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I have a page that selects all the users in my database. There's only a thousand or two. No big deal.

However, while it's selecting that, it's also using their uid from that query to check another table with around 25,000 entries.

SELECT COUNT(id)
FROM logs
WHERE time+date > {$timeNow} AND uid={$row['id']}

It does that for each user entry. As you can imagine, this gets pretty resource intensive.

The WHERE clause above will only apply to perhaps the last day's worth of entries, maybe 500-1000 at most. It can, however, effect more than that.

I was thinking I could set up a cronjob to export all entries that don't match the WHERE clause once or twice per day to another table. I know that would dramatically help and even solve the problem in a somewhat efficient manner. However, I don't really like having two tables for the same (relative) purpose.

Is there a better way I can do it? I've search around for a good while now and I can't find any, but I thought I'd ask you guys in case you've come across the same problem and found a unique method to solve it.

EDIT For Brendan Long: My new query:

$SQL = "SELECT u.id, COUNT(l.id) " .
       "FROM users u " .
       "INNER JOIN logs l " .
       "ON l.uid = u.id " .
       "WHERE l.time+l.date > {$timeNow} " .
       "GROUP BY u.id";

Also, please don't bash on me for a lack of PDO. I haven't had time to convert this over yet. I know I'm a terrible person.

share|improve this question
    
So the results from this query are used to select more data from another table? Why not use a where IN on all the IDs together? – David Oct 3 '12 at 20:55
    
@David Not sure what you mean, but each result from this query gets paired up with the relevant user to post some stats on the userpanel on my site. – Rob Oct 3 '12 at 21:01

Use a JOIN so the database can optimize it for you as one query:

SELECT u.uid, COUNT(l.id)
FROM Users u -- or whatever your users table is named
LEFT JOIN logs l
ON l.uid = u.uid AND l.time + l.date > $timeNow
GROUP BY u.uid

In English, this tells the database, "get me a list of user IDs and the number of logs associated with them, where time + date is after $timeNow". This is significantly more efficient, since you're giving the database all of the work at once, so it can figure out the optimal way to get all of the information, instead of grabbing one piece at a time.

Joins

The LEFT JOIN tells the database to match up users with logs by looking for records where the users table and logs table have the same uid. The LEFT in LEFT JOIN tells the database to return a result for a user (the left side of the join), even if they don't have any logs associated with them (the right side of the join). If you don't want to see results where there's no logs for a user, you can do an INNER JOIN, which will only show results where there's a match on both sides of the join (both a user and at least one log message).

Group By

The GROUP BY is necessary to group the results by user ID -- otherwise you'd just get the total number of log messages associated with any user, which is presumably not helpful since you could just SELECT COUNT(*) FROM logs.

I'm using table aliases to make the query shorter because it's the style I've always used, but you can easily just put the full names of the tables (logs.uid, etc.). You may even be able to get away with no including the table names, but your database will get confused when you refer to a column that exists in multiple tables in your query, so I find it's simplest to always be explicit about which column you're talking about.

Indexes

This new query should finish instantaneously unless you have an insanely large database. If it doesn't, take @charly's advice and try some indexes. Unfortunately, you add l.time + l.date before using the value, and I don't think MySQL will let you create an index on l.time + l.date, but you may be able to get decent results by filtering on l.date first (which is indexable):

ON l.uid = u.uid AND l.date > $timeNow AND l.time + l.date > $timeNow

This looks repetitive, but it gives the database more to work with, since it can:

  1. Fetch results where l.date is after $timeNow using the index.
  2. Filter that (hopefully small) set of results with l.time + l.date > $timeNow.

Instead of:

  1. For every record in the table, add l.time + l.date.
  2. Check if that result is after $timeNow

PHP

To do this in PHP, you'll want to do something like:

$sql = // that query above
$result = mysql_query($sql);
while($row = mysql_fetch_array($result)) {
    echo "User " . $row[0] . " posted " . $row[1] . " times.";
}

Or if you need to use this in a more complicated way, fetch it all upfront:

$counts = array();
$sql = // that query above
$result = mysql_query($sql);
while($row = mysql_fetch_array($result)) {
    $counts[$row[0]] = $row[1];
}

// later
$user = 5; // some user we care about
echo "User " . $user . " posted " . $counts[$user] . " times.";

If you do it the "fetch it all upfront" way, you can also optimize a little by using the INNER JOIN version of the query with the knowledge that any user not in $counts has a count of 0.

Sorry if my syntax is wrong, but I think this shows the idea.

Security Note

On a minor tangent: It looks like you're dropping variables directly into your query, which is generally a bad idea. There are a number of incredibly complicated solutions, but the easiest is to just use parametrized queries and never put variables directly into your SQL.

share|improve this answer
    
Thank you for the amazing answer. Very well put together and very informative. I've been following along as you updated it and been playing with the statement. It's managed to cut down on query time by a whopping 66%. This is great. The only problem is that it's reading the same count for each and every user, and the count is wrong, at that. Any ideas? – Rob Oct 3 '12 at 21:19
    
@Rob I just made one more change to select and group by u.uid instead of l.uid. I'm not sure if this would make any practical difference. Since it's a left join I realized it was weird to group by something on the right side of the join. Can you edit your question to add the exact query you're using now and an example of the results? – Brendan Long Oct 3 '12 at 21:23
    
Sure. One moment. – Rob Oct 3 '12 at 21:26
    
Edited. As for the results, it returns 604 every time. Which doesn't even make sense, to be honest. I have no idea how it's getting 604. – Rob Oct 3 '12 at 21:28
    
Except for the first result, in which case it's returning 182... – Rob Oct 3 '12 at 21:29

I'm really not sure but maybe adding a BTREE index on the uid column. Then your query will be much more efficient as it won't scan all the logs that are not of the specified uid.

Though I'm not 100% sure

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