Power Consumption and Carbon Emission Equivalent for Virtualized Resources – An Analysis Virtual Machine and Container Analysis for Greener Data Center

Main Article Content

Anusooya G
Sathyarajasekaran K
Bharathiraja S
Braveen M
Premalatha M

Abstract

The International Energy Agency (IEA) revealed that the worldwide energy-related carbon dioxide (CO2) situation has hit a historic high of 33.1 Giga tonnes (Gt) of CO2. 85% of the rise in emissions was due to China, India, and the United States. The increase in emissions in India was 4.8%, or 105 Mega tonnes (Mt) of CO2, with the increase in emissions being evenly distributed across the transportation and industrial sectors, according to Beloglazov et al (2011). Environmental contamination brought on by carbon emissions is harmful to the environment. As a result, there is an urgent need for the IT sectors to develop effective and efficient technology to eliminate such carbon emissions. The primary focus is on lowering carbon emissions due to widespread awareness of the issue.

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How to Cite
G, A. ., K, S. ., S, B. ., M, B. ., & M, P. . (2023). Power Consumption and Carbon Emission Equivalent for Virtualized Resources – An Analysis: Virtual Machine and Container Analysis for Greener Data Center. International Journal on Recent and Innovation Trends in Computing and Communication, 11(1), 110–116. https://doi.org/10.17762/ijritcc.v11i1.6057
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