I am building an application which logs automotive performance metrics to a table consisting of 100 columns X 500,000 rows per session. Some of the columns are very repetitive (coolant temperature in whole degrees Fahrenheit). Other columns change continuously (spark advance, manifold pressure, air fuel ratio).
Columnstores and page compression are out of the question since the project is targeted at the open source audience. It needs to support MS SQL Express Edition or another free database platform that scales well to large table sizes.
My initial solution is to allow null in some of the columns, which should dramatically reduce storage footprint by not inserting repeating values, and this allows me to increase the log resolution to a higher framerate.
However this introduces an obstacle when selecting discrete rows because certain columns will be 99% null. Therefore it is necessary to create a view (or computed column?) which will select the last row which contained a value in that field. My approach is to use a subquery for each sparse column. This seems grossly inelegant. Is there a more efficient approach I should consider?
SELECT ISNULL( val1, ( SELECT TOP 1 val1 FROM [values] subv WHERE subv.id <= v.id AND subv.val1 IS NOT NULL ORDER BY subv.id DESC ) ) AS val1, ISNULL( val2, ( SELECT TOP 1 val2 FROM [values] subv WHERE subv.id <= v.id AND subv.val2 IS NOT NULL ORDER BY subv.id DESC ) ) AS val2, ISNULL( val3, ( SELECT TOP 1 val3 FROM [values] subv WHERE subv.id <= v.id AND subv.val3 IS NOT NULL ORDER BY subv.id DESC ) ) AS val3 FROM [values] v