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Georg Brandl6728c5a2009-10-11 18:31:23 +00001:tocdepth: 2
2
3===============
4Programming FAQ
5===============
6
Georg Brandl44ea77b2013-03-28 13:28:44 +01007.. only:: html
8
9 .. contents::
Georg Brandl6728c5a2009-10-11 18:31:23 +000010
11General Questions
12=================
13
14Is there a source code level debugger with breakpoints, single-stepping, etc.?
15------------------------------------------------------------------------------
16
17Yes.
18
19The pdb module is a simple but adequate console-mode debugger for Python. It is
20part of the standard Python library, and is :mod:`documented in the Library
21Reference Manual <pdb>`. You can also write your own debugger by using the code
22for pdb as an example.
23
24The IDLE interactive development environment, which is part of the standard
25Python distribution (normally available as Tools/scripts/idle), includes a
26graphical debugger. There is documentation for the IDLE debugger at
27http://www.python.org/idle/doc/idle2.html#Debugger.
28
29PythonWin is a Python IDE that includes a GUI debugger based on pdb. The
30Pythonwin debugger colors breakpoints and has quite a few cool features such as
31debugging non-Pythonwin programs. Pythonwin is available as part of the `Python
32for Windows Extensions <http://sourceforge.net/projects/pywin32/>`__ project and
33as a part of the ActivePython distribution (see
34http://www.activestate.com/Products/ActivePython/index.html).
35
36`Boa Constructor <http://boa-constructor.sourceforge.net/>`_ is an IDE and GUI
37builder that uses wxWidgets. It offers visual frame creation and manipulation,
38an object inspector, many views on the source like object browsers, inheritance
39hierarchies, doc string generated html documentation, an advanced debugger,
40integrated help, and Zope support.
41
42`Eric <http://www.die-offenbachs.de/eric/index.html>`_ is an IDE built on PyQt
43and the Scintilla editing component.
44
45Pydb is a version of the standard Python debugger pdb, modified for use with DDD
46(Data Display Debugger), a popular graphical debugger front end. Pydb can be
47found at http://bashdb.sourceforge.net/pydb/ and DDD can be found at
48http://www.gnu.org/software/ddd.
49
50There are a number of commercial Python IDEs that include graphical debuggers.
51They include:
52
53* Wing IDE (http://wingware.com/)
54* Komodo IDE (http://www.activestate.com/Products/Komodo)
55
56
57Is there a tool to help find bugs or perform static analysis?
58-------------------------------------------------------------
59
60Yes.
61
62PyChecker is a static analysis tool that finds bugs in Python source code and
63warns about code complexity and style. You can get PyChecker from
64http://pychecker.sf.net.
65
66`Pylint <http://www.logilab.org/projects/pylint>`_ is another tool that checks
67if a module satisfies a coding standard, and also makes it possible to write
68plug-ins to add a custom feature. In addition to the bug checking that
69PyChecker performs, Pylint offers some additional features such as checking line
70length, whether variable names are well-formed according to your coding
71standard, whether declared interfaces are fully implemented, and more.
Georg Brandla4314c22009-10-11 20:16:16 +000072http://www.logilab.org/card/pylint_manual provides a full list of Pylint's
73features.
Georg Brandl6728c5a2009-10-11 18:31:23 +000074
75
76How can I create a stand-alone binary from a Python script?
77-----------------------------------------------------------
78
79You don't need the ability to compile Python to C code if all you want is a
80stand-alone program that users can download and run without having to install
81the Python distribution first. There are a number of tools that determine the
82set of modules required by a program and bind these modules together with a
83Python binary to produce a single executable.
84
85One is to use the freeze tool, which is included in the Python source tree as
86``Tools/freeze``. It converts Python byte code to C arrays; a C compiler you can
87embed all your modules into a new program, which is then linked with the
88standard Python modules.
89
90It works by scanning your source recursively for import statements (in both
91forms) and looking for the modules in the standard Python path as well as in the
92source directory (for built-in modules). It then turns the bytecode for modules
93written in Python into C code (array initializers that can be turned into code
94objects using the marshal module) and creates a custom-made config file that
95only contains those built-in modules which are actually used in the program. It
96then compiles the generated C code and links it with the rest of the Python
97interpreter to form a self-contained binary which acts exactly like your script.
98
99Obviously, freeze requires a C compiler. There are several other utilities
100which don't. One is Thomas Heller's py2exe (Windows only) at
101
102 http://www.py2exe.org/
103
104Another is Christian Tismer's `SQFREEZE <http://starship.python.net/crew/pirx>`_
105which appends the byte code to a specially-prepared Python interpreter that can
106find the byte code in the executable.
107
108Other tools include Fredrik Lundh's `Squeeze
109<http://www.pythonware.com/products/python/squeeze>`_ and Anthony Tuininga's
110`cx_Freeze <http://starship.python.net/crew/atuining/cx_Freeze/index.html>`_.
111
112
113Are there coding standards or a style guide for Python programs?
114----------------------------------------------------------------
115
116Yes. The coding style required for standard library modules is documented as
117:pep:`8`.
118
119
120My program is too slow. How do I speed it up?
121---------------------------------------------
122
123That's a tough one, in general. There are many tricks to speed up Python code;
124consider rewriting parts in C as a last resort.
125
126In some cases it's possible to automatically translate Python to C or x86
127assembly language, meaning that you don't have to modify your code to gain
128increased speed.
129
130.. XXX seems to have overlap with other questions!
131
132`Pyrex <http://www.cosc.canterbury.ac.nz/~greg/python/Pyrex/>`_ can compile a
133slightly modified version of Python code into a C extension, and can be used on
134many different platforms.
135
136`Psyco <http://psyco.sourceforge.net>`_ is a just-in-time compiler that
137translates Python code into x86 assembly language. If you can use it, Psyco can
138provide dramatic speedups for critical functions.
139
140The rest of this answer will discuss various tricks for squeezing a bit more
141speed out of Python code. *Never* apply any optimization tricks unless you know
142you need them, after profiling has indicated that a particular function is the
143heavily executed hot spot in the code. Optimizations almost always make the
144code less clear, and you shouldn't pay the costs of reduced clarity (increased
145development time, greater likelihood of bugs) unless the resulting performance
146benefit is worth it.
147
148There is a page on the wiki devoted to `performance tips
149<http://wiki.python.org/moin/PythonSpeed/PerformanceTips>`_.
150
151Guido van Rossum has written up an anecdote related to optimization at
Jesus Ceaee2cb3f2014-06-16 14:11:14 +0200152http://www.python.org/doc/essays/list2str.
Georg Brandl6728c5a2009-10-11 18:31:23 +0000153
154One thing to notice is that function and (especially) method calls are rather
155expensive; if you have designed a purely OO interface with lots of tiny
156functions that don't do much more than get or set an instance variable or call
157another method, you might consider using a more direct way such as directly
158accessing instance variables. Also see the standard module :mod:`profile` which
159makes it possible to find out where your program is spending most of its time
160(if you have some patience -- the profiling itself can slow your program down by
161an order of magnitude).
162
163Remember that many standard optimization heuristics you may know from other
164programming experience may well apply to Python. For example it may be faster
165to send output to output devices using larger writes rather than smaller ones in
166order to reduce the overhead of kernel system calls. Thus CGI scripts that
167write all output in "one shot" may be faster than those that write lots of small
168pieces of output.
169
170Also, be sure to use Python's core features where appropriate. For example,
171slicing allows programs to chop up lists and other sequence objects in a single
172tick of the interpreter's mainloop using highly optimized C implementations.
173Thus to get the same effect as::
174
175 L2 = []
Georg Brandleacada82011-08-25 11:52:26 +0200176 for i in range(3):
Georg Brandl6728c5a2009-10-11 18:31:23 +0000177 L2.append(L1[i])
178
179it is much shorter and far faster to use ::
180
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000181 L2 = list(L1[:3]) # "list" is redundant if L1 is a list.
Georg Brandl6728c5a2009-10-11 18:31:23 +0000182
Georg Brandl6f82cd32010-02-06 18:44:44 +0000183Note that the functionally-oriented built-in functions such as :func:`map`,
184:func:`zip`, and friends can be a convenient accelerator for loops that
185perform a single task. For example to pair the elements of two lists
186together::
Georg Brandl6728c5a2009-10-11 18:31:23 +0000187
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000188 >>> zip([1, 2, 3], [4, 5, 6])
Georg Brandl6728c5a2009-10-11 18:31:23 +0000189 [(1, 4), (2, 5), (3, 6)]
190
191or to compute a number of sines::
192
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000193 >>> map(math.sin, (1, 2, 3, 4))
194 [0.841470984808, 0.909297426826, 0.14112000806, -0.756802495308]
Georg Brandl6728c5a2009-10-11 18:31:23 +0000195
196The operation completes very quickly in such cases.
197
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000198Other examples include the ``join()`` and ``split()`` :ref:`methods
199of string objects <string-methods>`.
Georg Brandl6728c5a2009-10-11 18:31:23 +0000200For example if s1..s7 are large (10K+) strings then
201``"".join([s1,s2,s3,s4,s5,s6,s7])`` may be far faster than the more obvious
202``s1+s2+s3+s4+s5+s6+s7``, since the "summation" will compute many
203subexpressions, whereas ``join()`` does all the copying in one pass. For
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000204manipulating strings, use the ``replace()`` and the ``format()`` :ref:`methods
205on string objects <string-methods>`. Use regular expressions only when you're
206not dealing with constant string patterns. You may still use :ref:`the old %
207operations <string-formatting>` ``string % tuple`` and ``string % dictionary``.
