summaryrefslogtreecommitdiff
path: root/docs/src/userguide/language_basics.rst
blob: c3b9f36e4b2ced6c73d4d6349b7eaf62080edb97 (plain)
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
422
423
424
425
426
427
428
429
430
431
432
433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
502
503
504
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
532
533
534
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
555
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578
579
580
581
582
583
584
585
586
587
588
589
590
591
592
593
594
595
596
597
598
599
600
601
602
603
604
605
606
607
608
609
610
611
612
613
614
615
616
617
618
619
620
621
622
623
624
625
626
627
628
629
630
631
632
633
634
635
636
637
638
639
640
641
642
643
644
645
646
647
648
649
650
651
652
653
654
655
656
657
658
659
660
661
662
663
664
665
666
667
668
669
670
671
672
673
674
675
676
677
678
679
680
681
682
683
684
685
686
687
688
689
690
691
692
693
694
695
696
697
698
699
700
701
702
703
704
705
706
707
708
709
710
711
712
713
714
715
716
717
718
719
720
721
722
723
724
725
726
727
728
729
730
731
732
733
734
735
736
737
738
739
740
741
742
743
744
745
746
747
748
749
750
751
752
753
754
755
756
757
758
759
760
761
762
763
764
765
766
767
768
769
770
771
772
773
774
775
776
777
778
779
780
781
782
783
784
785
786
787
788
789
790
791
792
793
794
795
796
797
798
799
800
801
802
803
804
805
806
807
808
809
810
811
812
813
814
815
816
817
818
819
820
821
822
823
824
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
840
841
842
843
844
845
846
847
848
849
850
851
852
853
854
855
856
857
858
859
860
861
862
863
864
865
866
867
868
869
870
871
872
873
874
875
876
877
878
879
880
881
882
883
884
885
886
887
888
889
890
891
892
893
894
895
896
897
898
899
900
901
902
903
904
905
906
907
908
909
910
911
912
913
914
915
916
917
918
919
920
921
922
923
924
925
926
927
928
929
930
931
932
933
934
935
936
937
938
939
940
941
942
943
944
945
946
947
948
949
950
.. highlight:: cython

.. _language-basics:
.. _struct:
.. _union:
.. _enum:
.. _ctypedef:


*****************
Language Basics
*****************

.. _declaring_data_types:

Declaring Data Types
====================

As a dynamic language, Python encourages a programming style of considering
classes and objects in terms of their methods and attributes, more than where
they fit into the class hierarchy.

This can make Python a very relaxed and comfortable language for rapid
development, but with a price - the 'red tape' of managing data types is
dumped onto the interpreter. At run time, the interpreter does a lot of work
searching namespaces, fetching attributes and parsing argument and keyword tuples.
This run-time ‘late binding’ is a major cause of Python’s relative slowness
compared to ‘early binding’ languages such as C++.

However with Cython it is possible to gain significant speed-ups through
the use of ‘early binding’ programming techniques.

.. note:: Typing is not a necessity

    Providing static typing to parameters and variables is convenience to
    speed up your code, but it is not a necessity. Optimize where and when needed.
    In fact, typing can *slow down* your code in the case where the
    typing does not allow optimizations but where Cython still needs to
    check that the type of some object matches the declared type.


.. _c_variable_and_type_definitions:

C variable and type definitions
===============================

The :keyword:`cdef` statement is used to declare C variables, either local or
module-level::

    cdef int i, j, k
    cdef float f, g[42], *h

and C :keyword:`struct`, :keyword:`union` or :keyword:`enum` types:

.. literalinclude:: ../../examples/userguide/language_basics/struct_union_enum.pyx

See also :ref:`struct-union-enum-styles`

.. note::

    Structs can be declared as ``cdef packed struct``, which has
    the same effect as the C directive ``#pragma pack(1)``.

Declaring an enum as ``cpdef`` will create a :pep:`435`-style Python wrapper::

    cpdef enum CheeseState:
        hard = 1
        soft = 2
        runny = 3



There is currently no special syntax for defining a constant, but you can use
an anonymous :keyword:`enum` declaration for this purpose, for example,::

    cdef enum:
        tons_of_spam = 3

.. note::
    the words ``struct``, ``union`` and ``enum`` are used only when
    defining a type, not when referring to it. For example, to declare a variable
    pointing to a ``Grail`` you would write::

        cdef Grail *gp

    and not::

        cdef struct Grail *gp # WRONG

    There is also a ``ctypedef`` statement for giving names to types, e.g.::

        ctypedef unsigned long ULong

        ctypedef int* IntPtr


It is also possible to declare functions with :keyword:`cdef`, making them c functions.

