Use deferrable operators in your DAGs

Cloud Composer 1 | Cloud Composer 2 | Cloud Composer 3

This page explains how to enable support for Deferrable Operators in your environment and use deferrable Google Cloud operators in your DAGs.

About Deferrable Operators in Cloud Composer

If you have at least one triggerer instance (or at least two in highly resilient environments), you can use Deferrable Operators and Triggers in your DAGs.

For deferrable operators, Airflow splits task execution into the following stages:

  1. Start the operation. In this stage, the task occupies an Airflow worker slot. The task performs an operation that delegates the job to a different service.

    For example, running a BigQuery job can take from a few seconds to several hours. After creating the job, the operation passes the work identifier (BigQuery job ID) to an Airflow trigger.

  2. The trigger monitors the job until it finishes. In this stage, a worker slot is not occupied. The Airflow triggerer has asynchronous architecture and is capable of handling hundreds of such jobs. When the trigger detects that the job is finished, it sends an event that triggers the last stage.

  3. In the last stage, an Airflow worker executes a callback. This callback, for example, can mark the task as successful, or execute another operation and set the job to be monitored by the triggerer again.

The triggerer is stateless and therefore resilient to interruptions or restarts, . Because of this, long-running jobs are resilient to pod restarts, unless the restart happens during the last stage, which is expected to be short.

Before you begin

  • Deferrable Operators and Sensors are available in Cloud Composer 2 environments and require the following:
    • Cloud Composer 2.0.31 and later versions
    • Airflow 2.2.5, 2.3.3, and later versions

Enable support for deferrable operators

An environment component called Airflow triggerer asynchronously monitors all deferred tasks in your environment. After a deferred operation from such a task is completed, triggerer passes the task to an Airflow worker.

You need at least one triggerer instance in your environment (or at least two in highly resilient environments) to use deferrable mode in your DAGs. You can configure the triggerers when you create an environment or adjust the number of triggerers and performance parameters for an existing environment.

Google Cloud operators that support deferrable mode

Only some Airflow operators have been extended to support the deferrable model. The following list is a reference for the operators in the airflow.providers.google.operators.cloud package that support the deferrable mode. The column with the minimum required airflow.providers.google.operators.cloud package version represents the earliest package version where that operator supports deferrable mode.

Cloud Composer operators

Operator nameRequired apache-airflow-providers-google version
CloudComposerCreateEnvironmentOperator 6.4.0
CloudComposerDeleteEnvironmentOperator 6.4.0
CloudComposerUpdateEnvironmentOperator 6.4.0

BigQuery operators

Operator nameRequired apache-airflow-providers-google version
BigQueryCheckOperator 8.4.0
BigQueryValueCheckOperator 8.4.0
BigQueryIntervalCheckOperator 8.4.0
BigQueryGetDataOperator 8.4.0
BigQueryInsertJobOperator 8.4.0

BigQuery Data Transfer Service operators

Operator nameRequired apache-airflow-providers-google version
BigQueryDataTransferServiceStartTransferRunsOperator 8.9.0

Cloud Build operators

Operator nameRequired apache-airflow-providers-google version
CloudBuildCreateBuildOperator 8.7.0

Cloud SQL operators

Operator nameRequired apache-airflow-providers-google version
CloudSQLExportInstanceOperator 10.3.0

Dataflow operators

Operator nameRequired apache-airflow-providers-google version
DataflowTemplatedJobStartOperator 8.9.0
DataflowStartFlexTemplateOperator 8.9.0

Cloud Data Fusion operators

Operator nameRequired apache-airflow-providers-google version
CloudDataFusionStartPipelineOperator 8.9.0

Google Kubernetes Engine operators

Operator nameRequired apache-airflow-providers-google version
GKEDeleteClusterOperator 9.0.0
GKECreateClusterOperator 9.0.0

AI Platform operators

Operator nameRequired apache-airflow-providers-google version
MLEngineStartTrainingJobOperator 8.9.0

Use deferrable operators in your DAGs

A common convention for all Google Cloud operators is to enable the deferrable mode with the deferrable boolean parameter. If a Google Cloud operator does not have this parameter, then it cannot run in the deferrable mode. Other operators can have a different convention. For example, some community operators have a separate class with the Async suffix in the name.

The following example DAG uses DataprocSubmitJobOperator operator in the deferrable mode:

PYSPARK_JOB = {
    "reference": { "project_id": "PROJECT_ID" },
    "placement": { "cluster_name": "PYSPARK_CLUSTER_NAME" },
    "pyspark_job": {
        "main_python_file_uri": "gs://dataproc-examples/pyspark/hello-world/hello-world.py"
    },
}

DataprocSubmitJobOperator(
        task_id="dataproc-deferrable-example",
        job=PYSPARK_JOB,
        deferrable=True,
    )

View triggerer logs

The triggerer generates logs that are available together with logs of other environment components. For more information about viewing your environment logs, see View logs.

Monitor triggerer

For more information about monitoring the triggerer component, see Airflow metrics.

In addition to monitoring the triggerer, you can check the number of deferred tasks in the Unfinished Task metrics on the Monitoring dashboard of your environment.

What's next