mirror of https://github.com/python/cpython.git
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.. _pyporting-howto:
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*********************************
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Porting Python 2 Code to Python 3
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*********************************
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:author: Brett Cannon
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.. topic:: Abstract
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With Python 3 being the future of Python while Python 2 is still in active
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use, it is good to have your project available for both major releases of
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Python. This guide is meant to help you figure out how best to support both
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Python 2 & 3 simultaneously.
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If you are looking to port an extension module instead of pure Python code,
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please see :ref:`cporting-howto`.
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If you would like to read one core Python developer's take on why Python 3
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came into existence, you can read Nick Coghlan's `Python 3 Q & A`_ or
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Brett Cannon's `Why Python 3 exists`_.
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For help with porting, you can view the archived python-porting_ mailing list.
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The Short Explanation
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=====================
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To make your project be single-source Python 2/3 compatible, the basic steps
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are:
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#. Only worry about supporting Python 2.7
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#. Make sure you have good test coverage (coverage.py_ can help;
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``python -m pip install coverage``)
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#. Learn the differences between Python 2 & 3
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#. Use Futurize_ (or Modernize_) to update your code (e.g. ``python -m pip install future``)
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#. Use Pylint_ to help make sure you don't regress on your Python 3 support
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(``python -m pip install pylint``)
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#. Use caniusepython3_ to find out which of your dependencies are blocking your
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use of Python 3 (``python -m pip install caniusepython3``)
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#. Once your dependencies are no longer blocking you, use continuous integration
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to make sure you stay compatible with Python 2 & 3 (tox_ can help test
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against multiple versions of Python; ``python -m pip install tox``)
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#. Consider using optional static type checking to make sure your type usage
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works in both Python 2 & 3 (e.g. use mypy_ to check your typing under both
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Python 2 & Python 3; ``python -m pip install mypy``).
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.. note::
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Note: Using ``python -m pip install`` guarantees that the ``pip`` you invoke
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is the one installed for the Python currently in use, whether it be
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a system-wide ``pip`` or one installed within a
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:ref:`virtual environment <tut-venv>`.
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Details
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=======
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A key point about supporting Python 2 & 3 simultaneously is that you can start
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**today**! Even if your dependencies are not supporting Python 3 yet that does
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not mean you can't modernize your code **now** to support Python 3. Most changes
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required to support Python 3 lead to cleaner code using newer practices even in
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Python 2 code.
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Another key point is that modernizing your Python 2 code to also support
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Python 3 is largely automated for you. While you might have to make some API
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decisions thanks to Python 3 clarifying text data versus binary data, the
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lower-level work is now mostly done for you and thus can at least benefit from
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the automated changes immediately.
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Keep those key points in mind while you read on about the details of porting
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your code to support Python 2 & 3 simultaneously.
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Drop support for Python 2.6 and older
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-------------------------------------
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While you can make Python 2.5 work with Python 3, it is **much** easier if you
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only have to work with Python 2.7. If dropping Python 2.5 is not an
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option then the six_ project can help you support Python 2.5 & 3 simultaneously
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(``python -m pip install six``). Do realize, though, that nearly all the projects listed
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in this HOWTO will not be available to you.
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If you are able to skip Python 2.5 and older, then the required changes
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to your code should continue to look and feel like idiomatic Python code. At
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worst you will have to use a function instead of a method in some instances or
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have to import a function instead of using a built-in one, but otherwise the
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overall transformation should not feel foreign to you.
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But you should aim for only supporting Python 2.7. Python 2.6 is no longer
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freely supported and thus is not receiving bugfixes. This means **you** will have
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to work around any issues you come across with Python 2.6. There are also some
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tools mentioned in this HOWTO which do not support Python 2.6 (e.g., Pylint_),
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and this will become more commonplace as time goes on. It will simply be easier
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for you if you only support the versions of Python that you have to support.
