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
740
votes

Chaining comparison operators:

>>> x = 5
>>> 1 < x < 10
True
>>> 10 < x < 20 
False
>>> x < 10 < x*10 < 100
True
>>> 10 > x <= 9
True
>>> 5 == x > 4
True

In case you're thinking it's doing 1 < x, which comes out as True, and then comparing True < 10, which is also True, then no, that's really not what happens (see the last example.) It's really translating into 1 < x and x < 10, and x < 10 and 10 < x * 10 and x*10 < 100, but with less typing and each term is only evaluated once.

15
  • 121
    That's very helpful. It should be standard for all languages. Sadly, it isn't. Oct 17 '08 at 2:23
  • 19
    This applies to other comparison operators as well, which is why people are sometimes surprised why code like (5 in [5] is True) is False (but it's unpythonic to explicitly test against booleans like that to begin with).
    – Miles
    Mar 2 '09 at 18:35
  • 2
    They should really really be in all languages, I totally agree. Jul 9 '09 at 20:03
  • 19
    Good but watch out for equal prcedence, like 'in' and '='. 'A in B == C in D' means '(A in B) and (B == C) and (C in D)' which might be unexpected. Feb 10 '10 at 10:28
  • 15
    Azafe: Lisp's comparisons naturally work this way. It's not a special case because there's no other (reasonable) way to interpret (< 1 x 10). You can even apply them to single arguments, like (= 10): cs.cmu.edu/Groups/AI/html/hyperspec/HyperSpec/Body/…
    – Ken
    May 26 '10 at 20:31
512
votes

Get the python regex parse tree to debug your regex.

Regular expressions are a great feature of python, but debugging them can be a pain, and it's all too easy to get a regex wrong.

Fortunately, python can print the regex parse tree, by passing the undocumented, experimental, hidden flag re.DEBUG (actually, 128) to re.compile.

>>> re.compile("^\[font(?:=(?P<size>[-+][0-9]{1,2}))?\](.*?)[/font]",
    re.DEBUG)
at at_beginning
literal 91
literal 102
literal 111
literal 110
literal 116
max_repeat 0 1
  subpattern None
    literal 61
    subpattern 1
      in
        literal 45
        literal 43
      max_repeat 1 2
        in
          range (48, 57)
literal 93
subpattern 2
  min_repeat 0 65535
    any None
in
  literal 47
  literal 102
  literal 111
  literal 110
  literal 116

Once you understand the syntax, you can spot your errors. There we can see that I forgot to escape the [] in [/font].

Of course you can combine it with whatever flags you want, like commented regexes:

>>> re.compile("""
 ^              # start of a line
 \[font         # the font tag
 (?:=(?P<size>  # optional [font=+size]
 [-+][0-9]{1,2} # size specification
 ))?
 \]             # end of tag
 (.*?)          # text between the tags
 \[/font\]      # end of the tag
 """, re.DEBUG|re.VERBOSE|re.DOTALL)
3
  • 3
    Except parsing HTML using regular expression is slow and painful. Even the built-in 'html' parser module doesn't use regexes to get the work done. And if the html module doesn't please you, there is plenty of XML/HTML parser modules that does the job without having to reinvent the wheel.
    – BatchyX
    Mar 26 '10 at 21:59
  • A link to documentation on the output syntax would be great.
    – Personman
    Apr 15 '10 at 16:13
  • 1
    This should be an official part of Python, not experimental... RegEx is always tricky and being able to trace what's happening is really helpful.
    – Cahit
    Jul 14 '10 at 23:27
460
votes

enumerate

Wrap an iterable with enumerate and it will yield the item along with its index.

For example:


>>> a = ['a', 'b', 'c', 'd', 'e']
>>> for index, item in enumerate(a): print index, item
...
0 a
1 b
2 c
3 d
4 e
>>>

References:

16
  • 56
    I'm surprised this isn't covered routinely in tutorials talking about python lists.
    – Draemon
    Nov 27 '08 at 4:06
  • 45
    And all this time I was coding this way: for i in range(len(a)): ... and then using a[i] to get the current item. Jun 22 '09 at 16:35
  • 4
    @Berry Tsakala: To my knowledge, it has not been deprecated.
    – JAB
    Jul 27 '09 at 17:36
  • 23
    Holy crap this is awesome. for i in xrange(len(a)): has always been my least favorite python idiom.
    – Personman
    Apr 15 '10 at 16:22
  • 15
    enumerate can start from arbitrary index, not necessary 0. Example: 'for i, item in enumerate(list, start=1): print i, item' will start enumeration from 1, not 0. Aug 22 '11 at 11:00
419
votes

Creating generators objects

If you write

x=(n for n in foo if bar(n))

you can get out the generator and assign it to x. Now it means you can do

for n in x:

The advantage of this is that you don't need intermediate storage, which you would need if you did

x = [n for n in foo if bar(n)]

In some cases this can lead to significant speed up.

