Enhancing Network Slicing Architectures with Machine Learning, Security, Sustainability and Experimental Networks Integration
Joberto S. B. Martins, Tereza C. Carvalho, Rodrigo Moreira, Cristiano, Both, Adnei Donatti, Jo\~ao H. Corr\^ea, Jos\'e A. Suruagy, Sand L. Corr\^ea,, Antonio J. G. Abelem, Mois\'es R. N. Ribeiro, Jose-Marcos Nogueira, Luiz C., S. Magalh\~aes, Juliano Wickboldt, Tiago Ferreto

TL;DR
This paper proposes the SFI2 architecture that integrates experimental networks with machine learning, security, and energy efficiency to improve network slicing for future 6G applications.
Contribution
It introduces a new NS reference architecture focusing on multi-domain integration, ML optimization, energy efficiency, and security tailored for experimental networks.
Findings
Enhanced multi-domain experimental network deployment.
Native ML optimization for network slicing.
Energy-efficient and security-enhanced slicing functionalities.
Abstract
Network Slicing (NS) is an essential technique extensively used in 5G networks computing strategies, mobile edge computing, mobile cloud computing, and verticals like the Internet of Vehicles and industrial IoT, among others. NS is foreseen as one of the leading enablers for 6G futuristic and highly demanding applications since it allows the optimization and customization of scarce and disputed resources among dynamic, demanding clients with highly distinct application requirements. Various standardization organizations, like 3GPP's proposal for new generation networks and state-of-the-art 5G/6G research projects, are proposing new NS architectures. However, new NS architectures have to deal with an extensive range of requirements that inherently result in having NS architecture proposals typically fulfilling the needs of specific sets of domains with commonalities. The Slicing Future…
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Taxonomy
MethodsAttentive Walk-Aggregating Graph Neural Network · Focus
