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🚖 Uber Ride Data Analysis (Google Colab)

📌 Project Overview

This project analyzes Uber ride data using Python in Google Colab to discover patterns in ride behavior, peak times, and trip purposes.


🎯 Objectives

  • Analyze trip duration
  • Identify peak booking hours
  • Understand trip purposes
  • Find busiest days and months
  • Analyze ride distribution
  • Identify common pickup locations

📂 Dataset

  • File: Uber Rides.csv

  • Features include:

    • Start Date & Time
    • End Date & Time
    • Category
    • Start & Stop Locations
    • Miles
    • Purpose

🛠️ Tools & Technologies

  • Python 🐍
  • Pandas
  • NumPy
  • Matplotlib
  • Seaborn
  • Google Colab

📊 Analysis Performed

  • Data Cleaning & Handling Missing Values
  • Feature Engineering (Hour, Day, Month extraction)
  • Time-based Analysis
  • Purpose-wise Trip Analysis
  • Location Analysis
  • Visualization of trends

📈 Key Insights

  • Peak ride demand occurs during working hours
  • Weekdays show higher business-related trips
  • Certain locations are frequently used as pickup points
  • Monthly trends reveal variations in ride demand

▶️ Run the Project (Google Colab)

  1. Open the notebook in Colab
  2. Upload the dataset (Uber Rides.csv) when prompted
  3. Run all cells step by step

📁 Project Structure

├── Uber Ride Data Analysis Project.ipynb
├── Uber Rides.csv
└── README.md

💡 Future Improvements

  • Build a Power BI dashboard
  • Add predictive analysis (ML models)
  • Automate data pipeline

🙌 Author

Bhuvaneswar G Aspiring Data Analyst & Web Developer


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Uber ride data analysis using Python in Google Colab with insights on trips, peak hours, and travel patterns.

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