Abstract. While evolutionary algorithms (EAs) have many advantages, they have to evaluate a relatively large number of candidate solutions before producing good results, which directly translates into a substantial demand for computing power. This disadvantage is somewhat compensated by the ease of parallelizing EAs. While only few people have access to a dedicated parallel computer, recently, it also became possible to distribute an algorithm over any bunch of networked computers, using a paradigm called “grid computing”. However, unlike dedicated parallel computers with a number of identical processors, the computers forming a grid are usually quite heterogeneous. In this paper, we look at the effect of this heterogeneity, and show that s...
Genetic algorithm behavior is determined by the exploration/exploitation balance kept throughout the...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
Parallelization of an evolutionary algorithm takes the advantage of modular population division and ...
Distributed computing environments are nowadays composed of many heterogeneous computers able to wor...
An architecture of a distributed parallel genetic algorithm was developed to improve computing resou...
The increasing complexity of real-world optimization problems raises new challenges to evolutionary ...
migration strategy; Abstract. Genetic Algorithm (GA) is a powe rful global optimization search algo ...
It is a fact that traditional algorithms cannot look at a very large data set and plausibly find a g...
This paper presents a general model to define, measure and predict the efficiency of applications ru...
'Evolutionary algorithms' is the collective name for a group of relatively new stochastic search alg...
It is a fact that traditional algorithms cannot look at a very large data set and plausibly find a g...
We present three genetic algorithms (GAs) for allocating irregular data sets to multiprocessors. The...
Mathematica has proven itself to be a suitable platform on which to develop prototype Genetic Progr...
Parallel genetic algorithms (PGAs) have been traditionally used to extend the power of serial geneti...
Abstract—In this paper an improved adaptive parallel genetic algorithm is proposed to solve problems...
Genetic algorithm behavior is determined by the exploration/exploitation balance kept throughout the...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
Parallelization of an evolutionary algorithm takes the advantage of modular population division and ...
Distributed computing environments are nowadays composed of many heterogeneous computers able to wor...
An architecture of a distributed parallel genetic algorithm was developed to improve computing resou...
The increasing complexity of real-world optimization problems raises new challenges to evolutionary ...
migration strategy; Abstract. Genetic Algorithm (GA) is a powe rful global optimization search algo ...
It is a fact that traditional algorithms cannot look at a very large data set and plausibly find a g...
This paper presents a general model to define, measure and predict the efficiency of applications ru...
'Evolutionary algorithms' is the collective name for a group of relatively new stochastic search alg...
It is a fact that traditional algorithms cannot look at a very large data set and plausibly find a g...
We present three genetic algorithms (GAs) for allocating irregular data sets to multiprocessors. The...
Mathematica has proven itself to be a suitable platform on which to develop prototype Genetic Progr...
Parallel genetic algorithms (PGAs) have been traditionally used to extend the power of serial geneti...
Abstract—In this paper an improved adaptive parallel genetic algorithm is proposed to solve problems...
Genetic algorithm behavior is determined by the exploration/exploitation balance kept throughout the...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
Parallelization of an evolutionary algorithm takes the advantage of modular population division and ...