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Incremental Analysis of Large-Scale System Logs for Anomaly Detection

机译:大型系统对异常检测的大规模系统日志的增量分析

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Anomalies during system execution can be detected by automated analysis of logs generated by the system. However, large scale systems can generate tens of millions of lines of logs within days. Centralized implementations of traditional machine learning algorithms are not scalable for such data. Therefore, we recently introduced a distributed log analysis framework for anomaly detection. In this paper, we introduce an extension of this framework, which can detect anomalies earlier via incremental analysis instead of the existing offline analysis approach. In the extended version, we periodically process the log data that is accumulated so far. We conducted controlled experiments based on a benchmark dataset to evaluate the effectiveness of this approach. We repeated our experiments with various periods that determine the frequency of analysis as well as the size of the data processed each time. Results showed that our online analysis can improve anomaly detection time significantly while keeping the accuracy level same as that is obtained with the offline approach. The only exceptional case, where the accuracy is compromised, rarely occurs when the analysis is triggered before all the log data associated with a particular session of events are collected.
机译:系统执行期间的异常可以通过自动分析系统生成的日志进行自动分析来检测。但是,大型系统可以在几天内产生数十万个日志。传统机器学习算法的集中实施对于这些数据不可扩展。因此,我们最近推出了用于异常检测的分布式日志分析框架。在本文中,我们介绍了该框架的扩展,可以通过增量分析而不是现有的离线分析方法检测异常。在扩展版本中,我们定期处理到目前为止累积的日志数据。我们对基于基准数据集进行了受控实验,以评估这种方法的有效性。我们重复了各种时期的实验,可以确定分析频率以及每次处理数据的大小。结果表明,我们的在线分析可以显着改善异常检测时间,同时保持与离线方法相同的准确度水平。当在收集与特定事件关联的所有日志数据之前,触发分析时,唯一发生精确度的唯一特殊情况。

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