Distributed computing environments are nowadays composed of many heterogeneous computers able to work cooperatively. Despite this, the most of the work in parallel metaheuristics assumes a homogeneous hardware as the underlying platform. In this work we provide a methodology that enables a distributed genetic algorithm to be customized for higher efficiency on any available hardware resources with different computing power, all of them collaborating to solve the same problem. We analyze the impact of heterogeneity in the resulting performance of a parallel metaheuristic and also its efficiency in time. Our conclusion is that the solution quality is comparable to that achieved by using a theoretically faster homogeneous platform, the traditi...
There is a lack of a programming free solution which can run a distributed genetic algorithm in para...
The paper presents an analysis of the use of optimization algorithms in parallel solutions and distr...
The objective of this dissertation is to develop a multi-resolution optimization strategy based on t...
Abstract. While evolutionary algorithms (EAs) have many advantages, they have to evaluate a relative...
This paper presents a general model to define, measure and predict the efficiency of applications ru...
An architecture of a distributed parallel genetic algorithm was developed to improve computing resou...
Genetic algorithms, a stochastic evolutionary computing technique, have demonstrated a capacity for ...
Parallel genetic algorithms (PGAs) have been traditionally used to extend the power of serial geneti...
'Evolutionary algorithms' is the collective name for a group of relatively new stochastic search alg...
In the proposed algorithm, several single population genetic algorithms with different cross-over an...
The increasing complexity of real-world optimization problems raises new challenges to evolutionary ...
Optimization problems are becoming increasingly difficult challenges as a result of the definition o...
Mathematica has proven itself to be a suitable platform on which to develop prototype Genetic Progr...
We present three genetic algorithms (GAs) for allocating irregular data sets to multiprocessors. The...
Abstract — In this paper, a parallel model of multi-objective genetic algorithm supposing a grid env...
There is a lack of a programming free solution which can run a distributed genetic algorithm in para...
The paper presents an analysis of the use of optimization algorithms in parallel solutions and distr...
The objective of this dissertation is to develop a multi-resolution optimization strategy based on t...
Abstract. While evolutionary algorithms (EAs) have many advantages, they have to evaluate a relative...
This paper presents a general model to define, measure and predict the efficiency of applications ru...
An architecture of a distributed parallel genetic algorithm was developed to improve computing resou...
Genetic algorithms, a stochastic evolutionary computing technique, have demonstrated a capacity for ...
Parallel genetic algorithms (PGAs) have been traditionally used to extend the power of serial geneti...
'Evolutionary algorithms' is the collective name for a group of relatively new stochastic search alg...
In the proposed algorithm, several single population genetic algorithms with different cross-over an...
The increasing complexity of real-world optimization problems raises new challenges to evolutionary ...
Optimization problems are becoming increasingly difficult challenges as a result of the definition o...
Mathematica has proven itself to be a suitable platform on which to develop prototype Genetic Progr...
We present three genetic algorithms (GAs) for allocating irregular data sets to multiprocessors. The...
Abstract — In this paper, a parallel model of multi-objective genetic algorithm supposing a grid env...
There is a lack of a programming free solution which can run a distributed genetic algorithm in para...
The paper presents an analysis of the use of optimization algorithms in parallel solutions and distr...
The objective of this dissertation is to develop a multi-resolution optimization strategy based on t...