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authorFred Drake <fdrake@acm.org>1998-05-07 01:50:47 (GMT)
committerFred Drake <fdrake@acm.org>1998-05-07 01:50:47 (GMT)
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-\documentclass{manual}
-
-% XXX PM Modulator
-
-\title{Extending and Embedding the Python Interpreter}
-
-\input{boilerplate}
-
-% Tell \index to actually write the .idx file
-\makeindex
-
-\begin{document}
-
-\maketitle
-
-\input{copyright}
-
-\begin{abstract}
-
-\noindent
-Python is an interpreted, object-oriented programming language. This
-document describes how to write modules in \C{} or \Cpp{} to extend the
-Python interpreter with new modules. Those modules can define new
-functions but also new object types and their methods. The document
-also describes how to embed the Python interpreter in another
-application, for use as an extension language. Finally, it shows how
-to compile and link extension modules so that they can be loaded
-dynamically (at run time) into the interpreter, if the underlying
-operating system supports this feature.
-
-This document assumes basic knowledge about Python. For an informal
-introduction to the language, see the Python Tutorial. The \emph{Python
-Reference Manual} gives a more formal definition of the language. The
-\emph{Python Library Reference} documents the existing object types,
-functions and modules (both built-in and written in Python) that give
-the language its wide application range.
-
-For a detailed description of the whole Python/\C{} API, see the separate
-\emph{Python/\C{} API Reference Manual}. \strong{Note:} While that
-manual is still in a state of flux, it is safe to say that it is much
-more up to date than the manual you're reading currently (which has
-been in need for an upgrade for some time now).
-
-
-\end{abstract}
-
-\tableofcontents
-
-
-\chapter{Extending Python with \C{} or \Cpp{} code}
-
-
-%\section{Introduction}
-\label{intro}
-
-It is quite easy to add new built-in modules to Python, if you know
-how to program in \C{}. Such \dfn{extension modules} can do two things
-that can't be done directly in Python: they can implement new built-in
-object types, and they can call \C{} library functions and system calls.
-
-To support extensions, the Python API (Application Programmers
-Interface) defines a set of functions, macros and variables that
-provide access to most aspects of the Python run-time system. The
-Python API is incorporated in a \C{} source file by including the header
-\code{"Python.h"}.
-
-The compilation of an extension module depends on its intended use as
-well as on your system setup; details are given in a later section.
-
-
-\section{A Simple Example}
-\label{simpleExample}
-
-Let's create an extension module called \samp{spam} (the favorite food
-of Monty Python fans...) and let's say we want to create a Python
-interface to the \C{} library function \cfunction{system()}.\footnote{An
-interface for this function already exists in the standard module
-\module{os} --- it was chosen as a simple and straightfoward example.}
-This function takes a null-terminated character string as argument and
-returns an integer. We want this function to be callable from Python
-as follows:
-
-\begin{verbatim}
->>> import spam
->>> status = spam.system("ls -l")
-\end{verbatim}
-
-Begin by creating a file \file{spammodule.c}. (In general, if a
-module is called \samp{spam}, the \C{} file containing its implementation
-is called \file{spammodule.c}; if the module name is very long, like
-\samp{spammify}, the module name can be just \file{spammify.c}.)
-
-The first line of our file can be:
-
-\begin{verbatim}
-#include "Python.h"
-\end{verbatim}
-
-which pulls in the Python API (you can add a comment describing the
-purpose of the module and a copyright notice if you like).
-
-All user-visible symbols defined by \code{"Python.h"} have a prefix of
-\samp{Py} or \samp{PY}, except those defined in standard header files.
-For convenience, and since they are used extensively by the Python
-interpreter, \code{"Python.h"} includes a few standard header files:
-\code{<stdio.h>}, \code{<string.h>}, \code{<errno.h>}, and
-\code{<stdlib.h>}. If the latter header file does not exist on your
-system, it declares the functions \cfunction{malloc()},
-\cfunction{free()} and \cfunction{realloc()} directly.
-
-The next thing we add to our module file is the \C{} function that will
-be called when the Python expression \samp{spam.system(\var{string})}
-is evaluated (we'll see shortly how it ends up being called):
-
-\begin{verbatim}
-static PyObject *
-spam_system(self, args)
- PyObject *self;
- PyObject *args;
-{
- char *command;
- int sts;
-
- if (!PyArg_ParseTuple(args, "s", &command))
- return NULL;
- sts = system(command);
- return Py_BuildValue("i", sts);
-}
-\end{verbatim}
-
-There is a straightforward translation from the argument list in
-Python (e.g.\ the single expression \code{"ls -l"}) to the arguments
-passed to the \C{} function. The \C{} function always has two arguments,
-conventionally named \var{self} and \var{args}.
-
-The \var{self} argument is only used when the \C{} function implements a
-built-in method. This will be discussed later. In the example,
-\var{self} will always be a \NULL{} pointer, since we are defining
-a function, not a method. (This is done so that the interpreter
-doesn't have to understand two different types of \C{} functions.)
-
-The \var{args} argument will be a pointer to a Python tuple object
-containing the arguments. Each item of the tuple corresponds to an
-argument in the call's argument list. The arguments are Python
-objects --- in order to do anything with them in our \C{} function we have
-to convert them to \C{} values. The function \cfunction{PyArg_ParseTuple()}
-in the Python API checks the argument types and converts them to \C{}
-values. It uses a template string to determine the required types of
-the arguments as well as the types of the \C{} variables into which to
-store the converted values. More about this later.
-
-\cfunction{PyArg_ParseTuple()} returns true (nonzero) if all arguments have
-the right type and its components have been stored in the variables
-whose addresses are passed. It returns false (zero) if an invalid
-argument list was passed. In the latter case it also raises an
-appropriate exception by so the calling function can return
-\NULL{} immediately (as we saw in the example).
-
-
-\section{Intermezzo: Errors and Exceptions}
-\label{errors}
-
-An important convention throughout the Python interpreter is the
-following: when a function fails, it should set an exception condition
-and return an error value (usually a \NULL{} pointer). Exceptions
-are stored in a static global variable inside the interpreter; if this
-variable is \NULL{} no exception has occurred. A second global
-variable stores the ``associated value'' of the exception (the second
-argument to \keyword{raise}). A third variable contains the stack
-traceback in case the error originated in Python code. These three
-variables are the \C{} equivalents of the Python variables
-\code{sys.exc_type}, \code{sys.exc_value} and \code{sys.exc_traceback}
-(see the section on module \module{sys} in the \emph{Python Library
-Reference}). It is important to know about them to understand how
-errors are passed around.
-
-The Python API defines a number of functions to set various types of
-exceptions.
-
-The most common one is \cfunction{PyErr_SetString()}. Its arguments
-are an exception object and a \C{} string. The exception object is
-usually a predefined object like \cdata{PyExc_ZeroDivisionError}. The
-\C{} string indicates the cause of the error and is converted to a
-Python string object and stored as the ``associated value'' of the
-exception.
-
-Another useful function is \cfunction{PyErr_SetFromErrno()}, which only
-takes an exception argument and constructs the associated value by
-inspection of the (\UNIX{}) global variable \cdata{errno}. The most
-general function is \cfunction{PyErr_SetObject()}, which takes two object
-arguments, the exception and its associated value. You don't need to
-\cfunction{Py_INCREF()} the objects passed to any of these functions.
-
-You can test non-destructively whether an exception has been set with
-\cfunction{PyErr_Occurred()}. This returns the current exception object,
-or \NULL{} if no exception has occurred. You normally don't need
-to call \cfunction{PyErr_Occurred()} to see whether an error occurred in a
-function call, since you should be able to tell from the return value.
