Personnel
Overall Objectives
Research Program
Application Domains
Highlights of the Year
New Software and Platforms
New Results
Bilateral Contracts and Grants with Industry
Partnerships and Cooperations
Dissemination
Bibliography
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Section: New Results

Large scale GPU-centric optimization

Participants: J. Gmys, M. Gobert and N. Melab

This contribution is a joint work with M. Mezmaz and D. Tuyttens from University of Mons (UMONS), and T. C. Pessoa and F. H. De Carvalho Junior from Universidade Federal Do Cearà (UFC), Brazil. N. Melab and M. Mezmaz have been the guest editors [7] of a special issue in the CCPE journal on this topic.

Nowadays, accelerator-centric architectures offer orders-of-magnitude performance and energy improvements. The interest of those parallel resources has been recently accentuated by the advent of deep learning making them definitely key-building blocks of modern supercomputers. During the year 2017, the focus has been put on the investigation of these specific devices within the context of parallel optimization. In the following, two major contributions are reported: (1) massively parallel GPU-centric tree-based optimization for solving to optimality big permutation optimization problems; (2) Cuda Dynamic Parallelism (CDP) for backtracking. Another contribution  [2] on the parallel solving of permutation (flow-shop) problems is proposed but not presented here.