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What is the best way to check if an array/tuple/list only contains elements in another array/tuple/list?

I tried the following 2 approaches, which is better/more pythonic for the different kinds of collections? What other (better) methods can I use for this check?

import numpy as np

input = np.array([0, 1, -1, 0, 1, 0, 0, 1])
bits = np.array([0, 1, -1])

# Using numpy
a=np.concatenate([np.where(input==bit)[0] for bit in bits])
if len(a)==len(input):
    print 'Valid input'

# Using sets
if not set(input)-set(bits):
    print 'Valid input'
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I would say the set method is a very straightforward way to do this. Is there any reason you would need something different from that approach? –  Doug Swain May 9 '12 at 17:56
    
The set looks much cleaner, but is it also more optimal for all the different kinds of collections/ large collections? –  Dhara May 9 '12 at 18:03
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3 Answers 3

up vote 4 down vote accepted

Your # Using numpy one is awfully inefficient for large sets in that it creates an entire copy of your input list.

I'd probably do:

if all(i in bits for i in input):
    print 'Valid input'

That's an extremely pythonic way to write what you're trying to do, and it has the benefit that it won't create an entire list (or set) that might be large, and it'll stop (and return False) the first time it encounters an element from input that's not in bits.

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Good points about the extra-copying and exiting on the first false condition. Also, I think your method works just as well for different kinds of collections –  Dhara May 9 '12 at 18:10
1  
numpy.in1d is even more efficient –  jterrace May 9 '12 at 18:18
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Since you're already using numpy arrays, you can use the in1d function:

>>> import numpy as np
>>> 
>>> input = np.array([0, 1, -1, 0, 1, 0, 0, 1])
>>> bits = np.array([0, 1, -1])
>>> 
>>> if np.in1d(input, bits).all():
...     print 'Valid input'
... 
Valid input
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Didn't know about setdiff1d, thanks –  Dhara May 9 '12 at 18:11
    
actually, in1d is better - I updated the answer –  jterrace May 9 '12 at 18:17
    
in1d is indeed better for numpy arrays, and according to the docs is roughly equivalent to np.array([item in b for item in a]). Since this is exactly @sblom's answer and his is more generic in that it works also for tuples, lists, etc. he gets the accept –  Dhara May 9 '12 at 18:28
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Generally you would just use set this way, it could be faster than recalculating a new set using operator -:

input = set([0, 1, -1, 0, 1, 0, 0, 1])
bits = set([0, 1, -1])

input.issubset(bits)

EDIT:

issubset is a method written for exactly this problem (see source at http://hg.python.org/releasing/2.7.3/file/7bb96963d067/Objects/setobject.c). It basically is an equivalent for:

def issubset(self, other):
    if len(self) > len(other):
        return False

    for i in self:
        if i not in other:
            return False

    return True
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Good point about recalculating the set. Do you have any idea about how efficient this function is for large sets? –  Dhara May 9 '12 at 18:29
    
I do not know exactly, all depends on the inner workings of a Python set, but I think this should be in O(n); also, notice that issubset can bail out on INVALID input as soon as it finds an element not in bits. –  Antti Haapala May 9 '12 at 18:36
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