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What python-specific antipatterns do you know?

Could you also give an example, please.

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closed as not constructive by casperOne Apr 26 '12 at 12:47

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I can't understand the question. I can't reconcile language-specific features and Design Patterns. Can you provide some clearer definition of what you're looking for? Some example or reference or something? –  S.Lott Feb 23 '09 at 11:00
We have just released an open-source book containing a comprehensive collection of Python anti-patterns. Feel free to have a look and / or contribute: docs.quantifiedcode.com/python-anti-patterns. –  ThePhysicist Apr 28 at 15:09

16 Answers 16

up vote 37 down vote accepted
  • Using preconditional checking (exception handling in Python is cheap)


def safe_divide_2(x, y):
        return x/y
    except ZeroDivisionError:  
        print "Divide-by-0 attempt detected"
        return None


def safe_divide_1(x, y):
    if y==0:
        print "Divide-by-0 attempt detected"
        return None
        return x/y
  • Not using list comprehensions (they are much cleaner and are faster)


def double_list(items):
    return [item * 2 for item in items]


def double_list(items):
    for item in items:
    return doubled_items
  • Returning lists instead of using generators (less memory usage and cleaner)


def gen():
    for i in range(10):
        yield i

for number in gen():
    print i #prints 0-9


#list comprehension would be used here, but I did a for loop for clarity
def gen():
    for i in range(10):
    return numlist

for number in gen():
    print i #prints 0-9
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For the first example you mention, sometimes it is helpful to arg checking early in a function, so it'll fail immediately, and then fail with: raise ValueError, "y cannot be 0" to actually describe why the function went kerblooey. –  Gregg Lind Feb 26 '09 at 19:51
You still can raise the ValueError in the catch block for the ZeroDivisionError. This gives you the clean "fast path" and a useful error message. –  MarkusSchaber Mar 17 '11 at 13:24
Though not the point of your example, returning None instead of raising a propper exception is an antipattern in itself. –  istepaniuk Dec 19 '14 at 15:31
  • Mutable default arguments in functions or methods, like

    def test(elem, start_list=[]):
        return start_list
    print test(1)
    print test(2)

    creates the output

    [1, 2]

    which is generally not what you want.

  • Mixing tabs and spaces.

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actually I find it quiet useful for cache. –  vartec Feb 23 '09 at 11:06
If you want to cache then better use a function decorator. Did I really get I downvote for that? –  nikow Feb 23 '09 at 11:09
Yes, but it's a great irritation for first time users :) –  Aaron Digulla Feb 23 '09 at 11:10
Wow I never realized this could happen. How should this be handled ideally? default arg as None and create new empty list if it's still None? –  TM. Nov 18 '09 at 20:45
@TM: Yes, that's the typical way to do it. Note that this behavior actually makes a lot of sense, there would be far greater problems if the default arguments were reevaluated each time the function is called. –  nikow Nov 18 '09 at 22:30

I would say that programming in Python as if it were some other language is an "anti-pattern" i see quite often.

For example, for Java/C# refugees it is using classes for everything:

class Util():
  def foo():

# this should be just a function;
# it can be placed in 'util' module
def foo():

Another case:

class Pair():
  def __init__(self, first, second):

pairs = [Pair(1, 2), Pair(3, 4)]

# usually built-in tuple is enough
pairs = [(1, 2), (3, 4)]
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agreed, I've always despised the whole class-as-namespace way of doing things. –  Doug T. Feb 23 '09 at 14:02
In py2.6+ you could write: Pair = collections.namedtuple('Pair', 'first second') :-) Should be just as fast as a regular tuple, but gives you attribute access too. –  John Fouhy Feb 23 '09 at 21:28
On the other hand, using tuples or dictionaries as a Golden Hammer is an anti-pattern. –  hiwaylon Oct 21 '11 at 20:39
@Doug T: What is the Pythonic way of defining namespaces? –  Giorgio Apr 21 '13 at 17:36
@Giorgio python has modules which at the lowest level corresponds to source files. –  Doug T. Apr 21 '13 at 18:43

Using Java-style getters and setters for every field:

def get_field(self): 
   return self.field
def set_field(self, val): 
   self.field = val

It's usually better just to access the field directly, and for more advanced usage you can smoothly transition to using property().

