63

What is the difference between filter with multiple arguments and chain filter in django?

45

As you can see in the generated SQL statements the difference is not the "OR" as some may suspect. It is how the WHERE and JOIN is placed.

Example1 (same joined table): from https://docs.djangoproject.com/en/dev/topics/db/queries/#spanning-multi-valued-relationships

Blog.objects.filter(
       entry__headline__contains='Lennon', 
       entry__pub_date__year=2008)

This will give you all the Blogs that have one entry with both (entry__headline__contains='Lennon') AND (entry__pub_date__year=2008), which is what you would expect from this query.

Result:

Blog with {entry.headline: 'Life of Lennon', entry.pub_date: '2008'}

Example 2 (chained)

Blog.objects.filter(
       entry__headline__contains='Lennon'
           ).filter(
       entry__pub_date__year=2008)

This will cover all the results from Example 1, but it will generate slightly more result. Because it first filters all the blogs with (entry__headline__contains='Lennon') and then from the result filters (entry__pub_date__year=2008).

The difference is that it will also give you results like:

A single Blog with multiple entries

{entry.headline: '**Lennon**', entry.pub_date: 2000}, 
{entry.headline: 'Bill', entry.pub_date: **2008**}

When the first filter was evaluated the book is included because of the first entry (even though it has other entries that don't match). When the second filter is evaluated the book is included because of the second entry.

One table: But if the query doesn't involve joined tables like the example from Yuji and DTing. The result is same.

  • 14
    I assume I'm just dense this morning, but this sentence confuses me: "Because it first filters all the blogs with (entry__headline__contains='Lennon') and then from the result filters (entry__pub_date__year=2008)" If "then from the result" is accurate, why will it include something with entry.headline == 'Bill'...wouldn't entry__headline__contains='Lennon' filter out the Bill instance? – Dustin Wyatt Aug 9 '16 at 15:37
  • 2
    I'm also confused. It seems like this answer is just wrong, but it has 37 upvotes... – Personman Apr 12 '18 at 17:14
  • This answer is misleading and confusing, note the above is only correct when filtering using M2M relationships as noted in Yuji's answer. The key point is the example is filtering the Blog items with each filter statement, not the Entry items. – theannouncer May 3 '18 at 17:05
  • 1
    Because there are possibly multiple entries per blog. The language is correct. The concept can be confusing if you don't keep all the moving pieces in mind. – DylanYoung May 14 '18 at 13:30
18

The case in which results of "multiple arguments filter-query" is different then "chained-filter-query", following:

Selecting referenced objects on the basis of referencing objects and relationship is one-to-many (or many-to-many).

Multiple filters:

    Referenced.filter(referencing1_a=x, referencing1_b=y)
    #  same referencing model   ^^                ^^

Chained filters:

    Referenced.filter(referencing1_a=x).filter(referencing1_b=y)

Both queries can output different result:
If more then one rows in referencing-modelReferencing1can refer to same row in referenced-modelReferenced. This can be the case in Referenced: Referencing1 have either 1:N (one to many) or N:M (many to many) relation-ship.

Example:

Consider my application my_company has two models Employee and Dependent. An employee in my_company can have more than dependents(in other-words a dependent can be son/daughter of a single employee, while a employee can have more than one son/daughter).
Ehh, assuming like husband-wife both can't work in a my_company. I took 1:m example

So, Employee is referenced-model that can be referenced by more then Dependent that is referencing-model. Now consider relation-state as follows:

Employee:        Dependent:
+------+        +------+--------+-------------+--------------+
| name |        | name | E-name | school_mark | college_mark |
+------+        +------+--------+-------------+--------------+
| A    |        | a1   |   A    |          79 |           81 |
| B    |        | b1   |   B    |          80 |           60 |
+------+        | b2   |   B    |          68 |           86 |
                +------+--------+-------------+--------------+  

Dependenta1refers to employeeA, and dependentb1, b2references to employeeB.

Now my query is:

Find all employees those having son/daughter has distinction marks (say >= 75%) in both college and school?

>>> Employee.objects.filter(dependent__school_mark__gte=75,
...                         dependent__college_mark__gte=75)

[<Employee: A>]

Output is 'A' dependent 'a1' has distinction marks in both college and school is dependent on employee 'A'. Note 'B' is not selected because nether of 'B''s child has distinction marks in both college and school. Relational algebra:

Employee (school_mark >=75 AND college_mark>=75)Dependent

In Second, case I need a query:

Find all employees whose some of dependents has distinction marks in college and school?

>>> Employee.objects.filter(
...             dependent__school_mark__gte=75
...                ).filter(
...             dependent__college_mark__gte=75)

[<Employee: A>, <Employee: B>]

This time 'B' also selected because 'B' has two children (more than one!), one has distinction mark in school 'b1' and other is has distinction mark in college 'b2'.
Order of filter doesn't matter we can also write above query as:

>>> Employee.objects.filter(
...             dependent__college_mark__gte=75
...                ).filter(
...             dependent__school_mark__gte=75)

[<Employee: A>, <Employee: B>]

result is same! Relational algebra can be:

(Employee (school_mark >=75)Dependent) (college_mark>=75)Dependent

Note following:

dq1 = Dependent.objects.filter(college_mark__gte=75, school_mark__gte=75)
dq2 = Dependent.objects.filter(college_mark__gte=75).filter(school_mark__gte=75)

Outputs same result: [<Dependent: a1>]

I check target SQL query generated by Django using print qd1.query and print qd2.query both are same(Django 1.6).

