This repository is a basic Machine Learning train & validation Template (Using PyTorch)

Overview

pytorch_ml_template

This repository is a basic Machine Learning train & validation Template (Using PyTorch)

TODO

  1. Markdown 사용법
  2. Build Docker 사용법
  3. Anaconda 사용법
  4. ipython
  5. DataLoader

Anaconda

  1. Create conda env

     conda create -n pytorch
    
     # pytorch 1.8.1 for macOS
     conda install pytorch==1.8.1 torchvision==0.9.1 torchaudio==0.8.1 -c pytorch
     
     conda install -c anaconda scikit-image
    
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