You can append many if statements to the end of the generator, basically replicating nested for loops:

>>> n = ((a,b) for a in range(0,2) for b in range(4,6))
>>> for i in n:
...   print i 

(0, 4)
(0, 5)
(1, 4)
(1, 5)
8
  • You could also use a nested list comprehension for that, yes?
    – shapr
    May 5 '09 at 16:53
  • 54
    Of particular note is the memory overhead savings. Values are computed on-demand, so you never have the entire result of the list comprehension in memory. This is particularly desirable if you later iterate over only part of the list comprehension.
    – saffsd
    May 17 '09 at 2:41
  • 19
    This is not particularly "hidden" imo, but also worth noting is the fact that you could not rewind a generator object, whereas you can reiterate over a list any number of times.
    – susmits
    Apr 15 '10 at 16:26
  • 13
    The "no rewind" feature of generators can cause some confusion. Specifically, if you print a generator's contents for debugging, then use it later to process the data, it doesn't work. The data is produced, consumed by print(), then is not available for the normal processing. This doesn't apply to list comprehensions, since they're completely stored in memory. May 28 '10 at 16:01
  • 4
    Similar (dup?) answer: stackoverflow.com/questions/101268/hidden-features-of-python/… Note, however, that the answer I linked here mentions a REALLY GOOD presentation about the power of generators. You really should check it out. Aug 4 '10 at 20:21
353
votes

iter() can take a callable argument

For instance:

def seek_next_line(f):
    for c in iter(lambda: f.read(1),'\n'):
        pass

The iter(callable, until_value) function repeatedly calls callable and yields its result until until_value is returned.

2
  • As a newbie to python, can you please explain why the lambda keyword is necessary here?
    – SiegeX
    Aug 12 '11 at 20:29
  • @SiegeX without the lambda, f.read(1) would be evaluated (returning a string) before being passed to the iter function. Instead, the lambda creates an anonymous function and passes that to iter.
    – jmilloy
    Dec 31 '11 at 16:43
339
votes

Be careful with mutable default arguments

>>> def foo(x=[]):
...     x.append(1)
...     print x
... 
>>> foo()
[1]
>>> foo()
[1, 1]
>>> foo()
[1, 1, 1]

Instead, you should use a sentinel value denoting "not given" and replace with the mutable you'd like as default:

>>> def foo(x=None):
...     if x is None:
...         x = []
...     x.append(1)
...     print x
>>> foo()
[1]
>>> foo()
[1]
12
  • 39
    That's definitely one of the more nasty hidden features. I've run into it from time to time. Sep 23 '08 at 17:42
  • 77
    I found this a lot easier to understand when I learned that the default arguments live in a tuple that's an attribute of the function, e.g. foo.func_defaults. Which, being a tuple, is immutable. Nov 5 '09 at 20:43
  • 2
    @grayger: As the def statement is executed its arguments are evaluated by the interpreter. This creates (or rebinds) a name to a code object (the suite of the function). However, the default arguments are instantiated as objects at the time of definition. This is true of any time of defaulted object, but only significant (exposing visible semantics) when the object is mutable. There's no way of re-binding that default argument name in the function's closure although it can obviously be over-ridden for any call or the whole function can be re-defined).
    – Jim Dennis
    Jun 24 '10 at 4:20
  • 3
    @Robert of course the arguments tuple might be immutable, but the objects it point to are not necessarily immutable.
    – poolie
    Jul 22 '10 at 14:59
  • 16
    One quick hack to make your initialization a little shorter: x = x or []. You can use that instead of the 2 line if statement. Aug 27 '10 at 2:58
317
votes

Sending values into generator functions. For example having this function:

def mygen():
    """Yield 5 until something else is passed back via send()"""
    a = 5
    while True:
        f = (yield a) #yield a and possibly get f in return
        if f is not None: 
            a = f  #store the new value

You can:

>>> g = mygen()
>>> g.next()
5
>>> g.next()
5
>>> g.send(7)  #we send this back to the generator
7
>>> g.next() #now it will yield 7 until we send something else
7
7
  • Agreed. Let's treat this as a nasty example of a hidden feature of Python :) Sep 19 '08 at 13:41
  • 89
    In other languages, I believe this magical device is called a "variable".
    – finnw
    May 5 '09 at 17:49
  • 5
    coroutines should be coroutines and genenerator should be themselves too, without mixing. Mega-great link and talk and examples about this here: dabeaz.com/coroutines Aug 23 '09 at 21:39
  • 31
    @finnw: the example implements something that's similar to a variable. However, the feature could be used in many other ways ... unlike a variable. It should also be obvious that similar semantics can be implemented using objects (a class implemting Python's call method, in particular).
    – Jim Dennis
    Jun 24 '10 at 4:07
  • 4
    This is too trivial an example for people who've never seen (and probably won't understand) co-routines. The example that implements the running average without risk of sum variable overflow is a good one. Jun 11 '11 at 6:16
312
votes

If you don't like using whitespace to denote scopes, you can use the C-style {} by issuing:

from __future__ import braces
21
  • 122
    That's evil. :) Sep 22 '08 at 4:32
  • 37
    >>> from __future__ import braces File "<stdin>", line 1 SyntaxError: not a chance :P Sep 22 '08 at 19:55
  • 40
    that's blasphemy! Mar 22 '09 at 13:24
  • 335
    I think that we may have a syntactical mistake here, shouldn't that be "from __past__ import braces"?
    – Bill K
    Apr 29 '09 at 21:26
  • 47
    from __cruft__ import braces Jun 18 '09 at 7:16
305
votes

The step argument in slice operators. For example:

a = [1,2,3,4,5]
>>> a[::2]  # iterate over the whole list in 2-increments
[1,3,5]

The special case x[::-1] is a useful idiom for 'x reversed'.

