TSIA - Réseaux - Thématiques Spécifiques en Intelligence Artificielle (Intelligence Artificielle pour les futurs réseaux) 2024

TowaRds Energy Efficient diStributed learning for 6G – TREES

Submission summary

TREES aims to reduce the carbon footprint of 6G networks by integrating distributed federated learning (DFL), as a tool for predicting orchestration actions and improving energy efficiency. DFL is an Artificial Intelligence (AI) paradigm, one of whose advantages is that it consumes less energy. To achieve this goal, TREES will (i) design a new architecture and algorithms for DFL to limit energy consumption; (ii) propose methods for pooling data and learning between several applications, taking advantage of the data partitioning offered by federated learning; (iii) develop network orchestration algorithms and AI functions to minimize the carbon footprint of deployed applications; (iv) set up, on an experimental environment, an autonomous network administration loop integrating the various tools developed in the project and real-world data to evaluate two use cases: "Leveraging Smart Power Grid for Telco" and "Energy-aware Multi-Tenant AI Function Orchestration".

Project coordination

Nancy Perrot (Orange Innovation)

The author of this summary is the project coordinator, who is responsible for the content of this summary. The ANR declines any responsibility as for its contents.

Partnership

LIA Laboratoire d'Informatique d'Avignon
Carnegie Mellon University, Pittsburgh, PA, United States
CEDRIC CENTRE D'ETUDES ET DE RECHERCHE EN INFORMATIQUE ET COMMUNICATIONS
LAMSADE Laboratoire d'analyse et modélisation de systèmes pour l'aide à la décision
Orange Innovation

Help of the ANR 649,414 euros
Beginning and duration of the scientific project: September 2024 - 48 Months

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