523 lines
18 KiB
TeX
523 lines
18 KiB
TeX
\section{\module{itertools} ---
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Functions creating iterators for efficient looping}
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\declaremodule{standard}{itertools}
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\modulesynopsis{Functions creating iterators for efficient looping.}
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\moduleauthor{Raymond Hettinger}{python@rcn.com}
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\sectionauthor{Raymond Hettinger}{python@rcn.com}
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\versionadded{2.3}
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This module implements a number of iterator building blocks inspired
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by constructs from the Haskell and SML programming languages. Each
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has been recast in a form suitable for Python.
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The module standardizes a core set of fast, memory efficient tools
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that are useful by themselves or in combination. Standardization helps
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avoid the readability and reliability problems which arise when many
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different individuals create their own slightly varying implementations,
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each with their own quirks and naming conventions.
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The tools are designed to combine readily with one another. This makes
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it easy to construct more specialized tools succinctly and efficiently
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in pure Python.
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For instance, SML provides a tabulation tool: \code{tabulate(f)}
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which produces a sequence \code{f(0), f(1), ...}. This toolbox
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provides \function{imap()} and \function{count()} which can be combined
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to form \code{imap(f, count())} and produce an equivalent result.
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Likewise, the functional tools are designed to work well with the
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high-speed functions provided by the \refmodule{operator} module.
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The module author welcomes suggestions for other basic building blocks
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to be added to future versions of the module.
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Whether cast in pure python form or compiled code, tools that use iterators
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are more memory efficient (and faster) than their list based counterparts.
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Adopting the principles of just-in-time manufacturing, they create
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data when and where needed instead of consuming memory with the
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computer equivalent of ``inventory''.
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The performance advantage of iterators becomes more acute as the number
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of elements increases -- at some point, lists grow large enough to
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severely impact memory cache performance and start running slowly.
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\begin{seealso}
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\seetext{The Standard ML Basis Library,
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\citetitle[http://www.standardml.org/Basis/]
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{The Standard ML Basis Library}.}
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\seetext{Haskell, A Purely Functional Language,
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\citetitle[http://www.haskell.org/definition/]
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{Definition of Haskell and the Standard Libraries}.}
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\end{seealso}
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\subsection{Itertool functions \label{itertools-functions}}
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The following module functions all construct and return iterators.
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Some provide streams of infinite length, so they should only be accessed
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by functions or loops that truncate the stream.
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\begin{funcdesc}{chain}{*iterables}
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Make an iterator that returns elements from the first iterable until
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it is exhausted, then proceeds to the next iterable, until all of the
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iterables are exhausted. Used for treating consecutive sequences as
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a single sequence. Equivalent to:
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\begin{verbatim}
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def chain(*iterables):
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for it in iterables:
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for element in it:
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yield element
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\end{verbatim}
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\end{funcdesc}
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\begin{funcdesc}{count}{\optional{n}}
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Make an iterator that returns consecutive integers starting with \var{n}.
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If not specified \var{n} defaults to zero.
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Does not currently support python long integers. Often used as an
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argument to \function{imap()} to generate consecutive data points.
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Also, used with \function{izip()} to add sequence numbers. Equivalent to:
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\begin{verbatim}
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def count(n=0):
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while True:
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yield n
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n += 1
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\end{verbatim}
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Note, \function{count()} does not check for overflow and will return
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negative numbers after exceeding \code{sys.maxint}. This behavior
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may change in the future.
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\end{funcdesc}
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\begin{funcdesc}{cycle}{iterable}
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Make an iterator returning elements from the iterable and saving a
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copy of each. When the iterable is exhausted, return elements from
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the saved copy. Repeats indefinitely. Equivalent to:
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\begin{verbatim}
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def cycle(iterable):
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saved = []
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for element in iterable:
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yield element
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saved.append(element)
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while saved:
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for element in saved:
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yield element
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\end{verbatim}
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Note, this member of the toolkit may require significant
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auxiliary storage (depending on the length of the iterable).
