I'm working with some data that is currently stored in 1 minute intervals that looks like this:
CREATE TABLE #MinuteData ( [Id] INT , [MinuteBar] DATETIME , [Open] NUMERIC(12, 6) , [High] NUMERIC(12, 6) , [Low] NUMERIC(12, 6) , [Close] NUMERIC(12, 6) ); INSERT INTO #MinuteData ( [Id], [MinuteBar], [Open], [High], [Low], [Close] ) VALUES ( 1, '2015-01-01 17:00:00', 1.557870, 1.557880, 1.557870, 1.557880 ), ( 2, '2015-01-01 17:01:00', 1.557900, 1.557900, 1.557880, 1.557880 ), ( 3, '2015-01-01 17:02:00', 1.557960, 1.558070, 1.557960, 1.558040 ), ( 4, '2015-01-01 17:03:00', 1.558080, 1.558100, 1.558040, 1.558050 ), ( 5, '2015-01-01 17:04:00', 1.558050, 1.558100, 1.558020, 1.558030 ), ( 6, '2015-01-01 17:05:00', 1.558580, 1.558710, 1.557870, 1.557950 ), ( 7, '2015-01-01 17:06:00', 1.557910, 1.558120, 1.557910, 1.557990 ), ( 8, '2015-01-01 17:07:00', 1.557940, 1.558250, 1.557940, 1.558170 ), ( 9, '2015-01-01 17:08:00', 1.558140, 1.558200, 1.558080, 1.558120 ), ( 10, '2015-01-01 17:09:00', 1.558110, 1.558140, 1.557970, 1.557970 ); SELECT * FROM #MinuteData; DROP TABLE #MinuteData;
The values track currency exchange rates, so for each minute interval (bar), there is the
Open price as the minute started and a
Close price for the minute end. The
Low values represent the highest and lowest rate during each individual minute.
I'm looking to reformat this data in to 5 minute intervals to produce the following output:
MinuteBar Open Close Low High 2015-01-01 17:00:00.000 1.557870 1.558030 1.557870 1.558100 2015-01-01 17:05:00.000 1.558580 1.557970 1.557870 1.558710
This takes the
Open value from the first minute of the 5, the
Close value from the last minute of the 5. The
Low values represent the highest
high and lowest
low rates across the 5 minute period.
I have a solution that does this (below), but it feels inelegant as it relies on
id values and self joins. Also, I intend to run it on much larger datasets so I was looking to do it in a more efficient manner if possible:
-- Create a column to allow grouping in 5 minute Intervals SELECT Id, MinuteBar, [Open], High, Low, [Close], DATEDIFF(MINUTE, '2015-01-01T00:00:00', MinuteBar)/5 AS Interval INTO #5MinuteData FROM #MinuteData ORDER BY minutebar -- Group by inteval and aggregate prior to self join SELECT Interval , MIN(MinuteBar) AS MinuteBar , MIN(Id) AS OpenId , MAX(Id) AS CloseId , MIN(Low) AS Low , MAX(High) AS High INTO #DataMinMax FROM #5MinuteData GROUP BY Interval; -- Self join to get the Open and Close values SELECT t1.Interval , t1.MinuteBar , tOpen.[Open] , tClose.[Close] , t1.Low , t1.High FROM #DataMinMax t1 INNER JOIN #5MinuteData tOpen ON tOpen.Id = OpenId INNER JOIN #5MinuteData tClose ON tClose.Id = CloseId; DROP TABLE #DataMinMax DROP TABLE #5MinuteData
Instead of the above queries, I've been looking at using FIRST_VALUE and LAST_VALUE, as it seems to be what I'm after, but I can't quite get it working with the grouping that I'm doing. There might be a better solution than what I'm trying to do, so I'm open to suggestions. Currently I'm trying to do this:
SELECT MIN(MinuteBar) MinuteBar5 , FIRST_VALUE([Open]) OVER (ORDER BY MinuteBar) AS Opening, MAX(High) AS High , MIN(Low) AS Low , LAST_VALUE([Close]) OVER (ORDER BY MinuteBar) AS Closing , DATEDIFF(MINUTE, '2015-01-01 00:00:00', MinuteBar) / 5 AS Interval FROM #MinuteData GROUP BY DATEDIFF(MINUTE, '2015-01-01 00:00:00', MinuteBar) / 5
This gives me the below error, which is related to the
LAST_VALUE as the query runs if I remove those lines:
Column '#MinuteData.MinuteBar' is invalid in the select list because it is not contained in either an aggregate function or the GROUP BY clause.