Use of an environment classi cation modelMarvin
نویسنده
چکیده
Various reference models have been proposed for the classiication of features present in an integrated software engineering environment. In this paper, two such models are studied and a target system is mapped to the set of services present in these models. The results of this mapping and comments on the eeectiveness of the models are given.
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