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Adaptive Profiling for Root-Cause Analysis of Performance Anomalies in Web-Based Applications

机译:基于Web的应用程序中性能异常的根本原因分析的自适应分析

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The most important factor in the assessment of the availability of a system is the mean-time to repair (MTTR). The lower the MTTR the higher the availability. A significant portion of the MTTR is spent in the detection and localization of the cause of the failure. One possible method that may provide good results in the root-cause analysis of application failures is run-time profiling. The major drawback of run-time profiling is the performance impact. In this paper we describe two algorithms for selective and adaptive profiling of web-based applications. The algorithms make use of a dynamic profiling interval and are mainly triggered when some of the transactions start presenting some symptoms of performance anomaly. The algorithms were tested under different types of degradation scenarios and compared to static sampling strategies. We observed through experimentation that the pinpoint of performance anomalies, supported by the data collected using the adaptive profiling algorithms, stills timely as with full-profiling while the response time overhead is reduced in almost 60%. When compared to a non-profiled version the response time overhead is less than 1.5%. These results show the viability of using run-time profiling to support quickly detection and pinpointing of performance anomalies and enable timely recovery.
机译:评估系统可用性时最重要的因素是平均维修时间(MTTR)。 MTTR越低,可用性越高。 MTTR的很大一部分用于故障原因的检测和定位。在应用程序故障的根本原因分析中可能提供良好结果的一种可能方法是运行时分析。运行时分析的主要缺点是对性能的影响。在本文中,我们描述了两种用于基于Web的应用程序的选择性和自适应概要分析的算法。该算法利用动态分析间隔,并且主要在某些事务开始表现出某些性能异常症状时触发。该算法在不同类型的降级方案下进行了测试,并与静态采样策略进行了比较。我们通过实验观察到,性能异常的精确性(由使用自适应配置算法收集的数据支持)仍然像全配置一样及时,而响应时间开销却减少了近60%。与非概要文件版本相比,响应时间开销小于1.5%。这些结果表明使用运行时概要分析来支持快速检测和查明性能异常并实现及时恢复的可行性。

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