主要的突变框架:针对Java的高效和可伸缩的突变分析

René Just
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引用次数: 189

摘要

突变分析将人工缺陷(突变)植入程序,并通过测量检测这些突变的能力来评估测试技术。突变分析在软件工程研究中已经得到了广泛的应用,但由于其固有的可扩展性问题和缺乏适当的工具支持,在实际应用中很少得到应用。针对这些挑战,本文提出了一个用于突变分析和故障播种的框架Major。Major为JUnit测试提供了一个编译器集成的分析器和一个突变分析器。Major实现了大量的优化,使大型软件系统的高效和可扩展的突变分析成为可能。它已经被应用到有超过20万行代码和15万个突变体的程序中。此外,Major具有自己的领域特定语言,设计成高度可配置的,以支持软件工程中的基础研究。主要突变框架由于其高效性和灵活性,适合突变分析在研究和实践中的应用。它可以在http://mutation-testing.org上公开获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The major mutation framework: efficient and scalable mutation analysis for Java
Mutation analysis seeds artificial faults (mutants) into a pro- gram and evaluates testing techniques by measuring how well they detect those mutants. Mutation analysis is well- established in software engineering research but hardly used in practice due to inherent scalability problems and the lack of proper tool support. In response to those challenges, this paper presents Major, a framework for mutation analysis and fault seeding. Major provides a compiler-integrated mu- tator and a mutation analyzer for JUnit tests. Major implements a large set of optimizations to enable efficient and scalable mutation analysis of large software sys- tems. It has already been applied to programs with more than 200,000 lines of code and 150,000 mutants. Moreover, Major features its own domain specific language and is de- signed to be highly configurable to support fundamental re- search in software engineering. Due to its efficiency and flexibility, the Major mutation framework is suitable for the application of mutation analysis in research and practice. It is publicly available at http://mutation-testing.org.
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