.. highlight:: cython .. _extension-types: ****************** Extension Types ****************** Introduction ============== .. include:: ../two-syntax-variants-used As well as creating normal user-defined classes with the Python class statement, Cython also lets you create new built-in Python types, known as :term:`extension types`. You define an extension type using the :keyword:`cdef` class statement or decorating the class with the ``@cclass`` decorator. Here's an example: .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/shrubbery.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/shrubbery.pyx As you can see, a Cython extension type definition looks a lot like a Python class definition. Within it, you use the :keyword:`def` statement to define methods that can be called from Python code. You can even define many of the special methods such as :meth:`__init__` as you would in Python. The main difference is that you can define attributes using * the :keyword:`cdef` statement, * the :func:`cython.declare()` function or * the annotation of an attribute name. .. tabs:: .. group-tab:: Pure Python .. code-block:: python @cython.cclass class Shrubbery: width = cython.declare(cython.int) height: cython.int .. group-tab:: Cython .. code-block:: cython cdef class Shrubbery: cdef int width cdef int height The attributes may be Python objects (either generic or of a particular extension type), or they may be of any C data type. So you can use extension types to wrap arbitrary C data structures and provide a Python-like interface to them. .. _readonly: Static Attributes ================= Attributes of an extension type are stored directly in the object's C struct. The set of attributes is fixed at compile time; you can't add attributes to an extension type instance at run time simply by assigning to them, as you could with a Python class instance. However, you can explicitly enable support for dynamically assigned attributes, or subclass the extension type with a normal Python class, which then supports arbitrary attribute assignments. See :ref:`dynamic_attributes`. There are two ways that attributes of an extension type can be accessed: by Python attribute lookup, or by direct access to the C struct from Cython code. Python code is only able to access attributes of an extension type by the first method, but Cython code can use either method. By default, extension type attributes are only accessible by direct access, not Python access, which means that they are not accessible from Python code. To make them accessible from Python code, you need to declare them as :keyword:`public` or :keyword:`readonly`. For example: .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/python_access.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/python_access.pyx makes the width and height attributes readable and writable from Python code, and the depth attribute readable but not writable. .. note:: You can only expose simple C types, such as ints, floats, and strings, for Python access. You can also expose Python-valued attributes. .. note:: Also the :keyword:`public` and :keyword:`readonly` options apply only to Python access, not direct access. All the attributes of an extension type are always readable and writable by C-level access. .. _dynamic_attributes: Dynamic Attributes ================== It is not possible to add attributes to an extension type at runtime by default. You have two ways of avoiding this limitation, both add an overhead when a method is called from Python code. Especially when calling hybrid methods declared with :keyword:`cpdef` in .pyx files or with the ``@ccall`` decorator. The first approach is to create a Python subclass: .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/extendable_animal.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/extendable_animal.pyx Declaring a ``__dict__`` attribute is the second way of enabling dynamic attributes: .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/dict_animal.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/dict_animal.pyx Type declarations =================== Before you can directly access the attributes of an extension type, the Cython compiler must know that you have an instance of that type, and not just a generic Python object. It knows this already in the case of the ``self`` parameter of the methods of that type, but in other cases you will have to use a type declaration. For example, in the following function: .. tabs:: .. group-tab:: Pure Python .. code-block:: python @cython.cfunc def widen_shrubbery(sh, extra_width): # BAD sh.width = sh.width + extra_width .. group-tab:: Cython .. code-block:: cython cdef widen_shrubbery(sh, extra_width): # BAD sh.width = sh.width + extra_width because the ``sh`` parameter hasn't been given a type, the width attribute will be accessed by a Python attribute lookup. If the attribute has been declared :keyword:`public` or :keyword:`readonly` then this will work, but it will be very inefficient. If the attribute is private, it will not work at all -- the code will compile, but an attribute error will be raised at run time. The solution is to declare ``sh`` as being of type :class:`Shrubbery`, as follows: .