mirror of https://github.com/python/cpython.git
537 lines
19 KiB
ReStructuredText
537 lines
19 KiB
ReStructuredText
.. highlight:: c
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***************************
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Isolating Extension Modules
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***************************
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.. topic:: Abstract
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Traditionally, state belonging to Python extension modules was kept in C
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``static`` variables, which have process-wide scope. This document
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describes problems of such per-process state and shows a safer way:
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per-module state.
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The document also describes how to switch to per-module state where
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possible. This transition involves allocating space for that state, potentially
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switching from static types to heap types, and—perhaps most
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importantly—accessing per-module state from code.
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Who should read this
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====================
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This guide is written for maintainers of :ref:`C-API <c-api-index>` extensions
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who would like to make that extension safer to use in applications where
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Python itself is used as a library.
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Background
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==========
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An *interpreter* is the context in which Python code runs. It contains
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configuration (e.g. the import path) and runtime state (e.g. the set of
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imported modules).
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Python supports running multiple interpreters in one process. There are
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two cases to think about—users may run interpreters:
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- in sequence, with several :c:func:`Py_InitializeEx`/:c:func:`Py_FinalizeEx`
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cycles, and
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- in parallel, managing "sub-interpreters" using
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:c:func:`Py_NewInterpreter`/:c:func:`Py_EndInterpreter`.
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Both cases (and combinations of them) would be most useful when
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embedding Python within a library. Libraries generally shouldn't make
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assumptions about the application that uses them, which include
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assuming a process-wide "main Python interpreter".
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Historically, Python extension modules don't handle this use case well.
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Many extension modules (and even some stdlib modules) use *per-process*
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global state, because C ``static`` variables are extremely easy to use.
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Thus, data that should be specific to an interpreter ends up being shared
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between interpreters. Unless the extension developer is careful, it is very
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easy to introduce edge cases that lead to crashes when a module is loaded in
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more than one interpreter in the same process.
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Unfortunately, *per-interpreter* state is not easy to achieve. Extension
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authors tend to not keep multiple interpreters in mind when developing,
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and it is currently cumbersome to test the behavior.
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Enter Per-Module State
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----------------------
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Instead of focusing on per-interpreter state, Python's C API is evolving
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to better support the more granular *per-module* state.
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This means that C-level data is be attached to a *module object*.
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Each interpreter creates its own module object, keeping the data separate.
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For testing the isolation, multiple module objects corresponding to a single
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extension can even be loaded in a single interpreter.
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Per-module state provides an easy way to think about lifetime and
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resource ownership: the extension module will initialize when a
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module object is created, and clean up when it's freed. In this regard,
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a module is just like any other :c:expr:`PyObject *`; there are no "on
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interpreter shutdown" hooks to think—or forget—about.
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Note that there are use cases for different kinds of "globals":
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per-process, per-interpreter, per-thread or per-task state.
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With per-module state as the default, these are still possible,
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but you should treat them as exceptional cases:
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if you need them, you should give them additional care and testing.
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(Note that this guide does not cover them.)
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Isolated Module Objects
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-----------------------
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The key point to keep in mind when developing an extension module is
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that several module objects can be created from a single shared library.
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For example:
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.. code-block:: pycon
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>>> import sys
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>>> import binascii
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>>> old_binascii = binascii
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>>> del sys.modules['binascii']
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>>> import binascii # create a new module object
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>>> old_binascii == binascii
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False
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As a rule of thumb, the two modules should be completely independent.
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All objects and state specific to the module should be encapsulated
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within the module object, not shared with other module objects, and
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cleaned up when the module object is deallocated.
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Since this just is a rule of thumb, exceptions are possible
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(see `Managing Global State`_), but they will need more
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thought and attention to edge cases.
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While some modules could do with less stringent restrictions, isolated
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modules make it easier to set clear expectations and guidelines that
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work across a variety of use cases.
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Surprising Edge Cases
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---------------------
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Note that isolated modules do create some surprising edge cases. Most
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notably, each module object will typically not share its classes and
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exceptions with other similar modules. Continuing from the
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`example above <Isolated Module Objects_>`__,
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note that ``old_binascii.Error`` and ``binascii.Error`` are
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separate objects. In the following code, the exception is *not* caught:
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.. code-block:: pycon
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>>> old_binascii.Error == binascii.Error
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False
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>>> try:
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... old_binascii.unhexlify(b'qwertyuiop')
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... except binascii.Error:
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... print('boo')
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...