-
-When a function \var{f} that calls another function \var{g} detects
-that the latter fails, \var{f} should itself return an error value
-(e.g. \NULL{} or \code{-1}). It should \emph{not} call one of the
-\cfunction{PyErr_*()} functions --- one has already been called by \var{g}.
-\var{f}'s caller is then supposed to also return an error indication
-to \emph{its} caller, again \emph{without} calling \cfunction{PyErr_*()},
-and so on --- the most detailed cause of the error was already
-reported by the function that first detected it. Once the error
-reaches the Python interpreter's main loop, this aborts the currently
-executing Python code and tries to find an exception handler specified
-by the Python programmer.
-
-(There are situations where a module can actually give a more detailed
-error message by calling another \cfunction{PyErr_*()} function, and in
-such cases it is fine to do so. As a general rule, however, this is
-not necessary, and can cause information about the cause of the error
-to be lost: most operations can fail for a variety of reasons.)
-
-To ignore an exception set by a function call that failed, the exception
-condition must be cleared explicitly by calling \cfunction{PyErr_Clear()}.
-The only time \C{} code should call \cfunction{PyErr_Clear()} is if it doesn't
-want to pass the error on to the interpreter but wants to handle it
-completely by itself (e.g. by trying something else or pretending
-nothing happened).
-
-Note that a failing \cfunction{malloc()} call must be turned into an
-exception --- the direct caller of \cfunction{malloc()} (or
-\cfunction{realloc()}) must call \cfunction{PyErr_NoMemory()} and
-return a failure indicator itself. All the object-creating functions
-(\cfunction{PyInt_FromLong()} etc.) already do this, so only if you
-call \cfunction{malloc()} directly this note is of importance.
-
-Also note that, with the important exception of
-\cfunction{PyArg_ParseTuple()} and friends, functions that return an
-integer status usually return a positive value or zero for success and
-\code{-1} for failure, like \UNIX{} system calls.
-
-Finally, be careful to clean up garbage (by making
-\cfunction{Py_XDECREF()} or \cfunction{Py_DECREF()} calls for objects
-you have already created) when you return an error indicator!
-
-The choice of which exception to raise is entirely yours. There are
-predeclared \C{} objects corresponding to all built-in Python exceptions,
-e.g. \cdata{PyExc_ZeroDivisionError} which you can use directly. Of
-course, you should choose exceptions wisely --- don't use
-\cdata{PyExc_TypeError} to mean that a file couldn't be opened (that
-should probably be \cdata{PyExc_IOError}). If something's wrong with
-the argument list, the \cfunction{PyArg_ParseTuple()} function usually
-raises \cdata{PyExc_TypeError}. If you have an argument whose value
-which must be in a particular range or must satisfy other conditions,
-\cdata{PyExc_ValueError} is appropriate.
-
-You can also define a new exception that is unique to your module.
-For this, you usually declare a static object variable at the
-beginning of your file, e.g.
-
-\begin{verbatim}
-static PyObject *SpamError;
-\end{verbatim}
-
-and initialize it in your module's initialization function
-(\cfunction{initspam()}) with an exception object, e.g. (leaving out
-the error checking for now):
-
-\begin{verbatim}
-void
-initspam()
-{
- PyObject *m, *d;
-
- m = Py_InitModule("spam", SpamMethods);
- d = PyModule_GetDict(m);
- SpamError = PyErr_NewException("spam.error", NULL, NULL);
- PyDict_SetItemString(d, "error", SpamError);
-}
-\end{verbatim}
-
-Note that the Python name for the exception object is
-\exception{spam.error}. The \cfunction{PyErr_NewException()} function
-may create either a string or class, depending on whether the
-\samp{-X} flag was passed to the interpreter. If \samp{-X} was used,
-\cdata{SpamError} will be a string object, otherwise it will be a
-class object with the base class being \exception{Exception},
-described in the \emph{Python Library Reference} under ``Built-in
-Exceptions.''
-
-
-\section{Back to the Example}
-\label{backToExample}
-
-Going back to our example function, you should now be able to
-understand this statement:
-
-\begin{verbatim}
- if (!PyArg_ParseTuple(args, "s", &command))
- return NULL;
-\end{verbatim}
-
-It returns \NULL{} (the error indicator for functions returning
-object pointers) if an error is detected in the argument list, relying
-on the exception set by \cfunction{PyArg_ParseTuple()}. Otherwise the
-string value of the argument has been copied to the local variable
-\cdata{command}. This is a pointer assignment and you are not supposed
-to modify the string to which it points (so in Standard \C{}, the variable
-\cdata{command} should properly be declared as \samp{const char
-*command}).
-
-The next statement is a call to the \UNIX{} function
-\cfunction{system()}, passing it the string we just got from
-\cfunction{PyArg_ParseTuple()}:
-
-\begin{verbatim}
- sts = system(command);
-\end{verbatim}
-
-Our \function{spam.system()} function must return the value of
-\cdata{sts} as a Python object. This is done using the function
-\cfunction{Py_BuildValue()}, which is something like the inverse of
-\cfunction{PyArg_ParseTuple()}: it takes a format string and an
-arbitrary number of \C{} values, and returns a new Python object.
-More info on \cfunction{Py_BuildValue()} is given later.
-
-\begin{verbatim}
- return Py_BuildValue("i", sts);
-\end{verbatim}
-
-In this case, it will return an integer object. (Yes, even integers
-are objects on the heap in Python!)
-
-If you have a \C{} function that returns no useful argument (a function
-returning \ctype{void}), the corresponding Python function must return
-\code{None}. You need this idiom to do so:
-
-\begin{verbatim}
- Py_INCREF(Py_None);
- return Py_None;
-\end{verbatim}
-
-\cdata{Py_None} is the \C{} name for the special Python object
-\code{None}. It is a genuine Python object rather than a \NULL{}
-pointer, which means ``error'' in most contexts, as we have seen.
-
-
-\section{The Module's Method Table and Initialization Function}
-\label{methodTable}
-
-I promised to show how \cfunction{spam_system()} is called from Python
-programs. First, we need to list its name and address in a ``method
-table'':
-
-\begin{verbatim}
-static PyMethodDef SpamMethods[] = {
- ...
- {"system", spam_system, METH_VARARGS},
- ...
- {NULL, NULL} /* Sentinel */
-};
-\end{verbatim}
-
-Note the third entry (\samp{METH_VARARGS}). This is a flag telling
-the interpreter the calling convention to be used for the \C{}
-function. It should normally always be \samp{METH_VARARGS} or
-\samp{METH_VARARGS | METH_KEYWORDS}; a value of \code{0} means that an
-obsolete variant of \cfunction{PyArg_ParseTuple()} is used.
-
-When using only \samp{METH_VARARGS}, the function should expect
-the Python-level parameters to be passed in as a tuple acceptable for
-parsing via \cfunction{PyArg_ParseTuple()}; more information on this
-function is provided below.
-
-The \constant{METH_KEYWORDS} bit may be set in the third field if keyword
-arguments should be passed to the function. In this case, the \C{}
-function should accept a third \samp{PyObject *} parameter which will
-be a dictionary of keywords. Use \cfunction{PyArg_ParseTupleAndKeywords()}
-to parse the arguemts to such a function.
-
-The method table must be passed to the interpreter in the module's
-initialization function (which should be the only non-\code{static}
-item defined in the module file):
-
-\begin{verbatim}
-void
-initspam()
-{
- (void) Py_InitModule("spam", SpamMethods);
-}
-\end{verbatim}
-
-When the Python program imports module \module{spam} for the first
-time, \cfunction{initspam()} is called. It calls
-\cfunction{Py_InitModule()}, which creates a ``module object'' (which
-is inserted in the dictionary \code{sys.modules} under the key
-\code{"spam"}), and inserts built-in function objects into the newly
-created module based upon the table (an array of \ctype{PyMethodDef}
-structures) that was passed as its second argument.