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\end{funcdesc}
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\begin{funcdesc}{dropwhile}{predicate, iterable}
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Make an iterator that drops elements from the iterable as long as
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the predicate is true; afterwards, returns every element. Note,
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the iterator does not produce \emph{any} output until the predicate
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is true, so it may have a lengthy start-up time. Equivalent to:
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\begin{verbatim}
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def dropwhile(predicate, iterable):
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iterable = iter(iterable)
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for x in iterable:
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if not predicate(x):
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yield x
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break
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for x in iterable:
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yield x
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\end{verbatim}
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\end{funcdesc}
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\begin{funcdesc}{groupby}{iterable\optional{, key}}
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Make an iterator that returns consecutive keys and groups from the
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\var{iterable}. The \var{key} is a function computing a key value for each
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element. If not specified or is \code{None}, \var{key} defaults to an
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identity function and returns the element unchanged. Generally, the
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iterable needs to already be sorted on the same key function.
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The returned group is itself an iterator that shares the underlying
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iterable with \function{groupby()}. Because the source is shared, when
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the \function{groupby} object is advanced, the previous group is no
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longer visible. So, if that data is needed later, it should be stored
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as a list:
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\begin{verbatim}
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groups = []
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uniquekeys = []
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for k, g in groupby(data, keyfunc):
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groups.append(list(g)) # Store group iterator as a list
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uniquekeys.append(k)
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\end{verbatim}
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\function{groupby()} is equivalent to:
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\begin{verbatim}
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class groupby(object):
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def __init__(self, iterable, key=None):
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if key is None:
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key = lambda x: x
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self.keyfunc = key
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self.it = iter(iterable)
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self.tgtkey = self.currkey = self.currvalue = xrange(0)
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def __iter__(self):
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return self
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def next(self):
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while self.currkey == self.tgtkey:
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self.currvalue = self.it.next() # Exit on StopIteration
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self.currkey = self.keyfunc(self.currvalue)
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self.tgtkey = self.currkey
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return (self.currkey, self._grouper(self.tgtkey))
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def _grouper(self, tgtkey):
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while self.currkey == tgtkey:
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yield self.currvalue
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self.currvalue = self.it.next() # Exit on StopIteration
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self.currkey = self.keyfunc(self.currvalue)
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\end{verbatim}
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\versionadded{2.4}
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\end{funcdesc}
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\begin{funcdesc}{ifilter}{predicate, iterable}
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Make an iterator that filters elements from iterable returning only
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those for which the predicate is \code{True}.
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If \var{predicate} is \code{None}, return the items that are true.
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Equivalent to:
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\begin{verbatim}
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def ifilter(predicate, iterable):
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if predicate is None:
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predicate = bool
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for x in iterable:
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if predicate(x):
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yield x
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\end{verbatim}
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\end{funcdesc}
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\begin{funcdesc}{ifilterfalse}{predicate, iterable}
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Make an iterator that filters elements from iterable returning only
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those for which the predicate is \code{False}.
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If \var{predicate} is \code{None}, return the items that are false.
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Equivalent to:
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\begin{verbatim}
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def ifilterfalse(predicate, iterable):
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if predicate is None:
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predicate = bool
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for x in iterable:
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if not predicate(x):
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yield x
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\end{verbatim}
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\end{funcdesc}
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\begin{funcdesc}{imap}{function, *iterables}
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Make an iterator that computes the function using arguments from
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each of the iterables. If \var{function} is set to \code{None}, then
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\function{imap()} returns the arguments as a tuple. Like
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\function{map()} but stops when the shortest iterable is exhausted
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instead of filling in \code{None} for shorter iterables. The reason
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for the difference is that infinite iterator arguments are typically
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an error for \function{map()} (because the output is fully evaluated)
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but represent a common and useful way of supplying arguments to
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\function{imap()}.
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Equivalent to:
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\begin{verbatim}
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def imap(function, *iterables):
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iterables = map(iter, iterables)
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while True:
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args = [i.next() for i in iterables]
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if function is None:
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yield tuple(args)
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else:
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yield function(*args)
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\end{verbatim}
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\end{funcdesc}
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\begin{funcdesc}{islice}{iterable, \optional{start,} stop \optional{, step}}
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Make an iterator that returns selected elements from the iterable.
