1:tocdepth: 2 2 3=============== 4Programming FAQ 5=============== 6 7.. only:: html 8 9 .. contents:: 10 11General Questions 12================= 13 14Is there a source code level debugger with breakpoints, single-stepping, etc.? 15------------------------------------------------------------------------------ 16 17Yes. 18 19Several debuggers for Python are described below, and the built-in function 20:func:`breakpoint` allows you to drop into any of them. 21 22The pdb module is a simple but adequate console-mode debugger for Python. It is 23part of the standard Python library, and is :mod:`documented in the Library 24Reference Manual <pdb>`. You can also write your own debugger by using the code 25for pdb as an example. 26 27The IDLE interactive development environment, which is part of the standard 28Python distribution (normally available as Tools/scripts/idle), includes a 29graphical debugger. 30 31PythonWin is a Python IDE that includes a GUI debugger based on pdb. The 32Pythonwin debugger colors breakpoints and has quite a few cool features such as 33debugging non-Pythonwin programs. Pythonwin is available as part of the `Python 34for Windows Extensions <https://sourceforge.net/projects/pywin32/>`__ project and 35as a part of the ActivePython distribution (see 36https://www.activestate.com/activepython\ ). 37 38`Boa Constructor <http://boa-constructor.sourceforge.net/>`_ is an IDE and GUI 39builder that uses wxWidgets. It offers visual frame creation and manipulation, 40an object inspector, many views on the source like object browsers, inheritance 41hierarchies, doc string generated html documentation, an advanced debugger, 42integrated help, and Zope support. 43 44`Eric <http://eric-ide.python-projects.org/>`_ is an IDE built on PyQt 45and the Scintilla editing component. 46 47Pydb is a version of the standard Python debugger pdb, modified for use with DDD 48(Data Display Debugger), a popular graphical debugger front end. Pydb can be 49found at http://bashdb.sourceforge.net/pydb/ and DDD can be found at 50https://www.gnu.org/software/ddd. 51 52There are a number of commercial Python IDEs that include graphical debuggers. 53They include: 54 55* Wing IDE (https://wingware.com/) 56* Komodo IDE (https://komodoide.com/) 57* PyCharm (https://www.jetbrains.com/pycharm/) 58 59 60Is there a tool to help find bugs or perform static analysis? 61------------------------------------------------------------- 62 63Yes. 64 65PyChecker is a static analysis tool that finds bugs in Python source code and 66warns about code complexity and style. You can get PyChecker from 67http://pychecker.sourceforge.net/. 68 69`Pylint <https://www.pylint.org/>`_ is another tool that checks 70if a module satisfies a coding standard, and also makes it possible to write 71plug-ins to add a custom feature. In addition to the bug checking that 72PyChecker performs, Pylint offers some additional features such as checking line 73length, whether variable names are well-formed according to your coding 74standard, whether declared interfaces are fully implemented, and more. 75https://docs.pylint.org/ provides a full list of Pylint's features. 76 77Static type checkers such as `Mypy <http://mypy-lang.org/>`_, 78`Pyre <https://pyre-check.org/>`_, and 79`Pytype <https://github.com/google/pytype>`_ can check type hints in Python 80source code. 81 82 83How can I create a stand-alone binary from a Python script? 84----------------------------------------------------------- 85 86You don't need the ability to compile Python to C code if all you want is a 87stand-alone program that users can download and run without having to install 88the Python distribution first. There are a number of tools that determine the 89set of modules required by a program and bind these modules together with a 90Python binary to produce a single executable. 91 92One is to use the freeze tool, which is included in the Python source tree as 93``Tools/freeze``. It converts Python byte code to C arrays; a C compiler you can 94embed all your modules into a new program, which is then linked with the 95standard Python modules. 96 97It works by scanning your source recursively for import statements (in both 98forms) and looking for the modules in the standard Python path as well as in the 99source directory (for built-in modules). It then turns the bytecode for modules 100written in Python into C code (array initializers that can be turned into code 101objects using the marshal module) and creates a custom-made config file that 102only contains those built-in modules which are actually used in the program. It 103then compiles the generated C code and links it with the rest of the Python 104interpreter to form a self-contained binary which acts exactly like your script. 105 106Obviously, freeze requires a C compiler. There are several other utilities 107which don't. One is Thomas Heller's py2exe (Windows only) at 108 109 http://www.py2exe.org/ 110 111Another tool is Anthony Tuininga's `cx_Freeze <https://anthony-tuininga.github.io/cx_Freeze/>`_. 112 113 114Are there coding standards or a style guide for Python programs? 115---------------------------------------------------------------- 116 117Yes. The coding style required for standard library modules is documented as 118:pep:`8`. 119 120 121Core Language 122============= 123 124Why am I getting an UnboundLocalError when the variable has a value? 125-------------------------------------------------------------------- 126 127It can be a surprise to get the UnboundLocalError in previously working 128code when it is modified by adding an assignment statement somewhere in 129the body of a function. 130 131This code: 132 133 >>> x = 10 134 >>> def bar(): 135 ... print(x) 136 >>> bar() 137 10 138 139works, but this code: 140 141 >>> x = 10 142 >>> def foo(): 143 ... print(x) 144 ... x += 1 145 146results in an UnboundLocalError: 147 148 >>> foo() 149 Traceback (most recent call last): 150 ... 151 UnboundLocalError: local variable 'x' referenced before assignment 152 153This is because when you make an assignment to a variable in a scope, that 154variable becomes local to that scope and shadows any similarly named variable 155in the outer scope. Since the last statement in foo assigns a new value to 156``x``, the compiler recognizes it as a local variable. Consequently when the 157earlier ``print(x)`` attempts to print the uninitialized local variable and 158an error results. 159 160In the example above you can access the outer scope variable by declaring it 161global: 162 163 >>> x = 10 164 >>> def foobar(): 165 ... global x 166 ... print(x) 167 ... x += 1 168 >>> foobar() 169 10 170 171This explicit declaration is required in order to remind you that (unlike the 172superficially analogous situation with class and instance variables) you are 173actually modifying the value of the variable in the outer scope: 174 175 >>> print(x) 176 11 177 178You can do a similar thing in a nested scope using the :keyword:`nonlocal` 179keyword: 180 181 >>> def foo(): 182 ... x = 10 183 ... def bar(): 184 ... nonlocal x 185 ... print(x) 186 ... x += 1 187 ... bar() 188 ... print(x) 189 >>> foo() 190 10 191 11 192 193 194What are the rules for local and global variables in Python? 195------------------------------------------------------------ 196 197In Python, variables that are only referenced inside a function are implicitly 198global. If a variable is assigned a value anywhere within the function's body, 199it's assumed to be a local unless explicitly declared as global. 200 201Though a bit surprising at first, a moment's consideration explains this. On 202one hand, requiring :keyword:`global` for assigned variables provides a bar 203against unintended side-effects. On the other hand, if ``global`` was required 204for all global references, you'd be using ``global`` all the time. You'd have 205to declare as global every reference to a built-in function or to a component of 206an imported module. This clutter would defeat the usefulness of the ``global`` 207declaration for identifying side-effects. 208 209 210Why do lambdas defined in a loop with different values all return the same result? 