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moai-cc-commands

modu-ai
Updated Yesterday
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Metaaiautomation

About

The moai-cc-commands skill provides a system for creating custom commands, managing workflows, and implementing CLI interfaces. Use it when you need to orchestrate development workflows, handle command-line parameters, or design command systems. It supports core CLI operations and command validation using Read, Bash, and Glob tools.

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-commands

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

Documentation

Claude Code Commands System

Skill Metadata

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

What It Does

Claude Code Commands system, workflow orchestration, and command-line interface patterns.

Key capabilities:

  • ✅ Command creation and management
  • ✅ Workflow orchestration
  • ✅ CLI interface design
  • ✅ Parameter handling
  • ✅ Command validation

When to Use

  • ✅ Creating custom commands
  • ✅ Managing development workflows
  • ✅ Implementing CLI interfaces
  • ✅ Orchestrating complex operations

Core Command Patterns

Command Architecture

  1. Command Registration: Command discovery and loading
  2. Parameter Handling: Input validation and processing
  3. Workflow Orchestration: Multi-step command execution
  4. Error Handling: Graceful failure recovery
  5. Help System: Command documentation and usage

Command Types

  • Utility Commands: Helper and convenience functions
  • Workflow Commands: Multi-step process automation
  • Integration Commands: Third-party service interactions
  • Management Commands: System administration tasks
  • Development Commands: Development workflow support

Dependencies

  • Claude Code commands system
  • CLI framework
  • Parameter validation
  • Workflow orchestration tools

Works Well With

  • moai-cc-agents (Command execution delegation)
  • moai-cc-hooks (Command event handling)
  • moai-project-config-manager (Project-specific commands)

Changelog

  • v2.0.0 (2025-11-11): Added complete metadata, command architecture patterns
  • v1.0.0 (2025-10-22): Initial commands system

End of Skill | Updated 2025-11-11

GitHub Repository

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

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