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Traceback (most recent call last):
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File "<stdin>", line 2, in <module>
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binascii.Error: Non-hexadecimal digit found
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This is expected. Notice that pure-Python modules behave the same way:
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it is a part of how Python works.
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The goal is to make extension modules safe at the C level, not to make
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hacks behave intuitively. Mutating ``sys.modules`` "manually" counts
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as a hack.
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Making Modules Safe with Multiple Interpreters
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==============================================
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Managing Global State
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---------------------
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Sometimes, the state associated with a Python module is not specific to that module, but
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to the entire process (or something else "more global" than a module).
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For example:
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- The ``readline`` module manages *the* terminal.
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- A module running on a circuit board wants to control *the* on-board
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LED.
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In these cases, the Python module should provide *access* to the global
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state, rather than *own* it. If possible, write the module so that
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multiple copies of it can access the state independently (along with
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other libraries, whether for Python or other languages). If that is not
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possible, consider explicit locking.
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If it is necessary to use process-global state, the simplest way to
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avoid issues with multiple interpreters is to explicitly prevent a
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module from being loaded more than once per process—see
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`Opt-Out: Limiting to One Module Object per Process`_.
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Managing Per-Module State
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-------------------------
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To use per-module state, use
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:ref:`multi-phase extension module initialization <multi-phase-initialization>`.
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This signals that your module supports multiple interpreters correctly.
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Set ``PyModuleDef.m_size`` to a positive number to request that many
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bytes of storage local to the module. Usually, this will be set to the
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size of some module-specific ``struct``, which can store all of the
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module's C-level state. In particular, it is where you should put
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pointers to classes (including exceptions, but excluding static types)
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and settings (e.g. ``csv``'s :py:data:`~csv.field_size_limit`)
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which the C code needs to function.
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.. note::
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Another option is to store state in the module's ``__dict__``,
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but you must avoid crashing when users modify ``__dict__`` from
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Python code. This usually means error- and type-checking at the C level,
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which is easy to get wrong and hard to test sufficiently.
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However, if module state is not needed in C code, storing it in
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``__dict__`` only is a good idea.
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If the module state includes ``PyObject`` pointers, the module object
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must hold references to those objects and implement the module-level hooks
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``m_traverse``, ``m_clear`` and ``m_free``. These work like
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``tp_traverse``, ``tp_clear`` and ``tp_free`` of a class. Adding them will
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require some work and make the code longer; this is the price for
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modules which can be unloaded cleanly.
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An example of a module with per-module state is currently available as
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`xxlimited <https://github.com/python/cpython/blob/master/Modules/xxlimited.c>`__;
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example module initialization shown at the bottom of the file.
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Opt-Out: Limiting to One Module Object per Process
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--------------------------------------------------
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A non-negative ``PyModuleDef.m_size`` signals that a module supports
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multiple interpreters correctly. If this is not yet the case for your
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module, you can explicitly make your module loadable only once per
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process. For example::
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static int loaded = 0;
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static int
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exec_module(PyObject* module)
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{
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if (loaded) {
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PyErr_SetString(PyExc_ImportError,
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"cannot load module more than once per process");
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return -1;
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}
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loaded = 1;
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// ... rest of initialization
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}
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Module State Access from Functions
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----------------------------------
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Accessing the state from module-level functions is straightforward.
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Functions get the module object as their first argument; for extracting
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the state, you can use ``PyModule_GetState``::
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static PyObject *
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func(PyObject *module, PyObject *args)
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{
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my_struct *state = (my_struct*)PyModule_GetState(module);
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if (state == NULL) {
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return NULL;
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}
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// ... rest of logic
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}
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.. note::
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``PyModule_GetState`` may return ``NULL`` without setting an
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exception if there is no module state, i.e. ``PyModuleDef.m_size`` was
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zero. In your own module, you're in control of ``m_size``, so this is
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easy to prevent.
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Heap Types
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==========
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Traditionally, types defined in C code are *static*; that is,
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``static PyTypeObject`` structures defined directly in code and
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initialized using ``PyType_Ready()``.
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Such types are necessarily shared across the process. Sharing them
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between module objects requires paying attention to any state they own
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or access. To limit the possible issues, static types are immutable at
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the Python level: for example, you can't set ``str.myattribute = 123``.
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.. impl-detail::
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Sharing truly immutable objects between interpreters is fine,
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as long as they don't provide access to mutable objects.
