Massively Parallel Evolutionary Computation on GPGPUsMassively Parallel Evolutionary Computation on GPGPUs
Title rated 0 out of 5 stars, based on 0 ratings(0 ratings)
eBook, 2013
Current format, eBook, 2013, , Available.eBook, 2013
Current format, eBook, 2013, , Available. Offered in 0 more formatsEvolutionary algorithms are metaheuristics that learn from natural collective behavior and are applied to solve optimization problems in domains such as scheduling, engineering, bioinformatics, and finance. Such applications demand acceptable solutions with high-speed execution using finite computational resources. Recent advances in general-purpose computing on graphics processing units (GPGPU) have opened up the use of parallel EAs. Topics include: a comprehensive introduction to the approach, explaining the characteristics of the hardware used, and presenting a representative project to develop a platform for automatic parallelization of evolutionary computing (EC) on GPGPUs; key EC approaches, in particular: generic local search, tabu search, genetic algorithms, differential evolution, swarm and ant colony optimization, systolic genetic search, genetic programming, and multiobjective optimization; and successful results from real-world problems. --
Title availability
About
Contributors
Subject and genre
Details
Publication
- Heidelberg : Springer, [2013], ♭2013
Opinion
More from the community
Community lists featuring this title
There are no community lists featuring this title
Community contributions
Community quotations are the opinions of contributing users. These quotations do not represent the opinions of Vancouver Public Library.
There are no quotations from this title
Community quotations are the opinions of contributing users. These quotations do not represent the opinions of Vancouver Public Library.
There are no quotations from this title
From the community