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Modeling 1D Distributed-Memory Dense Kernels for an Asynchronous Multifrontal Sparse Solver

机译:为异步多正面稀疏求解器建模一维分布式内存密集核

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To solve sparse systems of linear equations, multifrontal methods rely on dense partial LU decompositions of so-called frontal matrices; we consider a parallel asynchronous setting in which several frontal matrices can be factored simultaneously. In this context, to address performance and scalability issues of acyclic pipelined asynchronous factorization kernels, we study models to revisit properties of left and right-looking variants of partial LU decompositions, study the use of several levels of blocking, before focusing on communication issues. The general purpose sparse solver MUMPS has been modified to implement the proposed algorithms and confirm the properties demonstrated by the models.
机译:为了解决线性方程组的稀疏系统,多边方法依赖于所谓的额叶矩阵的密集部分LU分解。我们考虑一个并行异步设置,其中可以同时分解多个正面矩阵。在这种情况下,为了解决非循环流水线异步分解内核的性能和可伸缩性问题,我们在关注通信问题之前,研究了一些模型以重访部分LU分解的左右两个变体的属性,研究了几种阻塞级别的使用。通用稀疏求解器MUMPS已被修改以实现所提出的算法并确认模型所证明的特性。

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