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I am new to Apache Airflow and I would like to write a DAG to move some data from a set of tables in a source database to a set of tables in a target database. I am attempting to engineer the DAG such that someone can simply write the create table and insert into SQL scripts for a new source table --> target table process and drop them into folders. Then, on the next DAG run, the DAG would pick up the scripts from the folders and run the new tasks. I set up my DAG like:

source_data_check_task_1 (Check Operator or ValueCheckOperator)
source_data_check_task_2 (Check Operator or ValueCheckOperator, Trigger on ALL_SUCCESS)
source_data_check_task_3 (Check Operator or ValueCheckOperator, Trigger on ALL_SUCCESS)

source_data_check_task_1 >> source_data_check_task_2 >> source_data_check_task_3

for tbl_name in tbl_name_list:
    tbl_exists_check (Check Operator, trigger on ALL_SUCCESS): check if `new_tbl` exists in database by querying `information_schema`
        tbl_create_task (SQL Operator, trigger on ALL_FAILED): run the `create table` SQL script
    tbl_insert_task (SQL Operator ,trigger on ONE_SUCCESS): run the `insert into` SQL script

    source_data_check_task_3 >> tbl_exists_check
    tbl_exists_check >> tbl_create_task
    tbl_exists_check >> tbl_insert_task
    tbl_create_task >> tbl_insert)task

I am running into two problems with this setup: (1) If any data quality check task fails, the tbl_create_task still kicks off because it triggers on ALL_FAILED and (2) No matter which tasks fail, the DAG shows that the run was a SUCCESS. This is fine if the tbl_exists_check fails, because it's supposed to fail at least once, but not ideal if some critical task fails (like any data quality check tasks).

Is there a way to set up my DAG differently to address these problems?

Actual code below:

from airflow import DAG
from airflow.operators.postgres_operator import PostgresOperator
from airflow.operators.check_operator import ValueCheckOperator, CheckOperator
from airflow.operators.bash_operator import BashOperator
from airflow.models import Variable
from datetime import datetime, timedelta
from airflow.utils.trigger_rule import TriggerRule

sql_path = Variable.get('sql_path')

default_args = {
    'owner': 'enmyj',
    'depends_on_past':True,
    'email_on_failure': False,
    'email_on_retry': False,
    'retries': 0
}

dag = DAG(
    'test', 
    default_args=default_args, 
    schedule_interval=None,
    template_searchpath=sql_path
)

# check number of weeks in bill pay (made up example)
check_one = CheckOperator(
    task_id='check_one',
    conn_id='conn_name',
    sql="""select count(distinct field) from dbo.table having count(distinct field) >= 4 """,
    dag=dag
)

check_two = CheckOperator(
    task_id='check_two',
    conn_id='conn_name',
    sql="""select count(distinct field) from dbo.table having count(distinct field) <= 100""",
    dag=dag
)

check_one >> check_two

ls = ['foo','bar','baz','quz','apple']
for tbl_name in ls:
    exists = CheckOperator(
        task_id='tbl_exists_{}'.format(tbl_name),
        conn_id='conn_name',
        sql =""" select count(*) from information_schema.tables where table_schema = 'test' and table_name = '{}' """.format(tbl_name),
        trigger_rule=TriggerRule.ALL_SUCCESS,
        depends_on_past=True,
        dag = dag
    )

    create = PostgresOperator(
        task_id='tbl_create_{}'.format(tbl_name),
        postgres_conn_id='conn_name',
        database='triforcedb',
        sql = 'create table test.{} (like dbo.source)'.format(tbl_name), # will be read from SQL file
        trigger_rule=TriggerRule.ONE_FAILED,
        depends_on_past=True,
        dag = dag
    )

    insert = PostgresOperator(
        task_id='tbl_insert_{}'.format(tbl_name),
        postgres_conn_id='conn_name',
        database='triforcedb',
        sql = 'insert into test.{} (select * from dbo.source limit 10)'.format(tbl_name), # will be read from SQL file
        trigger_rule=TriggerRule.ONE_SUCCESS,
        depends_on_past=True,
        dag = dag
    )

    check_two >> exists
    exists >> create
    create >> insert
    exists >> insert
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  • How about changing the trigger rule to ALL_SUCCESS then if the upstream task fails then it will not kick off. Also if something goes wrong logically then you have to raise the AirflowException in order to tell Airflow to mark the task as failed.
    – mad_
    Commented Aug 6, 2018 at 13:56

2 Answers 2

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You have a perfect use case for leveraging the BranchPythonOperator which will allow you to perform a check to see if the table exist and then either proceed with creating the table before inserting to that table without having to worry about TRIGGER_RULES and make your DAG logic much more clear from the UI.

