.. | ||
examples | ||
src/pydolphinscheduler | ||
tests | ||
.coveragerc | ||
.flake8 | ||
.isort.cfg | ||
pytest.ini | ||
README.md | ||
requirements_dev.txt | ||
requirements.txt | ||
ROADMAP.md | ||
setup.cfg | ||
setup.py |
pydolphinscheduler
pydolphinscheduler is python API for Apache DolphinScheduler, which allow you definition your workflow by python code, aka workflow-as-codes.
Quick Start
Notice: For now, due to pydolphinscheduler without release to any binary tarball or PyPI, you have to clone Apache DolphinScheduler code from GitHub to ensure quick start setup
Here we show you how to install and run a simple example of pydolphinscheduler
Prepare
# Clone code from github
git clone git@github.com:apache/dolphinscheduler.git
# Install pydolphinscheduler from source
cd dolphinscheduler-python/pydolphinscheduler
pip install -e .
Start Server And Run Example
Before you run an example, you have to start backend server. You could follow development setup section "DolphinScheduler Standalone Quick Start" to set up developer environment. You have to start backend and frontend server in this step, which mean that you could view DolphinScheduler UI in your browser with URL http://localhost:12345/dolphinscheduler
After backend server is being start, all requests from pydolphinscheduler
would be sent to backend server.
And for now we could run a simple example by:
cd dolphinscheduler-python/pydolphinscheduler
python example/tutorial.py
NOTICE: Since Apache DolphinScheduler's tenant is requests while running command, you might need to change tenant value in
example/tutorial.py
. For now the value istenant_exists
, please change it to username exists in you environment.
After command execute, you could see a new project with single process definition named tutorial in the UI.
Until now, we finish quick start by an example of pydolphinscheduler and run it. If you want to inspect or join pydolphinscheduler develop, you could take a look at develop
Develop
pydolphinscheduler is python API for Apache DolphinScheduler, it just defines what workflow look like instead of store or execute it. We here use py4j to dynamically access Java Virtual Machine.
Setup Develop Environment
We already clone the code in quick start, so next step we have to open pydolphinscheduler project
in you editor. We recommend you use pycharm instead of IntelliJ IDEA to open it. And you could
just open directory dolphinscheduler-python/pydolphinscheduler
instead of dolphinscheduler-python
.
Then you should add developer dependence to make sure you could run test and check code style locally
pip install -r requirements_dev.txt
Brief Concept
Apache DolphinScheduler is design to define workflow by UI, and pydolphinscheduler try to define it by code. When
define by code, user usually do not care user, tenant, or queue exists or not. All user care about is created
a new workflow by the code his/her definition. So we have some side object in pydolphinscheduler/side
directory, their only check object exists or not, and create them if not exists.
Process Definition
pydolphinscheduler workflow object name, process definition is also same name as Java object(maybe would be change to other word for more simple).
Tasks
pydolphinscheduler tasks object, we use tasks to define exact job we want DolphinScheduler do for us. For now,
we only support shell
task to execute shell task. This link list all tasks support in DolphinScheduler
and would be implemented in the further.
Code Style
We use isort to automatically keep Python imports alphabetically, and use Black for code formatter and Flake8 for pep8 checker. If you use pycharmor IntelliJ IDEA, maybe you could follow Black-integration to configure them in your environment.
Our Python API CI would automatically run code style checker and unittest when you submit pull request in GitHub, you could also run static check locally.
# We recommend you run isort and Black before Flake8, because Black could auto fix some code style issue
# but Flake8 just hint when code style not match pep8
# Run Isort
isort .
# Run Black
black .
# Run Flake8
flake8
Testing
pydolphinscheduler using pytest to test our codebase. GitHub Action will run our test when you create
pull request or commit to dev branch, with python version 3.6|3.7|3.8|3.9
and operating system linux|macOS|windows
.
To test locally, you could directly run pytest after set PYTHONPATH
PYTHONPATH=src/ pytest
We try to keep pydolphinscheduler usable through unit test coverage. 90% test coverage is our target, but for
now, we require test coverage up to 85%, and each pull request leas than 85% would fail our CI step
Tests coverage
. We use coverage to check our test coverage, and you could check it locally by
run command.
coverage run && coverage report
It would not only run unit test but also show each file coverage which cover rate less than 100%, and TOTAL
line show you total coverage of you code. If your CI failed with coverage you could go and find some reason by
this command output.