KS
Killer-Skills

skill-from-github — Categories.community

v1.0.0
GitHub

About this Skill

Perfect for AI Agents needing automated skill data fetching and GitHub project analysis capabilities. A crawler script to fetch skill data from network, automatically executed daily via GitHub Actions.

NeverSight NeverSight
[0]
[0]
Updated: 2/20/2026

Quality Score

Top 5%
75
Excellent
Based on code quality & docs
Installation
SYS Universal Install (Auto-Detect)
Cursor IDE Windsurf IDE VS Code IDE
> npx killer-skills add NeverSight/skills_feed/skill-from-github

Agent Capability Analysis

The skill-from-github MCP Server by NeverSight is an open-source Categories.community integration for Claude and other AI agents, enabling seamless task automation and capability expansion.

Ideal Agent Persona

Perfect for AI Agents needing automated skill data fetching and GitHub project analysis capabilities.

Core Value

Empowers agents to crawl and understand quality projects from GitHub, utilizing GitHub Actions for daily execution, and providing insights into projects that solve specific problems, such as converting markdown to PDF or analyzing sentiment in customer reviews.

Capabilities Granted for skill-from-github MCP Server

Automating skill data updates from GitHub repositories
Generating insights from open-source projects for task automation
Discovering existing tools for sentiment analysis or API documentation generation

! Prerequisites & Limits

  • Requires GitHub Actions setup
  • Dependent on network connectivity for crawling
  • Limited to publicly available GitHub projects
Project
SKILL.md
4.6 KB
.cursorrules
1.2 KB
package.json
240 B
Ready
UTF-8

# Tags

[No tags]
SKILL.md
Readonly

Skill from GitHub

When users want to accomplish something, search GitHub for quality projects that solve the problem, understand them deeply, then create a skill based on that knowledge.

When to Use

When users describe a task and you want to find existing tools/projects to learn from:

  • "I want to be able to convert markdown to PDF"
  • "Help me analyze sentiment in customer reviews"
  • "I need to generate API documentation from code"

Workflow

Step 1: Understand User Intent

Clarify what the user wants to achieve:

  • What is the input?
  • What is the expected output?
  • Any constraints (language, framework, etc.)?

Step 2: Search GitHub

Search for projects that solve this problem:

{task keywords} language:{preferred} stars:>100 sort:stars

Search tips:

  • Start broad, then narrow down
  • Try different keyword combinations
  • Include "cli", "tool", "library" if relevant

Quality filters (must meet ALL):

  • Stars > 100 (community validated)
  • Updated within last 12 months (actively maintained)
  • Has README with clear documentation
  • Has actual code (not just awesome-list)

Step 3: Present Options to User

Show top 3-5 candidates:

markdown
1## Found X projects that can help 2 3### Option 1: [project-name](github-url) 4- Stars: xxx | Last updated: xxx 5- What it does: one-line description 6- Why it's good: specific strength 7 8### Option 2: ... 9 10Which one should I dive into? Or should I search differently?

Wait for user confirmation before proceeding.

Step 4: Deep Dive into Selected Project

Once user selects a project, thoroughly understand it:

  1. Read README - Understand purpose, features, usage
  2. Read core source files - Understand how it works
  3. Check examples - See real usage patterns
  4. Note dependencies - What it relies on
  5. Identify key concepts - The mental model behind it

Extract:

  • Core algorithm/approach
  • Input/output formats
  • Error handling patterns
  • Best practices encoded in the code

Step 5: Summarize Understanding

Present what you learned to user:

markdown
1## Understanding [project-name] 2 3### Core Approach 4How it solves the problem... 5 6### Key Techniques 71. ... 82. ... 9 10### Limitations 11- ... 12 13### What I'll encode in the skill 14- ... 15 16Does this look right? Should I proceed to create the skill?

Wait for user confirmation.

Step 6: Create Skill via create-skill

Hand off to /create-skill with:

  1. Clear purpose - What the skill does
  2. Methodology - The approach learned from the project
  3. Step-by-step process - Concrete instructions
  4. Quality criteria - What good output looks like
  5. Common pitfalls - What to avoid (learned from project issues/docs)

Important: The skill should encode the knowledge from the project, not just wrap the tool. The skill should work even without the original project installed.

Example

User: "I want to write better commit messages"

Step 2 - Search:

commit message convention stars:>100 sort:stars

Step 3 - Present:

## Found 4 projects

### Option 1: conventional-commits/conventionalcommits.org (4.2k ⭐)
- Specification for human and machine readable commit messages
- Why: Industry standard, used by Angular, Vue, etc.

### Option 2: commitizen/cz-cli (15k ⭐)
- CLI tool for creating conventional commits
- Why: Battle-tested, lots of adapters

### Option 3: carloscuesta/gitmoji (14k ⭐)
- Emoji guide for commit messages
- Why: Visual, fun approach

Which one interests you?

User: "Let's go with conventional commits"

Step 4 - Deep dive:

  • Read the specification
  • Understand types (feat, fix, docs, etc.)
  • Learn about scopes, breaking changes
  • Study real-world examples

Step 5 - Summarize:

## Understanding Conventional Commits

### Core Approach
Structured format: <type>(<scope>): <description>

### Key Types
- feat: new feature
- fix: bug fix
- docs: documentation
- ...

### Benefits Learned
- Automated changelog generation
- Semantic versioning
- Clear history

Ready to create a commit message skill based on this?

Step 6 - Create skill with these principles encoded

Important Notes

  1. Always get user confirmation - At step 3 (project selection) and step 5 (before creating)
  2. Prefer learning over wrapping - Encode the knowledge, not just "run this tool"
  3. Check license - Mention if project has restrictive license
  4. Credit the source - Include attribution in generated skill
  5. Quality over speed - Take time to truly understand the project

What This Skill is NOT

  • NOT a package installer
  • NOT a tool wrapper
  • It's about learning from the best projects and encoding that knowledge into a reusable skill

Related Skills

Looking for an alternative to skill-from-github or building a Categories.community AI Agent? Explore these related open-source MCP Servers.

View All

widget-generator

Logo of f
f

widget-generator is an open-source AI agent skill for creating widget plugins that are injected into prompt feeds on prompts.chat. It supports two rendering modes: standard prompt widgets using default PromptCard styling and custom render widgets built as full React components.

149.6k
0
Design

chat-sdk

Logo of lobehub
lobehub

chat-sdk is a unified TypeScript SDK for building chat bots across multiple platforms, providing a single interface for deploying bot logic.

73.0k
0
Communication

zustand

Logo of lobehub
lobehub

The ultimate space for work and life — to find, build, and collaborate with agent teammates that grow with you. We are taking agent harness to the next level — enabling multi-agent collaboration, effortless agent team design, and introducing agents as the unit of work interaction.

72.8k
0
Communication

data-fetching

Logo of lobehub
lobehub

The ultimate space for work and life — to find, build, and collaborate with agent teammates that grow with you. We are taking agent harness to the next level — enabling multi-agent collaboration, effortless agent team design, and introducing agents as the unit of work interaction.

72.8k
0
Communication