Support for time zones is enabled by default. Airflow stores datetime information in UTC internally and in the database. It allows you to run your DAGs with time zone dependent schedules. At the moment, Airflow does not convert them to the end user’s time zone in the user interface. It will always be displayed in UTC there. Also, templates used in Operators are not converted. Time zone information is exposed and it is up to the writer of DAG to decide what do with it.
This is handy if your users live in more than one time zone and you want to display datetime information according to each user’s wall clock.
Even if you are running Airflow in only one time zone, it is still good practice to store data in UTC in your database (also before Airflow became time zone aware this was also the recommended or even required setup). The main reason is that many countries use Daylight Saving Time (DST), where clocks are moved forward in spring and backward in autumn. If you’re working in local time, you’re likely to encounter errors twice a year, when the transitions happen. (The pendulum and pytz documentation discuss these issues in greater detail.) This probably doesn’t matter for a simple DAG, but it’s a problem if you are in, for example, financial services where you have end of day deadlines to meet.
The time zone is set in
airflow.cfg. By default it is set to utc, but you change it to use the system’s settings or
an arbitrary IANA time zone, e.g.
Europe/Amsterdam. It is dependent on
pendulum, which is more accurate than
Pendulum is installed when you install Airflow.
By default the Web UI will show times in UTC. It is possible to change the timezone shown by using the menu in the top right (click on the clock to activate it):
“Local” is detected from the browser’s timezone. The “Server” value comes from the
default_timezone setting in the
The users’ selected timezone is stored in LocalStorage so is a per-browser setting.
If you have configured your Airflow install to use a different default timezone and want the UI to use this same timezone, set
default_ui_timezone in the
[webserver] section to either an empty string, or the same value.
(It currently defaults to UTC to keep behaviour of the UI consistent by default between point-releases.)
Naive and aware datetime objects¶
Python’s datetime.datetime objects have a tzinfo attribute that can be used to store time zone information, represented as an instance of a subclass of datetime.tzinfo. When this attribute is set and describes an offset, a datetime object is aware. Otherwise, it’s naive.
You can use
timezone.is_naive() to determine whether datetimes are aware or naive.
Because Airflow uses time zone aware datetime objects. If your code creates datetime objects they need to be aware too.
from airflow.utils import timezone now = timezone.utcnow() a_date = timezone.datetime(2017, 1, 1)
Interpretation of naive datetime objects¶
Although Airflow operates fully time zone aware, it still accepts naive date time objects for
end_dates in your DAG definitions. This is mostly in order to preserve backwards compatibility. In
case a naive
end_date is encountered the default time zone is applied. It is applied
in such a way that it is assumed that the naive date time is already in the default time zone. In other
words if you have a default time zone setting of
Europe/Amsterdam and create a naive datetime
datetime(2017,1,1) it is assumed to be a
start_date of Jan 1, 2017 Amsterdam time.
default_args = dict(start_date=datetime(2016, 1, 1), owner="airflow") dag = DAG("my_dag", default_args=default_args) op = DummyOperator(task_id="dummy", dag=dag) print(op.owner) # Airflow
Unfortunately, during DST transitions, some datetimes don’t exist or are ambiguous. In such situations, pendulum raises an exception. That’s why you should always create aware datetime objects when time zone support is enabled.
In practice, this is rarely an issue. Airflow gives you time zone aware datetime objects in the models and DAGs, and most often,
new datetime objects are created from existing ones through timedelta arithmetic. The only datetime that’s often
created in application code is the current time, and
timezone.utcnow() automatically does the right thing.
Default time zone¶
The default time zone is the time zone defined by the
default_timezone setting under
you just installed Airflow it will be set to
utc, which is recommended. You can also set it to
system or an IANA time zone (e.g.
Europe/Amsterdam). DAGs are also evaluated on Airflow workers,
it is therefore important to make sure this setting is equal on all Airflow nodes.
[core] default_timezone = utc
For more information on setting the configuration, see Setting Configuration Options
Time zone aware DAGs¶
Creating a time zone aware DAG is quite simple. Just make sure to supply a time zone aware
import pendulum local_tz = pendulum.timezone("Europe/Amsterdam") default_args = dict(start_date=datetime(2016, 1, 1, tzinfo=local_tz), owner="airflow") dag = DAG("my_tz_dag", default_args=default_args) op = DummyOperator(task_id="dummy", dag=dag) print(dag.timezone) # <Timezone [Europe/Amsterdam]>
Please note that while it is possible to set a
for Tasks, the DAG timezone or global timezone (in that order) will always be
used to calculate data intervals. Upon first encounter, the start date or end
date will be converted to UTC using the timezone associated with
end_date, then for calculations this timezone information will be
Airflow returns time zone aware datetimes in templates, but does not convert them to local time so they remain in UTC. It is left up to the DAG to handle this.
import pendulum local_tz = pendulum.timezone("Europe/Amsterdam") local_tz.convert(logical_date)
Time zone aware DAGs that use cron schedules respect daylight savings
time. For example, a DAG with a start date in the
US/Eastern time zone
with a schedule of
0 0 * * * will run daily at 04:00 UTC during
daylight savings time and at 05:00 otherwise.
Time zone aware DAGs that use
respect daylight savings time for the start date but do not adjust for
daylight savings time when scheduling subsequent runs. For example, a
DAG with a start date of
pendulum.datetime(2020, 1, 1, tz="US/Eastern")
and a schedule interval of
timedelta(days=1) will run daily at 05:00
UTC regardless of daylight savings time.