Rails PG Extras MCP
An MCP interface for the rails-pg-extras gem, providing PostgreSQL metadata and performance analysis through LLM prompts.
Rails PG Extras MCP

MCP (Model Context Protocol) interface for rails-pg-extras gem. Easily explore PostgreSQL metadata and debug performance issues. Check for table bloat, slow queries, unused indexes, and more. Run EXPLAIN ANALYZE on bottlenecks and get clear, LLM-powered insights to optimize your database.
Use a minimally privileged, read-only user to eliminate the risk of data modification or exposure.
Check out this post for more in-depth info on the project.

Installation
bundle add rails-pg-extras-mcp
The library supports MCP protocol via HTTP SSE interface.
config/routes.rb
mount RailsPgExtrasMcp::App.build, at: "pg_extras_mcp"
with optional authorization:
opts = { auth_token: "secret" }
mount RailsPgExtrasMcp::App.build(opts), at: "pg_extras_mcp"
Refer to the fast-mcp docs for a complete list of supported options (the opts hash is passed directly as-is). For production deployments, you'll likely need a similar config:
opts = { allowed_origins: [ /.*./ ], allowed_ips: [ "*" ], auth_token: "secret", localhost_only: false }
mount RailsPgExtrasMcp::App.build(opts) at: "pg_extras_mcp"
Next, install mcp-remote:
npm install -g mcp-remote
and in your LLM of choice:
{
"mcpServers": {
"pg-extras": {
"command": "npx",
"args": [
"mcp-remote",
"http://localhost:3000/pg_extras_mcp/sse",
"--header",
"Authorization: secret"
]
}
}
}
You can now ask LLM questions about the metadata and performance metrics of your database.
Optional EXPLAIN ANALYZE support
calls and outliers methods return a list of bottleneck queries. LLM can get better insights into these queries by performing EXPLAIN and EXPLAIN ANALYZE analysis. MCP server exposes two optional methods for this purpose: explain and explain_analyze.
You can enable them by setting the following ENV variables:
ENV['PG_EXTRAS_MCP_EXPLAIN_ENABLED'] = 'true'
ENV['PG_EXTRAS_MCP_EXPLAIN_ANALYZE_ENABLED'] = 'true'
Enabling these features means that an LLM, can run arbitrary queries in your database. The execution context is wrapped in a transaction and rolled back, so, in theory, any data modification should not be possible. But it's advised to configure a read-only permission if you want to use these features. By specifying ENV['RAILS_PG_EXTRAS_MCP_DATABASE_URL'] you can overwrite the default Rails ActiveRecord database connection to restrict an access scope:
Least responsibility
If you're not planing to use EXPLAIN ANALYZE features, you should configure a user with read access only to the metadata tables:
CREATE ROLE extras_viewer NOLOGIN;
CREATE USER extras_user WITH PASSWORD 'your_password';
GRANT extras_viewer TO extras_user;
GRANT CONNECT ON DATABASE your_db_name TO extras_user;
GRANT USAGE ON SCHEMA public TO extras_user;
GRANT SELECT ON pg_stat_statements TO extras_user;
GRANT SELECT ON pg_stat_activity, pg_locks TO extras_user;
GRANT SELECT ON pg_stat_user_indexes, pg_index TO extras_user;
GRANT SELECT ON pg_stat_all_tables, pg_stat_database, pg_settings, pg_namespace TO extras_user;
GRANT EXECUTE ON FUNCTION pg_relation_size(regclass) TO extras_user;
GRANT EXECUTE ON FUNCTION pg_indexes_size(regclass) TO extras_user;
GRANT EXECUTE ON FUNCTION pg_table_size(regclass) TO extras_user;
GRANT EXECUTE ON FUNCTION pg_total_relation_size(regclass) TO extras_user;
You can ask an LLM to check which db user it's connected with using connections tool.
Status
The project is in an early beta, so proceed with caution.
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