This file documents any backwards-incompatible changes in Airflow and assists people when migrating to a new version.
A new DaskExecutor allows Airflow tasks to be run in Dask Distributed clusters.
These features are marked for deprecation. They may still work (and raise a DeprecationWarning
), but are no longer
supported and will be removed entirely in Airflow 2.0
-
post_execute()
hooks now take two arguments,context
andresult
(AIRFLOW-886)Previously, post_execute() only took one argument,
context
.
The Airflow package name was changed from airflow
to apache-airflow
during this release. You must uninstall your
previously installed version of Airflow before installing 1.8.1.
The database schema needs to be upgraded. Make sure to shutdown Airflow and make a backup of your database. To
upgrade the schema issue airflow upgradedb
.
Systemd unit files have been updated. If you use systemd please make sure to update these.
Please note that the webserver does not detach properly, this will be fixed in a future version.
Airflow 1.7.1 has issues with being able to over subscribe to a pool, ie. more slots could be used than were available. This is fixed in Airflow 1.8.0, but due to past issue jobs may fail to start although their dependencies are met after an upgrade. To workaround either temporarily increase the amount of slots above the the amount of queued tasks or use a new pool.
Using a dynamic start_date (e.g. start_date = datetime.now()
) is not considered a best practice. The 1.8.0 scheduler
is less forgiving in this area. If you encounter DAGs not being scheduled you can try using a fixed start_date and
renaming your dag. The last step is required to make sure you start with a clean slate, otherwise the old schedule can
interfere.
Please read through these options, defaults have changed since 1.7.1.
In order the increase the robustness of the scheduler, DAGS our now processed in their own process. Therefore each
DAG has its own log file for the scheduler. These are placed in child_process_log_directory
which defaults to
<AIRFLOW_HOME>/scheduler/latest
. You will need to make sure these log files are removed.
DAG logs or processor logs ignore and command line settings for log file locations.
Previously the command line option num_runs
was used to let the scheduler terminate after a certain amount of
loops. This is now time bound and defaults to -1
, which means run continuously. See also num_runs.
Previously num_runs
was used to let the scheduler terminate after a certain amount of loops. Now num_runs specifies
the number of times to try to schedule each DAG file within run_duration
time. Defaults to -1
, which means try
indefinitely. This is only available on the command line.
After how much time should an updated DAG be picked up from the filesystem.
How often the scheduler should relist the contents of the DAG directory. If you experience that while developing your dags are not being picked up, have a look at this number and decrease it when necessary.
By default the scheduler will fill any missing interval DAG Runs between the last execution date and the current date.
This setting changes that behavior to only execute the latest interval. This can also be specified per DAG as
catchup = False / True
. Command line backfills will still work.
Due to changes in the way Airflow processes DAGs the Web UI does not show an error when processing a faulty DAG. To
find processing errors go the child_process_log_directory
which defaults to <AIRFLOW_HOME>/scheduler/latest
.
Previously, new DAGs would be scheduled immediately. To retain the old behavior, add this to airflow.cfg:
[core]
dags_are_paused_at_creation = False
If you specify a hive conf to the run_cli command of the HiveHook, Airflow add some convenience variables to the config. In case your run a sceure Hadoop setup it might be required to whitelist these variables by adding the following to your configuration:
<property>
<name>hive.security.authorization.sqlstd.confwhitelist.append</name>
<value>airflow\.ctx\..*</value>
</property>
All Google Cloud Operators and Hooks are aligned and use the same client library. Now you have a single connection type for all kinds of Google Cloud Operators.
If you experience problems connecting with your operator make sure you set the connection type "Google Cloud Platform".
Also the old P12 key file type is not supported anymore and only the new JSON key files are supported as a service account.
These features are marked for deprecation. They may still work (and raise a DeprecationWarning
), but are no longer
supported and will be removed entirely in Airflow 2.0
-
Hooks and operators must be imported from their respective submodules
airflow.operators.PigOperator
is no longer supported;from airflow.operators.pig_operator import PigOperator
is. (AIRFLOW-31, AIRFLOW-200) -
Operators no longer accept arbitrary arguments
Previously,
Operator.__init__()
accepted any arguments (either positional*args
or keyword**kwargs
) without complaint. Now, invalid arguments will be rejected. (apache#1285)
There is a report that the default of "-1" for num_runs creates an issue where errors are reported while parsing tasks.
It was not confirmed, but a workaround was found by changing the default back to None
.
To do this edit cli.py
, find the following:
'num_runs': Arg(
("-n", "--num_runs"),
default=-1, type=int,
help="Set the number of runs to execute before exiting"),
and change default=-1
to default=None
. Please report on the mailing list if you have this issue.
To continue using the default smtp email backend, change the email_backend line in your config file from:
[email]
email_backend = airflow.utils.send_email_smtp
to:
[email]
email_backend = airflow.utils.email.send_email_smtp
To continue using S3 logging, update your config file so:
s3_log_folder = s3://my-airflow-log-bucket/logs
becomes:
remote_base_log_folder = s3://my-airflow-log-bucket/logs
remote_log_conn_id = <your desired s3 connection>