Unless this is a one-off data conversion, chances are you will benefit from using a calendar table.
Having such a table makes it really easy to filter or aggregate data for non-standard periods in addition to regular ISO weeks. Weeks usually behave a bit differently across companies and the departments within them. As soon as you leave "ISO-land" the built-in date functions can't help you.
create table calender(
day date not null -- Truncated date
,iso_year_week number(6) not null -- ISO Year week (IYYYIW)
,retail_week number(6) not null -- Monday to Sunday (YYYYWW)
,purchase_week number(6) not null -- Sunday to Saturday (YYYYWW)
You can either create additional tables for "purchase_weeks" or "retail_weeks", or simply aggregate on the fly:
from your_table_with_weeks a
join (select iso_year_week
,min(day) as first_day
,max(day) as last_day
) b on(a.iso_year_week = b.iso_year_week)
If you process a large number of records, aggregating on the fly won't make a noticable difference, but if you are performing single-row you would benefit from creating tables for the weeks as well.
Using calendar tables provides a subtle performance benefit in that the optimizer can provide better estimates on static columns than on nested
add_months(to_date(to_char())) function calls.