Failure diagnosis using decision trees

Mike Y. Chen, A. Zheng, J. Lloyd, Michael I. Jordan, E. Brewer
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引用次数: 422

Abstract

We present a decision tree learning approach to diagnosing failures in large Internet sites. We record runtime properties of each request and apply automated machine learning and data mining techniques to identify the causes of failures. We train decision trees on the request traces from time periods in which user-visible failures are present. Paths through the tree are ranked according to their degree of correlation with failure, and nodes are merged according to the observed partial order of system components. We evaluate this approach using actual failures from eBay, and find that, among hundreds of potential causes, the algorithm successfully identifies 13 out of 14 true causes of failure, along with 2 false positives. We discuss some results in applying simplified decision trees on eBay's production site for several months. In addition, we give a cost-benefit analysis of manual vs. automated diagnosis systems. Our contributions include the statistical learning approach, the adaptation of decision trees to the context of failure diagnosis, and the deployment and evaluation of our tools on a high-volume production service.
使用决策树进行故障诊断
我们提出了一种决策树学习方法来诊断大型网站的故障。我们记录每个请求的运行时属性,并应用自动化机器学习和数据挖掘技术来识别故障原因。我们根据用户可见故障出现的时间段的请求轨迹训练决策树。通过树的路径根据其与故障的相关程度进行排序,节点根据观察到的系统组件的偏序进行合并。我们使用eBay的实际故障对该方法进行了评估,并发现,在数百个潜在原因中,该算法成功识别了14个真实故障原因中的13个,以及2个误报。我们讨论了几个月来在eBay生产站点上应用简化决策树的一些结果。此外,我们给出了人工与自动诊断系统的成本效益分析。我们的贡献包括统计学习方法,适应故障诊断的决策树,以及在大批量生产服务上部署和评估我们的工具。
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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