bricks-use
MCP server for executing Databricks SQL queries and comparing table data, supporting CLI and VS Code integration.
README
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<img src="https://raw.githubusercontent.com/aymenfurter/bricks-use/refs/heads/main/bricks-use.png" alt="Project Logo" width="820" />
A powerful Model Context Protocol (MCP) server for executing Databricks SQL queries and comparing table data.
⚠️ This project is purely meant for demo purposes - use at your own risk!
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Table of Contents
Features
| Feature | Description |
|---|---|
| Execute SQL Queries | Run any SQL query on Databricks with configurable result limits |
| Table Information | Get detailed information about tables including schema and row counts |
| Table Comparison | Compare two tables by downloading their data and running CLI diff |
| Quick Comparison | Fast metadata-only comparison of tables |
Quick Start
# 1. Clone and setup
git clone https://github.com/aymenfurter/bricks-use.git
cd bricks-use
python -m venv .venv && source .venv/bin/activate
# 2. Install dependencies
pip install -r requirements.txt
# 3. Configure environment (see setup section)
cp .env.example .env # Edit with your credentials
# 4. Run the server or use CLI
python databricks_server.py # For MCP server
# OR
./bricks query "SELECT * FROM my_table LIMIT 10" # For CLI
Setup
Prerequisites
<table> <tr> <td><strong>Python</strong></td> <td>3.11 or higher</td> </tr> <tr> <td><strong>Databricks</strong></td> <td>Workspace access</td> </tr> <tr> <td><strong>Token</strong></td> <td>Personal access token</td> </tr> </table>
Environment Variables
Set the following environment variables or create a .env file:
# Databricks Configuration
DATABRICKS_SERVER_HOSTNAME=your-workspace.cloud.databricks.com
DATABRICKS_HTTP_PATH=/sql/1.0/warehouses/your-warehouse-id
DATABRICKS_ACCESS_TOKEN=your-personal-access-token
# Optional Settings
DATABRICKS_CATALOG=main # Defaults to 'main'
DATABRICKS_SCHEMA=default # Defaults to 'default'
DATABRICKS_TEMP_DIR=/tmp/databricks_mcp # Temp directory
Installation
-
Create and activate a virtual environment:
python -m venv .venv source .venv/bin/activate # On Windows: .venv\Scripts\activate -
Install dependencies:
pip install -r requirements.txt
CLI Usage
Use the ./bricks command-line tool for direct interaction:
# Execute SQL queries
./bricks query "SELECT * FROM my_table LIMIT 10"
./bricks query "SELECT COUNT(*) FROM users WHERE active = true" --limit 50
# Get table information
./bricks info my_table
./bricks info users --catalog production --schema analytics
# Compare tables
./bricks compare table1 table2
./bricks compare old_users new_users --quick
./bricks compare sales_2023 sales_2024 --catalog1 prod --schema1 sales
# Output options
./bricks query "SELECT * FROM table" --format json
./bricks info my_table --format table
MCP Tools
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| Tool | Purpose | Key Parameters |
|---|---|---|
execute_query |
Execute SQL queries | query, limit |
get_table_info |
Get table metadata | table_name, catalog, schema |
compare_tables |
Full data comparison | table1, table2, diff_lines |
quick_compare_tables |
Metadata comparison | table1, table2 |
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execute_query
Execute a SQL query on Databricks.
Parameters:
query(str): SQL query to executelimit(int, optional): Maximum rows to return (default: 1000)
get_table_info
Get information about a Databricks table.
Parameters:
table_name(str): Name of the tablecatalog(str, optional): Catalog nameschema(str, optional): Schema name
compare_tables
Compare data between two tables by downloading full data and running diff.
Parameters:
table1(str): First table nametable2(str): Second table namecatalog1(str, optional): Catalog for table1schema1(str, optional): Schema for table1catalog2(str, optional): Catalog for table2schema2(str, optional): Schema for table2diff_lines(int, optional): Number of diff context lines (default: 10)
quick_compare_tables
Quick metadata-only comparison without downloading data.
Parameters:
table1(str): First table nametable2(str): Second table namecatalog1(str, optional): Catalog for table1schema1(str, optional): Schema for table1catalog2(str, optional): Catalog for table2schema2(str, optional): Schema for table2
VS Code MCP Integration
Add this configuration to your VS Code settings (mcp.json):
<details> <summary><strong>Click to expand VS Code configuration</strong></summary>
{
"inputs": [
{
"type": "promptString",
"id": "databricks_server_hostname",
"description": "Databricks Server Hostname"
},
{
"type": "promptString",
"id": "databricks_http_path",
"description": "Databricks HTTP Path"
},
{
"type": "promptString",
"id": "databricks_access_token",
"description": "Databricks Access Token",
"password": true
},
{
"type": "promptString",
"id": "databricks_catalog",
"description": "Databricks Catalog (default: main)"
},
{
"type": "promptString",
"id": "databricks_schema",
"description": "Databricks Schema (default: default)"
}
],
"servers": {
"databricks": {
"command": "python",
"args": [
"${workspaceFolder}/databricks_server.py"
],
"env": {
"PYTHONUNBUFFERED": "1",
"DATABRICKS_SERVER_HOSTNAME": "${input:databricks_server_hostname}",
"DATABRICKS_HTTP_PATH": "${input:databricks_http_path}",
"DATABRICKS_ACCESS_TOKEN": "${input:databricks_access_token}",
"DATABRICKS_CATALOG": "${input:databricks_catalog}",
"DATABRICKS_SCHEMA": "${input:databricks_schema}"
},
"workingDirectory": "${workspaceFolder}"
}
}
}
</details>
<div align="center">
License
This project is licensed under the MIT License.
Made with ❤️ for the Databricks community
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