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.. _inheritance_toplevel:
Mapping Class Inheritance Hierarchies
=====================================
SQLAlchemy supports three forms of inheritance: **single table inheritance**,
where several types of classes are represented by a single table, **concrete
table inheritance**, where each type of class is represented by independent
tables, and **joined table inheritance**, where the class hierarchy is broken
up among dependent tables, each class represented by its own table that only
includes those attributes local to that class.
The most common forms of inheritance are single and joined table, while
concrete inheritance presents more configurational challenges.
When mappers are configured in an inheritance relationship, SQLAlchemy has the
ability to load elements :term:`polymorphically`, meaning that a single query can
return objects of multiple types.
.. seealso::
:ref:`examples_inheritance` - complete examples of joined, single and
concrete inheritance
.. _joined_inheritance:
Joined Table Inheritance
------------------------
In joined table inheritance, each class along a hierarchy of classes
is represented by a distinct table. Querying for a particular subclass
in the hierarchy will render as a SQL JOIN along all tables in its
inheritance path. If the queried class is the base class, the **default behavior
is to include only the base table** in a SELECT statement. In all cases, the
ultimate class to instantiate for a given row is determined by a discriminator
column or an expression that works against the base table. When a subclass
is loaded **only** against a base table, resulting objects will have base attributes
populated at first; attributes that are local to the subclass will :term:`lazy load`
when they are accessed. Alternatively, there are options which can change
the default behavior, allowing the query to include columns corresponding to
multiple tables/subclasses up front.
The base class in a joined inheritance hierarchy is configured with
additional arguments that will refer to the polymorphic discriminator
column as well as the identifier for the base class::
class Employee(Base):
__tablename__ = 'employee'
id = Column(Integer, primary_key=True)
name = Column(String(50))
type = Column(String(50))
__mapper_args__ = {
'polymorphic_identity':'employee',
'polymorphic_on':type
}
Above, an additional column ``type`` is established to act as the
**discriminator**, configured as such using the :paramref:`.mapper.polymorphic_on`
parameter. This column will store a value which indicates the type of object
represented within the row. The column may be of any datatype, though string
and integer are the most common.
While a polymorphic discriminator expression is not strictly necessary, it is
required if polymorphic loading is desired. Establishing a simple column on
the base table is the easiest way to achieve this, however very sophisticated
inheritance mappings may even configure a SQL expression such as a CASE
statement as the polymorphic discriminator.
.. note::
Currently, **only one discriminator column or SQL expression may be
configured for the entire inheritance hierarchy**, typically on the base-
most class in the hierarchy. "Cascading" polymorphic discriminator
expressions are not yet supported.
We next define ``Engineer`` and ``Manager`` subclasses of ``Employee``.
Each contains columns that represent the attributes unique to the subclass
they represent. Each table also must contain a primary key column (or
columns), as well as a foreign key reference to the parent table::
class Engineer(Employee):
__tablename__ = 'engineer'
id = Column(Integer, ForeignKey('employee.id'), primary_key=True)
engineer_name = Column(String(30))
__mapper_args__ = {
'polymorphic_identity':'engineer',
}
class Manager(Employee):
__tablename__ = 'manager'
id = Column(Integer, ForeignKey('employee.id'), primary_key=True)
manager_name = Column(String(30))
__mapper_args__ = {
'polymorphic_identity':'manager',
}
It is most common that the foreign key constraint is established on the same
column or columns as the primary key itself, however this is not required; a
column distinct from the primary key may also be made to refer to the parent
via foreign key. The way that a JOIN is constructed from the base table to
subclasses is also directly customizable, however this is rarely necessary.
.. topic:: Joined inheritance primary keys
One natural effect of the joined table inheritance configuration is that
the identity of any mapped object can be determined entirely from rows in
the base table alone. This has obvious advantages, so SQLAlchemy always
considers the primary key columns of a joined inheritance class to be those
of the base table only. In other words, the ``id`` columns of both the
``engineer`` and ``manager`` tables are not used to locate ``Engineer`` or
``Manager`` objects - only the value in ``employee.id`` is considered.
``engineer.id`` and ``manager.id`` are still of course critical to the
proper operation of the pattern overall as they are used to locate the
joined row, once the parent row has been determined within a statement.
