Azure SQL MCP Server

Azure SQL MCP Server

Connects Microsoft Copilot Studio to Azure SQL Databases, enabling natural language interactions for data querying, record management, and schema inspection. It features 12 specialized tools for performing CRUD operations, executing SQL queries, and generating data visualizations like charts.

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Azure SQL MCP Server — Complete Guide

A Model Context Protocol (MCP) server that connects Microsoft Copilot Studio to your Azure SQL Database. Supports 12 tools for querying, CRUD operations, schema inspection, search, and chart visualization.


Table of Contents

  1. Prerequisites
  2. Installation
  3. Configuration
  4. Code Fixes (Important)
  5. Running the Server
  6. Exposing to the Internet
  7. Copilot Studio Setup
  8. All 12 Tools Reference
  9. CRUD Operations
  10. Chart Visualization
  11. Example Queries & Use Cases
  12. Production Deployment
  13. API Key Authentication
  14. Troubleshooting
  15. Security Checklist

Architecture

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1. Prerequisites

  • Python 3.8+
  • ODBC Driver 18 for SQL ServerDownload here
  • Azure SQL Database with server hostname, database name, username, and password
  • Cloudflare Tunnel (for local testing) — winget install Cloudflare.cloudflared

Install ODBC Driver

Windows: Download and install from the link above.

macOS:

brew tap microsoft/mssql-release https://github.com/Microsoft/homebrew-mssql-release
brew update
brew install msodbcsql18 mssql-tools18

Linux (Ubuntu/Debian):

curl https://packages.microsoft.com/keys/microsoft.asc | sudo apt-key add -
curl https://packages.microsoft.com/config/ubuntu/$(lsb_release -rs)/prod.list | sudo tee /etc/apt/sources.list.d/mssql-release.list
sudo apt-get update
sudo ACCEPT_EULA=Y apt-get install -y msodbcsql18

2. Installation

git clone <your-repo-url>
cd azure-sql-mcp-server
python -m venv venv
venv\Scripts\activate          # Windows
# source venv/bin/activate     # macOS/Linux
pip install -r requirements.txt

3. Configuration

Create a .env file in the project root:

AZURE_SQL_SERVER=your-server.database.windows.net
AZURE_SQL_DATABASE=your-database-name
AZURE_SQL_USERNAME=your-username
AZURE_SQL_PASSWORD=your-password
AZURE_SQL_DRIVER=ODBC Driver 18 for SQL Server

Never commit .env to version control. Add it to .gitignore.


4. Code Fixes

The MCP SDK requires specific configuration. Apply these 3 fixes to azure_sql_mcp.py:

Fix 1: Lifespan function signature

# ❌ BEFORE
@asynccontextmanager
async def app_lifespan():

# ✅ AFTER — FastMCP passes the server instance
@asynccontextmanager
async def app_lifespan(server: FastMCP):

Fix 2: Host and port on the constructor

# ❌ BEFORE
mcp = FastMCP("azure_sql_mcp", lifespan=app_lifespan)

# ✅ AFTER — host/port go on the constructor, NOT on run()
mcp = FastMCP("azure_sql_mcp", host="0.0.0.0", port=8000, lifespan=app_lifespan)

Fix 3: HTTP transport

# ❌ BEFORE
if __name__ == "__main__":
    mcp.run()

# ✅ AFTER — streamable-http (with hyphen) for Copilot Studio
if __name__ == "__main__":
    mcp.run(transport="streamable-http")

5. Running the Server

cd azure-sql-mcp-server
.\venv\Scripts\Activate.ps1       # Windows
python azure_sql_mcp.py

You should see:

INFO: Initializing Azure SQL MCP server...
INFO: Database connection established
INFO: Database connection verified
INFO: Uvicorn running on http://0.0.0.0:8000 (Press CTRL+C to quit)

MCP endpoint: http://localhost:8000/mcp


6. Exposing to the Internet

Copilot Studio needs a public HTTPS URL. Use Cloudflare Tunnel (free, no signup).

Why not ngrok? ngrok's free tier shows a browser warning page (ERR_NGROK_6024) that blocks API clients like Copilot Studio.

Steps

  1. Install (one-time):

    winget install Cloudflare.cloudflared
    

    Close and reopen your terminal after install.

