# How to initialize a two-dimensional array in Python?

I'm beginning python and I'm trying to use a two-dimensional list, that I initially fill up with the same variable in every place. I came up with this:

def initialize_twodlist(foo):
twod_list = []
new = []
for i in range (0, 10):
for j in range (0, 10):
new.append(foo)
twod_list.append(new)
new = []


It gives the desired result, but feels like a workaround. Is there an easier/shorter/more elegant way to do this?

• Just a small (or significant, depending on who is watching) nitpick : lists are not arrays. If you want arrays, use numpy. Apr 22, 2012 at 1:10
• This question is similar: it discusses the initialization of multidimensional arrays in Python. Apr 6, 2013 at 3:35
• @ArnabDatta How would you initialize a multidimensional array in numpy, then? Apr 6, 2013 at 16:17
• @AndersonGreen docs.scipy.org/doc/numpy/user/… Apr 9, 2013 at 7:18
• You can arrange data in an array like structure in default Python but it's not nearly as efficient or useful as a NumPy array. Especially if you want to deal with large data sets. Here's some documentation docs.scipy.org/doc/numpy-1.10.1/user/basics.creation.html May 16, 2016 at 21:08

Don't use [[v]*n]*n, it is a trap!

>>> a = [[0]*3]*3
>>> a
[[0, 0, 0], [0, 0, 0], [0, 0, 0]]
>>> a[0][0]=1
>>> a
[[1, 0, 0], [1, 0, 0], [1, 0, 0]]


but

    t = [ [0]*3 for i in range(3)]


works great.

• yes, I fell into this trap, too. It's because * is copying the address of the object (list). Jul 19, 2017 at 15:58
• Upvoted, since this got me. To be clearer, [[0] * col for _ in range(row)]. Dec 26, 2019 at 5:38
• Why does it work for the first dimension but not the second? l = [0] * 3 followed by l[0] = 1 yields [1, 0, 0] just fine. Sep 13, 2020 at 14:27
• Found the answer for why the first dimension works but not the second. List multiplication makes a shallow copy. When you assign to an index, it does a proper change, but access does not, so when you do a[x][y] = 2, it's accessing, not assigning, for the xth index - only the yth access is actually changed. This page helped me explain with diagrams that are probably better than what I tried explaining in this comment: geeksforgeeks.org/python-using-2d-arrays-lists-the-right-way Sep 13, 2020 at 14:34
• Just use Colab and encounter the exact same issue... wasted my 3 hours to debug...But you are a life saver, thank you, upvoted
– Near
Nov 22, 2021 at 15:32

A pattern that often came up in Python was

bar = []
for item in some_iterable:
bar.append(SOME EXPRESSION)


which helped motivate the introduction of list comprehensions, which convert that snippet to

bar = [SOME_EXPRESSION for item in some_iterable]


which is shorter and sometimes clearer. Usually, you get in the habit of recognizing these and often replacing loops with comprehensions.

Your code follows this pattern twice

twod_list = []                                       \
for i in range (0, 10):                               \
new = []                  \ can be replaced        } this too
for j in range (0, 10):    } with a list          /
new.append(foo)       / comprehension        /
twod_list.append(new)                           /

• By the way, [[foo]*10 for x in xrange(10)] can be used to get rid of one comprehension. The problem is that multiplication does a shallow copy, so new = [foo] * 10 new = [new] * 10 will get you a list containing the same list ten times. Mar 7, 2010 at 18:24
• Similarly, [foo] * 10 is a list with the same exact foo 10 times, which may or may not be important. Mar 9, 2010 at 20:55
• we can use the simplest thing: wtod_list = [[0 for x in xrange(10))] for x in xrange(10)] Jun 18, 2014 at 7:03
• @Scott Wolchok and Mike Graham - Very important point to make that the multiply with lists copies references to the same list. How do you instantiate an MxN matrix without append? Nov 7, 2016 at 22:31
• For Mike Graham's comment about [foo] * 10: This means that this wouldn't work if you're filling an array with random numbers (evaluates [random.randint(1,2)] * 10 to [1] * 10 or [2] * 10 which means that you get an array of all 1s or 2s, instead of a random array. Jun 6, 2019 at 19:24

You can use a list comprehension:

x = [[foo for i in range(10)] for j in range(10)]
# x is now a 10x10 array of 'foo' (which can depend on i and j if you want)

• since the size (10) is same its fine, if not the nested loop have to come first [foo for j in range(range_of_j)] for i in range(range_of_i)] Mar 28, 2015 at 12:48
• This answer works fine but I since we iterate i for rows and j for columns, I think it should be better to swap i and j in your syntax for better understanding and change the range to 2 different numbers. Oct 20, 2017 at 21:46

This way is faster than the nested list comprehensions

[x[:] for x in [[foo] * 10] * 10]    # for immutable foo!