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/widen_shrubbery.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/widen_shrubbery.pyx Now the Cython compiler knows that ``sh`` has a C attribute called :attr:`width` and will generate code to access it directly and efficiently. The same consideration applies to local variables, for example: .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/shrubbery_2.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/shrubbery_2.pyx .. note:: Here, we *cimport* the class :class:`Shrubbery` (using the :keyword:`cimport` statement or importing from special ``cython.cimports`` package), and this is necessary to declare the type at compile time. To be able to cimport an extension type, we split the class definition into two parts, one in a definition file and the other in the corresponding implementation file. You should read :ref:`sharing_extension_types` to learn to do that. Type Testing and Casting ------------------------ Suppose I have a method :meth:`quest` which returns an object of type :class:`Shrubbery`. To access its width I could write: .. tabs:: .. group-tab:: Pure Python .. code-block:: python sh: Shrubbery = quest() print(sh.width) .. group-tab:: Cython .. code-block:: cython cdef Shrubbery sh = quest() print(sh.width) which requires the use of a local variable and performs a type test on assignment. If you *know* the return value of :meth:`quest` will be of type :class:`Shrubbery` you can use a cast to write: .. tabs:: .. group-tab:: Pure Python .. code-block:: python print( cython.cast(Shrubbery, quest()).width ) .. group-tab:: Cython .. code-block:: cython print( (quest()).width ) This may be dangerous if :meth:`quest()` is not actually a :class:`Shrubbery`, as it will try to access width as a C struct member which may not exist. At the C level, rather than raising an :class:`AttributeError`, either an nonsensical result will be returned (interpreting whatever data is at that address as an int) or a segfault may result from trying to access invalid memory. Instead, one can write: .. tabs:: .. group-tab:: Pure Python .. code-block:: python print( cython.cast(Shrubbery, quest(), typecheck=True).width ) .. group-tab:: Cython .. code-block:: cython print( (quest()).width ) which performs a type check (possibly raising a :class:`TypeError`) before making the cast and allowing the code to proceed. To explicitly test the type of an object, use the :meth:`isinstance` builtin function. For known builtin or extension types, Cython translates these into a fast and safe type check that ignores changes to the object's ``__class__`` attribute etc., so that after a successful :meth:`isinstance` test, code can rely on the expected C structure of the extension type and its C-level attributes (stored in the object’s C struct) and :keyword:`cdef`/``@cfunc`` methods. .. _extension_types_and_none: Extension types and None ========================= Cython handles ``None`` values differently in C-like type declarations and when Python annotations are used. In :keyword:`cdef` declarations and C-like function argument declarations (``func(list x)``), when you declare an argument or C variable as having an extension or Python builtin type, Cython will allow it to take on the value ``None`` as well as values of its declared type. This is analogous to the way a C pointer can take on the value ``NULL``, and you need to exercise the same caution because of it. There is no problem as long as you are performing Python operations on it, because full dynamic type checking will be applied. However, when you access C attributes of an extension type (as in the widen_shrubbery function above), it's up to you to make sure the reference you're using is not ``None`` -- in the interests of efficiency, Cython does not check this. With the C-like declaration syntax, you need to be particularly careful when exposing Python functions which take extension types as arguments:: def widen_shrubbery(Shrubbery sh, extra_width): # This is sh.width = sh.width + extra_width # dangerous! The users of our module could crash it by passing ``None`` for the ``sh`` parameter. As in Python, whenever it is unclear whether a variable can be ``None``, but the code requires a non-None value, an explicit check can help:: def widen_shrubbery(Shrubbery sh, extra_width): if sh is None: raise TypeError sh.width = sh.width + extra_width but since this is anticipated to be such a frequent requirement, Cython language provides a more convenient way. Parameters of a Python function declared as an extension type can have a ``not None`` clause:: def widen_shrubbery(Shrubbery sh not None, extra_width): sh.width = sh.width + extra_width Now the function will automatically check that ``sh`` is ``not None`` along with checking that it has the right type. When annotations are used, the behaviour follows the