-\cfunction{Py_InitModule()} returns a pointer to the module object
-that it creates (which is unused here). It aborts with a fatal error
-if the module could not be initialized satisfactorily, so the caller
-doesn't need to check for errors.
-
-
-\section{Compilation and Linkage}
-\label{compilation}
-
-There are two more things to do before you can use your new extension:
-compiling and linking it with the Python system. If you use dynamic
-loading, the details depend on the style of dynamic loading your
-system uses; see the chapter ``Dynamic Loading'' for more information
-about this.
-
-If you can't use dynamic loading, or if you want to make your module a
-permanent part of the Python interpreter, you will have to change the
-configuration setup and rebuild the interpreter. Luckily, this is
-very simple: just place your file (\file{spammodule.c} for example) in
-the \file{Modules} directory, add a line to the file
-\file{Modules/Setup.local} describing your file:
-
-\begin{verbatim}
-spam spammodule.o
-\end{verbatim}
-
-and rebuild the interpreter by running \program{make} in the toplevel
-directory. You can also run \program{make} in the \file{Modules}
-subdirectory, but then you must first rebuild \file{Makefile}
-there by running `\program{make} Makefile'. (This is necessary each
-time you change the \file{Setup} file.)
-
-If your module requires additional libraries to link with, these can
-be listed on the line in the configuration file as well, for instance:
-
-\begin{verbatim}
-spam spammodule.o -lX11
-\end{verbatim}
-
-\section{Calling Python Functions From \C{}}
-\label{callingPython}
-
-So far we have concentrated on making \C{} functions callable from
-Python. The reverse is also useful: calling Python functions from \C{}.
-This is especially the case for libraries that support so-called
-``callback'' functions. If a \C{} interface makes use of callbacks, the
-equivalent Python often needs to provide a callback mechanism to the
-Python programmer; the implementation will require calling the Python
-callback functions from a \C{} callback. Other uses are also imaginable.
-
-Fortunately, the Python interpreter is easily called recursively, and
-there is a standard interface to call a Python function. (I won't
-dwell on how to call the Python parser with a particular string as
-input --- if you're interested, have a look at the implementation of
-the \samp{-c} command line option in \file{Python/pythonmain.c}.)
-
-Calling a Python function is easy. First, the Python program must
-somehow pass you the Python function object. You should provide a
-function (or some other interface) to do this. When this function is
-called, save a pointer to the Python function object (be careful to
-\cfunction{Py_INCREF()} it!) in a global variable --- or whereever you
-see fit. For example, the following function might be part of a module
-definition:
-
-\begin{verbatim}
-static PyObject *my_callback = NULL;
-
-static PyObject *
-my_set_callback(dummy, arg)
- PyObject *dummy, *arg;
-{
- Py_XDECREF(my_callback); /* Dispose of previous callback */
- Py_XINCREF(arg); /* Add a reference to new callback */
- my_callback = arg; /* Remember new callback */
- /* Boilerplate to return "None" */
- Py_INCREF(Py_None);
- return Py_None;
-}
-\end{verbatim}
-
-The macros \cfunction{Py_XINCREF()} and \cfunction{Py_XDECREF()}
-increment/decrement the reference count of an object and are safe in
-the presence of \NULL{} pointers. More info on them in the section on
-Reference Counts below.
-
-Later, when it is time to call the function, you call the \C{} function
-\cfunction{PyEval_CallObject()}. This function has two arguments, both
-pointers to arbitrary Python objects: the Python function, and the
-argument list. The argument list must always be a tuple object, whose
-length is the number of arguments. To call the Python function with
-no arguments, pass an empty tuple; to call it with one argument, pass
-a singleton tuple. \cfunction{Py_BuildValue()} returns a tuple when its
-format string consists of zero or more format codes between
-parentheses. For example:
-
-\begin{verbatim}
- int arg;
- PyObject *arglist;
- PyObject *result;
- ...
- arg = 123;
- ...
- /* Time to call the callback */
- arglist = Py_BuildValue("(i)", arg);
- result = PyEval_CallObject(my_callback, arglist);
- Py_DECREF(arglist);
-\end{verbatim}
-
-\cfunction{PyEval_CallObject()} returns a Python object pointer: this is
-the return value of the Python function. \cfunction{PyEval_CallObject()} is
-``reference-count-neutral'' with respect to its arguments. In the
-example a new tuple was created to serve as the argument list, which
-is \cfunction{Py_DECREF()}-ed immediately after the call.
-
-The return value of \cfunction{PyEval_CallObject()} is ``new'': either it
-is a brand new object, or it is an existing object whose reference
-count has been incremented. So, unless you want to save it in a
-global variable, you should somehow \cfunction{Py_DECREF()} the result,
-even (especially!) if you are not interested in its value.
-
-Before you do this, however, it is important to check that the return
-value isn't \NULL{}. If it is, the Python function terminated by
-raising an exception. If the \C{} code that called
-\cfunction{PyEval_CallObject()} is called from Python, it should now
-return an error indication to its Python caller, so the interpreter
-can print a stack trace, or the calling Python code can handle the
-exception. If this is not possible or desirable, the exception should
-be cleared by calling \cfunction{PyErr_Clear()}. For example:
-
-\begin{verbatim}
- if (result == NULL)
- return NULL; /* Pass error back */
- ...use result...
- Py_DECREF(result);
-\end{verbatim}
-
-Depending on the desired interface to the Python callback function,
-you may also have to provide an argument list to
-\cfunction{PyEval_CallObject()}. In some cases the argument list is
-also provided by the Python program, through the same interface that
-specified the callback function. It can then be saved and used in the
-same manner as the function object. In other cases, you may have to
-construct a new tuple to pass as the argument list. The simplest way
-to do this is to call \cfunction{Py_BuildValue()}. For example, if
-you want to pass an integral event code, you might use the following
-code:
-
-\begin{verbatim}
- PyObject *arglist;
- ...
- arglist = Py_BuildValue("(l)", eventcode);
- result = PyEval_CallObject(my_callback, arglist);
- Py_DECREF(arglist);
- if (result == NULL)
- return NULL; /* Pass error back */
- /* Here maybe use the result */
- Py_DECREF(result);
-\end{verbatim}
-
-Note the placement of \samp{Py_DECREF(arglist)} immediately after the
-call, before the error check! Also note that strictly spoken this
-code is not complete: \cfunction{Py_BuildValue()} may run out of
-memory, and this should be checked.
-
-
-\section{Format Strings for \cfunction{PyArg_ParseTuple()}}
-\label{parseTuple}
-
-The \cfunction{PyArg_ParseTuple()} function is declared as follows:
-
-\begin{verbatim}
-int PyArg_ParseTuple(PyObject *arg, char *format, ...);
-\end{verbatim}
-
-The \var{arg} argument must be a tuple object containing an argument
-list passed from Python to a \C{} function. The \var{format} argument
-must be a format string, whose syntax is explained below. The
-remaining arguments must be addresses of variables whose type is
-determined by the format string. For the conversion to succeed, the
-\var{arg} object must match the format and the format must be
-exhausted.
-
-Note that while \cfunction{PyArg_ParseTuple()} checks that the Python
-arguments have the required types, it cannot check the validity of the
-addresses of \C{} variables passed to the call: if you make mistakes
-there, your code will probably crash or at least overwrite random bits
-in memory. So be careful!
