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