3 % XXX PM explain how to add new types to Python
5 \title{Extending and Embedding the Python Interpreter
}
9 % Tell \index to actually write the .idx file
17 \chapter*
{Front Matter
\label{front
}}
26 Python is an interpreted, object-oriented programming language. This
27 document describes how to write modules in C or
\Cpp{} to extend the
28 Python interpreter with new modules. Those modules can define new
29 functions but also new object types and their methods. The
document
30 also describes how to embed the Python interpreter in another
31 application, for use as an extension language. Finally, it shows how
32 to compile and link extension modules so that they can be loaded
33 dynamically (at run time) into the interpreter, if the underlying
34 operating system supports this feature.
36 This
document assumes basic knowledge about Python. For an informal
37 introduction to the language, see the
38 \citetitle[../tut/tut.html
]{Python Tutorial
}. The
39 \citetitle[../ref/ref.html
]{Python Reference Manual
} gives a more
40 formal definition of the language. The
41 \citetitle[../lib/lib.html
]{Python Library Reference
} documents the
42 existing object types, functions and modules (both built-in and
43 written in Python) that give the language its wide application range.
45 For a detailed description of the whole Python/C API, see the separate
46 \citetitle[../api/api.html
]{Python/C API Reference Manual
}.
53 \chapter{Extending Python with C or
\Cpp{} \label{intro
}}
56 It is quite easy to add new built-in modules to Python, if you know
57 how to program in C. Such
\dfn{extension modules
} can do two things
58 that can't be done directly in Python: they can implement new built-in
59 object types, and they can call C library functions and system calls.
61 To support extensions, the Python API (Application Programmers
62 Interface) defines a set of functions, macros and variables that
63 provide access to most aspects of the Python run-time system. The
64 Python API is incorporated in a C source file by including the header
67 The compilation of an extension module depends on its intended use as
68 well as on your system setup; details are given in later chapters.
71 \section{A Simple Example
72 \label{simpleExample
}}
74 Let's create an extension module called
\samp{spam
} (the favorite food
75 of Monty Python fans...) and let's say we want to create a Python
76 interface to the C library function
\cfunction{system()
}.
\footnote{An
77 interface for this function already exists in the standard module
78 \module{os
} --- it was chosen as a simple and straightfoward example.
}
79 This function takes a null-terminated character string as argument and
80 returns an integer. We want this function to be callable from Python
85 >>> status = spam.system("ls -l")
88 Begin by creating a file
\file{spammodule.c
}. (Historically, if a
89 module is called
\samp{spam
}, the C file containing its implementation
90 is called
\file{spammodule.c
}; if the module name is very long, like
91 \samp{spammify
}, the module name can be just
\file{spammify.c
}.)
93 The first line of our file can be:
99 which pulls in the Python API (you can add a comment describing the
100 purpose of the module and a copyright notice if you like).
102 All user-visible symbols defined by
\code{"Python.h"
} have a prefix of
103 \samp{Py
} or
\samp{PY
}, except those defined in standard header files.
104 For convenience, and since they are used extensively by the Python
105 interpreter,
\code{"Python.h"
} includes a few standard header files:
106 \code{<stdio.h>
},
\code{<string.h>
},
\code{<errno.h>
}, and
107 \code{<stdlib.h>
}. If the latter header file does not exist on your
108 system, it declares the functions
\cfunction{malloc()
},
109 \cfunction{free()
} and
\cfunction{realloc()
} directly.
111 The next thing we add to our module file is the C function that will
112 be called when the Python expression
\samp{spam.system(
\var{string
})
}
113 is evaluated (we'll see shortly how it ends up being called):
117 spam_system(self, args)
124 if (!PyArg_ParseTuple(args, "s", &command))
126 sts = system(command);
127 return Py_BuildValue("i", sts);
131 There is a straightforward translation from the argument list in
132 Python (for example, the single expression
\code{"ls -l"
}) to the
133 arguments passed to the C function. The C function always has two
134 arguments, conventionally named
\var{self
} and
\var{args
}.
136 The
\var{self
} argument is only used when the C function implements a
137 built-in method, not a function. In the example,
\var{self
} will
138 always be a
\NULL{} pointer, since we are defining a function, not a
139 method. (This is done so that the interpreter doesn't have to
140 understand two different types of C functions.)
142 The
\var{args
} argument will be a pointer to a Python tuple object
143 containing the arguments. Each item of the tuple corresponds to an
144 argument in the call's argument list. The arguments are Python
145 objects --- in order to do anything with them in our C function we have
146 to convert them to C values. The function
\cfunction{PyArg_ParseTuple()
}
147 in the Python API checks the argument types and converts them to C
148 values. It uses a template string to determine the required types of
149 the arguments as well as the types of the C variables into which to
150 store the converted values. More about this later.
152 \cfunction{PyArg_ParseTuple()
} returns true (nonzero) if all arguments have
153 the right type and its components have been stored in the variables
154 whose addresses are passed. It returns false (zero) if an invalid
155 argument list was passed. In the latter case it also raises an
156 appropriate exception so the calling function can return
157 \NULL{} immediately (as we saw in the example).
160 \section{Intermezzo: Errors and Exceptions
163 An important convention throughout the Python interpreter is the
164 following: when a function fails, it should set an exception condition
165 and return an error value (usually a
\NULL{} pointer). Exceptions
166 are stored in a static global variable inside the interpreter; if this
167 variable is
\NULL{} no exception has occurred. A second global
168 variable stores the ``associated value'' of the exception (the second
169 argument to
\keyword{raise
}). A third variable contains the stack
170 traceback in case the error originated in Python code. These three
171 variables are the C equivalents of the Python variables
172 \code{sys.exc_type
},
\code{sys.exc_value
} and
\code{sys.exc_traceback
} (see
173 the section on module
\module{sys
} in the
174 \citetitle[../lib/lib.html
]{Python Library Reference
}). It is
175 important to know about them to understand how errors are passed
178 The Python API defines a number of functions to set various types of
181 The most common one is
\cfunction{PyErr_SetString()
}. Its arguments
182 are an exception object and a C string. The exception object is
183 usually a predefined object like
\cdata{PyExc_ZeroDivisionError
}. The
184 C string indicates the cause of the error and is converted to a
185 Python string object and stored as the ``associated value'' of the
188 Another useful function is
\cfunction{PyErr_SetFromErrno()
}, which only
189 takes an exception argument and constructs the associated value by
190 inspection of the global variable
\cdata{errno
}. The most
191 general function is
\cfunction{PyErr_SetObject()
}, which takes two object
192 arguments, the exception and its associated value. You don't need to
193 \cfunction{Py_INCREF()
} the objects passed to any of these functions.
195 You can test non-destructively whether an exception has been set with
196 \cfunction{PyErr_Occurred()
}. This returns the current exception object,
197 or
\NULL{} if no exception has occurred. You normally don't need
198 to call
\cfunction{PyErr_Occurred()
} to see whether an error occurred in a
199 function call, since you should be able to tell from the return value.
201 When a function
\var{f
} that calls another function
\var{g
} detects
202 that the latter fails,
\var{f
} should itself return an error value
203 (usually
\NULL{} or
\code{-
1}). It should
\emph{not
} call one of the
204 \cfunction{PyErr_*()
} functions --- one has already been called by
\var{g
}.
205 \var{f
}'s caller is then supposed to also return an error indication
206 to
\emph{its
} caller, again
\emph{without
} calling
\cfunction{PyErr_*()
},
207 and so on --- the most detailed cause of the error was already
208 reported by the function that first detected it. Once the error
209 reaches the Python interpreter's main loop, this aborts the currently
210 executing Python code and tries to find an exception handler specified
211 by the Python programmer.
213 (There are situations where a module can actually give a more detailed
214 error message by calling another
\cfunction{PyErr_*()
} function, and in
215 such cases it is fine to do so. As a general rule, however, this is
216 not necessary, and can cause information about the cause of the error
217 to be lost: most operations can fail for a variety of reasons.)
219 To ignore an exception set by a function call that failed, the exception
220 condition must be cleared explicitly by calling
\cfunction{PyErr_Clear()
}.
221 The only time C code should call
\cfunction{PyErr_Clear()
} is if it doesn't
222 want to pass the error on to the interpreter but wants to handle it
223 completely by itself (possibly by trying something else, or pretending
226 Every failing
\cfunction{malloc()
} call must be turned into an
227 exception --- the direct caller of
\cfunction{malloc()
} (or
228 \cfunction{realloc()
}) must call
\cfunction{PyErr_NoMemory()
} and
229 return a failure indicator itself. All the object-creating functions
230 (for example,
\cfunction{PyInt_FromLong()
}) already do this, so this
231 note is only relevant to those who call
\cfunction{malloc()
} directly.
233 Also note that, with the important exception of
234 \cfunction{PyArg_ParseTuple()
} and friends, functions that return an
235 integer status usually return a positive value or zero for success and
236 \code{-
1} for failure, like
\UNIX{} system calls.
238 Finally, be careful to clean up garbage (by making
239 \cfunction{Py_XDECREF()
} or
\cfunction{Py_DECREF()
} calls for objects
240 you have already created) when you return an error indicator!
242 The choice of which exception to raise is entirely yours. There are
243 predeclared C objects corresponding to all built-in Python exceptions,
244 such as
\cdata{PyExc_ZeroDivisionError
}, which you can use directly.
245 Of course, you should choose exceptions wisely --- don't use
246 \cdata{PyExc_TypeError
} to mean that a file couldn't be opened (that
247 should probably be
\cdata{PyExc_IOError
}). If something's wrong with
248 the argument list, the
\cfunction{PyArg_ParseTuple()
} function usually
249 raises
\cdata{PyExc_TypeError
}. If you have an argument whose value
250 must be in a particular range or must satisfy other conditions,
251 \cdata{PyExc_ValueError
} is appropriate.
253 You can also define a new exception that is unique to your module.
254 For this, you usually declare a static object variable at the
255 beginning of your file:
258 static PyObject *SpamError;
261 and initialize it in your module's initialization function
262 (
\cfunction{initspam()
}) with an exception object (leaving out
263 the error checking for now):
271 m = Py_InitModule("spam", SpamMethods);
272 d = PyModule_GetDict(m);
273 SpamError = PyErr_NewException("spam.error", NULL, NULL);
274 PyDict_SetItemString(d, "error", SpamError);
278 Note that the Python name for the exception object is
279 \exception{spam.error
}. The
\cfunction{PyErr_NewException()
} function
280 may create a class with the base class being
\exception{Exception
}
281 (unless another class is passed in instead of
\NULL), described in the
282 \citetitle[../lib/lib.html
]{Python Library Reference
} under ``Built-in
285 Note also that the
\cdata{SpamError
} variable retains a reference to
286 the newly created exception class; this is intentional! Since the
287 exception could be removed from the module by external code, an owned
288 reference to the class is needed to ensure that it will not be
289 discarded, causing
\cdata{SpamError
} to become a dangling pointer.
290 Should it become a dangling pointer, C code which raises the exception
291 could cause a core dump or other unintended side effects.
294 \section{Back to the Example
295 \label{backToExample
}}
297 Going back to our example function, you should now be able to
298 understand this statement:
301 if (!PyArg_ParseTuple(args, "s", &command))
305 It returns
\NULL{} (the error indicator for functions returning
306 object pointers) if an error is detected in the argument list, relying
307 on the exception set by
\cfunction{PyArg_ParseTuple()
}. Otherwise the
308 string value of the argument has been copied to the local variable
309 \cdata{command
}. This is a pointer assignment and you are not supposed
310 to modify the string to which it points (so in Standard C, the variable
311 \cdata{command
} should properly be declared as
\samp{const char
314 The next statement is a call to the
\UNIX{} function
315 \cfunction{system()
}, passing it the string we just got from
316 \cfunction{PyArg_ParseTuple()
}:
319 sts = system(command);
322 Our
\function{spam.system()
} function must return the value of
323 \cdata{sts
} as a Python object. This is done using the function
324 \cfunction{Py_BuildValue()
}, which is something like the inverse of
325 \cfunction{PyArg_ParseTuple()
}: it takes a format string and an
326 arbitrary number of C values, and returns a new Python object.
