Apache Airflow API (Stable)
Project description
Apache Airflow Python Client
Overview
To facilitate management, Apache Airflow supports a range of REST API endpoints across its objects. This section provides an overview of the API design, methods, and supported use cases.
Most of the endpoints accept JSON
as input and return JSON
responses.
This means that you must usually add the following headers to your request:
Content-type: application/json
Accept: application/json
Resources
The term resource
refers to a single type of object in the Airflow metadata. An API is broken up by its
endpoint's corresponding resource.
The name of a resource is typically plural and expressed in camelCase. Example: dagRuns
.
Resource names are used as part of endpoint URLs, as well as in API parameters and responses.
CRUD Operations
The platform supports Create, Read, Update, and Delete operations on most resources. You can review the standards for these operations and their standard parameters below.
Some endpoints have special behavior as exceptions.
Create
To create a resource, you typically submit an HTTP POST
request with the resource's required metadata
in the request body.
The response returns a 201 Created
response code upon success with the resource's metadata, including
its internal id
, in the response body.
Read
The HTTP GET
request can be used to read a resource or to list a number of resources.
A resource's id
can be submitted in the request parameters to read a specific resource.
The response usually returns a 200 OK
response code upon success, with the resource's metadata in
the response body.
If a GET
request does not include a specific resource id
, it is treated as a list request.
The response usually returns a 200 OK
response code upon success, with an object containing a list
of resources' metadata in the response body.
When reading resources, some common query parameters are usually available. e.g.:
v1/connections?limit=25&offset=25
Query Parameter | Type | Description |
---|---|---|
limit | integer | Maximum number of objects to fetch. Usually 25 by default |
offset | integer | Offset after which to start returning objects. For use with limit query parameter. |
Update
Updating a resource requires the resource id
, and is typically done using an HTTP PATCH
request,
with the fields to modify in the request body.
The response usually returns a 200 OK
response code upon success, with information about the modified
resource in the response body.
Delete
Deleting a resource requires the resource id
and is typically executing via an HTTP DELETE
request.
The response usually returns a 204 No Content
response code upon success.
Conventions
-
Resource names are plural and expressed in camelCase.
-
Names are consistent between URL parameter name and field name.
-
Field names are in snake_case.
{
\"name\": \"string\",
\"slots\": 0,
\"occupied_slots\": 0,
\"used_slots\": 0,
\"queued_slots\": 0,
\"open_slots\": 0
}
Update Mask
Update mask is available as a query parameter in patch endpoints. It is used to notify the
API which fields you want to update. Using update_mask
makes it easier to update objects
by helping the server know which fields to update in an object instead of updating all fields.
The update request ignores any fields that aren't specified in the field mask, leaving them with
their current values.
Example:
import requests
resource = requests.get("/resource/my-id").json()
resource["my_field"] = "new-value"
requests.patch("/resource/my-id?update_mask=my_field", data=json.dumps(resource))
Versioning and Endpoint Lifecycle
- API versioning is not synchronized to specific releases of the Apache Airflow.
- APIs are designed to be backward compatible.
- Any changes to the API will first go through a deprecation phase.
Trying the API
You can use a third party client, such as curl, HTTPie, Postman or the Insomnia rest client to test the Apache Airflow API.
Note that you will need to pass credentials data.
For e.g., here is how to pause a DAG with curl, when basic authorization is used:
curl -X PATCH 'https://example.com/api/v1/dags/{dag_id}?update_mask=is_paused' \\
-H 'Content-Type: application/json' \\
--user \"username:password\" \\
-d '{
\"is_paused\": true
}'
Using a graphical tool such as Postman or Insomnia, it is possible to import the API specifications directly:
- Download the API specification by clicking the Download button at top of this document.
- Import the JSON specification in the graphical tool of your choice.
- In Postman, you can click the import button at the top
- With Insomnia, you can just drag-and-drop the file on the UI
Note that with Postman, you can also generate code snippets by selecting a request and clicking on the Code button.
