MCP Server & Claude Code Plugin for Multi-Agent Workflows
An MCP server that orchestrates AI agents through structured markdown documents. Create linked specifications and tasks, assign work to specialized agents with a single command, and let the system handle context injection and workflow management automatically.
- What It Does
- Key Features
- Claude Code Plugin
- Direct MCP Server Installation
- Tools Overview
- Use Case
- License
This server enables you to:
- Spec out projects as a team or solo using interlinked markdown documents
- Make better decisions using the multi-option tradeoff workflow
- Orchestrate specialized agents by simply assigning tasks—the server injects the right context automatically
- Maintain impartial reviews by keeping the coordinator agent separate from implementation details
- Create linked documents with specifications, guides, and architecture decisions
- Add @references to link related content that gets auto-injected when needed
- Assign tasks to agents using coordinator or subagent workflows
- Agent completes and reports "Done"—coordinator reviews code changes directly
- Review without bias by examining the actual changes, only consulting notes if needed
The system preserves context across sessions while keeping your main agent focused on orchestration and review rather than implementation details.
Dual Task System
- Coordinator tasks for sequential project work (auto-archives when complete)
- Subagent tasks for flexible ad-hoc work across documents
Automatic Context Injection
- Link documents with
@/path/doc.md#sectionsyntax - Referenced content loads automatically when tasks start
- Works on any project—no configuration needed
Workflow Library
- 11 pre-built workflows for common development scenarios
- Access via
get_workflowtool or Claude Code plugin commands - Reference workflows in task metadata for automatic injection
- Create your own custom workflows easily
/plugin marketplace add https://github.com/Blakeem/AI-Prompt-Guide-MCP
/plugin install ai-prompt-guide@ai-prompt-guide-marketplaceThe plugin provides 11 workflows accessible both as slash commands and via the get_workflow MCP tool:
Development Workflows:
/ai-prompt-guide:develop– Simple development with anti-pattern detection and regression prevention/ai-prompt-guide:develop-fix– Bug fixing with root cause analysis and regression prevention/ai-prompt-guide:develop-tdd– Orchestrate multi-agent development with TDD/ai-prompt-guide:develop-iterate– Orchestrate multi-agent development with manual verification
Quality & Review Workflows:
/ai-prompt-guide:review– Targeted review of PRs or components/ai-prompt-guide:audit– Quality audit with specialized agents/ai-prompt-guide:coverage– Add comprehensive test coverage
Decision Workflows:
/ai-prompt-guide:decide– Structured decision making with trade-off analysis/ai-prompt-guide:decide-iterate– Multi-perspective decision analysis with parallel agents
Specification Workflows:
/ai-prompt-guide:spec-feature– Document internal feature specifications/ai-prompt-guide:spec-external– Document external API specifications
Commands are shortcuts to workflows. When using Claude Code, the plugin commands provide a convenient way to invoke workflows. When using the MCP server directly, access the same workflows via:
get_workflow({ workflow: "develop" })
get_workflow({ workflow: "develop-fix" })
get_workflow({ workflow: "develop-tdd" })
get_workflow({ workflow: "audit" })
// ... etcSimple development (no multi-agent orchestration):
/ai-prompt-guide:develop Add a dark mode toggle to the settings page with persistence to localStorage
Bug fixing:
/ai-prompt-guide:develop-fix The form submission fails when the email field is empty - returns undefined instead of validation error
Multi-agent development with TDD:
/ai-prompt-guide:develop-tdd Build an admin dashboard with user activity charts, region filtering, and CSV export. Include tests for the aggregation logic.
The plugin loads the appropriate workflow and guides you through the implementation process.
