When you limit the number of rows to be returned by a SQL query, usually used in paging, there are two methods to determine the total number of records:

Method 1

Include the SQL_CALC_FOUND_ROWS option in the original SELECT, and then get the total number of rows by running SELECT FOUND_ROWS():


Method 2

Run the query normally, and then get the total number of rows by running SELECT COUNT(*)

SELECT * FROM table WHERE id > 100 LIMIT 10;
SELECT COUNT(*) FROM table WHERE id > 100;  

Which method is the best / fastest?


8 Answers 8


It depends. See the MySQL Performance Blog post on this subject: To SQL_CALC_FOUND_ROWS or not to SQL_CALC_FOUND_ROWS?

Just a quick summary: Peter says that it depends on your indexes and other factors. Many of the comments to the post seem to say that SQL_CALC_FOUND_ROWS is almost always slower - sometimes up to 10x slower - than running two queries.

  • 28
    I can confirm this - I just updated a query with 4 joins on a 168,000 row database. Selecting just the first 100 rows with a SQL_CALC_FOUND_ROWS took over 20 seconds; using a separate COUNT(*) query took under 5 seconds (for both count + results queries).
    – Sam Dufel
    Jul 11, 2012 at 23:59
  • 12
    Very interesting findings. Since MySQL's documentation explicitly suggests that SQL_CALC_FOUND_ROWS will be faster, I wonder in what situations (if any) it actually is faster!
    – svidgen
    Jan 9, 2013 at 20:56
  • 13
    old topic, but for those who still interesting! Just finished my check on INNODB from 10 checks I can tell that it's 26(2query) against 9.2(1 query) SELECT SQL_CALC_FOUND_ROWS tblA.*, tblB.id AS 'b_id', tblB.city AS 'b_city', tblC.id AS 'c_id', tblC.type AS 'c_type', tblD.id AS 'd_id', tblD.extype AS 'd_extype', tblY.id AS 'y_id', tblY.ydt AS y_ydt FROM tblA, tblB, tblC, tblD, tblY WHERE tblA.b = tblC.id AND tblA.c = tblB.id AND tblA.d = tblD.id AND tblA.y = tblY.id
    – Al Po
    Jul 20, 2013 at 15:37
  • 4
    I just ran this experiment and SQLC_CALC_FOUND_ROWS was much faster than two queries. Now my main table is only 65k and two joins of a few hundreds, but the main query takes 0.18 seconds with or without SQLC_CALC_FOUND_ROWS but when I ran a second query with COUNT(id) it took 0.25 alone. Mar 24, 2014 at 17:16
  • 4
    In addition to possible performance issues, consider that FOUND_ROWS() has been deprecated in MySQL 8.0.17. See also @madhur-bhaiya's answer.
    – arueckauer
    Oct 21, 2019 at 12:23

MySQL has started deprecating SQL_CALC_FOUND_ROWS functionality with version 8.0.17 onwards.

So, it is always preferred to consider executing your query with LIMIT, and then a second query with COUNT(*) and without LIMIT to determine whether there are additional rows.

From docs:

The SQL_CALC_FOUND_ROWS query modifier and accompanying FOUND_ROWS() function are deprecated as of MySQL 8.0.17 and will be removed in a future MySQL version.

COUNT(*) is subject to certain optimizations. SQL_CALC_FOUND_ROWS causes some optimizations to be disabled.

Use these queries instead:

SELECT * FROM tbl_name WHERE id > 100 LIMIT 10;

Also, SQL_CALC_FOUND_ROWS has been observed to having more issues generally, as explained in the MySQL WL# 12615 :

SQL_CALC_FOUND_ROWS has a number of problems. First of all, it's slow. Frequently, it would be cheaper to run the query with LIMIT and then a separate SELECT COUNT() for the same query, since COUNT() can make use of optimizations that can't be done when searching for the entire result set (e.g. filesort can be skipped for COUNT(*), whereas with CALC_FOUND_ROWS, we must disable some filesort optimizations to guarantee the right result)

More importantly, it has very unclear semantics in a number of situations. In particular, when a query has multiple query blocks (e.g. with UNION), there's simply no way to calculate the number of “would-have-been” rows at the same time as producing a valid query. As the iterator executor is progressing towards these kinds of queries, it is genuinely difficult to try to retain the same semantics. Furthermore, if there are multiple LIMITs in the query (e.g. for derived tables), it's not necessarily clear to which of them SQL_CALC_FOUND_ROWS should refer to. Thus, such nontrivial queries will necessarily get different semantics in the iterator executor compared to what they had before.

