.. doctest-skip-all .. include:: workflow/known_projects.inc .. _testing-guidelines: ****************** Testing Guidelines ****************** This section describes the testing framework and format standards for tests in Astropy core packages (this also serves as recommendations for affiliated packages). Testing Framework ***************** The testing framework used by astropy (and packages using the :doc:`Astropy package template `) is the `pytest`_ framework, accessed through the ``python setup.py test`` command. .. _pytest: https://pytest.org/en/latest/ .. note:: The ``pytest`` project was formerly called ``py.test``, and you may see the two spellings used interchangeably in the documentation. .. _testing-dependencies: Testing Dependencies ******************** As of Astropy 3.0, the dependencies used by the Astropy test runner are provided by a separate package called `pytest-astropy`_. This package provides the ``pytest`` dependency itself, in addition to several ``pytest`` plugins that are used by Astropy, and will also be of general use to other packages. Since the testing dependencies are not actually required to install or use Astropy, they are not included in ``install_requires`` in ``setup.py``. However, for technical reasons it is not currently possible to express these dependencies in ``tests_require`` either. Therefore, ``pytest-astropy`` is listed as an extra dependency using ``extras_require`` in ``setup.py``. Developers who want to run the test suite will need to install the testing package using pip:: > pip install pytest-astropy A detailed description of the plugins can be found in the :ref:`pytest-plugins` section. .. _pytest-astropy: https://github.com/astropy/pytest-astropy .. _running-tests: Running Tests ************* There are currently three different ways to invoke Astropy tests. Each method invokes `pytest`_ to run the tests but offers different options when calling. To run the tests, you will need to make sure you have the `pytest`_ package (version 3.1 or later) installed. In addition to running the Astropy tests, these methods can also be called so that they check Python source code for `PEP8 compliance `_. All of the PEP8 testing options require the `pytest-pep8 plugin `_, which must be installed separately. setup.py test ============= The astropy core package and the Astropy package template provide a ``test`` setup command, invoked by running ``python setup.py test`` while in the package root directory. Run ``python setup.py test --help`` to see the options to the test command. Since ``python setup.py test`` wraps the widely-used pytest framework, you may from time to time want to pass options to the ``pytest`` command itself. For example, the ``-x`` option to stop after the first failure can be passed through with the ``--args`` argument:: > python setup.py test --args "-x" `pytest`_ will look for files that `look like tests `_ in the current directory and all recursive directories then run all the code that `looks like tests `_ within those files. Turn on PEP8 checking by passing ``--pep8`` to the ``test`` command. This will turn off regular testing and enable PEP8 testing. Note also that this test runner actually installs astropy into a temporary directory and uses that for running the tests. This means that tests of things like entry points or data file paths should act just like they would once astropy is installed. The other two approaches described below do *not* do this, and hence may give different results when run from the astropy source code. Hence if you're running the tests because you've modified code that might be impacted by this, the ``setup.py test`` approach is the recommended method. .. _astropy.test(): astropy.test() ============== Tests can be run from within Astropy with:: import astropy astropy.test() This will run all the default tests for Astropy. Tests for a specific package can be run by specifying the package in the call to the ``test()`` function:: astropy.test(package='io.fits') This method works only with package names that can be mapped to Astropy directories. As an alternative you can test a specific directory or file with the ``test_path`` option:: astropy.test(test_path='wcs/tests/test_wcs.py') The ``test_path`` must be specified either relative to the working directory or absolutely. By default `astropy.test()`_ will skip tests which retrieve data from the internet. To turn these tests on use the ``remote_data`` flag:: astropy.test(package='io.fits', remote_data=True) In addition, the ``test`` function supports any of the options that can be passed to `pytest.main() `_, and convenience options ``verbose=`` and ``pastebin=``. Enable PEP8 compliance testing with ``pep8=True`` in the call to ``astropy.test``. This will enable PEP8 checking and disable regular tests. Astropy Test Function --------------------- .. autofunction:: astropy.test pytest ====== The test suite can be run directly from the