# Python: Iterating lists with different amount of dimensions, is there a generic way?

# 2x3 dimensional list
multidim_list = [
[1,2,3],
[4,5,6],
]
# 2x3x2 dimensional list
multidim_list2 = [
[
[1,2,3],
[4,5,6],
],
[
[7,8,9],
[10,11,12],
]
]

def multiply_list(list):
...

I would like to implement a function, that would multiply all elements in list by two. However my problem is that lists can have different amount of dimensions.

Is there a general way to loop/iterate multidimensional list and for example multiply each value by two?

EDIT1: Thanks for the fast answers. For this case, I don't want to use numpy. The recursion seems good, and it doesn't even need to make copy of the list, which could be quite large actually.

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from collections import MutableSequence
def multiply(list_):
for index, item in enumerate(list_):
if isinstance(item, MutableSequence):
multiply(item)
else:
list_[index] *= 2

You could just do isinstance(item, list) instead of isinstance(item, MutableSequence), but the latter way is more futureproof and generic. See the glossary for a short explanation.

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This is what I wanted. It has been long since I previously used recursion, have almost forgotten it. And I didn't want to use numpy for this case. –  JoonasS Apr 22 '12 at 21:18
"… it is also the way such checks are done in the python libraries." Just out of curiosity – what Python libraries do you have in mind here? –  Sven Marnach Apr 22 '12 at 23:06
@Sven Busted. Searching the "batteries" I've found no such check. Closest I've come is that shutil uses isinstance(function, collections.Callable). There's tons of isinstance(x, list) checks though. I thougth that wherever a built-in function or class needed to check the type of its args (e.g. is it a list or a dict) it would do this by using the ABCs in collections, so that users might substitute the list object with a MutableSequence subclass and still have it work. Honestly, I thought this was a big reason why they introduced the ABCs in the first place. I'll edit my answer. –  Lauritz V. Thaulow Apr 23 '12 at 7:33

You can make use of numpy:

import numpy as np

arr_1 = np.array(multidim_list)
arr_2 = np.array(multidim_list2)

Result:

>>> arr_1*2
array([[ 2,  4,  6],
[ 8, 10, 12]])
>>> arr_2*2
array([[[ 2,  4,  6],
[ 8, 10, 12]],

[[14, 16, 18],
[20, 22, 24]]])
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