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Large Language Models-Empowered Wireless Networks: Fundamentals, Architecture, and Challenges

Large Language Models-Empowered Wireless Networks: Fundamentals, Architecture, and Challenges

来源:Arxiv_logoArxiv
英文摘要

The rapid advancement of wireless networks has resulted in numerous challenges stemming from their extensive demands for quality of service towards innovative quality of experience metrics (e.g., user-defined metrics in terms of sense of physical experience for haptics applications). In the meantime, large language models (LLMs) emerged as promising solutions for many difficult and complex applications/tasks. These lead to a notion of the integration of LLMs and wireless networks. However, this integration is challenging and needs careful attention in design. Therefore, in this article, we present a notion of rational wireless networks powered by \emph{telecom LLMs}, namely, \emph{LLM-native wireless systems}. We provide fundamentals, vision, and a case study of the distributed implementation of LLM-native wireless systems. In the case study, we propose a solution based on double deep Q-learning (DDQN) that outperforms existing DDQN solutions. Finally, we provide open challenges.

Latif U. Khan、Maher Guizani、Sami Muhaidat、Choong Seon Hong

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Latif U. Khan,Maher Guizani,Sami Muhaidat,Choong Seon Hong.Large Language Models-Empowered Wireless Networks: Fundamentals, Architecture, and Challenges[EB/OL].(2025-06-12)[2025-07-16].https://arxiv.org/abs/2506.10651.点此复制

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