Here are some python3 timings, for small and large lists

$python3 -m timeit '[x[:] for x in [[1] * 10] * 10]' 1000000 loops, best of 3: 1.55 usec per loop$ python3 -m timeit '[[1 for i in range(10)] for j in range(10)]'
100000 loops, best of 3: 6.44 usec per loop

$python3 -m timeit '[x[:] for x in [[1] * 1000] * 1000]' 100 loops, best of 3: 5.5 msec per loop$ python3 -m timeit '[[1 for i in range(1000)] for j in range(1000)]'
10 loops, best of 3: 27 msec per loop


Explanation:

[[foo]*10]*10 creates a list of the same object repeated 10 times. You can't just use this, because modifying one element will modify that same element in each row!

x[:] is equivalent to list(X) but is a bit more efficient since it avoids the name lookup. Either way, it creates a shallow copy of each row, so now all the elements are independent.

All the elements are the same foo object though, so if foo is mutable, you can't use this scheme., you'd have to use

import copy
[[copy.deepcopy(foo) for x in range(10)] for y in range(10)]


or assuming a class (or function) Foo that returns foos

[[Foo() for x in range(10)] for y in range(10)]

• @Mike, did you miss the part in bold? if foo is mutable, none of the other answers here work (unless you are not mutating foo at all) Feb 18, 2011 at 22:48
• You cannot correctly copy arbitrary objects using copy.deepcopy. You need a plan specific to your data if you have an arbitrary mutable object. Feb 22, 2011 at 17:22
• If you need speed that badly in a loop, it may be time to use Cython, weave, or similar... Oct 21, 2012 at 7:10
• @JohnLaRooy i think you interchanged x and y. Shouldn't it be [[copy.deepcopy(foo) for y in range(10)] for x in range(10)] Apr 9, 2016 at 12:17
• @Nils [foo]*10 doesn't create 10 different objects - but it's easy to overlook the difference in the case where foo is immutable, like an int or str. May 6, 2018 at 23:09

To initialize a two-dimensional array in Python:

a = [[0 for x in range(columns)] for y in range(rows)]

• To initialize all values to 0, just use a = [[0 for x in range(columns)] for y in range(rows)].
– ZX9
Sep 21, 2016 at 15:33
• [[0 for x in range(cols)] for y in range(rows)] is slow, use [ [0]*cols for _ in range(rows)] Mar 9 at 1:32
[[foo for x in xrange(10)] for y in xrange(10)]

• xrange() has been removed in python3.5 Jan 6, 2016 at 16:27
• why this doesn't work: [0 * col] * row. When I modify some element it replicates at other places. But I don't understand why? Apr 29, 2016 at 19:50
• Because that does exactly the same thing as the code in the question. Apr 29, 2016 at 19:54
• @codemuncher The reason that [[0] * col] * row doesn't do what you want is because when you initialize a 2d list that way, Python will not create distinct copies of each row. Instead it will init the outer list with pointers to the same copy of [0]*col. Any edit you make to one of the rows will then be reflected in the remaining rows since they are all actually pointing to the same data in memory. May 29, 2017 at 6:12
• Just a thought but aren't all these lists no good for appending to? Ie. if i want an empty 2D list of dimension 3 *6 and want to append to index[0][0], [1][0], [2][0] and so on to fill up all 18 elements, none of these answers will work right? Nov 16, 2019 at 5:00

Usually when you want multidimensional arrays you don't want a list of lists, but rather a numpy array or possibly a dict.

For example, with numpy you would do something like

import numpy
a = numpy.empty((10, 10))
a.fill(foo)

• Although numpy is great, I think it might be a bit of overkill for a beginner. Mar 7, 2010 at 17:42
• numpy provides a multidimensional array type. Building a good multidimensional array out of lists is possible but less useful and harder for a beginner than using numpy. Nested lists are great for some applications, but aren't usually what someone wanting a 2d array would be best off with. Mar 7, 2010 at 17:46
• after a few years of occasionally doing serious python apps the quirks of standard python arrays seem to warrant just going ahead with numpy. +1 Aug 24, 2017 at 18:23

For those who are confused why [['']*m]*n is not good to use.
Reason:- Python uses calls by reference, so changing one value in above case cause changing of other index values also.

Best way is [['' for i in range(m)] for j in range(n)]
This will solve all the problems.

