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Efficient Tiled Sparse Matrix Multiplication through Matrix Signatures

机译:通过矩阵签名有效趋势稀疏矩阵乘法

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Tiling is a key technique to reduce data movement in matrix computations. While tiling is well understood and widely used for dense matrix/tensor computations, effective tiling of sparse matrix computations remains a challenging problem. This paper proposes a novel method to efficiently summarize the impact of the sparsity structure of a matrix on achievable data reuse as a one-dimensional signature, which is then used to build an analytical cost model for tile size optimization for sparse matrix computations. The proposed model-driven approach to sparse tiling is evaluated on two key sparse matrix kernels: Sparse Matrix - Dense Matrix Multiplication (SpMM) and Sampled Dense-Dense Matrix Multiplication (SDDMM). Experimental results demonstrate that model-based tiled SpMM and SDDMM achieve high performance relative to the current state-of-the-art.
机译:平铺是减少矩阵计算中数据移动的关键技术。虽然平铺很好地理解并广泛用于密集的矩阵/张量计算,但有效平铺稀疏矩阵计算仍然是一个具有挑战性的问题。本文提出了一种新的方法,可以有效地总结矩阵的稀疏结构对可实现的数据重用作为一维签名的影响,然后用于为稀疏矩阵计算构建瓦片大小优化的分析成本模型。在两个键稀疏矩阵内核中评估所提出的模型驱动的稀疏平铺方法:稀疏矩阵 - 密集矩阵乘法(SPMM)和采样的密集矩阵乘法(SDDMM)。实验结果表明,基于模型的瓷砖SPMM和SDDMM相对于当前最先进的高性能实现了高性能。

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