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Those kinds of getters/setters are useless in ANY language. You're just adding bloat to what is basically a public property. –  ryeguy Feb 24 '09 at 19:05
@ryeguy: I disagree: in Java they leave your options open to change the implementation of the getter/setter without breaking all the code that uses it (as would happen if you changed a field that other classes were directly using). –  Kiv Feb 24 '09 at 19:28
@Kiv which wouldn't be needed if Java had proper "properties", like in C# and Objective-C. –  Nikos Ventouras Apr 26 '09 at 13:05

Excessive (ab)use of the reduce function.

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+1, guilty of abusing lambda/filter/reduce myself. –  Constantin Feb 23 '09 at 13:59
What's the Pythonic way? Write out a loop by hand? –  Ken Feb 23 '09 at 17:16
Yes. Reduce will often lead to horrible performance problems because of the way the function is applied through the list. Writing your own using itertools is MUCH faster. –  S.Lott Feb 23 '09 at 17:30
Wow, that's too bad. Reduce and reduce-like operators are fantastic tools in other languages. –  Robert P Feb 23 '09 at 17:53
@Robert P: be sure (really sure) what reduce does before you apply a poorly-thought out function. You'll often find that a function that includes it's own loop has created an **O**(n ^ 2) (or worse) reduce operation. –  S.Lott Feb 23 '09 at 18:05
for i in xrange(len(something)):
    workwith = something[i]
    # do things with workwith...

From vartec's answer, but I think it's good (bad?) enough to deserve its own answer.

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Even worse is when I see this and i is used to index into a pair of matched lists - in this case, should use zip! –  Paul McGuire Apr 25 '10 at 19:30
Also, generalizing to for item in sequence: style opens up the code to be used on non-indexable sequences, like sets and dicts, or to accept a generator method. –  Paul McGuire May 14 '10 at 8:12

Not using python functions ;)

value = 0
for car in cars:
    value += car.value
return value

# instead, do
return sum(car.value for car in cars)
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you don't need list comprehension in the last line, generator will do just fine –  SilentGhost Feb 23 '09 at 18:51
i.e. return sum(car.value for car in cars) –  hughdbrown Feb 23 '09 at 18:53
oh, whoops, thanks a ton! –  webjunkie Feb 23 '09 at 18:56

The Decorate-Sort-Undecorate idiom in later versions of Python where you can just use the key parameter.

deco = [(key(item), i, item) for i, item in enumerate(items)]
final = [item for _, _, item in deco]


final = sorted(items, key=key)
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  • using list where it's possible to use generators;
  • using for with range to access via index, instead of directly iterating object;
  • excessive [ab]use of lambda functions;
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Lambdas are bad? Just really bad performance or what? –  Robert P Feb 23 '09 at 17:55
excessive use of lambdas makes code unreadable. –  vartec Feb 23 '09 at 20:18
the "operator" module makes a lot of lambda's unnecessary. –  Gregg Lind Feb 26 '09 at 19:47
I disagree that generators should always be used unless impossible. Generators are stateful and add complexity to a program. Generators should not be used if they are not necessary. –  Doug F Aug 12 '11 at 2:35

It's mentioned as part of nikow's answer but I thought it deserved a post of its own.

  • Mixing tabs and spaces for indentation.
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Do people actually see this in the wild? At my shop, I've looked at a lot of python code, and never once seen it. –  Gregg Lind Feb 26 '09 at 19:49
Yeah, we do see it. –  Nikos Ventouras Apr 26 '09 at 13:07
I think we can shorten it to "using tabs". Let's be honest here. The tabbers aren't winning the war. –  Prof. Falken Aug 21 '12 at 13:53
im a tabber (yea, boo!) but usually this occurs when mixing geany / vim and a bunch of "helpful" editors that auto convert things. However, auto converting to tabs on opening and auto converting to 4 spaces on saving was a godsend for me. –  Sirex Nov 2 '12 at 1:23

Using positional arguments to fill keyword parameters.

e.g. given:

def foo(x, a=1, b=2):
    # etc

calling it as:

foo(14, 21)

This always bugs me, though maybe it's because I have a short memory and without the clue of the keyword (a=21) I forget what the argument means.

