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:

191 Answers 191

3 4
6 7

Ability to substitute even things like file deletion, file opening etc. - direct manipulation of language library. This is a huge advantage when testing. You don't have to wrap everything in complicated containers. Just substitute a function/method and go. This is also called monkey-patching.

  • 1
    Creating a test harness which provides classes that have the same interfaces as the objects which would be manipulated by the code under test (the subjects of our testing) is referred to as "Mocking" (these are called "Mock Classes" and their instances are "Mock Objects"). – Jim Dennis Jul 23 '10 at 23:17

Slices & Mutability

Copying lists

>>> x = [1,2,3]
>>> y = x[:]
>>> y.pop()
>>> y
[1, 2]
>>> x
[1, 2, 3]

Replacing lists

>>> x = [1,2,3]
>>> y = x
>>> y[:] = [4,5,6]
>>> x
[4, 5, 6]

Slices as lvalues. This Sieve of Eratosthenes produces a list that has either the prime number or 0. Elements are 0'd out with the slice assignment in the loop.

def eras(n):
    last = n + 1
    sieve = [0,0] + list(range(2, last))
    sqn = int(round(n ** 0.5))
    it = (i for i in xrange(2, sqn + 1) if sieve[i])
    for i in it:
        sieve[i*i:last:i] = [0] * (n//i - i + 1)
    return filter(None, sieve)

To work, the slice on the left must be assigned a list on the right of the same length.


Python 2.x ignores commas if found after the last element of the sequence:

>>> a_tuple_for_instance = (0,1,2,3,)
>>> another_tuple = (0,1,2,3)
>>> a_tuple_for_instance == another_tuple

A trailing comma causes a single parenthesized element to be treated as a sequence:

>>> a_tuple_with_one_element = (8,)

Rounding Integers: Python has the function round, which returns numbers of type double:

 >>> print round(1123.456789, 4)
 >>> print round(1123.456789, 2)
 >>> print round(1123.456789, 0)

This function has a wonderful magic property:

 >>> print round(1123.456789, -1)
 >>> print round(1123.456789, -2)

If you need an integer as a result use int to convert type:

 >>> print int(round(1123.456789, -2))
 >>> print int(round(8359980, -2))

Thank you Gregor.


If you are using descriptors on your classes Python completely bypasses __dict__ for that key which makes it a nice place to store such values:

>>> class User(object):
...  def _get_username(self):
...   return self.__dict__['username']
...  def _set_username(self, value):
...   print 'username set'
...   self.__dict__['username'] = value
...  username = property(_get_username, _set_username)
...  del _get_username, _set_username
>>> u = User()
>>> u.username = "foo"
username set
>>> u.__dict__
{'username': 'foo'}

This helps to keep dir() clean.



getattr is a really nice way to make generic classes, which is especially useful if you're writing an API. For example, in the FogBugz Python API, getattr is used to pass method calls on to the web service seamlessly:

class FogBugz:

    def __getattr__(self, name):
        # Let's leave the private stuff to Python
        if name.startswith("__"):
            raise AttributeError("No such attribute '%s'" % name)

        if not self.__handlerCache.has_key(name):
            def handler(**kwargs):
                return self.__makerequest(name, **kwargs)
            self.__handlerCache[name] = handler
        return self.__handlerCache[name]

When someone calls FogBugz.search(q='bug'), they don't get actually call a search method. Instead, getattr handles the call by creating a new function that wraps the makerequest method, which crafts the appropriate HTTP request to the web API. Any errors will be dispatched by the web service and passed back to the user.

  • You can also create semi-custom types in this manner. – user13876 Dec 30 '08 at 9:54

import antigravity

  • 5
    this answer was already given – Davide Dec 18 '08 at 17:01

Exposing Mutable Buffers

Using the Python Buffer Protocol to expose mutable byte-oriented buffers in Python (2.5/2.6).

(Sorry, no code here. Requires use of low-level C API or existing adapter module).


The pythonic idiom x = ... if ... else ... is far superior to x = ... and ... or ... and here is why:

Although the statement

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

Is equivalent to

x = y == 1 and 3 or 2

if you use the x = ... and ... or ... idiom, some day you may get bitten by this tricky situation:

x = 0 if True else 1    # sets x equal to 0

and therefore is not equivalent to

x = True and 0 or 1   # sets x equal to 1

For more on the proper way to do this, see Hidden features of Python.


