Here is my query:

SELECT count(1)
FROM qanda question
JOIN qanda answer ON question.Id = answer.related
WHERE answer.related IS NOT NULL
AND answer.author_id = 29
AND question.amount IS NULL
AND answer.id not in (
  select post_id
  from votes
  where table_code = 15
  group by post_id
  having sum(value) < 0)

And this is the EXPLAIN result of it:

enter image description here

As you see, all tables are using an index. Ok, now I need to add one more condition on the WHERE clause of outer query. This is that condition:

... AND from_unixtime(answer.date_time) BETWEEN (now() - INTERVAL 1 year) AND (now() - INTERVAL 1 hour)

Well, after adding that new condition, this is the EXPLAIN result of it:

enter image description here

See? answer table doesn't use any index anymore. Why? And what index do I need to make query above faster and more efficient?

  • 2
    The premise of your conclusion that if MySQL doesn't use an index that a query would be slower. That's wrong. Sometimes it doesn't pay off to use an index - more I/O will be done than doing a table scan. As you can see, the amount of rows MySQL inspects is low. If you add an additional condition MySQL has to inspect more rows. It decides that using an index won't help at all so it doesn't use it. In the end, your query is fast. Add more records and test this again (something like 100 000 records or so). It'll use indexes as your data set grows (given the fact their selectivity is high). – N.B. Sep 11 '16 at 1:05
  • @Drew Hah .. well I really like to write an answer for myself .. but sadly I don't have any clue :-( .. I even don't know why then number of rows which are scanned will be more when I add one more condition on the WHERE clause. – stack Sep 11 '16 at 1:36
  • No your question is fine – Drew Sep 11 '16 at 1:37
  • The answer to your question, or most of it, is at the bottom of this right above User Comments. – Drew Sep 11 '16 at 1:39
  • 2
    Imagine having 2 houses in a town, and a phone book (the index) on a table in front of them. And you want to know the addresses of where Smith and Jones live. And one of the homes has Smith on a plaque above the door. Going to the book then the doors is slower than using your eyes or just doing a scan. – Drew Sep 11 '16 at 1:41

"Using index" implies that the index is "covering". That is, all the columns (from that table) that are needed for the query are in that composite index. It appears that answer has INDEX(author_id, related, id). Hence, the best approach is to use the index BTree and ignore the Data BTree.

When you added a condition on date_time, and that column was not part of the same index, the query might be run one of these ways:

  • Look in the index's BTree, then reach over to the data to check the date_time. Repeat.
  • Ignore the index and simply scan the data.

The cutoff between the two choices varies with the phase of the moon, but typically is somewhere around 20%. The EXPLAIN implies that it chose the latter approach. (See Drew's excellent analogy!)

Change the index to INDEX(author_id, date_time, related, id) (in that order) and change the new where clause to


This index will still be "covering", so it should continue to be "Using index". The order of columns is: (1) check for equality, (2) check a range, then whatever other columns are needed for 'covering'.

This index will be not quite as good for the original query, but it will still be 'covering'.

The change to the WHERE is to avoid "hiding" the column date_time inside a function, which prevents the use of an index.

  • Why do you think using both >= and < is better than BETWEEN? – Shafizadeh Sep 11 '16 at 21:16
  • BETWEEN id identical to >= and <= in performance and effect. When doing date ranges, I prefer >= and < so that I don't inadvertently pick up midnight at both ends. – Rick James Sep 11 '16 at 21:52

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