36

I would like to create a conditional task in Airflow as described in the schema below. The expected scenario is the following:

  • Task 1 executes
  • If Task 1 succeed, then execute Task 2a
  • Else If Task 1 fails, then execute Task 2b
  • Finally execute Task 3

Conditional Task All tasks above are SSHExecuteOperator. I'm guessing I should be using the ShortCircuitOperator and / or XCom to manage the condition but I am not clear on how to implement that. Could you please describe the solution?

33

You have to use airflow trigger rules

All operators have a trigger_rule argument which defines the rule by which the generated task get triggered.

The trigger rule possibilities:

ALL_SUCCESS = 'all_success'
ALL_FAILED = 'all_failed'
ALL_DONE = 'all_done'
ONE_SUCCESS = 'one_success'
ONE_FAILED = 'one_failed'
DUMMY = 'dummy'

Here is the idea to solve your problem:

from airflow.operators.ssh_execute_operator import SSHExecuteOperator
from airflow.utils.trigger_rule import TriggerRule
from airflow.contrib.hooks import SSHHook

sshHook = SSHHook(conn_id=<YOUR CONNECTION ID FROM THE UI>)

task_1 = SSHExecuteOperator(
        task_id='task_1',
        bash_command=<YOUR COMMAND>,
        ssh_hook=sshHook,
        dag=dag)

task_2 = SSHExecuteOperator(
        task_id='conditional_task',
        bash_command=<YOUR COMMAND>,
        ssh_hook=sshHook,
        dag=dag)

task_2a = SSHExecuteOperator(
        task_id='task_2a',
        bash_command=<YOUR COMMAND>,
        trigger_rule=TriggerRule.ALL_SUCCESS,
        ssh_hook=sshHook,
        dag=dag)

task_2b = SSHExecuteOperator(
        task_id='task_2b',
        bash_command=<YOUR COMMAND>,
        trigger_rule=TriggerRule.ALL_FAILED,
        ssh_hook=sshHook,
        dag=dag)

task_3 = SSHExecuteOperator(
        task_id='task_3',
        bash_command=<YOUR COMMAND>,
        trigger_rule=TriggerRule.ONE_SUCCESS,
        ssh_hook=sshHook,
        dag=dag)


task_2.set_upstream(task_1)
task_2a.set_upstream(task_2)
task_2b.set_upstream(task_2)
task_3.set_upstream(task_2a)
task_3.set_upstream(task_2b)
  • Thank you @Jean S your solution works like a charm. I have one more question. In a scenario where Task2a is executed and Task2b is skipped, I noticed Task3 is executed in the same time as Task2a, while I would like to execute it after. Would you have a trick for this other than duplicating Task3 in 2 branches (like Task3a and Task3b). Thanks again. – Alexis.Rolland May 12 '17 at 3:13
  • 2
    Hi! did you try to change : trigger_rule=TriggerRule.ONE_SUCCESS by trigger_rule=TriggerRule.ALL_DONE in TASK 3 ? Are you sure that your tasks are executed at the same time ? (try to put a sleep function in T2A to sanity check) – Jean S May 15 '17 at 13:45
  • 1
    From Airflow's documentation here link I confirm that "one_success: fires as soon as at least one parent succeeds, it does not wait for all parents to be done"... I will try with ALL_DONE! Thank you – Alexis.Rolland May 15 '17 at 17:59
  • Is anyone else trying something like this, but getting a deprecation error? – Reid Aug 11 '17 at 20:51
  • 2
    Failure seems a bit too broad. A task could fail for all sorts of reasons ( network or DNS issues for example) and then trigger the wrong downstream task. Is there a way to define two or more different types of success with two different downstream options? e.g. file exists do a, file doesn't exist do b? File sensor doesn't seem to be the right answer, because after all the retries, failure could be for other reasons. – Davos Oct 8 '17 at 15:26
41

Airflow has a BranchPythonOperator that can be used to express the branching dependency more directly.

The docs describe its use:

The BranchPythonOperator is much like the PythonOperator except that it expects a python_callable that returns a task_id. The task_id returned is followed, and all of the other paths are skipped. The task_id returned by the Python function has to be referencing a task directly downstream from the BranchPythonOperator task.

...

If you want to skip some tasks, keep in mind that you can’t have an empty path, if so make a dummy task.

Code Example

def dummy_test():
    return 'branch_a'

A_task = DummyOperator(task_id='branch_a', dag=dag)
B_task = DummyOperator(task_id='branch_false', dag=dag)

branch_task = BranchPythonOperator(
    task_id='branching',
    python_callable=dummy_test,
    dag=dag,
)

branch_task >> A_task 
branch_task >> B_task

EDIT:

If you're installing an Airflow version >=1.10.3, you can also return a list of task ids, allowing you to skip multiple downstream paths in a single Operator and don't use a dummy task before joining.

  • do you have more details about "return a list of task ids, allowing you to skip multiple downstream paths in a single Operator:" – mr4kino Mar 8 at 13:45
  • 1
    @mr4kino Oops looks like it was postponed until 1.10.3, I was too early on that comment ;-) Will update the answer, thanks. – villasv Mar 8 at 14:07
  • cheers mate! I will look into those links. – mr4kino Mar 11 at 9:47

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.