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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:

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191 Answers 191

The getattr built-in function :

>>> class C():
    def getMontys(self):
        self.montys = ['Cleese','Palin','Idle','Gilliam','Jones','Chapman']
        return self.montys


>>> c = C()
>>> getattr(c,'getMontys')()
['Cleese', 'Palin', 'Idle', 'Gilliam', 'Jones', 'Chapman']
>>> 

Useful if you want to dispatch function depending on the context. See examples in Dive Into Python (Here)

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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)
...     "$"                 # end of string
... )
>>> print pattern
"^M{0,4}(CM|CD|D?C{0,3})(XC|XL|L?X{0,3})(IX|IV|V?I{0,3})$"
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7  
I don't know if I'd really consider that a Python feature, most RE engines have a verbose option. –  Jeremy Banks 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. –  Berk D. Demir Mar 22 '09 at 13:18
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

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)
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45  
Instead of 128 you can also use re.DEBUG. Be aware that the comment in the source says this flag is experimental and you shouldn't rely on it. –  Andreas Thomas Dec 28 '08 at 14:24
27  
If you can use re.DEBUG, then you should. It may be experimental, but it's still the symbolic name, and the actual 128 value is just as experimental, but less readable, and more subject to change. –  Lee B Jun 18 '09 at 9:54
11  
The more idiomatic way to combine flags is using the OR operator, so it should probably be "re.DEBUG | re.VERBOSE | re.DOTALL" instead. They're equivalent in this case, but in other cases where you might want to set a flag in addition to a group of flags that might already have it, the OR operator is essential. –  rmmh Jan 1 '10 at 1:22
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
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

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
        self.__dict__.update(kwargs)

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):
       self.__dict__.update(kwargs)

s = struct(foo=10, bar=11, baz="i'm a string!')
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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 Jul 18 '10 at 23:43

Not really a hidden feature but something that might come in handy.

for looping through items in a list pairwise

for x, y in zip(s, s[1:]):
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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)

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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

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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.

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121  
That's very helpful. It should be standard for all languages. Sadly, it isn't. –  stalepretzel Oct 17 '08 at 2:23
8  
you should add some examples that return false aswell. such as >>> 10 < x < 20 False –  ShoeLace Nov 21 '08 at 14:34
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
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. –  Charles Merriam 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

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.

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8  
This has a lot of potential for usefulness, e.g., JIT ORMs –  Mark Cidade 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). –  spookylukey Jan 1 '10 at 14:02
1  
You can also create anonymous types with a blank string like: type('', (object,), {'x': 'blah'}) –  bluehavana Jun 16 '11 at 23:49
3  
Could be very useful for code injections. –  Avihu Turzion Jul 18 '11 at 8:49

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

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39  
also, checkout the setdefault method. –  Daren Thomas Oct 13 '08 at 17:29
27  
also, checkout collections.defaultdict class. –  J.F. Sebastian 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 –  Elias Zamaria Oct 12 '10 at 1:33

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.

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2  
no, decorators and descriptors are totally different things, though in the example code, i'm creating a descriptor decorator. :) –  Nick Johnson Oct 20 '11 at 23:11
1  
The other way to do this is with a lambda: foo = property(lambda self: self.__foo) –  Pete Peterson Nov 2 '11 at 2:50
1  
@PetePeterson Yes, but property itself is implemented with descriptors, which was the point of my post. –  Nick Johnson Nov 2 '11 at 3:40

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))
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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). –  Pasi Savolainen 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. –  Kenneth Reitz Jul 14 '10 at 12:34

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()
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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() ? –  a paid nerd 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. –  Andy Mikhaylenko 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

Set Comprehensions

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

Python documentation

Wikipedia Entry

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Dict Comprehensions

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

Python documentation

Wikipedia Entry

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set/frozenset

Probably an easily overlooked python builtin is "set/frozenset".

Useful when you have a list like this, [1,2,1,1,2,3,4] and only want the uniques like this [1,2,3,4].

Using set() that's exactly what you get:

>>> x = [1,2,1,1,2,3,4] 
>>> 
>>> set(x) 
set([1, 2, 3, 4]) 
>>>
>>> for i in set(x):
...     print i
...
1
2
3
4

And of course to get the number of uniques in a list:

>>> len(set([1,2,1,1,2,3,4]))
4

You can also find if a list is a subset of another list using set().issubset():

>>> set([1,2,3,4]).issubset([0,1,2,3,4,5])
True

As of Python 2.7 and 3.0 you can use curly braces to create a set:

myset = {1,2,3,4}

as well as set comprehensions:

{x for x in stuff}

For more details: http://docs.python.org/library/stdtypes.html#set

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2  
Also useful in cases where a dictionary were used only to test if a value is there. –  Jacek Konieczny Mar 20 '10 at 10:20
1  
I use set about as much as tuple and list. –  L̲̳o̲̳̳n̲̳̳g̲̳̳p̲̳o̲̳̳k̲̳̳e̲̳̳ May 13 '10 at 20:42

Python's positional and keyword expansions can be used on the fly, not just from a stored list.

l=lambda x,y,z:x+y+z
a=1,2,3
print l(*a)
print l(*[a[0],2,3])

It is usually more useful with things like this:

a=[2,3]
l(*(a+[3]))
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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.