>>> a[::-1]
[5,4,3,2,1]
13
  • 31
    much clearer, in my opinion, is the reversed() function. >>> list(reversed(range(4))) [3, 2, 1, 0] Jan 2 '09 at 18:35
  • 3
    then how to write "this i a string"[::-1] in a better way? reversed doesnt seem to help Jun 21 '09 at 20:56
  • 24
    The problem with reversed() is that it returns an iterator, so if you want to preserve the type of the reversed sequence (tuple, string, list, unicode, user types...), you need an additional step to convert it back. Jun 24 '09 at 14:08
  • 6
    def reverse_string(string): return string[::-1]
    – pi.
    Feb 3 '10 at 9:42
  • 4
    @pi I think if one knows enough to define reverse_string as you have then one can leave the [::-1] in your code and be comfortable with its meaning and the feeling it is appropriate. May 28 '10 at 6:17
289
votes

Decorators

Decorators allow to wrap a function or method in another function that can add functionality, modify arguments or results, etc. You write decorators one line above the function definition, beginning with an "at" sign (@).

Example shows a print_args decorator that prints the decorated function's arguments before calling it:

>>> def print_args(function):
>>>     def wrapper(*args, **kwargs):
>>>         print 'Arguments:', args, kwargs
>>>         return function(*args, **kwargs)
>>>     return wrapper

>>> @print_args
>>> def write(text):
>>>     print text

>>> write('foo')
Arguments: ('foo',) {}
foo
13
  • 54
    When defining decorators, I'd recommend decorating the decorator with @decorator. It creates a decorator that preserves a functions signature when doing introspection on it. More info here: phyast.pitt.edu/~micheles/python/documentation.html
    – sirwart
    Sep 22 '08 at 15:53
  • 45
    How is this a hidden feature?
    – Vetle
    Oct 2 '08 at 13:52
  • 50
    Well, it's not present in most simple Python tutorials, and I stumbled upon it a long time after I started using Python. That is what I would call a hidden feature, just about the same as other top posts here.
    – DzinX
    Oct 3 '08 at 6:51
  • 16
    vetler, the questions asks for "lesser-known but useful features of the Python programming language." How do you measure 'lesser-known but useful features'? I mean how are any of these responses hidden features?
    – Johnd
    May 23 '09 at 21:14
  • 4
    @vetler Most of the thing here are hardly "hidden". Apr 6 '10 at 15:33
288
votes

The for...else syntax (see http://docs.python.org/ref/for.html )

for i in foo:
    if i == 0:
        break
else:
    print("i was never 0")

The "else" block will be normally executed at the end of the for loop, unless the break is called.

The above code could be emulated as follows:

found = False
for i in foo:
    if i == 0:
        found = True
        break
if not found: 
    print("i was never 0")
22
  • 218
    I think the for/else syntax is awkward. It "feels" as if the else clause should be executed if the body of the loop is never executed.
    – codeape
    Oct 10 '08 at 6:44
  • 14
    ah. Never saw that one! But I must say it is a bit of a misnomer. Who would expect the else block to execute only if break never does? I agree with codeape: It looks like else is entered for empty foos. Oct 13 '08 at 17:31
  • 52
    seems like the keyword should be finally, not else
    – Jiaaro
    Jun 25 '09 at 16:31
  • 21
    Except finally is already used in a way where that suite is always executed.
    – Roger Pate
    Jun 27 '09 at 22:34
  • 7
    Should definately not be 'else'. Maybe 'then' or something, and then 'else' for when the loop was never executed.
    – Tor Valamo
    Jan 10 '10 at 16:26
258
votes

From 2.5 onwards dicts have a special method __missing__ that is invoked for missing items:

>>> class MyDict(dict):
...  def __missing__(self, key):
...   self[key] = rv = []
...   return rv
... 
>>> m = MyDict()
>>> m["foo"].append(1)
>>> m["foo"].append(2)
>>> dict(m)
{'foo': [1, 2]}

There is also a dict subclass in collections called defaultdict that does pretty much the same but calls a function without arguments for not existing items:

>>> from collections import defaultdict
>>> m = defaultdict(list)
>>> m["foo"].append(1)
>>> m["foo"].append(2)
>>> dict(m)
{'foo': [1, 2]}

I recommend converting such dicts to regular dicts before passing them to functions that don't expect such subclasses. A lot of code uses d[a_key] and catches KeyErrors to check if an item exists which would add a new item to the dict.

