Skip to content

Files

Latest commit

87cc148 · May 10, 2025

History

History
49 lines (31 loc) · 2.96 KB

README.md

File metadata and controls

49 lines (31 loc) · 2.96 KB

🚀 Data Engineering with Google Cloud Platform and Mage 🧙‍♂️

Data Engineering GCP

Welcome to the Data Engineering GCP repository! This repository focuses on utilizing the power of the Google Cloud Platform (GCP) along with Mage for Data Engineering purposes. Whether you're interested in data pipelines, visualization, or working with GCP services like BigQuery and Cloud Storage, this repository has got you covered.

📁 Repository Contents

Inside this repository, you will find information and resources related to the following topics:

  • Data Engineering
  • Data Pipelines
  • Data Visualization
  • Google Cloud Platform (GCP)
  • Google BigQuery
  • Google Cloud Storage
  • Google Virtual Machine
  • Looker Studio
  • Mage AI Pipeline
  • SQL

🌟 Get Started

To get started with exploring the contents of this repository, you can download the zip file here. Make sure to extract the contents and launch the necessary files to begin your Data Engineering journey with Google Cloud Platform and Mage.

If the above link doesn't work, you can also check the "Releases" section of this repository for alternative download options.

📚 Additional Resources

If you want to dive deeper into Data Engineering on GCP, here are some additional resources that you may find helpful:

Feel free to explore these resources to enhance your understanding of Data Engineering concepts and tools.

🤝 Contribution

If you're interested in contributing to this repository, your input is highly appreciated! Feel free to fork the repository, make your enhancements, and submit a pull request. Together, we can make this repository a valuable resource for the Data Engineering community.

📜 License

This project is licensed under the MIT License - see the LICENSE file for details.


By leveraging the capabilities of Google Cloud Platform and Mage, you can streamline your Data Engineering processes and unlock valuable insights from your data. Happy Data Engineering! 🌟

🔗 Connect with us: GitHub | Twitter | LinkedIn