211---------------------------------------------------------------------------------- 212 213Assume you use a for loop to define a few different lambdas (or even plain 214functions), e.g.:: 215 216 >>> squares = [] 217 >>> for x in range(5): 218 ... squares.append(lambda: x**2) 219 220This gives you a list that contains 5 lambdas that calculate ``x**2``. You 221might expect that, when called, they would return, respectively, ``0``, ``1``, 222``4``, ``9``, and ``16``. However, when you actually try you will see that 223they all return ``16``:: 224 225 >>> squares[2]() 226 16 227 >>> squares[4]() 228 16 229 230This happens because ``x`` is not local to the lambdas, but is defined in 231the outer scope, and it is accessed when the lambda is called --- not when it 232is defined. At the end of the loop, the value of ``x`` is ``4``, so all the 233functions now return ``4**2``, i.e. ``16``. You can also verify this by 234changing the value of ``x`` and see how the results of the lambdas change:: 235 236 >>> x = 8 237 >>> squares[2]() 238 64 239 240In order to avoid this, you need to save the values in variables local to the 241lambdas, so that they don't rely on the value of the global ``x``:: 242 243 >>> squares = [] 244 >>> for x in range(5): 245 ... squares.append(lambda n=x: n**2) 246 247Here, ``n=x`` creates a new variable ``n`` local to the lambda and computed 248when the lambda is defined so that it has the same value that ``x`` had at 249that point in the loop. This means that the value of ``n`` will be ``0`` 250in the first lambda, ``1`` in the second, ``2`` in the third, and so on. 251Therefore each lambda will now return the correct result:: 252 253 >>> squares[2]() 254 4 255 >>> squares[4]() 256 16 257 258Note that this behaviour is not peculiar to lambdas, but applies to regular 259functions too. 260 261 262How do I share global variables across modules? 263------------------------------------------------ 264 265The canonical way to share information across modules within a single program is 266to create a special module (often called config or cfg). Just import the config 267module in all modules of your application; the module then becomes available as 268a global name. Because there is only one instance of each module, any changes 269made to the module object get reflected everywhere. For example: 270 271config.py:: 272 273 x = 0 # Default value of the 'x' configuration setting 274 275mod.py:: 276 277 import config 278 config.x = 1 279 280main.py:: 281 282 import config 283 import mod 284 print(config.x) 285 286Note that using a module is also the basis for implementing the Singleton design 287pattern, for the same reason. 288 289 290What are the "best practices" for using import in a module? 291----------------------------------------------------------- 292 293In general, don't use ``from modulename import *``. Doing so clutters the 294importer's namespace, and makes it much harder for linters to detect undefined 295names. 296 297Import modules at the top of a file. Doing so makes it clear what other modules 298your code requires and avoids questions of whether the module name is in scope. 299Using one import per line makes it easy to add and delete module imports, but 300using multiple imports per line uses less screen space. 301 302It's good practice if you import modules in the following order: 303 3041. standard library modules -- e.g. ``sys``, ``os``, ``getopt``, ``re`` 3052. third-party library modules (anything installed in Python's site-packages 306 directory) -- e.g. mx.DateTime, ZODB, PIL.Image, etc. 3073. locally-developed modules 308 309It is sometimes necessary to move imports to a function or class to avoid 310problems with circular imports. Gordon McMillan says: 311 312 Circular imports are fine where both modules use the "import <module>" form 313 of import. They fail when the 2nd module wants to grab a name out of the 314 first ("from module import name") and the import is at the top level. That's 315 because names in the 1st are not yet available, because the first module is 316 busy importing the 2nd. 317 318In this case, if the second module is only used in one function, then the import 319can easily be moved into that function. By the time the import is called, the 320first module will have finished initializing, and the second module can do its 321import. 322 323It may also be necessary to move imports out of the top level of code if some of 324the modules are platform-specific. In that case, it may not even be possible to 325import all of the modules at the top of the file. In this case, importing the 326correct modules in the corresponding platform-specific code is a good option. 327 328Only move imports into a local scope, such as inside a function definition, if 329it's necessary to solve a problem such as avoiding a circular import or are 330trying to reduce the initialization time of a module. This technique is 331especially helpful if many of the imports are unnecessary depending on how the 332program executes. You may also want to move imports into a function if the 333modules are only ever used in that function. Note that loading a module the 334first time may be expensive because of the one time initialization of the 335module, but loading a module multiple times is virtually free, costing only a 336couple of dictionary lookups. Even if the module name has gone out of scope, 337the module is probably available in :data:`sys.modules`. 338 339 340Why are default values shared between objects? 341---------------------------------------------- 342 343This type of bug commonly bites neophyte programmers. Consider this function:: 344 345 def foo(mydict={}): # Danger: shared reference to one dict for all calls 346 ... compute something ... 347 mydict[key] = value 348 return mydict 349 350The first time you call this function, ``mydict`` contains a single item. The 351second time, ``mydict`` contains two items because when ``foo()`` begins 352executing, ``mydict`` starts out with an item already in it. 353 354It is often expected that a function call creates new objects for default 355values. This is not what happens. Default values are created exactly once, when 356the function is defined. If that object is changed, like the dictionary in this 357example, subsequent calls to the function will refer to this changed object. 358 359By definition, immutable objects such as numbers, strings, tuples, and ``None``, 360are safe from change. Changes to mutable objects such as dictionaries, lists, 361and class instances can lead to confusion. 362 363Because of this feature, it is good programming practice to not use mutable 364objects as default values. Instead, use ``None`` as the default value and 365inside the function, check if the parameter is ``None`` and create a new 366list/dictionary/whatever if it is. For example, don't write:: 367 368 def foo(mydict={}): 369 ... 370 371but:: 372 373 def foo(mydict=None): 374 if mydict is None: 375 mydict = {} # create a new dict for local namespace 376 377This feature can be useful. When you have a function that's time-consuming to 378compute, a common technique is to cache the parameters and the resulting value 379of each call to the function, and return the cached value if the same value is 380requested again. This is called "memoizing", and can be implemented like this:: 381 382 # Callers can only provide two parameters and optionally pass _cache by keyword 383 def expensive(arg1, arg2, *, _cache={}): 384 if (arg1, arg2) in _cache: 385 return _cache[(arg1, arg2)] 386 387 # Calculate the value 388 result = ... expensive computation ... 389 _cache[(arg1, arg2)] = result # Store result in the cache 390 return result 391 392You could use a global variable containing a dictionary instead of the default 393value; it's a matter of taste. 394 395 396How can I pass optional or keyword parameters from one function to another? 397--------------------------------------------------------------------------- 398 399Collect the arguments using the ``*`` and ``**`` specifiers in the function's 400parameter list; this gives you the positional arguments as a tuple and the 401keyword arguments as a dictionary. You can then pass these arguments when 402calling another function by using ``*`` and ``**``:: 403 404 def f(x, *args, **kwargs): 405 ... 406 kwargs['width'] = '14.3c' 407 ... 408 g(x, *args, **kwargs) 409 410 411.. index:: 412 single: argument; difference from parameter 413 single: parameter; difference from argument 414 415.. _faq-argument-vs-parameter: 416 417What is the difference between arguments and parameters? 418-------------------------------------------------------- 419 420:term:`Parameters <parameter>` are defined by the names that appear in a 421function definition, whereas :term:`arguments <argument>` are the values 422actually passed to a function when calling it. Parameters define what types of 423arguments a function can accept. For example, given the function definition:: 424 425 def func(foo, bar=None, **kwargs): 426 pass 427 428*foo*, *bar* and *kwargs* are parameters of ``func``. However, when calling 429``func``, for example:: 430 431 func(42, bar=314, extra=somevar) 432 433the values ``42``, ``314``, and ``somevar`` are arguments. 434 435 436Why did changing list 'y' also change list 'x'? 437------------------------------------------------ 438 439If you wrote code like:: 440 441 >>> x = [] 442 >>> y = x 443 >>> y.append(10) 444 >>> y 445 [10] 446 >>> x 447 [10] 448 449you might be wondering why appending an element to ``y`` changed ``x`` too. 450 451There are two factors that produce this result: 452 4531) Variables are simply names that refer to objects. Doing ``y = x`` doesn't 454 create a copy of the list -- it creates a new variable ``y`` that refers to 455 the same object ``x`` refers to. This means that there is only one object 456 (the list), and both ``x`` and ``y`` refer to it. 4572) Lists are :term:`mutable`, which means that you can change their content. 