With the joined inheritance mapping complete, querying against ``Employee``
will return a combination of ``Employee``, ``Engineer`` and ``Manager``
objects. Newly saved ``Engineer``, ``Manager``, and ``Employee`` objects will
automatically populate the ``employee.type`` column with the correct
"discriminator" value in this case ``"engineer"``,
``"manager"``, or ``"employee"``, as appropriate.
Relationships with Joined Inheritance
+++++++++++++++++++++++++++++++++++++
Relationships are fully supported with joined table inheritance. The
relationship involving a joined-inheritance class should target the class
in the hierarchy that also corresponds to the foreign key constraint;
below, as the ``employee`` table has a foreign key constraint back to
the ``company`` table, the relationships are set up between ``Company``
and ``Employee``::
class Company(Base):
__tablename__ = 'company'
id = Column(Integer, primary_key=True)
name = Column(String(50))
employees = relationship("Employee", back_populates="company")
class Employee(Base):
__tablename__ = 'employee'
id = Column(Integer, primary_key=True)
name = Column(String(50))
type = Column(String(50))
company_id = Column(ForeignKey('company.id'))
company = relationship("Company", back_populates="employees")
__mapper_args__ = {
'polymorphic_identity':'employee',
'polymorphic_on':type
}
class Manager(Employee):
# ...
class Engineer(Employee):
# ...
If the foreign key constraint is on a table corresponding to a subclass,
the relationship should target that subclass instead. In the example
below, there is a foreign
key constraint from ``manager`` to ``company``, so the relationships are
established between the ``Manager`` and ``Company`` classes::
class Company(Base):
__tablename__ = 'company'
id = Column(Integer, primary_key=True)
name = Column(String(50))
managers = relationship("Manager", back_populates="company")
class Employee(Base):
__tablename__ = 'employee'
id = Column(Integer, primary_key=True)
name = Column(String(50))
type = Column(String(50))
__mapper_args__ = {
'polymorphic_identity':'employee',
'polymorphic_on':type
}
class Manager(Employee):
__tablename__ = 'manager'
id = Column(Integer, ForeignKey('employee.id'), primary_key=True)
manager_name = Column(String(30))
company_id = Column(ForeignKey('company.id'))
company = relationship("Company", back_populates="managers")
__mapper_args__ = {
'polymorphic_identity':'manager',
}
class Engineer(Employee):
# ...
Above, the ``Manager`` class will have a ``Manager.company`` attribute;
``Company`` will have a ``Company.managers`` attribute that always
loads against a join of the ``employee`` and ``manager`` tables together.
Loading Joined Inheritance Mappings
+++++++++++++++++++++++++++++++++++
See the sections :ref:`inheritance_loading_toplevel` and
:ref:`loading_joined_inheritance` for background on inheritance
loading techniques, including configuration of tables
to be queried both at mapper configuration time as well as query time.
.. _single_inheritance:
Single Table Inheritance
------------------------
Single table inheritance represents all attributes of all subclasses
within a single table. A particular subclass that has attributes unique
to that class will persist them within columns in the table that are otherwise
NULL if the row refers to a different kind of object.
Querying for a particular subclass
in the hierarchy will render as a SELECT against the base table, which
will include a WHERE clause that limits rows to those with a particular
value or values present in the discriminator column or expression.
Single table inheritance has the advantage of simplicity compared to
joined table inheritance; queries are much more efficient as only one table
needs to be involved in order to load objects of every represented class.
Single-table inheritance configuration looks much like joined-table
inheritance, except only the base class specifies ``__tablename__``. A
discriminator column is also required on the base table so that classes can be
differentiated from each other.
Even though subclasses share the base table for all of their attributes,
when using Declarative, :class:`.Column` objects may still be specified on
subclasses, indicating that the column is to be mapped only to that subclass;
the :class:`.Column` will be applied to the same base :class:`.Table` object::
class Employee(Base):
__tablename__ = 'employee'
id = Column(Integer, primary_key=True)
name = Column(String(50))
type = Column(String(20))
__mapper_args__ = {
'polymorphic_on':type,
'polymorphic_identity':'employee'
}
class Manager(Employee):
manager_data = Column(String(50))
__mapper_args__ = {
'polymorphic_identity':'manager'
}
class Engineer(Employee):
engineer_info = Column(String(50))
__mapper_args__ = {
'polymorphic_identity':'engineer'
}
Note that the mappers for the derived classes Manager and Engineer omit the
``__tablename__``, indicating they do not have a mapped table of
their own.
