outflow 0.7.0

Creator: codyrutscher

Last updated:

Add to Cart

Description:

outflow 0.7.0

Outflow is a framework that helps you build and run task workflows.
The api is as simple as possible while still giving the user full control over the definition and execution of the
workflows.
Feature highlight :

Simple but powerful API
Support for parallelized and distributed execution
Centralized command line interface for your pipeline commands
Integrated database access, sqlalchemy models and alembic migrations
Executions and exceptions logging for tracability
Strict type and input/output checking for a robust pipeline

Check out our documentation for more information.
Installing
Install and update using pip:
pip install -U outflow

Quick start
One file starter
First, create a pipeline.py script:
# -- pipeline.py

from outflow.core.commands import Command, RootCommand
from outflow.core.pipeline import Pipeline
from outflow.core.tasks import as_task

# with the as_task decorator, the function will be automatically converted into a Task subclass
# the signature of the function, including the return type, is used to determine task inputs and outputs
@as_task
def GetValues() -> {"word1": str, "word2": str}:
return {"word1": "Hello", "word2": "world!"}

# default values can also be used as inputs
@as_task
def Concatenate(word1: str, word2: str) -> {"result": str}:
result = f"{word1} {word2}"
return result # you can return the value directly if your task has only one output

# A task can have side-effects and returns nothing
@as_task
def PrintResult(result: str):
print(result)

@RootCommand.subcommand()
class HelloWorld(Command):
def setup_tasks(self):
# instantiate the tasks
get_values = GetValues()
concatenate = Concatenate(word2="outflow!") # you can override task inputs value at instantiation
print_result = PrintResult()

# build the workflow
get_values >> concatenate >> print_result


# instantiate and run the pipeline
with Pipeline(
root_directory=None,
settings_module="outflow.core.pipeline.default_settings",
force_dry_run=True,
) as pipeline:
result = pipeline.run()

and run your first Outflow pipeline:
$ python pipeline.py hello_world

A robust, configurable and well-organized pipeline
You had a brief overview of Outflow's features and you want to go further. Outflow offers command line tools to help you to start your pipeline project.
First, we will need to auto-generate the pipeline structure -- a collection of files including the pipeline settings, the database and the cluster configuration, etc.
$ python -m outflow management create pipeline my_pipeline

Then, we have to create a plugin -- a dedicated folder regrouping the commands, the tasks as well as the description of the database (the models)
$ python -m outflow management create plugin my_namespace.my_plugin --plugin_dir my_pipeline/plugins/my_plugin

In the my_pipeline/settings.py file, add your new plugin to the plugin list:
PLUGINS = [
'outflow.management',
'my_namespace.my_plugin',
]

and run the following command:
$ python ./my_pipeline/manage.py my_plugin

You'll see the following output on the command line:
* outflow.core.pipeline.pipeline - pipeline.py:325 - INFO - No cluster config found in configuration file, running in a local cluster
* my_namespace.my_plugin.commands - commands.py:49 - INFO - Hello from my_plugin

Your pipeline is up and running. You can now start adding new tasks and commands.
Contributing
For guidance on setting up a development environment and how to make a contribution to Outflow, see the contributing guidelines.

License

For personal and professional use. You cannot resell or redistribute these repositories in their original state.

Customer Reviews

There are no reviews.