Description du projet
Combler le fossé entre l’intelligence artificielle et l’intelligence de réseau
Alors que les modèles d’intelligence artificielle (IA) sont généralement considérés comme l’épine dorsale de la conception d’intelligence de réseau (IR), l’IA n’est pas l’outil le plus approprié pour chaque tâche d’IR. Le projet DAEMON, financé par l’UE, créera une approche pragmatique de la conception des IR. Il effectuera une analyse systématique des tâches d’IR correctement résolues avec des modèles d’IA pour fournir un ensemble solide de directives pour utiliser l’apprentissage automatique dans les fonctions réseau. En s’appuyant sur les connaissances tirées de cette analyse, DAEMON concevra des algorithmes d’IR pour piloter un ensemble de base de fonctionnalités réseau B5G (au-delà de la 5G). Les fonctionnalités assistées par IR seront enfin déployées dans une architecture IR native de bout en bout pour B5G permettant leur coordination complète.
Objectif
The success of Beyond 5G (B5G) systems will largely depend on the quality of the Network Intelligence (NI) that will fully automate network management. Artificial Intelligence (AI) models are commonly regarded as the cornerstone for NI design; indeed, AI models have proven extremely successful at solving hard problems that require inferring complex relationships from entangled and massive (e.g. traffic) data. However, AI is not the best solution for every NI task; and, when it is, the dominating trend of plugging ‘vanilla’ AI into network controllers and orchestrators is not a sensible choice.
Departing from the current hype around AI, DAEMON will set forth a pragmatic approach to NI design. The project will carry out a systematic analysis of which NI tasks are appropriately solved with AI models, providing a solid set of guidelines for the use of machine learning in network functions. For those problems where AI is a suitable tool, DAEMON will design tailored AI models that respond to the specific needs of network functions, taking advantage of the most recent advances in machine learning. Building on these models, DAEMON will design an end-to-end NI-native architecture for B5G that fully coordinates NI-assisted functionalities.
The advances to NI devised by DAEMON will be applied in practical network settings to: (i) deliver extremely high performance while making an efficient use of the underlying radio and computational resources; (ii) reduce the energy footprint of mobile networks; and (iii) provide extremely high reliability beyond that of 5G systems. To achieve this, DAEMON will design practical algorithms for eight concrete NI-assisted functionalities, carefully selected to achieve the objectives above. The performance of the DAEMON algorithms will be evaluated in real-world conditions via four experimental sites, and at scale with data-driven approaches based on two nationwide traffic measurement datasets, against nine ambitious yet feasible KPI targets.
Champ scientifique
Programme(s)
Régime de financement
RIA - Research and Innovation actionCoordinateur
28918 Leganes (Madrid)
Espagne