# Numpy: Comparison within Multidimensional array values

I have a 2D array in the following form:

``````[[X1, X2, ..., XN]
[Y1, Y2, ..., YN]]
``````

For each `Xi` greater than `lower_limit_X` and less than `upper_limit_X`, I would like to get the number of `Yi`'s that are greater than `lower_limit_Y` and less than `upper_limit_Y`.

I hope there is an efficient way of doing this in Numpy apart from indexing one by one.

EDIT: So I have a 2xN array. The first row has ordered values of N X's and second row has ordered values of N Y's. What I would like to get is:

1. get a the `lowest_index` and `highest_index` index of X, that have a value that is greater than `lower_limit_X` and less than `upper_limit_X`

2. then slice the Y array (just one array) in the index range [`lowest_index`, `highest_index`]

3. count the number of elements in my slice, having Yi`'s that are greater than`lower_limit_Y`and less than`upper_limit_Y`.

-
When you say "For each Xi", do you mean there are multiple rows of `Y`, or do you mean "for each unique value of Xi"? –  NPE Dec 6 '12 at 10:43
Not sure to undersand... Is there an Yi array for each Xi ? EDIT: okay, same kind of question than NPE actually –  Remy F Dec 6 '12 at 10:44

Here are two ways you could do this, the more strait forward way is probably,

``````mask = ((lower_x_limit < array[0]) & (array[0] < upper_x_limit) &
(lower_y_limit < array[1]) & (array[1] < upper_y_limit))
``````

If your array is very large and both x and y are sorted you could use `searchsorted` instead,

``````start = array[0].searchsorted(lower_x_limit, 'right')
end = array[0].searchsorted(upper_x_limit, 'left')
temp = array[1, start:end]
start = temp.searchsorted(lower_y_limit, 'right')
end = temp.searchsorted(upper_y_limit, 'left')
count = end - start
``````
-
``````      numpy.logical_and(array1 > lower_x_limt, array1 < upper_x_limit)