Automat is a library for concise, idiomatic Python expression of finite-state automata (particularly deterministic finite-state transducers).
Read more here, or on Read the Docs, or watch the following videos for an overview and presentation
Overview and presentation by Glyph Lefkowitz at the first talk of the first Pyninsula meetup, on February 21st, 2017:
Presentation by Clinton Roy at PyCon Australia, on August 6th 2017:
Sometimes you have to create an object whose behavior varies with its state, but still wishes to present a consistent interface to its callers.
For example, let's say you're writing the software for a coffee machine. It has a lid that can be opened or closed, a chamber for water, a chamber for coffee beans, and a button for "brew".
There are a number of possible states for the coffee machine. It might or might not have water. It might or might not have beans. The lid might be open or closed. The "brew" button should only actually attempt to brew coffee in one of these configurations, and the "open lid" button should only work if the coffee is not, in fact, brewing.
With diligence and attention to detail, you can implement this correctly using
a collection of attributes on an object; has_water
, has_beans
,
is_lid_open
and so on. However, you have to keep all these attributes
consistent. As the coffee maker becomes more complex - perhaps you add an
additional chamber for flavorings so you can make hazelnut coffee, for
example - you have to keep adding more and more checks and more and more
reasoning about which combinations of states are allowed.
Rather than adding tedious 'if' checks to every single method to make sure that each of these flags are exactly what you expect, you can use a state machine to ensure that if your code runs at all, it will be run with all the required values initialized, because they have to be called in the order you declare them.
You can read about state machines and their advantages for Python programmers in considerably more detail in this excellent series of articles from ClusterHQ.
There are dozens of libraries on PyPI implementing state machines. So it behooves me to say why yet another one would be a good idea.
Automat is designed around this principle: while organizing your code around state machines is a good idea, your callers don't, and shouldn't have to, care that you've done so. In Python, the "input" to a stateful system is a method call; the "output" may be a method call, if you need to invoke a side effect, or a return value, if you are just performing a computation in memory. Most other state-machine libraries require you to explicitly create an input object, provide that object to a generic "input" method, and then receive results, sometimes in terms of that library's interfaces and sometimes in terms of classes you define yourself.
For example, a snippet of the coffee-machine example above might be implemented as follows in naive Python:
class CoffeeMachine(object):
def brew_button(self):
if self.has_water and self.has_beans and not self.is_lid_open:
self.heat_the_heating_element()
# ...
With Automat, you'd create a class with a MethodicalMachine
attribute:
from automat import MethodicalMachine
class CoffeeBrewer(object):
_machine = MethodicalMachine()
and then you would break the above logic into two pieces - the brew_button
input, declared like so:
@_machine.input()
def brew_button(self):
"The user pressed the 'brew' button."
It wouldn't do any good to declare a method body on this, however, because input methods don't actually execute their bodies when called; doing actual work is the output's job:
@_machine.output()
def _heat_the_heating_element(self):
"Heat up the heating element, which should cause coffee to happen."
self._heating_element.turn_on()
As well as a couple of states - and for simplicity's sake let's say that the
only two states are have_beans
and dont_have_beans
:
@_machine.state()
def have_beans(self):
"In this state, you have some beans."
@_machine.state(initial=True)
def dont_have_beans(self):
"In this state, you don't have any beans."
dont_have_beans
is the initial
state because CoffeeBrewer
starts without beans
in it.
(And another input to put some beans in:)
@_machine.input()
def put_in_beans(self):
"The user put in some beans."
Finally, you hook everything together with the upon
method of the functions
decorated with _machine.state
:
# When we don't have beans, upon putting in beans, we will then have beans
# (and produce no output)
dont_have_beans.upon(put_in_beans, enter=have_beans, outputs=[])
# When we have beans, upon pressing the brew button, we will then not have
# beans any more (as they have been entered into the brewing chamber) and
# our output will be heating the heating element.
have_beans.upon(brew_button, enter=dont_have_beans,
outputs=[_heat_the_heating_element])
To users of this coffee machine class though, it still looks like a POPO (Plain Old Python Object):
>>> coffee_machine = CoffeeMachine()
>>> coffee_machine.put_in_beans()
>>> coffee_machine.brew_button()
All of the inputs are provided by calling them like methods, all of the
outputs are automatically invoked when they are produced according to the
outputs specified to upon
and all of the states are simply opaque tokens -
although the fact that they're defined as methods like inputs and outputs
allows you to put docstrings on them easily to document them.
Don't do that.
One major reason for having a state machine is that you want the callers of the state machine to just provide the appropriate input to the machine at the appropriate time, and not have to check themselves what state the machine is in. So if you are tempted to write some code like this:
if connection_state_machine.state == "CONNECTED":
connection_state_machine.send_message()
else:
print("not connected")
Instead, just make your calling code do this:
connection_state_machine.send_message()
and then change your state machine to look like this:
@_machine.state()
def connected(self):
"connected"
@_machine.state()
def not_connected(self):
"not connected"
@_machine.input()
def send_message(self):
"send a message"
@_machine.output()
def _actually_send_message(self):
self._transport.send(b"message")
@_machine.output()
def _report_sending_failure(self):
print("not connected")
connected.upon(send_message, enter=connected, [_actually_send_message])
not_connected.upon(send_message, enter=not_connected, [_report_sending_failure])
so that the responsibility for knowing which state the state machine is in remains within the state machine itself.
Quite often you want to be able to pass parameters to your methods, as well as inspecting their results. For example, when you brew the coffee, you might expect a cup of coffee to result, and you would like to see what kind of coffee it is. And if you were to put delicious hand-roasted small-batch artisanal beans into the machine, you would expect a better cup of coffee than if you were to use mass-produced beans. You would do this in plain old Python by adding a parameter, so that's how you do it in Automat as well.
