Apache Airflow supports the creation, scheduling, and monitoring of data engineering workflows. When paired with the
CData JDBC Driver for SQL Server, Airflow can work with live SQL Server data. This article describes how to connect
to and query SQL Server data from an Apache Airflow instance and store the results in a CSV file.
With built-in optimized data processing, the CData JDBC driver offers unmatched performance for
interacting with live SQL Server data. When you issue complex SQL queries to SQL Server, the driver pushes supported
SQL operations, like filters and aggregations, directly to SQL Server and utilizes the embedded SQL engine to
process unsupported operations client-side (often SQL functions and JOIN operations). Its built-in dynamic
metadata querying allows you to work with and analyze SQL Server data using native data types.
Configuring the Connection to SQL Server
Built-in Connection String Designer
For assistance in constructing the JDBC URL, use the connection string designer built into the SQL Server JDBC Driver. Either double-click the JAR file or execute the jar file from the command-line.
java -jar cdata.jdbc.sql.jar
Fill in the connection properties and copy the connection string to the clipboard.
Connecting to Microsoft SQL Server
Connect to Microsoft SQL Server using the following properties:
- Server: The name of the server running SQL Server.
- User: The username provided for authentication with SQL Server.
- Password: The password associated with the authenticating user.
- Database: The name of the SQL Server database.
Connecting to Azure SQL Server and Azure Data Warehouse
You can authenticate to Azure SQL Server or Azure Data Warehouse by setting the following connection properties:
- Server: The server running Azure. You can find this by logging into the Azure portal and navigating to "SQL databases" (or "SQL data warehouses") -> "Select your database" -> "Overview" -> "Server name."
- User: The name of the user authenticating to Azure.
- Password: The password associated with the authenticating user.
- Database: The name of the database, as seen in the Azure portal on the SQL databases (or SQL warehouses) page.
SSH Connectivity for SQL Server
You can use SSH (Secure Shell) to authenticate with SQL Server, whether the instance is hosted on-premises or in supported cloud environments. SSH authentication ensures that access is encrypted (as compared to direct network connections).
SSH Connections to SQL Server in Password Auth Mode
To connect to SQL Server via SSH in Password Auth mode, set the following connection properties:
- User: SQL Server User name
- Password: SQL Server Password
- Database: SQL Server database name
- Server: SQL Server Server name
- Port: SQL Server port number like 3306
- UserSSH: "true"
- SSHAuthMode: "Password"
- SSHPort: SSH Port number
- SSHServer: SSH Server name
- SSHUser: SSH User name
- SSHPassword: SSH Password
SSH Connections to SQL Server in Public Key Auth Mode
To connect to SQL Server via SSH in Password Auth mode, set the following connection properties:
- User: SQL Server User name
- Password: SQL Server Password
- Database: SQL Server database name
- Server: SQL Server Server name
- Port: SQL Server port number like 3306
- UserSSH: "true"
- SSHAuthMode: "Public_Key"
- SSHPort: SSH Port number
- SSHServer: SSH Server name
- SSHUser: SSH User name
- SSHClientCret: the path for the public key certificate file
π Using the built-in connection string designer to generate a JDBC URL (sql server is shown.)
To host the JDBC driver in clustered environments or in the cloud, you will need a license (full or trial) and a Runtime Key (RTK). For more information on obtaining this license (or a trial), contact our sales team.
The following are essential properties needed for our JDBC connection.
| Property | Value |
| Database Connection URL | jdbc:sql:RTK=5246...;User=myUser;Password=myPassword;Database=NorthWind;Server=myServer;Port=1433; |
| Database Driver Class Name | cdata.jdbc.sql.SQLDriver |
Establishing a JDBC Connection within Airflow
- Log into your Apache Airflow instance.
- On the navbar of your Airflow instance, hover over Admin and then click Connections.
π Clicking connections
- Next, click the + sign on the following screen to create a new connection.
- In the Add Connection form, fill out the required connection properties:
- Connection Id: Name the connection, i.e.: sql_jdbc
- Connection Type: JDBC Connection
- Connection URL: The JDBC connection URL from above, i.e.: jdbc:sql:RTK=5246...;User=myUser;Password=myPassword;Database=NorthWind;Server=myServer;Port=1433;)
- Driver Class: cdata.jdbc.sql.SQLDriver
- Driver Path: PATH/TO/cdata.jdbc.sql.jar
π Add JDBC connection form
- Test your new connection by clicking the Test button at the bottom of the form.
- After saving the new connection, on a new screen, you should see a green banner saying that a new row was added to the list of connections:
π New connection added
Creating a DAG
A DAG in Airflow is an entity that stores the processes for a workflow and can be triggered to run this workflow.
Our workflow is to simply run a SQL query against SQL Server data and store the results in a CSV file.
- To get started, in the Home directory, there should be an "airflow" folder. Within there, we can create a new directory and title it "dags".
In here, we store Python files that convert into Airflow DAGs shown on the UI.
- Next, create a new Python file and title it sql server_hook.py. Insert the following code inside of this new file:
import time
from datetime import datetime
from airflow.decorators import dag, task
from airflow.providers.jdbc.hooks.jdbc import JdbcHook
import pandas as pd
# Declare Dag
@dag(dag_id="sql server_hook", schedule_interval="0 10 * * *", start_date=datetime(2022,2,15), catchup=False, tags=['load_csv'])
# Define Dag Function
def extract_and_load():
# Define tasks
@task()
def jdbc_extract():
try:
hook = JdbcHook(jdbc_conn_id="jdbc")
sql = """ select * from Account """
df = hook.get_pandas_df(sql)
df.to_csv("/{some_file_path}/{name_of_csv}.csv",header=False, index=False, quoting=1)
# print(df.head())
print(df)
tbl_dict = df.to_dict('dict')
return tbl_dict
except Exception as e:
print("Data extract error: " + str(e))
jdbc_extract()
sf_extract_and_load = extract_and_load()
- Save this file and refresh your Airflow instance. Within the list of DAGs, you should see a new DAG titled "sql server_hook".
π New DAG added
- Click on this DAG and, on the new screen, click on the unpause switch to make it turn blue, and then click the trigger (i.e. play) button to run the DAG. This executes the SQL query in our sql server_hook.py file and export the results as a CSV to whichever file path we designated in our code.
π Run the DAG
- After triggering our new DAG, we check the Downloads folder (or wherever you chose within your Python script), and see that the CSV file has been created - in this case, account.csv.
π CSV created
- Open the CSV file to see that your SQL Server data is now available for use in CSV format thanks to Apache Airflow.
π CSV file with SQL Server data.
More Information & Free Trial
Download a
free, 30-day trial of the CData JDBC Driver for SQL Server and start working with your live SQL Server data in Apache Airflow. Reach out to our
Support Team if you have any questions.