I want to copy a 2D list, so that if I modify one list, the other is not modified.

For a one-dimensional list, I just do this:

a = [1, 2]
b = a[:]

And now if I modify b, a is not modified.

But this doesn't work for a two-dimensional list:

a = [[1, 2],[3, 4]]
b = a[:]

If I modify b, a gets modified as well.

How do I fix this?

  • 7
    A whole lot of the time when people user nested lists and need to copy them in this way, they really want to be using numpy. Mar 29, 2010 at 23:23
  • 1
    imho, that's just a bug in the language. behavior that's different for two cases where it should be identical - typical for interpreted languages. if you have large code, very difficult to debug
    – Serhii
    Apr 2, 2019 at 19:38
  • @SerhiiPoklonskyi No, it's not a bug. When you do b = a[:], you create a new list b, so for example a.append([5, 6]) will not modify b, as it just changes a. However, the line a[1][0] = 5 will change b because it changes a list that b refers to.
    – Artemis
    Apr 9, 2019 at 1:27
  • @ArtemisFowl doesn't work for me (a[1][0] does not modify b as well). Even if it would, I don't understand how that is relevant. The problem is: when you do a = b.copy(), a becomes a separate place in memory: neither reference nor pointer to b, i.e. it's an independent variable. However, if you do a = b.copy() and b is an array, that does not work. how may there be any logical explanation for that? if b is an array, a = b.copy() MUST create an independent variable. otherwise it's a bug. p.s. no intention to be rude, pls explain to me if I am wrong
    – Serhii
    Apr 9, 2019 at 5:57
  • 4
    @SerhiiPoklonskyi I think the reason that you find this confusing is that you miss-understand Python. Python does not actually have '2-dimensional arrays' as such, it just has lists, which can contain other lists. I will try to demonstrate by means of an example: you define a with a = [[1, 2], [3, 4]]. Then you create a copy of a: b = a.copy. This is a different list, but it contains the same 'sub-lists' this means that changing b, for example b.append([5, 6]) will not change a, however changing a list in b, for example b[0].append(3) will also change the first list of a.
    – Artemis
    Apr 10, 2019 at 18:34

3 Answers 3


For a more general solution that works regardless of the number of dimensions, use copy.deepcopy():

import copy
b = copy.deepcopy(a)
  • 2
    @Dav, you make a valid point. I prefer to always import modules in order to avoid name conflicts instead of handling functions on a case-by-case basis. :) Mar 29, 2010 at 23:20
  • 3
    Note that this will also deepcopy the actual elements in the lists.
    – FogleBird
    Mar 29, 2010 at 23:27
  • 1
    @Dav, I disagree, it's generally better to use the module.function() format.
    – FogleBird
    Mar 29, 2010 at 23:28
  • 5
    "Namespaces are one honking great idea -- let's do more of those!"
    – user111086
    Mar 29, 2010 at 23:37
  • 1
    @FogleBird: However, PEP-8 does actually seem to imply that from ... import ... is the norm unless there are namespace conflicts: python.org/dev/peps/pep-0008 (see "Imports").
    – Amber
    Mar 30, 2010 at 1:32
b = [x[:] for x in a]
  • 9
    +1 since appropriate. I personally like avoiding copy / deepcopy (very very rarely had a valid use case for them in real life ; the same can be said for a list with more then 2 dimensions imo) Mar 29, 2010 at 23:16
  • 1
    Can you please provide a use case? I'm trying to copy a 2D list, but I'm not sure what to replace with the variable names you provide.
    – John Locke
    Jan 10, 2019 at 1:18
  • @JohnLocke b is the new list, a is the old one. x is used internally.
    – Artemis
    Apr 9, 2019 at 1:29
  • for me, path was a 2D array and I wanted to copy path[i] so I did curr_level = [x[:] for x in path[i]] Jan 4, 2020 at 20:47
  • This is what I call efficient (and clever) programming! (Importing extra modules for something that can be done simply w/o them is inefficient.)
    – Apostolos
    Jan 8, 2021 at 18:05

Whis b = a[:] doesn't work for nested list(or say muti-dimension list)?

a = [[1, 2],[3, 4]]
b = a[:]

Answer: Though when we are copying the list a using slicing[:] operation but the inner sub-list still refers to the inner-sub list of list b

Note: We can check the reference using id() in python.
Let's understand using an example.

>>> a = [[1,2],[3,4]]
>>> id(a)
140191407209856    # unique id of a
>>> b=a
>>> id(b)
>>> b=a[:]        # Copying list a to b with slicing
>>> id(b)         
140191407209920   # id of list b changed & is not same as id of list a
>>> id(a[0])      
>>> id(b[0])
>>> id(a[0])==id(b[0])  # id of both a[0] & b[1] is same.

So, slicing won't change the reference for objects inside the list. You can notice from above that reference of a[0] is the same as b[0].
When you copy a 2D list to another, it adds a reference to it not the actual list.

Instead you can use:

  • b = copy.deepcopy(a)
  • b = [item[:] for item in a]
  • b = [item.copy() for item in a]
  • b = [list(item) for item in a]
  • b = [copy.copy(item) for item in a]
  • b = []; b.extens[a]

Below is the comparison of the time complexity of all available copy methods (source)

  1. 10.59 sec (105.9us/itn) - copy.deepcopy(old_list)

  2. 10.16 sec (101.6us/itn) - pure python Copy() method copying classes with deepcopy

  3. 1.488 sec (14.88us/itn) - pure python Copy() method not copying classes (only dicts/lists/tuples)

  4. 0.325 sec (3.25us/itn) - for item in old_list: new_list.append(item)

  5. 0.217 sec (2.17us/itn) - [i for i in old_list] (a list comprehension)

  6. 0.186 sec (1.86us/itn) - copy.copy(old_list)

  7. 0.075 sec (0.75us/itn) - list(old_list)

  8. 0.053 sec (0.53us/itn) - new_list = []; new_list.extend(old_list)

  9. 0.039 sec (0.39us/itn) - old_list[:] (list slicing)

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