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I need to create a table in MySQL version 5.5

this table will have information like:

  • user browsers (Firefox or chrome for example)
  • version of the browser (eg: 8.0 or 10)
  • IP of the user
  • date and time (when the user accessed the site)
  • referrer (URL or empty)

Here's what i think:

create table statistics (
 browser varchar(255) not null,
 version float not null,
 ip varchar(40) not null,
 dateandtime datetime,
 referrer varchar(255)

I read on that I need to use indexes to make my query fast but now my problem is what index should I create in order to make that table fast to query?

I need to query all the fields eg:

  • I want to know from the last 7 days which browser came to our site and how many
  • I want to know today how many user I have
  • I want to know from the last hour what urls (referrer) we got


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up vote 12 down vote accepted

I would recommend this:

Use intergers instead of chars/varchars. this way you index faster (except the referrer). Also, I can recommend to get summary tables. Although it's not really normalized but the query will be executed instantly - specially if you have a big organization with lots of traffic.

So here's the tables:

create table statistics (
 browser tinyint(3) UNSIGNED not null default 0,
 version float(4,2) not null default 0,
 ip INT(10) UNSIGNED not null default 0,
 createdon datetime,
 referrer varchar(5000),
 key browserdate (browser, createdon),
 key ipdate (ip, createdon),
 // etc..

browser 0 = unknow, 1 = firefox etc.. This can be done in your code (so you load the same code for inserting and selecting). i dont use enum here because if you need to alter the table and you have millions of records this can be painful. new browser = new number in the code which is way faster to change.

this table can be used to resummarized all the other tables if something happens. so you create an index for the inline summary table (example browser)

Now the summary table:

create table statistics_browser_2011_11 (
 browser tinyint(3) UNSIGNED not null default 0,
 version float(4,2) not null default 0,
 number bigint(20) not null default 0,
 createdon datetime,
 unique key browserinfo (createdon, browser, version)
); // browsers stats for november 2011

This way when you inserts (you get the date of the user when he accessed the site and create a $string that match with the table name) into this table you only have to use the on duplicate key number = number +1. this way when you retrieve the browser statistics is super fast.

now here you will have to create a merge table because if you are the second of the month and you want to query the last 7 days, you will need the current month and the last month table. here's more info:

and you repeat the process for the other information: ip, referrer etc...

in order to maintain these tables, you will have to create a cronjob that creates tables for the next month. simple PHP script that gets the current year/month and then create the table for the next month if it does not exists and then merge them)

this might be a little of work but this is how i do it at work (with similar data) with 12 terabytes of data and 5,000 employees that fetch the databases. my average load time for each query is approx 0.60 seconds per requests.

share|improve this answer
i would never think about this, i thought to be standardized we had to follow the 1 table lookup etc... i can see how this is fast. i will have a lot of work to do thanks – apollo Nov 25 '11 at 16:31
well yes its a lot of work but this kind of data grow super fast and over the years you will see a difference. – Gabriel Nov 25 '11 at 16:33

I think your schema can be improved to

create table statistics
  browser enum('Firefox','IE','Opera','Chrome','Safari','Others') not null 
    default 'Others',
   // major browser family only
   // instead of using free-form of varchar

  user_agent text,
   // to store the complete user agents
   // mainly for reference purpose only

  version float not null,
  ip varchar(40) not null,

  dateandtime datetime not null,

  referer varchar(2000)
  // 255 is no sufficient for referer

Index key

  1. build an index on browser, datetime
  2. using enum will make browser GROUP BY faster
  3. if you need version information, then it will be browser, version, datetime
  4. composite key on datetime, browser

query 1

select browser, count(*) from statistics
where dateandtime between ? and ?
group by browser;

query 2

 select count(*) from statistics
 where dateandtime between ? and ?;

query 3

 select referer from statistics
 where dateandtime between ? and ?;
share|improve this answer
Using a primary key will almost always be more efficient than an other index. One may want to have that table have a primary key, in a way that it is a substitute to the index you're proposing. – Romain Nov 25 '11 at 16:23
dude, what are you talking about? either i too naive or ? ...:( – ajreal Nov 25 '11 at 16:24
I believe you know you can have tables set with a primary key (that's kind of the "main unique index" of the table)? This is the fastest possible index on an InnoDB/MyISAM table in MySQL. – Romain Nov 25 '11 at 16:26
lol ... please suggest one!!! – ajreal Nov 25 '11 at 16:26
(BROWSER, DATETIME, VERSION, USER_AGENT, IP, REFERRER), this will prevent two rows with the exact same content (but can this really happen?), and will give much faster access to BROWSER, DATETIME-based data. – Romain Nov 25 '11 at 16:29

