necessary adjustments to the test infrastructure to make it run
  with new types.
2019-08-15 13:59:59 -07:00
Maik Riechert
ded7eeb033 make builds more robust (#906) (#932) 2019-04-29 12:58:20 -07:00
Pranav Sharma
bcf1ce94be
Provide an option to disable contrib ops. (#707) 2019-03-26 12:31:36 -07:00
Pranav Sharma
5d452b3029
Use protobuf-lite to reduce onnxruntime.dll size. (#639)
* Test protobuf-lite

* Test protobuf-lite

* Test protobuf-lite

* Optimize protobuf usage for LITE_RUNTIME to reduce the binary size of
onnxruntime.dll. More details can be found here https://developers.google.com/protocol-buffers/docs/proto.
The reduction is significant. For commit id: 4873b452151bafe49da332aaeab639ef0318fc1ca28d728, the size
reduced by ~700K; from 4873728 to 4172800.

* Add LITE_RUNTIME flag in in.proto files

* Fix merge conflict.

* Address PR comments

* Forgot to add 2 files + fix linux and gpu build errors.

* Fix build errors + test failures

* Fix cuda tests

* Fix tensor rt build

* Use full protobuf for trt

* Address PR comments

* Print tensor shape proto as text string for easier debugging
2019-03-21 14:06:38 -07:00
Changming Sun
c87929e949 Use nsync for implementing condition variable 2019-01-21 22:59:42 -08:00
Changming Sun
5e113661a9 Build system upgrades (#281)
* update

* runas normal user
2019-01-07 13:15:24 -08:00
Pranav Sharma
7aef8a1cca Sync with internal master. 2018-11-22 20:56:43 -08:00
Pranav Sharma
89618e8f1e Initial bootstrap commit. 2018-11-19 16:48:22 -08:00