2

I'm looking to get the number of tickets that are unassigned at the end of each day over a specified period of days using historical data. I'm using Amazon Redshift.

The query currently has this structure:

ticket_id created_at assigned_at
1 2020-11-18 2020-11-20
2 2020-11-18 2020-11-18
3 2020-11-17 2020-11-20

My current strategy is to use the created_at date, create a new row with the created_date + 1 day until it is the same as the assigned_at date. From there I can easily manipulate the output with Tableau.

The output that I'm looking for is:

ticket_id created_at assigned_at
1 2020-11-18 2020-11-20
1 2020-11-19 2020-11-20
1 2020-11-20 2020-11-20
2 2020-11-18 2020-11-18
3 2020-11-17 2020-11-20
3 2020-11-18 2020-11-20
3 2020-11-19 2020-11-20
3 2020-11-20 2020-11-20

In the end I want to be able to get to this:

date tickets in queue
2020-11-17 1
2020-11-18 2
2020-11-19 2
2020-11-20 0

I'm also open to other suggestions regarding how to solve this problem.

Thanks in advance!

1 Answer 1

3

You can create an additional table with calendar

create table calendar (
    calendar_date date
);
calendar_date
2020-11-17
2020-11-18
2020-11-19
2020-11-20

then join against it

select calendar_date, count(*) 
from table_name as t 
    left join calendar as c on t.created_at <= c.calendar_date 
                            and c.calendar_date < t.assigned_at 
where c.calendar_date <> t.assigned_at 
group by 1
order by 1;

it gives the following output

calendar_date count
2020-11-17 1
2020-11-18 2
2020-11-19 2

2020-11-20 is absent in this result as there's no ticket

You can get it with a bit complex query

with calendar_gr as (
    select calendar_date, 0 as cnt
    from calendar
),
r1 as (
    select calendar_date, count(*)  
    from table_name as t 
        left join calendar as c on t.created_at <= c.calendar_date 
                                and c.calendar_date < t.assigned_at                         
    where calendar_date <> assigned_at 
    group by 1
    order by 1
)
select calendar_gr.calendar_date, sum(coalesce(count, 0) + coalesce(cnt, 0)) 
from r1
    right join calendar_gr on r1.calendar_date = calendar_gr.calendar_date
group by 1
;

calendar_date count
2020-11-17 1
2020-11-18 2
2020-11-19 2
2020-11-20 0
2
  • This method works and performs well for small to medium data sets. I would recommend a solution along these lines for most cases. However, if the dataset is very large and date ranges between created_at and assigned_at are wide there can be a large amount of intermediate data records created by this process. If this intermediate data size expands beyond memory then the query spills and slows down massively. There are solutions for these cases but they take some time to layout. I can write up such a solution but only if the use case in question runs into spill issues. Jul 8, 2021 at 16:17
  • Hi Bill, when not setting restrictions I am running into an EOF error so I think you're right. Restricting the dates, as we'll be doing, allows me to avoid this though.
    – Jérémie
    Jul 8, 2021 at 17:02

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