π― Aspiring Data Analyst focused on Financial & Business Data Analytics
- π Passionate about uncovering patterns in complex datasets
- π€ Building ML-powered systems with Explainable AI
- π Love creating dashboards that tell compelling data stories
- π§ Skilled in SQL, Python, Machine Learning, and Tableau
- π± Currently sharpening skills in Advanced ML and BI Tools
- π Based in India
End-to-end real-time fraud detection pipeline with SHAP explainability & live Streamlit dashboard
- π§ Tech: Python, LightGBM, XGBoost, SHAP, SMOTE, Streamlit, Plotly, Optuna
- π‘ Handles severe class imbalance using SMOTE; explains every prediction in plain English via SHAP
- π Multi-page live dashboard deployed on Streamlit Cloud
- π― Models compared: LightGBM vs XGBoost vs Isolation Forest with threshold optimization
- π Live Dashboard: Click Here
ML pipeline to predict customer churn and segment by risk tier
- π§ Tech: Python, Jupyter Notebook, Scikit-learn, Pandas, Matplotlib, Seaborn
- π‘ Segments customers into Critical Risk, Suspicious, and Clear tiers
- π Comprehensive model comparison with ROC-AUC and PR-AUC metrics
- π― Feature engineering + business recommendations for retention strategy
NLP-powered sentiment classification of e-commerce product reviews
- π§ Tech: Python, Jupyter Notebook, NLP, Pandas, Matplotlib
- π‘ Classifies customer reviews into Positive, Negative, and Neutral sentiments
- π Visual insights into customer opinion trends across product categories
- π― Business-ready insights for product improvement decisions
4οΈβ£ AI Bank Churn Analytics
End-to-end bank customer churn analysis using SQL + Python + Looker Studio
- π§ Tech: SQL (MySQL), Python, Google Colab, Google Looker Studio
- π‘ Identifies churn drivers by geography, gender, age, tenure, balance, and product usage
- π Interactive dashboard with KPI scorecards on Looker Studio
- π Live Dashboard: Click Here
5οΈβ£ HR Employee Attrition SQL
Complete end-to-end HR attrition analysis using MySQL
- π§ Tech: MySQL, MySQL Workbench, GitHub
- π‘ Full pipeline: schema design β data loading β cleaning β basic/intermediate/advanced analysis
- π Advanced SQL: window functions, aggregates, conditional logic, high-risk segment identification
- π― Identifies attrition patterns by department, job role, overtime, income, and tenure
6οΈβ£ Heart Disease Analysis
Clinical heart disease data analysis with Tableau dashboards integrated into a Flask web app
- π§ Tech: MySQL, Tableau, Flask, Python, HTML, CSS
- π‘ Transforms raw clinical data into interactive visual insights
- π Full-stack integration of analytics into a web application
- π Live Tableau Dashboard: Click Here
- π Live Story: Click Here