PerfLearner: Learning from Bug Reports to Understand and Generate Performance Test Frames

Xue Han, Tingting Yu, D. Lo
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引用次数: 36

Abstract

Software performance is important for ensuring the quality of software products. Performance bugs, defined as programming errors that cause significant performance degradation, can lead to slow systems and poor user experience. While there has been some research on automated performance testing such as test case generation, the main idea is to select workload values to increase the program execution times. These techniques often assume the initial test cases have the right combination of input parameters and focus on evolving values of certain input parameters. However, such an assumption may not hold for highly configurable real-word applications, in which the combinations of input parameters can be very large. In this paper, we manually analyze 300 bug reports from three large open source projects - Apache HTTP Server, MySQL, and Mozilla Firefox. We found that 1) exposing performance bugs often requires combinations of multiple input parameters, and 2) certain input parameters are frequently involved in exposing performance bugs. Guided by these findings, we designed and evaluated an automated approach, PerfLearner, to extract execution commands and input parameters from descriptions of performance bug reports and use them to generate test frames for guiding actual performance test case generation.
PerfLearner:从Bug报告中学习,理解并生成性能测试框架
软件性能是保证软件产品质量的重要因素。性能bug被定义为导致显著性能下降的编程错误,它可能导致系统运行缓慢和用户体验不佳。虽然已经有一些关于自动化性能测试的研究,比如测试用例生成,但主要的思想是选择工作负载值来增加程序执行时间。这些技术通常假设初始测试用例具有正确的输入参数组合,并关注于某些输入参数的演化值。然而,对于高度可配置的实时应用程序,这种假设可能不成立,因为输入参数的组合可能非常大。在本文中,我们手工分析了来自三个大型开源项目(Apache HTTP Server, MySQL和Mozilla Firefox)的300个bug报告。我们发现1)暴露性能缺陷通常需要组合多个输入参数,2)某些输入参数经常涉及暴露性能缺陷。在这些发现的指导下,我们设计并评估了一种自动化方法PerfLearner,从性能错误报告的描述中提取执行命令和输入参数,并使用它们来生成测试框架,以指导实际性能测试用例的生成。
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