Suppose I need to query:

select * from table where f1='f1' and f2='f2' and f3='f3'

And I have indexes for f1_f2 and f2_f3, then will my query take advantage of these two indexes? Or I need to create a new index f1_f2_f3?


  • You can try using EXPLAIN to examine your query and the index usage.
    – prasad_
    Commented Apr 4, 2023 at 2:48
  • 1
    If you create an index by f1_f2_f3 then: #1 - you'll optimize your query completely; #2 - you may remove the index by f1_f2 because it is obviously excess (the query which needs in it may use newly created index instead). The only exclusion is the case when f3 is long string/binary column.
    – Akina
    Commented Apr 4, 2023 at 4:31
  • Since all tests are via =, the new index can have the columns in any order. The performance will be virtually the same, regardless of which column you have first in the INDEX.
    – Rick James
    Commented Apr 4, 2023 at 20:25

1 Answer 1


If you want an index to optimize the search for all three columns in the best way, you'd be better off creating a three-column index on f1_f2_f3.

MySQL does have an index merge algorithm, but it doesn't kick in as often as you'd think. Usually the optimizer chooses just one index per table reference. Besides, an index-merge of two index lookups would be less efficient than a single search using one index.

By analogy, suppose you are searching a book using the index at the back of the book. You could look up pages that match one word like "Earth" and that would give you one list of pages to check. Then you look up another index entry for pages that match another word "history" and that would give you a different list of pages. Then you'd have to compare the two lists to find the pages that appear in both lists.

If you had one index entry for "Earth history" that gives only pages that match both words, that would be more optimal.

  • Suppose we have index for both f1 and f2 and would like to query where f1='f1' and f2='f2'. Then the latency approximately proportional to examined rows for f1 + examined rows for f2 + comparing/merging these two lists? Commented May 4, 2023 at 4:49
  • But suppose examined rows for f1 is 100 while for f2 is 1000000. Then the query will be greatly slowed down due to f2. I think more reasonable is based on the already examined 100 rows for f1, we start to further filter according to f2 index (sort of involves merging) Commented May 4, 2023 at 5:02
  • 1
    The latter scenario is what a multi-column index would do. Commented May 4, 2023 at 6:30

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