BeamLLM: Vision-Empowered mmWave Beam Prediction with Large Language Models

Zheng, Can, He, Jiguang, Cai, Guofa, Yu, Zitong, Kang, Chung G.

arXiv.org Artificial Intelligence 

However, applying LLMs have been proposed for channel prediction the high operating frequency results in substantial [8], beam prediction [9], and port prediction for fluid antennas path loss. To address this challenge, massive multiple-input [10]. Built on these developments, in this paper, we propose a multiple-output (mMIMO) antenna arrays are extensively employed, vision-aided beam prediction framework, named BeamLLM, which utilize highly directional beamforming techniques which utilizes LLMs to process RGB images, thereby enabling to mitigate propagation losses.