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Methods and systems that detect and classify incidents and anomalous behavior using metric-data observations

机译:使用度量数据观察检测和分类事故和异常行为的方法和系统

摘要

The current document is directed to methods and systems for detecting the occurrences of abnormal events and operational behaviors within the distributed computer system. The currently described methods and systems continuously collect metric data from various metric-data sources, generate a sequence of metric-data observations, each metric-data observation comprising a set of temporally aligned metric data, and employ principle-component analysis to transform the metric-data observations to facilitate reduction of the dimensionality of the metric-data observations. The currently described methods and systems then employ clustering methods to identify outlying transformed-metric-data observations, accordingly label the transformed metric-data observations to generate a training dataset, and then apply one or more of various types of machine-learning techniques to the training dataset in order to generate an abnormal-observation detector that can be used to detect, in real time, abnormal metric-data observations as they are generated within the distributed computing system.
机译:当前文档涉及用于检测分布式计算机系统内的异常事件和操作行为的方法和系统。当前描述的方法和系统连续收集来自各种公制数据源的度量数据,生成一系列度量数据观察,每个度量数据观察包括一组时间对齐的度量数据,并采用原理 - 分量分析来改造度量-data观察,以促进降低度量数据观察的维度。当前描述的方法和系统然后采用聚类方法来识别偏远的转换 - 度量数据观察,相应地标记变换的度量数据观察以生成训练数据集,然后将各种类型的机器学习技术中的一个或多个应用于训练数据集以生成异常观察检测器,可用于实时检测异常的度量数据观察,因为它们在分布式计算系统中产生。

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