OMNIFLOW: A Physics-Grounded Multimodal Agent for Generalized Scientific Reasoning
arXiv cs.LG / 3/18/2026
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Key Points
- OMNIFLOW is a neuro-symbolic architecture designed to ground frozen multimodal LLMs in fundamental physical laws without requiring domain-specific parameter updates.
- It introduces a Semantic-Symbolic Alignment mechanism that projects high-dimensional flow tensors into topological linguistic descriptors, enabling the model to perceive physical structures rather than raw pixel values.
- It constructs a Physics-Guided Chain-of-Thought (PG-CoT) workflow that orchestrates reasoning through dynamic constraint injection (e.g., mass conservation) and iterative reflexive verification.
- Empirical results on benchmarks spanning microscopic turbulence, theoretical Navier-Stokes equations, and macroscopic global weather forecasting demonstrate that OMNIFLOW significantly outperforms traditional deep learning baselines in zero-shot generalization and few-shot adaptation while providing transparent, physically consistent reasoning reports.
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