Cooka 
 AutoML toolkit
 An automated machine learning toolkit with visualization and feature engineering capabilities
A lightweight and visual AutoML system
40 stars
 7 watching
 107 forks
 
Language: Python 
last commit: almost 2 years ago 
Linked from   1 awesome list  
  automated-feature-engineeringautomated-machine-learningautomldata-sciencedeep-learninghyperparameter-optimizationmachine-learningneural-network 
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