Home /Research /Training-Free Data Assimilation with GenCast
OTHER

Training-Free Data Assimilation with GenCast

Thomas Savary, François Rozet, Gilles Louppe

Year
2025
Access
Open access

Abstract

Data assimilation is widely used in many disciplines such as meteorology, oceanography, and robotics to estimate the state of a dynamical system from noisy observations. In this work, we propose a lightweight and general method to perform data assimilation using diffusion models pre-trained for emulating dynamical systems. Our method builds on particle filters, a class of data assimilation algorithms, and does not require any further training. As a guiding example throughout this work, we illustrate our methodology on GenCast, a diffusion-based model that generates global ensemble weather forecasts.

Keywords

cs.LGphysics.ao-ph

Related papers

Browse all OTHER papers