Anomaly detection and diagnosis in grid environments

SC(2007)

引用 32|浏览36
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摘要
Identifying and diagnosing anomalies in application behavior is critical to delivering reliable application-level performance. In this paper we introduce a strategy to detect anomalies and diagnose the possible reasons behind them. Our approach extends the traditional window-based strategy by using signal-processing techniques to filter out recurring, background fluctuations in resource behavior. In addition, we have developed a diagnosis technique that uses standard monitoring data to determine which related changes in behavior may cause anomalies. We evaluate our anomaly detection and diagnosis technique by applying it in three contexts when we insert anomalies into the system at random intervals. The experimental results show that our strategy detects up to 96% of anomalies while reducing the false positive rate by up to 90% compared to the traditional window average strategy. In addition, our strategy can diagnose the reason for the anomaly approximately 75% of the time.
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关键词
anomaly detection,signal-processing technique,background fluctuation,diagnosing anomaly,application behavior,diagnosis technique,traditional window average strategy,traditional window-based strategy,grid environment,resource behavior,logic gates,computer science,filtering,fluctuations,application software,multithreading,servers,mathematics,data mining,signal processing,government,degradation,false positive rate
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