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Asynchronous Approach to Memory Management in Sparse Multifrontal Methods on Multiprocessors

机译:多处理器的稀疏多面方法中的异步内存管理方法

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摘要

This research covers the Intel? Direct Sparse Solver for Clusters, the software that implements a direct method for solving the Ax = b equation with sparse symmetric matrix A on a cluster. This method, researched by Intel, is based on Cholesky decomposition and could be considered as extension of functionality PARDISO from Intel??MKL. To achieve an efficient work balance on a large number of processes, the so-called “multifrontal” approach to Cholesky decomposition is implemented. This software implements parallelization that is based on nodes of the dependency tree and uses MPI, as well as parallelization inside a node of the tree that uses OpenMP directives. The article provides a high-level description of the algorithm to distribute the work between both computational nodes and cores within a single node, and between different computational nodes. A series of experiments shows that this implementation causes no growth of the computational time and decreases the amount of memory needed for the computations.
机译:这项研究涵盖了英特尔?群集的直接稀疏求解器,该软件实现了一种用于在群集上使用稀疏对称矩阵A求解Ax = b方程的直接方法。英特尔研究了这种方法,该方法基于Cholesky分解,可以看作是Intel ?? MKL的PARDISO功能的扩展。为了在大量流程上实现有效的工作平衡,实施了所谓的“多面” Cholesky分解方法。该软件实现基于依赖关系树的节点并使用MPI的并行化,以及使用OpenMP指令在树的节点内部进行并行化。本文提供了一种算法的高级描述,该算法可在单个节点内的计算节点和核心之间以及不同的计算节点之间分配工作。一系列实验表明,这种实现方式不会增加计算时间,并减少了计算所需的内存量。

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