Comparative Analysis Study of Various Techniques of Energy Efficiency in Cloud Computing
DOI:
https://doi.org/10.26438/ijcse/v7i10.229234Keywords:
Cloud Computing, Machine Learning, Deep Learning, Convolutional neural networks (CNN)Abstract
Cloud Computing is one of the most emerging field for research now a days. The cloud is responsible to provide various set of services to users which requires a lot of energy. As they are growing up with a rapid rate, the burden on cloud is increasing daily. Various researchers are working on cloud efficiency with major factor as energy efficiency. As energy efficiency will not only increase user handling rate but also decrease overall global cost and pollution. In this paper, various previous techniques used for energy efficiency are discussed on the basis various performance parameters to analyse the best available techniques.
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