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Slicing 3d numpy arrays

Consider the following:

A = np.zeros((2,3))
print(A)

[[ 0.  0.  0.]
 [ 0.  0.  0.]]

This make sense to me. I'm telling numpy to make a 2x3 matrix, and that's what I get.

However, the following:

B = np.zeros((2, 3, 4))
print(B)

Gives me this:

[[[ 0.  0.  0.  0.]
  [ 0.  0.  0.  0.]
  [ 0.  0.  0.  0.]]

 [[ 0.  0.  0.  0.]
  [ 0.  0.  0.  0.]
  [ 0.  0.  0.  0.]]]

This doesn't make sense to me. Aren't I telling numpy to make a cube which has 4 2x3 matrices? I'm even more confused because although the data structure looks incorrect, the slicing works exactly as planned:

print(B[:,:,1])

[[ 0.  0.  0.]
 [ 0.  0.  0.]]

I'm missing something about how these arrays are constructed, but I'm not sure what. Can someone explain what I'm missing or not understanding?

Thanks so much!

NumPy arrays iterate over the left-most axis first. Thus if B has shape (2,3,4), then B[0] has shape (3,4) and B[1] has shape (3,4). In this sense, you could think of B as 2 arrays of shape (3,4). You can sort of see the two arrays in the repr of B :

In [233]: B = np.arange(2*3*4).reshape((2,3,4))
array([[[ 0,  1,  2,  3],
        [ 4,  5,  6,  7],       <-- first (3,4) array 
        [ 8,  9, 10, 11]],

       [[12, 13, 14, 15],
        [16, 17, 18, 19],      <-- second (3,4) array 
        [20, 21, 22, 23]]])

You can also think of B as containing four 2x3 arrays by iterating over the last index first:

for i in range(4):
    print(B[:,:,i])

# [[ 0  4  8]
#  [12 16 20]]
# [[ 1  5  9]
#  [13 17 21]]
# [[ 2  6 10]
#  [14 18 22]]
# [[ 3  7 11]
#  [15 19 23]]

but you could just as easily think of B as three 2x4 arrays:

for i in range(3):
    print(B[:,i,:])

# [[ 0  1  2  3]
#  [12 13 14 15]]
# [[ 4  5  6  7]
#  [16 17 18 19]]
# [[ 8  9 10 11]
#  [20 21 22 23]]

NumPy arrays are completely flexible this way. But as far as the repr of B is concerned, what you see corresponds to two (3x4) arrays since B iterates over the left-most axis first.

for arr in B:
    print(arr)

# [[ 0  1  2  3]
#  [ 4  5  6  7]
#  [ 8  9 10 11]]
# [[12 13 14 15]
#  [16 17 18 19]
#  [20 21 22 23]]

B is a 3D matrix. the indices that you specified (2x3x4) is exactly what is printed out. the outermost brackets have 2 elements, the middle brackets have 3 elements, and the innermost brackets have 4 elements.

I hope the below example would clarify the second part of your question where you have asked about getting a 2X3 matrics when you type print(B[:,:,1])

import numpy as np
B = [[[1,2,3,4],
  [5,6,7,8],
  [9,10,11,12]],

 [[13,14,15,16],
  [17,18,19,20],
  [21,22,23,24]]]

B = np.array(B)
print(B)
print()
print(B[:,:,1])

[[[ 1  2  3  4]
  [ 5  6  7  8]
  [ 9 10 11 12]]

 [[13 14 15 16]
  [17 18 19 20]
  [21 22 23 24]]]

[[ 2  6 10]
 [14 18 22]]

Since the dimension of B is 2X3X4 , It means you have two matrices of size 3X4 as far as repr of B is concerned

Now in B[:,:,1] we are passing : , : and 1 . First : indicates that we are selecting both the 3X4 matrices . The second : indicates that we are selecting all the rows from both the 3X4 matrices . The third parameter 1 indicates that we are selecting only the second column values of all the rows from both the 3X4 matrices . Hence we get

[[ 2  6 10]
 [14 18 22]]

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