SQLAlchemy 2.1 Documentation
SQLAlchemy ORM
- ORM Quick Start
- ORM Mapped Class Configuration
- Relationship Configuration
- ORM Querying Guide
- Writing SELECT statements for ORM Mapped Classes
- Writing SELECT statements for Inheritance Mappings¶
- ORM-Enabled INSERT, UPDATE, and DELETE statements
- Column Loading Options
- Relationship Loading Techniques
- ORM API Features for Querying
- Legacy Query API
- Using the Session
- Events and Internals
- ORM Extensions
- ORM Examples
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Writing SELECT statements for Inheritance Mappings¶
About this Document
This section makes use of ORM mappings configured using the ORM Inheritance feature, described at Mapping Class Inheritance Hierarchies. The emphasis will be on Joined Table Inheritance as this is the most intricate ORM querying case.
SELECTing from the base class vs. specific sub-classes¶
A SELECT statement constructed against a class in a joined inheritance
hierarchy will query against the table to which the class is mapped, as well as
any super-tables present, using JOIN to link them together. The query would
then return objects that are of that requested type as well as any sub-types of
the requested type, using the discriminator value in each row
to determine the correct type. The query below is established against the Manager
subclass of Employee
, which then returns a result that will contain only
objects of type Manager
:
>>> from sqlalchemy import select
>>> stmt = select(Manager).order_by(Manager.id)
>>> managers = session.scalars(stmt).all()
BEGIN (implicit)
SELECT manager.id, employee.id AS id_1, employee.name, employee.type, employee.company_id, manager.manager_name
FROM employee JOIN manager ON employee.id = manager.id ORDER BY manager.id
[...] ()
>>> print(managers)
[Manager('Mr. Krabs')]
When the SELECT statement is against the base class in the hierarchy, the default behavior is that only that class’ table will be included in the rendered SQL and JOIN will not be used. As in all cases, the discriminator column is used to distinguish between different requested sub-types, which then results in objects of any possible sub-type being returned. The objects returned will have attributes corresponding to the base table populated, and attributes corresponding to sub-tables will start in an un-loaded state, loading automatically when accessed. The loading of sub-attributes is configurable to be more “eager” in a variety of ways, discussed later in this section.
The example below creates a query against the Employee
superclass.
This indicates that objects of any type, including Manager
, Engineer
,
and Employee
, may be within the result set:
>>> from sqlalchemy import select
>>> stmt = select(Employee).order_by(Employee.id)
>>> objects = session.scalars(stmt).all()
BEGIN (implicit)
SELECT employee.id, employee.name, employee.type, employee.company_id
FROM employee ORDER BY employee.id
[...] ()
>>> print(objects)
[Manager('Mr. Krabs'), Engineer('SpongeBob'), Engineer('Squidward')]
Above, the additional tables for Manager
and Engineer
were not included
in the SELECT, which means that the returned objects will not yet contain
data represented from those tables, in this example the .manager_name
attribute of the Manager
class as well as the .engineer_info
attribute
of the Engineer
class. These attributes start out in the
expired state, and will automatically populate themselves when first
accessed using lazy loading:
>>> mr_krabs = objects[0]
>>> print(mr_krabs.manager_name)
SELECT manager.manager_name AS manager_manager_name
FROM manager
WHERE ? = manager.id
[...] (1,)
Eugene H. Krabs
This lazy load behavior is not desirable if a large number of objects have been
loaded, in the case that the consuming application will need to be accessing
subclass-specific attributes, as this would be an example of the
N plus one problem that emits additional SQL per row. This additional SQL can
impact performance and also be incompatible with approaches such as
using asyncio. Additionally, in our query for
Employee
objects, since the query is against the base table only, we did
not have a way to add SQL criteria involving subclass-specific attributes in
terms of Manager
or Engineer
. The next two sections detail two
constructs that provide solutions to these two issues in different ways, the
selectin_polymorphic()
loader option and the
with_polymorphic()
entity construct.
Using selectin_polymorphic()¶
To address the issue of performance when accessing attributes on subclasses,
the selectin_polymorphic()
loader strategy may be used to
eagerly load these additional attributes up front across many
objects at once. This loader option works in a similar fashion as the
selectinload()
relationship loader strategy to emit an additional
SELECT statement against each sub-table for objects loaded in the hierarchy,
using IN
to query for additional rows based on primary key.
selectin_polymorphic()
accepts as its arguments the base entity that is
being queried, followed by a sequence of subclasses of that entity for which
their specific attributes should be loaded for incoming rows:
>>> from sqlalchemy.orm import selectin_polymorphic
>>> loader_opt = selectin_polymorphic(Employee, [Manager, Engineer])
The selectin_polymorphic()
construct is then used as a loader
option, passing it to the Select.options()
method of Select
.
