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How to easily support time frame grouping in queries?

+3
−0

I had a curiosity about how much the experienced users wait for their questions to be answered on Stack Overflow and had written a query for it:

SELECT YEAR(q.CreationDate) * 100 + MONTH(q.CreationDate) AS YM, COUNT(1) Cnt 
INTO #a_cte
FROM Posts AS q
   INNER JOIN Users qu ON qu.Id = q.OwnerUserId and qu.Reputation >= 1000
   WHERE q.CreationDate BETWEEN '20190101' AND '20210301'
   AND EXISTS (
     SELECT 1 
     FROM Posts a 
     where a.PostTypeId = 2 and a.ParentId = q.Id and a.Score > 1
     and datediff(day, q.CreationDate, a.CreationDate) <= 7
  )
  AND q.PostTypeId = 1
  GROUP BY YEAR(q.CreationDate) * 100 + MONTH(q.CreationDate);
 
SELECT YEAR(q.CreationDate) * 100 + MONTH(q.CreationDate) AS YM, COUNT(1) Cnt
INTO #q_cte
FROM Posts AS q
 INNER JOIN Users qu ON qu.Id = q.OwnerUserId and qu.Reputation >= 1000
WHERE q.CreationDate BETWEEN '20190101' AND '20210301'
 AND q.PostTypeId = 1
GROUP BY YEAR(q.CreationDate) * 100 + MONTH(q.CreationDate);
 
SELECT CAST(a.YM / 100 AS VARCHAR) + '-' + CAST(a.YM % 100 AS VARCHAR) + '-01', a.Cnt * 100.0 / q.Cnt AS AnsweredRatio
FROM #a_cte a
  JOIN #q_cte q ON q.YM = a.YM
ORDER BY a.YM

The performance is rather poor and I think it is also related to the fact that I have to compute the year-month and also group by it. This should have been much easier if the data model supplied some "dimension" columns such as year, month, year-month.

I know that enterprise solutions involve reporting databases and cubes, but I am wondering about simpler solutions (less maintenance for medium-sized data volumes). Is adding of computed columns a good way to support the queries I want. Examples:

  • CreationDateYear = YEAR(CreationDate)
  • YM = YEAR(q.CreationDate) * 100 + MONTH(q.CreationDate) AS YM

Or maybe a better approach is to have a job that computes similar columns in separate tables (as opposed to the real-time nature of the computed columns).

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General comments (2 comments)

1 answer

+2
−0

In SQL Server 2022+, there's a dedicated binning function called DATE_BUCKET.

Each of these statements increments DATE_BUCKET with a bucket width of 1 from the origin time:

DECLARE @date DATETIME2 = '2020-04-30 21:21:21';
SELECT 'Week', DATE_BUCKET(WEEK, 1, @date)
UNION ALL
SELECT 'Day', DATE_BUCKET(DAY, 1, @date)
UNION ALL
SELECT 'Hour', DATE_BUCKET(HOUR, 1, @date)
UNION ALL
SELECT 'Minutes', DATE_BUCKET(MINUTE, 1, @date)
UNION ALL
SELECT 'Seconds', DATE_BUCKET(SECOND, 1, @date);

Here's the result set.

Week 2020-04-27 00:00:00.0000000
Day 2020-04-30 00:00:00.0000000
Hour 2020-04-30 21:00:00.0000000
Minutes 2020-04-30 21:21:00.0000000
Seconds 2020-04-30 21:21:21.0000000

In older versions of SQL Server, I did date binning with DATEADD and DATEDIFF, rather than offsetting integers or casting to a string.

Taking your second faux-CTE temporary table, it would look like this:

SELECT  DATEADD(MONTH, FLOOR(DATEDIFF(MONTH, '2000', q.CreationDate)), '2000') AS bin, 
        COUNT(1) Cnt
INTO    #q_cte
FROM    Posts AS q
        INNER JOIN  Users AS qu
                    ON qu.Id = q.OwnerUserId
                    AND qu.Reputation >= 1000
WHERE   q.CreationDate BETWEEN '20190101' AND '20210301'
        AND q.PostTypeId = 1
GROUP BY DATEDIFF(MONTH, '2000', q.CreationDate)

I'm not sure if it's faster, but I think you could write your query with a single pass through the Question posts. Record whether each one is answered or not, and group those.

SELECT  q.ID,  -- Not actually necessary. Just a helpful check.
        DATEADD(MONTH, ...) AS bin,
        COALESCE((SELECT TOP(1) 1 FROM ...), 0) AS is_answered
INTO    #q_cte
FROM    Posts AS q
WHERE   ...;

SELECT  bin, 100. * SUM(is_answered) / COUNT(*) AS ratio
FROM    #q_cte
GROUP BY bin
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