Source code for airflow.operators.trigger_dagrun

# Licensed to the Apache Software Foundation (ASF) under one
# or more contributor license agreements.  See the NOTICE file
# distributed with this work for additional information
# regarding copyright ownership.  The ASF licenses this file
# to you under the Apache License, Version 2.0 (the
# "License"); you may not use this file except in compliance
# with the License.  You may obtain a copy of the License at
# Unless required by applicable law or agreed to in writing,
# software distributed under the License is distributed on an
# KIND, either express or implied.  See the License for the
# specific language governing permissions and limitations
# under the License.
from __future__ import annotations

import datetime
import json
import time
from typing import TYPE_CHECKING, Sequence, cast

from airflow.api.common.trigger_dag import trigger_dag
from airflow.exceptions import AirflowException, DagNotFound, DagRunAlreadyExists
from airflow.models.baseoperator import BaseOperator, BaseOperatorLink
from airflow.models.dag import DagModel
from airflow.models.dagbag import DagBag
from airflow.models.dagrun import DagRun
from airflow.models.xcom import XCom
from airflow.utils import timezone
from airflow.utils.context import Context
from airflow.utils.helpers import build_airflow_url_with_query
from airflow.utils.state import State
from airflow.utils.types import DagRunType

[docs]XCOM_EXECUTION_DATE_ISO = "trigger_execution_date_iso"
[docs]XCOM_RUN_ID = "trigger_run_id"
if TYPE_CHECKING: from airflow.models.taskinstance import TaskInstanceKey
[docs]class TriggerDagRunOperator(BaseOperator): """ Triggers a DAG run for a specified ``dag_id`` :param trigger_dag_id: The dag_id to trigger (templated). :param trigger_run_id: The run ID to use for the triggered DAG run (templated). If not provided, a run ID will be automatically generated. :param conf: Configuration for the DAG run (templated). :param execution_date: Execution date for the dag (templated). :param reset_dag_run: Whether or not clear existing dag run if already exists. This is useful when backfill or rerun an existing dag run. When reset_dag_run=False and dag run exists, DagRunAlreadyExists will be raised. When reset_dag_run=True and dag run exists, existing dag run will be cleared to rerun. :param wait_for_completion: Whether or not wait for dag run completion. (default: False) :param poke_interval: Poke interval to check dag run status when wait_for_completion=True. (default: 60) :param allowed_states: List of allowed states, default is ``['success']``. :param failed_states: List of failed or dis-allowed states, default is ``None``. """
[docs] template_fields: Sequence[str] = ("trigger_dag_id", "trigger_run_id", "execution_date", "conf")
[docs] template_fields_renderers = {"conf": "py"}
[docs] ui_color = "#ffefeb"
def __init__( self, *, trigger_dag_id: str, trigger_run_id: str | None = None, conf: dict | None = None, execution_date: str | datetime.datetime | None = None, reset_dag_run: bool = False, wait_for_completion: bool = False, poke_interval: int = 60, allowed_states: list | None = None, failed_states: list | None = None, **kwargs, ) -> None: super().__init__(**kwargs) self.trigger_dag_id = trigger_dag_id self.trigger_run_id = trigger_run_id self.conf = conf self.reset_dag_run = reset_dag_run self.wait_for_completion = wait_for_completion self.poke_interval = poke_interval self.allowed_states = allowed_states or [State.SUCCESS] self.failed_states = failed_states or [State.FAILED] if execution_date is not None and not isinstance(execution_date, (str, datetime.datetime)): raise TypeError( f"Expected str or datetime.datetime type for execution_date.Got {type(execution_date)}" ) self.execution_date = execution_date try: json.dumps(self.conf) except TypeError: raise AirflowException("conf parameter should be JSON Serializable")
[docs] def execute(self, context: Context): if isinstance(self.execution_date, datetime.datetime): parsed_execution_date = self.execution_date elif isinstance(self.execution_date, str): parsed_execution_date = timezone.parse(self.execution_date) else: parsed_execution_date = timezone.utcnow() if self.trigger_run_id: run_id = self.trigger_run_id else: run_id = DagRun.generate_run_id(DagRunType.MANUAL, parsed_execution_date) try: dag_run = trigger_dag( dag_id=self.trigger_dag_id, run_id=run_id, conf=self.conf, execution_date=parsed_execution_date, replace_microseconds=False, ) except DagRunAlreadyExists as e: if self.reset_dag_run:"Clearing %s on %s", self.trigger_dag_id, parsed_execution_date) # Get target dag object and call clear() dag_model = DagModel.get_current(self.trigger_dag_id) if dag_model is None: raise DagNotFound(f"Dag id {self.trigger_dag_id} not found in DagModel") dag_bag = DagBag(dag_folder=dag_model.fileloc, read_dags_from_db=True) dag = dag_bag.get_dag(self.trigger_dag_id) dag.clear(start_date=parsed_execution_date, end_date=parsed_execution_date) dag_run = DagRun.find(dag_id=dag.dag_id, run_id=run_id)[0] else: raise e if dag_run is None: raise RuntimeError("The dag_run should be set here!") # Store the execution date from the dag run (either created or found above) to # be used when creating the extra link on the webserver. ti = context['task_instance'] ti.xcom_push(key=XCOM_EXECUTION_DATE_ISO, value=dag_run.execution_date.isoformat()) ti.xcom_push(key=XCOM_RUN_ID, value=dag_run.run_id) if self.wait_for_completion: # wait for dag to complete while True: 'Waiting for %s on %s to become allowed state %s ...', self.trigger_dag_id, dag_run.execution_date, self.allowed_states, ) time.sleep(self.poke_interval) dag_run.refresh_from_db() state = dag_run.state if state in self.failed_states: raise AirflowException(f"{self.trigger_dag_id} failed with failed states {state}") if state in self.allowed_states:"%s finished with allowed state %s", self.trigger_dag_id, state) return

Was this entry helpful?