RoBO
Optimization framework
A Bayesian optimization framework designed to optimize complex functions with robustness and flexibility
RoBO: a Robust Bayesian Optimization framework
484 stars
42 watching
133 forks
Language: Python
last commit: almost 6 years ago
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