  2. In a new terminal (keep the server running in the first one):

    cloudflared tunnel --url http://localhost:8000
    
  3. Copy the URL from the output:

    https://electronic-annie-jose-spoken.trycloudflare.com
    
  4. Your MCP server URL for Copilot Studio:

    https://electronic-annie-jose-spoken.trycloudflare.com/mcp
    

URLs change on restart. For a permanent URL, deploy to Azure App Service (see Production Deployment).


7. Copilot Studio Setup

Step 1: Add the MCP Server

  1. Go to Copilot Studio
  2. Open your agent → ToolsAdd a toolNew toolModel Context Protocol
  3. Fill in:
Field Value
Server name azure-sql-mcp
Server description Azure SQL Database for querying tables, retrieving data, inspecting schema, and visualizing data with charts
Server URL https://YOUR-CLOUDFLARE-URL.trycloudflare.com/mcp
Authentication None (local testing) or API key (production)
  1. Click CreateNextCreate new connectionAdd and configure

Step 2: Configure the Agent (Overview tab)

Both fields are required — the agent won't work without them.

Description:

Azure SQL Database Assistant that queries tables, retrieves data, inspects schema, manages records, and visualizes data with charts.

Instructions (click Edit):

You are an Azure SQL Database assistant. You help users interact with their database using natural language.

Your capabilities:
- List tables and describe their schema
- Execute SQL queries (SELECT, INSERT, UPDATE, DELETE)
- Search for data across table columns
- Create and drop tables
- Visualize data as charts (bar, pie, line, doughnut)
- Provide database information and statistics

Rules:
- Always use the MCP tools to answer database questions - never guess table names or data
- Before querying, list tables first if you don't know the schema
- Use parameterized queries when possible
- Ask for confirmation before UPDATE, DELETE, or DROP operations
- Format results clearly for the user
- When asked for charts, pick the most appropriate chart type based on the data

Step 3: Publish and Test

Click Publish, wait a minute, then test with prompts like:

  • "Show me all tables in the database"
  • "What's the schema of the customers table?"
  • "Get the first 10 rows from orders"
  • "How many records are in each table?"
  • "Show me sales by region as a bar chart"

8. All 12 Tools Reference

# Tool What it does Read-Only
1 azure_sql_execute_query Run any SQL query No
2 azure_sql_list_tables List all tables with row counts Yes
3 azure_sql_get_table_schema Get column details for a table Yes
4 azure_sql_get_table_data Fetch paginated table data Yes
5 azure_sql_get_database_info Database metadata & stats Yes
6 azure_sql_create_record INSERT a new row No
7 azure_sql_update_record UPDATE existing rows (WHERE required) No
8 azure_sql_delete_record DELETE rows (WHERE required) No
9 azure_sql_search Search text across columns Yes
10 azure_sql_create_table Create a new table No
11 azure_sql_drop_table Drop a table No
12 azure_sql_visualize_data Generate charts (Adaptive Card) Yes

All tools support both markdown and json response formats.


9. CRUD Operations

CREATE — azure_sql_create_record

{
  "table_name": "customers",
  "data": {
    "name": "John Doe",
    "email": "john@example.com",
    "city": "Seattle"
  }
}

Natural language: "Add a new customer named John Doe with email john@example.com"


READ — azure_sql_execute_query

{
  "query": "SELECT * FROM customers WHERE city = ?",
  "params": ["Seattle"],
  "response_format": "markdown"
}

Natural language: "Show me all customers from Seattle"


UPDATE — azure_sql_update_record

{
  "table_name": "customers",
  "data": { "email": "newemail@example.com" },
  "where": { "id": 123 }
}

Safety: WHERE clause is required — prevents accidental mass updates.

Natural language: "Update customer 123's email to newemail@example.com"


DELETE — azure_sql_delete_record

{
  "table_name": "customers",
  "where": { "id": 999 }
}

Safety: WHERE clause is required — prevents accidental mass deletion.

Natural language: "Delete customer with ID 999"


SEARCH — azure_sql_search

{
  "table_name": "customers",
  "search_term": "john",
  "columns": ["name", "email"],
  "limit": 50
}

If columns is omitted, all text columns are searched automatically.

