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Solving Unsymmetric Sparse Systems of Linear Equations with PARDISO

机译:用PARDISO解线性方程组的非对称稀疏系统

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摘要

Supernode pivoting for unsymmetric matrices coupled with supernode partitioning and asynchronous computation can achieve high gigaflop rates for parallel sparse LU factorization on shared memory parallel computers. The progress in weighted graph matching algorithms helps to extend these concepts further and prepermutation of rows is used to place large matrix entries on the diagonal. Supernode pivoting allows dynamical interchanges of columns and rows during the factorization process. The BLAS-3 level efficiency is retained. An enhanced left-right looking scheduling scheme is uneffected and results in good speedup on SMP machines without increasing the operation count. These algorithms have been integrated into the recent unsymmetric version of the PARDISO solver. Experiments demonstrate that a wide set of unsymmetric linear systems can be solved and high performance is consistently achieved for large sparse unsymmetric matrices from real world applications.
机译:非对称矩阵的超节点透视与超节点分区和异步计算相结合,可以为共享内存并行计算机上的并行稀疏LU分解实现高千兆位速率。加权图匹配算法的进步有助于进一步扩展这些概念,并且行的预置换用于在对角线上放置大型矩阵项。超节点透视允许在分解过程中动态交换列和行。 BLAS-3级别的效率得以保留。增强的左右调度方案不会受到影响,并且可以在不增加操作计数的情况下在SMP机器上实现良好的加速。这些算法已集成到PARDISO解算器的最新非对称版本中。实验表明,对于现实应用中的大型稀疏非对称矩阵,可以解决各种不对称线性系统,并且始终如一地实现高性能。

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