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  • Thank you very much for the suggestion. I implemented the BranchPythonOperator in place of exists above, so now it looks like: tbl_exists >> create >> insert and tbl_exists >> dummy >> insert. However, I had to use trigger rule ONE_SUCCESS on insert to make the process work properly. The problem with this setup is that if check_two fails, tbl_exists, create, and dummy are listed as upstream_failed, but insert is listed as skipped which causes the DAG to register as SUCCESS instead of FAILED. Any ideas how to avoid this? I can post full, updated code if desired.
    – enmyj
    Commented Aug 7, 2018 at 16:33
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Below is the code I ended up with. This solution solves my two problems above: 1. It doesn't trigger the tbl_create task if an upstream tasks fail 2. The DAG registers as FAILED if any of the check tasks fail. I feel as though this solution is a little messy and would love suggestions for improvement or ways to make it more "Airflow"

from airflow.models import DAG
from airflow.models import Variable
from airflow.operators.postgres_operator import PostgresOperator
from airflow.operators.check_operator import ValueCheckOperator, CheckOperator
from airflow.operators.python_operator import BranchPythonOperator
from airflow.operators.dummy_operator import DummyOperator
from airflow.utils.trigger_rule import TriggerRule
from datetime import datetime, timedelta
from airflow.hooks.postgres_hook import PostgresHook

sql_path = Variable.get('sql_path')

default_args = {
    'owner': 'enmyj',
    'depends_on_past':False,
    'email_on_failure': False,
    'email_on_retry': False,
    'retries': 0
}

dag = DAG(
    'test', 
    default_args=default_args, 
    schedule_interval=None,
    template_searchpath=sql_path
)

# check number of weeks in bill pay (made up example)
check_one = CheckOperator(
    task_id='check_one',
    conn_id='conn_id',
    sql="""select count(distinct field) from dbo.table having count(distinct field) >= 4 """,
    dag=dag
)

def check_two_func():
    p = Hook('conn_id')
    sql="""select count(distinct field) from dbo.table having count(distinct field) <= 100"""
    count = p.get_records(sql)[0][0]
    if count == 0: 
        return 'dummy_fail'
    else:
        return 'dummy_success'


check_two = BranchPythonOperator(
    task_id = 'check_two',
    python_callable = check_two_func,
    dag=dag
)

dummy_fail = DummyOperator(task_id='dummy_fail',dag=dag)
dummy_success = DummyOperator(task_id='dummy_success',dag=dag)
join = DummyOperator(task_id='join',dag=dag)

check_one >> check_two
check_two >> dummy_fail
check_two >> dummy_success

ls = ['foo','bar','baz','quz','apple']
for tbl_name in ls:
    def has_table(tbl_name=tbl_name):
        p = PostgresHook('conn_id')
        sql =""" select count(*) from information_schema.tables where table_schema = 'test' and table_name = '{}' """.format(tbl_name)
        count = p.get_records(sql)[0][0] #unpack the list/tuple

        # If the query didn't return rows, branch to create table
        # otherwise, branch to dummy
        if count == 0:
            return 'tbl_create_{}'.format(tbl_name)
        else:
            return 'dummy_{}'.format(tbl_name) 

    exists = BranchPythonOperator(
        task_id='tbl_exists_{}'.format(tbl_name),
        python_callable=has_table,
        depends_on_past=False,
        dag=dag
    )

    create = PostgresOperator(
        task_id='tbl_create_{}'.format(tbl_name),
        postgres_conn_id='conn_id',
        database='database_name',
        sql = 'create table test.{} (like dbo.source)'.format(tbl_name), # will be read from SQL file
        dag = dag
    )

    insert = PostgresOperator(
        task_id='tbl_insert_{}'.format(tbl_name),
        postgres_conn_id='conn_id',
        database='database_name',
        sql = 'insert into test.{} (select * from dbo.source limit 10)'.format(tbl_name), # will be read from SQL file
        trigger_rule=TriggerRule.ONE_SUCCESS,
        dag = dag
    )

    dummy_success >> exists
    exists >> create >> insert 
    exists >> dummy >> insert
    insert >> join

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