::

    cdef int eggs(unsigned long l, float f):
        ...

You can read more about them in :ref:`python_functions_vs_c_functions`.

You can declare classes with :keyword:`cdef`, making them :ref:`extension-types`. Those will
have a behavior very close to python classes, but are faster because they use a ``struct``
internally to store attributes.

Here is a simple example:

.. literalinclude:: ../../examples/userguide/extension_types/shrubbery.pyx

You can read more about them in :ref:`extension-types`.

.. _typing_types:
.. _types:

Types
-----

Cython uses the normal C syntax for C types, including pointers.  It provides
all the standard C types, namely ``char``, ``short``, ``int``, ``long``,
``long long`` as well as their ``unsigned`` versions, e.g. ``unsigned int``.
The special ``bint`` type is used for C boolean values (``int`` with 0/non-0
values for False/True) and ``Py_ssize_t`` for (signed) sizes of Python
containers.

Pointer types are constructed as in C, by appending a ``*`` to the base type
they point to, e.g. ``int**`` for a pointer to a pointer to a C int.
Arrays use the normal C array syntax, e.g. ``int[10]``, and the size must be known
at compile time for stack allocated arrays. Cython doesn't support variable length arrays from C99.
Note that Cython uses array access for pointer dereferencing, as ``*x`` is not valid Python syntax,
whereas ``x[0]`` is.

Also, the Python types ``list``, ``dict``, ``tuple``, etc. may be used for
static typing, as well as any user defined :ref:`extension-types`.
For example::

    cdef list foo = []

This requires an *exact* match of the class, it does not allow
subclasses. This allows Cython to optimize code by accessing
internals of the builtin class.
For this kind of typing, Cython uses internally a C variable of type ``PyObject*``.
The Python types int, long, and float are not available for static
typing and instead interpreted as C ``int``, ``long``, and ``float``
respectively, as statically typing variables with these Python
types has zero advantages.

Cython provides an accelerated and typed equivalent of a Python tuple, the ``ctuple``.
A ``ctuple`` is assembled from any valid C types. For example::

    cdef (double, int) bar

They compile down to C-structures and can be used as efficient alternatives to
Python tuples.

While these C types can be vastly faster, they have C semantics.
Specifically, the integer types overflow
and the C ``float`` type only has 32 bits of precision
(as opposed to the 64-bit C ``double`` which Python floats wrap
and is typically what one wants).
If you want to use these numeric Python types simply omit the
type declaration and let them be objects.

It is also possible to declare :ref:`extension-types` (declared with ``cdef class``).
This does allow subclasses. This typing is mostly used to access
``cdef`` methods and attributes of the extension type.
The C code uses a variable which is a pointer to a structure of the
specific type, something like ``struct MyExtensionTypeObject*``.


Grouping multiple C declarations
--------------------------------

If you have a series of declarations that all begin with :keyword:`cdef`, you
can group them into a :keyword:`cdef` block like this:

.. literalinclude:: ../../examples/userguide/language_basics/cdef_block.pyx

.. _cpdef:
.. _cdef:
.. _python_functions_vs_c_functions:

Python functions vs. C functions
==================================

There are two kinds of function definition in Cython:

Python functions are defined using the def statement, as in Python. They take
Python objects as parameters and return Python objects.

C functions are defined using the new :keyword:`cdef` statement. They take
either Python objects or C values as parameters, and can return either Python
objects or C values.

Within a Cython module, Python functions and C functions can call each other
freely, but only Python functions can be called from outside the module by
interpreted Python code. So, any functions that you want to "export" from your
Cython module must be declared as Python functions using def.
There is also a hybrid function, called :keyword:`cpdef`. A :keyword:`cpdef`
can be called from anywhere, but uses the faster C calling conventions
when being called from other Cython code. A :keyword:`cpdef` can also be overridden
by a Python method on a subclass or an instance attribute, even when called from Cython.
If this happens, most performance gains are of course lost and even if it does not,
there is a tiny overhead in calling a :keyword:`cpdef` method from Cython compared to
calling a :keyword:`cdef` method.

