RA-LWLM uses retrieval from per-scene databases and in-context learning with a frozen foundation model to achieve cross-scene wireless localization without retraining.
Towards channel foundation models (CFMs): Motivations, methodologies and opportunities
3 Pith papers cite this work. Polarity classification is still indexing.
abstract
Artificial intelligence (AI) has emerged as a pivotal enabler for next-generation wireless communication systems. However, conventional AI-based models encounter several limitations, such as heavy reliance on labeled data, limited generalization capability, and task-specific design. To address these challenges, this paper introduces, for the first time, the concept of channel foundation models (CFMs)-a novel and unified framework designed to tackle a wide range of channel-related tasks through a pretrained, universal channel feature extractor. By leveraging advanced AI architectures and self-supervised learning techniques, CFMs are capable of effectively exploiting large-scale unlabeled data without the need for extensive manual annotation. We further analyze the evolution of AI methodologies, from supervised learning and multi-task learning to self-supervised learning, emphasizing the distinct advantages of the latter in facilitating the development of CFMs. Additionally, we provide a comprehensive review of existing studies on self-supervised learning in this domain, categorizing them into generative, discriminative and the combined paradigms. Given that the research on CFMs is still at an early stage, we identify several promising future research directions, focusing on model architecture innovation and the construction of high-quality, diverse channel datasets.
years
2026 3verdicts
UNVERDICTED 3representative citing papers
ComHymba introduces a domain-informed wireless foundation model with Hymba blocks for linear-complexity CSI modeling, reporting accuracy gains on eight downstream tasks and up to 3.3x inference speedup over Transformers.
AirFM-DDA reparameterizes wireless channel data into the delay-Doppler-angle domain and uses efficient window attention to achieve better zero-shot performance on channel prediction and estimation with lower compute cost.
citing papers explorer
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RA-LWLM: Retrieval-Augmented In-Context Localization with Wireless Foundation Models
RA-LWLM uses retrieval from per-scene databases and in-context learning with a frozen foundation model to achieve cross-scene wireless localization without retraining.
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ComHymba: Low-Complexity Domain-Informed Foundation Model for Wireless Communications
ComHymba introduces a domain-informed wireless foundation model with Hymba blocks for linear-complexity CSI modeling, reporting accuracy gains on eight downstream tasks and up to 3.3x inference speedup over Transformers.
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AirFM-DDA: Air-Interface Foundation Model in the Delay-Doppler-Angle Domain for AI-Native 6G
AirFM-DDA reparameterizes wireless channel data into the delay-Doppler-angle domain and uses efficient window attention to achieve better zero-shot performance on channel prediction and estimation with lower compute cost.