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Machine Learning-based Anomaly Detection of Ganglia Monitoring Data in HEP Data Center

机译:基于机器学习的异常检测HEP数据中心的神经节监测数据

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This paper introduces a generic and scalable anomaly detection framework. Anomaly detection can improve operation and maintenance e?ciency and assure experiments can be carried out e?ectively. The framework facilitates common tasks such as data sample building, retagging and visualization, deviation measurement and performance measurement for machine learning-based anomaly detection methods. The samples we used are sourced from Ganglia monitoring data. There are several anomaly detection methods to handle spatial and temporal anomalies within the framework. Finally, we show the rudimental application of the framework on Lustre distributed file systems in daily operation and maintenance.
机译:本文介绍了一种通用和可扩展的异常检测框架。异常检测可以改善操作和维护E?效率和保证实验可以效果效果。该框架有助于诸如数据示例建筑,重新计算和可视化,基于机器学习的异常检测方法的数据样本建筑,退缩和可视化,偏差测量和性能测量等共同任务。我们使用的样本来自Ganglia监测数据。有几种异常检测方法可以在框架内处理空间和时间异常。最后,我们在日常操作和维护中展示了框架对光泽分布式文件系统的粗略应用。

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