# How to construct logical expression for advanced slicing

I am trying to figure out a cleaner way of doing the following:

``````import numpy

a = np.array([1,2,4,5,1,4,2,1])

cut = a == (1 or 2)
print cut

[ True False False False  True False False  True]
``````

The above is of course a simplified example. The expression `(1 or 2)` can be large or complicated. As a start, I would like to generalize this thusly:

``````cutexp = (1 or 2)
cut = a == cutexp
``````

Maybe, cutexp can be turned into a function or something but I'm not sure where to start looking.

-
`1 or 2` is the same as 1 – JBernardo May 5 '12 at 18:30
Btw the second element in your result is wrong. It must be "True". – Mellkor May 5 '12 at 18:55
@JBernardo and you are absolutely right! The `(1 or 2)` expression did not have the effect I was hoping for. – covariantmonkey May 5 '12 at 19:20

You could also try numpy.in1d. Say

``````>>> a = np.array([1,2,4,5,1,4,2,1])
>>> b = np.array([1,2]) # Your test array
>>> np.in1d(a,b)
array([ True,  True, False, False,  True, False,  True,  True], dtype=bool)
``````
-
Ah, this will be very useful. However, I was hoping to write more general logic expression with and/or etc. I guess, I can mix your idea with e.g., `numpy.logical_and(b,c)` etc.-- thanks – covariantmonkey May 5 '12 at 19:22
``````>>> (a == 2) | (a == 1)
array([ True,  True, False, False,  True, False,  True,  True], dtype=bool)
``````
-
Sorry, I muddled the question. I should have asked how to return a logical expression from a function. A pseudocode would be `a == get_cut_on_1_or_2` where `get_cut_on_1_or_2` is `1|2` – covariantmonkey May 5 '12 at 19:28
@covariantmonkey - No probs, hope it helped. Not sure I follow you though, do you mean: `a[(a == 2) | (a == 1)]` – fraxel May 5 '12 at 19:40