Skip to main content
Glama
adamzacharia

GW MCP Server

by adamzacharia

GW MCP Server

An MCP (Model Context Protocol) server providing tools to query Gravitational Wave (GW) data from GraceDB and GWOSC.

What is MCP?

MCP (Model Context Protocol) allows AI assistants like Claude to use external tools. This server gives Claude the ability to query gravitational wave databases in real-time, so you can ask questions about GW events in natural language.

Related MCP server: Google Cloud MCP Server

Sample Questions

Once connected, you can ask Claude questions like:

  • "What was the GPS time of GW150914?"

  • "Show me all events in the GWTC-3 catalog"

  • "Get strain data from the Hanford detector around GW150914"

  • "Search for gravitational wave events with FAR less than 1e-10"

  • "What files are available for a specific GraceDB event?"

Example

Access Levels

Source

Public Access

Authenticated Access

GWOSC

Full (strain data, catalogs)

N/A

GraceDB

Released events only

Full access to current observing run

GCN Kafka

No

Requires NASA Earthdata credentials

This server works out-of-the-box with public data only.


Installation

Step 1: Create Conda Environment

# Create new conda environment with Python 3.11
conda create -n opticsGPT python=3.11 -y

# Activate the environment
conda activate opticsGPT

Step 2: Install Dependencies

cd C:\Users\Asus\Desktop\OpticsGPT\GW_MCP

# Install from requirements.txt
pip install -r requirements.txt

Step 3: Verify Installation

# Test GWOSC (should print GPS time)
python -c "from gwosc.datasets import event_gps; print('GW150914 GPS:', event_gps('GW150914'))"

Usage with Claude Desktop

Add to claude_desktop_config.json:

Or create the file

{
  "mcpServers": {
    "GW-Data": {
      "command": "C:/Users/Asus/anaconda3/envs/mcp/python.exe",
      "args": ["C:/Users/Asus/Desktop/GW_MCP/server.py"]
    }
  }
}

WARNING: You must update the paths below to match your system. Change:

  • The Python executable path to your conda environment location

  • The server.py path to where you cloned this repository

Find your Python path with: conda activate mcp && where python



Using with Other LLMs and Frameworks

LangChain Integration

You can use this MCP server with LangChain using the langchain-mcp-adapters package:

pip install langchain-mcp-adapters
from langchain_mcp_adapters.client import MCPClient
from langchain_openai import ChatOpenAI

# Connect to the MCP server
client = MCPClient(
    command="python",
    args=["path/to/GW_MCP/server.py"]
)

# Get tools from MCP server
tools = client.get_tools()

# Use with any LangChain-compatible LLM
llm = ChatOpenAI(model="gpt-4")
llm_with_tools = llm.bind_tools(tools)

Open Source LLMs

For open source LLMs (Ollama, LMStudio, etc.), you can:

  1. Use MCP-compatible clients: Some open source projects like MCP CLI support connecting MCP servers to local LLMs.

  2. Direct function calling: Import the service classes directly in your Python code:

from services.gracedb_service import get_gracedb_service
from services.gwosc_service import get_gwosc_service

# Use services directly
gwosc = get_gwosc_service()
gps_time = gwosc.get_event_gps("GW150914")
print(f"GPS time: {gps_time}")
  1. Build a REST API: Wrap the services in a FastAPI/Flask server for any LLM that supports function calling via HTTP.


Available Tools

Tool

Source

Description

search_gw_events

GraceDB

Search events by FAR, GPS time, pipeline

get_event_details

GraceDB

Get full metadata for an event

get_superevent

GraceDB

Get superevent information

get_event_files

GraceDB

List files (skymaps, PSD, etc.)

get_event_labels

GraceDB

Get event labels (DQV, PE_READY, etc.)

get_event_gps

GWOSC

Get GPS time for named event (GW150914, etc.)

get_catalog_events

GWOSC

Query GWTC-1/2/3 catalogs

fetch_strain_data

GWOSC

Get strain time-series by GPS range

fetch_event_strain

GWOSC

Get strain centered on a named event


For LIGO/Virgo Collaboration Members

If you have LIGO credentials, you can access real-time alerts from the current observing run.

