# Python numpy indexing does not work

``````import numpy as np
dx = 8
dy = 10
bx = 5.34
by = 1.09
index = np.zeros((dx+dy),dtype = 'int32')
for i in np.arange(1,dy+1):
for j in np.arange (1,dx+1):
if i-by > 0:
theta = 180*np.arctan(abs(j-bx)/(i-by))/np.pi
if theta<10:
r = np.around(np.sqrt((j-bx)**2+(i-by)**2))
r = r.astype(int)
if r>0:
index[r]+=1
output = np.zeros((r, index[r]),dtype='int32')
output[r-1,index[r]-1] = i+(j-1)*dy
``````

this code should use (r, index[r]) as indices and put the value of i+(j-1)*dy to the corresponding indices and record that in a new matrix/array which should look like this-

``````array([[ 0,  0,  0],
[ 0,  0,  0],
[44,  0,  0],
[45, 55,  0],
[46, 56,  0],
[47, 57,  0],
[48, 58,  0],
[39, 49, 59],
[40, 50, 60]])
``````

But I am having the output like this instead which I don't want-

``````array([[ 0,  0,  0],
[ 0,  0,  0],
[ 0,  0,  0],
[ 0,  0,  0],
[ 0,  0,  0],
[ 0,  0,  0],
[ 0,  0,  0],
[ 0,  0,  0],
[ 0,  0, 60]])
``````
-
There is probably a much more efficient way to set these values instead of using nested loops. It would help if you would explain a bit more what the meaning of your output is. –  askewchan May 6 '13 at 15:39

It's hard to tell what your code is trying to do. Is your desired output supposed to be `s`, `c`, or `index`?

Or, maybe you want to create a new array, I'll call it `output` and then you can set the value of `output` at `s` to `c` using: `output[s] = c`.

If you don't know the size in advance, then the best thing I can think of right now is keep track of all the index values in a list of `rows` and `cols`, and of the actual values in a list of `values`:

``````import numpy as np
dx = 8
dy = 10
bx = 5.34
by = 1.09
index = np.zeros(dx+dy,dtype = 'int32')
rows = []
cols = []
vals = []
for i in np.arange(2,dy+1):
for j in np.arange(1,dx+1):
theta = 180*np.arctan(abs(j-bx)/(i-by))/np.pi
if theta < 10:
r = np.around(np.sqrt((j-bx)**2+(i-by)**2))
r = r.astype(int)
if r > 0:
index[r] += 1
rows.append(r-1)
cols.append(index[r]-1)
vals.append(i+(j-1)*dy)

outshape = max(rows)+1, max(cols)+1  # now you know the size
output = np.zeros(outshape, np.int)
output[rows, cols] = vals
``````

Then, `output` looks like this:

``````In [60]: output
Out[60]:
array([[ 0,  0,  0],
[ 0,  0,  0],
[44,  0,  0],
[45, 55,  0],
[46, 56,  0],
[47, 57,  0],
[48, 58,  0],
[39, 49, 59],
[40, 50, 60]])
``````

If you know the size in advance:

``````import numpy as np
dx = 8
dy = 10
bx = 5.34
by = 1.09
index = np.zeros(dx+dy,dtype = 'int32')
outshape = (nrows, ncols)                        # if you know the size
output = np.zeros(outshape, np.int)              # initialize the output matrix
for i in np.arange(2,dy+1):
for j in np.arange(1,dx+1):
theta = 180*np.arctan(abs(j-bx)/(i-by))/np.pi
if theta < 10:
r = np.around(np.sqrt((j-bx)**2+(i-by)**2))
r = r.astype(int)
if r > 0:
index[r] += 1
output[r-1, index[r]-1] = i+(j-1)*dy  # no need to set `s` or `c`
``````
-
@ askewchan - Hi, the way you solve is giving the right output. But I dont know the size of the output. The output size actually depends on (r,index[r]). In that case how can I define the output array so that it will make the output depending on the indice values of r,index[r]. –  user2095624 May 6 '13 at 18:14
so actually in this code r is radius within 20 degree(defined by theta<10), index is counting how many radius are there and output should positioned the index in a matrix. –  user2095624 May 6 '13 at 18:18
Is there any way I can set the output like output = np.zeros(r,index[r]) so that it will create the output the exact size and use (r-1,index[r]-1) as indices and put the value of i+(j-1)*dy in the corresponding indices position of the output array which should give the exact output as you mentioned in your answer –  user2095624 May 6 '13 at 18:32
I have edited the question what I tried later and still no luck. please have a look and thanks for your time –  user2095624 May 6 '13 at 18:52
@user2095624 The problem with your edit (and using `r` to define the size) is that `r` changes with each loop, but you want to have only one `output`. You want to try to find out what `max(rs)` and `max(index)` would be, and make the shape of your output array be `(max(rs), max(index))`. If you use `np.zeros` inside your loop, you'll erase all the changes from previous loops. –  askewchan May 6 '13 at 19:10