I want the all the tasks in the DAG to all finish before the 1st task of the next run gets executed.

I have max_active_runs = 1, but this still happens.

default_args = {
'depends_on_past': True,
'wait_for_downstream': True,
'max_active_runs': 1,
'start_date': datetime(2018, 03, 04),
'owner': 'tin.nguyen',
'email': ['tin.nguyen@example.com'],
'email_on_failure': True,
'email_on_retry': False,
'retries': 3,
'retry_delay': timedelta(minutes=4)

dag = DAG('example', default_args=default_args, schedule_interval = schedule_interval)

(All of my tasks are dependent on the previous task. Airflow version is 1.8.0)

Thank you


I changed to put max_active_runs as an argument of DAG() instead of in default_arguments, and it worked.

Thanks SimonD for giving me the idea, though not directly pointing to it in your answer.

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  • 1
    Updated my answer. – SimonD May 14 at 9:38

max_active_runs is a constructor argument for a DAG and shouldn't be put into the default_args dictionary. You've put the 'max_active_runs': 1 into the default_args parameter and not into the correct spot.

Here is an example DAG:

dag_args = { 
    'owner': 'Owner',
    # 'max_active_runs': 1, #<--- Here is where you had it.
    'depends_on_past': False,
    'start_date': datetime(2018, 01, 1, 12, 00),
    'email_on_failure': False

sched = timedelta(hours=1)
dag = DAG(job_id, 
          max_active_runs=1 # <---- Here is where it is supposed to be

If the tasks that your dag is running are actually sub-dags then you may need to pass max_active_runs into the subdags too but not 100% sure on this.

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  • 1
    I passed max_active_runs as a default argument instead. Wonder if it's the problem. Will try passing it in the DAG function and see if it works. – Nguyễn Trọng Tín Mar 14 '18 at 16:32

Actually you should use DAG_CONCURRENCY=1 as environment var. Worked for me.

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  • DAG_CONCURRENCY specifies how many tasks instances will run at the same time within a DAG and not how many instances of your DAG will run from what I understand. – SimonD May 14 at 9:45

You can use xcoms to do it. First take 2 python operators as 'start' and 'end' to the DAG. Set the flow as:

start ---> ALL TASKS ----> end

'end' will always push a variable

last_success = context['execution_date'] to xcom (xcom_push). (Requires provide_context = True in the PythonOperators).

And 'start' will always check xcom (xcom_pull) to see whether there exists a last_success variable with value equal to the previous DagRun's execution_date or to the DAG's start_date (to let the process start).

Followed this answer

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