Towards correct-by-construction product variants of a software product line: GFML, a formal language for feature modules
April 14, 2015 Β· Declared Dead Β· π FMSPLE
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Authors
Thi-Kim-Zung Pham, Catherine Dubois, Nicole Levy
arXiv ID
1504.03475
Category
cs.SE: Software Engineering
Cross-listed
cs.LO
Citations
3
Venue
FMSPLE
Last Checked
4 months ago
Abstract
Software Product Line Engineering (SPLE) is a software engineering paradigm that focuses on reuse and variability. Although feature-oriented programming (FOP) can implement software product line efficiently, we still need a method to generate and prove correctness of all product variants more efficiently and automatically. In this context, we propose to manipulate feature modules which contain three kinds of artifacts: specification, code and correctness proof. We depict a methodology and a platform that help the user to automatically produce correct-by-construction product variants from the related feature modules. As a first step of this project, we begin by proposing a language, GFML, allowing the developer to write such feature modules. This language is designed so that the artifacts can be easily reused and composed. GFML files contain the different artifacts mentioned above.The idea is to compile them into FoCaLiZe, a language for specification, implementation and formal proof with some object-oriented flavor. In this paper, we define and illustrate this language. We also introduce a way to compose the feature modules on some examples.
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