Relationships with Single Table Inheritance
+++++++++++++++++++++++++++++++++++++++++++
Relationships are fully supported with single table inheritance. Configuration
is done in the same manner as that of joined inheritance; a foreign key
attribute should be on the same class that's the "foreign" side of the
relationship::
class Company(Base):
__tablename__ = 'company'
id = Column(Integer, primary_key=True)
name = Column(String(50))
employees = relationship("Employee", back_populates="company")
class Employee(Base):
__tablename__ = 'employee'
id = Column(Integer, primary_key=True)
name = Column(String(50))
type = Column(String(50))
company_id = Column(ForeignKey('company.id'))
company = relationship("Company", back_populates="employees")
__mapper_args__ = {
'polymorphic_identity':'employee',
'polymorphic_on':type
}
class Manager(Employee):
manager_data = Column(String(50))
__mapper_args__ = {
'polymorphic_identity':'manager'
}
class Engineer(Employee):
engineer_info = Column(String(50))
__mapper_args__ = {
'polymorphic_identity':'engineer'
}
Also, like the case of joined inheritance, we can create relationships
that involve a specific subclass. When queried, the SELECT statement will
include a WHERE clause that limits the class selection to that subclass
or subclasses::
class Company(Base):
__tablename__ = 'company'
id = Column(Integer, primary_key=True)
name = Column(String(50))
managers = relationship("Manager", back_populates="company")
class Employee(Base):
__tablename__ = 'employee'
id = Column(Integer, primary_key=True)
name = Column(String(50))
type = Column(String(50))
__mapper_args__ = {
'polymorphic_identity':'employee',
'polymorphic_on':type
}
class Manager(Employee):
manager_name = Column(String(30))
company_id = Column(ForeignKey('company.id'))
company = relationship("Company", back_populates="managers")
__mapper_args__ = {
'polymorphic_identity':'manager',
}
class Engineer(Employee):
engineer_info = Column(String(50))
__mapper_args__ = {
'polymorphic_identity':'engineer'
}
Above, the ``Manager`` class will have a ``Manager.company`` attribute;
``Company`` will have a ``Company.managers`` attribute that always
loads against the ``employee`` with an additional WHERE clause that
limits rows to those with ``type = 'manager'``.
Loading Single Inheritance Mappings
+++++++++++++++++++++++++++++++++++
The loading techniques for single-table inheritance are mostly identical to
those used for joined-table inheritance, and a high degree of abstraction is
provided between these two mapping types such that it is easy to switch between
them as well as to intermix them in a single hierarchy (just omit
``__tablename__`` from whichever subclasses are to be single-inheriting). See
the sections :ref:`inheritance_loading_toplevel` and
:ref:`loading_single_inheritance` for documentation on inheritance loading
techniques, including configuration of classes to be queried both at mapper
configuration time as well as query time.
.. _concrete_inheritance:
Concrete Table Inheritance
--------------------------
Concrete inheritance maps each subclass to its own distinct table, each
of which contains all columns necessary to produce an instance of that class.
A concrete inheritance configuration by default queries non-polymorphically;
a query for a particular class will only query that class' table
and only return instances of that class. Polymorphic loading of concrete
classes is enabled by configuring within the mapper
a special SELECT that typically is produced as a UNION of all the tables.
.. warning::
Concrete table inheritance is **much more complicated** than joined
or single table inheritance, and is **much more limited in functionality**
especially pertaining to using it with relationships, eager loading,
and polymorphic loading. When used polymorphically it produces
**very large queries** with UNIONS that won't perform as well as simple
joins. It is strongly advised that if flexibility in relationship loading
and polymorphic loading is required, that joined or single table inheritance
be used if at all possible. If polymorphic loading isn't required, then
plain non-inheriting mappings can be used if each class refers to its
own table completely.
