Source code for airflow.providers.google.cloud.sensors.dataflow

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"""This module contains a Google Cloud Dataflow sensor."""

from __future__ import annotations

from functools import cached_property
from typing import TYPE_CHECKING, Any, Callable, Sequence

from airflow.configuration import conf
from airflow.exceptions import AirflowException, AirflowSkipException
from airflow.providers.google.cloud.hooks.dataflow import (
    DEFAULT_DATAFLOW_LOCATION,
    DataflowHook,
    DataflowJobStatus,
)
from airflow.providers.google.cloud.triggers.dataflow import (
    DataflowJobAutoScalingEventTrigger,
    DataflowJobMessagesTrigger,
    DataflowJobMetricsTrigger,
    DataflowJobStatusTrigger,
)
from airflow.providers.google.common.hooks.base_google import PROVIDE_PROJECT_ID
from airflow.sensors.base import BaseSensorOperator

if TYPE_CHECKING:
    from airflow.utils.context import Context


[docs]class DataflowJobStatusSensor(BaseSensorOperator): """ Checks for the status of a job in Google Cloud Dataflow. .. seealso:: For more information on how to use this operator, take a look at the guide: :ref:`howto/operator:DataflowJobStatusSensor` :param job_id: ID of the job to be checked. :param expected_statuses: The expected state(s) of the operation. See: https://cloud.google.com/dataflow/docs/reference/rest/v1b3/projects.jobs#Job.JobState :param project_id: Optional, the Google Cloud project ID in which to start a job. If set to None or missing, the default project_id from the Google Cloud connection is used. :param location: The location of the Dataflow job (for example europe-west1). See: https://cloud.google.com/dataflow/docs/concepts/regional-endpoints :param gcp_conn_id: The connection ID to use connecting to Google Cloud. :param impersonation_chain: Optional service account to impersonate using short-term credentials, or chained list of accounts required to get the access_token of the last account in the list, which will be impersonated in the request. If set as a string, the account must grant the originating account the Service Account Token Creator IAM role. If set as a sequence, the identities from the list must grant Service Account Token Creator IAM role to the directly preceding identity, with first account from the list granting this role to the originating account (templated). :param deferrable: If True, run the sensor in the deferrable mode. :param poll_interval: Time (seconds) to wait between two consecutive calls to check the job. """
[docs] template_fields: Sequence[str] = ("job_id",)
def __init__( self, *, job_id: str, expected_statuses: set[str] | str, project_id: str = PROVIDE_PROJECT_ID, location: str = DEFAULT_DATAFLOW_LOCATION, gcp_conn_id: str = "google_cloud_default", impersonation_chain: str | Sequence[str] | None = None, deferrable: bool = conf.getboolean("operators", "default_deferrable", fallback=False), poll_interval: int = 10, **kwargs, ) -> None: super().__init__(**kwargs) self.job_id = job_id self.expected_statuses = ( {expected_statuses} if isinstance(expected_statuses, str) else expected_statuses ) self.project_id = project_id self.location = location self.gcp_conn_id = gcp_conn_id self.impersonation_chain = impersonation_chain self.deferrable = deferrable self.poll_interval = poll_interval
[docs] def poke(self, context: Context) -> bool: self.log.info( "Waiting for job %s to be in one of the states: %s.", self.job_id, ", ".join(self.expected_statuses), ) job = self.hook.get_job( job_id=self.job_id, project_id=self.project_id, location=self.location, ) job_status = job["currentState"] self.log.debug("Current job status for job %s: %s.", self.job_id, job_status) if job_status in self.expected_statuses: return True elif job_status in DataflowJobStatus.TERMINAL_STATES: # TODO: remove this if check when min_airflow_version is set to higher than 2.7.1 message = f"Job with id '{self.job_id}' is already in terminal state: {job_status}" if self.soft_fail: raise AirflowSkipException(message) raise AirflowException(message) return False
[docs] def execute(self, context: Context) -> None: """Airflow runs this method on the worker and defers using the trigger.""" if not self.deferrable: super().execute(context) elif not self.poke(context=context): self.defer( timeout=self.execution_timeout, trigger=DataflowJobStatusTrigger( job_id=self.job_id, expected_statuses=self.expected_statuses, project_id=self.project_id, location=self.location, gcp_conn_id=self.gcp_conn_id, poll_sleep=self.poll_interval, impersonation_chain=self.impersonation_chain, ), method_name="execute_complete", )
[docs] def execute_complete(self, context: Context, event: dict[str, str | list]) -> bool: """ Execute this method when the task resumes its execution on the worker after deferral. Returns True if the trigger returns an event with the success status, otherwise raises an exception. """ if event["status"] == "success": self.log.info(event["message"]) return True # TODO: remove this if check when min_airflow_version is set to higher than 2.7.1 if self.soft_fail: raise AirflowSkipException(f"Sensor failed with the following message: {event['message']}.") raise AirflowException(f"Sensor failed with the following message: {event['message']}")
