In Django doc,

select_related() "follows" foreign-key relationships, selecting additional related-object data when it executes its query.

prefetch_related() does a separate lookup for each relationship, and does the "joining" in Python.

What does it mean by "doing the joining in python"? Can someone illustrate with an example?

My understanding is that for foreign key relationship, use select_related; and for M2M relationship, use prefetch_related. Is this correct?

  • Performing the join in python means that the join will not happen in the database. With a select_related, your join happens in the database and you only suffer one database query. With prefetch_related, you will be executing two queries and then the results will be 'joined' by the ORM so you can still type object.related_set – Mark Galloway Jul 6 '15 at 2:41
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    As a footnote, Timmy O'Mahony can also explain their differences using database hits: link – Mærcos Apr 20 '16 at 11:00

Your understanding is mostly correct. You use select_related when the object that you're going to be selecting is a single object, so OneToOneField or a ForeignKey. You use prefetch_related when you're going to get a "set" of things, so ManyToManyFields as you stated or reverse ForeignKeys. Just to clarify what I mean by "reverse ForeignKeys" here's an example:

class ModelA(models.Model):

class ModelB(models.Model):
    a = ForeignKey(ModelA)

ModelB.objects.select_related('a').all() # Forward ForeignKey relationship
ModelA.objects.prefetch_related('modelb_set').all() # Reverse ForeignKey relationship

The difference is that select_related does an SQL join and therefore gets the results back as part of the table from the SQL server. prefetch_related on the other hand executes another query and therefore reduces the redundant columns in the original object (ModelA in the above example). You may use prefetch_related for anything that you can use select_related for.

The tradeoffs are that prefetch_related has to create and send a list of IDs to select back to the server, this can take a while. I'm not sure if there's a nice way of doing this in a transaction, but my understanding is that Django always just sends a list and says SELECT ... WHERE pk IN (...,...,...) basically. In this case if the prefetched data is sparse (let's say U.S. State objects linked to people's addresses) this can be very good, however if it's closer to one-to-one, this can waste a lot of communications. If in doubt, try both and see which performs better.

Everything discussed above is basically about the communications with the database. On the Python side however prefetch_related has the extra benefit that a single object is used to represent each object in the database. With select_related duplicate objects will be created in Python for each "parent" object. Since objects in Python have a decent bit of memory overhead this can also be a consideration.

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    what is faster though? – elad silver Jan 12 '17 at 16:09
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    select_related is one query while prefetch_related is two, so the former is faster. But select_related won't help you for ManyToManyField's – bhinesley Feb 15 '17 at 20:46
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    @eladsilver Sorry for the slow reply. It actually depends. select_related uses a JOIN in the SQL whereas prefetch_related run the query on the first model, collects all the IDs it needs to prefetch and then runs a query with an IN clause in the WHERE with all the IDs that it needs. If you have say 3-5 models using the same foreign key, select_related will almost certainly be better. If you have 100s or 1000s of models using the same foreign key, prefetch_related could actually be better. In between you'll have to test and see what happens. – CrazyCasta Feb 18 '17 at 6:11
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    I would dispute your comment about prefetch related "generally doesn't make much sense". That's true for FK fields marked unique, but anywhere where multiple rows have the same FK value (author, user, category, city etc etc) prefetch cuts down bandwidth between Django and the DB but not duplicating rows. It also generally uses less memory on the DB. Either of these is often more important than the overhead of a single extra query. Given this is the top answer on a reasonably popular question I think that should be noted in the answer. – Gordon Wrigley Aug 15 '17 at 8:18
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    @GordonWrigley Yeah, it's been a while since I wrote that, so I went back and clarified a bit. I'm not sure I agree with the "uses less memory on the DB" bit, but yes to everything. And it can sure use less memory on the Python side. – CrazyCasta Aug 16 '17 at 16:02

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:

SELECT "credential"."id",
FROM   "credential"
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.

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