大型系统管理中的性能异常和变化点检测

Igor A. Trubin
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引用次数: 0

摘要

我们首先简要介绍了经典的基于统计过程控制的异常检测技术和工具,包括多元自适应统计过滤、统计异常检测系统、基于异常值元度量的变化点检测、控制图、业务驱动的大规模预测以及使用它们管理大型系统的方法(并将其应用于大型金融公司的真实示例),如本地服务器舰队、或者巨大的云。然后,我们将转向介绍异常和正常检测的现代技术,例如深度学习和基于熵的异常模式检测(也成功地针对大型银行的大量真实性能数据进行了测试)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Anomaly and Change Point Detection For Large-Scale System Management
We begin by presenting a short overview of the classical Statistical Process Control based Anomaly Detection techniques and tools including Multivariate Adaptive Statistical Filtering, Statistical Exception Detection System, Exception Value meta-metric based Change Point Detection, control chart, business driven massive prediction and methods of using them to manage large-scale systems (with real examples of applying that to large financial companies) such as on-prem servers fleet, or massive clouds. Then we will turn to the presentation of modern techniques of anomaly and normality detection, such as deep learning and entropy-based anomalous pattern detections (also successfully tested against a large amount of real performance data of a large bank).
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