Python typing semantics of `PEP-484 `_ instead. The value ``None`` is not allowed when a variable is annotated only with its plain type:: def widen_shrubbery(sh: Shrubbery, extra_width): # TypeError is raised sh.width = sh.width + extra_width # when sh is None To also allow ``None``, ``typing.Optional[ ]`` must be used explicitly. For function arguments, this is also automatically allowed when they have a default argument of `None``, e.g. ``func(x: list = None)`` does not require ``typing.Optional``:: import typing def widen_shrubbery(sh: typing.Optional[Shrubbery], extra_width): if sh is None: # We want to raise a custom exception in case of a None value. raise ValueError sh.width = sh.width + extra_width The upside of using annotations here is that they are safe by default because you need to explicitly allow ``None`` values for them. .. note:: The ``not None`` and ``typing.Optional`` can only be used in Python functions (defined with :keyword:`def` and without ``@cython.cfunc`` decorator) and not C functions (defined with :keyword:`cdef` or decorated using ``@cython.cfunc``). If you need to check whether a parameter to a C function is ``None``, you will need to do it yourself. .. note:: Some more things: * The ``self`` parameter of a method of an extension type is guaranteed never to be ``None``. * When comparing a value with ``None``, keep in mind that, if ``x`` is a Python object, ``x is None`` and ``x is not None`` are very efficient because they translate directly to C pointer comparisons, whereas ``x == None`` and ``x != None``, or simply using ``x`` as a boolean value (as in ``if x: ...``) will invoke Python operations and therefore be much slower. Special methods ================ Although the principles are similar, there are substantial differences between many of the :meth:`__xxx__` special methods of extension types and their Python counterparts. There is a :ref:`separate page ` devoted to this subject, and you should read it carefully before attempting to use any special methods in your extension types. .. _properties: Properties ============ You can declare properties in an extension class using the same syntax as in ordinary Python code: .. tabs:: .. group-tab:: Pure Python .. code-block:: python @cython.cclass class Spam: @property def cheese(self): # This is called when the property is read. ... @cheese.setter def cheese(self, value): # This is called when the property is written. ... @cheese.deleter def cheese(self): # This is called when the property is deleted. .. group-tab:: Cython .. code-block:: cython cdef class Spam: @property def cheese(self): # This is called when the property is read. ... @cheese.setter def cheese(self, value): # This is called when the property is written. ... @cheese.deleter def cheese(self): # This is called when the property is deleted. There is also a special (deprecated) legacy syntax for defining properties in an extension class:: cdef class Spam: property cheese: "A doc string can go here." def __get__(self): # This is called when the property is read. ... def __set__(self, value): # This is called when the property is written. ... def __del__(self): # This is called when the property is deleted. The :meth:`__get__`, :meth:`__set__` and :meth:`__del__` methods are all optional; if they are omitted, an exception will be raised when the corresponding operation is attempted. Here's a complete example. It defines a property which adds to a list each time it is written to, returns the list when it is read, and empties the list when it is deleted: .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/cheesy.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/cheesy.pyx .. code-block:: text # Test output We don't have: [] We don't have: ['camembert'] We don't have: ['camembert', 'cheddar'] We don't have: [] C methods ========= Extension types can have C methods as well as Python methods. Like C functions, C methods are declared using * :keyword:`cdef` instead of :keyword:`def` or ``@cfunc`` decorator for *C methods*, or * :keyword:`cpdef` instead of :keyword:`def` or ``@ccall`` decorator for *hybrid methods*. C methods are "virtual", and may be overridden in derived extension types. In addition, :keyword:`cpdef`/``@ccall`` methods can even be overridden by Python methods when called as C method. This adds a little to their calling overhead compared to a :keyword:`cdef`/``@cfunc`` method: .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/pets.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/pets.pyx .. code-block:: text # Output p1: This parrot is resting. p2: This parrot is resting. Lovely plumage! The above example also illustrates that a C method can call an inherited C method using the usual Python technique, i.e.:: Parrot.describe(self) :keyword:`cdef`/``@ccall`` methods can be declared static by using the ``@staticmethod`` decorator. This can be especially useful for constructing classes that take non-Python compatible types: .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/owned_pointer.