Tasks
In its most basic form, any data pipeline can be thought of as a series of discrete steps that run in some sort of sequence. For example, ETL pipelines generally have three steps: extract --> transform --> load.
Prism projects are no different. A Prism project is composed of a set of tasks, and these tasks contain the brunt of the project's core logic.
What are tasks?
In Prism, tasks can be either classes or functions. Here what they look like:
We'll go into the technical details of both next.
Class-based tasks
Tasks are classes that inherit an abstract class called PrismTask
. There are two requirements to which all tasks must adhere:
Each task must have method called
run
. This method should contain all the business logic for the task, and it should return a non-null output.Tasks must live in a
*.py
file in thetasks
directory.
Important: the output of a task's run
function is what's used by downstream tasks in your pipeline. The return value can be anything – a Pandas or Spark DataFrame, a Numpy array, a string, a dictionary, whatever – but it cannot be null. Prism will throw an error if it is.
Apart from these two conditions, feel free to structure and define your tasks however you'd like, i.e., add other class methods, class attributes, etc:
As you can see, our HelloWorld
task is lives in the tasks
directory. It inherits the PrismTask
class, and it contains a run
function that returns a non-null string.
And that's it! Create a class that inherits the PrismTask
class and implement the run
method. Prism will take care of the rest.
Good to know: Although user-defined tasks can be arbitrarily long or complex, it is helpful to think of them as discrete steps or objectives in your pipeline. For example, if you are creating an ETL pipeline, then you may want to split your code into three tasks: an extract task, a transform task, and a load task.
For additional information, consult the API reference.
Function-based tasks
You can also define tasks using functions rather than entire classes. There's no real difference between a function-based task and a class-based task — we created the feature so that you could work with what you're most comfortable with.
In order for a function to be a task, it must:
Be decorated with the
prism.decorators.task
function
As with class-based tasks, the functions must return a non-null output and tasks and must live in a *.py
file in the tasks
directory.
Let's take a look at our original example:
The technical specifications for the @task
decorator can be found in the API reference.