
SuzieQ MCP Server
This project provides a Model Context Protocol (MCP) server that allows language models and other MCP clients to interact with a SuzieQ network observability instance via its REST API.
README
MCP Server for SuzieQ
This project provides a Model Context Protocol (MCP) server that allows language models and other MCP clients to interact with a SuzieQ network observability instance via its REST API.
Overview
The server exposes SuzieQ's commands as MCP tools:
run_suzieq_show
: Access the 'show' command to query detailed network state tablesrun_suzieq_summarize
: Access the 'summarize' command to get aggregated statistics and summaries
These tools enable clients (like Claude Desktop) to query various network state tables (e.g., interfaces, BGP, routes) and apply filters, retrieving the results directly from your SuzieQ instance.
Prerequisites
- Python: Version 3.8 or higher is recommended.
- uv: A fast Python package installer and resolver. (Installation guide)
- SuzieQ Instance: A running SuzieQ instance with its REST API enabled and accessible.
- SuzieQ API Endpoint & Key: You need the URL for the SuzieQ API (e.g.,
http://your-suzieq-host:8000/api/v2
) and a valid API key (access_token
).
Installation & Setup
Installing via Smithery
To install suzieq-mcp for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @PovedaAqui/suzieq-mcp --client claude
Installing Manually
-
Get the Code: Clone this repository or download the
main.py
andserver.py
files into a dedicated project directory. -
Create Virtual Environment: Navigate to your project directory in the terminal and create a virtual environment using
uv
:uv venv
-
Activate Environment:
- On macOS/Linux:
source .venv/bin/activate
- On Windows:
.venv\Scripts\activate
(You should see
(.venv)
preceding your prompt) - On macOS/Linux:
-
Install Dependencies: Install the required Python packages using
uv
:uv pip install mcp httpx python-dotenv
mcp
: The Model Context Protocol SDK.httpx
: An asynchronous HTTP client used to communicate with the SuzieQ API.python-dotenv
: Used to load environment variables from a.env
file for configuration.
Configuration
The server needs your SuzieQ API endpoint and API key. Use a .env
file for secure and easy configuration:
-
Create
.env
file: In the root of your project directory (the same place asmain.py
), create a file named.env
. -
Add Credentials: Add your SuzieQ endpoint and key to the
.env
file. Ensure there are no quotes around the values unless they are part of the key/endpoint itself.# .env SUZIEQ_API_ENDPOINT=http://your-suzieq-host:8000/api/v2 SUZIEQ_API_KEY=your_actual_api_key
Replace the placeholder values with your actual endpoint and key.
-
Secure
.env
file: Add.env
to your.gitignore
file to prevent accidentally committing secrets.echo ".env" >> .gitignore
-
Code Integration: The provided
server.py
automatically usespython-dotenv
to load these variables when the server starts.
Running the Server
Make sure your virtual environment is activated. The server will load configuration from the .env
file in the current directory.
1. Directly
Run the server directly from your terminal:
uv run python main.py
The server will start, print Starting SuzieQ MCP Server...
, and listen for MCP connections on standard input/output (stdio). You should see [INFO]
logs if it successfully queries the API via the tool. Press Ctrl+C
to stop it.
2. With MCP Inspector (for Debugging)
The MCP Inspector is useful for testing the tool directly. If you have the mcp CLI tools installed (via uv pip install "mcp[cli]"
), run:
uv run mcp dev main.py
This launches an interactive debugger. Go to the "Tools" tab, select run_suzieq_show
, enter parameters (e.g., table: "device"), and click "Call Tool" to test.
Using with Claude Desktop
Integrate the server with Claude Desktop for seamless use:
-
Find Claude Desktop Config: Locate the
claude_desktop_config.json
file.- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json
- Windows:
%APPDATA%\Claude\claude_desktop_config.json
- Create the file and the Claude directory if they don't exist.
- macOS:
-
Edit Config File: Add an entry for this server. Use the absolute path to
main.py
. The server loads secrets from.env
, so they don't need to be in this config.
{
"mcpServers": {
"suzieq-server": {
// Use 'uv' if it's in the system PATH Claude uses,
// otherwise provide the full path to the uv executable.
"command": "uv",
"args": [
"run",
"python",
// --- VERY IMPORTANT: Use the ABSOLUTE path below ---
"/full/path/to/your/project/mcp-suzieq-server/main.py"
],
// 'env' block is not needed here if .env is in the project directory above
"workingDirectory": "/full/path/to/your/project/mcp-suzieq-server/" // Optional, but recommended
}
// Add other servers here if needed
}
}
- Replace
/full/path/to/your/project/mcp-suzieq-server/main.py
with the correct absolute path on your system. - Replace
/full/path/to/your/project/mcp-suzieq-server/
with the absolute path to the directory containingmain.py
and.env
. SettingworkingDirectory
helps ensure the.env
file is found. - If
uv
isn't found by Claude, replace"uv"
with its absolute path (find viawhich uv
orwhere uv
). - On Windows, you might need
"env": { "PYTHONUTF8": "1" }
if you encounter text encoding issues.
-
Restart Claude Desktop: Completely close and reopen Claude Desktop.
-
Verify: Look for the MCP tool indicator (hammer icon 🔨) in Claude Desktop. Clicking it should show both the
run_suzieq_show
andrun_suzieq_summarize
tools.
Tool Usage (run_suzieq_show)
run_suzieq_show(table: str, filters: Optional[Dict[str, Any]] = None) -> str
- table: (String, Required) The SuzieQ table name (e.g., "device", "interface", "bgp").
- filters: (Dictionary, Optional) Key-value pairs for filtering (e.g.,
"hostname": "leaf01"
). Omit or use{}
for no filters. - Returns: A JSON string with the results or an error.
Example Invocations (Conceptual):
Show all devices:
{ "table": "device" }
Show BGP neighbors for hostname 'spine01':
{ "table": "bgp", "filters": { "hostname": "spine01" } }
Show 'up' interfaces in VRF 'default':
{ "table": "interface", "filters": { "vrf": "default", "state": "up" } }
Tool Usage (run_suzieq_summarize)
run_suzieq_summarize(table: str, filters: Optional[Dict[str, Any]] = None) -> str
- table: (String, Required) The SuzieQ table name to summarize (e.g., "device", "interface", "bgp").
- filters: (Dictionary, Optional) Key-value pairs for filtering (e.g.,
"hostname": "leaf01"
). Omit or use{}
for no filters. - Returns: A JSON string with the summarized results or an error.
Example Invocations (Conceptual):
Summarize all devices:
{ "table": "device" }
Summarize BGP sessions by hostname 'spine01':
{ "table": "bgp", "filters": { "hostname": "spine01" } }
Summarize interface states in VRF 'default':
{ "table": "interface", "filters": { "vrf": "default" } }
Troubleshooting
Error: "SuzieQ API endpoint or key not configured...":
- Ensure the
.env
file is in the same directory asmain.py
. - Verify
SUZIEQ_API_ENDPOINT
andSUZIEQ_API_KEY
are correctly spelled and have valid values in.env
. - If using Claude Desktop, ensure the
workingDirectory
inclaude_desktop_config.json
points to the directory containing.env
.
HTTP Errors (4xx, 5xx):
- Check the SuzieQ API key (
SUZIEQ_API_KEY
) is correct (401/403 errors). - Verify the
SUZIEQ_API_ENDPOINT
is correct and the API server is running.
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