Finally, most of the use cases where SQL_CALC_FOUND_ROWS would seem useful should simply be solved by other mechanisms than LIMIT/OFFSET. E.g., a phone book should be paginated by letter (both in terms of UX and in terms of index use), not by record number. Discussions are increasingly infinite-scroll ordered by date (again allowing index use), not by paginated by post number. And so on.

  • How to perform this two selects as atomic operation? What if someone inserts a row before the SELECT COUNT(*) query? Thanks.
    – Dom
    Oct 27, 2019 at 1:06
  • @Dom if you have MySQL8+, you can run both the query in a single query using Window functions; but this won't be an optimal solution as indexes won't be used properly. Another option is to surround these two queries with LOCK TABLES <tablename> and UNLOCK TABLES. Third option and (best IMHO) is to rethink pagination. Please read: mariadb.com/kb/en/library/pagination-optimization Oct 27, 2019 at 3:05

When choosing the "best" approach, a more important consideration than speed might be the maintainability and correctness of your code. If so, SQL_CALC_FOUND_ROWS is preferable because you only need to maintain a single query. Using a single query completely precludes the possibility of a subtle difference between the main and count queries, which may lead to an inaccurate COUNT.

  • 12
    This depends on your set up. If you're using some kind of ORM or query builder, it's very easy to use the same where criteria for both queries, swap the select fields for a count, and drop the limit. You should never write out the criteria twice.
    – mpen
    Apr 28, 2014 at 15:48
  • I would point out that I'd rather maintain code using two simple fairly standard, easy to understand SQL queries than one which uses a proprietary MySQL feature - which is worth noting is deprecated in newer MySQL versions. Dec 13, 2019 at 0:58

According to the following article: https://www.percona.com/blog/2007/08/28/to-sql_calc_found_rows-or-not-to-sql_calc_found_rows/

If you have an INDEX on your where clause (if id is indexed in your case), then it is better not to use SQL_CALC_FOUND_ROWS and use 2 queries instead, but if you don't have an index on what you put in your where clause (id in your case) then using SQL_CALC_FOUND_ROWS is more efficient.


IMHO, the reason why 2 queries

SELECT * FROM count_test WHERE b = 666 ORDER BY c LIMIT 5;
SELECT count(*) FROM count_test WHERE b = 666;

are faster than using SQL_CALC_FOUND_ROWS


has to be seen as a particular case.

It in facts depends on the selectivity of the WHERE clause compared to the selectivity of the implicit one equivalent to the ORDER + LIMIT.

As Arvids told in comment (http://www.mysqlperformanceblog.com/2007/08/28/to-sql_calc_found_rows-or-not-to-sql_calc_found_rows/#comment-1174394), the fact that the EXPLAIN use, or not, a temporay table, should be a good base for knowing if SCFR will be faster or not.

But, as I added (http://www.mysqlperformanceblog.com/2007/08/28/to-sql_calc_found_rows-or-not-to-sql_calc_found_rows/#comment-8166482), the result really, really depends on the case. For a particular paginator, you could get to the conclusion that “for the 3 first pages, use 2 queries; for the following pages, use a SCFR” !


Removing some unnecessary SQL and then COUNT(*) will be faster than SQL_CALC_FOUND_ROWS. Example:

SELECT Person.Id, Person.Name, Job.Description, Card.Number
FROM Person
JOIN Job ON Job.Id = Person.Job_Id
LEFT JOIN Card ON Card.Person_Id = Person.Id
WHERE Job.Name = 'WEB Developer'
ORDER BY Person.Name

Then count without unnecessary part:

FROM Person
JOIN Job ON Job.Id = Person.Job_Id
WHERE Job.Name = 'WEB Developer'

There are other options for you to benchmark:

1.) A window function will return the actual size directly (tested in MariaDB):

  COUNT(*) OVER() AS `total_count`
FROM `mytable`
ORDER BY `mycol`
LIMIT 10, 20

2.) Thinking out of the box, most of the time users don't need to know the EXACT size of the table, an approximate is often good enough.

SELECT `TABLE_ROWS` AS `rows_approx`

Simple example on table with 2.000.000 rows and query like this :

select fieldname 
from table_add 
descryption_per like '%marihuana%' 
or addiction_per like '%alkohol%';

it is a full table scan every query - so it take time x 2. I mean "select count(*) from .....

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