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However, in CPython, every Python object has a mutable implementation
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detail: the reference count. Changes to the refcount are guarded by the GIL.
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Thus, code that shares any Python objects across interpreters implicitly
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depends on CPython's current, process-wide GIL.
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Because they are immutable and process-global, static types cannot access
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"their" module state.
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If any method of such a type requires access to module state,
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the type must be converted to a *heap-allocated type*, or *heap type*
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for short. These correspond more closely to classes created by Python's
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``class`` statement.
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For new modules, using heap types by default is a good rule of thumb.
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Changing Static Types to Heap Types
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-----------------------------------
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Static types can be converted to heap types, but note that
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the heap type API was not designed for "lossless" conversion
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from static types—that is, creating a type that works exactly like a given
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static type.
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So, when rewriting the class definition in a new API,
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you are likely to unintentionally change a few details (e.g. pickleability
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or inherited slots).
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Always test the details that are important to you.
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Watch out for the following two points in particular (but note that this is not
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a comprehensive list):
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* Unlike static types, heap type objects are mutable by default.
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Use the :c:data:`Py_TPFLAGS_IMMUTABLETYPE` flag to prevent mutability.
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* Heap types inherit :c:member:`~PyTypeObject.tp_new` by default,
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so it may become possible to instantiate them from Python code.
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You can prevent this with the :c:data:`Py_TPFLAGS_DISALLOW_INSTANTIATION` flag.
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Defining Heap Types
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-------------------
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Heap types can be created by filling a :c:struct:`PyType_Spec` structure, a
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description or "blueprint" of a class, and calling
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:c:func:`PyType_FromModuleAndSpec` to construct a new class object.
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.. note::
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Other functions, like :c:func:`PyType_FromSpec`, can also create
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heap types, but :c:func:`PyType_FromModuleAndSpec` associates the module
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with the class, allowing access to the module state from methods.
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The class should generally be stored in *both* the module state (for
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safe access from C) and the module's ``__dict__`` (for access from
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Python code).
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Garbage-Collection Protocol
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---------------------------
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Instances of heap types hold a reference to their type.
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This ensures that the type isn't destroyed before all its instances are,
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but may result in reference cycles that need to be broken by the
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garbage collector.
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To avoid memory leaks, instances of heap types must implement the
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garbage collection protocol.
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That is, heap types should:
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- Have the :c:data:`Py_TPFLAGS_HAVE_GC` flag.
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- Define a traverse function using ``Py_tp_traverse``, which
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visits the type (e.g. using :c:expr:`Py_VISIT(Py_TYPE(self))`).
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Please refer to the :ref:`the documentation <type-structs>` of
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:c:data:`Py_TPFLAGS_HAVE_GC` and :c:member:`~PyTypeObject.tp_traverse`
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for additional considerations.
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If your traverse function delegates to the ``tp_traverse`` of its base class
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(or another type), ensure that ``Py_TYPE(self)`` is visited only once.
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Note that only heap type are expected to visit the type in ``tp_traverse``.
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For example, if your traverse function includes::
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base->tp_traverse(self, visit, arg)
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...and ``base`` may be a static type, then it should also include::
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if (base->tp_flags & Py_TPFLAGS_HEAPTYPE) {
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// a heap type's tp_traverse already visited Py_TYPE(self)
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} else {
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Py_VISIT(Py_TYPE(self));
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}
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It is not necessary to handle the type's reference count in ``tp_new``
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and ``tp_clear``.
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Module State Access from Classes
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--------------------------------
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If you have a type object defined with :c:func:`PyType_FromModuleAndSpec`,
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you can call :c:func:`PyType_GetModule` to get the associated module, and then
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:c:func:`PyModule_GetState` to get the module's state.
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To save a some tedious error-handling boilerplate code, you can combine
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these two steps with :c:func:`PyType_GetModuleState`, resulting in::
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my_struct *state = (my_struct*)PyType_GetModuleState(type);
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if (state === NULL) {
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return NULL;
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}
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Module State Access from Regular Methods
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----------------------------------------
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Accessing the module-level state from methods of a class is somewhat more
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complicated, but is possible thanks to API introduced in Python 3.9.
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To get the state, you need to first get the *defining class*, and then
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get the module state from it.
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The largest roadblock is getting *the class a method was defined in*, or
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that method's "defining class" for short. The defining class can have a
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reference to the module it is part of.
