0

I want to design an Airflow DAG with several tasks, and I want them execute as this image Example and the Gantt chart like this and some descriptions list below:

  • A-1, B-1, C-1 must executed in sequential
  • A-2 depends on A-1, B-2 depends on B-1 and C-2 depends on C-1
  • A-2, B-2, C-2 could be executed in parallel

I have create the desired DAG through the code below

main_task_list = ["T1", "T2", "T3"]

def decide_what_to_do(table_name, **context):
    if random.randint(0, 100) > 80:
        return tid_prefix_zip_file + table_name
    else:
        return tid_prefix_do_nothing + table_name

def create_tasks_list(table_name):

    tid_call_api = tid_prefix_call_api + table_name
    py_op_call_api = DummyOperator(
        task_id= tid_call_api
    )

    tid_branch_operator = tid_prefix_branch + table_name
    py_op_new_data_come_in = BranchPythonOperator(
        task_id=tid_branch_operator,
        python_callable=decide_what_to_do,
        op_args=[table_name]
    )

    tid_zip_file = tid_prefix_zip_file + table_name
    ssh_op_zip_file = DummyOperator(
        task_id=tid_zip_file
    )

    tid_upload_blob = tid_prefix_upload + table_name
    ssh_op_upload_file = DummyOperator(
        task_id=tid_upload_blob
    )

    tid_update_table_setting = tid_prefix_update_table + table_name
    py_update_tables_setting = DummyOperator(
        task_id=tid_update_table_setting
    )

    tid_execute_databricks = tid_prefix_call_databricks + table_name
    db_op_execute_notebook = DummyOperator(
        task_id=tid_execute_databricks
    )

    dummy_op_do_nothing = DummyOperator(
        task_id= tid_prefix_do_nothing + table_name
    )

    # branch 1
    first_pipeline = [py_op_call_api, py_op_new_data_come_in, ssh_op_zip_file, ssh_op_upload_file, py_update_tables_setting, db_op_execute_notebook]
    airflow.utils.helpers.chain(*first_pipeline)

    # branch 1
    second_pipeline = [py_op_new_data_come_in, dummy_op_do_nothing]
    airflow.utils.helpers.chain(*second_pipeline)

    tasks_list = [first_pipeline, second_pipeline]
    return tasks_list

with DAG(dag_id, default_args = default_args) as dag:
    tasks_chain_list = [create_tasks_list(each) for each in main_task_list]

    start = DummyOperator(
        task_id="start"
    )

start >> tasks_chain_list[0][0][0]
for n in range(0, len(tasks_chain_list)-1):
    tasks_chain_list[n][0][0] >> tasks_chain_list[n+1][0][0]

But these code are not flexible if I want to add more branch to each tasks chain. Does anyone can help me to improve the code? Thanks.

Your Answer

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

Browse other questions tagged or ask your own question.