native ``pytest`` command. In this case, it is important for developers to be aware that they must manually rebuild any extensions by running ``setup.py build_ext`` before testing. In contrast to the case of running from ``setup.py``, the ``--doctest-plus`` and ``--doctest-rst`` options are not enabled by default when running the ``pytest`` command directly. This flags should be explicitly given if they are needed. Test-running options ==================== Running parts of the test suite ------------------------------- It is possible to run only the tests for a particular subpackage or set of subpackages. For example, to run only the ``wcs`` tests from the commandline:: python setup.py test -P wcs Or, to run only the ``wcs`` and ``utils`` tests:: python setup.py test -P wcs,utils Or from Python:: >>> import astropy >>> astropy.test(package="wcs,utils") You can also specify a single file to test from the commandline:: python setup.py test -t astropy/wcs/tests/test_wcs.py When the ``-t`` option is given a relative path, it is relative to the installed root of astropy. When ``-t`` is given a relative path to a documentation ``.rst`` file to test, it is relative to the root of the documentation, i.e. the ``docs`` directory in the source tree. For example:: python setup.py test -t units/index.rst .. _open-files: Testing for open files ---------------------- Astropy can test whether any of the unit tests inadvertently leave any files open. Since this greatly slows down the time it takes to run the tests, it is turned off by default. To use it from the commandline, do:: python setup.py test --open-files To use it from Python, do:: >>> import astropy >>> astropy.test(open_files=True) For more information on the ``pytest-openfiles`` plugin see :ref:`openfiles-plugin` Test coverage reports --------------------- Astropy can use `coverage.py `_ to generate test coverage reports. To generate a test coverage report, use:: python setup.py test --coverage There is a `coveragerc `_ file that defines files to omit as well as lines to exclude. It is installed along with astropy so that the ``astropy`` testing framework can use it. In the source tree, it is at ``astropy/tests/coveragerc``. Running tests in parallel ------------------------- It is possible to speed up astropy's tests using the `pytest-xdist `_ plugin. This plugin can be installed using `pip`_:: pip install pytest-xdist Once installed, tests can be run in parallel using the ``'--parallel'`` commandline option. For example, to use 4 processes:: python setup.py test --parallel=4 Pass ``--parallel=auto`` to create the same number of processes as cores on your machine. Similarly, this feature can be invoked from Python:: >>> import astropy >>> astropy.test(parallel=4) Running tests to catch permissions errors ----------------------------------------- It is possible to write code or tests that write into the source directory. This is not desirable because Python packages can be (and frequently are) installed in locations where the user may not have write permissions. To check for these cases, the test runner has an option to have the test-runner directory be set as read-only to ensure the tests are not writing to that location. This mode can be triggered by running the tests like so:: python setup.py test --readonly Writing tests ************* ``pytest`` has the following test discovery rules: * ``test_*.py`` or ``*_test.py`` files * ``Test`` prefixed classes (without an ``__init__`` method) * ``test_`` prefixed functions and methods Consult the `test discovery rules `_ for detailed information on how to name files and tests so that they are automatically discovered by `pytest`_. Simple example ============== The following example shows a simple function and a test to test this function:: def func(x): """Add one to the argument.""" return x + 1 def test_answer(): """Check the return value of func() for an example argument.""" assert func(3) == 5 If we place this in a ``test.py`` file and then run:: pytest test.py The result is:: ============================= test session starts ============================== python: platform darwin -- Python 3.6.0 -- pytest-3.2.0 test object 1: /Users/username/tmp/test.py test.py F =================================== FAILURES =================================== _________________________________ test_answer __________________________________ def test_answer(): > assert func(3) == 5 E assert 4 == 5 E + where 4 = func(3) test.py:5: AssertionError =========================== 1 failed in 0.07 seconds =========================== Where to put tests ================== Package-specific tests ---------------------- Each package should include a suite of unit tests, covering as many of the public methods/functions as possible. These tests should be included inside each sub-package, e.g:: astropy/io/fits/tests/ ``tests`` directories should contain an ``__init__.py`` file so that the tests can be imported