International audienceIn practice, combinatorial optimization problems are complex and computationally time-intensive. Local search algorithms are powerful heuristics which allow to significantly reduce the computation time cost of the solution exploration space. In these algorithms, the multi-start model may improve the quality and the robustness of the obtained solutions. However, solving large size and time-intensive optimization problems with this model requires a large amount of computational resources. GPU computing is recently revealed as a powerful way to harness these resources. In this paper, the focus is on the multi-start model for local search algorithms on GPU. We address its re-design, implementation and associated issues rel...
There are many combinatorial optimization problems such as traveling salesman problem, quadratic-ass...
A* search is a fundamental topic in artificial intelligence. Recently, the general purpose computat...
In this paper we observe the possibility to accelerate a search algorithm for multiobjective optimiz...
International audienceIn practice, combinatorial optimization problems are complex and computational...
International audienceIn practice, combinatorial optimization problems are complex and computational...
International audienceMultiobjective local search algorithms are efficient methods to solve complex ...
International audienceLocal search algorithms are powerful heuristics for solving computationally ha...
International audienceLocal search (LS) algorithms are among the most powerful techniques for solvin...
Abstract. Local search is a successful approach for solving combina-torial optimization and constrai...
Abstract. Local search is a successful approach for solving combina-torial optimization and constrai...
International audienceOver the last years, interest in hybrid metaheuristics has risen considerably ...
International audienceThis paper is a major step towards a pioneering software framework for the reu...
International audienceIn this paper, we propose a pioneering framework called ParadisEO-MO-GPU for t...
www.lifl.fr/~luongLocal search algorithms are a class of algorithms to solve complex optimization pr...
Graphics processor units (GPUs) are many-core processors that perform better than central processing...
There are many combinatorial optimization problems such as traveling salesman problem, quadratic-ass...
A* search is a fundamental topic in artificial intelligence. Recently, the general purpose computat...
In this paper we observe the possibility to accelerate a search algorithm for multiobjective optimiz...
International audienceIn practice, combinatorial optimization problems are complex and computational...
International audienceIn practice, combinatorial optimization problems are complex and computational...
International audienceMultiobjective local search algorithms are efficient methods to solve complex ...
International audienceLocal search algorithms are powerful heuristics for solving computationally ha...
International audienceLocal search (LS) algorithms are among the most powerful techniques for solvin...
Abstract. Local search is a successful approach for solving combina-torial optimization and constrai...
Abstract. Local search is a successful approach for solving combina-torial optimization and constrai...
International audienceOver the last years, interest in hybrid metaheuristics has risen considerably ...
International audienceThis paper is a major step towards a pioneering software framework for the reu...
International audienceIn this paper, we propose a pioneering framework called ParadisEO-MO-GPU for t...
www.lifl.fr/~luongLocal search algorithms are a class of algorithms to solve complex optimization pr...
Graphics processor units (GPUs) are many-core processors that perform better than central processing...
There are many combinatorial optimization problems such as traveling salesman problem, quadratic-ass...
A* search is a fundamental topic in artificial intelligence. Recently, the general purpose computat...
In this paper we observe the possibility to accelerate a search algorithm for multiobjective optimiz...