6
  • 10
    I prefer using setdefault. m={} ; m.setdefault('foo',1)
    – grayger
    Dec 3 '09 at 3:03
  • 22
    @grayger meant this m={}; m.setdefault('foo', []).append(1). May 28 '10 at 18:53
  • 1
    There are however cases where passing the defaultdict is very handy. The function may for example iter over the value and it works for undefined keys without extra code, as the default is an empty list.
    – Marian
    May 29 '10 at 2:22
  • 3
    defaultdict is better in some circumstances than setdefault, since it doesn't create the default object unless the key is missing. setdefault creates it whether it's missing or not. If your default object is expensive to create this can be a performance hit - I got a decent speedup out of one program simply by changing all setdefault calls.
    – Whatang
    Feb 12 '11 at 17:56
  • 2
    defaultdict is also more powerful than the setdefault method in other cases. For example, for a counter—dd = collections.defaultdict(int) ... dd[k] += 1 vs d.setdefault(k, 0) += 1. Apr 10 '11 at 21:56
247
votes

In-place value swapping

>>> a = 10
>>> b = 5
>>> a, b
(10, 5)

>>> a, b = b, a
>>> a, b
(5, 10)

The right-hand side of the assignment is an expression that creates a new tuple. The left-hand side of the assignment immediately unpacks that (unreferenced) tuple to the names a and b.

After the assignment, the new tuple is unreferenced and marked for garbage collection, and the values bound to a and b have been swapped.

As noted in the Python tutorial section on data structures,

Note that multiple assignment is really just a combination of tuple packing and sequence unpacking.

8
  • 1
    Does this use more real memory than the traditional way? I would guess do since you are creating a tuple, instead of just one swap variable
    – Nathan
    Jun 14 '10 at 14:24
  • 75
    It doesn't use more memory. It uses less.. I just wrote it both ways, and de-compiled the bytecode.. the compiler optimizes, as you'd hope it would. dis results showed it's setting up the vars, and then ROT_TWOing. ROT_TWO means 'swap the two top-most stack vars'... Pretty snazzy, actually.
    – royal
    Jul 13 '10 at 22:41
  • 5
    You also inadvertently point out another nice feature of Python, which is that you can implicitly make a tuple of items just by separating them by commas.
    – asmeurer
    Dec 28 '10 at 5:12
  • 3
    Dana the Sane: assignment in Python is a statement, not an expression, so that expression would be invalid if = had higher priority (i.e. it was interpreted as a, (b = b), a).
    – hbn
    Jan 23 '11 at 21:27
  • 5
    This is the least hidden feature I've read here. Nice, but explicitly described in every Python tutorial. May 25 '11 at 16:56
235
votes

Readable regular expressions

In Python you can split a regular expression over multiple lines, name your matches and insert comments.

Example verbose syntax (from Dive into Python):

>>> pattern = """
... ^                   # beginning of string
... M{0,4}              # thousands - 0 to 4 M's
... (CM|CD|D?C{0,3})    # hundreds - 900 (CM), 400 (CD), 0-300 (0 to 3 C's),
...                     #            or 500-800 (D, followed by 0 to 3 C's)
... (XC|XL|L?X{0,3})    # tens - 90 (XC), 40 (XL), 0-30 (0 to 3 X's),
...                     #        or 50-80 (L, followed by 0 to 3 X's)
... (IX|IV|V?I{0,3})    # ones - 9 (IX), 4 (IV), 0-3 (0 to 3 I's),
...                     #        or 5-8 (V, followed by 0 to 3 I's)
... $                   # end of string
... """
>>> re.search(pattern, 'M', re.VERBOSE)

Example naming matches (from Regular Expression HOWTO)

>>> p = re.compile(r'(?P<word>\b\w+\b)')
>>> m = p.search( '(((( Lots of punctuation )))' )
>>> m.group('word')
'Lots'

You can also verbosely write a regex without using re.VERBOSE thanks to string literal concatenation.

>>> pattern = (
...     "^"                 # beginning of string
...     "M{0,4}"            # thousands - 0 to 4 M's
...     "(CM|CD|D?C{0,3})"  # hundreds - 900 (CM), 400 (CD), 0-300 (0 to 3 C's),
...                         #            or 500-800 (D, followed by 0 to 3 C's)
...     "(XC|XL|L?X{0,3})"  # tens - 90 (XC), 40 (XL), 0-30 (0 to 3 X's),
...                         #        or 50-80 (L, followed by 0 to 3 X's)
...     "(IX|IV|V?I{0,3})"  # ones - 9 (IX), 4 (IV), 0-3 (0 to 3 I's),
...                         #        or 5-8 (V, followed by 0 to 3 I's)
...     "$"                 # end of string
... )
>>> print pattern
"^M{0,4}(CM|CD|D?C{0,3})(XC|XL|L?X{0,3})(IX|IV|V?I{0,3})$"
9
  • 7
    I don't know if I'd really consider that a Python feature, most RE engines have a verbose option.
    – Jeremy
    Sep 21 '08 at 20:44
  • 18
    Yes, but because you can't do it in grep or in most editors, a lot of people don't know it's there. The fact that other languages have an equivalent feature doesn't make it not a useful and little known feature of python
    – Mark Baker
    Oct 17 '08 at 9:08
  • 7
    In a large project with lots of optimized regular expressions (read: optimized for machine but not human beings), I bit the bullet and converted all of them to verbose syntax. Now, introducing new developers to projects is much easier. From now on we enforce verbose REs on every project. Mar 22 '09 at 13:18
  • I'd rather just say: hundreds = "(CM|CD|D?C{0,3})" # 900 (CM), 400 (CD), etc. The language already has a way to give things names, a way to add comments, and a way to combine strings. Why use special library syntax here for things the language already does perfectly well? It seems to go directly against Perlis' Epigram 9.
    – Ken
    May 5 '09 at 18:19
  • 3
    @Ken: a regex may not always be directly in the source, it could be read from settings or a config file. Allowing comments or just additional whitespace (for readability) can be a great help.
    – Roger Pate
    Jun 27 '09 at 22:30
222
votes

Function argument unpacking

You can unpack a list or a dictionary as function arguments using * and **.

