A Study on Load Prediction Methods for Optimal Resource Allocation in the Cloud Environment
|
International Journal of Computer & Organization Trends (IJCOT) | |
© 2017 by IJCOT Journal | ||
Volume - 7 Issue - 4 |
||
Year of Publication : 2017 | ||
Authors : S.Sridevi, Dr. Jeevaa Katiravan |
Citation
S.Sridevi, Dr. Jeevaa Katiravan "A Study on Load Prediction Methods for Optimal Resource Allocation in the Cloud Environment", International Journal of Computer & organization Trends (IJCOT), V7(4):32-36 Jul - Aug 2017, ISSN:2249-2593, www.ijcotjournal.org. Published by Seventh Sense Research Group.
Abstract In the cloud environment, utilization of resources should be scaled-up and scaled-down according to the customer needs. Managing the scalability in the cloud is a critical issue. Scalability can be accomplished by dynamic resource allocation. This dynamic resource allocation based on demand is efficient only on the knowledge of load prediction. Improving the accuracy of load prediction is essential to achieve optimal job scheduling and load balancing for cloud computing. When the load prediction and server reliability is carried out simultaneously, an optimal resource allocation is possible. Various load prediction methods are discussed in this paper.
References
[1] Sheng Di, Derrick Kondo, Walfredo Cirne, “Host Load
Prediction in a Google Compute Cloud with a Bayesian
Model”, SC `12: Proceedings of the International Conference
on High Performance Computing, Networking, Storage and
Analysis, 10-16 Nov. 2012
[2] Rathinapriya Vasu, E.Iniya Nehru, G.Ramakrishnan, “Load
Forecasting for Optimal Resource Allocation in Cloud
Computing Using Neural Method”, Middle-East Journal of
Scientific Research 24, ISSN 1990 – 9233, IDOSI Publications,
2016.
[3] Jian Sun and Yi Zhuang, “The Cloud Computing Load
Forecasting Algorithm Based on Kalman Filter and
ANFIS”, 4th International Conference on Machinery, Materials
and Computing Technology (ICMMCT 2016)
[4] J Rongdong Hu, Jingfei Jiang, Guangming Liu, and Lixin
Wang, “Efficient Resources Provisioning Based on Load
Forecasting in Cloud”, The Scientific World Journal,
Hindawi Publishing Corporation, Vol 2014, Article ID 321231.
[5] Yao Lu, John Panneerselvam, Lu Liu and Yan Wu,
“RVLBPNN: A workload Forecasting Model for Smart
Cloud Computing”, Scientific Programming, Hindawi
Publishing Corporation, Vol 2016, Article ID 5635673.
[6] M.Lavanya and V.Vaithiyanathan, “Load Prediction
Algorithm for Dynamic Resource Allocation”, IJST, Vol
8(35), December, 2015, ISSN (Print): 0974 - 6846.
[7] Babak Esmaeilpour Ghouchani, Azizol Abdullah, Nor Asila
Wati Abdul Hamid, Amir Rizaan Abdul Rahman, “A feedback
based prediction model for real-time workload in a cloud”,
Journal of Theoretical and Applied Information Technology,
Vol 87. No.3, 31st May 2016, ISSN (Print): 1992 - 8645.
Keywords
load prediction, prediction accuracy,
dynamic resource allocation.