Whereas joined and single table inheritance are fluent in "polymorphic"
loading, it is a more awkward affair in concrete inheritance. For this
reason, concrete inheritance is more appropriate when **polymorphic loading
is not required**. Establishing relationships that involve concrete inheritance
classes is also more awkward.
To establish a class as using concrete inheritance, add the
:paramref:`.mapper.concrete` parameter within the ``__mapper_args__``.
This indicates to Declarative as well as the mapping that the superclass
table should not be considered as part of the mapping::
class Employee(Base):
__tablename__ = 'employee'
id = Column(Integer, primary_key=True)
name = Column(String(50))
class Manager(Employee):
__tablename__ = 'manager'
id = Column(Integer, primary_key=True)
name = Column(String(50))
manager_data = Column(String(50))
__mapper_args__ = {
'concrete': True
}
class Engineer(Employee):
__tablename__ = 'engineer'
id = Column(Integer, primary_key=True)
name = Column(String(50))
engineer_info = Column(String(50))
__mapper_args__ = {
'concrete': True
}
Two critical points should be noted:
* We must **define all columns explicitly** on each subclass, even those of
the same name. A column such as
``Employee.name`` here is **not** copied out to the tables mapped
by ``Manager`` or ``Engineer`` for us.
* while the ``Engineer`` and ``Manager`` classes are
mapped in an inheritance relationship with ``Employee``, they still **do not
include polymorphic loading**. Meaning, if we query for ``Employee``
objects, the ``manager`` and ``engineer`` tables are not queried at all.
.. _concrete_polymorphic:
Concrete Polymorphic Loading Configuration
++++++++++++++++++++++++++++++++++++++++++
Polymorphic loading with concrete inheritance requires that a specialized
SELECT is configured against each base class that should have polymorphic
loading. This SELECT needs to be capable of accessing all the
mapped tables individually, and is typically a UNION statement that is
constructed using a SQLAlchemy helper :func:`.polymorphic_union`.
As discussed in :ref:`inheritance_loading_toplevel`, mapper inheritance
configurations of any type can be configured to load from a special selectable
by default using the :paramref:`.mapper.with_polymorphic` argument. Current
public API requires that this argument is set on a :class:`.Mapper` when
it is first constructed.
However, in the case of Declarative, both the mapper and the :class:`.Table`
that is mapped are created at once, the moment the mapped class is defined.
This means that the :paramref:`.mapper.with_polymorphic` argument cannot
be provided yet, since the :class:`.Table` objects that correspond to the
subclasses haven't yet been defined.
There are a few strategies available to resolve this cycle, however
Declarative provides helper classes :class:`.ConcreteBase` and
:class:`.AbstractConcreteBase` which handle this issue behind the scenes.
Using :class:`.ConcreteBase`, we can set up our concrete mapping in
almost the same way as we do other forms of inheritance mappings::
from sqlalchemy.ext.declarative import ConcreteBase
class Employee(ConcreteBase, Base):
__tablename__ = 'employee'
id = Column(Integer, primary_key=True)
name = Column(String(50))
__mapper_args__ = {
'polymorphic_identity': 'employee',
'concrete': True
}
class Manager(Employee):
__tablename__ = 'manager'
id = Column(Integer, primary_key=True)
name = Column(String(50))
manager_data = Column(String(40))
__mapper_args__ = {
'polymorphic_identity': 'manager',
'concrete': True
}
class Engineer(Employee):
__tablename__ = 'engineer'
id = Column(Integer, primary_key=True)
name = Column(String(50))
engineer_info = Column(String(40))
__mapper_args__ = {
'polymorphic_identity': 'engineer',
'concrete': True
}
Above, Declarative sets up the polymorphic selectable for the
``Employee`` class at mapper "initialization" time; this is the late-configuration
step for mappers that resolves other dependent mappers. The :class:`.ConcreteBase`
helper uses the
:func:`.polymorphic_union` function to create a UNION of all concrete-mapped
tables after all the other classes are set up, and then configures this statement
with the already existing base-class mapper.
