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🚲 Forecasting Demand for Chicago Divvy Bikes

A Data-Driven Framework for Forecasting & Business Impact

This project presents a machine learning framework to forecast demand for Divvy bike-sharing stations in Chicago. The goal is to support business decisions such as resource allocation and station management using predictive analytics.


📊 Full Presentation

View the full project presentation on Google Slides


🔍 Project Overview

  • Problem Statement: Forecast short-term & Long-term demand to optimize redistribution and minimize shortages.
  • Tech Stack: Python, scikit-learn, XGBoost, time series analysis, geospatial clustering
  • Approach:
    • Station segmentation based on usage patterns
    • City-wide and station-level demand forecasting
    • Model evaluation and business impact analysis image

📈 Results & Visuals

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