Open Neural Network Exchange (ONNX) is an open ecosystem that empowers AI developers to choose the right tools as their project evolves. ONNX provides an open source format for AI models, both deep learning and traditional ML. It defines an extensible computation graph model, as well as definitions of built-in operators and standard data types. Currently we focus on the capabilities needed for inferencing (scoring).
ONNX is widely supported and can be found in many frameworks, tools, and hardware. Enabling interoperability between different frameworks and streamlining the path from research to production helps increase the speed of innovation in the AI community. We invite the community to join us and further evolve ONNX.
Learn about the ONNX spec
- ONNX intermediate representation spec
- Versioning principles of the spec
- Operators documentation
- Python API Overview
Programming utilities for working with ONNX Graphs
Check out our contribution guide to get started.
If you think some operator should be added to ONNX specification, please read this document.
conda install -c conda-forge onnx
If you have installed onnx on your machine, please
pip uninstall onnx first before the following process of build from source.
Linux and MacOS
You will need an install of Protobuf and NumPy to build ONNX. One easy way to get these dependencies is via Anaconda:
# Use conda-forge protobuf, as default doesn't come with protoc conda install -c conda-forge protobuf numpy
You can then install ONNX from PyPi (Note: Set environment variable
ONNX_ML=1 for onnx-ml):
pip install onnx
Alternatively, you can also build and install ONNX locally from source code:
git clone https://github.com/onnx/onnx.git cd onnx git submodule update --init --recursive python setup.py install
Note: When installing in a non-Anaconda environment, make sure to install the Protobuf compiler before running the pip installation of onnx. For example, on Ubuntu:
sudo apt-get install protobuf-compiler libprotoc-dev pip install onnx
If you are building ONNX from source on Windows, it is recommended that you also build Protobuf locally as a static library. The version distributed with conda-forge is a DLL and this is a conflict as ONNX expects it to be a static library.
Note that the instructions in this README assume you are using Visual Studio. It is recommended that you run all the commands from a shell started from “Developer Command Prompt for VS 2019” and keep the build system generator for cmake (e.g., cmake -G “Visual Studio 16 2019”) consistent.
Build Protobuf and ONNX on Windows
Step 1: Build Protobuf locally
git clone https://github.com/protocolbuffers/protobuf.git cd protobuf git checkout 3.11.x cd cmake # Explicitly set -Dprotobuf_MSVC_STATIC_RUNTIME=OFF to make sure protobuf does not statically link to runtime library cmake -G -A -Dprotobuf_MSVC_STATIC_RUNTIME=OFF -Dprotobuf_BUILD_TESTS=OFF -Dprotobuf_BUILD_EXAMPLES=OFF -DCMAKE_INSTALL_PREFIX=<protobuf_install_dir> # For example: # cmake -G "Visual Studio 16 2019" -A x64 -Dprotobuf_MSVC_STATIC_RUNTIME=OFF -Dprotobuf_BUILD_TESTS=OFF -Dprotobuf_BUILD_EXAMPLES=OFF -DCMAKE_INSTALL_PREFIX=..\install msbuild protobuf.sln /m /p:Configuration=Release msbuild INSTALL.vcxproj /p:Configuration=Release
Step 2: Build ONNX
# Get ONNX git clone https://github.com/onnx/onnx.git cd onnx git submodule update --init --recursive # Set environment variables to find protobuf and turn off static linking of ONNX to runtime library. # Even better option is to add it to user\system PATH so this step can be performed only once. # For more details check https://docs.microsoft.com/en-us/cpp/build/reference/md-mt-ld-use-run-time-library?view=vs-2017 set PATH=<protobuf_install_dir>\bin;<protobuf_install_dir>\include;<protobuf_install_dir>\libs;%PATH% set USE_MSVC_STATIC_RUNTIME=0 # use the static installed protobuf set CMAKE_ARGS=-DONNX_USE_PROTOBUF_SHARED_LIBS=OFF -DProtobuf_USE_STATIC_LIBS=ON # Optional: Set environment variable `ONNX_ML=1` for onnx-ml # Build ONNX python setup.py install
If you would prefer to use Protobuf from conda-forge instead of building Protobuf from source, you can use the following instructions.
Build ONNX on Windows with Anaconda
# Use conda-forge protobuf conda install -c conda-forge numpy libprotobuf=3.11.3 protobuf # Get ONNX git clone https://github.com/onnx/onnx.git cd onnx git submodule update --init --recursive # Set environment variable for ONNX to use protobuf shared lib set USE_MSVC_STATIC_RUNTIME=0 set CMAKE_ARGS=-DONNX_USE_PROTOBUF_SHARED_LIBS=ON -DProtobuf_USE_STATIC_LIBS=OFF -DONNX_USE_LITE_PROTO=ON # Build ONNX # Optional: Set environment variable `ONNX_ML=1` for onnx-ml python setup.py install
Build ONNX on ARM 64
If you are building ONNX on an ARM 64 device, please make sure to install the dependencies appropriately.
pip install cython protobuf numpy sudo apt-get install libprotobuf-dev protobuf-compiler pip install onnx
After installation, run
python -c "import onnx"
to verify it works.
USE_MSVC_STATIC_RUNTIME (should be 1 or 0, not ON or OFF)
ONNX_USE_PROTOBUF_SHARED_LIBS is ON then
Protobuf_USE_STATIC_LIBS must be OFF and
USE_MSVC_STATIC_RUNTIME must be 0. If
ONNX_USE_PROTOBUF_SHARED_LIBS is OFF then
Protobuf_USE_STATIC_LIBS must be ON and
USE_MSVC_STATIC_RUNTIME can be 1 or 0.
Note that the
import onnx command does not work from the source checkout directory; in this case you’ll see
ModuleNotFoundError: No module named 'onnx.onnx_cpp2py_export'. Change into another directory to fix this error.
Building ONNX on Ubuntu works well, but on CentOS/RHEL and other ManyLinux systems, you might need to open the CMakeLists file and replace all instances of
If you want to build ONNX on Debug mode, remember to set the environment variable
DEBUG=1. For debug versions of the dependencies, you need to open the CMakeLists file and append a letter
d at the end of the package name lines. For example,
NAMES protobuf-lite would become
You can also use the onnx-dev docker image for a Linux-based installation without having to worry about dependency versioning.
ONNX uses pytest as test driver. In order to run tests, you will first need to install pytest:
pip install pytest nbval
After installing pytest, use the following command to run tests.
Check out the contributor guide for instructions.