Georg Brandl6728c5a2009-10-11 18:31:23 +0000208
Georg Brandl6f82cd32010-02-06 18:44:44 +0000209Be sure to use the :meth:`list.sort` built-in method to do sorting, and see the
Georg Brandl6728c5a2009-10-11 18:31:23 +0000210`sorting mini-HOWTO <http://wiki.python.org/moin/HowTo/Sorting>`_ for examples
211of moderately advanced usage. :meth:`list.sort` beats other techniques for
212sorting in all but the most extreme circumstances.
213
214Another common trick is to "push loops into functions or methods." For example
215suppose you have a program that runs slowly and you use the profiler to
216determine that a Python function ``ff()`` is being called lots of times. If you
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000217notice that ``ff()``::
Georg Brandl6728c5a2009-10-11 18:31:23 +0000218
219 def ff(x):
220 ... # do something with x computing result...
221 return result
222
223tends to be called in loops like::
224
225 list = map(ff, oldlist)
226
227or::
228
229 for x in sequence:
230 value = ff(x)
231 ... # do something with value...
232
233then you can often eliminate function call overhead by rewriting ``ff()`` to::
234
235 def ffseq(seq):
236 resultseq = []
237 for x in seq:
238 ... # do something with x computing result...
239 resultseq.append(result)
240 return resultseq
241
242and rewrite the two examples to ``list = ffseq(oldlist)`` and to::
243
244 for value in ffseq(sequence):
245 ... # do something with value...
246
247Single calls to ``ff(x)`` translate to ``ffseq([x])[0]`` with little penalty.
248Of course this technique is not always appropriate and there are other variants
249which you can figure out.
250
251You can gain some performance by explicitly storing the results of a function or
252method lookup into a local variable. A loop like::
253
254 for key in token:
255 dict[key] = dict.get(key, 0) + 1
256
257resolves ``dict.get`` every iteration. If the method isn't going to change, a
258slightly faster implementation is::
259
260 dict_get = dict.get # look up the method once
261 for key in token:
262 dict[key] = dict_get(key, 0) + 1
263
264Default arguments can be used to determine values once, at compile time instead
265of at run time. This can only be done for functions or objects which will not
266be changed during program execution, such as replacing ::
267
268 def degree_sin(deg):
269 return math.sin(deg * math.pi / 180.0)
270
271with ::
272
273 def degree_sin(deg, factor=math.pi/180.0, sin=math.sin):
274 return sin(deg * factor)
275
276Because this trick uses default arguments for terms which should not be changed,
277it should only be used when you are not concerned with presenting a possibly
278confusing API to your users.
279
280
281Core Language
282=============
283
R. David Murray89064382009-11-10 18:58:02 +0000284Why am I getting an UnboundLocalError when the variable has a value?
285--------------------------------------------------------------------
Georg Brandl6728c5a2009-10-11 18:31:23 +0000286
R. David Murray89064382009-11-10 18:58:02 +0000287It can be a surprise to get the UnboundLocalError in previously working
288code when it is modified by adding an assignment statement somewhere in
289the body of a function.
Georg Brandl6728c5a2009-10-11 18:31:23 +0000290
R. David Murray89064382009-11-10 18:58:02 +0000291This code:
Georg Brandl6728c5a2009-10-11 18:31:23 +0000292
R. David Murray89064382009-11-10 18:58:02 +0000293 >>> x = 10
294 >>> def bar():
295 ... print x
296 >>> bar()
297 10
Georg Brandl6728c5a2009-10-11 18:31:23 +0000298
R. David Murray89064382009-11-10 18:58:02 +0000299works, but this code:
Georg Brandl6728c5a2009-10-11 18:31:23 +0000300
R. David Murray89064382009-11-10 18:58:02 +0000301 >>> x = 10
302 >>> def foo():
303 ... print x
304 ... x += 1
Georg Brandl6728c5a2009-10-11 18:31:23 +0000305
R. David Murray89064382009-11-10 18:58:02 +0000306results in an UnboundLocalError:
Georg Brandl6728c5a2009-10-11 18:31:23 +0000307
R. David Murray89064382009-11-10 18:58:02 +0000308 >>> foo()
309 Traceback (most recent call last):
310 ...
311 UnboundLocalError: local variable 'x' referenced before assignment
312
313This is because when you make an assignment to a variable in a scope, that
314variable becomes local to that scope and shadows any similarly named variable
315in the outer scope. Since the last statement in foo assigns a new value to
316``x``, the compiler recognizes it as a local variable. Consequently when the
317earlier ``print x`` attempts to print the uninitialized local variable and
318an error results.
319
320In the example above you can access the outer scope variable by declaring it
321global:
322
323 >>> x = 10
324 >>> def foobar():
325 ... global x
326 ... print x
327 ... x += 1
328 >>> foobar()
329 10
330
331This explicit declaration is required in order to remind you that (unlike the
332superficially analogous situation with class and instance variables) you are
333actually modifying the value of the variable in the outer scope:
334
335 >>> print x
336 11
337
Georg Brandl6728c5a2009-10-11 18:31:23 +0000338
339What are the rules for local and global variables in Python?
340------------------------------------------------------------
341
342In Python, variables that are only referenced inside a function are implicitly
343global. If a variable is assigned a new value anywhere within the function's
344body, it's assumed to be a local. If a variable is ever assigned a new value
345inside the function, the variable is implicitly local, and you need to
346explicitly declare it as 'global'.
347
348Though a bit surprising at first, a moment's consideration explains this. On
349one hand, requiring :keyword:`global` for assigned variables provides a bar
350against unintended side-effects. On the other hand, if ``global`` was required
351for all global references, you'd be using ``global`` all the time. You'd have
Georg Brandl6f82cd32010-02-06 18:44:44 +0000352to declare as global every reference to a built-in function or to a component of
Georg Brandl6728c5a2009-10-11 18:31:23 +0000353an imported module. This clutter would defeat the usefulness of the ``global``
354declaration for identifying side-effects.
355
356
Ezio Melotti58abc5b2013-01-05 00:49:48 +0200357Why do lambdas defined in a loop with different values all return the same result?
358----------------------------------------------------------------------------------
359
360Assume you use a for loop to define a few different lambdas (or even plain
361functions), e.g.::
362
R David Murrayff229842013-06-19 17:00:43 -0400363 >>> squares = []
364 >>> for x in range(5):
365 ... squares.append(lambda: x**2)
Ezio Melotti58abc5b2013-01-05 00:49:48 +0200366
367This gives you a list that contains 5 lambdas that calculate ``x**2``. You
368might expect that, when called, they would return, respectively, ``0``, ``1``,
369``4``, ``9``, and ``16``. However, when you actually try you will see that
370they all return ``16``::
371
372 >>> squares[2]()
373 16
374 >>> squares[4]()
375 16
376
377This happens because ``x`` is not local to the lambdas, but is defined in
378the outer scope, and it is accessed when the lambda is called --- not when it
379is defined. At the end of the loop, the value of ``x`` is ``4``, so all the
380functions now return ``4**2``, i.e. ``16``. You can also verify this by
381changing the value of ``x`` and see how the results of the lambdas change::
382
383 >>> x = 8
384 >>> squares[2]()
385 64
386
387In order to avoid this, you need to save the values in variables local to the
388lambdas, so that they don't rely on the value of the global ``x``::
389
R David Murrayff229842013-06-19 17:00:43 -0400390 >>> squares = []
391 >>> for x in range(5):
392 ... squares.append(lambda n=x: n**2)
Ezio Melotti58abc5b2013-01-05 00:49:48 +0200393
394Here, ``n=x`` creates a new variable ``n`` local to the lambda and computed
395when the lambda is defined so that it has the same value that ``x`` had at
396that point in the loop. This means that the value of ``n`` will be ``0``
397in the first lambda, ``1`` in the second, ``2`` in the third, and so on.
398Therefore each lambda will now return the correct result::
399
400 >>> squares[2]()
401 4
402 >>> squares[4]()
403 16
404
405Note that this behaviour is not peculiar to lambdas, but applies to regular
406functions too.
407
408
Georg Brandl6728c5a2009-10-11 18:31:23 +0000409How do I share global variables across modules?
410------------------------------------------------
411
412The canonical way to share information across modules within a single program is
413to create a special module (often called config or cfg). Just import the config
414module in all modules of your application; the module then becomes available as
415a global name. Because there is only one instance of each module, any changes
416made to the module object get reflected everywhere. For example:
417
418config.py::
419
420 x = 0 # Default value of the 'x' configuration setting
421
422mod.py::
423
424 import config
425 config.x = 1
426
427main.py::
428
429 import config
430 import mod
431 print config.x
432
433Note that using a module is also the basis for implementing the Singleton design
434pattern, for the same reason.
435
436
437What are the "best practices" for using import in a module?
438-----------------------------------------------------------
439
440In general, don't use ``from modulename import *``. Doing so clutters the
441importer's namespace. Some people avoid this idiom even with the few modules
442that were designed to be imported in this manner. Modules designed in this
443manner include :mod:`Tkinter`, and :mod:`threading`.
444
445Import modules at the top of a file. Doing so makes it clear what other modules
446your code requires and avoids questions of whether the module name is in scope.
447Using one import per line makes it easy to add and delete module imports, but
448using multiple imports per line uses less screen space.
449
450It's good practice if you import modules in the following order:
451
Georg Brandl0cedb4b2009-12-20 14:20:16 +00004521. standard library modules -- e.g. ``sys``, ``os``, ``getopt``, ``re``
Georg Brandl6728c5a2009-10-11 18:31:23 +00004532. third-party library modules (anything installed in Python's site-packages
454 directory) -- e.g. mx.DateTime, ZODB, PIL.Image, etc.
