Efficient Dual-Numbers Reverse AD via Well-Known Program Transformations
Publication date
2022-07-07
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Abstract
Where dual-numbers forward-mode automatic differentiation (AD) pairs each scalar value with its tangent value, dual-numbers \emph{reverse-mode} AD attempts to achieve reverse AD using a similarly simple idea: by pairing each scalar value with a backpropagator function. Its correctness and efficiency on higher-order input languages have been analysed by Brunel, Mazza and Pagani, but this analysis used a custom operational semantics for which it is unclear whether it can be implemented efficiently. We take inspiration from their use of \emph{linear factoring} to optimise dual-numbers reverse-mode AD to an algorithm that has the correct complexity and enjoys an efficient implementation in a standard functional language with support for mutable arrays, such as Haskell. Aside from the linear factoring ingredient, our optimisation steps consist of well-known ideas from the functional programming community. We demonstrate the practical use of our technique by providing a performant implementation that differentiates most of Haskell98.
Keywords
automatic differentiation, source transformation, functional programming
Citation
Smeding, T & Vákár, M 2022 'Efficient Dual-Numbers Reverse AD via Well-Known Program Transformations' arXiv, pp. 1-33. https://doi.org/10.48550/arXiv.2207.03418