1417
votes

What are the lesser-known but useful features of the Python programming language?

  • Try to limit answers to Python core.
  • One feature per answer.
  • Give an example and short description of the feature, not just a link to documentation.
  • Label the feature using a title as the first line.

Quick links to answers:

0

191 Answers 191

1 2
3
4 5
7
24
votes

I personally love the 3 different quotes

str = "I'm a string 'but still I can use quotes' inside myself!"
str = """ For some messy multi line strings.
Such as
<html>
<head> ... </head>"""

Also cool: not having to escape regular expressions, avoiding horrible backslash salad by using raw strings:

str2 = r"\n" 
print str2
>> \n
2
  • 8
    Four different quotes, if you include '''
    – user1686
    Aug 26 '09 at 17:07
  • I enjoy having ' and " do pretty much the same thing in code. My IDE highlights strings from the two in different colors, and it makes it easy to differentiate short strings (with ') from longer ones (with ").
    – asmeurer
    Dec 28 '10 at 5:41
23
votes

Generators

I think that a lot of beginning Python developers pass over generators without really grasping what they're for or getting any sense of their power. It wasn't until I read David M. Beazley's PyCon presentation on generators (it's available here) that I realized how useful (essential, really) they are. That presentation illuminated what was for me an entirely new way of programming, and I recommend it to anyone who doesn't have a deep understanding of generators.

2
  • 2
    Wow! My brain is fried and that was just the first 6 parts. Starting in 7 I had to start drawing pictures just to see if I really understood what was happening with multi-process / multi-thread / multi-machine processing pipelines. Amazing stuff! Nov 10 '08 at 19:06
  • 1
    +1 for the link to the presentation
    – Mark Heath
    Oct 1 '10 at 10:13
22
votes

Implicit concatenation:

>>> print "Hello " "World"
Hello World

Useful when you want to make a long text fit on several lines in a script:

hello = "Greaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaa Hello " \
        "Word"

or

hello = ("Greaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaa Hello " 
         "Word")
8
  • 3
    To make a long text fit on several lines, you can also use the triple quotes. Sep 19 '08 at 13:48
  • Your example is wrong and misleading. After running it, the "Word" part won't be on the end of the hello string. It won't concatenate. To continue on next line like that, you would need implicit line continuation and string concatenation and that only happens if you use some delimiter like () or [].
    – nosklo
    Sep 20 '08 at 1:26
  • 2
    Anyone who has ever forgotten a comma in a list of strings knows how evil this 'feature' is.
    – Terhorst
    Sep 22 '08 at 5:13
  • 7
    Well, a PEP had been set to get rid of it but Guido decided finally to keep it. I guess it's more useful than hateful. Actually the drawbacks are no so dangerous (no safety issues) and for long strings, it helps a lot.
    – e-satis
    Sep 22 '08 at 16:30
  • 2
    This is probably my favorite feature of Python. You can forget correct syntax and it's still correct syntax.
    – user13876
    Dec 30 '08 at 9:47
22
votes

When using the interactive shell, "_" contains the value of the last printed item:

>>> range(10)
[0, 1, 2, 3, 4, 5, 6, 7, 8, 9]
>>> _
[0, 1, 2, 3, 4, 5, 6, 7, 8, 9]
>>>
5
  • I always forget about this one! It's a great feature. Jul 22 '10 at 20:17
  • _ automatic variable is the best feature when using Python shell as a calculator. Very powerful calculator, by the way. Aug 4 '10 at 19:03
  • I still try to use %% in the python shell from too much Mathematica in a previous life... If only %% were a valid variable name, I'd set %% = _... Nov 15 '10 at 12:42
  • This was already given by someone (I don't know if it was earlier, but it is voted higher).
    – asmeurer
    Dec 28 '10 at 5:39
  • __ for second-last and ___ for third-last
    – wim
    Jul 19 '11 at 11:44
22
votes

