NAME
    gcloud alpha dataplex tasks create - create a Dataplex task resource

SYNOPSIS
    gcloud alpha dataplex tasks create (TASK : --lake=LAKE --location=LOCATION)
        (--execution-service-account=EXECUTION_SERVICE_ACCOUNT
          : --execution-args=[KEY=VALUE,...]
          --execution-project=EXECUTION_PROJECT --kms-key=KMS_KEY
          --max-job-execution-lifetime=MAX_JOB_EXECUTION_LIFETIME)
        ([--notebook=NOTEBOOK
          : --notebook-archive-uris=[NOTEBOOK_ARCHIVE_URIS,...]
          --notebook-file-uris=[NOTEBOOK_FILE_URIS,...]
          --notebook-batch-executors-count=NOTEBOOK_BATCH_EXECUTORS_COUNT
          --notebook-batch-max-executors-count=NOTEBOOK_BATCH_MAX_EXECUTORS_COUNT --notebook-container-image=NOTEBOOK_CONTAINER_IMAGE --notebook-container-image-java-jars=[NOTEBOOK_CONTAINER_IMAGE_JAVA_JARS,
          ...] --notebook-container-image-properties=[KEY=VALUE,...]
          --notebook-vpc-network-tags=[NOTEBOOK_VPC_NETWORK_TAGS,...]
          --notebook-vpc-network-name=NOTEBOOK_VPC_NETWORK_NAME
          | --notebook-vpc-sub-network-name=NOTEBOOK_VPC_SUB_NETWORK_NAME]
          | [(--spark-main-class=SPARK_MAIN_CLASS
          | --spark-main-jar-file-uri=SPARK_MAIN_JAR_FILE_URI
          | --spark-python-script-file=SPARK_PYTHON_SCRIPT_FILE
          | --spark-sql-script=SPARK_SQL_SCRIPT
          | --spark-sql-script-file=SPARK_SQL_SCRIPT_FILE)
          : --spark-archive-uris=[SPARK_ARCHIVE_URIS,...]
          --spark-file-uris=[SPARK_FILE_URIS,...]
          --batch-executors-count=BATCH_EXECUTORS_COUNT
          --batch-max-executors-count=BATCH_MAX_EXECUTORS_COUNT
          --container-image=CONTAINER_IMAGE
          --container-image-java-jars=[CONTAINER_IMAGE_JAVA_JARS,...]
          --container-image-properties=[KEY=VALUE,...]
          --container-image-python-packages=[CONTAINER_IMAGE_PYTHON_PACKAGES,
          ...] --vpc-network-tags=[VPC_NETWORK_TAGS,...]
          --vpc-network-name=VPC_NETWORK_NAME
          | --vpc-sub-network-name=VPC_SUB_NETWORK_NAME])
        (--trigger-type=TRIGGER_TYPE : --trigger-disabled
          --trigger-max-retires=TRIGGER_MAX_RETIRES
          --trigger-schedule=TRIGGER_SCHEDULE
          --trigger-start-time=TRIGGER_START_TIME) [--async]
        [--description=DESCRIPTION] [--display-name=DISPLAY_NAME]
        [--labels=[KEY=VALUE,...]] [GCLOUD_WIDE_FLAG ...]

DESCRIPTION
    (ALPHA) Create a Dataplex task resource.

    A task represents a user visible job that you want Dataplex to perform on a
    schedule. It encapsulates your code, your parameters and the schedule.

    This task ID must follow these rules: o Must contain only lowercase
    letters, numbers, and hyphens. o Must start with a letter. o Must end with
    a number or a letter. o Must be between 1-63 characters. o Must be unique
    within the customer project / location.

EXAMPLES
    To create a Dataplex task test-task with ON_DEMAND trigger type,
    dataplex-demo-test@test-project.iam.gserviceaccount.com as execution
    service account and gs://test-bucket/test-file.py as spark python script
    file within lake test-lake in location us-central1.

