FOQUS
Optimization framework
A comprehensive framework for optimization and uncertainty quantification with support for surrogates and a graphical user interface.
FOQUS: Framework for Optimization and Quantification of Uncertainty and Surrogates
46 stars
16 watching
54 forks
Language: Python
last commit: 2 months ago
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foqus
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