327 More info on
\cfunction{Py_BuildValue()
} is given later.
330 return Py_BuildValue("i", sts);
333 In this case, it will return an integer object. (Yes, even integers
334 are objects on the heap in Python!)
336 If you have a C function that returns no useful argument (a function
337 returning
\ctype{void
}), the corresponding Python function must return
338 \code{None
}. You need this idiom to do so:
345 \cdata{Py_None
} is the C name for the special Python object
346 \code{None
}. It is a genuine Python object rather than a
\NULL{}
347 pointer, which means ``error'' in most contexts, as we have seen.
350 \section{The Module's Method Table and Initialization Function
353 I promised to show how
\cfunction{spam_system()
} is called from Python
354 programs. First, we need to list its name and address in a ``method
358 static PyMethodDef SpamMethods
[] =
{
360 {"system", spam_system, METH_VARARGS
},
362 {NULL, NULL
} /* Sentinel */
366 Note the third entry (
\samp{METH_VARARGS
}). This is a flag telling
367 the interpreter the calling convention to be used for the C
368 function. It should normally always be
\samp{METH_VARARGS
} or
369 \samp{METH_VARARGS | METH_KEYWORDS
}; a value of
\code{0} means that an
370 obsolete variant of
\cfunction{PyArg_ParseTuple()
} is used.
372 When using only
\samp{METH_VARARGS
}, the function should expect
373 the Python-level parameters to be passed in as a tuple acceptable for
374 parsing via
\cfunction{PyArg_ParseTuple()
}; more information on this
375 function is provided below.
377 The
\constant{METH_KEYWORDS
} bit may be set in the third field if
378 keyword arguments should be passed to the function. In this case, the
379 C function should accept a third
\samp{PyObject *
} parameter which
380 will be a dictionary of keywords. Use
381 \cfunction{PyArg_ParseTupleAndKeywords()
} to parse the arguments to
384 The method table must be passed to the interpreter in the module's
385 initialization function. The initialization function must be named
386 \cfunction{init
\var{name
}()
}, where
\var{name
} is the name of the
387 module, and should be the only non-
\keyword{static
} item defined in
394 (void) Py_InitModule("spam", SpamMethods);
398 Note that for
\Cpp, this method must be declared
\code{extern "C"
}.
400 When the Python program imports module
\module{spam
} for the first
401 time,
\cfunction{initspam()
} is called. (See below for comments about
402 embedding Python.) It calls
403 \cfunction{Py_InitModule()
}, which creates a ``module object'' (which
404 is inserted in the dictionary
\code{sys.modules
} under the key
405 \code{"spam"
}), and inserts built-in function objects into the newly
406 created module based upon the table (an array of
\ctype{PyMethodDef
}
407 structures) that was passed as its second argument.
408 \cfunction{Py_InitModule()
} returns a pointer to the module object
409 that it creates (which is unused here). It aborts with a fatal error
410 if the module could not be initialized satisfactorily, so the caller
411 doesn't need to check for errors.
413 When embedding Python, the
\cfunction{initspam()
} function is not
414 called automatically unless there's an entry in the
415 \cdata{_PyImport_Inittab
} table. The easiest way to handle this is to
416 statically initialize your statically-linked modules by directly
417 calling
\cfunction{initspam()
} after the call to
418 \cfunction{Py_Initialize()
} or
\cfunction{PyMac_Initialize()
}:
421 int main(int argc, char **argv)
423 /* Pass argv
[0] to the Python interpreter */
424 Py_SetProgramName(argv
[0]);
426 /* Initialize the Python interpreter. Required. */
429 /* Add a static module */
433 An example may be found in the file
\file{Demo/embed/demo.c
} in the
434 Python source distribution.
436 \strong{Note:
} Removing entries from
\code{sys.modules
} or importing
437 compiled modules into multiple interpreters within a process (or
438 following a
\cfunction{fork()
} without an intervening
439 \cfunction{exec()
}) can create problems for some extension modules.
440 Extension module authors should exercise caution when initializing
441 internal data structures.
442 Note also that the
\function{reload()
} function can be used with
443 extension modules, and will call the module initialization function
444 (
\cfunction{initspam()
} in the example), but will not load the module
445 again if it was loaded from a dynamically loadable object file
446 (
\file{.so
} on
\UNIX,
\file{.dll
} on Windows).
448 A more substantial example module is included in the Python source
449 distribution as
\file{Modules/xxmodule.c
}. This file may be used as a
450 template or simply read as an example. The
\program{modulator.py
}
451 script included in the source distribution or Windows install provides
452 a simple graphical user interface for declaring the functions and
453 objects which a module should implement, and can generate a template
454 which can be filled in. The script lives in the
455 \file{Tools/modulator/
} directory; see the
\file{README
} file there
456 for more information.
459 \section{Compilation and Linkage
462 There are two more things to do before you can use your new extension:
463 compiling and linking it with the Python system. If you use dynamic
464 loading, the details depend on the style of dynamic loading your
465 system uses; see the chapters about building extension modules on
466 \UNIX{} (chapter
\ref{building-on-unix
}) and Windows (chapter
467 \ref{building-on-windows
}) for more information about this.
468 % XXX Add information about MacOS
470 If you can't use dynamic loading, or if you want to make your module a
471 permanent part of the Python interpreter, you will have to change the
472 configuration setup and rebuild the interpreter. Luckily, this is
473 very simple: just place your file (
\file{spammodule.c
} for example) in
474 the
\file{Modules/
} directory of an unpacked source distribution, add
475 a line to the file
\file{Modules/Setup.local
} describing your file:
481 and rebuild the interpreter by running
\program{make
} in the toplevel
482 directory. You can also run
\program{make
} in the
\file{Modules/
}
483 subdirectory, but then you must first rebuild
\file{Makefile
}
484 there by running `
\program{make
} Makefile'. (This is necessary each
485 time you change the
\file{Setup
} file.)
487 If your module requires additional libraries to link with, these can
488 be listed on the line in the configuration file as well, for instance:
491 spam spammodule.o -lX11
494 \section{Calling Python Functions from C
495 \label{callingPython
}}
497 So far we have concentrated on making C functions callable from
498 Python. The reverse is also useful: calling Python functions from C.
499 This is especially the case for libraries that support so-called
500 ``callback'' functions. If a C interface makes use of callbacks, the
501 equivalent Python often needs to provide a callback mechanism to the
502 Python programmer; the implementation will require calling the Python
503 callback functions from a C callback. Other uses are also imaginable.
505 Fortunately, the Python interpreter is easily called recursively, and
506 there is a standard interface to call a Python function. (I won't
507 dwell on how to call the Python parser with a particular string as
508 input --- if you're interested, have a look at the implementation of
509 the
\programopt{-c
} command line option in
\file{Python/pythonmain.c
}
510 from the Python source code.)
512 Calling a Python function is easy. First, the Python program must
513 somehow pass you the Python function object. You should provide a
514 function (or some other interface) to do this. When this function is
515 called, save a pointer to the Python function object (be careful to
516 \cfunction{Py_INCREF()
} it!) in a global variable --- or wherever you
517 see fit. For example, the following function might be part of a module
521 static PyObject *my_callback = NULL;
524 my_set_callback(dummy, args)
525 PyObject *dummy, *args;
527 PyObject *result = NULL;
530 if (PyArg_ParseTuple(args, "O:set_callback", &temp))
{
531 if (!PyCallable_Check(temp))
{
532 PyErr_SetString(PyExc_TypeError, "parameter must be callable");
535 Py_XINCREF(temp); /* Add a reference to new callback */
536 Py_XDECREF(my_callback); /* Dispose of previous callback */
537 my_callback = temp; /* Remember new callback */
538 /* Boilerplate to return "None" */
546 This function must be registered with the interpreter using the
547 \constant{METH_VARARGS
} flag; this is described in section
548 \ref{methodTable
}, ``The Module's Method Table and Initialization
549 Function.'' The
\cfunction{PyArg_ParseTuple()
} function and its
550 arguments are documented in section
\ref{parseTuple
}, ``Format Strings
551 for
\cfunction{PyArg_ParseTuple()
}.''
553 The macros
\cfunction{Py_XINCREF()
} and
\cfunction{Py_XDECREF()
}
554 increment/decrement the reference count of an object and are safe in
555 the presence of
\NULL{} pointers (but note that
\var{temp
} will not be
556 \NULL{} in this context). More info on them in section
557 \ref{refcounts
}, ``Reference Counts.''
559 Later, when it is time to call the function, you call the C function
560 \cfunction{PyEval_CallObject()
}. This function has two arguments, both
561 pointers to arbitrary Python objects: the Python function, and the
562 argument list. The argument list must always be a tuple object, whose
563 length is the number of arguments. To call the Python function with
564 no arguments, pass an empty tuple; to call it with one argument, pass
565 a singleton tuple.
\cfunction{Py_BuildValue()
} returns a tuple when its
566 format string consists of zero or more format codes between
567 parentheses. For example:
576 /* Time to call the callback */
577 arglist = Py_BuildValue("(i)", arg);
578 result = PyEval_CallObject(my_callback, arglist);
582 \cfunction{PyEval_CallObject()
} returns a Python object pointer: this is
583 the return value of the Python function.
\cfunction{PyEval_CallObject()
} is
584 ``reference-count-neutral'' with respect to its arguments. In the
585 example a new tuple was created to serve as the argument list, which
586 is
\cfunction{Py_DECREF()
}-ed immediately after the call.
588 The return value of
\cfunction{PyEval_CallObject()
} is ``new'': either it
589 is a brand new object, or it is an existing object whose reference
590 count has been incremented. So, unless you want to save it in a
591 global variable, you should somehow
\cfunction{Py_DECREF()
} the result,
592 even (especially!) if you are not interested in its value.
594 Before you do this, however, it is important to check that the return
595 value isn't
\NULL{}. If it is, the Python function terminated by
596 raising an exception. If the C code that called
597 \cfunction{PyEval_CallObject()
} is called from Python, it should now
598 return an error indication to its Python caller, so the interpreter
599 can print a stack trace, or the calling Python code can handle the
600 exception. If this is not possible or desirable, the exception should
601 be cleared by calling
\cfunction{PyErr_Clear()
}. For example:
605 return NULL; /* Pass error back */
610 Depending on the desired interface to the Python callback function,
611 you may also have to provide an argument list to
612 \cfunction{PyEval_CallObject()
}. In some cases the argument list is
613 also provided by the Python program, through the same interface that
614 specified the callback function. It can then be saved and used in the
615 same manner as the function object. In other cases, you may have to
616 construct a new tuple to pass as the argument list. The simplest way
617 to do this is to call
\cfunction{Py_BuildValue()
}. For example, if
618 you want to pass an integral event code, you might use the following
624 arglist = Py_BuildValue("(l)", eventcode);
625 result = PyEval_CallObject(my_callback, arglist);
628 return NULL; /* Pass error back */
629 /* Here maybe use the result */
633 Note the placement of
\samp{Py_DECREF(arglist)
} immediately after the
634 call, before the error check! Also note that strictly spoken this
635 code is not complete:
\cfunction{Py_BuildValue()
} may run out of
636 memory, and this should be checked.