Enabling CORS
Cross-origin resource sharing (CORS) is a browser security feature that restricts HTTP requests that are initiated from scripts running in the browser.
For details on enabling/configuring CORS, see Enabling CORS.
Authentication
To be able to meet the requirements of many organizations, Airflow supports many authentication methods, and it is even possible to add your own method.
If you want to check which auth backend is currently set, you can use
airflow config get-value api auth_backends
command as in the example below.
$ airflow config get-value api auth_backends
airflow.api.auth.backend.basic_auth
The default is to deny all requests.
For details on configuring the authentication, see API Authorization.
Errors
We follow the error response format proposed in RFC 7807 also known as Problem Details for HTTP APIs. As with our normal API responses, your client must be prepared to gracefully handle additional members of the response.
Unauthenticated
This indicates that the request has not been applied because it lacks valid authentication credentials for the target resource. Please check that you have valid credentials.
PermissionDenied
This response means that the server understood the request but refuses to authorize it because it lacks sufficient rights to the resource. It happens when you do not have the necessary permission to execute the action you performed. You need to get the appropriate permissions in other to resolve this error.
BadRequest
This response means that the server cannot or will not process the request due to something that is perceived to be a client error (e.g., malformed request syntax, invalid request message framing, or deceptive request routing). To resolve this, please ensure that your syntax is correct.
NotFound
This client error response indicates that the server cannot find the requested resource.
MethodNotAllowed
Indicates that the request method is known by the server but is not supported by the target resource.
NotAcceptable
The target resource does not have a current representation that would be acceptable to the user agent, according to the proactive negotiation header fields received in the request, and the server is unwilling to supply a default representation.
AlreadyExists
The request could not be completed due to a conflict with the current state of the target resource, e.g. the resource it tries to create already exists.
Unknown
This means that the server encountered an unexpected condition that prevented it from fulfilling the request.
This Python package is automatically generated by the OpenAPI Generator project:
- API version: 2.9.0
- Package version: 2.9.0
- Build package: org.openapitools.codegen.languages.PythonClientCodegen
For more information, please visit https://airflow.apache.org
Requirements.
Python >=3.8
Installation & Usage
pip install
You can install the client using standard Python installation tools. It is hosted
in PyPI with apache-airflow-client
package id so the easiest way to get the latest
version is to run:
pip install apache-airflow-client
If the python package is hosted on a repository, you can install directly using:
pip install git+https://github.com/apache/airflow-client-python.git
Import check
Then import the package:
import airflow_client.client
Getting Started
Please follow the installation procedure and then run the following:
import time
import airflow_client.client
from pprint import pprint
from airflow_client.client.api import config_api
from airflow_client.client.model.config import Config
from airflow_client.client.model.error import Error
# Defining the host is optional and defaults to /api/v1
# See configuration.py for a list of all supported configuration parameters.
configuration = client.Configuration(host="/api/v1")
