Stateful testing¶
With @given
, your tests are still something that
you mostly write yourself, with Hypothesis providing some data.
With Hypothesis’s stateful testing, Hypothesis instead tries to generate
not just data but entire tests. You specify a number of primitive
actions that can be combined together, and then Hypothesis will
try to find sequences of those actions that result in a failure.
Tip
Before reading this reference documentation, we recommend reading How not to Die Hard with Hypothesis and An Introduction to Rule-Based Stateful Testing, in that order. The implementation details will make more sense once you’ve seen them used in practice, and know why each method or decorator is available.
Note
This style of testing is often called model-based testing, but in Hypothesis is called stateful testing (mostly for historical reasons - the original implementation of this idea in Hypothesis was more closely based on ScalaCheck’s stateful testing where the name is more apt). Both of these names are somewhat misleading: You don’t really need any sort of formal model of your code to use this, and it can be just as useful for pure APIs that don’t involve any state as it is for stateful ones.
It’s perhaps best to not take the name of this sort of testing too seriously. Regardless of what you call it, it is a powerful form of testing which is useful for most non-trivial APIs.
You may not need state machines¶
The basic idea of stateful testing is to make Hypothesis choose actions as well as values for your test, and state machines are a great declarative way to do just that.
For simpler cases though, you might not need them at all - a standard test
with @given
might be enough, since you can use
data()
in branches or loops. In fact, that’s
how the state machine explorer works internally. For more complex workloads
though, where a higher level API comes into it’s own, keep reading!
Rule-based state machines¶
- class hypothesis.stateful.RuleBasedStateMachine[source]¶
A RuleBasedStateMachine gives you a structured way to define state machines.
The idea is that a state machine carries a bunch of types of data divided into Bundles, and has a set of rules which may read data from bundles (or just from normal strategies) and push data onto bundles. At any given point a random applicable rule will be executed.
A rule is very similar to a normal @given
based test in that it takes
values drawn from strategies and passes them to a user defined test function.
The key difference is that where @given
based tests must be independent,
rules can be chained together - a single test run may involve multiple rule
invocations, which may interact in various ways.
Rules can take normal strategies as arguments, or a specific kind of strategy called a Bundle. A Bundle is a named collection of generated values that can be reused by other operations in the test. They are populated with the results of rules, and may be used as arguments to rules, allowing data to flow from one rule to another, and rules to work on the results of previous computations or actions.
You can think of each value that gets added to any Bundle as being assigned to
a new variable. Drawing a value from the bundle strategy means choosing one of
the corresponding variables and using that value, and
consumes()
as a del
statement for that variable.
If you can replace use of Bundles with instance attributes of the class that
is often simpler, but often Bundles are strictly more powerful.
The following rule based state machine example is a simplified version of a
test for Hypothesis’s example database implementation. An example database
maps keys to sets of values, and in this test we compare one implementation of
it to a simplified in memory model of its behaviour, which just stores the same
values in a Python dict
. The test then runs operations against both the
real database and the in-memory representation of it and looks for discrepancies
in their behaviour.
import shutil
import tempfile
from collections import defaultdict
import hypothesis.strategies as st
from hypothesis.database import DirectoryBasedExampleDatabase
from hypothesis.stateful import Bundle, RuleBasedStateMachine, rule
class DatabaseComparison(RuleBasedStateMachine):
def __init__(self):
super().__init__()
self.tempd = tempfile.mkdtemp()
self.database = DirectoryBasedExampleDatabase(self.tempd)
self.model = defaultdict(set)
keys = Bundle("keys")
values = Bundle("values")
@rule(target=keys, k=st.binary())
def add_key(self, k):
return k
@rule(target=values, v=st.binary())
def add_value(self, v):
return v
@rule(k=keys, v=values)
def save(self, k, v):
self.model[k].add(v)
self.database.save(k, v)
@rule(k=keys, v=values)
def delete(self, k, v):
self.model[k].discard(v)
self.database.delete(k, v)
@rule(k=keys)
def values_agree(self, k):
assert set(self.database.fetch(k)) == self.model[k]
def teardown(self):
shutil.rmtree(self.tempd)
TestDBComparison = DatabaseComparison.TestCase
In this we declare two bundles - one for keys, and one for values.
