Skip to main content
Glama
gigamori

run-sql-connectorx

by gigamori

run-sql-connectorx

An MCP server that executes SQL via ConnectorX and streams the result to CSV or Parquet in PyArrow RecordBatch chunks.

  • Output formats: csv or parquet

  • CSV: UTF-8, header row is always written

  • Parquet: PyArrow defaults; schema mismatch across batches raises an error

  • Return value: the string "OK" on success, or "Error: <message>" on failure

  • On failure the partially written output file is deleted

  • CSV token counting (optional): per-line token counting via tiktoken (o200k_base) with a warning threshold

Why this library?

  • Efficient streaming: handles large results in Arrow RecordBatch chunks

  • Token-efficient for MCP: exchanges data via files instead of inline payloads

  • Cross-database via ConnectorX: one tool works across many backends

  • Robust I/O: CSV header handling, Parquet schema validation, safe cleanup on errors

Supported data sources (ConnectorX)

ConnectorX supports many databases. Common examples include:

  • PostgreSQL

  • MySQL / MariaDB

  • SQLite

  • Microsoft SQL Server

  • Amazon Redshift

  • Google BigQuery

For the complete and up-to-date list of supported databases and connection-token (conn) formats, see the official docs:

Getting Started

uvx run-sql-connectorx \
  --conn "<connection_token>" \
  --csv-token-threshold 500000

<connection_token> is the connection token (conn) used by ConnectorX—SQLite, PostgreSQL, BigQuery, and more.

CLI options

  • --conn <connection_token> (required): ConnectorX connection token (conn)

  • --csv-token-threshold <int> (default 0): when > 0, enable CSV per-line token counting using tiktoken(o200k_base); the value is a warning threshold

Further reading

Running from mcp.json

To launch the server from an MCP-aware client such as Cursor, add the following snippet to .cursor/mcp.json at the project root:

{
  "mcpServers": {
    "run-sql-connectorx": {
      "command": "uvx",
      "args": [
        "--from", "git+https://github.com/gigamori/mcp-run-sql-connectorx",
        "run-sql-connectorx",
        "--conn", "<connection_token>"
      ]
    }
  }
}

Behaviour and Limits

  • Streaming: Results are streamed from ConnectorX in RecordBatch chunks; the default batch_size is 100 000 rows.

  • Empty result:

    • CSV – an empty file is created

    • Parquet – an empty table is written

  • Error handling: the output file is removed on any exception.

  • CSV token counting (when --csv-token-threshold > 0):

    • Counted text: exactly what csv.writer writes (including header row when present, delimiters, quotes, and newlines), UTF-8

    • Streaming approach: tokenized with tiktoken(o200k_base) per written CSV line

Call output

The tool returns a single text message.

  • On success:

    • Parquet: OK

    • CSV:

      • If --csv-token-threshold = 0: OK

      • If --csv-token-threshold > 0: OK N tokens (or OK N tokens. Too many tokens may impair processing. Handle appropriately when N >= threshold)

      • Empty result with counting enabled: OK 0 tokens

  • On failure: Error: <message> (any partial output file is deleted)

MCP Tool Specification

The server exposes a single MCP tool run_sql.

Argument

Type

Required

Description

sql_file

string

yes

Path to a file that contains the SQL text to execute

output_path

string

yes

Destination file for the query result

output_format

enum

yes

One of "csv" or "parquet"

batch_size

int

no

RecordBatch size (default 100000)

Example Call

{
  "tool": "run_sql",
  "arguments": {
    "sql_file": "sql/queries/sales.sql",
    "output_path": "output/sales.parquet",
    "output_format": "parquet",
    "batch_size": 200000
  }
}

License

Distributed under the MIT License. See LICENSE for details.

A
license - permissive license
-
quality - not tested
B
maintenance

Maintenance

Maintainers
Response time
0dRelease cycle
2Releases (12mo)

Resources

Unclaimed servers have limited discoverability.

Looking for Admin?

If you are the server author, to access and configure the admin panel.

Latest Blog Posts

MCP directory API

We provide all the information about MCP servers via our MCP API.

curl -X GET 'https://glama.ai/api/mcp/v1/servers/gigamori/mcp-run-sql-connectorx'

If you have feedback or need assistance with the MCP directory API, please join our Discord server