The example illustrates the use of selectin_polymorphic()
to eagerly
load columns local to both the Manager
and Engineer
subclasses:
>>> from sqlalchemy.orm import selectin_polymorphic
>>> loader_opt = selectin_polymorphic(Employee, [Manager, Engineer])
>>> stmt = select(Employee).order_by(Employee.id).options(loader_opt)
>>> objects = session.scalars(stmt).all()
BEGIN (implicit)
SELECT employee.id, employee.name, employee.type, employee.company_id
FROM employee ORDER BY employee.id
[...] ()
SELECT manager.id AS manager_id, employee.id AS employee_id,
employee.type AS employee_type, manager.manager_name AS manager_manager_name
FROM employee JOIN manager ON employee.id = manager.id
WHERE employee.id IN (?) ORDER BY employee.id
[...] (1,)
SELECT engineer.id AS engineer_id, employee.id AS employee_id,
employee.type AS employee_type, engineer.engineer_info AS engineer_engineer_info
FROM employee JOIN engineer ON employee.id = engineer.id
WHERE employee.id IN (?, ?) ORDER BY employee.id
[...] (2, 3)
>>> print(objects)
[Manager('Mr. Krabs'), Engineer('SpongeBob'), Engineer('Squidward')]
The above example illustrates two additional SELECT statements being emitted
in order to eagerly fetch additional attributes such as Engineer.engineer_info
as well as Manager.manager_name
. We can now access these sub-attributes on the
objects that were loaded without any additional SQL statements being emitted:
>>> print(objects[0].manager_name)
Eugene H. Krabs
Tip
The selectin_polymorphic()
loader option does not yet
optimize for the fact that the base employee
table does not need to be
included in the second two “eager load” queries; hence in the example above
we see a JOIN from employee
to manager
and engineer
, even though
columns from employee
are already loaded. This is in contrast to
the selectinload()
relationship strategy which is more
sophisticated in this regard and can factor out the JOIN when not needed.
Applying selectin_polymorphic() to an existing eager load¶
In addition to selectin_polymorphic()
being specified as an option
for a top-level entity loaded by a statement, we may also indicate
selectin_polymorphic()
on the target of an existing load.
As our setup mapping includes a parent
Company
entity with a Company.employees
relationship()
referring to Employee
entities, we may illustrate a SELECT against
the Company
entity that eagerly loads all Employee
objects as well as
all attributes on their subtypes as follows, by applying Load.selectin_polymorphic()
as a chained loader option; in this form, the first argument is implicit from
the previous loader option (in this case selectinload()
), so
we only indicate the additional target subclasses we wish to load:
>>> from sqlalchemy.orm import selectinload
>>> stmt = select(Company).options(
... selectinload(Company.employees).selectin_polymorphic([Manager, Engineer])
... )
>>> for company in session.scalars(stmt):
... print(f"company: {company.name}")
... print(f"employees: {company.employees}")
BEGIN (implicit)
SELECT company.id, company.name
FROM company
[...] ()
SELECT employee.company_id AS employee_company_id, employee.id AS employee_id,
employee.name AS employee_name, employee.type AS employee_type
FROM employee
WHERE employee.company_id IN (?)
[...] (1,)
SELECT manager.id AS manager_id, employee.id AS employee_id,
employee.type AS employee_type,
manager.manager_name AS manager_manager_name
FROM employee JOIN manager ON employee.id = manager.id
WHERE employee.id IN (?) ORDER BY employee.id
[...] (1,)
SELECT engineer.id AS engineer_id, employee.id AS employee_id,
employee.type AS employee_type,
engineer.engineer_info AS engineer_engineer_info
FROM employee JOIN engineer ON employee.id = engineer.id
WHERE employee.id IN (?, ?) ORDER BY employee.id
[...] (2, 3)
company: Krusty Krab
employees: [Manager('Mr. Krabs'), Engineer('SpongeBob'), Engineer('Squidward')]
See also
Eager Loading of Polymorphic Subtypes - illustrates the equivalent example
as above using with_polymorphic()
instead
Applying loader options to the subclasses loaded by selectin_polymorphic¶
The SELECT statements emitted by selectin_polymorphic()
are themselves
ORM statements, so we may also add other loader options (such as those
documented at Relationship Loading Techniques) that refer to specific
subclasses. These options should be applied as siblings to a
selectin_polymorphic()
option, that is, comma separated within
select.options()
.
For example, if we considered that the Manager
mapper had
a one to many relationship to an entity
called Paperwork
, we could combine the use of
selectin_polymorphic()
and selectinload()
to eagerly load
this collection on all Manager
objects, where the sub-attributes of
Manager
objects were also themselves eagerly loaded:
>>> from sqlalchemy.orm import selectin_polymorphic
>>> stmt = (
... select(Employee)
... .order_by(Employee.id)
... .options(
... selectin_polymorphic(Employee, [Manager, Engineer]),
... selectinload(Manager.paperwork),
... )
... )
>>> objects = session.scalars(stmt).all()
SELECT employee.id, employee.name, employee.type, employee.company_id
FROM employee ORDER BY employee.id
[...] ()
SELECT manager.id AS manager_id, employee.id AS employee_id, employee.type AS employee_type, manager.manager_name AS manager_manager_name
FROM employee JOIN manager ON employee.id = manager.id
WHERE employee.id IN (?) ORDER BY employee.id
[...] (1,)
SELECT paperwork.manager_id AS paperwork_manager_id, paperwork.id AS paperwork_id, paperwork.document_name AS paperwork_document_name
FROM paperwork
WHERE paperwork.manager_id IN (?)
