Tackling Combinatorial Explosion: A Study of Industrial Needs and Practices for Analyzing Highly Configurable Systems

M. Mukelabai, Damir Nesic, Salome Maro, T. Berger, Jan-Philipp Steghöfer
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引用次数: 44

Abstract

Highly configurable systems are complex pieces of software. To tackle this complexity, hundreds of dedicated analysis techniques have been conceived, many of which able to analyze system properties for all possible system configurations, as opposed to traditional, single-system analyses. Unfortunately, it is largely unknown whether these techniques are adopted in practice, whether they address actual needs, or what strategies practitioners actually apply to analyze highly configurable systems. We present a study of analysis practices and needs in industry. It relied on a survey with 27 practitioners engineering highly configurable systems and followup interviews with 15 of them, covering 18 different companies from eight countries. We confirm that typical properties considered in the literature (e.g., reliability) are relevant, that consistency between variability models and artifacts is critical, but that the majority of analyses for specifications of configuration options (a.k.a., variability model analysis) is not perceived as needed. We identified rather pragmatic analysis strategies, including practices to avoid the need for analysis. For instance, testing with experience-based sampling is the most commonly applied strategy, while systematic sampling is rarely applicable. We discuss analyses that are missing and synthesize our insights into suggestions for future research.
解决组合爆炸:分析高度可配置系统的工业需求和实践研究
高度可配置的系统是复杂的软件。为了处理这种复杂性,已经设想了数百种专门的分析技术,其中许多技术能够分析所有可能的系统配置的系统属性,这与传统的单系统分析相反。不幸的是,这些技术在实践中是否被采用,它们是否满足实际需求,或者从业者实际应用什么策略来分析高度可配置的系统,在很大程度上是未知的。我们提出了一项分析实践和工业需求的研究。它依赖于对27名设计高度可配置系统的从业者的调查,以及对其中15人的后续访谈,涵盖了来自8个国家的18家不同公司。我们确认文献中考虑的典型属性(例如,可靠性)是相关的,可变性模型和工件之间的一致性是至关重要的,但是对于配置选项的规格说明的大多数分析(又称,可变性模型分析)没有被认为是必要的。我们确定了相当实用的分析策略,包括避免分析需要的实践。例如,基于经验的抽样测试是最常用的策略,而系统抽样很少适用。我们讨论了缺失的分析,并将我们的见解综合为未来研究的建议。
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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