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UPGRADING_TO_2.0.md

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Upgrading to Airflow 2.0+

This file documents any backwards-incompatible changes in Airflow and assists users migrating to a new version.

Table of Contents generated with DocToc

Step 1: Upgrade to Python 3

Airflow 1.10 will be the last release series to support Python 2. Airflow 2.0.0 will require Python 3.6+.

If you have a specific task that still requires Python 2 then you can use the PythonVirtualenvOperator for this.

For a list of breaking changes between Python 2 and Python 3, please refer to this handy blog from the CouchBaseDB team.

Step 2: Upgrade to Airflow 1.10.13 (a.k.a our "bridge" release)

To minimize friction for users upgrading from Airflow 1.10 to Airflow 2.0 and beyond, a "bridge" release and final 1.10 version will be made available. Airflow 1.10.13 includes support for various critical features that make it easy for users to test DAGs and make sure they're Airflow 2.0 compatible without forcing breaking changes and disrupting existing workflows. We strongly recommend that all users upgrading to Airflow 2.0 first upgrade to Airflow 1.10.13.

Features in 1.10.13 include:

  1. All breaking DAG and architecture changes of Airflow 2.0 have been backported to Airflow 1.10.13. This backward-compatibility does not mean that 1.10.13 will process these DAGs the same way as Airflow 2.0. What this does mean is that all Airflow 2.0 compatible DAGs will work in Airflow 1.10.13. Instead, this backport will give users time to modify their DAGs over time without any service disruption.

  2. We have backported the pod_template_file capability for the KubernetesExecutor as well as a script that will generate a pod_template_file based on your airflow.cfg settings. To generate this file simply run the following command:

     airflow generate_pod_template -o <output file path>

    Once you have performed this step, simply write out the file path to this file in the pod_template_file section of the kubernetes section of your airflow.cfg

  3. Airflow 1.10.13 will contain our "upgrade check" scripts. These scripts will read through your airflow.cfg and all of your Dags and will give a detailed report of all changes required before upgrading. We are testing this script diligently, and our goal is that any Airflow setup that can pass these tests will be able to upgrade to 2.0 without any issues.

    airflow upgrade_check

Step 3: Set Operators to Backport Providers

Now that you are set up in airflow 1.10.13 with python a 3.6+ environment, you are ready to start porting your DAGs to Airfow 2.0 compliance!

The most important step in this transition is also the easiest step to do in pieces. All Airflow 2.0 operators are backwards compatible with Airflow 1.10 using the backport providers service. In your own time, you can transition to using these backport-providers by pip installing the provider via pypi and changing the import path.

For example: While historically you might have imported the DockerOperator in this fashion:

from airflow.operators.docker_operator import DockerOperator

You would now run this command to import the provider:

pip install apache-airflow-backport-providers-docker

and then import the operator with this path:

from airflow.providers.docker.operators.docker import DockerOperator

Note that the backport provider packages are just backports of the provider packages compatible with Airflow 2.0. Those provider packages are installed automatically when you install airflow with extras. For example:

pip install airflow[docker]

automatically installs the apache-airflow-providers-docker package. But you can manage/upgrade remove provider packages separately from the airflow core.

Step 3: Upgrade Airflow DAGs

Change to undefined variable handling in templates

Prior to Airflow 2.0 Jinja Templates would permit the use of undefined variables. They would render as an empty string, with no indication to the user an undefined variable was used. With this release, any template rendering involving undefined variables will fail the task, as well as displaying an error in the UI when rendering.

The behavior can be reverted when instantiating a DAG.

import jinja2

dag = DAG('simple_dag', template_undefined=jinja2.Undefined)

Changes to the KubernetesPodOperator

Much like the KubernetesExecutor, the KubernetesPodOperator will no longer take Airflow custom classes and will instead expect either a pod_template yaml file, or kubernetes.client.models objects.

The one notable exception is that we will continue to support the airflow.kubernetes.secret.Secret class.

