How can i accomplish column addition with shift using python numpy arrays ?
I have two dimensional array and need it's extended copy.
a = array([[0, 2, 4, 6, 8], [1, 3, 5, 7, 9]])
i want something like (following is in pseudo code, it doesn't work; there is no
numpy as far as i know):
shift = 3 mult_factor = 0.7 for column in a.columns - shift : out[column] = a[column] + 0.7 * a[column + shift]
I also know, that i can do the something similar to what i need using indexes. But i seems that is really overkill enumerating three values and using only one (j) :
for (i,j),value in np.ndenumerate(a): print i,j
I founded, that i could iterate over columns, but not their indexes:
for column in a.T: print column
Than i though that i can simply do this with something that is similar to xrange, but applying to multidimensional array:
In : for column in np.ndindex(a.shape): print column .....: (0,) (1,) (2,) (3,) (4,)
So now i only know how to do this with simple xrange and i am not sure, that is the best solution.
out = np.zeros(a.shape) shift = 2 mult_factor = 0.7 for i in xrange(a.shape-shift): print a[:, i] out[:, i] = a[:, i] + mult_factor * a[:, i+shift]
However it will be not so fast in Python as it maybe can be. Can you give me an advice how it will be in performance and maybe there is more faster way to accomplish column addition of numpy arrays with shift ?