        $ gcloud alpha dataplex tasks create test-task \
          --location=us-central1 --lake=test-lake \
          --execution-service-account=dataplex-demo-test@test-project.iam.\
        gserviceaccount.com \
            --spark-python-script-file=gs://test-bucket/test-file.py \
            --trigger-type=ON_DEMAND

    To create a Dataplex task test-task with RECURRING trigger type starting
    every hour at minute 0,
    dataplex-demo-test@test-project.iam.gserviceaccount.com as execution
    service account and gs://test-bucket/test-file.py as spark python script
    file within lake test-lake in location us-central1.

        $ gcloud alpha dataplex tasks create test-task \
            --location=us-central1 --lake=test-lake \
            --execution-service-account=dataplex-demo-test@test-project.iam.\
        gserviceaccount.com \
            --spark-python-script-file=gs://test-bucket/test-file.py \
            --trigger-type=RECURRING --trigger-schedule="0 * * * *"

POSITIONAL ARGUMENTS
     Task resource - Arguments and flags that specify the Dataplex Task you
     want to create. The arguments in this group can be used to specify the
     attributes of this resource. (NOTE) Some attributes are not given
     arguments in this group but can be set in other ways.

     To set the project attribute:
      ◆ provide the argument task on the command line with a fully specified
        name;
      ◆ provide the argument --project on the command line;
      ◆ set the property core/project.

     This must be specified.

       TASK
          ID of the task or fully qualified identifier for the task.

          To set the task attribute:
          ▸ provide the argument task on the command line.

          This positional argument must be specified if any of the other
          arguments in this group are specified.

       --lake=LAKE
          Identifier of the Dataplex lake resource.

          To set the lake attribute:
          ▸ provide the argument task on the command line with a fully
            specified name;
          ▸ provide the argument --lake on the command line.

       --location=LOCATION
          Location of the Dataplex resource.

          To set the location attribute:
          ▸ provide the argument task on the command line with a fully
            specified name;
          ▸ provide the argument --location on the command line;
          ▸ set the property dataplex/location.

REQUIRED FLAGS
     Spec related to how a task is executed.

     This must be specified.

       --execution-service-account=EXECUTION_SERVICE_ACCOUNT
          Service account to use to execute a task.

          This flag argument must be specified if any of the other arguments in
          this group are specified.

       --execution-args=[KEY=VALUE,...]
          The arguments to pass to the task. The args can use placeholders of
          the format ${placeholder} as part of key/value string. These will be
          interpolated before passing the args to the driver. Currently
          supported placeholders:
          ▸ ${task_id}
          ▸ ${job_time} To pass positional args, set the key as TASK_ARGS.
            The value should be a comma-separated string of all the positional
            arguments. See
            https://cloud.google.com/sdk/gcloud/reference/topic/escaping for
            details on using a delimiter other than a comma. In case of other
            keys being present in the args, then TASK_ARGS will be passed as
            the last argument.

       --execution-project=EXECUTION_PROJECT
          The project in which jobs are run. By default, the project containing
          the Lake is used. If a project is provided, the
          --execution-service-account must belong to this same project.

       --kms-key=KMS_KEY
          The Cloud KMS key to use for encryption, of the form:
          projects/{project_number}/locations/{location_id}/keyRings/{key-ring-name}/cryptoKeys/{key-name}

       --max-job-execution-lifetime=MAX_JOB_EXECUTION_LIFETIME
          The maximum duration before the job execution expires.

     Select which task you want to schedule and provide the required arguments
     for the task. The 2 types of tasks supported are:-
      ◆ spark tasks
      ◆ notebook tasks

     Exactly one of these must be specified:

       Config related to running custom notebook tasks.

       --notebook=NOTEBOOK
          Path to input notebook. This can be the Google Cloud Storage URI of
          the notebook file or the path to a Notebook Content. The execution
          args are accessible as environment variables (TASK_key=value).

          This flag argument must be specified if any of the other arguments in
          this group are specified.

