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DeCaf: Diagnosing and Triaging Performance Issues in Large-Scale Cloud Services

机译:Decaf:大规模云服务中的诊断和三展性能问题

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Large scale cloud services use Key Performance Indicators (KPIs) for tracking and monitoring performance. They usually have Service Level Objectives (SLOs) baked into the customer agreements which are tied to these KPIs. Dependency failures, code bugs, infrastructure failures, and other problems can cause performance regressions. It is critical to minimize the time and manual effort in diagnosing and triaging such issues to reduce customer impact. Large volume of logs and mixed type of attributes (categorical, continuous) in the logs makes diagnosis of regressions non-trivial.In this paper, we present the design, implementation and experience from building and deploying DeCaf, a system for automated diagnosis and triaging of KPI issues using service logs. It uses machine learning along with pattern mining to help service owners automatically root cause and triage performance issues. We present the learnings and results from case studies on two large scale cloud services in Microsoft where DeCaf successfully diagnosed 10 known and 31 unknown issues. DeCaf also automatically triages the identified issues by leveraging historical data. Our key insights are that for any such diagnosis tool to be effective in practice, it should a) scale to large volumes of service logs and attributes, b) support different types of KPIs and ranking functions, c) be integrated into the DevOps processes.
机译:大型云服务使用关键性能指示器(KPI)进行跟踪和监控性能。它们通常具有服务水平目标(SLO)烘焙到与这些KPI相关的客户协议。依赖失败,代码错误,基础架构故障以及其他问题可能导致性能回归。最大限度地减少诊断和三次问题以降低客户影响的时间和手动努力至关重要。日志中的大量日志和混合类型的属性(分类,连续)使回归的诊断是非可调用的。在本文中,我们介绍了建设和部署Decaf的设计,实施和经验,是自动诊断和三环系统的系统使用服务日志的KPI问题。它使用机器学习以及模式挖掘来帮助服务所有者自动根本原因和分类性能问题。我们介绍了Microsoft中两种大型云服务的案例研究的学习和结果,其中Decaf已成功诊断为10名已知和31个未知问题。 Decaf还通过利用历史数据自动修改已识别的问题。我们的主要见解是,对于任何此类诊断工具在实践中有效,它应该是一个)到大量的服务日志和属性,B)支持不同类型的KPI和排名功能,c)集成到Devops进程中。

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