\documentclass{howto} \usepackage{distutils} % $Id$ % Don't write extensive text for new sections; I'll do that. % Feel free to add commented-out reminders of things that need % to be covered. --amk % XXX pydoc can display links to module docs -- but when? % \title{What's New in Python 2.4} \release{0.1} \author{A.M.\ Kuchling} \authoraddress{ \strong{Python Software Foundation}\\ Email: \email{amk@amk.ca} } \begin{document} \maketitle \tableofcontents This article explains the new features in Python 2.4 alpha1, scheduled for release in early July 2004. The final version of Python 2.4 is expected to be released around September 2004. Python 2.4 is a medium-sized release. It doesn't introduce as many changes as the radical Python 2.2, but introduces more features than the conservative 2.3 release did. The most significant new language feature (as of this writing) is the addition of generator expressions; most other changes are to the standard library. This article doesn't attempt to provide a complete specification of every single new feature, but instead provides a convenient overview. For full details, you should refer to the documentation for Python 2.4, such as the \citetitle[../lib/lib.html]{Python Library Reference} and the \citetitle[../ref/ref.html]{Python Reference Manual}. If you want to understand the complete implementation and design rationale, refer to the PEP for a particular new feature or to the module documentation. %====================================================================== \section{PEP 218: Built-In Set Objects} Python 2.3 introduced the \module{sets} module. C implementations of set data types have now been added to the Python core as two new built-in types, \function{set(\var{iterable})} and \function{frozenset(\var{iterable})}. They provide high speed operations for membership testing, for eliminating duplicates from sequences, and for mathematical operations like unions, intersections, differences, and symmetric differences. \begin{verbatim} >>> a = set('abracadabra') # form a set from a string >>> 'z' in a # fast membership testing False >>> a # unique letters in a set(['a', 'r', 'b', 'c', 'd']) >>> ''.join(a) # convert back into a string 'arbcd' >>> b = set('alacazam') # form a second set >>> a - b # letters in a but not in b set(['r', 'd', 'b']) >>> a | b # letters in either a or b set(['a', 'c', 'r', 'd', 'b', 'm', 'z', 'l']) >>> a & b # letters in both a and b set(['a', 'c']) >>> a ^ b # letters in a or b but not both set(['r', 'd', 'b', 'm', 'z', 'l']) >>> a.add('z') # add a new element >>> a.update('wxy') # add multiple new elements >>> a set(['a', 'c', 'b', 'd', 'r', 'w', 'y', 'x', 'z']) >>> a.remove('x') # take one element out >>> a set(['a', 'c', 'b', 'd', 'r', 'w', 'y', 'z']) \end{verbatim} The \function{frozenset} type is an immutable version of \function{set}. Since it is immutable and hashable, it may be used as a dictionary key or as a member of another set. The \module{sets} module remains in the standard library, and may be useful if you wish to subclass the \class{Set} or \class{ImmutableSet} classes. There are currently no plans to deprecate the module. \begin{seealso} \seepep{218}{Adding a Built-In Set Object Type}{Originally proposed by Greg Wilson and ultimately implemented by Raymond Hettinger.} \end{seealso} %====================================================================== \section{PEP 237: Unifying Long Integers and Integers} The lengthy transition process for this PEP, begun in Python 2.2, takes another step forward in Python 2.4. In 2.3, certain integer operations that would behave differently after int/long unification triggered \exception{FutureWarning} warnings and returned values limited to 32 or 64 bits (depending on your platform). In 2.4, these expressions no longer produce a warning and instead produce a different result that's usually a long integer. The problematic expressions are primarily left shifts and lengthy hexadecimal and octal constants. For example, \code{2 << 32} results in a warning in 2.3, evaluating to 0 on 32-bit platforms. In Python 2.4, this expression now returns the correct answer, 8589934592. \begin{seealso} \seepep{237}{Unifying Long Integers and Integers}{Original PEP written by Moshe Zadka and GvR. The changes for 2.4 were implemented by Kalle Svensson.