# The client must configure the authentication and authorization parameters
# in accordance with the API server security policy.
# Examples for each auth method are provided below, use the example that
# satisfies your auth use case.
# Configure HTTP basic authorization: Basic
configuration = client.Configuration(username="YOUR_USERNAME", password="YOUR_PASSWORD")
# Enter a context with an instance of the API client
with client.ApiClient(configuration) as api_client:
# Create an instance of the API class
api_instance = config_api.ConfigApi(api_client)
try:
# Get current configuration
api_response = api_instance.get_config()
pprint(api_response)
except client.ApiException as e:
print("Exception when calling ConfigApi->get_config: %s\n" % e)
Documentation for API Endpoints
All URIs are relative to /api/v1
Class | Method | HTTP request | Description |
---|---|---|---|
ConfigApi | get_config | GET /config | Get current configuration |
ConnectionApi | delete_connection | DELETE /connections/{connection_id} | Delete a connection |
ConnectionApi | get_connection | GET /connections/{connection_id} | Get a connection |
ConnectionApi | get_connections | GET /connections | List connections |
ConnectionApi | patch_connection | PATCH /connections/{connection_id} | Update a connection |
ConnectionApi | post_connection | POST /connections | Create a connection |
ConnectionApi | test_connection | POST /connections/test | Test a connection |
DAGApi | delete_dag | DELETE /dags/{dag_id} | Delete a DAG |
DAGApi | get_dag | GET /dags/{dag_id} | Get basic information about a DAG |
DAGApi | get_dag_details | GET /dags/{dag_id}/details | Get a simplified representation of DAG |
DAGApi | get_dag_source | GET /dagSources/{file_token} | Get a source code |
DAGApi | get_dags | GET /dags | List DAGs |
DAGApi | get_task | GET /dags/{dag_id}/tasks/{task_id} | Get simplified representation of a task |
DAGApi | get_tasks | GET /dags/{dag_id}/tasks | Get tasks for DAG |
DAGApi | patch_dag | PATCH /dags/{dag_id} | Update a DAG |
DAGApi | patch_dags | PATCH /dags | Update DAGs |
DAGApi | post_clear_task_instances | POST /dags/{dag_id}/clearTaskInstances | Clear a set of task instances |
DAGApi | post_set_task_instances_state | POST /dags/{dag_id}/updateTaskInstancesState | Set a state of task instances |
DAGRunApi | clear_dag_run | POST /dags/{dag_id}/dagRuns/{dag_run_id}/clear | Clear a DAG run |
DAGRunApi | delete_dag_run | DELETE /dags/{dag_id}/dagRuns/{dag_run_id} | Delete a DAG run |
DAGRunApi | get_dag_run | GET /dags/{dag_id}/dagRuns/{dag_run_id} | Get a DAG run |
DAGRunApi | get_dag_runs | GET /dags/{dag_id}/dagRuns | List DAG runs |
DAGRunApi | get_dag_runs_batch | POST /dags/~/dagRuns/list | List DAG runs (batch) |
DAGRunApi | get_upstream_dataset_events | GET /dags/{dag_id}/dagRuns/{dag_run_id}/upstreamDatasetEvents | Get dataset events for a DAG run |
DAGRunApi | post_dag_run | POST /dags/{dag_id}/dagRuns | Trigger a new DAG run |
DAGRunApi | set_dag_run_note | PATCH /dags/{dag_id}/dagRuns/{dag_run_id}/setNote | Update the DagRun note. |
DAGRunApi | update_dag_run_state | PATCH /dags/{dag_id}/dagRuns/{dag_run_id} | Modify a DAG run |
DagWarningApi | get_dag_warnings | GET /dagWarnings | List dag warnings |
DatasetApi | get_dataset | GET /datasets/{uri} | Get a dataset |
DatasetApi | get_dataset_events | GET /datasets/events | Get dataset events |
DatasetApi | get_datasets | GET /datasets | List datasets |
DatasetApi | get_upstream_dataset_events | GET /dags/{dag_id}/dagRuns/{dag_run_id}/upstreamDatasetEvents | Get dataset events for a DAG run |
EventLogApi | get_event_log | GET /eventLogs/{event_log_id} | Get a log entry |
EventLogApi | get_event_logs | GET /eventLogs | List log entries |
ImportErrorApi | get_import_error | GET /importErrors/{import_error_id} | Get an import error |
ImportErrorApi | get_import_errors | GET /importErrors | List import errors |
MonitoringApi | get_health | GET /health | Get instance status |
MonitoringApi | get_version | GET /version | Get version information |
PermissionApi | get_permissions | GET /permissions | List permissions |
PluginApi | get_plugins | GET /plugins | Get a list of loaded plugins |