This is particularly prevalent in wxPython code.

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I catch myself doing this all the time. It's a tough habit to break, though, b/c you don't immediately feel the effects of changing foo(). –  Jeremy Cantrell Mar 23 '09 at 21:05
I do this myself, it seems some frameworks even encourage this behavior in the docs... but I see your point, had never really thought about it since I was never altering the framework. –  TM. Nov 18 '09 at 20:38

not using enumerate.

If you need to loop over a sequence, and access its position/index along with the value itself, you should use enumerate.

I've seen weird stuff like this:

foo = ['a', 'b', 'c']

for i, item in zip(range(len(foo)), foo):
    print i, item

when all you need to do is:

foo = ['a', 'b', 'c']

for i, item in enumerate(foo):
    print i, item
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Wow thanks for this. I've been keeping an i counter on some loops instead of doing this... –  NoviceCoding Feb 8 '12 at 6:45

A inexhaustible source of anti-patterns: see the Zope source code and all their contributions to the cheeseshop.

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Using map() or a list comprehension to perform a repeated operation on a sequence of items, instead of a for loop:

map(list.sort, list_of_lists)
[ lst.sort() for lst in list_of_lists ]

The telltale sign is that these statements create a list that is not assigned to anything. Why not just make your intent clear, that you want to iterate over a sequence and apply an operation to each item:

for lst in list_of_lists:
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did you mean to have lst.sort() there? –  SilentGhost Apr 25 '10 at 15:35
I guess so, thanks @SG –  Paul McGuire Apr 25 '10 at 19:28
I guess for map you'd need to use lambda x: x.sort or some such. sort is not a class method. –  SilentGhost Apr 25 '10 at 19:33
@SG: no, but it is an instance method, taking self as its first parameter, and each entry in list_of_lists is a list that gets passed as the parameter self. lst.sort() is equivalent to list.sort(lst). Try it. –  Paul McGuire Apr 25 '10 at 21:57

Using + in a loop for string concatenation:

cat = ''
for s in sequence_of_strings:
    cat += s

This has O(n^2) performance. I've heard that CPython can sometimes optimize it to something more sensible, but other Python implementations can't.

Use ''.join(sequence_of_strings) instead.

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Am I allowed to add answers for misuse of important standard library tools?

You probably already know not to use print in anything larger than a one-off script; that's what the logging module is for.

Unfortunately, it's far to easy to get into just as big a mess using that module. A key insight into using logging effectively is to view it as a producer-consumer interface. Producers, which will be the bulk of any system, the part that 'uses' logging, but mainly does the actual application work, only ever call the info(), error(), debug() methods on a logger, and in general just accept whatever logger instance is around. The 'consumer' is the program "entry point", the part that interprets command line options or reads config files. The entry point is the only part that should ever create logging handlers and formatters, or call the setLevel() method on individual loggers or handlers.


import logging

class Thing(object):
    def __init__(self):
        self.logger = logging.getLogger("thing")
        console = logging.StreamHandler()
    def speak(self, message):
        self.logger.info("Oh... um, Hi %s", message)

myThing = Thing()
yourThing = Thing()

print 'myThing'
print 'yourThing'


import logging, logging.handlers

class GoodThing(object):
    logger = logging.getLogger("goodThing")

    def speak(self, message):
        self.logger.info("Good morning, %s!", message)

myThing = GoodThing()
yourThing = GoodThing()

if __name__ == '__main__':
    yourHandler = logging.handlers.MemoryHandler(float('inf'))
    yourLogger = logging.Logger("your_thing")
    yourThing.logger = yourLogger

    print 'myThing'
    print 'yourThing'

    print yourHandler.buffer[-1].msg, yourHandler.buffer[-1].args
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