Let’s say you have a MySQL table called ‘loginhistory’ that contains ‘userid’ and ‘useragent’. To make a count of how many times certain OSes occurred in the user-agent strings, I used the following MySQL query:

   WHEN useragent LIKE '%iPad%' THEN 'iPad'
   WHEN useragent LIKE '%iPhone%' THEN 'iPhone'
   WHEN useragent LIKE '%Android%' THEN 'Android'
   WHEN useragent LIKE '%Mac OS X%' THEN 'OS X'
   WHEN useragent LIKE '%X11%' THEN 'Linux'
   WHEN useragent LIKE '%Windows NT 6.3%' THEN 'Windows 8.1'
   WHEN useragent LIKE '%Windows NT 6.2%' THEN 'Windows 8'
   WHEN useragent LIKE '%Windows NT 6.1%' THEN 'Windows 7'
   WHEN useragent LIKE '%Windows NT 6.0%' THEN 'Windows Vista'
   WHEN useragent LIKE '%Windows NT 5.2%' THEN 'Windows Server 2003; Windows XP x64 Edition'
   WHEN useragent LIKE '%Windows NT 5.1%' THEN 'Windows XP'
   WHEN useragent LIKE '%Windows NT 5.0%' THEN 'Windows 2000'
   WHEN useragent LIKE '%Windows NT 4.0%' THEN 'Microsoft Windows NT 4.0'
   WHEN useragent LIKE '%Windows 9' THEN 'Windows 95/98/Millenium'
   WHEN useragent LIKE '%Windows CE' THEN 'Windows CE'
   ELSE 'Other'
 FROM loginhistory) AS osses 

Through the use of CASE, WHEN, THEN, the user-agent string is searched for certain elements and translated to a friendly OS name. The outer query then groups these newly created OS names and counts the frequency of every OS, outputting something like this:

| OS            | freq |
| Windows 7     | 173  |
| Windows 8.1   | 152  |
| iPad          | 63   |
| Windows Vista | 13   |
| OS X          | 10   |
| iPhone        | 8    |
| Android       | 7    |
7 rows in set (0.00 sec)

The same can be done to calculate the frequency of browsers in all user-agent strings:

SELECT browser, COUNT(browser) AS freq FROM 
   WHEN useragent LIKE '%Chrome%' THEN 'Chrome'
   WHEN useragent LIKE '%Safari%' THEN 'Safari'
   WHEN useragent LIKE '%Firefox%' THEN 'Firefox'
   WHEN useragent LIKE '%MSIE 7%' THEN 'IE7'
   WHEN useragent LIKE '%MSIE 8%' THEN 'IE8'
   WHEN useragent LIKE '%MSIE 9%' THEN 'IE9'
   WHEN useragent LIKE '%MSIE 10%' THEN 'IE10'
   WHEN useragent LIKE '%rv:11%' THEN 'IE11'
   ELSE 'Other'
  END browser
  FROM loginhistory) AS browsers 
GROUP BY browser 

Which would output something like this:

| browser | freq |
| IE7     | 128  |
| IE11    | 119  |
| Chrome  | 83   |
| Safari  | 38   |
| Firefox | 7    |
| IE10    | 4    |
6 rows in set (0.00 sec)

This data could then be dumped straight into a library like Chart.js which will automatically make a pie chart from the frequency data. Or you could calculate percentages yourself relative to the sum of all frequencies.

If you also have a date or timestamp column next to every user-agent string you could add a WHERE clause to, for example, only show the statistics of OSes and browsers used in the last six months.

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