We have two trivial rules which just populate them with data (k
and v
),
and three non-trivial rules:
save
saves a value under a key and delete
removes a value from a key,
in both cases also updating the model of what should be in the database.
values_agree
then checks that the contents of the database agrees with the
model for a particular key.
We can then integrate this into our test suite by getting a unittest TestCase from it:
TestTrees = DatabaseComparison.TestCase
# Or just run with pytest's unittest support
if __name__ == "__main__":
unittest.main()
This test currently passes, but if we comment out the line where we call self.model[k].discard(v)
,
we would see the following output when run under pytest:
AssertionError: assert set() == {b''}
------------ Hypothesis ------------
state = DatabaseComparison()
var1 = state.add_key(k=b'')
var2 = state.add_value(v=var1)
state.save(k=var1, v=var2)
state.delete(k=var1, v=var2)
state.values_agree(k=var1)
state.teardown()
Note how it’s printed out a very short program that will demonstrate the
problem. The output from a rule based state machine should generally be pretty
close to Python code - if you have custom repr
implementations that don’t
return valid Python then it might not be, but most of the time you should just
be able to copy and paste the code into a test to reproduce it.
You can control the detailed behaviour with a settings object on the TestCase (this is a normal hypothesis settings object using the defaults at the time the TestCase class was first referenced). For example if you wanted to run fewer examples with larger programs you could change the settings to:
DatabaseComparison.TestCase.settings = settings(
max_examples=50, stateful_step_count=100
)
Which doubles the number of steps each program runs and halves the number of test cases that will be run.
Rules¶
As said earlier, rules are the most common feature used in RuleBasedStateMachine.
They are defined by applying the rule()
decorator
on a function.
Note that RuleBasedStateMachine must have at least one rule defined and that
a single function cannot be used to define multiple rules (this to avoid having
multiple rules doing the same things).
Due to the stateful execution method, rules generally cannot take arguments
from other sources such as fixtures or pytest.mark.parametrize
- consider
providing them via a strategy such as sampled_from()
instead.
- hypothesis.stateful.rule(*, targets=(), target=None, **kwargs)[source]¶
Decorator for RuleBasedStateMachine. Any Bundle present in
target
ortargets
will define where the end result of this function should go. If both are empty then the end result will be discarded.target
must be a Bundle, or if the result should go to multiple bundles you can pass a tuple of them as thetargets
argument. It is invalid to use both arguments for a single rule. If the result should go to exactly one of several bundles, define a separate rule for each case.kwargs then define the arguments that will be passed to the function invocation. If their value is a Bundle, or if it is
consumes(b)
whereb
is a Bundle, then values that have previously been produced for that bundle will be provided. Ifconsumes
is used, the value will also be removed from the bundle.Any other kwargs should be strategies and values from them will be provided.
- hypothesis.stateful.consumes(bundle)[source]¶
When introducing a rule in a RuleBasedStateMachine, this function can be used to mark bundles from which each value used in a step with the given rule should be removed. This function returns a strategy object that can be manipulated and combined like any other.
For example, a rule declared with
@rule(value1=b1, value2=consumes(b2), value3=lists(consumes(b3)))
will consume a value from Bundle
b2
and several values from Bundleb3
to populatevalue2
andvalue3
each time it is executed.
Initializes¶
Initializes are a special case of rules that are guaranteed to be run at most once at the beginning of a run (i.e. before any normal rule is called). Note if multiple initialize rules are defined, they may be called in any order, and that order will vary from run to run.
Initializes are typically useful to populate bundles:
- hypothesis.stateful.initialize(*, targets=(), target=None, **kwargs)[source]¶
Decorator for RuleBasedStateMachine.