Upon select, the polymorphic union produces a query like this:
.. sourcecode:: python+sql
session.query(Employee).all()
{opensql}
SELECT
pjoin.id AS pjoin_id,
pjoin.name AS pjoin_name,
pjoin.type AS pjoin_type,
pjoin.manager_data AS pjoin_manager_data,
pjoin.engineer_info AS pjoin_engineer_info
FROM (
SELECT
employee.id AS id,
employee.name AS name,
CAST(NULL AS VARCHAR(50)) AS manager_data,
CAST(NULL AS VARCHAR(50)) AS engineer_info,
'employee' AS type
FROM employee
UNION ALL
SELECT
manager.id AS id,
manager.name AS name,
manager.manager_data AS manager_data,
CAST(NULL AS VARCHAR(50)) AS engineer_info,
'manager' AS type
FROM manager
UNION ALL
SELECT
engineer.id AS id,
engineer.name AS name,
CAST(NULL AS VARCHAR(50)) AS manager_data,
engineer.engineer_info AS engineer_info,
'engineer' AS type
FROM engineer
) AS pjoin
The above UNION query needs to manufacture "NULL" columns for each subtable
in order to accommodate for those columns that aren't members of that
particular subclass.
Abstract Concrete Classes
+++++++++++++++++++++++++
The concrete mappings illustrated thus far show both the subclasses as well
as the base class mapped to individual tables. In the concrete inheritance
use case, it is common that the base class is not represented within the
database, only the subclasses. In other words, the base class is
"abstract".
Normally, when one would like to map two different subclasses to individual
tables, and leave the base class unmapped, this can be achieved very easily.
When using Declarative, just declare the
base class with the ``__abstract__`` indicator::
class Employee(Base):
__abstract__ = True
class Manager(Employee):
__tablename__ = 'manager'
id = Column(Integer, primary_key=True)
name = Column(String(50))
manager_data = Column(String(40))
__mapper_args__ = {
'polymorphic_identity': 'manager',
}
class Engineer(Employee):
__tablename__ = 'engineer'
id = Column(Integer, primary_key=True)
name = Column(String(50))
engineer_info = Column(String(40))
__mapper_args__ = {
'polymorphic_identity': 'engineer',
}
Above, we are not actually making use of SQLAlchemy's inheritance mapping
facilities; we can load and persist instances of ``Manager`` and ``Engineer``
normally. The situation changes however when we need to **query polymorphically**,
that is, we'd like to emit ``session.query(Employee)`` and get back a collection
of ``Manager`` and ``Engineer`` instances. This brings us back into the
domain of concrete inheritance, and we must build a special mapper against
``Employee`` in order to achieve this.
.. topic:: Mappers can always SELECT
In SQLAlchemy, a mapper for a class always has to refer to some
"selectable", which is normally a :class:`.Table` but may also refer to any
:func:`.select` object as well. While it may appear that a "single table
inheritance" mapper does not map to a table, these mappers in fact
implicitly refer to the table that is mapped by a superclass.
To modify our concrete inheritance example to illustrate an "abstract" base
that is capable of polymorphic loading,
we will have only an ``engineer`` and a ``manager`` table and no ``employee``
table, however the ``Employee`` mapper will be mapped directly to the
"polymorphic union", rather than specifying it locally to the
:paramref:`.mapper.with_polymorphic` parameter.
To help with this, Declarative offers a variant of the :class:`.ConcreteBase`
class called :class:`.AbstractConcreteBase` which achieves this automatically::
from sqlalchemy.ext.declarative import AbstractConcreteBase
class Employee(AbstractConcreteBase, Base):
pass
class Manager(Employee):
__tablename__ = 'manager'
id = Column(Integer, primary_key=True)
name = Column(String(50))
manager_data = Column(String(40))
__mapper_args__ = {
'polymorphic_identity': 'manager',
'concrete': True
}
class Engineer(Employee):
__tablename__ = 'engineer'
id = Column(Integer, primary_key=True)
name = Column(String(50))
engineer_info = Column(String(40))
__mapper_args__ = {
'polymorphic_identity': 'engineer',
'concrete': True
}
The :class:`.AbstractConcreteBase` helper class has a more complex internal
process than that of :class:`.ConcreteBase`, in that the entire mapping
of the base class must be delayed until all the subclasses have been declared.
With a mapping like the above, only instances of ``Manager`` and ``Engineer``
may be persisted; querying against the ``Employee`` class will always produce
``Manager`` and ``Engineer`` objects.
