In a large user database with the following format and sample data, we are trying to identify duplicated people:
id first_name last_name email --------------------------------------------------- 1 chris baker 2 chris baker firstname.lastname@example.org 3 chris baker email@example.com 4 chris baker firstname.lastname@example.org 5 carl castle email@example.com 6 mike rotch firstname.lastname@example.org
I am using the following query:
SELECT GROUP_CONCAT(id) AS "ids", CONCAT(UPPER(first_name), UPPER(last_name)) AS "name", COUNT(*) AS "duplicate_count" FROM users GROUP BY name HAVING duplicate_count > 1
This works great; I get a list of duplicates with the id numbers of the involved rows.
We would re-assign any associated data tied to a duplicate to the actual person (
set user_id = 2 where user_id = 3), then we delete the duplicating user row.
The trouble comes after we make this report the first time, as we clean up the list after manually verifying that they are indeed duplicates -- some ARE NOT duplicates. There are 2 Chris Bakers that are legitimate users.
We don't want to keep seeing Chris Baker in subsequent duplicate reports until the end of time, so I am looking for a way to flag that user id 1 and user id 4 are NOT duplicates of each other for future reports, but they could be duplicated by new users added later.
What I tried
I added a
is_not_duplicate field to the user table, but then if a new duplicate "Chris Baker" gets added to the database, it will cause this situation to not show on the duplicate report; the
is_not_duplicate improperly excludes one of the accounts. My
HAVING statement would not meet the
> 1 threshold until there are -two- duplicates of Chris Baker, plus the "real" one marked
Question Summed Up
How can I build exceptions into the above query without looping results or multiple queries?
Sub-queries are fine, but the size of the dataset makes every query count and I'd like the solution to be as performant as possible.