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Structured Workflow Engine MCP Server

by mlaurel
MIT License
README.md5.51 kB
# 🎯 Structured Workflow Engine MCP Server **Context Engineering Framework** with ready-to-use development workflows that bring structure to chaos. ## 🎯 What is this **Structured Workflow System** - designed to help both high-tier and low-tier AI models follow consistent processes: - **🧠 Context Engineering** - workflows engineered for reliable AI execution across model tiers - **🔧 9 Workflows** - battle-tested processes that provide structure and guardrails - **⚡ Smart Validation** - automatically validates prerequisites and skips irrelevant steps - **📋 12 Mini-Prompts** - context-engineered prompts organized by development phases ## 🚀 Installation ```bash # 1. Clone repository git clone https://github.com/your-repo/agents-playbook cd agents-playbook # 2. Install dependencies npm install # 3. Add OpenAI API key to .env OPENAI_API_KEY=your_key_here # 4. Generate search index npm run build:embeddings # 5. Start server npm run dev ``` **MCP Server**: - **Local Development**: http://localhost:3000/api/mcp - **Production**: https://agents-playbook.vercel.app/api/mcp ## 🧪 Testing ```bash # MCP Inspector for testing DANGEROUSLY_OMIT_AUTH=true npx @modelcontextprotocol/inspector@latest http://localhost:3000/api/mcp # Run tests (90+ tests) npm run test:integration ``` ## 🛠️ Available Tools ### `get_available_workflows` Search workflows with AI semantic search. **Example**: - Input: `"fix critical bug"` - Output: `quick-fix` workflow (🎯 89% match) ### `select_workflow` Get complete workflow with execution plan. ### `get_next_step` Step-by-step navigation with smart validation. ## 📁 Workflows (9 total) ### 🚀 Development (4) - **feature-development** - Complete feature development lifecycle - **product-development** - From idea to product launch - **quick-fix** - Fast bug fixes and hotfixes - **code-refactoring** - Code architecture improvements ### 🧪 Testing & QA (3) - **fix-tests** - Systematic test failure diagnosis and repair with refactoring integration - **fix-circular-dependencies** - Comprehensive circular dependency resolution with architectural refactoring - **unit-test-coverage** - Comprehensive unit test coverage improvement ### 📋 Setup & Planning (2) - **project-initialization** - New project setup - **trd-creation** - Technical Requirements Document creation ## 🎯 Usage Examples ``` 1. Search: "create new feature" 2. Result: feature-development workflow (🎯 92% match) 3. Execute: 14 steps with TRD integration and smart skipping ``` ``` 1. Search: "improve test coverage" 2. Result: unit-test-coverage workflow (🎯 94% match) 3. Execute: 7 steps of systematic coverage improvement ``` ``` 1. Search: "circular dependencies" 2. Result: fix-circular-dependencies workflow (🎯 95% match) 3. Execute: 7 steps of dependency resolution with refactoring integration ``` ``` 1. Search: "technical documentation" 2. Result: trd-creation workflow (🎯 94% match) 3. Execute: 7 steps of TRD creation with validation ``` ## 🔌 MCP Integration ### 🤖 Claude Desktop ```json { "mcpServers": { "agents-playbook": { "url": "https://agents-playbook.vercel.app/api/mcp" } } } ``` ### 🎯 Cursor Add to your Cursor settings or create a MCP configuration: ```json { "mcpServers": { "agents-playbook": { "url": "https://agents-playbook.vercel.app/api/mcp", "description": "AI Agent Workflow Engine with semantic search" } } } ``` **For Cursor users:** 1. Open Cursor Settings 2. Navigate to "Extensions" or "Integrations" 3. Add MCP Server configuration 4. Restart Cursor ### 📁 Direct File Usage (Any IDE) Copy playbook files directly to your project: ```bash # Copy entire playbook to your project cp -r public/playbook/ /path/to/your/project/ # For Cursor: create a .cursorrules file echo "Use workflows from playbook/ directory for structured development" > .cursorrules ``` ## 📚 Local Usage ```bash # Copy entire playbook to your project cp -r public/playbook/ /path/to/your/project/ # For Cursor: create a .cursorrules file echo "Use workflows from playbook/ directory for structured development" > .cursorrules ``` **Benefits:** - ✅ Works without MCP server - ✅ Customize for your team - ✅ Offline access - ✅ Version control with project - ✅ Cursor can reference workflows directly ## 🧠 How it works - **Context Engineering** - workflows designed with clear context boundaries and validation - **Semantic Search** - OpenAI embeddings understand task context for workflow selection - **YAML Workflows** - structured processes with phases, steps, and guardrails - **Mini-Prompts** - context-engineered reusable prompts that work across model tiers - **Smart Validation** - prevents execution without required context, provides structure for low-tier models ## 🐛 Troubleshooting ### "No workflows found" - Use simple terms: "bug", "feature", "documentation" - Check: `npm run build:embeddings` ### "OpenAI API errors" - Check `OPENAI_API_KEY` in `.env` - System falls back to text search if OpenAI unavailable ### "Can't connect to MCP server" - Make sure server is running: `npm run dev` - URL: `http://localhost:3000/api/mcp` ### "Steps are being skipped" - This is normal behavior! System skips steps without required context - Check logs to understand skip reasons --- **🎯 Structured Workflow Engine** - Context engineering framework that brings order to chaos in AI-driven development

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