4553. locally-developed modules
456
457Never use relative package imports. If you're writing code that's in the
458``package.sub.m1`` module and want to import ``package.sub.m2``, do not just
459write ``import m2``, even though it's legal. Write ``from package.sub import
460m2`` instead. Relative imports can lead to a module being initialized twice,
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000461leading to confusing bugs. See :pep:`328` for details.
Georg Brandl6728c5a2009-10-11 18:31:23 +0000462
463It is sometimes necessary to move imports to a function or class to avoid
464problems with circular imports. Gordon McMillan says:
465
466 Circular imports are fine where both modules use the "import <module>" form
467 of import. They fail when the 2nd module wants to grab a name out of the
468 first ("from module import name") and the import is at the top level. That's
469 because names in the 1st are not yet available, because the first module is
470 busy importing the 2nd.
471
472In this case, if the second module is only used in one function, then the import
473can easily be moved into that function. By the time the import is called, the
474first module will have finished initializing, and the second module can do its
475import.
476
477It may also be necessary to move imports out of the top level of code if some of
478the modules are platform-specific. In that case, it may not even be possible to
479import all of the modules at the top of the file. In this case, importing the
480correct modules in the corresponding platform-specific code is a good option.
481
482Only move imports into a local scope, such as inside a function definition, if
483it's necessary to solve a problem such as avoiding a circular import or are
484trying to reduce the initialization time of a module. This technique is
485especially helpful if many of the imports are unnecessary depending on how the
486program executes. You may also want to move imports into a function if the
487modules are only ever used in that function. Note that loading a module the
488first time may be expensive because of the one time initialization of the
489module, but loading a module multiple times is virtually free, costing only a
490couple of dictionary lookups. Even if the module name has gone out of scope,
491the module is probably available in :data:`sys.modules`.
492
493If only instances of a specific class use a module, then it is reasonable to
494import the module in the class's ``__init__`` method and then assign the module
495to an instance variable so that the module is always available (via that
496instance variable) during the life of the object. Note that to delay an import
497until the class is instantiated, the import must be inside a method. Putting
498the import inside the class but outside of any method still causes the import to
499occur when the module is initialized.
500
501
Ezio Melotti4f7e09a2014-07-06 20:53:27 +0300502Why are default values shared between objects?
503----------------------------------------------
504
505This type of bug commonly bites neophyte programmers. Consider this function::
506
507 def foo(mydict={}): # Danger: shared reference to one dict for all calls
508 ... compute something ...
509 mydict[key] = value
510 return mydict
511
512The first time you call this function, ``mydict`` contains a single item. The
513second time, ``mydict`` contains two items because when ``foo()`` begins
514executing, ``mydict`` starts out with an item already in it.
515
516It is often expected that a function call creates new objects for default
517values. This is not what happens. Default values are created exactly once, when
518the function is defined. If that object is changed, like the dictionary in this
519example, subsequent calls to the function will refer to this changed object.
520
521By definition, immutable objects such as numbers, strings, tuples, and ``None``,
522are safe from change. Changes to mutable objects such as dictionaries, lists,
523and class instances can lead to confusion.
524
525Because of this feature, it is good programming practice to not use mutable
526objects as default values. Instead, use ``None`` as the default value and
527inside the function, check if the parameter is ``None`` and create a new
528list/dictionary/whatever if it is. For example, don't write::
529
530 def foo(mydict={}):
531 ...
532
533but::
534
535 def foo(mydict=None):
536 if mydict is None:
537 mydict = {} # create a new dict for local namespace
538
539This feature can be useful. When you have a function that's time-consuming to
540compute, a common technique is to cache the parameters and the resulting value
541of each call to the function, and return the cached value if the same value is
542requested again. This is called "memoizing", and can be implemented like this::
543
544 # Callers will never provide a third parameter for this function.
545 def expensive(arg1, arg2, _cache={}):
546 if (arg1, arg2) in _cache:
547 return _cache[(arg1, arg2)]
548
549 # Calculate the value
550 result = ... expensive computation ...
551 _cache[(arg1, arg2)] = result # Store result in the cache
552 return result
553
554You could use a global variable containing a dictionary instead of the default
555value; it's a matter of taste.
556
557
Georg Brandl6728c5a2009-10-11 18:31:23 +0000558How can I pass optional or keyword parameters from one function to another?
559---------------------------------------------------------------------------
560
561Collect the arguments using the ``*`` and ``**`` specifiers in the function's
562parameter list; this gives you the positional arguments as a tuple and the
563keyword arguments as a dictionary. You can then pass these arguments when
564calling another function by using ``*`` and ``**``::
565
566 def f(x, *args, **kwargs):
567 ...
568 kwargs['width'] = '14.3c'
569 ...
570 g(x, *args, **kwargs)
571
572In the unlikely case that you care about Python versions older than 2.0, use
573:func:`apply`::
574
575 def f(x, *args, **kwargs):
576 ...
577 kwargs['width'] = '14.3c'
578 ...
579 apply(g, (x,)+args, kwargs)
580
581
Chris Jerdonekcf4710c2012-12-25 14:50:21 -0800582.. index::
583 single: argument; difference from parameter
584 single: parameter; difference from argument
585
Chris Jerdonek8da82682012-11-29 19:03:37 -0800586.. _faq-argument-vs-parameter:
587
588What is the difference between arguments and parameters?
589--------------------------------------------------------
590
591:term:`Parameters <parameter>` are defined by the names that appear in a
592function definition, whereas :term:`arguments <argument>` are the values
593actually passed to a function when calling it. Parameters define what types of
594arguments a function can accept. For example, given the function definition::
595
596 def func(foo, bar=None, **kwargs):
597 pass
598
599*foo*, *bar* and *kwargs* are parameters of ``func``. However, when calling
600``func``, for example::
601
602 func(42, bar=314, extra=somevar)
603
604the values ``42``, ``314``, and ``somevar`` are arguments.
605
606
Georg Brandl6728c5a2009-10-11 18:31:23 +0000607How do I write a function with output parameters (call by reference)?
608---------------------------------------------------------------------
609
610Remember that arguments are passed by assignment in Python. Since assignment
611just creates references to objects, there's no alias between an argument name in
612the caller and callee, and so no call-by-reference per se. You can achieve the
613desired effect in a number of ways.
614
6151) By returning a tuple of the results::
616
617 def func2(a, b):
618 a = 'new-value' # a and b are local names
619 b = b + 1 # assigned to new objects
620 return a, b # return new values
621
622 x, y = 'old-value', 99
623 x, y = func2(x, y)
624 print x, y # output: new-value 100
625
626 This is almost always the clearest solution.
627
6282) By using global variables. This isn't thread-safe, and is not recommended.
629
6303) By passing a mutable (changeable in-place) object::
631
632 def func1(a):
633 a[0] = 'new-value' # 'a' references a mutable list
634 a[1] = a[1] + 1 # changes a shared object
635
636 args = ['old-value', 99]
637 func1(args)
638 print args[0], args[1] # output: new-value 100
639
6404) By passing in a dictionary that gets mutated::
641
642 def func3(args):
643 args['a'] = 'new-value' # args is a mutable dictionary
644 args['b'] = args['b'] + 1 # change it in-place
645
646 args = {'a':' old-value', 'b': 99}
647 func3(args)
648 print args['a'], args['b']
649
6505) Or bundle up values in a class instance::
651
652 class callByRef:
653 def __init__(self, **args):
654 for (key, value) in args.items():
655 setattr(self, key, value)
656
657 def func4(args):
658 args.a = 'new-value' # args is a mutable callByRef
659 args.b = args.b + 1 # change object in-place
660
661 args = callByRef(a='old-value', b=99)
662 func4(args)
663 print args.a, args.b
664
665
666 There's almost never a good reason to get this complicated.
667
668Your best choice is to return a tuple containing the multiple results.
669
670
671How do you make a higher order function in Python?
672--------------------------------------------------
673
674You have two choices: you can use nested scopes or you can use callable objects.
675For example, suppose you wanted to define ``linear(a,b)`` which returns a
676function ``f(x)`` that computes the value ``a*x+b``. Using nested scopes::
677
678 def linear(a, b):
679 def result(x):
680 return a * x + b
681 return result
682
683Or using a callable object::
684
685 class linear:
686
687 def __init__(self, a, b):
688 self.a, self.b = a, b
689
690 def __call__(self, x):
691 return self.a * x + self.b
692
693In both cases, ::
694
695 taxes = linear(0.3, 2)
696
697gives a callable object where ``taxes(10e6) == 0.3 * 10e6 + 2``.
698
699The callable object approach has the disadvantage that it is a bit slower and
700results in slightly longer code. However, note that a collection of callables
701can share their signature via inheritance::
702
703 class exponential(linear):
704 # __init__ inherited
705 def __call__(self, x):
706 return self.a * (x ** self.b)
707
708Object can encapsulate state for several methods::
709
710 class counter:
711
712 value = 0
713
714 def set(self, x):
715 self.value = x
716
717 def up(self):
718 self.value = self.value + 1
719
720 def down(self):
721 self.value = self.value - 1
722
723 count = counter()
724 inc, dec, reset = count.up, count.down, count.set
725
726Here ``inc()``, ``dec()`` and ``reset()`` act like functions which share the
727same counting variable.
728
729
730How do I copy an object in Python?
731----------------------------------
732
733In general, try :func:`copy.copy` or :func:`copy.deepcopy` for the general case.
734Not all objects can be copied, but most can.
735
736Some objects can be copied more easily. Dictionaries have a :meth:`~dict.copy`
737method::
738
739 newdict = olddict.copy()
740
741Sequences can be copied by slicing::
742
743 new_l = l[:]
744
745
746How can I find the methods or attributes of an object?