} \end{seealso} %====================================================================== \section{PEP 289: Generator Expressions} The iterator feature introduced in Python 2.2 makes it easier to write programs that loop through large data sets without having the entire data set in memory at one time. Programmers can use iterators and the \module{itertools} module to write code in a fairly functional style. % XXX avoid metaphor List comprehensions have been the fly in the ointment because they produce a Python list object containing all of the items, unavoidably pulling them all into memory. When trying to write a functionally-styled program, it would be natural to write something like: \begin{verbatim} links = [link for link in get_all_links() if not link.followed] for link in links: ... \end{verbatim} instead of \begin{verbatim} for link in get_all_links(): if link.followed: continue ... \end{verbatim} The first form is more concise and perhaps more readable, but if you're dealing with a large number of link objects the second form would have to be used. Generator expressions work similarly to list comprehensions but don't materialize the entire list; instead they create a generator that will return elements one by one. The above example could be written as: \begin{verbatim} links = (link for link in get_all_links() if not link.followed) for link in links: ... \end{verbatim} Generator expressions always have to be written inside parentheses, as in the above example. The parentheses signalling a function call also count, so if you want to create a iterator that will be immediately passed to a function you could write: \begin{verbatim} print sum(obj.count for obj in list_all_objects()) \end{verbatim} Generator expressions differ from list comprehensions in various small ways. Most notably, the loop variable (\var{obj} in the above example) is not accessible outside of the generator expression. List comprehensions leave the variable assigned to its last value; future versions of Python will change this, making list comprehensions match generator expressions in this respect. \begin{seealso} \seepep{289}{Generator Expressions}{Proposed by Raymond Hettinger and implemented by Jiwon Seo with early efforts steered by Hye-Shik Chang.} \end{seealso} %====================================================================== \section{PEP 322: Reverse Iteration} A new built-in function, \function{reversed(\var{seq})}, takes a sequence and returns an iterator that loops over the elements of the sequence in reverse order. \begin{verbatim} >>> for i in reversed(xrange(1,4)): ... print i ... 3 2 1 \end{verbatim} Compared to extended slicing, such as \code{range(1,4)[::-1]}, \function{reversed()} is easier to read, runs faster, and uses substantially less memory. Note that \function{reversed()} only accepts sequences, not arbitrary iterators. If you want to reverse an iterator, first convert it to a list with \function{list()}. \begin{verbatim} >>> input= open('/etc/passwd', 'r') >>> for line in reversed(list(input)): ... print line ... root:*:0:0:System Administrator:/var/root:/bin/tcsh ... \end{verbatim} \begin{seealso} \seepep{322}{Reverse Iteration}{Written and implemented by Raymond Hettinger.} \end{seealso} %====================================================================== \section{PEP 327: Decimal Data Type} Python has always supported floating-point (FP) numbers as a data type, based on the underlying C \ctype{double} type. However, while most programming languages provide a floating-point type, most people (even programmers) are unaware that computing with floating-point numbers entails certain unavoidable inaccuracies. The new decimal type provides a way to avoid these inaccuracies. \subsection{Why is Decimal needed?} The limitations arise from the representation used for floating-point numbers. FP numbers are made up of three components: \begin{itemize} \item The sign, which is -1 or +1. \item The mantissa, which is a single-digit binary number followed by a fractional part. For example, \code{1.01} in base-2 notation is \code{1 + 0/2 + 1/4}, or 1.25 in decimal notation. \item The exponent, which tells where the decimal point is located in the number represented. \end{itemize} For example, the number 1.25 has sign +1, mantissa 1.01 (in binary), and exponent of 0 (the decimal point doesn't need to be shifted). The number 5 has the same sign and mantissa, but the exponent is 2 because the mantissa is multiplied by 4 (2 to the power of the exponent 2). Modern systems usually provide floating-point support that conforms to a relevant standard called IEEE 754. C's \ctype{double} type is usually implemented as a 64-bit IEEE 754 number, which uses 52 bits of space for the mantissa. This means that numbers can only be specified to 52 bits of precision. If you're trying to represent numbers whose expansion repeats endlessly, the expansion is cut off after 52 bits. Unfortunately, most software needs to produce output in base 10, and base 10 often gives rise to such repeating decimals. For example, 1.1 decimal is binary \code{1.0001100110011 ...