Skip to content

This project focuses on analyzing global energy consumption patterns and trends in renewable energy generation using Python data analysis libraries such as Seaborn and NumPy. The analysis aims to explore energy consumption data from various regions worldwide and examine the contribution of renewable energy sources over time

Notifications You must be signed in to change notification settings

datasqlsantosh/Global-Energy-Consumption-Renewable-Generation-python-data-analysis-portfolio

Repository files navigation

Certainly! Below is a template for a README.md file for a project titled "Global Energy Consumption and Renewable Generation Data Analysis" using Python libraries like Seaborn and NumPy:


Global Energy Consumption and Renewable Generation Data Analysis

Overview

This project focuses on analyzing global energy consumption patterns and trends in renewable energy generation using Python data analysis libraries such as Seaborn and NumPy. The analysis aims to explore energy consumption data from various regions worldwide and examine the contribution of renewable energy sources over time.

Technologies Used

  • Python
  • Pandas
  • NumPy
  • Seaborn

Project Structure

  • dataset/: Directory containing data files
    • energy_consumption.csv: Energy consumption data file
    • renewable_generation.csv: Renewable generation data file
  • notebooks/: Directory for Jupyter notebooks
    • Global_Energy_Analysis.ipynb: Jupyter notebook for data analysis
  • README.md: Project README file
  • requirements.txt: File listing required Python libraries

How to Run the Project

  1. Clone the repository to your local machine:
    git clone <[repository_url](https://github.com/datasqlsantosh/Global-Energy-Consumption-Renewable-Generation-python-data-analysis-portfolio)>
    
  2. Navigate to the project directory:
    cd Global-Energy-Consumption-Renewable-Generation
    
  3. Install the required Python libraries using pip:
    pip install -r requirements.txt
    
  4. Run the main Python script to execute the data analysis and generate visualizations:
    python src/data_analysis.py
    
  5. View the generated visualizations and analysis insights.

Directory Structure

Global-Energy-Consumption-Renewable-Generation/
│
├── data/
│   ├── energy_consumption.csv
│   └── renewable_generation.csv
│
├── notebooks/
│   └── Global_Energy_Analysis.ipynb
│
├── README.md
└── requirements.txt

Additional Notes

  • Include any additional information or considerations relevant to the project.
  • Provide instructions for running the code and reproducing the analysis results.

Feel free to customize the README.md file according to your project's specific details and requirements. This template provides a structured approach to documenting your data analysis project using Python libraries like Seaborn and NumPy.

About

This project focuses on analyzing global energy consumption patterns and trends in renewable energy generation using Python data analysis libraries such as Seaborn and NumPy. The analysis aims to explore energy consumption data from various regions worldwide and examine the contribution of renewable energy sources over time

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages