SANet: A Semantic-aware Agentic AI Networking Framework for Cross-layer Optimization in 6G
Yong Xiao, Xubo Li, Haoran Zhou, Yingyu Li, Yayu Gao, Guangming Shi, Ping Zhang, and Marwan Krunz

TL;DR
SANet introduces a semantic-aware, decentralized AI networking framework for 6G that infers user goals, optimizes multi-agent collaboration, and enhances network performance with theoretical and experimental validation.
Contribution
It proposes a novel semantic-aware architecture with multi-objective optimization, model partitioning, and decentralized algorithms for 6G network management.
Findings
Achieved up to 14.61% performance gains.
Reduced computational requirements by 55.63%.
Validated with a hardware prototype and theoretical bounds.
Abstract
Agentic AI networking (AgentNet) is a novel AI-native networking paradigm in which a large number of specialized AI agents collaborate to perform autonomous decision-making, dynamic environmental adaptation, and complex missions. It has the potential to facilitate real-time network management and optimization functions, including self-configuration, self-optimization, and self-adaptation across diverse and complex environments. This paper proposes SANet, a novel semantic-aware AgentNet architecture for wireless networks that can infer the semantic goal of the user and automatically assign agents associated with different layers of the network to fulfill the inferred goal. Motivated by the fact that AgentNet is a decentralized framework in which collaborating agents may generally have different and even conflicting objectives, we formulate the decentralized optimization of SANet as a…
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