mcp-ubergraph-query
Enables AI assistants to query the Ubergraph biomedical ontology SPARQL endpoint with tools for custom SPARQL queries, term lookup, search, and hierarchy traversal.
README
mcp-ubergraph-query
An MCP server for querying the Ubergraph biomedical ontology SPARQL endpoint.
Ubergraph is a merged knowledge graph of OBO ontologies including MONDO, UBERON, HP, CHEBI, GO, CL, and more. This server exposes four tools that let AI assistants query it naturally.
Tools
| Tool | Description |
|---|---|
query_ubergraph |
Execute custom SPARQL SELECT queries |
get_term_info |
Get label, definition, synonyms, and types for an ontology term |
search_terms |
Search terms by label or synonym across ontologies |
get_hierarchy |
Traverse parents, children, ancestors, or descendants |
Quick Start
Prerequisites
- Python 3.10+
- uv
Install
git clone https://github.com/twhetzel/mcp-ubergraph-query
cd mcp-ubergraph-query
uv sync --all-extras
Run the server locally
The server uses stdio (stdin/stdout) for MCP transport. Start it with:
uv run mcp-ubergraph-query
Or:
uv run python -m ubergraph_query.server
Leave this process running; MCP clients (e.g. Claude Desktop, Cursor) connect by spawning this command and talking over stdin/stdout.
Configure Claude Desktop
Add to ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"ubergraph": {
"command": "uv",
"args": [
"--directory",
"/path/to/mcp-ubergraph-query",
"run",
"mcp-ubergraph-query"
]
}
}
}
Configuration
Copy .env.example to .env and adjust as needed:
cp .env.example .env
| Variable | Default | Description |
|---|---|---|
UBERGRAPH_ENDPOINT |
https://ubergraph.apps.renci.org/sparql |
SPARQL endpoint URL |
QUERY_TIMEOUT_DEFAULT |
30 |
Default query timeout (seconds) |
QUERY_LIMIT_MAX |
1000 |
Maximum allowed LIMIT value |
ENABLE_QUERY_CACHE |
true |
Enable in-memory LRU result cache |
CACHE_TTL_SECONDS |
3600 |
Cache entry lifetime |
LOG_LEVEL |
INFO |
Logging verbosity |
Tool Reference
query_ubergraph
Execute a custom SPARQL SELECT query against Ubergraph.
Input:
{
"query": "SELECT ?s ?p ?o WHERE { ?s ?p ?o } LIMIT 5",
"timeout": 30,
"limit": 100,
"format": "json"
}
Output:
{
"results": [{"s": "...", "p": "...", "o": "..."}],
"query_time_ms": 234,
"result_count": 5,
"query_hash": "abc123def456"
}
Safety features: LIMIT is automatically injected if absent; write operations (INSERT, DELETE, DROP, etc.) are rejected; timeout is capped at 60 s.
get_term_info
Get comprehensive metadata for an ontology term by CURIE.
Input:
{
"curie": "MONDO:0005015",
"include_hierarchy": false
}
Output:
{
"curie": "MONDO:0005015",
"iri": "http://purl.obolibrary.org/obo/MONDO_0005015",
"label": "diabetes mellitus",
"definition": "A metabolic disorder characterized by...",
"synonyms": ["DM", "diabetes"],
"types": ["owl:Class"],
"in_ontology": "mondo"
}
With include_hierarchy: true, parents and children arrays are added.
search_terms
Search ontology terms by label or synonym.
Input:
{
"text": "diabetes",
"ontologies": ["MONDO", "HP"],
"limit": 10,
"exact_match": false
}
Output:
{
"matches": [
{
"curie": "MONDO:0005015",
"label": "diabetes mellitus",
"match_type": "partial",
"ontology": "mondo",
"score": 0.6
}
],
"search_text": "diabetes",
"total_matches": 1
}
get_hierarchy
Traverse hierarchical relationships for a term.