Whereas previously a user would import each individual class to build the pod as so:

from airflow.kubernetes.pod import Port
from airflow.kubernetes.volume import Volume
from airflow.kubernetes.secret import Secret
from airflow.kubernetes.volume_mount import VolumeMount


volume_config = {
    'persistentVolumeClaim': {
        'claimName': 'test-volume'
    }
}
volume = Volume(name='test-volume', configs=volume_config)
volume_mount = VolumeMount('test-volume',
                           mount_path='/root/mount_file',
                           sub_path=None,
                           read_only=True)

port = Port('http', 80)
secret_file = Secret('volume', '/etc/sql_conn', 'airflow-secrets', 'sql_alchemy_conn')
secret_env = Secret('env', 'SQL_CONN', 'airflow-secrets', 'sql_alchemy_conn')

k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo", "10"],
    labels={"foo": "bar"},
    secrets=[secret_file, secret_env],
    ports=[port],
    volumes=[volume],
    volume_mounts=[volume_mount],
    name="airflow-test-pod",
    task_id="task",
    affinity=affinity,
    is_delete_operator_pod=True,
    hostnetwork=False,
    tolerations=tolerations,
    configmaps=configmaps,
    init_containers=[init_container],
    priority_class_name="medium",
)

Now the user can use the kubernetes.client.models class as a single point of entry for creating all k8s objects.

from kubernetes.client import models as k8s
from airflow.kubernetes.secret import Secret


configmaps = ['test-configmap-1', 'test-configmap-2']

volume = k8s.V1Volume(
    name='test-volume',
    persistent_volume_claim=k8s.V1PersistentVolumeClaimVolumeSource(claim_name='test-volume'),
)

port = k8s.V1ContainerPort(name='http', container_port=80)
secret_file = Secret('volume', '/etc/sql_conn', 'airflow-secrets', 'sql_alchemy_conn')
secret_env = Secret('env', 'SQL_CONN', 'airflow-secrets', 'sql_alchemy_conn')
secret_all_keys = Secret('env', None, 'airflow-secrets-2')
volume_mount = k8s.V1VolumeMount(
    name='test-volume', mount_path='/root/mount_file', sub_path=None, read_only=True
)

k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo", "10"],
    labels={"foo": "bar"},
    secrets=[secret_file, secret_env],
    ports=[port],
    volumes=[volume],
    volume_mounts=[volume_mount],
    name="airflow-test-pod",
    task_id="task",
    is_delete_operator_pod=True,
    hostnetwork=False)

We decided to keep the Secret class as users seem to really like that simplifies the complexity of mounting Kubernetes secrets into workers.

For a more detailed list of changes to the KubernetesPodOperator API, please read here

Step 4: Update system configurations

Change default value for dag_run_conf_overrides_params

DagRun configuration dictionary will now by default overwrite params dictionary. If you pass some key-value pairs through airflow dags backfill -c or airflow dags trigger -c, the key-value pairs will override the existing ones in params. You can revert this behaviour by setting dag_run_conf_overrides_params to False in your airflow.cfg.

DAG discovery safe mode is now case insensitive

When DAG_DISCOVERY_SAFE_MODE is active, Airflow will now filter all files that contain the string airflow and dag in a case insensitive mode. This is being changed to better support the new @dag decorator.

Change to Permissions

The DAG-level permission actions, can_dag_read and can_dag_edit are going away. They are being replaced with can_read and can_edit. When a role is given DAG-level access, the resource name (or "view menu", in Flask App-Builder parlance) will now be prefixed with DAG:. So the action can_dag_read on example_dag_id, is now represented as can_read on DAG:example_dag_id.

As part of running db upgrade, existing permissions will be migrated for you.

When DAGs are initialized with the access_control variable set, any usage of the old permission names will automatically be updated in the database, so this won't be a breaking change. A DeprecationWarning will be raised.

Drop legacy UI in favor of FAB RBAC UI

WARNING: Breaking change

Previously we were using two versions of UI, which were hard to maintain as we need to implement/update the same feature in both versions. With this release we've removed the older UI in favor of Flask App Builder RBAC UI. No need to set the RBAC UI explicitly in the configuration now as this is the only default UI. We did it to avoid the huge maintenance burden of two independent user interfaces

Please note that that custom auth backends will need re-writing to target new FAB based UI.

As part of this change, a few configuration items in [webserver] section are removed and no longer applicable, including authenticate, filter_by_owner, owner_mode, and rbac.

