Author : N.Krishnaveni 1
Date of Publication :25th April 2018
Abstract: Load balancer using Genetic Algorithm plays a crucial role in the performance of Intercloud platform. Resource allocation needs accurate and thoughtful precision in performance, as incoming applications could be impatient and erratic, resources will be limited and time constraint will be steep. Establishing trade off between demand and supply using available resources is tough. As the rate of arrival of application is sporadic, deadlines are stern and resources are restricted in Intercloud, it calls for an efficient resource allocation algorithm. Genetic Algorithm-based resource allocation shows better result than traditionally used FIFO. Decision variables considered are making span time and throughput.
Reference :
-
- S. Javanmardi, M. Shojafar, D. Amendola, N. Cordeschi, H. Liu, and A. Abraham, “Hybrid job scheduling algorithm for cloud computing environment,” in Proceedings of the Fifth International Conference on Innovations in
- Bio-Inspired Computing and Applications IBICA, pp. 43–52, Springer, 2014.
- H. Liu, C.-Z. Xu, H. Jin, J. Gong, and X. Liao, “Performance and energy modeling for live migration of virtual machines,” in Proceedings of the 20th international symposium on High performance distributed computing, pp. 171–182, ACM, 2011
- S. Chen, J. Wu, and Z. Lu, “A cloud computing resource scheduling policy based on genetic algorithm with multiple fitness,” in IEEE 12th International Conference on Computer and Information Technology (CIT), pp. 177–184, IEEE, 2012.
- N. A. Mehdi, A. Mamat, H. Ibrahim, and S. K. Subramaniam, “Impatient task mapping in elastic cloud using genetic algorithm,” Journal of Computer Science, vol. 7, no. 6, pp. 877–883, 2011.
- K. Dasgupta, B. Mandal, P. Dutta, J. K. Mandal, and S. Dam, “A genetic algorithm (ga) based load balancing strategy for cloud computing,” Procedia Technology, vol. 10, pp. 340–347, 2013.
- P. Chand and J. R. Mohanty, “Multi objective genetic approach for solving vehicle routing problem with time window,” in Trends in Computer Science, Engineering and Information Technology, pp. 336–343, Springer, 2011.
- P. Chand and J. R. Mohanty, “Environmental multi objective uncertain transport trail model using variant of predator prey evolutionary strategy,” International Journal of Applied Decision Sciences, vol. 8, no. 1, pp. 21–51, 2014
- S. A. Hamad and F. A. Omara, “Genetic-based task scheduling algorithm in cloud computing environment,” International Journal of advanced Computer science and applications, vol. 7, no. 4, pp. 550–556, 2016.
- T. T. Tejaswi, M. Azharuddin, and P. K. Jana, “A ga based approach for task scheduling in multi-cloud environment,” Journal of Supercomputing, Springer, 2015.