Parameters of either type of function can be declared to have C data types,
using normal C declaration syntax. For example,::

    def spam(int i, char *s):
        ...

    cdef int eggs(unsigned long l, float f):
        ...

``ctuples`` may also be used::

    cdef (int, float) chips((long, long, double) t):
        ...

When a parameter of a Python function is declared to have a C data type, it is
passed in as a Python object and automatically converted to a C value, if
possible. In other words, the definition of ``spam`` above is equivalent to
writing::

    def spam(python_i, python_s):
        cdef int i = python_i
        cdef char* s = python_s
        ...

Automatic conversion is currently only possible for numeric types,
string types and structs (composed recursively of any of these types);
attempting to use any other type for the parameter of a
Python function will result in a compile-time error.
Care must be taken with strings to ensure a reference if the pointer is to be used
after the call. Structs can be obtained from Python mappings, and again care must be taken
with string attributes if they are to be used after the function returns.

C functions, on the other hand, can have parameters of any type, since they're
passed in directly using a normal C function call.

Functions declared using :keyword:`cdef` with Python object return type, like Python functions, will return a :keyword:`None`
value when execution leaves the function body without an explicit return value. This is in
contrast to C/C++, which leaves the return value undefined. 
In the case of non-Python object return types, the equivalent of zero is returned, for example, 0 for ``int``, :keyword:`False` for ``bint`` and :keyword:`NULL` for pointer types.

A more complete comparison of the pros and cons of these different method
types can be found at :ref:`early-binding-for-speed`.

Python objects as parameters and return values
----------------------------------------------

If no type is specified for a parameter or return value, it is assumed to be a
Python object. (Note that this is different from the C convention, where it
would default to int.) For example, the following defines a C function that
takes two Python objects as parameters and returns a Python object::

    cdef spamobjs(x, y):
        ...

Reference counting for these objects is performed automatically according to
the standard Python/C API rules (i.e. borrowed references are taken as
parameters and a new reference is returned).

 .. warning::

    This only applies to Cython code.  Other Python packages which
    are implemented in C like NumPy may not follow these conventions.


The name object can also be used to explicitly declare something as a Python
object. This can be useful if the name being declared would otherwise be taken
as the name of a type, for example,::

    cdef ftang(object int):
        ...

declares a parameter called int which is a Python object. You can also use
object as the explicit return type of a function, e.g.::

    cdef object ftang(object int):
        ...

In the interests of clarity, it is probably a good idea to always be explicit
about object parameters in C functions.


.. _optional_arguments:

Optional Arguments
------------------

Unlike C, it is possible to use optional arguments in ``cdef`` and ``cpdef`` functions.
There are differences though whether you declare them in a ``.pyx``
file or the corresponding ``.pxd`` file.

To avoid repetition (and potential future inconsistencies), default argument values are
not visible in the declaration (in ``.pxd`` files) but only in
the implementation (in ``.pyx`` files).

When in a ``.pyx`` file, the signature is the same as it is in Python itself:

.. literalinclude:: ../../examples/userguide/language_basics/optional_subclassing.pyx

When in a ``.pxd`` file, the signature is different like this example: ``cdef foo(x=*)``.
This is because the program calling the function just needs to know what signatures are
possible in C, but doesn't need to know the value of the default arguments.:

.. literalinclude:: ../../examples/userguide/language_basics/optional_subclassing.pxd

.. note::
    The number of arguments may increase when subclassing,
    but the arg types and order must be the same, as shown in the example above.

There may be a slight performance penalty when the optional arg is overridden
with one that does not have default values.


.. _keyword_only_argument:

Keyword-only Arguments
----------------------

As in Python 3, ``def`` functions can have keyword-only arguments
listed after a ``"*"`` parameter and before a ``"**"`` parameter if any:

.. literalinclude:: ../../examples/userguide/language_basics/kwargs_1.pyx

As shown above, the ``c``, ``d`` and ``e`` arguments can not be
passed as positional arguments and must be passed as keyword arguments.
Furthermore, ``c`` and ``e`` are **required** keyword arguments
since they do not have a default value.

A single ``"*"`` without argument name can be used to
terminate the list of positional arguments:

.. literalinclude:: ../../examples/userguide/language_basics/kwargs_2.pyx

Shown above, the signature takes exactly two positional
parameters and has two required keyword parameters.

