FAQ ======== Why isn't my task getting scheduled? ------------------------------------ There are very many reasons why your task might not be getting scheduled. Here are some of the common causes: - Does your script "compile", can the Airflow engine parse it and find your DAG object. To test this, you can run ``airflow list_dags`` and confirm that your DAG shows up in the list. You can also run ``airflow list_tasks foo_dag_id --tree`` and confirm that your task shows up in the list as expected. If you use the CeleryExecutor, you may want to confirm that this works both where the scheduler runs as well as where the worker runs. - Is your ``start_date`` set properly? The Airflow scheduler triggers the task soon after the ``start_date + scheduler_interval`` is passed. - Is your ``schedule_interval`` set properly? The default ``schedule_interval`` is one day (``datetime.timedelta(1)``). You must specify a different ``schedule_interval`` directly to the DAG object you instantiate, not as a ``default_param``, as task instances do not override their parent DAG's ``schedule_interval``. - Is your ``start_date`` beyond where you can see it in the UI? If you set your ``start_date`` to some time say 3 months ago, you won't be able to see it in the main view in the UI, but you should be able to see it in the ``Menu -> Browse ->Task Instances``. - Are the dependencies for the task met. The task instances directly upstream from the task need to be in a ``success`` state. Also, if you have set ``depends_on_past=True``, the previous task instance needs to have succeeded (except if it is the first run for that task). Also, if ``wait_for_downstream=True``, make sure you understand what it means. You can view how these properties are set from the ``Task Instance Details`` page for your task. - Are the DagRuns you need created and active? A DagRun represents a specific execution of an entire DAG and has a state (running, success, failed, ...). The scheduler creates new DagRun as it moves forward, but never goes back in time to create new ones. The scheduler only evaluates ``running`` DagRuns to see what task instances it can trigger. Note that clearing tasks instances (from the UI or CLI) does set the state of a DagRun back to running. You can bulk view the list of DagRuns and alter states by clicking on the schedule tag for a DAG. - Is the ``concurrency`` parameter of your DAG reached? ``concurency`` defines how many ``running`` task instances a DAG is allowed to have, beyond which point things get queued. - Is the ``max_active_runs`` parameter of your DAG reached? ``max_active_runs`` defines how many ``running`` concurrent instances of a DAG there are allowed to be. You may also want to read the Scheduler section of the docs and make sure you fully understand how it proceeds. How do I trigger tasks based on another task's failure? ------------------------------------------------------- Check out the ``Trigger Rule`` section in the Concepts section of the documentation Why are connection passwords still not encrypted in the metadata db after I installed airflow[crypto]? ------------------------------------------------------------------------------------------------------ Check out the ``Connections`` section in the Configuration section of the documentation What's the deal with ``start_date``? ------------------------------------ ``start_date`` is partly legacy from the pre-DagRun era, but it is still relevant in many ways. When creating a new DAG, you probably want to set a global ``start_date`` for your tasks using ``default_args``. The first DagRun to be created will be based on the ``min(start_date)`` for all your task. From that point on, the scheduler creates new DagRuns based on your ``schedule_interval`` and the corresponding task instances run as your dependencies are met. When introducing new tasks to your DAG, you need to pay special attention to ``start_date``, and may want to reactivate inactive DagRuns to get the new task onboarded properly. We recommend against using dynamic values as ``start_date``, especially ``datetime.now()`` as it can be quite confusing. The task is triggered once the period closes, and in theory an ``@hourly`` DAG would never get to an hour after now as ``now()`` moves along. Previously we also recommended using rounded ``start_date`` in relation to your ``schedule_interval``. This meant an ``@hourly`` would be at ``00:00`` minutes:seconds, a ``@daily`` job at midnight, a ``@monthly`` job on the first of the month. This is no longer required. Airflow will now auto align the ``start_date`` and the ``schedule_interval``, by using the ``start_date`` as the moment to start looking. You can use any sensor or a ``TimeDeltaSensor`` to delay the execution of tasks within the schedule interval. While ``schedule_interval`` does allow specifying a ``datetime.timedelta`` object, we recommend using the macros or cron expressions instead, as it enforces this idea of rounded schedules. When using ``depends_on_past=True`` it's important to pay special attention to ``start_date`` as the past dependency is not enforced only on the specific schedule of the ``start_date`` specified for the task. It's also important to watch DagRun activity status in time when introducing new ``depends_on_past=True``, unless you are planning on running a backfill for the new task(s). Also important to note is that the tasks ``start_date``, in the context of a backfill CLI command, get overridden by the backfill's command ``start_date``. This allows for a backfill on tasks that have ``depends_on_past=True`` to actually start, if that wasn't the case, the backfill just wouldn't start. How can I create DAGs dynamically? ---------------------------------- Airflow looks in your ``DAGS_FOLDER`` for modules that contain ``DAG`` objects in their global namespace, and adds the objects it finds in the ``DagBag``. Knowing this all we need is a way to dynamically assign variable in the global namespace, which is easily done in python using the ``globals()`` function for the standard library which behaves like a simple dictionary. .. code:: python for i in range(10): dag_id = 'foo_{}'.format(i) globals()[dag_id] = DAG(dag_id) # or better, call a function that returns a DAG object! What are all the ``airflow run`` commands in my process list? --------------------------------------------------------------- There are many layers of ``airflow run`` commands, meaning it can call itself. - Basic ``airflow run``: fires up an executor, and tell it to run an ``airflow run --local`` command. if using Celery, this means it puts a command in the queue for it to run remote, on the worker. If using LocalExecutor, that translates into running it in a subprocess pool. - Local ``airflow run --local``: starts an ``airflow run --raw`` command (described below) as a subprocess and is in charge of emitting heartbeats, listening for external kill signals and ensures some cleanup takes place if the subprocess fails - Raw ``airflow run --raw`` runs the actual operator's execute method and performs the actual work