2024
DOI: 10.1145/3656390
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A Verified Compiler for a Functional Tensor Language

Amanda Liu,
Gilbert Bernstein,
Adam Chlipala
et al.

Abstract: Producing efficient array code is crucial in high-performance domains like image processing and machine learning. It requires the ability to control factors like compute intensity and locality by reordering computations into different stages and granularities with respect to where they are stored. However, traditional pure, functional tensor languages struggle to do so. In a previous publication, we introduced ATL as a pure, functional tensor language capable of systematically decoupling compute and storage or… Show more

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