AINIDec 27, 2025

SANet: A Semantic-aware Agentic AI Networking Framework for Cross-layer Optimization in 6G

arXiv:2512.22579v13 citationsh-index: 16Has Code
Originality Incremental advance
AI Analysis

This work addresses network management and optimization in 6G wireless systems, presenting an incremental advancement by integrating semantic awareness into existing agentic AI paradigms.

The paper tackles the challenge of decentralized optimization in agentic AI networking for 6G by proposing SANet, a semantic-aware framework that formulates it as a multi-agent multi-objective problem and achieves performance gains of up to 14.61% with only 44.37% of the FLOPs of state-of-the-art methods.

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 multi-agent multi-objective problem, and focus on finding the Pareto-optimal solution for agents with distinct and potentially conflicting objectives. We propose three novel metrics for evaluating SANet. Furthermore, we develop a model partition and sharing (MoPS) framework in which large models, e.g., deep learning models, of different agents can be partitioned into shared and agent-specific parts that are jointly constructed and deployed according to agents' local computational resources. Two decentralized optimization algorithms are proposed. We derive theoretical bounds and prove that there exists a three-way tradeoff among optimization, generalization, and conflicting errors. We develop an open-source RAN and core network-based hardware prototype that implements agents to interact with three different layers of the network. Experimental results show that the proposed framework achieved performance gains of up to 14.61% while requiring only 44.37% of FLOPs required by state-of-the-art algorithms.

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