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handle: 2318/57826 , 2318/57513
Grid technologies aim to harness the computational capabilities of widely distributed collections of computers. Due to the heterogeneous and dynamic nature of the set of grid resources, the programming and optimisation burden of a low level approach to grid computing is clearly unacceptable for large scale, complex applications. The development of grid applications can be simplified by using high-level programming environments. In the present work, we address the problem of the mapping of a high-level grid application onto the computational resources. In order to optimise the mapping of the application, we propose to automatically generate performance models from the application using the process algebra PEPA. We target applications written with the high-level environment ASSIST, since the use of such a structured environment allows us to automate the study of the application more effectively.
high-level parallel programming; ASSIST environment; Performance Evaluation Process Algebra (PEPA); automatic model generation; Divide&Conquer, Performance Evaluation Process Algebra (PEPA), D.3.3 Language Constructs and Features, high-level parallel programming; ASSIST environment; Performance Evaluation Process Algebra (PEPA); automatic model generation, C.2.4 Distributed Systems, ASSIST, Grid, Automatic model generation, D.1.4 Sequential Programming, D.3.4 Processors
high-level parallel programming; ASSIST environment; Performance Evaluation Process Algebra (PEPA); automatic model generation; Divide&Conquer, Performance Evaluation Process Algebra (PEPA), D.3.3 Language Constructs and Features, high-level parallel programming; ASSIST environment; Performance Evaluation Process Algebra (PEPA); automatic model generation, C.2.4 Distributed Systems, ASSIST, Grid, Automatic model generation, D.1.4 Sequential Programming, D.3.4 Processors
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