# The complextiy of Python issubset()

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:https://wiki.python.org/moin/TimeComplexity and bit.ly/1AWB1QU

(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."""
self._binary_sanity_check(other)
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: bit.ly/1Ac7geK

I also found some codes look like source codes of Python from: bit.ly/1CO9HXa 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.

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:`).