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- =================
- Query Expressions
- =================
- .. currentmodule:: django.db.models
- Query expressions describe a value or a computation that can be used as part of
- an update, create, filter, order by, annotation, or aggregate. When an
- expression outputs a boolean value, it may be used directly in filters. There
- are a number of built-in expressions (documented below) that can be used to
- help you write queries. Expressions can be combined, or in some cases nested,
- to form more complex computations.
- Supported arithmetic
- ====================
- Django supports negation, addition, subtraction, multiplication, division,
- modulo arithmetic, and the power operator on query expressions, using Python
- constants, variables, and even other expressions.
- .. _output-field:
- Output field
- ============
- Many of the expressions documented in this section support an optional
- ``output_field`` parameter. If given, Django will load the value into that
- field after retrieving it from the database.
- ``output_field`` takes a model field instance, like ``IntegerField()`` or
- ``BooleanField()``. Usually, the field doesn't need any arguments, like
- ``max_length``, since field arguments relate to data validation which will not
- be performed on the expression's output value.
- ``output_field`` is only required when Django is unable to automatically
- determine the result's field type, such as complex expressions that mix field
- types. For example, adding a ``DecimalField()`` and a ``FloatField()`` requires
- an output field, like ``output_field=FloatField()``.
- Some examples
- =============
- .. code-block:: pycon
- >>> from django.db.models import Count, F, Value
- >>> from django.db.models.functions import Length, Upper
- >>> from django.db.models.lookups import GreaterThan
- # Find companies that have more employees than chairs.
- >>> Company.objects.filter(num_employees__gt=F("num_chairs"))
- # Find companies that have at least twice as many employees
- # as chairs. Both the querysets below are equivalent.
- >>> Company.objects.filter(num_employees__gt=F("num_chairs") * 2)
- >>> Company.objects.filter(num_employees__gt=F("num_chairs") + F("num_chairs"))
- # How many chairs are needed for each company to seat all employees?
- >>> company = (
- ... Company.objects.filter(num_employees__gt=F("num_chairs"))
- ... .annotate(chairs_needed=F("num_employees") - F("num_chairs"))
- ... .first()
- ... )
- >>> company.num_employees
- 120
- >>> company.num_chairs
- 50
- >>> company.chairs_needed
- 70
- # Create a new company using expressions.
- >>> company = Company.objects.create(name="Google", ticker=Upper(Value("goog")))
- # Be sure to refresh it if you need to access the field.
- >>> company.refresh_from_db()
- >>> company.ticker
- 'GOOG'
- # Annotate models with an aggregated value. Both forms
- # below are equivalent.
- >>> Company.objects.annotate(num_products=Count("products"))
- >>> Company.objects.annotate(num_products=Count(F("products")))
- # Aggregates can contain complex computations also
- >>> Company.objects.annotate(num_offerings=Count(F("products") + F("services")))
- # Expressions can also be used in order_by(), either directly
- >>> Company.objects.order_by(Length("name").asc())
- >>> Company.objects.order_by(Length("name").desc())
- # or using the double underscore lookup syntax.
- >>> from django.db.models import CharField
- >>> from django.db.models.functions import Length
- >>> CharField.register_lookup(Length)
- >>> Company.objects.order_by("name__length")
- # Boolean expression can be used directly in filters.
- >>> from django.db.models import Exists, OuterRef
- >>> Company.objects.filter(
- ... Exists(Employee.objects.filter(company=OuterRef("pk"), salary__gt=10))
- ... )
- # Lookup expressions can also be used directly in filters
- >>> Company.objects.filter(GreaterThan(F("num_employees"), F("num_chairs")))
- # or annotations.
- >>> Company.objects.annotate(
- ... need_chairs=GreaterThan(F("num_employees"), F("num_chairs")),
- ... )
- Built-in Expressions
- ====================
- .. note::
- These expressions are defined in ``django.db.models.expressions`` and
- ``django.db.models.aggregates``, but for convenience they're available and
- usually imported from :mod:`django.db.models`.
- ``F()`` expressions
- -------------------
- .. class:: F
- An ``F()`` object represents the value of a model field, transformed value of a
- model field, or annotated column. It makes it possible to refer to model field
- values and perform database operations using them without actually having to
- pull them out of the database into Python memory.
- Instead, Django uses the ``F()`` object to generate an SQL expression that
- describes the required operation at the database level.
- Let's try this with an example. Normally, one might do something like this::
- # Tintin filed a news story!
- reporter = Reporters.objects.get(name="Tintin")
- reporter.stories_filed += 1
- reporter.save()
- Here, we have pulled the value of ``reporter.stories_filed`` from the database
- into memory and manipulated it using familiar Python operators, and then saved
- the object back to the database. But instead we could also have done::
- from django.db.models import F
- reporter = Reporters.objects.get(name="Tintin")
- reporter.stories_filed = F("stories_filed") + 1
- reporter.save()
- Although ``reporter.stories_filed = F('stories_filed') + 1`` looks like a
- normal Python assignment of value to an instance attribute, in fact it's an SQL
- construct describing an operation on the database.
- When Django encounters an instance of ``F()``, it overrides the standard Python
- operators to create an encapsulated SQL expression; in this case, one which
- instructs the database to increment the database field represented by
- ``reporter.stories_filed``.
- Whatever value is or was on ``reporter.stories_filed``, Python never gets to
- know about it - it is dealt with entirely by the database. All Python does,
- through Django's ``F()`` class, is create the SQL syntax to refer to the field
- and describe the operation.
