Skip to main content

Process Google Takeout data and visualize it using Dash.

Project description

Splash Image

Self Stats - Google Takeout Data Insights Visualizer 📊

Welcome to Self Stats Google Takeout Data Insights Visualizer! This Python package revolutionizes how you interact with your personal Google Analytics data extracted via Google Takeout. By offering eye-catching, interactive visualizations, this tool helps you gain deep insights into your digital footprint with Google services. Whether you're a data enthusiast or simply curious about your online habits, this tool provides valuable perspectives into your personal analytics data.

Features 🌟

  • Custom Data Processing: Import and analyze your personal Google Analytics data from Google Takeout.
  • Interactive Visualizations: Engage with your data through beautifully designed graphs and interactive charts.
  • Insight Discovery: Discover trends, patterns, and more from your personal usage data.
  • User-Friendly Interface: Easy setup and intuitive controls make your data exploration enjoyable and straightforward.

Getting Started 🚀

Prerequisites

To use the Google Takeout Data Insights Visualizer, you will need:

  • Python 3.6 or higher
  • Pip for Python package management

Installation

Install this package using pip:

pip install takeout-insights-visualizer

Data Preparation

Downloading Your Data from Google Takeout

  • Open your web browser and go to Google Takeout.
  • Google Takeout allows you to export data from your Google account products.
  • Choose the Google products you want data from. Ensure you have selected "MyActivity" and "YouTube and YouTube Music"
  • Change the file format to JSON.
  • Once your archive is ready, Google will notify you via email.
  • Download the archive and extract it.

Google Takeout Demo

Setting Up the Visualizer

  1. Prepare Your Data:

    • After extracting your data, place the relevant Google Analytics JOSN file(s) in a chosen directory.
    • The package will detect specific filenames automatically so ensure they are correctly named:
      • "watch-history.html": initiates YouTube watch history processing.
      • "MyActivity": initiates search history processing.
    • The package will ask you to specify the directory with the data.
    • Processed files will be populated in the chosen directory.
  2. Configuration:

    • Modify any necessary settings in config.py to customize how data is processed and visualized.

Usage

Run the visualization tool with:

python -m takeout_visualizer

Choose the analytics files and types of visualizations through the command line interface.

Example Visualizations 📈

  • Activity Heatmaps: Visualize your online activity patterns over time.
  • Service Interaction Overview: Understand how you use different Google services.
  • Data Footprint Analysis: Explore the volume and type of data stored across various services.

Contributing 🤝

We encourage contributions from the community! Please read our CONTRIBUTING.md for guidelines on how to participate in developing this tool further.

Data Privacy Disclaimer

While the Self Stats Google Takeout Data Insights Visualizer offers powerful insights into your personal Google Analytics data, it's important to handle your data with care. Here are some precautions we strongly advise:

  • Sensitive Information: Your Google Takeout archive may contain sensitive personal information. Ensure you securely handle and store this data to prevent unauthorized access.
  • Data Security: Only use this tool on devices you trust, within secure environments. Avoid using public or shared computers where data might be compromised.
  • Privacy Settings: Regularly review your privacy settings on Google and other online platforms to manage what data is collected about you.
  • Data Sharing: Be cautious about sharing your insights and visualizations. They could inadvertently reveal personal information about you or your habits.
  • Legal Compliance: Ensure your use of data complies with local data protection laws and regulations, including GDPR, if applicable.

By using this tool, you agree to do so at your own risk. The developers of the Self Stats Google Takeout Data Insights Visualizer are not responsible for any data breaches or privacy violations that may occur from improper handling of your data. Always prioritize your data privacy and use this tool responsibly.

License

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

Support and Feedback 📝

For support, feature requests, or to report bugs, please use the repository's issue tracker.

Why Choose Google Takeout Data Insights Visualizer?

Our tool not only visualizes your data from Google Takeout but also provides a powerful platform to uncover and understand personal trends and usage statistics, empowering you with the knowledge to make informed decisions about your digital privacy and online habits.

TODO

  • Make a blank data folder to submit to github for user access
  • Be more explicit about JSON settings for download
  • Change package name to something different
  • Add plot titles
  • Label axis better
  • Add modules to the init files
  • Document directory names
  • Make module docstrings
  • Leave some more comments throughout the script

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

self_stats_app-0.1.0.tar.gz (17.4 kB view hashes)

Uploaded Source

Built Distribution

self_stats_app-0.1.0-py3-none-any.whl (26.1 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page