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Provides seamless access to UniProtKB protein data, enabling querying of protein entries, sequences, Gene Ontology annotations, and ID mappings through a typed,
Provides seamless access to UniProtKB protein data, enabling querying of protein entries, sequences, Gene Ontology annotations, and ID mappings through a typed, resilient interface.
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PyPI version Python versions License: MIT MCP Registry
A Model Context Protocol (MCP) server that provides seamless access to UniProtKB protein data. Query protein entries, sequences, Gene Ontology annotations, and perform ID mappings through a typed, resilient interface designed for LLM agents.
pip install uniprot-mcp
Local development (stdio):
uniprot-mcp
Remote deployment (HTTP):
uniprot-mcp-http --host 0.0.0.0 --port 8000
The HTTP server provides:
http://localhost:8000/mcphttp://localhost:8000/healthzhttp://localhost:8000/metrics (Prometheus format)npx @modelcontextprotocol/inspector uniprot-mcp
Access static or dynamic data through URI patterns:
| URI | Description |
|---|---|
uniprot://uniprotkb/{accession} |
Raw UniProtKB entry JSON for any accession |
uniprot://help/search |
Documentation for search query syntax |
Execute actions and retrieve typed data:
| Tool | Parameters | Returns | Description |
|---|---|---|---|
fetch_entry |
accession, fields? |
Entry |
Fetch complete protein entry with all annotations |
get_sequence |
accession |
Sequence |
Get protein sequence with length and metadata |
search_uniprot |
query, size, reviewed_only, fields?, sort?, include_isoform |
SearchHit[] |
Full-text search with advanced filtering |
map_ids |
from_db, to_db, ids |
MappingResult |
Convert identifiers between 200+ databases |
fetch_entry_flatfile |
accession, version, format |
string |
Retrieve historical entry versions (txt/fasta) |
Progress tracking: map_ids reports progress (0.0 → 1.0) for long-running jobs.
Pre-built templates for common workflows:
| Variable | Default | Description |
|---|---|---|
UNIPROT_ENABLE_FIELDS |
unset | Request minimal field subsets to reduce payload size |
UNIPROT_LOG_LEVEL |
info |
Logging level: debug, info, warning, error |
UNIPROT_LOG_FORMAT |
plain |
Log format: plain or json |
UNIPROT_MAX_CONCURRENCY |
8 |
Max concurrent UniProt API requests |
MCP_HTTP_HOST |
0.0.0.0 |
HTTP server bind address |
MCP_HTTP_PORT |
8000 |
HTTP server port |
MCP_HTTP_LOG_LEVEL |
info |
Uvicorn log level |
MCP_HTTP_RELOAD |
0 |
Enable auto-reload: 1 or true |
MCP_CORS_ALLOW_ORIGINS |
* |
CORS allowed origins (comma-separated) |
MCP_CORS_ALLOW_METHODS |
GET,POST,DELETE |
CORS allowed methods |
MCP_CORS_ALLOW_HEADERS |
* |
CORS allowed headers |
# HTTP server flags
uniprot-mcp-http --host 127.0.0.1 --port 9000 --log-level debug --reload
# Using MCP client
result = await session.call_tool("fetch_entry", {
"accession": "P12345"
})
# Returns structured Entry with:
# - primaryAccession, protein names, organism
# - sequence (length, mass, sequence string)
# - features (domains, modifications, variants)
# - GO annotations (biological process, molecular function, cellular component)
# - cross-references to other databases
# Search reviewed human proteins
result = await session.call_tool("search_uniprot", {
"query": "kinase AND organism_id:9606",
"size": 50,
"reviewed_only": True,
"sort": "annotation_score"
})
# Returns list of SearchHit objects with accessions and scores
# Convert UniProt IDs to PDB structures
result = await session.call_tool("map_ids", {
"from_db": "UniProtKB_AC-ID",
"to_db": "PDB",
"ids": ["P12345", "Q9Y6K9"]
})
# Returns MappingResult with successful and failed mappings
# Clone the repository
git clone https://github.com/josefdc/Uniprot-MCP.git
cd Uniprot-MCP
# Install dependencies
uv sync --group dev
# Install development tools
uv tool install ruff
uv tool install mypy
# Run all tests with coverage
uv run pytest --maxfail=1 --cov=uniprot_mcp --cov-report=term-missing
# Run specific test file
uv run pytest tests/unit/test_parsers.py -v
# Run integration tests only
uv run pytest tests/integration/ -v
# Lint
uv tool run ruff check .
# Format
uv tool run ruff format .
# Type check
uv tool run mypy src
# Run all checks
uv tool run ruff check . && \
uv tool run ruff format --check . && \
uv tool run mypy src && \
uv run pytest
# Stdio server
uv run uniprot-mcp
# HTTP server with auto-reload
uv run python -m uvicorn uniprot_mcp.http_app:app --reload --host 127.0.0.1 --port 8000
src/uniprot_mcp/
├── adapters/ # UniProt REST API client and response parsers
│ ├── uniprot_client.py # HTTP client with retry logic
│ └── parsers.py # Transform UniProt JSON → Pydantic models
├── models/
│ └── domain.py # Typed data models (Entry, Sequence, etc.)
├── server.py # MCP stdio server (FastMCP)
├── http_app.py # MCP HTTP server (Starlette + CORS)
├── prompts.py # MCP prompt templates
└── obs.py # Observability (logging, metrics)
tests/
├── unit/ # Unit tests for parsers, models, tools
├── integration/ # End-to-end tests with VCR fixtures
└── fixtures/ # Test data (UniProt JSON responses)
This server is published to:
# Build distribution packages
uv build
# Publish to PyPI (requires token)
uv publish --token pypi-YOUR_TOKEN
# Publish to MCP Registry (requires GitHub auth)
mcp-publisher login github
mcp-publisher publish
See docs/registry.md for detailed registry publishing instructions.
Contributions are welcome! Please:
Quick start for contributors:
git checkout -b feature/amazing-feature)uv tool run ruff check . && uv tool run mypy src && uv run pytestfeat:, fix:, docs:, etc.)This project is licensed under the MIT License - see the LICENSE file for details.
This is an independent project and is not officially affiliated with or endorsed by the UniProt Consortium. Please review UniProt's terms of use when using their data.
Built with ❤️ for the bioinformatics and AI communities
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