[...] (1,)
SELECT engineer.id AS engineer_id, employee.id AS employee_id, employee.type AS employee_type, engineer.engineer_info AS engineer_engineer_info
FROM employee JOIN engineer ON employee.id = engineer.id
WHERE employee.id IN (?, ?) ORDER BY employee.id
[...] (2, 3)
>>> print(objects[0])
Manager('Mr. Krabs')
>>> print(objects[0].paperwork)
[Paperwork('Secret Recipes'), Paperwork('Krabby Patty Orders')]
Applying loader options when selectin_polymorphic is itself a sub-option¶
New in version 2.0.21.
The previous section illustrated selectin_polymorphic()
and
selectinload()
used as sibling options, both used within a single
call to select.options()
. If the target entity is one that is
already being loaded from a parent relationship, as in the example at
Applying selectin_polymorphic() to an existing eager load, we can apply this
“sibling” pattern using the Load.options()
method that applies
sub-options to a parent, as illustrated at
Specifying Sub-Options with Load.options(). Below we combine the two
examples to load Company.employees
, also loading the attributes for the
Manager
and Engineer
classes, as well as eagerly loading the
`Manager.paperwork`
attribute:
>>> from sqlalchemy.orm import selectinload
>>> stmt = select(Company).options(
... selectinload(Company.employees).options(
... selectin_polymorphic(Employee, [Manager, Engineer]),
... selectinload(Manager.paperwork),
... )
... )
>>> for company in session.scalars(stmt):
... print(f"company: {company.name}")
... for employee in company.employees:
... if isinstance(employee, Manager):
... print(f"manager: {employee.name} paperwork: {employee.paperwork}")
BEGIN (implicit)
SELECT company.id, company.name
FROM company
[...] ()
SELECT employee.company_id AS employee_company_id, employee.id AS employee_id, employee.name AS employee_name, employee.type AS employee_type
FROM employee
WHERE employee.company_id IN (?)
[...] (1,)
SELECT manager.id AS manager_id, employee.id AS employee_id, employee.type AS employee_type, manager.manager_name AS manager_manager_name
FROM employee JOIN manager ON employee.id = manager.id
WHERE employee.id IN (?) ORDER BY employee.id
[...] (1,)
SELECT paperwork.manager_id AS paperwork_manager_id, paperwork.id AS paperwork_id, paperwork.document_name AS paperwork_document_name
FROM paperwork
WHERE paperwork.manager_id IN (?)
[...] (1,)
SELECT engineer.id AS engineer_id, employee.id AS employee_id, employee.type AS employee_type, engineer.engineer_info AS engineer_engineer_info
FROM employee JOIN engineer ON employee.id = engineer.id
WHERE employee.id IN (?, ?) ORDER BY employee.id
[...] (2, 3)
company: Krusty Krab
manager: Mr. Krabs paperwork: [Paperwork('Secret Recipes'), Paperwork('Krabby Patty Orders')]
Configuring selectin_polymorphic() on mappers¶
The behavior of selectin_polymorphic()
may be configured on specific
mappers so that it takes place by default, by using the
Mapper.polymorphic_load
parameter, using the value "selectin"
on a per-subclass basis. The example below illustrates the use of this
parameter within Engineer
and Manager
subclasses:
class Employee(Base):
__tablename__ = "employee"
id = mapped_column(Integer, primary_key=True)
name = mapped_column(String(50))
type = mapped_column(String(50))
__mapper_args__ = {"polymorphic_identity": "employee", "polymorphic_on": type}
class Engineer(Employee):
__tablename__ = "engineer"
id = mapped_column(Integer, ForeignKey("employee.id"), primary_key=True)
engineer_info = mapped_column(String(30))
__mapper_args__ = {
"polymorphic_load": "selectin",
"polymorphic_identity": "engineer",
}
class Manager(Employee):
__tablename__ = "manager"
id = mapped_column(Integer, ForeignKey("employee.id"), primary_key=True)
manager_name = mapped_column(String(30))
__mapper_args__ = {
"polymorphic_load": "selectin",
"polymorphic_identity": "manager",
}
With the above mapping, SELECT statements against the Employee
class will
automatically assume the use of
selectin_polymorphic(Employee, [Engineer, Manager])
as a loader option when the statement is
emitted.
Using with_polymorphic()¶
In contrast to selectin_polymorphic()
which affects only the loading
of objects, the with_polymorphic()
construct affects how the SQL
query for a polymorphic structure is rendered, most commonly as a series of
LEFT OUTER JOINs to each of the included sub-tables. This join structure is
known as the polymorphic selectable. By providing for a view of
several sub-tables at once, with_polymorphic()
offers a means of
writing a SELECT statement across several inherited classes at once with the
ability to add filtering criteria based on individual sub-tables.
