AI RESEARCH

Agentic AI as a Network Control-Plane Intelligence Layer for Federated Learning over 6G

arXiv CS.CV

ArXi:2603.09141v1 Announce Type: new The shift toward user-customized on-device learning places new demands on wireless systems: models must be trained on diverse, distributed data while meeting strict latency, bandwidth, and reliability constraints. To address this, we propose an Agentic AI as the control layer for managing federated learning (FL) over 6G networks, which translates high-level task goals into actions that are aware of network conditions. Rather than simply viewing FL as a learning challenge, our system sees it as a combined task of learning and network management.