PostgreSQL MCP Server
Enables secure, read-only PostgreSQL database interaction through natural language, with automatic database discovery and connection management.
README
PostgreSQL MCP Server
A secure, read-only PostgreSQL Model Context Protocol (MCP) server for AI assistant integration with automatic database discovery and connection management.
What It Does
This tool provides two main components:
- Query Executor (
execute_query.py): Interactive PostgreSQL query execution with support for direct queries, file input, and interactive mode - MCP Server (
mcp_postgresql_server.py): AI assistant integration that allows natural language database interactions through Claude and other MCP clients
Key Features
- Automatic Database Discovery: Scans project files for database configurations and presents options for selection
- Read-Only Safety: Blocks write operations by default (configurable)
- Interactive Configuration: Guides users through database setup
with automatic
.envfile management - Connection Pooling: Efficient PostgreSQL connection management
- AI Integration: Works seamlessly with Claude Desktop and Cursor IDE
Quick Start
Prerequisites: Ensure you have uv installed.
Using uvx (Recommended)
Run directly without installation:
# MCP Server for AI integration
uvx mcp-postgresql-server
# Query executor
uvx --from mcp-postgresql-server execute-query "SELECT version()"
Configuration
Set your database connection:
export MCP_POSTGRESQL_DATABASE="postgres://username:password@hostname:port/database"
Or create a .env file:
MCP_POSTGRESQL_DATABASE=postgres://username:password@hostname:port/database
MCP_POSTGRESQL_READ_ONLY=true
MCP_POSTGRESQL_LOG_FILE=./mcp-postgresql.log
MCP_POSTGRESQL_LOG_LEVEL=info
Usage Examples
Query Executor
Using uvx (recommended):
# Interactive mode
uvx --from mcp-postgresql-server execute-query
# Direct query
uvx --from mcp-postgresql-server execute-query "SELECT COUNT(*) FROM users"
# From file
uvx --from mcp-postgresql-server execute-query --file queries.sql
Using Python directly:
# Interactive mode
python3 execute_query.py
# Direct query
python3 execute_query.py "SELECT COUNT(*) FROM users"
# From file
python3 execute_query.py --file queries.sql
MCP Server with Claude Code (globally)
Add to ~/.claude.json:
{
"mcpServers": {
"mcp-postgres": {
"command": "uvx",
"args": ["mcp-postgresql-server"],
"env": {
"MCP_POSTGRESQL_CWD": "${PWD}"
}
}
}
}
Then ask Claude:
- "Show me all tables in the database"
- "Execute SELECT COUNT(*) FROM users"
- "Help me write a query to find recent orders"
Cursor IDE Integration
Create/update mcp.json in your project root:
{
"mcpServers": {
"mcp-postgresql-server": {
"command": "uvx",
"args": ["mcp-postgresql-server"],
"env": {
"MCP_POSTGRESQL_CWD": "."
}
}
}
}
Configuration Discovery
The server automatically discovers database configurations from:
.envfiles.confand.inifiles.jsonand.yamlfiles- Individual parameter files (db.host, db.user, etc.)
When multiple configurations are found, it presents an interactive selection menu.
Saved configurations are stored in a .env file for future use
using MCP_POSTGRESQL_DATABASE variable.
Environment Variables
| Variable | Description | Default |
|---|---|---|
MCP_POSTGRESQL_DATABASE |
PostgreSQL connection URI | Required |
MCP_POSTGRESQL_READ_ONLY |
Enable read-only mode | true |
MCP_POSTGRESQL_LOG_FILE |
Log file path (optional) | None |
MCP_POSTGRESQL_LOG_LEVEL |
Log level (debug, info, warning, error, critical) | error |
MCP_POSTGRESQL_CWD |
Path of the project working directory | . |
Security
- Read-only by default: Blocks INSERT, UPDATE, CREATE, ALTER, DROP operations
- Connection validation: Validates all database connections before use
- Credential protection: Supports environment variables and
.envfiles - Error handling: Comprehensive error reporting without exposing sensitive data
Common Issues
Connection errors: Verify MCP_POSTGRESQL_DATABASE format: postgres://user:password@host:port/database
Permission issues: Ensure database user has appropriate SELECT permissions
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