and so that they can use relative imports. Interoperability tests ---------------------- Tests involving two or more sub-packages should be included in:: astropy/tests/ Regression tests ================ Any time a bug is fixed, and wherever possible, one or more regression tests should be added to ensure that the bug is not introduced in future. Regression tests should include the ticket URL where the bug was reported. .. _data-files: Working with data files ======================= Tests that need to make use of a data file should use the `~astropy.utils.data.get_pkg_data_fileobj` or `~astropy.utils.data.get_pkg_data_filename` functions. These functions search locally first, and then on the astropy data server or an arbitrary URL, and return a file-like object or a local filename, respectively. They automatically cache the data locally if remote data is obtained, and from then on the local copy will be used transparently. See the next section for note specific to dealing with the cache in tests. They also support the use of an MD5 hash to get a specific version of a data file. This hash can be obtained prior to submitting a file to the astropy data server by using the `~astropy.utils.data.compute_hash` function on a local copy of the file. Tests that may retrieve remote data should be marked with the ``@pytest.mark.remote_data`` decorator, or, if a doctest, flagged with the ``REMOTE_DATA`` flag. Tests marked in this way will be skipped by default by ``astropy.test()`` to prevent test runs from taking too long. These tests can be run by ``astropy.test()`` by adding the ``remote_data='any'`` flag. Turn on the remote data tests at the command line with ``python setup.py test --remote-data=any``. It is possible to mark tests using ``@pytest.mark.remote_data(source='astropy')``, which can be used to indicate that the only required data is from the http://data.astropy.org server. To enable just these tests, you can run the tests with ``python setup.py test --remote-data=astropy``. For more information on the ``pytest-remotedata`` plugin, see :ref:`remotedata-plugin`. Examples -------- .. code-block:: python from ...config import get_data_filename def test_1(): """Test version using a local file.""" #if filename.fits is a local file in the source distribution datafile = get_data_filename('filename.fits') # do the test @pytest.mark.remote_data def test_2(): """Test version using a remote file.""" #this is the hash for a particular version of a file stored on the #astropy data server. datafile = get_data_filename('hash/94935ac31d585f68041c08f87d1a19d4') # do the test def doctest_example(): """ >>> datafile = get_data_filename('hash/94935') # doctest: +REMOTE_DATA """ pass The ``get_remote_test_data`` will place the files in a temporary directory indicated by the ``tempfile`` module, so that the test files will eventually get removed by the system. In the long term, once test data files become too large, we will need to design a mechanism for removing test data immediately. Tests that use the file cache ----------------------------- By default, the Astropy test runner sets up a clean file cache in a temporary directory that is used only for that test run and then destroyed. This is to ensure consistency between test runs, as well as to not clutter users' caches (i.e. the cache directory returned by `~astropy.config.get_cache_dir`) with test files. However, some test authors (especially for affiliated packages) may find it desirable to cache files downloaded during a test run in a more permanent location (e.g. for large data sets). To this end the `~astropy.config.set_temp_cache` helper may be used. It can be used either as a context manager within a test to temporarily set the cache to a custom location, or as a *decorator* that takes effect for an entire test function (not including setup or teardown, which would have to be decorated separately). Furthermore, it is possible to set an option ``astropy_cache_dir`` in the pytest config file which sets the cache location for the entire test run. A ``--astropy-cache-dir`` command-line option is also supported (which overrides all other settings). Currently it is not directly supported by the ``./setup.py test`` command, so it is necessary to use it with the ``-a`` argument like:: $ ./setup.py test -a "--astropy-cache-dir=/path/to/custom/cache/dir" Tests that create files ======================= Tests may often be run from directories where users do not have write permissions so tests which create files should always do so in temporary directories. This can be done with the `pytest tmpdir function argument `_ or with Python's built-in `tempfile module `_. Setting up/Tearing down tests ============================= In some cases, it can be useful to run a series of tests requiring something to be set up first. There are four ways to do this: Module-level setup/teardown --------------------------- If the ``setup_module`` and ``teardown_module`` functions are specified in a file, they are called before and after all the tests in the file respectively. These functions take one argument, which is the module itself, which makes it very easy to set module-wide variables:: def setup_module(module): """Initialize the value of NUM.""" module.NUM = 11 def add_num(x): """Add pre-defined NUM to the argument.""" return x + NUM def test_42(): """Ensure that add_num() adds the correct NUM to its argument.""" added = add_num(42) assert added == 53 We can use this for example to download a remote test data file and have all the functions in the file access it:: import os def setup_module(module): """Store a copy of the remote test file.""" module.DATAFILE = get_remote_test_data('94935ac31d585f68041c08f87d1a19d4') def test(): """Perform test using cached remote input file.""" f = open(DATAFILE, 'rb') # do the test def teardown_module(module): """Clean up remote test file copy.""" os.remove(DATAFILE) Class-level setup/teardown -------------------------- Tests can be organized into classes that have their own setup/teardown functions. In the following :: def add_nums(x, y): """Add two numbers.""" return x + y class TestAdd42(object): """Test for add_nums with y=42.""" def setup_class(self): self.NUM = 42 def test_1(self): """Test behavior for a specific input value.""" added = add_nums(11, self.NUM) assert added == 53 def test_2(self): """Test behavior for another input value.""" added = add_nums(13, self.NUM) assert added == 55 def teardown_class(self): pass In the above example, the ``setup_class`` method is called first, then all the tests in the class, and finally the ``teardown_class`` is called. Method-level setup/teardown --------------------------- There are cases where one might want setup and teardown methods to be run before and after *each* test. For this, use the ``setup_method`` and ``teardown_method`` methods:: def add_nums(x, y): """Add two numbers.""" return x + y class TestAdd42(object): """Test for add_nums with y=42.""" def setup_method(self, method): self.NUM = 42 def test_1(self): """Test behavior for a specific input value.""" added = add_nums(11, self.NUM) assert added == 53 def test_2(self): """Test behavior for another input value.""" added = add_nums(13, self.NUM) assert added == 55 def teardown_method(self, method): pass Function-level setup/teardown ----------------------------- Finally, one can use ``setup_function`` and ``teardown_function`` to define a setup/teardown mechanism to be run before and after each function in a module. These take one argument, which is the function being tested:: def setup_function(function): pass def test_1(self): """First test.""" # do test def test_2(self): """Second test.""" # do test def teardown_function(function): pass Parametrizing tests =================== If you want to run a test several times for slightly different values, then it can be advantageous to use the ``pytest`` option to parametrize tests. For example, instead of writing:: def test1(): assert type('a') == str def test2(): assert type('b') == str def test3(): assert type('c') == str You can use the ``parametrize`` decorator to loop over the different inputs:: @pytest.mark.parametrize(('letter'), ['a', 'b', 'c']) def test(letter): """Check that the input is a string.""" assert type(letter) == str Tests requiring optional dependencies ===================================== For tests that test functions or methods that require optional dependencies (e.g. Scipy), pytest should be instructed to skip the test if the dependencies are not present. The following example shows how this should be done:: import pytest try: import scipy HAS_SCIPY = True except ImportError: HAS_SCIPY = False @pytest.mark.skipif('not HAS_SCIPY') def test_that_uses_scipy(): ... In this way, the test is run if Scipy is present, and skipped if not. No tests should fail simply because an optional dependency is not present. Using pytest helper functions ============================= If your tests need to use `pytest helper functions `_, such as ``pytest.raises``, import ``pytest`` into your test module like so:: import pytest Prior to Astropy 2.0, it was possible to import pytest from a bundled version using e.g.:: from ...tests.helper import pytest but this is no longer the recommended method. Testing warnings ================ In order to test that warnings are triggered as expected in certain situations, you can use the `astropy.tests.helper.catch_warnings` context manager. Unlike the `warnings.catch_warnings` context manager in the standard library, this one will reset all warning state before hand so one is assured to get the warnings reported, regardless of what errors may have been emitted by other tests previously. Here is a real-world example:: from astropy.tests.helper import catch_warnings with catch_warnings(MergeConflictWarning) as warning_lines: # Test code which triggers a MergeConflictWarning out = table.vstack([t1, t2, t4], join_type='outer') assert warning_lines[0].category == metadata.MergeConflictWarning assert ("In merged column 'a' the 'units' attribute does not match (cm != m)" in str(warning_lines[0].message)) .. note:: Within `pytest`_ there is also the option of using the ``recwarn`` function argument to test that warnings are triggered. This method has been found to be problematic in at least one case (`pull request 1174 `_) so the `astropy.tests.helper.catch_warnings` context manager is preferred. Testing configuration parameters ================================ In order to ensure reproducibility of tests, all configuration items are reset to their default values when the test runner starts up. Sometimes you'll want to test the behavior of code when a certain configuration item is set to a particular value. In that case, you can use the `astropy.config.ConfigItem.set_temp` context manager to temporarily set a configuration item to that value, test within that context, and have it automatically return to its original value. For example:: def test_pprint(): from ... import conf with conf.set_temp('max_lines', 6): # ... Marking blocks of code to exclude from coverage =============================================== Blocks of code may be ignored by the coverage testing by adding a comment containing the phrase ``pragma: no cover`` to the start of the block:: if this_rarely_happens: # pragma: no cover this_call_is_ignored() .. _image-tests: Image tests with pytest-mpl =========================== Running image tests ------------------- We make use of the `pytest-mpl `_ plugin to write tests where we can compare the output of plotting commands with reference files on a pixel-by-pixel basis (this is used for instance in :ref:`astropy.visualization.wcsaxes `). To run the Astropy tests with the image comparison, use:: python setup.py test -a "--mpl" --remote-data However, note that the output can be very sensitive to the version of Matplotlib as well as all its dependencies (e.g. freetype), so we recommend running the image tests inside a `Docker `__ container which has a frozen set of package versions (Docker containers can be thought of as mini virtual machines). We have made a `set of Docker container images `__ that can be used for this. Once you have installed Docker, to run the Astropy tests with the image comparison inside a Docker container, make sure you are inside the Astropy repository (or the repository of the package you are testing) then do:: docker run -it -v ${PWD}:/repo astropy/image-tests-py35-mpl300:1.3 /bin/bash This will start up a bash prompt in the Docker container, and you should see something like:: root@8173d2494b0b:/# You can now go to the ``/repo`` directory, which is the same folder as your local version of the repository you are testing:: cd /repo You can then run the tests as above:: python3 setup.py test -a "--mpl" --remote-data Type ``exit`` to exit the container. You can find the names of the available Docker images on the `Docker Hub `_. Writing image tests ------------------- The `README.rst `__ for the plugin contains information on writing tests with this plugin. The only key addition compared to those instructions is that you should set ``baseline_dir``:: from astropy.tests.image_tests import IMAGE_REFERENCE_DIR @pytest.mark.mpl_image_compare(baseline_dir=IMAGE_REFERENCE_DIR) This is because since the reference image files would contribute significantly to the repository size, we instead store them on the http://data.astropy.org site. The downside is that it is a little more complicated to create or re-generate reference files, but we describe the process here. Generating reference images --------------------------- Once you have a test for which you want to (re-)generate reference images, start up one of the Docker containers using e.g.:: docker run -it -v ${PWD}:/repo astropy/image-tests-py35-mpl300:1.3 /bin/bash then run the tests inside ``/repo`` with the ``--mpl-generate-path`` argument, e.g:: cd repo python3 setup.py test -a "--mpl --mpl-generate-path=reference_tmp" --remote-data This will create a ``reference_tmp`` folder and put the generated reference images inside it - the folder will be available in the repository outside of the Docker container. Type ``exit`` to exit the container. Make sure you generate images for the different supported Matplotlib versions using the available containers. Uploading the reference images ------------------------------ Next, we need to add these images to the http://data.astropy.org server. To do this, open a pull request to `this `_ repository. The reference images for Astropy tests should go inside the `testing/astropy `_ directory. In that directory are folders named as timestamps. If you are simply adding new tests, add the reference files to the most recent directory. If you are re-generating baseline images due to changes in Astropy, make a new timestamp directory by