FAST Approaches to Scalable Similarity-Based Test Case Prioritization

Breno Miranda, Emilio Cruciani, R. Verdecchia, A. Bertolino
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引用次数: 77

Abstract

Many test case prioritization criteria have been proposed for speeding up fault detection. Among them, similarity-based approaches give priority to the test cases that are the most dissimilar from those already selected. However, the proposed criteria do not scale up to handle the many thousands or even some millions test suite sizes of modern industrial systems and simple heuristics are used instead. We introduce the FAST family of test case prioritization techniques that radically changes this landscape by borrowing algorithms commonly exploited in the big data domain to find similar items. FAST techniques provide scalable similarity-based test case prioritization in both white-box and black-box fashion. The results from experimentation on real world C and Java subjects show that the fastest members of the family outperform other black-box approaches in efficiency with no significant impact on effectiveness, and also outperform white-box approaches, including greedy ones, if preparation time is not counted. A simulation study of scalability shows that one FAST technique can prioritize a million test cases in less than 20 minutes.
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可扩展的基于相似性的测试用例优先级的快速方法
为了加速故障检测,已经提出了许多测试用例优先级标准。其中,基于相似度的方法优先考虑与已经选择的最不相似的测试用例。然而,所提出的标准不能扩展到处理现代工业系统的数千甚至数百万个测试套件大小,而是使用简单的启发式方法。我们引入FAST系列测试用例优先级技术,通过借用大数据领域中常用的算法来查找类似的项目,从根本上改变了这种情况。FAST技术以白盒和黑盒两种方式提供可伸缩的基于相似性的测试用例优先级。在真实世界的C和Java主题上的实验结果表明,最快的家族成员在效率上优于其他黑盒方法,而对有效性没有显著影响,并且如果不计算准备时间,也优于白盒方法,包括贪婪方法。可伸缩性的模拟研究表明,一种FAST技术可以在不到20分钟的时间内优先处理一百万个测试用例。
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