Both methods achieve the same purpose, to forego unnecessary db queries. But they use different approaches for efficiency.
The only reason to use either of these methods is when a single large query is preferable to many small queries. Django uses the large query to create models in memory preemptively rather than performing on demand queries against the database.
select_related performs a join with each lookup, but extends the select to include the columns of all joined tables. However this approach has a caveat.
Joins have the potential to multiply the number of rows in a query. When you perform a join over a foreign key or one-to-one field, the number of rows won't increase. However, many-to-many joins do not have this guarantee. So, Django restricts
select_related to relations that won't unexpectedly result in a massive join.
The "join in python" for
prefetch_related is a little more alarming then it should be. It creates a separate query for each table to be joined. It filters each of these table with a WHERE IN clause, like:
WHERE "credential"."identity_id" IN
(84706, 48746, 871441, 84713, 76492, 84621, 51472);
Rather than performing a single join with potentially too many rows, each table is split into a separate query.