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I have a very large table of wagering transactions. Let's say for the sake of the question I want to find the accounts of people who have wagered in the last year but not wagered in the last month, so I do something like this...

--query one

select accountnumber into #wageredrecently from activity 
where _date >='2011-08-10' and transaction_type = 'Bet'
group by accountnumber

--query two

select accountnumber,firstname,lastname,email,sum(handle)
from activity a, customers c
where a.accountnumber = c.accountno
and transaction_type = 'Bet'

and _date >='2010-09-10'
and accountnumber not in (select * from #wageredrecently)
group by accountnumber,firstname,lastname,email

The problem is, this takes ages to get the data. Is there a quicker way to acheive the same in sql?

Edit, just to be specific about the time: It takes just over 3 minutes, which is far too long for a query that is destined for a php intranet page.

Edit (11/09/2011): I've found out that the problem is the customers table. It's actually a view. It previously had good performance but now all of a sudden its performance is terrible, a simple query on it takes almost as long as the above query pair. I have therefore chosen an alternative table of customer data (that actually is a table, and not a view) and now the query pair takes about 15 seconds.

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Run your query with include execution plan turned on to find where it's costly. –  mservidio Sep 10 '11 at 18:03
    
The second query takes about 96% of the total time (probably not unusual). Over 3 minutes. I just ran the second query without the first query and it's almost as long... so I guess my overal stackoverflow question is flawed because my problem is not the usage of both queries in this way but the second query being very slow. –  MrVimes Sep 10 '11 at 18:36

4 Answers 4

You should try to join customers after you have found and aggregated the rows from activity (I assume that handle is a column in activity).

select c.accountno, 
       c.firstname,
       c.lastname,
       c.email,
       a.sumhandle
from customers as c
  inner join (
                select accountnumber,
                       sum(handle) as sumhandle
                from activity
                where _date >= '2010-09-10' and
                      transaction_type = 'bet' and 
                      accountnumber not in (
                                              select accountnumber 
                                              from activity
                                              where _date >= '2011-08-10' and
                                                    transaction_type = 'bet'
                                           )
                group by accountnumber
             ) as a
    on c.accountno = a.accountnumber              

I also included your first query as a sub-query instead. I'm not sure what that will do for performance. It could be better, it could be worse, you have to test on your data.

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This takes longer, but I have discovered that the problem is the customers view. I've edited the original question to explain more. Thanks for answering though. I appreciate it. –  MrVimes Sep 11 '11 at 18:14

I don't know your exact business need, but rarely will someone need access to innactive accounts over several months at a moments notice. Depending on when you pruge data, this may get worse.

You could create an indexed view that contains the last transaction date for each account:

max(_date) as RecentTransaction

If this table gets too large, it could be partioned by year or month of the activity.

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Except that MAX aggregate is not allowed in indexed views, as explained in the very article you link. –  Remus Rusanu Sep 11 '11 at 2:12

Have you considered adding an index on _date to the activity table? It's probably taking so long because it has to do a full table scan on that column when you're comparing the dates. Also, is transaction_type indexed as well? Otherwise, the other index wouldn't do you any good.

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_Date is indexed, but transaction_type isn't. (I am not really the db admin so adding a new index isn't easy to do on a whim.. it is possible though) I tried removing transaction_type from the query, but it still takes a long time to run. –  MrVimes Sep 10 '11 at 18:04
up vote 0 down vote accepted

Answering my question as the problem wasn't the structure of the query but one of the tables being used. It was a view and its performance was terrible. I change to an actual table with customer data in and reduced the execution time down to about 15 seconds.

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