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30th Hawaii International Conference on System Sciences (HICSS) Volume 1: Software Technology and Architecture
Maui, Hawaii
January 03-January 06
ISBN: 0-8186-7743-0
Albert Y. Zomaya, The University of Western Australia
Matthew Clements, The University of Western Australia
Stephan Olariu, Old Dominion University
Task scheduling is important for the proper functioning of parallel processor systems. The static scheduling of lasks onto networks of parallel processors is welldefined and documented in the literature. However, in many practical situations a priori information about the tasks that need to be scheduled is not available. In such situations tasks usually arrive dynamically and the scheduling should be perjormed on-line or "on the fly." In this paper, we present a framework based on stochastic reinforcement learning which is usually used to solve optimization problems in a simple and efficient way. The use of reinforcement learning reduces the dynamic scheduling problem to that of learning a stochastic approximation of an unknown average error suflace. The learning system develops an association between the best action (schedule) and the current state of the environment (parallel system).
Citation:
Albert Y. Zomaya, Matthew Clements, Stephan Olariu, "Randomized Reinforcement Based Scheduling In Parallel Processor Systems," hicss, vol. 1, pp.556, 30th Hawaii International Conference on System Sciences (HICSS) Volume 1: Software Technology and Architecture, 1997
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