We present a new approach to balancing the workload in a multicomputer when the problem is decomposed into subproblems mapped to the processors. It is based on a hybrid genetic algorithm. A number of design choices for genetic algorithms are combined in order to ameliorate the problem of premature convergence that is often encountered in the implementation of classical genetic algorithms. The algorithm is hybridized by including a hill climbing procedure which significantly improves the efficiency of the evolution. Moreover, it makes use of problem specific information to evade some computational costs and to reinforce favorable aspects of the genetic search at some appropriate points. The experimental results show that the hybrid genetic a...
Genetic algorithms, a stochastic evolutionary computing technique, have demonstrated a capacity for ...
Optimizing Boggle boards: An evaluation of parallelizable techniques i This paper’s objective is to ...
Abstract:- Meta-heuristics like evolutionary algorithms require extensive numerical experiments to a...
We present a new approach to balancing the workload in a multicomputer when the problem is decompose...
We present a new approach to balancing the work-load in a multicomputer when the problem is de-compo...
Efficient use of resources in a parallel machine often requires the redistribution of tasks during t...
A new coarse grain parallel genetic algorithm (PGA) and a new implementation of a data-parallel GA a...
Three physical optimization methods are considered in this paper for load balancing parallel computa...
With the increasing use of computers in research contributions, added requirement for faster process...
This paper focuses on solving unrelated parallel machine scheduling with resource constraints (UPMR)...
AbstractLoad balancing is a very important and complex problem in computational grids. A computation...
We present three genetic algorithms (GAs) for allocating irregular data sets to multiprocessors. The...
Abstract- Load balancing is a crucial issue in parallel and distributed systems to ensure fast proc...
This is the author's version of the work. It is posted here by permission for personal use, not for...
Load balancing is an efficient mechanism to distribute loads over cloud resources in a way that maxi...
Genetic algorithms, a stochastic evolutionary computing technique, have demonstrated a capacity for ...
Optimizing Boggle boards: An evaluation of parallelizable techniques i This paper’s objective is to ...
Abstract:- Meta-heuristics like evolutionary algorithms require extensive numerical experiments to a...
We present a new approach to balancing the workload in a multicomputer when the problem is decompose...
We present a new approach to balancing the work-load in a multicomputer when the problem is de-compo...
Efficient use of resources in a parallel machine often requires the redistribution of tasks during t...
A new coarse grain parallel genetic algorithm (PGA) and a new implementation of a data-parallel GA a...
Three physical optimization methods are considered in this paper for load balancing parallel computa...
With the increasing use of computers in research contributions, added requirement for faster process...
This paper focuses on solving unrelated parallel machine scheduling with resource constraints (UPMR)...
AbstractLoad balancing is a very important and complex problem in computational grids. A computation...
We present three genetic algorithms (GAs) for allocating irregular data sets to multiprocessors. The...
Abstract- Load balancing is a crucial issue in parallel and distributed systems to ensure fast proc...
This is the author's version of the work. It is posted here by permission for personal use, not for...
Load balancing is an efficient mechanism to distribute loads over cloud resources in a way that maxi...
Genetic algorithms, a stochastic evolutionary computing technique, have demonstrated a capacity for ...
Optimizing Boggle boards: An evaluation of parallelizable techniques i This paper’s objective is to ...
Abstract:- Meta-heuristics like evolutionary algorithms require extensive numerical experiments to a...