Pro Test Fixture Provider
Project description
Protestr: Pro Test Fixture Provider
Protestr is a simple, powerful fixture provider for Python tests. Whether writing unit tests, integration tests, or anything in between, Protestr's intuitive API lets you generate versatile fixtures for your test cases and inject them as dependencies on demand. It's designed to maximize focus on acts and assertions by simplifying the complexities of fixture management. Its declarative syntax allows you to:
-
Re-run tests
Provide dynamic test dependencies, inject on demand, and re-run a test for different scenarios instead of duplicating it with little change. -
Ensure teardown
Have your defined cleanup logic run consistently after every test run. -
Use anywhere
Integrate seamlessly with all popular Python testing frameworks, such asunittest
,pytest
, andnose2
, facing zero disruption to your existing testing practices.
The examples in this doc have been carefully crafted to help you master its concepts and get the most out of it.
[!NOTE] Protestr was tested with Protestr.
Next Up
Quick Examples
This test expects a MongoDB container and some test users, which the test framework can't provide out of the box.
import unittest
from unittest.mock import patch as mock
class TestWithMongo(unittest.TestCase):
@mock("examples.lib.os")
def test_add_to_users_db_should_add_all_users(
self, # ✅ Provided by `unittest`
os, # ✅ Provided by `mock()`
users, # ❌ Unexpected param `users`
mongo, # ❌ Unexpected param `mongo`
):
os.environ.__getitem__.return_value = "localhost"
add_to_users_db(users)
added = mongo.client.users_db.users.count_documents({})
self.assertEqual(added, len(users))
With Protestr, you can define a fixture to generate and inject these dependencies elegantly. You can also provide multiple fixtures to repeat the test for different scenarios.
...
from protestr import provide
from examples.specs import User, MongoDB
class TestWithMongo(unittest.TestCase):
@provide( # ▶️ Fixture Ⅰ
users=[User] * 3, # ✨ Generate 3 test users. Spin up a MongoDB container.
mongo=MongoDB, # 🔌 After each test, disconnect and remove the container.
)
@provide(users=[]) # ▶️ Fixture Ⅱ: Patch the first fixture.
@mock("examples.lib.os")
def test_add_to_users_db_should_add_all_users(self, os, users, mongo):
os.environ.__getitem__.return_value = "localhost"
add_to_users_db(users)
added = mongo.client.users_db.users.count_documents({})
self.assertEqual(added, len(users))
Here, User
and MongoDB
are specs for generating test data/infrastructure.
[!NOTE] When multiple
provide()
decorators are chained, their order of execution is top to bottom. The first one must specify all specs in the fixture, whereas others only need to provide patches of the first fixture.
Protestr uses specs supplied in provide()
to generate test data/infrastructure. When
specs are specified as keyword args in provide()
, they are also injected into the
target (method/class/spec) through matching parameters, if any. Keyword specs can also
be patched in chained provide()
calls, as shown above and overridden altogether
(explained in "Using Specs"). On the other hand, non-keyword specs are
useful for generating indirect test dependencies, such as containers running in the
background.
class TestWithRedis(unittest.TestCase):
@provide(
Redis, # ✨ Spin up a Redis container in the background.
response={str: str},
)
@provide(response=None) # ✨ Recreate the container in another scenario
def test_cached_should_cache_fn(self, response):
costly_computation = MagicMock()
@cached
def fn():
costly_computation()
return response
self.assertEqual(response, fn())
self.assertEqual(response, fn())
costly_computation.assert_called_once()
Protestr offers some great specs in protestr.specs
and makes it
incredibly easy to define new ones (detailed in "Creating Specs").
Following are the definitions of the specs used above.
from protestr.specs import between
@provide(id=between(1, 99), name=str, password=str)
class User:
def __init__(self, id, name, password):
self.id = id
self.name = name
self.password = password
class MongoDB:
def __init__(self):
self.container = docker.from_env().containers.run(
"mongo", detach=True, ports={27017: 27017}
)
self.client = pymongo.MongoClient("localhost", 27017)
def __teardown__(self): # ♻️ Ensure teardown after each test.
self.client.close()
self.container.stop()
self.container.remove()
class Redis:
def __init__(self):
self.container = docker.from_env().containers.run(
"redis:8.0-M02", detach=True, ports={6379: 6379}
)
# wait for the port
time.sleep(0.1)
def __teardown__(self): # ♻️ Ensure teardown after each test.
self.container.stop()
self.container.remove()
See also: examples/.
