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Is there any way to group these temperature measurement in a range with consecutive group? I want to get group, time difference and count in between 0-7 and 8-12 and more than 12

      Date         Heat 
01/01/2012 12:00    8
01/01/2012 12:03    9
01/01/2012 12:06    5
01/01/2012 12:09    3
01/01/2012 12:12    6
01/01/2012 12:15    7
01/01/2012 12:18    1
01/01/2012 12:21    12
01/01/2012 12:24    28
01/01/2012 12:27    25
01/01/2012 12:30    20
01/01/2012 12:33    20
01/01/2012 12:36    20
01/01/2012 12:39    12
01/01/2012 12:42    6
01/01/2012 12:45    3
01/01/2012 12:48    5
01/01/2012 12:51    7
01/01/2012 12:54    11
01/01/2012 12:57    12
01/01/2012 13:00    6

The result should be:

0-7   (01/01/2012 12:06-01/01/2012 12:18)   5
/* Rows of dataset:
01/01/2012 12:06    5
01/01/2012 12:09    3
01/01/2012 12:12    6
01/01/2012 12:15    7
01/01/2012 12:18    1    
*/
0-7   (01/01/2012 12:42-01/01/2012 12:51)   5
/* Rows of dataset:
01/01/2012 12:42    6
01/01/2012 12:45    3
01/01/2012 12:48    5
01/01/2012 12:51    7  
*/
8-12   (01/01/2012 12:00-01/01/2012 12:03)   2
/* Rows of dataset:
01/01/2012 12:00    8
01/01/2012 12:03    9
*/
more then 12   (01/01/2012 12:24-01/01/2012 12:36)   5
/* Rows of dataset:
01/01/2012 12:24    28
01/01/2012 12:27    25
01/01/2012 12:30    20
01/01/2012 12:33    20
01/01/2012 12:36    20
*/

8-12   (01/01/2012 12:21)   1
/* Rows of dataset:
01/01/2012 12:21    12     */
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1  
The expected results you describe don't seem to fit the data. Shouldn't there be a 8-12 group before the first 0-7 group? Bogdan Sahlen's answer seems to have the correct results. –  Iain Elder Apr 6 '12 at 12:54

3 Answers 3

Note: because the processing order for RANK/DENSE_RANK is PARTITION BY and then ORDER BY, these functions are not useful in this case. Maybe, at some point in time, MS will introduce a supplementary syntax thus: [DENSE_]RANK() OVER(ORDER BY fields PARTITION BY fields) so ORDER BY will be processed first and then PARTITION BY.

1) First solution (SQL2005+)

    DECLARE @TestData TABLE
    (
        Dt      SMALLDATETIME PRIMARY KEY,
        Heat    TINYINT NOT NULL
    );

    INSERT  @TestData(Dt, Heat)
    VALUES
            SELECT '2012-01-01T12:00:00', 8  UNION ALL SELECT '2012-01-01T12:03:00', 9  UNION ALL SELECT '2012-01-01T12:06:00', 5
UNION ALL   SELECT '2012-01-01T12:09:00', 3  UNION ALL SELECT '2012-01-01T12:12:00', 6  UNION ALL SELECT '2012-01-01T12:15:00', 7
UNION ALL   SELECT '2012-01-01T12:18:00', 1  UNION ALL SELECT '2012-01-01T12:21:00', 12 UNION ALL SELECT '2012-01-01T12:24:00', 28
UNION ALL   SELECT '2012-01-01T12:27:00', 25 UNION ALL SELECT '2012-01-01T12:30:00', 20 UNION ALL SELECT '2012-01-01T12:33:00', 20
UNION ALL   SELECT '2012-01-01T12:36:00', 20 UNION ALL SELECT '2012-01-01T12:39:00', 12 UNION ALL SELECT '2012-01-01T12:42:00', 6
UNION ALL   SELECT '2012-01-01T12:45:00', 3  UNION ALL SELECT '2012-01-01T12:48:00', 5  UNION ALL SELECT '2012-01-01T12:51:00', 7
UNION ALL   SELECT '2012-01-01T12:54:00', 11 UNION ALL SELECT '2012-01-01T12:57:00', 12 UNION ALL SELECT '2012-01-01 13:00:00', 6;