Before upgrading to this release, we recommend activating the new FAB RBAC UI. For that, you should set the rbac options in [webserver] in the airflow.cfg file to true

[webserver]
rbac = true

In order to login to the interface, you need to create an administrator account.

airflow create_user \
    --role Admin \
    --username admin \
    --firstname FIRST_NAME \
    --lastname LAST_NAME \
    --email [email protected]

If you have already installed Airflow 2.0, you can create a user with the command airflow users create. You don't need to make changes to the configuration file as the FAB RBAC UI is the only supported UI.

airflow users create \
    --role Admin \
    --username admin \
    --firstname FIRST_NAME \
    --lastname LAST_NAME \
    --email [email protected]

Breaking Change in OAuth

The flask-ouathlib has been replaced with authlib because flask-outhlib has been deprecated in favour of authlib. The Old and New provider configuration keys that have changed are as follows

Old Keys New keys
consumer_key client_id
consumer_secret client_secret
base_url api_base_url
request_token_params client_kwargs

For more information, visit https://flask-appbuilder.readthedocs.io/en/latest/security.html#authentication-oauth

Step 5: Upgrade KubernetesExecutor settings

The KubernetesExecutor Will No Longer Read from the airflow.cfg for Base Pod Configurations

In Airflow 2.0, the KubernetesExecutor will require a base pod template written in yaml. This file can exist anywhere on the host machine and will be linked using the pod_template_file configuration in the airflow.cfg.

The airflow.cfg will still accept values for the worker_container_repository, the worker_container_tag, and the default namespace.

The following airflow.cfg values will be deprecated:

worker_container_image_pull_policy
airflow_configmap
airflow_local_settings_configmap
dags_in_image
dags_volume_subpath
dags_volume_mount_point
dags_volume_claim
logs_volume_subpath
logs_volume_claim
dags_volume_host
logs_volume_host
env_from_configmap_ref
env_from_secret_ref
git_repo
git_branch
git_sync_depth
git_subpath
git_sync_rev
git_user
git_password
git_sync_root
git_sync_dest
git_dags_folder_mount_point
git_ssh_key_secret_name
git_ssh_known_hosts_configmap_name
git_sync_credentials_secret
git_sync_container_repository
git_sync_container_tag
git_sync_init_container_name
git_sync_run_as_user
worker_service_account_name
image_pull_secrets
gcp_service_account_keys
affinity
tolerations
run_as_user
fs_group
[kubernetes_node_selectors]
[kubernetes_annotations]
[kubernetes_environment_variables]
[kubernetes_secrets]
[kubernetes_labels]

The executor_config Will Now Expect a kubernetes.client.models.V1Pod Class When Launching Tasks

In Airflow 1.10.x, users could modify task pods at runtime by passing a dictionary to the executor_config variable. Users will now have full access the Kubernetes API via the kubernetes.client.models.V1Pod.

While in the deprecated version a user would mount a volume using the following dictionary:

second_task = PythonOperator(
    task_id="four_task",
    python_callable=test_volume_mount,
    executor_config={
        "KubernetesExecutor": {
            "volumes": [
                {
                    "name": "example-kubernetes-test-volume",
                    "hostPath": {"path": "/tmp/"},
                },
            ],
            "volume_mounts": [
                {
                    "mountPath": "/foo/",
                    "name": "example-kubernetes-test-volume",
                },
            ]
        }
    }
)

In the new model a user can accomplish the same thing using the following code under the pod_override key:

from kubernetes.client import models as k8s

second_task = PythonOperator(
    task_id="four_task",
    python_callable=test_volume_mount,
    executor_config={"pod_override": k8s.V1Pod(
        spec=k8s.V1PodSpec(
            containers=[
                k8s.V1Container(
                    name="base",
                    volume_mounts=[
                        k8s.V1VolumeMount(
                            mount_path="/foo/",
                            name="example-kubernetes-test-volume"
                        )
                    ]
                )
            ],
            volumes=[
                k8s.V1Volume(
                    name="example-kubernetes-test-volume",
                    host_path=k8s.V1HostPathVolumeSource(
                        path="/tmp/"
                    )
                )
            ]
        )
    )
    }
)

For Airflow 2.0, the traditional executor_config will continue operation with a deprecation warning, but will be removed in a future version.

