Given two sets A and B and their length: a=len(A) and b=len(B) where a>=b. What is the complextiy of Python 2.7's issubset() function, ie, B.issubset(A)? There are two conflicting answers I can find from the Internet:

1, O(a) or O(b)

found from: and

(Sorry that I can not post more http links so I have to use shorten url instead.)

I downloaded the source code from Python offical website and found that:

def issubset(self, other):
    """Report whether another set contains this set."""
    if len(self) > len(other):  # Fast check for obvious cases
        return False
    for elt in ifilterfalse(other._data.__contains__, self):
        return False
    return True

there is only loop here.

2, O(a*b)

found from:

I also found some codes look like source codes of Python from: as following:

def issubset(self, other):
    for e in self.dict.keys():
        if e not in other:
            return False
        return True

there are two loop here.

So which one is right? Could someone give me a detailed answer about the difference between the above two explanations? Great thanks in advance.

up vote 4 down vote accepted

The complexity of B.issubset(A) is O(len(B)), assuming that e in A is constant-time.

This a reasonable assumption generally, but can be easily violated with a bad hash function. If, for example, all elements of A had the same hash code, the time complexity of B.issubset(A) would deteriorate to O(len(B) * len(A)).

In your second code snippet, the complexity is the same as above. If you look closely, there is only one loop; the other is an if statement (if e not in other:).

Your Answer


By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.