-
-A format string consists of zero or more ``format units''. A format
-unit describes one Python object; it is usually a single character or
-a parenthesized sequence of format units. With a few exceptions, a
-format unit that is not a parenthesized sequence normally corresponds
-to a single address argument to \cfunction{PyArg_ParseTuple()}. In the
-following description, the quoted form is the format unit; the entry
-in (round) parentheses is the Python object type that matches the
-format unit; and the entry in [square] brackets is the type of the \C{}
-variable(s) whose address should be passed. (Use the \samp{\&}
-operator to pass a variable's address.)
-
-\begin{description}
-
-\item[\samp{s} (string) {[char *]}]
-Convert a Python string to a \C{} pointer to a character string. You
-must not provide storage for the string itself; a pointer to an
-existing string is stored into the character pointer variable whose
-address you pass. The \C{} string is null-terminated. The Python string
-must not contain embedded null bytes; if it does, a \exception{TypeError}
-exception is raised.
-
-\item[\samp{s\#} (string) {[char *, int]}]
-This variant on \samp{s} stores into two \C{} variables, the first one
-a pointer to a character string, the second one its length. In this
-case the Python string may contain embedded null bytes.
-
-\item[\samp{z} (string or \code{None}) {[char *]}]
-Like \samp{s}, but the Python object may also be \code{None}, in which
-case the \C{} pointer is set to \NULL{}.
-
-\item[\samp{z\#} (string or \code{None}) {[char *, int]}]
-This is to \samp{s\#} as \samp{z} is to \samp{s}.
-
-\item[\samp{b} (integer) {[char]}]
-Convert a Python integer to a tiny int, stored in a \C{} \ctype{char}.
-
-\item[\samp{h} (integer) {[short int]}]
-Convert a Python integer to a \C{} \ctype{short int}.
-
-\item[\samp{i} (integer) {[int]}]
-Convert a Python integer to a plain \C{} \ctype{int}.
-
-\item[\samp{l} (integer) {[long int]}]
-Convert a Python integer to a \C{} \ctype{long int}.
-
-\item[\samp{c} (string of length 1) {[char]}]
-Convert a Python character, represented as a string of length 1, to a
-\C{} \ctype{char}.
-
-\item[\samp{f} (float) {[float]}]
-Convert a Python floating point number to a \C{} \ctype{float}.
-
-\item[\samp{d} (float) {[double]}]
-Convert a Python floating point number to a \C{} \ctype{double}.
-
-\item[\samp{D} (complex) {[Py_complex]}]
-Convert a Python complex number to a \C{} \ctype{Py_complex} structure.
-
-\item[\samp{O} (object) {[PyObject *]}]
-Store a Python object (without any conversion) in a \C{} object pointer.
-The \C{} program thus receives the actual object that was passed. The
-object's reference count is not increased. The pointer stored is not
-\NULL{}.
-
-\item[\samp{O!} (object) {[\var{typeobject}, PyObject *]}]
-Store a Python object in a \C{} object pointer. This is similar to
-\samp{O}, but takes two \C{} arguments: the first is the address of a
-Python type object, the second is the address of the \C{} variable (of
-type \ctype{PyObject *}) into which the object pointer is stored.
-If the Python object does not have the required type, a
-\exception{TypeError} exception is raised.
-
-\item[\samp{O\&} (object) {[\var{converter}, \var{anything}]}]
-Convert a Python object to a \C{} variable through a \var{converter}
-function. This takes two arguments: the first is a function, the
-second is the address of a \C{} variable (of arbitrary type), converted
-to \ctype{void *}. The \var{converter} function in turn is called as
-follows:
-
-\code{\var{status} = \var{converter}(\var{object}, \var{address});}
-
-where \var{object} is the Python object to be converted and
-\var{address} is the \ctype{void *} argument that was passed to
-\cfunction{PyArg_ConvertTuple()}. The returned \var{status} should be
-\code{1} for a successful conversion and \code{0} if the conversion
-has failed. When the conversion fails, the \var{converter} function
-should raise an exception.
-
-\item[\samp{S} (string) {[PyStringObject *]}]
-Like \samp{O} but requires that the Python object is a string object.
-Raises a \exception{TypeError} exception if the object is not a string
-object. The \C{} variable may also be declared as \ctype{PyObject *}.
-
-\item[\samp{(\var{items})} (tuple) {[\var{matching-items}]}]
-The object must be a Python tuple whose length is the number of format
-units in \var{items}. The \C{} arguments must correspond to the
-individual format units in \var{items}. Format units for tuples may
-be nested.
-
-\end{description}
-
-It is possible to pass Python long integers where integers are
-requested; however no proper range checking is done --- the most
-significant bits are silently truncated when the receiving field is
-too small to receive the value (actually, the semantics are inherited
-from downcasts in \C{} --- your milage may vary).
-
-A few other characters have a meaning in a format string. These may
-not occur inside nested parentheses. They are:
-
-\begin{description}
-
-\item[\samp{|}]
-Indicates that the remaining arguments in the Python argument list are
-optional. The \C{} variables corresponding to optional arguments should
-be initialized to their default value --- when an optional argument is
-not specified, \cfunction{PyArg_ParseTuple()} does not touch the contents
-of the corresponding \C{} variable(s).
-
-\item[\samp{:}]
-The list of format units ends here; the string after the colon is used
-as the function name in error messages (the ``associated value'' of
-the exceptions that \cfunction{PyArg_ParseTuple()} raises).
-
-\item[\samp{;}]
-The list of format units ends here; the string after the colon is used
-as the error message \emph{instead} of the default error message.
-Clearly, \samp{:} and \samp{;} mutually exclude each other.
-
-\end{description}
-
-Some example calls:
-
-\begin{verbatim}
- int ok;
- int i, j;
- long k, l;
- char *s;
- int size;
-
- ok = PyArg_ParseTuple(args, ""); /* No arguments */
- /* Python call: f() */
-
- ok = PyArg_ParseTuple(args, "s", &s); /* A string */
- /* Possible Python call: f('whoops!') */
-
- ok = PyArg_ParseTuple(args, "lls", &k, &l, &s); /* Two longs and a string */
- /* Possible Python call: f(1, 2, 'three') */
-
- ok = PyArg_ParseTuple(args, "(ii)s#", &i, &j, &s, &size);
- /* A pair of ints and a string, whose size is also returned */
- /* Possible Python call: f((1, 2), 'three') */
-
- {
- char *file;
- char *mode = "r";
- int bufsize = 0;
- ok = PyArg_ParseTuple(args, "s|si", &file, &mode, &bufsize);
- /* A string, and optionally another string and an integer */
- /* Possible Python calls:
- f('spam')
- f('spam', 'w')
- f('spam', 'wb', 100000) */
- }
-
- {
- int left, top, right, bottom, h, v;
- ok = PyArg_ParseTuple(args, "((ii)(ii))(ii)",
- &left, &top, &right, &bottom, &h, &v);
- /* A rectangle and a point */
- /* Possible Python call:
- f(((0, 0), (400, 300)), (10, 10)) */
- }
-
- {
- Py_complex c;
- ok = PyArg_ParseTuple(args, "D:myfunction", &c);
- /* a complex, also providing a function name for errors */
- /* Possible Python call: myfunction(1+2j) */
- }
-\end{verbatim}
-
-
-\section{Keyword Parsing with \cfunction{PyArg_ParseTupleAndKeywords()}}
-\label{parseTupleAndKeywords}
-
-The \cfunction{PyArg_ParseTupleAndKeywords()} function is declared as
-follows:
-
-\begin{verbatim}
-int PyArg_ParseTupleAndKeywords(PyObject *arg, PyObject *kwdict,
- char *format, char **kwlist, ...);
-\end{verbatim}
-
-The \var{arg} and \var{format} parameters are identical to those of the
-\cfunction{PyArg_ParseTuple()} function. The \var{kwdict} parameter
-is the dictionary of keywords received as the third parameter from the
-Python runtime. The \var{kwlist} parameter is a \NULL{}-terminated
-list of strings which identify the parameters; the names are matched
-with the type information from \var{format} from left to right.
