I'm currently using redshift. I was trying to execute a query to calculate a column called id_number
(data type INTEGER) from a VARCHAR column called id
to speed up further queries using id_number
instead of id
.
Here is the first query I tried :
select rank() over (order by id) id_number, id, sid1 ,sid2
from table
limit 10000
However, noticing that this query was taking quite some time, I tried the next query:
with A as(
select id, sid1, sid2
from table
limit 10000
)
select rank() over (order by id) id_number, id, sid1 ,sid2
from A
which was over in a flash.
How was it that the second query took such less time to execute, while the two queries seem to do the exact same thing?
If it is because of the positions of limit 10000
, how did the position of limit
contribute to the difference in execution time?
In the second you limit it on a simple select and then call rank(). In second case you cut off results before calling rank().
Don't they mean the same, limiting (cutting off) before calling rank()?select ... from
, which in first case is after the rank was executed as part of the select. In second case theselect ... from
is limited and on the result the rank is called. If I am wrong, please let me know...