1.. highlightlang:: c 2 3 4.. _extending-intro: 5 6****************************** 7Extending Python with C or C++ 8****************************** 9 10It is quite easy to add new built-in modules to Python, if you know how to 11program in C. Such :dfn:`extension modules` can do two things that can't be 12done directly in Python: they can implement new built-in object types, and they 13can call C library functions and system calls. 14 15To support extensions, the Python API (Application Programmers Interface) 16defines a set of functions, macros and variables that provide access to most 17aspects of the Python run-time system. The Python API is incorporated in a C 18source file by including the header ``"Python.h"``. 19 20The compilation of an extension module depends on its intended use as well as on 21your system setup; details are given in later chapters. 22 23.. note:: 24 25 The C extension interface is specific to CPython, and extension modules do 26 not work on other Python implementations. In many cases, it is possible to 27 avoid writing C extensions and preserve portability to other implementations. 28 For example, if your use case is calling C library functions or system calls, 29 you should consider using the :mod:`ctypes` module or the `cffi 30 <https://cffi.readthedocs.io/>`_ library rather than writing 31 custom C code. 32 These modules let you write Python code to interface with C code and are more 33 portable between implementations of Python than writing and compiling a C 34 extension module. 35 36 37.. _extending-simpleexample: 38 39A Simple Example 40================ 41 42Let's create an extension module called ``spam`` (the favorite food of Monty 43Python fans...) and let's say we want to create a Python interface to the C 44library function :c:func:`system` [#]_. This function takes a null-terminated 45character string as argument and returns an integer. We want this function to 46be callable from Python as follows: 47 48.. code-block:: pycon 49 50 >>> import spam 51 >>> status = spam.system("ls -l") 52 53Begin by creating a file :file:`spammodule.c`. (Historically, if a module is 54called ``spam``, the C file containing its implementation is called 55:file:`spammodule.c`; if the module name is very long, like ``spammify``, the 56module name can be just :file:`spammify.c`.) 57 58The first line of our file can be:: 59 60 #include <Python.h> 61 62which pulls in the Python API (you can add a comment describing the purpose of 63the module and a copyright notice if you like). 64 65.. note:: 66 67 Since Python may define some pre-processor definitions which affect the standard 68 headers on some systems, you *must* include :file:`Python.h` before any standard 69 headers are included. 70 71All user-visible symbols defined by :file:`Python.h` have a prefix of ``Py`` or 72``PY``, except those defined in standard header files. For convenience, and 73since they are used extensively by the Python interpreter, ``"Python.h"`` 74includes a few standard header files: ``<stdio.h>``, ``<string.h>``, 75``<errno.h>``, and ``<stdlib.h>``. If the latter header file does not exist on 76your system, it declares the functions :c:func:`malloc`, :c:func:`free` and 77:c:func:`realloc` directly. 78 79The next thing we add to our module file is the C function that will be called 80when the Python expression ``spam.system(string)`` is evaluated (we'll see 81shortly how it ends up being called):: 82 83 static PyObject * 84 spam_system(PyObject *self, PyObject *args) 85 { 86 const char *command; 87 int sts; 88 89 if (!PyArg_ParseTuple(args, "s", &command)) 90 return NULL; 91 sts = system(command); 92 return PyLong_FromLong(sts); 93 } 94 95There is a straightforward translation from the argument list in Python (for 96example, the single expression ``"ls -l"``) to the arguments passed to the C 97function. The C function always has two arguments, conventionally named *self* 98and *args*. 99 100The *self* argument points to the module object for module-level functions; 101for a method it would point to the object instance. 102 103The *args* argument will be a pointer to a Python tuple object containing the 104arguments. Each item of the tuple corresponds to an argument in the call's 105argument list. The arguments are Python objects --- in order to do anything 106with them in our C function we have to convert them to C values. The function 107:c:func:`PyArg_ParseTuple` in the Python API checks the argument types and 108converts them to C values. It uses a template string to determine the required 109types of the arguments as well as the types of the C variables into which to 110store the converted values. More about this later. 111 112:c:func:`PyArg_ParseTuple` returns true (nonzero) if all arguments have the right 113type and its components have been stored in the variables whose addresses are 114passed. It returns false (zero) if an invalid argument list was passed. In the 115latter case it also raises an appropriate exception so the calling function can 116return *NULL* immediately (as we saw in the example). 117 118 119.. _extending-errors: 120 121Intermezzo: Errors and Exceptions 122================================= 123 124An important convention throughout the Python interpreter is the following: when 125a function fails, it should set an exception condition and return an error value 126(usually a *NULL* pointer). Exceptions are stored in a static global variable 127inside the interpreter; if this variable is *NULL* no exception has occurred. A 128second global variable stores the "associated value" of the exception (the 129second argument to :keyword:`raise`). A third variable contains the stack 130traceback in case the error originated in Python code. These three variables 131are the C equivalents of the result in Python of :meth:`sys.exc_info` (see the 132section on module :mod:`sys` in the Python Library Reference). It is important 133to know about them to understand how errors are passed around. 134 135The Python API defines a number of functions to set various types of exceptions. 136 137The most common one is :c:func:`PyErr_SetString`. Its arguments are an exception 138object and a C string. The exception object is usually a predefined object like 139:c:data:`PyExc_ZeroDivisionError`. The C string indicates the cause of the error 140and is converted to a Python string object and stored as the "associated value" 141of the exception. 142 143Another useful function is :c:func:`PyErr_SetFromErrno`, which only takes an 144exception argument and constructs the associated value by inspection of the 145global variable :c:data:`errno`. The most general function is 146:c:func:`PyErr_SetObject`, which takes two object arguments, the exception and 147its associated value. You don't need to :c:func:`Py_INCREF` the objects passed 148to any of these functions. 149 150You can test non-destructively whether an exception has been set with 151:c:func:`PyErr_Occurred`. This returns the current exception object, or *NULL* 152if no exception has occurred. You normally don't need to call 153:c:func:`PyErr_Occurred` to see whether an error occurred in a function call, 154since you should be able to tell from the return value. 