with_polymorphic()
is essentially a special form of the
aliased()
construct. It accepts as its arguments a similar form to
that of selectin_polymorphic()
, which is the base entity that is
being queried, followed by a sequence of subclasses of that entity for which
their specific attributes should be loaded for incoming rows:
>>> from sqlalchemy.orm import with_polymorphic
>>> employee_poly = with_polymorphic(Employee, [Engineer, Manager])
In order to indicate that all subclasses should be part of the entity,
with_polymorphic()
will also accept the string "*"
, which may be
passed in place of the sequence of classes to indicate all classes (note this
is not yet supported by selectin_polymorphic()
):
>>> employee_poly = with_polymorphic(Employee, "*")
The example below illustrates the same operation as illustrated in the previous
section, to load all columns for Manager
and Engineer
at once:
>>> stmt = select(employee_poly).order_by(employee_poly.id)
>>> objects = session.scalars(stmt).all()
BEGIN (implicit)
SELECT employee.id, employee.name, employee.type, employee.company_id,
manager.id AS id_1, manager.manager_name, engineer.id AS id_2, engineer.engineer_info
FROM employee
LEFT OUTER JOIN manager ON employee.id = manager.id
LEFT OUTER JOIN engineer ON employee.id = engineer.id ORDER BY employee.id
[...] ()
>>> print(objects)
[Manager('Mr. Krabs'), Engineer('SpongeBob'), Engineer('Squidward')]
As is the case with selectin_polymorphic()
, attributes on subclasses
are already loaded:
>>> print(objects[0].manager_name)
Eugene H. Krabs
As the default selectable produced by with_polymorphic()
uses LEFT OUTER JOIN, from a database point of view the query is not as well
optimized as the approach that selectin_polymorphic()
takes,
with simple SELECT statements using only JOINs emitted on a per-table basis.
Filtering Subclass Attributes with with_polymorphic()¶
The with_polymorphic()
construct makes available the attributes
on the included subclass mappers, by including namespaces that allow
references to subclasses. The employee_poly
construct created in the
previous section includes attributes named .Engineer
and .Manager
which provide the namespace for Engineer
and Manager
in terms of
the polymorphic SELECT. In the example below, we can use the or_()
construct to create criteria against both classes at once:
>>> from sqlalchemy import or_
>>> employee_poly = with_polymorphic(Employee, [Engineer, Manager])
>>> stmt = (
... select(employee_poly)
... .where(
... or_(
... employee_poly.Manager.manager_name == "Eugene H. Krabs",
... employee_poly.Engineer.engineer_info
... == "Senior Customer Engagement Engineer",
... )
... )
... .order_by(employee_poly.id)
... )
>>> objects = session.scalars(stmt).all()
SELECT employee.id, employee.name, employee.type, employee.company_id, manager.id AS id_1,
manager.manager_name, engineer.id AS id_2, engineer.engineer_info
FROM employee
LEFT OUTER JOIN manager ON employee.id = manager.id
LEFT OUTER JOIN engineer ON employee.id = engineer.id
WHERE manager.manager_name = ? OR engineer.engineer_info = ?
ORDER BY employee.id
[...] ('Eugene H. Krabs', 'Senior Customer Engagement Engineer')
>>> print(objects)
[Manager('Mr. Krabs'), Engineer('Squidward')]
Using aliasing with with_polymorphic¶
The with_polymorphic()
construct, as a special case of
aliased()
, also provides the basic feature that aliased()
does, which is that of “aliasing” of the polymorphic selectable itself.
Specifically this means two or more with_polymorphic()
entities,
referring to the same class hierarchy, can be used at once in a single
statement.
To use this feature with a joined inheritance mapping, we typically want to
pass two parameters, with_polymorphic.aliased
as well as
with_polymorphic.flat
. The with_polymorphic.aliased
parameter indicates that the polymorphic selectable should be referenced
by an alias name that is unique to this construct. The
with_polymorphic.flat
parameter is specific to the default
LEFT OUTER JOIN polymorphic selectable and indicates that a more optimized
form of aliasing should be used in the statement.
To illustrate this feature, the example below emits a SELECT for two
separate polymorphic entities, Employee
joined with Engineer
,
and Employee
joined with Manager
. Since these two polymorphic entities
will both be including the base employee
table in their polymorphic selectable, aliasing must
be applied in order to differentiate this table in its two different contexts.
The two polymorphic entities are treated like two individual tables,
and as such typically need to be joined with each other in some way,
as illustrated below where the entities are joined on the company_id
column along with some additional limiting criteria against the
Employee
/ Manager
entity:
>>> manager_employee = with_polymorphic(Employee, [Manager], aliased=True, flat=True)
>>> engineer_employee = with_polymorphic(Employee, [Engineer], aliased=True, flat=True)
>>> stmt = (
... select(manager_employee, engineer_employee)
... .join(
... engineer_employee,
... engineer_employee.company_id == manager_employee.company_id,
... )
... .where(
... or_(
... manager_employee.name == "Mr. Krabs",
... manager_employee.Manager.manager_name == "Eugene H. Krabs",
... )
... )
... .order_by(engineer_employee.name, manager_employee.name)
... )
>>> for manager, engineer in session.execute(stmt):
... print(f"{manager} {engineer}")
SELECT
employee_1.id, employee_1.name, employee_1.type, employee_1.company_id,
manager_1.id AS id_1, manager_1.manager_name,
employee_2.id AS id_2, employee_2.name AS name_1, employee_2.type AS type_1,
employee_2.company_id AS company_id_1, engineer_1.id AS id_3, engineer_1.engineer_info
FROM employee AS employee_1
LEFT OUTER JOIN manager AS manager_1 ON employee_1.id = manager_1.id
JOIN
(employee AS employee_2 LEFT OUTER JOIN engineer AS engineer_1 ON employee_2.id = engineer_1.id)
ON employee_2.company_id = employee_1.company_id
WHERE employee_1.name = ? OR manager_1.manager_name = ?
