tum-pbs/sparse-reconstruction
Official implementation of "Guiding diffusion models to reconstruct flow fields from sparse data"
This project helps fluid dynamics researchers and engineers reconstruct complete fluid flow fields from limited measurement points. You provide sparse data, like what you'd get from a few sensors, and it generates a detailed, full-field visualization of the fluid's movement. This is for professionals working with fluid simulations, experimental fluid dynamics, or anyone analyzing complex fluid behavior.
Use this if you need to infer complete, high-resolution fluid flow patterns from sparse, incomplete measurement data.
Not ideal if you have complete, high-resolution fluid flow data and simply need to visualize it, or if you're not working with fluid dynamics.
Stars
14
Forks
3
Language
Jupyter Notebook
License
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Category
Last pushed
Jan 20, 2026
Commits (30d)
0
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