Appendix

Changed Parameters for the KubernetesPodOperator

port has migrated from a List[Port] to a List[V1ContainerPort]

Before:

from airflow.kubernetes.pod import Port
port = Port('http', 80)
k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    ports=[port],
    task_id="task",
)

After:

from kubernetes.client import models as k8s
port = k8s.V1ContainerPort(name='http', container_port=80)
k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    ports=[port],
    task_id="task",
)

volume_mounts has migrated from a List[VolumeMount] to a List[V1VolumeMount]

Before:

from airflow.kubernetes.volume_mount import VolumeMount
volume_mount = VolumeMount('test-volume',
                           mount_path='/root/mount_file',
                           sub_path=None,
                           read_only=True)
k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    volume_mounts=[volume_mount],
    task_id="task",
)

After:

from kubernetes.client import models as k8s
volume_mount = k8s.V1VolumeMount(
    name='test-volume', mount_path='/root/mount_file', sub_path=None, read_only=True
)
k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    volume_mounts=[volume_mount],
    task_id="task",
)

volumes has migrated from a List[Volume] to a List[V1Volume]

Before:

from airflow.kubernetes.volume import Volume

volume_config = {
    'persistentVolumeClaim': {
        'claimName': 'test-volume'
    }
}
volume = Volume(name='test-volume', configs=volume_config)
k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    volumes=[volume],
    task_id="task",
)

After:

from kubernetes.client import models as k8s
volume = k8s.V1Volume(
    name='test-volume',
    persistent_volume_claim=k8s.V1PersistentVolumeClaimVolumeSource(claim_name='test-volume'),
)
k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    volumes=[volume],
    task_id="task",
)

env_vars has migrated from a Dict to a List[V1EnvVar]

Before:

k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    env_vars={"ENV1": "val1", "ENV2": "val2"},
    task_id="task",
)

After:

from kubernetes.client import models as k8s

env_vars = [
    k8s.V1EnvVar(
        name="ENV1",
        value="val1"
    ),
    k8s.V1EnvVar(
        name="ENV2",
        value="val2"
    )]

k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    env_vars=env_vars,
    task_id="task",
)

PodRuntimeInfoEnv has been removed

PodRuntimeInfoEnv can now be added to the env_vars variable as a V1EnvVarSource

Before:

from airflow.kubernetes.pod_runtime_info_env import PodRuntimeInfoEnv

k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    pod_runtime_info_envs=[PodRuntimeInfoEnv("ENV3", "status.podIP")],
    task_id="task",
)

After:

from kubernetes.client import models as k8s

env_vars = [
    k8s.V1EnvVar(
        name="ENV3",
        value_from=k8s.V1EnvVarSource(
            field_ref=k8s.V1ObjectFieldSelector(
                field_path="status.podIP"
            )
        )
    )
]

k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    env_vars=env_vars,
    task_id="task",
)

configmaps has been removed

configmaps can now be added to the env_from variable as a V1EnvVarSource

Before:

k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    configmaps=['test-configmap'],
    task_id="task"
)

After:

from kubernetes.client import models as k8s

configmap ="test-configmap"
env_from = [k8s.V1EnvFromSource(
                config_map_ref=k8s.V1ConfigMapEnvSource(
                    name=configmap
                )
            )]

k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    env_from=env_from,
    task_id="task"
)

resources has migrated from a Dict to a V1ResourceRequirements

Before:

resources = {
    'limit_cpu': 0.25,
    'limit_memory': '64Mi',
    'limit_ephemeral_storage': '2Gi',
    'request_cpu': '250m',
    'request_memory': '64Mi',
    'request_ephemeral_storage': '1Gi',
}
k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    labels={"foo": "bar"},
    name="test",
    task_id="task" + self.get_current_task_name(),
    in_cluster=False,
    do_xcom_push=False,
    resources=resources,
)