For more Clarification
Example:

>>> x = [['']*3]*3
[['', '', ''], ['', '', ''], ['', '', '']]
>>> x[0][0] = 1
>>> print(x)
[[1, '', ''], [1, '', ''], [1, '', '']]

>>> y = [['' for i in range(3)] for j in range(3)]
[['', '', ''], ['', '', ''], ['', '', '']]
>>> y[0][0]=1
>>> print(y)
[[1, '', ''], ['', '', ''], ['', '', '']]

• Thanks for explaining this. I was looking for this. yesterday

You can do just this:

[[element] * numcols] * numrows


For example:

>>> [['a'] *3] * 2
[['a', 'a', 'a'], ['a', 'a', 'a']]


But this has a undesired side effect:

>>> b = [['a']*3]*3
>>> b
[['a', 'a', 'a'], ['a', 'a', 'a'], ['a', 'a', 'a']]
>>> b[1][1]
'a'
>>> b[1][1] = 'b'
>>> b
[['a', 'b', 'a'], ['a', 'b', 'a'], ['a', 'b', 'a']]

• In my experience, this "undesirable" effect is often a source of some very bad logical errors. In my opinion, this approach should be avoided, instead @Vipul's answer is much better. Jun 20, 2015 at 19:28
• this approach works good , why in comments some people refer it is as bad ? Oct 25, 2017 at 4:12
• Because of the undersired side effect, you cannot really treat it as a matrix. If you dont need to alter the contents then it'll be all right. Nov 22, 2017 at 0:59
• this is bad because you are soft-copying the same row in your matrix and changing one element will change all the rest.
– Yar
Apr 24 at 17:18
twod_list = [[foo for _ in range(m)] for _ in range(n)]


for n is number of rows, and m is the number of column, and foo is the value.

If it's a sparsely-populated array, you might be better off using a dictionary keyed with a tuple:

dict = {}
key = (a,b)
dict[key] = value
...


Code:

num_rows, num_cols = 4, 2
initial_val = 0
matrix = [[initial_val] * num_cols for _ in range(num_rows)]
print(matrix)
# [[0, 0], [0, 0], [0, 0], [0, 0]]


initial_val must be immutable.

t = [ [0]*10 for i in [0]*10]


for each element a new [0]*10 will be created ..

### Incorrect Approach: [[None*m]*n]

>>> m, n = map(int, raw_input().split())
5 5
>>> x[0][0] = 34
>>> x
[[34, None, None, None, None], [34, None, None, None, None], [34, None, None, None, None], [34, None, None, None, None], [34, None, None, None, None]]
>>> id(x[0][0])
140416461589776
>>> id(x[3][0])
140416461589776


With this approach, python does not allow creating different address space for the outer columns and will lead to various misbehaviour than your expectation.

### Correct Approach but with exception:

y = [[0 for i in range(m)] for j in range(n)]
>>> id(y[0][0]) == id(y[1][0])
False


It is good approach but there is exception if you set default value to None

>>> r = [[None for i in range(5)] for j in range(5)]
>>> r
[[None, None, None, None, None], [None, None, None, None, None], [None, None, None, None, None], [None, None, None, None, None], [None, None, None, None, None]]
>>> id(r[0][0]) == id(r[2][0])
True


So set your default value properly using this approach.

### Absolute correct:

To initialize a 2-dimensional array use: arr = [[]*m for i in range(n)]

actually, arr = [[]*m]*n will create a 2D array in which all n arrays will point to same array, so any change in value in any element will be reflected in all n lists

for more further explanation visit : https://www.geeksforgeeks.org/python-using-2d-arrays-lists-the-right-way/

use the simplest think to create this.

wtod_list = []


wtod_list = [[0 for x in xrange(10)] for x in xrange(10)]


or if we want to declare the size firstly. we only use:

   wtod_list = [[0 for x in xrange(10)] for x in xrange(10)]


Initializing a 2D matrix of size m X n with 0

m,n = map(int,input().split())
l = [[0 for i in range(m)] for j in range(n)]
print(l)

• Can you tell me, when we do [[0]*m]*n it creates similar 2d list but doesn't index like a matrix? Dec 7, 2020 at 10:11
• @Rehan Yes that is absolute garbage behavior by python. I just puzzled over that for tens of minutes Mar 6, 2021 at 16:38
Matrix={}
for i in range(0,3):
for j in range(0,3):
Matrix[i,j] = raw_input("Enter the matrix:")

• While this code may answer the question, providing additional context regarding why and/or how this code answers the question improves its long-term value. Mar 8, 2016 at 17:15

If you use numpy, you can easily create 2d arrays:

import numpy as np

row = 3
col = 5
num = 10
x = np.full((row, col), num)


x

array([[10, 10, 10, 10, 10],
[10, 10, 10, 10, 10],
[10, 10, 10, 10, 10]])

• Given the just lousy behavior of python's [[0]*M]*N which creates the "trap" described by @JasonChan - yes let's use numpy (which is really the primary reason to use python anyways) Mar 6, 2021 at 16:41
row=5
col=5
[[x]*col for x in [b for b in range(row)]]


The above will give you a 5x5 2D array

[[0, 0, 0, 0, 0],
[1, 1, 1, 1, 1],
[2, 2, 2, 2, 2],
[3, 3, 3, 3, 3],
[4, 4, 4, 4, 4]]


It is using nested list comprehension. Breakdown as below:

[[x]*col for x in [b for b in range(row)]]


[x]*col --> final expression that is evaluated
for x in --> x will be the value provided by the iterator
[b for b in range(row)]] --> Iterator.

