2020
DOI: 10.48550/arxiv.2006.16578
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Accelerating Binarized Neural Networks via Bit-Tensor-Cores in Turing GPUs

Abstract: Despite foreseeing tremendous speedups over conventional deep neural networks, the performance advantage of binarized neural networks (BNNs) has merely been showcased on general-purpose processors such as CPUs and GPUs. In fact, due to being unable to leverage bit-level-parallelism with a word-based architecture, GPUs have been criticized for extremely low utilization (1%) when executing BNNs. Consequently, the latest tensorcores in NVIDIA Turing GPUs start to experimentally support bit computation. In this wo… Show more

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