Connect and Visualize Live SAS Data Sets Data in Databricks Lakehouse Federation with CData Connect AI
Databricks Lakehouse Federation enables organizations to query and integrate data from multiple sources without requiring data movement. It allows federated queries across databases, data warehouses, and lakehouses, providing a unified interface for data analysis and management within Databricks. When combined with CData Connect AI, it enables seamless access to SAS Data Sets data for data virtualization, while also supporting data lineage and fine-grained access control.
This article explains how to use CData Connect AI to establish a live connection to SAS Data Sets and how to access live SAS Data Sets data from the Databricks platform.
CData Connect AI offers a seamless SQL Server, cloud-to-cloud interface for SAS Data Sets, enabling you to effortlessly create dashboards and visualizations using live SAS Data Sets data in Databricks. While building visualizations, Databricks requires SQL queries to retrieve the necessary data. With built-in optimized data processing, CData Connect AI pushes all supported SQL operations (such as filters and JOINs) directly to SAS Data Sets, utilizing server-side processing for fast and efficient data retrieval of SAS Data Sets data.
Configure SAS Data Sets connectivity for Databricks in CData Connect AI
To work with SAS Data Sets data in Databricks - Lakehouse Federation, you need to connect to SAS Data Sets from Connect AI and provide user access to the connection.
- Log into Connect AI, click Sources, and then click Add Connection
- Select "SAS Data Sets" from the Add Connection panel
-
Enter the necessary authentication properties to connect to SAS Data Sets.
Set the following connection properties to connect to your SAS DataSet files:
Connecting to Local Files
- Set the Connection Type to "Local." Local files support SELECT, INSERT, and DELETE commands.
- Set the URI to a folder containing SAS files, e.g. C:\PATH\TO\FOLDER\.
Connecting to Cloud-Hosted SAS DataSet Files
While the driver is capable of pulling data from SAS DataSet files hosted on a variety of cloud data stores, INSERT, UPDATE, and DELETE are not supported outside of local files in this driver.
Set the Connection Type to the service hosting your SAS DataSet files. A unique prefix at the beginning of the URI connection property is used to identify the cloud data store and the remainder of the path is a relative path to the desired folder (one table per file) or single file (a single table). For more information, refer to the Getting Started section of the Help documentation.
- Click Save & Test
-
Navigate to the Permissions tab in the Add SAS Data Sets Connection page and update the User-based permissions.
Add a Personal Access Token
When connecting to Connect AI through the REST API, the OData API, or the Virtual SQL Server, a Personal Access Token (PAT) is used to authenticate the connection to Connect AI. It is best practice to create a separate PAT for each service to maintain granularity of access.
- Click on the Gear icon () at the top right of the Connect AI app to open the settings page.
- On the Settings page, go to the Access Tokens section and click Create PAT.
-
Give the PAT a name and click Create.
- The personal access token is only visible at creation, so be sure to copy it and store it securely for future use.
With the connection configured and a PAT generated, you are ready to connect to SAS Data Sets data from Databricks.
Connecting live SAS Data Sets data in Databricks
Follow these steps to establish a connection from Databricks to the CData Connect AI Virtual SQL Server API.
- Log into Databricks.
- Navigate to SQL Warehouses and start any warehouse of your choice.
- In the navigation pane, select Catalog. Click and select Create a connection.
- In the Connection basics section (or Step 1 of Set up connection page), enter the following connection details and click Next:
- Connection name: a user-defined connection name.
- Connection type: select SQL Server from the drop-down list.
- Auth type: select Username and password.

- In the Authentication section (or Step 2), enter the required authentication details, and click Next:
- Host: tds.cdata.com
- Port: 14333
- User: enter your CData Connect AI username, displayed in the top-right corner of the CData Connect AI interface. For example, [email protected]
- Password: enter the PAT generated and copied in the previous section.

- In the Connection details section (or Step 3), enable the Trust server certificate checkbox and select the appropriate Application intent. Click Create Connection.
- In the Catalog basics section (or Step 4), enter the required details and click Create catalog:
- Catalog name: enter a name of your choice
- Connection: this will be the Databricks connection you defined earlier
- Database: enter your SAS Data Sets connection name (for example, SAS Data Sets1)

- In the Access section (or Step 5), assign the Workspace, User access rights, and Grant read or edit privileges to the catalog.
- Click Next > Save to save all the details for the catalog.
Access the catalog and visualize live SAS Data Sets data in Databricks
To access the newly created catalog and create a dashboard to visualize live SAS Data Sets data in Databricks, follow these steps:
- Select the catalog and expand it. A list of tables from SAS Data Sets will appear on the screen.
- Choose the desired table and click the Overview tab to view the table metadata.
- Click the Sample Data tab to view real-time data in the table.
- Now, click Create at the top right corner and select Dashboard.
- Manually create a visualization by selecting at least one field in the visualization editor from the widget, or choose one of the visualization options suggested by Databricks AI.
- Once the visualization is created, edit the details in the widget settings of the dashboard.
- Click Publish to publish the dashboard report.
Live access to SAS Data Sets data from cloud applications
At this stage, you have established a direct, cloud-to-cloud connection to live SAS Data Sets data in Databricks. This enables you to create dashboards to monitor and visualize your data seamlessly.
For more details on accessing live data from over 100 SaaS, Big Data, and NoSQL sources through cloud applications like Databricks, visit our Connect AI page. As always, let us know if you have any questions during your evaluation. Our world-class CData Support Team is always available to help!