You can not select more than 25 topics
Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
150 lines
6.6 KiB
150 lines
6.6 KiB
.. Licensed to the Apache Software Foundation (ASF) under one |
|
or more contributor license agreements. See the NOTICE file |
|
distributed with this work for additional information |
|
regarding copyright ownership. The ASF licenses this file |
|
to you under the Apache License, Version 2.0 (the |
|
"License"); you may not use this file except in compliance |
|
with the License. You may obtain a copy of the License at |
|
|
|
.. http://www.apache.org/licenses/LICENSE-2.0 |
|
|
|
.. Unless required by applicable law or agreed to in writing, |
|
software distributed under the License is distributed on an |
|
"AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY |
|
KIND, either express or implied. See the License for the |
|
specific language governing permissions and limitations |
|
under the License. |
|
|
|
Tutorial |
|
======== |
|
|
|
This tutorial show you the basic concept of *PyDolphinScheduler* and tell all |
|
things you should know before you submit or run your first workflow. If you |
|
still not install *PyDolphinScheduler* and start Apache DolphinScheduler, you |
|
could go and see :ref:`how to getting start PyDolphinScheduler <start:getting started>` |
|
|
|
Overview of Tutorial |
|
-------------------- |
|
|
|
Here have an overview of our tutorial, and it look a little complex but do not |
|
worry about that because we explain this example below as detailed as possible. |
|
|
|
.. literalinclude:: ../../src/pydolphinscheduler/examples/tutorial.py |
|
:start-after: [start tutorial] |
|
:end-before: [end tutorial] |
|
|
|
Import Necessary Module |
|
----------------------- |
|
|
|
First of all, we should importing necessary module which we would use later just |
|
like other Python package. We just create a minimum demo here, so we just import |
|
:class:`pydolphinscheduler.core.process_definition` and |
|
:class:`pydolphinscheduler.tasks.shell`. |
|
|
|
.. literalinclude:: ../../src/pydolphinscheduler/examples/tutorial.py |
|
:start-after: [start package_import] |
|
:end-before: [end package_import] |
|
|
|
If you want to use other task type you could click and |
|
:doc:`see all tasks we support <tasks/index>` |
|
|
|
Process Definition Declaration |
|
------------------------------ |
|
|
|
We should instantiate object after we import them from `import necessary module`_. |
|
Here we declare basic arguments for process definition(aka, workflow). We define |
|
the name of process definition, using `Python context manager`_ and it |
|
**the only required argument** for object process definition. Beside that we also |
|
declare three arguments named `schedule`, `start_time` which setting workflow schedule |
|
interval and schedule start_time, and argument `tenant` which changing workflow's |
|
task running user in the worker, :ref:`section tenant <concept:tenant>` in *PyDolphinScheduler* |
|
:doc:`concept` page have more detail information. |
|
|
|
.. literalinclude:: ../../src/pydolphinscheduler/examples/tutorial.py |
|
:start-after: [start workflow_declare] |
|
:end-before: [end workflow_declare] |
|
|
|
We could find more detail about process definition in |
|
:ref:`concept about process definition <concept:process definition>` if you interested in it. |
|
For all arguments of object process definition, you could find in the |
|
:class:`pydolphinscheduler.core.process_definition` api documentation. |
|
|
|
Task Declaration |
|
---------------- |
|
|
|
Here we declare four tasks, and bot of them are simple task of |
|
:class:`pydolphinscheduler.tasks.shell` which running `echo` command in terminal. |
|
Beside the argument `command`, we also need setting argument `name` for each task *(not |
|
only shell task, `name` is required for each type of task)*. |
|
|
|
.. literalinclude:: ../../src/pydolphinscheduler/examples/tutorial.py |
|
:dedent: 0 |
|
:start-after: [start task_declare] |
|
:end-before: [end task_declare] |
|
|
|
Beside shell task, *PyDolphinScheduler* support multiple tasks and you could |
|
find in :doc:`tasks/index`. |
|
|
|
Setting Task Dependence |
|
----------------------- |
|
|
|
After we declare both process definition and task, we have one workflow with |
|
four tasks, both all tasks is independent so that they would run in parallel. |
|
We should reorder the sort and the dependence of tasks. It useful when we need |
|
run prepare task before we run actual task or we need tasks running is specific |
|
rule. We both support attribute `set_downstream` and `set_upstream`, or bitwise |
|
operators `>>` and `<<`. |
|
|
|
In this example, we set task `task_parent` is the upstream task of task |
|
`task_child_one` and `task_child_two`, and task `task_union` is the downstream |
|
task of both these two task. |
|
|
|
.. literalinclude:: ../../src/pydolphinscheduler/examples/tutorial.py |
|
:dedent: 0 |
|
:start-after: [start task_relation_declare] |
|
:end-before: [end task_relation_declare] |
|
|
|
Please notice that we could grouping some tasks and set dependence if they have |
|
same downstream or upstream. We declare task `task_child_one` and `task_child_two` |
|
as a group here, named as `task_group` and set task `task_parent` as upstream of |
|
both of them. You could see more detail in :ref:`concept:Tasks Dependence` section in concept |
|
documentation. |
|
|
|
Submit Or Run Workflow |
|
---------------------- |
|
|
|
Now we finish our workflow definition, with task and task dependence, but all |
|
these things are in local, we should let Apache DolphinScheduler daemon know what we |
|
define our workflow. So the last thing we have to do here is submit our workflow to |
|
Apache DolphinScheduler daemon. |
|
|
|
We here in the example using `ProcessDefinition` attribute `run` to submit workflow |
|
to the daemon, and set the schedule time we just declare in `process definition declaration`_. |
|
|
|
Now, we could run the Python code like other Python script, for the basic usage run |
|
:code:`python tutorial.py` to trigger and run it. |
|
|
|
.. literalinclude:: ../../src/pydolphinscheduler/examples/tutorial.py |
|
:dedent: 0 |
|
:start-after: [start submit_or_run] |
|
:end-before: [end submit_or_run] |
|
|
|
If you not start your Apache DolphinScheduler server, you could find the way in |
|
:ref:`start:start Python gateway server` and it would have more detail about related server |
|
start. Beside attribute `run`, we have attribute `submit` for object `ProcessDefinition` |
|
and it just submit workflow to the daemon but not setting the schedule information. For |
|
more detail you could see :ref:`concept:process definition`. |
|
|
|
DAG Graph After Tutorial Run |
|
---------------------------- |
|
|
|
After we run the tutorial code, you could login Apache DolphinScheduler web UI, |
|
go and see the `DolphinScheduler project page`_. they is a new process definition be |
|
created and named "Tutorial". It create by *PyDolphinScheduler* and the DAG graph as below |
|
|
|
.. literalinclude:: ../../src/pydolphinscheduler/examples/tutorial.py |
|
:language: text |
|
:lines: 24-28 |
|
|
|
.. _`DolphinScheduler project page`: https://dolphinscheduler.apache.org/en-us/docs/latest/user_doc/guide/project.html |
|
.. _`Python context manager`: https://docs.python.org/3/library/stdtypes.html#context-manager-types
|
|
|