.. seealso::
:ref:`declarative_concrete_table` - in the Declarative reference documentation
Classical and Semi-Classical Concrete Polymorphic Configuration
+++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++
The Declarative configurations illustrated with :class:`.ConcreteBase`
and :class:`.AbstractConcreteBase` are equivalent to two other forms
of configuration that make use of :func:`.polymorphic_union` explicitly.
These configurational forms make use of the :class:`.Table` object explicitly
so that the "polymorphic union" can be created first, then applied
to the mappings. These are illustrated here to clarify the role
of the :func:`.polymorphic_union` function in terms of mapping.
A **semi-classical mapping** for example makes use of Declarative, but
establishes the :class:`.Table` objects separately::
metadata = Base.metadata
employees_table = Table(
'employee', metadata,
Column('id', Integer, primary_key=True),
Column('name', String(50)),
)
managers_table = Table(
'manager', metadata,
Column('id', Integer, primary_key=True),
Column('name', String(50)),
Column('manager_data', String(50)),
)
engineers_table = Table(
'engineer', metadata,
Column('id', Integer, primary_key=True),
Column('name', String(50)),
Column('engineer_info', String(50)),
)
Next, the UNION is produced using :func:`.polymorphic_union`::
from sqlalchemy.orm import polymorphic_union
pjoin = polymorphic_union({
'employee': employees_table,
'manager': managers_table,
'engineer': engineers_table
}, 'type', 'pjoin')
With the above :class:`.Table` objects, the mappings can be produced using "semi-classical" style,
where we use Declarative in conjunction with the ``__table__`` argument;
our polymorphic union above is passed via ``__mapper_args__`` to
the :paramref:`.mapper.with_polymorphic` parameter::
class Employee(Base):
__table__ = employee_table
__mapper_args__ = {
'polymorphic_on': pjoin.c.type,
'with_polymorphic': ('*', pjoin),
'polymorphic_identity': 'employee'
}
class Engineer(Employee):
__table__ = engineer_table
__mapper_args__ = {
'polymorphic_identity': 'engineer',
'concrete': True}
class Manager(Employee):
__table__ = manager_table
__mapper_args__ = {
'polymorphic_identity': 'manager',
'concrete': True}
Alternatvely, the same :class:`.Table` objects can be used in
fully "classical" style, without using Declarative at all.
A constructor similar to that supplied by Declarative is illustrated::
class Employee(object):
def __init__(self, **kw):
for k in kw:
setattr(self, k, kw[k])
class Manager(Employee):
pass
class Engineer(Employee):
pass
employee_mapper = mapper(Employee, pjoin,
with_polymorphic=('*', pjoin),
polymorphic_on=pjoin.c.type)
manager_mapper = mapper(Manager, managers_table,
inherits=employee_mapper,
concrete=True,
polymorphic_identity='manager')
engineer_mapper = mapper(Engineer, engineers_table,
inherits=employee_mapper,
concrete=True,
polymorphic_identity='engineer')
The "abstract" example can also be mapped using "semi-classical" or "classical"
style. The difference is that instead of applying the "polymorphic union"
to the :paramref:`.mapper.with_polymorphic` parameter, we apply it directly
as the mapped selectable on our basemost mapper. The semi-classical
mapping is illustrated below::
from sqlalchemy.orm import polymorphic_union
pjoin = polymorphic_union({
'manager': managers_table,
'engineer': engineers_table
}, 'type', 'pjoin')
class Employee(Base):
__table__ = pjoin
__mapper_args__ = {
'polymorphic_on': pjoin.c.type,
'with_polymorphic': '*',
'polymorphic_identity': 'employee'
}
class Engineer(Employee):
__table__ = engineer_table
__mapper_args__ = {
'polymorphic_identity': 'engineer',
'concrete': True}
class Manager(Employee):
__table__ = manager_table
__mapper_args__ = {
'polymorphic_identity': 'manager',
'concrete': True}
Above, we use :func:`.polymorphic_union` in the same manner as before, except
that we omit the ``employee`` table.