Function Pointers
-----------------

Functions declared in a ``struct`` are automatically converted to function pointers.

For using error return values with function pointers, see the note at the bottom
of :ref:`error_return_values`.

.. _error_return_values:

Error return values
-------------------

In Python (more specifically, in the CPython runtime), exceptions that occur
inside of a function are signaled to the caller and propagated up the call stack
through defined error return values.  For functions that return a Python object
(and thus, a pointer to such an object), the error return value is simply the
``NULL`` pointer, so any function returning a Python object has a well-defined
error return value.

While this is always the case for :keyword:`def` functions, functions
defined as :keyword:`cdef` or :keyword:`cpdef` can return arbitrary C types,
which do not have such a well-defined error return value.  Thus, if an
exception is detected in such a function, a warning message is printed,
the exception is ignored, and the function returns immediately without
propagating the exception to its caller.

If you want such a C function to be able to propagate exceptions, you need
to declare an exception return value for it as a contract with the caller.
Here is an example::

    cdef int spam() except -1:
        ...

With this declaration, whenever an exception occurs inside ``spam``, it will
immediately return with the value ``-1``.  From the caller's side, whenever
a call to spam returns ``-1``, the caller will assume that an exception has
occurred and can now process or propagate it.

When you declare an exception value for a function, you should never explicitly
or implicitly return that value.  This includes empty :keyword:`return`
statements, without a return value, for which Cython inserts the default return
value (e.g. ``0`` for C number types).  In general, exception return values
are best chosen from invalid or very unlikely return values of the function,
such as a negative value for functions that return only non-negative results,
or a very large value like ``INT_MAX`` for a function that "usually" only
returns small results.

If all possible return values are legal and you
can't reserve one entirely for signalling errors, you can use an alternative
form of exception value declaration::

    cdef int spam() except? -1:
        ...

The "?" indicates that the value ``-1`` only signals a possible error. In this
case, Cython generates a call to :c:func:`PyErr_Occurred` if the exception value
is returned, to make sure it really received an exception and not just a normal
result.

There is also a third form of exception value declaration::

    cdef int spam() except *:
        ...

This form causes Cython to generate a call to :c:func:`PyErr_Occurred` after
*every* call to spam, regardless of what value it returns. If you have a
function returning ``void`` that needs to propagate errors, you will have to
use this form, since there isn't any error return value to test.
Otherwise, an explicit error return value allows the C compiler to generate
more efficient code and is thus generally preferable.

To explicitly mark a function as not returning an exception use
``noexcept``.

    cdef int spam() noexcept:
        ...

This is worth doing because (a) "explicit is better than implicit", and
(b) the default behaviour for ``cdef`` functions will change in Cython 3.0
so that functions will propagate exceptions by default. Therefore, it is
best to mark them now if you want them to swallow exceptions in the future.

An external C++ function that may raise an exception can be declared with::

    cdef int spam() except +

See :ref:`wrapping-cplusplus` for more details.

Some things to note:

* Exception values can only be declared for functions returning a C integer,
  enum, float or pointer type, and the value must be a constant expression.
  Functions that return ``void``, or a struct/union by value, can only use
  the ``except *`` form.
* The exception value specification is part of the signature of the function.
  If you're passing a pointer to a function as a parameter or assigning it
  to a variable, the declared type of the parameter or variable must have
  the same exception value specification (or lack thereof).  Here is an
  example of a pointer-to-function declaration with an exception value::

      int (*grail)(int, char*) except -1

* You don't need to (and shouldn't) declare exception values for functions
  which return Python objects. Remember that a function with no declared
  return type implicitly returns a Python object. (Exceptions on such
  functions are implicitly propagated by returning ``NULL``.)


.. _checking_return_values_of_non_cython_functions:

Checking return values of non-Cython functions
----------------------------------------------

It's important to understand that the except clause does not cause an error to
be raised when the specified value is returned. For example, you can't write
something like::

    cdef extern FILE *fopen(char *filename, char *mode) except NULL # WRONG!

and expect an exception to be automatically raised if a call to :func:`fopen`
returns ``NULL``. The except clause doesn't work that way; its only purpose is
for propagating Python exceptions that have already been raised, either by a Cython
function or a C function that calls Python/C API routines. To get an exception
from a non-Python-aware function such as :func:`fopen`, you will have to check the
return value and raise it yourself, for example:

.. literalinclude:: ../../examples/userguide/language_basics/open_file.pyx

.. _overriding_in_extension_types:

Overriding in extension types
-----------------------------


``cpdef`` methods can override ``cdef`` methods:

.. literalinclude:: ../../examples/userguide/language_basics/optional_subclassing.pyx

When subclassing an extension type with a Python class,
``def`` methods can override ``cpdef`` methods but not ``cdef``
methods:

.. literalinclude:: ../../examples/userguide/language_basics/override.pyx

If ``C`` above would be an extension type (``cdef class``),
this would not work correctly.
The Cython compiler will give a warning in that case.


