NanthagopalEswaran/Gemini-MCP-Integration
If you are the rightful owner of Gemini-MCP-Integration and would like to certify it and/or have it hosted online, please leave a comment on the right or send an email to dayong@mcphub.com.
The Gemini MCP Chatbot is a Model Context Protocol server that provides calculator, file read, and file write functionalities through a simple STDIO interface.
Gemini MCP Chatbot
A simple MCP (Model Context Protocol) server over STDIO exposing calculator, file read, and file write tools for the Gemini CLI agent.
Features
- Calculator
- File Read
- File Write
Architecture at a Glance
Gemini CLI ──STDIO──> MCP Server (src/server.py) ──Tools──> Your Python Functions
The CLI launches the MCP server, streams requests over STDIO, and receives tool responses without needing sockets or REST.
Project Tour
.gemini/settings.json
// filepath: f:\Workspace\AI Training\Gemini CLI\.gemini\settings.json
{
"mcpServers": {
"pythonTools": {
"command": "poetry",
"args": ["run", "python", "src/server.py"],
"cwd": "",
"env": {
"MCP_PROXY_AUTH_TOKEN": "<MCP_PROXY_AUTH_TOKEN>"
},
"timeout": 15000
}
}
}
This configuration wires the CLI to spawn the MCP server through Poetry, injects the proxy token, and enforces a 15-second timeout.
Note: When the server starts, it prints the configured token in the terminal so you can confirm the placeholder value.
Python tools
The CLI mounts the MCP server defined in src/server.py, exposing calculator and file helpers for quick automation.
MCP - Import
FastMCP class from mcp package can be used to instantly create mcp servers.
# filepath: f:\Workspace\AI Training\Gemini CLI\src\server.py
from mcp.server.fastmcp import FastMCP
mcp = FastMCP("demo")
MCP decorators for tool registration
Decorators expose calculator and file utilities as discoverable MCP tools.
Docstrings define parameters and return values for each tool so Gemini CLI can build the right schemas for invocation.
# filepath: f:\Workspace\AI Training\Gemini CLI\src\server.py
@mcp.tool()
def handle_calculator(expression):
"""
Evaluate a mathematical expression and return the result.
...
"""
...
@mcp.tool()
def handle_file_read(path):
"""
Read the contents of a file at the given path.
...
"""
...
@mcp.tool()
def handle_file_write(path: str, content: str):
"""
Write content to a file at the given path.
...
"""
...
Run MCP server
# filepath: f:\Workspace\AI Training\Gemini CLI\src\server.py
if __name__ == "__main__":
mcp.run()
By default, the server listens on STDIO, ready to process incoming tool calls from the Gemini CLI. The transport parameter of mcp.run() can adjust this behavior.
Setup
- Install Python 3.6+ and Poetry.
- In project folder run:
(No external dependencies required)
poetry install
Running MCP Server
Start the MCP server (STDIO transport):
poetry run python src/server.py
The process stays attached to STDIO (no TCP port).
Gemini CLI Integration
The Gemini CLI is configured to connect to this MCP server via .gemini/settings.json (command points to python src/server.py).
Launch Gemini CLI:
gemini
Use /mcp inside the CLI to list connected MCP servers and tools.

The Gemini agent can invoke these tools in based on the need.
You may ask naturally (e.g. “Compute 2 + 2 * 3” or “Read ./notes.txt”) and the agent will call the appropriate tool.
Usage Examples
User: "Hey, what's 15% tip on a $47.50 bill?"
Agent: _[Proposes to use calculator tool: 47.50 _ 0.15]_

Tool Call and Response: (Upon Approval from the User) ✓ handle_calculator (pythonTools MCP Server) {"expression":"47.50 * 0.15"}