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Make sure you specify the proper version support in your ``setup.py`` file
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--------------------------------------------------------------------------
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In your ``setup.py`` file you should have the proper `trove classifier`_
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specifying what versions of Python you support. As your project does not support
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Python 3 yet you should at least have
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``Programming Language :: Python :: 2 :: Only`` specified. Ideally you should
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also specify each major/minor version of Python that you do support, e.g.
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``Programming Language :: Python :: 2.7``.
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Have good test coverage
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-----------------------
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Once you have your code supporting the oldest version of Python 2 you want it
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to, you will want to make sure your test suite has good coverage. A good rule of
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thumb is that if you want to be confident enough in your test suite that any
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failures that appear after having tools rewrite your code are actual bugs in the
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tools and not in your code. If you want a number to aim for, try to get over 80%
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coverage (and don't feel bad if you find it hard to get better than 90%
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coverage). If you don't already have a tool to measure test coverage then
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coverage.py_ is recommended.
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Learn the differences between Python 2 & 3
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-------------------------------------------
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Once you have your code well-tested you are ready to begin porting your code to
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Python 3! But to fully understand how your code is going to change and what
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you want to look out for while you code, you will want to learn what changes
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Python 3 makes in terms of Python 2. Typically the two best ways of doing that
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is reading the :ref:`"What's New" <whatsnew-index>` doc for each release of Python 3 and the
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`Porting to Python 3`_ book (which is free online). There is also a handy
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`cheat sheet`_ from the Python-Future project.
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Update your code
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----------------
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Once you feel like you know what is different in Python 3 compared to Python 2,
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it's time to update your code! You have a choice between two tools in porting
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your code automatically: Futurize_ and Modernize_. Which tool you choose will
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depend on how much like Python 3 you want your code to be. Futurize_ does its
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best to make Python 3 idioms and practices exist in Python 2, e.g. backporting
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the ``bytes`` type from Python 3 so that you have semantic parity between the
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major versions of Python. Modernize_,
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on the other hand, is more conservative and targets a Python 2/3 subset of
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Python, directly relying on six_ to help provide compatibility. As Python 3 is
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the future, it might be best to consider Futurize to begin adjusting to any new
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practices that Python 3 introduces which you are not accustomed to yet.
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Regardless of which tool you choose, they will update your code to run under
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Python 3 while staying compatible with the version of Python 2 you started with.
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Depending on how conservative you want to be, you may want to run the tool over
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your test suite first and visually inspect the diff to make sure the
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transformation is accurate. After you have transformed your test suite and
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verified that all the tests still pass as expected, then you can transform your
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application code knowing that any tests which fail is a translation failure.
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Unfortunately the tools can't automate everything to make your code work under
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Python 3 and so there are a handful of things you will need to update manually
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to get full Python 3 support (which of these steps are necessary vary between
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the tools). Read the documentation for the tool you choose to use to see what it
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fixes by default and what it can do optionally to know what will (not) be fixed
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for you and what you may have to fix on your own (e.g. using ``io.open()`` over
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the built-in ``open()`` function is off by default in Modernize). Luckily,
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though, there are only a couple of things to watch out for which can be
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considered large issues that may be hard to debug if not watched for.
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Division
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++++++++
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In Python 3, ``5 / 2 == 2.5`` and not ``2``; all division between ``int`` values
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result in a ``float``. This change has actually been planned since Python 2.2
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which was released in 2002. Since then users have been encouraged to add
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``from __future__ import division`` to any and all files which use the ``/`` and
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``//`` operators or to be running the interpreter with the ``-Q`` flag. If you
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have not been doing this then you will need to go through your code and do two
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things:
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#. Add ``from __future__ import division`` to your files
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#. Update any division operator as necessary to either use ``//`` to use floor
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division or continue using ``/`` and expect a float
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The reason that ``/`` isn't simply translated to ``//`` automatically is that if
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an object defines a ``__truediv__`` method but not ``__floordiv__`` then your
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code would begin to fail (e.g. a user-defined class that uses ``/`` to
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signify some operation but not ``//`` for the same thing or at all).
