大规模分布式系统中问题确定的概率度量关联建模

Jing Gao, Guofei Jiang, Haifeng Chen, Jiawei Han
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引用次数: 38

摘要

随着计算机系统的日益复杂,在当今大规模分布式系统中检测和诊断问题已经成为一个真正的挑战。通常,跨分布式系统收集的度量之间的相关性包含有关系统行为的丰富信息,因此一个合理的模型来描述这种相关性对于检测和定位系统问题至关重要。在本文中,我们提出了一个基于马尔可夫性质的转移概率模型来表征成对测量相关性。该方法可以发现空间(跨系统测量)和时间(跨观测时间)的相关性,因此该模型可以成功地表示系统的正常轮廓。在此框架下,问题的确定和定位既快捷又方便。该框架足够通用,可以发现任何类型的相关性(例如线性或非线性)。并且可以有效地进行模型更新、系统问题检测和诊断。实验结果表明,通过对三家公司基础设施的真实监控数据进行分析,该方法可以检测出异常事件并定位问题来源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Probabilistic Measurement Correlations for Problem Determination in Large-Scale Distributed Systems
With the growing complexity in computer systems, it has been a real challenge to detect and diagnose problems in today's large-scale distributed systems. Usually, the correlations between measurements collected across the distributed system contain rich information about the system behaviors, and thus a reasonable model to describe such correlations is crucially important in detecting and locating system problems. In this paper, we propose a transition probability model based on markov properties to characterize pair-wise measurement correlations. The proposed method can discover both the spatial (across system measurements) and temporal (across observation time) correlations, and thus such a model can successfully represent the system normal profiles. Problem determination and localization under this framework is fast and convenient. The framework is general enough to discover any types of correlations (e.g. linear or non-linear). Also, model updating, system problem detection and diagnosis can be conducted effectively and efficiently. Experimental results show that, the proposed method can detect the anomalous events and locate the problematic sources by analyzing the real monitoring data collected from three companies' infrastructures.
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