Title :
On Combining Multi-formalism Knowledge to Select Models for Model Transformation Testing
Author :
Sen, Sagar ; Baudry, Benoit ; Mottu, Jean-Marie
Author_Institution :
IRISA/INRIA, Univ. Rennes 1, Rennes, France
Abstract :
Testing remains a major challenge for model transformation development. Test models that are used as test data for model transformations, are constrained by various sources of knowledge that is expressed in different formalisms. Thus, in order to automatically generate test models it is necessary to interpret these different sources of knowledge and combine them into a consistent set of information that can be used for model synthesis. In this paper, we identify sources of testing knowledge and present our tool Cartier that uses Alloy as the first-order relational logic language to represent combined knowledge in the form of constraints. The constraints are solved leading to a selection of qualified test models from the input domain of a model transformation. We illustrate our approach using the Unified Modeling Language class diagram to relational database management systems transformation as a running example.
Keywords :
Unified Modeling Language; formal logic; relational databases; Unified Modeling Language; first-order relational logic language; model transformation development; model transformation testing; multiformalism knowledge; Automatic testing; Boolean functions; Concrete; Logic testing; Performance evaluation; Relational databases; Robustness; Software systems; Software testing; Unified modeling language; alloy; cartier; model tranformation; testing;
Conference_Titel :
Software Testing, Verification, and Validation, 2008 1st International Conference on
Conference_Location :
Lillehammer
Print_ISBN :
978-0-7695-3127-4
DOI :
10.1109/ICST.2008.62