-
-\strong{Note:} Nested tuples cannot be parsed when using keyword
-arguments! Keyword parameters passed in which are not present in the
-\var{kwlist} will cause \exception{TypeError} to be raised.
-
-Here is an example module which uses keywords, based on an example by
-Geoff Philbrick (\email{philbrick@hks.com}):%
-\index{Philbrick, Geoff}
-
-\begin{verbatim}
-#include <stdio.h>
-#include "Python.h"
-
-static PyObject *
-keywdarg_parrot(self, args, keywds)
- PyObject *self;
- PyObject *args;
- PyObject *keywds;
-{
- int voltage;
- char *state = "a stiff";
- char *action = "voom";
- char *type = "Norwegian Blue";
-
- static char *kwlist[] = {"voltage", "state", "action", "type", NULL};
-
- if (!PyArg_ParseTupleAndKeywords(args, keywds, "i|sss", kwlist,
- &voltage, &state, &action, &type))
- return NULL;
-
- printf("-- This parrot wouldn't %s if you put %i Volts through it.\n",
- action, voltage);
- printf("-- Lovely plumage, the %s -- It's %s!\n", type, state);
-
- Py_INCREF(Py_None);
-
- return Py_None;
-}
-
-static PyMethodDef keywdarg_methods[] = {
- {"parrot", (PyCFunction)keywdarg_parrot, METH_VARARGS|METH_KEYWORDS},
- {NULL, NULL} /* sentinel */
-};
-
-void
-initkeywdarg()
-{
- /* Create the module and add the functions */
- Py_InitModule("keywdarg", keywdarg_methods);
-}
-\end{verbatim}
-
-
-\section{The \cfunction{Py_BuildValue()} Function}
-\label{buildValue}
-
-This function is the counterpart to \cfunction{PyArg_ParseTuple()}. It is
-declared as follows:
-
-\begin{verbatim}
-PyObject *Py_BuildValue(char *format, ...);
-\end{verbatim}
-
-It recognizes a set of format units similar to the ones recognized by
-\cfunction{PyArg_ParseTuple()}, but the arguments (which are input to the
-function, not output) must not be pointers, just values. It returns a
-new Python object, suitable for returning from a \C{} function called
-from Python.
-
-One difference with \cfunction{PyArg_ParseTuple()}: while the latter
-requires its first argument to be a tuple (since Python argument lists
-are always represented as tuples internally),
-\cfunction{Py_BuildValue()} does not always build a tuple. It builds
-a tuple only if its format string contains two or more format units.
-If the format string is empty, it returns \code{None}; if it contains
-exactly one format unit, it returns whatever object is described by
-that format unit. To force it to return a tuple of size 0 or one,
-parenthesize the format string.
-
-In the following description, the quoted form is the format unit; the
-entry in (round) parentheses is the Python object type that the format
-unit will return; and the entry in [square] brackets is the type of
-the \C{} value(s) to be passed.
-
-The characters space, tab, colon and comma are ignored in format
-strings (but not within format units such as \samp{s\#}). This can be
-used to make long format strings a tad more readable.
-
-\begin{description}
-
-\item[\samp{s} (string) {[char *]}]
-Convert a null-terminated \C{} string to a Python object. If the \C{}
-string pointer is \NULL{}, \code{None} is returned.
-
-\item[\samp{s\#} (string) {[char *, int]}]
-Convert a \C{} string and its length to a Python object. If the \C{} string
-pointer is \NULL{}, the length is ignored and \code{None} is
-returned.
-
-\item[\samp{z} (string or \code{None}) {[char *]}]
-Same as \samp{s}.
-
-\item[\samp{z\#} (string or \code{None}) {[char *, int]}]
-Same as \samp{s\#}.
-
-\item[\samp{i} (integer) {[int]}]
-Convert a plain \C{} \ctype{int} to a Python integer object.
-
-\item[\samp{b} (integer) {[char]}]
-Same as \samp{i}.
-
-\item[\samp{h} (integer) {[short int]}]
-Same as \samp{i}.
-
-\item[\samp{l} (integer) {[long int]}]
-Convert a \C{} \ctype{long int} to a Python integer object.
-
-\item[\samp{c} (string of length 1) {[char]}]
-Convert a \C{} \ctype{int} representing a character to a Python string of
-length 1.
-
-\item[\samp{d} (float) {[double]}]
-Convert a \C{} \ctype{double} to a Python floating point number.
-
-\item[\samp{f} (float) {[float]}]
-Same as \samp{d}.
-
-\item[\samp{O} (object) {[PyObject *]}]
-Pass a Python object untouched (except for its reference count, which
-is incremented by one). If the object passed in is a \NULL{}
-pointer, it is assumed that this was caused because the call producing
-the argument found an error and set an exception. Therefore,
-\cfunction{Py_BuildValue()} will return \NULL{} but won't raise an
-exception. If no exception has been raised yet,
-\cdata{PyExc_SystemError} is set.
-
-\item[\samp{S} (object) {[PyObject *]}]
-Same as \samp{O}.
-
-\item[\samp{O\&} (object) {[\var{converter}, \var{anything}]}]
-Convert \var{anything} to a Python object through a \var{converter}
-function. The function is called with \var{anything} (which should be
-compatible with \ctype{void *}) as its argument and should return a
-``new'' Python object, or \NULL{} if an error occurred.
-
-\item[\samp{(\var{items})} (tuple) {[\var{matching-items}]}]
-Convert a sequence of \C{} values to a Python tuple with the same number
-of items.
-
-\item[\samp{[\var{items}]} (list) {[\var{matching-items}]}]
-Convert a sequence of \C{} values to a Python list with the same number
-of items.
-
-\item[\samp{\{\var{items}\}} (dictionary) {[\var{matching-items}]}]
-Convert a sequence of \C{} values to a Python dictionary. Each pair of
-consecutive \C{} values adds one item to the dictionary, serving as key
-and value, respectively.
-
-\end{description}
-
-If there is an error in the format string, the
-\cdata{PyExc_SystemError} exception is raised and \NULL{} returned.
-
-Examples (to the left the call, to the right the resulting Python value):
-
-\begin{verbatim}
- Py_BuildValue("") None
- Py_BuildValue("i", 123) 123
- Py_BuildValue("iii", 123, 456, 789) (123, 456, 789)
- Py_BuildValue("s", "hello") 'hello'
- Py_BuildValue("ss", "hello", "world") ('hello', 'world')
- Py_BuildValue("s#", "hello", 4) 'hell'
- Py_BuildValue("()") ()
- Py_BuildValue("(i)", 123) (123,)
- Py_BuildValue("(ii)", 123, 456) (123, 456)
- Py_BuildValue("(i,i)", 123, 456) (123, 456)
- Py_BuildValue("[i,i]", 123, 456) [123, 456]
- Py_BuildValue("{s:i,s:i}",
- "abc", 123, "def", 456) {'abc': 123, 'def': 456}
- Py_BuildValue("((ii)(ii)) (ii)",
- 1, 2, 3, 4, 5, 6) (((1, 2), (3, 4)), (5, 6))
-\end{verbatim}
-
-\section{Reference Counts}
-\label{refcounts}
-
-%\subsection{Introduction}
-
-In languages like \C{} or \Cpp{}, the programmer is responsible for
-dynamic allocation and deallocation of memory on the heap. In \C{},
-this is done using the functions \cfunction{malloc()} and
-\cfunction{free()}. In \Cpp{}, the operators \keyword{new} and
-\keyword{delete} are used with essentially the same meaning; they are
-actually implemented using \cfunction{malloc()} and
-\cfunction{free()}, so we'll restrict the following discussion to the
-latter.
