In this paper, we make a first assessment of the performance of ActoDatA, a novel actor-based software library for distributed data analysis and machine learning in Java that we have recently developed. To do so we have implemented an evolutionary machine learning application based on a distributed island model. The model implementation is compared to an equivalent implementation in ECJ, a popular general-purpose evolutionary computation library that provides support for distributed computing. The testbed used for comparing the two distributed versions has been an application of Sub-machine code Genetic Programming to the design of efficient low-resolution binary image classifiers. The results we have obtained show that the ActoDatA impleme...
textabstractBig Data management is an important topic of research not only in Computer Science, but ...
International audienceIsland Model parallel genetic algorithms rely on various mi- gration models an...
Implementation of machine learning algorithms in a distributed environment ensures us multiple advan...
The increasing complexity of real-world optimization problems raises new challenges to evolutionary ...
Theme of this thesis is practical realization of so-called Island model which is one of way of paral...
Distributed Genetic Algorithm (DGA) is one of the most promising choices among the optimization meth...
We proposed a distributed approach for parallelising Genetic Programming on the Internet. The approa...
This paper presents a distributed approach to parallelise Genetic Programming on the Internet. The m...
This paper explores the scalability and performance of pool and island based evolutionary algorithms...
Abstract—In this article, we evaluate the applicability of Genetic Programming (GP) for the evolutio...
Abstract. We develop a framework for parallel computation of the op-timal rough set decision reducts...
Abstract. We present an island model that uses different representations in each island. The model t...
Abstract—Classifying the endgame positions in Chess can be challenging for humans and is known to be...
The aim of this work is distributed genetic algorithm implementation (so called island algorithm) to...
The work deals with heterogeneous island models. The work designs and implements a new island model ...
textabstractBig Data management is an important topic of research not only in Computer Science, but ...
International audienceIsland Model parallel genetic algorithms rely on various mi- gration models an...
Implementation of machine learning algorithms in a distributed environment ensures us multiple advan...
The increasing complexity of real-world optimization problems raises new challenges to evolutionary ...
Theme of this thesis is practical realization of so-called Island model which is one of way of paral...
Distributed Genetic Algorithm (DGA) is one of the most promising choices among the optimization meth...
We proposed a distributed approach for parallelising Genetic Programming on the Internet. The approa...
This paper presents a distributed approach to parallelise Genetic Programming on the Internet. The m...
This paper explores the scalability and performance of pool and island based evolutionary algorithms...
Abstract—In this article, we evaluate the applicability of Genetic Programming (GP) for the evolutio...
Abstract. We develop a framework for parallel computation of the op-timal rough set decision reducts...
Abstract. We present an island model that uses different representations in each island. The model t...
Abstract—Classifying the endgame positions in Chess can be challenging for humans and is known to be...
The aim of this work is distributed genetic algorithm implementation (so called island algorithm) to...
The work deals with heterogeneous island models. The work designs and implements a new island model ...
textabstractBig Data management is an important topic of research not only in Computer Science, but ...
International audienceIsland Model parallel genetic algorithms rely on various mi- gration models an...
Implementation of machine learning algorithms in a distributed environment ensures us multiple advan...