Thanks for answering my questions. Here is my 3rd one.

- Each element of the data array is a coordinate (x, y).
- Each coordinate has 2 labels
- Goal: sum the elements that have the same two labels.

For example, if the inputs are

```
data = numpy.array( [ [1, 2], [3,8], [4,5], [2,9], [1, 3], [7, 2] ] )
label1 = numpy.array([0,0,1,1,2,2])
label2 = numpy.array([0,1,0,0,1,1])
```

should give:

```
array([[[ 1 , 2 ],
[ 3 , 8 ]],
[[ 6 , 14 ],
[ 0 , 0 ]],
[[ 0 , 0 ],
[ 8 , 5 ]]])
```

Here is my current code:

```
import numpy
import ndimage from scipy
data = numpy.array( [ [1, 2], [3,8], [4,5], [2,9], [1, 3], [7, 2] ] )
label1 = numpy.array([0,0,1,1,2,2])
label2 = numpy.array([0,1,0,0,1,1])
kinds_of_label1 = 3
kinds_of_label2 = 2
label1_l = label1.size
label2_l = label2.size
label12 = label1 * 2 + label2
kinds12_range = range(kinds_of_label1 * kinds_of_label2 )
result = numpy.zeros( (num_frame, num_cluster, 2) )
result_T = result.view().reshape( (num_frame * num_cluster, 2) ).T
result_T[0] = ndimage.measurements.sum( data.T[0], label12, index = kinds12_range )
result_T[1] = ndimage.measurements.sum( data.T[1], label12, index = kinds12_range )
counting = numpy.bincount(label12)
print(result)
print(counting)
```

This works, but summing the x and y coordinate separately (as in the result_T[0] and result_T[1] ) seem bad. Moreover, ndimage.measurements.sum give floating point answer. Integer arithmetic is faster.

Can we make this faster and better?