nhevers/neuralcfd
neural network surrogate for CFD simulations
Quickly estimate the structural behavior of objects under stress without needing to run full-scale, time-consuming simulations. This tool takes parameters describing a structure and its loads, then provides predictions of deformation and stress distribution. It's designed for engineers or designers who need rapid preliminary insights into structural integrity.
Use this if you need fast, approximate predictions for structural analysis during early design phases or for many iterative design evaluations.
Not ideal if you require highly precise, validated simulations for final certification or complex failure analysis.
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Language
Python
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Category
Last pushed
Jan 26, 2026
Commits (30d)
0
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