After:

from kubernetes.client import models as k8s

resources=k8s.V1ResourceRequirements(
    requests={
        'memory': '64Mi',
        'cpu': '250m',
        'ephemeral-storage': '1Gi'
    },
    limits={
        'memory': '64Mi',
        'cpu': 0.25,
        'nvidia.com/gpu': None,
        'ephemeral-storage': '2Gi'
    }
)
k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    labels={"foo": "bar"},
    name="test-" + str(random.randint(0, 1000000)),
    task_id="task" + self.get_current_task_name(),
    in_cluster=False,
    do_xcom_push=False,
    resources=resources,
)

image_pull_secrets has migrated from a String to a List[k8s.V1LocalObjectReference]

Before:

k = KubernetesPodOperator(
    namespace='default',
    image="ubuntu:16.04",
    cmds=["bash", "-cx"],
    arguments=["echo 10"],
    name="test",
    task_id="task",
    image_pull_secrets="fake-secret",
    cluster_context='default')

After:

quay_k8s = KubernetesPodOperator(
    namespace='default',
    image='quay.io/apache/bash',
    image_pull_secrets=[k8s.V1LocalObjectReference('testquay')],
    cmds=["bash", "-cx"],
    name="airflow-private-image-pod",
    task_id="task-two",
)

Migration Guide from Experimental API to Stable API v1

In Airflow 2.0, we added the new REST API. Experimental API still works, but support may be dropped in the future. If your application is still using the experimental API, you should consider migrating to the stable API.

The stable API exposes many endpoints available through the webserver. Here are the differences between the two endpoints that will help you migrate from the experimental REST API to the stable REST API.

Base Endpoint

The base endpoint for the stable API v1 is /api/v1/. You must change the experimental base endpoint from /api/experimental/ to /api/v1/. The table below shows the differences:

Purpose Experimental REST API Endpoint Stable REST API Endpoint
Create a DAGRuns(POST) /api/experimental/dags/<DAG_ID>/dag_runs /api/v1/dags/{dag_id}/dagRuns
List DAGRuns(GET) /api/experimental/dags/<DAG_ID>/dag_runs /api/v1/dags/{dag_id}/dagRuns
Check Health status(GET) /api/experimental/test /api/v1/health
Task information(GET) /api/experimental/dags/<DAG_ID>/tasks/<TASK_ID> /api/v1//dags/{dag_id}/tasks/{task_id}
TaskInstance public variable(GET) /api/experimental/dags/<DAG_ID>/dag_runs/string:execution_date/tasks/<TASK_ID> /api/v1/dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id}
Pause DAG(PATCH) /api/experimental/dags/<DAG_ID>/paused/string:paused /api/v1/dags/{dag_id}
Information of paused DAG(GET) /api/experimental/dags/<DAG_ID>/paused /api/v1/dags/{dag_id}
Latest DAG Runs(GET) /api/experimental/latest_runs /api/v1/dags/{dag_id}/dagRuns
Get all pools(GET) /api/experimental/pools /api/v1/pools
Create a pool(POST) /api/experimental/pools /api/v1/pools
Delete a pool(DELETE) /api/experimental/pools/string:name /api/v1/pools/{pool_name}
DAG Lineage(GET) /api/experimental/lineage/<DAG_ID>/string:execution_date/ /api/v1/dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id}/xcomEntries

Note

This endpoint /api/v1/dags/{dag_id}/dagRuns also allows you to filter dag_runs with parameters such as start_date, end_date, execution_date etc in the query string. Therefore the operation previously performed by this endpoint

/api/experimental/dags/<string:dag_id>/dag_runs/<string:execution_date>

can now be handled with filter parameters in the query string. Getting information about latest runs can be accomplished with the help of filters in the query string of this endpoint(/api/v1/dags/{dag_id}/dagRuns). Please check the Stable API reference documentation for more information

Changes to Exception handling for from DAG callbacks

Exception from DAG callbacks used to crash the Airflow Scheduler. As part of our efforts to make the Scheduler more performant and reliable, we have changed this behavior to log the exception instead. On top of that, a new dag.callback_exceptions counter metric has been added to help better monitor callback exceptions.

Airflow CLI changes in 2.0

The Airflow CLI has been organized so that related commands are grouped together as subcommands, which means that if you use these commands in your scripts, you have to make changes to them.

This section describes the changes that have been made, and what you need to do to update your script.

The ability to manipulate users from the command line has been changed. airflow create_user, airflow delete_user and airflow list_users has been grouped to a single command airflow users with optional flags create, list and delete.