458 459After the call to :meth:`~list.append`, the content of the mutable object has 460changed from ``[]`` to ``[10]``. Since both the variables refer to the same 461object, using either name accesses the modified value ``[10]``. 462 463If we instead assign an immutable object to ``x``:: 464 465 >>> x = 5 # ints are immutable 466 >>> y = x 467 >>> x = x + 1 # 5 can't be mutated, we are creating a new object here 468 >>> x 469 6 470 >>> y 471 5 472 473we can see that in this case ``x`` and ``y`` are not equal anymore. This is 474because integers are :term:`immutable`, and when we do ``x = x + 1`` we are not 475mutating the int ``5`` by incrementing its value; instead, we are creating a 476new object (the int ``6``) and assigning it to ``x`` (that is, changing which 477object ``x`` refers to). After this assignment we have two objects (the ints 478``6`` and ``5``) and two variables that refer to them (``x`` now refers to 479``6`` but ``y`` still refers to ``5``). 480 481Some operations (for example ``y.append(10)`` and ``y.sort()``) mutate the 482object, whereas superficially similar operations (for example ``y = y + [10]`` 483and ``sorted(y)``) create a new object. In general in Python (and in all cases 484in the standard library) a method that mutates an object will return ``None`` 485to help avoid getting the two types of operations confused. So if you 486mistakenly write ``y.sort()`` thinking it will give you a sorted copy of ``y``, 487you'll instead end up with ``None``, which will likely cause your program to 488generate an easily diagnosed error. 489 490However, there is one class of operations where the same operation sometimes 491has different behaviors with different types: the augmented assignment 492operators. For example, ``+=`` mutates lists but not tuples or ints (``a_list 493+= [1, 2, 3]`` is equivalent to ``a_list.extend([1, 2, 3])`` and mutates 494``a_list``, whereas ``some_tuple += (1, 2, 3)`` and ``some_int += 1`` create 495new objects). 496 497In other words: 498 499* If we have a mutable object (:class:`list`, :class:`dict`, :class:`set`, 500 etc.), we can use some specific operations to mutate it and all the variables 501 that refer to it will see the change. 502* If we have an immutable object (:class:`str`, :class:`int`, :class:`tuple`, 503 etc.), all the variables that refer to it will always see the same value, 504 but operations that transform that value into a new value always return a new 505 object. 506 507If you want to know if two variables refer to the same object or not, you can 508use the :keyword:`is` operator, or the built-in function :func:`id`. 509 510 511How do I write a function with output parameters (call by reference)? 512--------------------------------------------------------------------- 513 514Remember that arguments are passed by assignment in Python. Since assignment 515just creates references to objects, there's no alias between an argument name in 516the caller and callee, and so no call-by-reference per se. You can achieve the 517desired effect in a number of ways. 518 5191) By returning a tuple of the results:: 520 521 def func2(a, b): 522 a = 'new-value' # a and b are local names 523 b = b + 1 # assigned to new objects 524 return a, b # return new values 525 526 x, y = 'old-value', 99 527 x, y = func2(x, y) 528 print(x, y) # output: new-value 100 529 530 This is almost always the clearest solution. 531 5322) By using global variables. This isn't thread-safe, and is not recommended. 533 5343) By passing a mutable (changeable in-place) object:: 535 536 def func1(a): 537 a[0] = 'new-value' # 'a' references a mutable list 538 a[1] = a[1] + 1 # changes a shared object 539 540 args = ['old-value', 99] 541 func1(args) 542 print(args[0], args[1]) # output: new-value 100 543 5444) By passing in a dictionary that gets mutated:: 545 546 def func3(args): 547 args['a'] = 'new-value' # args is a mutable dictionary 548 args['b'] = args['b'] + 1 # change it in-place 549 550 args = {'a': 'old-value', 'b': 99} 551 func3(args) 552 print(args['a'], args['b']) 553 5545) Or bundle up values in a class instance:: 555 556 class callByRef: 557 def __init__(self, /, **args): 558 for key, value in args.items(): 559 setattr(self, key, value) 560 561 def func4(args): 562 args.a = 'new-value' # args is a mutable callByRef 563 args.b = args.b + 1 # change object in-place 564 565 args = callByRef(a='old-value', b=99) 566 func4(args) 567 print(args.a, args.b) 568 569 570 There's almost never a good reason to get this complicated. 571 572Your best choice is to return a tuple containing the multiple results. 573 574 575How do you make a higher order function in Python? 576-------------------------------------------------- 577 578You have two choices: you can use nested scopes or you can use callable objects. 579For example, suppose you wanted to define ``linear(a,b)`` which returns a 580function ``f(x)`` that computes the value ``a*x+b``. Using nested scopes:: 581 582 def linear(a, b): 583 def result(x): 584 return a * x + b 585 return result 586 587Or using a callable object:: 588 589 class linear: 590 591 def __init__(self, a, b): 592 self.a, self.b = a, b 593 594 def __call__(self, x): 595 return self.a * x + self.b 596 597In both cases, :: 598 599 taxes = linear(0.3, 2) 600 601gives a callable object where ``taxes(10e6) == 0.3 * 10e6 + 2``. 602 603The callable object approach has the disadvantage that it is a bit slower and 604results in slightly longer code. However, note that a collection of callables 605can share their signature via inheritance:: 606 607 class exponential(linear): 608 # __init__ inherited 609 def __call__(self, x): 610 return self.a * (x ** self.b) 611 612Object can encapsulate state for several methods:: 613 614 class counter: 615 616 value = 0 617 618 def set(self, x): 619 self.value = x 620 621 def up(self): 622 self.value = self.value + 1 623 624 def down(self): 625 self.value = self.value - 1 626 627 count = counter() 628 inc, dec, reset = count.up, count.down, count.set 629 630Here ``inc()``, ``dec()`` and ``reset()`` act like functions which share the 631same counting variable. 632 633 634How do I copy an object in Python? 635---------------------------------- 636 637In general, try :func:`copy.copy` or :func:`copy.deepcopy` for the general case. 638Not all objects can be copied, but most can. 639 640Some objects can be copied more easily. Dictionaries have a :meth:`~dict.copy` 641method:: 642 643 newdict = olddict.copy() 644 645Sequences can be copied by slicing:: 646 647 new_l = l[:] 648 649 650How can I find the methods or attributes of an object? 651------------------------------------------------------ 652 653For an instance x of a user-defined class, ``dir(x)`` returns an alphabetized 654list of the names containing the instance attributes and methods and attributes 655defined by its class. 656 657 658How can my code discover the name of an object? 659----------------------------------------------- 660 661Generally speaking, it can't, because objects don't really have names. 662Essentially, assignment always binds a name to a value; the same is true of 663``def`` and ``class`` statements, but in that case the value is a 664callable. Consider the following code:: 665 666 >>> class A: 667 ... pass 668 ... 669 >>> B = A 670 >>> a = B() 671 >>> b = a 672 >>> print(b) 673 <__main__.A object at 0x16D07CC> 674 >>> print(a) 675 <__main__.A object at 0x16D07CC> 676 677Arguably the class has a name: even though it is bound to two names and invoked 678through the name B the created instance is still reported as an instance of 679class A. However, it is impossible to say whether the instance's name is a or 680b, since both names are bound to the same value. 681 682Generally speaking it should not be necessary for your code to "know the names" 683of particular values. Unless you are deliberately writing introspective 684programs, this is usually an indication that a change of approach might be 685beneficial. 686 687In comp.lang.python, Fredrik Lundh once gave an excellent analogy in answer to 688this question: 689 690 The same way as you get the name of that cat you found on your porch: the cat 691 (object) itself cannot tell you its name, and it doesn't really care -- so 692 the only way to find out what it's called is to ask all your neighbours 693 (namespaces) if it's their cat (object)... 694 695 ....and don't be surprised if you'll find that it's known by many names, or 696 no name at all! 697 698 699What's up with the comma operator's precedence? 700----------------------------------------------- 701 702Comma is not an operator in Python. Consider this session:: 703 704 >>> "a" in "b", "a" 705 (False, 'a') 706 707Since the comma is not an operator, but a separator between expressions the 708above is evaluated as if you had entered:: 709 710 ("a" in "b"), "a" 711 712not:: 713 714 "a" in ("b", "a") 715 716The same is true of the various assignment operators (``=``, ``+=`` etc). They 717are not truly operators but syntactic delimiters in assignment statements. 