As Ollie suggests, the only definitive way to determine which of two queries is more efficient is to benchmark the two approaches using your data since the performance of the two alternatives is likely to depend on data volumes, data structures, what indexes are present, etc.

In general, the two queries that you posted will return different results. Unless you are guaranteed that every row in `outertable`

has exactly one corresponding row in `innertable`

, the two queries will return a different number of rows. The first query will return a row for every row in `outertable`

with a NULL as the first column if there is no matching row in `innertable`

. The second query will not return anything if there is no matching row in `innertable`

. Similarly, if there are multiple matching rows in `innertable`

for any particular row in `outertable`

, the first query will return an error while the second query will return multiple rows for that row in `outertable`

.

If you are confident that the two queries return identical result sets in your particular case because you can guarantee that there is exactly one row in `innertable`

for every row in `outertable`

(in which case it is at least somewhat odd that your data model separates the tables), the second option would be the much more natural way to write the query and thus the one for which the optimizer is most likely to find the more efficient plan.

notequivalent! The first one willonlywork if there is a 1:1 relation between innertable and outertable. It will fail if there is more than one row in`innertable`

for the same value of`val`

. – a_horse_with_no_name Jan 3 '12 at 15:39