I have a Numpy array that is created as follows

```
data=np.zeros(500,dtype='float32, (50000,2)float32')
```

This array is filled with values that I acquire from some measurements, and is supposed to reflect that during each time point (room for 500 time points) we can acquire 50.000 x- and y- coords.

Later in my code is use a `bisect`

-like search for which I need to know howmany X-coords (measurement points) are actually in my array which I originally did with `np.count_nonzero(data)`

, this yielded the following problem:

```
Fake data:
1 1
2 2
3 0
4 4
5 0
6 6
7 7
8 8
9 9
10 10
```

the non zero count returns 18 values here, the code then goes into the `bisect`

-like search using `data[time][1][0][0]`

as min X-coord and `data[time][1][(np.count_nonzero(data)][0]`

as max x-coord which results in the array stopping at 9 instead of 10.

I could use a while loop to manually count non-zero values (in the X-coord column) in the array but that would be silly, I assume that there is some builtin numpy functionality for this. My question is then what builtin functionality or modification of my `np.count_nonzero(data)`

I need since the documentation doesn't offer much information in that regards (link to numpy doc).

-- Simplified question --

Can I use **Numpy** functionality to count the non-zero values for a singular column only? (i.e. between `data[time][1][0][0]`

and `data[time][1][max][0]`

)