Bertron
БесплатноНе проверенMCP server providing access to the BERtron API for aggregating genomic and environmental data from multiple BER data sources, enabling geospatial search and hea
Описание
MCP server providing access to the BERtron API for aggregating genomic and environmental data from multiple BER data sources, enabling geospatial search and health checks.
README
A Model Context Protocol (MCP) server providing access to the BERtron API, which aggregates genomic and environmental data from multiple Biological and Environmental Research (BER) data sources including EMSL, ESS-DIVE, JGI, MONET, and NMDC.
Quick Start
Install and run directly from GitHub
# Run directly without installing
uvx --from git+https://github.com/ber-data/bertron-mcp.git bertron-mcp
# Or install first, then run
uvx --from git+https://github.com/ber-data/bertron-mcp.git bertron-mcp --version
Features
- 🔍 Geospatial Search: Find entities within a specified radius of geographic coordinates
- 💊 Health Check: Verify BERtron API connectivity and database status
- 🌍 Multi-Source Data: Access data from major BER research facilities
- 🔌 MCP Integration: Seamless integration with Claude, Goose, and other MCP-compatible AI tools
Requirements
- Python 3.12+
- UV package manager (recommended)
- Access to BERtron API (https://bertron-api.bertron.production.svc.spin.nersc.org)
Installation
From Source (Development)
git clone https://github.com/ber-data/bertron-mcp.git
cd bertron-mcp
make dev
From PyPI (Coming Soon)
pip install bertron-mcp
Available Tools
geosearch
Search for entities within a specified distance of geographic coordinates.
Parameters:
latitude(float): Latitude coordinate (-90.0 to 90.0)longitude(float): Longitude coordinate (-180.0 to 180.0)search_radius_km(float, optional): Search radius in kilometers (default: 1.0)
Returns: QueryResponse with entities, count, and metadata
bbox_search
Search for entities within a rectangular geographic bounding box.
Parameters:
southwest_lat(float): Southwest corner latitude (-90.0 to 90.0)southwest_lng(float): Southwest corner longitude (-180.0 to 180.0)northeast_lat(float): Northeast corner latitude (-90.0 to 90.0)northeast_lng(float): Northeast corner longitude (-180.0 to 180.0)
Returns: QueryResponse with entities within the bounding box
entity_lookup
Retrieve detailed information for a specific entity by its unique ID.
Parameters:
entity_id(string): Unique identifier of the entity (e.g., "nmdc:bsm-12-abc123")
Returns: Entity object with complete metadata
advanced_query
Execute complex MongoDB queries with filtering, projection, and sorting.
Parameters:
filter_dict(dict, optional): MongoDB filter criteria (e.g., {"entity_type": "sample"})projection(dict, optional): Fields to include/exclude (e.g., {"name": 1, "coordinates": 1})skip(int, optional): Number of documents to skip for pagination (default: 0)limit(int, optional): Maximum number of documents to return (default: 100)sort(dict, optional): Sort criteria (e.g., {"name": 1} for ascending)
Returns: QueryResponse with matching entities
search_by_source
Find entities from a specific BER data source.
Parameters:
source(string): BER data source name (EMSL, ESS-DIVE, JGI, NMDC, MONET)
Returns: QueryResponse with entities from the specified source
search_by_type
Find entities of a specific entity type.
Parameters:
entity_type(string): Entity type (biodata, sample, sequence, taxon, jgi_biosample)
Returns: QueryResponse with entities of the specified type
search_by_name
Search for entities by name using regex pattern matching.
Parameters:
name_pattern(string): Name pattern to search for (supports regex)case_sensitive(bool, optional): Whether search should be case sensitive (default: False)
Returns: QueryResponse with entities matching the name pattern
health_check
Check the health status of the BERtron API.
Parameters: None
Returns: Dictionary with web_server and database boolean status
API Limits and Constraints
To prevent overwhelming responses and protect system resources, the following limits are enforced:
Default Limits
- Default result limit: 100 items per query
- Maximum result limit: 1,000 items per query
- Maximum pagination offset: 50,000 items
Constraint Reporting
When limits are applied, tools automatically report constraints in the response metadata:
{
"entities": [...],
"count": 1000,
"metadata": {
"constraints_applied": {
"requested_limit": 5000,
"actual_limit": 1000,
"reason": "Exceeded maximum limit of 1000"
}
}
}
Tools with Limit Parameters
The following tools accept optional limit parameters:
search_by_source(source, limit=100)search_by_type(entity_type, limit=100)search_by_name(name_pattern, case_sensitive=False, limit=100)advanced_query(filter_dict=None, limit=100, skip=0, ...)
