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ITU GSR 2024

ITU-T work programme

[2022-2024] : [SG13] : [Q23/13]

[Declared patent(s)]  - [Associated work]

Work item: Y.FMSC-InNetFL
Subject/title: Requirements and Framework for In-Network Aggregated Federated Learning to Enable AI in Fixed, Mobile, and Satellite Convergence Networks
Status: Under study 
Approval process: AAP
Type of work item: Recommendation
Version: New
Equivalent number: -
Timing: 2025-Q1 (High priority)
Liaison: 3GPP, ITU-R
Supporting members: Hankuk University of Foreign Studies (HUFS), KT, ETRI, China Mobile
Summary: This Recommendation specifies the requirements and framework for in-network aggregated federated learning (FL) to enable artificial intelligence (AI) in fixed, mobile, and satellite convergence (FMSC) networks. In-network aggregated FL will enhance the network capability in FMSC to significantly reduce the outgoing data traffic from the lower network entities, consume less bandwidth, and enable more efficient model aggregation over multi-hop networks under limited communication resources.
Comment: -
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First registration in the WP: 2022-12-02 16:33:25
Last update: 2024-09-23 16:57:03