- To access the new value saved this way, the object must be reloaded::
- reporter = Reporters.objects.get(pk=reporter.pk)
- # Or, more succinctly:
- reporter.refresh_from_db()
- As well as being used in operations on single instances as above, ``F()`` can
- be used on ``QuerySets`` of object instances, with ``update()``. This reduces
- the two queries we were using above - the ``get()`` and the
- :meth:`~Model.save()` - to just one::
- reporter = Reporters.objects.filter(name="Tintin")
- reporter.update(stories_filed=F("stories_filed") + 1)
- We can also use :meth:`~django.db.models.query.QuerySet.update()` to increment
- the field value on multiple objects - which could be very much faster than
- pulling them all into Python from the database, looping over them, incrementing
- the field value of each one, and saving each one back to the database::
- Reporter.objects.update(stories_filed=F("stories_filed") + 1)
- ``F()`` therefore can offer performance advantages by:
- * getting the database, rather than Python, to do work
- * reducing the number of queries some operations require
- .. _slicing-using-f:
- Slicing ``F()`` expressions
- ~~~~~~~~~~~~~~~~~~~~~~~~~~~
- For string-based fields, text-based fields, and
- :class:`~django.contrib.postgres.fields.ArrayField`, you can use Python's
- array-slicing syntax. The indices are 0-based and the ``step`` argument to
- ``slice`` is not supported. For example:
- .. code-block:: pycon
- >>> # Replacing a name with a substring of itself.
- >>> writer = Writers.objects.get(name="Priyansh")
- >>> writer.name = F("name")[1:5]
- >>> writer.save()
- >>> writer.refresh_from_db()
- >>> writer.name
- 'riya'
- .. _avoiding-race-conditions-using-f:
- Avoiding race conditions using ``F()``
- ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
- Another useful benefit of ``F()`` is that having the database - rather than
- Python - update a field's value avoids a *race condition*.
- If two Python threads execute the code in the first example above, one thread
- could retrieve, increment, and save a field's value after the other has
- retrieved it from the database. The value that the second thread saves will be
- based on the original value; the work of the first thread will be lost.
- If the database is responsible for updating the field, the process is more
- robust: it will only ever update the field based on the value of the field in
- the database when the :meth:`~Model.save()` or ``update()`` is executed, rather
- than based on its value when the instance was retrieved.
- ``F()`` assignments persist after ``Model.save()``
- ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
- ``F()`` objects assigned to model fields persist after saving the model
- instance and will be applied on each :meth:`~Model.save()`. For example::
- reporter = Reporters.objects.get(name="Tintin")
- reporter.stories_filed = F("stories_filed") + 1
- reporter.save()
- reporter.name = "Tintin Jr."
- reporter.save()
- ``stories_filed`` will be updated twice in this case. If it's initially ``1``,
- the final value will be ``3``. This persistence can be avoided by reloading the
- model object after saving it, for example, by using
- :meth:`~Model.refresh_from_db()`.
- Using ``F()`` in filters
- ~~~~~~~~~~~~~~~~~~~~~~~~
- ``F()`` is also very useful in ``QuerySet`` filters, where they make it
- possible to filter a set of objects against criteria based on their field
- values, rather than on Python values.
- This is documented in :ref:`using F() expressions in queries
- <using-f-expressions-in-filters>`.
- .. _using-f-with-annotations:
- Using ``F()`` with annotations
- ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
- ``F()`` can be used to create dynamic fields on your models by combining
- different fields with arithmetic::
- company = Company.objects.annotate(chairs_needed=F("num_employees") - F("num_chairs"))
- If the fields that you're combining are of different types you'll need to tell
- Django what kind of field will be returned. Most expressions support
- :ref:`output_field<output-field>` for this case, but since ``F()`` does not, you
- will need to wrap the expression with :class:`ExpressionWrapper`::
- from django.db.models import DateTimeField, ExpressionWrapper, F
- Ticket.objects.annotate(
- expires=ExpressionWrapper(
- F("active_at") + F("duration"), output_field=DateTimeField()
- )
- )
- When referencing relational fields such as ``ForeignKey``, ``F()`` returns the
- primary key value rather than a model instance:
- .. code-block:: pycon
- >>> car = Company.objects.annotate(built_by=F("manufacturer"))[0]
- >>> car.manufacturer
- <Manufacturer: Toyota>
- >>> car.built_by
- 3
- .. _using-f-to-sort-null-values:
- Using ``F()`` to sort null values
- ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
- Use ``F()`` and the ``nulls_first`` or ``nulls_last`` keyword argument to
- :meth:`.Expression.asc` or :meth:`~.Expression.desc` to control the ordering of
- a field's null values. By default, the ordering depends on your database.
- For example, to sort companies that haven't been contacted (``last_contacted``
- is null) after companies that have been contacted::
- from django.db.models import F
- Company.objects.order_by(F("last_contacted").desc(nulls_last=True))
- Using ``F()`` with logical operations
- ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
- ``F()`` expressions that output ``BooleanField`` can be logically negated with
- the inversion operator ``~F()``. For example, to swap the activation status of
- companies::
- from django.db.models import F
- Company.objects.update(is_active=~F("is_active"))
- .. _func-expressions:
- ``Func()`` expressions
- ----------------------
- ``Func()`` expressions are the base type of all expressions that involve
- database functions like ``COALESCE`` and ``LOWER``, or aggregates like ``SUM``.
- They can be used directly::
- from django.db.models import F, Func
- queryset.annotate(field_lower=Func(F("field"), function="LOWER"))
- or they can be used to build a library of database functions::
- class Lower(Func):
- function = "LOWER"
- queryset.annotate(field_lower=Lower("field"))
- But both cases will result in a queryset where each model is annotated with an
- extra attribute ``field_lower`` produced, roughly, from the following SQL:
- .. code-block:: sql
- SELECT
- ...
- LOWER("db_table"."field") as "field_lower"
- See :doc:`database-functions` for a list of built-in database functions.
- The ``Func`` API is as follows:
- .. class:: Func(*expressions, **extra)
- .. attribute:: function
- A class attribute describing the function that will be generated.
- Specifically, the ``function`` will be interpolated as the ``function``
- placeholder within :attr:`template`. Defaults to ``None``.
- .. attribute:: template
- A class attribute, as a format string, that describes the SQL that is
- generated for this function. Defaults to
- ``'%(function)s(%(expressions)s)'``.
