FluxRank: A Widely-Deployable Framework to Automatically Localizing Root Cause Machines for Software Service Failure Mitigation

Ping Liu, Yu Chen, Xiaohui Nie, Jing Zhu, Shenglin Zhang, Kaixin Sui, Ming Zhang, Dan Pei
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引用次数: 14

Abstract

The failures of software service directly affect user experiences and service revenue. Thus operators monitor both service-level KPIs (e.g., response time) and machine-level KPIs (e.g., CPU usage) on each machine underlying the service. When a service fails, the operators must localize the root cause machines, and mitigate the failure as quickly as possible. Existing approaches have limited application due to the difficulty to obtain the required additional measurement data. As a result, failure localization is largely manual and very time-consuming. This paper presents FluxRank, a widely-deployable framework that can automatically and accurately localize the root cause machines, so that some actions can be triggered to mitigate the service failure. Our evaluation using historical cases from five real services (with tens of thousands of machines) of a top search company shows that the root cause machines are ranked top 1 (top 3) for 55 (66) cases out of 70 cases. Comparing to existing approaches, FluxRank cuts the localization time by more than 80% on average. FluxRank has been deployed online at one Internet service and six banking services for three months, and correctly localized the root cause machines as the top 1 for 55 cases out of 59 cases.
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FluxRank:一个可广泛部署的框架,用于自动定位软件服务故障缓解的根本原因机器
软件服务的失败直接影响用户体验和服务收益。因此,操作员监控服务级别的kpi(例如,响应时间)和机器级别的kpi(例如,CPU使用情况)。当服务发生故障时,操作员必须定位根本原因机器,并尽可能快地减轻故障。由于难以获得所需的额外测量数据,现有方法的应用受到限制。因此,故障定位在很大程度上是手工的,而且非常耗时。本文介绍了一个可广泛部署的框架FluxRank,它可以自动准确地定位根本原因机器,从而触发一些操作来减轻服务故障。我们使用一家顶级搜索公司的五个真实服务(拥有数万台机器)的历史案例进行评估,结果显示,在70个案例中,有55个(66个)案例中,根本原因机器排名前1(前3)。与现有方法相比,FluxRank的定位时间平均缩短了80%以上。FluxRank在3个月的时间里,在一家互联网服务公司和6家银行服务公司进行了在线部署,在59起案件中,有55起案件的根本原因机器被正确定位为前1。
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