List comprehensions

list comprehensions

Compare the more traditional (without list comprehension):

foo = []
for x in xrange(10):
  if x % 2 == 0:


foo = [x for x in xrange(10) if x % 2 == 0]
  • 5
    In what way is list comprehensions a hidden feature of Python ? – Eli Bendersky Sep 19 '08 at 11:56
  • 1
    They are probably "hidden" for former C & Java programmers who haven't seen such features before, don't think to look for it and ignore it if they see it in a tutorial. OTOH a Haskell programmer will notice it immediately. – finnw Sep 19 '08 at 12:02
  • 2
    The question does ask for "an example and short description of the feature, not just a link to documentation". Any chance of adding one? – Dave Webb Sep 19 '08 at 12:35
  • List comprehensions were implemented by Greg Ewing, who was a postdoc at a department where they taught functional programming in a first-year paper. – ConcernedOfTunbridgeWells Jan 2 '09 at 19:00
  • If this was a hidden feature of python there would have been 40% more lines of code written in python today. – Vasil Mar 17 '09 at 1:04

I'm not sure where (or whether) this is in the Python docs, but for python 2.x (at least 2.5 and 2.6, which I just tried), the print statement can be called with parenthenses. This can be useful if you want to be able to easily port some Python 2.x code to Python 3.x.

Example: print('We want Moshiach Now') should print We want Moshiach Now work in python 2.5, 2.6, and 3.x.

Also, the not operator can be called with parenthenses in Python 2 and 3: not False and not(False) should both return True.

Parenthenses might also work with other statements and operators.

EDIT: NOT a good idea to put parenthenses around not operators (and probably any other operators), since it can make for surprising situations, like so (this happens because the parenthenses are just really around the 1):

>>> (not 1) == 9

>>> not(1) == 9

This also can work, for some values (I think where it is not a valid identifier name), like this: not'val' should return False, and print'We want Moshiach Now' should return We want Moshiach Now. (but not552 would raise a NameError since it is a valid identifier name).

  • 1
    Side-effect of one of the basic design rules of the Python syntax. Parentheses and whitespace can be varied in pretty much any way that doesn't make the meaning ambiguous. (Which is why you get more freedom to word-wrap things like if/while statements if you put the test body in brackets.) – ssokolow Feb 17 '11 at 5:55
  • 2
    What ssokolow said is correct. In python 2.6 the language was updated to be (more) compatible with python 3. In python 3+ parenthesis are required to call print. see here for more information: docs.python.org/whatsnew/2.6.html#pep-3105-print-as-a-function – Jake Feb 17 '11 at 6:23

In addition to this mentioned earlier by haridsv:

>>> foo = bar = baz = 1
>>> foo, bar, baz
(1, 1, 1)

it's also possible to do this:

>>> foo, bar, baz = 1, 2, 3
>>> foo, bar, baz
(1, 2, 3)

getattr takes a third parameter

getattr(obj, attribute_name, default) is like:

    return obj.attribute
except AttributeError:
    return default

except that attribute_name can be any string.

This can be really useful for duck typing. Maybe you have something like:

class MyThing:
class MyOtherThing:
if isinstance(obj, (MyThing, MyOtherThing)):

(btw, isinstance(obj, (a,b)) means isinstance(obj, a) or isinstance(obj, b).)

When you make a new kind of thing, you'd need to add it to that tuple everywhere it occurs. (That construction also causes problems when reloading modules or importing the same file under two names. It happens more than people like to admit.) But instead you could say:

class MyThing:
    processable = True
class MyOtherThing:
    processable = True
if getattr(obj, 'processable', False):

Add inheritance and it gets even better: all of your examples of processable objects can inherit from

class Processable:
    processable = True

but you don't have to convince everybody to inherit from your base class, just to set an attribute.


Simple built-in benchmarking tool

The Python Standard Library comes with a very easy-to-use benchmarking module called "timeit". You can even use it from the command line to see which of several language constructs is the fastest.


