The problem is pretty simple. I need to limit airflow web users to see and execute only certain DAGs and tasks.
The Multi-tenancy option seems like an option to go, but couldn't make it work the way I expect. My current setup:
- added airflow web users
ikarvia Web Authentication / Password
- my unix username is
ikarwith a home in
1.8.2is installed in
- added two DAGs with one task:
- one with
- one with
- one with
[core] # The home folder for airflow, default is ~/airflow airflow_home = /home/ikar/airflow # The folder where your airflow pipelines live, most likely a # subfolder in a code repository # This path must be absolute dags_folder = /home/ikar/airflow-test/dags # The folder where airflow should store its log files # This path must be absolute base_log_folder = /home/ikar/airflow/logs # Airflow can store logs remotely in AWS S3 or Google Cloud Storage. Users # must supply a remote location URL (starting with either 's3://...' or # 'gs://...') and an Airflow connection id that provides access to the storage # location. remote_base_log_folder = remote_log_conn_id = # Use server-side encryption for logs stored in S3 encrypt_s3_logs = False # DEPRECATED option for remote log storage, use remote_base_log_folder instead! s3_log_folder = # The executor class that airflow should use. Choices include # SequentialExecutor, LocalExecutor, CeleryExecutor executor = SequentialExecutor # The SqlAlchemy connection string to the metadata database. # SqlAlchemy supports many different database engine, more information # their website sql_alchemy_conn = sqlite:////home/ikar/airflow/airflow.db # The SqlAlchemy pool size is the maximum number of database connections # in the pool. sql_alchemy_pool_size = 5 # The SqlAlchemy pool recycle is the number of seconds a connection # can be idle in the pool before it is invalidated. This config does # not apply to sqlite. sql_alchemy_pool_recycle = 3600 # The amount of parallelism as a setting to the executor. This defines # the max number of task instances that should run simultaneously # on this airflow installation parallelism = 32 # The number of task instances allowed to run concurrently by the scheduler dag_concurrency = 16 # Are DAGs paused by default at creation dags_are_paused_at_creation = True # When not using pools, tasks are run in the "default pool", # whose size is guided by this config element non_pooled_task_slot_count = 128 # The maximum number of active DAG runs per DAG max_active_runs_per_dag = 16 # Whether to load the examples that ship with Airflow. It's good to # get started, but you probably want to set this to False in a production # environment load_examples = False # Where your Airflow plugins are stored plugins_folder = /home/ikar/airflow/plugins # Secret key to save connection passwords in the db fernet_key = cryptography_not_found_storing_passwords_in_plain_text # Whether to disable pickling dags donot_pickle = False # How long before timing out a python file import while filling the DagBag dagbag_import_timeout = 30 # The class to use for running task instances in a subprocess task_runner = BashTaskRunner # If set, tasks without a `run_as_user` argument will be run with this user # Can be used to de-elevate a sudo user running Airflow when executing tasks default_impersonation = # What security module to use (for example kerberos): security = # Turn unit test mode on (overwrites many configuration options with test # values at runtime) unit_test_mode = False [cli] # In what way should the cli access the API. The LocalClient will use the # database directly, while the json_client will use the api running on the # webserver api_client = airflow.api.client.local_client endpoint_url = http://localhost:8888 [api] # How to authenticate users of the API auth_backend = airflow.api.auth.backend.default [operators] # The default owner assigned to each new operator, unless # provided explicitly or passed via `default_args` default_owner = Airflow default_cpus = 1 default_ram = 512 default_disk = 512 default_gpus = 0 [webserver] # The base url of your website as airflow cannot guess what domain or # cname you are using. This is used in automated emails that # airflow sends to point links to the right web server base_url = http://localhost:8888 # The ip specified when starting the web server web_server_host = 0.0.0.0 # The port on which to run the web server web_server_port = 8888 # Paths to the SSL certificate and key for the web server. When both are # provided SSL will be enabled. This does not change the web server port. web_server_ssl_cert = web_server_ssl_key = # Number of seconds the gunicorn webserver waits before timing out on a worker web_server_worker_timeout = 120 # Number of workers to refresh at a time. When set to 0, worker refresh is # disabled. When nonzero, airflow periodically refreshes webserver workers by # bringing up new ones and killing old ones. worker_refresh_batch_size = 1 # Number of seconds to wait before refreshing a batch of workers. worker_refresh_interval = 30 # Secret key used to run your flask app secret_key = temporary_key # Number of workers to run the Gunicorn web server workers = 4 # The worker class gunicorn should use. Choices include # sync (default), eventlet, gevent worker_class = sync # Log files for the gunicorn webserver. '-' means log to stderr. access_logfile = - error_logfile = - # Expose the configuration file in the web server expose_config = False # Set to true to turn on authentication: # http://pythonhosted.org/airflow/security.html#web-authentication authenticate = True auth_backend = airflow.contrib.auth.backends.password_auth # Filter the list of dags by owner name (requires authentication to be enabled) filter_by_owner = True # Filtering mode. Choices include user (default) and ldapgroup. # Ldap group filtering requires using the ldap backend # # Note that the ldap server needs the "memberOf" overlay to be set up # in order to user the ldapgroup mode. owner_mode = user # Default DAG orientation. Valid values are: # LR (Left->Right), TB (Top->Bottom), RL (Right->Left), BT (Bottom->Top) dag_orientation = LR # Puts the webserver in demonstration mode; blurs the names of Operators for # privacy. demo_mode = False # The amount of time (in secs) webserver will wait for the initial handshake # while fetching logs from another worker machine log_fetch_timeout_sec = 5 # By default, the webserver shows paused DAGs. Flip this to hide paused # DAGs by default hide_paused_dags_by_default = False [email] email_backend = airflow.utils.email.send_email_smtp [smtp] # If you want airflow to send emails on retries, failure, and you want to use # the airflow.utils.email.send_email_smtp function, you have to configure an # smtp server here smtp_host = localhost smtp_starttls = True smtp_ssl = False # Uncomment and set the user/pass settings if you want to use SMTP AUTH # smtp_user = airflow # smtp_password = airflow smtp_port = 25 smtp_mail_from = firstname.lastname@example.org [celery] # This section only applies if you are using the CeleryExecutor in # [core] section above # The app name that will be used by celery celery_app_name = airflow.executors.celery_executor # The concurrency that will be used when starting workers with the # "airflow worker" command. This defines the number of task instances that # a worker will take, so size up your workers based on the resources on # your worker box and the nature of your tasks celeryd_concurrency = 4 # When you start an airflow worker, airflow starts a tiny web server # subprocess to serve the workers local log files to the airflow main # web server, who then builds pages and sends them to users. This defines # the port on which the logs are served. It needs to be unused, and open # visible from the main web server to connect into the workers. worker_log_server_port = 8793 # The Celery broker URL. Celery supports RabbitMQ, Redis and experimentally # a sqlalchemy database. Refer to the Celery documentation for more # information. broker_url = sqla+mysql://airflow:airflow@localhost:3306/airflow # Another key Celery setting celery_result_backend = db+mysql://airflow:airflow@localhost:3306/airflow # Celery Flower is a sweet UI for Celery. Airflow has a shortcut to start # it `airflow flower`. This defines the IP that Celery Flower runs on flower_host = 0.0.0.0 # This defines the port that Celery Flower runs on flower_port = 5555 # Default queue that tasks get assigned to and that worker listens on. default_queue = default [scheduler] # Task instances listen for external kill signal (when you clear tasks # from the CLI or the UI), this defines the frequency at which they should # listen (in seconds). job_heartbeat_sec = 5 # The schedule constantly tries to trigger new tasks (look at the # scheduler section in the docs for more information). This defines # how often the scheduler should run (in seconds). scheduler_heartbeat_sec = 5 # after how much time should the scheduler terminate in seconds # -1 indicates to run continuously (see also num_runs) run_duration = -1 # after how much time a new DAGs should be picked up from the filesystem min_file_process_interval = 0 dag_dir_list_interval = 300 # How often should stats be printed to the logs print_stats_interval = 30 child_process_log_directory = /home/ikar/airflow/logs/scheduler # Local task jobs periodically heartbeat to the DB. If the job has # not heartbeat in this many seconds, the scheduler will mark the # associated task instance as failed and will re-schedule the task. scheduler_zombie_task_threshold = 300 # Turn off scheduler catchup by setting this to False. # Default behavior is unchanged and # Command Line Backfills still work, but the scheduler # will not do scheduler catchup if this is False, # however it can be set on a per DAG basis in the # DAG definition (catchup) catchup_by_default = False # Statsd (https://github.com/etsy/statsd) integration settings statsd_on = False statsd_host = localhost statsd_port = 8125 statsd_prefix = airflow # The scheduler can run multiple threads in parallel to schedule dags. # This defines how many threads will run. However, airflow will never # use more threads than the number of cpu cores available. max_threads = 2 authenticate = False [mesos] # Mesos master address which MesosExecutor will connect to. master = localhost:5050 # The framework name which Airflow scheduler will register itself as on mesos framework_name = Airflow # Number of cpu cores required for running one task instance using # 'airflow run <dag_id> <task_id> <execution_date> --local -p <pickle_id>' # command on a mesos slave task_cpu = 1 # Memory in MB required for running one task instance using # 'airflow run <dag_id> <task_id> <execution_date> --local -p <pickle_id>' # command on a mesos slave task_memory = 256 # Enable framework checkpointing for mesos # See http://mesos.apache.org/documentation/latest/slave-recovery/ checkpoint = False # Failover timeout in milliseconds. # When checkpointing is enabled and this option is set, Mesos waits # until the configured timeout for # the MesosExecutor framework to re-register after a failover. Mesos # shuts down running tasks if the # MesosExecutor framework fails to re-register within this timeframe. # failover_timeout = 604800 # Enable framework authentication for mesos # See http://mesos.apache.org/documentation/latest/configuration/ authenticate = False # Mesos credentials, if authentication is enabled # default_principal = admin # default_secret = admin [kerberos] ccache = /tmp/airflow_krb5_ccache # gets augmented with fqdn principal = airflow reinit_frequency = 3600 kinit_path = kinit keytab = airflow.keytab [github_enterprise] api_rev = v3 [admin] # UI to hide sensitive variable fields when set to True hide_sensitive_variable_fields = True
I'd expect that
test user will only see DAG with the owner set to
test but both users can see and execute both DAGs.
Couldn't find any detailed documentation on how to setup the user restrictions for airflow DAGs.
Can anyone help? Am I missing something?