2022
DOI: 10.48550/arxiv.2210.12415
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ALT: Boosting Deep Learning Performance by Breaking the Wall between Graph and Operator Level Optimizations

Abstract: Deep learning models rely on highly optimized tensor libraries for efficient inference on heterogeneous hardware. Current deep compilers typically predetermine layouts of tensors and then optimize loops of operators. However, such unidirectional and one-off workflow strictly separates graph-level optimization and operator-level optimization into different system layers, missing opportunities for unified tuning.This paper proposes ALT, a compiler that performs joint graphand operator-level optimizations for dee… Show more

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