Parallel B&B Algorithm for Hybrid Multi-core/GPU Architectures

dc.contributor.authorBendjoudi, Ahcène
dc.contributor.authorMehdi, Malika
dc.date.accessioned2013-11-19T12:51:45Z
dc.date.available2013-11-19T12:51:45Z
dc.date.issued2013
dc.description.abstractB&B algorithms are well known techniques for exact solving of combinatorial optimization problems. They perform an implicit enumeration of the search space instead of exhaustive one. Based on a pruning technique, they reduce considerably the computation time required to explore the whole search space. Nevertheless, these algorithms remain inefficient when dealing with large combinatorial optimization instances. They are time-intensive and they require a huge computing power to be solved optimally. Nowadays, multi-core-based processors and GPU accelerators are often coupled together to achieve impressive performances. However, classical B&B algorithms must be rethought to deal with their two divergent architectures. In this paper, we propose a new B&B approach exploiting both the multi-core aspect of actual processors and GPU accelerators. The proposed approaches have been executed to solve FSP instances that are well-known combinatorial optimization benchmarks. Real experiments have been carried out on an Intel Xeon 64-bit quad-core processor E5520 coupled to an Nvidia Tesla C2075 GPU device. The results show that our hybrid B&B approach speeds up the execution time up to x123 over the sequential mono-core B&B algorithm.fr_FR
dc.identifier.isrnCERIST-DTISI/RR--13-000000024--dzfr_FR
dc.identifier.urihttp://dl.cerist.dz/handle/CERIST/230
dc.publisherCERIST
dc.relation.ispartofRapports de recherche internes
dc.relation.ispartofseriesRapports de recherche internes
dc.relation.placeAlger
dc.subjectParallel B&B Algorithmsfr_FR
dc.subjectGPU Computingfr_FR
dc.subjectMulticore Architecturesfr_FR
dc.subjectFlowshop problemfr_FR
dc.titleParallel B&B Algorithm for Hybrid Multi-core/GPU Architecturesfr_FR
dc.typeTechnical Report
Files
Collections