Question in short: how can I get a list of row IDs of rows processed when a query is processed?
Edit note: I am not looking for returned rows. When a user has 5 posts on Facebook and I do a '''SELECT * FROM posts WHERE user=Mark ORDER BY date desc LIMIT 1''' I know, that the returned number will be 1, but I'd like to know how many rows have been processed (in this case without indices, probably all rows). And I am primarily looking at SELECT statements.
I am currently working on a project that aims in the direction of data aging. I.e., we are trying to determine which tuples are accessed regularly and which are not. We've got a decent workload (i.e., a query log of the system) with the corresponding data and would like to know, what rows have been processed.
Besides the question, what rows we're also interested in what attributes, but that can be done parsing the query (projection, join attributes, and where conditions). Leaving the question open how to get the actually processed rows.
We are aware that many queries will (let's assume there are no indices) process all rows, because there is a where-condition that requires a full table scan. We are aware of that problem, but still wan't to find out, which rows have been accessed.
My final question is now: How can we achieve that?
I have been looking into MySQL and Postgres but could not find sufficient information (e.g., MySQL's 'explain' just returns an estimate for the number of rows processed, but not any row IDs). I am guess that we will have to modify the source code of a DB to achieve that kind of logging (performance of that logging is not an issue, it's offline analytics). Has anybody any recommendations how to achieve that/done that?
Edit concerning David's comment: what I am trying to achieve is to know, which tuples (looking at the given workload) are never accessed. Typical aging problem. E.g., are Facebook posts older than 2 years pretty much never views,liked,commented anymore and could thus be stored on an external (cheaper) system. Therefore we need to now, which rows are accessed regularly.