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AI-Based Distributed Processing Automation in Digital Twin Network
draft-oh-nmrg-ai-adp-01

Document Type Expired Internet-Draft (individual)
Expired & archived
Authors Oh Seokbeom , Yong-Geun Hong , Joo-Sang Youn , Hyunjeong Lee , Hyun-Kook Kahng
Last updated 2024-04-25 (Latest revision 2023-10-23)
RFC stream (None)
Intended RFC status (None)
Formats
Stream Stream state (No stream defined)
Consensus boilerplate Unknown
RFC Editor Note (None)
IESG IESG state Expired
Telechat date (None)
Responsible AD (None)
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This Internet-Draft is no longer active. A copy of the expired Internet-Draft is available in these formats:

Abstract

This document discusses the use of AI technology and digital twin technology to automate the management of computer network resources distributed across different locations. Digital twin technology involves creating a virtual model of real-world physical objects or processes, which is utilized to analyze and optimize complex systems. In a digital twin network, AI-based network management by automating distributed processing involves utilizing deep learning algorithms to analyze network traffic, identify potential issues, and take proactive measures to prevent or mitigate those issues. Network administrators can efficiently manage and optimize their networks, thereby improving network performance and reliability. AI-based network management, utilizing digital twin network technology, also aids in optimizing network performance by identifying bottlenecks in the network and automatically adjusting network settings to enhance throughput and reduce latency. By implementing AI-based network management through automated distributed processing, organizations can improve network performance, and reduce the need for manual network management tasks.

Authors

Oh Seokbeom
Yong-Geun Hong
Joo-Sang Youn
Hyunjeong Lee
Hyun-Kook Kahng

(Note: The e-mail addresses provided for the authors of this Internet-Draft may no longer be valid.)