    SET STATISTICS IO ON;

    WITH CteSource
    AS
    (
            SELECT  a.*,
                    CASE 
                        WHEN a.Heat >= 0 AND a.Heat <= 7 THEN 1
                        WHEN a.Heat >= 8 AND a.Heat <= 12 THEN 2
                        WHEN a.Heat > 12 THEN 3
                    END AS Grp,
                    ROW_NUMBER() OVER(ORDER BY a.Dt) AS RowNum
            FROM    @TestData a
    ),  CteRecursive
    AS
    (
            SELECT  s.RowNum,
                    s.Dt,
                    s.Heat,
                    s.Grp,
                    1 AS DENSE_RANK_OVER_ORDERBY_PARTITIONBY
            FROM    CteSource s
            WHERE   s.RowNum = 1
            UNION ALL
            SELECT  crt.RowNum,
                    crt.Dt,
                    crt.Heat,
                    crt.Grp,
                    CASE 
                        WHEN crt.Grp = prev.Grp THEN prev.DENSE_RANK_OVER_ORDERBY_PARTITIONBY 
                        ELSE prev.DENSE_RANK_OVER_ORDERBY_PARTITIONBY + 1
                    END
            FROM    CteSource crt
            INNER JOIN CteRecursive prev ON crt.RowNum = prev.RowNum + 1
    )
    SELECT  r.DENSE_RANK_OVER_ORDERBY_PARTITIONBY, 
            MAX(r.Grp) AS Grp,
            COUNT(*) AS Cnt,
            MIN(r.Dt) AS MinDt,
            MAX(r.Dt) AS MaxDt
    FROM    CteRecursive r
    GROUP BY r.DENSE_RANK_OVER_ORDERBY_PARTITIONBY;

Results:

DENSE_RANK_OVER_ORDERBY_PARTITIONBY Grp         Cnt         MinDt                   MaxDt
----------------------------------- ----------- ----------- ----------------------- -----------------------
1                                   2           2           2012-01-01 12:00:00     2012-01-01 12:03:00
2                                   1           5           2012-01-01 12:06:00     2012-01-01 12:18:00
3                                   2           1           2012-01-01 12:21:00     2012-01-01 12:21:00
4                                   3           5           2012-01-01 12:24:00     2012-01-01 12:36:00
5                                   2           1           2012-01-01 12:39:00     2012-01-01 12:39:00
6                                   1           4           2012-01-01 12:42:00     2012-01-01 12:51:00
7                                   2           2           2012-01-01 12:54:00     2012-01-01 12:57:00
8                                   1           1           2012-01-01 13:00:00     2012-01-01 13:00:00

2) Second solution (SQL2012; better performance)

SELECT  d.DENSE_RANK_OVER_ORDERBY_PARTITIONBY,
        MAX(d.Grp) AS Grp,
        MIN(d.Dt) AS MinDt,
        MAX(d.Dt) AS MaxDt
FROM
(
        SELECT  c.*,
                1+SUM(c.IsNewGroup) OVER(ORDER BY c.Dt) AS DENSE_RANK_OVER_ORDERBY_PARTITIONBY
        FROM
        (
                SELECT  b.*,
                        CASE 
                            WHEN LAG(b.Grp) OVER(ORDER BY b.Dt) <> b.Grp THEN 1  
                            ELSE 0
                        END
                        AS IsNewGroup
                FROM    
                (
                        SELECT  a.*,
                                CASE 
                                    WHEN a.Heat >= 0 AND a.Heat <= 7 THEN 1
                                    WHEN a.Heat >= 8 AND a.Heat <= 12 THEN 2
                                    WHEN a.Heat > 12 THEN 3
                                END AS Grp
                        FROM    @TestData a
                ) b
        ) c
) d
GROUP BY d.DENSE_RANK_OVER_ORDERBY_PARTITIONBY;
share|improve this answer
    