The airflow list_dags command is now airflow dags list, airflow pause is airflow dags pause, etc.

In Airflow 1.10 and 2.0 there is an airflow config command but there is a difference in behavior. In Airflow 1.10, it prints all config options while in Airflow 2.0, it's a command group. airflow config is now airflow config list. You can check other options by running the command airflow config --help

For a complete list of updated CLI commands, see https://airflow.apache.org/cli.html.

You can learn about the commands by running airflow --help. For example to get help about the celery group command, you have to run the help command: airflow celery --help.

Old command New command Group
airflow worker airflow celery worker celery
airflow flower airflow celery flower celery
airflow trigger_dag airflow dags trigger dags
airflow delete_dag airflow dags delete dags
airflow show_dag airflow dags show dags
airflow list_dag airflow dags list dags
airflow dag_status airflow dags status dags
airflow backfill airflow dags backfill dags
airflow list_dag_runs airflow dags list-runs dags
airflow pause airflow dags pause dags
airflow unpause airflow dags unpause dags
airflow next_execution airflow dags next-execution dags
airflow test airflow tasks test tasks
airflow clear airflow tasks clear tasks
airflow list_tasks airflow tasks list tasks
airflow task_failed_deps airflow tasks failed-deps tasks
airflow task_state airflow tasks state tasks
airflow run airflow tasks run tasks
airflow render airflow tasks render tasks
airflow initdb airflow db init db
airflow resetdb airflow db reset db
airflow upgradedb airflow db upgrade db
airflow checkdb airflow db check db
airflow shell airflow db shell db
airflow pool airflow pools pools
airflow create_user airflow users create users
airflow delete_user airflow users delete users
airflow list_users airflow users list users
airflow rotate_fernet_key airflow rotate-fernet-key
airflow sync_perm airflow sync-perm

Example Usage for the users group:

To create a new user:

airflow users create --username jondoe --lastname doe --firstname jon --email [email protected] --role Viewer --password test

To list users:

airflow users list

To delete a user:

airflow users delete --username jondoe

To add a user to a role:

airflow users add-role --username jondoe --role Public

To remove a user from a role:

airflow users remove-role --username jondoe --role Public

Use exactly single character for short option style change in CLI

For Airflow short option, use exactly one single character. New commands are available according to the following table:

Old command New command
airflow (dags|tasks|scheduler) [-sd, --subdir] airflow (dags|tasks|scheduler) [-S, --subdir]
airflow test [-dr, --dry_run] airflow tasks test [-n, --dry-run]
airflow test [-tp, --task_params] airflow tasks test [-t, --task-params]
airflow test [-pm, --post_mortem] airflow tasks test [-m, --post-mortem]
airflow run [-int, --interactive] airflow tasks run [-N, --interactive]
airflow backfill [-dr, --dry_run] airflow dags backfill [-n, --dry-run]
airflow clear [-dx, --dag_regex] airflow tasks clear [-R, --dag-regex]
airflow kerberos [-kt, --keytab] airflow kerberos [-k, --keytab]
airflow webserver [-hn, --hostname] airflow webserver [-H, --hostname]
airflow worker [-cn, --celery_hostname] airflow celery worker [-H, --celery-hostname]
airflow flower [-hn, --hostname] airflow celery flower [-H, --hostname]
airflow flower [-fc, --flower_conf] airflow celery flower [-c, --flower-conf]
airflow flower [-ba, --basic_auth] airflow celery flower [-A, --basic-auth]

