nabilalibou/Uber_Fare_Prediction_Explained
This repository documents a complete ML workflow to model Uber fares in Paris, from granular EDA and feature engineering to building and fine-tuning a stacking regressor on 10k real-world rides.
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Aug 17, 2025
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