718 719 720Is there an equivalent of C's "?:" ternary operator? 721---------------------------------------------------- 722 723Yes, there is. The syntax is as follows:: 724 725 [on_true] if [expression] else [on_false] 726 727 x, y = 50, 25 728 small = x if x < y else y 729 730Before this syntax was introduced in Python 2.5, a common idiom was to use 731logical operators:: 732 733 [expression] and [on_true] or [on_false] 734 735However, this idiom is unsafe, as it can give wrong results when *on_true* 736has a false boolean value. Therefore, it is always better to use 737the ``... if ... else ...`` form. 738 739 740Is it possible to write obfuscated one-liners in Python? 741-------------------------------------------------------- 742 743Yes. Usually this is done by nesting :keyword:`lambda` within 744:keyword:`!lambda`. See the following three examples, due to Ulf Bartelt:: 745 746 from functools import reduce 747 748 # Primes < 1000 749 print(list(filter(None,map(lambda y:y*reduce(lambda x,y:x*y!=0, 750 map(lambda x,y=y:y%x,range(2,int(pow(y,0.5)+1))),1),range(2,1000))))) 751 752 # First 10 Fibonacci numbers 753 print(list(map(lambda x,f=lambda x,f:(f(x-1,f)+f(x-2,f)) if x>1 else 1: 754 f(x,f), range(10)))) 755 756 # Mandelbrot set 757 print((lambda Ru,Ro,Iu,Io,IM,Sx,Sy:reduce(lambda x,y:x+y,map(lambda y, 758 Iu=Iu,Io=Io,Ru=Ru,Ro=Ro,Sy=Sy,L=lambda yc,Iu=Iu,Io=Io,Ru=Ru,Ro=Ro,i=IM, 759 Sx=Sx,Sy=Sy:reduce(lambda x,y:x+y,map(lambda x,xc=Ru,yc=yc,Ru=Ru,Ro=Ro, 760 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 761 >=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( 762 64+F(Ru+x*(Ro-Ru)/Sx,yc,0,0,i)),range(Sx))):L(Iu+y*(Io-Iu)/Sy),range(Sy 763 ))))(-2.1, 0.7, -1.2, 1.2, 30, 80, 24)) 764 # \___ ___/ \___ ___/ | | |__ lines on screen 765 # V V | |______ columns on screen 766 # | | |__________ maximum of "iterations" 767 # | |_________________ range on y axis 768 # |____________________________ range on x axis 769 770Don't try this at home, kids! 771 772 773.. _faq-positional-only-arguments: 774 775What does the slash(/) in the parameter list of a function mean? 776---------------------------------------------------------------- 777 778A slash in the argument list of a function denotes that the parameters prior to 779it are positional-only. Positional-only parameters are the ones without an 780externally-usable name. Upon calling a function that accepts positional-only 781parameters, arguments are mapped to parameters based solely on their position. 782For example, :func:`divmod` is a function that accepts positional-only 783parameters. Its documentation looks like this:: 784 785 >>> help(divmod) 786 Help on built-in function divmod in module builtins: 787 788 divmod(x, y, /) 789 Return the tuple (x//y, x%y). Invariant: div*y + mod == x. 790 791The slash at the end of the parameter list means that both parameters are 792positional-only. Thus, calling :func:`divmod` with keyword arguments would lead 793to an error:: 794 795 >>> divmod(x=3, y=4) 796 Traceback (most recent call last): 797 File "<stdin>", line 1, in <module> 798 TypeError: divmod() takes no keyword arguments 799 800 801Numbers and strings 802=================== 803 804How do I specify hexadecimal and octal integers? 805------------------------------------------------ 806 807To specify an octal digit, precede the octal value with a zero, and then a lower 808or uppercase "o". For example, to set the variable "a" to the octal value "10" 809(8 in decimal), type:: 810 811 >>> a = 0o10 812 >>> a 813 8 814 815Hexadecimal is just as easy. Simply precede the hexadecimal number with a zero, 816and then a lower or uppercase "x". Hexadecimal digits can be specified in lower 817or uppercase. For example, in the Python interpreter:: 818 819 >>> a = 0xa5 820 >>> a 821 165 822 >>> b = 0XB2 823 >>> b 824 178 825 826 827Why does -22 // 10 return -3? 828----------------------------- 829 830It's primarily driven by the desire that ``i % j`` have the same sign as ``j``. 831If you want that, and also want:: 832 833 i == (i // j) * j + (i % j) 834 835then integer division has to return the floor. C also requires that identity to 836hold, and then compilers that truncate ``i // j`` need to make ``i % j`` have 837the same sign as ``i``. 838 839There are few real use cases for ``i % j`` when ``j`` is negative. When ``j`` 840is positive, there are many, and in virtually all of them it's more useful for 841``i % j`` to be ``>= 0``. If the clock says 10 now, what did it say 200 hours 842ago? ``-190 % 12 == 2`` is useful; ``-190 % 12 == -10`` is a bug waiting to 843bite. 844 845 846How do I convert a string to a number? 847-------------------------------------- 848 849For integers, use the built-in :func:`int` type constructor, e.g. ``int('144') 850== 144``. Similarly, :func:`float` converts to floating-point, 851e.g. ``float('144') == 144.0``. 852 853By default, these interpret the number as decimal, so that ``int('0144') == 854144`` and ``int('0x144')`` raises :exc:`ValueError`. ``int(string, base)`` takes 855the base to convert from as a second optional argument, so ``int('0x144', 16) == 856324``. If the base is specified as 0, the number is interpreted using Python's 857rules: a leading '0o' indicates octal, and '0x' indicates a hex number. 858 859Do not use the built-in function :func:`eval` if all you need is to convert 860strings to numbers. :func:`eval` will be significantly slower and it presents a 861security risk: someone could pass you a Python expression that might have 862unwanted side effects. For example, someone could pass 863``__import__('os').system("rm -rf $HOME")`` which would erase your home 864directory. 865 866:func:`eval` also has the effect of interpreting numbers as Python expressions, 867so that e.g. ``eval('09')`` gives a syntax error because Python does not allow 868leading '0' in a decimal number (except '0'). 869 870 871How do I convert a number to a string? 872-------------------------------------- 873 874To convert, e.g., the number 144 to the string '144', use the built-in type 875constructor :func:`str`. If you want a hexadecimal or octal representation, use 876the built-in functions :func:`hex` or :func:`oct`. For fancy formatting, see 877the :ref:`f-strings` and :ref:`formatstrings` sections, 878e.g. ``"{:04d}".format(144)`` yields 879``'0144'`` and ``"{:.3f}".format(1.0/3.0)`` yields ``'0.333'``. 880 881 882How do I modify a string in place? 883---------------------------------- 884 885You can't, because strings are immutable. In most situations, you should 886simply construct a new string from the various parts you want to assemble 887it from. However, if you need an object with the ability to modify in-place 888unicode data, try using an :class:`io.StringIO` object or the :mod:`array` 889module:: 890 891 >>> import io 892 >>> s = "Hello, world" 893 >>> sio = io.StringIO(s) 894 >>> sio.getvalue() 895 'Hello, world' 896 >>> sio.seek(7) 897 7 898 >>> sio.write("there!") 899 6 900 >>> sio.getvalue() 901 'Hello, there!' 902 903 >>> import array 904 >>> a = array.array('u', s) 905 >>> print(a) 906 array('u', 'Hello, world') 907 >>> a[0] = 'y' 908 >>> print(a) 909 array('u', 'yello, world') 910 >>> a.tounicode() 911 'yello, world' 912 913 914How do I use strings to call functions/methods? 915----------------------------------------------- 916 917There are various techniques. 918 919* The best is to use a dictionary that maps strings to functions. The primary 920 advantage of this technique is that the strings do not need to match the names 921 of the functions. This is also the primary technique used to emulate a case 922 construct:: 923 924 def a(): 925 pass 926 927 def b(): 928 pass 929 930 dispatch = {'go': a, 'stop': b} # Note lack of parens for funcs 931 932 dispatch[get_input()]() # Note trailing parens to call function 933 934* Use the built-in function :func:`getattr`:: 935 936 import foo 937 getattr(foo, 'bar')() 938 939 Note that :func:`getattr` works on any object, including classes, class 940 instances, modules, and so on. 941 942 This is used in several places in the standard library, like this:: 943 944 class Foo: 945 def do_foo(self): 946 ... 947 948 def do_bar(self): 949 ... 950 951 f = getattr(foo_instance, 'do_' + opname) 952 f() 953 954 955* Use :func:`locals` or :func:`eval` to resolve the function name:: 956 957 def myFunc(): 958 print("hello") 959 960 fname = "myFunc" 961 962 f = locals()[fname] 963 f() 964 965 f = eval(fname) 966 f() 967 968 Note: Using :func:`eval` is slow and dangerous. If you don't have absolute 969 control over the contents of the string, someone could pass a string that 970 resulted in an arbitrary function being executed. 971 972Is there an equivalent to Perl's chomp() for removing trailing newlines from strings? 