639 \section{Extracting Parameters in Extension Functions
642 The
\cfunction{PyArg_ParseTuple()
} function is declared as follows:
645 int PyArg_ParseTuple(PyObject *arg, char *format, ...);
648 The
\var{arg
} argument must be a tuple object containing an argument
649 list passed from Python to a C function. The
\var{format
} argument
650 must be a format string, whose syntax is explained below. The
651 remaining arguments must be addresses of variables whose type is
652 determined by the format string. For the conversion to succeed, the
653 \var{arg
} object must match the format and the format must be
656 Note that while
\cfunction{PyArg_ParseTuple()
} checks that the Python
657 arguments have the required types, it cannot check the validity of the
658 addresses of C variables passed to the call: if you make mistakes
659 there, your code will probably crash or at least overwrite random bits
660 in memory. So be careful!
662 A format string consists of zero or more ``format units''. A format
663 unit describes one Python object; it is usually a single character or
664 a parenthesized sequence of format units. With a few exceptions, a
665 format unit that is not a parenthesized sequence normally corresponds
666 to a single address argument to
\cfunction{PyArg_ParseTuple()
}. In the
667 following description, the quoted form is the format unit; the entry
668 in (round) parentheses is the Python object type that matches the
669 format unit; and the entry in
[square
] brackets is the type of the C
670 variable(s) whose address should be passed. (Use the
\samp{\&
}
671 operator to pass a variable's address.)
673 Note that any Python object references which are provided to the
674 caller are
\emph{borrowed
} references; do not decrement their
679 \item[\samp{s
} (string or Unicode object)
{[char *
]}]
680 Convert a Python string or Unicode object to a C pointer to a
681 character string. You must not provide storage for the string
682 itself; a pointer to an existing string is stored into the character
683 pointer variable whose address you pass. The C string is
684 null-terminated. The Python string must not contain embedded null
685 bytes; if it does, a
\exception{TypeError
} exception is raised.
686 Unicode objects are converted to C strings using the default
687 encoding. If this conversion fails, an
\exception{UnicodeError
} is
690 \item[\samp{s\#
} (string, Unicode or any read buffer compatible object)
692 This variant on
\samp{s
} stores into two C variables, the first one a
693 pointer to a character string, the second one its length. In this
694 case the Python string may contain embedded null bytes. Unicode
695 objects pass back a pointer to the default encoded string version of the
696 object if such a conversion is possible. All other read buffer
697 compatible objects pass back a reference to the raw internal data
700 \item[\samp{z
} (string or
\code{None
})
{[char *
]}]
701 Like
\samp{s
}, but the Python object may also be
\code{None
}, in which
702 case the C pointer is set to
\NULL{}.
704 \item[\samp{z\#
} (string or
\code{None
} or any read buffer compatible object)
706 This is to
\samp{s\#
} as
\samp{z
} is to
\samp{s
}.
708 \item[\samp{u
} (Unicode object)
{[Py_UNICODE *
]}]
709 Convert a Python Unicode object to a C pointer to a null-terminated
710 buffer of
16-bit Unicode (UTF-
16) data. As with
\samp{s
}, there is no need
711 to provide storage for the Unicode data buffer; a pointer to the
712 existing Unicode data is stored into the Py_UNICODE pointer variable whose
715 \item[\samp{u\#
} (Unicode object)
{[Py_UNICODE *, int
]}]
716 This variant on
\samp{u
} stores into two C variables, the first one
717 a pointer to a Unicode data buffer, the second one its length.
719 \item[\samp{es
} (string, Unicode object or character buffer compatible
720 object)
{[const char *encoding, char **buffer
]}]
721 This variant on
\samp{s
} is used for encoding Unicode and objects
722 convertible to Unicode into a character buffer. It only works for
723 encoded data without embedded
\NULL{} bytes.
725 The variant reads one C variable and stores into two C variables, the
726 first one a pointer to an encoding name string (
\var{encoding
}), and the
727 second a pointer to a pointer to a character buffer (
\var{**buffer
},
728 the buffer used for storing the encoded data).
730 The encoding name must map to a registered codec. If set to
\NULL{},
731 the default encoding is used.
733 \cfunction{PyArg_ParseTuple()
} will allocate a buffer of the needed
734 size using
\cfunction{PyMem_NEW()
}, copy the encoded data into this
735 buffer and adjust
\var{*buffer
} to reference the newly allocated
736 storage. The caller is responsible for calling
737 \cfunction{PyMem_Free()
} to free the allocated buffer after usage.
739 \item[\samp{et
} (string, Unicode object or character buffer compatible
740 object)
{[const char *encoding, char **buffer
]}]
741 Same as
\samp{es
} except that string objects are passed through without
742 recoding them. Instead, the implementation assumes that the string
743 object uses the encoding passed in as parameter.
745 \item[\samp{es\#
} (string, Unicode object or character buffer compatible
746 object)
{[const char *encoding, char **buffer, int *buffer_length
]}]
747 This variant on
\samp{s\#
} is used for encoding Unicode and objects
748 convertible to Unicode into a character buffer. It reads one C
749 variable and stores into three C variables, the first one a pointer to
750 an encoding name string (
\var{encoding
}), the second a pointer to a
751 pointer to a character buffer (
\var{**buffer
}, the buffer used for
752 storing the encoded data) and the third one a pointer to an integer
753 (
\var{*buffer_length
}, the buffer length).
755 The encoding name must map to a registered codec. If set to
\NULL{},
756 the default encoding is used.
758 There are two modes of operation:
760 If
\var{*buffer
} points a
\NULL{} pointer,
761 \cfunction{PyArg_ParseTuple()
} will allocate a buffer of the needed
762 size using
\cfunction{PyMem_NEW()
}, copy the encoded data into this
763 buffer and adjust
\var{*buffer
} to reference the newly allocated
764 storage. The caller is responsible for calling
765 \cfunction{PyMem_Free()
} to free the allocated buffer after usage.
767 If
\var{*buffer
} points to a non-
\NULL{} pointer (an already allocated
768 buffer),
\cfunction{PyArg_ParseTuple()
} will use this location as
769 buffer and interpret
\var{*buffer_length
} as buffer size. It will then
770 copy the encoded data into the buffer and
0-terminate it. Buffer
771 overflow is signalled with an exception.
773 In both cases,
\var{*buffer_length
} is set to the length of the
774 encoded data without the trailing
0-byte.
776 \item[\samp{et\#
} (string, Unicode object or character buffer compatible
777 object)
{[const char *encoding, char **buffer
]}]
778 Same as
\samp{es\#
} except that string objects are passed through without
779 recoding them. Instead, the implementation assumes that the string
780 object uses the encoding passed in as parameter.
782 \item[\samp{b
} (integer)
{[char
]}]
783 Convert a Python integer to a tiny int, stored in a C
\ctype{char
}.
785 \item[\samp{h
} (integer)
{[short int
]}]
786 Convert a Python integer to a C
\ctype{short int
}.
788 \item[\samp{i
} (integer)
{[int
]}]
789 Convert a Python integer to a plain C
\ctype{int
}.
791 \item[\samp{l
} (integer)
{[long int
]}]
792 Convert a Python integer to a C
\ctype{long int
}.
794 \item[\samp{c
} (string of length
1)
{[char
]}]
795 Convert a Python character, represented as a string of length
1, to a
798 \item[\samp{f
} (float)
{[float
]}]
799 Convert a Python floating point number to a C
\ctype{float
}.
801 \item[\samp{d
} (float)
{[double
]}]
802 Convert a Python floating point number to a C
\ctype{double
}.
804 \item[\samp{D
} (complex)
{[Py_complex
]}]
805 Convert a Python complex number to a C
\ctype{Py_complex
} structure.
807 \item[\samp{O
} (object)
{[PyObject *
]}]
808 Store a Python object (without any conversion) in a C object pointer.
809 The C program thus receives the actual object that was passed. The
810 object's reference count is not increased. The pointer stored is not
813 \item[\samp{O!
} (object)
{[\var{typeobject
}, PyObject *
]}]
814 Store a Python object in a C object pointer. This is similar to
815 \samp{O
}, but takes two C arguments: the first is the address of a
816 Python type object, the second is the address of the C variable (of
817 type
\ctype{PyObject *
}) into which the object pointer is stored.
818 If the Python object does not have the required type,
819 \exception{TypeError
} is raised.
821 \item[\samp{O\&
} (object)
{[\var{converter
},
\var{anything
}]}]
822 Convert a Python object to a C variable through a
\var{converter
}
823 function. This takes two arguments: the first is a function, the
824 second is the address of a C variable (of arbitrary type), converted
825 to
\ctype{void *
}. The
\var{converter
} function in turn is called as
828 \var{status
}\code{ =
}\var{converter
}\code{(
}\var{object
},
\var{address
}\code{);
}
830 where
\var{object
} is the Python object to be converted and
831 \var{address
} is the
\ctype{void *
} argument that was passed to
832 \cfunction{PyArg_ConvertTuple()
}. The returned
\var{status
} should be
833 \code{1} for a successful conversion and
\code{0} if the conversion
834 has failed. When the conversion fails, the
\var{converter
} function
835 should raise an exception.
837 \item[\samp{S
} (string)
{[PyStringObject *
]}]
838 Like
\samp{O
} but requires that the Python object is a string object.
839 Raises
\exception{TypeError
} if the object is not a string object.
840 The C variable may also be declared as
\ctype{PyObject *
}.
842 \item[\samp{U
} (Unicode string)
{[PyUnicodeObject *
]}]
843 Like
\samp{O
} but requires that the Python object is a Unicode object.
844 Raises
\exception{TypeError
} if the object is not a Unicode object.
845 The C variable may also be declared as
\ctype{PyObject *
}.
847 \item[\samp{t\#
} (read-only character buffer)
{[char *, int
]}]
848 Like
\samp{s\#
}, but accepts any object which implements the read-only
849 buffer interface. The
\ctype{char *
} variable is set to point to the
850 first byte of the buffer, and the
\ctype{int
} is set to the length of
851 the buffer. Only single-segment buffer objects are accepted;
852 \exception{TypeError
} is raised for all others.
854 \item[\samp{w
} (read-write character buffer)
{[char *
]}]
855 Similar to
\samp{s
}, but accepts any object which implements the
856 read-write buffer interface. The caller must determine the length of
857 the buffer by other means, or use
\samp{w\#
} instead. Only
858 single-segment buffer objects are accepted;
\exception{TypeError
} is
859 raised for all others.
861 \item[\samp{w\#
} (read-write character buffer)
{[char *, int
]}]
862 Like
\samp{s\#
}, but accepts any object which implements the
863 read-write buffer interface. The
\ctype{char *
} variable is set to
864 point to the first byte of the buffer, and the
\ctype{int
} is set to
865 the length of the buffer. Only single-segment buffer objects are
866 accepted;
\exception{TypeError
} is raised for all others.
868 \item[\samp{(
\var{items
})
} (tuple)
{[\var{matching-items
}]}]
869 The object must be a Python sequence whose length is the number of
870 format units in
\var{items
}. The C arguments must correspond to the
871 individual format units in
\var{items
}. Format units for sequences
874 \strong{Note:
} Prior to Python version
1.5.2, this format specifier
875 only accepted a tuple containing the individual parameters, not an
876 arbitrary sequence. Code which previously caused
877 \exception{TypeError
} to be raised here may now proceed without an
878 exception. This is not expected to be a problem for existing code.
882 It is possible to pass Python long integers where integers are
883 requested; however no proper range checking is done --- the most
884 significant bits are silently truncated when the receiving field is
885 too small to receive the value (actually, the semantics are inherited
886 from downcasts in C --- your mileage may vary).
888 A few other characters have a meaning in a format string. These may
889 not occur inside nested parentheses. They are:
894 Indicates that the remaining arguments in the Python argument list are
895 optional. The C variables corresponding to optional arguments should
896 be initialized to their default value --- when an optional argument is
897 not specified,
\cfunction{PyArg_ParseTuple()
} does not touch the contents
898 of the corresponding C variable(s).