- If you're constructing SQL like ``strftime('%W', 'date')`` and need a
- literal ``%`` character in the query, quadruple it (``%%%%``) in the
- ``template`` attribute because the string is interpolated twice: once
- during the template interpolation in ``as_sql()`` and once in the SQL
- interpolation with the query parameters in the database cursor.
- .. attribute:: arg_joiner
- A class attribute that denotes the character used to join the list of
- ``expressions`` together. Defaults to ``', '``.
- .. attribute:: arity
- A class attribute that denotes the number of arguments the function
- accepts. If this attribute is set and the function is called with a
- different number of expressions, ``TypeError`` will be raised. Defaults
- to ``None``.
- .. method:: as_sql(compiler, connection, function=None, template=None, arg_joiner=None, **extra_context)
- Generates the SQL fragment for the database function. Returns a tuple
- ``(sql, params)``, where ``sql`` is the SQL string, and ``params`` is
- the list or tuple of query parameters.
- The ``as_vendor()`` methods should use the ``function``, ``template``,
- ``arg_joiner``, and any other ``**extra_context`` parameters to
- customize the SQL as needed. For example:
- .. code-block:: python
- :caption: ``django/db/models/functions.py``
- class ConcatPair(Func):
- ...
- function = "CONCAT"
- ...
- def as_mysql(self, compiler, connection, **extra_context):
- return super().as_sql(
- compiler,
- connection,
- function="CONCAT_WS",
- template="%(function)s('', %(expressions)s)",
- **extra_context
- )
- To avoid an SQL injection vulnerability, ``extra_context`` :ref:`must
- not contain untrusted user input <avoiding-sql-injection-in-query-expressions>`
- as these values are interpolated into the SQL string rather than passed
- as query parameters, where the database driver would escape them.
- The ``*expressions`` argument is a list of positional expressions that the
- function will be applied to. The expressions will be converted to strings,
- joined together with ``arg_joiner``, and then interpolated into the ``template``
- as the ``expressions`` placeholder.
- Positional arguments can be expressions or Python values. Strings are
- assumed to be column references and will be wrapped in ``F()`` expressions
- while other values will be wrapped in ``Value()`` expressions.
- The ``**extra`` kwargs are ``key=value`` pairs that can be interpolated
- into the ``template`` attribute. To avoid an SQL injection vulnerability,
- ``extra`` :ref:`must not contain untrusted user input
- <avoiding-sql-injection-in-query-expressions>` as these values are interpolated
- into the SQL string rather than passed as query parameters, where the database
- driver would escape them.
- The ``function``, ``template``, and ``arg_joiner`` keywords can be used to
- replace the attributes of the same name without having to define your own
- class. :ref:`output_field<output-field>` can be used to define the expected
- return type.
- ``Aggregate()`` expressions
- ---------------------------
- An aggregate expression is a special case of a :ref:`Func() expression
- <func-expressions>` that informs the query that a ``GROUP BY`` clause
- is required. All of the :ref:`aggregate functions <aggregation-functions>`,
- like ``Sum()`` and ``Count()``, inherit from ``Aggregate()``.
- Since ``Aggregate``\s are expressions and wrap expressions, you can represent
- some complex computations::
- from django.db.models import Count
- Company.objects.annotate(
- managers_required=(Count("num_employees") / 4) + Count("num_managers")
- )
- The ``Aggregate`` API is as follows:
- .. class:: Aggregate(*expressions, output_field=None, distinct=False, filter=None, default=None, **extra)
- .. attribute:: template
- A class attribute, as a format string, that describes the SQL that is
- generated for this aggregate. Defaults to
- ``'%(function)s(%(distinct)s%(expressions)s)'``.
- .. attribute:: function
- A class attribute describing the aggregate function that will be
- generated. Specifically, the ``function`` will be interpolated as the
- ``function`` placeholder within :attr:`template`. Defaults to ``None``.
- .. attribute:: window_compatible
- Defaults to ``True`` since most aggregate functions can be used as the
- source expression in :class:`~django.db.models.expressions.Window`.
- .. attribute:: allow_distinct
- A class attribute determining whether or not this aggregate function
- allows passing a ``distinct`` keyword argument. If set to ``False``
- (default), ``TypeError`` is raised if ``distinct=True`` is passed.
- .. attribute:: empty_result_set_value
- Defaults to ``None`` since most aggregate functions result in ``NULL``
- when applied to an empty result set.
- The ``expressions`` positional arguments can include expressions, transforms of
- the model field, or the names of model fields. They will be converted to a
- string and used as the ``expressions`` placeholder within the ``template``.
- The ``distinct`` argument determines whether or not the aggregate function
- should be invoked for each distinct value of ``expressions`` (or set of
- values, for multiple ``expressions``). The argument is only supported on
- aggregates that have :attr:`~Aggregate.allow_distinct` set to ``True``.
- The ``filter`` argument takes a :class:`Q object <django.db.models.Q>` that's
- used to filter the rows that are aggregated. See :ref:`conditional-aggregation`
- and :ref:`filtering-on-annotations` for example usage.
- The ``default`` argument takes a value that will be passed along with the
- aggregate to :class:`~django.db.models.functions.Coalesce`. This is useful for
- specifying a value to be returned other than ``None`` when the queryset (or
- grouping) contains no entries.
- The ``**extra`` kwargs are ``key=value`` pairs that can be interpolated
- into the ``template`` attribute.
- Creating your own Aggregate Functions
- -------------------------------------
- You can create your own aggregate functions, too. At a minimum, you need to
- define ``function``, but you can also completely customize the SQL that is
- generated. Here's a brief example::
- from django.db.models import Aggregate
- class Sum(Aggregate):
- # Supports SUM(ALL field).
