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URL: https://www.cdata.com/kb/tech/sasxpt-jdbc-aws-lambda-intellij.rst

โ‡ฑ Access Live SAS xpt Data in AWS Lambda (with IntelliJ IDEA)


Access Live SAS xpt Data in AWS Lambda (with IntelliJ IDEA)

๐Ÿ‘ Dibyendu Datta
Dibyendu Datta
Lead Technology Evangelist
Connect to live SAS xpt data in AWS Lambda using IntelliJ IDEA and the CData JDBC Driver to build the function.

AWS Lambda is a compute service that lets you build applications that respond quickly to new information and events. AWS Lambda functions can work with live SAS xpt data when paired with the CData JDBC Driver for SASxpt. This article describes how to connect to and query SAS xpt data from an AWS Lambda function built with Maven in IntelliJ.

With built-in optimized data processing, the CData JDBC Driver offers unmatched performance for interacting with live SAS xpt data. When you issue complex SQL queries to SAS xpt, the driver pushes supported SQL operations, like filters and aggregations, directly to SAS xpt and utilizes the embedded SQL engine to process unsupported operations client-side (often SQL functions and JOIN operations). In addition, its built-in dynamic metadata querying allows you to work with and analyze SAS xpt data using native data types.

Step 1: Gather connection properties and build a connection string

Download the CData JDBC Driver for SASxpt installer, unzip the package, and run the JAR file to install the driver. Then gather the required connection properties.

Connecting to Local SASXpt Files

You can connect to local SASXpt file by setting the URI to a folder containing SASXpt files.

Connecting to S3 data source

You can connect to Amazon S3 source to read SASXpt files. Set the following properties to connect:

  • URI: Set this to the folder within your bucket that you would like to connect to.
  • AWSAccessKey: Set this to your AWS account access key.
  • AWSSecretKey: Set this to your AWS account secret key.
  • TemporaryLocalFolder: Set this to the path, or URI, to the folder that is used to temporarily download SASXpt file(s).

Connecting to Azure Data Lake Storage Gen2

You can connect to ADLS Gen2 to read SASXpt files. Set the following properties to connect:

  • URI: Set this to the name of the file system and the name of the folder which contacts your SASXpt files.
  • AzureAccount: Set this to the name of the Azure Data Lake storage account.
  • AzureAccessKey: Set this to our Azure DataLakeStore Gen 2 storage account access key.
  • TemporaryLocalFolder: Set this to the path, or URI, to the folder that is used to temporarily download SASXpt file(s).

NOTE: To use the JDBC driver in an AWS Lambda function, 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.

Built-in Connection String Designer

For assistance constructing the JDBC URL, use the connection string designer built into the SAS xpt JDBC Driver. Double-click the JAR file or execute the jar file from the command line.

java -jar cdata.jdbc.sasxpt.jar
๐Ÿ‘ Using the built-in connection string designer to generate a JDBC URL (Salesforce is shown.)

Fill in the connection properties (including the RTK) and copy the connection string to the clipboard.

Step 2: Create a project in IntelliJ

  1. In IntelliJ IDEA, click New Project.
  2. Select "Maven Archetype" from the Generators
  3. Name the project and select "maven.archetypes:maven-archetype-quickstart" Archetype.
  4. Click "Create" ๐Ÿ‘ Image

Install the CData JDBC Driver for SASxpt JAR File

Use the following Maven command from the project's root folder to install JAR file in the project.

mvn install:install-file -Dfile="PATH/TO/CData JDBC Driver for SASxpt 20XX/lib/cdata.jdbc.sasxpt.jar" -DgroupId="org.cdata.connectors" -DartifactId="cdata-sasxpt-connector" -Dversion="23" -Dpackaging=jar

Add Dependencies

Within the Maven project's pom.xml file, add AWS and the CData JDBC Driver for SASxpt] as dependencies (within the <dependencies> element) using the following XML.

  • AWS
    <dependency>
     <groupId>com.amazonaws</groupId>
     <artifactId>aws-lambda-java-core</artifactId>
     <version>1.2.2</version> <!--Replace with the actual version-->
    </dependency>
  • CData JDBC Driver for SASxpt
    <dependency>
     <groupId>org.cdata.connectors</groupId>
     <artifactId>cdata-sasxpt-connector</artifactId>
     <version>25</version> <!--Replace with the actual version-->
    </dependency>
  • Maven Shade Plugin to create a fat JAR
    <build>
     <plugins>
     <plugin>
     <groupId>org.apache.maven.plugins</groupId>
     <artifactId>maven-shade-plugin</artifactId>
     <version>3.4.1</version>
     <executions>
     <execution>
     <phase>package</phase>
     <goals>
     <goal>shade</goal>
     </goals>
     <configuration>
     <createDependencyReducedPom>false</createDependencyReducedPom>
     <transformers>
     <transformer implementation="org.apache.maven.plugins.shade.resource.ManifestResourceTransformer">
     <mainClass>com.example.CDataLambda</mainClass>
     <!-- Change to your actual Lambda handler class -->
     </transformer>
     </transformers>
     </configuration>
     </execution>
     </executions>
     </plugin>
     </plugins>
    </build>

Create an AWS Lambda Function

For this sample project, we create two source files: CDataLambda.java and CDataLambdaTest.java.

