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Main Authors: Wu, Binbin, Xu, Jingyu, Zhang, Yifan, Liu, Bo, Gong, Yulu, Huang, Jiaxin
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.01541
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author Wu, Binbin
Xu, Jingyu
Zhang, Yifan
Liu, Bo
Gong, Yulu
Huang, Jiaxin
author_facet Wu, Binbin
Xu, Jingyu
Zhang, Yifan
Liu, Bo
Gong, Yulu
Huang, Jiaxin
contents This paper proposes an integrated approach combining computer networks and artificial neural networks to construct an intelligent network operator, functioning as an AI model. State information from computer networks is transformed into embedded vectors, enabling the operator to efficiently recognize different pieces of information and accurately output appropriate operations for the computer network at each step. The operator has undergone comprehensive testing, achieving a 100% accuracy rate, thus eliminating operational risks. Furthermore, a novel algorithm is proposed to emphasize crucial training losses, aiming to enhance the efficiency of operator training. Additionally, a simple computer network simulator is created and encapsulated into training and testing environment components, enabling automation of the data collection, training, and testing processes. This abstract outlines the core contributions of the paper while highlighting the innovative methodology employed in the development and validation of the AI-based network operator.
format Preprint
id arxiv_https___arxiv_org_abs_2407_01541
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Integration of Computer Networks and Artificial Neural Networks for an AI-based Network Operator
Wu, Binbin
Xu, Jingyu
Zhang, Yifan
Liu, Bo
Gong, Yulu
Huang, Jiaxin
Networking and Internet Architecture
This paper proposes an integrated approach combining computer networks and artificial neural networks to construct an intelligent network operator, functioning as an AI model. State information from computer networks is transformed into embedded vectors, enabling the operator to efficiently recognize different pieces of information and accurately output appropriate operations for the computer network at each step. The operator has undergone comprehensive testing, achieving a 100% accuracy rate, thus eliminating operational risks. Furthermore, a novel algorithm is proposed to emphasize crucial training losses, aiming to enhance the efficiency of operator training. Additionally, a simple computer network simulator is created and encapsulated into training and testing environment components, enabling automation of the data collection, training, and testing processes. This abstract outlines the core contributions of the paper while highlighting the innovative methodology employed in the development and validation of the AI-based network operator.
title Integration of Computer Networks and Artificial Neural Networks for an AI-based Network Operator
topic Networking and Internet Architecture
url https://arxiv.org/abs/2407.01541