TorchFusion - A modern deep learning framework built to accelerate research and development of AI systems

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A modern deep learning framework built to accelerate research and development of AI systems. Based on PyTorch and fully compatible with pure PyTorch and other pytorch packages, TorchFusion provides a comprehensive extensible training framework with trainers that you can easily use to train, evaluate and run inference with your PyTorch models, A GAN framework that greatly simplifies the process of experimenting with Generative Adversarial Networks Goodfellow et al. 2014, with concrete implementations of a number of GAN algorithms, and a number of high level network layers and utilities to help you be more productive in your work.

https://torchfusion.readthedocs.io
https://github.com/johnolafenwa/TorchFusion

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