.. _type-conversion:

Automatic type conversions
==========================

In most situations, automatic conversions will be performed for the basic
numeric and string types when a Python object is used in a context requiring a
C value, or vice versa. The following table summarises the conversion
possibilities.

+----------------------------+--------------------+------------------+
| C types                    | From Python types  | To Python types  |
+============================+====================+==================+
| [unsigned] char,           | int, long          | int              |
| [unsigned] short,          |                    |                  |
| int, long                  |                    |                  |
+----------------------------+--------------------+------------------+
| unsigned int,              | int, long          | long             |
| unsigned long,             |                    |                  |
| [unsigned] long long       |                    |                  |
+----------------------------+--------------------+------------------+
| float, double, long double | int, long, float   | float            |
+----------------------------+--------------------+------------------+
| char*                      | str/bytes          | str/bytes [#]_   |
+----------------------------+--------------------+------------------+
| C array                    | iterable           | list [#2]_       |
+----------------------------+--------------------+------------------+
| struct,                    |                    | dict [#1]_       |
| union                      |                    |                  |
+----------------------------+--------------------+------------------+

.. [#] The conversion is to/from str for Python 2.x, and bytes for Python 3.x.

.. [#1] The conversion from a C union type to a Python dict will add
   a value for each of the union fields.  Cython 0.23 and later, however,
   will refuse to automatically convert a union with unsafe type
   combinations.  An example is a union of an ``int`` and a ``char*``,
   in which case the pointer value may or may not be a valid pointer.

.. [#2] Other than signed/unsigned char[].
   The conversion will fail if the length of C array is not known at compile time,
   and when using a slice of a C array.


Caveats when using a Python string in a C context
-------------------------------------------------

You need to be careful when using a Python string in a context expecting a
``char*``. In this situation, a pointer to the contents of the Python string is
used, which is only valid as long as the Python string exists. So you need to
make sure that a reference to the original Python string is held for as long
as the C string is needed. If you can't guarantee that the Python string will
live long enough, you will need to copy the C string.

Cython detects and prevents some mistakes of this kind. For instance, if you
attempt something like::

    cdef char *s
    s = pystring1 + pystring2

then Cython will produce the error message ``Obtaining char* from temporary
Python value``. The reason is that concatenating the two Python strings
produces a new Python string object that is referenced only by a temporary
internal variable that Cython generates. As soon as the statement has finished,
the temporary variable will be decrefed and the Python string deallocated,
leaving ``s`` dangling. Since this code could not possibly work, Cython refuses to
compile it.

The solution is to assign the result of the concatenation to a Python
variable, and then obtain the ``char*`` from that, i.e.::

    cdef char *s
    p = pystring1 + pystring2
    s = p

It is then your responsibility to hold the reference p for as long as
necessary.

Keep in mind that the rules used to detect such errors are only heuristics.
Sometimes Cython will complain unnecessarily, and sometimes it will fail to
detect a problem that exists. Ultimately, you need to understand the issue and
be careful what you do.

.. _type_casting:

Type Casting
------------

Where C uses ``"("`` and ``")"``, Cython uses ``"<"`` and ``">"``. For example::

    cdef char *p
    cdef float *q
    p = <char*>q

When casting a C value to a Python object type or vice versa,
Cython will attempt a coercion. Simple examples are casts like ``<int>pyobj``,
which converts a Python number to a plain C ``int`` value, or ``<bytes>charptr``,
which copies a C ``char*`` string into a new Python bytes object.

 .. note:: Cython will not prevent a redundant cast, but emits a warning for it.