Thanks for putting the test data into an executable format. –  Iain Elder Apr 6 '12 at 12:59

Here's an alternative solution for SQL Server 2005 or newer version:

WITH auxiliary (HeatID, MinHeat, MaxHeat, HeatDescr) AS (
  SELECT 1, 0 , 7   , '0-7'  UNION ALL
  SELECT 2, 8 , 12  , '8-12' UNION ALL
  SELECT 3, 13, NULL, 'more than 12'
),
datagrouped AS (
  SELECT
    d.*,
    a.HeatDescr,
    grp = ROW_NUMBER() OVER (                      ORDER BY d.Date)
        - ROW_NUMBER() OVER (PARTITION BY a.HeatID ORDER BY d.Date)
  FROM data d
    INNER JOIN auxiliary a
      ON d.Heat BETWEEN a.MinHeat AND ISNULL(a.MaxHeat, 0x7fffffff)
)
SELECT
  HeatDescr,
  DateFrom  = MIN(Date),
  DateTo    = MAX(Date),
  ItemCount = COUNT(*)
FROM datagrouped
GROUP BY
  HeatDescr, grp
ORDER BY
  MIN(Date)

Where data is defined as follows:

CREATE TABLE data (Date datetime, Heat int);

INSERT INTO data (Date, Heat)
SELECT '01/01/2012 12:00',  8  UNION ALL
SELECT '01/01/2012 12:03',  9  UNION ALL
SELECT '01/01/2012 12:06',  5  UNION ALL
SELECT '01/01/2012 12:09',  3  UNION ALL
SELECT '01/01/2012 12:12',  6  UNION ALL
SELECT '01/01/2012 12:15',  7  UNION ALL
SELECT '01/01/2012 12:18',  1  UNION ALL
SELECT '01/01/2012 12:21',  12 UNION ALL
SELECT '01/01/2012 12:24',  28 UNION ALL
SELECT '01/01/2012 12:27',  25 UNION ALL
SELECT '01/01/2012 12:30',  20 UNION ALL
SELECT '01/01/2012 12:33',  20 UNION ALL
SELECT '01/01/2012 12:36',  20 UNION ALL
SELECT '01/01/2012 12:39',  12 UNION ALL
SELECT '01/01/2012 12:42',  6  UNION ALL
SELECT '01/01/2012 12:45',  3  UNION ALL
SELECT '01/01/2012 12:48',  5  UNION ALL
SELECT '01/01/2012 12:51',  7  UNION ALL
SELECT '01/01/2012 12:54',  11 UNION ALL
SELECT '01/01/2012 12:57',  12 UNION ALL
SELECT '01/01/2012 13:00',  6;

For the above sample, the query gives the following output:

HeatDescr     DateFrom             DateTo               ItemCount 
------------  -------------------  -------------------  --------- 
8-12          2012-01-01 12:00:00  2012-01-01 12:03:00  2    
0-7           2012-01-01 12:06:00  2012-01-01 12:18:00  5    
8-12          2012-01-01 12:21:00  2012-01-01 12:21:00  1    
more than 12  2012-01-01 12:24:00  2012-01-01 12:36:00  5    
8-12          2012-01-01 12:39:00  2012-01-01 12:39:00  1    
0-7           2012-01-01 12:42:00  2012-01-01 12:51:00  4    
8-12          2012-01-01 12:54:00  2012-01-01 12:57:00  2    
0-7           2012-01-01 13:00:00  2012-01-01 13:00:00  1    
share|improve this answer

You should reach your goal using RANK()

http://msdn.microsoft.com/en-us/library/ms176102.aspx

Something like

SELECT date, heat, RANK() OVER (PARTITION BY heat ORDER BY date DESC) AS Rank
FROM tbl

Then you can GROUP it after, or make more sub selects and unions them, depending what you have as result.

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