Source code for airflow.example_dags.tutorial

#
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# to you under the Apache License, Version 2.0 (the
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"""
### Tutorial Documentation
Documentation that goes along with the Airflow tutorial located
[here](https://airflow.apache.org/tutorial.html)
"""
from __future__ import annotations

# [START tutorial]
# [START import_module]
import textwrap
from datetime import datetime, timedelta

# The DAG object; we'll need this to instantiate a DAG
from airflow.models.dag import DAG

# Operators; we need this to operate!
from airflow.operators.bash import BashOperator

# [END import_module]


# [START instantiate_dag]
with DAG(
    "tutorial",
    # [START default_args]
    # These args will get passed on to each operator
    # You can override them on a per-task basis during operator initialization
    default_args={
        "depends_on_past": False,
        "email": ["airflow@example.com"],
        "email_on_failure": False,
        "email_on_retry": False,
        "retries": 1,
        "retry_delay": timedelta(minutes=5),
        # 'queue': 'bash_queue',
        # 'pool': 'backfill',
        # 'priority_weight': 10,
        # 'end_date': datetime(2016, 1, 1),
        # 'wait_for_downstream': False,
        # 'sla': timedelta(hours=2),
        # 'execution_timeout': timedelta(seconds=300),
        # 'on_failure_callback': some_function, # or list of functions
        # 'on_success_callback': some_other_function, # or list of functions
        # 'on_retry_callback': another_function, # or list of functions
        # 'sla_miss_callback': yet_another_function, # or list of functions
        # 'trigger_rule': 'all_success'
    },
    # [END default_args]
    description="A simple tutorial DAG",
    schedule=timedelta(days=1),
    start_date=datetime(2021, 1, 1),
    catchup=False,
    tags=["example"],
) as dag:
    # [END instantiate_dag]

    # t1, t2 and t3 are examples of tasks created by instantiating operators
    # [START basic_task]
[docs] t1 = BashOperator( task_id="print_date", bash_command="date", )
t2 = BashOperator( task_id="sleep", depends_on_past=False, bash_command="sleep 5", retries=3, ) # [END basic_task] # [START documentation] t1.doc_md = textwrap.dedent( """\ #### Task Documentation You can document your task using the attributes `doc_md` (markdown), `doc` (plain text), `doc_rst`, `doc_json`, `doc_yaml` which gets rendered in the UI's Task Instance Details page. ![img](http://montcs.bloomu.edu/~bobmon/Semesters/2012-01/491/import%20soul.png) **Image Credit:** Randall Munroe, [XKCD](https://xkcd.com/license.html) """ ) dag.doc_md = __doc__ # providing that you have a docstring at the beginning of the DAG; OR dag.doc_md = """ This is a documentation placed anywhere """ # otherwise, type it like this # [END documentation] # [START jinja_template] templated_command = textwrap.dedent( """ {% for i in range(5) %} echo "{{ ds }}" echo "{{ macros.ds_add(ds, 7)}}" {% endfor %} """ ) t3 = BashOperator( task_id="templated", depends_on_past=False, bash_command=templated_command, ) # [END jinja_template] t1 >> [t2, t3] # [END tutorial]

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