Failure Prediction in IBM BlueGene/L Event Logs

Yinglung Liang, Yanyong Zhang, Hui Xiong, R. Sahoo
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引用次数: 240

Abstract

Frequent failures are becoming a serious concern to the community of high-end computing, especially when the applications and the underlying systems rapidly grow in size and complexity. In order to develop effective fault-tolerant strategies, there is a critical need to predict failure events. To this end, we have collected detailed event logs from IBM BlueGene/L, which has 128 K processors, and is currently the fastest supercomputer in the world. In this study, we first show how the event records can be converted into a data set that is appropriate for running classification techniques. Then we apply classifiers on the data, including RIPPER (a rule-based classifier), Support Vector Machines (SVMs), a traditional Nearest Neighbor method, and a customized Nearest Neighbor method. We show that the customized nearest neighbor approach can outperform RIPPER and SVMs in terms of both coverage and precision. The results suggest that the customized nearest neighbor approach can be used to alleviate the impact of failures.
IBM BlueGene/L事件日志中的故障预测
频繁的故障正在成为高端计算社区的一个严重问题,特别是当应用程序和底层系统的规模和复杂性迅速增长时。为了开发有效的容错策略,非常需要预测故障事件。为此,我们从IBM BlueGene/L收集了详细的事件日志,该处理器具有128k处理器,是目前世界上最快的超级计算机。在本研究中,我们首先展示了如何将事件记录转换为适合运行分类技术的数据集。然后在数据上应用分类器,包括RIPPER(基于规则的分类器)、支持向量机(svm)、传统的最近邻方法和自定义的最近邻方法。我们表明,自定义最近邻方法在覆盖率和精度方面都优于RIPPER和svm。结果表明,自定义最近邻方法可以减轻故障的影响。
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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