I have a table with a varchar column, and I would like to find all the records that have duplicate values in this column. What is the best query I can use to find the duplicates?
SELECT with a
GROUP BY clause. Let's say name is the column you want to find duplicates in:
SELECT name, COUNT(*) c FROM table GROUP BY name HAVING c > 1;
This will return a result with the name value in the first column, and a count of how many times that value appears in the second.
SELECT * FROM mytable mto WHERE EXISTS ( SELECT 1 FROM mytable mti WHERE mti.varchar_column = mto.varchar_column LIMIT 1, 1 )
This query returns complete records, not just distinct
This query doesn't use
COUNT(*). If there are lots of duplicates,
COUNT(*) is expensive, and you don't need the whole
COUNT(*), you just need to know if there are two rows with same value.
Having an index on
varchar_column will, of course, speed up this query greatly.
My final query incorporated a few of the answers here that helped - combining group by, count & GROUP_CONCAT.
SELECT GROUP_CONCAT(id), `magento_simple`, COUNT(*) c FROM product_variant GROUP BY `magento_simple` HAVING c > 1;
This provides the id of both examples (comma separated), the barcode I needed, and how many duplicates.
Change table and columns accordingly.
I saw the above result and query will work fine if you need to check single column value which are duplicate. For example email.
But if you need to check with more columns and would like to check the combination of the result so this query will work fine:
SELECT COUNT(CONCAT(name,email)) AS tot, name, email FROM users GROUP BY CONCAT(name,email) HAVING tot>1 (This query will SHOW the USER list which ARE greater THAN 1 AND also COUNT)
The following will find all product_id that are used more than once. You only get a single record for each product_id.
SELECT product_id FROM oc_product_reward GROUP BY product_id HAVING count( product_id ) >1
CREATE TABLE tbl_master (`id` int, `email` varchar(15)); INSERT INTO tbl_master (`id`, `email`) VALUES (1, 'email@example.com'), (2, 'firstname.lastname@example.org'), (3, 'email@example.com'), (4, 'firstname.lastname@example.org'), (5, 'email@example.com'); QUERY : SELECT id, email FROM tbl_master WHERE email IN (SELECT email FROM tbl_master GROUP BY email HAVING COUNT(id) > 1)
For removing duplicate rows with multiple fields , first cancate them to the new unique key which is specified for the only distinct rows, then use "group by" command to removing duplicate rows with the same new unique key:
Create TEMPORARY table tmp select concat(f1,f2) as cfs,t1.* from mytable as t1; Create index x_tmp_cfs on tmp(cfs); Create table unduptable select f1,f2,... from tmp group by cfs;
One very late contribution... in case it helps anyone waaaaaay down the line... I had a task to find matching pairs of transactions (actually both sides of account-to-account transfers) in a banking app, to identify which ones were the 'from' and 'to' for each inter-account-transfer transaction, so we ended up with this:
SELECT LEAST(primaryid, secondaryid) AS transactionid1, GREATEST(primaryid, secondaryid) AS transactionid2 FROM ( SELECT table1.transactionid AS primaryid, table2.transactionid AS secondaryid FROM financial_transactions table1 INNER JOIN financial_transactions table2 ON table1.accountid = table2.accountid AND table1.transactionid <> table2.transactionid AND table1.transactiondate = table2.transactiondate AND table1.sourceref = table2.destinationref AND table1.amount = (0 - table2.amount) ) AS DuplicateResultsTable GROUP BY transactionid1 ORDER BY transactionid1;
The result is that the
DuplicateResultsTable provides rows containing matching (i.e. duplicate) transactions, but it also provides the same transaction id's in reverse the second time it matches the same pair, so the outer
SELECT is there to group by the first transaction ID, which is done by using
GREATEST to make sure the two transactionid's are always in the same order in the results, which makes it safe to
GROUP by the first one, thus eliminating all the duplicate matches. Ran through nearly a million records and identified 12,000+ matches in just under 2 seconds. Of course the transactionid is the primary index, which really helped.
I prefer to use windowed functions(MySQL 8.0+) to find duplicates because I could see entire row:
WITH cte AS ( SELECT * ,COUNT(*) OVER(PARTITION BY col_name) AS num_of_duplicates_group ,ROW_NUMBER() OVER(PARTITION BY col_name ORDER BY col_name2) AS pos_in_group FROM table ) SELECT * FROM cte WHERE num_of_duplicates_group > 1;