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Text versus binary data
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+++++++++++++++++++++++
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In Python 2 you could use the ``str`` type for both text and binary data.
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Unfortunately this confluence of two different concepts could lead to brittle
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code which sometimes worked for either kind of data, sometimes not. It also
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could lead to confusing APIs if people didn't explicitly state that something
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that accepted ``str`` accepted either text or binary data instead of one
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specific type. This complicated the situation especially for anyone supporting
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multiple languages as APIs wouldn't bother explicitly supporting ``unicode``
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when they claimed text data support.
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To make the distinction between text and binary data clearer and more
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pronounced, Python 3 did what most languages created in the age of the internet
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have done and made text and binary data distinct types that cannot blindly be
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mixed together (Python predates widespread access to the internet). For any code
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that deals only with text or only binary data, this separation doesn't pose an
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issue. But for code that has to deal with both, it does mean you might have to
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now care about when you are using text compared to binary data, which is why
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this cannot be entirely automated.
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To start, you will need to decide which APIs take text and which take binary
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(it is **highly** recommended you don't design APIs that can take both due to
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the difficulty of keeping the code working; as stated earlier it is difficult to
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do well). In Python 2 this means making sure the APIs that take text can work
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with ``unicode`` and those that work with binary data work with the
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``bytes`` type from Python 3 (which is a subset of ``str`` in Python 2 and acts
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as an alias for ``bytes`` type in Python 2). Usually the biggest issue is
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realizing which methods exist on which types in Python 2 & 3 simultaneously
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(for text that's ``unicode`` in Python 2 and ``str`` in Python 3, for binary
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that's ``str``/``bytes`` in Python 2 and ``bytes`` in Python 3). The following
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table lists the **unique** methods of each data type across Python 2 & 3
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(e.g., the ``decode()`` method is usable on the equivalent binary data type in
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either Python 2 or 3, but it can't be used by the textual data type consistently
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between Python 2 and 3 because ``str`` in Python 3 doesn't have the method). Do
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note that as of Python 3.5 the ``__mod__`` method was added to the bytes type.
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======================== =====================
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**Text data** **Binary data**
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------------------------ ---------------------
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\ decode
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------------------------ ---------------------
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encode
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------------------------ ---------------------
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format
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------------------------ ---------------------
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isdecimal
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------------------------ ---------------------
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isnumeric
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======================== =====================
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Making the distinction easier to handle can be accomplished by encoding and
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decoding between binary data and text at the edge of your code. This means that
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when you receive text in binary data, you should immediately decode it. And if
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your code needs to send text as binary data then encode it as late as possible.
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This allows your code to work with only text internally and thus eliminates
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having to keep track of what type of data you are working with.
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The next issue is making sure you know whether the string literals in your code
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represent text or binary data. You should add a ``b`` prefix to any
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literal that presents binary data. For text you should add a ``u`` prefix to
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the text literal. (there is a :mod:`__future__` import to force all unspecified
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literals to be Unicode, but usage has shown it isn't as effective as adding a
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``b`` or ``u`` prefix to all literals explicitly)
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As part of this dichotomy you also need to be careful about opening files.
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Unless you have been working on Windows, there is a chance you have not always
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bothered to add the ``b`` mode when opening a binary file (e.g., ``rb`` for
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binary reading). Under Python 3, binary files and text files are clearly
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distinct and mutually incompatible; see the :mod:`io` module for details.
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Therefore, you **must** make a decision of whether a file will be used for
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binary access (allowing binary data to be read and/or written) or textual access
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(allowing text data to be read and/or written). You should also use :func:`io.open`
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for opening files instead of the built-in :func:`open` function as the :mod:`io`
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module is consistent from Python 2 to 3 while the built-in :func:`open` function
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is not (in Python 3 it's actually :func:`io.open`). Do not bother with the
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outdated practice of using :func:`codecs.open` as that's only necessary for
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keeping compatibility with Python 2.5.