-
-Every block of memory allocated with \cfunction{malloc()} should
-eventually be returned to the pool of available memory by exactly one
-call to \cfunction{free()}. It is important to call
-\cfunction{free()} at the right time. If a block's address is
-forgotten but \cfunction{free()} is not called for it, the memory it
-occupies cannot be reused until the program terminates. This is
-called a \dfn{memory leak}. On the other hand, if a program calls
-\cfunction{free()} for a block and then continues to use the block, it
-creates a conflict with re-use of the block through another
-\cfunction{malloc()} call. This is called \dfn{using freed memory}.
-It has the same bad consequences as referencing uninitialized data ---
-core dumps, wrong results, mysterious crashes.
-
-Common causes of memory leaks are unusual paths through the code. For
-instance, a function may allocate a block of memory, do some
-calculation, and then free the block again. Now a change in the
-requirements for the function may add a test to the calculation that
-detects an error condition and can return prematurely from the
-function. It's easy to forget to free the allocated memory block when
-taking this premature exit, especially when it is added later to the
-code. Such leaks, once introduced, often go undetected for a long
-time: the error exit is taken only in a small fraction of all calls,
-and most modern machines have plenty of virtual memory, so the leak
-only becomes apparent in a long-running process that uses the leaking
-function frequently. Therefore, it's important to prevent leaks from
-happening by having a coding convention or strategy that minimizes
-this kind of errors.
-
-Since Python makes heavy use of \cfunction{malloc()} and
-\cfunction{free()}, it needs a strategy to avoid memory leaks as well
-as the use of freed memory. The chosen method is called
-\dfn{reference counting}. The principle is simple: every object
-contains a counter, which is incremented when a reference to the
-object is stored somewhere, and which is decremented when a reference
-to it is deleted. When the counter reaches zero, the last reference
-to the object has been deleted and the object is freed.
-
-An alternative strategy is called \dfn{automatic garbage collection}.
-(Sometimes, reference counting is also referred to as a garbage
-collection strategy, hence my use of ``automatic'' to distinguish the
-two.) The big advantage of automatic garbage collection is that the
-user doesn't need to call \cfunction{free()} explicitly. (Another claimed
-advantage is an improvement in speed or memory usage --- this is no
-hard fact however.) The disadvantage is that for \C{}, there is no
-truly portable automatic garbage collector, while reference counting
-can be implemented portably (as long as the functions \cfunction{malloc()}
-and \cfunction{free()} are available --- which the \C{} Standard guarantees).
-Maybe some day a sufficiently portable automatic garbage collector
-will be available for \C{}. Until then, we'll have to live with
-reference counts.
-
-\subsection{Reference Counting in Python}
-\label{refcountsInPython}
-
-There are two macros, \code{Py_INCREF(x)} and \code{Py_DECREF(x)},
-which handle the incrementing and decrementing of the reference count.
-\cfunction{Py_DECREF()} also frees the object when the count reaches zero.
-For flexibility, it doesn't call \cfunction{free()} directly --- rather, it
-makes a call through a function pointer in the object's \dfn{type
-object}. For this purpose (and others), every object also contains a
-pointer to its type object.
-
-The big question now remains: when to use \code{Py_INCREF(x)} and
-\code{Py_DECREF(x)}? Let's first introduce some terms. Nobody
-``owns'' an object; however, you can \dfn{own a reference} to an
-object. An object's reference count is now defined as the number of
-owned references to it. The owner of a reference is responsible for
-calling \cfunction{Py_DECREF()} when the reference is no longer
-needed. Ownership of a reference can be transferred. There are three
-ways to dispose of an owned reference: pass it on, store it, or call
-\cfunction{Py_DECREF()}. Forgetting to dispose of an owned reference
-creates a memory leak.
-
-It is also possible to \dfn{borrow}\footnote{The metaphor of
-``borrowing'' a reference is not completely correct: the owner still
-has a copy of the reference.} a reference to an object. The borrower
-of a reference should not call \cfunction{Py_DECREF()}. The borrower must
-not hold on to the object longer than the owner from which it was
-borrowed. Using a borrowed reference after the owner has disposed of
-it risks using freed memory and should be avoided
-completely.\footnote{Checking that the reference count is at least 1
-\strong{does not work} --- the reference count itself could be in
-freed memory and may thus be reused for another object!}
-
-The advantage of borrowing over owning a reference is that you don't
-need to take care of disposing of the reference on all possible paths
-through the code --- in other words, with a borrowed reference you
-don't run the risk of leaking when a premature exit is taken. The
-disadvantage of borrowing over leaking is that there are some subtle
-situations where in seemingly correct code a borrowed reference can be
-used after the owner from which it was borrowed has in fact disposed
-of it.
-
-A borrowed reference can be changed into an owned reference by calling
-\cfunction{Py_INCREF()}. This does not affect the status of the owner from
-which the reference was borrowed --- it creates a new owned reference,
-and gives full owner responsibilities (i.e., the new owner must
-dispose of the reference properly, as well as the previous owner).
-
-\subsection{Ownership Rules}
-\label{ownershipRules}
-
-Whenever an object reference is passed into or out of a function, it
-is part of the function's interface specification whether ownership is
-transferred with the reference or not.
-
-Most functions that return a reference to an object pass on ownership
-with the reference. In particular, all functions whose function it is
-to create a new object, e.g.\ \cfunction{PyInt_FromLong()} and
-\cfunction{Py_BuildValue()}, pass ownership to the receiver. Even if in
-fact, in some cases, you don't receive a reference to a brand new
-object, you still receive ownership of the reference. For instance,
-\cfunction{PyInt_FromLong()} maintains a cache of popular values and can
-return a reference to a cached item.
-
-Many functions that extract objects from other objects also transfer
-ownership with the reference, for instance
-\cfunction{PyObject_GetAttrString()}. The picture is less clear, here,
-however, since a few common routines are exceptions:
-\cfunction{PyTuple_GetItem()}, \cfunction{PyList_GetItem()},
-\cfunction{PyDict_GetItem()}, and \cfunction{PyDict_GetItemString()}
-all return references that you borrow from the tuple, list or
-dictionary.
-
-The function \cfunction{PyImport_AddModule()} also returns a borrowed
-reference, even though it may actually create the object it returns:
-this is possible because an owned reference to the object is stored in
-\code{sys.modules}.
-
-When you pass an object reference into another function, in general,
-the function borrows the reference from you --- if it needs to store
-it, it will use \cfunction{Py_INCREF()} to become an independent
-owner. There are exactly two important exceptions to this rule:
-\cfunction{PyTuple_SetItem()} and \cfunction{PyList_SetItem()}. These
-functions take over ownership of the item passed to them --- even if
-they fail! (Note that \cfunction{PyDict_SetItem()} and friends don't
-take over ownership --- they are ``normal.'')
-
-When a \C{} function is called from Python, it borrows references to its
-arguments from the caller. The caller owns a reference to the object,
-so the borrowed reference's lifetime is guaranteed until the function
-returns. Only when such a borrowed reference must be stored or passed
-on, it must be turned into an owned reference by calling
-\cfunction{Py_INCREF()}.
-
-The object reference returned from a \C{} function that is called from
-Python must be an owned reference --- ownership is tranferred from the
-function to its caller.