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If \var{start} is non-zero, then elements from the iterable are skipped
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until start is reached. Afterward, elements are returned consecutively
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unless \var{step} is set higher than one which results in items being
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skipped. If \var{stop} is \code{None}, then iteration continues until
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the iterator is exhausted, if at all; otherwise, it stops at the specified
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position. Unlike regular slicing,
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\function{islice()} does not support negative values for \var{start},
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\var{stop}, or \var{step}. Can be used to extract related fields
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from data where the internal structure has been flattened (for
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example, a multi-line report may list a name field on every
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third line). Equivalent to:
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\begin{verbatim}
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def islice(iterable, *args):
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s = slice(*args)
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next, stop, step = s.start or 0, s.stop, s.step or 1
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for cnt, element in enumerate(iterable):
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if cnt < next:
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continue
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if stop is not None and cnt >= stop:
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break
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yield element
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next += step
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\end{verbatim}
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If \var{start} is \code{None}, then iteration starts at zero.
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If \var{step} is \code{None}, then the step defaults to one.
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\versionchanged[accept \code{None} values for default \var{start} and
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\var{step}]{2.5}
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\end{funcdesc}
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\begin{funcdesc}{izip}{*iterables}
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Make an iterator that aggregates elements from each of the iterables.
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Like \function{zip()} except that it returns an iterator instead of
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a list. Used for lock-step iteration over several iterables at a
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time. Equivalent to:
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\begin{verbatim}
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def izip(*iterables):
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iterables = map(iter, iterables)
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while iterables:
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result = [i.next() for i in iterables]
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yield tuple(result)
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\end{verbatim}
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\versionchanged[When no iterables are specified, returns a zero length
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iterator instead of raising a TypeError exception]{2.4}
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\end{funcdesc}
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\begin{funcdesc}{repeat}{object\optional{, times}}
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Make an iterator that returns \var{object} over and over again.
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Runs indefinitely unless the \var{times} argument is specified.
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Used as argument to \function{imap()} for invariant parameters
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to the called function. Also used with \function{izip()} to create
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an invariant part of a tuple record. Equivalent to:
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\begin{verbatim}
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def repeat(object, times=None):
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if times is None:
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while True:
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yield object
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else:
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for i in xrange(times):
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yield object
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\end{verbatim}
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\end{funcdesc}
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\begin{funcdesc}{starmap}{function, iterable}
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Make an iterator that computes the function using arguments tuples
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obtained from the iterable. Used instead of \function{imap()} when
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argument parameters are already grouped in tuples from a single iterable
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(the data has been ``pre-zipped''). The difference between
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\function{imap()} and \function{starmap()} parallels the distinction
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between \code{function(a,b)} and \code{function(*c)}.
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Equivalent to:
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\begin{verbatim}
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def starmap(function, iterable):
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iterable = iter(iterable)
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while True:
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yield function(*iterable.next())
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\end{verbatim}
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\end{funcdesc}
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\begin{funcdesc}{takewhile}{predicate, iterable}
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Make an iterator that returns elements from the iterable as long as
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the predicate is true. Equivalent to:
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\begin{verbatim}
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def takewhile(predicate, iterable):
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for x in iterable:
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if predicate(x):
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yield x
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else:
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break
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\end{verbatim}
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\end{funcdesc}
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\begin{funcdesc}{tee}{iterable\optional{, n=2}}
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Return \var{n} independent iterators from a single iterable.
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The case where \code{n==2} is equivalent to:
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\begin{verbatim}
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def tee(iterable):
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def gen(next, data={}, cnt=[0]):
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for i in count():
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if i == cnt[0]:
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item = data[i] = next()
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cnt[0] += 1
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else:
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item = data.pop(i)
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yield item
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it = iter(iterable)
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return (gen(it.next), gen(it.next))
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\end{verbatim}
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Note, once \function{tee()} has made a split, the original \var{iterable}
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should not be used anywhere else; otherwise, the \var{iterable} could get
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advanced without the tee objects being informed.
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Note, this member of the toolkit may require significant auxiliary
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storage (depending on how much temporary data needs to be stored).
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In general, if one iterator is going to use most or all of the data before
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the other iterator, it is faster to use \function{list()} instead of
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\function{tee()}.
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\versionadded{2.4}
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\end{funcdesc}
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\subsection{Examples \label{itertools-example}}
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The following examples show common uses for each tool and
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demonstrate ways they can be combined.
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\begin{verbatim}
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>>> amounts = [120.15, 764.05, 823.14]
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>>> for checknum, amount in izip(count(1200), amounts):
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... print 'Check %d is for $%.2f' % (checknum, amount)
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...
