Envoyer une tâche

Restez organisé à l'aide des collections Enregistrez et classez les contenus selon vos préférences.

Envoi d'une tâche Spark à un cluster Dataproc

Pages de documentation incluant cet exemple de code

Pour afficher l'exemple de code utilisé en contexte, consultez la documentation suivante :

Exemple de code

Go

Avant d'essayer l'exemple ci-dessous, suivez la procédure de configuration pour Go décrite dans le guide de démarrage rapide de Dataproc avec les bibliothèques clientes. Pour en savoir plus, consultez la documentation de référence de l'API Dataproc en langage Go.

import (
	"context"
	"fmt"
	"io"
	"io/ioutil"
	"log"
	"regexp"

	dataproc "cloud.google.com/go/dataproc/apiv1"
	"cloud.google.com/go/storage"
	"google.golang.org/api/option"
	dataprocpb "google.golang.org/genproto/googleapis/cloud/dataproc/v1"
)

func submitJob(w io.Writer, projectID, region, clusterName string) error {
	// projectID := "your-project-id"
	// region := "us-central1"
	// clusterName := "your-cluster"
	ctx := context.Background()

	// Create the job client.
	endpoint := fmt.Sprintf("%s-dataproc.googleapis.com:443", region)
	jobClient, err := dataproc.NewJobControllerClient(ctx, option.WithEndpoint(endpoint))
	if err != nil {
		log.Fatalf("error creating the job client: %s\n", err)
	}

	// Create the job config.
	submitJobReq := &dataprocpb.SubmitJobRequest{
		ProjectId: projectID,
		Region:    region,
		Job: &dataprocpb.Job{
			Placement: &dataprocpb.JobPlacement{
				ClusterName: clusterName,
			},
			TypeJob: &dataprocpb.Job_SparkJob{
				SparkJob: &dataprocpb.SparkJob{
					Driver: &dataprocpb.SparkJob_MainClass{
						MainClass: "org.apache.spark.examples.SparkPi",
					},
					JarFileUris: []string{"file:///usr/lib/spark/examples/jars/spark-examples.jar"},
					Args:        []string{"1000"},
				},
			},
		},
	}

	submitJobOp, err := jobClient.SubmitJobAsOperation(ctx, submitJobReq)
	if err != nil {
		return fmt.Errorf("error with request to submitting job: %v", err)
	}

	submitJobResp, err := submitJobOp.Wait(ctx)
	if err != nil {
		return fmt.Errorf("error submitting job: %v", err)
	}

	re := regexp.MustCompile("gs://(.+?)/(.+)")
	matches := re.FindStringSubmatch(submitJobResp.DriverOutputResourceUri)

	if len(matches) < 3 {
		return fmt.Errorf("regex error: %s", submitJobResp.DriverOutputResourceUri)
	}

	// Dataproc job output gets saved to a GCS bucket allocated to it.
	storageClient, err := storage.NewClient(ctx)
	if err != nil {
		return fmt.Errorf("error creating storage client: %v", err)
	}

	obj := fmt.Sprintf("%s.000000000", matches[2])
	reader, err := storageClient.Bucket(matches[1]).Object(obj).NewReader(ctx)
	if err != nil {
		return fmt.Errorf("error reading job output: %v", err)
	}

	defer reader.Close()

	body, err := ioutil.ReadAll(reader)
	if err != nil {
		return fmt.Errorf("could not read output from Dataproc Job: %v", err)
	}

	fmt.Fprintf(w, "Job finished successfully: %s", body)

	return nil
}

Java

Avant d'essayer l'exemple ci-dessous, suivez la procédure de configuration pour Java décrite dans le guide de démarrage rapide de Dataproc avec les bibliothèques clientes. Pour en savoir plus, consultez la documentation de référence de l'API Dataproc en langage Java.


import com.google.api.gax.longrunning.OperationFuture;
import com.google.cloud.dataproc.v1.Job;
import com.google.cloud.dataproc.v1.JobControllerClient;
import com.google.cloud.dataproc.v1.JobControllerSettings;
import com.google.cloud.dataproc.v1.JobMetadata;
import com.google.cloud.dataproc.v1.JobPlacement;
import com.google.cloud.dataproc.v1.SparkJob;
import com.google.cloud.storage.Blob;
import com.google.cloud.storage.Storage;
import com.google.cloud.storage.StorageOptions;
import java.io.IOException;
import java.util.concurrent.ExecutionException;
import java.util.regex.Matcher;
import java.util.regex.Pattern;

public class SubmitJob {

  public static void submitJob() throws IOException, InterruptedException {
    // TODO(developer): Replace these variables before running the sample.
    String projectId = "your-project-id";
    String region = "your-project-region";
    String clusterName = "your-cluster-name";
    submitJob(projectId, region, clusterName);
  }

  public static void submitJob(String projectId, String region, String clusterName)
      throws IOException, InterruptedException {
    String myEndpoint = String.format("%s-dataproc.googleapis.com:443", region);

    // Configure the settings for the job controller client.
    JobControllerSettings jobControllerSettings =
        JobControllerSettings.newBuilder().setEndpoint(myEndpoint).build();