747------------------------------------------------------
748
749For an instance x of a user-defined class, ``dir(x)`` returns an alphabetized
750list of the names containing the instance attributes and methods and attributes
751defined by its class.
752
753
754How can my code discover the name of an object?
755-----------------------------------------------
756
757Generally speaking, it can't, because objects don't really have names.
758Essentially, assignment always binds a name to a value; The same is true of
759``def`` and ``class`` statements, but in that case the value is a
760callable. Consider the following code::
761
762 class A:
763 pass
764
765 B = A
766
767 a = B()
768 b = a
769 print b
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000770 <__main__.A instance at 0x16D07CC>
Georg Brandl6728c5a2009-10-11 18:31:23 +0000771 print a
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000772 <__main__.A instance at 0x16D07CC>
Georg Brandl6728c5a2009-10-11 18:31:23 +0000773
774Arguably the class has a name: even though it is bound to two names and invoked
775through the name B the created instance is still reported as an instance of
776class A. However, it is impossible to say whether the instance's name is a or
777b, since both names are bound to the same value.
778
779Generally speaking it should not be necessary for your code to "know the names"
780of particular values. Unless you are deliberately writing introspective
781programs, this is usually an indication that a change of approach might be
782beneficial.
783
784In comp.lang.python, Fredrik Lundh once gave an excellent analogy in answer to
785this question:
786
787 The same way as you get the name of that cat you found on your porch: the cat
788 (object) itself cannot tell you its name, and it doesn't really care -- so
789 the only way to find out what it's called is to ask all your neighbours
790 (namespaces) if it's their cat (object)...
791
792 ....and don't be surprised if you'll find that it's known by many names, or
793 no name at all!
794
795
796What's up with the comma operator's precedence?
797-----------------------------------------------
798
799Comma is not an operator in Python. Consider this session::
800
801 >>> "a" in "b", "a"
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000802 (False, 'a')
Georg Brandl6728c5a2009-10-11 18:31:23 +0000803
804Since the comma is not an operator, but a separator between expressions the
805above is evaluated as if you had entered::
806
R David Murrayff229842013-06-19 17:00:43 -0400807 ("a" in "b"), "a"
Georg Brandl6728c5a2009-10-11 18:31:23 +0000808
809not::
810
R David Murrayff229842013-06-19 17:00:43 -0400811 "a" in ("b", "a")
Georg Brandl6728c5a2009-10-11 18:31:23 +0000812
813The same is true of the various assignment operators (``=``, ``+=`` etc). They
814are not truly operators but syntactic delimiters in assignment statements.
815
816
817Is there an equivalent of C's "?:" ternary operator?
818----------------------------------------------------
819
820Yes, this feature was added in Python 2.5. The syntax would be as follows::
821
822 [on_true] if [expression] else [on_false]
823
824 x, y = 50, 25
825
826 small = x if x < y else y
827
828For versions previous to 2.5 the answer would be 'No'.
829
Georg Brandl6728c5a2009-10-11 18:31:23 +0000830
831Is it possible to write obfuscated one-liners in Python?
832--------------------------------------------------------
833
834Yes. Usually this is done by nesting :keyword:`lambda` within
835:keyword:`lambda`. See the following three examples, due to Ulf Bartelt::
836
837 # Primes < 1000
838 print filter(None,map(lambda y:y*reduce(lambda x,y:x*y!=0,
839 map(lambda x,y=y:y%x,range(2,int(pow(y,0.5)+1))),1),range(2,1000)))
840
841 # First 10 Fibonacci numbers
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000842 print map(lambda x,f=lambda x,f:(f(x-1,f)+f(x-2,f)) if x>1 else 1: f(x,f),
Georg Brandl6728c5a2009-10-11 18:31:23 +0000843 range(10))
844
845 # Mandelbrot set
846 print (lambda Ru,Ro,Iu,Io,IM,Sx,Sy:reduce(lambda x,y:x+y,map(lambda y,
847 Iu=Iu,Io=Io,Ru=Ru,Ro=Ro,Sy=Sy,L=lambda yc,Iu=Iu,Io=Io,Ru=Ru,Ro=Ro,i=IM,
848 Sx=Sx,Sy=Sy:reduce(lambda x,y:x+y,map(lambda x,xc=Ru,yc=yc,Ru=Ru,Ro=Ro,
849 i=i,Sx=Sx,F=lambda xc,yc,x,y,k,f=lambda xc,yc,x,y,k,f:(k<=0)or (x*x+y*y
850 >=4.0) or 1+f(xc,yc,x*x-y*y+xc,2.0*x*y+yc,k-1,f):f(xc,yc,x,y,k,f):chr(
851 64+F(Ru+x*(Ro-Ru)/Sx,yc,0,0,i)),range(Sx))):L(Iu+y*(Io-Iu)/Sy),range(Sy
852 ))))(-2.1, 0.7, -1.2, 1.2, 30, 80, 24)
853 # \___ ___/ \___ ___/ | | |__ lines on screen
854 # V V | |______ columns on screen
855 # | | |__________ maximum of "iterations"
856 # | |_________________ range on y axis
857 # |____________________________ range on x axis
858
859Don't try this at home, kids!
860
861
862Numbers and strings
863===================
864
865How do I specify hexadecimal and octal integers?
866------------------------------------------------
867
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000868To specify an octal digit, precede the octal value with a zero, and then a lower
869or uppercase "o". For example, to set the variable "a" to the octal value "10"
870(8 in decimal), type::
Georg Brandl6728c5a2009-10-11 18:31:23 +0000871
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000872 >>> a = 0o10
Georg Brandl6728c5a2009-10-11 18:31:23 +0000873 >>> a
874 8
875
876Hexadecimal is just as easy. Simply precede the hexadecimal number with a zero,
877and then a lower or uppercase "x". Hexadecimal digits can be specified in lower
878or uppercase. For example, in the Python interpreter::
879
880 >>> a = 0xa5
881 >>> a
882 165
883 >>> b = 0XB2
884 >>> b
885 178
886
887
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000888Why does -22 // 10 return -3?
889-----------------------------
Georg Brandl6728c5a2009-10-11 18:31:23 +0000890
891It's primarily driven by the desire that ``i % j`` have the same sign as ``j``.
892If you want that, and also want::
893
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000894 i == (i // j) * j + (i % j)
Georg Brandl6728c5a2009-10-11 18:31:23 +0000895
896then integer division has to return the floor. C also requires that identity to
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000897hold, and then compilers that truncate ``i // j`` need to make ``i % j`` have
898the same sign as ``i``.
Georg Brandl6728c5a2009-10-11 18:31:23 +0000899
900There are few real use cases for ``i % j`` when ``j`` is negative. When ``j``
901is positive, there are many, and in virtually all of them it's more useful for
902``i % j`` to be ``>= 0``. If the clock says 10 now, what did it say 200 hours
903ago? ``-190 % 12 == 2`` is useful; ``-190 % 12 == -10`` is a bug waiting to
904bite.
905
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000906.. note::
907
908 On Python 2, ``a / b`` returns the same as ``a // b`` if
909 ``__future__.division`` is not in effect. This is also known as "classic"
910 division.
911
Georg Brandl6728c5a2009-10-11 18:31:23 +0000912
913How do I convert a string to a number?
914--------------------------------------
915
916For integers, use the built-in :func:`int` type constructor, e.g. ``int('144')
917== 144``. Similarly, :func:`float` converts to floating-point,
918e.g. ``float('144') == 144.0``.
919
920By default, these interpret the number as decimal, so that ``int('0144') ==
921144`` and ``int('0x144')`` raises :exc:`ValueError`. ``int(string, base)`` takes
922the base to convert from as a second optional argument, so ``int('0x144', 16) ==
923324``. If the base is specified as 0, the number is interpreted using Python's
924rules: a leading '0' indicates octal, and '0x' indicates a hex number.
925
926Do not use the built-in function :func:`eval` if all you need is to convert
927strings to numbers. :func:`eval` will be significantly slower and it presents a
928security risk: someone could pass you a Python expression that might have
929unwanted side effects. For example, someone could pass
930``__import__('os').system("rm -rf $HOME")`` which would erase your home
931directory.
932
933:func:`eval` also has the effect of interpreting numbers as Python expressions,
934so that e.g. ``eval('09')`` gives a syntax error because Python regards numbers
935starting with '0' as octal (base 8).
936
937
938How do I convert a number to a string?
939--------------------------------------
940
941To convert, e.g., the number 144 to the string '144', use the built-in type
942constructor :func:`str`. If you want a hexadecimal or octal representation, use
Georg Brandl0cedb4b2009-12-20 14:20:16 +0000943the built-in functions :func:`hex` or :func:`oct`. For fancy formatting, see
944the :ref:`formatstrings` section, e.g. ``"{:04d}".format(144)`` yields
945``'0144'`` and ``"{:.3f}".format(1/3)`` yields ``'0.333'``. You may also use
946:ref:`the % operator <string-formatting>` on strings. See the library reference
947manual for details.
Georg Brandl6728c5a2009-10-11 18:31:23 +0000948
949
950How do I modify a string in place?
951----------------------------------
952
953You can't, because strings are immutable. If you need an object with this
954ability, try converting the string to a list or use the array module::
955
R David Murrayff229842013-06-19 17:00:43 -0400956 >>> import io
Georg Brandl6728c5a2009-10-11 18:31:23 +0000957 >>> s = "Hello, world"
958 >>> a = list(s)
959 >>> print a
960 ['H', 'e', 'l', 'l', 'o', ',', ' ', 'w', 'o', 'r', 'l', 'd']
961 >>> a[7:] = list("there!")
962 >>> ''.join(a)
963 'Hello, there!'
