ParadisEO-MO-GPU: a framework for parallel GPU-based local search metaheuristics

In this paper, we propose a pioneering framework called ParadisEO-MO-GPU for the reusable design and implementation of parallel local search metaheuristics (S- Metaheuristics)on Graphics Processing Units (GPU). We revisit the ParadisEO-MO software framework to allow its utilization on GPU accelerators focusing on the parallel iteration-level model, the major parallel model for S- Metaheuristics. It consists in the parallel exploration of the neighborhood of a problem solution. The challenge is on the one hand to rethink the design and implementation of this model optimizing the data transfer between the CPU and the GPU. On the other hand, the objective is to make the GPU as transparent as possible for the user minimizing his or her involvement in its management. In this paper, we propose solutions to this challenge as an extension of the ParadisEO framework. The first release of the new GPU-based ParadisEO framework has been experimented on the permuted perceptron problem. The preliminary results are convincing, both in terms of flexibility and easiness of reuse at implementation, and in terms of efficiency at execution on GPU.

[1]  El-Ghazali Talbi,et al.  Grid computing for parallel bioinspired algorithms , 2006, J. Parallel Distributed Comput..

[2]  Fred W. Glover,et al.  A cooperative parallel tabu search algorithm for the quadratic assignment problem , 2009, Eur. J. Oper. Res..

[3]  Jadranka Skorin-Kapov,et al.  Massively parallel tabu search for the quadratic assignment problem , 1993, Ann. Oper. Res..

[4]  El-Ghazali Talbi,et al.  Building a Virtual Globus Grid in a Reconfigurable Environment - A case study: Grid5000 , 2007 .

[5]  El-Ghazali Talbi,et al.  Parallel hybrid evolutionary algorithms on GPU , 2010, IEEE Congress on Evolutionary Computation.

[6]  El-Ghazali Talbi,et al.  Local Search Algorithms on Graphics Processing Units. A Case Study: The Permutation Perceptron Problem , 2010, EvoCOP.

[7]  Kevin Skadron,et al.  Scalable parallel programming , 2008, 2008 IEEE Hot Chips 20 Symposium (HCS).

[8]  David Pointcheval,et al.  A New Identification Scheme Based on the Perceptrons Problem , 1995, EUROCRYPT.

[9]  El-Ghazali Talbi,et al.  A Comparative Study of Parallel Metaheuristics for Protein Structure Prediction on the Computational Grid , 2007, 2007 IEEE International Parallel and Distributed Processing Symposium.

[10]  Éric D. Taillard,et al.  Robust taboo search for the quadratic assignment problem , 1991, Parallel Comput..

[11]  El-Ghazali Talbi,et al.  ParadisEO: A Framework for the Reusable Design of Parallel and Distributed Metaheuristics , 2004, J. Heuristics.

[12]  Fatos Xhafa,et al.  Parallel skeletons for tabu search method , 2001, Proceedings. Eighth International Conference on Parallel and Distributed Systems. ICPADS 2001.

[13]  Michel Gendreau,et al.  Parallel asynchronous tabu search for multicommodity location-allocation with balancing requirements , 1996, Ann. Oper. Res..

[14]  El-Ghazali Talbi,et al.  Neighborhood Structures for GPU-Based Local Search Algorithms , 2010, Parallel Process. Lett..

[15]  Dushyant Sharma,et al.  A Very Large-Scale Neighborhood Search Algorithm for the Combined Through and Fleet Assignment Model , 2002 .