copying one the most recent one, then replace any baseline images that have changed. Note that due to changes between Matplotlib versions, we need to add the whole set of reference images for each major Matplotlib version. Therefore, in each timestamp folder, there are folders named e.g. ``1.4.x`` and ``1.5.x``. Once the reference images are merged in and available on http://data.astropy.org, update the timestamp in the ``IMAGE_REFERENCE_DIR`` variable in the ``astropy.tests.image_tests`` sub-module. Because the timestamp is hard-coded, adding a new timestamp directory will not mess with testing for released versions of Astropy, so you can easily add and tweak a new timestamp directory while still working on a pull request to Astropy. .. _doctests: Writing doctests **************** A doctest in Python is a special kind of test that is embedded in a function, class, or module's docstring, or in the narrative Sphinx documentation, and is formatted to look like a Python interactive session--that is, they show lines of Python code entered at a ``>>>`` prompt followed by the output that would be expected (if any) when running that code in an interactive session. The idea is to write usage examples in docstrings that users can enter verbatim and check their output against the expected output to confirm that they are using the interface properly. Furthermore, Python includes a :mod:`doctest` module that can detect these doctests and execute them as part of a project's automated test suite. This way we can automatically ensure that all doctest-like examples in our docstrings are correct. The Astropy test suite automatically detects and runs any doctests in the astropy source code or documentation, or in packages using the Astropy test running framework. For example doctests and detailed documentation on how to write them, see the full :mod:`doctest` documentation. .. note:: Since the narrative Sphinx documentation is not installed alongside the astropy source code, it can only be tested by running ``python setup.py test``, not by ``import astropy; astropy.test()``. For more information on the ``pytest-doctestplus`` plugin used by Astropy, see :ref:`doctestplus-plugin`. .. _skipping-doctests: Skipping doctests ================= Sometimes it is necessary to write examples that look like doctests but that are not actually executable verbatim. An example may depend on some external conditions being fulfilled, for example. In these cases there are a few ways to skip a doctest: 1. Next to the example add a comment like: ``# doctest: +SKIP``. For example: .. code-block:: none >>> import os >>> os.listdir('.') # doctest: +SKIP In the above example we want to direct the user to run ``os.listdir('.')`` but we don't want that line to be executed as part of the doctest. To skip tests that require fetching remote data, use the ``REMOTE_DATA`` flag instead. This way they can be turned on using the ``--remote-data`` flag when running the tests: .. code-block:: none >>> datafile = get_data_filename('hash/94935') # doctest: +REMOTE_DATA 2. Astropy's test framework adds support for a special ``__doctest_skip__`` variable that can be placed at the module level of any module to list functions, classes, and methods in that module whose doctests should not be run. That is, if it doesn't make sense to run a function's example usage as a doctest, the entire function can be skipped in the doctest collection phase. The value of ``__doctest_skip__`` should be a list of wildcard patterns for all functions/classes whose doctests should be skipped. For example:: __doctest_skip__ = ['myfunction', 'MyClass', 'MyClass.*'] skips the doctests in a function called ``myfunction``, the doctest for a class called ``MyClass``, and all *methods* of ``MyClass``. Module docstrings may contain doctests as well. To skip the module-level doctests include the string ``'.'`` in ``__doctest_skip__``. To skip all doctests in a module:: __doctest_skip__ = ['*'] 3. In the Sphinx documentation, a doctest section can be skipped by making it part of a ``doctest-skip`` directive:: .. doctest-skip:: >>> # This is a doctest that will appear in the documentation, >>> # but will not be executed by the testing framework. >>> 1 / 0 # Divide by zero, ouch! It is also possible to skip all doctests below a certain line using a ``doctest-skip-all`` comment. Note the lack of ``::`` at the end of the line here:: .. doctest-skip-all All doctests below here are skipped... 