- Node.js 18+
- pnpm 10.x
This repository includes production dependencies (35MB) for true zero-config operation:
# Clone and use immediately - no install needed!
git clone https://github.com/your-org/AI-Prompt-Guide-MCP.git
cd AI-Prompt-Guide-MCP
pnpm start # Or use with Claude Code plugin directlyFor Contributors/Developers:
To add development tools (linting, testing, TypeScript):
pnpm install # Adds dev dependencies on top of committed prod deps
pnpm build # Rebuild after code changesHelpful scripts:
pnpm deps:dev- Install all dependencies including dev toolspnpm deps:prod- Strip back to production-only (for commit)
# Development
pnpm dev
# Production
pnpm start
# Test with inspector
pnpm inspectorZero-config by default - the server works immediately with no setup required. When you run Claude Code from a project directory, it automatically creates a .ai-prompt-guide/ folder in your project to store documents, tasks, and archives.
MCP Server Setup (for non-Claude Code Plugin users):
Add to your MCP client configuration (e.g., .mcp.json):
{
"mcpServers": {
"ai-prompt-guide-mcp": {
"command": "node",
"args": ["/path/to/AI-Prompt-Guide-MCP/dist/index.js"],
"env": {
"MCP_WORKSPACE_PATH": "/custom/workspace/path"
}
}
}
}Replace /path/to/AI-Prompt-Guide-MCP with your actual clone location. No build step required—built files are included.
Optional Settings:
MCP_WORKSPACE_PATH- Custom workspace path (default: current directory)DOCS_BASE_PATH- Documents location (default:.ai-prompt-guide/docsin zero-config mode)ARCHIVED_BASE_PATH- Archived documents (default:.ai-prompt-guide/archivedin zero-config mode)COORDINATOR_BASE_PATH- Coordinator tasks (default:.ai-prompt-guide/coordinatorin zero-config mode)REFERENCE_EXTRACTION_DEPTH- How deep to follow @references (1-5, default: 3)LOG_LEVEL- Logging verbosity (debug, info, warn, error)
Per-Project Configuration:
Create .mcp-config.json in your project root for project-specific settings:
{
"env": {
"DOCS_BASE_PATH": "/custom/docs",
"ARCHIVED_BASE_PATH": "/custom/archive",
"COORDINATOR_BASE_PATH": "/custom/coordinator"
}
}Zero-config structure (created automatically in your project):
your-project/
└── .ai-prompt-guide/
├── docs/ # Your documents and subagent tasks
├── coordinator/ # Sequential project tasks
└── archived/ # Completed work (auto-populated)
├── docs/ # Archived documents
└── coordinator/ # Archived task lists
Shared resources (bundled with the MCP server):
{mcp-server}/.ai-prompt-guide/
├── workflows/ # Reusable workflow protocols
└── guides/ # Documentation best practices
Everything is created automatically—no manual setup required. Workflows and guides are shared across all your projects.
The server provides 20 MCP tools organized by function:
create_document– Create new documents with namespace selectionbrowse_documents– Navigate document hierarchy and list contentssearch_documents– Full-text or regex search across all documents
section– Edit, append, insert, or remove sections in bulk
coordinator_task– Create, edit, or list coordinator tasksstart_coordinator_task– Start the first pending task with full contextcomplete_coordinator_task– Complete task and get next or auto-archiveview_coordinator_task– View coordinator task details
subagent_task– Create, edit, or list subagent tasksstart_subagent_task– Start specific task with full contextcomplete_subagent_task– Complete task and get next pendingview_subagent_task– View subagent task details
view_document– View complete document structure with metadataview_section– View section content without starting work
edit_document– Update document title and overviewdelete_document– Delete or archive documentsmove– Move sections within or across documents (supports both regular sections and subagent tasks)move_document– Move documents to new namespaces
get_workflow– Load workflow protocol contentget_guide– Access documentation guides
All tools use consistent addressing (/doc.md#section) and work together seamlessly.
Spec-driven development with automatic agent orchestration:
- Create linked specification documents for your project
- Add coordinator tasks for the implementation phases
- Assign the first task to a specialized agent with one command
- Agent gets full context automatically (specs, workflows, references)
- Agent completes work and reports "Done"
- Review actual code changes to maintain objectivity
- Move to next task—system queues it with the right context
The coordinator agent stays focused on orchestration and quality while specialized agents handle implementation. Your impartiality is preserved because you review code directly, not summaries.
MIT. See LICENSE for details.