Computer Science – Distributed – Parallel – and Cluster Computing
Scientific paper
2007-03-23
Computer Science
Distributed, Parallel, and Cluster Computing
Submitted to Europar 2007
Scientific paper
Gossipping has demonstrate to be an efficient mechanism for spreading information among P2P networks. Within the context of P2P computing, we propose the so-called Evolvable Agent Model for distributed population-based algorithms which uses gossipping as communication policy, and represents every individual as a self-scheduled single thread. The model avoids obsolete nodes in the population by defining a self-adaptive refresh rate which depends on the latency and bandwidth of the network. Such a mechanism balances the migration rate to the congestion of the links pursuing global population coherence. We perform an experimental evaluation of this model on a real parallel system and observe how solution quality and algorithm speed scale with the number of processors with this seamless approach.
Castillo Pedro A.
Eiben E. A.
Fernandez Francisco
Laredo J. L. J.
Merelo Juan J.
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