# Adding arrays with cython slower than numpy?

I am just starting to learn cython, so please excuse my ignorance. Can cython improve on numpy for simply adding two arrays together? My very bad attempt at adding two arrays a + b to give a new array c is:

``````import numpy as np
cimport numpy as np

DTYPE = np.int
ctypedef np.int_t DTYPE_t

def add_arrays(np.ndarray[DTYPE_t, ndim=2] a, np.ndarray[DTYPE_t, ndim=2] b, np.ndarray[DTYPE_t, ndim=2] c):
cdef int x = a.shape[0]
cdef int y = a.shape[1]
cdef int val_a
cdef int val_b
for j in range(x):
for k in range(y):
val_a = a[j][k]
val_b = b[j][k]
c[j][k] = val_a + val_b
return c
``````

However this version is 700 times slower (*edit: than numpy) when these arrays are passed:

``````n = 1000
a = np.ones((n, n), dtype=np.int)
b = np.ones((n, n), dtype=np.int)
c = np.zeros((n, n), dtype=np.int)
``````

I am obviously missing something very big.

-
Have you tried simply adding your two numpy arrays? table1 + table2 instead of all this indexing? –  Reblochon Masque May 8 '14 at 16:22
`nditer` is a better tool for iterating over the elements of one or more arrays in `cython`. But numpy `a+b` is probably already using that in its C implementation of `__add__`. –  hpaulj May 8 '14 at 18:05

The problem is that you are indexing the 2-D array like `c[j][k]` when actually you should do `c[j,k]`, otherwise Cython is using an intermediate buffer for `buf=c[j]`, from which it will take `buf[k]`, causing the slow-down. You should use this proper indexing plus the `cdef` declarations especified by @XavierCombelle.

You can check that this intermediate buffer is causing the slow-down by doing:

``````np.ndarray[DTYPE_t, ndim=1] buf
``````

and then, inside the loop:

``````buf = c[j]
buf[k] = val_a + val_b
``````

this declared buffer should give the same speed (or close) than:

``````c[j,k] = val_a + val_b
``````
-
Amazing! just changing [j][k] references to [j, k] results in a huge speed up; now the code is only about 3x slower than numpy –  kezzos May 8 '14 at 22:07

I think you are missing

``````cdef int j
cdef int k
``````

so your variable loop are python object not c ones

-
Oh yes, thank you. However, this does not result in a speed up... –  kezzos May 8 '14 at 17:01

Here are two examples:

The "numpy way"

``````%%timeit
table1 = np.ones((10,10))
table2 = np.ones((10,10))
result = np.zeros((10,10))
table1 + table2

100000 loops, best of 3: 14.5 µs per loop
``````

The looping over indices way

``````%%timeit
for j in range(len(ar1)):
for k in range(len(ar2)):
val_a = ar1[j][k]
val_b = ar2[j][k]
result[j][k] = val_a + val_b
return result

1000 loops, best of 3: 307 µs per loop
``````

Same thing, 20 times faster.

With all this, I am aware that I have not completely answered your question, but maybe it gives you a better perspective for your comparisons?

 for 1000x1000 tables, the time difference is more pronounced; I supect is is due to the amortization of the overhead of building the tables.

``````former code: 100 loops, best of 3: 13.1 ms per loop
latter code: 1 loops, best of 3: 2.78 s per loop
``````

Which is a 200 factor

-
do you mean 20 times slower pure python than numpy and he speaks about cython implementation –  Xavier Combelle May 8 '14 at 16:55
Good question, I should be more clear: I mean comparing using numpy as intended vs. looping over numpy arrays with indices. Based on the OP's suspicion that he was missing something, I wanted to help him calibrate where the real performance was before even venturing into cython territory. –  Reblochon Masque May 8 '14 at 17:02
Isn't the point of using cython that you get fast loops? –  kezzos May 8 '14 at 17:05
Yes, it is, in principle........ however, it is an additional layer of complication that IMHO, should only be contemplated when other easier avenues have been exhausted; proper use of numpy is a great source of performance that is very often sufficient and easy to access. –  Reblochon Masque May 8 '14 at 17:07
Agreed numpy is great, I am just experimenting with cython! –  kezzos May 8 '14 at 17:10