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I need to implement a function for summing the elements of an array with a variable section length. So,

a = np.arange(10)
section_lengths = np.array([3, 2, 4])
out = accumulate(a, section_lengths)
print out
array([  3.,   7.,  35.])

I attempted an implementation in cython here:


for performance I am comparing to the pure numpy solution for the case where the section_lengths are all the same:

LEN = 10000
b = np.ones(LEN, dtype=np.int) * 2000
a = np.arange(np.sum(b), dtype=np.double)
out = np.zeros(LEN, dtype=np.double)

%timeit np.sum(a.reshape(-1,2000), axis=1)
10 loops, best of 3: 25.1 ms per loop

%timeit accumulate.accumulate(a, b, out)
10 loops, best of 3: 64.6 ms per loop

would you have any suggestion for improving performance?

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I implemented several suggestions, see updated version on github: gist.github.com/2784725/…, still it takes 63ms, so no significant improvement –  Andrea Zonca May 25 '12 at 16:59
It might be off the point, but thought I would mention... numpy already has something close to it for all ufuncs. np.add.reduceat(a, section_lengths.cumsum()). It has to be changed a bit (cumsum lacks a 0 at the start and you get the end slice extra) and you can probably beat the speed with cython, but its a very nice feature/trick. –  seberg Aug 24 '12 at 22:34

2 Answers 2

up vote 2 down vote accepted

You might try some of the following:

  • In addition to the @cython.boundscheck(False) compiler directive, also try adding @cython.wraparound(False)

  • In your setup.py script, try adding in some optimization flags:

    ext_modules = [Extension("accumulate", ["accumulate.pyx"], extra_compile_args=["-O3",])]

  • Take a look at the .html file generated by cython -a accumulate.pyx to see if there are sections that are missing static typing or relying heavily on Python C-API calls:


  • Add a return statement at the end of the method. Currently it is doing a bunch of unnecessary error checking in your tight loop at i_el += 1.

  • Not sure if it will make a difference but I tend to make loop counters cdef unsigned int rather than just int

You also might compare your code to numpy when section_lengths are unequal, since it will probably require a bit more than just a simple sum.

share|improve this answer
thanks! I implemented all your suggestions, but still there is no significant improvement. Thanks for suggesting cython -a, didn't know about that. I added a return statement, which shows some strange checks the code is doing, see gist.github.com/2784725#gistcomment-330807 –  Andrea Zonca May 25 '12 at 16:59
I am accepting this answer because it gives useful suggestions, but none of them give significant improvement. I'll change the accepted answer in case anybody else founds anything better. –  Andrea Zonca May 31 '12 at 1:55

In the nest for loop update out[i_bas] is slow, you can create a temporary variable to do the accumerate, and update out[i_bas] when nest for loop finished. The following code will be as fast as numpy version:

import numpy as np
cimport numpy as np

ctypedef np.int_t DTYPE_int_t
ctypedef np.double_t DTYPE_double_t

cimport cython
def accumulate(
       np.ndarray[DTYPE_double_t, ndim=1] a not None,
       np.ndarray[DTYPE_int_t, ndim=1] section_lengths not None,
       np.ndarray[DTYPE_double_t, ndim=1] out not None,
    cdef int i_el, i_bas, sec_length, lenout
    cdef double tmp
    lenout = out.shape[0]
    i_el = 0
    for i_bas in range(lenout):
        tmp = 0
        for sec_length in range(section_lengths[i_bas]):
            tmp += a[i_el]
        out[i_bas] = tmp
share|improve this answer
thanks! followed your suggestion but there is no significant improvement, I updated my version on github –  Andrea Zonca May 25 '12 at 16:58

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