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I want to be able to update a table of the same schema using a "replace into" statement. In the end, I need to be able to update a large table with values that may have changed.

Here is the query I am using to start off:

REPLACE INTO table_name
(visual, inspection_status, inspector_name, gelpak_name, gelpak_location),
VALUES (3, 'Partially Inspected', 'Me', 'GP1234', 'A01');

What I don't understand is how does the database engine know what is a duplicate row and what isn't? This data is extremely important and I can't risk the data being corrupted. Is it as simple as "if all columns listed have the same value, it is a duplicate row"?

I am just trying to figure out an efficient way of doing this so I can update > 45,000 rows in under a minute.

2
  • 1
    did you find out a way to update without errors and more records under a minute? Did this query work out properly ? Feb 25 '15 at 11:25
  • 1
    I know this question is long in the tooth but something to keep in mind as others have pointed out below is that REPLACE does an INSERT but if the record already exists it does a DELETE then INSERT. One ramification that people don't consider is that if the target table is the PK table in any PK/FK relationships then the DELETE will fail for records that have others depending on them (default behavior) OR if the relationship has CASCADE DELETE then the records in the child table will be deleted and won't come back afterward. Jan 1 '20 at 14:31
95

As the documentation says:

REPLACE works exactly like INSERT, except that if an old row in the table has the same value as a new row for a PRIMARY KEY or a UNIQUE index, the old row is deleted before the new row is inserted.

1
  • 10
    Note that "delete then insert" can be very slow - much, much slower than SELECT followed by UPDATE or INSERT (whichever is appropriate). DELETE invalidates indexes. INSERT ... ON DUPLICATE UPDATE... is very slightly faster than REPLACE, but still much slower than SELECT+UPDATE. For me, anyway - measure your performance. Mar 14 '18 at 5:01
22

REPLACE does work much like an INSERT that just overwrites records that have the same PRIMARY KEY or UNIQUE index, however, beware.

Shlomi Noach writes about the problem with using REPLACE INTO here:

But weak hearted people as myself should be aware of the following: it is a heavyweight solution. It may be just what you were looking for in terms of ease of use, but the fact is that on duplicate keys, a DELETE and INSERT are performed, and this calls for a closer look.

Whenever a row is deleted, all indexes need to be updated, and most importantly the PRIMARY KEY. When a new row is inserted, the same happens. Especially on InnoDB tables (because of their clustered nature), this means much overhead. The restructuring of an index is an expensive operation. Index nodes may need to be merged upon DELETE. Nodes may need to be split due to INSERT. After many REPLACE INTO executions, it is most probable that your index is more fragmented than it would have been, had you used SELECT/UPDATE or INSERT INTO ... ON DUPLICATE KEY

Also, there's the notion of "well, if the row isn't there, we create it. If it's there, it simply get's updated". This is false. The row doesn't just get updated, it is completely removed. The problem is, if there's a PRIMARY KEY on that table, and the REPLACE INTO does not specify a value for the PRIMARY KEY (for example, it's an AUTO_INCREMENT column), the new row gets a different value, and this may not be what you were looking for in terms of behavior.

Many uses of REPLACE INTO have no intention of changing PRIMARY KEY (or other UNIQUE KEY) values. In that case, it's better left alone. On a production system I've seen, changing REPLACE INTO to INSERT INTO ... ON DPLICATE KEY resulted in a ten fold more throughput (measured in queries per second) and a drastic decrease in IO operations and in load average.

In summary, REPLACE INTO may be right for your implementation, but you might find it more appropriate (and less risky) to use INSERT ... ON DUPLICATE KEY UPDATE instead.

0

or something like that:

insert ignore tbl1 (select * from tbl2);

UPDATE
        `tbl1` AS `dest`,
        (SELECT * FROM tbl2) AS `src`
    SET
       dest.field=src.field,
       dest.field=if (length(src.field)>0,src.field,dest.field) /* or anything like that*/
    WHERE
        `dest`.id = `src`.id; 

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