Skip to content

zwqjoy/feature-engineering-tutorials

 
 

Repository files navigation

Tutorials: Feature Engineering in Python

Binder Chat on Discourse Chat on Slack

Andrew Ng stated, “applied ML is basically just feature engineering.” In data science and ML, the most important, but oftentimes most overlooked, piece of the puzzle is feature engineering.

At Rasgo, we are data scientists on the mission to enable the global data science community to generate valuable and trusted insights from data in under 5 minutes. As we have marched forward on this mission, we’ve grown incredibly frustrated in the lack of helpful content and python functions that target feature engineering. We wrestle with these problems everyday and we wanted to provide a repository of recipes that showcase how to use the best tools available in this space. Additionally, we’ve built our own SDK (PyRasgo) for feature engineering that enables users to automatically track, visualize, and evaluate their feature engineering experiments to make more accurate and explainable feature engineering decisions.

In that vein, this repository contains tutorials and code to enable data scientists to easily create new ML features and evaluate their importance for supervised machine learning. We sincerely hope this is helpful and please leave comments with any questions on what we can do to improve!

Please join us on the

Table of Contents

About

Data Science Feature Engineering and Selection Tutorials

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 100.0%