面向服务软件质量影响预测的工业案例研究

H. Koziolek, Bastian Schlich, Carlos G. Bilich, R. Weiss, Steffen Becker, K. Krogmann, M. Trifu, R. Mirandola, A. Koziolek
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引用次数: 29

摘要

体系结构设计决策的系统决策支持是发展面向服务系统的软件架构师主要关心的问题。在实践中,架构师经常根据原型或以前的经验分析设计方案的预期性能和可靠性。模型驱动的预测方法声称可以定量地揭示不同替代方案之间的权衡,同时更具成本效益,更不容易出错。然而,它们经常受到薄弱的工具支持的影响,并且专注于单一的质量属性。此外,基于记录在案的工业案例研究,关于其有效性的证据有限。因此,我们将一种新颖的模型驱动预测方法Q-ImPrESS应用于由自动化领域数百万行代码组成的大规模过程控制系统,以评估其演变场景。本文报告了我们使用该方法的经验和教训。Q-ImPrESS的优点是良好的体系结构决策支持和全面的工具框架,而缺点是耗时的数据收集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An industrial case study on quality impact prediction for evolving service-oriented software
Systematic decision support for architectural design decisions is a major concern for software architects of evolving service-oriented systems. In practice, architects often analyse the expected performance and reliability of design alternatives based on prototypes or former experience. Model-driven prediction methods claim to uncover the tradeoffs between different alternatives quantitatively while being more cost-effective and less error-prone. However, they often suffer from weak tool support and focus on single quality attributes. Furthermore, there is limited evidence on their effectiveness based on documented industrial case studies. Thus, we have applied a novel, model-driven prediction method called Q-ImPrESS on a large-scale process control system consisting of several million lines of code from the automation domain to evaluate its evolution scenarios. This paper reports our experiences with the method and lessons learned. Benefits of Q-ImPrESS are the good architectural decision support and comprehensive tool framework, while one drawback is the time-consuming data collection.
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