# Most efficient way to sum huge 2D NumPy array, grouped by ID column?

I have a massive data array (500k rows) that looks like:

``````id  value  score
1   20     20
1   10     30
1   15     0
2   12     4
2   3      8
2   56     9
3   6      18
...
``````

As you can see, there is a non-unique ID column to the left, and various scores in the 3rd column.

I'm looking to quickly add up all of the scores, grouped by IDs. In SQL this would look like SELECT sum(score) FROM table GROUP BY id

With NumPy I've tried iterating through each ID, truncating the table by each ID, and then summing the score up for that table.

``````table_trunc = table[(table == id).any(1)]
score       = sum(table_trunc[:,2])
``````

Unfortunately I'm finding the first command to be dog-slow. Is there any more efficient way to do this?

Thanks!

-
See stackoverflow.com/questions/4651683/… for info about numpy grouping –  agf Aug 17 '11 at 8:05

you can use bincount():

``````import numpy as np

ids = [1,1,1,2,2,2,3]
data = [20,30,0,4,8,9,18]

print np.bincount(ids, weights=data)
``````

the output is [ 0. 50. 21. 18.], which means the sum of id==0 is 0, the sum of id==1 is 50.

-

Maybe using `itertools.groupby`, you can group on the ID and then iterate over the grouped data.

(The data must be sorted according to the group by func, in this case ID)

``````>>> data = [(1, 20, 20), (1, 10, 30), (1, 15, 0), (2, 12, 4), (2, 3, 0)]
>>> groups = itertools.groupby(data, lambda x: x[0])
>>> for i in groups:
for y in i:
if isinstance(y, int):
print(y)
else:
for p in y:
print('-', p)
``````

Output:

``````1
- (1, 20, 20)
- (1, 10, 30)
- (1, 15, 0)
2
- (2, 12, 4)
- (2, 3, 0)
``````
-
I think this is unlikely to be fast because it does the work in Python instead of in C like if you do it in `numpy`? –  agf Aug 17 '11 at 11:16

You can try using boolean operations:

``````ids = [1,1,1,2,2,2,3]
data = [20,30,0,4,8,9,18]

[((ids == i)*data).sum() for i in np.unique(ids)]
``````

This may be a bit more effective than using `np.any`, but will clearly have trouble if you have a very large number of unique ids to go along with large overall size of the data table.

-