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When using SELECT * FROM table WHERE Id IN ( .. ) queries with more than 10000 keys using PDO with prepare()/execute(), the performance degrades ~10X more than doing the same query using mysqli with prepared statements or PDO without using prepared statements.

More strange details:

  • More typical SELECT statements that don't have the WHERE Id IN( ..) clause perform fine even with 100K+ rows. SELECT * FROM table WHERE Id for example is fast.

  • The performance degradation occurs after prepare()/execute() is complete - it's entirely in PDOStatement::fetch() or PDOStatement::fetchAll(). The MySQL query execution time is tiny in all cases - this isn't a case of a MySQL optimization.

  • Splitting the 10K query into 10 queries with 1K keys is performant.

  • Using mysql, mysqli with prepared statements, or PDO without prepared statements is performant.

  • PDO w/prepared takes ~6 seconds on the example below, while the others take ~0.5s.

  • It gets worse in a non-linear fashion the more keys you have. Try 100K keys.

Sample code:

// $imageIds is an array with 10K keys
$keyCount = count($imageIds);
$keys = implode(', ', array_fill(0, $keyCount, '?'));
$query = "SELECT * FROM images WHERE ImageID IN ({$keys})";
$stmt = $dbh->prepare($query);
$stmt->execute($imageIds);
// until now, it's been fast.  fetch() is the slow part
while ($row = $stmt->fetch()) {
    $rows[] = $row;
}
share|improve this question
    
If this is reproducible, then you probably would need to profile PHP to see why the slowdown occurs. –  Matthew Dec 3 '10 at 23:18
    
Try PDO::ATTR_EMULATE_PREPARES or disabling PDO::MYSQL_ATTR_USE_BUFFERED_QUERY. And note that libmysql and mysqlnd backends behave differently. –  mario Dec 3 '10 at 23:43
    
Tried both of those already, no major impact. mysql, mysqli, and PDO are all using mysqlnd. –  Don MacAskill Dec 3 '10 at 23:45
    
From your description it sounds like it's a post-processing bug then. I'd suspect the slowdown is due to handling bound parameters. Try ->debugDumpParams() and look for is_param= values. If it's 1 then PDO will iterate over the list to look for bound variables to update. Maybe manually preseeding with ->bindValue() instead of ->execute(ARRAY) helps. But I suspect PDO will always loop over the bound params list. Not sure if is_param= is decisive for that anyway. (And too lazy to comprehend pdo_stmt.c) –  mario Dec 4 '10 at 0:28

2 Answers 2

Make sure you're telling PDO that the value is an integer not a string; if PDO puts it as a string, then MySQL will have to typecast the values for comparison. Depending on how it goes about this, it could cause major slowdowns by causing MySQL to avoid using an index.

I'm not completely sure about the behaviour here, but I have had this problem with Postgres a few years back...

share|improve this answer
    
+1 as this is a likely cause for the slowness. Casting would neat the use of the index. Have had the exact same problem in mysql + PDO prepared statements before. –  sberry Dec 9 '10 at 23:15

Don't have any experience with PDO so can't help with that but this method is pretty performant, although it's a bit ugly in places ;)

PHP

<?php

$nums = array(); $max = 10000;

for($i=0;$i<$max*10;$i++) $nums[] = $i;

$conn = new mysqli("127.0.0.1", "vldb_dbo", "pass", "vldb_db", 3306);

$sql = sprintf("call list_products_by_id('%s',0)", implode(",",array_rand($nums, $max)));

$startTime = microtime(true);

$result = $conn->query($sql);

echo sprintf("Fetched %d rows in %s secs<br/>", 
    $conn->affected_rows, number_format(microtime(true) - $startTime, 6, ".", ""));

$result->close();
$conn->close();

?>

Results

select count(*) from product;
count(*)
========
1000000

Fetched 1000 rows in 0.014767 secs
Fetched 1000 rows in 0.014629 secs

Fetched 2000 rows in 0.027938 secs
Fetched 2000 rows in 0.027929 secs

Fetched 5000 rows in 0.068841 secs
Fetched 5000 rows in 0.067844 secs

Fetched 7000 rows in 0.095199 secs
Fetched 7000 rows in 0.095184 secs

Fetched 10000 rows in 0.138205 secs
Fetched 10000 rows in 0.134356 secs

MySQL

drop procedure if exists list_products_by_id;

delimiter #

create procedure list_products_by_id
(
in p_prod_id_csv text,
in p_show_explain tinyint unsigned
)
proc_main:begin

declare v_id varchar(10);
declare v_done tinyint unsigned default 0;
declare v_idx int unsigned default 1;

    create temporary table tmp(prod_id int unsigned not null)engine=memory; 

    -- split the string into tokens and put into a temp table...

    if p_prod_id_csv is not null then
        while not v_done do
            set v_id = trim(substring(p_prod_id_csv, v_idx, 
                if(locate(',', p_prod_id_csv, v_idx) > 0, 
                        locate(',', p_prod_id_csv, v_idx) - v_idx, length(p_prod_id_csv))));

                if length(v_id) > 0 then
                set v_idx = v_idx + length(v_id) + 1;
                        insert ignore into tmp values(v_id);
                else
                set v_done = 1;
                end if;
        end while;
    end if;

    if p_show_explain then

        select count(*) as count_of_tmp from tmp;

        explain
        select p.* from product p
        inner join tmp on tmp.prod_id = p.prod_id order by p.prod_id;

    end if;

    select p.* from product p
        inner join tmp on tmp.prod_id = p.prod_id order by p.prod_id;

    drop temporary table if exists tmp;

end proc_main #

delimiter ;
share|improve this answer
    
Hey f00, thanks! Alas, I already have working functions for MySQL, MySQLi, PDO w/o prepared statements, etc - I'm wondering why this particular use case is so messed up. I prefer PDO w/prepared statements for a variety of reasons. –  Don MacAskill Dec 4 '10 at 1:29
    
no worries :) just out of interest what sort of runtimes are you getting ?? –  f00 Dec 4 '10 at 2:07

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