This is a brother project with wang-xinyu/tensorrtx.
Popular deep learning networks are implemented with pytorch in this project. And then weights files are exported for tensorrt implementation.
- Python 3.7.3
- cuda 10.0
- PyTorch 1.3.0
- torchvision 0.4.1
pytorch-summary is a very useful tool for understanding the model structure, for example it can output the dimensions of each layer.
Clone, and cd
into the repo directory.
git clone https://github.com/sksq96/pytorch-summary
python setup.py build
python setup.py install
Most of the models are from torchvision, exception for yolov3, which has a readme inside.
A file named xxxnet.py
can do inference and save model into .pth.
And a file named inference.py
can do inference and save weights into .wts, which is used for tensorrt.
For example, googlenet,
cd googlenet
python googlenet.py // do inference and save model into .pth firstly.
python inference.py // then do inference and save weights file