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When paging through data that comes from a DB, you need to know how many pages there will be to render the page jump controls.

Currently I do that by running the query twice, once wrapped in a count() to determine the total results, and a second time with a limit applied to get back just the results I need for the current page.

This seems inefficient. Is there a better way to determine how many results would have been returned before LIMIT was applied?

I am using PHP and Postgres.

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5 Answers 5

up vote 3 down vote accepted

As I describe on my blog, MySQL has a feature called SQL_CALC_FOUND_ROWS. This removes the need to do the query twice, but it still needs to do the query in its entireity, even if the limit clause would have allowed it to stop early.

As far as I know, there is no similar feature for PostgreSQL. One thing to watch out for when doing pagination (the most common thing for which LIMIT is used IMHO): doing an "OFFSET 1000 LIMIT 10" means that the DB has to fetch at least 1010 rows, even if it only gives you 10. A more performant way to do is to remember the value of the row you are ordering by for the previous row (the 1000th in this case) and rewrite the query like this: "... WHERE order_row > value_of_1000_th LIMIT 10". The advantage is that "order_row" is most probably indexed (if not, you've go a problem). The disadvantage being that if new elements are added between page views, this can get a little out of synch (but then again, it may not be observable by visitors and can be a big performance gain).

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Things have changed since 2008. You can use a window function to get the full count and the limited result in one query. (Introduced with PostgreSQL 8.4 in 2009).

SELECT foo
      ,count(*) OVER() AS full_count
FROM   bar
WHERE  <some condition>
ORDER  BY <some col>
LIMIT  <pagesize>
OFFSET <offset>

Consider the sequence of events:

  1. WHERE clause (and JOIN conditions, but not here) filter qualifying rows from the base table(s).

    (GROUP BY and aggregate functions would go here.)

  2. Window functions are applied considering all qualifying rows (depending on the OVER clause and the frame specification of the function). The simple count(*) OVER() is based on all rows.

  3. ORDER BY

    (DISTINCT or DISTINCT ON would go here.)

  4. LIMIT / OFFSET are applied based on the established order to select rows to return.

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1  
In older versions of postgres, you can do something similar with cursors. e.g. BEGIN; DECLARE c CURSOR FOR SELECT * FROM table; MOVE FORWARD 100 IN c; FETCH 10 FROM c; MOVE FORWARD ALL IN c; COMMIT;. You get your data back from the FETCH, and you can work out row counts from pg_affected_rows calls as appropriate. –  Frank Farmer Apr 30 '13 at 23:13

Seeing as you need to know for the purpose of paging, I'd suggest running the full query once, writing the data to disk as a server-side cache, then feeding that through your paging mechanism.

If you're running the COUNT query for the purpose of deciding whether to provide the data to the user or not (i.e. if there are > X records, give back an error), you need to stick with the COUNT approach.

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You could mitigate the performance penalty by not running the COUNT() query every time. Cache the number of pages for, say 5 minutes before the query is run again. Unless you're seeing a huge number of INSERTs, that should work just fine.

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Since Postgres already does a certain amount of caching things, this type of method isn't as inefficient as it seems. It's definitely not doubling execution time. We have timers built into our DB layer, so I have seen the evidence.

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