# Numpy: Reshaping this array in the least number of operations

I have an array with 112 lines and 40 columns.

The format I need to convert to is 40 sets of 56 points each with x, y.

So, the first line has the x coordinates of the first point in each set. The second line has the x of the second points in the set... until the 56th line. After that I have the y's.

``````1st line : 40 x's
2nd line: 40 x's
...
56th line: 40 x's
57th line: 40 y's
...
112th line: 40 y's
``````

Initially I thought about doing `data.reshape(40, 56, 2)` but that doesn't work because the values for x come before the values for y. If instead I had one line with x's and another with y's that would work though.

Edit:

``````for i in xrange(len(data)/2):
points.append(data[i])
points.append(data[i+len(data)/2])
points = np.array(points).T.reshape(len(data[0]), len(data)/2, 2)
return points
``````
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Just one idea:

``````[[(data[i,j], data[i+56,j]) for i in range(56)] for j in range(40)]
``````

Returns a list of list of tuples.

EDIT: Your edit clarifies what you want. If you want pure Numpy, then does this work?

``````data.reshape(2, 56, 40).swapaxes(0,2)
``````
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yeah that's what i was looking for. thanks. could you explain to me why you used 0 and 2 though? – pnodbnda Jan 27 '11 at 5:41
Trial and error. :-) `reshape` confuses me, especially since Matlab traverses column-wise by default, while Numpy traverses row-wise by default. As a sanity check, create `numpy.arange(112*40).reshape(112,40)`. Then reshape it, and check the elements to see if they match the desired output. – Steve Tjoa Jan 27 '11 at 5:56
i got it. it has 3 dimensions, so when you swap you swap 0 and 2 you swap 2 and 40, meaning you get an array 40 x 56 x 2 – pnodbnda Jan 27 '11 at 5:58
Yes, that part I understand. But if you did `data.reshape(40, 2, 56).swapaxes(1,2)`, that would be wrong because the data is not reordered correctly, regardless of the fact that the dimensions are correct. – Steve Tjoa Jan 27 '11 at 16:57

I'll use a smaller array (8 x 5) so we can view the returned values easily.

``````import numpy as NP

# just create a smaller array to work with:
A = NP.random.randint(0, 10, 40).reshape(8, 5)

# split A in half, to separate x and y
p, q = NP.vsplit(A, 2)

# create a 'template' array of the correct dimension
xy = NP.zeros(2, 4, 5)

# now just map the x and y values onto the template
xy[0:,:] = p
xy[1:,:] = q

# the transformed matrix:
array([[[ 8.,  5.,  2.,  5.,  7.],
[ 2.,  6.,  0.,  7.,  2.],
[ 4.,  4.,  7.,  5.,  5.],
[ 8.,  5.,  2.,  0.,  5.]],

[[ 4.,  8.,  6.,  9.,  2.],
[ 2.,  6.,  5.,  8.,  1.],
[ 3.,  2.,  6.,  2.,  2.],
[ 1.,  8.,  0.,  7.,  3.]]])
``````
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