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xuanmaii00/README.md

Hi there 👋👋,

I'm a final-year student at Foreign Trade University who enjoy working with data to deliver business insights.

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  1. Ecommerce-Sales-and-Inventory-Analysis_SQL Ecommerce-Sales-and-Inventory-Analysis_SQL Public

    Utilized BigQuery to explore key dataset patterns and answer business hypotheses, employing techniques such as data cleaning, transformation, CTEs, window functions, date functions and conditional …

  2. RFM-Customer-Behavior-Analysis_PBI RFM-Customer-Behavior-Analysis_PBI Public

    Utilized BigQuery to explore key dataset patterns and answer business hypotheses and created a Power BI report using RFM analysis, providing tailored insights and recommendations for each customer …

  3. Churn-User-Analysis_PBI Churn-User-Analysis_PBI Public

    Developed a Power BI dashboard for managers to analyze customer churn patterns, focusing on churn rates, demographics, and transaction history. Formulated strategic recommendations to enhance custo…

  4. Retail-Sales-and-Return-Analysis_PBI Retail-Sales-and-Return-Analysis_PBI Public

    Developed a dashboard for C-level managers to analyze sales, revenue, and return rates, identifying customer return issues and providing strategic recommendations to support market expansion decisi…

  5. Ecommerce_Churn_Prediction_Segmentation_Python Ecommerce_Churn_Prediction_Segmentation_Python Public

    Developed a fine-tuned Random Forest model to predict churn and used KMeans clustering to segment churned users, identifying key behaviors to optimize retention strategies and targeted promotions.

    Jupyter Notebook