901 The list of format units ends here; the string after the colon is used
902 as the function name in error messages (the ``associated value'' of
903 the exception that
\cfunction{PyArg_ParseTuple()
} raises).
906 The list of format units ends here; the string after the semicolon is
907 used as the error message
\emph{instead
} of the default error message.
908 Clearly,
\samp{:
} and
\samp{;
} mutually exclude each other.
921 ok = PyArg_ParseTuple(args, ""); /* No arguments */
922 /* Python call: f() */
926 ok = PyArg_ParseTuple(args, "s", &s); /* A string */
927 /* Possible Python call: f('whoops!') */
931 ok = PyArg_ParseTuple(args, "lls", &k, &l, &s); /* Two longs and a string */
932 /* Possible Python call: f(
1,
2, 'three') */
936 ok = PyArg_ParseTuple(args, "(ii)s#", &i, &j, &s, &size);
937 /* A pair of ints and a string, whose size is also returned */
938 /* Possible Python call: f((
1,
2), 'three') */
946 ok = PyArg_ParseTuple(args, "s|si", &file, &mode, &bufsize);
947 /* A string, and optionally another string and an integer */
948 /* Possible Python calls:
951 f('spam', 'wb',
100000) */
957 int left, top, right, bottom, h, v;
958 ok = PyArg_ParseTuple(args, "((ii)(ii))(ii)",
959 &left, &top, &right, &bottom, &h, &v);
960 /* A rectangle and a point */
961 /* Possible Python call:
962 f(((
0,
0), (
400,
300)), (
10,
10)) */
969 ok = PyArg_ParseTuple(args, "D:myfunction", &c);
970 /* a complex, also providing a function name for errors */
971 /* Possible Python call: myfunction(
1+
2j) */
976 \section{Keyword Parameters for Extension Functions
977 \label{parseTupleAndKeywords
}}
979 The
\cfunction{PyArg_ParseTupleAndKeywords()
} function is declared as
983 int PyArg_ParseTupleAndKeywords(PyObject *arg, PyObject *kwdict,
984 char *format, char **kwlist, ...);
987 The
\var{arg
} and
\var{format
} parameters are identical to those of the
988 \cfunction{PyArg_ParseTuple()
} function. The
\var{kwdict
} parameter
989 is the dictionary of keywords received as the third parameter from the
990 Python runtime. The
\var{kwlist
} parameter is a
\NULL{}-terminated
991 list of strings which identify the parameters; the names are matched
992 with the type information from
\var{format
} from left to right.
994 \strong{Note:
} Nested tuples cannot be parsed when using keyword
995 arguments! Keyword parameters passed in which are not present in the
996 \var{kwlist
} will cause
\exception{TypeError
} to be raised.
998 Here is an example module which uses keywords, based on an example by
999 Geoff Philbrick (
\email{philbrick@hks.com
}):
%
1000 \index{Philbrick, Geoff
}
1007 keywdarg_parrot(self, args, keywds)
1013 char *state = "a stiff";
1014 char *action = "voom";
1015 char *type = "Norwegian Blue";
1017 static char *kwlist
[] =
{"voltage", "state", "action", "type", NULL
};
1019 if (!PyArg_ParseTupleAndKeywords(args, keywds, "i|sss", kwlist,
1020 &voltage, &state, &action, &type))
1023 printf("-- This parrot wouldn't
%s if you put %i Volts through it.\n",
1025 printf("-- Lovely plumage, the
%s -- It's %s!\n", type, state);
1032 static PyMethodDef keywdarg_methods
[] =
{
1033 /* The cast of the function is necessary since PyCFunction values
1034 * only take two PyObject* parameters, and keywdarg_parrot() takes
1037 {"parrot", (PyCFunction)keywdarg_parrot, METH_VARARGS|METH_KEYWORDS
},
1038 {NULL, NULL
} /* sentinel */
1044 /* Create the module and add the functions */
1045 Py_InitModule("keywdarg", keywdarg_methods);
1050 \section{Building Arbitrary Values
1053 This function is the counterpart to
\cfunction{PyArg_ParseTuple()
}. It is
1054 declared as follows:
1057 PyObject *Py_BuildValue(char *format, ...);
1060 It recognizes a set of format units similar to the ones recognized by
1061 \cfunction{PyArg_ParseTuple()
}, but the arguments (which are input to the
1062 function, not output) must not be pointers, just values. It returns a
1063 new Python object, suitable for returning from a C function called
1066 One difference with
\cfunction{PyArg_ParseTuple()
}: while the latter
1067 requires its first argument to be a tuple (since Python argument lists
1068 are always represented as tuples internally),
1069 \cfunction{Py_BuildValue()
} does not always build a tuple. It builds
1070 a tuple only if its format string contains two or more format units.
1071 If the format string is empty, it returns
\code{None
}; if it contains
1072 exactly one format unit, it returns whatever object is described by
1073 that format unit. To force it to return a tuple of size
0 or one,
1074 parenthesize the format string.
1076 When memory buffers are passed as parameters to supply data to build
1077 objects, as for the
\samp{s
} and
\samp{s\#
} formats, the required data
1078 is copied. Buffers provided by the caller are never referenced by the
1079 objects created by
\cfunction{Py_BuildValue()
}. In other words, if
1080 your code invokes
\cfunction{malloc()
} and passes the allocated memory
1081 to
\cfunction{Py_BuildValue()
}, your code is responsible for
1082 calling
\cfunction{free()
} for that memory once
1083 \cfunction{Py_BuildValue()
} returns.
1085 In the following description, the quoted form is the format unit; the
1086 entry in (round) parentheses is the Python object type that the format
1087 unit will return; and the entry in
[square
] brackets is the type of
1088 the C value(s) to be passed.
1090 The characters space, tab, colon and comma are ignored in format
1091 strings (but not within format units such as
\samp{s\#
}). This can be
1092 used to make long format strings a tad more readable.
1096 \item[\samp{s
} (string)
{[char *
]}]
1097 Convert a null-terminated C string to a Python object. If the C
1098 string pointer is
\NULL{},
\code{None
} is used.
1100 \item[\samp{s\#
} (string)
{[char *, int
]}]
1101 Convert a C string and its length to a Python object. If the C string
1102 pointer is
\NULL{}, the length is ignored and
\code{None
} is
1105 \item[\samp{z
} (string or
\code{None
})
{[char *
]}]
1108 \item[\samp{z\#
} (string or
\code{None
})
{[char *, int
]}]
1111 \item[\samp{u
} (Unicode string)
{[Py_UNICODE *
]}]
1112 Convert a null-terminated buffer of Unicode (UCS-
2) data to a Python
1113 Unicode object. If the Unicode buffer pointer is
\NULL,
1114 \code{None
} is returned.
1116 \item[\samp{u\#
} (Unicode string)
{[Py_UNICODE *, int
]}]
1117 Convert a Unicode (UCS-
2) data buffer and its length to a Python
1118 Unicode object. If the Unicode buffer pointer is
\NULL, the length
1119 is ignored and
\code{None
} is returned.
1121 \item[\samp{i
} (integer)
{[int
]}]
1122 Convert a plain C
\ctype{int
} to a Python integer object.
1124 \item[\samp{b
} (integer)
{[char
]}]
1127 \item[\samp{h
} (integer)
{[short int
]}]
1130 \item[\samp{l
} (integer)
{[long int
]}]
1131 Convert a C
\ctype{long int
} to a Python integer object.
1133 \item[\samp{c
} (string of length
1)
{[char
]}]
1134 Convert a C
\ctype{int
} representing a character to a Python string of
1137 \item[\samp{d
} (float)
{[double
]}]
1138 Convert a C
\ctype{double
} to a Python floating point number.
1140 \item[\samp{f
} (float)
{[float
]}]
1143 \item[\samp{D
} (complex)
{[Py_complex *
]}]
1144 Convert a C
\ctype{Py_complex
} structure to a Python complex number.
1146 \item[\samp{O
} (object)
{[PyObject *
]}]
1147 Pass a Python object untouched (except for its reference count, which
1148 is incremented by one). If the object passed in is a
\NULL{}
1149 pointer, it is assumed that this was caused because the call producing
1150 the argument found an error and set an exception. Therefore,
1151 \cfunction{Py_BuildValue()
} will return
\NULL{} but won't raise an
1152 exception. If no exception has been raised yet,
1153 \cdata{PyExc_SystemError
} is set.
1155 \item[\samp{S
} (object)
{[PyObject *
]}]
1158 \item[\samp{U
} (object)
{[PyObject *
]}]
1161 \item[\samp{N
} (object)
{[PyObject *
]}]
1162 Same as
\samp{O
}, except it doesn't increment the reference count on
1163 the object. Useful when the object is created by a call to an object
1164 constructor in the argument list.
1166 \item[\samp{O\&
} (object)
{[\var{converter
},
\var{anything
}]}]
1167 Convert
\var{anything
} to a Python object through a
\var{converter
}
1168 function. The function is called with
\var{anything
} (which should be
1169 compatible with
\ctype{void *
}) as its argument and should return a
1170 ``new'' Python object, or
\NULL{} if an error occurred.
1172 \item[\samp{(
\var{items
})
} (tuple)
{[\var{matching-items
}]}]
1173 Convert a sequence of C values to a Python tuple with the same number
1176 \item[\samp{[\var{items
}]} (list)
{[\var{matching-items
}]}]
1177 Convert a sequence of C values to a Python list with the same number
1180 \item[\samp{\
{\var{items
}\
}} (dictionary)
{[\var{matching-items
}]}]
1181 Convert a sequence of C values to a Python dictionary. Each pair of
1182 consecutive C values adds one item to the dictionary, serving as key
1183 and value, respectively.
1187 If there is an error in the format string, the
1188 \cdata{PyExc_SystemError
} exception is raised and
\NULL{} returned.
1190 Examples (to the left the call, to the right the resulting Python value):
1193 Py_BuildValue("") None
1194 Py_BuildValue("i",
123)
123
1195 Py_BuildValue("iii",
123,
456,
789) (
123,
456,
789)
1196 Py_BuildValue("s", "hello") 'hello'
1197 Py_BuildValue("ss", "hello", "world") ('hello', 'world')
1198 Py_BuildValue("s#", "hello",
4) 'hell'
1199 Py_BuildValue("()") ()
1200 Py_BuildValue("(i)",
123) (
123,)
1201 Py_BuildValue("(ii)",
123,
456) (
123,
456)
1202 Py_BuildValue("(i,i)",
123,
456) (
123,
456)
1203 Py_BuildValue("
[i,i
]",
123,
456)
[123,
456]
1204 Py_BuildValue("
{s:i,s:i
}",
1205 "abc",
123, "def",
456)
{'abc':
123, 'def':
456}
1206 Py_BuildValue("((ii)(ii)) (ii)",
1207 1,
2,
3,
4,
5,
6) (((
1,
2), (
3,
4)), (
5,
6))
1211 \section{Reference Counts
1214 In languages like C or
\Cpp{}, the programmer is responsible for
1215 dynamic allocation and deallocation of memory on the heap. In C,
1216 this is done using the functions
\cfunction{malloc()
} and
1217 \cfunction{free()
}. In
\Cpp{}, the operators
\keyword{new
} and
1218 \keyword{delete
} are used with essentially the same meaning; they are
1219 actually implemented using
\cfunction{malloc()
} and
1220 \cfunction{free()
}, so we'll restrict the following discussion to the
1223 Every block of memory allocated with
\cfunction{malloc()
} should
1224 eventually be returned to the pool of available memory by exactly one
1225 call to
\cfunction{free()
}. It is important to call
1226 \cfunction{free()
} at the right time. If a block's address is
1227 forgotten but
\cfunction{free()
} is not called for it, the memory it
1228 occupies cannot be reused until the program terminates. This is
1229 called a
\dfn{memory leak
}. On the other hand, if a program calls
1230 \cfunction{free()
} for a block and then continues to use the block, it
1231 creates a conflict with re-use of the block through another
1232 \cfunction{malloc()
} call. This is called
\dfn{using freed memory
}.
