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Decomposing reverse-mode automatic differentiation

20 May 2021
Roy Frostig
Matthew J. Johnson
D. Maclaurin
Adam Paszke
Alexey Radul
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Abstract

We decompose reverse-mode automatic differentiation into (forward-mode) linearization followed by transposition. Doing so isolates the essential difference between forward- and reverse-mode AD, and simplifies their joint implementation. In particular, once forward-mode AD rules are defined for every primitive operation in a source language, only linear primitives require an additional transposition rule in order to arrive at a complete reverse-mode AD implementation. This is how reverse-mode AD is written in JAX and Dex.

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