How to Perform UPSERT Operations in Oracle Databases?
Perform UPSERT operation in Oracle database
UPSERT operation - a combination of update and insert - modifies the data in the table. Oracle lacks a dedicated UPSERT statement, so the question arises of how to accomplish this efficiently.
Solution: MERGE statement
Oracle provides the MERGE statement, which merges data from one table to another. It allows three operations: insert, update and delete. By using a DUAL table (containing a single row and a single column), we can simulate a UPSERT operation.
Example:
create or replace procedure ups(xa number) as begin merge into mergetest m using dual on (a = xa) when not matched then insert (a,b) values (xa,1) when matched then update set b = b+1; end ups; /
Usage:
-- 创建必要的表 drop table mergetest; create table mergetest(a number, b number); -- 调用过程以执行UPSERT call ups(10); call ups(10); call ups(20); -- 验证结果 select * from mergetest;
Output:
<code>A B ---------------------- ---------------------- 10 2 20 1</code>
This MERGE statement ensures that if a row matching the specified key (xa) exists, the row is updated; otherwise, a new row is inserted.
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