% python -m timeit 'r = range(0, 1000)' 'for i in r: pass'
10000 loops, best of 3: 48.4 usec per loop

% python -m timeit 'r = xrange(0, 1000)' 'for i in r: pass'
10000 loops, best of 3: 37.4 usec per loop

Too lazy to initialize every field in a dictionary? No problem:

In Python > 2.3:

from collections import defaultdict

In Python <= 2.3:

def defaultdict(type_):
    class Dict(dict):
        def __getitem__(self, key):
            return self.setdefault(key, type_())
    return Dict()

In any version:

d = defaultdict(list)
for stuff in lots_of_stuff:


Thanks Ken Arnold. I reimplemented a more sophisticated version of defaultdict. It should behave exactly as the one in the standard library.

def defaultdict(default_factory, *args, **kw):                              

    class defaultdict(dict):

        def __missing__(self, key):
            if default_factory is None:
                raise KeyError(key)
            return self.setdefault(key, default_factory())

        def __getitem__(self, key):
                return dict.__getitem__(self, key)
            except KeyError:
                return self.__missing__(key)

    return defaultdict(*args, **kw)
  • 1
    You may be interested to learn about collections.defaultdict(list). – Thomas Wouters Sep 19 '08 at 17:14
  • Thanks. Does not work on my production environment though. Python 2.3. – pi. Jan 26 '09 at 14:57
  • Careful, that defaultdict reimplementation ends up calling type_ on every lookup instead of only when the item is missing. – Ken Arnold Jun 14 '11 at 1:33
  • Prior to python 2.2, you could not subclass dict directly, so you'd need to subclass from UserDict.UserDict. Better still would be to upgrade. – SingleNegationElimination Jul 28 '11 at 14:24

Here are 2 easter eggs:

One in python itself:

>>> import __hello__
Hello world...

And another one in the Werkzeug module, which is a bit complicated to reveal, here it is:

By looking at Werkzeug's source code, in werkzeug/__init__.py, there is a line that should draw your attention:

'werkzeug._internal':   ['_easteregg']

If you're a bit curious, this should lead you to have a look at the werkzeug/_internal.py, there, you'll find an _easteregg() function which takes a wsgi application in argument, it also contains some base64 encoded data and 2 nested functions, that seem to do something special if an argument named macgybarchakku is found in the query string.

So, to reveal this easter egg, it seems you need to wrap an application in the _easteregg() function, let's go:

from werkzeug import Request, Response, run_simple
from werkzeug import _easteregg

def application(request):
    return Response('Hello World!')

run_simple('localhost', 8080, _easteregg(application))

Now, if you run the app and visit http://localhost:8080/?macgybarchakku, you should see the easter egg.


Dict Comprehensions

>>> {i: i**2 for i in range(5)}
{0: 0, 1: 1, 2: 4, 3: 9, 4: 16}

Python documentation

Wikipedia Entry


Set Comprehensions

>>> {i**2 for i in range(5)}                                                       
set([0, 1, 4, 16, 9])

Python documentation

Wikipedia Entry


Monkeypatching objects

Every object in Python has a __dict__ member, which stores the object's attributes. So, you can do something like this:

class Foo(object):
    def __init__(self, arg1, arg2, **kwargs):
        #do stuff with arg1 and arg2

f = Foo('arg1', 'arg2', bar=20, baz=10)
#now f is a Foo object with two extra attributes

This can be exploited to add both attributes and functions arbitrarily to objects. This can also be exploited to create a quick-and-dirty struct type.

class struct(object):
    def __init__(**kwargs):

s = struct(foo=10, bar=11, baz="i'm a string!')
  • 6
    except for the classes with __slots__ – John La Rooy Feb 9 '10 at 23:09
  • 1
    Except for some "primitive" types implemented in C (for performance reasons, I guess). For instance, after a = 2, there is no a.__dict__ – Denilson Sá Maia Jul 18 '10 at 23:43

Special methods

Absolute power!

  • This is my favorite thing about Python. I especially love overloading operators. IMHO object1.add(object2) should always be object1 + object2. – fncomp Mar 9 '11 at 21:50
  • I read object1.add() as a destructive operation and + as one that only returns the result without modifying object1. – XTL Feb 16 '12 at 10:00

Tuple unpacking in for loops, list comprehensions and generator expressions:

>>> l=[(1,2),(3,4)]
>>> [a+b for a,b in l ] 

Useful in this idiom for iterating over (key,data) pairs in dictionaries:

d = { 'x':'y', 'f':'e'}
for name, value in d.items():  # one can also use iteritems()
   print "name:%s, value:%s" % (name,value)


name:x, value:y
name:f, value:e
  • This is also useful when l is replaced with zip(something). – asmeurer Dec 28 '10 at 6:00

The first-classness of everything ('everything is an object'), and the mayhem this can cause.

