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arXiv8d ago
4.6

FluidFlow: a flow-matching generative model for fluid dynamics surrogates on unstructured meshes

David Ramos, Lucas Lacasa, Ferm\'in Guti\'errez, Eusebio Valero, Gonzalo Rubio

View original ↗

Analysis

Viral velocity
low
Implementation gapYES
Novelty6/10
Categorypaper
Topics
diffusionphysicssimulation

Opportunity Brief

Implement a flow-matching framework specifically tailored for fluid dynamics on unstructured meshes. This provides a scalable surrogate model that outperforms traditional grid-based approaches.

Suggested repo: fluid-flow-matching

"Simulate complex fluids in a fraction of the time with generative flow-matching."

Estimated effort: 120h