155 156When a function *f* that calls another function *g* detects that the latter 157fails, *f* should itself return an error value (usually *NULL* or ``-1``). It 158should *not* call one of the :c:func:`PyErr_\*` functions --- one has already 159been called by *g*. *f*'s caller is then supposed to also return an error 160indication to *its* caller, again *without* calling :c:func:`PyErr_\*`, and so on 161--- the most detailed cause of the error was already reported by the function 162that first detected it. Once the error reaches the Python interpreter's main 163loop, this aborts the currently executing Python code and tries to find an 164exception handler specified by the Python programmer. 165 166(There are situations where a module can actually give a more detailed error 167message by calling another :c:func:`PyErr_\*` function, and in such cases it is 168fine to do so. As a general rule, however, this is not necessary, and can cause 169information about the cause of the error to be lost: most operations can fail 170for a variety of reasons.) 171 172To ignore an exception set by a function call that failed, the exception 173condition must be cleared explicitly by calling :c:func:`PyErr_Clear`. The only 174time C code should call :c:func:`PyErr_Clear` is if it doesn't want to pass the 175error on to the interpreter but wants to handle it completely by itself 176(possibly by trying something else, or pretending nothing went wrong). 177 178Every failing :c:func:`malloc` call must be turned into an exception --- the 179direct caller of :c:func:`malloc` (or :c:func:`realloc`) must call 180:c:func:`PyErr_NoMemory` and return a failure indicator itself. All the 181object-creating functions (for example, :c:func:`PyLong_FromLong`) already do 182this, so this note is only relevant to those who call :c:func:`malloc` directly. 183 184Also note that, with the important exception of :c:func:`PyArg_ParseTuple` and 185friends, functions that return an integer status usually return a positive value 186or zero for success and ``-1`` for failure, like Unix system calls. 187 188Finally, be careful to clean up garbage (by making :c:func:`Py_XDECREF` or 189:c:func:`Py_DECREF` calls for objects you have already created) when you return 190an error indicator! 191 192The choice of which exception to raise is entirely yours. There are predeclared 193C objects corresponding to all built-in Python exceptions, such as 194:c:data:`PyExc_ZeroDivisionError`, which you can use directly. Of course, you 195should choose exceptions wisely --- don't use :c:data:`PyExc_TypeError` to mean 196that a file couldn't be opened (that should probably be :c:data:`PyExc_IOError`). 197If something's wrong with the argument list, the :c:func:`PyArg_ParseTuple` 198function usually raises :c:data:`PyExc_TypeError`. If you have an argument whose 199value must be in a particular range or must satisfy other conditions, 200:c:data:`PyExc_ValueError` is appropriate. 201 202You can also define a new exception that is unique to your module. For this, you 203usually declare a static object variable at the beginning of your file:: 204 205 static PyObject *SpamError; 206 207and initialize it in your module's initialization function (:c:func:`PyInit_spam`) 208with an exception object (leaving out the error checking for now):: 209 210 PyMODINIT_FUNC 211 PyInit_spam(void) 212 { 213 PyObject *m; 214 215 m = PyModule_Create(&spammodule); 216 if (m == NULL) 217 return NULL; 218 219 SpamError = PyErr_NewException("spam.error", NULL, NULL); 220 Py_INCREF(SpamError); 221 PyModule_AddObject(m, "error", SpamError); 222 return m; 223 } 224 225Note that the Python name for the exception object is :exc:`spam.error`. The 226:c:func:`PyErr_NewException` function may create a class with the base class 227being :exc:`Exception` (unless another class is passed in instead of *NULL*), 228described in :ref:`bltin-exceptions`. 229 230Note also that the :c:data:`SpamError` variable retains a reference to the newly 231created exception class; this is intentional! Since the exception could be 232removed from the module by external code, an owned reference to the class is 233needed to ensure that it will not be discarded, causing :c:data:`SpamError` to 234become a dangling pointer. Should it become a dangling pointer, C code which 235raises the exception could cause a core dump or other unintended side effects. 236 237We discuss the use of ``PyMODINIT_FUNC`` as a function return type later in this 238sample. 239 240The :exc:`spam.error` exception can be raised in your extension module using a 241call to :c:func:`PyErr_SetString` as shown below:: 242 243 static PyObject * 244 spam_system(PyObject *self, PyObject *args) 245 { 246 const char *command; 247 int sts; 248 249 if (!PyArg_ParseTuple(args, "s", &command)) 250 return NULL; 251 sts = system(command); 252 if (sts < 0) { 253 PyErr_SetString(SpamError, "System command failed"); 254 return NULL; 255 } 256 return PyLong_FromLong(sts); 257 } 258 259 260.. _backtoexample: 261 262Back to the Example 263=================== 264 265Going back to our example function, you should now be able to understand this 266statement:: 267 268 if (!PyArg_ParseTuple(args, "s", &command)) 269 return NULL; 270 271It returns *NULL* (the error indicator for functions returning object pointers) 272if an error is detected in the argument list, relying on the exception set by 273:c:func:`PyArg_ParseTuple`. Otherwise the string value of the argument has been 274copied to the local variable :c:data:`command`. This is a pointer assignment and 275you are not supposed to modify the string to which it points (so in Standard C, 276the variable :c:data:`command` should properly be declared as ``const char 277*command``). 278 279The next statement is a call to the Unix function :c:func:`system`, passing it 280the string we just got from :c:func:`PyArg_ParseTuple`:: 281 282 sts = system(command); 283 284Our :func:`spam.system` function must return the value of :c:data:`sts` as a 285Python object. This is done using the function :c:func:`PyLong_FromLong`. :: 286 287 return PyLong_FromLong(sts); 288 289In this case, it will return an integer object. (Yes, even integers are objects 290on the heap in Python!) 291 292If you have a C function that returns no useful argument (a function returning 293:c:type:`void`), the corresponding Python function must return ``None``. You 294need this idiom to do so (which is implemented by the :c:macro:`Py_RETURN_NONE` 295macro):: 296 297 Py_INCREF(Py_None); 298 return Py_None; 299 300:c:data:`Py_None` is the C name for the special Python object ``None``. It is a 301genuine Python object rather than a *NULL* pointer, which means "error" in most 302contexts, as we have seen. 303 304 305.. _methodtable: 306 307The Module's Method Table and Initialization Function 308===================================================== 309 310I promised to show how :c:func:`spam_system` is called from Python programs. 311First, we need to list its name and address in a "method table":: 312 313 static PyMethodDef SpamMethods[] = { 314 ... 315 {"system", spam_system, METH_VARARGS, 316 "Execute a shell command."}, 317 ... 318 {NULL, NULL, 0, NULL} /* Sentinel */ 319 }; 320 321Note the third entry (``METH_VARARGS``). This is a flag telling the interpreter 322the calling convention to be used for the C function. It should normally always 323be ``METH_VARARGS`` or ``METH_VARARGS | METH_KEYWORDS``; a value of ``0`` means 324that an obsolete variant of :c:func:`PyArg_ParseTuple` is used. 325 326When using only ``METH_VARARGS``, the function should expect the Python-level 327parameters to be passed in as a tuple acceptable for parsing via 328:c:func:`PyArg_ParseTuple`; more information on this function is provided below. 