Projects

Sales Forecasting.

Problem Statement:

SuperKart, a retail chain operating supermarkets and food marts across tiered cities, requires accurate sales revenue forecasting to optimize inventory management and inform regional sales strategies

Objective:

Develop and deploy a production-grade sales forecasting solution for SuperKart, integrating machine learning models with a scalable backend and frontend interface to provide actionable insights

Process Pipeline:
  • Data collection and exploratory data analysis (EDA) with visualizations
  • Data preprocessing with feature engineering and pipeline creation
  • Random Forest and XGBoost model development and hyperparameter tuning
  • Model performance comparison and selection
  • Model serialization and testing on validation/test sets
  • Backend deployment with Flask API and Docker
  • Frontend deployment with Streamlit
 
Technologies & Models:

Python, scikit-learn, Flask, Streamlit, Docker, Graphviz

Key Outcomes:

Deployed Flask API and Streamlit frontend on Hugging Face spaces, optimized Random Forest model (RMSE ~$256, R² ~0.940), actionable business recommendations

Intelligence • Architecture • Global Scale

Industries

Global Presence