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I have the following query which shows the distinct ip addresses that made requests every day.

SELECT COUNT(DISTINCT ip_address) as ip_address, DATE(exec_datetime) as day
FROM requests
GROUP BY MONTH(exec_datetime), DAY(exec_datetime);

The output of EXPLAIN is the following

id  select_type table   type    possible_keys   key key_len ref rows    Extra
1   SIMPLE  requests    ALL NULL    NULL    NULL    NULL    472043  Using filesort

I don't have a clear understanding of covering indexes, because when I created one, the query took just as long to complete

ALTER TABLE requests ADD INDEX unique_ip_per_time(ip_address, exec_datetime);

Here's the output of the EXPLAIN

id  select_type table   type    possible_keys   key key_len ref rows    Extra
1   SIMPLE  requests    index   NULL    unique_ip_per_time  268 NULL    472043  Using index; Using filesort

How could I optimize this query either by creating an index or re-writing it?


The execution time is about ~15 seconds for both statements (with and without the covering index). The only other keys on this table are a UNIQUE surrogate and an INDEX on ip_address

show indexes from requests

Table   Non_unique  Key_name    Seq_in_index    Column_name Collation   Cardinality Sub_part    Packed  Null    Index_type  Comment Index_comment
requests    0   PRIMARY 1   request_id  A   386577  NULL    NULL        BTREE       
requests    1   ip_address  1   ip_address  A   193288  NULL    NULL    YES BTREE       
requests    1   unique_ip_per_time  1   ip_address  A   163 NULL    NULL    YES BTREE       
requests    1   unique_ip_per_time  2   exec_datetime   A   163 NULL    NULL    YES BTREE       


I followed the instructions of eisberg, however this query takes about 1.1 seconds...

    FROM requests B
    WHERE B.exec_date = A.request_day
  ) as num_ip_addr
FROM request_days A
ORDER BY A.request_day ASC;

Which is slightly slower than this query which takes about .9 seconds

SELECT COUNT(DISTINCT ip_address) as ip_address, exec_date
FROM requests
GROUP BY exec_date;

I don't think I need to create the additional table with the dates. Are there any optimizations I can apply to part of the statement with DISTINCT ip_address (It seems to be the bottleneck)?

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3 Answers 3

up vote 1 down vote accepted

I have created a little workaround for this kind of problem. But you will need to put some work in it.

First of all you create an additional column on request to avoid extra calculations during your select:

ALTER TABLE requests ADD COLUMN (request_day DATE);

ALTER TABLE requests ADD INDEX i1(request_day);

UPDATE requests SET request_day = DATE(exec_datetime);

Than you will need an extra table to memorize the days you can/want to select:

CREATE TABLE request_days (
  request_day DATE

ALTER TABLE request_days ADD UNIQUE INDEX i1(request_day);

INSERT IGNORE INTO request_days SELECT DATE(exec_datetime) FROM requests;

Finally you can:

    FROM requests B
    WHERE B.request_day = A.request_day
FROM request_days A
ORDER BY A.request_day DESC

Which gives:

ID  SELECT_TYPE         TABLE   TYPE    POSSIBLE_KEYS   KEY KEY_LEN REF                         ROWS    EXTRA
1   PRIMARY             A       index   (null)          i1  4       (null)                      1       Using index
2   DEPENDENT SUBQUERY  B       ref     i1              i1  4       db_2_95a42.A.request_day    1       Using where

I hope this will help you!

Example on SQL Fiddle:!2/95a42/2

share|improve this answer
Thanks for the innovative idea, I'll start digging into this now. btw anything wrong with creating in index on request_days in the CREATE TABLE statement? – user784637 Nov 23 '12 at 9:02
No I am just used to this way :-) – eisberg Nov 23 '12 at 9:08
Nothing wrong with that, by the way, is it worth it to create this index ALTER TABLE requests ADD INDEX i1(request_day);? It's going to have pretty low cardinality, I'm getting about 10k records a day on the requests table – user784637 Nov 23 '12 at 9:12
Without this index MySQL will have no key to join/sub-select on. So your performance will drop. If you want your data visible for each and every day you will need a key for each and every day :-) – eisberg Nov 23 '12 at 9:16
@eiseberg hey martin could you take a look at my edit? – user784637 Nov 24 '12 at 0:35

Since you are using the DATE function on exec_datetime, the engine will scan all the rows of the table. You should try partitioning the table on exec_datetime

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Partitioning will only help if the user is about to select a subset of his data that is reflected in a smaller subset. – eisberg Nov 23 '12 at 8:54
I don't think this would help since I would like to select all the data in every partition. – user784637 Nov 23 '12 at 8:59

Ideally, you would simply need to add compound functional index like this:

CREATE INDEX month_day_idx
   ON requests (MONTH(exec_datetime), DAY(exec_datetime));

Unfortunately, MySQL does not support functional indexes. Instead, you have 2 choices:

  1. Create extra columns for month and day and create compound index with those 2 new fields.

  2. Or alter your GROUP BY to not use functions if you can.

share|improve this answer
The bottleneck isn't the MONTH and DAY functions, it's the DISTINCT function. If I were to use functional indexes it would not be on MONTH(exec_datetime) and DAY(exec_datetime). – user784637 Nov 23 '12 at 9:02
I don't think so. By the way, having compound index (MONTH(exec_datetime), DAY(exec_datetime), ip_address) would be even better (if MySQL supported functional indexes), but you only have (ip_address, exec_datetime) - which is quite different and cannot be used by MySQL – mvp Nov 23 '12 at 9:08

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