hyperparameter_hunter
Optimizer
Automates hyperparameter optimization and result saving across machine learning algorithms
Easy hyperparameter optimization and automatic result saving across machine learning algorithms and libraries
706 stars
24 watching
100 forks
Language: Python
last commit: almost 4 years ago aiartificial-intelligencecatboostdata-sciencedeep-learningexperimentationfeature-engineeringhyperparameter-optimizationhyperparameter-tuningkeraslightgbmmachine-learningmlneural-networkoptimizationpythonrgfscikit-learnsklearnxgboost
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