- function = "SUM"
- template = "%(function)s(%(all_values)s%(expressions)s)"
- allow_distinct = False
- arity = 1
- def __init__(self, expression, all_values=False, **extra):
- super().__init__(expression, all_values="ALL " if all_values else "", **extra)
- ``Value()`` expressions
- -----------------------
- .. class:: Value(value, output_field=None)
- A ``Value()`` object represents the smallest possible component of an
- expression: a simple value. When you need to represent the value of an integer,
- boolean, or string within an expression, you can wrap that value within a
- ``Value()``.
- You will rarely need to use ``Value()`` directly. When you write the expression
- ``F('field') + 1``, Django implicitly wraps the ``1`` in a ``Value()``,
- allowing simple values to be used in more complex expressions. You will need to
- use ``Value()`` when you want to pass a string to an expression. Most
- expressions interpret a string argument as the name of a field, like
- ``Lower('name')``.
- The ``value`` argument describes the value to be included in the expression,
- such as ``1``, ``True``, or ``None``. Django knows how to convert these Python
- values into their corresponding database type.
- If no :ref:`output_field<output-field>` is specified, it will be inferred from
- the type of the provided ``value`` for many common types. For example, passing
- an instance of :py:class:`datetime.datetime` as ``value`` defaults
- ``output_field`` to :class:`~django.db.models.DateTimeField`.
- ``ExpressionWrapper()`` expressions
- -----------------------------------
- .. class:: ExpressionWrapper(expression, output_field)
- ``ExpressionWrapper`` surrounds another expression and provides access to
- properties, such as :ref:`output_field<output-field>`, that may not be
- available on other expressions. ``ExpressionWrapper`` is necessary when using
- arithmetic on ``F()`` expressions with different types as described in
- :ref:`using-f-with-annotations`.
- Conditional expressions
- -----------------------
- Conditional expressions allow you to use :keyword:`if` ... :keyword:`elif` ...
- :keyword:`else` logic in queries. Django natively supports SQL ``CASE``
- expressions. For more details see :doc:`conditional-expressions`.
- ``Subquery()`` expressions
- --------------------------
- .. class:: Subquery(queryset, output_field=None)
- You can add an explicit subquery to a ``QuerySet`` using the ``Subquery``
- expression.
- For example, to annotate each post with the email address of the author of the
- newest comment on that post:
- .. code-block:: pycon
- >>> from django.db.models import OuterRef, Subquery
- >>> newest = Comment.objects.filter(post=OuterRef("pk")).order_by("-created_at")
- >>> Post.objects.annotate(newest_commenter_email=Subquery(newest.values("email")[:1]))
- On PostgreSQL, the SQL looks like:
- .. code-block:: sql
- SELECT "post"."id", (
- SELECT U0."email"
- FROM "comment" U0
- WHERE U0."post_id" = ("post"."id")
- ORDER BY U0."created_at" DESC LIMIT 1
- ) AS "newest_commenter_email" FROM "post"
- .. note::
- The examples in this section are designed to show how to force
- Django to execute a subquery. In some cases it may be possible to
- write an equivalent queryset that performs the same task more
- clearly or efficiently.
- Referencing columns from the outer queryset
- ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
- .. class:: OuterRef(field)
- Use ``OuterRef`` when a queryset in a ``Subquery`` needs to refer to a field
- from the outer query or its transform. It acts like an :class:`F` expression
- except that the check to see if it refers to a valid field isn't made until the
- outer queryset is resolved.
- Instances of ``OuterRef`` may be used in conjunction with nested instances
- of ``Subquery`` to refer to a containing queryset that isn't the immediate
- parent. For example, this queryset would need to be within a nested pair of
- ``Subquery`` instances to resolve correctly:
- .. code-block:: pycon
- >>> Book.objects.filter(author=OuterRef(OuterRef("pk")))
- Limiting a subquery to a single column
- ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
- There are times when a single column must be returned from a ``Subquery``, for
- instance, to use a ``Subquery`` as the target of an ``__in`` lookup. To return
- all comments for posts published within the last day:
- .. code-block:: pycon
- >>> from datetime import timedelta
- >>> from django.utils import timezone
- >>> one_day_ago = timezone.now() - timedelta(days=1)
- >>> posts = Post.objects.filter(published_at__gte=one_day_ago)
- >>> Comment.objects.filter(post__in=Subquery(posts.values("pk")))
- In this case, the subquery must use :meth:`~.QuerySet.values`
- to return only a single column: the primary key of the post.
- Limiting the subquery to a single row
- ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
- To prevent a subquery from returning multiple rows, a slice (``[:1]``) of the
- queryset is used:
- .. code-block:: pycon
- >>> subquery = Subquery(newest.values("email")[:1])
- >>> Post.objects.annotate(newest_commenter_email=subquery)
- In this case, the subquery must only return a single column *and* a single
- row: the email address of the most recently created comment.
- (Using :meth:`~.QuerySet.get` instead of a slice would fail because the
- ``OuterRef`` cannot be resolved until the queryset is used within a
- ``Subquery``.)
- ``Exists()`` subqueries
- ~~~~~~~~~~~~~~~~~~~~~~~
- .. class:: Exists(queryset)
- ``Exists`` is a ``Subquery`` subclass that uses an SQL ``EXISTS`` statement. In
- many cases it will perform better than a subquery since the database is able to
- stop evaluation of the subquery when a first matching row is found.
- For example, to annotate each post with whether or not it has a comment from
- within the last day:
- .. code-block:: pycon
- >>> from django.db.models import Exists, OuterRef
- >>> from datetime import timedelta
- >>> from django.utils import timezone
- >>> one_day_ago = timezone.now() - timedelta(days=1)
- >>> recent_comments = Comment.objects.filter(
- ... post=OuterRef("pk"),
- ... created_at__gte=one_day_ago,
- ... )
- >>> Post.objects.annotate(recent_comment=Exists(recent_comments))
- On PostgreSQL, the SQL looks like:
- .. code-block:: sql
- SELECT "post"."id", "post"."published_at", EXISTS(
- SELECT (1) as "a"
- FROM "comment" U0
- WHERE (
- U0."created_at" >= YYYY-MM-DD HH:MM:SS AND
- U0."post_id" = "post"."id"
- )
- LIMIT 1
- ) AS "recent_comment" FROM "post"
- It's unnecessary to force ``Exists`` to refer to a single column, since the
- columns are discarded and a boolean result is returned. Similarly, since
- ordering is unimportant within an SQL ``EXISTS`` subquery and would only
- degrade performance, it's automatically removed.