329 330The :const:`METH_KEYWORDS` bit may be set in the third field if keyword 331arguments should be passed to the function. In this case, the C function should 332accept a third ``PyObject *`` parameter which will be a dictionary of keywords. 333Use :c:func:`PyArg_ParseTupleAndKeywords` to parse the arguments to such a 334function. 335 336The method table must be referenced in the module definition structure:: 337 338 static struct PyModuleDef spammodule = { 339 PyModuleDef_HEAD_INIT, 340 "spam", /* name of module */ 341 spam_doc, /* module documentation, may be NULL */ 342 -1, /* size of per-interpreter state of the module, 343 or -1 if the module keeps state in global variables. */ 344 SpamMethods 345 }; 346 347This structure, in turn, must be passed to the interpreter in the module's 348initialization function. The initialization function must be named 349:c:func:`PyInit_name`, where *name* is the name of the module, and should be the 350only non-\ ``static`` item defined in the module file:: 351 352 PyMODINIT_FUNC 353 PyInit_spam(void) 354 { 355 return PyModule_Create(&spammodule); 356 } 357 358Note that PyMODINIT_FUNC declares the function as ``PyObject *`` return type, 359declares any special linkage declarations required by the platform, and for C++ 360declares the function as ``extern "C"``. 361 362When the Python program imports module :mod:`spam` for the first time, 363:c:func:`PyInit_spam` is called. (See below for comments about embedding Python.) 364It calls :c:func:`PyModule_Create`, which returns a module object, and 365inserts built-in function objects into the newly created module based upon the 366table (an array of :c:type:`PyMethodDef` structures) found in the module definition. 367:c:func:`PyModule_Create` returns a pointer to the module object 368that it creates. It may abort with a fatal error for 369certain errors, or return *NULL* if the module could not be initialized 370satisfactorily. The init function must return the module object to its caller, 371so that it then gets inserted into ``sys.modules``. 372 373When embedding Python, the :c:func:`PyInit_spam` function is not called 374automatically unless there's an entry in the :c:data:`PyImport_Inittab` table. 375To add the module to the initialization table, use :c:func:`PyImport_AppendInittab`, 376optionally followed by an import of the module:: 377 378 int 379 main(int argc, char *argv[]) 380 { 381 wchar_t *program = Py_DecodeLocale(argv[0], NULL); 382 if (program == NULL) { 383 fprintf(stderr, "Fatal error: cannot decode argv[0]\n"); 384 exit(1); 385 } 386 387 /* Add a built-in module, before Py_Initialize */ 388 PyImport_AppendInittab("spam", PyInit_spam); 389 390 /* Pass argv[0] to the Python interpreter */ 391 Py_SetProgramName(program); 392 393 /* Initialize the Python interpreter. Required. */ 394 Py_Initialize(); 395 396 /* Optionally import the module; alternatively, 397 import can be deferred until the embedded script 398 imports it. */ 399 PyImport_ImportModule("spam"); 400 401 ... 402 403 PyMem_RawFree(program); 404 return 0; 405 } 406 407.. note:: 408 409 Removing entries from ``sys.modules`` or importing compiled modules into 410 multiple interpreters within a process (or following a :c:func:`fork` without an 411 intervening :c:func:`exec`) can create problems for some extension modules. 412 Extension module authors should exercise caution when initializing internal data 413 structures. 414 415A more substantial example module is included in the Python source distribution 416as :file:`Modules/xxmodule.c`. This file may be used as a template or simply 417read as an example. 418 419.. note:: 420 421 Unlike our ``spam`` example, ``xxmodule`` uses *multi-phase initialization* 422 (new in Python 3.5), where a PyModuleDef structure is returned from 423 ``PyInit_spam``, and creation of the module is left to the import machinery. 424 For details on multi-phase initialization, see :PEP:`489`. 425 426 427.. _compilation: 428 429Compilation and Linkage 430======================= 431 432There are two more things to do before you can use your new extension: compiling 433and linking it with the Python system. If you use dynamic loading, the details 434may depend on the style of dynamic loading your system uses; see the chapters 435about building extension modules (chapter :ref:`building`) and additional 436information that pertains only to building on Windows (chapter 437:ref:`building-on-windows`) for more information about this. 438 439If you can't use dynamic loading, or if you want to make your module a permanent 440part of the Python interpreter, you will have to change the configuration setup 441and rebuild the interpreter. Luckily, this is very simple on Unix: just place 442your file (:file:`spammodule.c` for example) in the :file:`Modules/` directory 443of an unpacked source distribution, add a line to the file 444:file:`Modules/Setup.local` describing your file: 445 446.. code-block:: sh 447 448 spam spammodule.o 449 450and rebuild the interpreter by running :program:`make` in the toplevel 451directory. You can also run :program:`make` in the :file:`Modules/` 452subdirectory, but then you must first rebuild :file:`Makefile` there by running 453':program:`make` Makefile'. (This is necessary each time you change the 454:file:`Setup` file.) 455 456If your module requires additional libraries to link with, these can be listed 457on the line in the configuration file as well, for instance: 458 459.. code-block:: sh 460 461 spam spammodule.o -lX11 462 463 464.. _callingpython: 465 466Calling Python Functions from C 467=============================== 468 469So far we have concentrated on making C functions callable from Python. The 470reverse is also useful: calling Python functions from C. This is especially the 471case for libraries that support so-called "callback" functions. If a C 472interface makes use of callbacks, the equivalent Python often needs to provide a 473callback mechanism to the Python programmer; the implementation will require 474calling the Python callback functions from a C callback. Other uses are also 475imaginable. 476 477Fortunately, the Python interpreter is easily called recursively, and there is a 478standard interface to call a Python function. (I won't dwell on how to call the 479Python parser with a particular string as input --- if you're interested, have a 480look at the implementation of the :option:`-c` command line option in 481:file:`Modules/main.c` from the Python source code.) 482 483Calling a Python function is easy. First, the Python program must somehow pass 484you the Python function object. You should provide a function (or some other 485interface) to do this. When this function is called, save a pointer to the 486Python function object (be careful to :c:func:`Py_INCREF` it!) in a global 487variable --- or wherever you see fit. For example, the following function might 488be part of a module definition:: 489 490 static PyObject *my_callback = NULL; 491 492 static PyObject * 493 my_set_callback(PyObject *dummy, PyObject *args) 494 { 495 PyObject *result = NULL; 496 PyObject *temp; 497 498 if (PyArg_ParseTuple(args, "O:set_callback", &temp)) { 499 if (!PyCallable_Check(temp)) { 500 PyErr_SetString(PyExc_TypeError, "parameter must be callable"); 501 return NULL; 502 } 503 Py_XINCREF(temp); /* Add a reference to new callback */ 504 Py_XDECREF(my_callback); /* Dispose of previous callback */ 505 my_callback = temp; /* Remember new callback */ 506 /* Boilerplate to return "None" */ 507 Py_INCREF(Py_None); 508 result = Py_None; 509 } 510 return result; 511 } 512 513This function must be registered with the interpreter using the 514:const:`METH_VARARGS` flag; this is described in section :ref:`methodtable`. The 515:c:func:`PyArg_ParseTuple` function and its arguments are documented in section 516:ref:`parsetuple`. 