PravallikaBonula/Olist-Customer-Analytics-and-Churn-Prediction
SQL + Python project analyzing 100K+ Olist e-commerce transactions to predict customer churn. Includes SQL modeling, RFM segmentation, and machine learning insights for retention strategy.
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MIT
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Last pushed
Oct 15, 2025
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