Zero-argument and variable-argument lambdas

Lambda functions are usually used for a quick transformation of one value into another, but they can also be used to wrap a value in a function:

>>> f = lambda: 'foo'
>>> f()
'foo'

They can also accept the usual *args and **kwargs syntax:

>>> g = lambda *args, **kwargs: args[0], kwargs['thing']
>>> g(1, 2, 3, thing='stuff')
(1, 'stuff')
1
  • The main reason I see to keep lambda around: defaultdict(lambda: 1)
    – eswald
    Oct 9 '10 at 17:39
22
votes

The textwrap.dedent utility function in python can come quite in handy testing that a multiline string returned is equal to the expected output without breaking the indentation of your unittests:

import unittest, textwrap

class XMLTests(unittest.TestCase):
    def test_returned_xml_value(self):
        returned_xml = call_to_function_that_returns_xml()
        expected_value = textwrap.dedent("""\
        <?xml version="1.0" encoding="utf-8"?>
        <root_node>
            <my_node>my_content</my_node>
        </root_node>
        """)

        self.assertEqual(expected_value, returned_xml)
21
votes

Using keyword arguments as assignments

Sometimes one wants to build a range of functions depending on one or more parameters. However this might easily lead to closures all referring to the same object and value:

funcs = [] 
for k in range(10):
     funcs.append( lambda: k)

>>> funcs[0]()
9
>>> funcs[7]()
9

This behaviour can be avoided by turning the lambda expression into a function depending only on its arguments. A keyword parameter stores the current value that is bound to it. The function call doesn't have to be altered:

funcs = [] 
for k in range(10):
     funcs.append( lambda k = k: k)

>>> funcs[0]()
0
>>> funcs[7]()
7
3
  • 6
    A less hackish way to do that (imho) is just to use a separate function to manufacture lambdas that don't close on a loop variable. Like this: def make_lambda(k): return lambda: k. Jan 28 '10 at 21:03
  • "less hackish"?....it's personal preference, I guess, but this is core Python stuff -- not really a hack. You certainly can structure it ( using functions ) so that the reader does not need to understand how Python's default arguments work -- but if you do understand how default arguments work, you will read the "lambda: k=k:k" and understand immediately that it is "saving" the current value of "k" ( as the lambda is created ), and attaching it to the lambda itself. This works the same with normal "def" functions, too. Sep 20 '11 at 20:34
  • Jason Orendorff's answer is correct, but this is how we used to emulate closures in Python before Guido finally agreed that nested scopes were a good idea. Jan 12 '12 at 4:23
20
votes

Mod works correctly with negative numbers

-1 % 5 is 4, as it should be, not -1 as it is in other languages like JavaScript. This makes "wraparound windows" cleaner in Python, you just do this:

index = (index + increment) % WINDOW_SIZE
2
  • In most languages, number = coefficient x quotient + remainder. In Python (and Ruby), quotient is different than in JavaScript (or C or Java), because integer division in Python rounds towards negative infinity, but in JavaScript it rounds towards zero (truncates). I agree that % in Python makes more sense, but I don't know if / does. See en.wikipedia.org/wiki/Modulo_operation for details on each language.
    – Mikel
    Jan 24 '11 at 3:42
  • In general, if abs(increment) < WINDOW_SIZE, then you can say index = (index + WINDOW_SIZE + increment) in any language, and have it do the right thing. Jan 29 '11 at 9:12
19
votes

Not very hidden, but functions have attributes:

def doNothing():
    pass

doNothing.monkeys = 4
print doNothing.monkeys
4
4
  • 11
    It's because functions can be though of as objects with __call__() function defined. Jan 14 '10 at 16:06
  • 2
    It's because functions can be thought of as descriptors with __call__() function defined. May 27 '10 at 19:15
  • Wait, does __call__() also have a __call__() function?
    – user142019
    Jun 29 '11 at 14:20
  • 2
    I'll bet it's __call__() functions all the way down. Aug 5 '11 at 17:17
19
votes