517 518The macros :c:func:`Py_XINCREF` and :c:func:`Py_XDECREF` increment/decrement the 519reference count of an object and are safe in the presence of *NULL* pointers 520(but note that *temp* will not be *NULL* in this context). More info on them 521in section :ref:`refcounts`. 522 523.. index:: single: PyObject_CallObject() 524 525Later, when it is time to call the function, you call the C function 526:c:func:`PyObject_CallObject`. This function has two arguments, both pointers to 527arbitrary Python objects: the Python function, and the argument list. The 528argument list must always be a tuple object, whose length is the number of 529arguments. To call the Python function with no arguments, pass in NULL, or 530an empty tuple; to call it with one argument, pass a singleton tuple. 531:c:func:`Py_BuildValue` returns a tuple when its format string consists of zero 532or more format codes between parentheses. For example:: 533 534 int arg; 535 PyObject *arglist; 536 PyObject *result; 537 ... 538 arg = 123; 539 ... 540 /* Time to call the callback */ 541 arglist = Py_BuildValue("(i)", arg); 542 result = PyObject_CallObject(my_callback, arglist); 543 Py_DECREF(arglist); 544 545:c:func:`PyObject_CallObject` returns a Python object pointer: this is the return 546value of the Python function. :c:func:`PyObject_CallObject` is 547"reference-count-neutral" with respect to its arguments. In the example a new 548tuple was created to serve as the argument list, which is 549:c:func:`Py_DECREF`\ -ed immediately after the :c:func:`PyObject_CallObject` 550call. 551 552The return value of :c:func:`PyObject_CallObject` is "new": either it is a brand 553new object, or it is an existing object whose reference count has been 554incremented. So, unless you want to save it in a global variable, you should 555somehow :c:func:`Py_DECREF` the result, even (especially!) if you are not 556interested in its value. 557 558Before you do this, however, it is important to check that the return value 559isn't *NULL*. If it is, the Python function terminated by raising an exception. 560If the C code that called :c:func:`PyObject_CallObject` is called from Python, it 561should now return an error indication to its Python caller, so the interpreter 562can print a stack trace, or the calling Python code can handle the exception. 563If this is not possible or desirable, the exception should be cleared by calling 564:c:func:`PyErr_Clear`. For example:: 565 566 if (result == NULL) 567 return NULL; /* Pass error back */ 568 ...use result... 569 Py_DECREF(result); 570 571Depending on the desired interface to the Python callback function, you may also 572have to provide an argument list to :c:func:`PyObject_CallObject`. In some cases 573the argument list is also provided by the Python program, through the same 574interface that specified the callback function. It can then be saved and used 575in the same manner as the function object. In other cases, you may have to 576construct a new tuple to pass as the argument list. The simplest way to do this 577is to call :c:func:`Py_BuildValue`. For example, if you want to pass an integral 578event code, you might use the following code:: 579 580 PyObject *arglist; 581 ... 582 arglist = Py_BuildValue("(l)", eventcode); 583 result = PyObject_CallObject(my_callback, arglist); 584 Py_DECREF(arglist); 585 if (result == NULL) 586 return NULL; /* Pass error back */ 587 /* Here maybe use the result */ 588 Py_DECREF(result); 589 590Note the placement of ``Py_DECREF(arglist)`` immediately after the call, before 591the error check! Also note that strictly speaking this code is not complete: 592:c:func:`Py_BuildValue` may run out of memory, and this should be checked. 593 594You may also call a function with keyword arguments by using 595:c:func:`PyObject_Call`, which supports arguments and keyword arguments. As in 596the above example, we use :c:func:`Py_BuildValue` to construct the dictionary. :: 597 598 PyObject *dict; 599 ... 600 dict = Py_BuildValue("{s:i}", "name", val); 601 result = PyObject_Call(my_callback, NULL, dict); 602 Py_DECREF(dict); 603 if (result == NULL) 604 return NULL; /* Pass error back */ 605 /* Here maybe use the result */ 606 Py_DECREF(result); 607 608 609.. _parsetuple: 610 611Extracting Parameters in Extension Functions 612============================================ 613 614.. index:: single: PyArg_ParseTuple() 615 616The :c:func:`PyArg_ParseTuple` function is declared as follows:: 617 618 int PyArg_ParseTuple(PyObject *arg, const char *format, ...); 619 620The *arg* argument must be a tuple object containing an argument list passed 621from Python to a C function. The *format* argument must be a format string, 622whose syntax is explained in :ref:`arg-parsing` in the Python/C API Reference 623Manual. The remaining arguments must be addresses of variables whose type is 624determined by the format string. 625 626Note that while :c:func:`PyArg_ParseTuple` checks that the Python arguments have 627the required types, it cannot check the validity of the addresses of C variables 628passed to the call: if you make mistakes there, your code will probably crash or 629at least overwrite random bits in memory. So be careful! 630 631Note that any Python object references which are provided to the caller are 632*borrowed* references; do not decrement their reference count! 633 634Some example calls:: 635 636 #define PY_SSIZE_T_CLEAN /* Make "s#" use Py_ssize_t rather than int. */ 637 #include <Python.h> 638 639:: 640 641 int ok; 642 int i, j; 643 long k, l; 644 const char *s; 645 Py_ssize_t size; 646 647 ok = PyArg_ParseTuple(args, ""); /* No arguments */ 648 /* Python call: f() */ 649 650:: 651 652 ok = PyArg_ParseTuple(args, "s", &s); /* A string */ 653 /* Possible Python call: f('whoops!') */ 654 655:: 656 657 ok = PyArg_ParseTuple(args, "lls", &k, &l, &s); /* Two longs and a string */ 658 /* Possible Python call: f(1, 2, 'three') */ 659 660:: 661 662 ok = PyArg_ParseTuple(args, "(ii)s#", &i, &j, &s, &size); 663 /* A pair of ints and a string, whose size is also returned */ 664 /* Possible Python call: f((1, 2), 'three') */ 665 666:: 667 668 { 669 const char *file; 670 const char *mode = "r"; 671 int bufsize = 0; 672 ok = PyArg_ParseTuple(args, "s|si", &file, &mode, &bufsize); 673 /* A string, and optionally another string and an integer */ 674 /* Possible Python calls: 675 f('spam') 676 f('spam', 'w') 677 f('spam', 'wb', 100000) */ 678 } 679 680:: 681 682 { 683 int left, top, right, bottom, h, v; 684 ok = PyArg_ParseTuple(args, "((ii)(ii))(ii)", 685 &left, &top, &right, &bottom, &h, &v); 686 /* A rectangle and a point */ 687 /* Possible Python call: 688 f(((0, 0), (400, 300)), (10, 10)) */ 689 } 690 691:: 692 693 { 694 Py_complex c; 695 ok = PyArg_ParseTuple(args, "D:myfunction", &c); 696 /* a complex, also providing a function name for errors */ 697 /* Possible Python call: myfunction(1+2j) */ 698 } 699 700 701.. _parsetupleandkeywords: 702 703Keyword Parameters for Extension Functions 704========================================== 705 706.. index:: single: PyArg_ParseTupleAndKeywords() 707 708The :c:func:`PyArg_ParseTupleAndKeywords` function is declared as follows:: 709 710 int PyArg_ParseTupleAndKeywords(PyObject *arg, PyObject *kwdict, 711 const char *format, char *kwlist[], ...); 712 713The *arg* and *format* parameters are identical to those of the 714:c:func:`PyArg_ParseTuple` function. The *kwdict* parameter is the dictionary of 715keywords received as the third parameter from the Python runtime. The *kwlist* 716parameter is a *NULL*-terminated list of strings which identify the parameters; 717the names are matched with the type information from *format* from left to 718right. On success, :c:func:`PyArg_ParseTupleAndKeywords` returns true, otherwise 719it returns false and raises an appropriate exception. 