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harshp23/README.md

Hi, I'm Harsh Patil 👋

Data Analyst | Python | SQL | Power BI | Machine Learning Enthusiast

I help businesses turn complex data into actionable insights, optimize revenue, and drive strategic decisions. Passionate about data storytelling, predictive modeling, and building dashboards that empower decision-makers.


🚀 About Me

  • Experienced in analyzing large datasets to uncover trends, anomalies, and opportunities.
  • Skilled in Python, SQL, Power BI, Tableau, and data visualization.
  • Passionate about building predictive models for churn, revenue leakage, and business optimization.
  • Always learning and exploring the latest in data analytics and AI.

💻 Technical Skills

Programming & Tools Data Analysis & Visualization Machine Learning
Python, SQL, c+ Pandas, NumPy, Matplotlib, Seaborn Scikit-learn, XGBoost
Power BI, Tableau Excel, Power Query, DAX Regression, Classification, Clustering
Git, GitHub Data Cleaning & ETL

📂 Projects

  • Built a Revenue Leakage Detection pipeline on a 4M+ row Telecom IoT CRM dataset using Python for data cleaning, feature engineering, and KPI creation.
  • Developed Power BI dashboards with segmentation filters (age, region, revenue thresholds) to visualize leakage trends and top impacted users.
  • Identified $133K revenue leakage (14k users) out of $17M total revenue, uncovering 14% high-usage low-revenue customers.
  • Optimized raw data from 4M+ rows to 97k active users, improving dashboard performance and enabling weekly trend analysis.
  • Predicted high-risk churn customers using Random Forest & XGBoost.
  • Improved retention strategies by identifying actionable patterns.
  • Visualized insights using Python & dashboards.
  • Tools Used : Python , Mysql
  • Developed an end-to-end Power BI dashboard for transaction analysis.
  • Highlighted spending patterns, fraud detection, and KPIs.
  • Automated reporting for business efficiency.
  • Tools Used : Power BI

More projects can be found in my GitHub Repositories


📫 Get In Touch


"Data is the new oil, and insights are the refinery."

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  1. HR-Analytics-employee-attrition-dashboard HR-Analytics-employee-attrition-dashboard Public

    An Excel-based interactive dashboard analyzing employee attrition trends using PivotTables and charts.

  2. SQL-Python-Ecommerce-Project SQL-Python-Ecommerce-Project Public

    Jupyter Notebook

  3. Crime_Against_Women_India-2001-2014- Crime_Against_Women_India-2001-2014- Public

    Analysis of Crime against women in india during 2001-14 using SQL queries , finding insights.

  4. blinkit-Grocery-Dashboard blinkit-Grocery-Dashboard Public

    Excel Dashboard for analyzing BlinkIT grocery sales data.

  5. EDA-of-Telecom-churn EDA-of-Telecom-churn Public

    Exploratory Data Analysis of Telecom churn dataset

    Jupyter Notebook

  6. supply-chain-esg-risk-analysis supply-chain-esg-risk-analysis Public

    Jupyter Notebook