Sparse Approximate Multifrontal Factorization with Composite Compression Methods

IF 2.7 1区 数学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING ACM Transactions on Mathematical Software Pub Date : 2023-08-01 DOI:10.1145/3611662
Lisa Claus, P. Ghysels, Yang Liu, T. Nhan, R. Thirumalaisamy, A. Bhalla, Sherry Li
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Abstract

This article presents a fast and approximate multifrontal solver for large sparse linear systems. In a recent work by Liu et al., we showed the efficiency of a multifrontal solver leveraging the butterfly algorithm and its hierarchical matrix extension, HODBF (hierarchical off-diagonal butterfly) compression to compress large frontal matrices. The resulting multifrontal solver can attain quasi-linear computation and memory complexity when applied to sparse linear systems arising from spatial discretization of high-frequency wave equations. To further reduce the overall number of operations and especially the factorization memory usage to scale to larger problem sizes, in this article we develop a composite multifrontal solver that employs the HODBF format for large-sized fronts, a reduced-memory version of the nonhierarchical block low-rank format for medium-sized fronts, and a lossy compression format for small-sized fronts. This allows us to solve sparse linear systems of dimension up to 2.7 × larger than before and leads to a memory consumption that is reduced by 70% while ensuring the same execution time. The code is made publicly available in GitHub.
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复合压缩方法的稀疏近似多前沿因子分解
本文提出了一种适用于大型稀疏线性系统的快速近似多平面解算器。在刘等人最近的一项工作中,我们展示了利用蝶形算法及其分层矩阵扩展HODBF(分层非对角蝶形)压缩来压缩大的前沿矩阵的多前沿求解器的效率。当应用于由高频波动方程的空间离散化引起的稀疏线性系统时,所得到的多平面解算器可以获得准线性计算和记忆复杂性。为了进一步减少操作的总数,特别是因子分解内存的使用,以扩展到更大的问题大小,在本文中,我们开发了一种复合多前沿求解器,该求解器对大尺寸前沿采用HODBF格式,对中型前沿采用非分层块低秩格式的缩减内存版本,对小型前沿采用有损压缩格式。这使我们能够解决比以前大2.7倍的稀疏线性系统,并在确保相同执行时间的同时减少70%的内存消耗。该代码在GitHub中公开。
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来源期刊
ACM Transactions on Mathematical Software
ACM Transactions on Mathematical Software 工程技术-计算机:软件工程
CiteScore
5.00
自引率
3.70%
发文量
50
审稿时长
>12 weeks
期刊介绍: As a scientific journal, ACM Transactions on Mathematical Software (TOMS) documents the theoretical underpinnings of numeric, symbolic, algebraic, and geometric computing applications. It focuses on analysis and construction of algorithms and programs, and the interaction of programs and architecture. Algorithms documented in TOMS are available as the Collected Algorithms of the ACM at calgo.acm.org.
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