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Practical Root Cause Localization for Microservice Systems via Trace Analysis

机译:通过跟踪分析实际根本原因微型系统的定位

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Microservice architecture is applied by an increasing number of systems because of its benefits on delivery, scalability, and autonomy. It is essential but challenging to localize root-cause microservices promptly when a fault occurs. Traces are helpful for root-cause microservice localization, and thus many recent approaches utilize them. However, these approaches are less practical due to relying on supervision or other unrealistic assumptions. To overcome their limitations, we propose a more practical root-cause microservice localization approach named TraceRCA. The key insight of TraceRCA is that a microservice with more abnormal and less normal traces passing through it is more likely to be the root cause. Based on it, TraceRCA is composed of trace anomaly detection, suspicious microservice set mining and microservice ranking. We conducted experiments on hundreds of injected faults in a widely-used open-source microservice benchmark and a production system. The results show that TraceRCA is effective in various situations. The top-1 accuracy of TraceRCA outperforms the state-of-the-art unsupervised approaches by 44.8%. Besides, TraceRCA is applied in a large commercial bank, and it helps operators localize root causes for real-world faults accurately and efficiently. We also share some lessons learned from our real-world deployment.
机译:由于其在交付,可扩展性和自主权方面的好处,通过越来越多的系统应用了微服务架构。当发生故障时,必须迅速本地化根本原因微服务至关重要。迹线对根本原因微服务定位有帮助,因此许多最近的方法利用它们。然而,由于依赖监督或其他不切实际的假设,这些方法不太实际。为了克服他们的局限性,我们提出了一种更实际的根本原因微服务定位方法名为Tracerca。 Tracerca的关键洞察力是,具有更异常且较少的正常迹线的微自动更可能成为根本原因。基于IT,Tracerca由Trace异常检测,可疑微伺服术设置挖掘和微服务排名组成。我们在广泛使用的开源微服务基准和生产系统中对数百种注射断层进行了实验。结果表明,Tracerca在各种情况下是有效的。 Tracerca的前1个精度优于最先进的无监督方法44.8%。此外,Tracerca应用于大型商业银行,它可以帮助运营商准确,高效地将现实世界的根本原因定位。我们还分享了我们真实的部署中吸取的一些经验教训。

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