# Using pointers to numpy array data attribute

I'm trying to solve the bottleneck in my application, which is an elementwise sum of two matrices.

I'm using NumPy and Cython. I have a `cdef` class with a matrix attribute. Since Cython still doesn't support buffer arrays in class attributes, I followed this and tried to use a pointer to the `data` attribute of the matrix. The thing is, I'm sure I'm doing something wrong, as the results indicate.

What I tried to do is more or less the following:

``````cdef class the_class:
cdef np.ndarray the_matrix
cdef float_t* the_matrix_p

def __init__(self):
the_matrix_p = <float_t*> self.the_matrix.data

cpdef the_function(self):
other_matrix = self.get_other_matrix()

the_matrix_p += other_matrix.data
``````
-
So, what's the problem? What error are you getting? –  juniper- Jan 25 '13 at 12:54

I have serious doubt that adding two numpy arrays is a bottleneck that you can solve rewriting things in C. See the follwing code, that uses `scipy.weave`:

``````import numpy as np
from scipy.weave import inline

a = np.random.rand(10000000)
b = np.random.rand(10000000)
c = np.empty((10000000,))

def c_sum(a, b, c) :
length = a.shape[0]
code = '''
for(int j = 0; j < length; j++)
{
c[j] = a[j] + b[j];
}
'''
inline(code, ['a', 'b', 'c', 'length'])
``````

Once you run `c_sum(a, b, c)` once to get the C code compiled, these are the timings I get:

``````In [12]: %timeit c_sum(a, b, c)
10 loops, best of 3: 33.5 ms per loop

In [16]: %timeit np.add(a, b, out=c)
10 loops, best of 3: 33.6 ms per loop
``````

So it seems you are looking at something of a .3% performance improvement, if the timing differences are not simply random noise, on an operation that takes a handful of ms when working on arrays of ten million elements. If it really is a bottleneck, this is hardly going to solve it.

-
Yeah, I think you are right. After a couple of measurements, I came to the conclusion that my code is as fast as it can be in Python. –  erickrf Jan 25 '13 at 18:20