2024
DOI: 10.1145/3685277
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LO-SpMM: Low-cost Search for High-performance SpMM Kernels on GPUs

Junqing Lin,
Jingwei Sun,
Xiaolong Shi
et al.

Abstract: As deep neural networks (DNNs) become increasingly large and complicated, pruning techniques are proposed for lower memory footprint and more efficient inference. The most critical kernel to execute pruned sparse DNNs on GPUs is Sparse-dense Matrix Multiplication (SpMM). To maximize the performance of SpMM, despite the high-performance implementation generated from advanced tensor compilers, they often take a long time to iteratively search tuning configurations. Such a long time slows down the cycle of explor… Show more

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