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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. –  Craig McQueen 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 –  Mark 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. –  Jeffrey Harris Dec 3 '09 at 16:51

some cool features with reduce and operator.

>>> from operator import add,mul
>>> reduce(add,[1,2,3,4])
10
>>> reduce(mul,[1,2,3,4])
24
>>> reduce(add,[[1,2,3,4],[1,2,3,4]])
[1, 2, 3, 4, 1, 2, 3, 4]
>>> reduce(add,(1,2,3,4))
10
>>> reduce(mul,(1,2,3,4))
24
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Python have exceptions for very unexpected things:

Imports

This let you import an alternative if a lib is missing

try:
    import json
except ImportError:
    import simplejson as json

Iteration

For loops do this internally, and catch StopIteration:

iter([]).next()
Traceback (most recent call last):
  File "<pyshell#4>", line 1, in <module>
    iter(a).next()
StopIteration

Assertion

>>> try:
...     assert []
... except AssertionError:
...     print "This list should not be empty"
This list should not be empty

While this is more verbose for one check, multiple checks mixing exceptions and boolean operators with the same error message can be shortened this way.

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

 >>> print round(1123.456789, 4)
1123.4568
 >>> print round(1123.456789, 2)
1123.46
 >>> print round(1123.456789, 0)
1123.0

This function has a wonderful magic property:

 >>> print round(1123.456789, -1)
1120.0
 >>> print round(1123.456789, -2)
1100.0

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

 >>> print int(round(1123.456789, -2))
1100
 >>> print int(round(8359980, -2))
8360000

Thank you Gregor.

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...that dict.get() has a default value of None, thereby avoiding KeyErrors:

In [1]: test = { 1 : 'a' }

In [2]: test[2]
---------------------------------------------------------------------------
<type 'exceptions.KeyError'>              Traceback (most recent call last)

&lt;ipython console&gt; in <module>()

<type 'exceptions.KeyError'>: 2

In [3]: test.get( 2 )

In [4]: test.get( 1 )
Out[4]: 'a'

In [5]: test.get( 2 ) == None
Out[5]: True

and even to specify this 'at the scene':

In [6]: test.get( 2, 'Some' ) == 'Some'
Out[6]: True

And you can use setdefault() to have a value set and returned if it doesn't exist:

>>> a = {}
>>> b = a.setdefault('foo', 'bar')
>>> a
{'foo': 'bar'}
>>> b
'bar
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The Borg Pattern

This is a killer from Alex Martelli. All instances of Borg share state. This removes the need to employ the singleton pattern (instances don't matter when state is shared) and is rather elegant (but is more complicated with new classes).

The value of foo can be reassigned in any instance and all will be updated, you can even reassign the entire dict. Borg is the perfect name, read more here.

class Borg:
    __shared_state = {'foo': 'bar'}
    def __init__(self):
        self.__dict__ = self.__shared_state
    # rest of your class here

This is perfect for sharing an eventlet.GreenPool to control concurrency.

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Not a programming feature but is useful when using Python with bash or shell scripts.

python -c"import os; print(os.getcwd());"

See the python documentation here. Additional things to note when writing longer Python scripts can be seen in this discussion.

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In Python 2 you can generate a string representation of an expression by enclosing it with backticks:

 >>> `sorted`
'<built-in function sorted>'

This is gone in python 3.X.

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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
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8  
Four different quotes, if you include ''' –  grawity Aug 26 '09 at 17:07

Interactive Debugging of Scripts (and doctest strings)

I don't think this is as widely known as it could be, but add this line to any python script:

import pdb; pdb.set_trace()

will cause the PDB debugger to pop up with the run cursor at that point in the code. What's even less known, I think, is that you can use that same line in a doctest:

"""
>>> 1 in (1,2,3)   
Becomes
>>> import pdb; pdb.set_trace(); 1 in (1,2,3)
"""

You can then use the debugger to checkout the doctest environment. You can't really step through a doctest because the lines are each run autonomously, but it's a great tool for debugging the doctest globs and environment.

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Print multiline strings one screenful at a time

Not really useful feature hidden in the site._Printer class, whose the license object is an instance. The latter, when called, prints the Python license. One can create another object of the same type, passing a string -- e.g. the content of a file -- as the second argument, and call it:

type(license)(0,open('textfile.txt').read(),0)()

That would print the file content splitted by a certain number of lines at a time:

...
file row 21
file row 22
file row 23

Hit Return for more, or q (and Return) to quit:
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for line in open('foo'):
    print(line)

which is equivalent (but better) to:

f = open('foo', 'r')
for line in f.readlines():
   print(line)
f.close()
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2  
That's not equivalent at all, because you can't predict when the file will be closed. That depends on the interpreter. As far as I know CPython garbage collects objects as soon as possible, but other interpreters might not. –  Cristian Ciupitu Oct 7 '11 at 1:50

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