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Try them now for free →How to connect and process Calendly data from Azure Databricks
Use CData, Azure, and Databricks to perform data engineering and data science on live Calendly data.
Databricks is a cloud-based service that provides data processing capabilities through Apache Spark. When paired with the CData JDBC Driver, customers can use Databricks to perform data engineering and data science on live Calendly data. This article walks through hosting the CData JDBC Driver in Azure, as well as connecting to and processing live Calendly data in Databricks.
With built-in optimized data processing, the CData JDBC driver offers unmatched performance for interacting with live Calendly data. When you issue complex SQL queries to Calendly, the driver pushes supported SQL operations, like filters and aggregations, directly to Calendly 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 Calendly data using native data types.
Install the CData JDBC Driver in Azure
To work with live Calendly data in Databricks, install the driver through Azure Data Lake Storage (ADLS). (Please note that the method of connecting through DBFS, which previous versions of this article described, has been deprecated, but has not published an end-of-life.)
- Upload the JDBC JAR file to a blob container of your choice (i.e. "jdbcjars" container of the "databrickslibraries" storage account).
- Fetch the Account Key from the storage account by expanding "Security + networking" and clicking on "Access Keys". Show and copy whichever of the two keys you wish to use.
- Get the JDBC JAR file's URL by navigating to Containers, opening the specific container storing the JAR, and selecting the entry for the JDBC JAR file. This should open the file's details, where there should be a convenient button to copy the URL button to clipboard. This value will look similar to the below, though the "blob" component may vary depending on storage account type:
https://databrickslibraries.blob.core.windows.net/jdbcjars/cdata.jdbc.salesforce.jar
- In the Configuration tab of your Databricks cluster, click on the Edit button and expand "Advanced options". From there, add the following Spark option (derived from the JAR URL's domain name) with your copied Account key as its value and click Confirm:
spark.hadoop.fs.azure.account.key.databrickslibraries.blob.core.windows.net
- In the Libraries tab of your Databricks cluster, click on "Install new", and select the ADLS option. Specify the ABFSS URL for the driver JAR (also derived from the JAR URL's domain name), and click Install. The ABFSS URL should resemble the below:
abfss://[email protected]/cdata.jdbc.salesforce.jar
Connect to Calendly from Databricks
With the JAR file installed, we are ready to work with live Calendly data in Databricks. Start by creating a new notebook in your workspace. Name the workbook, make sure Python is selected as the language (which should be by default), click on Connect and under General Compute select the cluster where you installed the JDBC driver (should be selected by default).
Configure the Connection to Calendly
Connect to Calendly by referencing the class for the JDBC Driver and constructing a connection string to use in the JDBC URL. Additionally, you will need to set the RTK property in the JDBC URL (unless you are using a Beta driver). You can view the licensing file included in the installation for information on how to set this property.
driver = "cdata.jdbc.api.APIDriver" url = "jdbc:api:RTK=5246...;Profile=C:\profiles\Calendly.apip;ProfileSettings='APIKey=your_api_token';"
Built-in Connection String Designer
For assistance in constructing the JDBC URL, use the connection string designer built into the Calendly JDBC Driver. Either double-click the JAR file or execute the JAR file from the command-line.
java -jar cdata.jdbc.api.jar
Fill in the connection properties and copy the connection string to the clipboard.
Start by setting the Profile connection property to the location of the Calendly Profile on disk (e.g. C:\profiles\CalendlyProfile.apip). Next, set the ProfileSettings connection property to the connection string for Calendly (see below).
Calendly API Profile Settings
To authenticate to Calendly, provide an API Key. The Calendly API Key, can be found in your Calendly account, under 'Integrations' > 'API & Webhooks' > 'Generate New Token'. Set the APIKey in the ProfileSettings connection property.
Load Calendly Data
Once the connection is configured, you can load Calendly data as a dataframe using the CData JDBC Driver and the connection information.
remote_table = spark.read.format ( "jdbc" ) \ .option ( "driver" , driver) \ .option ( "url" , url) \ .option ( "dbtable" , "OrganizationScheduledEvents") \ .load ()
Display Calendly Data
Check the loaded Calendly data by calling the display function.
display (remote_table.select ("Uri"))
Analyze Calendly Data in Azure Databricks
If you want to process data with Databricks SparkSQL, register the loaded data as a Temp View.
remote_table.createOrReplaceTempView ( "SAMPLE_VIEW" )
The SparkSQL below retrieves the Calendly data for analysis.
result = spark.sql("SELECT Uri, Name FROM SAMPLE_VIEW WHERE EventType = 'Meeting'")
The data from Calendly is only available in the target notebook. If you want to use it with other users, save it as a table.
remote_table.write.format ( "parquet" ) .saveAsTable ( "SAMPLE_TABLE" )
Download a free, 30-day trial of the CData API Driver for JDBC and start working with your live Calendly data in Azure Databricks. Reach out to our Support Team if you have any questions.