@cached_property
[docs] def hook(self) -> DataflowHook: return DataflowHook( gcp_conn_id=self.gcp_conn_id, impersonation_chain=self.impersonation_chain, )
[docs]class DataflowJobMetricsSensor(BaseSensorOperator): """ Checks for metrics associated with a single job in Google Cloud Dataflow. .. seealso:: For more information on how to use this operator, take a look at the guide: :ref:`howto/operator:DataflowJobMetricsSensor` :param job_id: ID of the job to be checked. :param callback: callback which is called with list of read job metrics See: https://cloud.google.com/dataflow/docs/reference/rest/v1b3/MetricUpdate :param fail_on_terminal_state: If set to true sensor will raise Exception when job is in terminal state :param project_id: Optional, the Google Cloud project ID in which to start a job. If set to None or missing, the default project_id from the Google Cloud connection is used. :param location: The location of the Dataflow job (for example europe-west1). See: https://cloud.google.com/dataflow/docs/concepts/regional-endpoints :param gcp_conn_id: The connection ID to use connecting to Google Cloud. :param impersonation_chain: Optional service account to impersonate using short-term credentials, or chained list of accounts required to get the access_token of the last account in the list, which will be impersonated in the request. If set as a string, the account must grant the originating account the Service Account Token Creator IAM role. If set as a sequence, the identities from the list must grant Service Account Token Creator IAM role to the directly preceding identity, with first account from the list granting this role to the originating account (templated). :param deferrable: If True, run the sensor in the deferrable mode. :param poll_interval: Time (seconds) to wait between two consecutive calls to check the job. """
[docs] template_fields: Sequence[str] = ("job_id",)
def __init__( self, *, job_id: str, callback: Callable | None = None, fail_on_terminal_state: bool = True, project_id: str = PROVIDE_PROJECT_ID, location: str = DEFAULT_DATAFLOW_LOCATION, gcp_conn_id: str = "google_cloud_default", impersonation_chain: str | Sequence[str] | None = None, deferrable: bool = conf.getboolean("operators", "default_deferrable", fallback=False), poll_interval: int = 10, **kwargs, ) -> None: super().__init__(**kwargs) self.job_id = job_id self.project_id = project_id self.callback = callback self.fail_on_terminal_state = fail_on_terminal_state self.location = location self.gcp_conn_id = gcp_conn_id self.impersonation_chain = impersonation_chain self.deferrable = deferrable self.poll_interval = poll_interval
[docs] def poke(self, context: Context) -> bool: if self.fail_on_terminal_state: job = self.hook.get_job( job_id=self.job_id, project_id=self.project_id, location=self.location, ) job_status = job["currentState"] if job_status in DataflowJobStatus.TERMINAL_STATES: # TODO: remove this if check when min_airflow_version is set to higher than 2.7.1 message = f"Job with id '{self.job_id}' is already in terminal state: {job_status}" if self.soft_fail: raise AirflowSkipException(message) raise AirflowException(message) result = self.hook.fetch_job_metrics_by_id( job_id=self.job_id, project_id=self.project_id, location=self.location, ) return result["metrics"] if self.callback is None else self.callback(result["metrics"])
[docs] def execute(self, context: Context) -> Any: """Airflow runs this method on the worker and defers using the trigger.""" if not self.deferrable: super().execute(context) else: self.defer( timeout=self.execution_timeout, trigger=DataflowJobMetricsTrigger( job_id=self.job_id, project_id=self.project_id, location=self.location, gcp_conn_id=self.gcp_conn_id, poll_sleep=self.poll_interval, impersonation_chain=self.impersonation_chain, fail_on_terminal_state=self.fail_on_terminal_state, ), method_name="execute_complete", )
[docs] def execute_complete(self, context: Context, event: dict[str, str | list]) -> Any: """ Execute this method when the task resumes its execution on the worker after deferral. If the trigger returns an event with success status - passes the event result to the callback function. Returns the event result if no callback function is provided. If the trigger returns an event with error status - raises an exception. """ if event["status"] == "success": self.log.info(event["message"]) return event["result"] if self.callback is None else self.callback(event["result"]) # TODO: remove this if check when min_airflow_version is set to higher than 2.7.1 if self.soft_fail: raise AirflowSkipException(f"Sensor failed with the following message: {event['message']}.") raise AirflowException(f"Sensor failed with the following message: {event['message']}")
@cached_property
[docs] def hook(self) -> DataflowHook: return DataflowHook( gcp_conn_id=self.gcp_conn_id, impersonation_chain=self.impersonation_chain, )
