MCP Trino Server
Integrates with Trino and Iceberg for advanced data exploration, querying, and table maintenance.
MCP Trino Server
The MCP Trino Server is a Model Context Protocol (MCP) server that provides seamless integration with Trino and Iceberg, enabling advanced data exploration, querying, and table maintenance capabilities through a standard interface.
Use Cases
- Interactive data exploration and analysis in Trino
- Automated Iceberg table maintenance and optimization
- Building AI-powered tools that interact with Trino databases
- Executing and managing SQL queries with proper result formatting
Prerequisites
- A running Trino server (or Docker Compose for local development)
- Python 3.12 or higher
- Docker (optional, for containerized deployment)
Quick Start
1. Clone the Repository
git clone https://github.com/alaturqua/mcp-trino-python.git
cd mcp-trino-python
2. Create Environment File
Create a .env file in the root directory:
TRINO_HOST=localhost
TRINO_PORT=8080
TRINO_USER=trino
TRINO_CATALOG=tpch
TRINO_SCHEMA=tiny
3. Run Trino Locally (Optional)
docker-compose up -d trino
This starts a Trino server on localhost:8080 with sample TPC-H and TPC-DS data.
Installation
Installing via Smithery
To install MCP Trino Server for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @alaturqua/mcp-trino-python --client claude
Using uv (Recommended)
uv sync
uv run src/server.py
Using pip
pip install -e .
python src/server.py
Transport Modes
The server supports three transport modes:
| Transport | Description | Use Case |
|---|---|---|
stdio | Standard I/O (default) | VS Code, Claude Desktop, local MCP clients |
streamable-http | HTTP with streaming | Remote access, web clients, Docker |
sse | Server-Sent Events | Legacy HTTP transport |
Running with Different Transports
# stdio (default) - for VS Code and Claude Desktop
python src/server.py
# Streamable HTTP - for remote/web access
python src/server.py --transport streamable-http --host 0.0.0.0 --port 8000
# SSE - legacy HTTP transport
python src/server.py --transport sse --host 0.0.0.0 --port 8000
Usage with VS Code
Add to your VS Code settings (Ctrl+Shift+P → Preferences: Open User Settings (JSON)):
{
"mcp": {
"servers": {
"mcp-trino-python": {
"command": "uv",
"args": [
"run",
"--with",
"mcp[cli]",
"--with",
"trino",
"--with",
"loguru",
"mcp",
"run",
"/path/to/mcp-trino-python/src/server.py"
],
"envFile": "/path/to/mcp-trino-python/.env"
}
}
}
}
Or add to .vscode/mcp.json in your workspace (without the mcp wrapper key).
Usage with Claude Desktop
Add to your Claude Desktop configuration:
{
"mcpServers": {
"trino": {
"command": "python",
"args": ["./src/server.py"],
"env": {
"TRINO_HOST": "your-trino-host",
"TRINO_PORT": "8080",
"TRINO_USER": "trino"
}
}
}
}
Docker Usage
Build the Image
docker build -t mcp-trino-python .
