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I want to create a 2-d matrix of coordinates. I want the use to be able to decide the number of rows and columns, and the elements of the matrix when the program is run. I know how to do this using arrays which I have done here:

F = int(raw_input("Enter expected number of frames: "))
P = int(raw_input("Enter expected points to track object: "))
W = []
for i in xrange (2*F):
 W.append([])
 print "frame number", (i+1)
 for j in xrange (P):
  W[i].append(int(raw_input("Enter the next coordinate: ")))
print W

My question is how do I do the same using the matrix functions in scipy (or numpy). I want to do this so I can easily perform inverses and calculate SVD etc.

Any help will be greatly appreciated. Thanks!

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1 Answer 1

I have found a way.

Here is how I am doing it:

import numpy as np

F = int(raw_input("Enter expected number of frames: "))
P = int(raw_input("Enter expected points to track object: "))
W = np.zeros(shape = (2*F, P))


for i in xrange (2*F):
  for j in xrange (P):
    print "Frame: ", (i+1), "Point: ", (j+1)
    W[i][j] = (int(raw_input("Enter the next coordinate: ")))
print W
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Note that here using the zeros function from numpy makes all the element 0 that when initialized. There is an alternate function in numpy that you can use that does NOT do this (if you so desire). –  Raj Feb 16 '13 at 16:07
2  
You should get used to indexing numpy arrays as W[i, j] instead of W[i][j]. –  Jaime Feb 16 '13 at 16:19
1  
How does using [i,j] differ from [i][j]? –  Raj Feb 16 '13 at 17:16
1  
I believe that using W[i][j] is more limited when using advanced slicing, for example, if you want to use boolean slicing. See: docs.scipy.org/doc/numpy/reference/arrays.indexing.html –  askewchan Feb 16 '13 at 20:26
2  
When you use W[i][j] you are creating a view W[i] of your array, then extracting the j-th element from that view before discarding the view. If you do W[i, j] no intermediate view is created, everything happens under the hood in numpy's C code. So it is faster. –  Jaime Feb 16 '13 at 23:34

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