This article is brought with ❤ to you by Semaphore.
Introduction
Testing applications has become a standard skill set required for any competent developer today. The Python community embraces testing, and even the Python standard library has good inbuilt tools to support testing. In the larger Python ecosystem, there are a lot of testing tools. Pytest stands out among them due to its ease of use and its ability to handle increasingly complex testing needs.
This tutorial will demonstrate how to write tests for Python code with pytest, and how to utilize it to cater for a wide range of testing scenarios.
Prerequisites
This tutorial uses Python 3, and we will be working inside a virtualenv
.
Fortunately for us, Python 3 has inbuilt support
for creating virtual environments.
To create and activate a virtual environment for this project, let's run the
following commands:
mkdir pytest_project
cd pytest_project
python3 -m venv pytest-env
This creates a virtual environment called pytest-env
in our working directory.
To begin using the virtualenv
, we need to activate it as follows:
source pytest-env/bin/activate
As long as the virtualenv
is active, any packages we install will be installed
in our virtual environment, rather than in the global Python installation.
To get started, let's install pytest in our virtualenv
.
pip install pytest
Basic Pytest Usage
We will start with a simple test. Pytest expects our tests to be located in
files whose names begin with test_
or end with _test.py
.
Let's create a file called test_capitalize.py
, and inside it we will write a
function called capital_case
which should take a string as its argument,
and should return a capitalized version of the string.
We will also write a test, test_capital_case
to ensure that the function does what it says.
We prefix our test function names with test_
, since this is what pytest expects
our test functions to be named.
# test_capitalize.pydefcapital_case(x):returnx.capitalize()deftest_capital_case():assertcapital_case('semaphore')=='Semaphore'
The immediately noticeable thing is that pytest uses a plain assert statement,
which is much easier to remember and use compared to the numerous assertSomething
functions found in unittest
.
To run the test, execute the pytest
command:
pytest
We should see that our first test passes.
A keen reader will notice that our function could lead to a bug. It does not check the type of the argument to ensure that it is a string. Therefore, if we passed in a number as the argument to the function, it would raise an exception.
We would like to handle this case in our function by raising a custom exception with a friendly error message to the user.
Let's try to capture this in our test:
# test_capitalize.pyimportpytestdeftest_capital_case():assertcapital_case('semaphore')=='Semaphore'deftest_raises_exception_on_non_string_arguments():withpytest.raises(TypeError):capital_case(9)
The major addition here is the pytest.raises
helper, which asserts that our function
should raise a TypeError
in case the argument passed is not a string.
Running the tests at this point should fail with the following error:
def capital_case(x):
> return x.capitalize()
E AttributeError: 'int' object has no attribute 'capitalize'
Since we've verified that we have not handled such a case, we can go ahead and fix it.
In our capital_case
function, we should check that the argument passed is a
string or a string subclass before calling the capitalize
function. If it is not,
we should raise a TypeError
with a custom error message.
# test_capitalize.pydefcapital_case(x):ifnotisinstance(x,str):raiseTypeError('Please provide a string argument')returnx.capitalize()
When we rerun our tests, they should be passing once again.
Using Pytest Fixtures
In the following sections, we will explore some more advanced pytest features. To do this, we will need a small project to work with.
We will be writing a wallet
application that enables its users to add or spend
money in the wallet. It will be modeled as a class with two instance methods:
spend_cash
and add_cash
.
We'll get started by writing our tests first. Create a file called test_wallet.py
in the working directory, and add the following contents:
# test_wallet.pyimportpytestfromwalletimportWallet,InsufficientAmountdeftest_default_initial_amount():wallet=Wallet()assertwallet.balance==0deftest_setting_initial_amount():wallet=Wallet(100)assertwallet.balance==100deftest_wallet_add_cash():wallet=Wallet(10)wallet.add_cash(90)assertwallet.balance==100deftest_wallet_spend_cash():wallet=Wallet(20)wallet.spend_cash(10)assertwallet.balance==10deftest_wallet_spend_cash_raises_exception_on_insufficient_amount():wallet=Wallet()withpytest.raises(InsufficientAmount):wallet.spend_cash(100)
First things first, we import the Wallet
class and the InsufficientAmount
exception that we expect to raise when the user tries to spend more cash than
they have in their wallet.
