基于神经机器的移动应用程序代码翻译

M. H. Hassan, Omar A. Mahmoud, O. A. Mohammed, Ammar Y. Baraka, Amira T. Mahmoud, A. Yousef
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引用次数: 3

摘要

尽管许多跨平台移动开发软件使用基于编译器的方法,但很难将其推广到两个方向。例如,在Android开发的Java和iOS开发的Swift之间进行转换,反之亦然。这是因为需要为每种源语言编写特定的解析器,并为每种目标语言编写特定的代码生成器。基于神经网络的模型被成功地用于自然语言之间的翻译,包括英语、法语、德语和许多其他语言,通过提供足够的数据集,而不需要添加语言特定的代码来理解和生成。本文介绍了一种基于神经网络机器翻译转换器模型的源代码转换器,该转换器可以在Java语言和Swift语言之间进行转换。使用合成的数据集来训练模型,说明了翻译所用的管道以及整个工作中的代码合成过程。初步结果是有希望的,并为进一步加强所建议的工具提供了动力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Machine Based Mobile Applications Code Translation
Although many cross platform mobile development software used a trans-compiler-based approach, it was very difficult to generalize it to work in both directions. For example, to convert between Java for Android Development and Swift for iOS development and vice versa. This is due to the need of writing a specific parser for each source language, and a specific code generator for each destination language. Neural network-based models are used successfully to translate between natural languages, including English, French, German any many others by providing enough datasets and without the need of adding language specific code for understanding and generation. In this paper, a source code converter based on the Neural Machine Translation Transformer Model that can translate from Java to Swift and vice versa is introduced. A synthesized dataset is used to train the model, the pipeline used for the translation as well as the code synthesis procedure throughout the work are illustrated. Initial results are promising and give motivation to further enhance the proposed tool.
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