Python Feature Scaling in SciKit-Learn (Normalization vs Standardization)

Описание к видео Python Feature Scaling in SciKit-Learn (Normalization vs Standardization)

Today we take a look at how we can apply feature scaling to data sets within scikit-learn in python. This is useful when applying Normalization or standardization to data which allows for machine learning models to perform better.

Dataset is available on my Github

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