- You can query using ``NOT EXISTS`` with ``~Exists()``.
- Filtering on a ``Subquery()`` or ``Exists()`` expressions
- ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
- ``Subquery()`` that returns a boolean value and ``Exists()`` may be used as a
- ``condition`` in :class:`~django.db.models.expressions.When` expressions, or to
- directly filter a queryset:
- .. code-block:: pycon
- >>> recent_comments = Comment.objects.filter(...) # From above
- >>> Post.objects.filter(Exists(recent_comments))
- This will ensure that the subquery will not be added to the ``SELECT`` columns,
- which may result in a better performance.
- Using aggregates within a ``Subquery`` expression
- ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
- Aggregates may be used within a ``Subquery``, but they require a specific
- combination of :meth:`~.QuerySet.filter`, :meth:`~.QuerySet.values`, and
- :meth:`~.QuerySet.annotate` to get the subquery grouping correct.
- Assuming both models have a ``length`` field, to find posts where the post
- length is greater than the total length of all combined comments:
- .. code-block:: pycon
- >>> from django.db.models import OuterRef, Subquery, Sum
- >>> comments = Comment.objects.filter(post=OuterRef("pk")).order_by().values("post")
- >>> total_comments = comments.annotate(total=Sum("length")).values("total")
- >>> Post.objects.filter(length__gt=Subquery(total_comments))
- The initial ``filter(...)`` limits the subquery to the relevant parameters.
- ``order_by()`` removes the default :attr:`~django.db.models.Options.ordering`
- (if any) on the ``Comment`` model. ``values('post')`` aggregates comments by
- ``Post``. Finally, ``annotate(...)`` performs the aggregation. The order in
- which these queryset methods are applied is important. In this case, since the
- subquery must be limited to a single column, ``values('total')`` is required.
- This is the only way to perform an aggregation within a ``Subquery``, as
- using :meth:`~.QuerySet.aggregate` attempts to evaluate the queryset (and if
- there is an ``OuterRef``, this will not be possible to resolve).
- Raw SQL expressions
- -------------------
- .. currentmodule:: django.db.models.expressions
- .. class:: RawSQL(sql, params, output_field=None)
- Sometimes database expressions can't easily express a complex ``WHERE`` clause.
- In these edge cases, use the ``RawSQL`` expression. For example:
- .. code-block:: pycon
- >>> from django.db.models.expressions import RawSQL
- >>> queryset.annotate(val=RawSQL("select col from sometable where othercol = %s", (param,)))
- These extra lookups may not be portable to different database engines (because
- you're explicitly writing SQL code) and violate the DRY principle, so you
- should avoid them if possible.
- ``RawSQL`` expressions can also be used as the target of ``__in`` filters:
- .. code-block:: pycon
- >>> queryset.filter(id__in=RawSQL("select id from sometable where col = %s", (param,)))
- .. warning::
- To protect against `SQL injection attacks
- <https://en.wikipedia.org/wiki/SQL_injection>`_, you must escape any
- parameters that the user can control by using ``params``. ``params`` is a
- required argument to force you to acknowledge that you're not interpolating
- your SQL with user-provided data.
- You also must not quote placeholders in the SQL string. This example is
- vulnerable to SQL injection because of the quotes around ``%s``::
- RawSQL("select col from sometable where othercol = '%s'") # unsafe!
- You can read more about how Django's :ref:`SQL injection protection
- <sql-injection-protection>` works.
- Window functions
- ----------------
- Window functions provide a way to apply functions on partitions. Unlike a
- normal aggregation function which computes a final result for each set defined
- by the group by, window functions operate on :ref:`frames <window-frames>` and
- partitions, and compute the result for each row.
- You can specify multiple windows in the same query which in Django ORM would be
- equivalent to including multiple expressions in a :doc:`QuerySet.annotate()
- </topics/db/aggregation>` call. The ORM doesn't make use of named windows,
- instead they are part of the selected columns.
- .. class:: Window(expression, partition_by=None, order_by=None, frame=None, output_field=None)
- .. attribute:: template
- Defaults to ``%(expression)s OVER (%(window)s)``. If only the
- ``expression`` argument is provided, the window clause will be blank.
- The ``Window`` class is the main expression for an ``OVER`` clause.
- The ``expression`` argument is either a :ref:`window function
- <window-functions>`, an :ref:`aggregate function <aggregation-functions>`, or
- an expression that's compatible in a window clause.
- The ``partition_by`` argument accepts an expression or a sequence of
- expressions (column names should be wrapped in an ``F``-object) that control
- the partitioning of the rows. Partitioning narrows which rows are used to
- compute the result set.
- The :ref:`output_field<output-field>` is specified either as an argument or by
- the expression.
- The ``order_by`` argument accepts an expression on which you can call
- :meth:`~django.db.models.Expression.asc` and
- :meth:`~django.db.models.Expression.desc`, a string of a field name (with an
- optional ``"-"`` prefix which indicates descending order), or a tuple or list
- of strings and/or expressions. The ordering controls the order in which the
- expression is applied. For example, if you sum over the rows in a partition,
- the first result is the value of the first row, the second is the sum of first
- and second row.
- The ``frame`` parameter specifies which other rows that should be used in the
- computation. See :ref:`window-frames` for details.
- For example, to annotate each movie with the average rating for the movies by
- the same studio in the same genre and release year:
- .. code-block:: pycon
- >>> from django.db.models import Avg, F, Window
- >>> Movie.objects.annotate(
- ... avg_rating=Window(
- ... expression=Avg("rating"),
- ... partition_by=[F("studio"), F("genre")],
- ... order_by="released__year",
- ... ),
- ... )
- This allows you to check if a movie is rated better or worse than its peers.
