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首页> 外文期刊>SIAM Journal on Scientific Computing >ON two-dimensional sparse matrix partitioning: Models, methods, and a recipe
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ON two-dimensional sparse matrix partitioning: Models, methods, and a recipe

机译:二维稀疏矩阵划分:模型,方法和配方

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We consider two-dimensional partitioning of general sparse matrices for parallel sparse matrix-vector multiply operation. We present three hypergraph-partitioning-based methods, each having unique advantages. The first one treats the nonzeros of the matrix individually and hence produces fine-grain partitions. The other two produce coarser partitions, where one of them imposes a limit on the number of messages sent and received by a single processor, and the other trades that limit for a lower communication volume. We also present a thorough experimental evaluation of the proposed two-dimensional partitioning methods together with the hypergraph-based one-dimensional partitioning methods, using an extensive set of public domain matrices. Furthermore, for the users of these partitioning methods, we present a partitioning recipe that chooses one of the partitioning methods according to some matrix characteristics.
机译:对于并行稀疏矩阵-矢量乘法运算,我们考虑对通用稀疏矩阵进行二维划分。我们提出了三种基于超图分区的方法,每种方法都有其独特的优势。第一个单独处理矩阵的非零值,因此产生细粒度的分区。另外两个产生较粗的分区,其中一个对单个处理器发送和接收的消息数施加限制,而另一个则以较低的通信量为代价。我们还使用大量公共领域矩阵,对提出的二维分区方法以及基于超图的一维分区方法进行了全面的实验评估。此外,对于这些分区方法的用户,我们提出了一种分区配方,该配方根据一些矩阵特征选择一种分区方法。

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