@_machine.input()
def put_in_beans(self, beans):
"The user put in some beans."
However, one important difference here is that we can't add any implementation code to the input method. Inputs are purely a declaration of the interface; the behavior must all come from outputs. Therefore, the change in the state of the coffee machine must be represented as an output. We can add an output method like this:
@_machine.output()
def _save_beans(self, beans):
"The beans are now in the machine; save them."
self._beans = beans
and then connect it to the put_in_beans
by changing the transition from
dont_have_beans
to have_beans
like so:
dont_have_beans.upon(put_in_beans, enter=have_beans,
outputs=[_save_beans])
Now, when you call:
coffee_machine.put_in_beans("real good beans")
the machine will remember the beans for later.
So how do we get the beans back out again? One of our outputs needs to have a
return value. It would make sense if our brew_button
method returned the cup
of coffee that it made, so we should add an output. So, in addition to heating
the heating element, let's add a return value that describes the coffee. First
a new output:
@_machine.output()
def _describe_coffee(self):
return "A cup of coffee made with {}.".format(self._beans)
Note that we don't need to check first whether self._beans
exists or not,
because we can only reach this output method if the state machine says we've
gone through a set of states that sets this attribute.
Now, we need to hook up _describe_coffee
to the process of brewing, so change
the brewing transition to:
have_beans.upon(brew_button, enter=dont_have_beans,
outputs=[_heat_the_heating_element,
_describe_coffee])
Now, we can call it:
>>> coffee_machine.brew_button()
[None, 'A cup of coffee made with real good beans.']
Except... wait a second, what's that None
doing there?
Since every input can produce multiple outputs, in automat, the default return
value from every input invocation is a list
. In this case, we have both
_heat_the_heating_element
and _describe_coffee
outputs, so we're seeing
both of their return values. However, this can be customized, with the
collector
argument to upon
; the collector
is a callable which takes an
iterable of all the outputs' return values and "collects" a single return value
to return to the caller of the state machine.
In this case, we only care about the last output, so we can adjust the call to
upon
like this:
have_beans.upon(brew_button, enter=dont_have_beans,
outputs=[_heat_the_heating_element,
_describe_coffee],
collector=lambda iterable: list(iterable)[-1]
)
And now, we'll get just the return value we want:
>>> coffee_machine.brew_button()
'A cup of coffee made with real good beans.'
If I can't get the state of the state machine, how can I save it to (a database, an API response, a file on disk...)
There are APIs for serializing the state machine.
First, you have to decide on a persistent representation of each state, via the
serialized=
argument to the MethodicalMachine.state()
decorator.
Let's take this very simple "light switch" state machine, which can be on or off, and flipped to reverse its state:
class LightSwitch(object):
_machine = MethodicalMachine()
@_machine.state(serialized="on")
def on_state(self):
"the switch is on"
@_machine.state(serialized="off", initial=True)
def off_state(self):
"the switch is off"
@_machine.input()
def flip(self):
"flip the switch"
on_state.upon(flip, enter=off_state, outputs=[])
off_state.upon(flip, enter=on_state, outputs=[])
In this case, we've chosen a serialized representation for each state via the
serialized
argument. The on state is represented by the string "on"
, and
the off state is represented by the string "off"
.
Now, let's just add an input that lets us tell if the switch is on or not.
@_machine.input()
def query_power(self):
"return True if powered, False otherwise"
@_machine.output()
def _is_powered(self):
return True
@_machine.output()
def _not_powered(self):
return False
on_state.upon(query_power, enter=on_state, outputs=[_is_powered],
collector=next)
off_state.upon(query_power, enter=off_state, outputs=[_not_powered],
collector=next)
To save the state, we have the MethodicalMachine.serializer()
method. A
method decorated with @serializer()
gets an extra argument injected at the
beginning of its argument list: the serialized identifier for the state. In
this case, either "on"
or "off"
. Since state machine output methods can
also affect other state on the object, a serializer method is expected to
return all relevant state for serialization.
For our simple light switch, such a method might look like this:
@_machine.serializer()
def save(self, state):
return {"is-it-on": state}
Serializers can be public methods, and they can return whatever you like. If
necessary, you can have different serializers - just multiple methods decorated
with @_machine.serializer()
- for different formats; return one data-structure
for JSON, one for XML, one for a database row, and so on.
When it comes time to unserialize, though, you generally want a private method, because an unserializer has to take a not-fully-initialized instance and populate it with state. It is expected to return the serialized machine state token that was passed to the serializer, but it can take whatever arguments you like. Of course, in order to return that, it probably has to take it somewhere in its arguments, so it will generally take whatever a paired serializer has returned as an argument.
So our unserializer would look like this:
@_machine.unserializer()
def _restore(self, blob):
return blob["is-it-on"]
Generally you will want a classmethod deserialization constructor which you write yourself to call this, so that you know how to create an instance of your own object, like so:
@classmethod
def from_blob(cls, blob):
self = cls()
self._restore(blob)
return self
Saving and loading our LightSwitch
along with its state-machine state can now
be accomplished as follows:
>>> switch1 = LightSwitch()
>>> switch1.query_power()
False
>>> switch1.flip()
[]
>>> switch1.query_power()
True
>>> blob = switch1.save()
>>> switch2 = LightSwitch.from_blob(blob)
>>> switch2.query_power()
True
More comprehensive (tested, working) examples are present in docs/examples
.
Go forth and machine all the state!