ORDER BY employee_2.name, employee_1.name
[...] ('Mr. Krabs', 'Eugene H. Krabs')
Manager('Mr. Krabs') Manager('Mr. Krabs')
Manager('Mr. Krabs') Engineer('SpongeBob')
Manager('Mr. Krabs') Engineer('Squidward')
In the above example, the behavior of with_polymorphic.flat
is that the polymorphic selectables remain as a LEFT OUTER JOIN of their
individual tables, which themselves are given anonymous alias names. There
is also a right-nested JOIN produced.
When omitting the with_polymorphic.flat
parameter, the
usual behavior is that each polymorphic selectable is enclosed within a
subquery, producing a more verbose form:
>>> manager_employee = with_polymorphic(Employee, [Manager], aliased=True)
>>> engineer_employee = with_polymorphic(Employee, [Engineer], aliased=True)
>>> stmt = (
... select(manager_employee, engineer_employee)
... .join(
... engineer_employee,
... engineer_employee.company_id == manager_employee.company_id,
... )
... .where(
... or_(
... manager_employee.name == "Mr. Krabs",
... manager_employee.Manager.manager_name == "Eugene H. Krabs",
... )
... )
... .order_by(engineer_employee.name, manager_employee.name)
... )
>>> print(stmt)
SELECT anon_1.employee_id, anon_1.employee_name, anon_1.employee_type,
anon_1.employee_company_id, anon_1.manager_id, anon_1.manager_manager_name, anon_2.employee_id AS employee_id_1,
anon_2.employee_name AS employee_name_1, anon_2.employee_type AS employee_type_1,
anon_2.employee_company_id AS employee_company_id_1, anon_2.engineer_id, anon_2.engineer_engineer_info
FROM
(SELECT employee.id AS employee_id, employee.name AS employee_name, employee.type AS employee_type,
employee.company_id AS employee_company_id,
manager.id AS manager_id, manager.manager_name AS manager_manager_name
FROM employee LEFT OUTER JOIN manager ON employee.id = manager.id) AS anon_1
JOIN
(SELECT employee.id AS employee_id, employee.name AS employee_name, employee.type AS employee_type,
employee.company_id AS employee_company_id, engineer.id AS engineer_id, engineer.engineer_info AS engineer_engineer_info
FROM employee LEFT OUTER JOIN engineer ON employee.id = engineer.id) AS anon_2
ON anon_2.employee_company_id = anon_1.employee_company_id
WHERE anon_1.employee_name = :employee_name_2 OR anon_1.manager_manager_name = :manager_manager_name_1
ORDER BY anon_2.employee_name, anon_1.employee_name
The above form historically has been more portable to backends that didn’t necessarily
have support for right-nested JOINs, and it additionally may be appropriate when
the “polymorphic selectable” used by with_polymorphic()
is not
a simple LEFT OUTER JOIN of tables, as is the case when using mappings such as
concrete table inheritance mappings as well as when
using alternative polymorphic selectables in general.
Configuring with_polymorphic() on mappers¶
As is the case with selectin_polymorphic()
, the
with_polymorphic()
construct also supports a mapper-configured
version which may be configured in two different ways, either on the base class
using the mapper.with_polymorphic
parameter, or in a more modern
form using the Mapper.polymorphic_load
parameter on a
per-subclass basis, passing the value "inline"
.
Warning
For joined inheritance mappings, prefer explicit use of
with_polymorphic()
within queries, or for implicit eager subclass
loading use Mapper.polymorphic_load
with "selectin"
,
instead of using the mapper-level mapper.with_polymorphic
parameter described in this section. This parameter invokes complex
heuristics intended to rewrite the FROM clauses within SELECT statements
that can interfere with construction of more complex statements,
particularly those with nested subqueries that refer to the same mapped
entity.
For example, we may state our Employee
mapping using
Mapper.polymorphic_load
as "inline"
as below:
class Employee(Base):
__tablename__ = "employee"
id = mapped_column(Integer, primary_key=True)
name = mapped_column(String(50))
type = mapped_column(String(50))
__mapper_args__ = {"polymorphic_identity": "employee", "polymorphic_on": type}
class Engineer(Employee):
__tablename__ = "engineer"
id = mapped_column(Integer, ForeignKey("employee.id"), primary_key=True)
engineer_info = mapped_column(String(30))
__mapper_args__ = {
"polymorphic_load": "inline",
"polymorphic_identity": "engineer",
}
class Manager(Employee):
__tablename__ = "manager"
id = mapped_column(Integer, ForeignKey("employee.id"), primary_key=True)
manager_name = mapped_column(String(30))
__mapper_args__ = {
"polymorphic_load": "inline",
"polymorphic_identity": "manager",
}
With the above mapping, SELECT statements against the Employee
class will
automatically assume the use of
with_polymorphic(Employee, [Engineer, Manager])
as the primary entity
when the statement is emitted:
print(select(Employee))
SELECT employee.id, employee.name, employee.type, engineer.id AS id_1,
engineer.engineer_info, manager.id AS id_2, manager.manager_name
FROM employee
LEFT OUTER JOIN engineer ON employee.id = engineer.id
LEFT OUTER JOIN manager ON employee.id = manager.id
When using mapper-level “with polymorphic”, queries can also refer to the
subclass entities directly, where they implicitly represent the joined tables
in the polymorphic query. Above, we can freely refer to
Manager
and Engineer
directly against the default Employee
entity:
print(
select(Employee).where(
or_(Manager.manager_name == "x", Engineer.engineer_info == "y")
)
)
SELECT employee.id, employee.name, employee.type, engineer.id AS id_1,
engineer.engineer_info, manager.id AS id_2, manager.manager_name
FROM employee
LEFT OUTER JOIN engineer ON employee.id = engineer.id
LEFT OUTER JOIN manager ON employee.id = manager.id
WHERE manager.manager_name = :manager_name_1
OR engineer.engineer_info = :engineer_info_1
However, if we needed to refer to the Employee
entity or its sub
entities in separate, aliased contexts, we would again make direct use of
with_polymorphic()
to define these aliased entities as illustrated
in Using aliasing with with_polymorphic.