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/owned_pointer.pyx .. note:: Cython currently does not support decorating :keyword:`cdef`/``@ccall`` methods with the ``@classmethod`` decorator. .. _subclassing: Subclassing ============= If an extension type inherits from other types, the first base class must be a built-in type or another extension type: .. tabs:: .. group-tab:: Pure Python .. code-block:: python @cython.cclass class Parrot: ... @cython.cclass class Norwegian(Parrot): ... .. group-tab:: Cython .. code-block:: cython cdef class Parrot: ... cdef class Norwegian(Parrot): ... A complete definition of the base type must be available to Cython, so if the base type is a built-in type, it must have been previously declared as an extern extension type. If the base type is defined in another Cython module, it must either be declared as an extern extension type or imported using the :keyword:`cimport` statement or importing from the special ``cython.cimports`` package. Multiple inheritance is supported, however the second and subsequent base classes must be an ordinary Python class (not an extension type or a built-in type). Cython extension types can also be subclassed in Python. A Python class can inherit from multiple extension types provided that the usual Python rules for multiple inheritance are followed (i.e. the C layouts of all the base classes must be compatible). There is a way to prevent extension types from being subtyped in Python. This is done via the ``final`` directive, usually set on an extension type or C method using a decorator: .. tabs:: .. group-tab:: Pure Python .. code-block:: python import cython @cython.final @cython.cclass class Parrot: def describe(self): pass @cython.cclass class Lizard: @cython.final @cython.cfunc def done(self): pass .. group-tab:: Cython .. code-block:: cython cimport cython @cython.final cdef class Parrot: def describe(self): pass cdef class Lizard: @cython.final cdef done(self): pass Trying to create a Python subclass from a final type or overriding a final method will raise a :class:`TypeError` at runtime. Cython will also prevent subtyping a final type or overriding a final method inside of the same module, i.e. creating an extension type that uses a final type as its base type will fail at compile time. Note, however, that this restriction does not currently propagate to other extension modules, so Cython is unable to prevent final extension types from being subtyped at the C level by foreign code. .. _forward_declaring_extension_types: Forward-declaring extension types =================================== Extension types can be forward-declared, like :keyword:`struct` and :keyword:`union` types. This is usually not necessary and violates the DRY principle (Don't Repeat Yourself). If you are forward-declaring an extension type that has a base class, you must specify the base class in both the forward declaration and its subsequent definition, for example,:: cdef class A(B) ... cdef class A(B): # attributes and methods .. _freelist: Fast instantiation =================== Cython provides two ways to speed up the instantiation of extension types. The first one is a direct call to the ``__new__()`` special static method, as known from Python. For an extension type ``Penguin``, you could use the following code: .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/penguin.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/penguin.pyx Note that the path through ``__new__()`` will *not* call the type's ``__init__()`` method (again, as known from Python). Thus, in the example above, the first instantiation will print ``eating!``, but the second will not. This is only one of the reasons why the ``__cinit__()`` method is safer than the normal ``__init__()`` method for initialising extension types and bringing them into a correct and safe state. See the :ref:`Initialisation Methods Section ` about the differences. The second performance improvement applies to types that are often created and deleted in a row, so that they can benefit from a freelist. Cython provides the decorator ``@cython.freelist(N)`` for this, which creates a statically sized freelist of ``N`` instances for a given type. Example: .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/penguin2.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/penguin2.pyx .. _existing-pointers-instantiation: Instantiation from existing C/C++ pointers =========================================== It is quite common to want to instantiate an extension class from an existing (pointer to a) data structure, often as returned by external C/C++ functions. As extension classes can only accept Python objects as arguments in their constructors, this necessitates the use of factory functions or factory methods. For example: .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/wrapper_class.