To get the address of some Python object, use a cast to a pointer type
like ``<void*>`` or ``<PyObject*>``.
You can also cast a C pointer back to a Python object reference
with ``<object>``, or a more specific builtin or extension type
(e.g. ``<MyExtType>ptr``). This will increase the reference count of
the object by one, i.e. the cast returns an owned reference.
Here is an example:

.. literalinclude:: ../../examples/userguide/language_basics/casting_python.pyx

The precedence of ``<...>`` is such that ``<type>a.b.c`` is interpreted as ``<type>(a.b.c)``.

.. _checked_type_casts:

Checked Type Casts
------------------

A cast like ``<MyExtensionType>x`` will cast x to the class
``MyExtensionType`` without any checking at all.

To have a cast checked, use the syntax like: ``<MyExtensionType?>x``.
In this case, Cython will apply a runtime check that raises a ``TypeError``
if ``x`` is not an instance of ``MyExtensionType``.
This tests for the exact class for builtin types,
but allows subclasses for :ref:`extension-types`.

.. _statements_and_expressions:

Statements and expressions
==========================

Control structures and expressions follow Python syntax for the most part.
When applied to Python objects, they have the same semantics as in Python
(unless otherwise noted). Most of the Python operators can also be applied to
C values, with the obvious semantics.

If Python objects and C values are mixed in an expression, conversions are
performed automatically between Python objects and C numeric or string types.

Reference counts are maintained automatically for all Python objects, and all
Python operations are automatically checked for errors, with appropriate
action taken.

Differences between C and Cython expressions
--------------------------------------------

There are some differences in syntax and semantics between C expressions and
Cython expressions, particularly in the area of C constructs which have no
direct equivalent in Python.

* An integer literal is treated as a C constant, and will
  be truncated to whatever size your C compiler thinks appropriate.
  To get a Python integer (of arbitrary precision) cast immediately to
  an object (e.g. ``<object>100000000000000000000``). The ``L``, ``LL``,
  and ``U`` suffixes have the same meaning as in C.
* There is no ``->`` operator in Cython. Instead of ``p->x``, use ``p.x``
* There is no unary ``*`` operator in Cython. Instead of ``*p``, use ``p[0]``
* There is an ``&`` operator, with the same semantics as in C.
* The null C pointer is called ``NULL``, not ``0`` (and ``NULL`` is a reserved word).
* Type casts are written ``<type>value`` , for example,::

        cdef char* p, float* q
        p = <char*>q

Scope rules
-----------

Cython determines whether a variable belongs to a local scope, the module
scope, or the built-in scope completely statically. As with Python, assigning
to a variable which is not otherwise declared implicitly declares it to be a
variable residing in the scope where it is assigned.  The type of the variable
depends on type inference, except for the global module scope, where it is
always a Python object.

.. _built_in_functions:

Built-in Functions
------------------

Cython compiles calls to most built-in functions into direct calls to
the corresponding Python/C API routines, making them particularly fast.

Only direct function calls using these names are optimised. If you do
something else with one of these names that assumes it's a Python object,
such as assign it to a Python variable, and later call it, the call will
be made as a Python function call.

+------------------------------+-------------+----------------------------+
| Function and arguments       | Return type | Python/C API Equivalent    |
+==============================+=============+============================+
| abs(obj)                     | object,     | PyNumber_Absolute, fabs,   |
|                              | double, ... | fabsf, ...                 |
+------------------------------+-------------+----------------------------+
| callable(obj)                | bint        | PyObject_Callable          |
+------------------------------+-------------+----------------------------+
| delattr(obj, name)           | None        | PyObject_DelAttr           |
+------------------------------+-------------+----------------------------+
| exec(code, [glob, [loc]])    | object      | -                          |
+------------------------------+-------------+----------------------------+
| dir(obj)                     | list        | PyObject_Dir               |
+------------------------------+-------------+----------------------------+
| divmod(a, b)                 | tuple       | PyNumber_Divmod            |
+------------------------------+-------------+----------------------------+
| getattr(obj, name, [default])| object      | PyObject_GetAttr           |
| (Note 1)                     |             |                            |
+------------------------------+-------------+----------------------------+
| hasattr(obj, name)           | bint        | PyObject_HasAttr           |
+------------------------------+-------------+----------------------------+
| hash(obj)                    | int / long  | PyObject_Hash              |
+------------------------------+-------------+----------------------------+
| intern(obj)                  | object      | Py*_InternFromString       |
+------------------------------+-------------+----------------------------+
| isinstance(obj, type)        | bint        | PyObject_IsInstance        |
+------------------------------+-------------+----------------------------+
| issubclass(obj, type)        | bint        | PyObject_IsSubclass        |
+------------------------------+-------------+----------------------------+
| iter(obj, [sentinel])        | object      | PyObject_GetIter           |
+------------------------------+-------------+----------------------------+
| len(obj)                     | Py_ssize_t  | PyObject_Length            |
+------------------------------+-------------+----------------------------+
| pow(x, y, [z])               | object      | PyNumber_Power             |
+------------------------------+-------------+----------------------------+
| reload(obj)                  | object      | PyImport_ReloadModule      |
+------------------------------+-------------+----------------------------+
| repr(obj)                    | object      | PyObject_Repr              |
+------------------------------+-------------+----------------------------+
| setattr(obj, name)           | void        | PyObject_SetAttr           |
+------------------------------+-------------+----------------------------+

