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Workload-Aware Online Anomaly Detection in Enterprise Applications with Local Outlier Factor

机译:使用本地异常因素因素的企业应用中的工作负载感知在线异常检测

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Detecting anomalies are essential for improving the reliability of enterprise applications. Current approaches set thresholds for metrics or model correlations between metrics, and anomalies are detected when the thresholds are violated or the correlations are broken. However, we have found that the dynamic workload fluctuating over multiple time scales causes system metrics and their correlations to change. Moreover, it is difficult to model various metric correlations in complex applications. This paper addresses these problems and proposes an online anomaly detection approach for enterprise applications. A method is presented for recognizing workload patterns with an incremental clustering algorithm. The Local Outlier Factor (LOF) based on the specific workload pattern is adopted for detecting anomalies. Our approach is evaluated on a testbed running the TPC-W benchmark. The experimental results show that our approach can capture workload fluctuations accurately and detect the typical faults effectively.
机译:检测异常对于提高企业应用的可靠性至关重要。电流接近测量标准或度量之间的模型相关性的阈值,并且当违反阈值或断开相关性时检测到异常。但是,我们发现,在多个时间尺度上波动的动态工作负载会导致系统度量及其与变化的相关性。此外,难以在复杂应用中模拟各种度量相关性。本文解决了这些问题,并提出了一种用于企业应用程序的在线异常检测方法。提出了一种用增量聚类算法识别工作负载模式的方法。采用基于特定工作量模式的本地异常因素因子(LOF)用于检测异常。我们的方法是在运行TPC-W基准的测试用镜上进行评估。实验结果表明,我们的方法可以准确地捕获工作负载波动并有效地检测典型的故障。

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