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Check 1200 is for $120.15
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Check 1201 is for $764.05
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Check 1202 is for $823.14
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>>> import operator
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>>> for cube in imap(operator.pow, xrange(1,5), repeat(3)):
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... print cube
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...
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1
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8
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27
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64
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>>> reportlines = ['EuroPython', 'Roster', '', 'alex', '', 'laura',
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'', 'martin', '', 'walter', '', 'mark']
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>>> for name in islice(reportlines, 3, None, 2):
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... print name.title()
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...
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Alex
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Laura
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Martin
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Walter
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Mark
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# Show a dictionary sorted and grouped by value
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>>> from operator import itemgetter
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>>> d = dict(a=1, b=2, c=1, d=2, e=1, f=2, g=3)
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>>> di = sorted(d.iteritems(), key=itemgetter(1))
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>>> for k, g in groupby(di, key=itemgetter(1)):
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... print k, map(itemgetter(0), g)
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...
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1 ['a', 'c', 'e']
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2 ['b', 'd', 'f']
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3 ['g']
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# Find runs of consecutive numbers using groupby. The key to the solution
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# is differencing with a range so that consecutive numbers all appear in
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# same group.
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>>> data = [ 1, 4,5,6, 10, 15,16,17,18, 22, 25,26,27,28]
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>>> for k, g in groupby(enumerate(data), lambda (i,x):i-x):
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... print map(operator.itemgetter(1), g)
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...
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[1]
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[4, 5, 6]
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[10]
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[15, 16, 17, 18]
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[22]
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[25, 26, 27, 28]
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\end{verbatim}
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\subsection{Recipes \label{itertools-recipes}}
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This section shows recipes for creating an extended toolset using the
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existing itertools as building blocks.
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The extended tools offer the same high performance as the underlying
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toolset. The superior memory performance is kept by processing elements one
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at a time rather than bringing the whole iterable into memory all at once.
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Code volume is kept small by linking the tools together in a functional style
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which helps eliminate temporary variables. High speed is retained by
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preferring ``vectorized'' building blocks over the use of for-loops and
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generators which incur interpreter overhead.
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\begin{verbatim}
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def take(n, seq):
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return list(islice(seq, n))
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def enumerate(iterable):
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return izip(count(), iterable)
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def tabulate(function):
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"Return function(0), function(1), ..."
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return imap(function, count())
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def iteritems(mapping):
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return izip(mapping.iterkeys(), mapping.itervalues())
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def nth(iterable, n):
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"Returns the nth item"
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return list(islice(iterable, n, n+1))
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def all(seq, pred=bool):
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"Returns True if pred(x) is True for every element in the iterable"
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for elem in ifilterfalse(pred, seq):
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return False
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return True
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def any(seq, pred=bool):
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"Returns True if pred(x) is True for at least one element in the iterable"
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for elem in ifilter(pred, seq):
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return True
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return False
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def no(seq, pred=bool):
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"Returns True if pred(x) is False for every element in the iterable"
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for elem in ifilter(pred, seq):
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return False
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return True
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def quantify(seq, pred=bool):
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"Count how many times the predicate is True in the sequence"
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return sum(imap(pred, seq))
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def padnone(seq):
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"""Returns the sequence elements and then returns None indefinitely.
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Useful for emulating the behavior of the built-in map() function.
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"""
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return chain(seq, repeat(None))
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def ncycles(seq, n):
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"Returns the sequence elements n times"
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return chain(*repeat(seq, n))
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def dotproduct(vec1, vec2):
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return sum(imap(operator.mul, vec1, vec2))
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def flatten(listOfLists):
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return list(chain(*listOfLists))
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def repeatfunc(func, times=None, *args):
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"""Repeat calls to func with specified arguments.
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Example: repeatfunc(random.random)
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"""
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if times is None:
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return starmap(func, repeat(args))
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else:
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return starmap(func, repeat(args, times))
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def pairwise(iterable):
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"s -> (s0,s1), (s1,s2), (s2, s3), ..."
|
|
a, b = tee(iterable)
|
|
try:
|
|
b.next()
|
|
except StopIteration:
|
|
pass
|
|
return izip(a, b)
|
|
|
|
\end{verbatim}
|