Objectif The proposed research is focused on the software library development for parallel neural networks training on computational Grids. The main scientific reason of the proposed research is to develop enhanced parallel neural network training algorithms which provide better parallelization efficiency on heterogeneous computational Grids in the contrast to existing algorithms. The objectives of the proposed research are: 1. to adapt the computational cost model of parallel neural network training algorithms within single pattern, batch pattern and modular approaches to heterogeneous computational Grid resources of host institution; 2. to develop enhanced single pattern and batch pattern parallel neural network training algorithms based on improved communication and barrier functions; 3. to develop a method of automatic matching of parallelization strategy to architecture of appropriate parallel computing system; 4. to develop parallel Grid-aware library for neural networks training capable to use heterogeneous computational resources; 5. to test experimentally parallel Grid-aware library for neural networks training on heterogeneous computational Grid system of host institution within the tasks of one of its active projects; 6. to deploy parallel Grid-aware library for neural networks training on the computational Grid of return host; 7. to test experimentally parallel Grid-aware library on computational systems of both host institution and return host. The cost models of the algorithms will be developed using computational complexity approaches, improved barrier and reducing function will be adapted to neural network parallelization schemes, optimization strategies will be used to find best matching “architecture of parallel system – neural network parallelization scheme”, software library will be implemented on C programming language and MPI parallelization, the efficiency of parallel algorithm will be assessed in comparison with sequential implementation. Champ scientifique natural sciencescomputer and information sciencessoftwarenatural sciencescomputer and information sciencesartificial intelligencecomputational intelligence Programme(s) FP7-PEOPLE - Specific programme "People" implementing the Seventh Framework Programme of the European Community for research, technological development and demonstration activities (2007 to 2013) Thème(s) PEOPLE-2007-4-2.IIF - Marie Curie Action: "International Incoming Fellowships" Appel à propositions FP7-PEOPLE-2007-4-2-IIF Voir d’autres projets de cet appel Régime de financement MC-IIFR - International incoming fellowships (Return phase) Coordinateur Ternopil National Economic University Contribution de l’UE € 15 000,00 Adresse 11, Lvivska str 46020 Ternopil Ukraine Voir sur la carte Type d’activité Higher or Secondary Education Establishments Contact administratif Anatoly Sachenko (Prof.) Liens Contacter l’organisation Opens in new window Site web Opens in new window Coût total Aucune donnée