720 721.. note:: 722 723 Nested tuples cannot be parsed when using keyword arguments! Keyword parameters 724 passed in which are not present in the *kwlist* will cause :exc:`TypeError` to 725 be raised. 726 727.. index:: single: Philbrick, Geoff 728 729Here is an example module which uses keywords, based on an example by Geoff 730Philbrick (philbrick@hks.com):: 731 732 #include "Python.h" 733 734 static PyObject * 735 keywdarg_parrot(PyObject *self, PyObject *args, PyObject *keywds) 736 { 737 int voltage; 738 const char *state = "a stiff"; 739 const char *action = "voom"; 740 const char *type = "Norwegian Blue"; 741 742 static char *kwlist[] = {"voltage", "state", "action", "type", NULL}; 743 744 if (!PyArg_ParseTupleAndKeywords(args, keywds, "i|sss", kwlist, 745 &voltage, &state, &action, &type)) 746 return NULL; 747 748 printf("-- This parrot wouldn't %s if you put %i Volts through it.\n", 749 action, voltage); 750 printf("-- Lovely plumage, the %s -- It's %s!\n", type, state); 751 752 Py_RETURN_NONE; 753 } 754 755 static PyMethodDef keywdarg_methods[] = { 756 /* The cast of the function is necessary since PyCFunction values 757 * only take two PyObject* parameters, and keywdarg_parrot() takes 758 * three. 759 */ 760 {"parrot", (PyCFunction)keywdarg_parrot, METH_VARARGS | METH_KEYWORDS, 761 "Print a lovely skit to standard output."}, 762 {NULL, NULL, 0, NULL} /* sentinel */ 763 }; 764 765 static struct PyModuleDef keywdargmodule = { 766 PyModuleDef_HEAD_INIT, 767 "keywdarg", 768 NULL, 769 -1, 770 keywdarg_methods 771 }; 772 773 PyMODINIT_FUNC 774 PyInit_keywdarg(void) 775 { 776 return PyModule_Create(&keywdargmodule); 777 } 778 779 780.. _buildvalue: 781 782Building Arbitrary Values 783========================= 784 785This function is the counterpart to :c:func:`PyArg_ParseTuple`. It is declared 786as follows:: 787 788 PyObject *Py_BuildValue(const char *format, ...); 789 790It recognizes a set of format units similar to the ones recognized by 791:c:func:`PyArg_ParseTuple`, but the arguments (which are input to the function, 792not output) must not be pointers, just values. It returns a new Python object, 793suitable for returning from a C function called from Python. 794 795One difference with :c:func:`PyArg_ParseTuple`: while the latter requires its 796first argument to be a tuple (since Python argument lists are always represented 797as tuples internally), :c:func:`Py_BuildValue` does not always build a tuple. It 798builds a tuple only if its format string contains two or more format units. If 799the format string is empty, it returns ``None``; if it contains exactly one 800format unit, it returns whatever object is described by that format unit. To 801force it to return a tuple of size 0 or one, parenthesize the format string. 802 803Examples (to the left the call, to the right the resulting Python value): 804 805.. code-block:: none 806 807 Py_BuildValue("") None 808 Py_BuildValue("i", 123) 123 809 Py_BuildValue("iii", 123, 456, 789) (123, 456, 789) 810 Py_BuildValue("s", "hello") 'hello' 811 Py_BuildValue("y", "hello") b'hello' 812 Py_BuildValue("ss", "hello", "world") ('hello', 'world') 813 Py_BuildValue("s#", "hello", 4) 'hell' 814 Py_BuildValue("y#", "hello", 4) b'hell' 815 Py_BuildValue("()") () 816 Py_BuildValue("(i)", 123) (123,) 817 Py_BuildValue("(ii)", 123, 456) (123, 456) 818 Py_BuildValue("(i,i)", 123, 456) (123, 456) 819 Py_BuildValue("[i,i]", 123, 456) [123, 456] 820 Py_BuildValue("{s:i,s:i}", 821 "abc", 123, "def", 456) {'abc': 123, 'def': 456} 822 Py_BuildValue("((ii)(ii)) (ii)", 823 1, 2, 3, 4, 5, 6) (((1, 2), (3, 4)), (5, 6)) 824 825 826.. _refcounts: 827 828Reference Counts 829================ 830 831In languages like C or C++, the programmer is responsible for dynamic allocation 832and deallocation of memory on the heap. In C, this is done using the functions 833:c:func:`malloc` and :c:func:`free`. In C++, the operators ``new`` and 834``delete`` are used with essentially the same meaning and we'll restrict 835the following discussion to the C case. 836 837Every block of memory allocated with :c:func:`malloc` should eventually be 838returned to the pool of available memory by exactly one call to :c:func:`free`. 839It is important to call :c:func:`free` at the right time. If a block's address 840is forgotten but :c:func:`free` is not called for it, the memory it occupies 841cannot be reused until the program terminates. This is called a :dfn:`memory 842leak`. On the other hand, if a program calls :c:func:`free` for a block and then 843continues to use the block, it creates a conflict with re-use of the block 844through another :c:func:`malloc` call. This is called :dfn:`using freed memory`. 845It has the same bad consequences as referencing uninitialized data --- core 846dumps, wrong results, mysterious crashes. 847 848Common causes of memory leaks are unusual paths through the code. For instance, 849a function may allocate a block of memory, do some calculation, and then free 850the block again. Now a change in the requirements for the function may add a 851test to the calculation that detects an error condition and can return 852prematurely from the function. It's easy to forget to free the allocated memory 853block when taking this premature exit, especially when it is added later to the 854code. Such leaks, once introduced, often go undetected for a long time: the 855error exit is taken only in a small fraction of all calls, and most modern 856machines have plenty of virtual memory, so the leak only becomes apparent in a 857long-running process that uses the leaking function frequently. Therefore, it's 858important to prevent leaks from happening by having a coding convention or 859strategy that minimizes this kind of errors. 860 861Since Python makes heavy use of :c:func:`malloc` and :c:func:`free`, it needs a 862strategy to avoid memory leaks as well as the use of freed memory. The chosen 863method is called :dfn:`reference counting`. The principle is simple: every 864object contains a counter, which is incremented when a reference to the object 865is stored somewhere, and which is decremented when a reference to it is deleted. 866When the counter reaches zero, the last reference to the object has been deleted 867and the object is freed. 868 869An alternative strategy is called :dfn:`automatic garbage collection`. 870(Sometimes, reference counting is also referred to as a garbage collection 871strategy, hence my use of "automatic" to distinguish the two.) The big 872advantage of automatic garbage collection is that the user doesn't need to call 873:c:func:`free` explicitly. (Another claimed advantage is an improvement in speed 874or memory usage --- this is no hard fact however.) The disadvantage is that for 875C, there is no truly portable automatic garbage collector, while reference 876counting can be implemented portably (as long as the functions :c:func:`malloc` 877and :c:func:`free` are available --- which the C Standard guarantees). Maybe some 878day a sufficiently portable automatic garbage collector will be available for C. 879Until then, we'll have to live with reference counts. 