Towards Identifying the Best Variables for Failure Prediction Using Injection of Realistic Software Faults

Ivano Irrera, J. Durães, M. Vieira, H. Madeira
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引用次数: 30

Abstract

Predicting failures at runtime is one of the most promising techniques to increase the availability of computer systems. However, failure prediction algorithms are still far from providing satisfactory results. In particular, the identification of the variables that show symptoms of incoming failures is a difficult problem. In this paper we propose an approach for identifying the most adequate variables for failure prediction. Realistic software faults are injected to accelerate the occurrence of system failures and thus generate a large amount of failure related data that is used to select, among hundreds of system variables, a small set that exhibits a clear correlation with failures. The proposed approach was experimentally evaluated using two configurations based on Windows XP. Results show that the proposed approach is quite effective and easy to use and that the injection of software faults is a powerful tool for improving the state of the art on failure prediction.
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用实际软件故障注入识别故障预测的最佳变量
在运行时预测故障是提高计算机系统可用性最有前途的技术之一。然而,故障预测算法仍然远远不能提供令人满意的结果。特别是,识别显示传入故障症状的变量是一个难题。在本文中,我们提出了一种方法,以确定最适当的变量失效预测。注入真实的软件故障,加速系统故障的发生,从而产生大量与故障相关的数据,用于从数百个系统变量中选择一个与故障有明确相关性的小集合。基于Windows XP的两种配置对该方法进行了实验评估。结果表明,该方法是一种有效且易于使用的方法,软件故障注入是提高故障预测水平的有力工具。
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