Large Language Models for Wireless Communications: From Adaptation to Autonomy
By: Le Liang , Hao Ye , Yucheng Sheng and more
Potential Business Impact:
AI helps wireless signals work smarter.
The emergence of large language models (LLMs) has revolutionized artificial intelligence, offering unprecedented capabilities in reasoning, generalization, and zero-shot learning. These strengths open new frontiers in wireless communications, where increasing complexity and dynamics demand intelligent and adaptive solutions. This article explores the role of LLMs in transforming wireless systems across three key directions: adapting pretrained LLMs for core communication tasks, developing wireless-specific foundation models to balance versatility and efficiency, and enabling agentic LLMs with autonomous reasoning and coordination capabilities. We highlight recent advances, practical case studies, and the unique benefits of LLM-based approaches over traditional methods. Finally, we outline open challenges and research opportunities, including multimodal fusion, collaboration with lightweight models, and self-improving capabilities, charting a path toward intelligent, adaptive, and autonomous wireless networks of the future.
Similar Papers
Large Multimodal Models-Empowered Task-Oriented Autonomous Communications: Design Methodology and Implementation Challenges
Machine Learning (CS)
AI helps machines talk and work together better.
Large Language Models for Next-Generation Wireless Network Management: A Survey and Tutorial
Networking and Internet Architecture
Lets phones understand and fix network problems.
Large Language Models-Empowered Wireless Networks: Fundamentals, Architecture, and Challenges
Networking and Internet Architecture
Makes phones understand feelings for better games.