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What are the options to clone or copy a list in Python?

Using new_list = my_list then modifies new_list every time my_list changes. Why is this?

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4  
I am allways changing one list and it was giving me a problem while iteranting the list later on the code. So I made a deepcopy of it and problem solved :) –  aF. Apr 10 '10 at 13:53
2  
Why are you "always changing one list"? Why not create a new list combining "change" and "clone" into a single, simpler operation? –  S.Lott Apr 12 '10 at 13:26
71  
S.Lott, why would you want to question someone so unhelpfully when they're just asking a reasonable question? –  murftown Dec 11 '11 at 6:54
4  
(Not me that made the question, but I would imagine) because, very often, it's only through asking questions about methods, and being forced to answer questions on why we chose those methods, that we realise we actually had made incorrect assumptions and should have been using different methods in the first place. –  scubbo May 21 '13 at 13:17
    
It's worth pointing out that the techniques described here apply not only to lists, but to (most) iterables in general, including strings. –  Paul Price Oct 1 '14 at 0:25

8 Answers 8

up vote 591 down vote accepted

You have various possibilities:

  • You can slice it:

    new_list = old_list[:]
    

    Alex Martelli's opinion (at least back in 2007) about this is, that it is a weird syntax and it does not make sense to use it ever. ;) (In his opinion, the next one is more readable).

  • You can use the built in list() function:

    new_list = list(old_list)
    
  • You can use generic copy.copy():

    import copy
    new_list = copy.copy(old_list)
    

    This is a little slower than list() because it has to find out the datatype of old_list first.

  • If the list contains objects and you want to copy them as well, use generic copy.deepcopy():

    import copy
    new_list = copy.deepcopy(old_list)
    

    Obviously the slowest and most memory-needing method, but sometimes unavoidable.

Example:

import copy

class Foo(object):
    def __init__(self, val):
         self.val = val

    def __repr__(self):
        return str(self.val)

foo = Foo(1)

a = ['foo', foo]
b = a[:]
c = list(a)
d = copy.copy(a)
e = copy.deepcopy(a)

# edit orignal list and instance 
a.append('baz')
foo.val = 5

print "original: %r\n slice: %r\n list(): %r\n copy: %r\n deepcopy: %r" \
       % (a, b, c, d, e)

Result:

original: ['foo', 5, 'baz']
slice: ['foo', 5]
list(): ['foo', 5]
copy: ['foo', 5]
deepcopy: ['foo', 1]
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4  
+1 for 3 options, you can add new_list = list(new_list) as 4th –  Anurag Uniyal Apr 10 '10 at 9:06
2  
Classes should inherit object rather than nothing so that you are using new-style classes, i.e. class Foo(object): –  Mike Graham Apr 10 '10 at 14:29
4  
+= ['baz'] seems like an odd way to write .append('baz'). –  Mike Graham Apr 10 '10 at 14:30
5  
@Felix, of course it doesn't change the effect you see here, but every time there's a needlessly suboptimal snippets posted here, there is a chance readers might come along and mimic them. –  Mike Graham Apr 12 '10 at 14:53
2  
@Mike Graham: Mmh thats true. Ok then, I provide more optimal code ;) –  Felix Kling Apr 12 '10 at 16:05

Felix already provided an excellent answer, but I thought I'd do a speed comparison of the various methods:

  1. 10.59 - copy.deepcopy(old_list)
  2. 10.16 - pure python Copy() method copying classes with deepcopy
  3. 1.488 - pure python Copy() method not copying classes (only dicts/lists/tuples)
  4. 0.325 - for item in old_list: new_list.append(item)
  5. 0.217 - [i for i in old_list] (a list comprehension)
  6. 0.186 - copy.copy(old_list)
  7. 0.075 - list(old_list)
  8. 0.053 - new_list = []; new_list.extend(old_list)
  9. 0.039 - old_list[:] (list slicing)

So the fastest is list slicing. But be aware that copy.copy(), list[:] and list(list), unlike copy.deepcopy() and the python version don't copy any lists, dictionaries and class instances in the list, so if the originals change, they will change in the copied list too and vice versa.

(Here's the script if anyone's interested or wants to raise any issues:)

from copy import deepcopy

class old_class:
    def __init__(self):
        self.blah = 'blah'

class new_class(object):
    def __init__(self):
        self.blah = 'blah'

dignore = {str: None, unicode: None, int: None, type(None): None}

def Copy(obj, use_deepcopy=True):
    t = type(obj)

    if t in (list, tuple):
        if t == tuple:
            # Convert to a list if a tuple to 
            # allow assigning to when copying
            is_tuple = True
            obj = list(obj)
        else: 
            # Otherwise just do a quick slice copy
            obj = obj[:]
            is_tuple = False