880 881While Python uses the traditional reference counting implementation, it also 882offers a cycle detector that works to detect reference cycles. This allows 883applications to not worry about creating direct or indirect circular references; 884these are the weakness of garbage collection implemented using only reference 885counting. Reference cycles consist of objects which contain (possibly indirect) 886references to themselves, so that each object in the cycle has a reference count 887which is non-zero. Typical reference counting implementations are not able to 888reclaim the memory belonging to any objects in a reference cycle, or referenced 889from the objects in the cycle, even though there are no further references to 890the cycle itself. 891 892The cycle detector is able to detect garbage cycles and can reclaim them. 893The :mod:`gc` module exposes a way to run the detector (the 894:func:`~gc.collect` function), as well as configuration 895interfaces and the ability to disable the detector at runtime. The cycle 896detector is considered an optional component; though it is included by default, 897it can be disabled at build time using the :option:`!--without-cycle-gc` option 898to the :program:`configure` script on Unix platforms (including Mac OS X). If 899the cycle detector is disabled in this way, the :mod:`gc` module will not be 900available. 901 902 903.. _refcountsinpython: 904 905Reference Counting in Python 906---------------------------- 907 908There are two macros, ``Py_INCREF(x)`` and ``Py_DECREF(x)``, which handle the 909incrementing and decrementing of the reference count. :c:func:`Py_DECREF` also 910frees the object when the count reaches zero. For flexibility, it doesn't call 911:c:func:`free` directly --- rather, it makes a call through a function pointer in 912the object's :dfn:`type object`. For this purpose (and others), every object 913also contains a pointer to its type object. 914 915The big question now remains: when to use ``Py_INCREF(x)`` and ``Py_DECREF(x)``? 916Let's first introduce some terms. Nobody "owns" an object; however, you can 917:dfn:`own a reference` to an object. An object's reference count is now defined 918as the number of owned references to it. The owner of a reference is 919responsible for calling :c:func:`Py_DECREF` when the reference is no longer 920needed. Ownership of a reference can be transferred. There are three ways to 921dispose of an owned reference: pass it on, store it, or call :c:func:`Py_DECREF`. 922Forgetting to dispose of an owned reference creates a memory leak. 923 924It is also possible to :dfn:`borrow` [#]_ a reference to an object. The 925borrower of a reference should not call :c:func:`Py_DECREF`. The borrower must 926not hold on to the object longer than the owner from which it was borrowed. 927Using a borrowed reference after the owner has disposed of it risks using freed 928memory and should be avoided completely [#]_. 929 930The advantage of borrowing over owning a reference is that you don't need to 931take care of disposing of the reference on all possible paths through the code 932--- in other words, with a borrowed reference you don't run the risk of leaking 933when a premature exit is taken. The disadvantage of borrowing over owning is 934that there are some subtle situations where in seemingly correct code a borrowed 935reference can be used after the owner from which it was borrowed has in fact 936disposed of it. 937 938A borrowed reference can be changed into an owned reference by calling 939:c:func:`Py_INCREF`. This does not affect the status of the owner from which the 940reference was borrowed --- it creates a new owned reference, and gives full 941owner responsibilities (the new owner must dispose of the reference properly, as 942well as the previous owner). 943 944 945.. _ownershiprules: 946 947Ownership Rules 948--------------- 949 950Whenever an object reference is passed into or out of a function, it is part of 951the function's interface specification whether ownership is transferred with the 952reference or not. 953 954Most functions that return a reference to an object pass on ownership with the 955reference. In particular, all functions whose function it is to create a new 956object, such as :c:func:`PyLong_FromLong` and :c:func:`Py_BuildValue`, pass 957ownership to the receiver. Even if the object is not actually new, you still 958receive ownership of a new reference to that object. For instance, 959:c:func:`PyLong_FromLong` maintains a cache of popular values and can return a 960reference to a cached item. 961 962Many functions that extract objects from other objects also transfer ownership 963with the reference, for instance :c:func:`PyObject_GetAttrString`. The picture 964is less clear, here, however, since a few common routines are exceptions: 965:c:func:`PyTuple_GetItem`, :c:func:`PyList_GetItem`, :c:func:`PyDict_GetItem`, and 966:c:func:`PyDict_GetItemString` all return references that you borrow from the 967tuple, list or dictionary. 968 969The function :c:func:`PyImport_AddModule` also returns a borrowed reference, even 970though it may actually create the object it returns: this is possible because an 971owned reference to the object is stored in ``sys.modules``. 972 973When you pass an object reference into another function, in general, the 974function borrows the reference from you --- if it needs to store it, it will use 975:c:func:`Py_INCREF` to become an independent owner. There are exactly two 976important exceptions to this rule: :c:func:`PyTuple_SetItem` and 977:c:func:`PyList_SetItem`. These functions take over ownership of the item passed 978to them --- even if they fail! (Note that :c:func:`PyDict_SetItem` and friends 979don't take over ownership --- they are "normal.") 980 981When a C function is called from Python, it borrows references to its arguments 982from the caller. The caller owns a reference to the object, so the borrowed 983reference's lifetime is guaranteed until the function returns. Only when such a 984borrowed reference must be stored or passed on, it must be turned into an owned 985reference by calling :c:func:`Py_INCREF`. 986 987The object reference returned from a C function that is called from Python must 988be an owned reference --- ownership is transferred from the function to its 989caller. 990 991 992.. _thinice: 993 994Thin Ice 995-------- 996 997There are a few situations where seemingly harmless use of a borrowed reference 998can lead to problems. These all have to do with implicit invocations of the 999interpreter, which can cause the owner of a reference to dispose of it. 1000 1001The first and most important case to know about is using :c:func:`Py_DECREF` on 1002an unrelated object while borrowing a reference to a list item. For instance:: 1003 1004 void 1005 bug(PyObject *list) 1006 { 1007 PyObject *item = PyList_GetItem(list, 0); 1008 1009 PyList_SetItem(list, 1, PyLong_FromLong(0L)); 1010 PyObject_Print(item, stdout, 0); /* BUG! */ 1011 } 1012 1013This function first borrows a reference to ``list[0]``, then replaces 1014``list[1]`` with the value ``0``, and finally prints the borrowed reference. 