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/wrapper_class.pyx To then create a ``WrapperClass`` object from an existing ``my_c_struct`` pointer, ``WrapperClass.from_ptr(ptr)`` can be used in Cython code. To allocate a new structure and wrap it at the same time, ``WrapperClass.new_struct`` can be used instead. It is possible to create multiple Python objects all from the same pointer which point to the same in-memory data, if that is wanted, though care must be taken when de-allocating as can be seen above. Additionally, the ``ptr_owner`` flag can be used to control which ``WrapperClass`` object owns the pointer and is responsible for de-allocation - this is set to ``False`` by default in the example and can be enabled by calling ``from_ptr(ptr, owner=True)``. The GIL must *not* be released in ``__dealloc__`` either, or another lock used if it is, in such cases or race conditions can occur with multiple de-allocations. Being a part of the object constructor, the ``__cinit__`` method has a Python signature, which makes it unable to accept a ``my_c_struct`` pointer as an argument. Attempts to use pointers in a Python signature will result in errors like:: Cannot convert 'my_c_struct *' to Python object This is because Cython cannot automatically convert a pointer to a Python object, unlike with native types like ``int``. Note that for native types, Cython will copy the value and create a new Python object while in the above case, data is not copied and deallocating memory is a responsibility of the extension class. .. _making_extension_types_weak_referenceable: Making extension types weak-referenceable ========================================== By default, extension types do not support having weak references made to them. You can enable weak referencing by declaring a C attribute of type object called :attr:`__weakref__`. For example: .. tabs:: .. group-tab:: Pure Python .. code-block:: python @cython.cclass class ExplodingAnimal: """This animal will self-destruct when it is no longer strongly referenced.""" __weakref__: object .. group-tab:: Cython .. code-block:: cython cdef class ExplodingAnimal: """This animal will self-destruct when it is no longer strongly referenced.""" cdef object __weakref__ Controlling deallocation and garbage collection in CPython ========================================================== .. NOTE:: This section only applies to the usual CPython implementation of Python. Other implementations like PyPy work differently. .. _dealloc_intro: Introduction ------------ First of all, it is good to understand that there are two ways to trigger deallocation of Python objects in CPython: CPython uses reference counting for all objects and any object with a reference count of zero is immediately deallocated. This is the most common way of deallocating an object. For example, consider :: >>> x = "foo" >>> x = "bar" After executing the second line, the string ``"foo"`` is no longer referenced, so it is deallocated. This is done using the ``tp_dealloc`` slot, which can be customized in Cython by implementing ``__dealloc__``. The second mechanism is the cyclic garbage collector. This is meant to resolve cyclic reference cycles such as :: >>> class Object: ... pass >>> def make_cycle(): ... x = Object() ... y = [x] ... x.attr = y When calling ``make_cycle``, a reference cycle is created since ``x`` references ``y`` and vice versa. Even though neither ``x`` or ``y`` are accessible after ``make_cycle`` returns, both have a reference count of 1, so they are not immediately deallocated. At regular times, the garbage collector runs, which will notice the reference cycle (using the ``tp_traverse`` slot) and break it. Breaking a reference cycle means taking an object in the cycle and removing all references from it to other Python objects (we call this *clearing* an object). Clearing is almost the same as deallocating, except that the actual object is not yet freed. For ``x`` in the example above, the attributes of ``x`` would be removed from ``x``. Note that it suffices to clear just one object in the reference cycle, since there is no longer a cycle after clearing one object. Once the cycle is broken, the usual refcount-based deallocation will actually remove the objects from memory. Clearing is implemented in the ``tp_clear`` slot. As we just explained, it is sufficient that one object in the cycle implements ``tp_clear``. .. _trashcan: Enabling the deallocation trashcan ---------------------------------- In CPython, it is possible to create deeply recursive objects. For example:: >>> L = None >>> for i in range(2**20): ... L = [L] Now imagine that we delete the final ``L``. Then ``L`` deallocates ``L[0]``, which deallocates ``L[0][0]`` and so on until we reach a recursion depth of ``2**20``. This deallocation is done in C and such a deep recursion will likely overflow the C call stack, crashing Python. CPython invented a mechanism for this called the *trashcan*. It limits the recursion depth of deallocations by delaying some deallocations. By default, Cython extension types do not use the trashcan but it can be enabled by setting the ``trashcan`` directive to ``True``. For example: .. tabs:: .. group-tab:: Pure