973------------------------------------------------------------------------------------- 974 975You can use ``S.rstrip("\r\n")`` to remove all occurrences of any line 976terminator from the end of the string ``S`` without removing other trailing 977whitespace. If the string ``S`` represents more than one line, with several 978empty lines at the end, the line terminators for all the blank lines will 979be removed:: 980 981 >>> lines = ("line 1 \r\n" 982 ... "\r\n" 983 ... "\r\n") 984 >>> lines.rstrip("\n\r") 985 'line 1 ' 986 987Since this is typically only desired when reading text one line at a time, using 988``S.rstrip()`` this way works well. 989 990 991Is there a scanf() or sscanf() equivalent? 992------------------------------------------ 993 994Not as such. 995 996For simple input parsing, the easiest approach is usually to split the line into 997whitespace-delimited words using the :meth:`~str.split` method of string objects 998and then convert decimal strings to numeric values using :func:`int` or 999:func:`float`. ``split()`` supports an optional "sep" parameter which is useful 1000if the line uses something other than whitespace as a separator. 1001 1002For more complicated input parsing, regular expressions are more powerful 1003than C's :c:func:`sscanf` and better suited for the task. 1004 1005 1006What does 'UnicodeDecodeError' or 'UnicodeEncodeError' error mean? 1007------------------------------------------------------------------- 1008 1009See the :ref:`unicode-howto`. 1010 1011 1012Performance 1013=========== 1014 1015My program is too slow. How do I speed it up? 1016--------------------------------------------- 1017 1018That's a tough one, in general. First, here are a list of things to 1019remember before diving further: 1020 1021* Performance characteristics vary across Python implementations. This FAQ 1022 focusses on :term:`CPython`. 1023* Behaviour can vary across operating systems, especially when talking about 1024 I/O or multi-threading. 1025* You should always find the hot spots in your program *before* attempting to 1026 optimize any code (see the :mod:`profile` module). 1027* Writing benchmark scripts will allow you to iterate quickly when searching 1028 for improvements (see the :mod:`timeit` module). 1029* It is highly recommended to have good code coverage (through unit testing 1030 or any other technique) before potentially introducing regressions hidden 1031 in sophisticated optimizations. 1032 1033That being said, there are many tricks to speed up Python code. Here are 1034some general principles which go a long way towards reaching acceptable 1035performance levels: 1036 1037* Making your algorithms faster (or changing to faster ones) can yield 1038 much larger benefits than trying to sprinkle micro-optimization tricks 1039 all over your code. 1040 1041* Use the right data structures. Study documentation for the :ref:`bltin-types` 1042 and the :mod:`collections` module. 1043 1044* When the standard library provides a primitive for doing something, it is 1045 likely (although not guaranteed) to be faster than any alternative you 1046 may come up with. This is doubly true for primitives written in C, such 1047 as builtins and some extension types. For example, be sure to use 1048 either the :meth:`list.sort` built-in method or the related :func:`sorted` 1049 function to do sorting (and see the :ref:`sortinghowto` for examples 1050 of moderately advanced usage). 1051 1052* Abstractions tend to create indirections and force the interpreter to work 1053 more. If the levels of indirection outweigh the amount of useful work 1054 done, your program will be slower. You should avoid excessive abstraction, 1055 especially under the form of tiny functions or methods (which are also often 1056 detrimental to readability). 1057 1058If you have reached the limit of what pure Python can allow, there are tools 1059to take you further away. For example, `Cython <http://cython.org>`_ can 1060compile a slightly modified version of Python code into a C extension, and 1061can be used on many different platforms. Cython can take advantage of 1062compilation (and optional type annotations) to make your code significantly 1063faster than when interpreted. If you are confident in your C programming 1064skills, you can also :ref:`write a C extension module <extending-index>` 1065yourself. 1066 1067.. seealso:: 1068 The wiki page devoted to `performance tips 1069 <https://wiki.python.org/moin/PythonSpeed/PerformanceTips>`_. 1070 1071.. _efficient_string_concatenation: 1072 1073What is the most efficient way to concatenate many strings together? 1074-------------------------------------------------------------------- 1075 1076:class:`str` and :class:`bytes` objects are immutable, therefore concatenating 1077many strings together is inefficient as each concatenation creates a new 1078object. In the general case, the total runtime cost is quadratic in the 1079total string length. 1080 1081To accumulate many :class:`str` objects, the recommended idiom is to place 1082them into a list and call :meth:`str.join` at the end:: 1083 1084 chunks = [] 1085 for s in my_strings: 1086 chunks.append(s) 1087 result = ''.join(chunks) 1088 1089(another reasonably efficient idiom is to use :class:`io.StringIO`) 1090 1091To accumulate many :class:`bytes` objects, the recommended idiom is to extend 1092a :class:`bytearray` object using in-place concatenation (the ``+=`` operator):: 1093 1094 result = bytearray() 1095 for b in my_bytes_objects: 1096 result += b 1097 1098 1099Sequences (Tuples/Lists) 1100======================== 1101 1102How do I convert between tuples and lists? 1103------------------------------------------ 1104 1105The type constructor ``tuple(seq)`` converts any sequence (actually, any 1106iterable) into a tuple with the same items in the same order. 1107 1108For example, ``tuple([1, 2, 3])`` yields ``(1, 2, 3)`` and ``tuple('abc')`` 1109yields ``('a', 'b', 'c')``. If the argument is a tuple, it does not make a copy 1110but returns the same object, so it is cheap to call :func:`tuple` when you 1111aren't sure that an object is already a tuple. 1112 1113The type constructor ``list(seq)`` converts any sequence or iterable into a list 1114with the same items in the same order. For example, ``list((1, 2, 3))`` yields 1115``[1, 2, 3]`` and ``list('abc')`` yields ``['a', 'b', 'c']``. If the argument 1116is a list, it makes a copy just like ``seq[:]`` would. 1117 1118 1119What's a negative index? 1120------------------------ 1121 1122Python sequences are indexed with positive numbers and negative numbers. For 1123positive numbers 0 is the first index 1 is the second index and so forth. For 1124negative indices -1 is the last index and -2 is the penultimate (next to last) 1125index and so forth. Think of ``seq[-n]`` as the same as ``seq[len(seq)-n]``. 1126 1127Using negative indices can be very convenient. For example ``S[:-1]`` is all of 1128the string except for its last character, which is useful for removing the 1129trailing newline from a string. 1130 1131 1132How do I iterate over a sequence in reverse order? 1133-------------------------------------------------- 1134 1135Use the :func:`reversed` built-in function, which is new in Python 2.4:: 1136 1137 for x in reversed(sequence): 1138 ... # do something with x ... 1139 1140This won't touch your original sequence, but build a new copy with reversed 1141order to iterate over. 1142 1143With Python 2.3, you can use an extended slice syntax:: 1144 1145 for x in sequence[::-1]: 1146 ... # do something with x ... 1147 1148 1149How do you remove duplicates from a list? 1150----------------------------------------- 1151 1152See the Python Cookbook for a long discussion of many ways to do this: 1153 1154 https://code.activestate.com/recipes/52560/ 1155 1156If you don't mind reordering the list, sort it and then scan from the end of the 1157list, deleting duplicates as you go:: 1158 1159 if mylist: 1160 mylist.sort() 1161 last = mylist[-1] 1162 for i in range(len(mylist)-2, -1, -1): 1163 if last == mylist[i]: 1164 del mylist[i] 1165 else: 1166 last = mylist[i] 1167 1168If all elements of the list may be used as set keys (i.e. they are all 1169:term:`hashable`) this is often faster :: 1170 1171 mylist = list(set(mylist)) 1172 1173This converts the list into a set, thereby removing duplicates, and then back 1174into a list. 1175 1176 1177How do you make an array in Python? 1178----------------------------------- 1179 1180Use a list:: 1181 1182 ["this", 1, "is", "an", "array"] 1183 1184Lists are equivalent to C or Pascal arrays in their time complexity; the primary 1185difference is that a Python list can contain objects of many different types. 1186 1187The ``array`` module also provides methods for creating arrays of fixed types 1188with compact representations, but they are slower to index than lists. Also 1189note that the Numeric extensions and others define array-like structures with 1190various characteristics as well. 1191 1192To get Lisp-style linked lists, you can emulate cons cells using tuples:: 1193 1194 lisp_list = ("like", ("this", ("example", None) ) ) 1195 1196If mutability is desired, you could use lists instead of tuples. Here the 1197analogue of lisp car is ``lisp_list[0]`` and the analogue of cdr is 1198``lisp_list[1]``. Only do this if you're sure you really need to, because it's 1199usually a lot slower than using Python lists. 