1233 It has the same bad consequences as referencing uninitialized data ---
1234 core dumps, wrong results, mysterious crashes.
1236 Common causes of memory leaks are unusual paths through the code. For
1237 instance, a function may allocate a block of memory, do some
1238 calculation, and then free the block again. Now a change in the
1239 requirements for the function may add a test to the calculation that
1240 detects an error condition and can return prematurely from the
1241 function. It's easy to forget to free the allocated memory block when
1242 taking this premature exit, especially when it is added later to the
1243 code. Such leaks, once introduced, often go undetected for a long
1244 time: the error exit is taken only in a small fraction of all calls,
1245 and most modern machines have plenty of virtual memory, so the leak
1246 only becomes apparent in a long-running process that uses the leaking
1247 function frequently. Therefore, it's important to prevent leaks from
1248 happening by having a coding convention or strategy that minimizes
1249 this kind of errors.
1251 Since Python makes heavy use of
\cfunction{malloc()
} and
1252 \cfunction{free()
}, it needs a strategy to avoid memory leaks as well
1253 as the use of freed memory. The chosen method is called
1254 \dfn{reference counting
}. The principle is simple: every object
1255 contains a counter, which is incremented when a reference to the
1256 object is stored somewhere, and which is decremented when a reference
1257 to it is deleted. When the counter reaches zero, the last reference
1258 to the object has been deleted and the object is freed.
1260 An alternative strategy is called
\dfn{automatic garbage collection
}.
1261 (Sometimes, reference counting is also referred to as a garbage
1262 collection strategy, hence my use of ``automatic'' to distinguish the
1263 two.) The big advantage of automatic garbage collection is that the
1264 user doesn't need to call
\cfunction{free()
} explicitly. (Another claimed
1265 advantage is an improvement in speed or memory usage --- this is no
1266 hard fact however.) The disadvantage is that for C, there is no
1267 truly portable automatic garbage collector, while reference counting
1268 can be implemented portably (as long as the functions
\cfunction{malloc()
}
1269 and
\cfunction{free()
} are available --- which the C Standard guarantees).
1270 Maybe some day a sufficiently portable automatic garbage collector
1271 will be available for C. Until then, we'll have to live with
1274 \subsection{Reference Counting in Python
1275 \label{refcountsInPython
}}
1277 There are two macros,
\code{Py_INCREF(x)
} and
\code{Py_DECREF(x)
},
1278 which handle the incrementing and decrementing of the reference count.
1279 \cfunction{Py_DECREF()
} also frees the object when the count reaches zero.
1280 For flexibility, it doesn't call
\cfunction{free()
} directly --- rather, it
1281 makes a call through a function pointer in the object's
\dfn{type
1282 object
}. For this purpose (and others), every object also contains a
1283 pointer to its type object.
1285 The big question now remains: when to use
\code{Py_INCREF(x)
} and
1286 \code{Py_DECREF(x)
}? Let's first introduce some terms. Nobody
1287 ``owns'' an object; however, you can
\dfn{own a reference
} to an
1288 object. An object's reference count is now defined as the number of
1289 owned references to it. The owner of a reference is responsible for
1290 calling
\cfunction{Py_DECREF()
} when the reference is no longer
1291 needed. Ownership of a reference can be transferred. There are three
1292 ways to dispose of an owned reference: pass it on, store it, or call
1293 \cfunction{Py_DECREF()
}. Forgetting to dispose of an owned reference
1294 creates a memory leak.
1296 It is also possible to
\dfn{borrow
}\footnote{The metaphor of
1297 ``borrowing'' a reference is not completely correct: the owner still
1298 has a copy of the reference.
} a reference to an object. The borrower
1299 of a reference should not call
\cfunction{Py_DECREF()
}. The borrower must
1300 not hold on to the object longer than the owner from which it was
1301 borrowed. Using a borrowed reference after the owner has disposed of
1302 it risks using freed memory and should be avoided
1303 completely.
\footnote{Checking that the reference count is at least
1
1304 \strong{does not work
} --- the reference count itself could be in
1305 freed memory and may thus be reused for another object!
}
1307 The advantage of borrowing over owning a reference is that you don't
1308 need to take care of disposing of the reference on all possible paths
1309 through the code --- in other words, with a borrowed reference you
1310 don't run the risk of leaking when a premature exit is taken. The
1311 disadvantage of borrowing over leaking is that there are some subtle
1312 situations where in seemingly correct code a borrowed reference can be
1313 used after the owner from which it was borrowed has in fact disposed
1316 A borrowed reference can be changed into an owned reference by calling
1317 \cfunction{Py_INCREF()
}. This does not affect the status of the owner from
1318 which the reference was borrowed --- it creates a new owned reference,
1319 and gives full owner responsibilities (the new owner must
1320 dispose of the reference properly, as well as the previous owner).
1323 \subsection{Ownership Rules
1324 \label{ownershipRules
}}
1326 Whenever an object reference is passed into or out of a function, it
1327 is part of the function's interface specification whether ownership is
1328 transferred with the reference or not.
1330 Most functions that return a reference to an object pass on ownership
1331 with the reference. In particular, all functions whose function it is
1332 to create a new object, such as
\cfunction{PyInt_FromLong()
} and
1333 \cfunction{Py_BuildValue()
}, pass ownership to the receiver. Even if in
1334 fact, in some cases, you don't receive a reference to a brand new
1335 object, you still receive ownership of the reference. For instance,
1336 \cfunction{PyInt_FromLong()
} maintains a cache of popular values and can
1337 return a reference to a cached item.
1339 Many functions that extract objects from other objects also transfer
1340 ownership with the reference, for instance
1341 \cfunction{PyObject_GetAttrString()
}. The picture is less clear, here,
1342 however, since a few common routines are exceptions:
1343 \cfunction{PyTuple_GetItem()
},
\cfunction{PyList_GetItem()
},
1344 \cfunction{PyDict_GetItem()
}, and
\cfunction{PyDict_GetItemString()
}
1345 all return references that you borrow from the tuple, list or
1348 The function
\cfunction{PyImport_AddModule()
} also returns a borrowed
1349 reference, even though it may actually create the object it returns:
1350 this is possible because an owned reference to the object is stored in
1353 When you pass an object reference into another function, in general,
1354 the function borrows the reference from you --- if it needs to store
1355 it, it will use
\cfunction{Py_INCREF()
} to become an independent
1356 owner. There are exactly two important exceptions to this rule:
1357 \cfunction{PyTuple_SetItem()
} and
\cfunction{PyList_SetItem()
}. These
1358 functions take over ownership of the item passed to them --- even if
1359 they fail! (Note that
\cfunction{PyDict_SetItem()
} and friends don't
1360 take over ownership --- they are ``normal.'')
1362 When a C function is called from Python, it borrows references to its
1363 arguments from the caller. The caller owns a reference to the object,
1364 so the borrowed reference's lifetime is guaranteed until the function
1365 returns. Only when such a borrowed reference must be stored or passed
1366 on, it must be turned into an owned reference by calling
1367 \cfunction{Py_INCREF()
}.
1369 The object reference returned from a C function that is called from
1370 Python must be an owned reference --- ownership is tranferred from the
1371 function to its caller.
1374 \subsection{Thin Ice
1377 There are a few situations where seemingly harmless use of a borrowed
1378 reference can lead to problems. These all have to do with implicit
1379 invocations of the interpreter, which can cause the owner of a
1380 reference to dispose of it.
1382 The first and most important case to know about is using
1383 \cfunction{Py_DECREF()
} on an unrelated object while borrowing a
1384 reference to a list item. For instance:
1387 bug(PyObject *list)
{
1388 PyObject *item = PyList_GetItem(list,
0);
1390 PyList_SetItem(list,
1, PyInt_FromLong(
0L));
1391 PyObject_Print(item, stdout,
0); /* BUG! */
1395 This function first borrows a reference to
\code{list
[0]}, then
1396 replaces
\code{list
[1]} with the value
\code{0}, and finally prints
1397 the borrowed reference. Looks harmless, right? But it's not!
1399 Let's follow the control flow into
\cfunction{PyList_SetItem()
}. The list
1400 owns references to all its items, so when item
1 is replaced, it has
1401 to dispose of the original item
1. Now let's suppose the original
1402 item
1 was an instance of a user-defined class, and let's further
1403 suppose that the class defined a
\method{__del__()
} method. If this
1404 class instance has a reference count of
1, disposing of it will call
1405 its
\method{__del__()
} method.
1407 Since it is written in Python, the
\method{__del__()
} method can execute
1408 arbitrary Python code. Could it perhaps do something to invalidate
1409 the reference to
\code{item
} in
\cfunction{bug()
}? You bet! Assuming
1410 that the list passed into
\cfunction{bug()
} is accessible to the
1411 \method{__del__()
} method, it could execute a statement to the effect of
1412 \samp{del list
[0]}, and assuming this was the last reference to that
1413 object, it would free the memory associated with it, thereby
1414 invalidating
\code{item
}.
1416 The solution, once you know the source of the problem, is easy:
1417 temporarily increment the reference count. The correct version of the
1421 no_bug(PyObject *list)
{
1422 PyObject *item = PyList_GetItem(list,
0);
1425 PyList_SetItem(list,
1, PyInt_FromLong(
0L));
1426 PyObject_Print(item, stdout,
0);
1431 This is a true story. An older version of Python contained variants
1432 of this bug and someone spent a considerable amount of time in a C
1433 debugger to figure out why his
\method{__del__()
} methods would fail...
1435 The second case of problems with a borrowed reference is a variant
1436 involving threads. Normally, multiple threads in the Python
1437 interpreter can't get in each other's way, because there is a global
1438 lock protecting Python's entire object space. However, it is possible
1439 to temporarily release this lock using the macro
1440 \code{Py_BEGIN_ALLOW_THREADS
}, and to re-acquire it using
1441 \code{Py_END_ALLOW_THREADS
}. This is common around blocking I/O
1442 calls, to let other threads use the CPU while waiting for the I/O to
1443 complete. Obviously, the following function has the same problem as
1447 bug(PyObject *list)
{
1448 PyObject *item = PyList_GetItem(list,
0);
1449 Py_BEGIN_ALLOW_THREADS
1450 ...some blocking I/O call...
1451 Py_END_ALLOW_THREADS
1452 PyObject_Print(item, stdout,
0); /* BUG! */
1457 \subsection{NULL Pointers
1458 \label{nullPointers
}}
1460 In general, functions that take object references as arguments do not
1461 expect you to pass them
\NULL{} pointers, and will dump core (or
1462 cause later core dumps) if you do so. Functions that return object
1463 references generally return
\NULL{} only to indicate that an
1464 exception occurred. The reason for not testing for
\NULL{}
1465 arguments is that functions often pass the objects they receive on to
1466 other function --- if each function were to test for
\NULL{},
1467 there would be a lot of redundant tests and the code would run more
1470 It is better to test for
\NULL{} only at the ``source:'' when a
1471 pointer that may be
\NULL{} is received, for example, from
1472 \cfunction{malloc()
} or from a function that may raise an exception.
1474 The macros
\cfunction{Py_INCREF()
} and
\cfunction{Py_DECREF()
}
1475 do not check for
\NULL{} pointers --- however, their variants
1476 \cfunction{Py_XINCREF()
} and
\cfunction{Py_XDECREF()
} do.
1478 The macros for checking for a particular object type
1479 (
\code{Py
\var{type
}_Check()
}) don't check for
\NULL{} pointers ---
1480 again, there is much code that calls several of these in a row to test
1481 an object against various different expected types, and this would
1482 generate redundant tests. There are no variants with
\NULL{}
1485 The C function calling mechanism guarantees that the argument list
1486 passed to C functions (
\code{args
} in the examples) is never
1487 \NULL{} --- in fact it guarantees that it is always a tuple.
