ONNX to PyTorch

A library to transform ONNX model to PyTorch. This library enables use of PyTorch
backend and all of its great features for manipulation of neural networks.
Installation
pip install onnx2pytorch
Usage
import onnx
from onnx2pytorch import ConvertModel
onnx_model = onnx.load(path_to_onnx_model)
pytorch_model = ConvertModel(onnx_model)
Currently supported and tested models from onnx_zoo:
Limitations
Known current version limitations are:
batch_size > 1
could deliver unexpected results due to ambiguity of onnx's BatchNorm layer.
That is why in this case for now we raise an assertion error.
Set experimental=True
in ConvertModel
to be able to use batch_size > 1
.- Fine tuning and training of converted models was not tested yet, only inference.
Development
Dependency installation
pip install -r requirements.txt
From onnxruntime>=1.5.0 you need to add the
following to your .bashrc or .zshrc if you are running OSx:
export KMP_DUPLICATE_LIB_OK=True
Code formatting
The Uncompromising Code Formatter: Black
black {source_file_or_directory}
Install it into pre-commit hook to always commit nicely formatted code:
pre-commit install
Testing
Pytest and tox.
tox
Test fixtures
To test the complete conversion of an onnx model download pre-trained models:
./download_fixtures.sh
Use flag --all
to download more models.
Add any custom models to ./fixtures
folder to test their conversion.
Debugging
Set ConvertModel(..., debug=True)
to compare each converted
activation from pytorch with the activation from onnxruntime.
This helps identify where in the graph the activations start to differ.