- You may want to apply multiple expressions over the same window, i.e., the
- same partition and frame. For example, you could modify the previous example
- to also include the best and worst rating in each movie's group (same studio,
- genre, and release year) by using three window functions in the same query. The
- partition and ordering from the previous example is extracted into a dictionary
- to reduce repetition:
- .. code-block:: pycon
- >>> from django.db.models import Avg, F, Max, Min, Window
- >>> window = {
- ... "partition_by": [F("studio"), F("genre")],
- ... "order_by": "released__year",
- ... }
- >>> Movie.objects.annotate(
- ... avg_rating=Window(
- ... expression=Avg("rating"),
- ... **window,
- ... ),
- ... best=Window(
- ... expression=Max("rating"),
- ... **window,
- ... ),
- ... worst=Window(
- ... expression=Min("rating"),
- ... **window,
- ... ),
- ... )
- Filtering against window functions is supported as long as lookups are not
- disjunctive (not using ``OR`` or ``XOR`` as a connector) and against a queryset
- performing aggregation.
- For example, a query that relies on aggregation and has an ``OR``-ed filter
- against a window function and a field is not supported. Applying combined
- predicates post-aggregation could cause rows that would normally be excluded
- from groups to be included:
- .. code-block:: pycon
- >>> qs = Movie.objects.annotate(
- ... category_rank=Window(Rank(), partition_by="category", order_by="-rating"),
- ... scenes_count=Count("actors"),
- ... ).filter(Q(category_rank__lte=3) | Q(title__contains="Batman"))
- >>> list(qs)
- NotImplementedError: Heterogeneous disjunctive predicates against window functions
- are not implemented when performing conditional aggregation.
- Among Django's built-in database backends, MySQL, PostgreSQL, and Oracle
- support window expressions. Support for different window expression features
- varies among the different databases. For example, the options in
- :meth:`~django.db.models.Expression.asc` and
- :meth:`~django.db.models.Expression.desc` may not be supported. Consult the
- documentation for your database as needed.
- .. _window-frames:
- Frames
- ~~~~~~
- For a window frame, you can choose either a range-based sequence of rows or an
- ordinary sequence of rows.
- .. class:: ValueRange(start=None, end=None, exclusion=None)
- .. attribute:: frame_type
- This attribute is set to ``'RANGE'``.
- PostgreSQL has limited support for ``ValueRange`` and only supports use of
- the standard start and end points, such as ``CURRENT ROW`` and ``UNBOUNDED
- FOLLOWING``.
- .. class:: RowRange(start=None, end=None, exclusion=None)
- .. attribute:: frame_type
- This attribute is set to ``'ROWS'``.
- Both classes return SQL with the template:
- .. code-block:: sql
- %(frame_type)s BETWEEN %(start)s AND %(end)s
- .. class:: WindowFrameExclusion
- .. attribute:: CURRENT_ROW
- .. attribute:: GROUP
- .. attribute:: TIES
- .. attribute:: NO_OTHERS
- The ``exclusion`` argument allows excluding rows
- (:attr:`~WindowFrameExclusion.CURRENT_ROW`), groups
- (:attr:`~WindowFrameExclusion.GROUP`), and ties
- (:attr:`~WindowFrameExclusion.TIES`) from the window frames on supported
- databases:
- .. code-block:: sql
- %(frame_type)s BETWEEN %(start)s AND %(end)s EXCLUDE %(exclusion)s
- Frames narrow the rows that are used for computing the result. They shift from
- some start point to some specified end point. Frames can be used with and
- without partitions, but it's often a good idea to specify an ordering of the
- window to ensure a deterministic result. In a frame, a peer in a frame is a row
- with an equivalent value, or all rows if an ordering clause isn't present.
- The default starting point for a frame is ``UNBOUNDED PRECEDING`` which is the
- first row of the partition. The end point is always explicitly included in the
- SQL generated by the ORM and is by default ``UNBOUNDED FOLLOWING``. The default
- frame includes all rows from the partition to the last row in the set.
- The accepted values for the ``start`` and ``end`` arguments are ``None``, an
- integer, or zero. A negative integer for ``start`` results in ``N PRECEDING``,
- while ``None`` yields ``UNBOUNDED PRECEDING``. In ``ROWS`` mode, a positive
- integer can be used for ``start`` resulting in ``N FOLLOWING``. Positive
- integers are accepted for ``end`` and results in ``N FOLLOWING``. In ``ROWS``
- mode, a negative integer can be used for ``end`` resulting in ``N PRECEDING``.
- For both ``start`` and ``end``, zero will return ``CURRENT ROW``.
- There's a difference in what ``CURRENT ROW`` includes. When specified in
- ``ROWS`` mode, the frame starts or ends with the current row. When specified in
- ``RANGE`` mode, the frame starts or ends at the first or last peer according to
- the ordering clause. Thus, ``RANGE CURRENT ROW`` evaluates the expression for
- rows which have the same value specified by the ordering. Because the template
- includes both the ``start`` and ``end`` points, this may be expressed with::
- ValueRange(start=0, end=0)
- If a movie's "peers" are described as movies released by the same studio in the
- same genre in the same year, this ``RowRange`` example annotates each movie
- with the average rating of a movie's two prior and two following peers:
- .. code-block:: pycon
- >>> from django.db.models import Avg, F, RowRange, Window
- >>> Movie.objects.annotate(
- ... avg_rating=Window(
- ... expression=Avg("rating"),
- ... partition_by=[F("studio"), F("genre")],
- ... order_by="released__year",
- ... frame=RowRange(start=-2, end=2),
- ... ),
- ... )
- If the database supports it, you can specify the start and end points based on
- values of an expression in the partition. If the ``released`` field of the
- ``Movie`` model stores the release month of each movie, this ``ValueRange``
- example annotates each movie with the average rating of a movie's peers
- released between twelve months before and twelve months after each movie:
- .. code-block:: pycon
- >>> from django.db.models import Avg, F, ValueRange, Window
- >>> Movie.objects.annotate(
- ... avg_rating=Window(
- ... expression=Avg("rating"),
- ... partition_by=[F("studio"), F("genre")],
- ... order_by="released__year",
- ... frame=ValueRange(start=-12, end=12),
- ... ),
- ... )
- .. currentmodule:: django.db.models
- Technical Information
- =====================
- Below you'll find technical implementation details that may be useful to
- library authors. The technical API and examples below will help with
- creating generic query expressions that can extend the built-in functionality
- that Django provides.