How GraceDB Authentication Works

By default, the ligo-gracedb client searches for credentials in this order:

  1. SciToken at /tmp/bt_u${UID} or SCITOKEN_FILE environment variable

  2. X.509 credentials from the cred parameter (cert/key pair or proxy file)

  3. Environment variables: X509_USER_CERT + X509_USER_KEY

  4. Environment variable: X509_USER_PROXY

  5. Proxy from ligo-proxy-init: /tmp/x509up_u${UID}

  6. Default location: ~/.globus/usercert.pem and ~/.globus/userkey.pem

  7. No credentials (public access only)

Set these before running the MCP server:

# For SciToken
export SCITOKEN_FILE=/path/to/your/scitoken

# OR for X.509 certificate
export X509_USER_CERT=/path/to/usercert.pem
export X509_USER_KEY=/path/to/userkey.pem

# OR for proxy file
export X509_USER_PROXY=/tmp/x509up_u${UID}

Option 2: Modify the Service Code

Edit src/gw_mcp_server/services/gracedb_service.py:

# For X.509 cert/key pair:
self._client = GraceDb(
    cred=('/path/to/cert.pem', '/path/to/key.pem')
)

# For combined proxy file:
self._client = GraceDb(
    cred='/path/to/proxy.pem'
)

# To explicitly use only SciToken:
self._client = GraceDb(use_auth='scitoken')

# To explicitly use only X.509:
self._client = GraceDb(use_auth='x509')

Option 3: Force Public Access Only

If you want to explicitly disable authentication attempts:

self._client = GraceDb(force_noauth=True)

Getting Credentials

  1. ligo-proxy-init: Run ligo-proxy-init to create a short-lived proxy from your certificate

  2. htgettoken: Use htgettoken to obtain a SciToken

  3. CILogon: Get certificates from https://cilogon.org

Test Your Authentication

from ligo.gracedb.rest import GraceDb

client = GraceDb()
client.show_credentials()  # Prints auth type and info

# Test access to current run superevents
try:
    for se in client.superevents('category: Production', max_results=5):
        print(se['superevent_id'])
except Exception as e:
    print(f"Auth required: {e}")

Useful GraceDb Client Options

GraceDb(
    service_url='https://gracedb.ligo.org/api/',  # Production server
    # service_url='https://gracedb-playground.ligo.org/api/',  # Test server
    cred=None,                    # Path to credentials
    force_noauth=False,           # Skip credential lookup
    fail_if_noauth=False,         # Fail if no credentials found
    reload_cred=False,            # Auto-reload expiring credentials
    reload_buffer=300,            # Seconds before expiry to reload
    use_auth='all',               # 'all', 'scitoken', or 'x509'
    retries=5,                    # Max retries on server error
)

For full documentation: https://ligo-gracedb.readthedocs.io/en/latest/


Data Sources

Source

URL

Auth Required

GWOSC

https://gwosc.org

No

GraceDB

https://gracedb.ligo.org

For current run

GCN

https://gcn.nasa.gov

Yes (Earthdata)

Citation

If you use this software in your research, please cite:

@software{gw_mcp,
  title={GW MCP Server: Gravitational Wave Data Access for AI Agents},
  author={Adam Zacharia Anil},
  year={2025},
  url={https://github.com/adamzacharia/GW_MCP}
}

License

MIT

A
license - permissive license
-
quality - not tested
D
maintenance

Maintenance

Maintainers
Response time
Release cycle
Releases (12mo)
Commit activity

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

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/adamzacharia/GW_MCP'

If you have feedback or need assistance with the MCP directory API, please join our Discord server