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A reordering and mapping algorithm for parallel sparse Cholesky factorization

机译:并行稀疏凿孔的重新排序与映射算法

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A judiciously chosen symmetric permutation can significantly reduce the amount of storage and computation for the Cholesky factorization of sparse matrices. On distributed memory machines, the issue of mapping data and computation onto processors is also important. Previous research on ordering for parallelism has focussed on idealized measures like execution time on an unbounded number of processors, with zero communication costs. In this paper, we propose an ordering and mapping algorithm that attempts to minimize communication and performs load balancing of work among the processors. Performance results on an Intel iPSC/860 hypercube are presented to demonstrate its effectiveness.
机译:明智地选择的对称置换可以显着降低稀疏矩阵的凿弦分解的存储和计算量。在分布式存储器上,将数据和计算到处理器上的问题也很重要。以前关于平行命令的研究已经专注于在无限数量的处理器上执行时间的理想化测量,零通信成本。在本文中,我们提出了一种排序和映射算法,其尝试最小化通信并执行处理器之间的工作负载平衡。展示英特尔IPSC / 860 HyperCube上的绩效结果以展示其有效性。

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