1200 1201 1202.. _faq-multidimensional-list: 1203 1204How do I create a multidimensional list? 1205---------------------------------------- 1206 1207You probably tried to make a multidimensional array like this:: 1208 1209 >>> A = [[None] * 2] * 3 1210 1211This looks correct if you print it: 1212 1213.. testsetup:: 1214 1215 A = [[None] * 2] * 3 1216 1217.. doctest:: 1218 1219 >>> A 1220 [[None, None], [None, None], [None, None]] 1221 1222But when you assign a value, it shows up in multiple places: 1223 1224.. testsetup:: 1225 1226 A = [[None] * 2] * 3 1227 1228.. doctest:: 1229 1230 >>> A[0][0] = 5 1231 >>> A 1232 [[5, None], [5, None], [5, None]] 1233 1234The reason is that replicating a list with ``*`` doesn't create copies, it only 1235creates references to the existing objects. The ``*3`` creates a list 1236containing 3 references to the same list of length two. Changes to one row will 1237show in all rows, which is almost certainly not what you want. 1238 1239The suggested approach is to create a list of the desired length first and then 1240fill in each element with a newly created list:: 1241 1242 A = [None] * 3 1243 for i in range(3): 1244 A[i] = [None] * 2 1245 1246This generates a list containing 3 different lists of length two. You can also 1247use a list comprehension:: 1248 1249 w, h = 2, 3 1250 A = [[None] * w for i in range(h)] 1251 1252Or, you can use an extension that provides a matrix datatype; `NumPy 1253<http://www.numpy.org/>`_ is the best known. 1254 1255 1256How do I apply a method to a sequence of objects? 1257------------------------------------------------- 1258 1259Use a list comprehension:: 1260 1261 result = [obj.method() for obj in mylist] 1262 1263.. _faq-augmented-assignment-tuple-error: 1264 1265Why does a_tuple[i] += ['item'] raise an exception when the addition works? 1266--------------------------------------------------------------------------- 1267 1268This is because of a combination of the fact that augmented assignment 1269operators are *assignment* operators, and the difference between mutable and 1270immutable objects in Python. 1271 1272This discussion applies in general when augmented assignment operators are 1273applied to elements of a tuple that point to mutable objects, but we'll use 1274a ``list`` and ``+=`` as our exemplar. 1275 1276If you wrote:: 1277 1278 >>> a_tuple = (1, 2) 1279 >>> a_tuple[0] += 1 1280 Traceback (most recent call last): 1281 ... 1282 TypeError: 'tuple' object does not support item assignment 1283 1284The reason for the exception should be immediately clear: ``1`` is added to the 1285object ``a_tuple[0]`` points to (``1``), producing the result object, ``2``, 1286but when we attempt to assign the result of the computation, ``2``, to element 1287``0`` of the tuple, we get an error because we can't change what an element of 1288a tuple points to. 1289 1290Under the covers, what this augmented assignment statement is doing is 1291approximately this:: 1292 1293 >>> result = a_tuple[0] + 1 1294 >>> a_tuple[0] = result 1295 Traceback (most recent call last): 1296 ... 1297 TypeError: 'tuple' object does not support item assignment 1298 1299It is the assignment part of the operation that produces the error, since a 1300tuple is immutable. 1301 1302When you write something like:: 1303 1304 >>> a_tuple = (['foo'], 'bar') 1305 >>> a_tuple[0] += ['item'] 1306 Traceback (most recent call last): 1307 ... 1308 TypeError: 'tuple' object does not support item assignment 1309 1310The exception is a bit more surprising, and even more surprising is the fact 1311that even though there was an error, the append worked:: 1312 1313 >>> a_tuple[0] 1314 ['foo', 'item'] 1315 1316To see why this happens, you need to know that (a) if an object implements an 1317``__iadd__`` magic method, it gets called when the ``+=`` augmented assignment 1318is executed, and its return value is what gets used in the assignment statement; 1319and (b) for lists, ``__iadd__`` is equivalent to calling ``extend`` on the list 1320and returning the list. That's why we say that for lists, ``+=`` is a 1321"shorthand" for ``list.extend``:: 1322 1323 >>> a_list = [] 1324 >>> a_list += [1] 1325 >>> a_list 1326 [1] 1327 1328This is equivalent to:: 1329 1330 >>> result = a_list.__iadd__([1]) 1331 >>> a_list = result 1332 1333The object pointed to by a_list has been mutated, and the pointer to the 1334mutated object is assigned back to ``a_list``. The end result of the 1335assignment is a no-op, since it is a pointer to the same object that ``a_list`` 1336was previously pointing to, but the assignment still happens. 1337 1338Thus, in our tuple example what is happening is equivalent to:: 1339 1340 >>> result = a_tuple[0].__iadd__(['item']) 1341 >>> a_tuple[0] = result 1342 Traceback (most recent call last): 1343 ... 1344 TypeError: 'tuple' object does not support item assignment 1345 1346The ``__iadd__`` succeeds, and thus the list is extended, but even though 1347``result`` points to the same object that ``a_tuple[0]`` already points to, 1348that final assignment still results in an error, because tuples are immutable. 1349 1350 1351I want to do a complicated sort: can you do a Schwartzian Transform in Python? 1352------------------------------------------------------------------------------ 1353 1354The technique, attributed to Randal Schwartz of the Perl community, sorts the 1355elements of a list by a metric which maps each element to its "sort value". In 1356Python, use the ``key`` argument for the :meth:`list.sort` method:: 1357 1358 Isorted = L[:] 1359 Isorted.sort(key=lambda s: int(s[10:15])) 1360 1361 1362How can I sort one list by values from another list? 1363---------------------------------------------------- 1364 1365Merge them into an iterator of tuples, sort the resulting list, and then pick 1366out the element you want. :: 1367 1368 >>> list1 = ["what", "I'm", "sorting", "by"] 1369 >>> list2 = ["something", "else", "to", "sort"] 1370 >>> pairs = zip(list1, list2) 1371 >>> pairs = sorted(pairs) 1372 >>> pairs 1373 [("I'm", 'else'), ('by', 'sort'), ('sorting', 'to'), ('what', 'something')] 1374 >>> result = [x[1] for x in pairs] 1375 >>> result 1376 ['else', 'sort', 'to', 'something'] 1377 1378 1379An alternative for the last step is:: 1380 1381 >>> result = [] 1382 >>> for p in pairs: result.append(p[1]) 1383 1384If you find this more legible, you might prefer to use this instead of the final 1385list comprehension. However, it is almost twice as slow for long lists. Why? 1386First, the ``append()`` operation has to reallocate memory, and while it uses 1387some tricks to avoid doing that each time, it still has to do it occasionally, 1388and that costs quite a bit. Second, the expression "result.append" requires an 1389extra attribute lookup, and third, there's a speed reduction from having to make 1390all those function calls. 1391 1392 1393Objects 1394======= 1395 1396What is a class? 1397---------------- 1398 1399A class is the particular object type created by executing a class statement. 1400Class objects are used as templates to create instance objects, which embody 1401both the data (attributes) and code (methods) specific to a datatype. 1402 1403A class can be based on one or more other classes, called its base class(es). It 1404then inherits the attributes and methods of its base classes. This allows an 1405object model to be successively refined by inheritance. You might have a 1406generic ``Mailbox`` class that provides basic accessor methods for a mailbox, 1407and subclasses such as ``MboxMailbox``, ``MaildirMailbox``, ``OutlookMailbox`` 1408that handle various specific mailbox formats. 1409 1410 1411What is a method? 1412----------------- 1413 1414A method is a function on some object ``x`` that you normally call as 1415``x.name(arguments...)``. Methods are defined as functions inside the class 1416definition:: 1417 1418 class C: 1419 def meth(self, arg): 1420 return arg * 2 + self.attribute 1421 1422 1423What is self? 1424------------- 1425 1426Self is merely a conventional name for the first argument of a method. A method 1427defined as ``meth(self, a, b, c)`` should be called as ``x.meth(a, b, c)`` for 1428some instance ``x`` of the class in which the definition occurs; the called 1429method will think it is called as ``meth(x, a, b, c)``. 1430 1431See also :ref:`why-self`. 1432 1433 1434How do I check if an object is an instance of a given class or of a subclass of it? 1435----------------------------------------------------------------------------------- 1436 1437Use the built-in function ``isinstance(obj, cls)``. You can check if an object 1438is an instance of any of a number of classes by providing a tuple instead of a 1439single class, e.g. ``isinstance(obj, (class1, class2, ...))``, and can also 1440check whether an object is one of Python's built-in types, e.g. 1441``isinstance(obj, str)`` or ``isinstance(obj, (int, float, complex))``. 