Journal of Engineering and Applied Sciences

Year: 2018
Volume: 13
Issue: 2
Page No. 314 - 320

Parallel Self-Organizing Map using MapReduce in GPUs Environment

Authors : Faeez Abd Rashid, Noor Elaiza Abd Khalid, Muhammad Firdaus Mustapha and Mazani Manaf

References

Chen, C.L.P. and C.Y. Zhang, 2014. Data-intensive applications, challenges, techniques and technologies: A survey on big data. Inform. Sci., 275: 314-347.
CrossRef  |  Direct Link  |  

Dean, J. and S. Ghemawat, 2008. MapReduce: Simplified data processing on large clusters. Commun. ACM, 51: 107-113.
CrossRef  |  

Elteir, M., H. Lin and W.C. Feng, 2010. Enhancing mapreduce via asynchronous data processing. Proceedings of the 2010 IEEE 16th International Conference on Parallel and Distributed Systems (ICPADS), December 8-10, 2010, IEEE, New York, USA., ISBN:978-1-4244-9727-0, pp: 397-405.

Feizi-Derakhshi, M.R. and E. Zafarani, 2012. Review and comparison between clustering algorithms with duplicate entities detection purpose. Intl. J. Comput. Sci. Emerging Technol., 3: 108-114.
Direct Link  |  

Gajdos, P. and J. Platos, 2013. GPU based parallelism for self-organizing map. Proceedings of the 3rd International Conference on Intelligent Human Computer Interaction (IHCI 2011), Volume 179, Prague, Czech Republic, August, 2011, Springer-Verlag, Berlin, Heidelberg, pp: 231-242.

Gogoglou, A., A. Sidiropoulos, D. Katsaros and Y. Manolopoulos, 2016. A scientists impact over time: The predictive power of clustering with peers. Proceedings of the 20th International Symposium on Database Engineering and Applications, July 11-13, 2016, ACM, Montreal, Quebec, Canada, ISBN:978-1-4503-4118-9, pp: 334-339.

Kirk, D.B. and W.W. Hwu, 2013. Programming Massively Parallel Processors: A Hands-on Approach. 2nd Edn., Elsevier, New York, ISBN: 978-0-12-381472-2, Pages: 514.

Klockner, A., N. Pinto, Y. Lee, B. Catanzaro and P. Ivanov et al., 2012. PyCUDA and PyOpenCL: A scripting-based approach to GPU run-time code generation. Parallel Comput., 38: 157-174.
Direct Link  |  

Kohonen, T., 2013. Essentials of the self-organizing map. Neural Netw., 37: 52-65.
CrossRef  |  Direct Link  |  

Lachmair, J., E. Merenyi, M. Porrmann and U. Ruckert, 2013. A reconfigurable neuroprocessor for self-organizing feature maps. Neurocomputing, 112: 189-199.
CrossRef  |  Direct Link  |  

Moraes, F.C., S.C. Botelho, N.D. Filho and J.F.O. Gaya, 2012. Parallel high dimensional self organizing maps using CUDA. Proceedings of the 2012 Symposium on Robotics and Latin American Robotics (SBR-LARS), October 16-19, 2012, IEEE, Rio Grande, Brazil, ISBN:978-1-4673-4650-4, pp: 302-306.

Nvidia, 2017. GPU accelerated computing with python. Nvidia, Santa Clara, California. https://developer.nvidia.com/how-to-cuda-python

Perelygin, K., S. Lam and X. Wu, 2014. Graphics processing units and open computing language for parallel computing. Comput. Electr. Eng., 40: 241-251.
CrossRef  |  Direct Link  |  

Wittek, P. and S. Daranyi, 2013. Accelerating text mining workloads in a map reduce-based distributed GPU environment. J. Parallel Distrib. Comput., 73: 198-206.
CrossRef  |  Direct Link  |  

Design and power by Medwell Web Development Team. © Medwell Publishing 2024 All Rights Reserved