}; .1 = 1/16 + 1/32 + 1/256 plus an infinite number of additional terms. IEEE 754 has to chop off that infinitely repeated decimal after 52 digits, so the representation is slightly inaccurate. Sometimes you can see this inaccuracy when the number is printed: \begin{verbatim} >>> 1.1 1.1000000000000001 \end{verbatim} The inaccuracy isn't always visible when you print the number because the FP-to-decimal-string conversion is provided by the C library, and most C libraries try to produce sensible output, but the inaccuracy is still there and subsequent operations can magnify the error. For many applications this doesn't matter. If I'm plotting points and displaying them on my monitor, the difference between 1.1 and 1.1000000000000001 is too small to be visible. Reports often limit output to a certain number of decimal places, and if you round the number to two or three or even eight decimal places, the error is never apparent. However, for applications where it does matter, it's a lot of work to implement your own custom arithmetic routines. \subsection{The \class{Decimal} type} A new module, \module{decimal}, was added to Python's standard library. It contains two classes, \class{Decimal} and \class{Context}. \class{Decimal} instances represent numbers, and \class{Context} instances are used to wrap up various settings such as the precision and default rounding mode. \class{Decimal} instances, like regular Python integers and FP numbers, are immutable; once they've been created, you can't change the value it represents. \class{Decimal} instances can be created from integers or strings: \begin{verbatim} >>> import decimal >>> decimal.Decimal(1972) Decimal("1972") >>> decimal.Decimal("1.1") Decimal("1.1") \end{verbatim} You can also provide tuples containing the sign, mantissa represented as a tuple of decimal digits, and exponent: \begin{verbatim} >>> decimal.Decimal((1, (1, 4, 7, 5), -2)) Decimal("-14.75") \end{verbatim} Cautionary note: the sign bit is a Boolean value, so 0 is positive and 1 is negative. Floating-point numbers posed a bit of a problem: should the FP number representing 1.1 turn into the decimal number for exactly 1.1, or for 1.1 plus whatever inaccuracies are introduced? The decision was to leave such a conversion out of the API. Instead, you should convert the floating-point number into a string using the desired precision and pass the string to the \class{Decimal} constructor: \begin{verbatim} >>> f = 1.1 >>> decimal.Decimal(str(f)) Decimal("1.1") >>> decimal.Decimal(repr(f)) Decimal("1.1000000000000001") \end{verbatim} Once you have \class{Decimal} instances, you can perform the usual mathematical operations on them. One limitation: exponentiation requires an integer exponent: \begin{verbatim} >>> a = decimal.Decimal('35.72') >>> b = decimal.Decimal('1.73') >>> a+b Decimal("37.45") >>> a-b Decimal("33.99") >>> a*b Decimal("61.7956") >>> a/b Decimal("20.6473988") >>> a ** 2 Decimal("1275.9184") >>> a ** b Decimal("NaN") \end{verbatim} You can combine \class{Decimal} instances with integers, but not with floating-point numbers: \begin{verbatim} >>> a + 4 Decimal("39.72") >>> a + 4.5 Traceback (most recent call last): ... TypeError: You can interact Decimal only with int, long or Decimal data types. >>> \end{verbatim} \class{Decimal} numbers can be used with the \module{math} and \module{cmath} modules, though you'll get back a regular floating-point number and not a \class{Decimal}. Instances also have a \method{sqrt()} method: \begin{verbatim} >>> import math, cmath >>> d = decimal.Decimal('123456789012.345') >>> math.sqrt(d) 351364.18288201344 >>> cmath.sqrt(-d) 351364.18288201344j >>> d.sqrt() Decimal(``351364.1828820134592177245001'') \end{verbatim} \subsection{The \class{Context} type} Instances of the \class{Context} class encapsulate several settings for decimal operations: \begin{itemize} \item \member{prec} is the precision, the number of decimal places. \item \member{rounding} specifies the rounding mode. The \module{decimal} module has constants for the various possibilities: \constant{ROUND_DOWN}, \constant{ROUND_CEILING}, \constant{ROUND_HALF_EVEN}, and various others. \item \member{trap_enablers} is a dictionary specifying what happens on encountering certain error conditions: either an exception is raised or a value is returned. Some examples of error conditions are division by zero, loss of precision, and overflow. \end{itemize} There's a thread-local default context available by calling \function{getcontext()}; you can change the properties of this context to alter the default precision, rounding, or trap handling. \begin{verbatim} >>> decimal.getcontext().prec 28 >>> decimal.Decimal(1) / decimal.Decimal(7) Decimal(``0.1428571428571428571428571429'') >>> decimal.getcontext().prec = 9 >>> decimal.Decimal(1) / decimal.Decimal(7) Decimal(``0.142857143'') \end{verbatim} The default action for error conditions is to return a special value such as infinity or not-a-number, but you can request that exceptions be raised: \begin{verbatim} >>> decimal.Decimal(1) / decimal.Decimal(0) Decimal(``Infinity'') >>> decimal.getcontext().trap_enablers[decimal.DivisionByZero] = True >>> decimal.Decimal(1) / decimal.Decimal(0) Traceback (most recent call last): ... decimal.DivisionByZero: x / 0 >>> \end{verbatim} The \class{Context} instance also has various methods for formatting numbers such as \method{to_eng_string()} and \method{to_sci_string()}. \begin{seealso} \seepep{327}{Decimal Data Type}{Written by Facundo Batista and implemented by Facundo Batista, Eric Price, Raymond Hettinger, Aahz, and Tim Peters.} \seeurl{http://research.microsoft.com/~hollasch/cgindex/coding/ieeefloat.html} {A more detailed overview of the IEEE-754 representation.} \seeurl{http://www.lahey.com/float.htm} {The article uses Fortran code to illustrate many of the problems that floating-point inaccuracy can cause.} \seeurl{http://www2.hursley.ibm.com/decimal/} {A description of a decimal-based representation. This representation is being proposed as a standard, and underlies the new Python decimal type. Much of this material was written by Mike Cowlishaw, designer of the REXX language.} \end{seealso} %====================================================================== \section{Other Language Changes} Here are all of the changes that Python 2.4 makes to the core Python language. \begin{itemize} \item The \method{dict.update()} method now accepts the same argument forms as the \class{dict} constructor. This includes any mapping, any iterable of key/value pairs, and keyword arguments. \item The string methods \method{ljust()}, \method{rjust()}, and \method{center()} now take an optional argument for specifying a fill character other than a space. \item Strings also gained an \method{rsplit()} method that works like the \method{split()} method but splits from the end of the string. \begin{verbatim} >>> 'www.python.org'.split('.', 1) ['www', 'python.org'] 'www.python.org'.rsplit('.', 1) ['www.python', 'org'] \end{verbatim} \item The \method{sort()} method of lists gained three keyword arguments: \var{cmp}, \var{key}, and \var{reverse}. These arguments make some common usages of \method{sort()} simpler. All are optional. \var{cmp} is the same as the previous single argument to \method{sort()}; if provided, the value should be a comparison function that takes two arguments and returns -1, 0, or +1 depending on how the arguments compare. \var{key} should be a single-argument function that takes a list element and returns a comparison key for the element. The list is then sorted using the comparison keys. The following example sorts a list case-insensitively: \begin{verbatim} >>> L = ['A', 'b', 'c', 'D'] >>> L.sort() # Case-sensitive sort >>> L ['A', 'D', 'b', 'c'] >>> L.sort(key=lambda x: x.lower()) >>> L ['A', 'b', 'c', 'D'] >>> L.sort(cmp=lambda x,y: cmp(x.lower(), y.lower())) >>> L ['A', 'b', 'c', 'D'] \end{verbatim} The last example, which uses the \var{cmp} parameter, is the old way to perform a case-insensitive sort. It works but is slower than using a \var{key} parameter. Using \var{key} results in calling