General framework for re-assuring numerical reliability in parallel Krylov solvers: A case of bi-conjugate gradient stabilized methods

IF 3.5 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE International Journal of High Performance Computing Applications Pub Date : 2023-10-25 DOI:10.1177/10943420231207642
Roman Iakymchuk, Stef Graillat, José I. Aliaga
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Abstract

Parallel implementations of Krylov subspace methods often help to accelerate the procedure of finding an approximate solution of a linear system. However, such parallelization coupled with asynchronous and out-of-order execution often makes more visible the non-associativity impact in floating-point operations. These problems are even amplified when communication-hiding pipelined algorithms are used to improve the parallelization of Krylov subspace methods. Introducing reproducibility in the implementations avoids these problems by getting more robust and correct solutions. This paper proposes a general framework for deriving reproducible and accurate variants of Krylov subspace methods. The proposed algorithmic strategies are reinforced by programmability suggestions to assure deterministic and accurate executions. The framework is illustrated on the preconditioned BiCGStab method and its pipelined modification, which in fact is a distinctive method from the Krylov subspace family, for the solution of non-symmetric linear systems with message-passing. Finally, we verify the numerical behavior of the two reproducible variants of BiCGStab on a set of matrices from the SuiteSparse Matrix Collection and a 3D Poisson’s equation.
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再保证并行Krylov解数值可靠性的一般框架:双共轭梯度稳定方法的一个例子
Krylov子空间方法的并行实现通常有助于加快寻找线性系统近似解的过程。然而,这种并行化与异步和乱序执行相结合,通常会使浮点操作中的非关联性影响更加明显。当使用通信隐藏流水线算法来提高Krylov子空间方法的并行性时,这些问题甚至会被放大。在实现中引入可再现性可以通过获得更健壮和正确的解决方案来避免这些问题。本文提出了一种推导克雷洛夫子空间方法的可重复和精确变体的一般框架。所提出的算法策略通过可编程性建议得到加强,以确保确定性和准确的执行。本文给出了求解具有消息传递的非对称线性系统的一种不同于Krylov子空间族的预条件BiCGStab方法及其流水线改进方法的框架。最后,我们在一组来自SuiteSparse矩阵集合的矩阵和一个三维泊松方程上验证了BiCGStab的两个可重复变体的数值行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of High Performance Computing Applications
International Journal of High Performance Computing Applications 工程技术-计算机:跨学科应用
CiteScore
6.10
自引率
6.50%
发文量
32
审稿时长
>12 weeks
期刊介绍: With ever increasing pressure for health services in all countries to meet rising demands, improve their quality and efficiency, and to be more accountable; the need for rigorous research and policy analysis has never been greater. The Journal of Health Services Research & Policy presents the latest scientific research, insightful overviews and reflections on underlying issues, and innovative, thought provoking contributions from leading academics and policy-makers. It provides ideas and hope for solving dilemmas that confront all countries.
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