Python .. code-block:: python import cython @cython.trashcan(True) @cython.cclass class Object: __dict__: dict .. group-tab:: Cython .. code-block:: cython cimport cython @cython.trashcan(True) cdef class Object: cdef dict __dict__ Trashcan usage is inherited by subclasses (unless explicitly disabled by ``@cython.trashcan(False)``). Some builtin types like ``list`` use the trashcan, so subclasses of it use the trashcan by default. Disabling cycle breaking (``tp_clear``) --------------------------------------- By default, each extension type will support the cyclic garbage collector of CPython. If any Python objects can be referenced, Cython will automatically generate the ``tp_traverse`` and ``tp_clear`` slots. This is usually what you want. There is at least one reason why this might not be what you want: If you need to cleanup some external resources in the ``__dealloc__`` special function and your object happened to be in a reference cycle, the garbage collector may have triggered a call to ``tp_clear`` to clear the object (see :ref:`dealloc_intro`). In that case, any object references have vanished when ``__dealloc__`` is called. Now your cleanup code lost access to the objects it has to clean up. To fix this, you can disable clearing instances of a specific class by using the ``no_gc_clear`` directive: .. tabs:: .. group-tab:: Pure Python .. code-block:: python @cython.no_gc_clear @cython.cclass class DBCursor: conn: DBConnection raw_cursor: cython.pointer(DBAPI_Cursor) # ... def __dealloc__(self): DBAPI_close_cursor(self.conn.raw_conn, self.raw_cursor) .. group-tab:: Cython .. code-block:: cython @cython.no_gc_clear cdef class DBCursor: cdef DBConnection conn cdef DBAPI_Cursor *raw_cursor # ... def __dealloc__(self): DBAPI_close_cursor(self.conn.raw_conn, self.raw_cursor) This example tries to close a cursor via a database connection when the Python object is destroyed. The ``DBConnection`` object is kept alive by the reference from ``DBCursor``. But if a cursor happens to be in a reference cycle, the garbage collector may delete the database connection reference, which makes it impossible to clean up the cursor. If you use ``no_gc_clear``, it is important that any given reference cycle contains at least one object *without* ``no_gc_clear``. Otherwise, the cycle cannot be broken, which is a memory leak. Disabling cyclic garbage collection ----------------------------------- In rare cases, extension types can be guaranteed not to participate in cycles, but the compiler won't be able to prove this. This would be the case if the class can never reference itself, even indirectly. In that case, you can manually disable cycle collection by using the ``no_gc`` directive, but beware that doing so when in fact the extension type can participate in cycles could cause memory leaks: .. tabs:: .. group-tab:: Pure Python .. code-block:: python @cython.no_gc @cython.cclass class UserInfo: name: str addresses: tuple .. group-tab:: Cython .. code-block:: cython @cython.no_gc cdef class UserInfo: cdef str name cdef tuple addresses If you can be sure addresses will contain only references to strings, the above would be safe, and it may yield a significant speedup, depending on your usage pattern. .. _auto_pickle: Controlling pickling ==================== By default, Cython will generate a ``__reduce__()`` method to allow pickling an extension type if and only if each of its members are convertible to Python and it has no ``__cinit__`` method. To require this behavior (i.e. throw an error at compile time if a class cannot be pickled) decorate the class with ``@cython.auto_pickle(True)``. One can also annotate with ``@cython.auto_pickle(False)`` to get the old behavior of not generating a ``__reduce__`` method in any case. Manually implementing a ``__reduce__`` or ``__reduce_ex__`` method will also disable this auto-generation and can be used to support pickling of more complicated types. Public and external extension types ==================================== Extension types can be declared extern or public. An extern extension type declaration makes an extension type defined in external C code available to a Cython module. A public extension type declaration makes an extension type defined in a Cython module available to external C code. .. note:: Cython currently does not support Extension types declared as extern or public in Pure Python mode. This is not considered an issue since public/extern extension types are most commonly declared in `.pxd` files and not in `.py` files. .. _external_extension_types: External extension types ------------------------ An extern extension type allows you to gain access to the internals of Python objects defined in the Python core or in a non-Cython extension module. .. note:: In previous versions of Pyrex, extern extension types were also used to reference extension types defined in another Pyrex module. While you can still do that, Cython provides a better mechanism for this. See :ref:`sharing-declarations`. Here is an example which will