4. ``__doctest_requires__`` is a way to list dependencies for specific doctests. It should be a dictionary mapping wildcard patterns (in the same format as ``__doctest_skip__``) to a list of one or more modules that should be *importable* in order for the tests to run. For example, if some tests require the scipy module to work they will be skipped unless ``import scipy`` is possible. It is also possible to use a tuple of wildcard patterns as a key in this dict:: __doctest_requires__ = {('func1', 'func2'): ['scipy']} Having this module-level variable will require ``scipy`` to be importable in order to run the doctests for functions ``func1`` and ``func2`` in that module. In the Sphinx documentation, a doctest requirement can be notated with the ``doctest-requires`` directive:: .. doctest-requires:: scipy >>> import scipy >>> scipy.hamming(...) Skipping output =============== One of the important aspects of writing doctests is that the example output can be accurately compared to the actual output produced when running the test. The doctest system compares the actual output to the example output verbatim by default, but this not always feasible. For example the example output may contain the ``__repr__`` of an object which displays its id (which will change on each run), or a test that expects an exception may output a traceback. The simplest way to generalize the example output is to use the ellipses ``...``. For example:: >>> 1 / 0 Traceback (most recent call last): ... ZeroDivisionError: integer division or modulo by zero This doctest expects an exception with a traceback, but the text of the traceback is skipped in the example output--only the first and last lines of the output are checked. See the :mod:`doctest` documentation for more examples of skipping output. Ignoring all output ------------------- Another possibility for ignoring output is to use the ``# doctest: +IGNORE_OUTPUT`` flag. This allows a doctest to execute (and check that the code executes without errors), but allows the entire output to be ignored in cases where we don't care what the output is. This differs from using ellipses in that we can still provide complete example output, just without the test checking that it is exactly right. For example:: >>> print('Hello world') # doctest: +IGNORE_OUTPUT We don't really care what the output is as long as there were no errors... .. _handling-float-output: Handling float output ===================== Some doctests may produce output that contains string representations of floating point values. Floating point representations are often not exact and contain roundoffs in their least significant digits. Depending on the platform the tests are being run on (different Python versions, different OS, etc.) the exact number of digits shown can differ. Because doctests work by comparing strings this can cause such tests to fail. To address this issue, the ``pytest-doctestplus`` plugin provides support for a ``FLOAT_CMP`` flag that can be used with doctests. For example: .. code-block:: none >>> 1.0 / 3.0 # doctest: +FLOAT_CMP 0.333333333333333311 When this flag is used, the expected and actual outputs are both parsed to find any floating point values in the strings. Those are then converted to actual Python `float` objects and compared numerically. This means that small differences in representation of roundoff digits will be ignored by the doctest. The values are otherwise compared exactly, so more significant (albeit possibly small) differences will still be caught by these tests. Continuous integration ********************** Overview ======== Astropy uses the following continuous integration (CI) services: * `Travis `_ for 64-bit Linux and OS X setups * `Appveyor `_ for Windows * `CircleCI `_ for 32-bit Linux These continuously test the package for each commit and pull request that is pushed to GitHub to notice when something breaks. Astropy and many affiliated packages use an external package called `ci-helpers `_ to provide support for the generic parts of the CI systems. ``ci-helpers`` consists of a set of scripts that are used by the ``.travis.yml`` and ``appveyor.yml`` files to set up the conda environment, and install dependencies. Dependencies can be customized for different packages using the appropriate environment variables in ``.travis.yml`` and ``appveyor.yml``. For more details on how to set up this machinery, see the `package-template `_ and `ci-helpers`_. The 32-bit tests on CircleCI use a pre-defined Docker image defined `here `__ which includes a 32-bit Python environment. If you want to run tests for packages in the same way, you can use the same set-up on CircleCI as the core package, but just be sure to install Astropy first using:: easy_install pip pip install astropy For convenience, you can also use the ``astropy/affiliated-32bit-test-env`` Docker image instead of ``astropy/astropy-32bit-test-env`` - the former includes the latest stable version of Astropy pre-installed. In some cases, you may see failures on continuous integration services that you do not see locally, for example because the operating system is different, or because the failure happens with only 32-bit Python. The following sections explain how you can reproduce specific builds locally. Reproducing failing 32-bit builds ================================= If you want to run your tests in the same 32-bit Python environment that CircleCI