For example:

def draw_point(x, y):
    # do some magic

point_foo = (3, 4)
point_bar = {'y': 3, 'x': 2}

draw_point(*point_foo)
draw_point(**point_bar)

Very useful shortcut since lists, tuples and dicts are widely used as containers.

13
  • 27
    * is also known as the splat operator
    – Gabriel
    Jul 15 '10 at 7:03
  • 3
    I like this feature, but pylint doesn't sadly. Mar 25 '11 at 14:46
  • 5
    pylint's advice is not a law. The other way, apply(callable, arg_seq, arg_map), is deprecated since 2.3. May 4 '11 at 11:50
  • 1
    pylint's advice may not be law, but it's damn good advice. Debugging code that over-indulges in stuff like this is pure hell. As the original poster notes, this is a useful shortcut.
    – Andrew
    Nov 21 '11 at 19:40
  • 2
    I saw this being used in code once and wondered what it did. Unfortunately it's hard to google for "Python **" Jan 13 '12 at 23:33
205
votes

ROT13 is a valid encoding for source code, when you use the right coding declaration at the top of the code file:

#!/usr/bin/env python
# -*- coding: rot13 -*-

cevag "Uryyb fgnpxbiresybj!".rapbqr("rot13")
9
  • 10
    Great! Notice how byte strings are taken literally, but unicode strings are decoded: try cevag h"Uryyb fgnpxbiresybj!" Oct 4 '09 at 1:12
  • 12
    unfortunately it is removed from py3k
    – mykhal
    Dec 19 '09 at 18:33
  • 9
    This is good for bypassing antivirus. May 13 '10 at 20:37
  • 96
    That has nothing to do with the encoding, it is just Python written in Welsh. :-P Jul 14 '10 at 9:45
  • 33
    Ph'nglui mglw'nafh Cthulhu R'lyeh wgah'nagl fhtagn! Aug 26 '10 at 22:08
183
votes

Creating new types in a fully dynamic manner

>>> NewType = type("NewType", (object,), {"x": "hello"})
>>> n = NewType()
>>> n.x
"hello"

which is exactly the same as

>>> class NewType(object):
>>>     x = "hello"
>>> n = NewType()
>>> n.x
"hello"

Probably not the most useful thing, but nice to know.

Edit: Fixed name of new type, should be NewType to be the exact same thing as with class statement.

Edit: Adjusted the title to more accurately describe the feature.

8
  • 8
    This has a lot of potential for usefulness, e.g., JIT ORMs Sep 22 '08 at 18:44
  • 8
    I use it to generate HTML-Form classes based on a dynamic input. Very nice!
    – pi.
    Mar 18 '09 at 16:00
  • 15
    Note: all classes are created at runtime. So you can use the 'class' statement within a conditional, or within a function (very useful for creating families of classes or classes that act as closures). The improvement that 'type' brings is the ability to neatly define a dynamically generated set of attributes (or bases). Jan 1 '10 at 14:02
  • 1
    You can also create anonymous types with a blank string like: type('', (object,), {'x': 'blah'})
    – jmhmccr
    Jun 16 '11 at 23:49
  • 3
    Could be very useful for code injections. Jul 18 '11 at 8:49
179
votes

Context managers and the "with" Statement

Introduced in PEP 343, a context manager is an object that acts as a run-time context for a suite of statements.

Since the feature makes use of new keywords, it is introduced gradually: it is available in Python 2.5 via the __future__ directive. Python 2.6 and above (including Python 3) has it available by default.

I have used the "with" statement a lot because I think it's a very useful construct, here is a quick demo:

from __future__ import with_statement

with open('foo.txt', 'w') as f:
    f.write('hello!')

What's happening here behind the scenes, is that the "with" statement calls the special __enter__ and __exit__ methods on the file object. Exception details are also passed to __exit__ if any exception was raised from the with statement body, allowing for exception handling to happen there.

What this does for you in this particular case is that it guarantees that the file is closed when execution falls out of scope of the with suite, regardless if that occurs normally or whether an exception was thrown. It is basically a way of abstracting away common exception-handling code.

Other common use cases for this include locking with threads and database transactions.

