Learning Space-Time Continuous Neural PDEs from Partially Observed States

Neural Information Processing Systems 

We propose a space-time continuous latent neural PDE model with an efficient probabilistic framework and a novel encoder design for improved data efficiency and grid independence. The latent state dynamics are governed by a PDE model that combines the collocation method and the method of lines.

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