Advanced machine learning with scikit-learn : tools and techniques for predictive analytics in Python /
"In this Advanced Machine Learning with scikit-learn training course, expert author Andreas Mueller will teach you how to choose and evaluate machine learning models. This course is designed for users that already have experience with Python. You will start by learning about model complexity, o...
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Format: | Video |
Language: | English |
Published: |
[Place of publication not identified] :
O'Reilly,
[2015]
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Online Access: | CONNECT CONNECT |
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