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Configurable, whitespace-insensitive, floating-point-aware doctest helpers.

Project description

Floating-point aware, human readable, numpy-compatible doctesting.

TL;DR

This project extends the standard library doctest module to allow flexibility and easy customization of finding, parsing and checking code examples in documentation.

Can be used either as drop-in doctest replacement or through the pytest integration. Uses a floating-point aware doctest checker by default.

Motivation and scope

Having examples in the documentation is great. Having wrong examples in the documentation is not that great however.

The standard library doctest module is great for making sure that docstring examples are correct. However, the doctest module is limited in several respects. Consider:

 >>> np.array([1/3, 2/3, 3/3])   # doctest: +SKIP
 array([0.333, 0.669, 1])

This looks reasonably clear but does not work, in three different ways. First, 1/3 is not equal to 0.333 because floating-point arithmetic. Second, numpy adds whitespace to its output, this whitespace confuses the doctest, which is whitespace-sensitive. Therefore, we added a magic directive, +SKIP to avoid a doctest error. Third, the example is actually wrong---notice 0.669 which is not equal to 2/3 to three sig figs. The error went unnoticed by the doctester also because of the +SKIP directive.

We believe these # doctest: +SKIP directives do not add any value to a human reader, and should not be present in the documentation.

This package defines modified doctesting routines which fix these deficiencies. Its main features are

  • Doctesting is floating-point aware. In a nutshell, the core check is np.allclose(want, got, atol=..., rtol=...), with user-controllable abs and relative tolerances. In the example above (sans # doctest: +SKIP), want is the desired output, array([0.333, 0.669, 1]) and got is the actual output from numpy: array([0.33333333, 0.66666667, 1. ]).

  • Human-readable skip markers. Consider

    >>> np.random.randint(100)
    42     # may vary
    

Note that the markers (by default, "# may vary" and "# random") can be applied to either an example's output, or its source.

Also note a difference with respect to the standard # doctest: +SKIP: the latter skips the example entirely, while these additional markers only skip checking the output. Thus the example source needs to be valid python code still.

  • A user-configurable list of stopwords. If an example contains a stopword, it is checked to be valid python, but the output is not checked. This can be useful e.g. for not littering the documentation with the output of import matplotlib.pyplot as plt; plt.xlim([2.3, 4.5]).

  • A user-configurable list of pseudocode markers. If an example contains one of these markers, it is considered pseudocode and is not checked. This is useful for from example import some_functions and similar stanzas.

  • A # doctest: +SKIPBLOCK option flag to skip whole blocks of pseudocode. Here a 'block' is a sequence of doctest examples without any intervening text.

  • Doctest discovery is somewhat more flexible then the standard library doctest module. Specifically, one can use testmod(module, strategy='api') to only examine public objects of a module. This is helpful for complex packages, with non-trivial internal file structure. Alternatively, the default value of strategy=None is equivalent to the standard doctest module behavior.

  • User configuration. Essentially all aspects of the behavior are user configurable via a DTConfig instance attributes. See the DTConfig docstring for details.

Install and test

$ pip install scipy-doctest
$ pytest --pyargs scipy_doctest

Usage

The API of the package has two layers: the basic layer follows the API of the standard library doctest module, and we strive to provide drop-in replacements, or nearly so.

The other layer is the pytest plugin.

Run doctests via pytest

To run doctests on your package or project, follow these steps:

  1. Install the plugin
pip install scipy-doctest
  1. Register or load the plugin

Next, you need to register or load the pytest plugin within your test module or conftest.py file.

To do this, add the following line of code:

# In your conftest.py file or test module

pytest_plugins = "scipy_doctest"

Check out the pytest documentation for more information on requiring/loading plugins in a test module or conftest.py file.

  1. Run doctests

Once the plugin is registered, run the doctests by executing the following command:

$ python -m pytest --doctest-modules

or

$ pytest --pyargs <your-package> --doctest-modules

By default, all doctests are collected. To only collect public objects, strategy="api", use the command flag

$ pytest --pyargs <your-package> --doctest-modules --doctest-collect=api

See More fine-grained control section for details on how to customize the behavior.

Basic usage

The use of pytest is optional, and you can use the doctest layer API. For example,

>>> from scipy import linalg
>>> from scipy_doctest import testmod
>>> res, hist = testmod(linalg, strategy='api')
>>> res
TestResults(failed=0, attempted=764)

The second return value, hist is a dict which maps the names of the objects to the numbers of failures and attempts for individual examples.

For more details, see the testmod docstring. Other useful functions are find_doctests, run_docstring_examples and testfile (the latter two mimic the behavior of the eponymous functions of the doctest module).

Command-line interface

There is a basic CLI, which also mimics that of the doctest module:

$ python -m scipy_doctest foo.py

Note that, just like $ python -m doctest foo.py, this may fail if foo.py is a part of a package due to package imports.

Text files can also be CLI-checked:

$ python -m scipy_doctest bar.rst

Notice that the command-line usage only uses the default DTConfig settings.

More fine-grained control

More fine-grained control of the functionality is available via the following classes

Class doctest analog
DTChecker DocTestChecker
DTParser DocTestParser
DTRunner DocTestRunner
DTFinder DocTestFinder
DTContext --

The DTContext class is just a bag class which holds various configuration settings as attributes. An instance of this class is passed around, so user configuration is simply creating an instance, overriding an attribute and passing the instance to testmod or constructors of DT* objects. Defaults are provided, based on a long-term usage in SciPy.

