# How to detect if the values in array are in a certain range and return a binary array in Python?

So I am trying to detect if the values in an array is in a certain range and then return a binary logical array i.e. one for true and zero for false. I have this but iPython keeps complaining

D = ( 1 < X[0,:] + X[1,:]) < 2 ).astype(int)


the interesting thing is that just checking one way works totally ok

D = ( X[0,:] + X[1,:]) < 2 ).astype(int)


which I find a bit perplexing.

-
"I find a bit perplexing". That is perplexing code. Could you explain why you think this is sensible code? What do you think this will do? –  S.Lott Nov 12 '10 at 13:16
@S.Lott looks like X is a numpy array –  gnibbler Nov 12 '10 at 13:19
@S.Lott your totally right. I thought that Python would magically understand that I wanted to find all values between one and two. I don't know what I was thinking. Obviously I was delirious after working too much... –  Reed Richards Nov 13 '10 at 12:44
Matlab for example would return an array of just ones since it evaluates left from right. Python thankfully tells you this is a bit ambiguous. –  Reed Richards Nov 13 '10 at 12:47

Y=X[0,:]+X[1,:]
D = ((1<Y) & (Y<2)).astype(int)

-
array = (1, 2, 3, 4, 5)
bit_array = map(lambda x: 1 < x < 5 and 1 or 0, array)


bit_array is [0, 1, 1, 1, 0] after that. Is that what you wanted?

-
replace map with list comprehension... b = [1 < x < 5 and 1 or 0 for x in array] –  Ant Nov 12 '10 at 13:16
Yes exactly! Interesting way of thinking, bit of a newbie at Python so I am still struggling with some concepts or ways of doing things. This seems quite powerful though. –  Reed Richards Nov 13 '10 at 13:02
I am loving this concept! I think will change my whole way of thinking. –  Reed Richards Nov 13 '10 at 13:15

This?

 bits = [ bool(low <= value < high) for value in some_list ]

-

Try using all (edited to return int):

D = numpy.all([1 < x, x < 2], axis=0).astype(int)

-

unutbu's is shorter, this is more explicit

>>> import numpy
>>> numpy.logical_and(1 < np.arange(5), np.arange(5)< 4).astype(int)
array([0, 0, 1, 1, 0])

-