Optimized Load Balancing Strategy In Cloud Computing : A Review

Authors

  • Parveen Kaur Research Scholar, SBSSTC, Ferozepur
  • Monika Sachdeva Associate Professor, SBSSTC, Ferozepur

DOI:

https://doi.org/10.24297/ijct.v15i4.6932

Keywords:

Cloud Computing, Load Balancing, VM, Host, Datacenter, ESCE, Throttled

Abstract

Now a days every organization is migrating towards  cloud computing as cloud computing is considered being more flexible and scalable as compared to other technologies. The technology simply means to provide the computing resources and services through a network. This paper discusses the existing approaches for scheduling algorithms that can maintain the load balancing and provides better improved strategies through efficient job scheduling and modified resource allocation techniques. The load can be CPU load, memory capacity, delay or network load. Load balancing is the process of distributing the load among various nodes of a distributed system to improve both resource utilization and job response time while also avoiding a situation where some of the nodes are heavily loaded while other nodes are idle or doing very little work. Load balancing ensures that all the processor in the system or every node in the network does approximately the equal amount of work at any instant of time. 

Downloads

Download data is not yet available.

Author Biography

Monika Sachdeva, Associate Professor, SBSSTC, Ferozepur

Department of Computer Science Engineering

References

[1] Wu, H.-S., Wang, C.-J., and Xie, J.-Y. (2013a). Terascaler elb-an algorithm of predictionbased elastic load balancing resource management in cloud computing. In Advanced Information Networking and Applications Workshops (WAINA), 2013 27th International Conference on, pages 649-654. IEEE.
[2] Wu, X., Deng, M., Zhang, R., Zeng, B., and Zhou, S. (2013b). A task scheduling algorithm based on qos-driven in cloud computing. Procedia Computer Science, 17:1162-1169.
[3] Sharma, A. and Peddoju, S. K. (2014). Response time based load balancing in cloud computing. In Control, Instrumentation, Communication and Computational Technologies (ICCICCT), 2014 International Conference on, pages 1287-1293. IEEE.
[4] Ren, H., Lan, Y., and Yin, C. (2012). The load balancing algorithm in cloud computing environment. In Computer Science and Network Technology (ICCSNT), 2012 2nd International Conference on, pages 925-928. IEEE.
[5] Raju, R., Amudhavel, J., Kannan, N., and Monisha, M. (2014). A bio inspired energy-aware multi objective chiropteran algorithm (eamoca) for hybrid cloud computing environment. In Green Computing Communication and Electrical Engineering (ICGCCEE), 2014 International Conference on, pages 1-5. IEEE.
[6] Mesbahi, M., Rahmani, A. M., and Chronopoulos, A. T. (2014). Cloud light weight: A new solution for load balancing in cloud computing. In Data Science & Engineering (ICDSE), 2014 International Conference on, pages 44-50. IEEE.
[7] Domanal, S. G. and Reddy, G. R. M. (2013). Load balancing in cloud computingusing modified throttled algorithm In Cloud Computing in Emerging Markets (CCEM), 2013 IEEE International Conference on, pages 1-5. IEEE.
[8] Domanal, S. G. and Reddy, G. R. M. (2014). Optimal load balancing in cloud computing by efficient utilization of virtual machines. In Communication Systems and Networks (COMSNETS), 2014 Sixth International Conference on, pages 1-4. IEEE.
[9] Delavar, A. G. and Aryan, Y. (2014). Hsga: a hybrid heuristic algorithm for work flow scheduling in cloud systems. Cluster computing, 17(1):129-137.

Downloads

Published

2016-02-23

How to Cite

Kaur, P., & Sachdeva, M. (2016). Optimized Load Balancing Strategy In Cloud Computing : A Review. INTERNATIONAL JOURNAL OF COMPUTERS &Amp; TECHNOLOGY, 15(4), 6681–6685. https://doi.org/10.24297/ijct.v15i4.6932

Issue

Section

Research Articles