Semantic-Driven AI Agent Communications: Challenges and Solutions
Abstract
With the rapid growth of intelligent services, communication targets are shifting from humans to artificial intelligent (AI) agents, which require new paradigms to enable real-time perception, decision-making, and collaboration. Semantic communication, which conveys task-relevant meaning rather than raw data, offers a promising solution. However, its practical deployment remains constrained by dynamic environments and limited resources. To address these issues, this article proposes a semantic-driven AI agent communication framework and develops three enabling techniques. First, semantic adaptation transmission applies fine-tuning with real or generative samples to efficiently adapt models to varying environments. Second, semantic lightweight transmission incorporates pruning, quantization, and perception-aware sampling to reduce model complexity and alleviate computational burden on edge agents. Third, semantic self-evolution control employs distributed hierarchical decision-making to optimize multi-dimensional resources, enabling robust multi-agent collaboration in dynamic environments. Simulation results show that the proposed solutions achieve faster convergence and stronger robustness, while the proposed distributed hierarchical optimization method significantly outperforms conventional decision-making schemes, highlighting its potential for AI agent communication networks.
Cite
@article{arxiv.2510.00381,
title = {Semantic-Driven AI Agent Communications: Challenges and Solutions},
author = {Kaiwen Yu and Mengying Sun and Zhijin Qin and Xiaodong Xu and Ping Yang and Yue Xiao and Gang Wu},
journal= {arXiv preprint arXiv:2510.00381},
year = {2025}
}