pADAM: A Plug-and-Play All-in-One Diffusion Architecture for Multi-Physics Learning
arXiv cs.LG / 3/18/2026
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Key Points
- pADAM is a unified diffusion-based framework that learns a shared probabilistic prior across heterogeneous partial differential equation families, enabling cross-regime transfer without retraining.
- It supports forward prediction and inverse inference within a single architecture and performs accurate inference even with sparse observations.
- Coupled with conformal prediction, pADAM provides reliable uncertainty quantification with coverage guarantees.
- The approach can perform probabilistic model selection from only two sparse snapshots, identifying governing laws through its learned generative representation across benchmarks from scalar diffusion to nonlinear Navier-Stokes equations.
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