Ternary operator

>>> 'ham' if True else 'spam'
'ham'
>>> 'ham' if False else 'spam'
'spam'

This was added in 2.5, prior to that you could use:

>>> True and 'ham' or 'spam'
'ham'
>>> False and 'ham' or 'spam'
'spam'

However, if the values you want to work with would be considered false, there is a difference:

>>> [] if True else 'spam'
[]
>>> True and [] or 'spam'
'spam'
2
  • Prior to 2.5, "foo = bar and 'ham' or 'spam'" May 11 '09 at 4:30
  • @a paid nerd - not quite: 1 == 1 and 0 or 3 => 3. The and short circuits on the 0 (as it equivalent to False - same deal with "" and None).
    – hbn
    Jan 23 '11 at 21:45
19
votes

Assigning and deleting slices:

>>> a = range(10)
>>> a
[0, 1, 2, 3, 4, 5, 6, 7, 8, 9]
>>> a[:5] = [42]
>>> a
[42, 5, 6, 7, 8, 9]
>>> a[:1] = range(5)
>>> a
[0, 1, 2, 3, 4, 5, 6, 7, 8, 9]
>>> del a[::2]
>>> a
[1, 3, 5, 7, 9]
>>> a[::2] = a[::-2]
>>> a
[9, 3, 5, 7, 1]

Note: when assigning to extended slices (s[start:stop:step]), the assigned iterable must have the same length as the slice.

19
votes

First-class functions

It's not really a hidden feature, but the fact that functions are first class objects is simply great. You can pass them around like any other variable.

>>> def jim(phrase):
...   return 'Jim says, "%s".' % phrase
>>> def say_something(person, phrase):
...   print person(phrase)

>>> say_something(jim, 'hey guys')
'Jim says, "hey guys".'
4
  • 2
    This also makes callback and hook creation (and, thus, plugin creation for your Python scripts) so trivial that you might not even know you're doing it.
    – user13876
    Dec 30 '08 at 9:49
  • 4
    Any langauge that doesn't have first class functions (or at least some good substitute, like C function pointers) it is a misfeature. It is completely unbearable to go without. Nov 17 '09 at 19:06
  • This might be a stupider question than I intend, but isn't this essentially a function pointer? Or do I have this mixed up? Sep 22 '10 at 4:13
  • 1
    @inspectorG4dget: It's certainly related to function pointers, in that it can accomplish all of the same purposes, but it's slightly more general, more powerful, and more intuitive. Particularly powerful when you combine it with the fact that functions can have attributes, or the fact that instances of certain classes can be called, but that starts to get arcane.
    – eswald
    Oct 9 '10 at 17:48
19
votes

Passing tuple to builtin functions

Much Python functions accept tuples, also it doesn't seem like. For example you want to test if your variable is a number, you could do:

if isinstance (number, float) or isinstance (number, int):  
   print "yaay"

But if you pass us tuple this looks much cleaner:

if isinstance (number, (float, int)):  
   print "yaay"
4
  • cool, is this even documented? May 16 '10 at 7:10
  • Yes, but nearly nobody knows about that.
    – evilpie
    May 16 '10 at 12:35
  • What other functions support this?? Good tip
    – adamJLev
    Jul 22 '10 at 16:14
  • Not sure about other functions, but this is supposed in except (FooError, BarError) clauses. Jan 22 '11 at 20:16
19
votes

Nice treatment of infinite recursion in dictionaries:

>>> a = {}
>>> b = {}
>>> a['b'] = b
>>> b['a'] = a
>>> print a
{'b': {'a': {...}}}
4
  • 1
    That is just the 'nice treatment' of "print", it doesn't imply a nice treatment across the language.
    – haridsv
    Jun 1 '10 at 19:59
  • Both str() and repr() return the string you posted above. However, the ipython shell returns something a little different, a little more informative: {'b': {'a': <Recursion on dict with id=17830960>}} Jun 2 '10 at 2:21
  • 1
    @denilson: ipython uses pprint module, which is available whithin standard python shell.
    – rafak
    Jun 5 '10 at 19:49
  • 1
    +1 for the first one that I had absolutely no idea about whatsoever.
    – asmeurer
    Dec 28 '10 at 5:47
18
votes

reversing an iterable using negative step

>>> s = "Hello World"
>>> s[::-1]
'dlroW olleH'
>>> a = (1,2,3,4,5,6)
>>> a[::-1]
(6, 5, 4, 3, 2, 1)
>>> a = [5,4,3,2,1]
>>> a[::-1]
[1, 2, 3, 4, 5]
2
  • 2
    Good to know, but minor point: that only works with sequences not iterables in general. I.e., (n for n in (1,2,3,4,5))[::-1] doesn't work. Jul 15 '10 at 5:32
  • 3
    That notation will actually create a new (reversed) instance of that sequence, which might be undesirable in some cases. For such cases, reversed() function is better, as it returns a reverse iterator instead of allocating a new sequence. Aug 4 '10 at 19:08
18
votes

Not "hidden" but quite useful and not commonly used

Creating string joining functions quickly like so

 comma_join = ",".join
 semi_join  = ";".join

 print comma_join(["foo","bar","baz"])
 'foo,bar,baz

and

Ability to create lists of strings more elegantly than the quote, comma mess.

l = ["item1", "item2", "item3"]

replaced by

l = "item1 item2 item3".split()
2
  • I think these both make the thing more long and obfuscated.
    – XTL
    Feb 16 '12 at 8:18
  • I don't know. I've found places where judicious use made things easier to read. Feb 16 '12 at 11:55
18
votes

Arguably, this is not a programming feature per se, but so useful that I'll post it nevertheless.

$ python -m http.server

...followed by $ wget http://<ipnumber>:8000/filename somewhere else.

If you are still running an older (2.x) version of Python:

$ python -m SimpleHTTPServer

You can also specify a port e.g. python -m http.server 80 (so you can omit the port in the url if you have the root on the server side)

17
votes

Multiple references to an iterator

You can create multiple references to the same iterator using list multiplication:

>>> i = (1,2,3,4,5,6,7,8,9,10) # or any iterable object
>>> iterators = [iter(i)] * 2
>>> iterators[0].next()
1
>>> iterators[1].next()
2
>>> iterators[0].next()
3

This can be used to group an iterable into chunks, for example, as in this example from the itertools documentation

def grouper(n, iterable, fillvalue=None):
    "grouper(3, 'ABCDEFG', 'x') --> ABC DEF Gxx"
    args = [iter(iterable)] * n
    return izip_longest(fillvalue=fillvalue, *args)
4
  • 1
    You can do the opposite with itertools.tee -- take one iterator and return n that yield the same but do not share state.
    – Daenyth
    Jul 3 '10 at 4:41
  • 6
    I actually don't see the difference to doing this one: "a = iter(i)" and subsequently "b = a" I also get multiple references to the same iterator -- there is no magic about that to me, no hidden feature it is just the normal reference copying stuff of the language. What is done, is creating the iterator, then (the list multiplication) copying this iterator several times. Thats all, its all in the language.
    – Juergen
    Jul 3 '10 at 9:46
  • 3
    @Juergen: indeed, a = iter(i); b = a does the same thing and I could just as well have written that into the answer instead of [iter(i)] * n. Either way, there is no "magic" about it. That's no different from any of the other answers to this question - none of them are "magical", they are all in the language. What makes the features "hidden" is that many people don't realize they're possible, or don't realize interesting ways in which they can be used, until they are pointed out explicitly.
    – David Z
    Jul 3 '10 at 23:14
  • Well, for one thing, you can do it an arbitrary number of times with [iter(i)]*n. Also, it isn't necessarily well known (to many people's peril) that list*int creates referential, not actual, copies of the elements of the list. It's good to see that that is actually useful somehow.
    – asmeurer
    Dec 28 '10 at 5:38
17
votes

