MCP Server Examples
A collection of Model Context Protocol implementations ranging from a minimal hello-world to an autonomous AI agent for software development.
README
MCP Server Examples
A collection of Model Context Protocol (MCP) implementations ranging from a minimal hello-world introduction to a full autonomous AI agent that can build software on its own.
What is MCP? The Model Context Protocol is an open standard that lets LLMs call external tools — functions you define — in a structured, safe way. The model sees a schema; you control the implementation.
Repository Structure
mcp-server-example/
│
├── mcp_server.py # Intro: minimal MCP server (2 tools)
├── mcp_client.py # Intro: Ollama client that calls those tools
├── requirements.txt # All Python dependencies
│
├── data_science_mcp/ # Advanced: data visualisation + stats + coding tools
│ ├── mcp_server.py # Full server (36 tools: plots, stats, system, web)
│ ├── mcp_client.py # Ollama multi-agent client (MAS with supervisor)
│ ├── mcp_client_gpustack.py # GPUStack API client (OpenAI-compatible)
│ └── README.md
│
└── autonomous_agent/ # Expert: time-budgeted autonomous AI agent
├── mcp_server.py # Lean server (13 tools: system + web only)
├── mcp_client_autonomous.py # Master planner + parallel workers
└── README.md
1. Intro — Root Level
The simplest possible MCP setup. Two tools, one model, one conversation.
Tools exposed:
get_current_time— returns the current timestampcalculate_sum— adds two numbers
Run it:
# Install dependencies
pip install -r requirements.txt
# Start a chat
python mcp_client.py
The root client uses Ollama with a local model.
Change OLLAMA_MODEL at the top of mcp_client.py to switch models.
2. Data Science MCP — data_science_mcp/
A production-grade multi-agent system for data analysis and software development.
See data_science_mcp/README.md for full details.
Highlights:
- 36 MCP tools: interactive Plotly charts, static Matplotlib plots, statistical tests, shell commands, file I/O, web search, and more
- Two clients: local Ollama (
mcp_client.py) and GPUStack API (mcp_client_gpustack.py) - Supervisor + specialist agent architecture (routing, delegation, parallel execution)
3. Autonomous Agent — autonomous_agent/
Give it a time budget and a goal (or no goal at all) and it works autonomously.
See autonomous_agent/README.md for full details.
Highlights:
- Master planner dispatches subtasks to up to 3 parallel workers
- Focused on software engineering: shell, files, web search, HTTP testing
- Safety guard blocks destructive commands and restricts write paths
- Produces a full Markdown report at the end of every session
Installation
# Clone and enter the repo
git clone <repo-url>
cd mcp-server-example
# Create a virtual environment (recommended)
python3 -m venv venv
source venv/bin/activate # Linux/macOS
# venv\Scripts\activate # Windows
# Install all dependencies
pip install -r requirements.txt
# Add your API credentials once in the project root (used by all clients)
cp .env.example .env
# then edit .env with your api_key and api_base_url
# For Playwright screenshots (optional)
playwright install chromium
sudo venv/bin/playwright install-deps chromium
Learning Path
| Step | What to read/run | Concept learned |
|---|---|---|
| 1 | Root mcp_server.py |
Defining MCP tools with @mcp.tool() |
| 2 | Root mcp_client.py |
Connecting a client, listing tools, calling them |
| 3 | data_science_mcp/mcp_server.py |
Scaling to many tools, complex implementations |
| 4 | data_science_mcp/mcp_client.py |
Multi-agent routing and delegation |
| 5 | autonomous_agent/mcp_client_autonomous.py |
Planner + parallel workers + safety + reporting |
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