Example usage for com.amazonaws.services.elasticmapreduce.model HadoopJarStepConfig withJar

List of usage examples for com.amazonaws.services.elasticmapreduce.model HadoopJarStepConfig withJar

Introduction

In this page you can find the example usage for com.amazonaws.services.elasticmapreduce.model HadoopJarStepConfig withJar.

Prototype


public HadoopJarStepConfig withJar(String jar) 

Source Link

Document

A path to a JAR file run during the step.

Usage

From source file:org.deeplearning4j.legacyExamples.EmrSparkExample.java

License:Apache License

public void entryPoint(String[] args) {
    JCommander jcmdr = new JCommander(this);
    try {//w  w w  . java  2  s  .  c o  m
        jcmdr.parse(args);
    } catch (ParameterException e) {
        jcmdr.usage();
        try {
            Thread.sleep(500);
        } catch (Exception e2) {
        }
        throw e;
    }

    AmazonElasticMapReduceClientBuilder builder = AmazonElasticMapReduceClientBuilder.standard();
    builder.withRegion(region);
    builder.withCredentials(getCredentialsProvider());

    AmazonElasticMapReduce emr = builder.build();

    List<StepConfig> steps = new ArrayList<>();

    if (upload) {
        log.info("uploading uber jar");

        AmazonS3ClientBuilder s3builder = AmazonS3ClientBuilder.standard();
        s3builder.withRegion(region);
        s3builder.withCredentials(getCredentialsProvider());
        AmazonS3 s3Client = s3builder.build();

        if (!s3Client.doesBucketExist(bucketName)) {
            s3Client.createBucket(bucketName);
        }

        File uberJarFile = new File(uberJar);

        s3Client.putObject(new PutObjectRequest(bucketName, uberJarFile.getName(), uberJarFile));
    }

    if (debug) {
        log.info("enable debug");

        StepFactory stepFactory = new StepFactory(builder.getRegion() + ".elasticmapreduce");
        StepConfig enableDebugging = new StepConfig().withName("Enable Debugging")
                .withActionOnFailure(ActionOnFailure.TERMINATE_JOB_FLOW)
                .withHadoopJarStep(stepFactory.newEnableDebuggingStep());
        steps.add(enableDebugging);
    }

    if (execute) {
        log.info("execute spark step");

        HadoopJarStepConfig sparkStepConf = new HadoopJarStepConfig();
        sparkStepConf.withJar("command-runner.jar");
        sparkStepConf.withArgs("spark-submit", "--deploy-mode", "cluster", "--class", className,
                getS3UberJarUrl(), "-useSparkLocal", "false");

        ActionOnFailure action = ActionOnFailure.TERMINATE_JOB_FLOW;

        if (keepAlive) {
            action = ActionOnFailure.CONTINUE;
        }

        StepConfig sparkStep = new StepConfig().withName("Spark Step").withActionOnFailure(action)
                .withHadoopJarStep(sparkStepConf);
        steps.add(sparkStep);
    }

    log.info("create spark cluster");

    Application sparkApp = new Application().withName("Spark");

    // service and job flow role will be created automatically when
    // launching cluster in aws console, better do that first or create
    // manually

    RunJobFlowRequest request = new RunJobFlowRequest().withName("Spark Cluster").withSteps(steps)
            .withServiceRole("EMR_DefaultRole").withJobFlowRole("EMR_EC2_DefaultRole")
            .withApplications(sparkApp).withReleaseLabel(emrVersion).withLogUri(getS3BucketLogsUrl())
            .withInstances(new JobFlowInstancesConfig().withEc2KeyName("spark").withInstanceCount(instanceCount)
                    .withKeepJobFlowAliveWhenNoSteps(keepAlive).withMasterInstanceType(instanceType)
                    .withSlaveInstanceType(instanceType));

    RunJobFlowResult result = emr.runJobFlow(request);

    log.info(result.toString());

    log.info("done");
}