We present a multi-purpose genetic algorithm, designed and implemented with GPGPU / CUDA parallel computing technology. The model was derived from a multi-core CPU serial implementation, named GAME, already scientifically successfully tested and validated on astrophysical massive data classification problems, through a web application resource (DAMEWARE), specialized in data mining based on Machine Learning paradigms. Since genetic algorithms are inherently parallel, the GPGPU computing paradigm has provided an exploit of the internal training features of the model, permitting a strong optimization in terms of processing performances and scalability.
Genetic Algorithm Modeling with GPU Parallel Computing Technology / Cavuoti, S.; Garofalo, M.; Brescia, M.; Pescape', A.; Longo, G.; Ventre, G.. - ELETTRONICO. - 19:(2012), pp. 29-39. (Intervento presentato al convegno 22nd WIRN, Italian Workshop on Neural Networks, 2012 tenutosi a Vietri sul Mare (SA), Italy nel 2012) [10.1007/978-3-642-35467-0_4].
Genetic Algorithm Modeling with GPU Parallel Computing Technology
Cavuoti, S.;Brescia, M.;Pescape', A.;Longo, G.;Ventre, G.
2012
Abstract
We present a multi-purpose genetic algorithm, designed and implemented with GPGPU / CUDA parallel computing technology. The model was derived from a multi-core CPU serial implementation, named GAME, already scientifically successfully tested and validated on astrophysical massive data classification problems, through a web application resource (DAMEWARE), specialized in data mining based on Machine Learning paradigms. Since genetic algorithms are inherently parallel, the GPGPU computing paradigm has provided an exploit of the internal training features of the model, permitting a strong optimization in terms of processing performances and scalability.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.