负载测试的自动比较以支持大型企业系统的性能分析

H. Malik, Z. Jiang, Bram Adams, A. Hassan, P. Flora, Gilbert Hamann
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引用次数: 41

摘要

负载测试对于发现大型系统中的功能和性能缺陷至关重要。负载测试生成大量的性能数据,需要在有限的时间内跨测试对这些数据进行比较和分析。这有助于性能分析人员了解应用程序的资源使用情况,并确定应用程序是否满足其性能目标。性能分析师面临的最大挑战是在高度冗余的性能数据中识别少数重要的性能计数器。在本文中,我们采用了一种统计技术,主成分分析(PCA)来减少大量的性能计数器数据,使其更小,更有意义和可管理的集合。此外,我们的方法自动化了跨负载测试比较重要计数器的过程,以确定性能增益/损失。对大型企业应用程序负载测试数据的案例研究表明,我们的方法可以有效地指导性能分析人员在有限的时间内识别和比较测试中的最佳性能计数器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Comparison of Load Tests to Support the Performance Analysis of Large Enterprise Systems
Load testing is crucial to uncover functional and performance bugs in large-scale systems. Load tests generate vast amounts of performance data, which needs to be compared and analyzed in limited time across tests. This helps performance analysts to understand the resource usage of an application and to find out if an application is meeting its performance goals. The biggest challenge for performance analysts is to identify the few important performance counters in the highly redundant performance data. In this paper, we employed a statistical technique, Principal Component Analysis (PCA) to reduce the large volume of performance counter data, to a smaller, more meaningful and manageable set. Furthermore, our methodology automates the process of comparing the important counters across load tests to identify performance gains/losses. A case study on load test data of a large enterprise application shows that our methodology can effectively guide performance analysts to identify and compare top performance counters across tests in limited time.
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