Scalable Pre-Trained Masked Channel Model of Wireless Communications

Deep learning (DL)-based models have been widely applied in wireless communication systems with excellent performance. However, most of these models are task- and scenario-specific, exhibiting limited generalization and contributing to increasing complexity and overhead with their deployment in systems. Inspired by the emergent capabilities and strong generalization exhibited by large models (LMs), represented by large language models (LLMs), this paper analyzes the differences between existing