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I have the following code

a_alpha_beta = zeros((2,  len( atime ) ))

for i in range( len( atime ) ):        
        alpha_beta = transf.clarke(signal[0][i], signal[1][i], signal[2][i])
        a_alpha_beta[0][i] = alpha_beta[0][0] 
        a_alpha_beta[1][i] = alpha_beta[1][0]

How can I optimize the code above, for example how can I copy alpha_beta to a_alpha_beta?

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Actually, I may have misunderstood your question. Did you mean that you want to create a 2d array of 2d arrays? Since it's not clear what trans.clarke returns, can you be more clear about the shapes of those arrays you are dealing with? –  Taro Sato Sep 9 '12 at 19:40

1 Answer 1

up vote 1 down vote accepted

I don't exactly know what the function transf.clarke does, but copy operations that you desire can be done as follows:

import numpy as np

# generate a test input
x = np.arange(0, 10).reshape((2, 5))
print x

# simply copy 2d array
y = x.copy()
print y

# some new data (i.e., alpha_beta in the original code)
z = np.array([[10, 11, 12],
              [13, 14, 15]])
print z

# replace the iteration by numpy slicing to obtain the same result
x[0, :] = z[0, 0]
x[1, :] = z[1, 0]
print x
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