探索集群联盟中故障预测的事件相关性

S. Fu, Chengzhong Xu
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引用次数: 191

摘要

在大规模网络计算系统中,组件故障已成为常态,而不是例外。故障预测是资源负荷自我管理的关键技术。联合系统失效事件在时间和空间上表现出很强的相关性。在本文中,我们建立了一个具有可调时间尺度参数的球形协方差模型来量化时间相关性,并建立了一个随机模型来描述空间相关性。我们进一步利用应用程序分配信息来发现故障实例之间更多的相关性。我们根据它们的相关性对故障事件进行聚类,并预测它们未来的发生情况。我们实现了一个故障预测框架,称为故障事件时空相关预测器(hPREFECTs),它探索故障之间的相关性,并预测未来实例的故障间隔时间。我们通过使用洛斯阿拉莫斯HPC跟踪和在研究所范围内的集群联盟环境中进行在线预测来评估hPREFECTs在离线预测故障方面的性能。实验结果表明,该系统在2006年5月至2007年4月期间的离线预测准确率达到76%以上,在线预测准确率达到70%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring event correlation for failure prediction in coalitions of clusters
In large-scale networked computing systems, component failures become norms instead of exceptions. Failure prediction is a crucial technique for self-managing resource burdens. Failure events in coalition systems exhibit strong correlations in time and space domain. In this paper, we develop a spherical covariance model with an adjustable timescale parameter to quantify the temporal correlation and a stochastic model to describe spatial correlation. We further utilize the information of application allocation to discover more correlations among failure instances. We cluster failure events based on their correlations and predict their future occurrences. We implemented a failure prediction framework, called PREdictor of Failure Events Correlated Temporal-Spatially (hPREFECTs), which explores correlations among failures and forecasts the time-between-failure of future instances. We evaluate the performance of hPREFECTs in both offline prediction of failure by using the Los Alamos HPC traces and online prediction in an institute-wide clusters coalition environment. Experimental results show the system achieves more than 76% accuracy in offline prediction and more than 70% accuracy in online prediction during the time from May 2006 to April 2007.
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