964
965 >>> import array
966 >>> a = array.array('c', s)
967 >>> print a
968 array('c', 'Hello, world')
Serhiy Storchakab7128732013-12-24 11:04:06 +0200969 >>> a[0] = 'y'; print a
R David Murrayff229842013-06-19 17:00:43 -0400970 array('c', 'yello, world')
Georg Brandl6728c5a2009-10-11 18:31:23 +0000971 >>> a.tostring()
972 'yello, world'
973
974
975How do I use strings to call functions/methods?
976-----------------------------------------------
977
978There are various techniques.
979
980* The best is to use a dictionary that maps strings to functions. The primary
981 advantage of this technique is that the strings do not need to match the names
982 of the functions. This is also the primary technique used to emulate a case
983 construct::
984
985 def a():
986 pass
987
988 def b():
989 pass
990
991 dispatch = {'go': a, 'stop': b} # Note lack of parens for funcs
992
993 dispatch[get_input()]() # Note trailing parens to call function
994
995* Use the built-in function :func:`getattr`::
996
997 import foo
998 getattr(foo, 'bar')()
999
1000 Note that :func:`getattr` works on any object, including classes, class
1001 instances, modules, and so on.
1002
1003 This is used in several places in the standard library, like this::
1004
1005 class Foo:
1006 def do_foo(self):
1007 ...
1008
1009 def do_bar(self):
1010 ...
1011
1012 f = getattr(foo_instance, 'do_' + opname)
1013 f()
1014
1015
1016* Use :func:`locals` or :func:`eval` to resolve the function name::
1017
1018 def myFunc():
1019 print "hello"
1020
1021 fname = "myFunc"
1022
1023 f = locals()[fname]
1024 f()
1025
1026 f = eval(fname)
1027 f()
1028
1029 Note: Using :func:`eval` is slow and dangerous. If you don't have absolute
1030 control over the contents of the string, someone could pass a string that
1031 resulted in an arbitrary function being executed.
1032
1033Is there an equivalent to Perl's chomp() for removing trailing newlines from strings?
1034-------------------------------------------------------------------------------------
1035
1036Starting with Python 2.2, you can use ``S.rstrip("\r\n")`` to remove all
Georg Brandl09302282010-10-06 09:32:48 +00001037occurrences of any line terminator from the end of the string ``S`` without
Georg Brandl6728c5a2009-10-11 18:31:23 +00001038removing other trailing whitespace. If the string ``S`` represents more than
1039one line, with several empty lines at the end, the line terminators for all the
1040blank lines will be removed::
1041
1042 >>> lines = ("line 1 \r\n"
1043 ... "\r\n"
1044 ... "\r\n")
1045 >>> lines.rstrip("\n\r")
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001046 'line 1 '
Georg Brandl6728c5a2009-10-11 18:31:23 +00001047
1048Since this is typically only desired when reading text one line at a time, using
1049``S.rstrip()`` this way works well.
1050
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001051For older versions of Python, there are two partial substitutes:
Georg Brandl6728c5a2009-10-11 18:31:23 +00001052
1053- If you want to remove all trailing whitespace, use the ``rstrip()`` method of
1054 string objects. This removes all trailing whitespace, not just a single
1055 newline.
1056
1057- Otherwise, if there is only one line in the string ``S``, use
1058 ``S.splitlines()[0]``.
1059
1060
1061Is there a scanf() or sscanf() equivalent?
1062------------------------------------------
1063
1064Not as such.
1065
1066For simple input parsing, the easiest approach is usually to split the line into
1067whitespace-delimited words using the :meth:`~str.split` method of string objects
1068and then convert decimal strings to numeric values using :func:`int` or
1069:func:`float`. ``split()`` supports an optional "sep" parameter which is useful
1070if the line uses something other than whitespace as a separator.
1071
Brian Curtine49aefc2010-09-23 13:48:06 +00001072For more complicated input parsing, regular expressions are more powerful
Sandro Tosi98ed08f2012-01-14 16:42:02 +01001073than C's :c:func:`sscanf` and better suited for the task.
Georg Brandl6728c5a2009-10-11 18:31:23 +00001074
1075
1076What does 'UnicodeError: ASCII [decoding,encoding] error: ordinal not in range(128)' mean?
1077------------------------------------------------------------------------------------------
1078
1079This error indicates that your Python installation can handle only 7-bit ASCII
1080strings. There are a couple ways to fix or work around the problem.
1081
1082If your programs must handle data in arbitrary character set encodings, the
1083environment the application runs in will generally identify the encoding of the
1084data it is handing you. You need to convert the input to Unicode data using
1085that encoding. For example, a program that handles email or web input will
1086typically find character set encoding information in Content-Type headers. This
1087can then be used to properly convert input data to Unicode. Assuming the string
1088referred to by ``value`` is encoded as UTF-8::
1089
1090 value = unicode(value, "utf-8")
1091
1092will return a Unicode object. If the data is not correctly encoded as UTF-8,
1093the above call will raise a :exc:`UnicodeError` exception.
1094
1095If you only want strings converted to Unicode which have non-ASCII data, you can
1096try converting them first assuming an ASCII encoding, and then generate Unicode
1097objects if that fails::
1098
1099 try:
1100 x = unicode(value, "ascii")
1101 except UnicodeError:
1102 value = unicode(value, "utf-8")
1103 else:
1104 # value was valid ASCII data
1105 pass
1106
1107It's possible to set a default encoding in a file called ``sitecustomize.py``
1108that's part of the Python library. However, this isn't recommended because
1109changing the Python-wide default encoding may cause third-party extension
1110modules to fail.
1111
1112Note that on Windows, there is an encoding known as "mbcs", which uses an
1113encoding specific to your current locale. In many cases, and particularly when
1114working with COM, this may be an appropriate default encoding to use.
1115
1116
1117Sequences (Tuples/Lists)
1118========================
1119
1120How do I convert between tuples and lists?
1121------------------------------------------
1122
1123The type constructor ``tuple(seq)`` converts any sequence (actually, any
1124iterable) into a tuple with the same items in the same order.
1125
1126For example, ``tuple([1, 2, 3])`` yields ``(1, 2, 3)`` and ``tuple('abc')``
1127yields ``('a', 'b', 'c')``. If the argument is a tuple, it does not make a copy
1128but returns the same object, so it is cheap to call :func:`tuple` when you
1129aren't sure that an object is already a tuple.
1130
1131The type constructor ``list(seq)`` converts any sequence or iterable into a list
1132with the same items in the same order. For example, ``list((1, 2, 3))`` yields
1133``[1, 2, 3]`` and ``list('abc')`` yields ``['a', 'b', 'c']``. If the argument
1134is a list, it makes a copy just like ``seq[:]`` would.
1135
1136
1137What's a negative index?
1138------------------------
1139
1140Python sequences are indexed with positive numbers and negative numbers. For
1141positive numbers 0 is the first index 1 is the second index and so forth. For
1142negative indices -1 is the last index and -2 is the penultimate (next to last)
1143index and so forth. Think of ``seq[-n]`` as the same as ``seq[len(seq)-n]``.
1144
1145Using negative indices can be very convenient. For example ``S[:-1]`` is all of
1146the string except for its last character, which is useful for removing the
1147trailing newline from a string.
1148
1149
1150How do I iterate over a sequence in reverse order?
1151--------------------------------------------------
1152
Georg Brandl6f82cd32010-02-06 18:44:44 +00001153Use the :func:`reversed` built-in function, which is new in Python 2.4::
Georg Brandl6728c5a2009-10-11 18:31:23 +00001154
1155 for x in reversed(sequence):
1156 ... # do something with x...
1157
1158This won't touch your original sequence, but build a new copy with reversed
1159order to iterate over.
1160
1161With Python 2.3, you can use an extended slice syntax::
1162
1163 for x in sequence[::-1]:
1164 ... # do something with x...
1165
1166
1167How do you remove duplicates from a list?
1168-----------------------------------------
1169
1170See the Python Cookbook for a long discussion of many ways to do this:
1171
1172 http://aspn.activestate.com/ASPN/Cookbook/Python/Recipe/52560
1173
1174If you don't mind reordering the list, sort it and then scan from the end of the
1175list, deleting duplicates as you go::
1176
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001177 if mylist:
1178 mylist.sort()
1179 last = mylist[-1]
1180 for i in range(len(mylist)-2, -1, -1):
1181 if last == mylist[i]:
1182 del mylist[i]
Georg Brandl6728c5a2009-10-11 18:31:23 +00001183 else:
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001184 last = mylist[i]
Georg Brandl6728c5a2009-10-11 18:31:23 +00001185
1186If all elements of the list may be used as dictionary keys (i.e. they are all
1187hashable) this is often faster ::
1188
1189 d = {}
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001190 for x in mylist:
1191 d[x] = 1
1192 mylist = list(d.keys())
Georg Brandl6728c5a2009-10-11 18:31:23 +00001193
1194In Python 2.5 and later, the following is possible instead::
1195
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001196 mylist = list(set(mylist))
Georg Brandl6728c5a2009-10-11 18:31:23 +00001197
1198This converts the list into a set, thereby removing duplicates, and then back
1199into a list.
1200
1201
1202How do you make an array in Python?
1203-----------------------------------
1204
1205Use a list::
1206
1207 ["this", 1, "is", "an", "array"]
1208
1209Lists are equivalent to C or Pascal arrays in their time complexity; the primary
1210difference is that a Python list can contain objects of many different types.
1211
1212The ``array`` module also provides methods for creating arrays of fixed types
1213with compact representations, but they are slower to index than lists. Also
1214note that the Numeric extensions and others define array-like structures with
1215various characteristics as well.
