Litcius/Paper detail

LLM4WM: Adapting LLM for Wireless Multi-Tasking

X.-W. Liu, Shijian Gao, Boxun Liu, Xiang Cheng, Liuqing Yang

2025IEEE Transactions on Machine Learning in Communications and Networking16 citationsDOIOpen Access PDF

Abstract

The wireless channel is fundamental to communication, encompassing numerous tasks collectively referred to as channel-associated tasks. These tasks can leverage joint learning based on channel characteristics to share representations and enhance system design. To capitalize on this advantage, LLM4WM is proposed—a large language model (LLM) multi-task fine-tuning framework specifically tailored for channel-associated tasks. This framework utilizes a Mixture of Experts with Low-Rank Adaptation (MoE-LoRA) approach for multi-task fine-tuning, enabling the transfer of the pre-trained LLM’s general knowledge to these tasks. Given the unique characteristics of wireless channel data, preprocessing modules, adapter modules, and multi-task output layers are designed to align the channel data with the LLM’s semantic feature space. Experiments on a channel-associated multi-task dataset demonstrate that LLM4WM outperforms existing methodologies in both full-sample and few-shot evaluations, owing to its robust multi-task joint modeling and transfer learning capabilities.

Topics & Concepts

Computer scienceWirelessHuman multitaskingPsychologyTelecommunicationsCognitive psychologyCaching and Content DeliveryIPv6, Mobility, Handover, Networks, SecurityWireless Networks and Protocols