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moai-cc-agents

modu-ai
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Metaaiautomation

About

This skill provides a system for creating and managing Claude Code Agents, including task delegation patterns and multi-agent coordination. Use it when building custom agents, implementing task delegation, or orchestrating multi-agent workflows. It supports key capabilities like agent creation, workflow management, and coordination protocols.

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-agents

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

Documentation

Claude Code Agents System

Skill Metadata

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

What It Does

Claude Code Agents system, task delegation patterns, and multi-agent coordination.

Key capabilities:

  • ✅ Agent creation and management
  • ✅ Task delegation patterns
  • ✅ Multi-agent coordination
  • ✅ Workflow orchestration
  • ✅ Agent communication protocols

When to Use

  • ✅ Creating custom agents
  • ✅ Managing agent workflows
  • ✅ Implementing task delegation
  • ✅ Coordinating multi-agent systems

Core Agent Patterns

Agent Architecture

  1. Task Delegation: Specialized task assignment
  2. Agent Communication: Inter-agent messaging
  3. Workflow Coordination: Multi-agent orchestration
  4. Resource Management: Agent resource allocation
  5. Performance Monitoring: Agent effectiveness tracking

Agent Types

  • Specialist Agents: Domain-specific expertise
  • General Agents: Broad capability coverage
  • Coordinator Agents: Workflow management
  • Automation Agents: Repetitive task handling
  • Validation Agents: Quality and compliance checking

Dependencies

  • Claude Code agents system
  • Task delegation framework
  • Agent communication protocols
  • Workflow orchestration tools

Works Well With

  • moai-cc-skills (Agent knowledge)
  • moai-cc-hooks (Agent event handling)
  • moai-alfred-agent-guide (Agent selection patterns)

Changelog

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

End of Skill | Updated 2025-11-11

GitHub Repository

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

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