- Expression API
- --------------
- Query expressions implement the :ref:`query expression API <query-expression>`,
- but also expose a number of extra methods and attributes listed below. All
- query expressions must inherit from ``Expression()`` or a relevant
- subclass.
- When a query expression wraps another expression, it is responsible for
- calling the appropriate methods on the wrapped expression.
- .. class:: Expression
- .. attribute:: allowed_default
- Tells Django that this expression can be used in
- :attr:`Field.db_default`. Defaults to ``False``.
- .. attribute:: constraint_validation_compatible
- Tells Django that this expression can be used during a constraint
- validation. Expressions with ``constraint_validation_compatible`` set
- to ``False`` must have only one source expression. Defaults to
- ``True``.
- .. attribute:: contains_aggregate
- Tells Django that this expression contains an aggregate and that a
- ``GROUP BY`` clause needs to be added to the query.
- .. attribute:: contains_over_clause
- Tells Django that this expression contains a
- :class:`~django.db.models.expressions.Window` expression. It's used,
- for example, to disallow window function expressions in queries that
- modify data.
- .. attribute:: filterable
- Tells Django that this expression can be referenced in
- :meth:`.QuerySet.filter`. Defaults to ``True``.
- .. attribute:: window_compatible
- Tells Django that this expression can be used as the source expression
- in :class:`~django.db.models.expressions.Window`. Defaults to
- ``False``.
- .. attribute:: empty_result_set_value
- Tells Django which value should be returned when the expression is used
- to apply a function over an empty result set. Defaults to
- :py:data:`NotImplemented` which forces the expression to be computed on
- the database.
- .. attribute:: set_returning
- .. versionadded:: 5.2
- Tells Django that this expression contains a set-returning function,
- enforcing subquery evaluation. It's used, for example, to allow some
- Postgres set-returning functions (e.g. ``JSONB_PATH_QUERY``,
- ``UNNEST``, etc.) to skip optimization and be properly evaluated when
- annotations spawn rows themselves. Defaults to ``False``.
- .. attribute:: allows_composite_expressions
- .. versionadded:: 5.2
- Tells Django that this expression allows composite expressions, for
- example, to support :ref:`composite primary keys
- <cpk-and-database-functions>`. Defaults to ``False``.
- .. method:: resolve_expression(query=None, allow_joins=True, reuse=None, summarize=False, for_save=False)
- Provides the chance to do any preprocessing or validation of
- the expression before it's added to the query. ``resolve_expression()``
- must also be called on any nested expressions. A ``copy()`` of ``self``
- should be returned with any necessary transformations.
- ``query`` is the backend query implementation.
- ``allow_joins`` is a boolean that allows or denies the use of
- joins in the query.
- ``reuse`` is a set of reusable joins for multi-join scenarios.
- ``summarize`` is a boolean that, when ``True``, signals that the
- query being computed is a terminal aggregate query.
- ``for_save`` is a boolean that, when ``True``, signals that the query
- being executed is performing a create or update.
- .. method:: get_source_expressions()
- Returns an ordered list of inner expressions. For example:
- .. code-block:: pycon
- >>> Sum(F("foo")).get_source_expressions()
- [F('foo')]
- .. method:: set_source_expressions(expressions)
- Takes a list of expressions and stores them such that
- ``get_source_expressions()`` can return them.
- .. method:: relabeled_clone(change_map)
- Returns a clone (copy) of ``self``, with any column aliases relabeled.
- Column aliases are renamed when subqueries are created.
- ``relabeled_clone()`` should also be called on any nested expressions
- and assigned to the clone.
- ``change_map`` is a dictionary mapping old aliases to new aliases.
- Example::
- def relabeled_clone(self, change_map):
- clone = copy.copy(self)
- clone.expression = self.expression.relabeled_clone(change_map)
- return clone
- .. method:: convert_value(value, expression, connection)
- A hook allowing the expression to coerce ``value`` into a more
- appropriate type.
- ``expression`` is the same as ``self``.
- .. method:: get_group_by_cols()
- Responsible for returning the list of columns references by
- this expression. ``get_group_by_cols()`` should be called on any
- nested expressions. ``F()`` objects, in particular, hold a reference
- to a column.
- .. method:: asc(nulls_first=None, nulls_last=None)
- Returns the expression ready to be sorted in ascending order.
- ``nulls_first`` and ``nulls_last`` define how null values are sorted.
- See :ref:`using-f-to-sort-null-values` for example usage.
- .. method:: desc(nulls_first=None, nulls_last=None)
- Returns the expression ready to be sorted in descending order.
- ``nulls_first`` and ``nulls_last`` define how null values are sorted.
- See :ref:`using-f-to-sort-null-values` for example usage.
- .. method:: reverse_ordering()
- Returns ``self`` with any modifications required to reverse the sort
- order within an ``order_by`` call. As an example, an expression
- implementing ``NULLS LAST`` would change its value to be
- ``NULLS FIRST``. Modifications are only required for expressions that
- implement sort order like ``OrderBy``. This method is called when
- :meth:`~django.db.models.query.QuerySet.reverse()` is called on a
- queryset.
- Writing your own Query Expressions
- ----------------------------------
- You can write your own query expression classes that use, and can integrate
- with, other query expressions. Let's step through an example by writing an
- implementation of the ``COALESCE`` SQL function, without using the built-in
- :ref:`Func() expressions <func-expressions>`.
