Source code for airflow.sensors.base

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import datetime
import functools
import hashlib
import time
import warnings
from datetime import timedelta
from typing import Any, Callable, Iterable, Optional, Union

from airflow import settings
from airflow.configuration import conf
from airflow.exceptions import (
    AirflowException,
    AirflowRescheduleException,
    AirflowSensorTimeout,
    AirflowSkipException,
)
from airflow.models.baseoperator import BaseOperator
from airflow.models.sensorinstance import SensorInstance
from airflow.models.skipmixin import SkipMixin
from airflow.models.taskreschedule import TaskReschedule
from airflow.ti_deps.deps.ready_to_reschedule import ReadyToRescheduleDep
from airflow.utils import timezone
from airflow.utils.context import Context

# We need to keep the import here because GCSToLocalFilesystemOperator released in
# Google Provider before 3.0.0 imported apply_defaults from here.
# See  https://github.com/apache/airflow/issues/16035
from airflow.utils.decorators import apply_defaults  # noqa: F401
from airflow.utils.docs import get_docs_url

# As documented in https://dev.mysql.com/doc/refman/5.7/en/datetime.html.
_MYSQL_TIMESTAMP_MAX = datetime.datetime(2038, 1, 19, 3, 14, 7, tzinfo=timezone.utc)


@functools.lru_cache(maxsize=None)
def _is_metadatabase_mysql() -> bool:
    if settings.engine is None:
        raise AirflowException("Must initialize ORM first")
    return settings.engine.url.get_backend_name() == "mysql"