1216
1217To get Lisp-style linked lists, you can emulate cons cells using tuples::
1218
1219 lisp_list = ("like", ("this", ("example", None) ) )
1220
1221If mutability is desired, you could use lists instead of tuples. Here the
1222analogue of lisp car is ``lisp_list[0]`` and the analogue of cdr is
1223``lisp_list[1]``. Only do this if you're sure you really need to, because it's
1224usually a lot slower than using Python lists.
1225
1226
1227How do I create a multidimensional list?
1228----------------------------------------
1229
1230You probably tried to make a multidimensional array like this::
1231
R David Murrayff229842013-06-19 17:00:43 -04001232 >>> A = [[None] * 2] * 3
Georg Brandl6728c5a2009-10-11 18:31:23 +00001233
1234This looks correct if you print it::
1235
1236 >>> A
1237 [[None, None], [None, None], [None, None]]
1238
1239But when you assign a value, it shows up in multiple places:
1240
1241 >>> A[0][0] = 5
1242 >>> A
1243 [[5, None], [5, None], [5, None]]
1244
1245The reason is that replicating a list with ``*`` doesn't create copies, it only
1246creates references to the existing objects. The ``*3`` creates a list
1247containing 3 references to the same list of length two. Changes to one row will
1248show in all rows, which is almost certainly not what you want.
1249
1250The suggested approach is to create a list of the desired length first and then
1251fill in each element with a newly created list::
1252
1253 A = [None] * 3
1254 for i in range(3):
1255 A[i] = [None] * 2
1256
1257This generates a list containing 3 different lists of length two. You can also
1258use a list comprehension::
1259
1260 w, h = 2, 3
1261 A = [[None] * w for i in range(h)]
1262
1263Or, you can use an extension that provides a matrix datatype; `Numeric Python
Ezio Melottic49805e2013-06-09 01:04:21 +03001264<http://www.numpy.org/>`_ is the best known.
Georg Brandl6728c5a2009-10-11 18:31:23 +00001265
1266
1267How do I apply a method to a sequence of objects?
1268-------------------------------------------------
1269
1270Use a list comprehension::
1271
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001272 result = [obj.method() for obj in mylist]
Georg Brandl6728c5a2009-10-11 18:31:23 +00001273
1274More generically, you can try the following function::
1275
1276 def method_map(objects, method, arguments):
1277 """method_map([a,b], "meth", (1,2)) gives [a.meth(1,2), b.meth(1,2)]"""
1278 nobjects = len(objects)
1279 methods = map(getattr, objects, [method]*nobjects)
1280 return map(apply, methods, [arguments]*nobjects)
1281
1282
R David Murrayed983ab2013-05-20 10:34:58 -04001283Why does a_tuple[i] += ['item'] raise an exception when the addition works?
1284---------------------------------------------------------------------------
1285
1286This is because of a combination of the fact that augmented assignment
1287operators are *assignment* operators, and the difference between mutable and
1288immutable objects in Python.
1289
1290This discussion applies in general when augmented assignment operators are
1291applied to elements of a tuple that point to mutable objects, but we'll use
1292a ``list`` and ``+=`` as our exemplar.
1293
1294If you wrote::
1295
1296 >>> a_tuple = (1, 2)
1297 >>> a_tuple[0] += 1
1298 Traceback (most recent call last):
1299 ...
1300 TypeError: 'tuple' object does not support item assignment
1301
1302The reason for the exception should be immediately clear: ``1`` is added to the
1303object ``a_tuple[0]`` points to (``1``), producing the result object, ``2``,
1304but when we attempt to assign the result of the computation, ``2``, to element
1305``0`` of the tuple, we get an error because we can't change what an element of
1306a tuple points to.
1307
1308Under the covers, what this augmented assignment statement is doing is
1309approximately this::
1310
R David Murraye6f2e6c2013-05-21 11:46:18 -04001311 >>> result = a_tuple[0] + 1
R David Murrayed983ab2013-05-20 10:34:58 -04001312 >>> a_tuple[0] = result
1313 Traceback (most recent call last):
1314 ...
1315 TypeError: 'tuple' object does not support item assignment
1316
1317It is the assignment part of the operation that produces the error, since a
1318tuple is immutable.
1319
1320When you write something like::
1321
1322 >>> a_tuple = (['foo'], 'bar')
1323 >>> a_tuple[0] += ['item']
1324 Traceback (most recent call last):
1325 ...
1326 TypeError: 'tuple' object does not support item assignment
1327
1328The exception is a bit more surprising, and even more surprising is the fact
1329that even though there was an error, the append worked::
1330
1331 >>> a_tuple[0]
1332 ['foo', 'item']
1333
R David Murraye6f2e6c2013-05-21 11:46:18 -04001334To see why this happens, you need to know that (a) if an object implements an
1335``__iadd__`` magic method, it gets called when the ``+=`` augmented assignment
1336is executed, and its return value is what gets used in the assignment statement;
1337and (b) for lists, ``__iadd__`` is equivalent to calling ``extend`` on the list
1338and returning the list. That's why we say that for lists, ``+=`` is a
1339"shorthand" for ``list.extend``::
R David Murrayed983ab2013-05-20 10:34:58 -04001340
1341 >>> a_list = []
1342 >>> a_list += [1]
1343 >>> a_list
1344 [1]
1345
R David Murraye6f2e6c2013-05-21 11:46:18 -04001346This is equivalent to::
R David Murrayed983ab2013-05-20 10:34:58 -04001347
1348 >>> result = a_list.__iadd__([1])
1349 >>> a_list = result
1350
1351The object pointed to by a_list has been mutated, and the pointer to the
1352mutated object is assigned back to ``a_list``. The end result of the
1353assignment is a no-op, since it is a pointer to the same object that ``a_list``
1354was previously pointing to, but the assignment still happens.
1355
1356Thus, in our tuple example what is happening is equivalent to::
1357
1358 >>> result = a_tuple[0].__iadd__(['item'])
1359 >>> a_tuple[0] = result
1360 Traceback (most recent call last):
1361 ...
1362 TypeError: 'tuple' object does not support item assignment
1363
1364The ``__iadd__`` succeeds, and thus the list is extended, but even though
1365``result`` points to the same object that ``a_tuple[0]`` already points to,
1366that final assignment still results in an error, because tuples are immutable.
1367
1368
Georg Brandl6728c5a2009-10-11 18:31:23 +00001369Dictionaries
1370============
1371
1372How can I get a dictionary to display its keys in a consistent order?
1373---------------------------------------------------------------------
1374
1375You can't. Dictionaries store their keys in an unpredictable order, so the
1376display order of a dictionary's elements will be similarly unpredictable.
1377
1378This can be frustrating if you want to save a printable version to a file, make
1379some changes and then compare it with some other printed dictionary. In this
1380case, use the ``pprint`` module to pretty-print the dictionary; the items will
1381be presented in order sorted by the key.
1382
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001383A more complicated solution is to subclass ``dict`` to create a
Georg Brandl6728c5a2009-10-11 18:31:23 +00001384``SortedDict`` class that prints itself in a predictable order. Here's one
1385simpleminded implementation of such a class::
1386
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001387 class SortedDict(dict):
Georg Brandl6728c5a2009-10-11 18:31:23 +00001388 def __repr__(self):
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001389 keys = sorted(self.keys())
1390 result = ("{!r}: {!r}".format(k, self[k]) for k in keys)
1391 return "{{{}}}".format(", ".join(result))
Georg Brandl6728c5a2009-10-11 18:31:23 +00001392
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001393 __str__ = __repr__
Georg Brandl6728c5a2009-10-11 18:31:23 +00001394
1395This will work for many common situations you might encounter, though it's far
1396from a perfect solution. The largest flaw is that if some values in the
1397dictionary are also dictionaries, their values won't be presented in any
1398particular order.
1399
1400
1401I want to do a complicated sort: can you do a Schwartzian Transform in Python?
1402------------------------------------------------------------------------------
1403
1404The technique, attributed to Randal Schwartz of the Perl community, sorts the
1405elements of a list by a metric which maps each element to its "sort value". In
1406Python, just use the ``key`` argument for the ``sort()`` method::
1407
1408 Isorted = L[:]
1409 Isorted.sort(key=lambda s: int(s[10:15]))
1410
1411The ``key`` argument is new in Python 2.4, for older versions this kind of
1412sorting is quite simple to do with list comprehensions. To sort a list of
1413strings by their uppercase values::
1414
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001415 tmp1 = [(x.upper(), x) for x in L] # Schwartzian transform
Georg Brandl6728c5a2009-10-11 18:31:23 +00001416 tmp1.sort()
1417 Usorted = [x[1] for x in tmp1]
1418
1419To sort by the integer value of a subfield extending from positions 10-15 in
1420each string::
1421
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001422 tmp2 = [(int(s[10:15]), s) for s in L] # Schwartzian transform
Georg Brandl6728c5a2009-10-11 18:31:23 +00001423 tmp2.sort()
1424 Isorted = [x[1] for x in tmp2]
1425
1426Note that Isorted may also be computed by ::
1427
1428 def intfield(s):
1429 return int(s[10:15])
1430
1431 def Icmp(s1, s2):
1432 return cmp(intfield(s1), intfield(s2))
1433
1434 Isorted = L[:]
1435 Isorted.sort(Icmp)
1436
1437but since this method calls ``intfield()`` many times for each element of L, it
1438is slower than the Schwartzian Transform.
1439
1440
1441How can I sort one list by values from another list?
