预条件共轭梯度法的有效在线容错

A. Schöll, Claus Braun, M. Kochte, H. Wunderlich
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引用次数: 8

摘要

线性系统求解器是许多科学应用的关键组成部分,它们可以从现代异构计算机体系结构中获益良多。然而,这种纳米级CMOS器件面临着越来越多的可靠性威胁,这使得容错集成成为必须。预条件共轭梯度法(PCG)是一种非常流行的求解方法,因为它通常比直接方法更快地找到解,并且不易受瞬态效应的影响。然而,正如最新研究表明的那样,脆弱性仍然相当大。即使是由硬件缺陷、恶劣的操作条件或粒子辐射引起的单个错误,也会大大增加执行时间,或者在没有迹象的情况下破坏解决方案。本文提出了一种新颖、高效的容错PCG方法。该方法仅应用两个内积即可可靠地检测误差。当出现错误时,该方法自动选择回滚还是有效的在线修正。这大大减少了错误检测开销和昂贵的重新计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient on-line fault-tolerance for the preconditioned conjugate gradient method
Linear system solvers are key components of many scientific applications and they can benefit significantly from modern heterogeneous computer architectures. However, such nano-scaled CMOS devices face an increasing number of reliability threats, which make the integration of fault tolerance mandatory. The preconditioned conjugate gradient method (PCG) is a very popular solver since it typically finds solutions faster than direct methods, and it is less vulnerable to transient effects. However, as latest research shows, the vulnerability is still considerable. Even single errors caused, for instance, by marginal hardware, harsh operating conditions or particle radiation can increase execution times considerably or corrupt solutions without indication. In this work, a novel and highly efficient fault-tolerant PCG method is presented. The method applies only two inner products to reliably detect errors. In case of errors, the method automatically selects between roll-back and efficient on-line correction. This significantly reduces the error detection overhead and expensive re-computations.
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