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How to improve the performance of ad hoc queries against tables having hundreds of high cardinality columns and millions of records?

In my case, I have a table with one indexed DATE column SDATE, one VARCHAR2 column NE and 750 numeric columns most of them high cardinality columns with values in the range of 0 to 100. The table is updated with almost 20000 new records every hour. The queries against this table look like:





So far, I have always advised users not to enter big interval dates so as to put a limit on the number of records resulted from the date index access path; however, from time to time it becomes necessary to specify bigger intervals.

If V1, V2, ..., V750 were all low cardinality columns, I would have been able to utilize bitmap indexes. Unfortunately they are not.

What's the advice on this? How should I tackle this problem?


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750 numeric columns? What the heck are you doing? There's probably something smelly about your design, especially if it's a transactional database (which is implied from adding 20,000 rows per hour). And I hope you know BETWEEN may not be getting the results the questors are looking for. –  Clockwork-Muse Sep 24 '12 at 23:56
These columns have been produced automatically in this industrial environment. They measure equipment conditions and they are updated hourly. BETWEEN is suitable for them because they normally query for a specific period of time interval. –  Reza Goodarzi Sep 24 '12 at 23:59

2 Answers 2

up vote 1 down vote accepted

I assume you're stuck with the design, so a few thoughts that I'd probably look at -

1) use partitions - if you have partitioning option

2) use some triggers to denormalise (or normalise in this case) a query table which is more optimised for the query usage

3) make some snapshots

4) look at having a current table or set of tables which has the days records (or some suitable subset), and roll them over to a big table to store hsitory.

It depends on usage patterns and all the other constraints the system has - this may get you started, if you have more details a better solution is probably out there.

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I think the big problem would be the inserts. You have an index on sdate wich slow the inserts and speed up the selects. But, returning to your problems:

If users specify an interval wich is large (let's say >5%) it is beter to have the table partitioned by sdate in a daily or weekly or monthly manner. Oracle partitioning docs

(If you partition the table, don't forget to partition also the index. And if you want to do it live, use exchange partition ).

Also, as workaround, if you have a powerfull machine, you may use parallel queries. Oracle Parallel docs

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As data is inserted only once and queried many times, indexing the SDATE column makes sense and in fact load is not a problem for me (Server is also a powerful Sun Fire E25K). Also, the table is partitioned right now with locally partitioned indexes, though it is on a monthly basis. I admit this partitioning has been effective, but I am looking for something similar to bitmap indexes which helps with low-cardinality columns. –  Reza Goodarzi Sep 25 '12 at 9:34
Hmmm... partitioning daily may help you(if you select many rows)... and also an index(sdate, NE) –  Florin Ghita Sep 25 '12 at 10:33

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