Fast Dimensional Analysis for Root Cause Investigation in a Large-Scale Service Environment

F. Lin, Keyur Muzumdar, N. Laptev, M. Curelea, Seunghak Lee, S. Sankar
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引用次数: 3

Abstract

Root cause analysis in a large-scale production environment is challenging due to the complexity and scale of the services running across global data centers. It is often difficult to review the logs jointly for understanding production issues given the distributed nature of the system. Additionally, there could easily be millions of entities, each described by hundreds of features. In this paper we present a fast dimensional analysis framework that automates the root cause analysis on structured logs with improved scalability. We first explore item-sets, i.e. combinations of feature values, that could identify groups of samples with sufficient support for the target failures using the Apriori algorithm and a subsequent improvement, FP-Growth. These algorithms were designed for frequent item-set mining and association rule learning over transactional databases. After applying them on structured logs, we select the item-sets that are most unique to the target failures based on lift. We propose pre-processing steps with the use of a large-scale real-time database and post-processing techniques and parallelism to further speed up the analysis and improve interpretability, and demonstrate that such optimization is necessary for handling large- scale production datasets. We have successfully rolled out this approach for root cause investigation purposes within Facebook's infrastructure. We also present the setup and results from multiple production use cases in this paper.
大规模服务环境中根因调查的快速量纲分析
由于跨全球数据中心运行的服务的复杂性和规模,在大规模生产环境中进行根本原因分析是具有挑战性的。考虑到系统的分布式特性,通常很难联合审查日志以理解生产问题。此外,很容易有数百万个实体,每个实体由数百个特征描述。在本文中,我们提出了一个快速的维度分析框架,它可以自动化结构化日志的根本原因分析,并具有改进的可扩展性。我们首先探索项目集,即特征值的组合,可以使用Apriori算法和随后的改进FP-Growth来识别具有足够支持目标失败的样本组。这些算法被设计用于事务性数据库的频繁项集挖掘和关联规则学习。在将它们应用于结构化测井之后,我们根据举升情况选择目标故障最独特的项集。我们提出了使用大规模实时数据库和后处理技术以及并行性的预处理步骤,以进一步加快分析和提高可解释性,并证明这种优化对于处理大规模生产数据集是必要的。我们已经成功地在Facebook的基础设施中推出了这种方法,用于根本原因调查。我们还在本文中展示了来自多个生产用例的设置和结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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