.. seealso::
:ref:`classical_mapping` - background information on "classical" mappings
Relationships with Concrete Inheritance
+++++++++++++++++++++++++++++++++++++++
In a concrete inheritance scenario, mapping relationships is challenging
since the distinct classes do not share a table. If the relationships
only involve specific classes, such as a relationship between ``Company`` in
our previous examples and ``Manager``, special steps aren't needed as these
are just two related tables.
However, if ``Company`` is to have a one-to-many relationship
to ``Employee``, indicating that the collection may include both
``Engineer`` and ``Manager`` objects, that implies that ``Employee`` must
have polymorphic loading capabilities and also that each table to be related
must have a foreign key back to the ``company`` table. An example of
such a configuration is as follows::
from sqlalchemy.ext.declarative import ConcreteBase
class Company(Base):
__tablename__ = 'company'
id = Column(Integer, primary_key=True)
name = Column(String(50))
employees = relationship("Employee")
class Employee(ConcreteBase, Base):
__tablename__ = 'employee'
id = Column(Integer, primary_key=True)
name = Column(String(50))
company_id = Column(ForeignKey('company.id'))
__mapper_args__ = {
'polymorphic_identity': 'employee',
'concrete': True
}
class Manager(Employee):
__tablename__ = 'manager'
id = Column(Integer, primary_key=True)
name = Column(String(50))
manager_data = Column(String(40))
company_id = Column(ForeignKey('company.id'))
__mapper_args__ = {
'polymorphic_identity': 'manager',
'concrete': True
}
class Engineer(Employee):
__tablename__ = 'engineer'
id = Column(Integer, primary_key=True)
name = Column(String(50))
engineer_info = Column(String(40))
company_id = Column(ForeignKey('company.id'))
__mapper_args__ = {
'polymorphic_identity': 'engineer',
'concrete': True
}
The next complexity with concrete inheritance and relationships involves
when we'd like one or all of ``Employee``, ``Manager`` and ``Engineer`` to
themselves refer back to ``Company``. For this case, SQLAlchemy has
special behavior in that a :func:`.relationship` placed on ``Employee``
which links to ``Company`` **does not work**
against the ``Manager`` and ``Engineer`` classes, when exercised at the
instance level. Instead, a distinct
:func:`.relationship` must be applied to each class. In order to achieve
bi-directional behavior in terms of three separate relationships which
serve as the opposite of ``Company.employees``, the
:paramref:`.relationship.back_populates` parameter is used between
each of the relationships::
from sqlalchemy.ext.declarative import ConcreteBase
class Company(Base):
__tablename__ = 'company'
id = Column(Integer, primary_key=True)
name = Column(String(50))
employees = relationship("Employee", back_populates="company")
class Employee(ConcreteBase, Base):
__tablename__ = 'employee'
id = Column(Integer, primary_key=True)
name = Column(String(50))
company_id = Column(ForeignKey('company.id'))
company = relationship("Company", back_populates="employees")
__mapper_args__ = {
'polymorphic_identity': 'employee',
'concrete': True
}
class Manager(Employee):
__tablename__ = 'manager'
id = Column(Integer, primary_key=True)
name = Column(String(50))
manager_data = Column(String(40))
company_id = Column(ForeignKey('company.id'))
company = relationship("Company", back_populates="employees")
__mapper_args__ = {
'polymorphic_identity': 'manager',
'concrete': True
}
class Engineer(Employee):
__tablename__ = 'engineer'
id = Column(Integer, primary_key=True)
name = Column(String(50))
engineer_info = Column(String(40))
company_id = Column(ForeignKey('company.id'))
company = relationship("Company", back_populates="employees")
__mapper_args__ = {
'polymorphic_identity': 'engineer',
'concrete': True
}
The above limitation is related to the current implementation, including
that concrete inheriting classes do not share any of the attributes of
the superclass and therefore need distinct relationships to be set up.
Loading Concrete Inheritance Mappings
+++++++++++++++++++++++++++++++++++++
The options for loading with concrete inheritance are limited; generally,
if polymorphic loading is configured on the mapper using one of the
declarative concrete mixins, it can't be modified at query time
in current SQLAlchemy versions. Normally, the :func:`.orm.with_polymorphic`
function would be able to override the style of loading used by concrete,
however due to current limitations this is not yet supported.
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