Globus-middleware based grid of Research Institute for Intelligent Computer Systems

The development of computational grid of the Research Institute of Intelligent Computer Systems is described in this paper. The development of computational grid's hardware and software are presented. The performance experiments are done concerning the parallelization of artificial neural networks training implemented on the proposed Grid architecture.

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