FastMCP Server
Allows aggregating tools from a Git MCP server (e.g., mcp-server-git) as upstream, enabling version control operations through the MCP interface.
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@FastMCP ServerAdd 5.5 and 3.2"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
FastMCP Server
A high-performance personal Model Context Protocol (MCP) server built with the FastMCP Python framework.
Project Structure
mcp-server/
├── .agents/
│ └── mcp_config.json.example # IDE/agent configurations template
├── src/
│ └── mcp_server/
│ ├── __init__.py # Package initialization
│ └── server.py # Main server logic (tools, resources, prompts)
├── fastmcp.json.example # FastMCP CLI config template
├── pyproject.toml # Poetry/Setuptools metadata and dependencies
└── requirements.txt # Pip installation fileRelated MCP server: MCP Server Sample
Features Scaffolded
Tools (executable actions):
add_numbers(a, b): Adds two floats together.format_message(name, message): Returns a formatted greeting.save_user_profile(username, profile_content): Dynamically saves/updates a user profile in the active database.save_wiki_article(topic, markdown_content): Dynamically saves/updates markdown wiki pages in the active database.
Resources (data exposed to LLMs):
config://system_info: Static resource returning OS and Python environment details.user://{username}: Dynamic resource returning profile data (queries database, falls back to defaults).wiki://{topic}: Dynamic resource returning markdown wiki articles (queries database, falls back to default bootstrap guides).
Prompts (instruction templates):
code_reviewer(code, language): Generates structured instructions to review code.
Installation & Setup
1. Configure the Virtual Environment
Ensure you are using the local virtual environment:
source venv/bin/activate
pip install -r requirements.txtAlternatively, you can install the package in editable mode:
pip install -e .2. Run the Server
You can run the server in two modes:
Option A: CLI Config (Recommended)
Copy the example config and run with the fastmcp CLI:
cp fastmcp.json.example fastmcp.json
fastmcp run fastmcp.jsonOption B: Standard Python (STDIO Only)
Run the module directly:
python -m mcp_server.serverOption C: Dev Mode (MCP Inspector)
Start the interactive developer interface to inspect tools and resources:
fastmcp dev src/mcp_server/server.pyStorage & Caching Backend
The server integrates a storage layer that powers user profiles and response caching. It can switch between a local, volatile memory store (development) and redis (production).
Configuration Options
Configure the backend inside your fastmcp.json file:
"storage": {
"backend": "memory",
"redis": {
"host": "localhost",
"port": 6379,
"db": 0,
"cache_db": 1
}
}Alternatively, settings can be loaded from environment variables (e.g. in your .env file):
STORAGE_BACKEND:memoryorredisREDIS_HOST: Hostname (default:localhost)REDIS_PORT: Port number (default:6379)REDIS_DB: Default database index (default:0)REDIS_STORAGE_DB: Specific storage database index (defaults toREDIS_DB)REDIS_CACHE_DB: Specific cache database index (default:1)REDIS_PASSWORD: Optional authentication password
Integrations
1. Claude Desktop
Add this server to your local configuration:
macOS:
~/Library/Application Support/Claude/claude_desktop_config.jsonWindows:
%APPDATA%\Claude\claude_desktop_config.json
Add one of the following setups under the mcpServers object:
STDIO Connection
"personal-mcp-server": {
"command": "/absolute/path/to/mcp-server/venv/bin/python",
"args": ["-m", "mcp_server.server"]
}(Make sure to replace /absolute/path/to/mcp-server with your actual workspace path).
HTTP SSE Connection
Start the server in HTTP mode first (fastmcp run fastmcp.json), then hook it up using mcp-remote:
"personal-mcp-server": {
"command": "npx",
"args": [
"mcp-remote@latest",
"--sse",
"--allow-http",
"http://localhost:8000/sse"
]
}2. Antigravity IDE
Configure the server for the workspace agent panel.
Step 1: Initialize Workspace Configuration
Copy the configuration template:
cp .agents/mcp_config.json.example .agents/mcp_config.jsonStep 2: Configure Transport
Open .agents/mcp_config.json and configure either stdio or http:
For STDIO Transport:
{ "mcpServers": { "personal-mcp-server": { "command": "/absolute/path/to/mcp-server/venv/bin/python", "args": ["-m", "mcp_server.server"] } } }For HTTP Transport:
{ "mcpServers": { "personal-mcp-server": { "serverUrl": "http://localhost:8000/sse" } } }
Global configuration can also be set in~/.gemini/config/mcp_config.json.
Upstream MCP Server Composition
You can configure this server to connect to, aggregate, and namespace other local or remote MCP servers. This is called Server Composition.
When upstream servers are mounted:
All their tools, resources, and prompts are exposed under their respective
namespaceprefix (e.g., if you mountgit, its tools will be prefixed likegit_list_commitsto avoid naming collisions).
Setup Upstream Servers
Copy the example configuration template:
cp upstream_servers.json.example upstream_servers.jsonConfigure your upstream servers under the
mcpServersobject inupstream_servers.json:{ "mcpServers": { "git": { "command": "uvx", "args": ["mcp-server-git"] }, "remote-helper": { "serverUrl": "http://localhost:8001/sse" } } }Run or restart the FastMCP server. The configured servers will be dynamically mounted and namespaces on startup.
Container Deployment (Docker & Compose)
A complete, self-contained docker-compose.yml file is provided that launches the entire architecture locally:
traefik: Routes incoming HTTP requests from the host (http://mcp.localhost) to the server.redis: Standardredis:8.8-alpinekey-value store database used for user profiles and FastMCP response caching.mcp-server: Pulls and launches the python server from GHCR, connecting to Redis and registering discovery labels for Traefik routing.
How to Run:
Start all services:
docker compose up -dThis will:
Pull the pre-built server image
ghcr.io/jamesbspencer/mcp-server:latestfrom GitHub Container Registry.Start the Traefik proxy on port
80(HTTP) and expose its dashboard interface onhttp://localhost:8080.Start the Redis instance with a persistent named volume
redis-data.Connect all services on a custom
mcp-networkbridge network.
Verification & Logs
You can check service status and logs using:
docker compose ps
docker compose logs -fCI/CD Pipeline (GitHub Actions)
A GitHub Actions workflow is configured in .github/workflows/docker-publish.yml to automatically build and publish your server image to GitHub Container Registry (GHCR).
Triggers:
On push to
mainormasterbranches (builds and pushes tag matching the branch name).On push of version tags (e.g.,
v1.2.3).Can be manually triggered via
workflow_dispatch.
The workflow extracts semver metadata and configures build cache (cache-from: type=gha) for fast incremental builds.
This server cannot be installed
Maintenance
Resources
Unclaimed servers have limited discoverability.
Looking for Admin?
If you are the server author, to access and configure the admin panel.
Latest Blog Posts
- Your AI Chatbot Just Exposed Your CEO's Salary to an InternBy Om-Shree-0709 on .Agent IdentityMCP SecurityOAuth Delegation
- Why MCP Servers Need Execution Sandboxing (And Why Your Current Stack Isn't Enough)By Om-Shree-0709 on .Agentic AiPrompt InjectionWebAssembly
MCP directory API
We provide all the information about MCP servers via our MCP API.
curl -X GET 'https://glama.ai/api/mcp/v1/servers/jamesbspencer/mcp-server'
If you have feedback or need assistance with the MCP directory API, please join our Discord server