[docs]class DataflowJobMessagesSensor(BaseSensorOperator): """ Checks for job messages associated with a single job in Google Cloud Dataflow. .. seealso:: For more information on how to use this operator, take a look at the guide: :ref:`howto/operator:DataflowJobMessagesSensor` :param job_id: ID of the Dataflow job to be checked. :param callback: a function that can accept a list of serialized job messages. It can do whatever you want it to do. If the callback function is not provided, then on successful completion the task will exit with True value. For more info about the job message content see: https://cloud.google.com/python/docs/reference/dataflow/latest/google.cloud.dataflow_v1beta3.types.JobMessage :param fail_on_terminal_state: If set to True the sensor will raise an exception when the job reaches a terminal state. No job messages will be returned. :param project_id: Optional, the Google Cloud project ID in which to start a job. If set to None or missing, the default project_id from the Google Cloud connection is used. :param location: The location of the Dataflow job (for example europe-west1). If set to None then the value of DEFAULT_DATAFLOW_LOCATION will be used. See: https://cloud.google.com/dataflow/docs/concepts/regional-endpoints :param gcp_conn_id: The connection ID to use connecting to Google Cloud. :param impersonation_chain: Optional service account to impersonate using short-term credentials, or chained list of accounts required to get the access_token of the last account in the list, which will be impersonated in the request. If set as a string, the account must grant the originating account the Service Account Token Creator IAM role. If set as a sequence, the identities from the list must grant Service Account Token Creator IAM role to the directly preceding identity, with first account from the list granting this role to the originating account (templated). :param deferrable: If True, run the sensor in the deferrable mode. :param poll_interval: Time (seconds) to wait between two consecutive calls to check the job. """
[docs] template_fields: Sequence[str] = ("job_id",)
def __init__( self, *, job_id: str, callback: Callable | None = None, fail_on_terminal_state: bool = True, project_id: str = PROVIDE_PROJECT_ID, location: str = DEFAULT_DATAFLOW_LOCATION, gcp_conn_id: str = "google_cloud_default", impersonation_chain: str | Sequence[str] | None = None, deferrable: bool = conf.getboolean("operators", "default_deferrable", fallback=False), poll_interval: int = 10, **kwargs, ) -> None: super().__init__(**kwargs) self.job_id = job_id self.project_id = project_id self.callback = callback self.fail_on_terminal_state = fail_on_terminal_state self.location = location self.gcp_conn_id = gcp_conn_id self.impersonation_chain = impersonation_chain self.deferrable = deferrable self.poll_interval = poll_interval
[docs] def poke(self, context: Context) -> bool: if self.fail_on_terminal_state: job = self.hook.get_job( job_id=self.job_id, project_id=self.project_id, location=self.location, ) job_status = job["currentState"] if job_status in DataflowJobStatus.TERMINAL_STATES: # TODO: remove this if check when min_airflow_version is set to higher than 2.7.1 message = f"Job with id '{self.job_id}' is already in terminal state: {job_status}" if self.soft_fail: raise AirflowSkipException(message) raise AirflowException(message) result = self.hook.fetch_job_messages_by_id( job_id=self.job_id, project_id=self.project_id, location=self.location, ) return result if self.callback is None else self.callback(result)
[docs] def execute(self, context: Context) -> Any: """Airflow runs this method on the worker and defers using the trigger.""" if not self.deferrable: super().execute(context) else: self.defer( timeout=self.execution_timeout, trigger=DataflowJobMessagesTrigger( job_id=self.job_id, project_id=self.project_id, location=self.location, gcp_conn_id=self.gcp_conn_id, poll_sleep=self.poll_interval, impersonation_chain=self.impersonation_chain, fail_on_terminal_state=self.fail_on_terminal_state, ), method_name="execute_complete", )
[docs] def execute_complete(self, context: Context, event: dict[str, str | list]) -> Any: """ Execute this method when the task resumes its execution on the worker after deferral. If the trigger returns an event with success status - passes the event result to the callback function. Returns the event result if no callback function is provided. If the trigger returns an event with error status - raises an exception. """ if event["status"] == "success": self.log.info(event["message"]) return event["result"] if self.callback is None else self.callback(event["result"]) # TODO: remove this if check when min_airflow_version is set to higher than 2.7.1 if self.soft_fail: raise AirflowSkipException(f"Sensor failed with the following message: {event['message']}.") raise AirflowException(f"Sensor failed with the following message: {event['message']}")
@cached_property
[docs] def hook(self) -> DataflowHook: return DataflowHook( gcp_conn_id=self.gcp_conn_id, impersonation_chain=self.impersonation_chain, )