6
  • 3
    I wouldn't approve a code review which imported anything from future. The features are more cute than useful, and usually they just end up confusing Python newcomers. May 11 '09 at 4:36
  • 6
    Yes, such "cute" features as nested scopes and generators are better left to those who know what they're doing. And anyone who wants to be compatible with future versions of Python. For nested scopes and generators, "future versions" of Python means 2.2 and 2.5, respectively. For the with statement, "future versions" of Python means 2.6.
    – Chris B.
    Jun 17 '09 at 18:33
  • 10
    This may go without saying, but with python v2.6+, you no longer need to import from future. with is now a first class keyword. Nov 23 '09 at 14:28
  • 25
    In 2.7 you can have multiple withs :) with open('filea') as filea and open('fileb') as fileb: ... Jul 14 '10 at 21:50
  • 5
    @Austin i could not get that syntax to work on 2.7. this however did work: with open('filea') as filea, open('fileb') as fileb: ...
    – wim
    Jul 14 '11 at 5:29
168
votes

Dictionaries have a get() method

Dictionaries have a 'get()' method. If you do d['key'] and key isn't there, you get an exception. If you do d.get('key'), you get back None if 'key' isn't there. You can add a second argument to get that item back instead of None, eg: d.get('key', 0).

It's great for things like adding up numbers:

sum[value] = sum.get(value, 0) + 1

4
  • 39
    also, checkout the setdefault method. Oct 13 '08 at 17:29
  • 27
    also, checkout collections.defaultdict class.
    – jfs
    Nov 23 '08 at 10:35
  • 8
    If you are using Python 2.7 or later, or 3.1 or later, check out the Counter class in the collections module. docs.python.org/library/collections.html#collections.Counter Oct 12 '10 at 1:33
  • Oh man, this whole time I've been doing get(key, None). Had no idea that None was provided by default. Oct 19 '11 at 16:41
152
votes

Descriptors

They're the magic behind a whole bunch of core Python features.

When you use dotted access to look up a member (eg, x.y), Python first looks for the member in the instance dictionary. If it's not found, it looks for it in the class dictionary. If it finds it in the class dictionary, and the object implements the descriptor protocol, instead of just returning it, Python executes it. A descriptor is any class that implements the __get__, __set__, or __delete__ methods.

Here's how you'd implement your own (read-only) version of property using descriptors:

class Property(object):
    def __init__(self, fget):
        self.fget = fget

    def __get__(self, obj, type):
        if obj is None:
            return self
        return self.fget(obj)

and you'd use it just like the built-in property():

class MyClass(object):
    @Property
    def foo(self):
        return "Foo!"

Descriptors are used in Python to implement properties, bound methods, static methods, class methods and slots, amongst other things. Understanding them makes it easy to see why a lot of things that previously looked like Python 'quirks' are the way they are.

Raymond Hettinger has an excellent tutorial that does a much better job of describing them than I do.

4
  • This is a duplicate of decorators, isn't it!? (stackoverflow.com/questions/101268/… )
    – gecco
    Oct 20 '11 at 19:18
  • 2
    no, decorators and descriptors are totally different things, though in the example code, i'm creating a descriptor decorator. :) Oct 20 '11 at 23:11
  • 1
    The other way to do this is with a lambda: foo = property(lambda self: self.__foo) Nov 2 '11 at 2:50
  • 1
    @PetePeterson Yes, but property itself is implemented with descriptors, which was the point of my post. Nov 2 '11 at 3:40
142
votes

Conditional Assignment

x = 3 if (y == 1) else 2

It does exactly what it sounds like: "assign 3 to x if y is 1, otherwise assign 2 to x". Note that the parens are not necessary, but I like them for readability. You can also chain it if you have something more complicated:

x = 3 if (y == 1) else 2 if (y == -1) else 1

Though at a certain point, it goes a little too far.

Note that you can use if ... else in any expression. For example:

(func1 if y == 1 else func2)(arg1, arg2) 

Here func1 will be called if y is 1 and func2, otherwise. In both cases the corresponding function will be called with arguments arg1 and arg2.

Analogously, the following is also valid:

x = (class1 if y == 1 else class2)(arg1, arg2)

where class1 and class2 are two classes.

13
  • 29
    The assignment is not the special part. You could just as easily do something like: return 3 if (y == 1) else 2.
    – Brian
    Nov 9 '08 at 5:39
  • 25
    That alternate way is the first time I've seen obfuscated Python. Jun 9 '09 at 4:18
  • 3
    Kylebrooks: It doesn't in that case, boolean operators short circuit. It will only evaluate 2 if bool(3) == False.
    – RoadieRich
    Jul 12 '09 at 0:23
  • 15
    this backwards-style coding confusing me. something like x = ((y == 1) ? 3 : 2) makes more sense to me
    – mpen
    Oct 20 '09 at 7:12
  • 13
    I feel just the opposite of @Mark, C-style ternary operators have always confused me, is the right side or the middle what gets evaluated on a false condition? I much prefer Python's ternary syntax. Dec 3 '09 at 16:51
141
votes

Doctest: documentation and unit-testing at the same time.

Example extracted from the Python documentation:

def factorial(n):
    """Return the factorial of n, an exact integer >= 0.

    If the result is small enough to fit in an int, return an int.
    Else return a long.