Getting Started
Installation
Install protestr
from PyPI:
pip install protestr
Specs and Fixtures
Specs are blueprints for generating test data/infrastructure. A fixture is a combination
of specs provided to a class/function—usually a test method—using provide()
.
Specs are resolved by Protestr to generate usable values and entities. There are three types of specs:
-
Python primitives:
int
,float
,complex
,bool
, orstr
. -
Classes and functions that are callable without args.
If a constructor or a function contains required parameters, it can be transformed into a spec by auto-providing those parameters usingprovide()
(explained in "Creating Specs"). -
Tuples, lists, sets, or dictionaries of specs in any configuration, such as a list of lists of specs.
Specs are resolved in two ways:
-
By resolving
>>> from protestr import resolve >>> from protestr.specs import choice >>> bits = [choice(0, 1)] * 8 >>> resolve(bits) [1, 0, 0, 1, 1, 0, 1, 0]
-
By calling/resolving a spec-provided class/function
>>> @provide(where=choice("home", "work", "vacation")) ... def test(where): ... return where ... >>> test() 'vacation' >>> resolve(test) 'home'
The resolution of specs is recursive. If a spec produces another spec, Protestr will resolve that spec, and so on.
@provide(x=int, y=int)
def point(x, y):
return x, y
def triangle():
return [point] * 3
print(resolve(triangle))
# [(971, 704), (268, 581), (484, 548)]
[!TIP] A spec-provided class/function itself becomes a spec and can be resolved recursively.
>>> @provide(n=int) ... def f(n): ... def g(): ... return n ... return g ... >>> resolve(f) 784
Protestr simplifies spec creation so that you can create custom specs effortlessly for your testing requirements.
Creating Specs
Creating a spec usually takes two steps:
-
Write a class/function
class GeoCoordinate: def __init__(self, latitude, longitude, altitude): self.latitude = latitude self.longitude = longitude self.altitude = altitude # def geo_coordinate(latitude, longitude, altitude): # return latitude, longitude, altitude
-
Provide specs for required parameters, if any
@provide( latitude=between(-90.0, 90.0), longitude=between(-180.0, 180.0), altitude=float, ) class GeoCoordinate: def __init__(self, latitude, longitude, altitude): self.latitude = latitude self.longitude = longitude self.altitude = altitude # @provide( # latitude=between(-90.0, 90.0), # longitude=between(-180.0, 180.0), # altitude=float, # ) # def geo_coordinate(latitude, longitude, altitude): # return latitude, longitude, altitude
Thus, our new spec is ready for use like any other spec.
Using Specs
Specs can be used in the following ways.
-
Resolve
>>> resolve(GeoCoordinate).altitude 247.70713408051304 >>> GeoCoordinate().altitude 826.6117116092906
-
Override
>>> coord = GeoCoordinate(altitude=int) # Override the `altitude` spec. >>> coord.altitude 299
-
Provide
import unittest from protestr import provide class TestLocations(unittest.TestCase): @provide(locs=[GeoCoordinate] * 100) # Provide 💯 of them. def test_locations(self, locs): self.assertEqual(100, len(locs)) for loc in locs: self.assertTrue(hasattr(loc, "latitude")) self.assertTrue(hasattr(loc, "longitude")) self.assertTrue(hasattr(loc, "altitude")) if __name__ == "__main__": unittest.main()
Find more sophisticated usages in the Documentation.
Ensuring Teardown
Good fixture design demands remembering to dispose of resources at the end of tests.
Protestr takes care of it out of the box with the __teardown__
function. Whenever a
provide()
-applied function returns or terminates abnormally, it looks for
__teardown__
in each (resolved) object it provided and invokes it on the object if
found. So, all you need to do is define __teardown__
once in a class, and it will be
called every time you provide one.
class MongoDB:
def __init__(self):
...
def __teardown__(self):
self.client.close()
self.container.stop()
self.container.remove()
Documentation
protestr
$\large\textcolor{gray}{@protestr.}\textbf{provide(*specs, **kwspecs)}$
Transform a class/function to automatically generate, inject, and teardown test data/infrastructure.
@provide(
keyword1=spec1,
keyword2=spec2,
keyword3=spec3,
...
)
@provide(...)
@provide(...)
