Wireless AI Evolution: From Statistical Learners to Electromagnetic-Guided Foundation Models
Jian Xiao, Ji Wang, Kunrui Cao, Xingwang Li, Zhao Chen, and Chau Yuen

TL;DR
This paper introduces a novel electromagnetic information theory-guided self-supervised pre-training framework for wireless foundation models, enhancing their physical consistency and generalization in 6G applications by embedding EM physics into AI models.
Contribution
It proposes the EIT-SPT framework that systematically incorporates electromagnetic physics into wireless foundation models, addressing limitations of existing large AI models.
Findings
EIT-SPT improves physical consistency of WFMs.
Enhanced generalization across EM environments.
Increased data efficiency for training WFMs.
Abstract
While initial applications of artificial intelligence (AI) in wireless communications over the past decade have demonstrated considerable potential using specialized models for targeted communication tasks, the revolutionary demands of sixth-generation (6G) networks for holographic communications, ubiquitous sensing, and native intelligence are propelling a necessary evolution towards AI-native wireless networks. The arrival of large AI models paves the way for the next phase of Wireless AI, driven by wireless foundation models (WFMs). In particular, pre-training on universal electromagnetic (EM) principles equips WFMs with the essential adaptability for a multitude of demanding 6G applications. However, existing large AI models face critical limitations, including pre-training strategies disconnected from EM-compliant constraints leading to physically inconsistent predictions, a lack…
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