@misc{10481/77931, year = {2011}, url = {https://hdl.handle.net/10481/77931}, abstract = {The work presented in this paper consists in an adaptation of a Genetic Algorithm (GA) to perform variable selection in an heterogeneous cluster where the nodes are themselves clusters of GPUs. Due to this heterogeneity, several mechanisms to perform a load balance will be discussed as well as the optimization of the fitness function to take advantage of the GPUs available. The algorithm will be compared with previous parallel implementations analysing the advantages and disadvantages of the approach, showing that for large data sets, the proposed approach is the only one that can provide a solution.}, organization = {Spanish CICYT Project TIN2007-60587 and TEC2008-04920}, organization = {Junta Andalucia Projects P08-TIC-03674 and P08-TIC03928 and PYR-2010-17 of CEI BioTIC GENIL (CEB09-0010) of the MICINN}, publisher = {Springer}, keywords = {Inteligencia artificial}, keywords = {Artificial intelligence}, title = {Variable Selection in a GPU Cluster Using Delta Test}, author = {Guillén Perales, Alberto and García Arenas, María Isabel and Herrera Maldonado, Luis Javier and Pomares Cintas, Héctor Emilio and Rojas Ruiz, Ignacio}, }