The notebook to my article in LinkedIn
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Updated
Mar 31, 2021 - Jupyter Notebook
The notebook to my article in LinkedIn
Ce projet utilise un modèle de régression logistique pour prédire le risque de diabète à partir de données médicales et de mode de vie d'un patient.
This notebook demonstrates an end-to-end, reproducible ML workflow with business-oriented communication: clear EDA, rigorous CV & hyperparameter tuning, interpretable feature importances, visual diagnostics, and an exported pipeline ready for production validation.
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