Inputs and outputs¶
In TaskFlow there are multiple ways to provide inputs for your tasks and flows and get information from them. This document describes one of them, that involves task arguments and results. There are also notifications, which allow you to get notified when a task or flow changes state. You may also opt to use the persistence layer itself directly.
Flow inputs and outputs¶
Tasks accept inputs via task arguments and provide outputs via task results (see arguments and results for more details). This is the standard and recommended way to pass data from one task to another. Of course not every task argument needs to be provided to some other task of a flow, and not every task result should be consumed by every task.
If some value is required by one or more tasks of a flow, but it is not
provided by any task, it is considered to be flow input, and must be put
into the storage before the flow is run. A set of names required by a flow can
be retrieved via that flow’s requires
property. These names can be used to
determine what names may be applicable for placing in storage ahead of time
and which names are not applicable.
All values provided by tasks of the flow are considered to be flow outputs; the
set of names of such values is available via the provides
property of the
flow.
For example:
>>> class MyTask(task.Task):
... def execute(self, **kwargs):
... return 1, 2
...
>>> flow = linear_flow.Flow('test').add(
... MyTask(requires='a', provides=('b', 'c')),
... MyTask(requires='b', provides='d')
... )
>>> flow.requires
frozenset(['a'])
>>> sorted(flow.provides)
['b', 'c', 'd']
As you can see, this flow does not require b, as it is provided by the fist task.
Engine and storage¶
The storage layer is how an engine persists flow and task details (for more in-depth details see persistence).
Inputs¶
As mentioned above, if some value is required by one or more tasks of a flow,
but is not provided by any task, it is considered to be flow input, and
must be put into the storage before the flow is run. On failure to do
so MissingDependencies
is raised by the engine
prior to running:
>>> class CatTalk(task.Task):
... def execute(self, meow):
... print meow
... return "cat"
...
>>> class DogTalk(task.Task):
... def execute(self, woof):
... print woof
... return "dog"
...
>>> flo = linear_flow.Flow("cat-dog")
>>> flo.add(CatTalk(), DogTalk(provides="dog"))
<taskflow.patterns.linear_flow.Flow object at 0x...>
>>> engines.run(flo)
Traceback (most recent call last):
...
taskflow.exceptions.MissingDependencies:
taskflow.patterns.linear_flow.Flow: cat-dog;
2 requires ['meow', 'woof'] but no other entity produces said requirements
The recommended way to provide flow inputs is to use the store
parameter
of the engine helpers (run()
or
load()
):
>>> class CatTalk(task.Task):
... def execute(self, meow):
... print meow
... return "cat"
...
>>> class DogTalk(task.Task):
... def execute(self, woof):
... print woof
... return "dog"
...
>>> flo = linear_flow.Flow("cat-dog")
>>> flo.add(CatTalk(), DogTalk(provides="dog"))
<taskflow.patterns.linear_flow.Flow object at 0x...>
>>> result = engines.run(flo, store={'meow': 'meow', 'woof': 'woof'})
meow
woof
>>> pprint(result)
{'dog': 'dog', 'meow': 'meow', 'woof': 'woof'}
You can also directly interact with the engine storage layer to add additional
values, note that if this route is used you can’t use the helper method
run()
. Instead,
you must activate the engine’s run method directly
run()
:
>>> flo = linear_flow.Flow("cat-dog")
>>> flo.add(CatTalk(), DogTalk(provides="dog"))
<taskflow.patterns.linear_flow.Flow object at 0x...>
>>> eng = engines.load(flo, store={'meow': 'meow'})
>>> eng.storage.inject({"woof": "bark"})
>>> eng.run()
meow
bark
Outputs¶
As you can see from examples above, the run method returns all flow outputs in
a dict
. This same data can be fetched via
fetch_all()
method of the engines storage
object. You can also get single results using the
engines storage objects fetch()
method.
For example:
>>> eng = engines.load(flo, store={'meow': 'meow', 'woof': 'woof'})
>>> eng.run()
meow
woof
>>> pprint(eng.storage.fetch_all())
{'dog': 'dog', 'meow': 'meow', 'woof': 'woof'}
>>> print(eng.storage.fetch("dog"))
dog