1442 1443Note that most programs do not use :func:`isinstance` on user-defined classes 1444very often. If you are developing the classes yourself, a more proper 1445object-oriented style is to define methods on the classes that encapsulate a 1446particular behaviour, instead of checking the object's class and doing a 1447different thing based on what class it is. For example, if you have a function 1448that does something:: 1449 1450 def search(obj): 1451 if isinstance(obj, Mailbox): 1452 ... # code to search a mailbox 1453 elif isinstance(obj, Document): 1454 ... # code to search a document 1455 elif ... 1456 1457A better approach is to define a ``search()`` method on all the classes and just 1458call it:: 1459 1460 class Mailbox: 1461 def search(self): 1462 ... # code to search a mailbox 1463 1464 class Document: 1465 def search(self): 1466 ... # code to search a document 1467 1468 obj.search() 1469 1470 1471What is delegation? 1472------------------- 1473 1474Delegation is an object oriented technique (also called a design pattern). 1475Let's say you have an object ``x`` and want to change the behaviour of just one 1476of its methods. You can create a new class that provides a new implementation 1477of the method you're interested in changing and delegates all other methods to 1478the corresponding method of ``x``. 1479 1480Python programmers can easily implement delegation. For example, the following 1481class implements a class that behaves like a file but converts all written data 1482to uppercase:: 1483 1484 class UpperOut: 1485 1486 def __init__(self, outfile): 1487 self._outfile = outfile 1488 1489 def write(self, s): 1490 self._outfile.write(s.upper()) 1491 1492 def __getattr__(self, name): 1493 return getattr(self._outfile, name) 1494 1495Here the ``UpperOut`` class redefines the ``write()`` method to convert the 1496argument string to uppercase before calling the underlying 1497``self.__outfile.write()`` method. All other methods are delegated to the 1498underlying ``self.__outfile`` object. The delegation is accomplished via the 1499``__getattr__`` method; consult :ref:`the language reference <attribute-access>` 1500for more information about controlling attribute access. 1501 1502Note that for more general cases delegation can get trickier. When attributes 1503must be set as well as retrieved, the class must define a :meth:`__setattr__` 1504method too, and it must do so carefully. The basic implementation of 1505:meth:`__setattr__` is roughly equivalent to the following:: 1506 1507 class X: 1508 ... 1509 def __setattr__(self, name, value): 1510 self.__dict__[name] = value 1511 ... 1512 1513Most :meth:`__setattr__` implementations must modify ``self.__dict__`` to store 1514local state for self without causing an infinite recursion. 1515 1516 1517How do I call a method defined in a base class from a derived class that overrides it? 1518-------------------------------------------------------------------------------------- 1519 1520Use the built-in :func:`super` function:: 1521 1522 class Derived(Base): 1523 def meth(self): 1524 super(Derived, self).meth() 1525 1526For version prior to 3.0, you may be using classic classes: For a class 1527definition such as ``class Derived(Base): ...`` you can call method ``meth()`` 1528defined in ``Base`` (or one of ``Base``'s base classes) as ``Base.meth(self, 1529arguments...)``. Here, ``Base.meth`` is an unbound method, so you need to 1530provide the ``self`` argument. 1531 1532 1533How can I organize my code to make it easier to change the base class? 1534---------------------------------------------------------------------- 1535 1536You could define an alias for the base class, assign the real base class to it 1537before your class definition, and use the alias throughout your class. Then all 1538you have to change is the value assigned to the alias. Incidentally, this trick 1539is also handy if you want to decide dynamically (e.g. depending on availability 1540of resources) which base class to use. Example:: 1541 1542 BaseAlias = <real base class> 1543 1544 class Derived(BaseAlias): 1545 def meth(self): 1546 BaseAlias.meth(self) 1547 ... 1548 1549 1550How do I create static class data and static class methods? 1551----------------------------------------------------------- 1552 1553Both static data and static methods (in the sense of C++ or Java) are supported 1554in Python. 1555 1556For static data, simply define a class attribute. To assign a new value to the 1557attribute, you have to explicitly use the class name in the assignment:: 1558 1559 class C: 1560 count = 0 # number of times C.__init__ called 1561 1562 def __init__(self): 1563 C.count = C.count + 1 1564 1565 def getcount(self): 1566 return C.count # or return self.count 1567 1568``c.count`` also refers to ``C.count`` for any ``c`` such that ``isinstance(c, 1569C)`` holds, unless overridden by ``c`` itself or by some class on the base-class 1570search path from ``c.__class__`` back to ``C``. 1571 1572Caution: within a method of C, an assignment like ``self.count = 42`` creates a 1573new and unrelated instance named "count" in ``self``'s own dict. Rebinding of a 1574class-static data name must always specify the class whether inside a method or 1575not:: 1576 1577 C.count = 314 1578 1579Static methods are possible:: 1580 1581 class C: 1582 @staticmethod 1583 def static(arg1, arg2, arg3): 1584 # No 'self' parameter! 1585 ... 1586 1587However, a far more straightforward way to get the effect of a static method is 1588via a simple module-level function:: 1589 1590 def getcount(): 1591 return C.count 1592 1593If your code is structured so as to define one class (or tightly related class 1594hierarchy) per module, this supplies the desired encapsulation. 1595 1596 1597How can I overload constructors (or methods) in Python? 1598------------------------------------------------------- 1599 1600This answer actually applies to all methods, but the question usually comes up 1601first in the context of constructors. 1602 1603In C++ you'd write 1604 1605.. code-block:: c 1606 1607 class C { 1608 C() { cout << "No arguments\n"; } 1609 C(int i) { cout << "Argument is " << i << "\n"; } 1610 } 1611 1612In Python you have to write a single constructor that catches all cases using 1613default arguments. For example:: 1614 1615 class C: 1616 def __init__(self, i=None): 1617 if i is None: 1618 print("No arguments") 1619 else: 1620 print("Argument is", i) 1621 1622This is not entirely equivalent, but close enough in practice. 1623 1624You could also try a variable-length argument list, e.g. :: 1625 1626 def __init__(self, *args): 1627 ... 1628 1629The same approach works for all method definitions. 1630 1631 1632I try to use __spam and I get an error about _SomeClassName__spam. 1633------------------------------------------------------------------ 1634 1635Variable names with double leading underscores are "mangled" to provide a simple 1636but effective way to define class private variables. Any identifier of the form 1637``__spam`` (at least two leading underscores, at most one trailing underscore) 1638is textually replaced with ``_classname__spam``, where ``classname`` is the 1639current class name with any leading underscores stripped. 1640 1641This doesn't guarantee privacy: an outside user can still deliberately access 1642the "_classname__spam" attribute, and private values are visible in the object's 1643``__dict__``. Many Python programmers never bother to use private variable 1644names at all. 1645 1646 1647My class defines __del__ but it is not called when I delete the object. 1648----------------------------------------------------------------------- 1649 1650There are several possible reasons for this. 1651 1652The del statement does not necessarily call :meth:`__del__` -- it simply 1653decrements the object's reference count, and if this reaches zero 1654:meth:`__del__` is called. 1655 1656If your data structures contain circular links (e.g. a tree where each child has 1657a parent reference and each parent has a list of children) the reference counts 1658will never go back to zero. Once in a while Python runs an algorithm to detect 1659such cycles, but the garbage collector might run some time after the last 1660reference to your data structure vanishes, so your :meth:`__del__` method may be 1661called at an inconvenient and random time. This is inconvenient if you're trying 1662to reproduce a problem. Worse, the order in which object's :meth:`__del__` 1663methods are executed is arbitrary. You can run :func:`gc.collect` to force a 1664collection, but there *are* pathological cases where objects will never be 1665collected. 1666 1667Despite the cycle collector, it's still a good idea to define an explicit 1668``close()`` method on objects to be called whenever you're done with them. The 1669``close()`` method can then remove attributes that refer to subobjects. Don't 1670call :meth:`__del__` directly -- :meth:`__del__` should call ``close()`` and 1671``close()`` should make sure that it can be called more than once for the same 1672object. 1673 1674Another way to avoid cyclical references is to use the :mod:`weakref` module, 1675which allows you to point to objects without incrementing their reference count. 