    >>> [factorial(n) for n in range(6)]
    [1, 1, 2, 6, 24, 120]
    >>> factorial(-1)
    Traceback (most recent call last):
        ...
    ValueError: n must be >= 0

    Factorials of floats are OK, but the float must be an exact integer:
    """

    import math
    if not n >= 0:
        raise ValueError("n must be >= 0")
    if math.floor(n) != n:
        raise ValueError("n must be exact integer")
    if n+1 == n:  # catch a value like 1e300
        raise OverflowError("n too large")
    result = 1
    factor = 2
    while factor <= n:
        result *= factor
        factor += 1
    return result

def _test():
    import doctest
    doctest.testmod()    

if __name__ == "__main__":
    _test()
10
  • 6
    Doctests are certainly cool, but I really dislike all the cruft you have to type to test that something should raise an exception
    – TM.
    Mar 10 '09 at 22:55
  • 60
    Doctests are overrated and pollute the documentation. How often do you test a standalone function without any setUp() ? May 11 '09 at 4:34
  • 2
    who says you can't have setup in a doctest? write a function that generates the context and returns locals() then in your doctest do locals().update(setUp()) =D
    – Jiaaro
    Dec 2 '09 at 17:27
  • 12
    If a standalone function requires a setUp, chances are high that it should be decoupled from some unrelated stuff or put into a class. Class doctest namespace can then be re-used in class method doctests, so it's a bit like setUp, only DRY and readable. Apr 17 '10 at 14:38
  • 4
    "How often do you test a standalone function" - lots. I find doctests often emerge naturally from the design process when I am deciding on facades.
    – Gregg Lind
    Feb 11 '11 at 4:45
138
votes

Named formatting

% -formatting takes a dictionary (also applies %i/%s etc. validation).

>>> print "The %(foo)s is %(bar)i." % {'foo': 'answer', 'bar':42}
The answer is 42.

>>> foo, bar = 'question', 123

>>> print "The %(foo)s is %(bar)i." % locals()
The question is 123.

And since locals() is also a dictionary, you can simply pass that as a dict and have % -substitions from your local variables. I think this is frowned upon, but simplifies things..

New Style Formatting

>>> print("The {foo} is {bar}".format(foo='answer', bar=42))
11
  • 60
    Will be phased out and eventually replaced with string's format() method.
    – Constantin
    Oct 5 '08 at 9:41
  • 3
    Named formatting is very useful for translators as they tend to just see the format string without the variable names for context
    – pixelbeat
    Oct 12 '08 at 22:45
  • 2
    Appears to work in python 3.0.1 (needed to add parenttheses around print call). Jul 1 '09 at 11:32
  • 9
    a hash, huh? I see where you came from.
    – shylent
    Nov 14 '09 at 13:45
  • 11
    %s formatting will not be phased out. str.format() is certainly more pythonic, however is actually 10x's slower for simple string replacement. My belief is %s formatting is still best practice. Jul 14 '10 at 12:34
132
votes

To add more python modules (espcially 3rd party ones), most people seem to use PYTHONPATH environment variables or they add symlinks or directories in their site-packages directories. Another way, is to use *.pth files. Here's the official python doc's explanation:

"The most convenient way [to modify python's search path] is to add a path configuration file to a directory that's already on Python's path, usually to the .../site-packages/ directory. Path configuration files have an extension of .pth, and each line must contain a single path that will be appended to sys.path. (Because the new paths are appended to sys.path, modules in the added directories will not override standard modules. This means you can't use this mechanism for installing fixed versions of standard modules.)"

1
  • 1
    I never made the connection between that .pth file in the site-packages directory from setuptools and this idea. awesome.
    – dave paola
    Jul 14 '10 at 2:07
122
votes

Exception else clause:

try:
  put_4000000000_volts_through_it(parrot)
except Voom:
  print "'E's pining!"
else:
  print "This parrot is no more!"
finally:
  end_sketch()

The use of the else clause is better than adding additional code to the try clause because it avoids accidentally catching an exception that wasn’t raised by the code being protected by the try ... except statement.

See http://docs.python.org/tut/node10.html

7
  • 8
    +1 this is awesome. If the try block executes without entering any exception blocks, then the else block is entered. And then of course, the finally block is executed Sep 22 '10 at 4:49
  • I finally get why the 'else' is there! Thanks.
    – taynaron
    Dec 7 '10 at 18:26
  • It would make more sense to use continue, but I guess it's already taken ;) Dec 16 '10 at 17:58
  • Note that on older versions of Python2 you can't have both else: and finally: clauses for the same try: block
    – Kevin Horn
    May 26 '11 at 22:49
  • 1
    @Paweł Prażak, as Kevin Horn mentioned, this syntax was introduced after the initial release of Python and adding new reserved keywords to existing language is always problematic. That's why an existing keyword is usually reused (c.f. "auto" in recent C++ standard).
    – Constantin
    Oct 7 '11 at 10:28
114
votes

Re-raising exceptions:

# Python 2 syntax
try:
    some_operation()
except SomeError, e:
    if is_fatal(e):
        raise
    handle_nonfatal(e)

# Python 3 syntax
try:
    some_operation()
except SomeError as e:
    if is_fatal(e):
        raise
    handle_nonfatal(e)

The 'raise' statement with no arguments inside an error handler tells Python to re-raise the exception with the original traceback intact, allowing you to say "oh, sorry, sorry, I didn't mean to catch that, sorry, sorry."

If you wish to print, store or fiddle with the original traceback, you can get it with sys.exc_info(), and printing it like Python would is done with the 'traceback' module.

