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Step 3: Proof of concept connecting to SQL using pyodbc

This sample proof of concept uses pyodbc to connect to a SQL database. This sample assumes that you're using the AdventureWorksLT sample database.

Note

This example should be considered a proof of concept only. The sample code is simplified for clarity, and does not necessarily represent best practices recommended by Microsoft.

Prerequisites

Connect and query data

Connect to a database using your credentials.

  1. Create a new file named app.py.

  2. Add a module docstring.

    """
    Connects to a SQL database using pyodbc
    """
    
  3. Import the pyodbc package.

    import pyodbc
    
  4. Create variables for your connection credentials.

    SERVER = '<server-address>'
    DATABASE = '<database-name>'
    USERNAME = '<username>'
    PASSWORD = '<password>'
    
  5. Create a connection string variable using string interpolation.

    connectionString = f'DRIVER={{ODBC Driver 18 for SQL Server}};SERVER={SERVER};DATABASE={DATABASE};UID={USERNAME};PWD={PASSWORD}'
    
  6. Use the pyodbc.connect function to connect to a SQL database.

    conn = pyodbc.connect(connectionString) 
    

Execute a query

Use a SQL query string to execute a query and parse the results.

  1. Create a variable for the SQL query string.

    SQL_QUERY = """
    SELECT 
    TOP 5 c.CustomerID, 
    c.CompanyName, 
    COUNT(soh.SalesOrderID) AS OrderCount 
    FROM 
    SalesLT.Customer AS c 
    LEFT OUTER JOIN SalesLT.SalesOrderHeader AS soh ON c.CustomerID = soh.CustomerID 
    GROUP BY 
    c.CustomerID, 
    c.CompanyName 
    ORDER BY 
    OrderCount DESC;
    """
    
  2. Use cursor.execute to retrieve a result set from a query against the database.

    cursor = conn.cursor()
    cursor.execute(SQL_QUERY)
    

    Note

    This function essentially accepts any query and returns a result set, which can be iterated over with the use of cursor.fetchone().

  3. Use cursor.fetchall with a foreach loop to get all the records from the database. Then print the records.

    records = cursor.fetchall()
    for r in records:
        print(f"{r.CustomerID}\t{r.OrderCount}\t{r.CompanyName}")
    
  4. Save the app.py file.

  5. Open a terminal and test the application.

    python app.py
    
    29485   1       Professional Sales and Service
    29531   1       Remarkable Bike Store
    29546   1       Bulk Discount Store
    29568   1       Coalition Bike Company
    29584   1       Futuristic Bikes
    

Insert a row as a transaction

In this example, you execute an INSERT statement safely and pass parameters. Passing parameters as values protects your application from SQL injection attacks.

  1. Import randrange from the random library.

    from random import randrange
    
  2. Generate a random product number.

    productNumber = randrange(1000)
    

    Tip

    Generating a random product number here ensures that you can run this sample multiple times.

  3. Create a SQL statement string.

    SQL_STATEMENT = """
    INSERT SalesLT.Product (
    Name, 
    ProductNumber, 
    StandardCost, 
    ListPrice, 
    SellStartDate
    ) OUTPUT INSERTED.ProductID 
    VALUES (?, ?, ?, ?, CURRENT_TIMESTAMP)
    """
    
  4. Execute the statement using cursor.execute.

    cursor.execute(
        SQL_STATEMENT,
        f'Example Product {productNumber}', 
        f'EXAMPLE-{productNumber}', 
        100,
        200
    )
    
  5. Fetch the first column of the single result using cursor.fetchval, print the result's unique identifier, and then commit the operation as a transaction using connection.commit.

    resultId = cursor.fetchval()
    print(f"Inserted Product ID : {resultId}")
    conn.commit()
    

    Tip

    Optionally, you can use connection.rollback to rollback the transaction.

  6. Close the cursor and connection using cursor.close and connection.close.

    cursor.close()
    conn.close()
    
  7. Save the app.py file and test the application again

    python app.py
    
    Inserted Product ID : 1001
    

Next steps