Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I've got a table with int field, let's call it createTime. The table consists of few million records. Now I want to run the query:

select * from `table` order by `createTime` desc limit 500000, 10

I've created an index for createTime, but the query runs INCREDIBLY slow. What's the reason? How can I improve it?

Here's what EXPLAIN says:

id 1
select_type simple
table table
type index
possible_keys null
key createTime
key_len 4
ref null
rows 500010
extra

As for the offset, it's working much faster when it's small.

share|improve this question
    
Have you tried using the EXPLAIN keyword to see what MySql is doing? Effectively, EXPLAIN select * from table order by createTime desc limit 500000, 10. Out of interest, what data type is createTime? –  dash Dec 11 '11 at 20:30
    
I've explained in the question it's an int. EXPLAIN says nothing interesting, it's using the created index and it estimates the number of rows to 500010. –  Sebastian Nowak Dec 11 '11 at 20:38
    
(What was the performance like before the index was created? What about a limit with no offset? A limit with a smaller offset?) –  user166390 Dec 11 '11 at 20:42
    
@SebastianNowak: Why not show us what EXPLAIN says? Since you're asking for alternative interpretations of the data... –  Lightness Races in Orbit Dec 11 '11 at 20:45
    
Sorry, I meant what does a typical createTime column contain - a few example values. Also, are you using ISAM, InnoDB? –  dash Dec 11 '11 at 20:48

3 Answers 3

up vote 7 down vote accepted

General rule: avoid OFFSET for large tables.

[A]s the offset increases, the time taken for the query to execute progressively increases, which can mean processing very large tables will take an extremely long time. The reason is because offset works on the physical position of rows in the table which is not indexed. So to find a row at offset x, the database engine must iterate through all the rows from 0 to x.

The general rule of thumb is “never use offset in a limit clause”. For small tables you probably won’t notice any difference, but with tables with over a million rows you’re going to see huge performance increases.

share|improve this answer
2  
I would prefer "avoid large OFFSET" –  ypercube Dec 11 '11 at 20:52
    
@ypercube: But large OFFSET for small tables is fine. –  Lightness Races in Orbit Dec 11 '11 at 20:53
    
You mean when OFFSET is larger than the table size? Yeah, I guess so. Pointless but fine. –  ypercube Dec 11 '11 at 21:06
    
@ypercube: It makes the distinction pointless :) –  Lightness Races in Orbit Dec 11 '11 at 21:28
    
My (perhaps overly touchy) comment was because I find the title of that article slightly misleading. Using small offsets with proper index in large tables can be ok. (and the text below agrees) –  ypercube Dec 11 '11 at 21:36

You can speed this up if you have a unique column. Ideally it would be createTime itself:

SELECT "table".*
  FROM "table"
  INNER JOIN (
    SELECT "createTime"
      FROM "table"
      ORDER BY "createTime" DESC
      LIMIT 500000, 10
  ) AS "limit" ON "table"."createTime" = "limit"."createTime"

If createTime is not unique, but you have another column that is unique, then you may find you need to create a composite index on createTime and your other column in order for this query to run efficiently:

SELECT "table".*
  FROM "table"
  INNER JOIN (
    SELECT "createTime", "unique"
      FROM "table"
      ORDER BY "createTime" DESC
      LIMIT 500000, 10
  ) AS "limit" ON "table"."unique" = "limit"."unique"
share|improve this answer
1  
Thanks, but this query still takes few seconds to run. It's unacceptable as for a website. Isn't there any faster way to implement pagination basing on createTime column? –  Sebastian Nowak Dec 11 '11 at 22:36

I think indexing won't change anything. Using offset, limit means "read offset + limit datasets and discard (num of offset) of them". If you really want have a pagination or something like that for such a large table, you should use a method where you can limit your results in the WHERE part of your query. Those type of query will benefit of a proper index.

Using datetimes, a solution might be to use timeslots to display your data. E.g. you can display links for each day of a week and build your query like "WHERE createDate > '2011-12-11' AND crateDate < '2011-12-12'.

share|improve this answer

Your Answer

 
discard

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.