1442----------------------------------------------------
1443
1444Merge them into a single list of tuples, sort the resulting list, and then pick
1445out the element you want. ::
1446
1447 >>> list1 = ["what", "I'm", "sorting", "by"]
1448 >>> list2 = ["something", "else", "to", "sort"]
1449 >>> pairs = zip(list1, list2)
1450 >>> pairs
1451 [('what', 'something'), ("I'm", 'else'), ('sorting', 'to'), ('by', 'sort')]
1452 >>> pairs.sort()
1453 >>> result = [ x[1] for x in pairs ]
1454 >>> result
1455 ['else', 'sort', 'to', 'something']
1456
1457An alternative for the last step is::
1458
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001459 >>> result = []
1460 >>> for p in pairs: result.append(p[1])
Georg Brandl6728c5a2009-10-11 18:31:23 +00001461
1462If you find this more legible, you might prefer to use this instead of the final
1463list comprehension. However, it is almost twice as slow for long lists. Why?
1464First, the ``append()`` operation has to reallocate memory, and while it uses
1465some tricks to avoid doing that each time, it still has to do it occasionally,
1466and that costs quite a bit. Second, the expression "result.append" requires an
1467extra attribute lookup, and third, there's a speed reduction from having to make
1468all those function calls.
1469
1470
1471Objects
1472=======
1473
1474What is a class?
1475----------------
1476
1477A class is the particular object type created by executing a class statement.
1478Class objects are used as templates to create instance objects, which embody
1479both the data (attributes) and code (methods) specific to a datatype.
1480
1481A class can be based on one or more other classes, called its base class(es). It
1482then inherits the attributes and methods of its base classes. This allows an
1483object model to be successively refined by inheritance. You might have a
1484generic ``Mailbox`` class that provides basic accessor methods for a mailbox,
1485and subclasses such as ``MboxMailbox``, ``MaildirMailbox``, ``OutlookMailbox``
1486that handle various specific mailbox formats.
1487
1488
1489What is a method?
1490-----------------
1491
1492A method is a function on some object ``x`` that you normally call as
1493``x.name(arguments...)``. Methods are defined as functions inside the class
1494definition::
1495
1496 class C:
1497 def meth (self, arg):
1498 return arg * 2 + self.attribute
1499
1500
1501What is self?
1502-------------
1503
1504Self is merely a conventional name for the first argument of a method. A method
1505defined as ``meth(self, a, b, c)`` should be called as ``x.meth(a, b, c)`` for
1506some instance ``x`` of the class in which the definition occurs; the called
1507method will think it is called as ``meth(x, a, b, c)``.
1508
1509See also :ref:`why-self`.
1510
1511
1512How do I check if an object is an instance of a given class or of a subclass of it?
1513-----------------------------------------------------------------------------------
1514
1515Use the built-in function ``isinstance(obj, cls)``. You can check if an object
1516is an instance of any of a number of classes by providing a tuple instead of a
1517single class, e.g. ``isinstance(obj, (class1, class2, ...))``, and can also
1518check whether an object is one of Python's built-in types, e.g.
1519``isinstance(obj, str)`` or ``isinstance(obj, (int, long, float, complex))``.
1520
1521Note that most programs do not use :func:`isinstance` on user-defined classes
1522very often. If you are developing the classes yourself, a more proper
1523object-oriented style is to define methods on the classes that encapsulate a
1524particular behaviour, instead of checking the object's class and doing a
1525different thing based on what class it is. For example, if you have a function
1526that does something::
1527
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001528 def search(obj):
Georg Brandl6728c5a2009-10-11 18:31:23 +00001529 if isinstance(obj, Mailbox):
1530 # ... code to search a mailbox
1531 elif isinstance(obj, Document):
1532 # ... code to search a document
1533 elif ...
1534
1535A better approach is to define a ``search()`` method on all the classes and just
1536call it::
1537
1538 class Mailbox:
1539 def search(self):
1540 # ... code to search a mailbox
1541
1542 class Document:
1543 def search(self):
1544 # ... code to search a document
1545
1546 obj.search()
1547
1548
1549What is delegation?
1550-------------------
1551
1552Delegation is an object oriented technique (also called a design pattern).
1553Let's say you have an object ``x`` and want to change the behaviour of just one
1554of its methods. You can create a new class that provides a new implementation
1555of the method you're interested in changing and delegates all other methods to
1556the corresponding method of ``x``.
1557
1558Python programmers can easily implement delegation. For example, the following
1559class implements a class that behaves like a file but converts all written data
1560to uppercase::
1561
1562 class UpperOut:
1563
1564 def __init__(self, outfile):
1565 self._outfile = outfile
1566
1567 def write(self, s):
1568 self._outfile.write(s.upper())
1569
1570 def __getattr__(self, name):
1571 return getattr(self._outfile, name)
1572
1573Here the ``UpperOut`` class redefines the ``write()`` method to convert the
1574argument string to uppercase before calling the underlying
1575``self.__outfile.write()`` method. All other methods are delegated to the
1576underlying ``self.__outfile`` object. The delegation is accomplished via the
1577``__getattr__`` method; consult :ref:`the language reference <attribute-access>`
1578for more information about controlling attribute access.
1579
1580Note that for more general cases delegation can get trickier. When attributes
1581must be set as well as retrieved, the class must define a :meth:`__setattr__`
1582method too, and it must do so carefully. The basic implementation of
1583:meth:`__setattr__` is roughly equivalent to the following::
1584
1585 class X:
1586 ...
1587 def __setattr__(self, name, value):
1588 self.__dict__[name] = value
1589 ...
1590
1591Most :meth:`__setattr__` implementations must modify ``self.__dict__`` to store
1592local state for self without causing an infinite recursion.
1593
1594
1595How do I call a method defined in a base class from a derived class that overrides it?
1596--------------------------------------------------------------------------------------
1597
1598If you're using new-style classes, use the built-in :func:`super` function::
1599
1600 class Derived(Base):
1601 def meth (self):
1602 super(Derived, self).meth()
1603
1604If you're using classic classes: For a class definition such as ``class
1605Derived(Base): ...`` you can call method ``meth()`` defined in ``Base`` (or one
1606of ``Base``'s base classes) as ``Base.meth(self, arguments...)``. Here,
1607``Base.meth`` is an unbound method, so you need to provide the ``self``
1608argument.
1609
1610
1611How can I organize my code to make it easier to change the base class?
1612----------------------------------------------------------------------
1613
1614You could define an alias for the base class, assign the real base class to it
1615before your class definition, and use the alias throughout your class. Then all
1616you have to change is the value assigned to the alias. Incidentally, this trick
1617is also handy if you want to decide dynamically (e.g. depending on availability
1618of resources) which base class to use. Example::
1619
1620 BaseAlias = <real base class>
1621
1622 class Derived(BaseAlias):
1623 def meth(self):
1624 BaseAlias.meth(self)
1625 ...
1626
1627
1628How do I create static class data and static class methods?
1629-----------------------------------------------------------
1630
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001631Both static data and static methods (in the sense of C++ or Java) are supported
1632in Python.
Georg Brandl6728c5a2009-10-11 18:31:23 +00001633
1634For static data, simply define a class attribute. To assign a new value to the
1635attribute, you have to explicitly use the class name in the assignment::
1636
1637 class C:
1638 count = 0 # number of times C.__init__ called
1639
1640 def __init__(self):
1641 C.count = C.count + 1
1642
1643 def getcount(self):
1644 return C.count # or return self.count
1645
1646``c.count`` also refers to ``C.count`` for any ``c`` such that ``isinstance(c,
1647C)`` holds, unless overridden by ``c`` itself or by some class on the base-class
1648search path from ``c.__class__`` back to ``C``.
1649
1650Caution: within a method of C, an assignment like ``self.count = 42`` creates a
Georg Brandl0cedb4b2009-12-20 14:20:16 +00001651new and unrelated instance named "count" in ``self``'s own dict. Rebinding of a
1652class-static data name must always specify the class whether inside a method or
1653not::
Georg Brandl6728c5a2009-10-11 18:31:23 +00001654
1655 C.count = 314
1656
1657Static methods are possible since Python 2.2::
1658
1659 class C:
1660 def static(arg1, arg2, arg3):
1661 # No 'self' parameter!
1662 ...
1663 static = staticmethod(static)
1664
1665With Python 2.4's decorators, this can also be written as ::
1666
1667 class C:
1668 @staticmethod
1669 def static(arg1, arg2, arg3):
1670 # No 'self' parameter!
1671 ...
1672
1673However, a far more straightforward way to get the effect of a static method is
1674via a simple module-level function::
1675
1676 def getcount():
1677 return C.count
1678
1679If your code is structured so as to define one class (or tightly related class
1680hierarchy) per module, this supplies the desired encapsulation.
1681
1682
1683How can I overload constructors (or methods) in Python?
1684-------------------------------------------------------
1685
1686This answer actually applies to all methods, but the question usually comes up
1687first in the context of constructors.
1688
1689In C++ you'd write
1690
1691.. code-block:: c
1692
1693 class C {
1694 C() { cout << "No arguments\n"; }
1695 C(int i) { cout << "Argument is " << i << "\n"; }
1696 }
1697
1698In Python you have to write a single constructor that catches all cases using
1699default arguments. For example::
1700
1701 class C:
1702 def __init__(self, i=None):
1703 if i is None:
1704 print "No arguments"
1705 else:
1706 print "Argument is", i
1707
1708This is not entirely equivalent, but close enough in practice.
1709
1710You could also try a variable-length argument list, e.g. ::
1711
1712 def __init__(self, *args):
1713 ...
1714
1715The same approach works for all method definitions.
1716
1717
1718I try to use __spam and I get an error about _SomeClassName__spam.
1719------------------------------------------------------------------
1720
1721Variable names with double leading underscores are "mangled" to provide a simple
1722but effective way to define class private variables. Any identifier of the form
1723``__spam`` (at least two leading underscores, at most one trailing underscore)
1724is textually replaced with ``_classname__spam``, where ``classname`` is the
1725current class name with any leading underscores stripped.
