Secure Real-Time Load Balancing in Edge Computing Environments with AI

Authors

  • Juan Morales Assistant Professor of AI, Pontifical Catholic University of Chile, Santiago, Chile Author

Keywords:

AI, edge computing, load balancing, real-time analytics

Abstract

Real time data processing and network devices has completely transformed the computing environment. Local data processing reduces latency and boost the efficiency of edge computing. As networks are dynamic resource constrained and security sensitive which makes load balancing a problematic task. But AI can change this issue as load balancing in real time become more secure. The objective of this article is to discuss the AI approaches, applications, and the challenges of implementing them in the present infrastructure.

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Published

16-01-2021

How to Cite

[1]
Juan Morales, “Secure Real-Time Load Balancing in Edge Computing Environments with AI”, Newark J. Hum. Centric AI Robot Inter., vol. 1, pp. 1–5, Jan. 2021, Accessed: Feb. 16, 2026. [Online]. Available: https://njhcair.org/index.php/publication/article/view/2