>>> x = 5
>>> y = 10
>>> def sq(x):
...   return x * x
>>> def plus(x):
...   return x + x
>>> (sq,plus)[y>x](y)

The last line creates a tuple containing the two functions, then evaluates y>x (True) and uses that as an index to the tuple (by casting it to an int, 1), and then calls that function with parameter y and shows the result.

For further abuse, if you were returning an object with an index (e.g. a list) you could add further square brackets on the end; if the contents were callable, more parentheses, and so on. For extra perversion, use the result of code like this as the expression in another example (i.e. replace y>x with this code):


This showcases two facets of Python - the 'everything is an object' philosophy taken to the extreme, and the methods by which improper or poorly-conceived use of the language's syntax can lead to completely unreadable, unmaintainable spaghetti code that fits in a single expression.

  • why would you ever do this? it is hardly a valid criticism of a language to show how it can be intentionally abused. accidental abuse would be valid, but this would never happen by accident. – Christian Oudard Jan 2 '09 at 18:41
  • @Gorgapor: Python's consistency and lack of exceptions and special cases is what makes it easy to learn and, to me at least, beautiful. Any powerful tool, used abusively can cause 'mayhem'. Contrary to your opinion, I think the ability to index into a sequence of functions and call it, in a single expression is a powerful and useful idiom, and I've used it more than once, with explanatory comments. – Don O'Donnell Jan 25 '10 at 8:07
  • @Don: Your use case, indexing a sequence of functions, is a good one, and very useful. Dan Udey's use case, using a boolean as an index into an inline tuple of functions, is a horrible and useless one, which is needlessly obfuscated. – Christian Oudard Jan 25 '10 at 13:21
  • @Gorganpor: Sorry, I meant to address my comment to Dan Udey, not you. I agree entirely with you. – Don O'Donnell Jan 26 '10 at 4:07

Taking advantage of python's dynamic nature to have an apps config files in python syntax. For example if you had the following in a config file:

  "name1": "value1",
  "name2": "value2"

Then you could trivially read it like:

config = eval(open("filename").read())
  • 3
    I agree. I've started using a settings.py or config.py file which I then load as a module. Sure beats the extra steps of parsing some other file format. – monkut Oct 14 '08 at 1:39
  • 24
    I can see this becoming a security issue. – Richard Waite Dec 1 '08 at 19:56
  • 1
    It could be, but sometimes it's not. In those cases, it's awesome. – recursive Jan 1 '09 at 9:30
  • 9
    That's a bold action for even non-hostile environments. eval() is a loaded gun, that needs intensive caution while handling. On the other hand, using JSON (now in 2.6 stdlib) is much more secure and portable for carrying configuration. – Berk D. Demir Mar 22 '09 at 18:46
  • 5
    I would never approve a code review which contained an eval. – a paid nerd May 11 '09 at 4:29

Method replacement for object instance

You can replace methods of already created object instances. It allows you to create object instance with different (exceptional) functionality:

>>> class C(object):
...     def fun(self):
...         print "C.a", self
>>> inst = C()
>>> inst.fun()  # C.a method is executed
C.a <__main__.C object at 0x00AE74D0>
>>> instancemethod = type(C.fun)
>>> def fun2(self):
...     print "fun2", self
>>> inst.fun = instancemethod(fun2, inst, C)  # Now we are replace C.a by fun2
>>> inst.fun()  # ... and fun2 is executed
fun2 <__main__.C object at 0x00AE74D0>

As we can C.a was replaced by fun2() in inst instance (self didn't change).

Alternatively we may use new module, but it's depreciated since Python 2.6:

>>> def fun3(self):
...     print "fun3", self
>>> import new
>>> inst.fun = new.instancemethod(fun3, inst, C)
>>> inst.fun()
fun3 <__main__.C object at 0x00AE74D0>

Node: This solution shouldn't be used as general replacement of inheritance mechanism! But it may be very handy in some specific situations (debugging, mocking).

Warning: This solution will not work for built-in types and for new style classes using slots.

