使用机器学习图像识别代码审查

Michael Dorin, T. Le, Rajkumar Kolakaluri, Sergio Montenegro
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引用次数: 0

摘要

人们普遍认为,代码评审是在开发周期早期发现故障的一种具有成本效益的方法。然而,许多现代软件开发人员太忙了。跳过代码审查意味着失去了在软件发布之前检测昂贵故障的机会。软件工程师可以被推向多个方向,审查代码通常被认为是一项不理想的任务,尤其是在审查尚未准备好的程序时浪费了时间。在这项研究中,我们希望在审查之前确定使用机器学习和图像识别来检测不成熟软件源代码的潜力。我们展示了使用机器学习来直观地检测软件问题,并允许代码审查专注于应用程序细节是可能的。这些结果是有希望的,表明进一步的研究可能是有价值的。
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Using Machine Learning Image Recognition for Code Reviews
It is commonly understood that code reviews are a cost-effective way of finding faults early in the development cycle. However, many modern software developers are too busy to do them. Skipping code reviews means a loss of opportunity to detect expensive faults prior to software release. Software engineers can be pushed in many directions and reviewing code is very often considered an undesirable task, especially when time is wasted reviewing programs that are not ready. In this study, we wish to ascertain the potential for using machine learning and image recognition to detect immature software source code prior to a review. We show that it is possible to use machine learning to detect software problems visually and allow code reviews to focus on application details. The results are promising and are an indication that further research could be valuable.
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