1015Looks harmless, right? But it's not! 1016 1017Let's follow the control flow into :c:func:`PyList_SetItem`. The list owns 1018references to all its items, so when item 1 is replaced, it has to dispose of 1019the original item 1. Now let's suppose the original item 1 was an instance of a 1020user-defined class, and let's further suppose that the class defined a 1021:meth:`__del__` method. If this class instance has a reference count of 1, 1022disposing of it will call its :meth:`__del__` method. 1023 1024Since it is written in Python, the :meth:`__del__` method can execute arbitrary 1025Python code. Could it perhaps do something to invalidate the reference to 1026``item`` in :c:func:`bug`? You bet! Assuming that the list passed into 1027:c:func:`bug` is accessible to the :meth:`__del__` method, it could execute a 1028statement to the effect of ``del list[0]``, and assuming this was the last 1029reference to that object, it would free the memory associated with it, thereby 1030invalidating ``item``. 1031 1032The solution, once you know the source of the problem, is easy: temporarily 1033increment the reference count. The correct version of the function reads:: 1034 1035 void 1036 no_bug(PyObject *list) 1037 { 1038 PyObject *item = PyList_GetItem(list, 0); 1039 1040 Py_INCREF(item); 1041 PyList_SetItem(list, 1, PyLong_FromLong(0L)); 1042 PyObject_Print(item, stdout, 0); 1043 Py_DECREF(item); 1044 } 1045 1046This is a true story. An older version of Python contained variants of this bug 1047and someone spent a considerable amount of time in a C debugger to figure out 1048why his :meth:`__del__` methods would fail... 1049 1050The second case of problems with a borrowed reference is a variant involving 1051threads. Normally, multiple threads in the Python interpreter can't get in each 1052other's way, because there is a global lock protecting Python's entire object 1053space. However, it is possible to temporarily release this lock using the macro 1054:c:macro:`Py_BEGIN_ALLOW_THREADS`, and to re-acquire it using 1055:c:macro:`Py_END_ALLOW_THREADS`. This is common around blocking I/O calls, to 1056let other threads use the processor while waiting for the I/O to complete. 1057Obviously, the following function has the same problem as the previous one:: 1058 1059 void 1060 bug(PyObject *list) 1061 { 1062 PyObject *item = PyList_GetItem(list, 0); 1063 Py_BEGIN_ALLOW_THREADS 1064 ...some blocking I/O call... 1065 Py_END_ALLOW_THREADS 1066 PyObject_Print(item, stdout, 0); /* BUG! */ 1067 } 1068 1069 1070.. _nullpointers: 1071 1072NULL Pointers 1073------------- 1074 1075In general, functions that take object references as arguments do not expect you 1076to pass them *NULL* pointers, and will dump core (or cause later core dumps) if 1077you do so. Functions that return object references generally return *NULL* only 1078to indicate that an exception occurred. The reason for not testing for *NULL* 1079arguments is that functions often pass the objects they receive on to other 1080function --- if each function were to test for *NULL*, there would be a lot of 1081redundant tests and the code would run more slowly. 1082 1083It is better to test for *NULL* only at the "source:" when a pointer that may be 1084*NULL* is received, for example, from :c:func:`malloc` or from a function that 1085may raise an exception. 1086 1087The macros :c:func:`Py_INCREF` and :c:func:`Py_DECREF` do not check for *NULL* 1088pointers --- however, their variants :c:func:`Py_XINCREF` and :c:func:`Py_XDECREF` 1089do. 1090 1091The macros for checking for a particular object type (``Pytype_Check()``) don't 1092check for *NULL* pointers --- again, there is much code that calls several of 1093these in a row to test an object against various different expected types, and 1094this would generate redundant tests. There are no variants with *NULL* 1095checking. 1096 1097The C function calling mechanism guarantees that the argument list passed to C 1098functions (``args`` in the examples) is never *NULL* --- in fact it guarantees 1099that it is always a tuple [#]_. 1100 1101It is a severe error to ever let a *NULL* pointer "escape" to the Python user. 1102 1103.. Frank Stajano: 1104 A pedagogically buggy example, along the lines of the previous listing, would 1105 be helpful here -- showing in more concrete terms what sort of actions could 1106 cause the problem. I can't very well imagine it from the description. 1107 1108 1109.. _cplusplus: 1110 1111Writing Extensions in C++ 1112========================= 1113 1114It is possible to write extension modules in C++. Some restrictions apply. If 1115the main program (the Python interpreter) is compiled and linked by the C 1116compiler, global or static objects with constructors cannot be used. This is 1117not a problem if the main program is linked by the C++ compiler. Functions that 1118will be called by the Python interpreter (in particular, module initialization 1119functions) have to be declared using ``extern "C"``. It is unnecessary to 1120enclose the Python header files in ``extern "C" {...}`` --- they use this form 1121already if the symbol ``__cplusplus`` is defined (all recent C++ compilers 1122define this symbol). 1123 1124 1125.. _using-capsules: 1126 1127Providing a C API for an Extension Module 1128========================================= 1129 1130.. sectionauthor:: Konrad Hinsen <hinsen@cnrs-orleans.fr> 1131 1132 1133Many extension modules just provide new functions and types to be used from 1134Python, but sometimes the code in an extension module can be useful for other 1135extension modules. For example, an extension module could implement a type 1136"collection" which works like lists without order. Just like the standard Python 1137list type has a C API which permits extension modules to create and manipulate 1138lists, this new collection type should have a set of C functions for direct 1139manipulation from other extension modules. 1140 1141At first sight this seems easy: just write the functions (without declaring them 1142``static``, of course), provide an appropriate header file, and document 1143the C API. And in fact this would work if all extension modules were always 1144linked statically with the Python interpreter. When modules are used as shared 1145libraries, however, the symbols defined in one module may not be visible to 1146another module. The details of visibility depend on the operating system; some 1147systems use one global namespace for the Python interpreter and all extension 1148modules (Windows, for example), whereas others require an explicit list of 1149imported symbols at module link time (AIX is one example), or offer a choice of 1150different strategies (most Unices). And even if symbols are globally visible, 1151the module whose functions one wishes to call might not have been loaded yet! 1152 1153Portability therefore requires not to make any assumptions about symbol 1154visibility. This means that all symbols in extension modules should be declared 1155``static``, except for the module's initialization function, in order to 1156avoid name clashes with other extension modules (as discussed in section 1157:ref:`methodtable`). And it means that symbols that *should* be accessible from 1158other extension modules must be exported in a different way. 1159 1160Python provides a special mechanism to pass C-level information (pointers) from 1161one extension module to another one: Capsules. A Capsule is a Python data type 1162which stores a pointer (:c:type:`void \*`). Capsules can only be created and 1163accessed via their C API, but they can be passed around like any other Python 1164object. In particular, they can be assigned to a name in an extension module's 1165namespace. Other extension modules can then import this module, retrieve the 1166value of this name, and then retrieve the pointer from the Capsule. 