# How to loop through 2D numpy array using x and y coordinates without getting out of bounds error?

I have tried the following:

``````import numpy as np
a = np.array([[1,2,3],[4,5,6],[7,8,9],[10,11,12]])
print a
rows = a.shape
cols = a.shape
print rows
print cols

for x in range(0, cols - 1):
for y in range(0, rows -1):
print a[x,y]
``````

This will only print numbers 1 - 6.

I have also tried only subtracting 1 from either rows or cols in the range, but that either leads to out of bounds error or not all numbers printed.

`a.shape` is the number of rows and the size of the first dimension, while `a.shape` is the size of the second dimension. You need to write:

``````for x in range(0, rows):
for y in range(0, cols):
print a[x,y]
``````

Note how rows and cols have been swapped in the `range()` function.

Edit: It has to be that way because an array can be rectangular (i.e. rows != cols). `a.shape` is the size of each dimension in the order they are indexed. Therefore if `shape` is `(10, 5)` when you write:

``````a[x, y]
``````

the maximum of x is 9 and the maximum for y is 4. `x` and `y` are actually poor names for array indices, because they do not represent a mathematical cartesisan coordinate system, but a location in memory. You can use i and j instead:

``````for i in range(0, rows):
for j in range(0, cols):
print a[i,j]
``````

The documentation is a bit long but has a good in-depth description of indices and shapes.

• Right, the swapping has really been screwing me up lately. I don't understand why it has to be that way. – CompSci-PVT May 28 '15 at 7:31

You get prettier code with:

``````for ix,iy in np.ndindex(a.shape):
print(a[ix,iy])
``````

resulting in:

``````1
2
3
4
5
6
7
8
9
10
11
12
``````
• I got one question: Is this the most efficient method for accessing a value at index ix,iy? I'm trying to implement an image processing algorithm that's why I'm asking for. Thanks! – Ali İhsan Elmas Mar 23 at 17:09
• @Ali Ihsan Elmas: This is probably /surely not an efficient way for image processing. Use 'scipy.ndimage' and image filters instead. The functions 'convolve' and 'generic_filter' are interesting candidates to start with. – Markus Dutschke Mar 24 at 9:50

You can use `xrange`.

``````for x in xrange(rows):
for y in xrange(cols):
print a[x,y]
``````
• Thank you. Could you explain why using range(0, n) does not work? And what is the advantage to using xrange? Also, why does it seem that when iterating through x and y coordinates it is always opposite. X should be columns and y should be rows. – CompSci-PVT May 28 '15 at 7:29
• `range` also works, but adding the `-1` at the end removes the last `column` item and the entire last `row`. `xrange` is usually better in terms of performance. If you want a entire explanation of when to use `xrange` or `range`, please read: stackoverflow.com/questions/135041/… – Avión May 28 '15 at 7:31
• xrange has been replaced by range in Python 3. – Tanya Branagan Aug 11 '18 at 22:18