Data-Intensive Computing for Competent Genetic Algorithms: A Pilot Study using Meandre
TR No.: 2009001 | Download PDF | Download PS
Abstract: Data-intensive computing has positioned itself as a valuable programming paradigm to efficiently approach problems requiring processing very large volumes of data. This paper presents a pilot study about how to apply the data-intensive computing paradigm to evolutionary computation algorithms. Two representative cases—selectorecombinative genetic algorithms and estimation of distribution algorithms—are presented, analyzed, discussed. This study shows that equivalent data-intensive computing evolutionary computation algorithms can be easily developed, providing robust and scalable algorithms for the multicore-computing era. Experimental results show how such algorithms scale with the number of available cores without further modification.
Posted: January 29th, 2009 under Data-intensive computing, Genetic algorithms.
Comments: none
Write a comment