Affiliation:
1. Assistant Professor, Chandigarh Group of Colleges, Landran, Ajitgarh, Punjab, India
2. Assistant Professor, UIC, Chandigarh University, Ajitgarh, Punjab, India
Abstract
Cloud Computing has the facility to transform a large part of information technology into services in which computer resources are virtualized and made available as a utility service. From here comes the importance of scheduling virtual resources to get the maximum utilization of physical resources. The growth in server’s power consumption is increased continuously; and many researchers proposed, if this pattern repeats continuously, then the power consumption cost of a server over its lifespan would be higher than its hardware prices. The power consumption troubles more for clusters, grids, and clouds, which encompass numerous thousand heterogeneous servers. Continuous efforts have been done to reduce the electricity consumption of these massive-scale infrastructures. To identify the challenges and required future enhancements in the field of efficient energy consumption in Cloud Computing, it is necessary to synthesize and categorize the research and development done so far. In this paper, the authors prepare taxonomy of huge energy consumption problems and its related solutions. The authors cover all aspects of energy consumption by Cloud Datacenters and analyze many more research papers to find out the better solution for efficient energy consumption. Keywords: Cloud computing, Collocated virtual machines, Live migration, Load balancing, Resource scheduling
Reference43 articles.
1. Zhang, Qingchen, Laurence T. Yang, Zhikui Chen, and Peng Li. "A survey on deep learning for big data." Information Fusion 42 (2018): 146-157.
2. Grover, V., Chiang, R. H., Liang, T. P., & Zhang, D. (2018). Creating strategic business value from big data analytics: A research framework. Journal of Management Information Systems, 35(2), 388-423.
3. Sivarajah, U., Kamal, M. M., Irani, Z., &Weerakkody, V. (2017). Critical analysis of Big Data challenges and analytical methods. Journal of Business Research, 70, 263-286
4. De Mauro, Andrea, Marco Greco, and Michele Grimaldi. "A formal definition of Big Data based on its essential features." Library Review 65, no. 3 (2016): 122-135.
5. Lakshmi, R. Durga, and N. Srinivasu. "A dynamic approach to task scheduling in cloud computing using a genetic algorithm." Journal of Theoretical & Applied Information Technology 85, no. 2 (2016).