[docs]class DataflowJobAutoScalingEventsSensor(BaseSensorOperator): """ Checks for autoscaling events associated with a single job in Google Cloud Dataflow. .. seealso:: For more information on how to use this operator, take a look at the guide: :ref:`howto/operator:DataflowJobAutoScalingEventsSensor` :param job_id: ID of the Dataflow job to be checked. :param callback: a function that can accept a list of serialized autoscaling events. It can do whatever you want it to do. If the callback function is not provided, then on successful completion the task will exit with True value. For more info about the autoscaling event content see: https://cloud.google.com/python/docs/reference/dataflow/latest/google.cloud.dataflow_v1beta3.types.AutoscalingEvent :param fail_on_terminal_state: If set to True the sensor will raise an exception when the job reaches a terminal state. No autoscaling events will be returned. :param project_id: Optional, the Google Cloud project ID in which to start a job. If set to None or missing, the default project_id from the Google Cloud connection is used. :param location: The location of the Dataflow job (for example europe-west1). If set to None then the value of DEFAULT_DATAFLOW_LOCATION will be used. See: https://cloud.google.com/dataflow/docs/concepts/regional-endpoints :param gcp_conn_id: The connection ID to use connecting to Google Cloud. :param impersonation_chain: Optional service account to impersonate using short-term credentials, or chained list of accounts required to get the access_token of the last account in the list, which will be impersonated in the request. If set as a string, the account must grant the originating account the Service Account Token Creator IAM role. If set as a sequence, the identities from the list must grant Service Account Token Creator IAM role to the directly preceding identity, with first account from the list granting this role to the originating account (templated). :param deferrable: If True, run the sensor in the deferrable mode. :param poll_interval: Time (seconds) to wait between two consecutive calls to check the job. """
[docs] template_fields: Sequence[str] = ("job_id",)
def __init__( self, *, job_id: str, callback: Callable | None = None, fail_on_terminal_state: bool = True, project_id: str = PROVIDE_PROJECT_ID, location: str = DEFAULT_DATAFLOW_LOCATION, gcp_conn_id: str = "google_cloud_default", impersonation_chain: str | Sequence[str] | None = None, deferrable: bool = conf.getboolean("operators", "default_deferrable", fallback=False), poll_interval: int = 60, **kwargs, ) -> None: super().__init__(**kwargs) self.job_id = job_id self.project_id = project_id self.callback = callback self.fail_on_terminal_state = fail_on_terminal_state self.location = location self.gcp_conn_id = gcp_conn_id self.impersonation_chain = impersonation_chain self.deferrable = deferrable self.poll_interval = poll_interval
[docs] def poke(self, context: Context) -> bool: if self.fail_on_terminal_state: job = self.hook.get_job( job_id=self.job_id, project_id=self.project_id, location=self.location, ) job_status = job["currentState"] if job_status in DataflowJobStatus.TERMINAL_STATES: # TODO: remove this if check when min_airflow_version is set to higher than 2.7.1 message = f"Job with id '{self.job_id}' is already in terminal state: {job_status}" if self.soft_fail: raise AirflowSkipException(message) raise AirflowException(message) result = self.hook.fetch_job_autoscaling_events_by_id( job_id=self.job_id, project_id=self.project_id, location=self.location, ) return result if self.callback is None else self.callback(result)
[docs] def execute(self, context: Context) -> Any: """Airflow runs this method on the worker and defers using the trigger.""" if not self.deferrable: super().execute(context) else: self.defer( trigger=DataflowJobAutoScalingEventTrigger( job_id=self.job_id, project_id=self.project_id, location=self.location, gcp_conn_id=self.gcp_conn_id, poll_sleep=self.poll_interval, impersonation_chain=self.impersonation_chain, fail_on_terminal_state=self.fail_on_terminal_state, ), method_name="execute_complete", )
[docs] def execute_complete(self, context: Context, event: dict[str, str | list]) -> Any: """ Execute this method when the task resumes its execution on the worker after deferral. If the trigger returns an event with success status - passes the event result to the callback function. Returns the event result if no callback function is provided. If the trigger returns an event with error status - raises an exception. """ if event["status"] == "success": self.log.info(event["message"]) return event["result"] if self.callback is None else self.callback(event["result"]) # TODO: remove this if check when min_airflow_version is set to higher than 2.7.1 if self.soft_fail: raise AirflowSkipException(f"Sensor failed with the following message: {event['message']}.") raise AirflowException(f"Sensor failed with the following message: {event['message']}")
@cached_property
[docs] def hook(self) -> DataflowHook: return DataflowHook( gcp_conn_id=self.gcp_conn_id, impersonation_chain=self.impersonation_chain, )

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