# Fastest method to create 2D numpy array whose elements are in range

I want to create a 2D numpy array where I want to store the coordinates of the pixels such that numpy array looks like this

``````[(0, 0), (0, 1), (0, 2), ...., (0, 510), (0, 511)
(1, 0), (1, 1), (1, 2), ...., (1, 510), (1, 511)
..
..
..
(511, 0), (511, 1), (511, 2), ...., (511, 510), (511, 511)]
``````

This is a ridiculous question but I couldn't find anything yet.

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The way you have it formatted, it looks like you want a 3D array of shape (512, 512, 2) ... but the syntactic markup you've given is for a 2D array of shape (512 * 512, 2). Could you clarify ? –  lmjohns3 Aug 21 '13 at 14:50

Can use `np.indices` or `np.meshgrid` for more advanced indexing:

``````>>> data=np.indices((512,512)).swapaxes(0,2).swapaxes(0,1)
>>> data.shape
(512, 512, 2)

>>> data[5,0]
array([5, 0])
>>> data[5,25]
array([ 5, 25])
``````

This may look odd because its really made to do something like this:

``````>>> a=np.ones((3,3))
>>> ind=np.indices((2,1))
>>> a[ind[0],ind[1]]=0
>>> a
array([[ 0.,  1.,  1.],
[ 0.,  1.,  1.],
[ 1.,  1.,  1.]])
``````

A `mgrid` example:

``````np.mgrid[0:512,0:512].swapaxes(0,2).swapaxes(0,1)
``````

A meshgrid example:

``````>>> a=np.arange(0,512)
>>> x,y=np.meshgrid(a,a)
>>> ind=np.dstack((y,x))
>>> ind.shape
(512, 512, 2)

>>> ind[5,0]
array([5, 0])
``````

All are equivalent ways of doing this; however, `meshgrid` can be used to create non-uniform grids.

If you do not mind switching row/column indices you can drop the final `swapaxes(0,1)`.

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You can use `np.ogrid` here. Instead of storing a `tuple`, store it in a 3D array.

``````>>> t_row, t_col = np.ogrid[0:512, 0:512]
>>> a = np.zeros((512, 512, 2), dtype=np.uint8)
>>> t_row, t_col = np.ogrid[0:512, 0:512]
>>> a[t_row, t_col, 0] = t_row
>>> a[t_row, t_col, 1] = t_col
``````

This should do the trick. Hopefully you can use this, instead of the tuple.

Chintak

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