When we initialize the Wallet
class, we expect it to have a default balance of 0
.
However, when we initialize the class with a value, that value should
be set as the wallet's initial balance.
Moving on to the methods we plan to implement, we test that the add_cash
method
correctly increments the balance with the added amount. On the other hand, we are
also ensuring that the spend_cash
method reduces the balance by the spent amount,
and that we can't spend more cash than we have in the wallet.
If we try to do so, an InsufficientAmount
exception should be raised.
Running the tests at this point should fail, since we have not created our Wallet
class yet.
We'll proceed with creating it. Create a file called wallet.py
, and we will add our Wallet
implementation in it. The file should look as follows:
# wallet.pyclassInsufficientAmount(Exception):passclassWallet(object):def__init__(self,initial_amount=0):self.balance=initial_amountdefspend_cash(self,amount):ifself.balance<amount:raiseInsufficientAmount('Not enough available to spend {}'.format(amount))self.balance-=amountdefadd_cash(self,amount):self.balance+=amount
First of all, we define our custom exception, InsufficientAmount
, which will be
raised when we try to spend more money than we have in the wallet.
The Wallet
class then follows. The constructor accepts an initial amount, which
defaults to 0
if not provided. The initial amount is then set as the balance.
In the spend_cash
method, we first check that we have a sufficient balance.
If the balance is lower than the amount we intend to spend, we raise the
InsufficientAmount
exception with a friendly error message.
The implementation of add_cash
then follows, which simply adds the provided amount to
the current wallet balance.
Once we have this in place, we can rerun our tests, and they should be passing.
pytest -q test_wallet.py
.....
5 passed in 0.01 seconds
Refactoring our Tests with Fixtures
You may have noticed some repetition in the way we initialized the class in each test. This is where pytest fixtures come in. They help us set up some helper code that should run before any tests are executed, and are perfect for setting up resources that are needed by the tests.
Fixture functions are created by marking them with the @pytest.fixture
decorator.
Test functions that require fixtures should accept them as arguments. For example,
for a test to receive a fixture called wallet
, it should have an argument with
the fixture name, i.e. wallet
.
Let's see how this works in practice. We will refactor our previous tests to use test fixtures where appropriate.
# test_wallet.pyimportpytestfromwalletimportWallet,InsufficientAmount@pytest.fixturedefempty_wallet():'''Returns a Wallet instance with a zero balance'''returnWallet()@pytest.fixturedefwallet():'''Returns a Wallet instance with a balance of 20'''returnWallet(20)deftest_default_initial_amount(empty_wallet):assertempty_wallet.balance==0deftest_setting_initial_amount(wallet):assertwallet.balance==20deftest_wallet_add_cash(wallet):wallet.add_cash(80)assertwallet.balance==100deftest_wallet_spend_cash(wallet):wallet.spend_cash(10)assertwallet.balance==10deftest_wallet_spend_cash_raises_exception_on_insufficient_amount(empty_wallet):withpytest.raises(InsufficientAmount):empty_wallet.spend_cash(100)
In our refactored tests, we can see that we have reduced the amount of boilerplate code by making use of fixtures.
We define two fixture functions,wallet
and empty_wallet
, which will be
responsible for initializing the Wallet
class in tests where it is needed,
with different values.
For the first test function, we make use of the empty_wallet
fixture,
which provided a wallet instance with a balance of 0
to the test.
The next three tests receive a wallet instance initialized with a balance of 20
.
Finally, the last test receives the empty_wallet
fixture.
The tests can then make use of the fixture as if it was created inside the test
function, as in the tests we had before.
Rerun the tests to confirm that everything works.
Utilizing fixtures helps us de-duplicate our code. If you notice a case where a piece of code is used repeatedly in a number of tests, that might be a good candidate to use as a fixture.
