Well, this is the thing. Let's say that my future PHP CMS need to drive 500k visitors daily and I need to record them all in MySQL database (referrer, ip address, time etc.). This way I need to insert 300-500 rows per minute and update 50 more. The main problem is that script would call database every time I want to insert new row, which is every time someone hits a page.

My question, is there any way to locally cache incoming hits first (and what is the best solution for that apc, csv...?) and periodically send them to database every 10 minutes for example? Is this good solution and what is the best practice for this situation?

  • 1
    Also, what's the best way to track unique visitors (per ip address) on that big table? – livelygreen May 17 '11 at 14:55
  • SELECT DISTINCT ( ip ) FROM access_log – genesis Jun 18 '11 at 23:11

10 Answers 10


500k daily it's just 5-7 queries per second. If each request will be served for 0.2 sec, then you will have almost 0 simultaneous queries, so there is nothing to worry about.
Even if you will have 5 times more users - all should work fine.
You can just use INSERT DELAYED and tune your mysql.
About tuning: http://www.day32.com/MySQL/ - there is very useful script (will change nothing, just show you the tips how to optimize settings).

You can use memcache or APC to write log there first, but with using INSERT DELAYED MySQL will do almost same work, and will do it better :)

Do not use files for this. DB will serve locks much better, than PHP. It's not so trivial to write effective mutexes, so let DB (or memcache, APC) do this work.

  • +1 for a more complete answer and discussion of INSERT DELAYED – Kevin Peno May 17 '11 at 15:58

A frequently used solution:

You could implement an counter in memcached which you increment on an visit, and push an update to the database for every 100 (or 1000) hits.

  • 4
    Having a memory cache instead of file cache (as in other answer) is by far faster ! +1 – Matthieu Napoli May 17 '11 at 13:28

We do this by storing locally on each server to CSV, then having a minutely cron job to push the entries into the database. This is to avoid needing a highly available MySQL database more than anything - the database should be able to cope with that volume of inserts without a problem.


Save them to a directory-based database (or flat file, depends) somewhere and at a certain time, use a PHP code to insert/update them into your MySQL database. Your php code can be executed periodically using Cron, so check if your server has Cron so that you can set the schedule for that, say every 10 minutes.

Have a look at this page: http://damonparker.org/blog/2006/05/10/php-cron-script-to-run-automated-jobs/. Some codes have been written in the cloud and are ready for you to use :)

  • The file crontab.php can not be downloaded on the page damonparker.org/blog/2006/05/10/…" – xuesong May 17 '11 at 14:15
  • So try to find a different script instead :) There are thousands of that on the Internet. – user743234 May 17 '11 at 15:42
  • blog post doesn't exist anymore.... – Malachi May 29 '15 at 19:17

One way would be to use Apache access.log. You can get a quite fine logging by using cronolog utility with apache . Cronolog will handle the storage of a very big number of rows in files, and can rotate it based on volume day, year, etc. Using this utility will prevent your Apache from suffering of log writes.

Then as said by others, use a cron-based job to analyse these log and push whatever summarized or raw data you want in MySQL.

You may think of using a dedicated database (or even database server) for write-intensive jobs, with specific settings. For example you may not need InnoDB storage and keep a simple MyIsam. And you could even think of another database storage (as said by @Riccardo Galli)


If you absolutely HAVE to log directly to MySQL, consider using two databases. One optimized for quick inserts, which means no keys other than possibly an auto_increment primary key. And another with keys on everything you'd be querying for, optimized for fast searches. A timed job would copy hits from the insert-only to the read-only database on a regular basis, and you end up with the best of both worlds. The only drawback is that your available statistics will only be as fresh as the previous "copy" run.


I have also previously seen a system which records the data into a flat file on the local disc on each web server (be careful to do only atomic appends if using multiple proceses), and periodically asynchronously write them into the database using a daemon process or cron job.

This appears to be the prevailing optimium solution; your web app remains available if the audit database is down and users don't suffer poor performance if the database is slow for any reason.

The only thing I can say, is be sure that you have monitoring on these locally-generated files - a build-up definitely indicates a problem and your Ops engineers might not otherwise notice.


For an high number of write operations and this kind of data you might find more suitable mongodb or couchdb

  • And for sensible reporting, you will need SQL. This is not a "high number of write operations". Try doing GROUP BY in XXXdb (replace XXX by your favourite nosql) – MarkR May 17 '11 at 14:15

Because INSERT DELAYED is only supported by MyISAM, it is not an option for many users.

We use MySQL Proxy to defer the execution of queries matching a certain signature.

This will require a custom Lua script; example scripts are here, and some tutorials are here.

The script will implement a Queue data structure for storage of query strings, and pattern matching to determine what queries to defer. Once the queue reaches a certain size, or a certain amount of time has elapsed, or whatever event X occurs, the query queue is emptied as each query is sent to the server.


you can use a Queue strategy using beanstalk or IronQ

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.