PoolApi | delete_pool | DELETE /pools/{pool_name} | Delete a pool |
PoolApi | get_pool | GET /pools/{pool_name} | Get a pool |
PoolApi | get_pools | GET /pools | List pools |
PoolApi | patch_pool | PATCH /pools/{pool_name} | Update a pool |
PoolApi | post_pool | POST /pools | Create a pool |
ProviderApi | get_providers | GET /providers | List providers |
RoleApi | delete_role | DELETE /roles/{role_name} | Delete a role |
RoleApi | get_role | GET /roles/{role_name} | Get a role |
RoleApi | get_roles | GET /roles | List roles |
RoleApi | patch_role | PATCH /roles/{role_name} | Update a role |
RoleApi | post_role | POST /roles | Create a role |
TaskInstanceApi | get_extra_links | GET /dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id}/links | List extra links |
TaskInstanceApi | get_log | GET /dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id}/logs/{task_try_number} | Get logs |
TaskInstanceApi | get_mapped_task_instance | GET /dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id}/{map_index} | Get a mapped task instance |
TaskInstanceApi | get_mapped_task_instances | GET /dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id}/listMapped | List mapped task instances |
TaskInstanceApi | get_task_instance | GET /dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id} | Get a task instance |
TaskInstanceApi | get_task_instances | GET /dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances | List task instances |
TaskInstanceApi | get_task_instances_batch | POST /dags/ |
List task instances (batch) |
TaskInstanceApi | patch_mapped_task_instance | PATCH /dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id}/{map_index} | Updates the state of a mapped task instance |
TaskInstanceApi | patch_task_instance | PATCH /dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id} | Updates the state of a task instance |
TaskInstanceApi | set_mapped_task_instance_note | PATCH /dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id}/{map_index}/setNote | Update the TaskInstance note. |
TaskInstanceApi | set_task_instance_note | PATCH /dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id}/setNote | Update the TaskInstance note. |
UserApi | delete_user | DELETE /users/{username} | Delete a user |
UserApi | get_user | GET /users/{username} | Get a user |
UserApi | get_users | GET /users | List users |
UserApi | patch_user | PATCH /users/{username} | Update a user |
UserApi | post_user | POST /users | Create a user |
VariableApi | delete_variable | DELETE /variables/{variable_key} | Delete a variable |
VariableApi | get_variable | GET /variables/{variable_key} | Get a variable |
VariableApi | get_variables | GET /variables | List variables |
VariableApi | patch_variable | PATCH /variables/{variable_key} | Update a variable |
VariableApi | post_variables | POST /variables | Create a variable |
XComApi | get_xcom_entries | GET /dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id}/xcomEntries | List XCom entries |
XComApi | get_xcom_entry | GET /dags/{dag_id}/dagRuns/{dag_run_id}/taskInstances/{task_id}/xcomEntries/{xcom_key} | Get an XCom entry |
Documentation For Models
- Action
- ActionCollection
- ActionCollectionAllOf
- ActionResource
- BasicDAGRun
- ClassReference
- ClearDagRun
- ClearTaskInstances
- CollectionInfo
- Color
- Config
- ConfigOption
- ConfigSection
- Connection
- ConnectionAllOf
- ConnectionCollection
- ConnectionCollectionAllOf
- ConnectionCollectionItem
- ConnectionTest
- CronExpression
- DAG
- DAGCollection
- DAGCollectionAllOf
- DAGDetail
- DAGDetailAllOf
- DAGRun
- DAGRunCollection
- DAGRunCollectionAllOf
- DagScheduleDatasetReference
- DagState
- DagWarning
- DagWarningCollection
- DagWarningCollectionAllOf
- Dataset
- DatasetCollection
- DatasetCollectionAllOf
- DatasetEvent
- DatasetEventCollection
- DatasetEventCollectionAllOf
- Error
- EventLog
- EventLogCollection
- EventLogCollectionAllOf
- ExtraLink
- ExtraLinkCollection
- HealthInfo
- HealthStatus
- ImportError
- ImportErrorCollection
- ImportErrorCollectionAllOf
- InlineResponse200
- InlineResponse2001
- Job
- ListDagRunsForm
- ListTaskInstanceForm
- MetadatabaseStatus
- PluginCollection
- PluginCollectionAllOf
