A Medium-Grain Method for Fast 2D Bipartitioning of Sparse Matrices

D. Pelt, R. Bisseling
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引用次数: 32

Abstract

We present a new hyper graph-based method, the medium-grain method, for solving the sparse matrix partitioning problem. This problem arises when distributing data for parallel sparse matrix-vector multiplication. In the medium-grain method, each matrix nonzero is assigned to either a row group or a column group, and these groups are represented by vertices of the hyper graph. For an m×n sparse matrix, the resulting hyper graph has m+n vertices and m+n hyper edges. Furthermore, we present an iterative refinement procedure for improvement of a given partitioning, based on the medium-grain method, which can be applied as a cheap but effective post processing step after any partitioning method. The medium-grain method is able to produce fully two-dimensional bipartitionings, but its computational complexity equals that of one-dimensional methods. Experimental results for a large set of sparse test matrices show that the medium-grain method with iterative refinement produces bipartitionings with lower communication volume compared to current state-of-the-art methods, and is faster at producing them.
稀疏矩阵二维快速二分划的中粒方法
针对稀疏矩阵划分问题,提出了一种新的基于超图的方法——中粒法。这个问题出现在并行稀疏矩阵-向量乘法的数据分布中。在中粒方法中,将每个矩阵非零分配给行组或列组,这些组由超图的顶点表示。对于m×n稀疏矩阵,生成的超图有m+n个顶点和m+n个超边。此外,我们提出了一种基于中粒度方法的迭代细化过程,用于改进给定的分区,该方法可以作为任何分区方法之后的廉价但有效的后处理步骤。中粒法能够产生完全二维的双分割,但其计算复杂度与一维方法相当。大量稀疏测试矩阵的实验结果表明,与当前最先进的方法相比,迭代细化的中粒方法产生的双分区通信量更小,并且产生速度更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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