Hypothesis for Django users

Hypothesis offers a number of features specific for Django testing, available in the hypothesis[django] extra. This is tested against each supported series with mainstream or extended support - if you’re still getting security patches, you can test with Hypothesis.

Using it is quite straightforward: All you need to do is subclass hypothesis.extra.django.TestCase or hypothesis.extra.django.TransactionTestCase and you can use @given as normal, and the transactions will be per example rather than per test function as they would be if you used @given with a normal django test suite (this is important because your test function will be called multiple times and you don’t want them to interfere with each other). Test cases on these classes that do not use @given will be run as normal.

I strongly recommend not using TransactionTestCase unless you really have to. Because Hypothesis runs this in a loop the performance problems it normally has are significantly exacerbated and your tests will be really slow. If you are using TransactionTestCase, you may need to use @settings(suppress_health_check=[HealthCheck.too_slow]) to avoid errors due to slow example generation.

Having set up a test class, you can now pass @given a strategy for Django models:

For example, using the trivial django project I have for testing:

>>> from hypothesis.extra.django.models import models
>>> from toystore.models import Customer
>>> c = models(Customer).example()
>>> c
<Customer: Customer object>
>>> c.email
'jaime.urbina@gmail.com'
>>> c.name
'\U00109d3d\U000e07be\U000165f8\U0003fabf\U000c12cd\U000f1910\U00059f12\U000519b0\U0003fabf\U000f1910\U000423fb\U000423fb\U00059f12\U000e07be\U000c12cd\U000e07be\U000519b0\U000165f8\U0003fabf\U0007bc31'
>>> c.age
-873375803

Hypothesis has just created this with whatever the relevant type of data is.

Obviously the customer’s age is implausible, which is only possible because we have not used (eg) MinValueValidator to set the valid range for this field (or used a PositiveSmallIntegerField, which would only need a maximum value validator).

If you do have validators attached, Hypothesis will only generate examples that pass validation. Sometimes that will mean that we fail a HealthCheck because of the filtering, so let’s explicitly pass a strategy to skip validation at the strategy level:

Note

Inference from validators will be much more powerful when issue #1116 is implemented, but there will always be some edge cases that require you to pass an explicit strategy.

>>> from hypothesis.strategies import integers
>>> c = models(Customer, age=integers(min_value=0, max_value=120)).example()
>>> c
<Customer: Customer object>
>>> c.age
5

Tips and tricks

Custom field types

If you have a custom Django field type you can register it with Hypothesis’s model deriving functionality by registering a default strategy for it:

>>> from toystore.models import CustomishField, Customish
>>> models(Customish).example()
hypothesis.errors.InvalidArgument: Missing arguments for mandatory field
    customish for model Customish
>>> from hypothesis.extra.django.models import add_default_field_mapping
>>> from hypothesis.strategies import just
>>> add_default_field_mapping(CustomishField, just("hi"))
>>> x = models(Customish).example()
>>> x.customish
'hi'

Note that this mapping is on exact type. Subtypes will not inherit it.

Generating child models

For the moment there’s no explicit support in hypothesis-django for generating dependent models. i.e. a Company model will generate no Shops. However if you want to generate some dependent models as well, you can emulate this by using the flatmap function as follows:

from hypothesis.strategies import lists, just

def generate_with_shops(company):
  return lists(models(Shop, company=just(company))).map(lambda _: company)

company_with_shops_strategy = models(Company).flatmap(generate_with_shops)

Lets unpack what this is doing:

The way flatmap works is that we draw a value from the original strategy, then apply a function to it which gives us a new strategy. We then draw a value from that strategy. So in this case we’re first drawing a company, and then we’re drawing a list of shops belonging to that company: The just strategy is a strategy such that drawing it always produces the individual value, so models(Shop, company=just(company)) is a strategy that generates a Shop belonging to the original company.

So the following code would give us a list of shops all belonging to the same company:

models(Company).flatmap(lambda c: lists(models(Shop, company=just(c))))

The only difference from this and the above is that we want the company, not the shops. This is where the inner map comes in. We build the list of shops and then throw it away, instead returning the company we started for. This works because the models that Hypothesis generates are saved in the database, so we’re essentially running the inner strategy purely for the side effect of creating those children in the database.

Using default field values

Hypothesis ignores field defaults and always tries to generate values, even if it doesn’t know how to. You can tell it to use the default value for a field instead of generating one by passing fieldname=default_value to models():

>>> from toystore.models import DefaultCustomish
>>> models(DefaultCustomish).example()
hypothesis.errors.InvalidArgument: Missing arguments for mandatory field
    customish for model DefaultCustomish
>>> from hypothesis.extra.django.models import default_value
>>> x = models(DefaultCustomish, customish=default_value).example()
>>> x.customish
'b'