1167 1168There are many ways in which Capsules can be used to export the C API of an 1169extension module. Each function could get its own Capsule, or all C API pointers 1170could be stored in an array whose address is published in a Capsule. And the 1171various tasks of storing and retrieving the pointers can be distributed in 1172different ways between the module providing the code and the client modules. 1173 1174Whichever method you choose, it's important to name your Capsules properly. 1175The function :c:func:`PyCapsule_New` takes a name parameter 1176(:c:type:`const char \*`); you're permitted to pass in a *NULL* name, but 1177we strongly encourage you to specify a name. Properly named Capsules provide 1178a degree of runtime type-safety; there is no feasible way to tell one unnamed 1179Capsule from another. 1180 1181In particular, Capsules used to expose C APIs should be given a name following 1182this convention:: 1183 1184 modulename.attributename 1185 1186The convenience function :c:func:`PyCapsule_Import` makes it easy to 1187load a C API provided via a Capsule, but only if the Capsule's name 1188matches this convention. This behavior gives C API users a high degree 1189of certainty that the Capsule they load contains the correct C API. 1190 1191The following example demonstrates an approach that puts most of the burden on 1192the writer of the exporting module, which is appropriate for commonly used 1193library modules. It stores all C API pointers (just one in the example!) in an 1194array of :c:type:`void` pointers which becomes the value of a Capsule. The header 1195file corresponding to the module provides a macro that takes care of importing 1196the module and retrieving its C API pointers; client modules only have to call 1197this macro before accessing the C API. 1198 1199The exporting module is a modification of the :mod:`spam` module from section 1200:ref:`extending-simpleexample`. The function :func:`spam.system` does not call 1201the C library function :c:func:`system` directly, but a function 1202:c:func:`PySpam_System`, which would of course do something more complicated in 1203reality (such as adding "spam" to every command). This function 1204:c:func:`PySpam_System` is also exported to other extension modules. 1205 1206The function :c:func:`PySpam_System` is a plain C function, declared 1207``static`` like everything else:: 1208 1209 static int 1210 PySpam_System(const char *command) 1211 { 1212 return system(command); 1213 } 1214 1215The function :c:func:`spam_system` is modified in a trivial way:: 1216 1217 static PyObject * 1218 spam_system(PyObject *self, PyObject *args) 1219 { 1220 const char *command; 1221 int sts; 1222 1223 if (!PyArg_ParseTuple(args, "s", &command)) 1224 return NULL; 1225 sts = PySpam_System(command); 1226 return PyLong_FromLong(sts); 1227 } 1228 1229In the beginning of the module, right after the line :: 1230 1231 #include "Python.h" 1232 1233two more lines must be added:: 1234 1235 #define SPAM_MODULE 1236 #include "spammodule.h" 1237 1238The ``#define`` is used to tell the header file that it is being included in the 1239exporting module, not a client module. Finally, the module's initialization 1240function must take care of initializing the C API pointer array:: 1241 1242 PyMODINIT_FUNC 1243 PyInit_spam(void) 1244 { 1245 PyObject *m; 1246 static void *PySpam_API[PySpam_API_pointers]; 1247 PyObject *c_api_object; 1248 1249 m = PyModule_Create(&spammodule); 1250 if (m == NULL) 1251 return NULL; 1252 1253 /* Initialize the C API pointer array */ 1254 PySpam_API[PySpam_System_NUM] = (void *)PySpam_System; 1255 1256 /* Create a Capsule containing the API pointer array's address */ 1257 c_api_object = PyCapsule_New((void *)PySpam_API, "spam._C_API", NULL); 1258 1259 if (c_api_object != NULL) 1260 PyModule_AddObject(m, "_C_API", c_api_object); 1261 return m; 1262 } 1263 1264Note that ``PySpam_API`` is declared ``static``; otherwise the pointer 1265array would disappear when :func:`PyInit_spam` terminates! 1266 1267The bulk of the work is in the header file :file:`spammodule.h`, which looks 1268like this:: 1269 1270 #ifndef Py_SPAMMODULE_H 1271 #define Py_SPAMMODULE_H 1272 #ifdef __cplusplus 1273 extern "C" { 1274 #endif 1275 1276 /* Header file for spammodule */ 1277 1278 /* C API functions */ 1279 #define PySpam_System_NUM 0 1280 #define PySpam_System_RETURN int 1281 #define PySpam_System_PROTO (const char *command) 1282 1283 /* Total number of C API pointers */ 1284 #define PySpam_API_pointers 1 1285 1286 1287 #ifdef SPAM_MODULE 1288 /* This section is used when compiling spammodule.c */ 1289 1290 static PySpam_System_RETURN PySpam_System PySpam_System_PROTO; 1291 1292 #else 1293 /* This section is used in modules that use spammodule's API */ 1294 1295 static void **PySpam_API; 1296 1297 #define PySpam_System \ 1298 (*(PySpam_System_RETURN (*)PySpam_System_PROTO) PySpam_API[PySpam_System_NUM]) 1299 1300 /* Return -1 on error, 0 on success. 1301 * PyCapsule_Import will set an exception if there's an error. 1302 */ 1303 static int 1304 import_spam(void) 1305 { 1306 PySpam_API = (void **)PyCapsule_Import("spam._C_API", 0); 1307 return (PySpam_API != NULL) ? 0 : -1; 1308 } 1309 1310 #endif 1311 1312 #ifdef __cplusplus 1313 } 1314 #endif 1315 1316 #endif /* !defined(Py_SPAMMODULE_H) */ 1317 1318All that a client module must do in order to have access to the function 1319:c:func:`PySpam_System` is to call the function (or rather macro) 1320:c:func:`import_spam` in its initialization function:: 1321 1322 PyMODINIT_FUNC 1323 PyInit_client(void) 1324 { 1325 PyObject *m; 1326 1327 m = PyModule_Create(&clientmodule); 1328 if (m == NULL) 1329 return NULL; 1330 if (import_spam() < 0) 1331 return NULL; 1332 /* additional initialization can happen here */ 1333 return m; 1334 } 1335 1336The main disadvantage of this approach is that the file :file:`spammodule.h` is 1337rather complicated. However, the basic structure is the same for each function 1338that is exported, so it has to be learned only once. 1339 1340Finally it should be mentioned that Capsules offer additional functionality, 1341which is especially useful for memory allocation and deallocation of the pointer 1342stored in a Capsule. The details are described in the Python/C API Reference 1343Manual in the section :ref:`capsules` and in the implementation of Capsules (files 1344:file:`Include/pycapsule.h` and :file:`Objects/pycapsule.c` in the Python source 1345code distribution). 1346 1347.. rubric:: Footnotes 1348 1349.. [#] An interface for this function already exists in the standard module :mod:`os` 1350 --- it was chosen as a simple and straightforward example. 1351 1352.. [#] The metaphor of "borrowing" a reference is not completely correct: the owner 1353 still has a copy of the reference. 1354 1355.. [#] Checking that the reference count is at least 1 **does not work** --- the 1356 reference count itself could be in freed memory and may thus be reused for 1357 another object! 1358 1359.. [#] These guarantees don't hold when you use the "old" style calling convention --- 1360 this is still found in much existing code. 1361