# How to rewrite this code from python loops to numpy vectors (for perfomance)?

I have this code:

for j in xrange (j_start, self.max_j):
for i in xrange (0, self.max_i):
new_i = round (i + ((j - j_start) * discriminant))
if new_i >= self.max_i:
continue
self.grid[new_i, j] = standard[i]

and I want to speed it up by throwing away slow native python loops. There is possibility to use numpy vector operations instead, they are really fast. How to do that?

j_start, self.max_j, self.max_i, discriminant

int, int, int, float (constants).

self.grid

two-dimensional numpy array (self.max_i x self.max_j).

standard

one-dimensional numpy array (self.max_i).

-

Here is a complete solution, perhaps that will help.

jrange = np.arange(self.max_j - j_start)
joffset = np.round(jrange * discriminant).astype(int)
i = np.arange(self.max_i)

for j in jrange:
new_i = i + joffset[j]
in_range = new_i < self.max_i
self.grid[new_i[in_range], j+j_start] = standard[i[in_range]]

It may be possible to vectorize both loops but that will, I think, be tricky.

I haven't tested this but I believe it computes the same result as your code.

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unfortunately it's more complicated :( thanks you for the contribution, but it doesn't help me. –  aspect_mkn8rd Dec 5 '12 at 19:43
what are you looking for in a solution? A general method for vectorization of anything is "beyond the scope of this discussion". –  GaryBishop Dec 5 '12 at 23:24
I updated the solution to make it do just what your code does (I think). Does that help? –  GaryBishop Dec 6 '12 at 0:14
ok, thx u. -) It still tells 'IndexError: arrays used as indices must be of integer (or boolean) type' at the last line, but it might help me now. I think I accept your answer a little later, when I solve the task. –  aspect_mkn8rd Dec 6 '12 at 7:10
I added a call to astype(int) on the np.round call. That should fix the type. –  GaryBishop Dec 6 '12 at 11:41