But semantically both are different to me. first looks like simple section σ[school_mark >= 75 AND college_mark >= 75](Dependent) and second like slow nested query: σ[school_mark >= 75][college_mark >= 75](Dependent)).

If one need Code @codepad

btw, it is given in documentation @Spanning multi-valued relationships I have just added an example, I think it will be helpful for someone new.

  • 1
    Thank you for this helpful explanation, it is better than the one in documentation which isn't clear at all. – wim Mar 12 '14 at 20:52
  • The last mark about filtering the Dependents directly is super helpful. It shows that the change in results definitively only happens when you go through a many-to-many relationship. If you query a table directly, chaining filters is just like combing twice. – Chris Nov 22 '17 at 14:47
16

Most of the time, there is only one possible set of results for a query.

The use for chaining filters comes when you are dealing with m2m:

Consider this:

# will return all Model with m2m field 1
Model.objects.filter(m2m_field=1) 

# will return Model with both 1 AND 2    
Model.objects.filter(m2m_field=1).filter(m2m_field=2) 

# this will NOT work
Model.objects.filter(Q(m2m_field=1) & Q(m2m_field=2))

Other examples are welcome.

  • 3
    Another example: It's not just limited to m2m, this can also happen with one-to-many - with the reverse lookup e.g. using the related_name on a ForeignKey – wim Mar 13 '14 at 11:14
  • Thanks for your explanation! Before that, I thought that last and 2nd examples are equal, so last example wasn't work for me (wrong query results), and I spent a lot of time in searches. 2nd example very helpful for me. Also as Wim said, this is usable with reverse one-to-many relations as in my case. – zen11625 Aug 19 '16 at 6:21
9

The performance difference is huge. Try it and see.

Model.objects.filter(condition_a).filter(condition_b).filter(condition_c)

is surprisingly slow compared to

Model.objects.filter(condition_a, condition_b, condition_c)

As mentioned in "Effective Django ORM",

  • QuerySets maintain state in memory
  • Chaining triggers cloning, duplicating that state
  • Unfortunately, QuerySets maintain a lot of state
  • If possible, don’t chain more than one filter
6

You can use the connection module to see the raw sql queries to compare. As explained by Yuji's, for the most part they are equivalent as shown here:

>>> from django.db import connection
>>> samples1 = Unit.objects.filter(color="orange", volume=None)
>>> samples2 = Unit.objects.filter(color="orange").filter(volume=None)
>>> list(samples1)
[]
>>> list(samples2)
[]
>>> for q in connection.queries:
...     print q['sql']
... 
SELECT `samples_unit`.`id`, `samples_unit`.`color`, `samples_unit`.`volume` FROM `samples_unit` WHERE (`samples_unit`.`color` = orange  AND `samples_unit`.`volume` IS NULL)
SELECT `samples_unit`.`id`, `samples_unit`.`color`, `samples_unit`.`volume` FROM `samples_unit` WHERE (`samples_unit`.`color` = orange  AND `samples_unit`.`volume` IS NULL)
>>> 
1

If you end up on this page looking for how to dynamically build up a django queryset with multiple chaining filters, but you need the filters to be of the AND type instead of OR, consider using Q objects.

An example:

# First filter by type.
filters = None
if param in CARS:
  objects = app.models.Car.objects
  filters = Q(tire=param)
elif param in PLANES:
  objects = app.models.Plane.objects
  filters = Q(wing=param)

# Now filter by location.
if location == 'France':
  filters = filters & Q(quay=location)
elif location == 'England':
  filters = filters & Q(harbor=location)

# Finally, generate the actual queryset
queryset = objects.filter(filters)
  • In case the if or elif is not passed, the filters variable will be None and then you receive a TypeError: unsupported operand type(s) for &: 'NoneType' and 'Q'. I initiated the filters with filters = Q() – cwhisperer Apr 17 at 7:02
0

If requires a and b then

and_query_set = Model.objects.filter(a=a, b=b)

if requires a as well as b then

chaied_query_set = Model.objects.filter(a=a).filter(b=b)

Official Documents: https://docs.djangoproject.com/en/dev/topics/db/queries/#spanning-multi-valued-relationships

Related Post: Chaining multiple filter() in Django, is this a bug?

-3

There is a difference when you have request to your related object, for example

class Book(models.Model):
    author = models.ForeignKey(Author)
    name = models.ForeignKey(Region)

class Author(models.Model):
    name = models.ForeignKey(Region)

request

Author.objects.filter(book_name='name1',book_name='name2')

returns empty set

and request

Author.objects.filter(book_name='name1').filter(book_name='name2')

returns authors that have books with both 'name1' and 'name2'

for details look at https://docs.djangoproject.com/en/dev/topics/db/queries/#s-spanning-multi-valued-relationships

  • 5
    Author.objects.filter(book_name='name1',book_name='name2') is not even valid python, it would be SyntaxError: keyword argument repeated – wim Mar 12 '14 at 17:03
  • 1
    Where is book_name defined exactly? Do you mean book_set__name? – DylanYoung Mar 10 '17 at 13:34

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