Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

We have an interesting problem that I was hoping someone could help to shed some light on. At a high level the problem is as below:

The following query executes quickly (1 second):


but if we add a filter to the query, then it takes approximately 2 minutes to return:

WHERE SA.CHG_DATE>'19 Feb 2010'

Looking at the execution plan for the two queries, I can see that in the second case there are two places where there are huge differences between the actual and estimated number of rows, these being:

1) For the FulltextMatch table valued function where the estimate is approx 22,000 rows and the actual is 29 million rows (which are then filtered down to 1670 rows before the join) and 2) For the index seek on the full text index, where the estimate is 1 row and the actual is 13,000 rows

As a result of the estimates, the optimiser is choosing to use a nested loops join (since it assumes a small number of rows) hence the plan is inefficient.

We can work around the problem by either (a) parameterising the query and adding an OPTION (OPTIMIZE FOR UNKNOWN) to the query or (b) by forcing a HASH JOIN to be used. In both of these cases the query returns in sub 1 second and the estimates appear reasonable.

My question really is 'why are the estimates being used in the poorly performing case so wildly inaccurate and what can be done to improve them'?

Statistics are up to date on the indexes on the indexed view being used here.

Any help greatly appreciated.

share|improve this question
As far as I can tell, this was an issue with the version of SQL Server. The problem was manifesting itself in SQL Server 2008 with no service pack. Restoring the database onto a machine with SP1, CU5 gave a different (and far more efficient) execution plan. – Paul McLoughlin Apr 16 '10 at 22:00
up vote 1 down vote accepted

The problem here turned out to be with the version of SQL Server. The problem manifested itself with SQL Server 2008 (no service pack) and was resolved by upgrading to SQL Server 2008 SP1 (and adding CU5). Since we did not test without CU5 installed I cannot determine if the fix came with SP1 or CU5. No matter, the issue is resolved. Morale? Keep your server up to date.

share|improve this answer
Interesting. I have exactly the same problem but I have the latest version of 2008 R2. Where the result set is small, it seems to choose the wrong execution plan. Adding OPTION (HASH JOIN) seems to fix the problem, but I don't know enough about it to say for sure. I'm worried that I may be slowing it down unnecessarily where the result set is larger. Could it be something wrong with statistics? What do you reckon? – Tim Rogers Aug 27 '10 at 11:40
If anyone's still reading this, I solved my problem by calling sp_updatestats. The statistics had obviously got out of sync. Obvious, really. It's possible you had the same problem, but maybe upgrading SQL Server updates the stats. – Tim Rogers Nov 24 '10 at 14:38

Perhaps you could add some statistics on the column in question - that will help SQL Server make better estimates about both the number of rows and their contents.

What statistics or indexes are currently involved?

share|improve this answer
The indexes currently being used are: the clustered index on the indexed view, which is on the UNIQUE_ID column (which is being scanned to find dates greater than the passed in date) and then the fulltext index (a seek being performed for items with this unique_id) There exists an index on the indexed view on the CHG_DATE column but this does not appear to be being used. – Paul McLoughlin Apr 16 '10 at 20:01
I can understand the initial index scan of the clustered index here, but the area I am confused on is the index seek of the fulltext index - this is where the estimate (1 row) and the actual (13,000) confuse me the most. – Paul McLoughlin Apr 16 '10 at 20:10

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.