1726
1727This doesn't guarantee privacy: an outside user can still deliberately access
1728the "_classname__spam" attribute, and private values are visible in the object's
1729``__dict__``. Many Python programmers never bother to use private variable
1730names at all.
1731
1732
1733My class defines __del__ but it is not called when I delete the object.
1734-----------------------------------------------------------------------
1735
1736There are several possible reasons for this.
1737
1738The del statement does not necessarily call :meth:`__del__` -- it simply
1739decrements the object's reference count, and if this reaches zero
1740:meth:`__del__` is called.
1741
1742If your data structures contain circular links (e.g. a tree where each child has
1743a parent reference and each parent has a list of children) the reference counts
1744will never go back to zero. Once in a while Python runs an algorithm to detect
1745such cycles, but the garbage collector might run some time after the last
1746reference to your data structure vanishes, so your :meth:`__del__` method may be
1747called at an inconvenient and random time. This is inconvenient if you're trying
1748to reproduce a problem. Worse, the order in which object's :meth:`__del__`
1749methods are executed is arbitrary. You can run :func:`gc.collect` to force a
1750collection, but there *are* pathological cases where objects will never be
1751collected.
1752
1753Despite the cycle collector, it's still a good idea to define an explicit
1754``close()`` method on objects to be called whenever you're done with them. The
1755``close()`` method can then remove attributes that refer to subobjecs. Don't
1756call :meth:`__del__` directly -- :meth:`__del__` should call ``close()`` and
1757``close()`` should make sure that it can be called more than once for the same
1758object.
1759
1760Another way to avoid cyclical references is to use the :mod:`weakref` module,
1761which allows you to point to objects without incrementing their reference count.
1762Tree data structures, for instance, should use weak references for their parent
1763and sibling references (if they need them!).
1764
1765If the object has ever been a local variable in a function that caught an
1766expression in an except clause, chances are that a reference to the object still
1767exists in that function's stack frame as contained in the stack trace.
1768Normally, calling :func:`sys.exc_clear` will take care of this by clearing the
1769last recorded exception.
1770
1771Finally, if your :meth:`__del__` method raises an exception, a warning message
1772is printed to :data:`sys.stderr`.
1773
1774
1775How do I get a list of all instances of a given class?
1776------------------------------------------------------
1777
1778Python does not keep track of all instances of a class (or of a built-in type).
1779You can program the class's constructor to keep track of all instances by
1780keeping a list of weak references to each instance.
1781
1782
Georg Brandl0f79cac2013-10-12 18:14:25 +02001783Why does the result of ``id()`` appear to be not unique?
1784--------------------------------------------------------
1785
1786The :func:`id` builtin returns an integer that is guaranteed to be unique during
1787the lifetime of the object. Since in CPython, this is the object's memory
1788address, it happens frequently that after an object is deleted from memory, the
1789next freshly created object is allocated at the same position in memory. This
1790is illustrated by this example:
1791
1792>>> id(1000)
179313901272
1794>>> id(2000)
179513901272
1796
1797The two ids belong to different integer objects that are created before, and
1798deleted immediately after execution of the ``id()`` call. To be sure that
1799objects whose id you want to examine are still alive, create another reference
1800to the object:
1801
1802>>> a = 1000; b = 2000
1803>>> id(a)
180413901272
1805>>> id(b)
180613891296
1807
1808
Georg Brandl6728c5a2009-10-11 18:31:23 +00001809Modules
1810=======
1811
1812How do I create a .pyc file?
1813----------------------------
1814
1815When a module is imported for the first time (or when the source is more recent
1816than the current compiled file) a ``.pyc`` file containing the compiled code
1817should be created in the same directory as the ``.py`` file.
1818
1819One reason that a ``.pyc`` file may not be created is permissions problems with
1820the directory. This can happen, for example, if you develop as one user but run
1821as another, such as if you are testing with a web server. Creation of a .pyc
1822file is automatic if you're importing a module and Python has the ability
1823(permissions, free space, etc...) to write the compiled module back to the
1824directory.
1825
R David Murrayff229842013-06-19 17:00:43 -04001826Running Python on a top level script is not considered an import and no
1827``.pyc`` will be created. For example, if you have a top-level module
1828``foo.py`` that imports another module ``xyz.py``, when you run ``foo``,
1829``xyz.pyc`` will be created since ``xyz`` is imported, but no ``foo.pyc`` file
1830will be created since ``foo.py`` isn't being imported.
Georg Brandl6728c5a2009-10-11 18:31:23 +00001831
R David Murrayff229842013-06-19 17:00:43 -04001832If you need to create ``foo.pyc`` -- that is, to create a ``.pyc`` file for a module
Georg Brandl6728c5a2009-10-11 18:31:23 +00001833that is not imported -- you can, using the :mod:`py_compile` and
1834:mod:`compileall` modules.
1835
1836The :mod:`py_compile` module can manually compile any module. One way is to use
1837the ``compile()`` function in that module interactively::
1838
1839 >>> import py_compile
R David Murrayff229842013-06-19 17:00:43 -04001840 >>> py_compile.compile('foo.py') # doctest: +SKIP
Georg Brandl6728c5a2009-10-11 18:31:23 +00001841
R David Murrayff229842013-06-19 17:00:43 -04001842This will write the ``.pyc`` to the same location as ``foo.py`` (or you can
Georg Brandl6728c5a2009-10-11 18:31:23 +00001843override that with the optional parameter ``cfile``).
1844
1845You can also automatically compile all files in a directory or directories using
1846the :mod:`compileall` module. You can do it from the shell prompt by running
1847``compileall.py`` and providing the path of a directory containing Python files
1848to compile::
1849
1850 python -m compileall .
1851
1852
1853How do I find the current module name?
1854--------------------------------------
1855
1856A module can find out its own module name by looking at the predefined global
1857variable ``__name__``. If this has the value ``'__main__'``, the program is
1858running as a script. Many modules that are usually used by importing them also
1859provide a command-line interface or a self-test, and only execute this code
1860after checking ``__name__``::
1861
1862 def main():
1863 print 'Running test...'
1864 ...
1865
1866 if __name__ == '__main__':
1867 main()
1868
1869
1870How can I have modules that mutually import each other?
1871-------------------------------------------------------
1872
1873Suppose you have the following modules:
1874
1875foo.py::
1876
1877 from bar import bar_var
1878 foo_var = 1
1879
1880bar.py::
1881
1882 from foo import foo_var
1883 bar_var = 2
1884
1885The problem is that the interpreter will perform the following steps:
1886
1887* main imports foo
1888* Empty globals for foo are created
1889* foo is compiled and starts executing
1890* foo imports bar
1891* Empty globals for bar are created
1892* bar is compiled and starts executing
1893* bar imports foo (which is a no-op since there already is a module named foo)
1894* bar.foo_var = foo.foo_var
1895
1896The last step fails, because Python isn't done with interpreting ``foo`` yet and
1897the global symbol dictionary for ``foo`` is still empty.
1898
1899The same thing happens when you use ``import foo``, and then try to access
1900``foo.foo_var`` in global code.
1901
1902There are (at least) three possible workarounds for this problem.
1903
1904Guido van Rossum recommends avoiding all uses of ``from <module> import ...``,
1905and placing all code inside functions. Initializations of global variables and
1906class variables should use constants or built-in functions only. This means
1907everything from an imported module is referenced as ``<module>.<name>``.
1908
1909Jim Roskind suggests performing steps in the following order in each module:
1910
1911* exports (globals, functions, and classes that don't need imported base
1912 classes)
1913* ``import`` statements
1914* active code (including globals that are initialized from imported values).
1915
1916van Rossum doesn't like this approach much because the imports appear in a
1917strange place, but it does work.
1918
1919Matthias Urlichs recommends restructuring your code so that the recursive import
1920is not necessary in the first place.
1921
1922These solutions are not mutually exclusive.
1923
1924
1925__import__('x.y.z') returns <module 'x'>; how do I get z?
1926---------------------------------------------------------
1927
1928Try::
1929
1930 __import__('x.y.z').y.z
1931
1932For more realistic situations, you may have to do something like ::
1933
1934 m = __import__(s)
1935 for i in s.split(".")[1:]:
1936 m = getattr(m, i)
1937
1938See :mod:`importlib` for a convenience function called
1939:func:`~importlib.import_module`.
1940
1941
1942
1943When I edit an imported module and reimport it, the changes don't show up. Why does this happen?
1944-------------------------------------------------------------------------------------------------
1945
1946For reasons of efficiency as well as consistency, Python only reads the module
1947file on the first time a module is imported. If it didn't, in a program
1948consisting of many modules where each one imports the same basic module, the
1949basic module would be parsed and re-parsed many times. To force rereading of a
1950changed module, do this::
1951
1952 import modname
1953 reload(modname)
1954
1955Warning: this technique is not 100% fool-proof. In particular, modules
1956containing statements like ::
1957
1958 from modname import some_objects
1959
1960will continue to work with the old version of the imported objects. If the
1961module contains class definitions, existing class instances will *not* be
1962updated to use the new class definition. This can result in the following
1963paradoxical behaviour:
1964
1965 >>> import cls
1966 >>> c = cls.C() # Create an instance of C
1967 >>> reload(cls)
1968 <module 'cls' from 'cls.pyc'>
1969 >>> isinstance(c, cls.C) # isinstance is false?!?
1970 False
1971
1972The nature of the problem is made clear if you print out the class objects:
1973
1974 >>> c.__class__
1975 <class cls.C at 0x7352a0>
1976 >>> cls.C
1977 <class cls.C at 0x4198d0>
1978