Graphic processing units (GPUs) emerged recently as an exciting new hardware environment for a truly parallel implementation and execution of Nature and Bio-inspired Algorithms with excellent price-to-power ratio. In contrast to common multicore CPUs that contain up to tens of independent cores, the GPUs represent a massively parallel single-instruction multiple-data devices that can nowadays reach peak performance of hundreds and thousands of giga floating-point operations per second. Nature and Bio-inspired Algorithms implement parallel optimization strategies in which a single candidate solution, a group of candidate solutions (population), or multiple populations seek for optimal solution or set of solutions of given problem. Genetic al...
Evolutionary Computation techniques and other metaheuristics have been increasingly used in the last...
Genetic algorithms (GAs) are optimization techniques which imitate the way that nature selects the b...
Many optimization problems have complex search space, which either increase the solving problem time...
We present GPU implementations of two different nature-inspired optimization methods for well-known ...
In this paper we compare GPU-based implementations of three metaheuristics: Particle Swarm Optimizat...
Genetic Algorithms (GAs) is proven to be effective in solving many optimization tasks. GAs is one of...
Genetic algorithms (GAs) are powerful solutions to optimization problems arising from manufacturing ...
Evolutionary algorithms (EA) are proven effective and robust in searching large varied spaces in a w...
In this research, we have implemented a parallel EP on consumer-level graphics processing units and ...
We present a multi-purpose genetic algorithm, designed and implemented with GPGPU / CUDA parallel co...
Graphical Processing Units stand for the success of Artificial Neural Networks over the past decade ...
Metaheuristics have been showing interesting results in solving hard optimization problems. However,...
It is well known that the numerical solution of evolutionary systems and problems based on topologic...
In this paper, we propose to parallelize a Hybrid Genetic Algorithm (HGA) on Graphics Processing Uni...
In recent times computational algorithms inspired by biological processes and evolution are gaining ...
Evolutionary Computation techniques and other metaheuristics have been increasingly used in the last...
Genetic algorithms (GAs) are optimization techniques which imitate the way that nature selects the b...
Many optimization problems have complex search space, which either increase the solving problem time...
We present GPU implementations of two different nature-inspired optimization methods for well-known ...
In this paper we compare GPU-based implementations of three metaheuristics: Particle Swarm Optimizat...
Genetic Algorithms (GAs) is proven to be effective in solving many optimization tasks. GAs is one of...
Genetic algorithms (GAs) are powerful solutions to optimization problems arising from manufacturing ...
Evolutionary algorithms (EA) are proven effective and robust in searching large varied spaces in a w...
In this research, we have implemented a parallel EP on consumer-level graphics processing units and ...
We present a multi-purpose genetic algorithm, designed and implemented with GPGPU / CUDA parallel co...
Graphical Processing Units stand for the success of Artificial Neural Networks over the past decade ...
Metaheuristics have been showing interesting results in solving hard optimization problems. However,...
It is well known that the numerical solution of evolutionary systems and problems based on topologic...
In this paper, we propose to parallelize a Hybrid Genetic Algorithm (HGA) on Graphics Processing Uni...
In recent times computational algorithms inspired by biological processes and evolution are gaining ...
Evolutionary Computation techniques and other metaheuristics have been increasingly used in the last...
Genetic algorithms (GAs) are optimization techniques which imitate the way that nature selects the b...
Many optimization problems have complex search space, which either increase the solving problem time...