See also
The testing tutorial, the testing tools reference, and the advanced testing topics.
This document is split into two primary sections. First, we explain how to write tests with Django. Then, we explain how to run them.
Django’s unit tests use a Python standard library module: unittest
. This
module defines tests using a class-based approach.
Here is an example which subclasses from django.test.TestCase
,
which is a subclass of unittest.TestCase
that runs each test inside a
transaction to provide isolation:
from django.test import TestCase
from myapp.models import Animal
class AnimalTestCase(TestCase):
def setUp(self):
Animal.objects.create(name="lion", sound="roar")
Animal.objects.create(name="cat", sound="meow")
def test_animals_can_speak(self):
"""Animals that can speak are correctly identified"""
lion = Animal.objects.get(name="lion")
cat = Animal.objects.get(name="cat")
self.assertEqual(lion.speak(), 'The lion says "roar"')
self.assertEqual(cat.speak(), 'The cat says "meow"')
When you run your tests, the default behavior of the
test utility is to find all the test cases (that is, subclasses of
unittest.TestCase
) in any file whose name begins with test
,
automatically build a test suite out of those test cases, and run that suite.
For more details about unittest
, see the Python documentation.
Where should the tests live?
The default startapp
template creates a tests.py
file in the
new application. This might be fine if you only have a few tests, but as
your test suite grows you’ll likely want to restructure it into a tests
package so you can split your tests into different submodules such as
test_models.py
, test_views.py
, test_forms.py
, etc. Feel free to
pick whatever organizational scheme you like.
See also Using the Django test runner to test reusable applications.
Warning
If your tests rely on database access such as creating or querying models,
be sure to create your test classes as subclasses of
django.test.TestCase
rather than unittest.TestCase
.
Using unittest.TestCase
avoids the cost of running each test in a
transaction and flushing the database, but if your tests interact with
the database their behavior will vary based on the order that the test
runner executes them. This can lead to unit tests that pass when run in
isolation but fail when run in a suite.
Once you’ve written tests, run them using the test
command of
your project’s manage.py
utility:
$ ./manage.py test
Test discovery is based on the unittest module’s built-in test discovery. By default, this will discover tests in any file named “test*.py” under the current working directory.
You can specify particular tests to run by supplying any number of “test
labels” to ./manage.py test
. Each test label can be a full Python dotted
path to a package, module, TestCase
subclass, or test method. For instance:
# Run all the tests in the animals.tests module
$ ./manage.py test animals.tests
# Run all the tests found within the 'animals' package
$ ./manage.py test animals
# Run just one test case
$ ./manage.py test animals.tests.AnimalTestCase
# Run just one test method
$ ./manage.py test animals.tests.AnimalTestCase.test_animals_can_speak
You can also provide a path to a directory to discover tests below that directory:
$ ./manage.py test animals/
You can specify a custom filename pattern match using the -p
(or
--pattern
) option, if your test files are named differently from the
test*.py
pattern:
$ ./manage.py test --pattern="tests_*.py"
If you press Ctrl-C
while the tests are running, the test runner will
wait for the currently running test to complete and then exit gracefully.
During a graceful exit the test runner will output details of any test
failures, report on how many tests were run and how many errors and failures
were encountered, and destroy any test databases as usual. Thus pressing
Ctrl-C
can be very useful if you forget to pass the --failfast
option, notice that some tests are unexpectedly failing and
want to get details on the failures without waiting for the full test run to
complete.
If you do not want to wait for the currently running test to finish, you
can press Ctrl-C
a second time and the test run will halt immediately,
but not gracefully. No details of the tests run before the interruption will
be reported, and any test databases created by the run will not be destroyed.
Test with warnings enabled
It’s a good idea to run your tests with Python warnings enabled:
python -Wall manage.py test
. The -Wall
flag tells Python to
display deprecation warnings. Django, like many other Python libraries,
uses these warnings to flag when features are going away. It also might
flag areas in your code that aren’t strictly wrong but could benefit
from a better implementation.
Tests that require a database (namely, model tests) will not use your “real” (production) database. Separate, blank databases are created for the tests.
Regardless of whether the tests pass or fail, the test databases are destroyed when all the tests have been executed.
You can prevent the test databases from being destroyed by using the
test --keepdb
option. This will preserve the test database between
runs. If the database does not exist, it will first be created. Any migrations
will also be applied in order to keep it up to date.
The default test database names are created by prepending test_
to the
value of each NAME
in DATABASES
. When using SQLite, the
tests will use an in-memory database by default (i.e., the database will be
created in memory, bypassing the filesystem entirely!). The TEST
dictionary in DATABASES
offers a number of settings
to configure your test database. For example, if you want to use a different
database name, specify NAME
in the TEST
dictionary for any given database in DATABASES
.
On PostgreSQL, USER
will also need read access to the built-in
postgres
database.