See the DTConfig docstring for the full set of attributes that allow you to fine-tune your doctesting experience.

To set any of these attributes, create an instance of DTConfig and assign the attributes in a usual way.

If using the pytest plugin, it is convenient to use the default instance, which is predefined in scipy_doctest/conftest.py. This instance will be automatically passed around via an attribute of pytest's Config object.

Examples

dt_config = DTConfig()

or, if using pytest,

from scipy_doctest.conftest import dt_config   # a DTConfig instance with default settings

and then

dt_config.rndm_markers = {'# unintialized'}

dt_config.stopwords = {'plt.', 'plt.hist', 'plt.show'}

dt_config.local_resources = {
    'scipy_doctest.tests.local_file_cases.local_files': ['scipy_doctest/tests/local_file.txt'],
    'scipy_doctest.tests.local_file_cases.sio': ['scipy_doctest/tests/octave_a.mat']
}

dt_config.skiplist = {
    'scipy.special.sinc',
    'scipy.misc.who',
    'scipy.optimize.show_options'
}

If you don't set these attributes, the default settings of the attributes are used.

Alternative Checkers

By default, we use the floating-point aware DTChecker. If you want to use an alternative checker, all you need to do is to define the corresponding class, and add an attribute to the DTConfig instance. For example,

class VanillaOutputChecker(doctest.OutputChecker):
    """doctest.OutputChecker to drop in for DTChecker.

    LSP break: OutputChecker does not have __init__,
    here we add it to agree with DTChecker.
    """
    def __init__(self, config):
        pass

and

dt_config = DTConfig()
dt_config.CheckerKlass = VanillaOutputChecker

See a pytest example and a doctest example for more details.

NumPy and SciPy wrappers

NumPy wraps scipy-doctest with the spin command

$ spin check-docs

SciPy wraps scipy-doctest with custom dev.py commands:

$ python dev.py smoke-docs    # check docstrings
$ python dev.py smoke-tutorials   # ReST user guide tutorials

Rough edges and sharp bits

Here is a (non-exhaustive) list of possible gotchas:

  • In-place development builds.

Some tools (looking at you meson-python) simulate in-place builds with a build-install directory. If this directory is located under the project root, pytest is getting confused by duplicated items under the root and build-install folders.

The solution is to make pytest only look into the build-install directory (the specific path to build-install may vary):

$ pytest build-install/lib/python3.10/site-packages/scipy/ --doctest-modules

instead of $ pytest --pyargs scipy.

If push comes to shove, you may try using the magic env variable: PY_IGNORE_IMPORTMISMATCH=1 pytest ..., however the need usually indicates an issue with the package itself. (see gh-107 for an example).

  • Optional dependencies are not that optional

If your package contains optional dependencies, doctests do not know about them being optional. So you either guard the imports in doctests (yikes!), or the collections fails if dependencies are not available.

The solution is to explicitly --ignore the paths to modules with optionals. (or, equivalently, use DTConfig.pytest_extra_ignore list):

$ pytest --ignore=/build-install/lib/scipy/python3.10/site-packages/scipy/_lib ...

Note that installed packages are no different:

$ pytest --pyargs scipy --doctest-modules --ignore=/path/to/installed/scipy/_lib
  • Doctest collection strategies

The default collection strategy follows doctest module and pytest. This leads to duplicates if your package has the split between public and _private modules, where public modules re-export things from private ones. The solution is to use $ pytest --doctest-collect=api CLI switch: with this, only public objects will be collected.

The decision on what is public is as follows: an object is public iff

  • it is included into the __all__ list of a public module;
  • the name of the object does not have a leading underscore;
  • the name of the module from which the object is collected does not have a leading underscore.

Consider an example: scipy.linalg.det is defined in scipy/linalg/_basic.py, so it is collected twice, from _basic.py and from __init__.py. The rule above leads to

  • scipy.linalg._basic.det, collected from scipy/linalg/_basic.py, is private.

  • scipy.linalg.det, collected from scipy/linalg/__init__.py, is public.

  • pytest's assertion rewriting

In some rare cases you may need to either explicitly register the scipy_doctest package with the pytest assertion rewriting machinery, or ask it to avoid rewriting completely, via pytest --assert=plain. See the pytest documentation for more details.

In general, rewriting assertions is not very useful for doctests, as the output on error is fixed by the doctest machinery anyway. Therefore, we believe adding --assert=plain is reasonable.

Prior art and related work

  • pytest provides some limited floating-point aware NumericLiteralChecker.

  • pytest-doctestplus plugin from the AstroPy project has similar goals. The package is well established and widely used. From a user perspective, main differences are: (i) pytest-doctestplus is more sensitive to formatting, including whitespace---thus if numpy tweaks its output formatting, doctests may start failing; (ii) there is still a need for # doctest: +FLOAT_CMP directives.

    This project takes a different approach: in addition to plugging into pytest, we closely follow the doctest API and implementation, which are naturally way more stable then pytest.

  • NumPy and SciPy were using modified doctesting in their refguide-check utilities. These utilities are tightly coupled to their libraries, and have been reported to be not easy to reason about, work with, and extend to other projects.

    This project is mainly the core functionality of the modified refguide-check doctesting, extracted to a separate package. We believe having it separate simplifies both addressing the needs of these two packages, and potential adoption by other projects.

Bug reports, feature requests and contributions

This package is work in progress. Contributions are most welcome! Please don't hesitate to open an issue in the tracker or send a pull request.

The current location of the issue tracker is https://github.com/scipy/scipy_doctest.

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