\footnote{
1488 These guarantees don't hold when you use the ``old'' style
1489 calling convention --- this is still found in much existing code.
}
1491 It is a severe error to ever let a
\NULL{} pointer ``escape'' to
1495 % A pedagogically buggy example, along the lines of the previous listing,
1496 % would be helpful here -- showing in more concrete terms what sort of
1497 % actions could cause the problem. I can't very well imagine it from the
1501 \section{Writing Extensions in
\Cpp{}
1504 It is possible to write extension modules in
\Cpp{}. Some restrictions
1505 apply. If the main program (the Python interpreter) is compiled and
1506 linked by the C compiler, global or static objects with constructors
1507 cannot be used. This is not a problem if the main program is linked
1508 by the
\Cpp{} compiler. Functions that will be called by the
1509 Python interpreter (in particular, module initalization functions)
1510 have to be declared using
\code{extern "C"
}.
1511 It is unnecessary to enclose the Python header files in
1512 \code{extern "C" \
{...\
}} --- they use this form already if the symbol
1513 \samp{__cplusplus
} is defined (all recent
\Cpp{} compilers define this
1517 \section{Providing a C API for an Extension Module
1518 \label{using-cobjects
}}
1519 \sectionauthor{Konrad Hinsen
}{hinsen@cnrs-orleans.fr
}
1521 Many extension modules just provide new functions and types to be
1522 used from Python, but sometimes the code in an extension module can
1523 be useful for other extension modules. For example, an extension
1524 module could implement a type ``collection'' which works like lists
1525 without order. Just like the standard Python list type has a C API
1526 which permits extension modules to create and manipulate lists, this
1527 new collection type should have a set of C functions for direct
1528 manipulation from other extension modules.
1530 At first sight this seems easy: just write the functions (without
1531 declaring them
\keyword{static
}, of course), provide an appropriate
1532 header file, and
document the C API. And in fact this would work if
1533 all extension modules were always linked statically with the Python
1534 interpreter. When modules are used as shared libraries, however, the
1535 symbols defined in one module may not be visible to another module.
1536 The details of visibility depend on the operating system; some systems
1537 use one global namespace for the Python interpreter and all extension
1538 modules (Windows, for example), whereas others require an explicit
1539 list of imported symbols at module link time (AIX is one example), or
1540 offer a choice of different strategies (most Unices). And even if
1541 symbols are globally visible, the module whose functions one wishes to
1542 call might not have been loaded yet!
1544 Portability therefore requires not to make any assumptions about
1545 symbol visibility. This means that all symbols in extension modules
1546 should be declared
\keyword{static
}, except for the module's
1547 initialization function, in order to avoid name clashes with other
1548 extension modules (as discussed in section~
\ref{methodTable
}). And it
1549 means that symbols that
\emph{should
} be accessible from other
1550 extension modules must be exported in a different way.
1552 Python provides a special mechanism to pass C-level information
1553 (pointers) from one extension module to another one: CObjects.
1554 A CObject is a Python data type which stores a pointer (
\ctype{void
1555 *
}). CObjects can only be created and accessed via their C API, but
1556 they can be passed around like any other Python object. In particular,
1557 they can be assigned to a name in an extension module's namespace.
1558 Other extension modules can then import this module, retrieve the
1559 value of this name, and then retrieve the pointer from the CObject.
1561 There are many ways in which CObjects can be used to export the C API
1562 of an extension module. Each name could get its own CObject, or all C
1563 API pointers could be stored in an array whose address is published in
1564 a CObject. And the various tasks of storing and retrieving the pointers
1565 can be distributed in different ways between the module providing the
1566 code and the client modules.
1568 The following example demonstrates an approach that puts most of the
1569 burden on the writer of the exporting module, which is appropriate
1570 for commonly used library modules. It stores all C API pointers
1571 (just one in the example!) in an array of
\ctype{void
} pointers which
1572 becomes the value of a CObject. The header file corresponding to
1573 the module provides a macro that takes care of importing the module
1574 and retrieving its C API pointers; client modules only have to call
1575 this macro before accessing the C API.
1577 The exporting module is a modification of the
\module{spam
} module from
1578 section~
\ref{simpleExample
}. The function
\function{spam.system()
}
1579 does not call the C library function
\cfunction{system()
} directly,
1580 but a function
\cfunction{PySpam_System()
}, which would of course do
1581 something more complicated in reality (such as adding ``spam'' to
1582 every command). This function
\cfunction{PySpam_System()
} is also
1583 exported to other extension modules.
1585 The function
\cfunction{PySpam_System()
} is a plain C function,
1586 declared
\keyword{static
} like everything else:
1590 PySpam_System(command)
1593 return system(command);
1597 The function
\cfunction{spam_system()
} is modified in a trivial way:
1601 spam_system(self, args)
1608 if (!PyArg_ParseTuple(args, "s", &command))
1610 sts = PySpam_System(command);
1611 return Py_BuildValue("i", sts);
1615 In the beginning of the module, right after the line
1621 two more lines must be added:
1625 #include "spammodule.h"
1628 The
\code{\#define
} is used to tell the header file that it is being
1629 included in the exporting module, not a client module. Finally,
1630 the module's initialization function must take care of initializing
1631 the C API pointer array:
1638 static void *PySpam_API
[PySpam_API_pointers
];
1639 PyObject *c_api_object;
1641 m = Py_InitModule("spam", SpamMethods);
1643 /* Initialize the C API pointer array */
1644 PySpam_API
[PySpam_System_NUM
] = (void *)PySpam_System;
1646 /* Create a CObject containing the API pointer array's address */
1647 c_api_object = PyCObject_FromVoidPtr((void *)PySpam_API, NULL);
1649 if (c_api_object != NULL)
{
1650 /* Create a name for this object in the module's namespace */
1651 PyObject *d = PyModule_GetDict(m);
1653 PyDict_SetItemString(d, "_C_API", c_api_object);
1654 Py_DECREF(c_api_object);
1659 Note that
\code{PySpam_API
} is declared
\code{static
}; otherwise
1660 the pointer array would disappear when
\code{initspam
} terminates!
1662 The bulk of the work is in the header file
\file{spammodule.h
},
1663 which looks like this:
1666 #ifndef Py_SPAMMODULE_H
1667 #define Py_SPAMMODULE_H
1672 /* Header file for spammodule */
1674 /* C API functions */
1675 #define PySpam_System_NUM
0
1676 #define PySpam_System_RETURN int
1677 #define PySpam_System_PROTO (char *command)
1679 /* Total number of C API pointers */
1680 #define PySpam_API_pointers
1
1684 /* This section is used when compiling spammodule.c */
1686 static PySpam_System_RETURN PySpam_System PySpam_System_PROTO;
1689 /* This section is used in modules that use spammodule's API */
1691 static void **PySpam_API;
1693 #define PySpam_System \
1694 (*(PySpam_System_RETURN (*)PySpam_System_PROTO) PySpam_API[PySpam_System_NUM])
1696 #define import_spam() \
1698 PyObject *module = PyImport_ImportModule("spam"); \
1699 if (module != NULL) { \
1700 PyObject *module_dict = PyModule_GetDict(module); \
1701 PyObject *c_api_object = PyDict_GetItemString(module_dict, "_C_API"); \
1702 if (PyCObject_Check(c_api_object)) { \
1703 PySpam_API = (void **)PyCObject_AsVoidPtr(c_api_object); \
1714 #endif /* !defined(Py_SPAMMODULE_H */
1717 All that a client module must do in order to have access to the
1718 function
\cfunction{PySpam_System()
} is to call the function (or
1719 rather macro)
\cfunction{import_spam()
} in its initialization
1728 Py_InitModule("client", ClientMethods);
1733 The main disadvantage of this approach is that the file
1734 \file{spammodule.h
} is rather complicated. However, the
1735 basic structure is the same for each function that is
1736 exported, so it has to be learned only once.
1738 Finally it should be mentioned that CObjects offer additional
1739 functionality, which is especially useful for memory allocation and
1740 deallocation of the pointer stored in a CObject. The details
1741 are described in the
\citetitle[../api/api.html
]{Python/C API
1742 Reference Manual
} in the section ``CObjects'' and in the
1743 implementation of CObjects (files
\file{Include/cobject.h
} and
1744 \file{Objects/cobject.c
} in the Python source code distribution).
1747 \chapter{Defining New Types
1748 \label{defining-new-types
}}
1749 \sectionauthor{Michael Hudson
}{mwh21@cam.ac.uk
}
1751 As mentioned in the last chapter, Python allows the writer of an
1752 extension module to define new types that can be manipulated from
1753 Python code, much like strings and lists in core Python.
1755 This is not hard; the code for all extension types follows a pattern,
1756 but there are some details that you need to understand before you can
1762 The Python runtime sees all Python objects as variables of type
1763 \ctype{PyObject*
}. A
\ctype{PyObject
} is not a very magnificent
1764 object - it just contains the refcount and a pointer to the object's
1765 ``type object''. This is where the action is; the type object
1766 determines which (C) functions get called when, for instance, an
1767 attribute gets looked up on an object or it is multiplied by another
1768 object. I call these C functions ``type methods'' to distinguish them
1769 from things like
\code{[].append
} (which I will call ``object
1770 methods'' when I get around to them).
1772 So, if you want to define a new object type, you need to create a new
1775 This sort of thing can only be explained by example, so here's a
1776 minimal, but complete, module that defines a new type:
1781 staticforward PyTypeObject noddy_NoddyType;
1785 } noddy_NoddyObject;
1788 noddy_new_noddy(PyObject* self, PyObject* args)
1790 noddy_NoddyObject* noddy;
1792 if (!PyArg_ParseTuple(args,":new_noddy"))
1795 noddy = PyObject_New(noddy_NoddyObject, &noddy_NoddyType);
1797 return (PyObject*)noddy;
1801 noddy_noddy_dealloc(PyObject* self)
1806 static PyTypeObject noddy_NoddyType =
{
1807 PyObject_HEAD_INIT(NULL)
1810 sizeof(noddy_NoddyObject),
1812 noddy_noddy_dealloc, /*tp_dealloc*/
1819 0, /*tp_as_sequence*/
1820 0, /*tp_as_mapping*/
1824 static PyMethodDef noddy_methods
[] =
{
1825 { "new_noddy", noddy_new_noddy, METH_VARARGS
},
1832 noddy_NoddyType.ob_type = &PyType_Type;
1834 Py_InitModule("noddy", noddy_methods);
1838 Now that's quite a bit to take in at once, but hopefully bits will
1839 seem familiar from the last chapter.
1841 The first bit that will be new is:
1844 staticforward PyTypeObject noddy_NoddyType;
1847 This names the type object that will be defining further down in the
1848 file. It can't be defined here because its definition has to refer to
1849 functions that have no yet been defined, but we need to be able to
1850 refer to it, hence the declaration.
1852 The
\code{staticforward
} is required to placate various brain dead
1858 } noddy_NoddyObject;
1861 This is what a Noddy object will contain. In this case nothing more
1862 than every Python object contains - a refcount and a pointer to a type
1863 object. These are the fields the
\code{PyObject_HEAD
} macro brings
1864 in. The reason for the macro is to standardize the layout and to
1865 enable special debugging fields to be brought in debug builds.
1876 is the corresponding definition for standard Python integers.