the \method{lower()} method once for each element in the list while using \var{cmp} will call it twice for each comparison. For simple key functions and comparison functions, it is often possible to avoid a \keyword{lambda} expression by using an unbound method instead. For example, the above case-insensitive sort is best coded as: \begin{verbatim} >>> L.sort(key=str.lower) >>> L ['A', 'b', 'c', 'D'] \end{verbatim} The \var{reverse} parameter should have a Boolean value. If the value is \constant{True}, the list will be sorted into reverse order. Instead of \code{L.sort(lambda x,y: cmp(x.score, y.score)) ; L.reverse()}, you can now write: \code{L.sort(key = lambda x: x.score, reverse=True)}. The results of sorting are now guaranteed to be stable. This means that two entries with equal keys will be returned in the same order as they were input. For example, you can sort a list of people by name, and then sort the list by age, resulting in a list sorted by age where people with the same age are in name-sorted order. \item There is a new built-in function \function{sorted(\var{iterable})} that works like the in-place \method{list.sort()} method but can be used in expressions. The differences are: \begin{itemize} \item the input may be any iterable; \item a newly formed copy is sorted, leaving the original intact; and \item the expression returns the new sorted copy \end{itemize} \begin{verbatim} >>> L = [9,7,8,3,2,4,1,6,5] >>> [10+i for i in sorted(L)] # usable in a list comprehension [11, 12, 13, 14, 15, 16, 17, 18, 19] >>> L = [9,7,8,3,2,4,1,6,5] # original is left unchanged [9,7,8,3,2,4,1,6,5] >>> sorted('Monte Python') # any iterable may be an input [' ', 'M', 'P', 'e', 'h', 'n', 'n', 'o', 'o', 't', 't', 'y'] >>> # List the contents of a dict sorted by key values >>> colormap = dict(red=1, blue=2, green=3, black=4, yellow=5) >>> for k, v in sorted(colormap.iteritems()): ... print k, v ... black 4 blue 2 green 3 red 1 yellow 5 \end{verbatim} \item The \function{eval(\var{expr}, \var{globals}, \var{locals})} function now accepts any mapping type for the \var{locals} argument. Previously this had to be a regular Python dictionary. \item The \function{zip()} built-in function and \function{itertools.izip()} now return an empty list if called with no arguments. Previously they raised a \exception{TypeError} exception. This makes them more suitable for use with variable length argument lists: \begin{verbatim} >>> def transpose(array): ... return zip(*array) ... >>> transpose([(1,2,3), (4,5,6)]) [(1, 4), (2, 5), (3, 6)] >>> transpose([]) [] \end{verbatim} \end{itemize} %====================================================================== \subsection{Optimizations} \begin{itemize} \item The inner loops for list and tupleslicing were optimized and now run about one-third faster. The inner loops were also optimized for dictionaries with performance boosts to \method{keys()}, \method{values()}, \method{items()}, \method{iterkeys()}, \method{itervalues()}, and \method{iteritems()}. \item The machinery for growing and shrinking lists was optimized for speed and for space efficiency. Appending and popping from lists now runs faster due to more efficient code paths and less frequent use of the underlying system \cfunction{realloc()}. List comprehensions also benefit. \method{list.extend()} was also optimized and no longer converts its argument into a temporary list before extending the base list. \item \function{list()}, \function{tuple()}, \function{map()}, \function{filter()}, and \function{zip()} now run several times faster with non-sequence arguments that supply a \method{__len__()} method. \item The methods \method{list.__getitem__()}, \method{dict.__getitem__()}, and \method{dict.__contains__()} are are now implemented as \class{method_descriptor} objects rather than \class{wrapper_descriptor} objects. This form of optimized access doubles their performance and makes them more suitable for use as arguments to functionals: \samp{map(mydict.