---
name: faf-expert
description: "Advanced .faf (Foundational AI-context Format) specialist. IANA-registered format, MCP server config, championship scoring, bi-directional sync."
category: coding
risk: safe
source: community
source_repo: Wolfe-Jam/faf-skills
source_type: community
date_added: "2026-04-07"
author: wolfejam
tags: [faf, ai-context, project-management, mcp, iana]
tools: [claude, cursor, gemini, windsurf]
---

# FAF Expert - Advanced AI Context Architecture

**Master the IANA-registered format that makes AI understand your projects.**

Transform any codebase into an AI-intelligent project with persistent context that survives across sessions, tools, and AI platforms. Expert-level control over the foundational layer that powers modern AI development workflows.

## When to Use This Skill

Use FAF Expert when you need:

| Scenario | What FAF Expert Provides |
|----------|---------------------------|
| **Complex project setup** | Expert configuration of .faf files and MCP servers |
| **Championship scoring** | Achieve 85%+ AI-readiness scores for production projects |
| **Multi-AI workflows** | Universal context that works across Claude, Cursor, Gemini, Windsurf |
| **Legacy codebase revival** | Transform archaeology into AI-readable project DNA |
| **Team collaboration** | Standardized context format for consistent AI assistance |
| **Enterprise deployment** | Professional MCP server configuration and management |

## Real-World Examples

### Example 1: Legacy Enterprise Java System
```yaml
# Achieved: 92% Gold tier with FAF Expert
project:
  name: enterprise-payment-api
  goal: Mission-critical payment processing system
  
stack:
  backend: java-spring
  database: oracle
  runtime: java-11
  deployment: kubernetes
  
human_context:
  where: AWS EKS production cluster
  when: Legacy system from 2018, modernizing 2026
  how: Spring Boot 2.7, Oracle 19c, Docker containerization
```

### Example 2: Modern React Dashboard
```yaml
# Achieved: 97% Gold tier performance
project:
  name: analytics-dashboard
  goal: Real-time analytics for SaaS platform
  
stack:
  frontend: react-18
  css_framework: tailwind
  state: zustand
  build: vite
  testing: vitest
  deployment: vercel
```

## Core Capabilities

### 🏆 Championship Scoring System
- **Gold Tier (95%+)**: Production-ready AI context
- **Silver Tier (85%+)**: Professional development standard  
- **Bronze Tier (70%+)**: Solid foundation for AI assistance

### 🔧 MCP Server Configuration
Expert setup of claude-faf-mcp with 33 tools:
```json
{
  "mcpServers": {
    "faf": {
      "command": "npx",
      "args": ["-y", "claude-faf-mcp@latest"]
    }
  }
}
```

### 🔄 Bi-Directional Sync
Keep context synchronized across platforms:
- `.faf` ↔ `CLAUDE.md` 
- `.faf` ↔ `.cursorrules`
- `.faf` ↔ `GEMINI.md`
- `.faf` ↔ `AGENTS.md`

### 📊 Mk4 Architecture Framework
33-slot IANA format for comprehensive project context:
- Project identity and goals
- Technical stack detection  
- Human context (who/what/why/where/when/how)
- Architecture patterns
- Deployment configuration

## Getting Started

### Quick Installation
```bash
# Install FAF CLI
npm install -g faf-cli

# Initialize your project
faf init

# Score AI-readiness
faf score --details

# Set up MCP server
faf mcp install
```

### Expert Commands
```bash
# Advanced scoring with breakdown
faf score --championship --verbose

# Multi-platform sync
faf bi-sync --target all

# Validate format compliance
faf validate --strict

# Enhanced AI optimization
faf enhance --model claude --focus completeness
```

## Success Metrics

**Real Performance Data:**
- **52k+ downloads** across FAF ecosystem
- **800+ comprehensive tests** (CLI + MCP)
- **IANA-registered format** (application/vnd.faf+yaml)
- **153+ validated formats** supported
- **Championship-grade performance** (<50ms execution)

## Platform Compatibility

### Supported AI Tools
- ✅ **Claude Code** - Native MCP integration
- ✅ **Cursor** - .cursorrules sync
- ✅ **Gemini CLI** - GEMINI.md sync  
- ✅ **Windsurf** - .windsurfrules support
- ✅ **Universal** - Works with any AI that reads YAML

### MCP Servers Available
- `claude-faf-mcp` - 33 tools, 391 tests
- `grok-faf-mcp` - xAI/Grok optimized
- `rust-faf-mcp` - Native performance (4.3MB binary)
- `gemini-faf-mcp` - Google Gemini integration

## Advanced Patterns

### Enterprise Configuration
```yaml
faf_version: "3.0"
project:
  name: enterprise-platform
  tier: production
  
human_context:
  team_size: 50+
  compliance: SOC2, HIPAA
  deployment: multi-region
  
stack:
  architecture: microservices
  orchestration: kubernetes
  monitoring: datadog
  security: vault
```

### Legacy System Revival
```yaml
# Transform 10-year-old codebase to AI-ready
project:
  archaeology: true
  modernization_target: 2026
  
stack:
  legacy: php-5.6
  migration_path: laravel-11
  database_upgrade: mysql-8
```

## Expert Resources

- **Documentation**: https://faf.one
- **MCP Registry**: Official Anthropic steward
- **CLI Reference**: `faf --help`
- **Community**: Discord server with 1000+ developers
- **Enterprise**: Professional support available

## When to Use faf-wizard Instead

Use `faf-wizard` for:
- ✅ Quick project setup
- ✅ One-click generation
- ✅ Beginner-friendly workflow
- ✅ Automated stack detection

Use `faf-expert` for:
- 🎯 Fine-tuned configuration
- 🎯 Championship scoring optimization
- 🎯 Multi-platform sync management
- 🎯 Enterprise deployment patterns
- 🎯 Advanced MCP server setup

---

*Master the format that makes AI understand your projects. FAF Expert - for when you need championship-grade AI context architecture.*

## Limitations
- Use this skill only when the task clearly matches the scope described above.
- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
- Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.
