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A lightweight and modular PyTorch-based image classification package

Project description

Christofy 🧠📦

Christofy is a lightweight and modular PyTorch-based image classification package designed for both training and prediction. Built on top of ResNet18, it supports both binary and multi-class classification with clean abstractions and an easy-to-use API.


🚀 Features

  • ✅ Train image classifiers using CNN (ResNet18)
  • ✅ Binary and multi-class classification support
  • ✅ Predict the class of a single image using saved model
  • ✅ Modular structure: clean separation between training and prediction
  • ✅ Ready to be installed as a Python package

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