__getitem__, keylist)}. \item Added a new opcode, \code{LIST_APPEND}, that simplifies the generated bytecode for list comprehensions and speeds them up by about a third. \end{itemize} The net result of the 2.4 optimizations is that Python 2.4 runs the pystone benchmark around XX\% faster than Python 2.3 and YY\% faster than Python 2.2. %====================================================================== \section{New, Improved, and Deprecated Modules} As usual, Python's standard library received a number of enhancements and bug fixes. Here's a partial list of the most notable changes, sorted alphabetically by module name. Consult the \file{Misc/NEWS} file in the source tree for a more complete list of changes, or look through the CVS logs for all the details. \begin{itemize} \item The \module{asyncore} module's \function{loop()} now has a \var{count} parameter that lets you perform a limited number of passes through the polling loop. The default is still to loop forever. \item The \module{curses} modules now supports the ncurses extension \function{use_default_colors()}. On platforms where the terminal supports transparency, this makes it possible to use a transparent background. (Contributed by J\"org Lehmann.) \item The \module{bisect} module now has an underlying C implementation for improved performance. (Contributed by Dmitry Vasiliev.) \item The CJKCodecs collections of East Asian codecs, maintained by Hye-Shik Chang, was integrated into 2.4. The new encodings are: \begin{itemize} \item Chinese (PRC): gb2312, gbk, gb18030, hz \item Chinese (ROC): big5, cp950 \item Japanese: cp932, shift-jis, shift-jisx0213, euc-jp, euc-jisx0213, iso-2022-jp, iso-2022-jp-1, iso-2022-jp-2, iso-2022-jp-3, iso-2022-jp-ext \item Korean: cp949, euc-kr, johab, iso-2022-kr \end{itemize} \item There is a new \module{collections} module for various specialized collection datatypes. Currently it contains just one type, \class{deque}, a double-ended queue that supports efficiently adding and removing elements from either end. \begin{verbatim} >>> from collections import deque >>> d = deque('ghi') # make a new deque with three items >>> d.append('j') # add a new entry to the right side >>> d.appendleft('f') # add a new entry to the left side >>> d # show the representation of the deque deque(['f', 'g', 'h', 'i', 'j']) >>> d.pop() # return and remove the rightmost item 'j' >>> d.popleft() # return and remove the leftmost item 'f' >>> list(d) # list the contents of the deque ['g', 'h', 'i'] >>> 'h' in d # search the deque True \end{verbatim} Several modules now take advantage of \class{collections.deque} for improved performance, such as the \module{Queue} and \module{threading} modules. \item The \module{ConfigParser} classes have been enhanced slightly. The \method{read()} method now returns a list of the files that were successfully parsed, and the \method{set()} method raises \exception{TypeError} if passed a \var{value} argument that isn't a string. \item The \module{heapq} module has been converted to C. The resulting tenfold improvement in speed makes the module suitable for handling high volumes of data. In addition, the module has two new functions \function{nlargest()} and \function{nsmallest()} that use heaps to find the N largest or smallest values in a dataset without the expense of a full sort. \item The \module{imaplib} module now supports IMAP's THREAD command. (Contributed by Yves Dionne.) \item The \module{itertools} module gained a \function{groupby(\var{iterable}\optional{, \var{func}})} function. \var{iterable} returns a succession of elements, and the optional \var{func} is a function that takes an element and returns a key value; if omitted, the key is simply the element itself. \function{groupby()} then groups the elements into subsequences which have matching values of the key, and returns a series of 2-tuples containing the key value and an iterator over the subsequence. Here's an example. The \var{key} function simply returns whether a number is even or odd, so the result of \function{groupby()} is to return consecutive runs of odd or even numbers. \begin{verbatim} >>> import itertools >>> L = [2,4,6, 7,8,9,11, 12, 14] >>> for key_val, it in itertools.groupby(L, lambda x: x % 2): ... print key_val, list(it) ... 