Near Real-Time Service Monitoring Using High-Dimensional Time Series

Shwetabh Khanduja, Vinod Nair, S. Sundararajan, Ameya Raul, Ajesh Babu Shaj, S. Keerthi
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引用次数: 3

Abstract

We demonstrate a near real-time service monitoring system for detecting and diagnosing issues from high-dimensional time series data. For detection, we have implemented a learning algorithm that constructs a hierarchy of detectors from data. It is scalable, does not require labelled examples of issues for learning, runs in near real-time, and identifles a subset of counter time series as being relevant for a detected issue. For diagnosis, we provide efflcient algorithms as post-detection diagnosis aids to flnd further relevant counter time series at issue times, a SQL-like query language for writing flexible queries that apply these algorithms on the time series data, and a graphical user interface for visualizing the detection and diagnosis results. Our solution has been deployed in production as an end-to-end system for monitoring Microsoft's internal distributed data storage and computing platform consisting of tens of thousands of machines and currently analyses about 12000 counter time series.
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基于高维时间序列的近实时服务监控
我们展示了一个近实时的服务监控系统,用于从高维时间序列数据中检测和诊断问题。对于检测,我们实现了一个学习算法,该算法从数据中构建检测器的层次结构。它是可扩展的,不需要标记的问题示例来学习,在接近实时的情况下运行,并识别与检测到的问题相关的计数器时间序列子集。对于诊断,我们提供了高效的算法作为检测后诊断辅助工具,在发布时间找到进一步相关的计数器时间序列,一种类似sql的查询语言,用于编写灵活的查询,将这些算法应用于时间序列数据,以及用于可视化检测和诊断结果的图形用户界面。我们的解决方案已经部署在生产中,作为一个端到端的系统,用于监控微软内部由数万台机器组成的分布式数据存储和计算平台,目前分析大约12000个计数器时间序列。
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