AI-Powered Energy Efficient and Sustainable Cloud Networking

Authors

  • Zubair Mohammed School of Information and Sciences Author
  • Naveed Uddin Mohammed School of Computer and Information Science, Lindsey Wilson College, KY, USA Author
  • Akheel Mohammed School of Computer and Information Science, University of the Cumberlands, KY, US Author
  • Shravan Kumar Reddy Gunda Department of Information Technology, Northwestern Polytechnic University, CA, USA Author
  • Mohammed Azmath Ansari Department of Information Technology, Concordia University, WI, USA Author

DOI:

https://doi.org/10.21276/jccci/2025.v1.i1.6

Keywords:

Artificial Intelligence, Cloud Networking, Energy Efficiency, Green Computing, Machine Learning, Carbon Footprint Reduction, Predictive Analytics, Reinforcement Learning (forecast), Adaptive Cooling, Power Optimization, Renewable Energy Integration, and Intelligent Resource Allocation.

Abstract

The exponential growth of cloud computing has led to significant energy consumption, raising environmental and economic concerns. This study explores the role of artificial intelligence (AI) in enhancing energy efficiency in cloud networking. AI-driven approaches such as machine learning, deep learning, and reinforcement learning optimize resource allocation, workload balancing, and power management to minimize energy waste while maintaining performance. AI-powered predictive analytics enable real-time power demand forecasting, adaptive cooling, and efficient routing, contributing to reduced carbon footprints. Additionally, AI facilitates the integration of renewable energy sources by dynamically distributing computing tasks based on energy availability. This paper provides a comprehensive review of AI-based energy-saving strategies, highlighting key advancements, challenges, and future research directions. By leveraging intelligent automation and predictive modeling, AI is transforming cloud infrastructure into a sustainable and cost-effective digital ecosystem.

Downloads

Download data is not yet available.

Downloads

Published

2025-03-30

Issue

Section

Articles

How to Cite

AI-Powered Energy Efficient and Sustainable Cloud Networking. (2025). Journal of Cognitive Computing and Cybernetic Innovations, 1(1), 31-36. https://doi.org/10.21276/jccci/2025.v1.i1.6