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  1. Supply-Chain-Performance-Analysis Supply-Chain-Performance-Analysis Public

    End-to-end supply chain analytics using Python, SQL & Power BI | Beauty & Personal Care Industry

    Jupyter Notebook 1

  2. Why-Employees-Leave-Analysis Why-Employees-Leave-Analysis Public

    Analyzing 1,470 IBM employees to find why they leave β€” Python, SQL, Interactive Dashboard

    Jupyter Notebook 1

  3. Blinkit-Sales-Analysis-Dashboard Blinkit-Sales-Analysis-Dashboard Public

    This repository contains a Power BI dashboard designed to analyze Blinkit's sales performance, customer satisfaction, and inventory distribution. It provides interactive visualizations and key insi…

    1

  4. Amazon-Global-Sales-Analysis-using-PowerBI-Dashboard Amazon-Global-Sales-Analysis-using-PowerBI-Dashboard Public

    An interactive Power BI dashboard analyzing Amazon's global sales data β€” covering revenue trends, regional performance, customer profitability, and segment-wise breakdowns to support data-driven bu…

    1

  5. Credit-Card-Fraud-Detection-Using-Machine-Learning Credit-Card-Fraud-Detection-Using-Machine-Learning Public

    Credit card fraud detection using Random Forest Classifier on an imbalanced dataset. Includes EDA, data cleaning, model training and evaluation with 99.97% accuracy.

    Jupyter Notebook 1

  6. Customer-Segmentation-With-K-Means-Clustering- Customer-Segmentation-With-K-Means-Clustering- Public

    Mall customer segmentation using K-Means Clustering based on Annual Income and Spending Score. Identifies 5 distinct customer groups for targeted marketing strategies.

    Jupyter Notebook 1