# How to optimize a numpy loop that sums values from an array which is indexed by another array where values equal the loop index

I have this piece of code that is called multiple times during the run of the application. It takes an array of numbers which represent values (value_array). These should be summed up in zones, which are defined in the zone_array. zone_ids represents a list of all the possible zones in zone_array.

Its basically something in the lines of: i got a population raster map and i want to know how many people live in each zone of the zone map.

the code:

``````values = np.zeros(len(zone_ids))
for i in zone_ids:
values[i] = round(np.nansum(value_array[zone_array == i]), 2)
return values
``````

The culprit seems to be the for loop, but i have not found a way to eliminate it and have the same results.

I tried it with bincount but i did not succeed. Using numba jit also has no effect.

I would like to stay away from cython as this code will be used in a Qgis plugin which has no cython support.

test code:

``````import numpy as np

def fill_values(zone_array, value_array, zone_ids):
values = np.zeros(len(zone_ids))
for i in zone_ids:
values[i] = round(np.nansum(value_array[zone_array == i]), 2)
return values

def run():
# 300 different zones
zone_ids = range(300)
# zone map with 300 zones
zone_array = (np.random.rand(2000, 2000) * 300).astype(int)
# value map from which we want the sum of values per zone (real map can have NaN values)
value_array = (np.random.rand(2000, 2000) * 10.)
value_array[5, 5] = np.NAN
fill_values(zone_array, value_array, zone_ids)

if __name__ == '__main__':
run()
``````

1.92 s ± 17.5 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)

With the implementation of bincount as suggested by Divakar :

203 ms ± 15.2 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)

• The culprit is not the for-loop. Instead, the problem is the comparison `zone_array==i` within. All 2000x2000=4e6 values have to be checked for equality to `i` for each zone_id `i`. – Chickenmarkus Oct 18 '17 at 13:27
• if i reduce the amount of zone id's i get a speed increase, so the for loop is still involved in the performance issue. And since i have no alternative that i know of for not doing the `zone_array==i` i focus on the loop. The best would be that i could somehow use `zone_array == zone_ids` and skip the loop. – lorenz h Oct 18 '17 at 13:42
• You can broadcast the comparison with `zone_array[:,:,None] == zone_ids`, but that still leaves indexing in the for loop and doesn't give much of an improvement in performance. – user2699 Oct 18 '17 at 17:48

With a direct usage of `bincount`, you would have `NaNs` in the summations. So, you can simply replace the `NaNs` with `zeros` and use `bincount`. This should be much faster, being a vectorized solution.
``````val_nonan = np.where(np.isnan(value_array), 0, value_array)
• This works for my problem. Thanks a lot. I guess my bincount tries where messed up by the nan values. Additionally `values = out[zone_ids]` for the case where you want the results of a subset of zones. – lorenz h Oct 19 '17 at 7:23