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I have a model that looks like this:

class Category(models.Model):
    name = models.CharField(max_length=60)

class Item(models.Model):
    name = models.CharField(max_length=60)
    category = models.ForeignKey(Category)

I want select count (just the count) of items for each category, so in SQL it would be as simple as this:

select category_id, count(id) from item group by category_id

Is there an equivalent of doing this "the Django way"? Or is plain SQL the only option? I am familiar with the count( ) method in Django, however I don't see how group by would fit there.

share|improve this question
@CiroSantilli巴拿馬文件六四事件法轮功 how is this a duplicate? this question was asked in 2008, and the one you are referring to is 2 years later. – umnik700 May 25 at 23:56
Current consensus is to close by "quality": <…; Since "quality" is not measurable, I just go by upvotes. ;-) Likely it comes down to which question hit the best newbie Google keywords on the title. – Ciro Santilli 巴拿馬文件 六四事件 法轮功 May 26 at 7:04
up vote 118 down vote accepted

Here, as I just discovered, is how to do this with the Django 1.1 aggregation API:

from django.db.models import Count
theanswer = Item.objects.values('category').annotate(Count('category'))
share|improve this answer
like most things in Django, none of this quite makes sense to look at but (unlike most things in Django) once i actually tried it, it was awesome :P – jsh Oct 20 '11 at 20:49
note that you need to use order_by() if 'category' is not the default ordering. (See Daniel's more comprehensive answer.) – Rick Westera May 8 '13 at 23:40

(Update: Full ORM aggregation support is now included in Django 1.1. True to the below warning about using private APIs, the method documented here no longer works in post-1.1 versions of Django. I haven't dug in to figure out why; if you're on 1.1 or later you should use the real aggregation API anyway.)

The core aggregation support was already there in 1.0; it's just undocumented, unsupported, and doesn't have a friendly API on top of it yet. But here's how you can use it anyway until 1.1 arrives (at your own risk, and in full knowledge that the query.group_by attribute is not part of a public API and could change):

query_set = Item.objects.extra(select={'count': 'count(1)'}, 
                               order_by=['-count']).values('count', 'category')
query_set.query.group_by = ['category_id']

If you then iterate over query_set, each returned value will be a dictionary with a "category" key and a "count" key.

You don't have to order by -count here, that's just included to demonstrate how it's done (it has to be done in the .extra() call, not elsewhere in the queryset construction chain). Also, you could just as well say count(id) instead of count(1), but the latter may be more efficient.

Note also that when setting .query.group_by, the values must be actual DB column names ('category_id') not Django field names ('category'). This is because you're tweaking the query internals at a level where everything's in DB terms, not Django terms.

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+1 for the old method. Even if currently unsupported, it's enlightening to say the least. Amazing, really. – André Terra Jun 26 '11 at 2:12
Take a look to the Django aggregation API at… other complex tasks can be done with it, there you'll find some powerful examples. – serfer2 Feb 21 '14 at 12:13
@serfer2 yes, those docs are already linked from the top of this answer. – Carl Meyer Feb 22 '14 at 16:45

Since I was a little confused about how grouping in Django 1.1 works I thought I'd elaborate here on how exactly you go about using it. First, to repeat what Michael said:

Here, as I just discovered, is how to do this with the Django 1.1 aggregation API:

from django.db.models import Count
theanswer = Item.objects.values('category').annotate(Count('category'))

Note also that you need to from django.db.models import Count!

This will select only the categories and then add an annotation called category__count. Depending on the default ordering this may be all you need, but if the default ordering uses a field other than category this will not work. The reason for this is that the fields required for ordering are also selected and make each row unique, so you won't get stuff grouped how you want it. One quick way to fix this is to reset the ordering:


This should produce exactly the results you want. To set the name of the annotation you can use:

...annotate(mycount = Count('category'))...

Then you will have an annotation called mycount in the results.

Everything else about grouping was very straightforward to me. Be sure to check out the Django aggregation API for more detailed info.

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+1 for mentioning the order_by() issue. – Török Gábor Dec 13 '10 at 13:39
to perform same set of action on foreign key field Item.objects.values('category__category').annotate(Count('category__category')).or‌​der_by() – Mutant Jan 26 '13 at 23:23
How does one determine what the default ordering field is? – Bogatyr May 20 '15 at 22:10

How's this? (Other than slow.)

counts= [ (c, Item.filter( ).count()) for c in Category.objects.all() ]

It has the advantage of being short, even if it does fetch a lot of rows.


The one query version. BTW, this is often faster than SELECT COUNT(*) in the database. Try it to see.

counts = defaultdict(int)
for i in Item.objects.all():
    counts[i.category] += 1
share|improve this answer
It is nice and short, however I would like to avoid having a separate database call for each category. – umnik700 Nov 29 '08 at 22:38
This is a really good approach for simple cases. It falls down when you have a large dataset, and you want to order+limit (ie paginate) according to a count, without pulling down tons of unneeded data. – Carl Meyer Dec 1 '08 at 16:13
@Carl Meyer: True -- it can be doggy for a large dataset; you need to benchmark to be sure of that, however. Also, it doesn't rely on unsupported stuff either; it works in the interim until the unsupported features are supported. – S.Lott Dec 1 '08 at 16:43

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