This repository aims at introducing how to train deep leaerning classification models with Pytorch, export to onnx and use it with onnxruntime taking MNIST dataset, which is famous for handwriting digit image, as an example. Generally, CNN model accepts 3channels(RGB) but MNIST has one channel. To deal with this, Custom MNIST Dataset class returns 3channels tensor inheriting "torchvision.dataset.MNIST" class.
- Docker
- Docker compose
- docker login nvcr.io
- dGPU (Recommended)
docker compose -f docker-compose-gpu.yaml up -d
docker exec -it mnist_train /bin/bash
python train.py
docker compose -f docker-compose.yaml up -d
docker exec -it mnist_train /bin/bash
python train.py
After training, run command bellow.
python export.py
python check_onnx_inferenc.py
The code above choose 3 sample images from MNIST dataset, infer them and show results of inference of pytorch model and onnx model.