11

I have an arbitrary length vector, and I want to reshape it into a square matrix, something like:

np.arange(6).reshape((3, 3))

[1,2,x]   [1,2,3]    
[3,4,x]   [4,5,6]
[5,6,x]   [x,x,x] 

The x can be horizontally and/or vertically placed.

Obviously reshape function will only allow parameter like (3,2) in the above example. Is there a way to produce effect of squared shaped matrix.Thanks.

2
  • What defines the shape of the square ? I can fit this into 7x7 too
    – percusse
    Commented Dec 16, 2016 at 2:30
  • Yes, it can be done. But each of the dimension of the matrix would be close to the square root of the length of the vector.
    – motiur
    Commented Dec 16, 2016 at 2:34

2 Answers 2

11

You'll have to pad the array, either before or after reshape.

For example, using the resize method to add the needed 0s:

In [409]: x=np.arange(6)
In [410]: x.resize(3*3)
In [411]: x.shape
Out[411]: (9,)
In [412]: x.reshape(3,3)
Out[412]: 
array([[0, 1, 2],
       [3, 4, 5],
       [0, 0, 0]])

The np.resize replicates values. np.pad is also handy for adding 0s, though it might overkill.

With np.arange(6) we can pad before or after reshape. With np.arange(5) we have to stick with before, because the padding will be irregular.

In [409]: x=np.arange(6)
In [410]: x.resize(3*3)
In [411]: x.shape
Out[411]: (9,)
In [412]: x.reshape(3,3)
Out[412]: 
array([[0, 1, 2],
       [3, 4, 5],
       [0, 0, 0]])

In any case there isn't one function that does all of this in one call - at least not that I know of. This isn't a common enough operation.

11

You can define the closest square and then carry the array to it and reshape

import numpy as np
n = np.random.randint(10, 200)
a = np.arange(n)
ns = np.ceil(np.sqrt(n)).astype(int)
s = np.zeros(ns**2)
s[:a.size] = a
s = s.reshape(ns,ns)

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