What are the Factors Impacting Build Breakage?

Yang Luo, Yangyang Zhao, Wanwangying Ma, Lin Chen
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引用次数: 13

Abstract

Continuous Integration (CI) has become a good practice of software development in recent years. As an essential part of CI, build creates software from source code. Predicting build outcome help developers to review and fix bugs before building to save time. However, we are missing objective evidence of practical factors affecting build result. Travis CI provides a hosted, distributed continuous integration service used to build and test software projects hosted at GitHub. The TravisTorrent is a dataset which deeply analyzes source code, process and dependency status of projects hosting on Travis CI. We use this dataset to investigate which factors may impact a build result. We first preprocess TravisTorrent data to extract 27 features. We then analyze the correlation between these features and the result of a build. Finally, we build four prediction models to predict the result of a build and perform a horizontal analysis. We found that in our study, the number of commits in a build (git_num_all_built_commits) is the most import factor that has significant impact on the build result, and SVM performs best in the four of the prediction models we used.
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影响构建破坏的因素是什么?
近年来,持续集成(CI)已成为软件开发的一种良好实践。作为CI的重要组成部分,构建从源代码创建软件。预测构建结果可以帮助开发人员在构建之前检查和修复错误,从而节省时间。然而,我们缺少影响构建结果的实际因素的客观证据。Travis CI提供了一个托管的、分布式的持续集成服务,用于构建和测试托管在GitHub上的软件项目。TravisTorrent是一个数据集,它深入分析了托管在Travis CI上的项目的源代码、过程和依赖状态。我们使用这个数据集来调查哪些因素可能会影响构建结果。我们首先对TravisTorrent数据进行预处理,提取27个特征。然后,我们分析这些特性与构建结果之间的相关性。最后,我们构建了四个预测模型来预测构建的结果并执行横向分析。我们发现,在我们的研究中,构建中的提交数量(git_num_all_built_commits)是对构建结果有重大影响的最重要因素,SVM在我们使用的四种预测模型中表现最好。
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