An Exhaustive Investigation into Energy Preservation and Cutting-Edge Technology Utilized in Cloud Data Centers

Authors

  • Monojit Manna, Indrajit Pan

Keywords:

Energy efficiency, Energy consumption, Evolution matrices, Data centers.

Abstract

The rapid growth of the digital economy is a result of the data center's rising worldwide energy usage. Data centers are thought to be the hub with the highest energy use. The public is paying close attention to information centers in an effort to cut down on energy emissions and meet energy consumption targets. Enhancing the Cloud data centers energy efficiency is a significant area of a fascination with the scientific community. Researchers are putting an abundance of effort into implementing numerous measures and a feasible energy efficiency implementation approach to be able to meet these goals. In this study, we categorize the current energy efficiency measures, provide an overview of the approaches, and utilized to assess data centers' energy efficiency. In this paper, we look at the current situation and difficulties in assessing the energy efficiency of data centers and provide a survey for enhancing energy efficiency assessment tools to help cloud operators. Through the use of more sophisticated metrics to access advanced data center energy efficiency, this work provides academics and decision-makers with ideas for building appropriate ways for evaluating energy efficiency. It also encourages them to connect theory and practice in energy efficiency evaluation. It is the most substantial and critical step toward achieving sustainable development goals and cutting edge green technologies.

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Published

16.06.2024

How to Cite

Monojit Manna. (2024). An Exhaustive Investigation into Energy Preservation and Cutting-Edge Technology Utilized in Cloud Data Centers. International Journal of Intelligent Systems and Applications in Engineering, 12(4), 452–459. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/6232

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Section

Research Article