Some Pointers on Test Fixtures
Here are some pointers on using test fixtures:
Each test is provided with a newly-initialized
Wallet
instance, and not one that has been used in another test.It is a good practice to add docstrings for your fixtures. To see all the available fixtures, run the following command:
pytest --fixtures
This lists out some inbuilt pytest fixtures, as well as our custom fixtures. The docstrings will appear as the descriptions of the fixtures.
wallet
Returns a Wallet instance with a balance of 20
empty_wallet
Returns a Wallet instance with a zero balance
Parametrized Test Functions
Having tested the individual methods in the Wallet
class, the next step we should
take is to test various combinations of these methods.
This is to answer questions such as "If I have an initial balance of 30
, and spend
20
, then add 100
, and later on spend 50
, how much should the balance be?"
As you can imagine, writing out those steps in the tests would be tedious, and pytest provides quite a delightful solution: Parametrized test functions
To capture a scenario like the one above, we can write a test:
# test_wallet.py@pytest.mark.parametrize("earned,spent,expected",[(30,10,20),(20,2,18),])deftest_transactions(earned,spent,expected):my_wallet=Wallet()my_wallet.add_cash(earned)my_wallet.spend_cash(spent)assertmy_wallet.balance==expected
This enables us to test different scenarios, all in one function.
We make use of the @pytest.mark.parametrize
decorator, where we can specify the names
of the arguments that will be passed to the test function, and a list of arguments
corresponding to the names.
The test function marked with the decorator will then be run once for each set of parameters.
For example, the test will be run the first time with the earned
parameter set to
30, spent
set to 10
, and expected
set to 20
.
The second time the test is run, the parameters will take the second set of arguments.
We can then use these parameters in our test function.
This elegantly helps us capture the scenario:
- My wallet initially has
0
, - I add
30
units of cash to the wallet, - I spend
10
units of cash, and - I should have
20
units of cash remaining after the two transactions.
This is quite a succinct way to test different combinations of values without writing a lot of repeated code.
Combining Test Fixtures and Parametrized Test Functions
To make our tests less repetitive, we can go further and combine test fixtures and parametrize test functions. To demonstrate this, let's replace the wallet initialization code with a test fixture as we did before. The end result will be:
# test_wallet.py@pytest.fixturedefmy_wallet():'''Returns a Wallet instance with a zero balance'''returnWallet()@pytest.mark.parametrize("earned,spent,expected",[(30,10,20),(20,2,18),])deftest_transactions(my_wallet,earned,spent,expected):my_wallet.add_cash(earned)my_wallet.spend_cash(spent)assertmy_wallet.balance==expected
We will create a new fixture called my_wallet
that is exactly the same as the
empty_wallet
fixture we used before. It returns a wallet instance with a balance of 0
.
To use both the fixture and the parametrized functions in the test, we include the
fixture as the first argument, and the parameters as the rest of the arguments.
The transactions will then be performed on the wallet instance provided by the fixture.
You can try out this pattern further, e.g. with the wallet instance
with a non-empty balance and with other different combinations of the earned
and
spent
amounts.
Continuous Testing on Semaphore CI
Next, let's add continuous testing to our application using SemaphoreCI to ensure that we don't break our code when we make new changes.
Make sure you've committed everything on Git, and push your repository to GitHub or Bitbucket, which will enable Semaphore to fetch your code. Next, sign up for a free Semaphore account, if you don't have one already. Once you've confirmed your email, it's time to create a new project.
Follow these steps to add the project to Semaphore:
Once you're logged into Semaphore, navigate to your list of projects and click the "Add New Project" button:
Next, select the account where you wish to add the new project.
Select the repository that holds the code you'd like to build:
Select the branch you would like to build. The
master
branch is the default.Configure your project as shown below:
Once your build has run, you should see a successful build that should look something like this:
In a few simple steps, we've set up continuous testing.
Summary
We hope that this article has given you a solid introduction to pytest, which is one of the most popular testing tools in the Python ecosystem. It's extremely easy to get started with using it, and it can handle most of what you need from a testing tool.
You can check out the complete code on GitHub.
Please reach out with any questions or feedback you may have in the comments section below.
This article is brought with ❤ to you by Semaphore.