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moai-cc-skills

modu-ai
Updated 3 days ago
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Metaaidesign

About

This Claude Skill provides management capabilities for Claude Code Skills libraries, including skill creation patterns and knowledge capsule architecture. Use it when creating custom Skills, managing skill collections, or designing knowledge systems. It offers guidelines for skill development, library management, and progressive disclosure patterns.

Quick Install

Claude Code

Recommended
Plugin CommandRecommended
/plugin add https://github.com/modu-ai/moai-adk
Git CloneAlternative
git clone https://github.com/modu-ai/moai-adk.git ~/.claude/skills/moai-cc-skills

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

Documentation

Claude Code Skills Management

Skill Metadata

FieldValue
Skill Namemoai-cc-skills
Version2.0.0 (2025-11-11)
Allowed toolsRead, Bash, Glob
Auto-loadOn demand when skill management detected
TierClaude Code (Core)

What It Does

Claude Code Skills management, skill creation patterns, and knowledge capsule architecture.

Key capabilities:

  • ✅ Skill creation guidelines
  • ✅ Knowledge capsule architecture
  • ✅ Skill library management
  • ✅ Progressive disclosure patterns
  • ✅ Metadata standards

When to Use

  • ✅ Creating custom Skills
  • ✅ Managing skill libraries
  • ✅ Designing knowledge systems
  • ✅ Optimizing skill loading

Core Skill Patterns

Skill Architecture

  1. Knowledge Capsules: <500-word focused content
  2. Progressive Disclosure: Load on-demand based on keywords
  3. Metadata Standards: Consistent skill identification
  4. Template System: Reusable skill patterns
  5. Quality Gates: Validation and review processes

Creation Workflow

  • Problem Definition: Clear skill purpose
  • Content Design: Structured knowledge delivery
  • Metadata Assignment: Proper categorization
  • Quality Review: Content validation
  • Integration Testing: Skill activation verification

Dependencies

  • Claude Code environment
  • Skill template system
  • Metadata standards
  • Quality validation processes

Works Well With

  • moai-cc-skill-factory (Skill creation)
  • moai-cc-memory (Knowledge management)
  • moai-cc-settings (Configuration)

Changelog

  • v2.0.0 (2025-11-11): Added complete metadata, skill architecture patterns
  • v1.0.0 (2025-10-22): Initial skills management

End of Skill | Updated 2025-11-11

GitHub Repository

modu-ai/moai-adk
Path: src/moai_adk/templates/.claude/skills/moai-cc-skills
agentic-aiagentic-codingagentic-workflowclaudeclaudecodevibe-coding

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