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Do not confuse the defining class with :c:expr:`Py_TYPE(self)`. If the method
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is called on a *subclass* of your type, ``Py_TYPE(self)`` will refer to
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that subclass, which may be defined in different module than yours.
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.. note::
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The following Python code can illustrate the concept.
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``Base.get_defining_class`` returns ``Base`` even
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if ``type(self) == Sub``:
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.. code-block:: python
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class Base:
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def get_type_of_self(self):
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return type(self)
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def get_defining_class(self):
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return __class__
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class Sub(Base):
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pass
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For a method to get its "defining class", it must use the
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:data:`METH_METHOD | METH_FASTCALL | METH_KEYWORDS`
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:c:type:`calling convention <PyMethodDef>`
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and the corresponding :c:type:`PyCMethod` signature::
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PyObject *PyCMethod(
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PyObject *self, // object the method was called on
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PyTypeObject *defining_class, // defining class
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PyObject *const *args, // C array of arguments
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Py_ssize_t nargs, // length of "args"
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PyObject *kwnames) // NULL, or dict of keyword arguments
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Once you have the defining class, call :c:func:`PyType_GetModuleState` to get
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the state of its associated module.
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For example::
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static PyObject *
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example_method(PyObject *self,
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PyTypeObject *defining_class,
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PyObject *const *args,
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Py_ssize_t nargs,
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PyObject *kwnames)
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{
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my_struct *state = (my_struct*)PyType_GetModuleState(defining_class);
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if (state === NULL) {
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return NULL;
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}
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... // rest of logic
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}
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PyDoc_STRVAR(example_method_doc, "...");
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static PyMethodDef my_methods[] = {
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{"example_method",
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(PyCFunction)(void(*)(void))example_method,
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METH_METHOD|METH_FASTCALL|METH_KEYWORDS,
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example_method_doc}
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{NULL},
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}
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Module State Access from Slot Methods, Getters and Setters
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----------------------------------------------------------
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.. note::
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This is new in Python 3.11.
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.. After adding to limited API:
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If you use the :ref:`limited API <stable>,
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you must update ``Py_LIMITED_API`` to ``0x030b0000``, losing ABI
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compatibility with earlier versions.
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Slot methods—the fast C equivalents for special methods, such as
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:c:member:`~PyNumberMethods.nb_add` for :py:attr:`~object.__add__` or
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:c:member:`~PyType.tp_new` for initialization—have a very simple API that
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doesn't allow passing in the defining class, unlike with :c:type:`PyCMethod`.
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The same goes for getters and setters defined with
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:c:type:`PyGetSetDef`.
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To access the module state in these cases, use the
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:c:func:`PyType_GetModuleByDef` function, and pass in the module definition.
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Once you have the module, call :c:func:`PyModule_GetState`
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to get the state::
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PyObject *module = PyType_GetModuleByDef(Py_TYPE(self), &module_def);
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my_struct *state = (my_struct*)PyModule_GetState(module);
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if (state === NULL) {
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return NULL;
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}
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``PyType_GetModuleByDef`` works by searching the
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:term:`method resolution order` (i.e. all superclasses) for the first
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superclass that has a corresponding module.
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.. note::
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In very exotic cases (inheritance chains spanning multiple modules
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created from the same definition), ``PyType_GetModuleByDef`` might not
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return the module of the true defining class. However, it will always
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return a module with the same definition, ensuring a compatible
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C memory layout.
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Lifetime of the Module State
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----------------------------
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When a module object is garbage-collected, its module state is freed.
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For each pointer to (a part of) the module state, you must hold a reference
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to the module object.
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Usually this is not an issue, because types created with
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:c:func:`PyType_FromModuleAndSpec`, and their instances, hold a reference
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to the module.
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However, you must be careful in reference counting when you reference
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module state from other places, such as callbacks for external
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libraries.
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Open Issues
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===========
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Several issues around per-module state and heap types are still open.
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Discussions about improving the situation are best held on the `capi-sig
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mailing list <https://mail.python.org/mailman3/lists/capi-sig.python.org/>`__.
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Per-Class Scope
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---------------
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It is currently (as of Python 3.11) not possible to attach state to individual
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*types* without relying on CPython implementation details (which may change
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in the future—perhaps, ironically, to allow a proper solution for
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per-class scope).
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Lossless Conversion to Heap Types
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---------------------------------
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The heap type API was not designed for "lossless" conversion from static types;
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that is, creating a type that works exactly like a given static type.
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