An Incremental Genetic Algorithm Approach to Multiprocessor Scheduling

IEEE Transactions on Parallel and Distributed Systems(2004)

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摘要
We have developed a genetic algorithm (GA) approach to the problem of task scheduling for multiprocessor systems. Our approach requires minimal problem specific information and no problem specific operators or repair mechanisms. Key features of our system include a flexible, adaptive problem representation and an incremental fitness function. Comparison with traditional scheduling methods indicates that the GA is competitive in terms of solution quality if it has sufficient resources to perform its search. Studies in a nonstationary environment show the GA is able to automatically adapt to changing targets.
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关键词
problem specific operator,multiprocessor system,task scheduling,key feature,genetic algorithm,multiprocessor scheduling,incremental genetic algorithm approach,traditional scheduling method,adaptive problem representation,incremental fitness function,minimal problem,specific information,parallel processing,fitness function,genetic algorithms
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