0 [2, 4, 6] 1 [7] 0 [8] 1 [9, 11] 0 [12, 14] >>> \end{verbatim} \function{groupby()} is typically used with sorted input. The logic for \function{groupby()} is similar to the \UNIX{} \code{uniq} filter which makes it handy for eliminating, counting, or identifying duplicate elements: \begin{verbatim} >>> word = 'abracadabra' >>> letters = sorted(word) # Turn string into a sorted list of letters >>> letters ['a', 'a', 'a', 'a', 'a', 'b', 'b', 'c', 'd', 'r', 'r'] >>> for k, g in itertools.groupby(letters): ... print k, list(g) ... a ['a', 'a', 'a', 'a', 'a'] b ['b', 'b'] c ['c'] d ['d'] r ['r', 'r'] >>> # List unique letters >>> [k for k, g in groupby(letters)] ['a', 'b', 'c', 'd', 'r'] >>> # Count letter occurences >>> [(k, len(list(g))) for k, g in groupby(letters)] [('a', 5), ('b', 2), ('c', 1), ('d', 1), ('r', 2)] \end{verbatim} \item \module{itertools} also gained a function named \function{tee(\var{iterator}, \var{N})} that returns \var{N} independent iterators that replicate \var{iterator}. If \var{N} is omitted, the default is 2. \begin{verbatim} >>> L = [1,2,3] >>> i1, i2 = itertools.tee(L) >>> i1,i2 (, ) >>> list(i1) # Run the first iterator to exhaustion [1, 2, 3] >>> list(i2) # Run the second iterator to exhaustion [1, 2, 3] >\end{verbatim} Note that \function{tee()} has to keep copies of the values returned by the iterator; in the worst case, it may need to keep all of them. This should therefore be used carefully if the leading iterator can run far ahead of the trailing iterator in a long stream of inputs. If the separation is large, then you might as well use \function{list()} instead. When the iterators track closely with one another, \function{tee()} is ideal. Possible applications include bookmarking, windowing, or lookahead iterators. \item A \function{basicConfig} function was added to the \module{logging} package to simplify log configuration. It defaults to logging to standard error, but a number of optional keyword arguments can be specified to log to a particular file, change the logging format, or set the logging level. For example: \begin{verbatim} import logging logging.basicConfig(filename = '/var/log/application.log', level=0, # Log all messages, including debugging, format='%(levelname):%(process):%(thread):%(message)') \end{verbatim} Another addition to \module{logging} is a \class{TimedRotatingFileHandler} class which rotates its log files at a timed interval. The module already had \class{RotatingFileHandler}, which rotated logs once the file exceeded a certain size. Both classes derive from a new \class{BaseRotatingHandler} class that can be used to implement other rotating handlers. \item The \module{operator} module gained two new functions, \function{attrgetter(\var{attr})} and \function{itemgetter(\var{index})}. Both functions return callables that take a single argument and return the corresponding attribute or item; these callables make excellent data extractors when used with \function{map()} or \function{sorted()}. For example: \begin{verbatim} >>> L = [('c', 2), ('d', 1), ('a', 4), ('b', 3)] >>> map(operator.itemgetter(0), L) ['c', 'd', 'a', 'b'] >>> map(operator.itemgetter(1), L) [2, 1, 4, 3] >>> sorted(L, key=operator.itemgetter(1)) # Sort list by second tuple item [('d', 1), ('c', 2), ('b', 3), ('a', 4)] \end{verbatim} \item A new \function{getsid()} function was added to the \module{posix} module that underlies the \module{os} module. (Contributed by J. Raynor.) \item The \module{poplib} module now supports POP over SSL. \item The \module{profile} module can now profile C extension functions. % XXX more to say about this? \item The \module{random} module has a new method called \method{getrandbits(N)} which returns an N-bit long integer. This method supports the existing \method{randrange()} method, making it possible to efficiently generate arbitrarily large random numbers. \item The regular expression language accepted by the \module{re} module was extended with simple conditional expressions, written as \code{(?(\var{group})\var{A}|\var{B})}. \var{group} is either a numeric group ID or a group name defined with \code{(?P...)} earlier in the expression. If the specified group matched, the regular expression pattern \var{A} will be tested against the string; if the group didn't match, the pattern \var{B} will be used instead. \item The \module{weakref} module now supports a wider variety of objects including Python functions, class instances, sets, frozensets, deques, arrays, files, sockets, and regular expression pattern objects. \item The \module{xmlrpclib} module now supports a multi-call extension for tranmitting multiple XML-RPC calls in a single HTTP operation. \end{itemize} %====================================================================== % whole new modules get described in \subsections here \subsection{cookielib} The \module{cookielib} library supports client-side