In cases where I have a key for each element and I don't know the
index of the element into an array, hashtables perform better than
arrays (O(1) vs O(n)).
The hash table search performs O(1) in the average case. In the worst case the hash table search performs O(n): when you have collisions and the hash function returns always the same slot. One may think "this is a remote situation" but a good analysis should consider it. In this case you should iterate through all the elements like in an array or linked lists (O(n)).
Why is that? I mean: I have a key, I hash it.. I have the hash..
shouldn't the algorithm compare this hash against every element's
hash? I think there's some trick behind the memory disposition, isn't
You have a key, You hash it.. you have the hash: the index of the hash table where the element is present (if it has been located before). At this point you can access to the hash table record in O(1). If the load factor is small it's unlikely to see more than one element there. So, the first element you see should be the element you are looking for. Otherwise, if you have more than one element you must compare the elements you will find in the position with the element you are looking for. In this case you have O(1) + O(number_of_elements).
In the average case, the hash table search complexity is O(1) + O(load_factor) = O(1 + load_factor).
Remember, load_factor = n in the worst case. So, the search complexity is O(n) in the worst case.
I don't know what you mean for "trick behind the memory disposition". Under some points of view the hash table, with its structure and collisions resolution by chaining, can be considerated a "smart trick".
Of course, the hash table analysis results can be proven by math.