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github-integration

dave1010
Updated Yesterday
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Metaaidesign

About

This GitHub integration skill provides authentication helpers and Gist operations for building GitHub-based features. It handles token management through device login flow and includes utilities for reading, writing, and rendering Gists. Developers should use this when implementing GitHub functionality that requires API access and Gist manipulation.

Quick Install

Claude Code

Recommended
Plugin CommandRecommended
/plugin add https://github.com/dave1010/tools
Git CloneAlternative
git clone https://github.com/dave1010/tools.git ~/.claude/skills/github-integration

Copy and paste this command in Claude Code to install this skill

Documentation

GitHub tokens and auth

  • Check whether github-device-login-token is already in local storage before prompting users.
  • When the token is missing or lacks scopes, direct users to /tools/github-device-login/ to refresh authorization.

Gists

  • Review tools/scratch-pad/index.html for an end-to-end example of creating and saving Gists.
  • Render saved HTML gists at https://gistpreview.github.io/?${encodeURIComponent(gistId)} to preview their content.

GitHub Repository

dave1010/tools
Path: .skills/github-integration

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