I don't see how a numpy array would help you in this case.

In particular, any conversion of a data structure into another (in your case a list of tuples in a numpy array or a heapq) will be much slower than finding the maximum value iterating over each tuple). This is because converting the data structure will also require to iterate over the original one, plus instantiating an object for the new structure, plus storing the value into the new structure, plus using the new structure to get the requested value.

Using a built-in function or method of your list will most probably result in a faster computation. The most trivial implementation I can think of:

```
>>> li = [('a', 10), ('b', 30), ('c', 20)]
>>> max(li, key=lambda e : e[1])[0]
'b'
```

Other possible ones if you are also interested in stuff like the lowest value or popping off the list the value you found could pass through sorting (so you examine the original list only once!):

```
>>> li = [('a', 10), ('b', 30), ('c', 20)]
>>> li.sort(key=lambda e : e[1])
>>> li
[('a', 10), ('c', 20), ('b', 30)]
>>> li[-1][0]
'b'
```

Or:

```
>>> sorted(li, key=lambda e: e[1])[-1][0]
'b'
```

HTH!