Ollama MCP Example Server
A simple MCP server that exposes stock price lookup tools, demonstrating how to set up MCP from scratch with Ollama.
README
Ollama MCP for Dummies
This is a simple, beginner-friendly example showing how to set up and use an MCP server and client from scratch with Ollama. I assume you already know what MCP is conceptually.
A summary of how MCP works
There are 3 components:
- MCP server - exposes your tools over a network.
- MCP client - connects to your MCP server and uses those tools.
- LLM - the language model that decides whether a tool is needed.
Basically, the MCP client is a wrapper for function calling. It connects to MCP servers and pulls their tools into a single list, exposing them to your language model as function calls.
Here is the schema:
┌─────────────┐ ┌─────────────┐ ┌──────────────┐
│ Ollama │ <-----> │ MCP Client │ <-----> │ MCP Server │
│ (LLM) │ │ (Wrapper) │ SSE │ (Tools) │
└─────────────┘ └─────────────┘ └──────────────┘
│
Unifies tools
from multiple
MCP servers
The difference from regular function calling is that you don’t need to implement, define, or execute the tools yourself. MCP servers handle that. Most importantly, they are reusable and model-agnostic. "Create once, then reuse."
What this example does
This project demonstrates how to set up and use MCP from scratch, showing what happens on both sides of the client and server under the hood:
- Create MCP server. Expose tools over network.
- Create MCP client. Connect to MCP server and query for tools.
- Handle chat and tool calls with Ollama.
I handle chat logic in mcp_client.py.
Quick start
Prerequisites
- Python 3.8+
- Ollama installed and running
- The
qwen3:4b-instructmodel (or modify the code for your preferred model inmcp_client.py)
Installation
Clone repo
git clone https://github.com/kirillsaidov/ollama-mcp-example.git
cd ollama-mcp-example
Install dependencies
python3 -m venv venv
./venv/bin/pip install -r requirements.txt
Run the example
# start MCP server
./venv/bin/python mcp_server.py
# run MCP client
./venv/bin/python mcp_client.py
Try it out
>> What's Apple's stock price?
Apple's current stock price is $252.13 per share.
>> How much is Google trading for?
Alphabet Inc. (GOOGL) is currently trading at 247.14 per share.
This is the same as my previous ollama-function-calling example. The results are identical, but conceptually we now use MCP, which is more flexible and easily extensible. There is no need to modify your main app code.
How it works
The MCP client is essentially a tool wrapper that:
- Connects to one or more MCP servers.
- Collects all available tools from these servers.
- Translates tools into a format your LLM understands (for function calling).
- Routes tool calls back to the appropriate server instead of executing them locally.
This project structure
ollama-function-calling/
├── mcp_server.py # Exposing tools
├── mcp_client.py # Connect to MCP server, get list of tools, expose them to LLM
├── README.md # This file
└── requirements.txt # Dependencies
Customizing for your own functions
Want to add your own functions? Just add it to mcp_server.py:
@mcp.tool()
def get_weather(city: str) -> str:
# Your implementation here
return f"Sunny, 75°F in {city}"
That's it. Now you can test it by running the client script.
LICENSE
Unlicense.
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