1882 noddy_new_noddy(PyObject* self, PyObject* args)
1884 noddy_NoddyObject* noddy;
1886 if (!PyArg_ParseTuple(args,":new_noddy"))
1889 noddy = PyObject_New(noddy_NoddyObject, &noddy_NoddyType);
1891 return (PyObject*)noddy;
1895 This is in fact just a regular module function, as described in the
1896 last chapter. The reason it gets special mention is that this is
1897 where we create our Noddy object. Defining PyTypeObject structures is
1898 all very well, but if there's no way to actually
\emph{create
} one
1899 of the wretched things it is not going to do anyone much good.
1901 Almost always, you create objects with a call of the form:
1904 PyObject_New(<type>, &<type object>);
1907 This allocates the memory and then initializes the object (sets
1908 the reference count to one, makes the
\cdata{ob_type
} pointer point at
1909 the right place and maybe some other stuff, depending on build options).
1910 You
\emph{can
} do these steps separately if you have some reason to
1911 --- but at this level we don't bother.
1913 We cast the return value to a
\ctype{PyObject*
} because that's what
1914 the Python runtime expects. This is safe because of guarantees about
1915 the layout of structures in the C standard, and is a fairly common C
1916 programming trick. One could declare
\cfunction{noddy_new_noddy
} to
1917 return a
\ctype{noddy_NoddyObject*
} and then put a cast in the
1918 definition of
\cdata{noddy_methods
} further down the file --- it
1919 doesn't make much difference.
1921 Now a Noddy object doesn't do very much and so doesn't need to
1922 implement many type methods. One you can't avoid is handling
1923 deallocation, so we find
1927 noddy_noddy_dealloc(PyObject* self)
1933 This is so short as to be self explanatory. This function will be
1934 called when the reference count on a Noddy object reaches
\code{0} (or
1935 it is found as part of an unreachable cycle by the cyclic garbage
1936 collector).
\cfunction{PyObject_Del()
} is what you call when you want
1937 an object to go away. If a Noddy object held references to other
1938 Python objects, one would decref them here.
1940 Moving on, we come to the crunch --- the type object.
1943 static PyTypeObject noddy_NoddyType =
{
1944 PyObject_HEAD_INIT(NULL)
1947 sizeof(noddy_NoddyObject),
1949 noddy_noddy_dealloc, /*tp_dealloc*/
1956 0, /*tp_as_sequence*/
1957 0, /*tp_as_mapping*/
1962 Now if you go and look up the definition of
\ctype{PyTypeObject
} in
1963 \file{object.h
} you'll see that it has many, many more fields that the
1964 definition above. The remaining fields will be filled with zeros by
1965 the C compiler, and it's common practice to not specify them
1966 explicitly unless you need them.
1968 This is so important that I'm going to pick the top of it apart still
1972 PyObject_HEAD_INIT(NULL)
1975 This line is a bit of a wart; what we'd like to write is:
1978 PyObject_HEAD_INIT(&PyType_Type)
1981 as the type of a type object is ``type'', but this isn't strictly
1982 conforming C and some compilers complain. So instead we fill in the
1983 \cdata{ob_type
} field of
\cdata{noddy_NoddyType
} at the earliest
1984 oppourtunity --- in
\cfunction{initnoddy()
}.
1990 XXX why does the type info struct start PyObject_*VAR*_HEAD??
1996 The name of our type. This will appear in the default textual
1997 representation of our objects and in some error messages, for example:
2000 >>> "" + noddy.new_noddy()
2001 Traceback (most recent call last):
2002 File "<stdin>", line
1, in ?
2003 TypeError: cannot add type "Noddy" to string
2007 sizeof(noddy_NoddyObject),
2010 This is so that Python knows how much memory to allocate when you call
2011 \cfunction{PyObject_New
}.
2017 This has to do with variable length objects like lists and strings.
2020 Now we get into the type methods, the things that make your objects
2021 different from the others. Of course, the Noddy object doesn't
2022 implement many of these, but as mentioned above you have to implement
2023 the deallocation function.
2026 noddy_noddy_dealloc, /*tp_dealloc*/
2029 From here, all the type methods are nil so I won't go over them yet -
2030 that's for the next section!
2032 Everything else in the file should be familiar, except for this line
2033 in
\cfunction{initnoddy
}:
2036 noddy_NoddyType.ob_type = &PyType_Type;
2039 This was alluded to above --- the
\cdata{noddy_NoddyType
} object should
2040 have type ``type'', but
\code{\&PyType_Type
} is not constant and so
2041 can't be used in its initializer. To work around this, we patch it up
2042 in the module initialization.
2044 That's it! All that remains is to build it; put the above code in a
2045 file called
\file{noddymodule.c
} and
2048 from distutils.core import setup, Extension
2049 setup(name = "noddy", version = "
1.0",
2050 ext_modules =
[Extension("noddy",
["noddymodule.c"
])
])
2053 in a file called
\file{setup.py
}; then typing
2056 $ python setup.py build
%$
2059 at a shell should produce a file
\file{noddy.so
} in a subdirectory;
2060 move to that directory and fire up Python --- you should be able to
2061 \code{import noddy
} and play around with Noddy objects.
2063 That wasn't so hard, was it?
2065 \section{Type Methods
2066 \label{dnt-type-methods
}}
2068 This section aims to give a quick fly-by on the various type methods
2069 you can implement and what they do.
2071 Here is the definition of
\ctype{PyTypeObject
}, with some fields only
2072 used in debug builds omitted:
2075 typedef struct _typeobject
{
2077 char *tp_name; /* For printing */
2078 int tp_basicsize, tp_itemsize; /* For allocation */
2080 /* Methods to implement standard operations */
2082 destructor tp_dealloc;
2084 getattrfunc tp_getattr;
2085 setattrfunc tp_setattr;
2089 /* Method suites for standard classes */
2091 PyNumberMethods *tp_as_number;
2092 PySequenceMethods *tp_as_sequence;
2093 PyMappingMethods *tp_as_mapping;
2095 /* More standard operations (here for binary compatibility) */
2098 ternaryfunc tp_call;
2100 getattrofunc tp_getattro;
2101 setattrofunc tp_setattro;
2103 /* Functions to access object as input/output buffer */
2104 PyBufferProcs *tp_as_buffer;
2106 /* Flags to define presence of optional/expanded features */
2109 char *tp_doc; /* Documentation string */
2111 /* call function for all accessible objects */
2112 traverseproc tp_traverse;
2114 /* delete references to contained objects */
2117 /* rich comparisons */
2118 richcmpfunc tp_richcompare;
2120 /* weak reference enabler */
2121 long tp_weaklistoffset;
2126 Now that's a
\emph{lot
} of methods. Don't worry too much though - if
2127 you have a type you want to define, the chances are very good that you
2128 will only implement a handful of these.
2130 As you probably expect by now, I'm going to go over this line-by-line,
2131 saying a word about each field as we get to it.
2134 char *tp_name; /* For printing */
2137 The name of the type - as mentioned in the last section, this will
2138 appear in various places, almost entirely for diagnostic purposes.
2139 Try to choose something that will be helpful in such a situation!
2142 int tp_basicsize, tp_itemsize; /* For allocation */
2145 These fields tell the runtime how much memory to allocate when new
2146 objects of this typed are created. Python has some builtin support
2147 for variable length structures (think: strings, lists) which is where
2148 the
\cdata{tp_itemsize
} field comes in. This will be dealt with
2151 Now we come to the basic type methods - the ones most extension types
2155 destructor tp_dealloc;
2157 getattrfunc tp_getattr;
2158 setattrfunc tp_setattr;
2164 %\section{Attributes \& Methods
2165 % \label{dnt-attrs-and-meths}}
2168 \chapter{Building C and
\Cpp{} Extensions on
\UNIX{}
2169 \label{building-on-unix
}}
2171 \sectionauthor{Jim Fulton
}{jim@Digicool.com
}
2174 %The make file make file, building C extensions on Unix
2177 Starting in Python
1.4, Python provides a special make file for
2178 building make files for building dynamically-linked extensions and
2179 custom interpreters. The make file make file builds a make file
2180 that reflects various system variables determined by configure when
2181 the Python interpreter was built, so people building module's don't
2182 have to resupply these settings. This vastly simplifies the process
2183 of building extensions and custom interpreters on Unix systems.
2185 The make file make file is distributed as the file
2186 \file{Misc/Makefile.pre.in
} in the Python source distribution. The
2187 first step in building extensions or custom interpreters is to copy
2188 this make file to a development directory containing extension module
2191 The make file make file,
\file{Makefile.pre.in
} uses metadata
2192 provided in a file named
\file{Setup
}. The format of the
\file{Setup
}
2193 file is the same as the
\file{Setup
} (or
\file{Setup.dist
}) file
2194 provided in the
\file{Modules/
} directory of the Python source
2195 distribution. The
\file{Setup
} file contains variable definitions:
2198 EC=/projects/ExtensionClass
2201 and module description lines. It can also contain blank lines and
2202 comment lines that start with
\character{\#
}.
2204 A module description line includes a module name, source files,
2205 options, variable references, and other input files, such
2206 as libraries or object files. Consider a simple example:
2209 ExtensionClass ExtensionClass.c
2212 This is the simplest form of a module definition line. It defines a
2213 module,
\module{ExtensionClass
}, which has a single source file,
2214 \file{ExtensionClass.c
}.
2216 This slightly more complex example uses an
\strong{-I
} option to
2217 specify an include directory:
2220 EC=/projects/ExtensionClass
2221 cPersistence cPersistence.c -I$(EC)
2222 \end{verbatim
} % $ <-- bow to font lock
2224 This example also illustrates the format for variable references.
2226 For systems that support dynamic linking, the
\file{Setup
} file should
2233 to indicate that the modules defined in
\file{Setup
} are to be built
2234 as dynamically linked modules. A line containing only
\samp{*static*
}
2235 can be used to indicate the subsequently listed modules should be
2238 Here is a complete
\file{Setup
} file for building a
2239 \module{cPersistent
} module:
2242 # Set-up file to build the cPersistence module.
2243 # Note that the text should begin in the first column.
2246 # We need the path to the directory containing the ExtensionClass
2248 EC=/projects/ExtensionClass
2249 cPersistence cPersistence.c -I$(EC)
2250 \end{verbatim
} % $ <-- bow to font lock
2252 After the
\file{Setup
} file has been created,
\file{Makefile.pre.in
}
2253 is run with the
\samp{boot
} target to create a make file:
2256 make -f Makefile.pre.in boot
2259 This creates the file, Makefile. To build the extensions, simply
2260 run the created make file:
2266 It's not necessary to re-run
\file{Makefile.pre.in
} if the
2267 \file{Setup
} file is changed. The make file automatically rebuilds
2268 itself if the
\file{Setup
} file changes.
2271 \section{Building Custom Interpreters
\label{custom-interps
}}
2273 The make file built by
\file{Makefile.pre.in
} can be run with the
2274 \samp{static
} target to build an interpreter:
2280 Any modules defined in the
\file{Setup
} file before the
2281 \samp{*shared*
} line will be statically linked into the interpreter.
2282 Typically, a
\samp{*shared*
} line is omitted from the
2283 \file{Setup
} file when a custom interpreter is desired.
2286 \section{Module Definition Options
\label{module-defn-options
}}
2288 Several compiler options are supported:
2290 \begin{tableii
}{l|l
}{programopt
}{Option
}{Meaning
}
2291 \lineii{-C
}{Tell the C pre-processor not to discard comments
}
2292 \lineii{-D
\var{name
}=
\var{value
}}{Define a macro
}
2293 \lineii{-I
\var{dir
}}{Specify an include directory,
\var{dir
}}
2294 \lineii{-L
\var{dir
}}{Specify a link-time library directory,
\var{dir
}}
2295 \lineii{-R
\var{dir
}}{Specify a run-time library directory,
\var{dir
}}
2296 \lineii{-l
\var{lib
}}{Link a library,
\var{lib
}}
2297 \lineii{-U
\var{name
}}{Undefine a macro
}
2300 Other compiler options can be included (snuck in) by putting them
2303 Source files can include files with
\file{.c
},
\file{.C
},
\file{.cc
},
2304 \file{.cpp
},
\file{.cxx
}, and
\file{.c++
} extensions.