For more centralized control over the polymorphic selectable, the more legacy
form of mapper-level polymorphic control may be used which is the
Mapper.with_polymorphic
parameter, configured on the base
class. This parameter accepts arguments that are comparable to the
with_polymorphic()
construct, however common use with a joined
inheritance mapping is the plain asterisk, indicating all sub-tables should be
LEFT OUTER JOINED, as in:
class Employee(Base):
__tablename__ = "employee"
id = mapped_column(Integer, primary_key=True)
name = mapped_column(String(50))
type = mapped_column(String(50))
__mapper_args__ = {
"polymorphic_identity": "employee",
"with_polymorphic": "*",
"polymorphic_on": type,
}
class Engineer(Employee):
__tablename__ = "engineer"
id = mapped_column(Integer, ForeignKey("employee.id"), primary_key=True)
engineer_info = mapped_column(String(30))
__mapper_args__ = {
"polymorphic_identity": "engineer",
}
class Manager(Employee):
__tablename__ = "manager"
id = mapped_column(Integer, ForeignKey("employee.id"), primary_key=True)
manager_name = mapped_column(String(30))
__mapper_args__ = {
"polymorphic_identity": "manager",
}
Overall, the LEFT OUTER JOIN format used by with_polymorphic()
and
by options such as Mapper.with_polymorphic
may be cumbersome
from a SQL and database optimizer point of view; for general loading of
subclass attributes in joined inheritance mappings, the
selectin_polymorphic()
approach, or its mapper level equivalent of
setting Mapper.polymorphic_load
to "selectin"
should
likely be preferred, making use of with_polymorphic()
on a per-query
basis only as needed.
Joining to specific sub-types or with_polymorphic() entities¶
As a with_polymorphic()
entity is a special case of aliased()
,
in order to treat a polymorphic entity as the target of a join, specifically
when using a relationship()
construct as the ON clause,
we use the same technique for regular aliases as detailed at
Using Relationship to join between aliased targets, most succinctly
using PropComparator.of_type()
. In the example below we illustrate
a join from the parent Company
entity along the one-to-many relationship
Company.employees
, which is configured in the
setup to link to Employee
objects,
using a with_polymorphic()
entity as the target:
>>> employee_plus_engineer = with_polymorphic(Employee, [Engineer])
>>> stmt = (
... select(Company.name, employee_plus_engineer.name)
... .join(Company.employees.of_type(employee_plus_engineer))
... .where(
... or_(
... employee_plus_engineer.name == "SpongeBob",
... employee_plus_engineer.Engineer.engineer_info
... == "Senior Customer Engagement Engineer",
... )
... )
... )
>>> for company_name, emp_name in session.execute(stmt):
... print(f"{company_name} {emp_name}")
SELECT company.name, employee.name AS name_1
FROM company JOIN (employee LEFT OUTER JOIN engineer ON employee.id = engineer.id) ON company.id = employee.company_id
WHERE employee.name = ? OR engineer.engineer_info = ?
[...] ('SpongeBob', 'Senior Customer Engagement Engineer')
Krusty Krab SpongeBob
Krusty Krab Squidward
More directly, PropComparator.of_type()
is also used with inheritance
mappings of any kind to limit a join along a relationship()
to a
particular sub-type of the relationship()
’s target. The above
query could be written strictly in terms of Engineer
targets as follows:
>>> stmt = (
... select(Company.name, Engineer.name)
... .join(Company.employees.of_type(Engineer))
... .where(
... or_(
... Engineer.name == "SpongeBob",
... Engineer.engineer_info == "Senior Customer Engagement Engineer",
... )
... )
... )
>>> for company_name, emp_name in session.execute(stmt):
... print(f"{company_name} {emp_name}")
SELECT company.name, employee.name AS name_1
FROM company JOIN (employee JOIN engineer ON employee.id = engineer.id) ON company.id = employee.company_id
WHERE employee.name = ? OR engineer.engineer_info = ?
