Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Possible Duplicate:
“Least Astonishment” in Python: The Mutable Default Argument

I was writing some code this afternoon, and stumbled across a bug in my code. I noticed that the default values for one of my newly created objects was carrying over from another object! For example:

class One(object):
    def __init__(self, my_list=[]):
        self.my_list = my_list

one1 = One()
[] # empty list, what you'd expect.

['hi'] # list with the new value in it, what you'd expect.

one2 = One()
['hi'] # Hey! It saved the variable from the other One!

So I know it can be solved by doing this:

class One(object):
    def __init__(self, my_list=None):
        self.my_list = my_list if my_list is not None else []

What I would like to know is... Why? Why are Python classes structured so that the default values are saved across instances of the class?

Thanks in advance!

share|improve this question

marked as duplicate by detly, C. A. McCann, Karl Knechtel, user7116, Bo Persson Jul 28 '11 at 19:56

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

Weird, reminds me of a prototype chain in JavaScript –  Greg Guida Jul 27 '11 at 0:44
This is an aspect of python functions, not classes. Anyway, this post can be helpful to make it clear why Python is designed this way. –  brandizzi Jul 27 '11 at 1:00
It seems like the last few days I keep seeing new versions of this question... –  Karl Knechtel Jul 27 '11 at 4:24

6 Answers 6

up vote 4 down vote accepted

Several others have pointed out that this is an instance of the "mutable default argument" issue in Python. The basic reason is that the default arguments have to exist "outside" the function in order to be passed into it.

But the real root of this as a problem has nothing to do with default arguments. Any time it would be bad if a mutable default value was modified, you really need to ask yourself: would it be bad if an explicitly provided value was modified? Unless someone is extremely familiar with the guts of your class, the following behaviour would also be very surprising (and therefore lead to bugs):

>>> class One(object):
...     def __init__(self, my_list=[]):
...         self.my_list = my_list
>>> alist = ['hello']
>>> one1 = One(alist)
>>> alist.append('world')
>>> one2 = One(alist)
>>> print(one1.my_list) # Huh? This isn't what I initialised one1 with!
['hello', 'world']
>>> print(one2.my_list) # At least this one's okay...
['hello', 'world']
>>> del alist[0]
>>> print one2.my_list # What the hell? I just modified a local variable and a class instance somewhere else got changed?

9 times out of 10, if you discover yourself reaching for the "pattern" of using None as the default value and using if value is None: value = default, you shouldn't be. You should be just not modifying your arguments! Arguments should not be treated as owned by the called code unless it is explicitly documented as taking ownership of them.

In this case (especially because you're initialising a class instance, so the mutable variable is going to live a long time and be used by other methods and potentially other code that retrieves it from the instance) I would do the following:

class One(object):
    def __init__(self, my_list=[])
        self.my_list = list(my_list)

Now you're initialising the data of your class from a list provided as input, rather than taking ownership of a pre-existing list. There's no danger that two separate instances end up sharing the same list, nor that the list is shared with a variable in the caller which the caller may want to continue using. It also has the nice effect that your callers can provide tuples, generators, strings, sets, dictionaries, home-brewed custom iterable classes, etc, and you know you can still count on self.my_list having an append method, because you made it yourself.

There's still a potential problem here, if the elements contained in the list are themselves mutable then the caller and this instance can still accidentally interfere with each other. I find it not to very often be a problem in practice in my code (so I don't automatically take a deep copy of everything), but you have to be aware of it.

Another issue is that if my_list can be very large, the copy can be expensive. There you have to make a trade-off. In that case, maybe it is better to just use the passed-in list after all, and use the if my_list is None: my_list = [] pattern to prevent all default instances sharing the one list. But if you do that you need to make it clear, either in documentation or the name of the class, that callers are relinquishing ownership of the lists they use to initialise the instance. Or, if you really want to be constructing a list solely for the purpose of wrapping up in an instance of One, maybe you should figure out how to encapsulate the creation of the list inside the initialisation of One, rather than constructing it first; after all, it's really part of the instance, not an initialising value. Sometimes this isn't flexible enough though.

And sometimes you really honestly do want to have aliasing going on, and have code communicating by mutating values they both have access to. I think very hard before I commit to such a design, however. And it will surprise others (and you when you come back to the code in X months), so again documentation is your friend!

