聚类演化批处理系统作业在线异常检测

E. Kuehn
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引用次数: 1

摘要

在批处理系统中,监控单个作业级别的信息对于优化资源利用和防止滥用至关重要。但是,特别是网络资源的使用情况很难跟踪。为了理解现代计算集群中的使用模式,需要比现有解决方案更详细的监控。对作业级别的监控可以生成进程的动态图形,并附带诸如网络资源使用等时间序列数据。利用聚类,可以识别常见的使用模式并检测异常值。这项工作概述了在分布式监控事件流上下文中对动态图进行聚类的持续努力。
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Clustering Evolving Batch System Jobs for Online Anomaly Detection
In batch systems monitoring information at the level of individual jobs is crucial to optimize resource utilization and prevent misusage. However, especially the usage of network resources is difficult to track. In order to understand usage patterns in modern computing clusters, a more detailed monitoring than existent solutions is required. A monitoring on job level leads to dynamic graphs of processes with attached time series data of e.g. network resource usage. Utilizing clustering, common usage patterns can be identified and outliers detected. This work provides an overview about ongoing efforts to cluster dynamic graphs in the context of distributed streams of monitoring events.
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