Dataproc通过Python客户端提交Hadoop作业

问题描述 投票:1回答:1

我正在尝试使用Dataproc API,尝试将gcloud命令转换为API,但我在文档中找不到一个好的例子。

%pip install google-cloud-dataproc

我找到的唯一好的样本就是这个,效果很好:

from google.cloud import dataproc_v1

client = dataproc_v1.ClusterControllerClient()

project_id = 'test-project'
region = 'global'

for element in client.list_clusters(project_id, region):   
    print('Dataproc cluster name:', element.cluster_name)

我需要将以下gcloud命令转换为Python代码:

gcloud dataproc jobs submit hadoop --cluster "${CLUSTER_NAME}" \
    --class com.mycompany.product.MyClass \
    --jars "${JAR_FILE}" -- \
    --job_venv=venv.zip \
    --job_binary_path=venv/bin/python3.5 \
    --job_executes program.py \
python google-cloud-platform gcloud google-cloud-dataproc
1个回答
3
投票

这有效:

project_id = 'your project'
region = 'global'

# Define Job arguments:

job_args = ['--job_venv=venv.zip',
            '--job_binary_path=venv/bin/python3.5',
            '--job_executes program.py']


job_client = dataproc_v1.JobControllerClient()

# Create Hadoop Job
hadoop_job = dataproc_v1.types.HadoopJob(jar_file_uris=[JAR_FILE], main_class='com.mycompany.product.MyClass',args=job_args)

# Define Remote cluster to send Job
job_placement = dataproc_v1.types.JobPlacement()
job_placement.cluster_name = 'your_cluster_name'

# Define Job configuration
main_job = dataproc_v1.types.Job(hadoop_job=hadoop_job, placement=job_placement)

# Send job
job_client.submit_job(project_id, region, main_job)

# Monitor in Dataproc UI or perform another API call to track status
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