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The constructors of both ``str`` and ``bytes`` have different semantics for the
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same arguments between Python 2 & 3. Passing an integer to ``bytes`` in Python 2
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will give you the string representation of the integer: ``bytes(3) == '3'``.
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But in Python 3, an integer argument to ``bytes`` will give you a bytes object
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as long as the integer specified, filled with null bytes:
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``bytes(3) == b'\x00\x00\x00'``. A similar worry is necessary when passing a
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bytes object to ``str``. In Python 2 you just get the bytes object back:
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``str(b'3') == b'3'``. But in Python 3 you get the string representation of the
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bytes object: ``str(b'3') == "b'3'"``.
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Finally, the indexing of binary data requires careful handling (slicing does
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**not** require any special handling). In Python 2,
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``b'123'[1] == b'2'`` while in Python 3 ``b'123'[1] == 50``. Because binary data
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is simply a collection of binary numbers, Python 3 returns the integer value for
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the byte you index on. But in Python 2 because ``bytes == str``, indexing
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returns a one-item slice of bytes. The six_ project has a function
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named ``six.indexbytes()`` which will return an integer like in Python 3:
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``six.indexbytes(b'123', 1)``.
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To summarize:
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#. Decide which of your APIs take text and which take binary data
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#. Make sure that your code that works with text also works with ``unicode`` and
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code for binary data works with ``bytes`` in Python 2 (see the table above
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for what methods you cannot use for each type)
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#. Mark all binary literals with a ``b`` prefix, textual literals with a ``u``
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prefix
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#. Decode binary data to text as soon as possible, encode text as binary data as
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late as possible
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#. Open files using :func:`io.open` and make sure to specify the ``b`` mode when
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appropriate
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#. Be careful when indexing into binary data
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Use feature detection instead of version detection
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++++++++++++++++++++++++++++++++++++++++++++++++++
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Inevitably you will have code that has to choose what to do based on what
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version of Python is running. The best way to do this is with feature detection
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of whether the version of Python you're running under supports what you need.
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If for some reason that doesn't work then you should make the version check be
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against Python 2 and not Python 3. To help explain this, let's look at an
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example.
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Let's pretend that you need access to a feature of :mod:`importlib` that
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is available in Python's standard library since Python 3.3 and available for
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Python 2 through importlib2_ on PyPI. You might be tempted to write code to
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access e.g. the :mod:`importlib.abc` module by doing the following::
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import sys
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if sys.version_info[0] == 3:
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from importlib import abc
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else:
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from importlib2 import abc
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The problem with this code is what happens when Python 4 comes out? It would
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be better to treat Python 2 as the exceptional case instead of Python 3 and
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assume that future Python versions will be more compatible with Python 3 than
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Python 2::
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import sys
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if sys.version_info[0] > 2:
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from importlib import abc
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else:
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from importlib2 import abc
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The best solution, though, is to do no version detection at all and instead rely
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on feature detection. That avoids any potential issues of getting the version
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detection wrong and helps keep you future-compatible::
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try:
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from importlib import abc
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except ImportError:
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from importlib2 import abc
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Prevent compatibility regressions
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---------------------------------
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Once you have fully translated your code to be compatible with Python 3, you
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will want to make sure your code doesn't regress and stop working under
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Python 3. This is especially true if you have a dependency which is blocking you
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from actually running under Python 3 at the moment.
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To help with staying compatible, any new modules you create should have
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at least the following block of code at the top of it::
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from __future__ import absolute_import
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from __future__ import division
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from __future__ import print_function
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You can also run Python 2 with the ``-3`` flag to be warned about various
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compatibility issues your code triggers during execution. If you turn warnings
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into errors with ``-Werror`` then you can make sure that you don't accidentally
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miss a warning.
