PLAILGJul 23, 2023

Monadic Deep Learning

arXiv:2307.12187v1h-index: 3
Originality Incremental advance
AI Analysis

This solves the problem of boilerplate code and limited customizability for users of statically typed languages in deep learning, though it is incremental relative to existing dynamically typed frameworks.

The authors tackled the lack of expressive automatic differentiation in statically typed languages for neural networks by developing DeepLearning.scala 2, which enables intuitive and type-safe creation of complex networks with monadic expressions.

The Java and Scala community has built a very successful big data ecosystem. However, most of neural networks running on it are modeled in dynamically typed programming languages. These dynamically typed deep learning frameworks treat neural networks as differentiable expressions that contain many trainable variable, and perform automatic differentiation on those expressions when training them. Until 2019, none of the learning frameworks in statically typed languages provided the expressive power of traditional frameworks. Their users are not able to use custom algorithms unless creating plenty of boilerplate code for hard-coded back-propagation. We solved this problem in DeepLearning.scala 2. Our contributions are: 1. We discovered a novel approach to perform automatic differentiation in reverse mode for statically typed functions that contain multiple trainable variable, and can interoperate freely with the metalanguage. 2. We designed a set of monads and monad transformers, which allow users to create monadic expressions that represent dynamic neural networks. 3. Along with these monads, we provide some applicative functors, to perform multiple calculations in parallel. With these features, users of DeepLearning.scala were able to create complex neural networks in an intuitive and concise way, and still maintain type safety.

Foundations

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