AbstractMetaheuristics is a class of approximate methods based on heuristics that can effectively handle real world (usually NP-hard) problems of high-dimensionality with multiple objectives. An existing multi-objective Tabu-Search (MOTS2) has been re-designed by and ported onto Compute Unified Device Architecture (CUDA) so as to effectively deal with a scalable multi-objective problem with a range of decision variables. The high computational cost due to the problem complexity is addressed by employing Graphics Processing Units (GPUs), which alleviate the computational intensity. The main challenges of the re-implementation are the effective communication with the GPU and the transparent integration with the optimization procedures. Finall...
An emerging trend in processor architecture seems to indicate the doubling of the number of cores pe...
Metaheuristics have been showing interesting results in solving hard optimization problems. However,...
Abstract:- Decision making for complex systems is based on multi-criterion-optimization. A decision ...
Metaheuristics is a class of approximate methods based on heuristics that can effectively handle rea...
The introduction of NVidia's powerful Tesla GPU hardware and Compute Unified Device Architecture (CU...
In this paper we observe the possibility to accelerate a search algorithm for multiobjective optimiz...
There are many combinatorial optimization problems such as traveling salesman problem, quadratic-ass...
This paper presents a new approach for parallel tabu search based on adaptive parallelism. Adaptive ...
International audienceThe quadratic 3-dimensional assignment problem (Q3AP) is an extension of the w...
International audienceIn practice, combinatorial optimization problems are complex and computational...
It is well known that the numerical solution of evolutionary systems and problems based on topologic...
Nowadays Personal Computers (PCs) are often equipped with powerful, multi-core CPU. However, the pro...
International audienceMultiobjective local search algorithms are efficient methods to solve complex ...
This work presents a parallel implementation of density-based topology optimization using distribute...
International audienceIn practice, combinatorial optimization problems are complex and computational...
An emerging trend in processor architecture seems to indicate the doubling of the number of cores pe...
Metaheuristics have been showing interesting results in solving hard optimization problems. However,...
Abstract:- Decision making for complex systems is based on multi-criterion-optimization. A decision ...
Metaheuristics is a class of approximate methods based on heuristics that can effectively handle rea...
The introduction of NVidia's powerful Tesla GPU hardware and Compute Unified Device Architecture (CU...
In this paper we observe the possibility to accelerate a search algorithm for multiobjective optimiz...
There are many combinatorial optimization problems such as traveling salesman problem, quadratic-ass...
This paper presents a new approach for parallel tabu search based on adaptive parallelism. Adaptive ...
International audienceThe quadratic 3-dimensional assignment problem (Q3AP) is an extension of the w...
International audienceIn practice, combinatorial optimization problems are complex and computational...
It is well known that the numerical solution of evolutionary systems and problems based on topologic...
Nowadays Personal Computers (PCs) are often equipped with powerful, multi-core CPU. However, the pro...
International audienceMultiobjective local search algorithms are efficient methods to solve complex ...
This work presents a parallel implementation of density-based topology optimization using distribute...
International audienceIn practice, combinatorial optimization problems are complex and computational...
An emerging trend in processor architecture seems to indicate the doubling of the number of cores pe...
Metaheuristics have been showing interesting results in solving hard optimization problems. However,...
Abstract:- Decision making for complex systems is based on multi-criterion-optimization. A decision ...