uses, start off by installing `Docker `__ if you don't already have it installed. Docker can be installed on a variety of different operating systems. Then, make sure you have a version of the git repository (either the main Astropy repository or your fork) for which you want to run the tests. Go to that directory, then run Docker with:: $ docker run -i -v ${PWD}:/astropy_src -t astropy/astropy-32bit-test-env:1.6 bash This will put you in the bash shell inside the Docker container. Once inside, you can go to the ``astropy_src`` directory, and you should see the files that are in your local git repository:: root@5e2b89d7b07c:/# cd /astropy_src root@5e2b89d7b07c:/astropy_src# ls ah_bootstrap.py CONTRIBUTING.md pip-requirements-doc appveyor.yml docs README.rst astropy examples readthedocs.yml astropy_helpers ez_setup.py setup.cfg cextern licenses setup.py CHANGES.rst MANIFEST.in static circle.yml pip-requirements CITATION pip-requirements-dev You can then run the tests with:: root@5e2b89d7b07c:/astropy_src# python setup.py test .. _pytest-plugins: Pytest Plugins ************** The following ``pytest`` plugins are maintained and used by Astropy. They are included in the ``pytest-astropy`` package, which is now required for testing Astropy. More information on all of the plugins provided by the ``pytest-astropy`` package (including dependencies not maintained by Astropy) can be found `here `__. .. _remotedata-plugin: pytest-remotedata ================= The `pytest-remotedata`_ plugin allows developers to control whether to run tests that access data from the internet. The plugin provides two decorators that can be used to mark individual test functions or entire test classes: * ``@pytest.mark.remote_data`` for tests that require data from the internet * ``@pytest.mark.internet_off`` for tests that should run only when there is no internet access. This is useful for testing local data caches or fallbacks for when no network access is available. The plugin also adds the ``--remote-data`` option to the ``pytest`` command (which is also made available through the Astropy test runner). If the ``--remote-data`` option is not provided when running the test suite, or if ``--remote-data=none`` is provided, all tests that are marked with ``remote_data`` will be skipped. All tests that are marked with ``internet_off`` will be executed. Any test that attempts to access the internet but is not marked with ``remote_data`` will result in a failure. Providing either the ``--remote-data`` option, or ``--remote-data=any``, will cause all tests marked with ``remote_data`` to be executed. Any tests that are marked with ``internet_off`` will be skipped. Running the tests with ``--remote-data=astropy`` will cause only tests that receive remote data from Astropy data sources to be run. Tests with any other data sources will be skipped. This is indicated in the test code by marking test functions with ``@pytest.mark.remote_data(source='astropy')``. Tests marked with ``internet_off`` will also be skipped in this case. Also see :ref:`data-files`. .. _pytest-remotedata: https://github.com/astropy/pytest-remotedata .. _doctestplus-plugin: pytest-doctestplus ================== The `pytest-doctestplus`_ plugin provides advanced doctest features, including: * handling doctests that use remote data in conjunction with the ``pytest-remotedata`` plugin above (see :ref:`data-files`) * approximate floating point comparison for doctests that produce floating point results (see :ref:`handling-float-output`) * skipping particular classes, methods, and functions when running doctests (see :ref:`skipping-doctests`) * optional inclusion of ``*.rst`` files for doctests This plugin provides two command line options: ``--doctest-plus`` for enabling the advanced features mentioned above, and ``--doctest-rst`` for including ``*.rst`` files in doctest collection. The Astropy test runner enables both of these options by default. When running the test suite directly from ``pytest`` (instead of through the Astropy test runner), it is necessary to explicitly provide these options when they are needed. .. _pytest-doctestplus: https://github.com/astropy/pytest-doctestplus .. _openfiles-plugin: pytest-openfiles ================ The `pytest-openfiles`_ plugin allows for the detection of open I/O resources at the end of unit tests. This plugin adds the ``--open-files`` option to the ``pytest`` command (which is also exposed through the Astropy test runner). When running tests with ``--open-files``, if a file is opened during the course of a unit test but that file not closed before the test finishes, the test will fail. This is particularly useful for testing code that manipulates file handles or other I/O resources. It allows developers to ensure that this kind of code properly cleans up I/O resources when they are no longer needed. Also see :ref:`open-files`. .. _pytest-openfiles: https://github.com/astropy/pytest-openfiles