    // Create a job controller client with the configured settings. Using a try-with-resources
    // closes the client,
    // but this can also be done manually with the .close() method.
    try (JobControllerClient jobControllerClient =
        JobControllerClient.create(jobControllerSettings)) {

      // Configure cluster placement for the job.
      JobPlacement jobPlacement = JobPlacement.newBuilder().setClusterName(clusterName).build();

      // Configure Spark job settings.
      SparkJob sparkJob =
          SparkJob.newBuilder()
              .setMainClass("org.apache.spark.examples.SparkPi")
              .addJarFileUris("file:///usr/lib/spark/examples/jars/spark-examples.jar")
              .addArgs("1000")
              .build();

      Job job = Job.newBuilder().setPlacement(jobPlacement).setSparkJob(sparkJob).build();

      // Submit an asynchronous request to execute the job.
      OperationFuture<Job, JobMetadata> submitJobAsOperationAsyncRequest =
          jobControllerClient.submitJobAsOperationAsync(projectId, region, job);

      Job response = submitJobAsOperationAsyncRequest.get();

      // Print output from Google Cloud Storage.
      Matcher matches =
          Pattern.compile("gs://(.*?)/(.*)").matcher(response.getDriverOutputResourceUri());
      matches.matches();

      Storage storage = StorageOptions.getDefaultInstance().getService();
      Blob blob = storage.get(matches.group(1), String.format("%s.000000000", matches.group(2)));

      System.out.println(
          String.format("Job finished successfully: %s", new String(blob.getContent())));

    } catch (ExecutionException e) {
      // If the job does not complete successfully, print the error message.
      System.err.println(String.format("submitJob: %s ", e.getMessage()));
    }
  }
}

Node.js

Avant d'essayer l'exemple ci-dessous, suivez la procédure de configuration pour Node.js décrite dans le guide de démarrage rapide de Dataproc avec les bibliothèques clientes. Pour en savoir plus, consultez la documentation de référence de l'API Dataproc pour Node.js.

const dataproc = require('@google-cloud/dataproc');
const {Storage} = require('@google-cloud/storage');

// TODO(developer): Uncomment and set the following variables
// projectId = 'YOUR_PROJECT_ID'
// region = 'YOUR_CLUSTER_REGION'
// clusterName = 'YOUR_CLUSTER_NAME'

// Create a client with the endpoint set to the desired cluster region
const jobClient = new dataproc.v1.JobControllerClient({
  apiEndpoint: `${region}-dataproc.googleapis.com`,
  projectId: projectId,
});

async function submitJob() {
  const job = {
    projectId: projectId,
    region: region,
    job: {
      placement: {
        clusterName: clusterName,
      },
      sparkJob: {
        mainClass: 'org.apache.spark.examples.SparkPi',
        jarFileUris: [
          'file:///usr/lib/spark/examples/jars/spark-examples.jar',
        ],
        args: ['1000'],
      },
    },
  };

  const [jobOperation] = await jobClient.submitJobAsOperation(job);
  const [jobResponse] = await jobOperation.promise();

  const matches =
    jobResponse.driverOutputResourceUri.match('gs://(.*?)/(.*)');

  const storage = new Storage();

  const output = await storage
    .bucket(matches[1])
    .file(`${matches[2]}.000000000`)
    .download();

  // Output a success message.
  console.log(`Job finished successfully: ${output}`);

Python

Avant d'essayer l'exemple ci-dessous, suivez la procédure de configuration pour Python décrite dans le guide de démarrage rapide de Dataproc avec les bibliothèques clientes. Pour en savoir plus, consultez la documentation de référence de l'API Dataproc en langage Python.

import re

from google.cloud import dataproc_v1 as dataproc
from google.cloud import storage

def submit_job(project_id, region, cluster_name):
    # Create the job client.
    job_client = dataproc.JobControllerClient(
        client_options={"api_endpoint": "{}-dataproc.googleapis.com:443".format(region)}
    )

    # Create the job config. 'main_jar_file_uri' can also be a
    # Google Cloud Storage URL.
    job = {
        "placement": {"cluster_name": cluster_name},
        "spark_job": {
            "main_class": "org.apache.spark.examples.SparkPi",
            "jar_file_uris": ["file:///usr/lib/spark/examples/jars/spark-examples.jar"],
            "args": ["1000"],
        },
    }

    operation = job_client.submit_job_as_operation(
        request={"project_id": project_id, "region": region, "job": job}
    )
    response = operation.result()

    # Dataproc job output gets saved to the Google Cloud Storage bucket
    # allocated to the job. Use a regex to obtain the bucket and blob info.
    matches = re.match("gs://(.*?)/(.*)", response.driver_output_resource_uri)

    output = (
        storage.Client()
        .get_bucket(matches.group(1))
        .blob(f"{matches.group(2)}.000000000")
        .download_as_string()
    )

    print(f"Job finished successfully: {output}")

Étape suivante

Pour rechercher et filtrer des exemples de code pour d'autres produits Google Cloud, consultez l'explorateur d'exemples Google Cloud.