Madhav-MKNC / GitHub-Streaks-Visualizer

An interactive graph plots streaks on the y-axis against days on the x-axis. Hover over points to reveal streak details. Gain deeper insights into your GitHub activity with the GitHub Streaks Grapher.

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

[Under Development]

GitHub Streaks Visualizer

GitHub Streaks Grapher Banner

Track and Visualize Your GitHub Contribution Streaks


Overview

GitHub Streaks Visualizer is a powerful web application designed to take your GitHub contribution tracking to the next level. Unlike conventional streak trackers that show only the highest and current streaks, this tool offers an in-depth exploration of your contribution history over time.

Powered by GitHub's REST API and tailored to your profile, this application calculates streaks by identifying uninterrupted sequences of days with contributions. The resulting insights are then translated into an interactive graph, where streak lengths are plotted on the y-axis against days on the x-axis.

Features

  • Comprehensive Visualization: Get a holistic view of your GitHub activity with a graph that showcases all your contribution streaks.
  • Interactive Experience: Hover over data points to reveal specific streak details, including start dates and streak lengths.
  • Personalized Insights: Dive deep into your GitHub journey by exploring your historical contribution patterns.
  • Easy to Use: Simply enter your GitHub username to generate your streak visualization in moments.
  • Customizable Graphing: The application utilizes a versatile graphing library, allowing for visual customization and responsiveness.

Getting Started [SOON]

Screenshots [SOON]

Streaks Graph

License

This project is licensed under the MIT License.


Made with "Madhav Kumar" by "❤️"

About

An interactive graph plots streaks on the y-axis against days on the x-axis. Hover over points to reveal streak details. Gain deeper insights into your GitHub activity with the GitHub Streaks Grapher.

License:MIT License


Languages

Language:Python 74.7%Language:JavaScript 18.8%Language:HTML 6.6%