Efficient synthesis of feature models

Nele Andersen, K. Czarnecki, S. She, A. Wąsowski
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引用次数: 120

Abstract

Variability modeling, and in particular feature modeling, is a central element of model-driven software product line architectures. Such architectures often emerge from legacy code, but, unfortunately creating feature models from large, legacy systems is a long and arduous task. We address the problem of automatic synthesis of feature models from propositional constraints. We show that this problem is NP-hard. We design efficient techniques for synthesis of models from respectively CNF and DNF formulas, showing a 10- to 1000-fold performance improvement over known techniques for realistic benchmarks. Our algorithms are the first known techniques that are efficient enough to be applied to dependencies extracted from real systems, opening new possibilities of creating reverse engineering and model management tools for variability models. We discuss several such scenarios in the paper.
高效的特征模型综合
可变性建模,特别是特征建模,是模型驱动软件产品线架构的中心元素。这样的体系结构通常来自遗留代码,但是,不幸的是,从大型遗留系统创建特性模型是一项漫长而艰巨的任务。我们解决了命题约束中特征模型的自动合成问题。我们证明了这个问题是np困难的。我们设计了有效的技术,分别从CNF和DNF公式中合成模型,在现实基准测试中,比已知技术的性能提高了10到1000倍。我们的算法是第一个已知的技术,它足够有效,可以应用于从实际系统中提取的依赖关系,为可变性模型创建逆向工程和模型管理工具开辟了新的可能性。我们在本文中讨论了几个这样的场景。
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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