This is the repository for Accelerated Deep Learning with Pytotch tutorial and Jupyter Day Atlanta 2018 talk slides. It features full tutorial notebook, Jupyter Notebook Slides html file, and a demo with surface finish quality inspection.
This tutorial assumes familiarity with Python and Numpy.
Python3 is required to run this tutorial. You also will need some libraries from SciPy package (NumPy, Matplotlib, Pandas), Jupyter Notebook support, Seaborn for plotting, and Pytorch 0.3.0 or newer.
The simpliest way to maintain Python with all these libraries as well as many others is to install Anaconda. You can Find Pytorch installation instructions on the Pytorch page.
CUDA availability is not strictly required, but highly desirable. Life is short -- use a GPU!
Our tutorial git has two submodules - for surface dataset, and for pretrained model for surface finish quality inspection. To download the tutorial, use
git clone --recurse-submodules [email protected]:hpcgarage/accelerated_dl_pytorch.git
If you didn't clone repository with its submodules, you can always clone submodules with this command:
git submodule update --init --recursive
To run the Jupyter Notebook Slides as at Jupyter Day Atlanta 2018 talk, you can use following command:
jupyter nbconvert tutorial_presentation.ipynb --to slides --post serve
- Essential PyTorch Background
- PyTorch for Data Analytics
- LeNet Convolutional Neural Network (CNN) in PyTorch
- Application to a Manufacturing Problem