  • I personally tend to prefer to leave instancemethod to classes; paticularly so that the binding behavior foo.method works normally. If I'm binding self explicitly, I'll instead use functools.partial, which achieves the same effect, but makes it a bit clearer that the binding behavior is explicit. – SingleNegationElimination Jul 28 '11 at 14:15

With a minute amount of work, the threading module becomes amazingly easy to use. This decorator changes a function so that it runs in its own thread, returning a placeholder class instance instead of its regular result. You can probe for the answer by checking placeolder.result or wait for it by calling placeholder.awaitResult()

def threadify(function):
    exceptionally simple threading decorator. Just:
    >>> @threadify
    ... def longOperation(result):
    ...     time.sleep(3)
    ...     return result
    >>> A= longOperation("A has finished")
    >>> B= longOperation("B has finished")

    A doesn't have a result yet:
    >>> print A.result

    until we wait for it:
    >>> print A.awaitResult()
    A has finished

    we could also wait manually - half a second more should be enough for B:
    >>> time.sleep(0.5); print B.result
    B has finished
    class thr (threading.Thread,object):
        def __init__(self, *args, **kwargs):
            threading.Thread.__init__ ( self )  
            self.args, self.kwargs = args, kwargs
            self.result = None
        def awaitResult(self):
            return self.result        
        def run(self):
            self.result=function(*self.args, **self.kwargs)
    return thr
  • You may be interested in the concurrent.futures module added in Python 3.2 – ncoghlan Feb 1 '11 at 6:53

There are no secrets in Python ;)


You can assign several variables to the same value

>>> foo = bar = baz = 1
>>> foo, bar, baz
(1, 1, 1)

Useful to initialize several variable to None, in a compact way.

  • 1
    You could also do: foo, bar, baz = [None]*3 to get the same result. – Van Nguyen Jul 17 '10 at 9:36
  • You can also compare multiple things at once, like foo == bar == baz. It's essentially the same thing as (what is right now) the top answer. – asmeurer Dec 28 '10 at 5:54
  • 4
    Also be aware that this will only create the value once, and all the variables will reference that one same value. It's fine for None, though, since it is a singleton object. – asmeurer Dec 28 '10 at 5:56

Combine unpacking with the print function:

# in 2.6 <= python < 3.0, 3.0 + the print function is native
from __future__ import print_function 

mylist = ['foo', 'bar', 'some other value', 1,2,3,4]  
  • 1
    I prefer something like print(' '.join([str(x) for x in mylist])). Using unpacking like this is too clever. – Brian Jul 16 '10 at 18:49
  • Performance wise I think the 'clever' version is faster (after doing some completely non-scientific tests). Plus you know * means you're unpacking a list or tuple, and you can use the sep keyword. – Wayne Werner Jul 16 '10 at 19:28
  • 2
    I find this clean and simple, but I always wonder why pylint insists there's too much magic in there ;) – Paweł Prażak Jan 2 '11 at 19:26
  • 1
    maybe some people are just allergic to * and ** because of pointer and double pointer resemblance ;) – Paweł Prażak Sep 5 '11 at 6:55
  • 1
    @Brian I would drop the list and use generator print(' '.join(word for word in mylist)) – Paweł Prażak Sep 5 '11 at 7:03

insert vs append

not a feature, but may be interesting

suppose you want to insert some data in a list, and then reverse it. the easiest thing is

count = 10 ** 5
nums = []
for x in range(count):

then you think: what about inserting the numbers from the beginning, instead? so:

count = 10 ** 5 
nums = [] 
for x in range(count):
    nums.insert(0, x)

but it turns to be 100 times slower! if we set count = 10 ** 6, it will be 1,000 times slower; this is because insert is O(n^2), while append is O(n).

the reason for that difference is that insert has to move each element in a list each time it's called; append just add at the end of the list that elements (sometimes it has to re-allocate everything, but it's still much more fast)

  • Or you can use nums.reverse() and have it done by the core - without the need to use range() – rob Jan 7 '11 at 16:53
  • i don't get your point, sorry.. – Ant Jan 8 '11 at 11:43
  • 1
    The fact python lists are implemented with arrays is interesting; however, the example is not that useful, because the idiomatic way to reverse a list is to use reverse method, without any additional step. – rob Jan 8 '11 at 23:17
  • 2
    And that would be why collections.deque exists - you can insert and pop entries from either end in O(1) – ncoghlan Feb 1 '11 at 6:00
3 4
6 7

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