International audienceMaster-slave parallelization of Evolutionary Algorithms (EAs) is straightforward, by distributing all fitness computations to slaves. The benefits of asynchronous steady state approaches are well-known when facing a possible heterogeneity among the evaluation costs in term of runtime, be they due to heterogeneous hardware or non-linear numerical simulations. However, when this heterogeneity depends on some characteristics of the individuals being evaluated, the search might be biased, and some regions of the search space poorly explored. Motivated by a real-world case study of multi-objective optimization problem the optimization of the combustion in a Diesel Engine the consequences of different components of heterogen...
Currently there exist various cost-assignment schemes that perform the necessary scalarization of th...
Distributed computing environments are nowadays composed of many heterogeneous computers able to wor...
Optimization problems in practice often involve the simultaneous optimization of 2 or more conflicti...
International audienceMaster-slave parallelization of Evolutionary Algorithms (EAs) is straightforwa...
International audienceParallel master-slave evolutionary algorithms easily lead to linear speed-ups ...
Many important problem classes lead to large variations in fitness evaluation times, such as is ofte...
In the last two decades, multi-objective evolutionary algorithms (MOEAs) have become ever more used ...
The objective of this dissertation is to develop a multi-resolution optimization strategy based on t...
Avec la sévérisation des réglementations environnementales sur les émissions polluantes (normes Euro...
The run-Time of evolutionary algorithms (EAs) is typically dominated by fitness evaluation. This is ...
Evolutionary algorithms (EAs) are stochastic optimization techniques based on the principles of natu...
International audienceThis paper describes a unified view of parallel evolutionary algorithms for mu...
Despite all the appealing features of Evolutionary Algorithms (EAs), thousands of calls to the analy...
Abstract: Evolutionary multi-objective optimization (EMO), whose main task is to deal with multi-ob...
Evolutionary Algorithms (EAs) are inherently parallel due to their ability to simultaneously evaluat...
Currently there exist various cost-assignment schemes that perform the necessary scalarization of th...
Distributed computing environments are nowadays composed of many heterogeneous computers able to wor...
Optimization problems in practice often involve the simultaneous optimization of 2 or more conflicti...
International audienceMaster-slave parallelization of Evolutionary Algorithms (EAs) is straightforwa...
International audienceParallel master-slave evolutionary algorithms easily lead to linear speed-ups ...
Many important problem classes lead to large variations in fitness evaluation times, such as is ofte...
In the last two decades, multi-objective evolutionary algorithms (MOEAs) have become ever more used ...
The objective of this dissertation is to develop a multi-resolution optimization strategy based on t...
Avec la sévérisation des réglementations environnementales sur les émissions polluantes (normes Euro...
The run-Time of evolutionary algorithms (EAs) is typically dominated by fitness evaluation. This is ...
Evolutionary algorithms (EAs) are stochastic optimization techniques based on the principles of natu...
International audienceThis paper describes a unified view of parallel evolutionary algorithms for mu...
Despite all the appealing features of Evolutionary Algorithms (EAs), thousands of calls to the analy...
Abstract: Evolutionary multi-objective optimization (EMO), whose main task is to deal with multi-ob...
Evolutionary Algorithms (EAs) are inherently parallel due to their ability to simultaneously evaluat...
Currently there exist various cost-assignment schemes that perform the necessary scalarization of th...
Distributed computing environments are nowadays composed of many heterogeneous computers able to wor...
Optimization problems in practice often involve the simultaneous optimization of 2 or more conflicti...