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Large AI Models for Wireless Physical Layer
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本文综述了大型人工智能模型(LAM)在无线物理层通信中的应用进展,探讨了利用预训练LAM和开发原生LAM两种策略,并提出了未来研究方向。

arXiv:2508.02314v1 Announce Type: cross Abstract: Large artificial intelligence models (LAMs) are transforming wireless physical layer technologies through their robust generalization, multitask processing, and multimodal capabilities. This article reviews recent advancements in LAM applications for physical layer communications, addressing limitations of conventional AI-based approaches. LAM applications are classified into two strategies: leveraging pre-trained LAMs and developing native LAMs designed specifically for physical layer tasks. The motivations and key frameworks of these approaches are comprehensively examined through multiple use cases. Both strategies significantly improve performance and adaptability across diverse wireless scenarios. Future research directions, including efficient architectures, interpretability, standardized datasets, and collaboration between large and small models, are proposed to advance LAM-based physical layer solutions for next-generation communication systems.

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大型人工智能模型 无线物理层通信 应用进展
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