Run with stdio (for VS Code)
docker run -i --rm \
-e TRINO_HOST=host.docker.internal \
-e TRINO_PORT=8080 \
-e TRINO_USER=trino \
mcp-trino-python
Run with Streamable HTTP
docker run -p 8000:8000 \
-e TRINO_HOST=host.docker.internal \
-e TRINO_PORT=8080 \
mcp-trino-python \
--transport streamable-http --host 0.0.0.0 --port 8000
Docker Compose
# Start Trino + MCP server with Streamable HTTP
docker-compose up -d
# Start with SSE transport
docker-compose --profile sse up -d
# Run stdio for testing
docker-compose --profile stdio run --rm mcp-trino-stdio
VS Code with Docker
{
"mcp": {
"servers": {
"mcp-trino-python": {
"command": "docker",
"args": [
"run",
"-i",
"--rm",
"--network",
"mcp-trino-python_trino-network",
"-e",
"TRINO_HOST=trino",
"-e",
"TRINO_PORT=8080",
"-e",
"TRINO_USER=trino",
"mcp-trino-python"
]
}
}
}
}
Configuration
Environment Variables
| Variable | Description | Default |
|---|---|---|
| TRINO_HOST | Trino server hostname | localhost |
| TRINO_PORT | Trino server port | 8080 |
| TRINO_USER | Trino username | trino |
| TRINO_CATALOG | Default catalog | None |
| TRINO_SCHEMA | Default schema | None |
| TRINO_HTTP_SCHEME | HTTP scheme (http/https) | http |
| TRINO_PASSWORD | Trino password | None |
Tools
Query and Exploration Tools
-
show_catalogs
- List all available catalogs
- No parameters required
-
show_schemas
- List all schemas in a catalog
- Parameters:
catalog: Catalog name (string, required)
-
show_tables
- List all tables in a schema
- Parameters:
catalog: Catalog name (string, required)schema: Schema name (string, required)
-
describe_table
- Show detailed table structure and column information
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
-
execute_query
- Execute a SQL query and return formatted results
- Parameters:
query: SQL query to execute (string, required)
-
show_catalog_tree
- Show a hierarchical tree view of catalogs, schemas, and tables
- Returns a formatted tree structure with visual indicators
- No parameters required
-
show_create_table
- Show the CREATE TABLE statement for a table
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
-
show_create_view
- Show the CREATE VIEW statement for a view
- Parameters:
view: View name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
-
show_stats
- Show statistics for a table
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
Iceberg Table Maintenance
-
optimize
- Optimize an Iceberg table by compacting small files
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
-
optimize_manifests
- Optimize manifest files for an Iceberg table
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
-
expire_snapshots
- Remove old snapshots from an Iceberg table
- Parameters:
table: Table name (string, required)retention_threshold: Age threshold (e.g., "7d") (string, optional)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
Iceberg Metadata Inspection
-
show_table_properties
- Show Iceberg table properties
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
-
show_table_history
- Show Iceberg table history/changelog
- Contains snapshot timing, lineage, and ancestry information
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
-
show_metadata_log_entries
- Show Iceberg table metadata log entries
- Contains metadata file locations and sequence information
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
-
show_snapshots
- Show Iceberg table snapshots
- Contains snapshot details including operations and manifest files
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
-
show_manifests
- Show Iceberg table manifests for current or all snapshots
- Contains manifest file details and data file statistics
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)all_snapshots: Include all snapshots (boolean, optional)
-
show_partitions
- Show Iceberg table partitions
- Contains partition statistics and file counts
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
-
show_files
- Show Iceberg table data files in current snapshot
- Contains detailed file metadata and column statistics
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
-
show_entries
- Show Iceberg table manifest entries for current or all snapshots
- Contains entry status and detailed file metrics
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)all_snapshots: Include all snapshots (boolean, optional)
-
show_refs
- Show Iceberg table references (branches and tags)
- Contains reference configuration and snapshot mapping
- Parameters:
table: Table name (string, required)catalog: Catalog name (string, optional)schema: Schema name (string, optional)
Query History
- show_query_history
- Get the history of executed queries
- Parameters:
limit: Maximum number of queries to return (number, optional)
License
This project is licensed under the Apache 2.0 License. Please refer to the LICENSE file for the full terms.
相关服务器
SET-MCP
Access financial statements, including income, balance sheets, and cash flow, for companies listed on the Securities Exchange of Thailand (SET).
CData CSV Files
A read-only MCP server for CSV files from CData, requiring an external JDBC driver for connection.
Charity MCP Server
Access charity and nonprofit organization data from the IRS database via CharityAPI.org.
Membase MCP
A decentralized memory layer for AI agents providing secure, persistent storage for conversation history and knowledge.
AI Knowledge System
An enterprise-ready system to archive AI conversations from ChatGPT and Claude into a Supabase database.
AlibabaCloud DMS MCP Server
An AI-powered gateway for managing over 40 data sources like Alibaba Cloud and mainstream databases, featuring NL2SQL, code generation, and data migration.
Schema Search
In-memory natural language schema search over database schemas
Snowflake
Interact with Snowflake databases to query and manage data.
TiDB
An MCP server for TiDB, a serverless, distributed SQL database.
Movies MCP Server
A comprehensive movie database server supporting advanced search, CRUD operations, and image management via a PostgreSQL database.