[...] ('SpongeBob', 'Senior Customer Engagement Engineer')
Krusty Krab SpongeBob
Krusty Krab Squidward
It can be observed above that joining to the Engineer
target directly,
rather than the “polymorphic selectable” of with_polymorphic(Employee, [Engineer])
has the useful characteristic of using an inner JOIN rather than a
LEFT OUTER JOIN, which is generally more performant from a SQL optimizer
point of view.
Eager Loading of Polymorphic Subtypes¶
The use of PropComparator.of_type()
illustrated with the
Select.join()
method in the previous section may also be applied
equivalently to relationship loader options,
such as selectinload()
and joinedload()
.
As a basic example, if we wished to load Company
objects, and additionally
eagerly load all elements of Company.employees
using the
with_polymorphic()
construct against the full hierarchy, we may write:
>>> all_employees = with_polymorphic(Employee, "*")
>>> stmt = select(Company).options(selectinload(Company.employees.of_type(all_employees)))
>>> for company in session.scalars(stmt):
... print(f"company: {company.name}")
... print(f"employees: {company.employees}")
SELECT company.id, company.name
FROM company
[...] ()
SELECT employee.company_id AS employee_company_id, employee.id AS employee_id,
employee.name AS employee_name, employee.type AS employee_type, manager.id AS manager_id,
manager.manager_name AS manager_manager_name, engineer.id AS engineer_id,
engineer.engineer_info AS engineer_engineer_info
FROM employee
LEFT OUTER JOIN manager ON employee.id = manager.id
LEFT OUTER JOIN engineer ON employee.id = engineer.id
WHERE employee.company_id IN (?)
[...] (1,)
company: Krusty Krab
employees: [Manager('Mr. Krabs'), Engineer('SpongeBob'), Engineer('Squidward')]
The above query may be compared directly to the
selectin_polymorphic()
version illustrated in the previous
section Applying selectin_polymorphic() to an existing eager load.
See also
Applying selectin_polymorphic() to an existing eager load - illustrates the equivalent example
as above using selectin_polymorphic()
instead
SELECT Statements for Single Inheritance Mappings¶
Single Table Inheritance Setup
This section discusses single table inheritance, described at Single Table Inheritance, which uses a single table to represent multiple classes in a hierarchy.
In contrast to joined inheritance mappings, the construction of SELECT statements for single inheritance mappings tends to be simpler since for an all-single-inheritance hierarchy, there’s only one table.
Regardless of whether or not the inheritance hierarchy is all single-inheritance or has a mixture of joined and single inheritance, SELECT statements for single inheritance differentiate queries against the base class vs. a subclass by limiting the SELECT statement with additional WHERE criteria.
As an example, a query for the single-inheritance example mapping of
Employee
will load objects of type Manager
, Engineer
and
Employee
using a simple SELECT of the table:
>>> stmt = select(Employee).order_by(Employee.id)
>>> for obj in session.scalars(stmt):
... print(f"{obj}")
BEGIN (implicit)
SELECT employee.id, employee.name, employee.type
FROM employee ORDER BY employee.id
[...] ()
Manager('Mr. Krabs')
Engineer('SpongeBob')
Engineer('Squidward')
When a load is emitted for a specific subclass, additional criteria is
added to the SELECT that limits the rows, such as below where a SELECT against
the Engineer
entity is performed:
>>> stmt = select(Engineer).order_by(Engineer.id)
>>> objects = session.scalars(stmt).all()
SELECT employee.id, employee.name, employee.type, employee.engineer_info
FROM employee
WHERE employee.type IN (?) ORDER BY employee.id
[...] ('engineer',)
>>> for obj in objects:
... print(f"{obj}")
Engineer('SpongeBob')
Engineer('Squidward')
Optimizing Attribute Loads for Single Inheritance¶
The default behavior of single inheritance mappings regarding how attributes on
subclasses are SELECTed is similar to that of joined inheritance, in that
subclass-specific attributes still emit a second SELECT by default. In
the example below, a single Employee
of type Manager
is loaded,
however since the requested class is Employee
, the Manager.manager_name
attribute is not present by default, and an additional SELECT is emitted
when it’s accessed:
>>> mr_krabs = session.scalars(select(Employee).where(Employee.name == "Mr. Krabs")).one()
BEGIN (implicit)
SELECT employee.id, employee.name, employee.type
FROM employee
WHERE employee.name = ?
[...] ('Mr. Krabs',)
>>> mr_krabs.manager_name
SELECT employee.manager_name AS employee_manager_name
FROM employee
WHERE employee.id = ? AND employee.type IN (?)
[...] (1, 'manager')
'Eugene H. Krabs'
To alter this behavior, the same general concepts used to eagerly load these
additional attributes used in joined inheritance loading apply to single
inheritance as well, including use of the selectin_polymorphic()
option as well as the with_polymorphic()
option, the latter of which
simply includes the additional columns and from a SQL perspective is more
efficient for single-inheritance mappers:
>>> employees = with_polymorphic(Employee, "*")
>>> stmt = select(employees).order_by(employees.id)
>>> objects = session.scalars(stmt).all()
BEGIN (implicit)
SELECT employee.id, employee.name, employee.type,
employee.manager_name, employee.engineer_info
FROM employee ORDER BY employee.id
[...] ()
>>> for obj in objects:
... print(f"{obj}")
Manager('Mr. Krabs')
Engineer('SpongeBob')
Engineer('Squidward')
>>> objects[0].manager_name
'Eugene H. Krabs'
Since the overhead of loading single-inheritance subclass mappings is
usually minimal, it’s therefore recommended that single inheritance mappings
include the Mapper.polymorphic_load
parameter with a
setting of "inline"
for those subclasses where loading of their specific
subclass attributes is expected to be common. An example illustrating the
setup, modified to include this option,
is below:
>>> class Base(DeclarativeBase):
... pass
>>> class Employee(Base):
... __tablename__ = "employee"
... id: Mapped[int] = mapped_column(primary_key=True)
... name: Mapped[str]
... type: Mapped[str]
...