        # Copy each item recursively
        for x in xrange(len(obj)):
            if type(obj[x]) in dignore:
                continue
            obj[x] = Copy(obj[x], use_deepcopy)

        if is_tuple: 
            # Convert back into a tuple again
            obj = tuple(obj)

    elif t == dict: 
        # Use the fast shallow dict copy() method and copy any 
        # values which aren't immutable (like lists, dicts etc)
        obj = obj.copy()
        for k in obj:
            if type(obj[k]) in dignore:
                continue
            obj[k] = Copy(obj[k], use_deepcopy)

    elif t in dignore: 
        # Numeric or string/unicode? 
        # It's immutable, so ignore it!
        pass 

    elif use_deepcopy: 
        obj = deepcopy(obj)
    return obj

if __name__ == '__main__':
    import copy
    from time import time

    num_times = 100000
    L = [None, 'blah', 1, 543.4532, 
         ['foo'], ('bar',), {'blah': 'blah'},
         old_class(), new_class()]

    t = time()
    for i in xrange(num_times):
        Copy(L)
    print 'Custom Copy:', time()-t

    t = time()
    for i in xrange(num_times):
        Copy(L, use_deepcopy=False)
    print 'Custom Copy Only Copying Lists/Tuples/Dicts (no classes):', time()-t

    t = time()
    for i in xrange(num_times):
        copy.copy(L)
    print 'copy.copy:', time()-t

    t = time()
    for i in xrange(num_times):
        copy.deepcopy(L)
    print 'copy.deepcopy:', time()-t

    t = time()
    for i in xrange(num_times):
        L[:]
    print 'list slicing [:]:', time()-t

    t = time()
    for i in xrange(num_times):
        list(L)
    print 'list(L):', time()-t

    t = time()
    for i in xrange(num_times):
        [i for i in L]
    print 'list expression(L):', time()-t

    t = time()
    for i in xrange(num_times):
        a = []
        a.extend(L)
    print 'list extend:', time()-t

    t = time()
    for i in xrange(num_times):
        a = []
        for y in L:
            a.append(y)
    print 'list append:', time()-t

    t = time()
    for i in xrange(num_times):
        a = []
        a.extend(i for i in L)
    print 'generator expression extend:', time()-t

EDIT: Added new-style, old-style classes and dicts to the benchmarks, and made the python version much faster and added some more methods including list expressions and extend().

share|improve this answer
    
+1 I like it :) But I think deepcopy performs even worse if you have real (in a sense of not being a string) objects in the list... –  Felix Kling Apr 10 '10 at 10:23
    
I've added new/old type classes/dicts, thanks for the feedback –  cryo Apr 10 '10 at 11:05
1  
+1: Surprising thing is that new_list = []; new_list.extend(L) is faster than new_list = list(L). –  J.F. Sebastian Apr 11 '10 at 20:46
    
@JFSebastian: Maybe because list() takes also other types besides lists. (I think any iteratable). Maybe it does some type checking... –  Felix Kling Apr 11 '10 at 21:00
    
@Felix: list.extend() also accepts any iterable, so it shouldn't be type checking. –  J.F. Sebastian Apr 11 '10 at 23:59

Use thing[:]

>>> a = [1,2]
>>> b = a[:]
>>> a += [3]
>>> a
[1, 2, 3]
>>> b
[1, 2]
>>> 
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new_list = list(old_list)

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I've been told that Python 3.3+ adds list.copy() method, which should be as fast as slicing:

newlist = old_list.copy()

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2  
it is here ^^_ docs.python.org/3.3/library/… –  Abdelouahab Dec 4 '14 at 18:12

Python's idiom for doing this is newList = oldList[:]

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Shallow list copy in Python 2

A shallow copy only copies the list itself, which is a container of references to the objects in the list. If the objects contained themselves are mutable and one is changed, the change will be reflected in both lists.

In Python 2, the idiomatic way of making a shallow copy of a list is with a complete slice of the original:

a_copy = a_list[:]

You can also accomplish the same thing by passing the list through the list constructor, but that may be less efficient *(see addendum):

a_copy = list(a_list)

Python 3

In Python 3, lists get the list.copy method:

a_copy = a_list.copy()

Deep copies, Python 2 or 3

To make a deep copy of a list, in Python 2 or 3, use deepcopy in the copy module:

import copy
a_deep_copy = copy.deepcopy(a_list)

*Evidence the constructor is not as efficient as the slice:

>>> min(timeit.repeat('foo()', 'l = range(20) \ndef foo():\n  return l[:]'))
0.2898108959197998
>>> min(timeit.repeat('foo()', 'l = range(20) \ndef foo():\n  return list(l)'))
0.5998001098632812
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There are many answers already that tell you how to make a proper copy, but none of them say why your original 'copy' failed.

Python doesn't store values in variables; it binds names to objects. Your original assignment took the object referred to by my_list and bound it to new_list as well. No matter which name you use there is still only one list, so changes made when referring to it as my_list will persist when referring to it as new_list. Each of the other answers to this question give you different ways of creating a new object to bind to new_list.

Each element of a list acts like a name, in that each element binds non-exclusively to an object. A shallow copy creates a new list whose elements bind to the same objects as before.

new_list = list(my_list)  # or my_list[:], but I prefer this syntax
# is simply a shorter way of:
new_list = [element for element in my_list]

To take your list copy one step further, copy each object that your list refers to, and bind those element copies to a new list.

import copy  
# each element must have __copy__ defined for this...
new_list = [copy.copy(element) for element in my_list]

This is not yet a deep copy, because each element of a list my refer to other objects, just like the list is an object that is bound to its elements. To recursively copy every element in the list, and then each other object referred to by each element, and so on: perform a deep copy.

import copy
# each element must have __deepcopy__ defined for this...
new_list = copy.deepcopy(my_list)

See the documentation for more information about corner cases in copying.

This answer is only for Python 2. I haven't upgraded to Python 3 yet.

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protected by Jon Clements Dec 5 '14 at 17:10

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