heapq.nlargest is what you want here:
from operator import itemgetter
largest_names = [x for x in heapq.nlargest(6,your_list,key=itemgetter(1))]
It will be more efficient than sorting as it only takes the biggest elements and discards the rest. Of course, it is less efficient than slicing if the list is pre-sorted for other reasons.
- heapq: O(N)
- sorting: O(NlogN)
- slicing (only if pre-sorted): O(6)
This line returns a list of (name,value) tuples, but only the 6 biggest ones -- comparison is done by the second (index=1 -->
key=itemgetter(1)) element in the tuple.
The rest of the line is a list-comprehension over the 6 biggest name,value tuples which only takes the name portion of the tuple and stores it in a list.
It might be of interest to you that you could store this data as a
collections.Counter as well.
d = collections.Counter(dict(your_list))
biggest = [x for x in d.most_common(6)]
It's probably not worth converting just to do this calculation (that's what heapq is for after all ;-), but it might be worth converting to make the data easier to work with.