Lambda Function Definition

  1. Update CDataLambda to implement the RequestHandler interface from the AWS Lambda SDK. You will need to add the handleRequest method, which performs the following tasks when the Lambda function is triggered:
    1. Constructs a SQL query using the input
    2. Registers the CData JDBC Driver for SASxpt
    3. Establishes a connection to SAS xpt using JDBC
    4. Executes the SQL query on SAS xpt
    5. Prints the results to the console
    6. Returns an output message
  2. Use the complete Lambda class below, which includes the imports, class definition, and handleRequest method. Be sure to fill in your connection string values in the DriverManager.getConnection call.

    package com.example;
    
    import com.amazonaws.services.lambda.runtime.Context;
    import com.amazonaws.services.lambda.runtime.RequestHandler;
    
    import java.sql.Connection;
    import java.sql.DriverManager;
    import java.sql.ResultSet;
    import java.sql.ResultSetMetaData;
    import java.sql.SQLException;
    import java.sql.Statement;
    public class CDataLambda implements RequestHandler < Object, String > {
    
     @Override
     public String handleRequest(Object input, Context context) {
     String query = "SELECT * FROM " + input;
    
     String bucketName = "MY_AWS_BUCKET";
     try {
     Class.forName("cdata.jdbc.sasxpt.SASXptDriver");
     cdata.jdbc.sasxpt.SASXptDriver driver = new cdata.jdbc.sasxpt.SASXptDriver();
     DriverManager.registerDriver(driver);
     } catch (SQLException ex) {
     // Registering the driver failed
     throw new RuntimeException("Failed to register JDBC driver", ex);
     } catch (ClassNotFoundException e) {
     // The driver class was not found in the classpath
     throw new RuntimeException("JDBC Driver class not found", e);
    
     }
     Connection connection = null;
     try {
     connection = DriverManager.getConnection("jdbc:cdata:sasxpt:RTK=52465...;URI=C:/folder;");
     } catch (SQLException ex) {
     context.getLogger().log("Error getting connection: " + ex.getMessage());
     } catch (Exception ex) {
     context.getLogger().log("Error: " + ex.getMessage());
     }
    
     if (connection != null) {
     context.getLogger().log("Connected Successfully!
    ");
     }
    
     ResultSet resultSet = null;
     try {
     //executing query
     Statement stmt = connection.createStatement();
     resultSet = stmt.executeQuery(query);
    
     ResultSetMetaData metaData = resultSet.getMetaData();
     int numCols = metaData.getColumnCount();
    
     //printing the results
     while (resultSet.next()) {
     for (int i = 1; i <= numCols; i++) {
     System.out.printf("%-25s", (resultSet.getObject(i) != null) ? resultSet.getObject(i).toString().replaceAll("
    ", "") : null);
     }
     System.out.print("
    ");
     }
     } catch (SQLException ex) {
     System.out.println("SQL Exception: " + ex.getMessage());
     } catch (Exception ex) {
     System.out.println("General exception: " + ex.getMessage());
     }
     return "v24 query: " + query + " complete";
     }
    }
    
    

Step 3: Deploy and run the lambda function

Once you build the function in Intellij, you are ready to deploy the entire Maven project as a single JAR file.

  1. In IntelliJ, use the mvn install command to build the SNAPSHOT JAR file.

    Note: The Maven Shade Plugin generates two JARs in the target folder. Always upload the larger -shaded.jar file to AWS Lambda, as it contains all required dependencies.

  2. Create a new function in AWS Lambda (or open an existing one).
  3. Name the function, select an IAM role, and set the timeout value to a high enough value to ensure the function completes (depending on the result size of your query).
  4. Click "Upload from" -> ".zip file" and select your SNAPSHOT JAR file. ๐Ÿ‘ Uploading the SNAPSHOT JAR file.
  5. In the "Runtime settings" section, click "Edit" and set Handler to your "handleRequest" method (e.g. package.class::handleRequest) ๐Ÿ‘ Configuring the runtime handler.
  6. You can now test the function. Set the "Event JSON" field to a table name and click, click "Test" ๐Ÿ‘ Viewing the results.

Free Trial & More Information

Download a free 30-day trial of the CData JDBC Driver for SASxpt and start working with your live SAS xpt data in AWS Lambda. Reach out to our Support Team if you have any questions.

Ready to get started?

Download a free trial of the SASxpt Driver to get started:

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