Modeling Multimicrocomputer Networks
نویسنده
چکیده
Recent developments in very large scale integration have made it feasible to construct a highly parallel computer composed of large numbers of interconnected microcomputers. The individual nodes of these multimicrocomputer nelworks do not share any common memory. making it crucial to select an interconnecUon network capable of efficiently supporting internode communication. The modeling problems posed by this approach to parallel processing differ in several significant respects from those associated with traditional queueing netwotk models of computer systems. Among them are the size of the models, the varied interconnection network topologies, and algorithm dependent internode communication patterns. We extend queueing theoretic models to include multimicrocomputer networks with primary emphasis on two areas: characterizing interconnection network workloads and finding efficient solution techniques for the resulting models.
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