       --notebook-archive-uris=[NOTEBOOK_ARCHIVE_URIS,...]
          Google Cloud Storage URIs of archives to be extracted into the
          working directory of each executor. Supported file types: .jar, .tar,
          .tar.gz, .tgz, and .zip.

       --notebook-file-uris=[NOTEBOOK_FILE_URIS,...]
          Google Cloud Storage URIs of files to be placed in the working
          directory of each executor.

       Compute resources needed for a Task when using Dataproc Serverless.

       --notebook-batch-executors-count=NOTEBOOK_BATCH_EXECUTORS_COUNT
          Total number of job executors.

       --notebook-batch-max-executors-count=NOTEBOOK_BATCH_MAX_EXECUTORS_COUNT
          Max configurable executors. If max_executors_count > executors_count,
          then auto-scaling is enabled.

       Container Image Runtime Configuration.

       --notebook-container-image=NOTEBOOK_CONTAINER_IMAGE
          Optional custom container image for the job.

       --notebook-container-image-java-jars=[NOTEBOOK_CONTAINER_IMAGE_JAVA_JARS,...]
          A list of Java JARS to add to the classpath. Valid input includes
          Cloud Storage URIs to Jar binaries. For example,
          gs://bucket-name/my/path/to/file.jar

       --notebook-container-image-properties=[KEY=VALUE,...]
          The properties to set on daemon config files. Property keys are
          specified in prefix:property format, for example core:hadoop.tmp.dir.
          For more information, see Cluster properties
          (https://cloud.google.com/dataproc/docs/concepts/cluster-properties)

       Cloud VPC Network used to run the infrastructure.

       --notebook-vpc-network-tags=[NOTEBOOK_VPC_NETWORK_TAGS,...]
          List of network tags to apply to the job.

       The Cloud VPC network identifier.

       At most one of these can be specified:

         --notebook-vpc-network-name=NOTEBOOK_VPC_NETWORK_NAME
            The Cloud VPC network in which the job is run. By default, the
            Cloud VPC network named Default within the project is used.

         --notebook-vpc-sub-network-name=NOTEBOOK_VPC_SUB_NETWORK_NAME
            The Cloud VPC sub-network in which the job is run.

       Config related to running custom Spark tasks.

       --spark-archive-uris=[SPARK_ARCHIVE_URIS,...]
          Google Cloud Storage URIs of archives to be extracted into the
          working directory of each executor. Supported file types: .jar, .tar,
          .tar.gz, .tgz, and .zip.

       --spark-file-uris=[SPARK_FILE_URIS,...]
          Google Cloud Storage URIs of files to be placed in the working
          directory of each executor.

       The specification of the main method to call to drive the job. Specify
       either the jar file that contains the main class or the main class name.

       Exactly one of these must be specified:

         --spark-main-class=SPARK_MAIN_CLASS
            The name of the driver's main class. The jar file that contains the
            class must be in the default CLASSPATH or specified in
            jar_file_uris. The execution args are passed in as a sequence of
            named process arguments (--key=value).

         --spark-main-jar-file-uri=SPARK_MAIN_JAR_FILE_URI
            The Google Cloud Storage URI of the jar file that contains the main
            class. The execution args are passed in as a sequence of named
            process arguments (--key=value).

         --spark-python-script-file=SPARK_PYTHON_SCRIPT_FILE
            The Google Cloud Storage URI of the main Python file to use as the
            driver. Must be a .py file.

         --spark-sql-script=SPARK_SQL_SCRIPT
            The SQL query text.

         --spark-sql-script-file=SPARK_SQL_SCRIPT_FILE
            A reference to a query file. This can be the Google Cloud Storage
            URI of the query file or it can the path to a SqlScript Content.

       Compute resources needed for a Task when using Dataproc Serverless.

       --batch-executors-count=BATCH_EXECUTORS_COUNT
          Total number of job executors.

       --batch-max-executors-count=BATCH_MAX_EXECUTORS_COUNT
          Max configurable executors. If max_executors_count > executors_count,
          then auto-scaling is enabled.

