# Excluding items from a list that are in a certain range using list comprehension [duplicate]

I have two lists: `a = [10.0,20.0]` and `b = [1.0,10.0,15.0,20.0,30.0,100.0]`. How can I remove from list `b` all the elements between `10.0` and `20.0`? Here is what I tried:

``````c = [b[y] for y in range(len(b)) if (b[y] < a or b[y] > a)]
``````

I expect to get `c = [1.0, 30.0, 100.0]`, but I get `c = [1.0,10.0,15.0,20.0,30.0,100.0]`.

How can I exclude components from a list that are in a certain range by using only list comprehension?

• I got the expected result, you sure that you don't do something like `c=b` somewhere and that is the real problem? Jan 15, 2018 at 1:52

You can simplify by iterating `b`'s elements directly, but your original code works for me, too:

``````a = [10.0, 20.0]
b = [1.0, 10.0, 15.0, 20.0, 30.0, 100.0]

c = [x for x in b if x < a or x > a]
# [1.0, 30.0, 100.0]

c = [b[y] for y in range(len(b)) if (b[y] < a or b[y] > a)]
# [1.0, 30.0, 100.0]
``````
• Thanks, this exactly answered my question, but I asked the wrong question because I wanted to show you guys a simplified version of the issue. I've posted a new more detailed question here, this time I've checked that my solution fails :) : stackoverflow.com/questions/48257451/… Jan 15, 2018 at 5:41

Think from the opposite, only includes components that are in a certain range, like this:

`c = [y for y in b if (y < a or y > a)]`

You can use `filter`:

``````a = [10.0,20.0]
b = [1.0,10.0,15.0,20.0,30.0,100.0]
new_a = list(filter(lambda x:x < a or x > a[-1], b))
``````

Output:

``````[1.0, 30.0, 100.0]
``````

Filter function will do this for you :

``````c= filter(lambda x: x<10.0 or x>20.0,b)
``````
• 1. Pls, do not use filter and map with lambda, it is just ugly. 2. Using an integer range for equality tests with floats is unpredictable. 3. The contains-check must iterate the range for every element and is therefore bad performance-wise. Jan 15, 2018 at 1:42
• This doesn't even work if `x` is not a whole number.
– cs95
Jan 15, 2018 at 1:42
• @cᴏʟᴅsᴘᴇᴇᴅ Definitely not in the general case; for the OP's data, one might get lucky, but still... Jan 15, 2018 at 1:44
• @coldspeed , it works for negative values too. Jan 15, 2018 at 1:44