MCP MS SQL Server
A Model Context Protocol (MCP) server for Microsoft SQL Server that provides tools for database operations, data analysis, and visualization generation.
README
MCP MS SQL Server
A Model Context Protocol (MCP) server for Microsoft SQL Server that provides tools for database operations, data analysis, and visualization generation.
Table of Contents
- Features
- Quick Start
- Installation
- Configuration
- Usage
- Tools Overview
- Security
- Troubleshooting
- Development
- License
Features
8 Powerful Database Tools - Query execution, schema exploration, and data analysis
Interactive Visualizations - Bar charts, scatter plots, heatmaps, and more
Jupyter Notebook Generation - Automated analysis code creation
Power BI Integration - Export data in Power BI compatible formats
Security Controls - Granular permissions for write operations
Connection Pooling - Optimized performance with configurable pools
Quick Start
-
Install the package
pip install mcp-mssql-server -
Create configuration
# Create .env file DB_TYPE=mssql MSSQL_SERVER=tcp:your-server.database.windows.net MSSQL_USER=your-username MSSQL_PASSWORD=your-password MSSQL_DATABASE=your-database -
Run the server
uv run python mssql.py or uv run python main.py
Installation
Option 1: Using pip
pip install mcp-mssql-server
Option 2: Using uv
uv pip install mcp-mssql-server
Option 3: From source
git clone https://github.com/SerenaHangSinclair/mcp-mssql-server.git
cd mcp-mssql-server
pip install -e .
Configuration
Create a .env file in your project root with the basic required settings:
# Database Connection (Required)
DB_TYPE=mssql
MSSQL_SERVER=tcp:your-server.database.windows.net
MSSQL_PORT=1433
MSSQL_USER=your-username
MSSQL_PASSWORD=your-password
MSSQL_DATABASE=your-database
# Security (Recommended)
ALLOW_WRITE_OPERATIONS=false
<details> <summary> View complete configuration options</summary>
# Database Type (mssql)
DB_TYPE=mssql
# SQL Server Configuration
MSSQL_SERVER=tcp:your-server.database.windows.net
MSSQL_PORT=1433
MSSQL_USER=your-username
MSSQL_PASSWORD=your-password
MSSQL_DATABASE=your-database
MSSQL_ENCRYPT=true
MSSQL_TRUST_SERVER_CERTIFICATE=true
# Security Settings
ALLOW_WRITE_OPERATIONS=false
ALLOW_INSERT_OPERATION=false
ALLOW_UPDATE_OPERATION=false
ALLOW_DELETE_OPERATION=false
# Performance Settings
CONNECTION_POOL_MIN=1
CONNECTION_POOL_MAX=10
QUERY_TIMEOUT=30000
</details>
Usage
Running the MCP Server
Suggest to use uv to create a sperate virtual environment for the MCP construction. Remember to install uv/:
Windows
powershell -ExecutionPolicy ByPass -c "irm https://astral.sh/uv/install.ps1 | iex"
MacOS/Linux
curl -LsSf https://astral.sh/uv/install.sh | sh
uv venv
Running the MCP Server
Basic usage:
uv run python main.py or uv run python mssql.py
With logging enabled:
uv run python main.py --log
Using with Claude Desktop
Add this configuration to your Claude Desktop settings:
{
"mcp-mssql-server": {
"command": "uv",
"args": ["run", "python", "/path/to/mcp-mssql-server/main.py"]
}
}
Tools Overview
| Tool | Purpose | Output |
|---|---|---|
| sql_query | Execute SQL queries with permission controls | Query results |
| get_database_info | Get server and database information | Server details |
| show_tables | List all tables in the database | Table list |
| describe_table | Get detailed table structure information | Column details |
| show_indexes | Display table indexes | Index information |
| generate_analysis_notebook | Create Jupyter notebooks for data analysis | .ipynb file |
| generate_visualization | Create interactive visualizations | .html file |
| generate_powerbi_visualization | Generate Power BI compatible exports | .csv/.json files |
<details> <summary> View detailed tool examples</summary>
sql_query
Execute any SQL query on the database:
{
"query": "SELECT TOP 10 * FROM users WHERE status = 'active'"
}
show_tables
List tables, optionally filtered by schema:
{
"schema": "dbo"
}
describe_table
Get detailed table structure:
{
"table_name": "users",
"schema": "dbo"
}
generate_visualization
Create interactive charts from query results:
{
"query": "SELECT category, SUM(amount) as total FROM sales GROUP BY category",
"viz_type": "bar",
"title": "Sales by Category"
}
Supported visualization types: auto, bar, scatter, pie, line, heatmap, table
generate_analysis_notebook
Create Jupyter notebook with automated analysis:
{
"query": "SELECT * FROM sales_data WHERE date >= '2024-01-01'",
"output_file": "sales_analysis.ipynb"
}
</details>
Security
Built-in Security Features:
- Write operations disabled by default - All INSERT, UPDATE, DELETE operations are blocked
- Granular permissions - Enable specific operations via environment variables
- Encrypted connections - Uses TLS encryption by default
- Credential protection - Database credentials stored in
.envfile (excluded from git)
To enable write operations:
# Enable specific operations as needed
ALLOW_INSERT_OPERATION=true
ALLOW_UPDATE_OPERATION=true
ALLOW_DELETE_OPERATION=true
Troubleshooting
Connection Issues
Problem: Cannot connect to SQL Server
# Check server address format
MSSQL_SERVER=tcp:your-server.database.windows.net # For Azure SQL
# Verify firewall settings allow your IP
# Ensure SQL Server authentication is enabled
# Double-check credentials in .env file
Permission Errors
Problem: Access denied or operation not allowed
# Check security settings
ALLOW_WRITE_OPERATIONS=true # If you need write access
# Verify database user permissions
# Ensure user has appropriate SQL Server roles
Visualization Errors
Problem: Charts not generating correctly
- Ensure query returns data suitable for the visualization type
- Bar/pie charts need categorical columns
- Scatter/line charts need numeric columns
- Check that query returns at least one row
Common Error Messages
<details> <summary>Click to view common errors and solutions</summary>
Error: "Login failed for user"
- Check username and password in
.env - Verify SQL Server authentication is enabled
Error: "Cannot open database"
- Verify database name is correct
- Check user has access to the specified database
Error: "Connection timeout"
- Increase
QUERY_TIMEOUTin.env - Check network connectivity to SQL Server
</details>
Development
Extending the Server
File Structure:
mssql.py- Database tools implementationmain.py- MCP server interface.env- Configuration file
Adding New Tools:
- Create method in
MSSQLToolsclass - Add tool definition in
list_tools() - Add handler in
call_tool()
Output Files
The tools generate various output files in your working directory:
- Jupyter Notebooks:
.ipynbfiles with analysis code - Visualizations:
.htmlfiles with interactive charts - Power BI Data:
.csvand.jsonfiles for import
License
MIT License - see the LICENSE file for details.
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