I want to elaborate on Aaron's response. This isn't just an "optimizer" issue, it is an algorithmic issue.
When most people think of aggregation, they think of the following method:
- Sort the data by the fields being aggregated (or walk through an index of the keys)
- Walk through the data and identify where a group starts
- Aggregate the values for all rows with the same key values (which are next to each other because of the sort)
- Continue on to the next group
When you run this algorithm, one consequence is that the results are in order. And this is the only algorithm provided by some databases (such as Access and MySQL).
The first point is that even this algorithm is not guaranteed to return data in order in a parallel (multi-threaded/multi-server) environment. For instance, the first step in the environment might be to put all the strings starting with "A" on one processor (or thread), "B" on another, and so on. Each processor then does the aggregation locally.
The important point is that the processors don't necessarily all finish at the same time. For instance, "X" might finish long before "S". And, that means that the results from "X" come back first. Lo and behold, the results are not in order.
The second point is the more important. SQL Server (and other intelligent databases) have other algorithms for doing aggregation. The above algorithm is actually a hybrid -- first the values are "hashed", meaning that "similar" values are brought together on each processor, and then the rest are sorted for the aggregation. The "hashing" guarantees that all keys with the same values are on the same processor.
This can be used for the final algorithm as well. When you use a hash-based algorithm, there results are definitely not in sorted order, because no ordering ever occurs during the processing. Happily, SQL Server supports hash-based algorithms for both aggregation and joins, so you wouldn't expect results to be sorted.