From python 3.1 ( 2.7 ) dictionary and set comprehensions are supported :

{ a:a for a in range(10) }
{ a for a in range(10) }
5
  • there is no such thing as tuples comprehension, and this is not a syntax for dict comprehensions. Jul 18 '10 at 21:31
  • Edited the typo with dict comprehensions.
    – Piotr Duda
    Jul 18 '10 at 21:58
  • uh oh, looks like I have to upgrade my version of python so I can play with dict and set comprehensions Jul 19 '10 at 6:23
  • for dictionaries that way is better but dict( (a,a) for a in range(10) ) works too and your error is probably due to remembering this form
    – Dan D.
    Aug 26 '10 at 15:22
  • I cannot wait to use this feature.
    – asmeurer
    Dec 28 '10 at 5:48
15
votes

Python can understand any kind of unicode digits, not just the ASCII kind:

>>> s = u'10585'
>>> s
u'\uff11\uff10\uff15\uff18\uff15'
>>> print s
10585
>>> int(s)
10585
>>> float(s)
10585.0
14
votes

__slots__ is a nice way to save memory, but it's very hard to get a dict of the values of the object. Imagine the following object:

class Point(object):
    __slots__ = ('x', 'y')

Now that object obviously has two attributes. Now we can create an instance of it and build a dict of it this way:

>>> p = Point()
>>> p.x = 3
>>> p.y = 5
>>> dict((k, getattr(p, k)) for k in p.__slots__)
{'y': 5, 'x': 3}

This however won't work if point was subclassed and new slots were added. However Python automatically implements __reduce_ex__ to help the copy module. This can be abused to get a dict of values:

>>> p.__reduce_ex__(2)[2][1]
{'y': 5, 'x': 3}
3
  • Oh wow, I might actually have good use for this!
    – user13876
    Dec 30 '08 at 9:46
  • Beware that __reduce_ex__ can be overridden in subclasses, and since it's also used for pickling, it often is. (If you're making data containers, you should think of using it too! or it's younger siblings __getstate__ and __setstate__.)
    – Ken Arnold
    Jun 30 '10 at 20:53
  • 2
    You can still do object.__reduce_ex__(p, 2)[2][1] then. Jun 30 '10 at 23:13
14
votes

itertools

This module is often overlooked. The following example uses itertools.chain() to flatten a list:

>>> from itertools import *
>>> l = [[1, 2], [3, 4]]
>>> list(chain(*l))
[1, 2, 3, 4]

See http://docs.python.org/library/itertools.html#recipes for more applications.

14
votes

Manipulating sys.modules

You can manipulate the modules cache directly, making modules available or unavailable as you wish:

>>> import sys
>>> import ham
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
ImportError: No module named ham

# Make the 'ham' module available -- as a non-module object even!
>>> sys.modules['ham'] = 'ham, eggs, saussages and spam.'
>>> import ham
>>> ham
'ham, eggs, saussages and spam.'

# Now remove it again.
>>> sys.modules['ham'] = None
>>> import ham
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
ImportError: No module named ham

This works even for modules that are available, and to some extent for modules that already are imported:

>>> import os
# Stop future imports of 'os'.
>>> sys.modules['os'] = None
>>> import os
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
ImportError: No module named os
# Our old imported module is still available.
>>> os
<module 'os' from '/usr/lib/python2.5/os.pyc'>

As the last line shows, changing sys.modules only affects future import statements, not past ones, so if you want to affect other modules it's important to make these changes before you give them a chance to try and import the modules -- so before you import them, typically. None is a special value in sys.modules, used for negative caching (indicating the module was not found the first time, so there's no point in looking again.) Any other value will be the result of the import operation -- even when it is not a module object. You can use this to replace modules with objects that behave exactly like you want. Deleting the entry from sys.modules entirely causes the next import to do a normal search for the module, even if it was already imported before.

