3

Is there an easy way in numpy to reverse the order of the diagonal of a matrix? I have a 2x2 matrix like this:

[ 213 5
  198 24 ]

but I want it to be like this:

[ 24  5
  198 213 ]

I've played around with np.diagonal, but not sure how I can do this efficiently without a loop.

1

Here's one with np.einsum -

def flip_diag(a):
    w = np.einsum('ii->i',a)
    w[:] = w[::-1]
    return a

Another with np.fill_diagonal -

np.fill_diagonal(a,np.diag(a)[::-1].copy())

Another with flattend indexing -

a.flat[::a.shape[1]+1] = a.flat[::-a.shape[1]-1]

Benchmarking

Solutions as functions :

# @Quang Hoang's soln
def range_diagonal(a):
    idx = np.arange(len(a))
    a[idx,idx] = np.diagonal(a)[::-1]
    return a    

def fill_diagonal(a):
    np.fill_diagonal(a,np.diag(a)[::-1].copy())
    return a

def flattened_index(a):
    a.flat[::a.shape[1]+1] = a.flat[::-a.shape[1]-1]
    return a

Using benchit package (few benchmarking tools packaged together; disclaimer: I am its author) to benchmark proposed solutions.

import benchit

funcs = [range_diagonal, flip_diag, fill_diagonal, flattened_index]
in_ = [np.random.rand(n,n) for n in [2,5,8,20,50,80,200,500,800,2000,5000]]
t = benchit.timings(funcs, in_)
t.plot(logx=True, save='timings.png')

enter image description here

flip_diag and flattened_index look good and choosing one among them could be based on the input array sizes.

| improve this answer | |
1

For 2x2 matrix:

a[::-1].T[::-1]

For a general n x n:

idx = np.arange(len(a))

a[idx,idx] = np.diagonal(a)[::-1]
| improve this answer | |
  • The general solution does not work. I suggest using a[idx,idx] = np.flip(a[idx,idx]) – tstanisl Jun 18 at 20:57

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.