Genetic algorithms are frequently used to solve optimization problems. However, the problems become increasingly complex and time consuming. One solution to speed up the genetic algorithm processing is to use parallelization. The proposed parallelization method is coarse-grained and employs two levels of parallelization: message passing with MPI and Single Instruction Multiple Threads with GPU. Experimental results show that the accuracy of the proposed approach is similar to the sequential genetic algorithm. Parallelization with coarse-grained method, however, can improve the processing and convergence speed of genetic algorithms
Abstract- In this paper we propose the implementation of a massively parallel GP model in hardware i...
Genetic programming (GP) is a machine learning technique that is based on the evolution of computer ...
Genetic Algorithms (GAs) is proven to be effective in solving many optimization tasks. GAs is one of...
Genetic algorithms are frequently used to solve optimization problems. However, the problems become ...
Although solutions to many problems can be found using direct analytical methods such as those calcu...
Many optimization problems have complex search space, which either increase the solving problem time...
A new coarse grain parallel genetic algorithm (PGA) and a new implementation of a data-parallel GA a...
Genetic algorithms (GAs) are powerful solutions to optimization problems arising from manufacturing ...
Genetic algorithms, a stochastic evolutionary computing technique, have demonstrated a capacity for ...
153 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1999.Parallel implementations of g...
Genetic Algorithms (GAs) have been implemented on a number of multiprocessor machines. In many cases...
The main goal of this paper is to summarize the previous research on parallel genetic algorithms. We...
Most real-life data analysis problems are difficult to solve using exact methods, due to the size of...
As genetic algorithms (GAs) are used to solve harder problems, it is becoming necessary to use bette...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our mo-tiva...
Abstract- In this paper we propose the implementation of a massively parallel GP model in hardware i...
Genetic programming (GP) is a machine learning technique that is based on the evolution of computer ...
Genetic Algorithms (GAs) is proven to be effective in solving many optimization tasks. GAs is one of...
Genetic algorithms are frequently used to solve optimization problems. However, the problems become ...
Although solutions to many problems can be found using direct analytical methods such as those calcu...
Many optimization problems have complex search space, which either increase the solving problem time...
A new coarse grain parallel genetic algorithm (PGA) and a new implementation of a data-parallel GA a...
Genetic algorithms (GAs) are powerful solutions to optimization problems arising from manufacturing ...
Genetic algorithms, a stochastic evolutionary computing technique, have demonstrated a capacity for ...
153 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1999.Parallel implementations of g...
Genetic Algorithms (GAs) have been implemented on a number of multiprocessor machines. In many cases...
The main goal of this paper is to summarize the previous research on parallel genetic algorithms. We...
Most real-life data analysis problems are difficult to solve using exact methods, due to the size of...
As genetic algorithms (GAs) are used to solve harder problems, it is becoming necessary to use bette...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our mo-tiva...
Abstract- In this paper we propose the implementation of a massively parallel GP model in hardware i...
Genetic programming (GP) is a machine learning technique that is based on the evolution of computer ...
Genetic Algorithms (GAs) is proven to be effective in solving many optimization tasks. GAs is one of...