Natural language: "Search for 'john' in customers table"


CREATE TABLE — azure_sql_create_table

{
  "table_name": "employees",
  "columns": [
    { "name": "id", "type": "INT", "primary_key": true, "identity": true },
    { "name": "name", "type": "NVARCHAR(100)", "nullable": false },
    { "name": "email", "type": "NVARCHAR(255)" },
    { "name": "hire_date", "type": "DATE" },
    { "name": "salary", "type": "DECIMAL(10,2)" }
  ],
  "if_not_exists": true
}

Column properties: name, type, primary_key, identity, nullable, default.

Natural language: "Create a customers table with id, name, email, and phone columns"


DROP TABLE — azure_sql_drop_table

"old_backup_table"

Uses DROP TABLE IF EXISTS — won't error if table doesn't exist.

Natural language: "Drop the old_backup_table"


10. Chart Visualization

Tool: azure_sql_visualize_data

Generates charts via QuickChart API and returns Adaptive Cards that render directly in Copilot Studio.

Parameters

Parameter Required Default Description
query Yes SQL query to get chart data
chart_type No bar bar, pie, line, doughnut, radar, polarArea
title Yes Chart title
label_column Yes Column for labels (X-axis / slices)
value_column Yes Column for values (Y-axis / data)
width No 800 400–1200 pixels
height No 500 300–800 pixels

Chart Types

Type Best For
bar Comparing categories (sales by region)
pie Proportions (market share)
line Trends over time (monthly revenue)
doughnut Modern proportions (budget breakdown)
radar Multi-dimensional data (performance metrics)
polarArea Cyclical data (seasonal patterns)

Example: Bar Chart

{
  "query": "SELECT region, SUM(sales) as total FROM orders GROUP BY region ORDER BY total DESC",
  "chart_type": "bar",
  "title": "Sales by Region",
  "label_column": "region",
  "value_column": "total"
}

Example: Pie Chart

{
  "query": "SELECT category, COUNT(*) as count FROM products GROUP BY category",
  "chart_type": "pie",
  "title": "Products by Category",
  "label_column": "category",
  "value_column": "count"
}

Example: Line Chart (Trends)

{
  "query": "SELECT FORMAT(order_date, 'yyyy-MM') as month, SUM(total) as revenue FROM orders WHERE order_date >= DATEADD(month, -6, GETDATE()) GROUP BY FORMAT(order_date, 'yyyy-MM') ORDER BY month",
  "chart_type": "line",
  "title": "Revenue Trend (Last 6 Months)",
  "label_column": "month",
  "value_column": "revenue"
}

What Copilot Displays

Every chart returns an Adaptive Card with the chart image, plus automatic statistics: Total, Average, Highest (with label), Lowest (with label), and Data Points count.

Best Practices for Charts

  • Bar charts: 3–15 categories, sorted by value DESC
  • Pie charts: 3–8 slices, sorted by value DESC
  • Line charts: 5–50 points, sorted by date/time ASC
  • Use clear column aliases: SUM(sales) as total_sales not SUM(s)
  • Test your query with azure_sql_execute_query first, then visualize

11. Example Queries & Use Cases

Data Exploration

"Show me all tables in the database"
"What columns does the orders table have?"
"Show me 10 sample products"

Data Analysis

"How many orders were placed last month?"
"Which customer has the highest order total?"
"What's the average product price by category?"
"Show me sales trends for the last 6 months"

Data Quality

"Are there any customers with missing email addresses?"
"Find duplicate customer records"
"Show me orders with invalid status values"

Parameterized Queries (SQL injection safe)

{
  "query": "SELECT * FROM customers WHERE city = ? AND status = ?",
  "params": ["Seattle", "active"],
  "response_format": "json"
}

Aggregation

{
  "query": "SELECT category, COUNT(*) as product_count, AVG(price) as avg_price FROM products GROUP BY category ORDER BY product_count DESC"
}

Joins

{
  "query": "SELECT c.customer_name, COUNT(o.order_id) as order_count FROM customers c LEFT JOIN orders o ON c.customer_id = o.customer_id GROUP BY c.customer_name ORDER BY order_count DESC"
}