Note 1: Pyrex originally provided a function :func:`getattr3(obj, name, default)`
corresponding to the three-argument form of the Python builtin :func:`getattr()`.
Cython still supports this function, but the usage is deprecated in favour of
the normal builtin, which Cython can optimise in both forms.


Operator Precedence
-------------------

Keep in mind that there are some differences in operator precedence between
Python and C, and that Cython uses the Python precedences, not the C ones.

Integer for-loops
------------------

Cython recognises the usual Python for-in-range integer loop pattern::

    for i in range(n):
        ...

If ``i`` is declared as a :keyword:`cdef` integer type, it will
optimise this into a pure C loop.  This restriction is required as
otherwise the generated code wouldn't be correct due to potential
integer overflows on the target architecture.  If you are worried that
the loop is not being converted correctly, use the annotate feature of
the cython commandline (``-a``) to easily see the generated C code.
See :ref:`automatic-range-conversion`

For backwards compatibility to Pyrex, Cython also supports a more verbose
form of for-loop which you might find in legacy code::

    for i from 0 <= i < n:
        ...

or::

    for i from 0 <= i < n by s:
        ...

where ``s`` is some integer step size.

.. note:: This syntax is deprecated and should not be used in new code.
          Use the normal Python for-loop instead.

Some things to note about the for-from loop:

* The target expression must be a plain variable name.
* The name between the lower and upper bounds must be the same as the target
  name.
* The direction of iteration is determined by the relations. If they are both
  from the set {``<``, ``<=``} then it is upwards; if they are both from the set
  {``>``, ``>=``} then it is downwards. (Any other combination is disallowed.)

Like other Python looping statements, break and continue may be used in the
body, and the loop may have an else clause.

.. _cython_file_types:

Cython file types
=================

There are three file types in Cython:

* The implementation files, carrying a ``.py`` or ``.pyx`` suffix.
* The definition files, carrying a ``.pxd`` suffix.
* The include files, carrying a ``.pxi`` suffix.

The implementation file
-----------------------

The implementation file, as the name suggest, contains the implementation
of your functions, classes, extension types, etc. Nearly all the
python syntax is supported in this file. Most of the time, a ``.py``
file can be renamed into a ``.pyx`` file without changing
any code, and Cython will retain the python behavior.

It is possible for Cython to compile both ``.py`` and ``.pyx`` files.
The name of the file isn't important if one wants to use only the Python syntax,
and Cython won't change the generated code depending on the suffix used.
Though, if one want to use the Cython syntax, using a ``.pyx`` file is necessary.

In addition to the Python syntax, the user can also
leverage Cython syntax (such as ``cdef``) to use C variables, can
declare functions as ``cdef`` or ``cpdef`` and can import C definitions
with :keyword:`cimport`. Many other Cython features usable in implementation files
can be found throughout this page and the rest of the Cython documentation.

There are some restrictions on the implementation part of some :ref:`extension-types`
if the corresponding definition file also defines that type.

.. note::

    When a ``.pyx`` file is compiled, Cython first checks to see if a corresponding
    ``.pxd`` file exists and processes it first. It acts like a header file for
    a Cython ``.pyx`` file. You can put inside functions that will be used by
    other Cython modules. This allows different Cython modules to use functions
    and classes from each other without the Python overhead. To read more about
    what how to do that, you can see :ref:`pxd_files`.


The definition file
-------------------

A definition file is used to declare various things.

