WirelessLLM: Empowering Large Language Models Towards Wireless Intelligence

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

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 application for telecom language understanding. To empower LLMs with knowledge and expertise in the wireless domain, this paper proposes WirelessLLM, a comprehensive 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 typical problems in wireless networks. Finally, we conclude this paper by highlighting key challenges and outlining potential avenues for future research.
WirelessLLM:增强大型语言模型,实现无线智能
随着无线技术的快速发展和网络基础设施的日益复杂,通信网络的设计、配置和管理模式必须发生转变。大型语言模型(LLM)的最新进展激发了人们对其革新无线通信系统潜力的兴趣。然而,现有的无线系统大型语言模型研究仅限于电信语言理解的直接应用。为了让 LLM 具备无线领域的知识和专长,本文提出了 WirelessLLM,这是一个调整和增强 LLM 的综合框架,以应对无线通信网络的独特挑战和要求。我们首先确定了支撑 WirelessLLM 的三个基本原则:知识调整、知识融合和知识演进。然后,我们研究了构建 WirelessLLM 的使能技术,包括提示工程、检索增强生成、工具使用、多模式预培训和特定领域微调。此外,我们还介绍了三个案例研究,以展示 WirelessLLM 在解决无线网络典型问题方面的实际应用性和优势。最后,我们总结了本文的主要挑战,并概述了未来研究的潜在途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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