Safety Features
advanced_queryrequires filter criteria to prevent accidental full database dumps- All limits are enforced server-side with automatic constraint reporting
- Deep pagination (skip > 50,000) is blocked to prevent performance issues
Setup
Development
Install dependencies for development:
make dev
Testing
Run the complete test suite:
make all
Test specific components:
# API integration tests
make test-integration
# MCP protocol tests
make test-mcp
make test-mcp-extended
# Test with Claude CLI
make test-claude-mcp
# Version check
make test-version
MCP Integration
Claude Desktop Configuration
Option 1: From GitHub (Recommended)
Add to ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"bertron-mcp": {
"command": "uvx",
"args": ["--from", "git+https://github.com/ber-data/bertron-mcp.git", "bertron-mcp"]
}
}
}
Option 2: Local Development
Add to ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"bertron-mcp": {
"command": "uv",
"args": ["run", "python", "src/bertron_mcp/main.py"],
"cwd": "/path/to/bertron-mcp"
}
}
}
Claude Code MCP Setup
From GitHub:
claude mcp add bertron-mcp "uvx --from git+https://github.com/ber-data/bertron-mcp.git bertron-mcp"
Local development:
claude mcp add -s project bertron-mcp uv run python src/bertron_mcp/main.py
Production (after publishing to PyPI):
claude mcp add -s project bertron-mcp uvx bertron-mcp
Goose Setup
From GitHub:
goose session --with-extension "uvx --from git+https://github.com/ber-data/bertron-mcp.git bertron-mcp"
Local development:
goose session --with-extension "uv run python src/bertron_mcp/main.py"
Usage Examples
Using with Claude
Search for genomic samples near Orlando, FL within 100km radius:
> Use the bertron-mcp to search for entities near latitude 28.5383, longitude -81.3792 within 100km
Search for entities in a bounding box covering Yellowstone National Park:
> Use bbox_search to find entities between southwest corner (44.0, -125.0) and northeast corner (49.0, -110.0)
Find all NMDC sample entities:
> Search for all sample entities from the NMDC data source
Look up detailed information for a specific entity:
> Use entity_lookup to get details for entity ID "nmdc:bsm-12-abc123"
Direct MCP Protocol
# Test geosearch tool
echo '{"jsonrpc": "2.0", "method": "tools/call", "params": {"name": "geosearch", "arguments": {"latitude": 28.5383, "longitude": -81.3792, "search_radius_km": 100.0}}, "id": 1}' | uv run python src/bertron_mcp/main.py
# Test bounding box search
echo '{"jsonrpc": "2.0", "method": "tools/call", "params": {"name": "bbox_search", "arguments": {"southwest_lat": 44.0, "southwest_lng": -125.0, "northeast_lat": 49.0, "northeast_lng": -110.0}}, "id": 2}' | uv run python src/bertron_mcp/main.py
# Test search by data source
echo '{"jsonrpc": "2.0", "method": "tools/call", "params": {"name": "search_by_source", "arguments": {"source": "NMDC"}}, "id": 3}' | uv run python src/bertron_mcp/main.py
# Test advanced query with filtering
echo '{"jsonrpc": "2.0", "method": "tools/call", "params": {"name": "advanced_query", "arguments": {"filter_dict": {"entity_type": "sample"}, "limit": 10}}, "id": 4}' | uv run python src/bertron_mcp/main.py
Development
Code Quality
# Format and lint code
make format
make lint
# Type checking
make mypy
# Dependency analysis
make deptry
Building and Publishing
# Build package
make build
# Full release workflow
make release
Data Sources
BERtron aggregates data from:
- EMSL - Environmental Molecular Sciences Laboratory
- ESS-DIVE - ESS Data and Information for Virtual Ecosystems
- JGI - Joint Genome Institute
- MONET - Molecular Observation Network
- NMDC - National Microbiome Data Collaborative
Contributing
- Fork the repository
- Create a feature branch:
git checkout -b feature/your-feature - Make changes and add tests
- Run the test suite:
make all - Commit your changes:
git commit -m "Add your feature" - Push to the branch:
git push origin feature/your-feature - Submit a pull request
License
BSD-3-Clause
Установка Bertron
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/ber-data/bertron-mcpFAQ
Bertron MCP бесплатный?
Да, Bertron MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Bertron?
Нет, Bertron работает без API-ключей и переменных окружения.
Bertron — hosted или self-hosted?
Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.
Как установить Bertron в Claude Desktop, Claude Code или Cursor?
Открой Bertron на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
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