Automated Reporting of Anti-Patterns and Decay in Continuous Integration

Carmine Vassallo, Sebastian Proksch, H. Gall, M. D. Penta
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引用次数: 41

Abstract

Continuous Integration (CI) is a widely-used software engineering practice. The software is continuously built so that changes can be easily integrated and issues such as unmet quality goals or style inconsistencies get detected early. Unfortunately, it is not only hard to introduce CI into an existing project, but it is also challenging to live up to the CI principles when facing tough deadlines or business decisions. Previous work has identified common anti-patterns that reduce the promised benefits of CI. Typically, these anti-patterns slowly creep into a project over time before they are identified. We argue that automated detection can help with early identification and prevent such a process decay. In this work, we further analyze this assumption and survey 124 developers about CI anti-patterns. From the results, we build CI-Odor, a reporting tool for CI processes that detects the existence of four relevant anti-patterns by analyzing regular build logs and repository information. In a study on the 18,474 build logs of 36 popular JAVA projects, we reveal the presence of 3,823 high-severity warnings spread across projects. We validate our reports in a survey among 13 original developers of these projects and through general feedback from 42 developers that confirm the relevance of our reports.
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持续集成中反模式和衰减的自动报告
持续集成(CI)是一种广泛使用的软件工程实践。软件是连续构建的,这样变更可以很容易地集成,并且诸如未达到质量目标或风格不一致之类的问题可以及早发现。不幸的是,在现有项目中引入CI不仅很困难,而且在面临严格的截止日期或业务决策时,实现CI原则也是一项挑战。以前的工作已经确定了降低CI所承诺的好处的常见反模式。通常,在确定这些反模式之前,这些反模式会随着时间的推移慢慢地渗透到项目中。我们认为自动化检测可以帮助早期识别并防止这种过程衰减。在这项工作中,我们进一步分析了这一假设,并调查了124名关于CI反模式的开发人员。根据结果,我们构建了CI- odor,这是一个用于CI流程的报告工具,它通过分析常规构建日志和存储库信息来检测四种相关反模式的存在。在对36个流行JAVA项目的18,474个构建日志的研究中,我们揭示了分布在项目中的3,823个高严重性警告。我们通过对这些项目的13个原始开发人员的调查来验证我们的报告,并通过来自42个开发人员的一般反馈来确认我们报告的相关性。
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