# An efficient way to create a matrix with cython

I have a function that calculates a matrix for me but it is really slow. Even in cython it is running slow, so I was wondering if one could do anything to enhance the below code.

`des = np.zeros([n-m+1,m])` to `cdef np.ndarray des = np.zeros([n-m+1,m], dtype=DTYPE)` (This is faster than `np.empty...` Instead of saying `m/2` I've added a `cdef int m2 = m/2` but that didn't seemed to help anything.

``````cimport numpy as np
cimport cython

DTYPE = float
ctypedef np.float_t DTYPE_t

@cython.boundscheck(False)
@cython.cdivision(True)
@cython.wraparound(False)
cpdef map4(np.ndarray[DTYPE_t, ndim=1] s, int m):

cdef int n = len(s)
cdef int i
cdef int j

des = np.zeros([n-m+1,m])
for j in xrange(m):
for i in xrange(m/2,n-m/2-1):
des[i-m/2,j] = s[i-j+m/2]

return des, s, m, n
``````

Typically `n~10000` and `m=1001`.

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don't forget to check out the output of `cython -a` for details. The generated html file is extremely useful to see the weak points in the code – dmytro Mar 12 '13 at 23:47
Yes, the html file is really helpful, when you wish to see the slow part (or the part that need a lot of conversion), but it is really not very helpful if you have no idea how to go on from there. But I agree with you. I also started with the html file. – Daniel Thaagaard Andreasen Mar 13 '13 at 8:21
It seems you're just storing simple slices of the array `s`. You could just slice `s` when you need to? – morningsun Sep 19 '13 at 23:45

Try:

``````cdef np.ndarray des = np.zeros([n-m+1,m])
``````

You can also make this more specific like you did for the parameter s. You can also turn off bounds checking. Check out the cython numpy tutorial.

You also might want to make a variable:

``````cdef int m_2 = m/2
``````

and use that everywhere you have `m/2` because I don't know if Cython will do that optimization for you.

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Instead of tmp var m_2,might be preferable to say `for i in xrange(n-m):` / `des[i,j] = s[i-j+m]` and/or array slice – jwpat7 Mar 12 '13 at 19:05
I guess I'm a bit late to the party, but you should really add `[DTYPE_t, ndim=2]` to the static type declaration of `des` (~10x speedup). Also interchanging the 2 for-loops helps a little, by aligning array access with the memory layout. This got the run time down to 158 ms on my system from 2.45 seconds for the original code. – morningsun Sep 19 '13 at 21:46

It might also help to use `np.empty` instead of `np.zeros`, assuming you'll assign each element:

``````des = np.empty([n-m+1,m])
``````
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I found that `np.empty` wasn't the fastest choice. – Daniel Thaagaard Andreasen Mar 13 '13 at 9:12
Hm, I wonder why – askewchan Mar 13 '13 at 14:13
I found this to be pretty useful. Reduces the running time from 158 ms to 113 ms! – morningsun Sep 19 '13 at 23:41

I'm not seeing m being set anywhere. At the bottom of your code, you mention that n~10,000, and m=1001. Does that mean that m is a constant integer of 32 bits? Not seeing your compilation flags, it's frequently worthwhile to try it with and without `-ffast-math` to see if that makes a difference. With large arrays and matrices, using a smaller data type usually shows a significant speedup, provided that the smaller data type preserves the range and accuracy that your program needs, though I'm not seeing a large potential benefit on this calculation.

If you could show us the C code that is generated by this, that might help, as well.

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