大规模服务器集群故障预测研究综述

Zhenghua Xue, Xiaoshe Dong, Siyuan Ma, W. Dong
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引用次数: 38

摘要

随着集群系统的规模和复杂性的增长,故障率急剧上升。为了减少故障造成的灾难,在故障发生之前识别潜在的故障是可取的。本文综述了集群系统故障预测的研究现状。讨论了集群系统的故障特征,并给出了一些统计结果。探讨了故障预测数据的采集和预处理方法,提出了自动生成日志文件中记录的预处理方法。重点分析了基于统计量的阈值、时间序列分析、基于规则的分类、贝叶斯网络模型和半马尔可夫过程模型五种预测方法的主要思想。此外,针对故障预测技术的准确性和实用性,提出了评价故障预测技术的5个指标,并与5个指标进行了比较。
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A Survey on Failure Prediction of Large-Scale Server Clusters
As the size and complexity of cluster systems grows, failure rates accelerate dramatically. To reduce the disaster caused by failures, it is desirable to identify the potential failures ahead of their occurrence. In this paper, we survey the state of the art in failure prediction of cluster systems. The characteristic of failures in cluster systems are addressed, and some statistic results are shown. We explore the ways of the collection and preprocessing of data for failure prediction, and suggest a procedure for preprocessing the records in automatically generated log files. Focused on the main idea of five prediction methods, including statistic based threshold, time series analysis, rule-based classification, Bayesian network models and semi-Markov process models, are analyzed respectively. In addition, concerning the accuracy and practicality, we present five metrics for evaluating the failure prediction techniques and compare the five techniques with the five metrics.
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