How to integrate BigQuery with Apache Airflow



Access and process BigQuery data in Apache Airflow using the CData JDBC Driver.

Apache Airflow supports the creation, scheduling, and monitoring of data engineering workflows. When paired with the CData JDBC Driver for Google BigQuery, Airflow can work with live BigQuery data. This article describes how to connect to and query BigQuery 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 BigQuery data. When you issue complex SQL queries to BigQuery, the driver pushes supported SQL operations, like filters and aggregations, directly to BigQuery 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 BigQuery data using native data types.

About BigQuery Data Integration

CData simplifies access and integration of live Google BigQuery data. Our customers leverage CData connectivity to:

  • Simplify access to BigQuery with broad out-of-the-box support for authentication schemes, including OAuth, OAuth JWT, and GCP Instance.
  • Enhance data workflows with Bi-directional data access between BigQuery and other applications.
  • Perform key BigQuery actions like starting, retrieving, and canceling jobs; deleting tables; or insert job loads through SQL stored procedures.

Most CData customers are using Google BigQuery as their data warehouse and so use CData solutions to migrate business data from separate sources into BigQuery for comprehensive analytics. Other customers use our connectivity to analyze and report on their Google BigQuery data, with many customers using both solutions.

For more details on how CData enhances your Google BigQuery experience, check out our blog post: https://www.cdata.com/blog/what-is-bigquery


Getting Started


Configuring the Connection to BigQuery

Built-in Connection String Designer

For assistance in constructing the JDBC URL, use the connection string designer built into the BigQuery JDBC Driver. Either double-click the JAR file or execute the jar file from the command-line.

java -jar cdata.jdbc.googlebigquery.jar

Fill in the connection properties and copy the connection string to the clipboard.

Google uses the OAuth authentication standard. To access Google APIs on behalf of individual users, you can use the embedded credentials or you can register your own OAuth app.

OAuth also enables you to use a service account to connect on behalf of users in a Google Apps domain. To authenticate with a service account, you will need to register an application to obtain the OAuth JWT values.

In addition to the OAuth values, you will need to specify the DatasetId and ProjectId. See the "Getting Started" chapter of the help documentation for a guide to using OAuth.

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.

PropertyValue
Database Connection URLjdbc:googlebigquery:RTK=5246...;DataSetId=MyDataSetId;ProjectId=MyProjectId;InitiateOAuth=GETANDREFRESH
Database Driver Class Namecdata.jdbc.googlebigquery.GoogleBigQueryDriver

Establishing a JDBC Connection within Airflow

  1. Log into your Apache Airflow instance.
  2. On the navbar of your Airflow instance, hover over Admin and then click Connections.
  3. Next, click the + sign on the following screen to create a new connection.
  4. In the Add Connection form, fill out the required connection properties:
    • Connection Id: Name the connection, i.e.: googlebigquery_jdbc
    • Connection Type: JDBC Connection
    • Connection URL: The JDBC connection URL from above, i.e.: jdbc:googlebigquery:RTK=5246...;DataSetId=MyDataSetId;ProjectId=MyProjectId;InitiateOAuth=GETANDREFRESH)
    • Driver Class: cdata.jdbc.googlebigquery.GoogleBigQueryDriver
    • Driver Path: PATH/TO/cdata.jdbc.googlebigquery.jar
  5. Test your new connection by clicking the Test button at the bottom of the form.
  6. 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:

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 BigQuery data and store the results in a CSV file.

  1. 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.
  2. Next, create a new Python file and title it bigquery_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="bigquery_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()
    
  3. Save this file and refresh your Airflow instance. Within the list of DAGs, you should see a new DAG titled "bigquery_hook".
  4. 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 bigquery_hook.py file and export the results as a CSV to whichever file path we designated in our code.
  5. 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.
  6. Open the CSV file to see that your BigQuery data is now available for use in CSV format thanks to Apache Airflow.

More Information & Free Trial

Download a free, 30-day trial of the CData JDBC Driver for Google BigQuery and start working with your live BigQuery data in Apache Airflow. Reach out to our Support Team if you have any questions.

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