Poster
in
Workshop: Frontiers in Probabilistic Inference: learning meets Sampling
Consistency Training with Physical Constraints
Che-Chia Chang · Chen-Yang Dai · Te-Sheng Lin · Ming-Chih Lai · Chieh-Hsin Lai
Abstract:
We propose a physics-aware Consistency Training (CT) method that accelerates sampling in Diffusion Models with physical constraints. Our approach leverages a two-stage strategy: (1) learning the noise-to-data mapping via CT, and (2) incorporating physics constraints as a regularizer. Experiments on toy examples show that our method generates samples in a single step while adhering to the imposed constraints. This approach has the potential to efficiently solve partial differential equations (PDEs) using deep generative modeling.
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