Aug. 8, 2023, 1:44 p.m. | Shivamshinde

Towards AI - Medium pub.towardsai.net

From Raw to Refined: A Journey Through Data Preprocessing — Part 2: Missing Values

Photo by Holly Stratton on Unsplash

Before going through this article, please check out the previous article in the series on feature engineering.

From Raw to Refined: A Journey Through Data Preprocessing — Part 1: Feature Scaling

Why deal with missing values?

Most real word datasets come with at least some percent of missing values. But Scikit-Learn estimators do not work with such data. So to …

article check data data preprocessing engineering feature feature engineering imputation-methods journey missing values part raw scikit-learn series through values

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