How to Convert Comma-Separated Values to Rows in Oracle?
Transforming Comma-Separated Data in Oracle Databases
Many data manipulation tasks require converting comma-separated values (CSV) within a single column into individual rows for easier analysis. Oracle offers several approaches to accomplish this.
Method 1: Recursive SQL with Regular Expressions
This technique uses recursive SQL queries combined with regular expressions for efficient CSV splitting:
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 iteratively extracts each comma-delimited value, generating a new row for each, and includes a level indicator.
Method 2: Recursive SQL (CTE) without Regular Expressions
A more standard SQL approach utilizes a Common Table Expression (CTE):
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 recursive CTE achieves the same result as the previous method but avoids reliance on regular expressions.
Method 3: Non-Recursive Approach (INSTR and SUBSTR)
A non-recursive alternative uses INSTR()
and SUBSTR()
functions to locate and extract values:
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 method iteratively finds comma positions and extracts substrings, offering a different approach to the problem.
The optimal method depends on your specific data and performance needs. Consider testing each approach to determine the most efficient solution for your Oracle environment.
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