Time-Based Queries

-- Daily (last 30 days)
SELECT CAST(order_date AS DATE) as day, SUM(total) as revenue
FROM orders WHERE order_date >= DATEADD(day, -30, GETDATE())
GROUP BY CAST(order_date AS DATE) ORDER BY day

-- Monthly
SELECT FORMAT(order_date, 'yyyy-MM') as month, SUM(total) as revenue
FROM orders WHERE YEAR(order_date) = YEAR(GETDATE())
GROUP BY FORMAT(order_date, 'yyyy-MM') ORDER BY month

-- Quarterly
SELECT 'Q' + CAST(DATEPART(quarter, order_date) AS VARCHAR) as quarter, SUM(total) as revenue
FROM orders WHERE YEAR(order_date) = YEAR(GETDATE())
GROUP BY DATEPART(quarter, order_date) ORDER BY DATEPART(quarter, order_date)

Complete CRUD Workflow

  1. Create tableazure_sql_create_table
  2. Insert dataazure_sql_create_record
  3. Searchazure_sql_search
  4. Updateazure_sql_update_record
  5. Visualizeazure_sql_visualize_data
  6. Clean upazure_sql_delete_record or azure_sql_drop_table

12. Production Deployment

Azure App Service

  1. Create deployment files:

    runtime.txt:

    python-3.11
    

    Procfile:

    web: python azure_sql_mcp.py
    
  2. Deploy:

    az login
    az group create --name mcp-servers --location eastus
    az appservice plan create --name mcp-plan --resource-group mcp-servers --sku B1 --is-linux
    az webapp create --name azure-sql-mcp --resource-group mcp-servers --plan mcp-plan --runtime "PYTHON:3.11"
    
    az webapp config appsettings set --name azure-sql-mcp --resource-group mcp-servers --settings \
        AZURE_SQL_SERVER="your-server.database.windows.net" \
        AZURE_SQL_DATABASE="your-database" \
        AZURE_SQL_USERNAME="your-username" \
        AZURE_SQL_PASSWORD="your-password" \
        AZURE_SQL_DRIVER="ODBC Driver 18 for SQL Server" \
        PORT="8000"
    
    az webapp up --name azure-sql-mcp --resource-group mcp-servers
    
  3. Permanent URL: https://azure-sql-mcp.azurewebsites.net/mcp

Docker

FROM python:3.11-slim

RUN apt-get update && apt-get install -y curl apt-transport-https gnupg2 \
    && curl https://packages.microsoft.com/keys/microsoft.asc | apt-key add - \
    && curl https://packages.microsoft.com/config/debian/11/prod.list > /etc/apt/sources.list.d/mssql-release.list \
    && apt-get update \
    && ACCEPT_EULA=Y apt-get install -y msodbcsql18 \
    && apt-get clean && rm -rf /var/lib/apt/lists/*

WORKDIR /app
COPY requirements.txt .
RUN pip install --no-cache-dir -r requirements.txt
COPY azure_sql_mcp.py .

EXPOSE 8000
CMD ["python", "azure_sql_mcp.py"]
docker build -t azure-sql-mcp .
docker run -p 8000:8000 --env-file .env azure-sql-mcp

13. API Key Authentication

For production, add API key middleware to protect your server.

Step 1: Add middleware to azure_sql_mcp.py

Add this above the Pydantic Models section:

from starlette.middleware.base import BaseHTTPMiddleware
from starlette.requests import Request
from starlette.responses import JSONResponse

MCP_API_KEY = os.getenv("MCP_API_KEY", "")

class APIKeyMiddleware(BaseHTTPMiddleware):
    async def dispatch(self, request: Request, call_next):
        if not MCP_API_KEY:
            return await call_next(request)
        api_key = request.headers.get("X-API-Key", "")
        if api_key != MCP_API_KEY:
            return JSONResponse(status_code=401, content={"error": "Invalid API key"})
        return await call_next(request)

Step 2: Update the entry point

if __name__ == "__main__":
    app = mcp.streamable_http_app()
    app.add_middleware(APIKeyMiddleware)

    import uvicorn
    port = int(os.getenv("PORT", 8000))
    uvicorn.run(app, host="0.0.0.0", port=port)

Step 3: Add to .env

MCP_API_KEY=your-secret-api-key-here

Generate a strong key: python -c "import secrets; print(secrets.token_urlsafe(32))"

Step 4: Configure in Copilot Studio

Field Value
Authentication type API key
Type Header
Header name X-API-Key

Enter the same key value when creating the connection.