Any C declaration can be made, and it can be also a declaration of a C variable or
function implemented in a C/C++ file. This can be done with ``cdef extern from``.
Sometimes, ``.pxd`` files are used as a translation of C/C++ header files
into a syntax that Cython can understand. This allows then the C/C++ variable and
functions to be used directly in implementation files with :keyword:`cimport`.
You can read more about it in :ref:`external-C-code` and :ref:`wrapping-cplusplus`.

It can also contain the definition part of an extension type and the declarations
of functions for an external library.

It cannot contain the implementations of any C or Python functions, or any
Python class definitions, or any executable statements. It is needed when one
wants to  access :keyword:`cdef` attributes and methods, or to inherit from
:keyword:`cdef` classes defined in this module.

.. note::

    You don't need to (and shouldn't) declare anything in a declaration file
    :keyword:`public` in order to make it available to other Cython modules; its mere
    presence in a definition file does that. You only need a public
    declaration if you want to make something available to external C code.


The include statement and include files
---------------------------------------

.. warning::
    Historically the ``include`` statement was used for sharing declarations.
    Use :ref:`sharing-declarations` instead.

A Cython source file can include material from other files using the include
statement, for example,::

    include "spamstuff.pxi"

The contents of the named file are textually included at that point.  The
included file can contain any complete statements or declarations that are
valid in the context where the include statement appears, including other
include statements.  The contents of the included file should begin at an
indentation level of zero, and will be treated as though they were indented to
the level of the include statement that is including the file.  The include
statement cannot, however, be used outside of the module scope, such as inside
of functions or class bodies.

.. note::

    There are other mechanisms available for splitting Cython code into
    separate parts that may be more appropriate in many cases. See
    :ref:`sharing-declarations`.

.. _conditional_compilation:

Conditional Compilation
=======================

Some features are available for conditional compilation and compile-time
constants within a Cython source file.

Compile-Time Definitions
------------------------

A compile-time constant can be defined using the DEF statement::

    DEF FavouriteFood = u"spam"
    DEF ArraySize = 42
    DEF OtherArraySize = 2 * ArraySize + 17

The right-hand side of the ``DEF`` must be a valid compile-time expression.
Such expressions are made up of literal values and names defined using ``DEF``
statements, combined using any of the Python expression syntax.

The following compile-time names are predefined, corresponding to the values
returned by :func:`os.uname`.

    UNAME_SYSNAME, UNAME_NODENAME, UNAME_RELEASE,
    UNAME_VERSION, UNAME_MACHINE

The following selection of builtin constants and functions are also available:

    None, True, False,
    abs, all, any, ascii, bin, bool, bytearray, bytes, chr, cmp, complex, dict,
    divmod, enumerate, filter, float, format, frozenset, hash, hex, int, len,
    list, long, map, max, min, oct, ord, pow, range, reduce, repr, reversed,
    round, set, slice, sorted, str, sum, tuple, xrange, zip

Note that some of these builtins may not be available when compiling under
Python 2.x or 3.x, or may behave differently in both.

A name defined using ``DEF`` can be used anywhere an identifier can appear,
and it is replaced with its compile-time value as though it were written into
the source at that point as a literal. For this to work, the compile-time
expression must evaluate to a Python value of type ``int``, ``long``,
``float``, ``bytes`` or ``unicode`` (``str`` in Py3).

.. literalinclude:: ../../examples/userguide/language_basics/compile_time.pyx

Conditional Statements
----------------------

The ``IF`` statement can be used to conditionally include or exclude sections
of code at compile time. It works in a similar way to the ``#if`` preprocessor
directive in C.::

    IF UNAME_SYSNAME == "Windows":
        include "icky_definitions.pxi"
    ELIF UNAME_SYSNAME == "Darwin":
        include "nice_definitions.pxi"
    ELIF UNAME_SYSNAME == "Linux":
        include "penguin_definitions.pxi"
    ELSE:
        include "other_definitions.pxi"

The ``ELIF`` and ``ELSE`` clauses are optional. An ``IF`` statement can appear
anywhere that a normal statement or declaration can appear, and it can contain
any statements or declarations that would be valid in that context, including
``DEF`` statements and other ``IF`` statements.

The expressions in the ``IF`` and ``ELIF`` clauses must be valid compile-time
expressions as for the ``DEF`` statement, although they can evaluate to any
Python value, and the truth of the result is determined in the usual Python
way.