Automated Component Ensemble Evaluation
نویسندگان
چکیده
Traditional, large-scale component repositories have failed for a variety of reasons. One of these reasons is that they have focused on the identification and selection of individual components, while system development often depends on the selection of compatible component ensembles. In this paper, we discuss an alternative approach to traditional component repositories that integrates knowledge-based techniques to automate the selection of component ensembles. In particular, we focus on the attributes of component specifications in the constrained problem space of Enterprise JavaBeans, and the development of associated integration rules that evaluate these attributes with respect to component integratability. We also discuss the role of patterns in automated component ensemble evaluation.
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