6
  • Sorry but this is a well known and common feature of almost all languages.
    – Lucas S.
    Sep 19 '08 at 14:04
  • 6
    Note the italicized text. Some people will do raise e instead, which doesn't preserve the original traceback.
    – habnabit
    Jan 27 '09 at 3:14
  • 12
    Maybe more magical, exc_info = sys.exc_info(); raise exc_info[0], exc_info[1], exc_info[2] is equivalent to this, but you can change those values around (e.g., change the exception type or message)
    – ianb
    May 5 '09 at 20:27
  • 3
    @Lucas S. Well, I didn't know it, and I'm glad it's written here.
    – e-satis
    Jun 23 '10 at 12:32
  • i may be showing my youth here, but i have always used the python 3 syntax in python 2.7 with no issue
    – wim
    Jul 14 '11 at 5:49
106
votes

Main messages :)

import this
# btw look at this module's source :)

De-cyphered:

The Zen of Python, by Tim Peters

Beautiful is better than ugly.
Explicit is better than implicit.
Simple is better than complex.
Complex is better than complicated.
Flat is better than nested.
Sparse is better than dense.
Readability counts.
Special cases aren't special enough to break the rules.
Although practicality beats purity.
Errors should never pass silently.
Unless explicitly silenced.
In the face of ambiguity, refuse the temptation to guess. There should be one-- and preferably only one --obvious way to do it.
Although that way may not be obvious at first unless you're Dutch.
Now is better than never.
Although never is often better than right now.
If the implementation is hard to explain, it's a bad idea.
If the implementation is easy to explain, it may be a good idea.
Namespaces are one honking great idea -- let's do more of those!

12
105
votes

Interactive Interpreter Tab Completion

try:
    import readline
except ImportError:
    print "Unable to load readline module."
else:
    import rlcompleter
    readline.parse_and_bind("tab: complete")


>>> class myclass:
...    def function(self):
...       print "my function"
... 
>>> class_instance = myclass()
>>> class_instance.<TAB>
class_instance.__class__   class_instance.__module__
class_instance.__doc__     class_instance.function
>>> class_instance.f<TAB>unction()

You will also have to set a PYTHONSTARTUP environment variable.

7
  • 2
    This is a very useful feature. So much so I've a simple script to enable it (plus a couple of other introspection enhancements): pixelbeat.org/scripts/inpy
    – pixelbeat
    Oct 12 '08 at 22:49
  • 43
    IPython gives you this plus tons of other neat stuff
    – akaihola
    Jan 10 '09 at 3:47
  • This would have been more useful at pdb prompt than the regular python prompt (as IPython serves that purpose anyway). However, this doesn't seem to work at the pdb prompt, probably because pdb binds its own for tab (which is less useful). I tried calling parse_and_bind() at the pdb prompt, but it still didn't work. The alternative of getting pdb prompt with IPython is more work so I tend to not use it.
    – haridsv
    Apr 1 '10 at 22:46
  • 2
    @haridsv -- easy_install ipdb -- then you can use import ipdb; ipdb.set_trace() May 20 '10 at 22:03
  • 1
    On osx [and i imagine other systems which use libedit] you have to do readline.parse_and_bind ("bind ^I rl_complete")
    – Foo Bah
    Feb 10 '11 at 15:20
91
votes

Nested list comprehensions and generator expressions:

[(i,j) for i in range(3) for j in range(i) ]    
((i,j) for i in range(4) for j in range(i) )

These can replace huge chunks of nested-loop code.

6
  • "for j in range(i)" - is this a typo? Normally you'd want fixed ranges for i and j. If you're accessing a 2d array, you'd miss out on half your elements. Mar 29 '09 at 2:27
  • I'm not accessing any arrays in this example. The only purpose of this code is to show that the expressions from the inner ranges can access those from the outer ones. The by-product is a list of pairs (x,y) such that 4>x>y>0. Mar 30 '09 at 8:23
  • 2
    sorta like double integration in calculus, or double summation.
    – Yoo
    Sep 29 '09 at 20:57
  • 22
    Key point to remember here (which took me a long time to realize) is that the order of the for statements are to be written in the order you'd expect them to be written in a standard for-loop, from the outside inwards.
    – sykora
    Jan 26 '10 at 11:17
  • 2
    To add on to sykora's comment: imagine you're starting with a stack of fors and ifs with yield x inside. To convert that to a generator expression, move x first, delete all the colons (and the yield), and surround the whole thing in parentheses. To make a list comprehension instead, replace the outer parens with square brackets.
    – Ken Arnold
    Jun 14 '11 at 1:30
91
votes

Operator overloading for the set builtin:

>>> a = set([1,2,3,4])
>>> b = set([3,4,5,6])
>>> a | b # Union
{1, 2, 3, 4, 5, 6}
>>> a & b # Intersection
{3, 4}
>>> a < b # Subset
False
>>> a - b # Difference
{1, 2}
>>> a ^ b # Symmetric Difference
{1, 2, 5, 6}

More detail from the standard library reference: Set Types

1
1
2 3 4 5
7

Not the answer you're looking for? Browse other questions tagged or ask your own question.