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You can also use the Pylint_ project and its ``--py3k`` flag to lint your code
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to receive warnings when your code begins to deviate from Python 3
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compatibility. This also prevents you from having to run Modernize_ or Futurize_
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over your code regularly to catch compatibility regressions. This does require
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you only support Python 2.7 and Python 3.4 or newer as that is Pylint's
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minimum Python version support.
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Check which dependencies block your transition
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----------------------------------------------
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**After** you have made your code compatible with Python 3 you should begin to
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care about whether your dependencies have also been ported. The caniusepython3_
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project was created to help you determine which projects
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-- directly or indirectly -- are blocking you from supporting Python 3. There
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is both a command-line tool as well as a web interface at
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https://caniusepython3.com.
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The project also provides code which you can integrate into your test suite so
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that you will have a failing test when you no longer have dependencies blocking
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you from using Python 3. This allows you to avoid having to manually check your
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dependencies and to be notified quickly when you can start running on Python 3.
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Update your ``setup.py`` file to denote Python 3 compatibility
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--------------------------------------------------------------
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Once your code works under Python 3, you should update the classifiers in
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your ``setup.py`` to contain ``Programming Language :: Python :: 3`` and to not
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specify sole Python 2 support. This will tell anyone using your code that you
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support Python 2 **and** 3. Ideally you will also want to add classifiers for
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each major/minor version of Python you now support.
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Use continuous integration to stay compatible
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---------------------------------------------
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Once you are able to fully run under Python 3 you will want to make sure your
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code always works under both Python 2 & 3. Probably the best tool for running
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your tests under multiple Python interpreters is tox_. You can then integrate
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tox with your continuous integration system so that you never accidentally break
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Python 2 or 3 support.
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You may also want to use the ``-bb`` flag with the Python 3 interpreter to
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trigger an exception when you are comparing bytes to strings or bytes to an int
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(the latter is available starting in Python 3.5). By default type-differing
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comparisons simply return ``False``, but if you made a mistake in your
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separation of text/binary data handling or indexing on bytes you wouldn't easily
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find the mistake. This flag will raise an exception when these kinds of
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comparisons occur, making the mistake much easier to track down.
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And that's mostly it! At this point your code base is compatible with both
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Python 2 and 3 simultaneously. Your testing will also be set up so that you
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don't accidentally break Python 2 or 3 compatibility regardless of which version
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you typically run your tests under while developing.
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Consider using optional static type checking
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--------------------------------------------
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Another way to help port your code is to use a static type checker like
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mypy_ or pytype_ on your code. These tools can be used to analyze your code as
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if it's being run under Python 2, then you can run the tool a second time as if
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your code is running under Python 3. By running a static type checker twice like
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this you can discover if you're e.g. misusing binary data type in one version
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of Python compared to another. If you add optional type hints to your code you
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can also explicitly state whether your APIs use textual or binary data, helping
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to make sure everything functions as expected in both versions of Python.
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.. _caniusepython3: https://pypi.org/project/caniusepython3
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.. _cheat sheet: https://python-future.org/compatible_idioms.html
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.. _coverage.py: https://pypi.org/project/coverage
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.. _Futurize: https://python-future.org/automatic_conversion.html
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.. _importlib2: https://pypi.org/project/importlib2
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.. _Modernize: https://python-modernize.readthedocs.io/
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.. _mypy: https://mypy-lang.org/
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.. _Porting to Python 3: http://python3porting.com/
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.. _Pylint: https://pypi.org/project/pylint
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.. _Python 3 Q & A: https://ncoghlan-devs-python-notes.readthedocs.io/en/latest/python3/questions_and_answers.html
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.. _pytype: https://github.com/google/pytype
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.. _python-future: https://python-future.org/
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.. _python-porting: https://mail.python.org/pipermail/python-porting/
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.. _six: https://pypi.org/project/six
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.. _tox: https://pypi.org/project/tox
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.. _trove classifier: https://pypi.org/classifiers
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.. _Why Python 3 exists: https://snarky.ca/why-python-3-exists
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