I have a very large web forum application (about 20 million posts since 2001) running from a SQL Server 2012 database. The data files are about 40GB in size.
I added indexes to the tables for appropriate fields, however this query (which reveals the date range of posts in each forum) takes about 40 minutes to run:
SELECT T2.ForumId, Forums.Title, T2.ForumThreads, T2.ForumPosts, T2.ForumStart, T2.ForumStop FROM Forums INNER JOIN ( SELECT Min(ThreadStart) As ForumStart, Max(ThreadStop) As ForumStop, Count(*) As ForumThreads, Sum(ThreadPosts) As ForumPosts, Threads.ForumId FROM Threads INNER JOIN ( SELECT Min(Posts.DateTime) As ThreadStart, Max(Posts.DateTime) As ThreadStop, Count(*) As ThreadPosts, Posts.ThreadId FROM Posts GROUP BY Posts.ThreadId ) As P2 ON Threads.ThreadId = P2.ThreadId GROUP BY Threads.ForumId ) AS T2 ON T2.ForumId = Forums.ForumId
How could I speed it up?
This is the Estimated Execution Plan, from right-to-left:
[Path 1] Clustered Index Scan (Clustered) [Posts].[PK_Posts], Cost: 98% Hash Match (Partial Aggregate), Cost: 2% Parallelism (Repartition Streams), Cost: 0% Hash Match (Aggregate), Cost 0% Compute Scalar, Cost: 0% Bitmap (Bitmap Create), Cost: 0% [Path 2] Index Scan (NonClustered) [Threads].[IX_ForumId], Cost: 0% Parallelism (Repartition Streams), Cost: 0% [Path 1 and 2 converge into Path 3] Hash Match (Inner Join), Cost: 0% Hash Match (Partial Agregate), Cost: 0% Parallelism (Repartition Streams), Cost: 0% Sort, Cost: 0% Stream Aggregate (Aggregate), Cost: 0% Compute Scalar, Cost: 0% [Path 4] Clustered Index Seek (Clustered) [Forums].[PK_Forums], Cost: 0% [Path 3 and 4 converge into Path 5] Nested Loops (Inner Join), Cost: 0% Paralleism (Gather Streams), Cost: 0% SELECT, Cost: 0%