1676Tree data structures, for instance, should use weak references for their parent 1677and sibling references (if they need them!). 1678 1679.. XXX relevant for Python 3? 1680 1681 If the object has ever been a local variable in a function that caught an 1682 expression in an except clause, chances are that a reference to the object 1683 still exists in that function's stack frame as contained in the stack trace. 1684 Normally, calling :func:`sys.exc_clear` will take care of this by clearing 1685 the last recorded exception. 1686 1687Finally, if your :meth:`__del__` method raises an exception, a warning message 1688is printed to :data:`sys.stderr`. 1689 1690 1691How do I get a list of all instances of a given class? 1692------------------------------------------------------ 1693 1694Python does not keep track of all instances of a class (or of a built-in type). 1695You can program the class's constructor to keep track of all instances by 1696keeping a list of weak references to each instance. 1697 1698 1699Why does the result of ``id()`` appear to be not unique? 1700-------------------------------------------------------- 1701 1702The :func:`id` builtin returns an integer that is guaranteed to be unique during 1703the lifetime of the object. Since in CPython, this is the object's memory 1704address, it happens frequently that after an object is deleted from memory, the 1705next freshly created object is allocated at the same position in memory. This 1706is illustrated by this example: 1707 1708>>> id(1000) # doctest: +SKIP 170913901272 1710>>> id(2000) # doctest: +SKIP 171113901272 1712 1713The two ids belong to different integer objects that are created before, and 1714deleted immediately after execution of the ``id()`` call. To be sure that 1715objects whose id you want to examine are still alive, create another reference 1716to the object: 1717 1718>>> a = 1000; b = 2000 1719>>> id(a) # doctest: +SKIP 172013901272 1721>>> id(b) # doctest: +SKIP 172213891296 1723 1724 1725Modules 1726======= 1727 1728How do I create a .pyc file? 1729---------------------------- 1730 1731When a module is imported for the first time (or when the source file has 1732changed since the current compiled file was created) a ``.pyc`` file containing 1733the compiled code should be created in a ``__pycache__`` subdirectory of the 1734directory containing the ``.py`` file. The ``.pyc`` file will have a 1735filename that starts with the same name as the ``.py`` file, and ends with 1736``.pyc``, with a middle component that depends on the particular ``python`` 1737binary that created it. (See :pep:`3147` for details.) 1738 1739One reason that a ``.pyc`` file may not be created is a permissions problem 1740with the directory containing the source file, meaning that the ``__pycache__`` 1741subdirectory cannot be created. This can happen, for example, if you develop as 1742one user but run as another, such as if you are testing with a web server. 1743 1744Unless the :envvar:`PYTHONDONTWRITEBYTECODE` environment variable is set, 1745creation of a .pyc file is automatic if you're importing a module and Python 1746has the ability (permissions, free space, etc...) to create a ``__pycache__`` 1747subdirectory and write the compiled module to that subdirectory. 1748 1749Running Python on a top level script is not considered an import and no 1750``.pyc`` will be created. For example, if you have a top-level module 1751``foo.py`` that imports another module ``xyz.py``, when you run ``foo`` (by 1752typing ``python foo.py`` as a shell command), a ``.pyc`` will be created for 1753``xyz`` because ``xyz`` is imported, but no ``.pyc`` file will be created for 1754``foo`` since ``foo.py`` isn't being imported. 1755 1756If you need to create a ``.pyc`` file for ``foo`` -- that is, to create a 1757``.pyc`` file for a module that is not imported -- you can, using the 1758:mod:`py_compile` and :mod:`compileall` modules. 1759 1760The :mod:`py_compile` module can manually compile any module. One way is to use 1761the ``compile()`` function in that module interactively:: 1762 1763 >>> import py_compile 1764 >>> py_compile.compile('foo.py') # doctest: +SKIP 1765 1766This will write the ``.pyc`` to a ``__pycache__`` subdirectory in the same 1767location as ``foo.py`` (or you can override that with the optional parameter 1768``cfile``). 1769 1770You can also automatically compile all files in a directory or directories using 1771the :mod:`compileall` module. You can do it from the shell prompt by running 1772``compileall.py`` and providing the path of a directory containing Python files 1773to compile:: 1774 1775 python -m compileall . 1776 1777 1778How do I find the current module name? 1779-------------------------------------- 1780 1781A module can find out its own module name by looking at the predefined global 1782variable ``__name__``. If this has the value ``'__main__'``, the program is 1783running as a script. Many modules that are usually used by importing them also 1784provide a command-line interface or a self-test, and only execute this code 1785after checking ``__name__``:: 1786 1787 def main(): 1788 print('Running test...') 1789 ... 1790 1791 if __name__ == '__main__': 1792 main() 1793 1794 1795How can I have modules that mutually import each other? 1796------------------------------------------------------- 1797 1798Suppose you have the following modules: 1799 1800foo.py:: 1801 1802 from bar import bar_var 1803 foo_var = 1 1804 1805bar.py:: 1806 1807 from foo import foo_var 1808 bar_var = 2 1809 1810The problem is that the interpreter will perform the following steps: 1811 1812* main imports foo 1813* Empty globals for foo are created 1814* foo is compiled and starts executing 1815* foo imports bar 1816* Empty globals for bar are created 1817* bar is compiled and starts executing 1818* bar imports foo (which is a no-op since there already is a module named foo) 1819* bar.foo_var = foo.foo_var 1820 1821The last step fails, because Python isn't done with interpreting ``foo`` yet and 1822the global symbol dictionary for ``foo`` is still empty. 1823 1824The same thing happens when you use ``import foo``, and then try to access 1825``foo.foo_var`` in global code. 1826 1827There are (at least) three possible workarounds for this problem. 1828 1829Guido van Rossum recommends avoiding all uses of ``from <module> import ...``, 1830and placing all code inside functions. Initializations of global variables and 1831class variables should use constants or built-in functions only. This means 1832everything from an imported module is referenced as ``<module>.<name>``. 1833 1834Jim Roskind suggests performing steps in the following order in each module: 1835 1836* exports (globals, functions, and classes that don't need imported base 1837 classes) 1838* ``import`` statements 1839* active code (including globals that are initialized from imported values). 1840 1841van Rossum doesn't like this approach much because the imports appear in a 1842strange place, but it does work. 1843 1844Matthias Urlichs recommends restructuring your code so that the recursive import 1845is not necessary in the first place. 1846 1847These solutions are not mutually exclusive. 1848 1849 1850__import__('x.y.z') returns <module 'x'>; how do I get z? 1851--------------------------------------------------------- 1852 1853Consider using the convenience function :func:`~importlib.import_module` from 1854:mod:`importlib` instead:: 1855 1856 z = importlib.import_module('x.y.z') 1857 1858 1859When I edit an imported module and reimport it, the changes don't show up. Why does this happen? 1860------------------------------------------------------------------------------------------------- 1861 1862For reasons of efficiency as well as consistency, Python only reads the module 1863file on the first time a module is imported. If it didn't, in a program 1864consisting of many modules where each one imports the same basic module, the 1865basic module would be parsed and re-parsed many times. To force re-reading of a 1866changed module, do this:: 1867 1868 import importlib 1869 import modname 1870 importlib.reload(modname) 1871 1872Warning: this technique is not 100% fool-proof. In particular, modules 1873containing statements like :: 1874 1875 from modname import some_objects 1876 1877will continue to work with the old version of the imported objects. If the 1878module contains class definitions, existing class instances will *not* be 1879updated to use the new class definition. This can result in the following 1880paradoxical behaviour:: 1881 1882 >>> import importlib 1883 >>> import cls 1884 >>> c = cls.C() # Create an instance of C 1885 >>> importlib.reload(cls) 1886 <module 'cls' from 'cls.py'> 1887 >>> isinstance(c, cls.C) # isinstance is false?!? 1888 False 1889 1890The nature of the problem is made clear if you print out the "identity" of the 1891class objects:: 1892 1893 >>> hex(id(c.__class__)) 1894 '0x7352a0' 1895 >>> hex(id(cls.C)) 1896 '0x4198d0' 1897