Models and Patterns for Smart Environments
نویسندگان
چکیده
In a given smart meeting room, several users are supposed to cooperate together while employing static and dynamic heterogeneous devices. The goal of such environments is to deliver proper assistance to the users while performing their tasks. Thus, task models are an appropriate starting point for those environments. Those models give the developers the opportunity to focus on the users and their tasks. Tasks are not independent from available tool, locations and acting persons. Therefore, other models have to be developed and linked to the task model in order to truly illustrate how the tasks are executed in those environments. The paper discusses the application of the language CTML that was designed for this purpose. Furthermore, the usage of patterns for supporting the development of models for smart environments will be discussed.
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