       Container Image Runtime Configuration.

       --container-image=CONTAINER_IMAGE
          Optional custom container image for the job.

       --container-image-java-jars=[CONTAINER_IMAGE_JAVA_JARS,...]
          A list of Java JARS to add to the classpath. Valid input includes
          Cloud Storage URIs to Jar binaries. For example,
          gs://bucket-name/my/path/to/file.jar

       --container-image-properties=[KEY=VALUE,...]
          The properties to set on daemon config files. Property keys are
          specified in prefix:property format, for example core:hadoop.tmp.dir.
          For more information, see Cluster properties
          (https://cloud.google.com/dataproc/docs/concepts/cluster-properties)

       --container-image-python-packages=[CONTAINER_IMAGE_PYTHON_PACKAGES,...]
          A list of python packages to be installed. Valid formats include
          Cloud Storage URI to a PIP installable library. For example,
          gs://bucket-name/my/path/to/lib.tar.gz

       Cloud VPC Network used to run the infrastructure.

       --vpc-network-tags=[VPC_NETWORK_TAGS,...]
          List of network tags to apply to the job.

       The Cloud VPC network identifier.

       At most one of these can be specified:

         --vpc-network-name=VPC_NETWORK_NAME
            The Cloud VPC network in which the job is run. By default, the
            Cloud VPC network named Default within the project is used.

         --vpc-sub-network-name=VPC_SUB_NETWORK_NAME
            The Cloud VPC sub-network in which the job is run.

     Spec related to Dataplex task scheduling and frequency settings.

     This must be specified.

       --trigger-type=TRIGGER_TYPE
          Trigger type of the user-specified Dataplex Task. TRIGGER_TYPE must
          be one of:

           on-demand
              The ON_DEMAND trigger type runs the Dataplex task one time
              shortly after task creation.

           recurring
              The RECURRING trigger type makes the task scheduled to run
              periodically.

          This flag argument must be specified if any of the other arguments in
          this group are specified.

       --trigger-disabled
          Prevent the task from executing. This does not cancel already running
          tasks. It is intended to temporarily disable RECURRING tasks.

       --trigger-max-retires=TRIGGER_MAX_RETIRES
          Number of retry attempts before aborting. Set to zero to never
          attempt to retry a failed task.

       --trigger-schedule=TRIGGER_SCHEDULE
          Cron schedule (https://en.wikipedia.org/wiki/Cron) for running tasks
          periodically.

       --trigger-start-time=TRIGGER_START_TIME
          The first run of the task begins after this time. If not specified,
          an ON_DEMAND task runs when it is submitted and a RECURRING task runs
          based on the trigger schedule.

OPTIONAL FLAGS
     --async
        Return immediately, without waiting for the operation in progress to
        complete.

     --description=DESCRIPTION
        Description of the Dataplex task.

     --display-name=DISPLAY_NAME
        Display name of the Dataplex task.

     --labels=[KEY=VALUE,...]
        List of label KEY=VALUE pairs to add.

        Keys must start with a lowercase character and contain only hyphens
        (-), underscores (_), lowercase characters, and numbers. Values must
        contain only hyphens (-), underscores (_), lowercase characters, and
        numbers.

GCLOUD WIDE FLAGS
    These flags are available to all commands: --access-token-file, --account,
    --billing-project, --configuration, --flags-file, --flatten, --format,
    --help, --impersonate-service-account, --log-http, --project, --quiet,
    --trace-token, --user-output-enabled, --verbosity.

    Run $ gcloud help for details.

API REFERENCE
    This command uses the dataplex/v1 API. The full documentation for this API
    can be found at: https://cloud.google.com/dataplex/docs

NOTES
    This command is currently in alpha and might change without notice. If this
    command fails with API permission errors despite specifying the correct
    project, you might be trying to access an API with an invitation-only early
    access allowlist. This variant is also available:

        $ gcloud dataplex tasks create

