DeepRacket - A simple starting point for doing deep learning in Racket

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This package provides a set of interfaces for doing deep learning in the Racket (a Scheme/Lisp dialect) programming language. The project is still in the growing pains phase, so please excuse the mess.

https://github.com/charlescearl/DeepRacket

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