Integrate Live SQL Analysis Services Data into Amazon SageMaker Canvas with RDS
Amazon SageMaker Canvas is a no-code machine learning platform that lets you generate predictions, prepare data, and build models without writing code. When paired with CData Connect AI, you get instant, cloud-to-cloud access to SQL Analysis Services data for building custom machine-learning models, predicting customer churn, generating texts, building chatbots, and more. This article shows how to connect to Connect AI from Amazon SageMaker Canvas using the RDS connector and integrate live SQL Analysis Services data into your ML model deployments.
CData Connect AI provides a pure SQL, cloud-to-cloud interface for SQL Analysis Services, allowing you to easily integrate with live SQL Analysis Services data in Amazon SageMaker Canvas — without replicating the data. CData Connect AI looks exactly like a SQL Server database to Amazon SageMaker Canvas and uses optimized data processing out of the box to push all supported SQL operations (filters, JOINs, etc) directly to SQL Analysis Services, leveraging server-side processing to quickly return SQL Analysis Services data.
Configure SQL Analysis Services Connectivity for Amazon SageMaker Canvas
Connectivity to SQL Analysis Services from Amazon SageMaker Canvas is made possible through CData Connect AI. To work with SQL Analysis Services data from Amazon SageMaker Canvas, we start by creating and configuring a SQL Analysis Services connection.
- Log into Connect AI, click Sources, and then click Add Connection
- Select "SQL Analysis Services" from the Add Connection panel
-
Enter the necessary authentication properties to connect to SQL Analysis Services.
To connect, provide authentication and set the Url property to a valid SQL Server Analysis Services endpoint. You can connect to SQL Server Analysis Services instances hosted over HTTP with XMLA access. See the Microsoft documentation to configure HTTP access to SQL Server Analysis Services.
To secure connections and authenticate, set the corresponding connection properties, below. The data provider supports the major authentication schemes, including HTTP and Windows, as well as SSL/TLS.
-
HTTP Authentication
Set AuthScheme to "Basic" or "Digest" and set User and Password. Specify other authentication values in CustomHeaders.
-
Windows (NTLM)
Set the Windows User and Password and set AuthScheme to "NTLM".
-
Kerberos and Kerberos Delegation
To authenticate with Kerberos, set AuthScheme to NEGOTIATE. To use Kerberos delegation, set AuthScheme to KERBEROSDELEGATION. If needed, provide the User, Password, and KerberosSPN. By default, the data provider attempts to communicate with the SPN at the specified Url.
-
SSL/TLS:
By default, the data provider attempts to negotiate SSL/TLS by checking the server's certificate against the system's trusted certificate store. To specify another certificate, see the SSLServerCert property for the available formats.
You can then access any cube as a relational table: When you connect the data provider retrieves SSAS metadata and dynamically updates the table schemas. Instead of retrieving metadata every connection, you can set the CacheLocation property to automatically cache to a simple file-based store.
See the Getting Started section of the CData documentation, under Retrieving Analysis Services Data, to execute SQL-92 queries to the cubes.
-
HTTP Authentication
- Click Save & Test
-
Navigate to the Permissions tab in the Add SQL Analysis Services 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 SQL Analysis Services data from Amazon SageMaker Canvas.
Connecting to CData Connect AI from Amazon SageMaker Canvas
With the connection in CData Connect AI configured, you are ready to integrate live SQL Analysis Services data into Amazon SageMaker Canvas using its RDS connector.
- Select a domain and user profile in Amazon SageMaker Canvas and click on "Open Canvas".
- Once the Canvas application opens, navigate to the left panel, and select "My models".
- Click on "Create new model" in the My models screen.
- Specify a Model name in Create new model window and select a Problem type. Click on "Create".
- Once the model version gets created, click on "Create dataset" in the Select dataset tab.
- In the Create a tabular dataset window, add a "Dataset name" and click on "Create".
- Click on the "Data Source" drop-down and search for or navigate to the RDS connector and click on " Add Connection".
- In the Add a new RDS connection window, set the following properties:
- Connection Name: a relevant connection name
- Set Engine type to sqlserver-web
- Set Port to 14333
- Set Address as tds.cdata.com
- Set Username to a Connect AI user (e.g. [email protected])
- Set Password to the PAT for the above user
- Set Database name the SQL Analysis Services connection (e.g., SSAS1)
- Click on "Create connection".
Integrating SQL Analysis Services Data into Amazon SageMaker Canvas
With the connection to Connect AI configured in the RDS, you are ready to integrate live SQL Analysis Services data into your Amazon SageMaker Canvas dataset.
- In the tabular dataset created in RDS with SQL Analysis Services data, search for the SQL Analysis Services connection configured on Connect AI in the search bar or from the list of connections.
- Select the table of your choice from SQL Analysis Services, drag and drop it into the canvas on the right.
- You can create workflows by joining any number of tables from the SQL Analysis Services connection (as shown below). Click on "Create dataset".
- Once the dataset is created, click on "Select dataset" to build your model.
- Perform analysis, generate prediction, and deploy the model.
At this point, you have access to live SQL Analysis Services data in Amazon SageMaker that you can utilize to build custom ML models to generate predictive business insights and grow your organization.
SQL Access to SQL Analysis Services Data from Cloud Applications
Now you have a direct connection to live SQL Analysis Services data from Amazon SageMaker Canvas. You can create more connections, datasets, and predictive models to drive business — all without replicating SQL Analysis Services data.
To get real-time data access to hundreds of SaaS, Big Data, and NoSQL sources directly from your cloud applications, see the CData Connect AI.