[docs]class PokeReturnValue: """ Sensors can optionally return an instance of the PokeReturnValue class in the poke method. If an XCom value is supplied when the sensor is done, then the XCom value will be pushed through the operator return value. :param is_done: Set to true to indicate the sensor can stop poking. :param xcom_value: An optional XCOM value to be returned by the operator. """ def __init__(self, is_done: bool, xcom_value: Optional[Any] = None) -> None: self.xcom_value = xcom_value self.is_done = is_done
[docs] def __bool__(self) -> bool: return self.is_done
[docs]class BaseSensorOperator(BaseOperator, SkipMixin): """ Sensor operators are derived from this class and inherit these attributes. Sensor operators keep executing at a time interval and succeed when a criteria is met and fail if and when they time out. :param soft_fail: Set to true to mark the task as SKIPPED on failure :param poke_interval: Time in seconds that the job should wait in between each tries :param timeout: Time, in seconds before the task times out and fails. :param mode: How the sensor operates. Options are: ``{ poke | reschedule }``, default is ``poke``. When set to ``poke`` the sensor is taking up a worker slot for its whole execution time and sleeps between pokes. Use this mode if the expected runtime of the sensor is short or if a short poke interval is required. Note that the sensor will hold onto a worker slot and a pool slot for the duration of the sensor's runtime in this mode. When set to ``reschedule`` the sensor task frees the worker slot when the criteria is not yet met and it's rescheduled at a later time. Use this mode if the time before the criteria is met is expected to be quite long. The poke interval should be more than one minute to prevent too much load on the scheduler. :param exponential_backoff: allow progressive longer waits between pokes by using exponential backoff algorithm """
[docs] ui_color = '#e6f1f2' # type: str
[docs] valid_modes = ['poke', 'reschedule'] # type: Iterable[str]
# As the poke context in smart sensor defines the poking job signature only, # The execution_fields defines other execution details # for this tasks such as the customer defined timeout, the email and the alert # setup. Smart sensor serialize these attributes into a different DB column so # that smart sensor service is able to handle corresponding execution details # without breaking the sensor poking logic with dedup.
[docs] execution_fields = ( 'poke_interval', 'retries', 'execution_timeout', 'timeout', 'email', 'email_on_retry', 'email_on_failure',
) # Adds one additional dependency for all sensor operators that checks if a # sensor task instance can be rescheduled.
[docs] deps = BaseOperator.deps | {ReadyToRescheduleDep()}
def __init__( self, *, poke_interval: float = 60, timeout: float = conf.getfloat('sensors', 'default_timeout'), soft_fail: bool = False, mode: str = 'poke', exponential_backoff: bool = False, **kwargs, ) -> None: super().__init__(**kwargs) self.poke_interval = poke_interval self.soft_fail = soft_fail self.timeout = timeout self.mode = mode self.exponential_backoff = exponential_backoff self._validate_input_values() self.sensor_service_enabled = conf.getboolean('smart_sensor', 'use_smart_sensor') self.sensors_support_sensor_service = set( map(lambda l: l.strip(), conf.get('smart_sensor', 'sensors_enabled').split(',')) ) def _validate_input_values(self) -> None: if not isinstance(self.poke_interval, (int, float)) or self.poke_interval < 0: raise AirflowException("The poke_interval must be a non-negative number") if not isinstance(self.timeout, (int, float)) or self.timeout < 0: raise AirflowException("The timeout must be a non-negative number") if self.mode not in self.valid_modes: raise AirflowException( f"The mode must be one of {self.valid_modes},'{self.dag.dag_id if self.has_dag() else ''} " f".{self.task_id}'; received '{self.mode}'." ) # Sanity check for poke_interval isn't immediately over MySQL's TIMESTAMP limit. # This check is only rudimentary to catch trivial user errors, e.g. mistakenly # set the value to milliseconds instead of seconds. There's another check when # we actually try to reschedule to ensure database sanity. if self.reschedule and _is_metadatabase_mysql(): if timezone.utcnow() + datetime.timedelta(seconds=self.poke_interval) > _MYSQL_TIMESTAMP_MAX: raise AirflowException( f"Cannot set poke_interval to {self.poke_interval} seconds in reschedule " f"mode since it will take reschedule time over MySQL's TIMESTAMP limit." )
[docs] def poke(self, context: Context) -> Union[bool, PokeReturnValue]: """ Function that the sensors defined while deriving this class should override. """ raise AirflowException('Override me.')
[docs] def is_smart_sensor_compatible(self): check_list = [ not self.sensor_service_enabled, self.on_success_callback, self.on_retry_callback, self.on_failure_callback, ] if any(check_list): return False operator = self.__class__.__name__ return operator in self.sensors_support_sensor_service
[docs] def register_in_sensor_service(self, ti, context): """ Register ti in smart sensor service :param ti: Task instance object. :param context: TaskInstance template context from the ti. :return: boolean """ docs_url = get_docs_url('concepts/smart-sensors.html#migrating-to-deferrable-operators') warnings.warn( 'Your sensor is using Smart Sensors, which are deprecated.' f' Please use Deferrable Operators instead. See {docs_url} for more info.', DeprecationWarning, ) poke_context = self.get_poke_context(context) execution_context = self.get_execution_context(context) return SensorInstance.register(ti, poke_context, execution_context)