handling for HTTP cookies, just as the \module{Cookie} provides server-side cookie support in CGI scripts. Cookies are stored in cookie jars; the library transparently stores cookies offered by the web server in the cookie jar, and fetches the cookie from the jar when connecting to the server. Similar to web browsers, policy objects control whether cookies are accepted or not. In order to store cookies across sessions, two implementations of cookie jars are provided: one that stores cookies in the Netscape format, so applications can use the Mozilla or Lynx cookie jars, and one that stores cookies in the same format as the Perl libwww libary. \module{urllib2} has been changed to interact with \module{cookielib}: \class{HTTPCookieProcessor} manages a cookie jar that is used when accessing URLs. % ====================================================================== \section{Build and C API Changes} Changes to Python's build process and to the C API include: \begin{itemize} \item Three new convenience macros were added for common return values from extension functions: \csimplemacro{Py_RETURN_NONE}, \csimplemacro{Py_RETURN_TRUE}, and \csimplemacro{Py_RETURN_FALSE}. \item A new function, \cfunction{PyTuple_Pack(\var{N}, \var{obj1}, \var{obj2}, ..., \var{objN})}, constructs tuples from a variable length argument list of Python objects. \item A new function, \cfunction{PyDict_Contains(\var{d}, \var{k})}, implements fast dictionary lookups without masking exceptions raised during the look-up process. \item A new method flag, \constant{METH_COEXISTS}, allows a function defined in slots to co-exist with a \ctype{PyCFunction} having the same name. This can halve the access time for a method such as \method{set.__contains__()}. \item Python can now be built with additional profiling for the interpreter itself. This is intended for people developing on the Python core. Providing \longprogramopt{--enable-profiling} to the \program{configure} script will let you profile the interpreter with \program{gprof}, and providing the \longprogramopt{--with-tsc} switch enables profiling using the Pentium's Time-Stamp-Counter register. \item The \ctype{tracebackobject} type has been renamed to \ctype{PyTracebackObject}. \end{itemize} %====================================================================== \subsection{Port-Specific Changes} \begin{itemize} \item The Windows port now builds under MSVC++ 7.1 as well as version 6. \end{itemize} %====================================================================== \section{Other Changes and Fixes \label{section-other}} As usual, there were a bunch of other improvements and bugfixes scattered throughout the source tree. A search through the CVS change logs finds there were XXX patches applied and YYY bugs fixed between Python 2.3 and 2.4. Both figures are likely to be underestimates. Some of the more notable changes are: \begin{itemize} \item The \module{timeit} module now automatically disables periodic garbarge collection during the timing loop. This change makes consecutive timings more comparable. \item The \module{base64} module now has more complete RFC 3548 support for Base64, Base32, and Base16 encoding and decoding, including optional case folding and optional alternative alphabets. (Contributed by Barry Warsaw.) \end{itemize} %====================================================================== \section{Porting to Python 2.4} This section lists previously described changes that may require changes to your code: \begin{itemize} \item The \function{zip()} built-in function and \function{itertools.izip()} now return an empty list instead of raising a \exception{TypeError} exception if called with no arguments. \item \function{dircache.listdir()} now passes exceptions to the caller instead of returning empty lists. \item \function{LexicalHandler.startDTD()} used to receive the public and system IDs in the wrong order. This has been corrected; applications relying on the wrong order need to be fixed. \item \function{fcntl.ioctl} now warns if the \var{mutate} argument is omitted and relevant. \end{itemize} %====================================================================== \section{Acknowledgements \label{acks}} The author would like to thank the following people for offering suggestions, corrections and assistance with various drafts of this article: Raymond Hettinger. \end{document}