- The ``COALESCE`` SQL function is defined as taking a list of columns or
- values. It will return the first column or value that isn't ``NULL``.
- We'll start by defining the template to be used for SQL generation and
- an ``__init__()`` method to set some attributes::
- import copy
- from django.db.models import Expression
- class Coalesce(Expression):
- template = "COALESCE( %(expressions)s )"
- def __init__(self, expressions, output_field):
- super().__init__(output_field=output_field)
- if len(expressions) < 2:
- raise ValueError("expressions must have at least 2 elements")
- for expression in expressions:
- if not hasattr(expression, "resolve_expression"):
- raise TypeError("%r is not an Expression" % expression)
- self.expressions = expressions
- We do some basic validation on the parameters, including requiring at least 2
- columns or values, and ensuring they are expressions. We are requiring
- :ref:`output_field<output-field>` here so that Django knows what kind of model
- field to assign the eventual result to.
- Now we implement the preprocessing and validation. Since we do not have
- any of our own validation at this point, we delegate to the nested
- expressions::
- def resolve_expression(
- self, query=None, allow_joins=True, reuse=None, summarize=False, for_save=False
- ):
- c = self.copy()
- c.is_summary = summarize
- for pos, expression in enumerate(self.expressions):
- c.expressions[pos] = expression.resolve_expression(
- query, allow_joins, reuse, summarize, for_save
- )
- return c
- Next, we write the method responsible for generating the SQL::
- def as_sql(self, compiler, connection, template=None):
- sql_expressions, sql_params = [], []
- for expression in self.expressions:
- sql, params = compiler.compile(expression)
- sql_expressions.append(sql)
- sql_params.extend(params)
- template = template or self.template
- data = {"expressions": ",".join(sql_expressions)}
- return template % data, sql_params
- def as_oracle(self, compiler, connection):
- """
- Example of vendor specific handling (Oracle in this case).
- Let's make the function name lowercase.
- """
- return self.as_sql(compiler, connection, template="coalesce( %(expressions)s )")
- ``as_sql()`` methods can support custom keyword arguments, allowing
- ``as_vendorname()`` methods to override data used to generate the SQL string.
- Using ``as_sql()`` keyword arguments for customization is preferable to
- mutating ``self`` within ``as_vendorname()`` methods as the latter can lead to
- errors when running on different database backends. If your class relies on
- class attributes to define data, consider allowing overrides in your
- ``as_sql()`` method.
- We generate the SQL for each of the ``expressions`` by using the
- ``compiler.compile()`` method, and join the result together with commas.
- Then the template is filled out with our data and the SQL and parameters
- are returned.
- We've also defined a custom implementation that is specific to the Oracle
- backend. The ``as_oracle()`` function will be called instead of ``as_sql()``
- if the Oracle backend is in use.
- Finally, we implement the rest of the methods that allow our query expression
- to play nice with other query expressions::
- def get_source_expressions(self):
- return self.expressions
- def set_source_expressions(self, expressions):
- self.expressions = expressions
- Let's see how it works:
- .. code-block:: pycon
- >>> from django.db.models import F, Value, CharField
- >>> qs = Company.objects.annotate(
- ... tagline=Coalesce(
- ... [F("motto"), F("ticker_name"), F("description"), Value("No Tagline")],
- ... output_field=CharField(),
- ... )
- ... )
- >>> for c in qs:
- ... print("%s: %s" % (c.name, c.tagline))
- ...
- Google: Do No Evil
- Apple: AAPL
- Yahoo: Internet Company
- Django Software Foundation: No Tagline
- .. _avoiding-sql-injection-in-query-expressions:
- Avoiding SQL injection
- ~~~~~~~~~~~~~~~~~~~~~~
- Since a ``Func``'s keyword arguments for ``__init__()`` (``**extra``) and
- ``as_sql()`` (``**extra_context``) are interpolated into the SQL string rather
- than passed as query parameters (where the database driver would escape them),
- they must not contain untrusted user input.
- For example, if ``substring`` is user-provided, this function is vulnerable to
- SQL injection::
- from django.db.models import Func
- class Position(Func):
- function = "POSITION"
- template = "%(function)s('%(substring)s' in %(expressions)s)"
- def __init__(self, expression, substring):
- # substring=substring is an SQL injection vulnerability!
- super().__init__(expression, substring=substring)
- This function generates an SQL string without any parameters. Since
- ``substring`` is passed to ``super().__init__()`` as a keyword argument, it's
- interpolated into the SQL string before the query is sent to the database.
- Here's a corrected rewrite::
- class Position(Func):
- function = "POSITION"
- arg_joiner = " IN "
- def __init__(self, expression, substring):
- super().__init__(substring, expression)
- With ``substring`` instead passed as a positional argument, it'll be passed as
- a parameter in the database query.
- Adding support in third-party database backends
- -----------------------------------------------
- If you're using a database backend that uses a different SQL syntax for a
- certain function, you can add support for it by monkey patching a new method
- onto the function's class.
- Let's say we're writing a backend for Microsoft's SQL Server which uses the SQL
- ``LEN`` instead of ``LENGTH`` for the :class:`~functions.Length` function.
- We'll monkey patch a new method called ``as_sqlserver()`` onto the ``Length``
- class::
- from django.db.models.functions import Length
- def sqlserver_length(self, compiler, connection):
- return self.as_sql(compiler, connection, function="LEN")
- Length.as_sqlserver = sqlserver_length
- You can also customize the SQL using the ``template`` parameter of ``as_sql()``.
- We use ``as_sqlserver()`` because ``django.db.connection.vendor`` returns
- ``sqlserver`` for the backend.
- Third-party backends can register their functions in the top level
- ``__init__.py`` file of the backend package or in a top level ``expressions.py``
- file (or package) that is imported from the top level ``__init__.py``.
- For user projects wishing to patch the backend that they're using, this code
- should live in an :meth:`AppConfig.ready()<django.apps.AppConfig.ready>` method.
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