Choosy and picky: configuration of language product lines

Thomas Kühn, W. Cazzola, Diego Mathias Olivares
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引用次数: 43

Abstract

Although most programming languages naturally share several language features, they are typically implemented as a monolithic product. Language features cannot be plugged and unplugged from a language and reused in another language. Some modular approaches to language construction do exist but composing language features requires a deep understanding of its implementation hampering their use. The choose and pick approach from software product lines provides an easy way to compose a language out of a set of language features. However, current approaches to language product lines are not sufficient enough to cope with the complexity and evolution of real world programming languages. In this work, we propose a general light-weight bottom-up approach to automatically extract a feature model from a set of tagged language components. We applied this approach to the Neverlang language development framework and developed the AiDE tool to guide language developers towards a valid language composition. The approach has been evaluated on a decomposed version of Javascript to highlight the benefits of such a language product line.
挑三拣四:语言产品线的配置
尽管大多数编程语言自然地共享一些语言特性,但它们通常被实现为一个整体产品。语言特性不能从一种语言插入和拔出,也不能在另一种语言中重用。一些模块化的语言构建方法确实存在,但组合语言特性需要对其实现有深刻的理解,这阻碍了它们的使用。从软件产品线中选择和挑选方法提供了一种简单的方法,可以从一组语言特性中组合出一门语言。然而,语言产品线的当前方法不足以应付现实世界编程语言的复杂性和演变。在这项工作中,我们提出了一种通用的轻量级自底向上的方法,从一组标记的语言组件中自动提取特征模型。我们将这种方法应用到Neverlang语言开发框架中,并开发了AiDE工具来指导语言开发人员实现有效的语言组合。该方法已经在Javascript的分解版本上进行了评估,以突出这种语言产品线的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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