-
-\subsection{Thin Ice}
-\label{thinIce}
-
-There are a few situations where seemingly harmless use of a borrowed
-reference can lead to problems. These all have to do with implicit
-invocations of the interpreter, which can cause the owner of a
-reference to dispose of it.
-
-The first and most important case to know about is using
-\cfunction{Py_DECREF()} on an unrelated object while borrowing a
-reference to a list item. For instance:
-
-\begin{verbatim}
-bug(PyObject *list) {
- PyObject *item = PyList_GetItem(list, 0);
-
- PyList_SetItem(list, 1, PyInt_FromLong(0L));
- PyObject_Print(item, stdout, 0); /* BUG! */
-}
-\end{verbatim}
-
-This function first borrows a reference to \code{list[0]}, then
-replaces \code{list[1]} with the value \code{0}, and finally prints
-the borrowed reference. Looks harmless, right? But it's not!
-
-Let's follow the control flow into \cfunction{PyList_SetItem()}. The list
-owns references to all its items, so when item 1 is replaced, it has
-to dispose of the original item 1. Now let's suppose the original
-item 1 was an instance of a user-defined class, and let's further
-suppose that the class defined a \method{__del__()} method. If this
-class instance has a reference count of 1, disposing of it will call
-its \method{__del__()} method.
-
-Since it is written in Python, the \method{__del__()} method can execute
-arbitrary Python code. Could it perhaps do something to invalidate
-the reference to \code{item} in \cfunction{bug()}? You bet! Assuming
-that the list passed into \cfunction{bug()} is accessible to the
-\method{__del__()} method, it could execute a statement to the effect of
-\samp{del list[0]}, and assuming this was the last reference to that
-object, it would free the memory associated with it, thereby
-invalidating \code{item}.
-
-The solution, once you know the source of the problem, is easy:
-temporarily increment the reference count. The correct version of the
-function reads:
-
-\begin{verbatim}
-no_bug(PyObject *list) {
- PyObject *item = PyList_GetItem(list, 0);
-
- Py_INCREF(item);
- PyList_SetItem(list, 1, PyInt_FromLong(0L));
- PyObject_Print(item, stdout, 0);
- Py_DECREF(item);
-}
-\end{verbatim}
-
-This is a true story. An older version of Python contained variants
-of this bug and someone spent a considerable amount of time in a \C{}
-debugger to figure out why his \method{__del__()} methods would fail...
-
-The second case of problems with a borrowed reference is a variant
-involving threads. Normally, multiple threads in the Python
-interpreter can't get in each other's way, because there is a global
-lock protecting Python's entire object space. However, it is possible
-to temporarily release this lock using the macro
-\code{Py_BEGIN_ALLOW_THREADS}, and to re-acquire it using
-\code{Py_END_ALLOW_THREADS}. This is common around blocking I/O
-calls, to let other threads use the CPU while waiting for the I/O to
-complete. Obviously, the following function has the same problem as
-the previous one:
-
-\begin{verbatim}
-bug(PyObject *list) {
- PyObject *item = PyList_GetItem(list, 0);
- Py_BEGIN_ALLOW_THREADS
- ...some blocking I/O call...
- Py_END_ALLOW_THREADS
- PyObject_Print(item, stdout, 0); /* BUG! */
-}
-\end{verbatim}
-
-\subsection{NULL Pointers}
-\label{nullPointers}
-
-In general, functions that take object references as arguments do not
-expect you to pass them \NULL{} pointers, and will dump core (or
-cause later core dumps) if you do so. Functions that return object
-references generally return \NULL{} only to indicate that an
-exception occurred. The reason for not testing for \NULL{}
-arguments is that functions often pass the objects they receive on to
-other function --- if each function were to test for \NULL{},
-there would be a lot of redundant tests and the code would run slower.
-
-It is better to test for \NULL{} only at the ``source'', i.e.\
-when a pointer that may be \NULL{} is received, e.g.\ from
-\cfunction{malloc()} or from a function that may raise an exception.
-
-The macros \cfunction{Py_INCREF()} and \cfunction{Py_DECREF()}
-do not check for \NULL{} pointers --- however, their variants
-\cfunction{Py_XINCREF()} and \cfunction{Py_XDECREF()} do.
-
-The macros for checking for a particular object type
-(\code{Py\var{type}_Check()}) don't check for \NULL{} pointers ---
-again, there is much code that calls several of these in a row to test
-an object against various different expected types, and this would
-generate redundant tests. There are no variants with \NULL{}
-checking.
-
-The \C{} function calling mechanism guarantees that the argument list
-passed to \C{} functions (\code{args} in the examples) is never
-\NULL{} --- in fact it guarantees that it is always a tuple.%
-\footnote{These guarantees don't hold when you use the ``old'' style
-calling convention --- this is still found in much existing code.}
-
-It is a severe error to ever let a \NULL{} pointer ``escape'' to
-the Python user.
-
-
-\section{Writing Extensions in \Cpp{}}
-\label{cplusplus}
-
-It is possible to write extension modules in \Cpp{}. Some restrictions
-apply. If the main program (the Python interpreter) is compiled and
-linked by the \C{} compiler, global or static objects with constructors
-cannot be used. This is not a problem if the main program is linked
-by the \Cpp{} compiler. Functions that will be called by the
-Python interpreter (in particular, module initalization functions)
-have to be declared using \code{extern "C"}.
-It is unnecessary to enclose the Python header files in
-\code{extern "C" \{...\}} --- they use this form already if the symbol
-\samp{__cplusplus} is defined (all recent \Cpp{} compilers define this
-symbol).
-
-\chapter{Embedding Python in another application}
-\label{embedding}
-
-Embedding Python is similar to extending it, but not quite. The
-difference is that when you extend Python, the main program of the
-application is still the Python interpreter, while if you embed
-Python, the main program may have nothing to do with Python ---
-instead, some parts of the application occasionally call the Python
-interpreter to run some Python code.
-
-So if you are embedding Python, you are providing your own main
-program. One of the things this main program has to do is initialize
-the Python interpreter. At the very least, you have to call the
-function \cfunction{Py_Initialize()}. There are optional calls to
-pass command line arguments to Python. Then later you can call the
-interpreter from any part of the application.
-
-There are several different ways to call the interpreter: you can pass
-a string containing Python statements to
-\cfunction{PyRun_SimpleString()}, or you can pass a stdio file pointer
-and a file name (for identification in error messages only) to
-\cfunction{PyRun_SimpleFile()}. You can also call the lower-level
-operations described in the previous chapters to construct and use
-Python objects.
-
-A simple demo of embedding Python can be found in the directory
-\file{Demo/embed}.
-
-
-\section{Embedding Python in \Cpp{}}
-\label{embeddingInCplusplus}
-
-It is also possible to embed Python in a \Cpp{} program; precisely how this
-is done will depend on the details of the \Cpp{} system used; in general you
-will need to write the main program in \Cpp{}, and use the \Cpp{} compiler
-to compile and link your program. There is no need to recompile Python
-itself using \Cpp{}.
-
-
-\chapter{Dynamic Loading}
-\label{dynload}
-
-On most modern systems it is possible to configure Python to support
-dynamic loading of extension modules implemented in \C{}. When shared
-libraries are used dynamic loading is configured automatically;
-otherwise you have to select it as a build option (see below). Once
-configured, dynamic loading is trivial to use: when a Python program
-executes \code{import spam}, the search for modules tries to find a
-file \file{spammodule.o} (\file{spammodule.so} when using shared
-libraries) in the module search path,%
-\indexiii{module}{search}{path}
-and if one is found, it is loaded into the executing binary and
-executed. Once loaded, the module acts just like a built-in extension
-module.