14. Troubleshooting

Problem Fix
app_lifespan() takes 0 positional arguments Add server: FastMCP parameter to app_lifespan()
FastMCP.run() got unexpected keyword argument 'port' Set host/port on FastMCP() constructor, not run()
Server starts but no HTTP output Set transport to streamable-http in run()
ngrok warning page blocks Copilot Studio Use Cloudflare Tunnel instead
cloudflared not recognized after install Close and reopen your terminal
Copilot says "Server URL is not valid" URL must be HTTPS and end with /mcp
Copilot SystemError Check both terminals running (server + tunnel), URL ends with /mcp
"This feature isn't available until your agent has finished setting up" Fill in agent Description and Instructions on Overview tab, then Publish
Copilot "Connector request failed: Not Found" URL needs /mcp at the end
Copilot says "Authentication failed" Verify API key matches between Copilot Studio and MCP_API_KEY
Tools not appearing in Copilot Studio Check server logs for errors, verify server is running
Connection to Azure SQL fails Check .env credentials and Azure SQL firewall rules
ODBC driver not found Install ODBC Driver 18
Query timeout Optimize query, add indexes, use TOP to limit rows
Permission denied Grant necessary permissions to database user
Chart shows "Column Not Found" Match label_column/value_column exactly to query output columns
Chart shows "No Data Found" Check your WHERE clause and date ranges

Check installed ODBC drivers

# Windows (PowerShell)
Get-OdbcDriver

# macOS/Linux
odbcinst -q -d

15. Security Checklist

  • [ ] .env file is in .gitignore (never commit credentials)
  • [ ] Server URL uses HTTPS
  • [ ] API key authentication enabled for production
  • [ ] Parameterized queries used for user input
  • [ ] Azure SQL firewall restricts access to known IPs
  • [ ] Database user has least-privilege permissions
  • [ ] Azure SQL auditing enabled
  • [ ] API key and passwords rotated regularly
  • [ ] No multiple SQL statements allowed (built-in)
  • [ ] WHERE clause required for UPDATE/DELETE (built-in)

Project Structure

azure-sql-mcp-server/
├── azure_sql_mcp.py           # Main MCP server (all 12 tools)
├── requirements.txt           # Python dependencies
├── .env.example               # Environment variables template
├── .env                       # Your config (not in git)
├── AZURE_SQL_MCP_GUIDE.md     # This file
└── .gitignore

Adding Custom Tools

class CustomInput(BaseModel):
    param1: str = Field(..., description="Parameter description")
    response_format: ResponseFormat = Field(default=ResponseFormat.MARKDOWN)

@mcp.tool(
    name="azure_sql_custom_tool",
    annotations={
        "title": "Custom Tool",
        "readOnlyHint": True,
        "destructiveHint": False,
        "idempotentHint": True,
        "openWorldHint": False
    }
)
async def custom_tool(params: CustomInput) -> str:
    """Tool description."""
    try:
        results = execute_query("SELECT ...")
        if params.response_format == ResponseFormat.JSON:
            return json.dumps(results, indent=2, default=str)
        return "**Results**\n..."
    except Exception as e:
        return _handle_db_error(e)

Changelog

v2.0.0 — Chart Visualization

  • Added azure_sql_visualize_data tool (6 chart types)
  • Adaptive Card output for Copilot Studio
  • Auto-statistics (total, average, min, max)
  • QuickChart API integration (no API key required)

v1.0.0 — Initial Release

  • 5 core tools: execute_query, list_tables, get_table_schema, get_table_data, get_database_info
  • Pydantic validation, parameterized queries, dual output formats

v2.1.0 — Full CRUD + Deployment

  • Added 7 new tools: create_record, update_record, delete_record, search, create_table, drop_table, visualize_data
  • Cloudflare Tunnel support (replaces ngrok)
  • API key authentication middleware
  • Copilot Studio agent configuration (description + instructions)

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