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I started looking into Index(es) in depth for the first time and started analyzing our db beginning from the users table for the first time. I searched SO to find a similar question but was not able to frame my search well, I guess.

I was going through a particular concept and this first observation left me wondering - The difference in these Explain(s) [Difference : First query is using 'a%' while the second query is using 'ab%']

[Total number of rows in users table = 9193]:

1) explain select * from users where email_address like 'a%';

enter image description here

(Actually matching columns = 1240)

2) explain select * from users where email_address like 'ab%';

enter image description here

(Actually matching columns = 109)

The index looks like this : enter image description here

My question: Why is the index totally ignored in the first query? Does mySql think that it is a better idea not to use the index in the case 1? If yes, why?

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possible duplicate of Mysql - "Select like" not using index –  Barmar Dec 25 '12 at 19:24
    
There were some interesting points mentioned in the question pointed. However i) The 30% rule is not valid as specified in one of the answers. ii) The default dev.mysql.com/doc/refman/5.0/en/… is clearly very high (I have not changed any defaults in the db). The points mentioned in this question are definitely in the right direction. I am still looking for the exact reasons. Perhaps I should google more. –  TJ- Dec 25 '12 at 20:18
1  
I wouldn't be surprised if the 30% rule is actually a sliding scale depending on the size of the table. A table with only 9K rows, is not very large, there may not be much savings from using the index. –  Barmar Dec 25 '12 at 20:22

2 Answers 2

up vote 0 down vote accepted

If the probability, based statistics mysql collects on distribution of the values, is above a certain ratio of the total rows (typically 1/11 of the total), mysql deems it more efficient to simply scan the whole table reading the disks pages in sequentially, rather than use the index jumping around the disk pages in random order.

You could try your luck with this query, which may use the index:

where email_address between 'a' and 'az'

Although doing the full scan may actually be faster.

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Makes sense. And it didn't pick the index. –  TJ- Dec 26 '12 at 6:36

This is not a direct answer to your question but I still want to point it out (in case you already don't know):

Try:

explain select email_address from users where email_address like 'a%';
explain select email_address from users where email_address like 'ab%';

MySQL would now use indexes in both the queries above since the columns of interest are directly available from the index.

Probably in the case where you do a "select *", index access is more costly since the optmizer has to go through the index records, find the row ids and then go back to the table to retrieve other column values.

But in the query above where you only do a "select email_address", the optmizer knows all the information desired is available right from the index and hence it would use the index irrespective of the 30% rule.

Experts, please correct me if I am wrong.

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Well, it does not seem to be picking from the index and is preferring to scan the table due to some 'other' optimizations (As shown in the Explain). –  TJ- Dec 25 '12 at 20:47
    
Even if you are selecting only email_address in the SELECT clause? Try running ANALYZE TABLE users; and see if anything changes in the explain plan. –  Vaibhav Desai Dec 25 '12 at 20:56
    
Yes (see the explain output above) and yes I did that :) What @Barmar said pointed out, leads in the right direction. –  TJ- Dec 25 '12 at 21:03

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