run-sql-connectorx
Executes SQL queries via ConnectorX and streams results to CSV or Parquet files, supporting multiple databases and optional token counting for CSV output.
README
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:
csvorparquet - 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
RecordBatchchunks - 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:
- ConnectorX repository: https://github.com/sfu-db/connector-x/
- Database connection tokens: https://github.com/sfu-db/connector-x/tree/main/docs/databases
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>(default0): when> 0, enable CSV per-line token counting usingtiktoken(o200k_base); the value is a warning threshold
Further reading
- ConnectorX repository: https://github.com/sfu-db/connector-x/
- Connection-token formats for each database: https://github.com/sfu-db/connector-x/tree/main/docs/databases
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_sizeis100 000rows. - 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.writerwrites (including header row when present, delimiters, quotes, and newlines), UTF-8 - Streaming approach: tokenized with
tiktoken(o200k_base)per written CSV line
- Counted text: exactly what
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(orOK N tokens. Too many tokens may impair processing. Handle appropriatelywhenN >= threshold) - Empty result with counting enabled:
OK 0 tokens
- If
- Parquet:
- 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.
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