Published December 9, 2025 | Version v1

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Abstract: Contemporary Federated Learning (FL) is bottlenecked by the rigid distinction between static parameters and dynamic data, forcing a reliance on computationally expensive edge training and massive server-side aggregation bandwidth. This paper introduces Fluid Federated Learning (FFL), a paradigm that unifies parameter and data spaces to overcome these physical constraints. We propose three architectural contributions: (1) Federated State-Space Duality (F-SSD), which exploits the mathematical duality between Transformers and State-Space Models (SSMs) to treat recurrent states, rather than gradients, as the primary unit of federation, enabling privacy-preserving, interaction-driven learning; (2...

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