- PluginCollectionItem
- Pool
- PoolCollection
- PoolCollectionAllOf
- Provider
- ProviderCollection
- RelativeDelta
- Resource
- Role
- RoleCollection
- RoleCollectionAllOf
- SLAMiss
- ScheduleInterval
- SchedulerStatus
- SetDagRunNote
- SetTaskInstanceNote
- Tag
- Task
- TaskCollection
- TaskExtraLinks
- TaskInstance
- TaskInstanceCollection
- TaskInstanceCollectionAllOf
- TaskInstanceReference
- TaskInstanceReferenceCollection
- TaskOutletDatasetReference
- TaskState
- TimeDelta
- Trigger
- TriggerRule
- UpdateDagRunState
- UpdateTaskInstance
- UpdateTaskInstancesState
- User
- UserAllOf
- UserCollection
- UserCollectionAllOf
- UserCollectionItem
- UserCollectionItemRoles
- Variable
- VariableAllOf
- VariableCollection
- VariableCollectionAllOf
- VariableCollectionItem
- VersionInfo
- WeightRule
- XCom
- XComAllOf
- XComCollection
- XComCollectionAllOf
- XComCollectionItem
Documentation For Authorization
By default the generated client supports the three authentication schemes:
- Basic
- GoogleOpenID
- Kerberos
However, you can generate client and documentation with your own schemes by adding your own schemes in
the security section of the OpenAPI specification. You can do it with Breeze CLI by adding the
--security-schemes
option to the breeze release-management prepare-python-client
command.
Basic "smoke" tests
You can run basic smoke tests to check if the client is working properly - we have a simple test script that uses the API to run the tests. To do that, you need to:
- install the
apache-airflow-client
package as described above - install
rich
Python package - download the test_python_client.py file
- make sure you have test airflow installation running. Do not experiment with your production deployment
- configure your airflow webserver to enable basic authentication
In the
[api]
section of yourairflow.cfg
set:
[api]
auth_backend = airflow.api.auth.backend.session,airflow.api.auth.backend.basic_auth
You can also set it by env variable:
export AIRFLOW__API__AUTH_BACKENDS=airflow.api.auth.backend.session,airflow.api.auth.backend.basic_auth
- configure your airflow webserver to load example dags
In the
[core]
section of yourairflow.cfg
set:
[core]
load_examples = True
You can also set it by env variable: export AIRFLOW__CORE__LOAD_EXAMPLES=True
- optionally expose configuration (NOTE! that this is dangerous setting). The script will happily run with
the default setting, but if you want to see the configuration, you need to expose it.
In the
[webserver]
section of yourairflow.cfg
set:
[webserver]
expose_config = True
You can also set it by env variable: export AIRFLOW__WEBSERVER__EXPOSE_CONFIG=True
- Configure your host/ip/user/password in the
test_python_client.py
file
import airflow_client
# Configure HTTP basic authorization: Basic
configuration = airflow_client.client.Configuration(
host="http://localhost:8080/api/v1", username="admin", password="admin"
)
-
Run scheduler (or dag file processor you have setup with standalone dag file processor) for few parsing loops (you can pass --num-runs parameter to it or keep it running in the background). The script relies on example DAGs being serialized to the DB and this only happens when scheduler runs with
core/load_examples
set to True. -
Run webserver - reachable at the host/port for the test script you want to run. Make sure it had enough time to initialize.
Run python test_python_client.py
and you should see colored output showing attempts to connect and status.
Notes for Large OpenAPI documents
If the OpenAPI document is large, imports in client.apis and client.models may fail with a RecursionError indicating the maximum recursion limit has been exceeded. In that case, there are a couple of solutions:
Solution 1: Use specific imports for apis and models like:
from airflow_client.client.api.default_api import DefaultApi
from airflow_client.client.model.pet import Pet
Solution 2: Before importing the package, adjust the maximum recursion limit as shown below:
import sys
sys.setrecursionlimit(1500)
import airflow_client.client
from airflow_client.client.apis import *
from airflow_client.client.models import *
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