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PerfInsight: A Robust Clustering-Based Abnormal Behavior Detection System for Large-Scale Cloud

机译:PerfInsight:基于鲁棒性的大规模云异常行为检测系统

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Anomalous behaviors of cloud services usually lead to performance degradation or even unplanned outages, which dramatically harms their Quality of Services. Performance monitoring and anomaly detection systems have been widely applied to mitigate these risks. However, huge volume of collected data, prevalence of trends and noises in data distribution, lack of labelled anomalies and unpredictability of various types of anomalies bring great challenges to existing anomaly detection systems in real world. Recently, unsupervised clustering-based anomaly detection approaches become promising solutions due to less dependency on labelled data and adaption to various types of anomalies. To achieve better quality with clustering-based anomaly detection approaches, huge amount of data normalization work is required. In this paper, we present a practical robust anomaly detection system for large-scale cloud called PerfInsight. First, it detects potential trends from these collected data and automatically transforms them to reduce their negative impact to clustering results. Then, an entropy-based feature selection of transformed metrics is designed to improve the detection efficiency. Finally, more robust clustering models can be trained and used based on these well transformed and selected features. Our evaluation results prove that PerfInsight could significantly reduce the cardinality of models.
机译:云服务的异常行为通常会导致性能下降甚至计划外的中断,从而极大地损害其服务质量。性能监控和异常检测系统已被广泛应用于减轻这些风险。但是,海量数据的收集,数据分布趋势和噪声的流行,标记异常的缺乏以及各种异常类型的不可预测性给现实中的现有异常检测系统带来了巨大挑战。最近,由于对标签数据的依赖性降低以及对各种类型异常的适应性,基于无监督的基于聚类的异常检测方法成为有前途的解决方案。为了使用基于聚类的异常检测方法获得更好的质量,需要大量的数据标准化工作。在本文中,我们为大型云提出了一种实用的鲁棒异常检测系统,称为PerfInsight。首先,它从这些收集的数据中检测潜在趋势,并自动对其进行转换,以减少它们对聚类结果的负面影响。然后,设计了基于熵的变换度量特征选择,以提高检测效率。最后,可以基于这些经过良好转换和选择的特征来训练和使用更健壮的聚类模型。我们的评估结果证明,PerfInsight可以显着降低模型的基数。

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