Reducing elimination tree height for parallel LU factorization of sparse unsymmetric matrices

Enver Kayaaslan, B. Uçar
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引用次数: 2

Abstract

The elimination tree for unsymmetric matrices is a recent model playing important roles in sparse LU factorization. This tree captures the dependencies between the tasks of some well-known variants of sparse LU factorization. Therefore, the height of the elimination tree corresponds to the critical path length of the task dependency graph in the corresponding parallel LU factorization methods. We investigate the problem of finding minimum height elimination trees to expose a maximum degree of parallelism by minimizing the critical path length. This problem has recently been shown to be NP-complete. Therefore, we propose heuristics, which generalize the most successful approaches used for symmetric matrices to unsymmetric ones. We test the proposed heuristics on a large set of real world matrices and report 28% reduction in the elimination tree heights with respect to a common method, which exploits the state of the art tools used in Cholesky factorization.
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降低稀疏非对称矩阵并行LU分解的消去树高度
非对称矩阵的消去树是近年来在稀疏LU分解中发挥重要作用的一种模型。该树捕获了一些著名的稀疏LU分解变体的任务之间的依赖关系。因此,消去树的高度对应于相应并行LU分解方法中任务依赖图的关键路径长度。我们研究了寻找最小高度消除树的问题,通过最小化关键路径长度来暴露最大程度的并行性。这个问题最近被证明是np完全的。因此,我们提出了启发式方法,它将用于对称矩阵的最成功的方法推广到非对称矩阵。我们在大量真实世界的矩阵上测试了提出的启发式方法,并报告了与利用Cholesky分解中使用的最先进工具的常见方法相比,消除树高度降低了28%。
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