# Assigning numpy array elements through predefined array

I have arrays `newx` and `newy` with size `nx*ns` and `ny*ns` respectively where `nx!=ny`.
I want to be able to set the elements defined by `newx` and `newy` in array `f` by:

``````f = np.zeros([nx,ny,ns])
for s in range(ns):
f[newx[:,s],newy[:,s],s] = s
``````

Unfortunately this gives an error:

``````ValueError: shape mismatch: objects cannot be broadcast to a single shape
``````

I understand the error but for the life of me can't figure out the correct syntax. plz help out.

Edit: provided sample code:

``````import numpy as np

newx = np.array([[0,1],
[1,2],
[2,3],
[3,0]])
newy = np.array([[0,1],
[1,2],
[2,0]])

f = np.zeros([4,3,2])
for s in range(2):
f[newx[:,s],newy[:,s],s] = s
``````
-
Show us complete working code. –  John Zwinck Apr 8 '14 at 13:58
newx and newy don't make any sense. If you want to set to s the elements at some coordinates, you should have that number of x,y,s triplets rather than a different number of x,s and y,s pairs. –  Lorenzo Gatti Apr 8 '14 at 15:11

newx and newy must have the same shape , so you must reshape them.

``````f = np.zeros([4,3,2])

newX = newx.reshape(8,1)
newY = newy.reshape(6,)

for s in range(2):
f[newX , newY ,s] = s

print f
``````
-
Ok got it, your tip that the newx and newy should be the same size was the solution. thx –  nlooije Apr 8 '14 at 15:43
Or better yet: `np.tile(np.arange(2),(newx.shape[0],newy.shape[0],1))` will give the same result. –  Ophion Apr 8 '14 at 15:44