In my opinion, educating new Python programmers about the "mutable default argument" gotcha is actually (slightly) harmful. We should be asking them "Why are you modifying your arguments?" (and then pointing out the way default arguments work in Python). The very fact of a function having a sensible default argument is often a good indicator that it isn't intended as something that receives ownership of a pre-existing value, so it probably shouldn't be modifying the argument whether or not it got the default value.

share|improve this answer
I agree with your advice about object ownership, but you're going to get the sort of behavior you're describing any time you pass references to mutable objects around, and it's pretty much par for the course in any language -- you get used to it. The mutable default trap is insidious because it's unintuitive, and other languages don't do it that way. –  Ian McLaird Jul 27 '11 at 4:10
But that's just my point. It bites you because you're not careful around the default argument. But if you're mutating a value passed in, then it should almost always be the case that the purpose of the function is to mutate the value passed in. In which case it isn't sensible to have a default value. If there's a bug where you accidentally mutate a default value, there's probably a much more subtle bug where you accidentally mutate a passed-in value that somebody cares about. –  Ben Jul 27 '11 at 5:01
@Ben: I like your answer, but I have a question. The intent of my code is to indeed be a factory function. Is there good practice in making a factory function I should follow? Such as not using __init__? –  TorelTwiddler Jul 27 '11 at 17:04
@TorelTwiddler: I added a section saying what I would do with your One class, and other things to think about (there's a trade-off unfortunately). I hope it helps! I also got rid of the remark about the factory function, which was probably a bit confusing. What I was referring to was that maybe if you expect your argument to provide a new value every time, the argument itself could be a factory function (with the default value of lambda: []). That is rarely what you actually want to do though, hence editing it out of my answer. –  Ben Jul 28 '11 at 0:06
@Ben: Thank you for elaborating on your answer! After reading your newest edit, I'm confident that there is no significant reason in my code to allow you to pass it a mutable object (who's ownership will be taken over). I will be populating my lists and dictionaries after the initialization of my class instead to completely avoid any issues with altering passed objects. Again, thank you very much for the thorough answer! –  TorelTwiddler Jul 28 '11 at 0:27

This is a known behaviour of the way Python default values work, which is often surprising to the unwary. The empty array object [] is created at the time of definition of the function, rather than at the time it is called.

To fix it, try:

def __init__(self, my_list=None):
    if my_list is None:
        my_list = []
    self.my_list = my_list
share|improve this answer
Note that your solution has a potential bug: If you pass an empty list into your function, intending that the object copy a reference to that list, your my_list or [] expression will select the new empty list [] instead of my_list (because an empty list is falsy). –  Greg Hewgill Jul 27 '11 at 0:46
-1: It's not an "issue". It's a matter of definition. –  S.Lott Jul 27 '11 at 3:09
@S.Lott: Thanks, fixed the terminology. –  Greg Hewgill Jul 27 '11 at 3:13
Personally I think if foo is None: foo = mutable_default is an antipattern in most cases. Now the function just unexpectedly mutates values explicitly passed in from the outside. Plus you lose the ability to actually pass None, which may or may not be meaningful. –  Ben Jul 27 '11 at 3:30
@Ben +1, more if I could. I prefer def func(arg=()): arg = list(arg); proceed(). Assuming a mutable value is needed in the first place. Consider that we should also let the user pass in a generator, without a compelling reason to forbid it... and typically we will need to copy the data anyway in that case, if we're doing anything other than iterating over it for non-mutating purposes. –  Karl Knechtel Jul 27 '11 at 4:27

Basically, python function objects store a tuple of default arguments, which is fine for immutable things like integers, but lists and other mutable objects are often modified in-place, resulting in the behavior you observed.

share|improve this answer

This is standard behavior of default arguments anywhere in Python, not just in classes.
For more explanation, see Mutable defaults for function/method arguments.

share|improve this answer

Python functions are objects. Default arguments of a function are attributes of that function. So if the default value of an argument is mutable and it's modified inside your function, the changes are reflected in subsequent calls to that function.

share|improve this answer

Not an answer, but it's worth noting this is also true for class variables defined outside any class functions.


>>> class one:
...     myList = []
>>> one1 = one()
>>> one1.myList
>>> one2 = one()
>>> one2.myList.append("Hello Thar!")
>>> one1.myList
['Hello Thar!']

Note that not only does the value of myList persist, but every instance of myList points to the same list.

I ran into this bug/feature myself, and spent something like 3 hours trying to figure out what was going on. It's rather challenging to debug when you are getting valid data, but it's not from the local computations, but previous ones.

It's made worse since this is not just a default argument. You can't just put myList in the class definition, it has to be set equal to something, although whatever it is set equal to is only evaluated once.

The solution, at least for me, was to simply create all the class variable inside __init__.

share|improve this answer
That's kind of the definition of a class variable. It is defined in the class, and holds one value for the class. Whereas an instance variable is defined in the instance, and holds one value for the instance. -- As for "it has to be set equal to something", every Python label it has to be set equal to something. If you want no other value at the moment, set it equal to None. -- The "bug" is that you are expecting Python to behave like some other language you have experience with. Python is not that other language, it's Python. –  Jerry B Oct 5 '13 at 7:46

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