Aside from using a separate database, the test runner will otherwise
use all of the same database settings you have in your settings file:
ENGINE
, USER
, HOST
, etc. The
test database is created by the user specified by USER
, so you’ll
need to make sure that the given user account has sufficient privileges to
create a new database on the system.
For fine-grained control over the character encoding of your test
database, use the CHARSET
TEST option. If you’re using
MySQL, you can also use the COLLATION
option to
control the particular collation used by the test database. See the
settings documentation for details of these
and other advanced settings.
If using an SQLite in-memory database with Python 3.4+ and SQLite 3.7.13+, shared cache will be enabled, so you can write tests with ability to share the database between threads.
Finding data from your production database when running tests?
If your code attempts to access the database when its modules are compiled, this will occur before the test database is set up, with potentially unexpected results. For example, if you have a database query in module-level code and a real database exists, production data could pollute your tests. It is a bad idea to have such import-time database queries in your code anyway - rewrite your code so that it doesn’t do this.
This also applies to customized implementations of
ready()
.
See also
In order to guarantee that all TestCase
code starts with a clean database,
the Django test runner reorders tests in the following way:
TestCase
subclasses are run first.SimpleTestCase
, including
TransactionTestCase
) are run with no particular
ordering guaranteed nor enforced among them.unittest.TestCase
tests (including doctests) that may
alter the database without restoring it to its original state are run.Note
The new ordering of tests may reveal unexpected dependencies on test case
ordering. This is the case with doctests that relied on state left in the
database by a given TransactionTestCase
test, they
must be updated to be able to run independently.
You may reverse the execution order inside groups using the test
--reverse
option. This can help with ensuring your tests are independent from
each other.
Any initial data loaded in migrations will only be available in TestCase
tests and not in TransactionTestCase
tests, and additionally only on
backends where transactions are supported (the most important exception being
MyISAM). This is also true for tests which rely on TransactionTestCase
such as LiveServerTestCase
and
StaticLiveServerTestCase
.
Django can reload that data for you on a per-testcase basis by
setting the serialized_rollback
option to True
in the body of the
TestCase
or TransactionTestCase
, but note that this will slow down
that test suite by approximately 3x.
Third-party apps or those developing against MyISAM will need to set this;
in general, however, you should be developing your own projects against a
transactional database and be using TestCase
for most tests, and thus
not need this setting.
The initial serialization is usually very quick, but if you wish to exclude
some apps from this process (and speed up test runs slightly), you may add
those apps to TEST_NON_SERIALIZED_APPS
.
To prevent serialized data from being loaded twice, setting
serialized_rollback=True
disables the
post_migrate
signal when flushing the test
database.
Regardless of the value of the DEBUG
setting in your configuration
file, all Django tests run with DEBUG
=False. This is to ensure that
the observed output of your code matches what will be seen in a production
setting.
Caches are not cleared after each test, and running “manage.py test fooapp” can insert data from the tests into the cache of a live system if you run your tests in production because, unlike databases, a separate “test cache” is not used. This behavior may change in the future.
When you run your tests, you’ll see a number of messages as the test runner
prepares itself. You can control the level of detail of these messages with the
verbosity
option on the command line:
Creating test database...
Creating table myapp_animal
Creating table myapp_mineral
This tells you that the test runner is creating a test database, as described in the previous section.
Once the test database has been created, Django will run your tests. If everything goes well, you’ll see something like this:
----------------------------------------------------------------------
Ran 22 tests in 0.221s
OK
If there are test failures, however, you’ll see full details about which tests failed:
======================================================================
FAIL: test_was_published_recently_with_future_poll (polls.tests.PollMethodTests)
----------------------------------------------------------------------
Traceback (most recent call last):
File "/dev/mysite/polls/tests.py", line 16, in test_was_published_recently_with_future_poll
self.assertIs(future_poll.was_published_recently(), False)
AssertionError: True is not False
----------------------------------------------------------------------
Ran 1 test in 0.003s
FAILED (failures=1)
A full explanation of this error output is beyond the scope of this document,
but it’s pretty intuitive. You can consult the documentation of Python’s
unittest
library for details.
Note that the return code for the test-runner script is 1 for any number of failed and erroneous tests. If all the tests pass, the return code is 0. This feature is useful if you’re using the test-runner script in a shell script and need to test for success or failure at that level.
As long as your tests are properly isolated, you can run them in parallel to
gain a speed up on multi-core hardware. See test --parallel
.
The default password hasher is rather slow by design. If you’re authenticating
many users in your tests, you may want to use a custom settings file and set
the PASSWORD_HASHERS
setting to a faster hashing algorithm:
PASSWORD_HASHERS = [
'django.contrib.auth.hashers.MD5PasswordHasher',
]
Don’t forget to also include in PASSWORD_HASHERS
any hashing
algorithm used in fixtures, if any.
The test --keepdb
option preserves the test database between test
runs. It skips the create and destroy actions which can greatly decrease the
time to run tests.
Jun 14, 2020