Input:
{
"curie": "MONDO:0005015",
"relation": "parents",
"depth": 1
}
relation values: parents, children, ancestors, descendants
Output:
{
"curie": "MONDO:0005015",
"relation": "parents",
"depth": 1,
"terms": [
{"curie": "MONDO:0005066", "label": "metabolic disease", "distance": 1}
]
}
Example SPARQL Queries
Get term label and definition
PREFIX rdfs: <http://www.w3.org/2000/01/rdf-schema#>
PREFIX obo: <http://purl.obolibrary.org/obo/>
SELECT ?label ?definition WHERE {
obo:MONDO_0005015 rdfs:label ?label .
OPTIONAL { obo:MONDO_0005015 obo:IAO_0000115 ?definition }
}
Search by label substring
PREFIX rdfs: <http://www.w3.org/2000/01/rdf-schema#>
SELECT ?term ?label WHERE {
?term rdfs:label ?label .
FILTER(CONTAINS(LCASE(?label), "diabetes"))
FILTER(STRSTARTS(STR(?term), "http://purl.obolibrary.org/obo/MONDO_"))
}
LIMIT 10
Get immediate parents
PREFIX rdfs: <http://www.w3.org/2000/01/rdf-schema#>
PREFIX obo: <http://purl.obolibrary.org/obo/>
SELECT ?parent ?label WHERE {
obo:MONDO_0005015 rdfs:subClassOf ?parent .
FILTER(!isBlank(?parent))
OPTIONAL { ?parent rdfs:label ?label }
}
Get all ancestors (transitive)
PREFIX rdfs: <http://www.w3.org/2000/01/rdf-schema#>
PREFIX obo: <http://purl.obolibrary.org/obo/>
SELECT ?ancestor ?label WHERE {
obo:MONDO_0005015 rdfs:subClassOf+ ?ancestor .
FILTER(!isBlank(?ancestor))
OPTIONAL { ?ancestor rdfs:label ?label }
}
LIMIT 100
Find phenotype terms for a disease (HP + MONDO cross-ontology)
PREFIX rdfs: <http://www.w3.org/2000/01/rdf-schema#>
PREFIX obo: <http://purl.obolibrary.org/obo/>
PREFIX oboInOwl: <http://www.geneontology.org/formats/oboInOwl#>
SELECT ?phenotype ?label WHERE {
?association obo:RO_0002200 obo:MONDO_0005015 ;
obo:RO_0002200 ?phenotype .
FILTER(STRSTARTS(STR(?phenotype), "http://purl.obolibrary.org/obo/HP_"))
OPTIONAL { ?phenotype rdfs:label ?label }
}
LIMIT 20
Testing locally
The project is not on PyPI yet. Install and test from the repo:
# Install with dev dependencies (includes pytest)
uv sync --all-extras
# Run unit tests (no network)
uv run python -m pytest tests/ -v
# Test the MCP server: spawns server, lists tools, calls get_term_info, search_terms, get_hierarchy
uv run python examples/test_mcp_server.py
# Run direct SPARQL/query examples (hits Ubergraph)
uv run python examples/example_usage.py
Manual testing with MCP Inspector:
Run the server with uv run mcp-ubergraph-query, then use MCP Inspector and add a stdio server with command uv, args --directory, <path-to-this-repo>, run, mcp-ubergraph-query.
Development
# Lint
uv run ruff check src/ tests/
Project Structure
mcp-ubergraph-query/
├── src/
│ └── ubergraph_query/
│ ├── __init__.py # Package metadata
│ ├── server.py # MCP server + tool implementations
│ ├── sparql_client.py # Async HTTP SPARQL execution with retries
│ ├── query_builder.py # SPARQL query construction helpers
│ ├── cache.py # Thread-safe LRU cache with TTL
│ ├── validators.py # CURIE validation, query safety checks
│ └── config.py # Environment-based configuration
├── tests/
│ └── test_queries.py # Unit tests (no network required)
├── examples/
│ └── example_usage.py # Live query examples
├── pyproject.toml
├── .env.example
└── README.md
Safety
- Read-only: Write operations (INSERT, DELETE, DROP, etc.) are rejected
- LIMIT enforcement: Queries without LIMIT get one injected; over-limit values are capped
- Timeout cap: Hard maximum of 60 seconds per query
- Retry with backoff: Transient 5xx/network errors are retried up to 3 times
- Query logging: Every query is logged with a SHA-256 hash for provenance
License
MIT
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