let you get at the C-level members of the built-in complex object:: cdef extern from "complexobject.h": struct Py_complex: double real double imag ctypedef class __builtin__.complex [object PyComplexObject]: cdef Py_complex cval # A function which uses the above type def spam(complex c): print("Real:", c.cval.real) print("Imag:", c.cval.imag) .. note:: Some important things: 1. In this example, :keyword:`ctypedef` class has been used. This is because, in the Python header files, the ``PyComplexObject`` struct is declared with: .. code-block:: c typedef struct { ... } PyComplexObject; At runtime, a check will be performed when importing the Cython c-extension module that ``__builtin__.complex``'s ``tp_basicsize`` matches ``sizeof(`PyComplexObject)``. This check can fail if the Cython c-extension module was compiled with one version of the ``complexobject.h`` header but imported into a Python with a changed header. This check can be tweaked by using ``check_size`` in the name specification clause. 2. As well as the name of the extension type, the module in which its type object can be found is also specified. See the implicit importing section below. 3. When declaring an external extension type, you don't declare any methods. Declaration of methods is not required in order to call them, because the calls are Python method calls. Also, as with :keyword:`struct` and :keyword:`union`, if your extension class declaration is inside a :keyword:`cdef` extern from block, you only need to declare those C members which you wish to access. .. _name_specification_clause: Name specification clause ------------------------- The part of the class declaration in square brackets is a special feature only available for extern or public extension types. The full form of this clause is:: [object object_struct_name, type type_object_name, check_size cs_option] Where: - ``object_struct_name`` is the name to assume for the type's C struct. - ``type_object_name`` is the name to assume for the type's statically declared type object. - ``cs_option`` is ``warn`` (the default), ``error``, or ``ignore`` and is only used for external extension types. If ``error``, the ``sizeof(object_struct)`` that was found at compile time must match the type's runtime ``tp_basicsize`` exactly, otherwise the module import will fail with an error. If ``warn`` or ``ignore``, the ``object_struct`` is allowed to be smaller than the type's ``tp_basicsize``, which indicates the runtime type may be part of an updated module, and that the external module's developers extended the object in a backward-compatible fashion (only adding new fields to the end of the object). If ``warn``, a warning will be emitted in this case. The clauses can be written in any order. If the extension type declaration is inside a :keyword:`cdef` extern from block, the object clause is required, because Cython must be able to generate code that is compatible with the declarations in the header file. Otherwise, for extern extension types, the object clause is optional. For public extension types, the object and type clauses are both required, because Cython must be able to generate code that is compatible with external C code. Attribute name matching and aliasing ------------------------------------ Sometimes the type's C struct as specified in ``object_struct_name`` may use different labels for the fields than those in the ``PyTypeObject``. This can easily happen in hand-coded C extensions where the ``PyTypeObject_Foo`` has a getter method, but the name does not match the name in the ``PyFooObject``. In NumPy, for instance, python-level ``dtype.itemsize`` is a getter for the C struct field ``elsize``. Cython supports aliasing field names so that one can write ``dtype.itemsize`` in Cython code which will be compiled into direct access of the C struct field, without going through a C-API equivalent of ``dtype.__getattr__('itemsize')``. For example, we may have an extension module ``foo_extension``:: cdef class Foo: cdef public int field0, field1, field2; def __init__(self, f0, f1, f2): self.field0 = f0 self.field1 = f1 self.field2 = f2 but a C struct in a file ``foo_nominal.h``: .. code-block:: c typedef struct { PyObject_HEAD int f0; int f1; int f2; } FooStructNominal; Note that the struct uses ``f0``, ``f1``, ``f2`` but they are ``field0``, ``field1``, and ``field2`` in ``Foo``. We are given this situation, including a header file with that struct, and we wish to write a function to sum the values. If we write an extension module ``wrapper``:: cdef extern from "foo_nominal.h": ctypedef class foo_extension.Foo [object FooStructNominal]: cdef: int field0 int field1 int field2 def sum(Foo f): return f.field0 + f.field1 + f.field2 then ``wrapper.sum(f)`` (where ``f = foo_extension.Foo(1, 2, 3)``) will still use the C-API equivalent of:: return f.__getattr__('field0') + f.__getattr__('field1') + f.