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creator-intelligence

majiayu000
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Metaaiautomationdesign

About

Creator Intelligence transforms Claude Code into a persistent AI operating system that maintains context across sessions through CLAUDE.md files. It enables developers to build personalized assistants with memory of projects, preferences, and workflows. Use it for setting up context-aware systems, orchestrating specialized agent teams, and creating persistent project knowledge.

Quick Install

Claude Code

Recommended
Plugin CommandRecommended
/plugin add https://github.com/majiayu000/claude-skill-registry
Git CloneAlternative
git clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/creator-intelligence

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

Documentation

Creator Intelligence System

Transform Claude Code into your personal Jarvis - an AI operating system that knows who you are.

When to Use

  • Setting up a new project with AI assistance
  • Building persistent context across sessions
  • Creating department-based agent systems
  • Designing personal productivity workflows

Core Capabilities

1. Persistent Context

Create CLAUDE.md files that preserve:

  • Project architecture and decisions
  • Your preferences and style
  • Active tasks and goals
  • Learned patterns

2. Department Orchestration

Deploy specialized teams:

  • Content: Writing, SEO, publishing
  • Dev: Code, testing, deployment
  • Design: UI/UX, branding
  • Marketing: Social, email, ads
  • Business: Strategy, ops, finance

3. MCP Integration

Connect local superpowers:

  • Filesystem: Read/write project files
  • Database: Persistent state storage
  • Browser: Web automation
  • Email: Notifications

Quick Start

# My Project CLAUDE.md

## Identity
This is [Project Name], a [description].

## Tech Stack
- Framework: Next.js 14
- Database: Supabase
- Hosting: Vercel

## Active Goals
- [ ] Launch MVP
- [ ] Onboard first users

## Preferences
- Code style: Clean, minimal
- Communication: Direct

Examples

  • "Set up my personal Jarvis" → Initialize full system
  • "Create a new skill for content repurposing" → Extend with custom skills
  • "Run my morning ops routine" → Execute automated daily operations

Guidelines

  1. Keep CLAUDE.md files updated with decisions
  2. Use consistent formatting for machine parsing
  3. Create skills for repeated workflows
  4. Document capabilities and examples

GitHub Repository

majiayu000/claude-skill-registry
Path: skills/creator-intelligence

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