How to Convert Comma-Separated Values into Rows in Oracle?
Convert comma separated values to rows in Oracle
Comma is a common delimiter to represent multiple values as a single string, but when working with data in Oracle, you may need to separate these values into different rows. This can be achieved in a variety of ways.
Recursive query using regular expressions
One way is to use a recursive query with a regular expression to extract each value:
select distinct id, trim(regexp_substr(value, '[^,]+', 1, level) ) value, level from tbl1 connect by regexp_substr(value, '[^,]+', 1, level) is not null order by id, level;
This query uses the REGEXP_SUBSTR function to extract each non-comma substring and then concatenates the results using a recursive query.
Recursive query without regular expressions
Another recursive approach that avoids using regular expressions:
WITH t ( id, value, start_pos, end_pos ) AS ( SELECT id, value, 1, INSTR( value, ',' ) FROM tbl1 UNION ALL SELECT id, value, end_pos + 1, INSTR( value, ',', end_pos + 1 ) FROM t WHERE end_pos > 0 ) SELECT id, SUBSTR( value, start_pos, DECODE( end_pos, 0, LENGTH( value ) + 1, end_pos ) - start_pos ) AS value FROM t ORDER BY id, start_pos;
This query uses the INSTR function to find the position of the comma, and then uses the SUBSTR function to extract the individual values.
CTE using recursive union
The third method uses a common table expression (CTE) with a recursive union:
with t (id,res,val,lev) as ( select id, trim(regexp_substr(value,'[^,]+', 1, 1 )) res, value as val, 1 as lev from tbl1 where regexp_substr(value, '[^,]+', 1, 1) is not null union all select id, trim(regexp_substr(val,'[^,]+', 1, lev+1) ) res, val, lev+1 as lev from t where regexp_substr(val, '[^,]+', 1, lev+1) is not null ) select id, res,lev from t order by id, lev;
This query uses the UNION ALL operator to create a recursive CTE that extracts every non-comma substring.
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