1
  • And you can do sys.modules['my_module'] = MyClass(), to implement read only attributes 'module' if MyClass has the right hooks.
    – warvariuc
    Mar 4 '12 at 19:37
14
votes

You can ask any object which module it came from by looking at its __ module__ property. This is useful, for example, if you're experimenting at the command line and have imported a lot of things.

Along the same lines, you can ask a module where it came from by looking at its __ file__ property. This is useful when debugging path issues.

13
votes

Some of the builtin favorites, map(), reduce(), and filter(). All extremely fast and powerful.

7
  • 1
    list comprehensions can achieve everything you can do with any of those functions.
    – recursive
    Jan 1 '09 at 9:28
  • 2
    It can also obfuscate Python code if you abuse them
    – juanjux
    Aug 11 '09 at 9:57
  • 4
    @sil: map still exists in Python 3, as does filter, and reduce exists as functools.reduce. Oct 4 '09 at 1:17
  • 8
    @recursive: I defy you to produce a list comprehension/generator expression that performs the action of reduce() Nov 17 '09 at 19:08
  • 1
    The correct statement is "reduce() can achieve everything you can do with map(), filter(), or list comprehensions." Jan 12 '12 at 4:31
13
votes

One word: IPython

Tab introspection, pretty-printing, %debug, history management, pylab, ... well worth the time to learn well.

3
  • That's not built in python core is it? Jul 22 '09 at 6:16
  • You're right, it's not. And probably with good reason. But I recommend it without reservation to any Python programmer. (However, I heartily recommend turning off autocall. When it does something you don't expect, it can be very hard to realize why.)
    – Ken Arnold
    Jul 24 '09 at 20:13
  • I also love IPython. I've tried BPython, but it was too slow for me (although I agree it has some cool features). Aug 4 '10 at 19:10
13
votes

Guessing integer base

>>> int('10', 0)
10
>>> int('0x10', 0)
16
>>> int('010', 0)  # does not work on Python 3.x
8
>>> int('0o10', 0)  # Python >=2.6 and Python 3.x
8
>>> int('0b10', 0)  # Python >=2.6 and Python 3.x
2
12
votes

You can build up a dictionary from a set of length-2 sequences. Extremely handy when you have a list of values and a list of arrays.

>>> dict([ ('foo','bar'),('a',1),('b',2) ])
{'a': 1, 'b': 2, 'foo': 'bar'}

>>> names = ['Bob', 'Marie', 'Alice']
>>> ages = [23, 27, 36]
>>> dict(zip(names, ages))
{'Alice': 36, 'Bob': 23, 'Marie': 27}
2
  • self.data = {} _i = 0 for keys in self.VDESC.split(): self.data[keys] = _data[_i] _i += 1 I replaced my code with this one-liner :) self.data = dict(zip(self.VDESC.split(), _data)) Thanks for the handy tip. Sep 29 '09 at 2:32
  • 1
    Also helps in Python2.x where there is no dict comprehension syntax. Sou you can write dict((x, x**2) for x in range(10)).
    – Marian
    May 29 '10 at 11:57
12
votes

Extending properties (defined as descriptor) in subclasses

Sometimes it's useful to extent (modify) value "returned" by descriptor in subclass. It can be easily done with super():

class A(object):
    @property
    def prop(self):
        return {'a': 1}

class B(A):
    @property
    def prop(self):
        return dict(super(B, self).prop, b=2)

Store this in test.py and run python -i test.py (another hidden feature: -i option executed the script and allow you to continue in interactive mode):

>>> B().prop
{'a': 1, 'b': 2}
1
  • +1 properties! Cant get enough of them. May 27 '10 at 19:37
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