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Accelerate PyTorch models with ONNX Runtime

ONNX Runtime for PyTorch accelerates PyTorch model training using ONNX Runtime.

It is available via the torch-ort python package.

This repository contains the source code for the package, as well as instructions for running the package.

Pre-requisites

You need a machine with at least one NVIDIA or AMD GPU to run ONNX Runtime for PyTorch.

You can install and run torch-ort in your local environment, or with Docker.

Install in a local Python environment

Default dependencies

By default, torch-ort depends on PyTorch 1.9.0, ONNX Runtime 1.9.0 and CUDA 10.2.

  1. Install CUDA 10.2

  2. Install CuDNN 7.6

  3. Install torch-ort

    • pip install torch-ort
  4. Run post-installation script for ORTModule

    • python -m torch_ort.configure

Get install instructions for other combinations in the Get Started Easily section at https://www.onnxruntime.ai/ under the Optimize Training tab.

Verify your installation

  1. Clone this repo

  2. Install extra dependencies

    • pip install wget pandas sklearn transformers
  3. Run the training script

    • python ./ort/tests/bert_for_sequence_classification.py

Add ONNX Runtime for PyTorch to your PyTorch training script

from torch_ort import ORTModule
model = ORTModule(model)

# PyTorch training script follows

Samples

To see torch-ort in action, see https://github.com/microsoft/onnxruntime-training-examples, which shows you how to train the most popular HuggingFace models.

License

This project has an MIT license, as found in the LICENSE file.