# Numbas parallel vectorized functions

I'm currently experimenting with `numba` and especially `vectorized` functions, so I created a `sum` vectorized function (because it is easy to compare this to `np.sum`.

``````import numpy as np
import numba as nb

@nb.vectorize([nb.float64(nb.float64, nb.float64)])
def numba_sum(element1, element2):
return element1 + element2

@nb.vectorize([nb.float64(nb.float64, nb.float64)], target='parallel')
def numba_sum_parallel(element1, element2):
return element1 + element2

array = np.ones(elements)
np.testing.assert_almost_equal(numba_sum.reduce(array), np.sum(array))
np.testing.assert_almost_equal(numba_sum_parallel.reduce(array), np.sum(array))
``````

Depending on the number of `elements` the parallel code does not return the same number as the `cpu` targeted code. I think that's because of something related to the usual threading-problems (but why? Is that a Bug in Numba or something that just happens when using parallel execution?). Funny is that sometimes it works, sometimes it does not. Sometimes it fails with `elements=1000` sometimes it starts failing on `elements=100000`.

For example:

``````AssertionError:
Arrays are not almost equal to 7 decimals
ACTUAL: 93238.0
DESIRED: 100000.0
``````

and if I run it again

``````AssertionError:
Arrays are not almost equal to 7 decimals
ACTUAL: 83883.0
DESIRED: 100000.0
``````

My question is now: Why would I ever want a parallel vectorized function? My understanding is that the purpose of a `vectorized` function is to provide the numpy-ufunc possibilities but I tested `reduce` and `accumulate` and they stop working at some (variable) number of elements and who wants an unreliable function?

I'm using `numba 0.23.1`, `numpy 1.10.1` with `python 3.5.1`.

• I suspect you'd have more luck filing it as the bug it clearly is rather than posting it here. – DavidW Feb 17 '16 at 23:39
• My question is actually not about the bug, it's about where "parallel" vectorized functions would make sense given that it can lead to such problems. – MSeifert Feb 17 '16 at 23:42
• Ah - I see. Ideally it'd keep a separate counter in each thread and add them together at the end (look up OpenMP `reduce` as an example of a C/Fortran multithreading interface, which does this). If this is done, the answer should be reproducible (and right!). – DavidW Feb 17 '16 at 23:50
• are you sure that your algorithm is numerically stable? – denfromufa Apr 6 '16 at 4:55
• Yes i also reported the issue github.com/numba/numba/issues/1721 – MSeifert May 10 '18 at 8:46

Given that ufuncs produced by `numba.vectorize(target='parallel')` have defective `reduce()` methods, the question is what can we do with them that is useful?
In your case, the ufunc does addition. A useful application of this with `target='parallel'` is elementwise addition of two arrays:
``````numba_sum(array, array)
This is indeed faster than a single-core solution, and seems not to be impacted by the bugs that cripple `reduce()` and friends.