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2021
DOI: 10.48550/arxiv.2103.13042
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Accelerating Sparse Approximate Matrix Multiplication on GPUs

Xiaoyan Liu,
Yi Liu,
Ming Dun
et al.

Abstract: Although the matrix multiplication plays a vital role in computational linear algebra, there are few efficient solutions for matrix multiplication of the near-sparse matrices. The Sparse Approximate Matrix Multiply (SpAMM) is one of the algorithms to fill the performance gap neglected by traditional optimizations for dense/sparse matrix multiplication. However, existing SpAMM algorithms fail to exploit the performance potential of GPUs for acceleration. In this paper, we present cuSpAMM, the first parallel SpA… Show more

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