Torchbearer: A Model Fitting Library for PyTorch

10 Sep 2018  ·  Ethan Harris, Matthew Painter, Jonathon Hare ·

We introduce torchbearer, a model fitting library for pytorch aimed at researchers working on deep learning or differentiable programming. The torchbearer library provides a high level metric and callback API that can be used for a wide range of applications. We also include a series of built in callbacks that can be used for: model persistence, learning rate decay, logging, data visualization and more. The extensive documentation includes an example library for deep learning and dynamic programming problems and can be found at The code is licensed under the MIT License and available at

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