__getattr__('field1') instead of the desired C equivalent of ``return f->f0 + f->f1 + f->f2``. We can alias the fields by using:: cdef extern from "foo_nominal.h": ctypedef class foo_extension.Foo [object FooStructNominal]: cdef: int field0 "f0" int field1 "f1" int field2 "f2" def sum(Foo f) except -1: return f.field0 + f.field1 + f.field2 and now Cython will replace the slow ``__getattr__`` with direct C access to the FooStructNominal fields. This is useful when directly processing Python code. No changes to Python need be made to achieve significant speedups, even though the field names in Python and C are different. Of course, one should make sure the fields are equivalent. C inline properties ------------------- Similar to Python property attributes, Cython provides a way to declare C-level properties on external extension types. This is often used to shadow Python attributes through faster C level data access, but can also be used to add certain functionality to existing types when using them from Cython. The declarations must use `cdef inline`. For example, the above ``complex`` type could also be declared like this: .. literalinclude:: ../../examples/userguide/extension_types/c_property.pyx Implicit importing ------------------ Cython requires you to include a module name in an extern extension class declaration, for example,:: cdef extern class MyModule.Spam: ... The type object will be implicitly imported from the specified module and bound to the corresponding name in this module. In other words, in this example an implicit:: from MyModule import Spam statement will be executed at module load time. The module name can be a dotted name to refer to a module inside a package hierarchy, for example,:: cdef extern class My.Nested.Package.Spam: ... You can also specify an alternative name under which to import the type using an as clause, for example,:: cdef extern class My.Nested.Package.Spam as Yummy: ... which corresponds to the implicit import statement:: from My.Nested.Package import Spam as Yummy .. _types_names_vs_constructor_names: Type names vs. constructor names -------------------------------- Inside a Cython module, the name of an extension type serves two distinct purposes. When used in an expression, it refers to a module-level global variable holding the type's constructor (i.e. its type-object). However, it can also be used as a C type name to declare variables, arguments and return values of that type. When you declare:: cdef extern class MyModule.Spam: ... the name Spam serves both these roles. There may be other names by which you can refer to the constructor, but only Spam can be used as a type name. For example, if you were to explicitly import MyModule, you could use ``MyModule.Spam()`` to create a Spam instance, but you wouldn't be able to use :class:`MyModule.Spam` as a type name. When an as clause is used, the name specified in the as clause also takes over both roles. So if you declare:: cdef extern class MyModule.Spam as Yummy: ... then Yummy becomes both the type name and a name for the constructor. Again, there are other ways that you could get hold of the constructor, but only Yummy is usable as a type name. .. _public: Public extension types ====================== An extension type can be declared public, in which case a ``.h`` file is generated containing declarations for its object struct and type object. By including the ``.h`` file in external C code that you write, that code can access the attributes of the extension type. Dataclass extension types ========================= Cython supports extension types that behave like the dataclasses defined in the Python 3.7+ standard library. The main benefit of using a dataclass is that it can auto-generate simple ``__init__``, ``__repr__`` and comparison functions. The Cython implementation behaves as much like the Python standard library implementation as possible and therefore the documentation here only briefly outlines the differences - if you plan on using them then please read `the documentation for the standard library module `_. Dataclasses can be declared using the ``@dataclasses.dataclass`` decorator on a Cython extension type (types marked ``cdef`` or created with the ``cython.cclass`` decorator). Alternatively the ``@cython.dataclasses.dataclass`` decorator can be applied to any class to both turn it into an extension type and a dataclass. If you need to define special properties on a field then use ``dataclasses.field`` (or ``cython.dataclasses.field`` will work too) .. tabs:: .. group-tab:: Pure Python .. literalinclude:: ../../examples/userguide/extension_types/dataclass.py .. group-tab:: Cython .. literalinclude:: ../../examples/userguide/extension_types/dataclass.pyx You may use C-level types such as structs, pointers, or C++ classes. However, you may find these types are not compatible with the auto-generated special methods - for example if they cannot be converted from a Python type they cannot be passed to a constructor, and so you must use a ``default_factory`` to initialize them. Like with the Python implementation, you can also control which special functions an attribute is used in using ``field()``.