An Adaptive Object Model based on Dynamic Binding to Roles in Environments
نویسندگان
چکیده
To achieve the goal of realizing object adaptation to environments, a new role-based model Epsilon and a language Bunraku is proposed. The model is explained with some examples and especially the Visitor pattern is examined in detail for evaluating the model. Implementation of Bunraku is also reported.
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