...
def fn(foo, bar, whatever, keyword1, keyword2, keyword3, ...):
...
Keywords are optional. When specs are provided as keyword arguments, the generated
objects are injected into the target through matching parameters, if any. They can also
be patched in chained provide()
calls and overridden altogether.
When multiple provide()
decorators are chained, they are executed from top to
bottom. The first one must specify all specs in the fixture, and others only need to
patch the first one. Teardowns are performed consistently after every test (see
"Ensuring Teardown").
class TestFactorial(unittest.TestCase):
@provide(
n=0,
expected=1,
)
@provide(
n=1,
# expected=1 implicitly provided from the first fixture
)
@provide(
n=5,
expected=120,
)
def test_factorial_should_return_for_valid_numbers(self, n, expected):
self.assertEqual(expected, factorial(n))
@provide(
n=float,
expected="n must be a whole number",
)
@provide(
n=between(-1000, -1),
expected="n must be >= 0",
)
def test_factorial_should_raise_for_invalid_number(self, n, expected):
try:
factorial(n)
except Exception as e:
(message,) = e.args
self.assertEqual(expected, message)
$\large\textcolor{gray}{protestr.}\textbf{resolve(spec)}$
Resolve a spec.
Specs can be any of the following types:
-
Python primitives:
int
,float
,complex
,bool
, orstr
. -
Classes and functions that are callable without args.
If a constructor or a function contains required parameters, it can be transformed into a spec by auto-providing those parameters usingprovide()
. -
Tuples, lists, sets, or dictionaries of specs in any configuration, such as a list of lists of specs.
>>> resolve(str)
'jKKbbyNgzj'
>>> resolve([bool] * 3)
[False, False, True]
>>> resolve({"name": str})
{'name': 'raaqSzSdfCIYxbIhuTGdxi'}
>>> class Foo:
... def __init__(self):
... self.who = "I'm Foo"
...
>>> resolve(Foo).who
"I'm Foo"
protestr.specs
$\large\textcolor{gray}{protestr.specs.}\textbf{between(x, y)}$
Return a spec representing a number between x
and y
.
x
and y
must be specs that evaluate to numbers. If both x
and y
evaluate to
integers, the resulting number is also an integer.
>>> resolve(between(10, -10))
3
>>> resolve(between(-10, 10.0))
-4.475185425413375
>>> resolve(between(int, int))
452
$\large\textcolor{gray}{protestr.specs.}\textbf{choice(*elems)}$
Return a spec representing a member of elems
.
>>> colors = ["red", "green", "blue"]
>>> resolve(choice(colors))
'green'
>>> resolve(choice(str)) # a char from a generated str
'T'
>>> resolve(choice(str, str, str)) # an str from three generated str objects
'NOBuybxrf'
$\large\textcolor{gray}{protestr.specs.}\textbf{choices(*elems, k)}$
Return a spec representing k
members chosen from elems
with replacement.
k
must be a spec that evaluates to some natural number.
>>> resolve(choices(["red", "green", "blue"], k=5))
['blue', 'red', 'green', 'blue', 'green']
>>> resolve(choices("red", "green", "blue", k=5))
('red', 'blue', 'red', 'blue', 'green')
>>> resolve(choices(ascii_letters, k=10))
'OLDpaXOGGj'
$\large\textcolor{gray}{protestr.specs.}\textbf{sample(*elems, k)}$
Return a spec representing k
members chosen from elems
without replacement.
k
must be a spec that evaluates to some natural number.
>>> colors = ["red", "green", "blue"]
>>> resolve(sample(colors, k=2))
['blue', 'green']
>>> resolve(sample("red", "green", "blue", k=3))
('red', 'blue', 'green')
>>> resolve(sample(ascii_letters, k=10))
'tkExshCbTi'
>>> resolve(sample([int] * 3, k=between(2, 3))) # generate 3, pick 2, for demo only
[497, 246]
$\large\textcolor{gray}{protestr.specs.}\textbf{recipe(*specs, then)}$
Return a spec representing the result of calling a given function with some given specs resolved.
then
must be callable with a collection containing the resolved specs.
>>> from string import ascii_letters, digits
>>> resolve(
... recipe(
... sample(ascii_letters, k=5),
... sample(digits, k=5),
... then="-".join,
... )
... )
'JzRYQ-51428'
License
Protestr is distributed under the terms of the MIT license.
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