Exploring the Integration of Machine Learning Models in Programming Languages on GitHub: Impact on Compatibility to Address Them

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Abstract

GitHub repositories are often used for collaborative development, allowing multiple developers to work on the same codebase and contribute their changes. Each repository is typically associated with a specific project, and it can contain everything from code files to documentation, bug reports, and feature requests. Depending on the context, it can contain files, directories, other resources related to a project, and it is often associated with a particular programming language. By default, GitHub automatically detects the primary programming language used in a repository based on the file extensions and content within the repository. However, this detection is not true all the time; there are some potential issues to consider. One of these problems is that the detected language may not accurately reflect the actual programming languages used in the project, especially if the project utilizes multiple programming languages or has undergone language migrations. In this study, we apply an alternative technology to resolve problems with classifying the programming language of a GitHub repository by analysing file extensions and identifying all programming languages used in the project. We also determine the appropriate primary programming language for the repository. This paper investigates how this technology can address the issues surrounding GitHub’s automatic detection of a repository’s primary programming language and how it can provide information on all the programming languages used in a project.
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探索 GitHub 上编程语言中机器学习模型的集成:解决这些问题对兼容性的影响
GitHub 资源库通常用于协作开发,允许多个开发人员在同一个代码库上工作并贡献自己的修改意见。每个仓库通常与一个特定项目相关联,可以包含从代码文件到文档、错误报告和功能请求等所有内容。根据具体情况,它可以包含与项目相关的文件、目录和其他资源,而且通常与特定的编程语言相关联。默认情况下,GitHub 会根据仓库中的文件扩展名和内容自动检测仓库中使用的主要编程语言。不过,这种检测并不总是正确的;有一些潜在的问题需要考虑。其中一个问题是,检测到的语言可能无法准确反映项目中实际使用的编程语言,尤其是在项目使用多种编程语言或经历了语言迁移的情况下。在本研究中,我们采用了另一种技术,通过分析文件扩展名和识别项目中使用的所有编程语言,解决了 GitHub 仓库编程语言分类的问题。我们还确定了适合该版本库的主要编程语言。本文研究了该技术如何解决围绕 GitHub 自动检测版本库主要编程语言的问题,以及如何提供项目中使用的所有编程语言的信息。
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