We present three genetic algorithms (GAs) for allocating irregular data sets to multiprocessors. These are a sequential hybrid GA, a coarse-grain GA and a fine-grain GA. The last two are based on models of natural evolution that are suitable for parallel implementation; they have been implemented on a hypercube and a Connection Machine. Experimental results show that the three GAs evolve good suboptimal solutions which are better than those produced by other methods. The GAs are also robust and do not show a bias towards particular problem configurations. The two parallel GAs have reasonable execution times, with the coarse-grain GA producing better solutions for the allocation of loosely synchronous computations.PublishedN/
The objective of this dissertation is to develop a multi-resolution optimization strategy based on t...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our motivat...
Genetic Algorithms contain natural parallelism. There are two main approaches in parallelising GAs. ...
As genetic algorithms (GAs) are used to solve harder problems, it is becoming necessary to use bette...
Three parallel physical optimization algorithms for allocating irregular data to multicomputer nodes...
A new coarse grain parallel genetic algorithm (PGA) and a new implementation of a data-parallel GA a...
Genetic algorithms are search or classification algorithms based on natural models. They present a h...
Analysing large-scale data brings promises of new levels of scientific discovery and economic value. ...
Distributed computing environments are nowadays composed of many heterogeneous computers able to wor...
The parallel computers of the future will be both more complex and more varied than the machines of ...
In this paper, we propose to parallelize a Hybrid Genetic Algorithm (HGA) on Graphics Processing Uni...
An architecture of a distributed parallel genetic algorithm was developed to improve computing resou...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our mo-tiva...
Evolutionary algorithms have been gaining increased attention the past few years because of their ve...
Genetic Algorithms (GAs) have been implemented on a number of multiprocessor machines. In many cases...
The objective of this dissertation is to develop a multi-resolution optimization strategy based on t...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our motivat...
Genetic Algorithms contain natural parallelism. There are two main approaches in parallelising GAs. ...
As genetic algorithms (GAs) are used to solve harder problems, it is becoming necessary to use bette...
Three parallel physical optimization algorithms for allocating irregular data to multicomputer nodes...
A new coarse grain parallel genetic algorithm (PGA) and a new implementation of a data-parallel GA a...
Genetic algorithms are search or classification algorithms based on natural models. They present a h...
Analysing large-scale data brings promises of new levels of scientific discovery and economic value. ...
Distributed computing environments are nowadays composed of many heterogeneous computers able to wor...
The parallel computers of the future will be both more complex and more varied than the machines of ...
In this paper, we propose to parallelize a Hybrid Genetic Algorithm (HGA) on Graphics Processing Uni...
An architecture of a distributed parallel genetic algorithm was developed to improve computing resou...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our mo-tiva...
Evolutionary algorithms have been gaining increased attention the past few years because of their ve...
Genetic Algorithms (GAs) have been implemented on a number of multiprocessor machines. In many cases...
The objective of this dissertation is to develop a multi-resolution optimization strategy based on t...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our motivat...
Genetic Algorithms contain natural parallelism. There are two main approaches in parallelising GAs. ...