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Which way to count a number of rows should be faster in MySQL?

This:

SELECT COUNT(*) FROM ... WHERE ...

Or, the alternative:

SELECT 1 FROM ... WHERE ...

// and then count the results with a built-in function, e.g. in PHP mysql_num_rows()

One would think that the first method should be faster, as this is clearly database territory and the database engine should be faster than anybody else when determining things like this internally.

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1  
Oh, I found a similar question (stackoverflow.com/questions/1855226/…). But then, I use SELECT 1 and not SELECT *. Is there a difference? –  Franz Feb 20 '11 at 22:00
    
i don't know, but it is conceivable that these two answers are identical -- the mysql query optimizer may do the same thing on each. that said the former is less ambiguous than the latter. why don't you write some benchmarks and test it out? –  Jesse Cohen Feb 20 '11 at 22:06
    
Uhm, let's assume I'm trying to enhance SO's search engine visibility by asking a similar question in different words ;) –  Franz Feb 20 '11 at 22:37
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The difference is the amount of data sent over to the PHP side. The more columns you have, the slower SELECT * gets relative to SELECT 1, because all columns are retrieved instead of just the number 1. When you run mysql_query(), for instance, the entire result set is sent to PHP from MySQL, regardless of what you do with that data. –  toon81 Feb 26 '13 at 8:28

6 Answers 6

up vote 44 down vote accepted

When you COUNT(*) it takes in count column indexes, so it will be the best result. Mysql with MyISAM engine actually stores row count, it doensn't count all rows each time you try to count all rows. (based on primary key's column)

Using PHP to count rows is not very smart, because you have to send data from mysql to php. Why do it when you can achieve the same on the mysql side?

If the COUNT(*) is slow, you should run EXPLAIN on the query, and check if indexes are really used, and where should they be added.


The following is not the fastest way, but there is a case, where COUNT(*) doesn't really fit - when you start grouping results, you can run into problem, where COUNT doesn't really count all rows.

The solution is SQL_CALC_FOUND_ROWS. This is usually used when you are selecting rows but still need to know the total row count (for example, for paging). When you select data rows, just append the SQL_CALC_FOUND_ROWS keyword after SELECT:

SELECT SQL_CALC_FOUND_ROWS [needed fields or *] FROM table LIMIT 20 OFFSET 0;

After you have selected needed rows, you can get the count with this single query:

SELECT FOUND_ROWS();

FOUND_ROWS() has to be called immediately after the data selecting query.

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Thanks. Makes sense. –  Franz Feb 20 '11 at 22:37
5  
Correction: MyISAM stores row count. Other storage engines like InnoDB do not store row counts and will count all rows each time. –  The Scrum Meister Feb 21 '11 at 0:06
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Do you know which will be fastest when you simply want to find out whether there is a row: SELECT 1 FROM ... LIMIT 1 or SELECT COUNT(*) FROM ...? –  Franz Mar 18 '11 at 20:29
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It's probably useful to note that if you need the data anyway and only want a count for pagination/etc. it is more efficient to get the data then count the rows in your program. –  Tyzoid Aug 1 '13 at 20:16
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It's irrelevant whether the engine stores row counts. The question clearly states there's a WHERE clause. –  Álvaro G. Vicario Jan 23 at 12:43

Great question, great answers. Here's a quick way to echo the results if anyone is reading this page and missing that part:

$counter = mysql_query("SELECT COUNT(*) AS id FROM table");
$num = mysql_fetch_array($counter);
$count = $num["id"];
echo("$count");
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I've always understood that the below will give me the fastest response times.

SELECT COUNT(1) FROM ... WHERE ...
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Wouldn't SELECT 1 FROM ... WHERE ... be even faster? –  patrick Apr 12 at 14:08

If you need to get the count of the entire result set you can take following approach:

SELECT SQL_CALC_FOUND_ROWS * FROM table_name LIMIT 5;
SELECT FOUND_ROWS();

This is normally not faster than using COUNT albeit one might think the opposite is the case because it's doing the calculation internally and doesn't send the data back to the user thus the performance improvement is suspected.

Doing these two queries is good for pagination for getting totals but not particularly for using WHERE clauses.

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Intersting. Does that work across the most common database systems? MySQL, Postgres, SQLite...? –  Franz Nov 12 '12 at 22:24
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Definitely works in MySQL but not sure for the others. –  infinity Nov 13 '12 at 4:08
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This is actually often not faster than using COUNT(*) at all. See stackoverflow.com/questions/186588/… –  toon81 Feb 26 '13 at 8:25
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You should be VERY careful when using this function. Its reckless use once brought our entire production environment to a grinding halt. It is VERY resource intensive, so use with care. –  Janis Peisenieks Dec 13 '13 at 9:06

Perhaps you may want to consider doing a SELECT max(Id) - min(Id) + 1. This will only work if your Ids are sequential and rows are not deleted. It is however very fast.

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After speaking with my team-mates, Ricardo told us that the faster way is:

show table status like '<TABLE NAME>' \G

But you have to remember that the result may not be exact.

You can use it from command line too:

$ mysqlshow --status <DATABASE> <TABLE NAME>

More information: http://dev.mysql.com/doc/refman/5.7/en/show-table-status.html

And you can find a complete discussion at mysqlperformanceblog

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For InnoDB, this is an approximation. –  Carpetsmoker Aug 27 at 13:24

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