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2023
DOI: 10.1109/tpds.2023.3279233
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DOPpler: Parallel Measurement Infrastructure for Auto-Tuning Deep Learning Tensor Programs

Abstract: The heterogeneity of Deep Learning models, libraries, and hardware poses an important challenge for improving model inference performance. Auto-tuners address this challenge via automatic tensor program optimization towards a target-device. However, auto-tuners incur a substantial time cost to complete given their design necessitates performing tensor program candidate measurements serially within an isolated target-device to minimize latency measurement inaccuracy. In this paper we propose DOPpler, a parallel… Show more

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