[docs] def get_poke_context(self, context): """ Return a dictionary with all attributes in poke_context_fields. The poke_context with operator class can be used to identify a unique sensor job. :param context: TaskInstance template context. :return: A dictionary with key in poke_context_fields. """ if not context: self.log.info("Function get_poke_context doesn't have a context input.") poke_context_fields = getattr(self.__class__, "poke_context_fields", None) result = {key: getattr(self, key, None) for key in poke_context_fields} return result
[docs] def get_execution_context(self, context): """ Return a dictionary with all attributes in execution_fields. The execution_context include execution requirement for each sensor task such as timeout setup, email_alert setup. :param context: TaskInstance template context. :return: A dictionary with key in execution_fields. """ if not context: self.log.info("Function get_execution_context doesn't have a context input.") execution_fields = self.__class__.execution_fields result = {key: getattr(self, key, None) for key in execution_fields} if result['execution_timeout'] and isinstance(result['execution_timeout'], datetime.timedelta): result['execution_timeout'] = result['execution_timeout'].total_seconds() return result
[docs] def execute(self, context: Context) -> Any: started_at: Union[datetime.datetime, float] if self.reschedule: # If reschedule, use the start date of the first try (first try can be either the very # first execution of the task, or the first execution after the task was cleared.) first_try_number = context['ti'].max_tries - self.retries + 1 task_reschedules = TaskReschedule.find_for_task_instance( context['ti'], try_number=first_try_number ) if not task_reschedules: start_date = timezone.utcnow() else: start_date = task_reschedules[0].start_date started_at = start_date def run_duration() -> float: # If we are in reschedule mode, then we have to compute diff # based on the time in a DB, so can't use time.monotonic return (timezone.utcnow() - start_date).total_seconds() else: started_at = start_monotonic = time.monotonic() def run_duration() -> float: return time.monotonic() - start_monotonic try_number = 1 log_dag_id = self.dag.dag_id if self.has_dag() else "" xcom_value = None while True: poke_return = self.poke(context) if poke_return: if isinstance(poke_return, PokeReturnValue): xcom_value = poke_return.xcom_value break if run_duration() > self.timeout: # If sensor is in soft fail mode but times out raise AirflowSkipException. if self.soft_fail: raise AirflowSkipException(f"Snap. Time is OUT. DAG id: {log_dag_id}") else: raise AirflowSensorTimeout(f"Snap. Time is OUT. DAG id: {log_dag_id}") if self.reschedule: next_poke_interval = self._get_next_poke_interval(started_at, run_duration, try_number) reschedule_date = timezone.utcnow() + timedelta(seconds=next_poke_interval) if _is_metadatabase_mysql() and reschedule_date > _MYSQL_TIMESTAMP_MAX: raise AirflowSensorTimeout( f"Cannot reschedule DAG {log_dag_id} to {reschedule_date.isoformat()} " f"since it is over MySQL's TIMESTAMP storage limit." ) raise AirflowRescheduleException(reschedule_date) else: time.sleep(self._get_next_poke_interval(started_at, run_duration, try_number)) try_number += 1 self.log.info("Success criteria met. Exiting.") return xcom_value
def _get_next_poke_interval( self, started_at: Union[datetime.datetime, float], run_duration: Callable[[], float], try_number: int, ) -> float: """Using the similar logic which is used for exponential backoff retry delay for operators.""" if not self.exponential_backoff: return self.poke_interval min_backoff = int(self.poke_interval * (2 ** (try_number - 2))) run_hash = int( hashlib.sha1(f"{self.dag_id}#{self.task_id}#{started_at}#{try_number}".encode()).hexdigest(), 16, ) modded_hash = min_backoff + run_hash % min_backoff delay_backoff_in_seconds = min(modded_hash, timedelta.max.total_seconds() - 1) new_interval = min(self.timeout - int(run_duration()), delay_backoff_in_seconds) self.log.info("new %s interval is %s", self.mode, new_interval) return new_interval
[docs] def prepare_for_execution(self) -> BaseOperator: task = super().prepare_for_execution() # Sensors in `poke` mode can block execution of DAGs when running # with single process executor, thus we change the mode to`reschedule` # to allow parallel task being scheduled and executed if conf.get('core', 'executor') == "DebugExecutor": self.log.warning("DebugExecutor changes sensor mode to 'reschedule'.") task.mode = 'reschedule' return task
@property
[docs] def reschedule(self): """Define mode rescheduled sensors.""" return self.mode == 'reschedule'
[docs]def poke_mode_only(cls): """ Class Decorator for child classes of BaseSensorOperator to indicate that instances of this class are only safe to use poke mode. Will decorate all methods in the class to assert they did not change the mode from 'poke'. :param cls: BaseSensor class to enforce methods only use 'poke' mode. """ def decorate(cls_type): def mode_getter(_): return 'poke' def mode_setter(_, value): if value != 'poke': raise ValueError("cannot set mode to 'poke'.") if not issubclass(cls_type, BaseSensorOperator): raise ValueError( f"poke_mode_only decorator should only be " f"applied to subclasses of BaseSensorOperator," f" got:{cls_type}." ) cls_type.mode = property(mode_getter, mode_setter) return cls_type return decorate(cls)

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