基于多值决策图的组合模型并行测试生成

A. Bombarda, A. Gargantini
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引用次数: 4

摘要

组合交互测试(CIT)是一种有效的测试技术,可以发现由于输入之间的交互而导致的错误,并减少测试用例的数量。组合测试中最关键的部分之一是测试生成,近年来已经提出了许多工具和算法,它们具有不同的方法和性能。然而,生成测试仍然是一个复杂的过程,可能需要大量的努力(主要是时间)。因此,在本文中,我们提出了pMEDICI工具,该工具旨在通过并行生成过程和利用最新的多线程硬件架构来减少测试生成时间。它使用多值决策图(mdd)来表示要测试的约束和元组,并从中提取t型测试用例。我们的实验证实,我们的工具需要更短的时间来生成组合测试套件,特别是对于具有大量参数和约束的复杂模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallel Test Generation for Combinatorial Models Based on Multivalued Decision Diagrams
Combinatorial interaction testing (CIT) is a testing technique that has proved to be effective in finding faults due to the interaction among inputs, and in reducing the number of test cases. One of the most crucial parts of combinatorial testing is the test generation for which many tools and algorithms have been proposed in recent years, with different methodologies and performances. However, generating tests remains a complex procedure that can require a lot of effort (mainly time). Thus, in this paper, we present the tool pMEDICI which aims to reduce the test generation time by parallelizing the generation process and exploiting the recent multithread hardware architectures. It uses Multivalued Decision Diagrams (MDDs) for representing the constraints and the tuples to be tested and extracts from them the t-wise test cases. Our experiments confirm that our tool requires a shorter amount of time for generating combinatorial test suites, especially for complex models, with a lot of parameters and constraints.
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