... def __repr__(self):
... return f"{self.__class__.__name__}({self.name!r})"
...
... __mapper_args__ = {
... "polymorphic_identity": "employee",
... "polymorphic_on": "type",
... }
>>> class Manager(Employee):
... manager_name: Mapped[str] = mapped_column(nullable=True)
... __mapper_args__ = {
... "polymorphic_identity": "manager",
... "polymorphic_load": "inline",
... }
>>> class Engineer(Employee):
... engineer_info: Mapped[str] = mapped_column(nullable=True)
... __mapper_args__ = {
... "polymorphic_identity": "engineer",
... "polymorphic_load": "inline",
... }
With the above mapping, the Manager
and Engineer
classes will have
their columns included in SELECT statements against the Employee
entity automatically:
>>> print(select(Employee))
SELECT employee.id, employee.name, employee.type,
employee.manager_name, employee.engineer_info
FROM employee
Inheritance Loading API¶
Object Name | Description |
---|---|
selectin_polymorphic(base_cls, classes) |
Indicate an eager load should take place for all attributes specific to a subclass. |
with_polymorphic(base, classes[, selectable, flat, ...]) |
Produce an |
- function sqlalchemy.orm.with_polymorphic(base: Type[_O] | Mapper[_O], classes: Literal['*'] | Iterable[Type[Any]], selectable: Literal[False, None] | FromClause = False, flat: bool = False, polymorphic_on: ColumnElement[Any] | None = None, aliased: bool = False, innerjoin: bool = False, adapt_on_names: bool = False, name: str | None = None, _use_mapper_path: bool = False) → AliasedClass[_O]¶
Produce an
AliasedClass
construct which specifies columns for descendant mappers of the given base.Using this method will ensure that each descendant mapper’s tables are included in the FROM clause, and will allow filter() criterion to be used against those tables. The resulting instances will also have those columns already loaded so that no “post fetch” of those columns will be required.
See also
Using with_polymorphic() - full discussion of
with_polymorphic()
.- Parameters:
base¶ – Base class to be aliased.
classes¶ – a single class or mapper, or list of class/mappers, which inherit from the base class. Alternatively, it may also be the string
'*'
, in which case all descending mapped classes will be added to the FROM clause.aliased¶ – when True, the selectable will be aliased. For a JOIN, this means the JOIN will be SELECTed from inside of a subquery unless the
with_polymorphic.flat
flag is set to True, which is recommended for simpler use cases.flat¶ – Boolean, will be passed through to the
FromClause.alias()
call so that aliases ofJoin
objects will alias the individual tables inside the join, rather than creating a subquery. This is generally supported by all modern databases with regards to right-nested joins and generally produces more efficient queries. Setting this flag is recommended as long as the resulting SQL is functional.selectable¶ –
a table or subquery that will be used in place of the generated FROM clause. This argument is required if any of the desired classes use concrete table inheritance, since SQLAlchemy currently cannot generate UNIONs among tables automatically. If used, the
selectable
argument must represent the full set of tables and columns mapped by every mapped class. Otherwise, the unaccounted mapped columns will result in their table being appended directly to the FROM clause which will usually lead to incorrect results.When left at its default value of
False
, the polymorphic selectable assigned to the base mapper is used for selecting rows. However, it may also be passed asNone
, which will bypass the configured polymorphic selectable and instead construct an ad-hoc selectable for the target classes given; for joined table inheritance this will be a join that includes all target mappers and their subclasses.polymorphic_on¶ – a column to be used as the “discriminator” column for the given selectable. If not given, the polymorphic_on attribute of the base classes’ mapper will be used, if any. This is useful for mappings that don’t have polymorphic loading behavior by default.
innerjoin¶ – if True, an INNER JOIN will be used. This should only be specified if querying for one specific subtype only
adapt_on_names¶ –
Passes through the
aliased.adapt_on_names
parameter to the aliased object. This may be useful in situations where the given selectable is not directly related to the existing mapped selectable.New in version 1.4.33.
name¶ –
Name given to the generated
AliasedClass
.New in version 2.0.31.
- function sqlalchemy.orm.selectin_polymorphic(base_cls: _EntityType[Any], classes: Iterable[Type[Any]]) → _AbstractLoad¶
Indicate an eager load should take place for all attributes specific to a subclass.
This uses an additional SELECT with IN against all matched primary key values, and is the per-query analogue to the
"selectin"
setting on themapper.polymorphic_load
parameter.New in version 1.2.
See also
flambé! the dragon and The Alchemist image designs created and generously donated by Rotem Yaari.
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