I am wondering how to convert comma-delimited values into rows in Redshift. I am afraid that my own solution isn't optimal. Please advise. I have table with one of the columns with coma-separated values. For example:

I have:

1      | Shone   | start,stop,cancell...

I would like to see

1      | Shone   | start        
1      | Shone   | stop         
1      | Shone   | cancell      

A slight improvement over the existing answer is to use a second "numbers" table that enumerates all of the possible list lengths and then use a cross join to make the query more compact.

Redshift does not have a straightforward method for creating a numbers table that I am aware of, but we can use a bit of a hack from https://www.periscope.io/blog/generate-series-in-redshift-and-mysql.html to create one using row numbers.

Specifically, if we assume the number of rows in cmd_logs is larger than the maximum number of commas in the user_action column, we can create a numbers table by counting rows. To start, let's assume there are at most 99 commas in the user_action column:

  (row_number() over (order by true))::int as n
into numbers
from cmd_logs
limit 100;

If we want to get fancy, we can compute the number of commas from the cmd_logs table to create a more precise set of rows in numbers:

into numbers
      row_number() over (order by true) as n
   from cmd_logs)
cross join
      max(regexp_count(user_action, '[,]')) as max_num 
   from cmd_logs)
  n <= max_num + 1;

Once there is a numbers table, we can do:

  split_part(user_action,',',n) as parsed_action 
cross join
  split_part(user_action,',',n) is not null
  and split_part(user_action,',',n) != '';

You can get the expected result with the following query. I'm using "UNION ALL" to convert a column to row.

select user_id, user_name, split_part(user_action,',',1) as parsed_action from cmd_logs
union all
select user_id, user_name, split_part(user_action,',',2) as parsed_action from cmd_logs
union all
select user_id, user_name, split_part(user_action,',',3) as parsed_action from cmd_logs
  • why was that downvoted? this is the cleanest working solution. You just have to get rid of empty values then (if there is no value on requested position it will return an empty string) – AlexYes Jun 16 '17 at 12:50
  • 1
    This only specifies going for 3 commas separated values. – Muhammad Haseeb May 21 at 9:26

Another idea is to transform your CSV string into JSON first, followed by JSON extract, along the following lines:

... '["' || replace( user_action, '.', '", "' ) || '"]' AS replaced

... JSON_EXTRACT_ARRAY_ELEMENT_TEXT(replaced, numbers.i) AS parsed_action

Where "numbers" is the table from the first answer. The advantage of this approach is the ability to use built-in JSON functionality.


Here's my equally-terrible answer.

I have a users table, and then an events table with a column that is just a comma-delimited string of users at said event. eg

event_id | user_ids
1        | 5,18,25,99,105

In this case, I used the LIKE and wildcard functions to build a new table that represents each event-user edge.

SELECT e.event_id, u.id as user_id
FROM events e
LEFT JOIN users u ON e.user_ids like '%' || u.id || '%'

It's not pretty, but I throw it in a WITH clause so that I don't have to run it more than once per query. I'll likely just build an ETL to create that table every night anyway.

Also, this only works if you have a second table that does have one row per unique possibility. If not, you could do LISTAGG to get a single cell with all your values, export that to a CSV and reupload that as a table to help.

Like I said: a terrible, no-good solution.


Late to the party but I got something working (albeit very slow though)

with nums as (select n::int n
      row_number() over (order by true) as n
   from table_with_enough_rows_to_cover_range)
cross join
      max(json_array_length(json_column)) as max_num 
   from table_with_json_column )
  n <= max_num + 1)
select *, json_extract_array_element_text(json_column,nums.n-1) parsed_json
from  nums, table_with_json_column
where json_extract_array_element_text(json_column,nums.n-1) != ''
and nums.n <= json_array_length(json_column) 

Thanks to answer by Bob Baxley for inspiration


Just improvement for the answer above https://stackoverflow.com/a/31998832/1265306

Is generating numbers table using the following SQL https://discourse.looker.com/t/generating-a-numbers-table-in-mysql-and-redshift/482

  + p1.n*2 
  + p2.n * POWER(2,2) 
  + p3.n * POWER(2,3)
  + p4.n * POWER(2,4)
  + p5.n * POWER(2,5)
  + p6.n * POWER(2,6)
  + p7.n * POWER(2,7) 
  as number  
INTO numbers
  (SELECT 0 as n UNION SELECT 1) p0,  
  (SELECT 0 as n UNION SELECT 1) p1,  
  (SELECT 0 as n UNION SELECT 1) p2, 
  (SELECT 0 as n UNION SELECT 1) p3,
  (SELECT 0 as n UNION SELECT 1) p4,
  (SELECT 0 as n UNION SELECT 1) p5,
  (SELECT 0 as n UNION SELECT 1) p6,
  (SELECT 0 as n UNION SELECT 1) p7

"ORDER BY" is there only in case you want paste it without the INTO clause and see the results


You can try copy command to copy your file into redshift tables

copy table_name from 's3://mybucket/myfolder/my.csv' CREDENTIALS 'aws_access_key_id=my_aws_acc_key;aws_secret_access_key=my_aws_sec_key' delimiter ','

You can use delimiter ',' option.

For more details of copy command options you can visit this page


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