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:

```
select
(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`

:

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

Once there is a `numbers`

table, we can do:

```
select
user_id,
user_name,
split_part(user_action,',',n) as parsed_action
from
cmd_logs
cross join
numbers
where
split_part(user_action,',',n) is not null
and split_part(user_action,',',n) != '';
```