Amazon EMR¶
Amazon EMR (previously called Amazon Elastic MapReduce) is a managed cluster platform that simplifies running big data frameworks, such as Apache Hadoop and Apache Spark, on AWS to process and analyze vast amounts of data. Using these frameworks and related open-source projects, you can process data for analytics purposes and business intelligence workloads. Amazon EMR also lets you transform and move large amounts of data into and out of other AWS data stores and databases, such as Amazon Simple Storage Service (Amazon S3) and Amazon DynamoDB.
Prerequisite Tasks¶
To use these operators, you must do a few things:
Create necessary resources using AWS Console or AWS CLI.
Install API libraries via pip.
pip install 'apache-airflow[amazon]'
Detailed information is available Installation
Operators¶
Note
In order to run the examples successfully, you need to create the IAM Service
Roles(EMR_EC2_DefaultRole
and EMR_DefaultRole
) for Amazon EMR. You can
create these roles using the AWS CLI: aws emr create-default-roles
.
Create an EMR job flow¶
You can use EmrCreateJobFlowOperator
to
create a new EMR job flow. The cluster will be terminated automatically after finishing the steps.
JobFlow configuration¶
To create a job flow on EMR, you need to specify the configuration for the EMR cluster:
SPARK_STEPS = [
{
'Name': 'calculate_pi',
'ActionOnFailure': 'CONTINUE',
'HadoopJarStep': {
'Jar': 'command-runner.jar',
'Args': ['/usr/lib/spark/bin/run-example', 'SparkPi', '10'],
},
}
]
JOB_FLOW_OVERRIDES = {
'Name': 'PiCalc',
'ReleaseLabel': 'emr-5.29.0',
'Applications': [{'Name': 'Spark'}],
'Instances': {
'InstanceGroups': [
{
'Name': 'Primary node',
'Market': 'ON_DEMAND',
'InstanceRole': 'MASTER',
'InstanceType': 'm5.xlarge',
'InstanceCount': 1,
},
],
'KeepJobFlowAliveWhenNoSteps': False,
'TerminationProtected': False,
},
'Steps': SPARK_STEPS,
'JobFlowRole': JOB_FLOW_ROLE,
'ServiceRole': SERVICE_ROLE,
}
Here we create an EMR single-node Cluster PiCalc. It only has a single step calculate_pi which
calculates the value of Pi
using Spark. The config 'KeepJobFlowAliveWhenNoSteps': False
tells the cluster to shut down after the step is finished. Alternatively, a config without a Steps
value can be used and Steps can be added at a later date using
EmrAddStepsOperator
. See details below.
Note
EMR clusters launched with the EMR API like this one are not visible to all users by default, so
you may not see the cluster in the EMR Management Console - you can change this by adding
'VisibleToAllUsers': True
at the end of the JOB_FLOW_OVERRIDES
dict.
For more config information, please refer to Boto3 EMR client.
Create the Job Flow¶
In the following code we are creating a new job flow using the configuration as explained above.
job_flow_creator = EmrCreateJobFlowOperator(
task_id='create_job_flow',
job_flow_overrides=JOB_FLOW_OVERRIDES,
)
Add Steps to an EMR job flow¶
To add steps to an existing EMR Job flow you can use
EmrAddStepsOperator
.
step_adder = EmrAddStepsOperator(
task_id='add_steps',
job_flow_id=job_flow_creator.output,
steps=SPARK_STEPS,
)
Terminate an EMR job flow¶
To terminate an EMR Job Flow you can use
EmrTerminateJobFlowOperator
.
cluster_remover = EmrTerminateJobFlowOperator(
task_id='remove_cluster',
job_flow_id=job_flow_creator.output,
)
Modify Amazon EMR container¶
To modify an existing EMR container you can use
EmrContainerSensor
.
cluster_modifier = EmrModifyClusterOperator(
task_id='modify_cluster', cluster_id=job_flow_creator.output, step_concurrency_level=1
)
Sensors¶
Wait on an Amazon EMR job flow state¶
To monitor the state of an EMR job flow you can use
EmrJobFlowSensor
.
job_sensor = EmrJobFlowSensor(
task_id='check_job_flow',
job_flow_id=job_flow_creator.output,
)
Wait on an Amazon EMR step state¶
To monitor the state of a step running an existing EMR Job flow you can use
EmrStepSensor
.
step_checker = EmrStepSensor(
task_id='watch_step',
job_flow_id=job_flow_creator.output,
step_id="{{ task_instance.xcom_pull(task_ids='add_steps', key='return_value')[0] }}",
)