International audienceIn this paper, we propose a pioneering framework called ParadisEO-MO-GPU for the reusable design and implementation of parallel local search metaheuristics (S- Metaheuristics) on Graphics Processing Units (GPU). We revisit the ParadisEO-MO software framework to allow its utilization on GPU accelerators focusing on the parallel iteration-level model, the major parallel model for S- Metaheuristics. It consists in the parallel exploration of the neighborhood of a problem solution. The challenge is on the one hand to rethink the design and implementation of this model optimizing the data transfer between the CPU and the GPU. On the other hand, the objective is to make the GPU as transparent as possible for the user minimiz...
International audienceLocal search algorithms are powerful heuristics for solving computationally ha...
Abstract. Local search is a successful approach for solving combina-torial optimization and constrai...
Constraint satisfaction and combinatorial optimization problems, even when modeled with efficient m...
International audienceThis paper is a major step towards a pioneering software framework for the reu...
In this paper, we propose a pioneering framework called ParadisEO-MO-GPU for the reusable design and...
The original publication is available at www.springerlink.comInternational audienceParaDisEO is a fr...
Metaheuristics have been showing interesting results in solving hard optimization problems. However,...
In this paper, we present the ParadisEO white-box object-oriented framework dedicated to the reusabl...
This document presents a general-purpose software framework dedicated to the design, the analysis an...
Fecha de lectura de Tesis Doctoral 14 mayo 2020Green parallel metaheuristics (GPM) is a new concept ...
International audienceMultiobjective local search algorithms are efficient methods to solve complex ...
International audienceIn practice, combinatorial optimization problems are complex and computational...
International audienceOver the last years, interest in hybrid metaheuristics has risen considerably ...
International audienceIn practice, combinatorial optimization problems are complex and computational...
Abstract. Local search is a successful approach for solving combina-torial optimization and constrai...
International audienceLocal search algorithms are powerful heuristics for solving computationally ha...
Abstract. Local search is a successful approach for solving combina-torial optimization and constrai...
Constraint satisfaction and combinatorial optimization problems, even when modeled with efficient m...
International audienceThis paper is a major step towards a pioneering software framework for the reu...
In this paper, we propose a pioneering framework called ParadisEO-MO-GPU for the reusable design and...
The original publication is available at www.springerlink.comInternational audienceParaDisEO is a fr...
Metaheuristics have been showing interesting results in solving hard optimization problems. However,...
In this paper, we present the ParadisEO white-box object-oriented framework dedicated to the reusabl...
This document presents a general-purpose software framework dedicated to the design, the analysis an...
Fecha de lectura de Tesis Doctoral 14 mayo 2020Green parallel metaheuristics (GPM) is a new concept ...
International audienceMultiobjective local search algorithms are efficient methods to solve complex ...
International audienceIn practice, combinatorial optimization problems are complex and computational...
International audienceOver the last years, interest in hybrid metaheuristics has risen considerably ...
International audienceIn practice, combinatorial optimization problems are complex and computational...
Abstract. Local search is a successful approach for solving combina-torial optimization and constrai...
International audienceLocal search algorithms are powerful heuristics for solving computationally ha...
Abstract. Local search is a successful approach for solving combina-torial optimization and constrai...
Constraint satisfaction and combinatorial optimization problems, even when modeled with efficient m...