I have a repeating pattern in my code where a model has a related model (one-to-many) which tracks its history/status. This related model can have many objects representing a point-in-time snapshot of the model's state.
class Profile(models.Model): pass class Subscription(models.Model): profile = models.ForeignKey(Profile) data_point = models.IntegerField() created = models.DateTimeField(default=datetime.datetime) #Example objects p = Provile() subscription1 = Subscription(profile=p, data_point=32, created=datetime.datetime(2011, 7 1) subscription2 = Subscription(profile=p, data_point=2, created=datetime.datetime(2011, 8 1) subscription3 = Subscription(profile=p, data_point=3, created=datetime.datetime(2011, 9 1) subscription4 = Subscription(profile=p, data_point=302, created=datetime.datetime(2011, 10 1)
I often need to query these models to find all of the "Profile" objects that haven't had a subscription update in the last 3 days or similar. I've been using subselect queries to accomplish this:
q = Subscription.objects.filter(created__gt=datetime.datetime.now()-datetime.timedelta(days=3).values('id').query Profile.objects.exclude(subscription__id__in=q).distinct()
The problem is that this is terribly slow when large tables are involved. Is there a more efficient pattern for a query such as this? Maybe some way to make Django use a JOIN instead of a SUBSELECT (seems like getting rid of all those inner nested loops would help)?
I'd lilke to use the ORM, but if needed I'd be willing to use the .extra() method or even raw SQL if the performance boost is compelling enough.
I'm running against Django 1.4alpha (SVN Trunk) and Postgres 9.1.