Modern Code Review (MCR) is a standard in all kinds of organizations that develop software. MCR pays for itself through perceived and proven benefits in quality assurance and knowledge transfer. However, the time invest in MCR is generally substantial. The goal of this thesis is to boost the efficiency of MCR by developing AI techniques that can partially replace or assist human reviewers. The envisioned techniques distinguish from existing MCR-related AI models in that we interpret these challenges as graph-learning problems. This should allow us to use state-of-science algorithms from that domain to learn coding and reviewing standards directly from existing projects. The required training data will be mined from online repositories and the experiments will be designed to use standard, quantitative evaluation metrics. This research proposal defines the motivation, research-questions, and solution components for the thesis, and gives an overview of the relevant related work.
翻译:现代代码审查(MCR)是开发软件的各类组织的标准。MCR通过在质量保证和知识转让方面的已知和经证明的好处来为自己支付费用。然而,对MCR投入的时间一般是巨大的。该论文的目的是通过开发可部分取代或协助人类审查者的AI技术来提高MSC的效率。设想的技术与现有的与MSCR有关的AI模型区别开来,因为我们将这些挑战解释为图表学习问题。这应该使我们能够利用该领域的科学算法直接从现有项目中学习编码和审查标准。所需的培训数据将从在线储存库中提取,实验将设计为使用标准的定量评估指标。该研究提案界定了该理论的动机、研究问题和解决方案部分,并概述了相关工作。