Applying regression test selection for COTS-based applications

Jiang Zheng, Brian P. Robinson, L. Williams, Karen Smiley
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引用次数: 62

Abstract

ABB incorporates a variety of commercial-off-the-shelf (COTS) components in its products. When new releases of these components are made available for integration and testing, source code is often not provided. Various regression test selection processes have been developed and have been shown to be cost effectiveness. However, the majority of these test selection techniques rely on access to source code for change identification. In this paper we present the application of the lightweight Integrated - Black-box Approach for Component Change Identification (I-BACCI) Version 3 process that select regression tests for applications that use COTS components. Two case studies, examining a total of nine new component releases, were conducted at ABB on products written in C/C++ to determine the effectiveness of I-BACCI. The results of the case studies indicate this process can reduce the required number of regression tests at least 70% without sacrificing the regression fault exposure.
为基于cots的应用程序应用回归测试选择
ABB在其产品中集成了各种商用现货(COTS)组件。当这些组件的新版本可用于集成和测试时,通常不提供源代码。已经开发了各种回归测试选择过程,并已显示出成本效益。然而,这些测试选择技术中的大多数依赖于对源代码的访问来进行变更识别。在本文中,我们介绍了用于组件变更识别的轻量级集成黑盒方法(I-BACCI)版本3过程的应用,该过程为使用COTS组件的应用程序选择回归测试。ABB对用C/ c++编写的产品进行了两个案例研究,共检查了9个新组件的发布,以确定I-BACCI的有效性。实例研究结果表明,该方法可以在不牺牲回归故障暴露的情况下,将所需的回归测试次数减少至少70%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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