大型互联网服务中软件变更的快速和稳健影响评估

Shenglin Zhang, Y. Liu, Dan Pei, Yu Chen, Xianping Qu, Shimin Tao, Zhi Zang
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引用次数: 41

摘要

在基于internet的服务中检测软件更改转出时的性能变化对于运营团队来说是至关重要的,因为它允许在性能意外下降时及时回滚软件更改。然而,手动调查许多转出的数百万个性能度量是不可行的。在本文中,我们提出了一个自动化工具,FUNNEL,用于快速和可靠地评估大型基于互联网的服务中的软件变更的影响。FUNNEL自动收集每个软件变更的相关性能度量。为了检测显著的性能行为变化,FUNNEL采用奇异谱变换(SST)算法作为核心算法,采用多种技术提高其鲁棒性,降低计算成本,并采用差分差分(DiD)方法区分性能变化与软件变化之间的真实因果关系和随机相关性。通过实际服务中的历史数据进行评估,FUNNEL的准确率达到了99.8%以上。与以往的方法相比,FUNNEL的检测延迟缩短了38.02% ~ 64.99%,计算速度提高了4.59 ~ 7098倍。在实际部署中,FUNNEL准确率达到了98.21%,鲁棒性高,检测速度快,显示出了检测意外性能变化的能力。
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Rapid and robust impact assessment of software changes in large internet-based services
The detection of performance changes in software change roll-outs in Internet-based services is crucial for an operations team, because it allows timely roll-back of a software change when performance degrades unexpectedly. However, it is infeasible to manually investigate millions of performance measurements of many roll-outs. In this paper, we present an automated tool, FUNNEL, for rapid and robust impact assessment of software changes in large Internet-based services. FUNNEL automatically collects the related performance measurements for each software change. To detect significant performance behavior changes, FUNNEL adopts singular spectrum transform (SST) algorithm as the core algorithm, uses various techniques to improve its robustness and reduce its computational cost, and applies a difference-in-difference (DiD) method to differentiate the true causality from the random correlations between the performance change and the software change. Evaluation through historical data in real-word services shows that FUNNEL achieves an accuracy of more than 99.8%. Compared with previous methods, FUNNEL's detection delay is 38.02% to 64.99% shorter, and its computation speed is 4.59 - 7098 times faster. In real deployment, FUNNEL achieves a 98.21% precision, high robustness, fast detection speed, and shows its capability in detecting unexpected performance changes.
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