mehdihbgi3/Olist-ecommerce-intelligence
Analysis of 100K+ orders from the Olist Brazilian e-commerce dataset, RFM customer segmentation, delivery performance, geographic intelligence, product/category analytics, churn prediction, CLV forecasting, and demand forecasting with XGBoost and Random Forest.
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Mar 22, 2026
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