golden-word
About
The golden-word skill provides documentation for testing golden_word builds, including API references and technical specifications. Developers should use it to access code examples, implementation patterns, and troubleshooting guides. It covers key topics like getting started, installation, and common errors.
Quick Install
Claude Code
Recommendednpx skills add yusufkaraaslan/Skill_Seekers -a claude-code/plugin add https://github.com/yusufkaraaslan/Skill_Seekersgit clone https://github.com/yusufkaraaslan/Skill_Seekers.git ~/.claude/skills/golden-wordCopy and paste this command in Claude Code to install this skill
Documentation
Golden_Word Documentation Skill
Use when testing the word golden build
π Document Information
Title: The Manual
Author: John Roe
Created: 2023-05-05
Modified: 2024-02-02
π‘ When to Use This Skill
Use this skill when you need to:
- Understand golden_word concepts and fundamentals
- Look up API references and technical specifications
- Find code examples and implementation patterns
- Review tutorials, guides, and best practices
- Explore the complete documentation structure
π Section Overview
Total Sections: 3
Content Breakdown:
- manual: 3 sections
π Key Concepts
Main topics covered in this documentation
Major Topics:
- Getting Started Guide
- Troubleshooting
Subtopics:
- Installation Steps
- API Usage
- Common Errors
β‘ Quick Reference
Common documentation patterns found:
Getting Started (1 sections):
- Getting Started Guide (section 1)
Troubleshooting (1 sections):
- Troubleshooting (section 3)
Usage (1 sections):
- API Usage (section 2)
π Code Examples
High-quality examples extracted from documentation
Bash Examples (1)
Example 1 (Quality: 6.0/10):
pip install thing
Python Examples (2)
Example 1 (Quality: 9.5/10):
def long_example():
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x3
...
Example 2 (Quality: 8.5/10):
print('hello')
π Table Summary
2 table(s) found in document
From section: Getting Started Guide
| Option | Default |
|---|---|
| debug | false |
| port | 8080 |
From section: API Usage
π Documentation Statistics
- Total Sections: 3
- Code Blocks: 3
- Images/Diagrams: 1
- Tables: 2
- Programming Languages: 2
Language Breakdown:
- python: 2 examples
- bash: 1 examples
πΊοΈ Navigation
Reference Files:
references/manual.md- manual
See references/index.md for complete documentation structure.
Generated by Skill Seeker | Word Document Scraper
GitHub Repository
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