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WirelessLLM:Empowering Large Language Models Towards Wireless IntelligenceOA

WirelessLLM:Empowering Large Language Models Towards Wireless Intelligence

英文摘要

The rapid evolution of wireless technologies and the growing complexity of network infrastructures necessitate a paradigm shift in how communication networks are designed,configured,and managed.Recent advancements in large language models(LLMs)have sparked interest in their potential to revolutionize wireless communication systems.However,existing studies on LLMs for wireless systems are limited to a direct appli-cation for telecom language understanding.To empower LLMs with knowledge and expertise in the wireless domain,this paper proposes WirelessLLM,a compre-hensive framework for adapting and enhancing LLMs to address the unique challenges and requirements of wireless communication networks.We first identify three foundational principles that underpin WirelessLLM:knowledge alignment,knowledge fusion,and knowledge evolution.Then,we investigate the enabling technologies to build WirelessLLM,including prompt engineering,retrieval augmented generation,tool usage,multi-modal pre-training,and domain-specific fine-tuning.Moreover,we present three case studies to demonstrate the practical applicability and benefits of WirelessLLM for solving typ-ical problems in wireless networks.Finally,we conclude this paper by highlighting key challenges and outlining potential avenues for future research.

Jiawei Shao;Jingwen Tong;Qiong Wu;Wei Guo;Zijian Li;Zehong Lin;Jun Zhang

Department of Electronic and Computer Engineering,The Hong Kong Uni-versity of Science and Technology,Hong Kong 999077,China

large language modelsmulti-modal mod-elswireless communicationspower allocationspectrum sensingprotocol understanding

《通信与信息网络学报(英文)》 2024 (002)

99-112 / 14

This work was supported by Hong Kong Research Grants Council under the Areas of Excellence Scheme Grant AoE/E-601/22-R and NSFC/RGC Collaborative Research Scheme Grant CRS_HKUST603/22.

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