EA Based Approach for Resource Allocation in Cloud Computing

Ritika ., Gantavya Talwar

Abstract


Appealing to the requirement of energy savings, many approaches of energy-efficient locating sensing have been explored. Methods beyond the action of locating are somehow auxiliary, and most of the attentions are focused on locating sensing based methods. A class of lightweight positioning systems has been developed to explore a large part of the energy-accuracy trade-off space. These systems either reduce accuracy requirements, or aggressively use other cues to determine when and where to turn on EA. Implicitly or explicitly, these systems generally make several assumptions about the environment or about user activity. In this research, we proposed an energy efficient cloud based VM in which tasks can be achieved using better SLA and less energy.

References


Mohammed Rashid Chowdhury, Mohammad Raihan Mahmud, Rashedur M Rahman, "Study and Performance Analysis of Various VM Placement Strategies", IEEE SNPD, June 2015,

Chonglin Gu, Pengzhou Shi, Shuai Shi, Hejiao Huang, Xiaohua Jia, "A Tree Regression-Based Approach for VM Power Metering", Special Section On Big Data For Green Communications And Computing, IEEE, June 1, 2015

Zhaoning Zhang, Ziyang Li, Kui Wu, Dongsheng Li, Huiba Li, Yuxing Peng, Xicheng Lu, "VMThunder: Fast Provisioning of Large-Scale Virtual Machine Clusters", IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS, Vol. 25, No. 12, DECEMBER 2014

Jiaxin Li, Dongsheng Li, Yuming Ye, Xicheng Lu, "Efficient Multi-Tenant Virtual Machine Allocation in Cloud Data Centers", TSINGHUA SCIENCE AND TECHNOLOGY, ISSN: 1007-0214, Volume 20, Number 1, February 2015, pp: 81-89

Gursharan Singh, Sunny Behal, Monal Taneja, "Advanced Memory Reusing Mechanism for Virtual Machines in Cloud Computing", 3rd International Conference on Recent Trends in Computing, Vol: 57, 2015, pp: 91-103

Narander Kumar, Swati Saxena, "Migration Performance of Cloud Applications- A Quantitative Analysis", International Conference on Advanced Computing Technologies and Applications, Vol. 45, 2015, pp: 823-831

Aarti Singh, Dimple Juneja, Manisha Malhotra, "Autonomous Agent Based Load Balancing Algorithm in Cloud Computing", International Conference on Advanced Computing Technologies and Applications, Vol: 45, 2015, pp: 832-841

S. Sohrabi, I. Moser, "The Effects of Hotspot Detection and Virtual Machine Migration Policies on Energy Consumption and Service Levels in the Cloud", ICCS, Vol: 51, 2015, pp: 2794-2798

Mohammad Mehedi Hassan, Atif Alamri, "Virtual Machine Resource Allocation for Multimedia Cloud: A Nash Bargaining Approach", International Symposium on Emerging Inter-networks, Communication and Mobility, Vol: 34, 2015, pp: 571-576

Christina Terese Josepha, Chandrasekaran K, Robin Cyriaca, "A Novel Family Genetic Approach for Virtual Machine Allocation", International Conference on Information and Communication Technologies, Vol: 46, 2015

Ankush P. Deshmukh and Prof. Kumarswamy Pamu “Applying Load Balancing: A Dynamic Approach” International Journal of Advanced Research in Computer Science and Software Engineering (IJARCSSE), vol. 2, issue 6, June 2012.

Alam, B. Doja, M.N.; Biswas, R. “Finding Time Quantum of Round Robin CPU Scheduling Algorithm Using Fuzzy Logic” ICCEE 2008, International Conference, December 20-22, 2008.

Ajay Gulati, Ranjeev.K.Chopra “Dynamic Round Robin for Load Balancing in a Cloud Computing” International Journal of Computer Science and Mobile Computing (IJCSMC), vol. 2, issue. 6, June 2013.

Belabbas Yagoubi and Yahya Slimani “Dynamic Load Balancing Strategy for Grid Computing” World Academy of Science, Engineering and Technology 19, 2006.




DOI: https://doi.org/10.23956/ijarcsse.v7i11.472

Refbacks

  • There are currently no refbacks.




© International Journals of Advanced Research in Computer Science and Software Engineering (IJARCSSE)| All Rights Reserved | Powered by Advance Academic Publisher.