An initialize decorator behaves like a rule, but all
@initialize()
decorated methods will be called before any@rule()
decorated methods, in an arbitrary order. Each@initialize()
method will be called exactly once per run, unless one raises an exception - after which only the.teardown()
method will be run.@initialize()
methods may not have preconditions.
import hypothesis.strategies as st
from hypothesis.stateful import Bundle, RuleBasedStateMachine, initialize, rule
name_strategy = st.text(min_size=1).filter(lambda x: "/" not in x)
class NumberModifier(RuleBasedStateMachine):
folders = Bundle("folders")
files = Bundle("files")
@initialize(target=folders)
def init_folders(self):
return "/"
@rule(target=folders, name=name_strategy)
def create_folder(self, parent, name):
return f"{parent}/{name}"
@rule(target=files, name=name_strategy)
def create_file(self, parent, name):
return f"{parent}/{name}"
Preconditions¶
While it’s possible to use assume()
in RuleBasedStateMachine rules, if you
use it in only a few rules you can quickly run into a situation where few or
none of your rules pass their assumptions. Thus, Hypothesis provides a
precondition()
decorator to avoid this problem. The precondition()
decorator is used on rule
-decorated functions, and must be given a function
that returns True or False based on the RuleBasedStateMachine instance.
- hypothesis.stateful.precondition(precond)[source]¶
Decorator to apply a precondition for rules in a RuleBasedStateMachine. Specifies a precondition for a rule to be considered as a valid step in the state machine, which is more efficient than using
assume()
within the rule. Theprecond
function will be called with the instance of RuleBasedStateMachine and should return True or False. Usually it will need to look at attributes on that instance.For example:
class MyTestMachine(RuleBasedStateMachine): state = 1 @precondition(lambda self: self.state != 0) @rule(numerator=integers()) def divide_with(self, numerator): self.state = numerator / self.state
If multiple preconditions are applied to a single rule, it is only considered a valid step when all of them return True. Preconditions may be applied to invariants as well as rules.
from hypothesis.stateful import RuleBasedStateMachine, precondition, rule
class NumberModifier(RuleBasedStateMachine):
num = 0
@rule()
def add_one(self):
self.num += 1
@precondition(lambda self: self.num != 0)
@rule()
def divide_with_one(self):
self.num = 1 / self.num
By using precondition()
here instead of assume()
, Hypothesis can filter the
inapplicable rules before running them. This makes it much more likely that a
useful sequence of steps will be generated.
Note that currently preconditions can’t access bundles; if you need to use preconditions, you should store relevant data on the instance instead.
Invariants¶
Often there are invariants that you want to ensure are met after every step in a process. It would be possible to add these as rules that are run, but they would be run zero or multiple times between other rules. Hypothesis provides a decorator that marks a function to be run after every step.
- hypothesis.stateful.invariant(*, check_during_init=False)[source]¶
Decorator to apply an invariant for rules in a RuleBasedStateMachine. The decorated function will be run after every rule and can raise an exception to indicate failed invariants.
For example:
class MyTestMachine(RuleBasedStateMachine): state = 1 @invariant() def is_nonzero(self): assert self.state != 0
By default, invariants are only checked after all
@initialize()
rules have been run. Passcheck_during_init=True
for invariants which can also be checked during initialization.
from hypothesis.stateful import RuleBasedStateMachine, invariant, rule
class NumberModifier(RuleBasedStateMachine):
num = 0
@rule()
def add_two(self):
self.num += 2
if self.num > 50:
self.num += 1
@invariant()
def divide_with_one(self):
assert self.num % 2 == 0
NumberTest = NumberModifier.TestCase
Invariants can also have precondition()
s applied to them, in which case
they will only be run if the precondition function returns true.
Note that currently invariants can’t access bundles; if you need to use invariants, you should store relevant data on the instance instead.
More fine grained control¶
If you want to bypass the TestCase infrastructure you can invoke these
manually. The stateful module exposes the function run_state_machine_as_test
,
which takes an arbitrary function returning a RuleBasedStateMachine and an
optional settings parameter and does the same as the class based runTest
provided.
This is not recommended as it bypasses some important internal functions,
including reporting of statistics such as runtimes and event()
calls. It was originally added to support custom __init__
methods, but
you can now use initialize()
rules instead.