textabstractThe importance and potential of Gray-Box Optimization (GBO) with evolutionary algorithms is becoming increasingly clear lately, both for benchmark and real-world problems. We consider the GBO setting where partial evaluations are possible, meaning that sub-functions of the evaluation function are known and can be exploited to improve optimization efficiency. In this paper, we show that the efficiency of GBO can be greatly improved through large-scale parallelism, exploiting the fact that each evaluation function requires the calculation of a number of independent sub-functions. This is especially interesting for real-world problems where often the majority of the computational effort is spent on the evaluation function. Moreover...
Many black-box optimization problems rely on simulations to evaluate the quality of candidate soluti...
Many black-box optimization problems rely on simulations to evaluate the quality of candidate soluti...
In this paper we address the physical parallelization of a very efficient genetic algorithm (GA) kno...
The importance and potential of Gray-Box Optimization (GBO) with evolutionary algorithms is becoming...
In a Gray-Box Optimization (GBO) setting that allows for partial evaluations, the fitness of an indi...
Optimizing Boggle boards: An evaluation of parallelizable techniques i This paper’s objective is to ...
The paper presents an analysis of the use of optimization algorithms in parallel solutions and distr...
It is known that to achieve efficient scalability of an Evolutionary Algorithm (EA), dependencies (a...
We present a general method for analyzing the runtime of parallel evolutionary algorithms with spati...
It is known that to achieve efficient scalability of an Evolutionary Algorithm (EA), dependencies (a...
In this research, we have implemented a parallel EP on consumer-level graphics processing units and ...
The gray code optimization (GCO) algorithm is a deterministic global optimization algorithm based on...
'Evolutionary algorithms' is the collective name for a group of relatively new stochastic search alg...
Evolutionary algorithms are often used for hard optimization problems. Solving time of this problems...
Graphical Processing Units stand for the success of Artificial Neural Networks over the past decade ...
Many black-box optimization problems rely on simulations to evaluate the quality of candidate soluti...
Many black-box optimization problems rely on simulations to evaluate the quality of candidate soluti...
In this paper we address the physical parallelization of a very efficient genetic algorithm (GA) kno...
The importance and potential of Gray-Box Optimization (GBO) with evolutionary algorithms is becoming...
In a Gray-Box Optimization (GBO) setting that allows for partial evaluations, the fitness of an indi...
Optimizing Boggle boards: An evaluation of parallelizable techniques i This paper’s objective is to ...
The paper presents an analysis of the use of optimization algorithms in parallel solutions and distr...
It is known that to achieve efficient scalability of an Evolutionary Algorithm (EA), dependencies (a...
We present a general method for analyzing the runtime of parallel evolutionary algorithms with spati...
It is known that to achieve efficient scalability of an Evolutionary Algorithm (EA), dependencies (a...
In this research, we have implemented a parallel EP on consumer-level graphics processing units and ...
The gray code optimization (GCO) algorithm is a deterministic global optimization algorithm based on...
'Evolutionary algorithms' is the collective name for a group of relatively new stochastic search alg...
Evolutionary algorithms are often used for hard optimization problems. Solving time of this problems...
Graphical Processing Units stand for the success of Artificial Neural Networks over the past decade ...
Many black-box optimization problems rely on simulations to evaluate the quality of candidate soluti...
Many black-box optimization problems rely on simulations to evaluate the quality of candidate soluti...
In this paper we address the physical parallelization of a very efficient genetic algorithm (GA) kno...