MCP Educational Tutor
An intelligent tutoring server that uses GitHub documentation repositories to provide structured educational prompts and tools.
Educational Tutor
An experimental system that transforms documentation repositories into interactive educational content using AI and the Model Context Protocol (MCP).
🌟 Overview
This project consists of two main components:
- 📚 Course Content Agent - Generates structured learning courses from documentation repositories
- 🔧 MCP Educational Server - Provides standardized access to course content via MCP protocol
🏗️ Architecture
Documentation Repository → Course Content Agent → Structured Courses → MCP Server → AI Tutors
The system processes documentation, creates educational content, and exposes it through standardized tools for AI tutoring applications.
📂 Project Structure
tutor/
├── course_content_agent/ # AI-powered course generation from docs
│ ├── main.py # CourseBuilder orchestration
│ ├── modules.py # Core processing logic
│ ├── models.py # Pydantic data models
│ ├── signatures.py # DSPy LLM signatures
│ └── about.md # 📖 Detailed documentation
├── mcp_server/ # MCP protocol server for course access
│ ├── main.py # MCP server startup
│ ├── tools.py # Course interaction tools
│ ├── course_management.py # Content processing
│ └── about.md # 📖 Detailed documentation
├── course_output/ # Generated course content
├── nbs/ # Jupyter notebooks for development
└── pyproject.toml # Project configuration
🚀 Quick Start
1. Install Dependencies and Create Virtual Environment
This project uses uv for fast Python package management.
# Create a virtual environment
python -m uv venv
# Install dependencies in editable mode
.venv/bin/uv pip install -e .
2. Generate Courses from Documentation
# Generate courses from a repository
.venv/bin/uv run python course_content_agent/test.py
Customize for Your Repository: Edit course_content_agent/test.py to change:
- Repository URL (currently uses MCP docs)
- Include/exclude specific folders
- Output directory and caching settings
3. Start MCP Server
# Serve generated courses via MCP protocol
.venv/bin/uv run python -m mcp_server.main
# Or customize course directory
COURSE_DIR=your_course_output .venv/bin/uv run python -m mcp_server.main
4. Test MCP Integration
# Test server capabilities
.venv/bin/uv run python mcp_server/stdio_client.py
📖 Detailed Documentation
For comprehensive information about each component:
-
Course Content Agent: See
course_content_agent/about.md- AI-powered course generation
- DSPy signatures and multiprocessing
- Document analysis and learning path creation
-
MCP Educational Server: See
mcp_server/about.md- MCP protocol implementation
- Course interaction tools
- Integration with AI assistants
🔌 MCP Integration with Cursor
To use the educational tutor MCP server with Cursor, create a .cursor/mcp.json file in your project root:
{
"mcpServers": {
"educational-tutor": {
"command": "/path/to/tutor/project/.venv/bin/uv",
"args": [
"--directory",
"/path/to/tutor/project",
"run",
"mcp_server/main.py"
],
"env": {
"COURSE_DIR": "/path/to/tutor/project/course_output"
}
}
}
}
Setup Steps:
- Create a virtual environment:
python -m uv venv - Install dependencies:
.venv/bin/uv pip install -e . - Update the
commandpath and the path inargsto your project directory. - Restart Cursor or reload the window.
- Use
@educational-tutorin Cursor chat to access course tools.
🔧 Development Status
Current Status: ✅ Functional MVP
- Course generation from documentation repositories
- MCP server for standardized content access
- Multi-complexity course creation (beginner/intermediate/advanced)
Future Enhancements:
- Support for diverse content sources (websites, videos)
- Advanced search and recommendation systems
- Integration with popular AI platforms
🛠️ Technology Stack
- AI Framework: DSPy for LLM orchestration
- Content Processing: Multiprocessing for performance
- Protocol: Model Context Protocol (MCP) for standardization
- Models: Gemini 2.5 Flash for content generation
- Data: Pydantic models for type safety
📄 License
This project is experimental and intended for educational and research purposes.
Máy chủ liên quan
Kone.vc
nhà tài trợMonetize your AI agent with contextual product recommendations
MCP Google Workspace Server
An MCP server for interacting with Google Workspace services, including Drive, Docs, and Sheets.
ClearPolicy
ClearPolicy is a document signing and compliance tracking tool for organizations. Once connected, your AI assistant can import documents, send signature requests, track who has and hasn't signed, and manage your contacts — all by prompt.
Kumbify MCP
Tools that boost your productivity, from sending emails, scheduling to news updates—everything you need for your productivity.
DeepL
Translate text using the DeepL API.
agent-reader
Glama AAA-certified MCP server for document beautification. It bridges the "last mile" of AI content delivery by instantly converting Markdown into professional Word, PDF, HTML, and Slideshows.
Omnispindle
A todo management system designed for coordinating tasks across multiple projects, utilizing MongoDB and MQTT.
Odoo
Interact with Odoo ERP systems, allowing AI assistants to access and manage business data like contacts, sales, and projects.
MCPal
Lightweight MCP server for native desktop notifications with action buttons, text replies, and LLM-aware icons.
Quip MCP Server
An MCP server for performing document operations on Quip, enabling direct interaction from AI assistants.
KonQuest Meta Ads MCP
Supervised Meta Ads operating system for Claude Code - 57 tools for campaign management, multi-asset ads, targeting, pixel diagnostics, catalogs, and safety gates