-
-The advantages of dynamic loading are twofold: the ``core'' Python
-binary gets smaller, and users can extend Python with their own
-modules implemented in \C{} without having to build and maintain their
-own copy of the Python interpreter. There are also disadvantages:
-dynamic loading isn't available on all systems (this just means that
-on some systems you have to use static loading), and dynamically
-loading a module that was compiled for a different version of Python
-(e.g. with a different representation of objects) may dump core.
-
-
-\section{Configuring and Building the Interpreter for Dynamic Loading}
-\label{dynloadConfig}
-
-There are three styles of dynamic loading: one using shared libraries,
-one using SGI IRIX 4 dynamic loading, and one using GNU dynamic
-loading.
-
-\subsection{Shared Libraries}
-\label{sharedlibs}
-
-The following systems support dynamic loading using shared libraries:
-SunOS 4; Solaris 2; SGI IRIX 5 (but not SGI IRIX 4!), Linux, FreeBSD,
-NetBSD; and probably all systems derived from SVR4, or at least those
-SVR4 derivatives that support shared libraries (are there any that
-don't?).
-
-You don't need to do anything to configure dynamic loading on these
-systems --- the \file{configure} detects the presence of the
-\code{<dlfcn.h>} header file and automatically configures dynamic
-loading.
-
-\subsection{SGI IRIX 4 Dynamic Loading}
-\label{irixDynload}
-
-Only SGI IRIX 4 supports dynamic loading of modules using SGI dynamic
-loading. (SGI IRIX 5 might also support it but it is inferior to
-using shared libraries so there is no reason to; a small test didn't
-work right away so I gave up trying to support it.)
-
-Before you build Python, you first need to fetch and build the
-\code{dl} package written by Jack Jansen. This is available by
-anonymous ftp from \url{ftp://ftp.cwi.nl/pub/dynload/}, file
-\file{dl-1.6.tar.Z}. (The version number may change.) Follow the
-instructions in the package's \file{README} file to build it.
-
-Once you have built \code{dl}, you can configure Python to use it. To
-this end, you run the \program{configure} script with the option
-\code{--with-dl=\var{directory}} where \var{directory} is the absolute
-pathname of the \code{dl} directory.
-
-Now build and install Python as you normally would (see the
-\file{README} file in the toplevel Python directory.)
-
-\subsection{GNU Dynamic Loading}
-\label{gnuDynload}
-
-GNU dynamic loading supports (according to its \file{README} file) the
-following hardware and software combinations: VAX (Ultrix), Sun 3
-(SunOS 3.4 and 4.0), Sparc (SunOS 4.0), Sequent Symmetry (Dynix), and
-Atari ST. There is no reason to use it on a Sparc; I haven't seen a
-Sun 3 for years so I don't know if these have shared libraries or not.
-
-You need to fetch and build two packages.
-One is GNU DLD. All development of this code has been done with DLD
-version 3.2.3, which is available by anonymous ftp from
-\url{ftp://ftp.cwi.nl/pub/dynload}, file
-\file{dld-3.2.3.tar.Z}. (A more recent version of DLD is available
-via \url{http://www-swiss.ai.mit.edu/~jaffer/DLD.html} but this has
-not been tested.)
-The other package needed is an
-emulation of Jack Jansen's \code{dl} package that I wrote on top of
-GNU DLD 3.2.3. This is available from the same host and directory,
-file \file{dl-dld-1.1.tar.Z}. (The version number may change --- but I doubt
-it will.) Follow the instructions in each package's \file{README}
-file to configure and build them.
-
-Now configure Python. Run the \file{configure} script with the option
-\code{--with-dl-dld=\var{dl-directory},\var{dld-directory}} where
-\var{dl-directory} is the absolute pathname of the directory where you
-have built the \file{dl-dld} package, and \var{dld-directory} is that
-of the GNU DLD package. The Python interpreter you build hereafter
-will support GNU dynamic loading.
-
-
-\section{Building a Dynamically Loadable Module}
-\label{makedynload}
-
-Since there are three styles of dynamic loading, there are also three
-groups of instructions for building a dynamically loadable module.
-Instructions common for all three styles are given first. Assuming
-your module is called \module{spam}, the source filename must be
-\file{spammodule.c}, so the object name is \file{spammodule.o}. The
-module must be written as a normal Python extension module (as
-described earlier).
-
-Note that in all cases you will have to create your own Makefile that
-compiles your module file(s). This Makefile will have to pass two
-\samp{-I} arguments to the \C{} compiler which will make it find the
-Python header files. If the Make variable \makevar{PYTHONTOP} points to
-the toplevel Python directory, your \makevar{CFLAGS} Make variable should
-contain the options \samp{-I\$(PYTHONTOP) -I\$(PYTHONTOP)/Include}.
-(Most header files are in the \file{Include/} subdirectory, but the
-\file{config.h} header lives in the toplevel directory.)
-
-
-\subsection{Shared Libraries}
-\label{linking}
-
-You must link the \file{.o} file to produce a shared library. This is
-done using a special invocation of the \UNIX{} loader/linker,
-\manpage{ld}{1}. Unfortunately the invocation differs slightly per
-system.
-
-On SunOS 4, use
-\begin{verbatim}
-ld spammodule.o -o spammodule.so
-\end{verbatim}
-
-On Solaris 2, use
-\begin{verbatim}
-ld -G spammodule.o -o spammodule.so
-\end{verbatim}
-
-On SGI IRIX 5, use
-\begin{verbatim}
-ld -shared spammodule.o -o spammodule.so
-\end{verbatim}
-
-On other systems, consult the manual page for \manpage{ld}{1} to find
-what flags, if any, must be used.
-
-If your extension module uses system libraries that haven't already
-been linked with Python (e.g. a windowing system), these must be
-passed to the \program{ld} command as \samp{-l} options after the
-\samp{.o} file.
-
-The resulting file \file{spammodule.so} must be copied into a directory
-along the Python module search path.
-
-
-\subsection{SGI IRIX 4 Dynamic Loading}
-\label{irixLinking}
-
-\strong{IMPORTANT:} You must compile your extension module with the
-additional \C{} flag \samp{-G0} (or \samp{-G 0}). This instructs the
-assembler to generate position-independent code.
-
-You don't need to link the resulting \file{spammodule.o} file; just
-copy it into a directory along the Python module search path.%
-\indexiii{module}{search}{path}
-
-The first time your extension is loaded, it takes some extra time and
-a few messages may be printed. This creates a file
-\file{spammodule.ld} which is an image that can be loaded quickly into
-the Python interpreter process. When a new Python interpreter is
-installed, the \code{dl} package detects this and rebuilds
-\file{spammodule.ld}. The file \file{spammodule.ld} is placed in the
-directory where \file{spammodule.o} was found, unless this directory is
-unwritable; in that case it is placed in a temporary
-directory.\footnote{Check the manual page of the \code{dl} package for
-details.}
-
-If your extension modules uses additional system libraries, you must
-create a file \file{spammodule.libs} in the same directory as the
-\file{spammodule.o}. This file should contain one or more lines with
-whitespace-separated options that will be passed to the linker ---
-normally only \samp{-l} options or absolute pathnames of libraries
-(\samp{.a} files) should be used.
-
-
-\subsection{GNU Dynamic Loading}
-\label{gnuLinking}
-
-Just copy \file{spammodule.o} into a directory along the Python module
-search path.%
-\indexiii{module}{search}{path}
-
-If your extension modules uses additional system libraries, you must
-create a file \file{spammodule.libs} in the same directory as the
-\file{spammodule.o}. This file should contain one or more lines with
-whitespace-separated absolute pathnames of libraries (\samp{.a}
-files). No \samp{-l} options can be used.
-
-
-\end{document}