5G mobile networks will be soon available to handle all types of applications and to provide service to massive numbers of users. In this complex and dynamic network ecosystem, end-to-end performance analysis and optimization will be key features to effectively manage the diverse requirements imposed by multiple vertical industries over the same shared infrastructure. To enable such a vision, the MARSAL project targets the development and evaluation of a complete framework for the management and orchestration of network resources in 5G and beyond, by utilizing a converged optical-wireless network infrastructure in the access and fronthaul/midhaul segments. At the network design domain, MARSAL targets the development of novel cell-free based solutions by exploiting the application of the distributed cell-free concept and of the serial fronthaul approach, while contributing innovative functionalities to the O-RAN project. In parallel, in the fronthaul/midhaul segments MARSAL aims to radically increase the flexibility of optical access architectures via different levels of fixed-mobile convergence. At the network and service management domain, the design philosophy of MARSAL is to exploit novel ML-based algorithms of both edge and midhaul DCs, by incorporating the Virtual Elastic DataCenters/Infrastructures paradigm. Finally, at the network security domain, MARSAL aims to introduce mechanisms that provide privacy and security to application workload and data, targeting to allow applications and users to maintain control over their data, while AI and and Blockchain technologies will be developed in order to guarantee a secured multi-tenant slicing environment.

Towards Machine-Learning-Based 5G and Beyond Intelligent Networks: The MARSAL Project Vision has been updated / J.S. Vardakas, K. Ramantas, E. Datsika, M. Payaro, S. Pollin, E. Vinogradov, M. Varvarigos, P. Kokkinos, R. Gonzalez-Sanchez, J.J. Vegas Olmos, I. Chochliouros, P. Chanclou, P. Samarati, A. Flizikowski, M. Arifur Rahman, C. Verikoukis - In: MeditCom[s.l] : Institute of Electrical and Electronics Engineers (IEEE), 2021. - ISBN 978-1-6654-4505-4. - pp. 488-493 (( convegno International Mediterranean Conference on Communications and Networking: September, 7th through 10th tenutosi a Athens nel 2021 [10.1109/MeditCom49071.2021.9647671].

Towards Machine-Learning-Based 5G and Beyond Intelligent Networks: The MARSAL Project Vision has been updated

P. Samarati;
2021

Abstract

5G mobile networks will be soon available to handle all types of applications and to provide service to massive numbers of users. In this complex and dynamic network ecosystem, end-to-end performance analysis and optimization will be key features to effectively manage the diverse requirements imposed by multiple vertical industries over the same shared infrastructure. To enable such a vision, the MARSAL project targets the development and evaluation of a complete framework for the management and orchestration of network resources in 5G and beyond, by utilizing a converged optical-wireless network infrastructure in the access and fronthaul/midhaul segments. At the network design domain, MARSAL targets the development of novel cell-free based solutions by exploiting the application of the distributed cell-free concept and of the serial fronthaul approach, while contributing innovative functionalities to the O-RAN project. In parallel, in the fronthaul/midhaul segments MARSAL aims to radically increase the flexibility of optical access architectures via different levels of fixed-mobile convergence. At the network and service management domain, the design philosophy of MARSAL is to exploit novel ML-based algorithms of both edge and midhaul DCs, by incorporating the Virtual Elastic DataCenters/Infrastructures paradigm. Finally, at the network security domain, MARSAL aims to introduce mechanisms that provide privacy and security to application workload and data, targeting to allow applications and users to maintain control over their data, while AI and and Blockchain technologies will be developed in order to guarantee a secured multi-tenant slicing environment.
English
Settore INF/01 - Informatica
Intervento a convegno
Esperti anonimi
Pubblicazione scientifica
Code 175865
   Machine Learning-based, Networking and Computing Infrastructure Resource Management of 5G and beyond Intelligent Networks (MARSAL)
   MARSAL
   EUROPEAN COMMISSION
   H2020
   101017171
MeditCom
Institute of Electrical and Electronics Engineers (IEEE)
2021
488
493
6
978-1-6654-4505-4
978-1-6654-4506-1
Volume a diffusione internazionale
No
International Mediterranean Conference on Communications and Networking: September, 7th through 10th
Athens
2021
Institute of Electrical and Electronics Engineers (IEEE)
Convegno internazionale
manual
Aderisco
J.S. Vardakas, K. Ramantas, E. Datsika, M. Payaro, S. Pollin, E. Vinogradov, M. Varvarigos, P. Kokkinos, R. Gonzalez-Sanchez, J.J. Vegas Olmos, I. Cho...espandi
Book Part (author)
partially_open
273
Towards Machine-Learning-Based 5G and Beyond Intelligent Networks: The MARSAL Project Vision has been updated / J.S. Vardakas, K. Ramantas, E. Datsika, M. Payaro, S. Pollin, E. Vinogradov, M. Varvarigos, P. Kokkinos, R. Gonzalez-Sanchez, J.J. Vegas Olmos, I. Chochliouros, P. Chanclou, P. Samarati, A. Flizikowski, M. Arifur Rahman, C. Verikoukis - In: MeditCom[s.l] : Institute of Electrical and Electronics Engineers (IEEE), 2021. - ISBN 978-1-6654-4505-4. - pp. 488-493 (( convegno International Mediterranean Conference on Communications and Networking: September, 7th through 10th tenutosi a Athens nel 2021 [10.1109/MeditCom49071.2021.9647671].
info:eu-repo/semantics/bookPart
16
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/863438
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