A package for automated feature engineering with support for categorical and numerical data
Project description
Auto Feature Engineering
This package automates the feature engineering process, helping data scientists efficiently prepare datasets by detecting, transforming, and selecting relevant features.
Features
- Automatic Column Detection
- Feature Engineering Techniques
- Feature Ranking & Selection
- Irrelevant Feature Removal
Usage Example
This package makes feature engineering seamless by automating multiple steps, allowing data scientists to focus more on model building and analysis.
Installation
pip install Automatic_Feature_Engineering
Project details
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