For Airflow long option, use kebab-case instead of snake_case

Old option New option
--task_regex --task-regex
--start_date --start-date
--end_date --end-date
--dry_run --dry-run
--no_backfill --no-backfill
--mark_success --mark-success
--donot_pickle --donot-pickle
--ignore_dependencies --ignore-dependencies
--ignore_first_depends_on_past --ignore-first-depends-on-past
--delay_on_limit --delay-on-limit
--reset_dagruns --reset-dagruns
--rerun_failed_tasks --rerun-failed-tasks
--run_backwards --run-backwards
--only_failed --only-failed
--only_running --only-running
--exclude_subdags --exclude-subdags
--exclude_parentdag --exclude-parentdag
--dag_regex --dag-regex
--run_id --run-id
--exec_date --exec-date
--ignore_all_dependencies --ignore-all-dependencies
--ignore_depends_on_past --ignore-depends-on-past
--ship_dag --ship-dag
--job_id --job-id
--cfg_path --cfg-path
--ssl_cert --ssl-cert
--ssl_key --ssl-key
--worker_timeout --worker-timeout
--access_logfile --access-logfile
--error_logfile --error-logfile
--dag_id --dag-id
--num_runs --num-runs
--do_pickle --do-pickle
--celery_hostname --celery-hostname
--broker_api --broker-api
--flower_conf --flower-conf
--url_prefix --url-prefix
--basic_auth --basic-auth
--task_params --task-params
--post_mortem --post-mortem
--conn_uri --conn-uri
--conn_type --conn-type
--conn_host --conn-host
--conn_login --conn-login
--conn_password --conn-password
--conn_schema --conn-schema
--conn_port --conn-port
--conn_extra --conn-extra
--use_random_password --use-random-password
--skip_serve_logs --skip-serve-logs

Remove serve_logs command from CLI

The serve_logs command has been deleted. This command should be run only by internal application mechanisms and there is no need for it to be accessible from the CLI interface.

dag_state CLI command

If the DAGRun was triggered with conf key/values passed in, they will also be printed in the dag_state CLI response ie. running, {"name": "bob"} whereas in in prior releases it just printed the state: ie. running

Deprecating ignore_first_depends_on_past on backfill command and default it to True

When doing backfill with depends_on_past dags, users will need to pass --ignore-first-depends-on-past. We should default it as true to avoid confusion

Changes to Airflow Plugins

If you are using Airflow Plugins and were passing admin_views & menu_links which were used in the non-RBAC UI (flask-admin based UI), upto it to use flask_appbuilder_views and flask_appbuilder_menu_links.

Old:

from airflow.plugins_manager import AirflowPlugin

from flask_admin import BaseView, expose
from flask_admin.base import MenuLink


class TestView(BaseView):
    @expose('/')
    def test(self):
        # in this example, put your test_plugin/test.html template at airflow/plugins/templates/test_plugin/test.html
        return self.render("test_plugin/test.html", content="Hello galaxy!")
v = TestView(category="Test Plugin", name="Test View")

ml = MenuLink(
    category='Test Plugin',
    name='Test Menu Link',
    url='https://airflow.apache.org/')


class AirflowTestPlugin(AirflowPlugin):
    admin_views = [v]
    menu_links = [ml]

Change it to:

from airflow.plugins_manager import AirflowPlugin
from flask_appbuilder import expose, BaseView as AppBuilderBaseView


class TestAppBuilderBaseView(AppBuilderBaseView):
    default_view = "test"

    @expose("/")
    def test(self):
        return self.render("test_plugin/test.html", content="Hello galaxy!")

v_appbuilder_view = TestAppBuilderBaseView()
v_appbuilder_package = {"name": "Test View",
                        "category": "Test Plugin",
                        "view": v_appbuilder_view}

# Creating a flask appbuilder Menu Item
appbuilder_mitem = {"name": "Google",
                    "category": "Search",
                    "category_icon": "fa-th",
                    "href": "https://www.google.com"}


# Defining the plugin class
class AirflowTestPlugin(AirflowPlugin):
    name = "test_plugin"
    appbuilder_views = [v_appbuilder_package]
    appbuilder_menu_items = [appbuilder_mitem]

Support for Airflow 1.10.x releases

As mentioned earlier in Step 2, the 1.10.13 release is intended to be a "bridge release" which would be a step in the migration to Airflow 2.0.

After the Airflow 2.0 GA (General Availability) release, it expected that all future Airflow development would be based on Airflow 2.0, including a series of patch releases such as 2.0.1, 2.0.2 and then feature releases such as 2.1.

The Airflow 1.10.x release tree will be supported for a limited time after the GA release of Airflow 2.0.

Specifically, only "critical fixes" defined as fixes to bugs that take down Production systems, will be backported to 1.10.x core for six months after Airflow 2.0.0 is released.

In addition, Backport providers within 1.10.x, will be supported for critical fixes for three months after Airflow 2.0.0 is released.