# Numpy array comparison using nditer

The code below is giving me the correct answer, but only works when the arrays (`plan` and `meas`) are relatively small. When I try to run this over the arrays I actually need to compare (300x300 each), it takes forever (I don't know how long because I have been terminating it after 45 minutes.) I would like to only iterate over a range of array values around the index being evaluated (`p`). I tried to find documentation on the nditer flag `'ranged'` but cannot find how to implement a specific range to iterate through.

``````p = np.nditer(plan, flags = ['multi_index','common_dtype'])
while not p.finished:
gam_store = 100.0
m = np.nditer(meas, flags = ['multi_index','common_dtype'])
while not m.finished:
dis_eval = np.sqrt(np.absolute(p.multi_index[0]-m.multi_index[0])**2 + np.absolute(p.multi_index[1]-m.multi_index[1])**2)
if dis_eval <= 6.0:
a = (np.absolute(p[0] - m[0]) / maxdose) **2
b = (dis_eval / gam_dist) **2
gam_eval = np.sqrt(a + b)
if gam_eval < gam_store:
gam_store = gam_eval
m.iternext()
gamma = np.insert(gamma, location, gam_store, 0)
location = location + 1
p.iternext()
``````
-
Are you using `np.insert` to add values to the end of the array? If so, you should use `np.append`. It will be more optimized than `np.insert`. That may help a bit. –  SethMMorton May 14 '13 at 19:51
Maybe I'm misunderstanding the question. If you only want to iterate through a part of the array, why don't you just slice it? If not, what do you want to do with `'ranged'`? –  askewchan May 14 '13 at 20:10
Slicing is a good idea. I was over thinking the problem. I will work on that. –  blake May 14 '13 at 20:16
@blake, I would try to slice before creating the nditer, e.g.: `p = np.nditer(plan[a:b], ...)` Also, if you want to get someone's attention, include their username: @blake. –  askewchan May 14 '13 at 21:10
@askwechan If I have a 2D numpy array, how do I slice an 2d area for example a 10x10 array around an index value? –  blake May 14 '13 at 22:23

If you only want to iterate through a small part of the array, I think (unless I am misunderstanding the question) that you should just create an nditer instance from a slice of the array.

Say you only want the array near `(i,j)`, then start with this:

``````w = 5    # half-size of the window around i, j
p = np.nditer(plan[i-w:i+w, j-w:j+w], flags=...)
``````

This works because, say

``````a = array([[ 0,  1,  2,  3,  4],
[ 5,  6,  7,  8,  9],
[10, 11, 12, 13, 14],
[15, 16, 17, 18, 19],
[20, 21, 22, 23, 24]])
``````

Then,

``````w = 1
i, j = 2,2
print a[i-w:i+w+1, j-w:j+w+1]
#array([[ 6,  7,  8],
#       [11, 12, 13],
#       [16, 17, 18]])
``````
-
Thanks, that helped a lot. –  blake May 18 '13 at 19:27