2306 Other input files include files with
\file{.a
},
\file{.o
},
\file{.sl
},
2307 and
\file{.so
} extensions.
2310 \section{Example
\label{module-defn-example
}}
2312 Here is a more complicated example from
\file{Modules/Setup.dist
}:
2315 GMP=/ufs/guido/src/gmp
2316 mpz mpzmodule.c -I$(GMP) $(GMP)/libgmp.a
2319 which could also be written as:
2322 mpz mpzmodule.c -I$(GMP) -L$(GMP) -lgmp
2326 \section{Distributing your extension modules
2327 \label{distributing
}}
2329 There are two ways to distribute extension modules for others to use.
2330 The way that allows the easiest cross-platform support is to use the
2331 \module{distutils
}\refstmodindex{distutils
} package. The manual
2332 \citetitle[../dist/dist.html
]{Distributing Python Modules
} contains
2333 information on this approach. It is recommended that all new
2334 extensions be distributed using this approach to allow easy building
2335 and installation across platforms. Older extensions should migrate to
2336 this approach as well.
2338 What follows describes the older approach; there are still many
2339 extensions which use this.
2341 When distributing your extension modules in source form, make sure to
2342 include a
\file{Setup
} file. The
\file{Setup
} file should be named
2343 \file{Setup.in
} in the distribution. The make file make file,
2344 \file{Makefile.pre.in
}, will copy
\file{Setup.in
} to
\file{Setup
} if
2345 the person installing the extension doesn't do so manually.
2346 Distributing a
\file{Setup.in
} file makes it easy for people to
2347 customize the
\file{Setup
} file while keeping the original in
2350 It is a good idea to include a copy of
\file{Makefile.pre.in
} for
2351 people who do not have a source distribution of Python.
2353 Do not distribute a make file. People building your modules
2354 should use
\file{Makefile.pre.in
} to build their own make file. A
2355 \file{README
} file included in the package should provide simple
2356 instructions to perform the build.
2359 \chapter{Building C and
\Cpp{} Extensions on Windows
2360 \label{building-on-windows
}}
2363 This chapter briefly explains how to create a Windows extension module
2364 for Python using Microsoft Visual
\Cpp{}, and follows with more
2365 detailed background information on how it works. The explanatory
2366 material is useful for both the Windows programmer learning to build
2367 Python extensions and the
\UNIX{} programmer interested in producing
2368 software which can be successfully built on both
\UNIX{} and Windows.
2371 \section{A Cookbook Approach
\label{win-cookbook
}}
2373 \sectionauthor{Neil Schemenauer
}{neil_schemenauer@transcanada.com
}
2375 This section provides a recipe for building a Python extension on
2378 Grab the binary installer from
\url{http://www.python.org/
} and
2379 install Python. The binary installer has all of the required header
2380 files except for
\file{config.h
}.
2382 Get the source distribution and extract it into a convenient location.
2383 Copy the
\file{config.h
} from the
\file{PC/
} directory into the
2384 \file{include/
} directory created by the installer.
2386 Create a
\file{Setup
} file for your extension module, as described in
2387 chapter
\ref{building-on-unix
}.
2389 Get David Ascher's
\file{compile.py
} script from
2390 \url{http://starship.python.net/crew/da/compile/
}. Run the script to
2391 create Microsoft Visual
\Cpp{} project files.
2393 Open the DSW file in Visual
\Cpp{} and select
\strong{Build
}.
2395 If your module creates a new type, you may have trouble with this line:
2398 PyObject_HEAD_INIT(&PyType_Type)
2404 PyObject_HEAD_INIT(NULL)
2407 and add the following to the module initialization function:
2410 MyObject_Type.ob_type = &PyType_Type;
2413 Refer to section
3 of the
2414 \citetitle[http://www.python.org/doc/FAQ.html
]{Python FAQ
} for details
2415 on why you must do this.
2418 \section{Differences Between
\UNIX{} and Windows
2419 \label{dynamic-linking
}}
2420 \sectionauthor{Chris Phoenix
}{cphoenix@best.com
}
2423 \UNIX{} and Windows use completely different paradigms for run-time
2424 loading of code. Before you try to build a module that can be
2425 dynamically loaded, be aware of how your system works.
2427 In
\UNIX{}, a shared object (
\file{.so
}) file contains code to be used by the
2428 program, and also the names of functions and data that it expects to
2429 find in the program. When the file is joined to the program, all
2430 references to those functions and data in the file's code are changed
2431 to point to the actual locations in the program where the functions
2432 and data are placed in memory. This is basically a link operation.
2434 In Windows, a dynamic-link library (
\file{.dll
}) file has no dangling
2435 references. Instead, an access to functions or data goes through a
2436 lookup table. So the DLL code does not have to be fixed up at runtime
2437 to refer to the program's memory; instead, the code already uses the
2438 DLL's lookup table, and the lookup table is modified at runtime to
2439 point to the functions and data.
2441 In
\UNIX{}, there is only one type of library file (
\file{.a
}) which
2442 contains code from several object files (
\file{.o
}). During the link
2443 step to create a shared object file (
\file{.so
}), the linker may find
2444 that it doesn't know where an identifier is defined. The linker will
2445 look for it in the object files in the libraries; if it finds it, it
2446 will include all the code from that object file.
2448 In Windows, there are two types of library, a static library and an
2449 import library (both called
\file{.lib
}). A static library is like a
2450 \UNIX{} \file{.a
} file; it contains code to be included as necessary.
2451 An import library is basically used only to reassure the linker that a
2452 certain identifier is legal, and will be present in the program when
2453 the DLL is loaded. So the linker uses the information from the
2454 import library to build the lookup table for using identifiers that
2455 are not included in the DLL. When an application or a DLL is linked,
2456 an import library may be generated, which will need to be used for all
2457 future DLLs that depend on the symbols in the application or DLL.
2459 Suppose you are building two dynamic-load modules, B and C, which should
2460 share another block of code A. On
\UNIX{}, you would
\emph{not
} pass
2461 \file{A.a
} to the linker for
\file{B.so
} and
\file{C.so
}; that would
2462 cause it to be included twice, so that B and C would each have their
2463 own copy. In Windows, building
\file{A.dll
} will also build
2464 \file{A.lib
}. You
\emph{do
} pass
\file{A.lib
} to the linker for B and
2465 C.
\file{A.lib
} does not contain code; it just contains information
2466 which will be used at runtime to access A's code.
2468 In Windows, using an import library is sort of like using
\samp{import
2469 spam
}; it gives you access to spam's names, but does not create a
2470 separate copy. On
\UNIX{}, linking with a library is more like
2471 \samp{from spam import *
}; it does create a separate copy.
2474 \section{Using DLLs in Practice
\label{win-dlls
}}
2475 \sectionauthor{Chris Phoenix
}{cphoenix@best.com
}
2477 Windows Python is built in Microsoft Visual
\Cpp{}; using other
2478 compilers may or may not work (though Borland seems to). The rest of
2479 this section is MSV
\Cpp{} specific.
2481 When creating DLLs in Windows, you must pass
\file{python15.lib
} to
2482 the linker. To build two DLLs, spam and ni (which uses C functions
2483 found in spam), you could use these commands:
2486 cl /LD /I/python/include spam.c ../libs/python15.lib
2487 cl /LD /I/python/include ni.c spam.lib ../libs/python15.lib
2490 The first command created three files:
\file{spam.obj
},
2491 \file{spam.dll
} and
\file{spam.lib
}.
\file{Spam.dll
} does not contain
2492 any Python functions (such as
\cfunction{PyArg_ParseTuple()
}), but it
2493 does know how to find the Python code thanks to
\file{python15.lib
}.
2495 The second command created
\file{ni.dll
} (and
\file{.obj
} and
2496 \file{.lib
}), which knows how to find the necessary functions from
2497 spam, and also from the Python executable.
2499 Not every identifier is exported to the lookup table. If you want any
2500 other modules (including Python) to be able to see your identifiers,
2501 you have to say
\samp{_declspec(dllexport)
}, as in
\samp{void
2502 _declspec(dllexport) initspam(void)
} or
\samp{PyObject
2503 _declspec(dllexport) *NiGetSpamData(void)
}.
2505 Developer Studio will throw in a lot of import libraries that you do
2506 not really need, adding about
100K to your executable. To get rid of
2507 them, use the Project Settings dialog, Link tab, to specify
2508 \emph{ignore default libraries
}. Add the correct
2509 \file{msvcrt
\var{xx
}.lib
} to the list of libraries.
2512 \chapter{Embedding Python in Another Application
2515 Embedding Python is similar to extending it, but not quite. The
2516 difference is that when you extend Python, the main program of the
2517 application is still the Python interpreter, while if you embed
2518 Python, the main program may have nothing to do with Python ---
2519 instead, some parts of the application occasionally call the Python
2520 interpreter to run some Python code.
2522 So if you are embedding Python, you are providing your own main
2523 program. One of the things this main program has to do is initialize
2524 the Python interpreter. At the very least, you have to call the
2525 function
\cfunction{Py_Initialize()
} (on MacOS, call
2526 \cfunction{PyMac_Initialize()
} instead). There are optional calls to
2527 pass command line arguments to Python. Then later you can call the
2528 interpreter from any part of the application.
2530 There are several different ways to call the interpreter: you can pass
2531 a string containing Python statements to
2532 \cfunction{PyRun_SimpleString()
}, or you can pass a stdio file pointer
2533 and a file name (for identification in error messages only) to
2534 \cfunction{PyRun_SimpleFile()
}. You can also call the lower-level
2535 operations described in the previous chapters to construct and use
2538 A simple demo of embedding Python can be found in the directory
2539 \file{Demo/embed/
} of the source distribution.
2542 \section{Embedding Python in
\Cpp{}
2543 \label{embeddingInCplusplus
}}
2545 It is also possible to embed Python in a
\Cpp{} program; precisely how this
2546 is done will depend on the details of the
\Cpp{} system used; in general you
2547 will need to write the main program in
\Cpp{}, and use the
\Cpp{} compiler
2548 to compile and link your program. There is no need to recompile Python
2549 itself using
\Cpp{}.
2552 \section{Linking Requirements
2555 While the
\program{configure
} script shipped with the Python sources
2556 will correctly build Python to export the symbols needed by
2557 dynamically linked extensions, this is not automatically inherited by
2558 applications which embed the Python library statically, at least on
2559 \UNIX. This is an issue when the application is linked to the static
2560 runtime library (
\file{libpython.a
}) and needs to load dynamic
2561 extensions (implemented as
\file{.so
} files).
2563 The problem is that some entry points are defined by the Python
2564 runtime solely for extension modules to use. If the embedding
2565 application does not use any of these entry points, some linkers will
2566 not include those entries in the symbol table of the finished
2567 executable. Some additional options are needed to inform the linker
2568 not to remove these symbols.
2570 Determining the right options to use for any given platform can be
2571 quite difficult, but fortunately the Python configuration already has
2572 those values. To retrieve them from an installed Python interpreter,
2573 start an interactive interpreter and have a short session like this:
2576 >>> import distutils.sysconfig
2577 >>> distutils.sysconfig.get_config_var('LINKFORSHARED')
2578 '-Xlinker -export-dynamic'
2580 \refstmodindex{distutils.sysconfig
}
2582 The contents of the string presented will be the options that should
2583 be used. If the string is empty, there's no need to add any
2584 additional options. The
\constant{LINKFORSHARED
} definition
2585 corresponds to the variable of the same name in Python's top-level
2590 \chapter{Reporting Bugs
}
2591 \input{reportingbugs
}
2593 \chapter{History and License
}