[b for b in range(row)]] this will evaluate to [0,1,2,3,4] since row=5
so now it simplifies to

[[x]*col for x in [0,1,2,3,4]]


This will evaluate to [[0]*5 for x in [0,1,2,3,4]] --> with x=0 1st iteration
[[1]*5 for x in [0,1,2,3,4]] --> with x=1 2nd iteration
[[2]*5 for x in [0,1,2,3,4]] --> with x=2 3rd iteration
[[3]*5 for x in [0,1,2,3,4]] --> with x=3 4th iteration
[[4]*5 for x in [0,1,2,3,4]] --> with x=4 5th iteration

As @Arnab and @Mike pointed out, an array is not a list. Few differences are 1) arrays are fixed size during initialization 2) arrays normally support lesser operations than a list.

Maybe an overkill in most cases, but here is a basic 2d array implementation that leverages hardware array implementation using python ctypes(c libraries)

import ctypes
class Array:
def __init__(self,size,foo): #foo is the initial value
self._size = size
ArrayType = ctypes.py_object * size
self._array = ArrayType()
for i in range(size):
self._array[i] = foo
def __getitem__(self,index):
return self._array[index]
def __setitem__(self,index,value):
self._array[index] = value
def __len__(self):
return self._size

class TwoDArray:
def __init__(self,columns,rows,foo):
self._2dArray = Array(rows,foo)
for i in range(rows):
self._2dArray[i] = Array(columns,foo)

def numRows(self):
return len(self._2dArray)
def numCols(self):
return len((self._2dArray)[0])
def __getitem__(self,indexTuple):
row = indexTuple[0]
col = indexTuple[1]
assert row >= 0 and row < self.numRows() \
and col >=0 and col < self.numCols(),\
"Array script out of range"
return ((self._2dArray)[row])[col]

if(__name__ == "__main__"):
twodArray = TwoDArray(4,5,5)#sample input
print(twodArray[2,3])


I use it this way to create mxn matrix where m = no(rows) and n = no(columns).

arr = [[None]*(n) for _ in range(m)]


This is the best I've found for teaching new programmers, and without using additional libraries. I'd like something better though.

def initialize_twodlist(value):
list=[]
for row in range(10):
list.append([value]*10)
return list


Here is an easier way :

import numpy as np
twoD = np.array([[]*m]*n)


For initializing all cells with any 'x' value use :

twoD = np.array([[x]*m]*n


Often I use this approach for initializing a 2-dimensional array

n=[[int(x) for x in input().split()] for i in range(int(input())]

The general pattern to add dimensions could be drawn from this series:

x = 0
mat1 = []
for i in range(3):
mat1.append(x)
x+=1
print(mat1)

x=0
mat2 = []
for i in range(3):
tmp = []
for j in range(4):
tmp.append(x)
x+=1
mat2.append(tmp)

print(mat2)

x=0
mat3 = []
for i in range(3):
tmp = []
for j in range(4):
tmp2 = []
for k in range(5):
tmp2.append(x)
x+=1
tmp.append(tmp2)
mat3.append(tmp)

print(mat3)

• Welcome to SO. This question already has a massively up-voted accepted answer. At first sight, this post doesn't actually answer the question. See stackoverflow.com/help/how-to-answer for guidance.
– Nick
Jul 16, 2018 at 16:53

The important thing I understood is: While initializing an array(in any dimension) We should give a default value to all the positions of array. Then only initialization completes. After that, we can change or receive new values to any position of the array. The below code worked for me perfectly

N=7
F=2

#INITIALIZATION of 7 x 2 array with deafult value as 0
ar=[[0]*F for x in range(N)]

#RECEIVING NEW VALUES TO THE INITIALIZED ARRAY
for i in range(N):
for j in range(F):
ar[i][j]=int(input())
print(ar)


• This is still the trap, as described in the accepted answer Dec 13, 2021 at 6:42

Another way is to use a dictionary to hold a two-dimensional array.

twoD = {}
twoD[0,0] = 0
print(twoD[0,0]) # ===> prints 0


This just can hold any 1D, 2D values and to initialize this to 0 or any other int value, use collections.

import collections
twoD = collections.defaultdict(int)
print(twoD[0,0]) # ==> prints 0
twoD[1,1] = 1
print(twoD[1,1]) # ==> prints 1

lst=[[0]*n]*m
np.array(lst)


initialize all matrix m=rows and n=columns

• Can you please format code as code? It would be way more readable. May 3, 2020 at 15:38

An empty 2D matrix may be initialized in the following manner:

temp=[[],[]]