Linking Relationships with Backref¶
The relationship.backref
keyword argument was first introduced in Object Relational Tutorial, and has been
mentioned throughout many of the examples here. What does it actually do ? Let’s start
with the canonical User
and Address
scenario:
from sqlalchemy import Integer, ForeignKey, String, Column
from sqlalchemy.ext.declarative import declarative_base
from sqlalchemy.orm import relationship
Base = declarative_base()
class User(Base):
__tablename__ = 'user'
id = Column(Integer, primary_key=True)
name = Column(String)
addresses = relationship("Address", backref="user")
class Address(Base):
__tablename__ = 'address'
id = Column(Integer, primary_key=True)
email = Column(String)
user_id = Column(Integer, ForeignKey('user.id'))
The above configuration establishes a collection of Address
objects on User
called
User.addresses
. It also establishes a .user
attribute on Address
which will
refer to the parent User
object.
In fact, the relationship.backref
keyword is only a common shortcut for placing a second
relationship()
onto the Address
mapping, including the establishment
of an event listener on both sides which will mirror attribute operations
in both directions. The above configuration is equivalent to:
from sqlalchemy import Integer, ForeignKey, String, Column
from sqlalchemy.ext.declarative import declarative_base
from sqlalchemy.orm import relationship
Base = declarative_base()
class User(Base):
__tablename__ = 'user'
id = Column(Integer, primary_key=True)
name = Column(String)
addresses = relationship("Address", back_populates="user")
class Address(Base):
__tablename__ = 'address'
id = Column(Integer, primary_key=True)
email = Column(String)
user_id = Column(Integer, ForeignKey('user.id'))
user = relationship("User", back_populates="addresses")
Above, we add a .user
relationship to Address
explicitly. On
both relationships, the relationship.back_populates
directive tells each relationship
about the other one, indicating that they should establish “bidirectional”
behavior between each other. The primary effect of this configuration
is that the relationship adds event handlers to both attributes
which have the behavior of “when an append or set event occurs here, set ourselves
onto the incoming attribute using this particular attribute name”.
The behavior is illustrated as follows. Start with a User
and an Address
instance. The .addresses
collection is empty, and the .user
attribute
is None
:
>>> u1 = User()
>>> a1 = Address()
>>> u1.addresses
[]
>>> print(a1.user)
None
However, once the Address
is appended to the u1.addresses
collection,
both the collection and the scalar attribute have been populated:
>>> u1.addresses.append(a1)
>>> u1.addresses
[<__main__.Address object at 0x12a6ed0>]
>>> a1.user
<__main__.User object at 0x12a6590>
This behavior of course works in reverse for removal operations as well, as well
as for equivalent operations on both sides. Such as
when .user
is set again to None
, the Address
object is removed
from the reverse collection:
>>> a1.user = None
>>> u1.addresses
[]
The manipulation of the .addresses
collection and the .user
attribute
occurs entirely in Python without any interaction with the SQL database.
Without this behavior, the proper state would be apparent on both sides once the
data has been flushed to the database, and later reloaded after a commit or
expiration operation occurs. The relationship.backref
/relationship.back_populates
behavior has the advantage
that common bidirectional operations can reflect the correct state without requiring
a database round trip.
Remember, when the relationship.backref
keyword is used on a single relationship, it’s
exactly the same as if the above two relationships were created individually
using relationship.back_populates
on each.
Backref Arguments¶
We’ve established that the relationship.backref
keyword is merely a shortcut for building
two individual relationship()
constructs that refer to each other. Part of
the behavior of this shortcut is that certain configurational arguments applied to
the relationship()
will also be applied to the other direction - namely those arguments that describe
the relationship at a schema level, and are unlikely to be different in the reverse
direction. The usual case
here is a many-to-many relationship()
that has a relationship.secondary
argument,
or a one-to-many or many-to-one which has a relationship.primaryjoin
argument (the
relationship.primaryjoin
argument is discussed in Specifying Alternate Join Conditions). Such
as if we limited the list of Address
objects to those which start with “tony”:
from sqlalchemy import Integer, ForeignKey, String, Column
from sqlalchemy.ext.declarative import declarative_base
from sqlalchemy.orm import relationship
Base = declarative_base()
class User(Base):
__tablename__ = 'user'
id = Column(Integer, primary_key=True)
name = Column(String)
addresses = relationship("Address",
primaryjoin="and_(User.id==Address.user_id, "
"Address.email.startswith('tony'))",
backref="user")
class Address(Base):
__tablename__ = 'address'
id = Column(Integer, primary_key=True)
email = Column(String)
user_id = Column(Integer, ForeignKey('user.id'))
We can observe, by inspecting the resulting property, that both sides of the relationship have this join condition applied:
>>> print(User.addresses.property.primaryjoin)
"user".id = address.user_id AND address.email LIKE :email_1 || '%%'
>>>
>>> print(Address.user.property.primaryjoin)
"user".id = address.user_id AND address.email LIKE :email_1 || '%%'
>>>
This reuse of arguments should pretty much do the “right thing” - it
uses only arguments that are applicable, and in the case of a many-to-
many relationship, will reverse the usage of
relationship.primaryjoin
and
relationship.secondaryjoin
to correspond to the other
direction (see the example in Self-Referential Many-to-Many Relationship for
this).
It’s very often the case however that we’d like to specify arguments
that are specific to just the side where we happened to place the
“backref”. This includes relationship()
arguments like
relationship.lazy
,
relationship.remote_side
,
relationship.cascade
and
relationship.cascade_backrefs
. For this case we use
the backref()
function in place of a string:
# <other imports>
from sqlalchemy.orm import backref
class User(Base):
__tablename__ = 'user'
id = Column(Integer, primary_key=True)
name = Column(String)
addresses = relationship("Address",
backref=backref("user", lazy="joined"))
Where above, we placed a lazy="joined"
directive only on the Address.user
side, indicating that when a query against Address
is made, a join to the User
entity should be made automatically which will populate the .user
attribute of each
returned Address
. The backref()
function formatted the arguments we gave
it into a form that is interpreted by the receiving relationship()
as additional
arguments to be applied to the new relationship it creates.
One Way Backrefs¶
An unusual case is that of the “one way backref”. This is where the
“back-populating” behavior of the backref is only desirable in one
direction. An example of this is a collection which contains a
filtering relationship.primaryjoin
condition. We’d
like to append items to this collection as needed, and have them
populate the “parent” object on the incoming object. However, we’d
also like to have items that are not part of the collection, but still
have the same “parent” association - these items should never be in
the collection.
Taking our previous example, where we established a
relationship.primaryjoin
that limited the collection
only to Address
objects whose email address started with the word
tony
, the usual backref behavior is that all items populate in
both directions. We wouldn’t want this behavior for a case like the
following:
>>> u1 = User()
>>> a1 = Address(email='mary')
>>> a1.user = u1
>>> u1.addresses
[<__main__.Address object at 0x1411910>]
Above, the Address
object that doesn’t match the criterion of “starts with ‘tony’”
is present in the addresses
collection of u1
. After these objects are flushed,
the transaction committed and their attributes expired for a re-load, the addresses
collection will hit the database on next access and no longer have this Address
object
present, due to the filtering condition. But we can do away with this unwanted side
of the “backref” behavior on the Python side by using two separate relationship()
constructs,
placing relationship.back_populates
only on one side:
from sqlalchemy import Integer, ForeignKey, String, Column
from sqlalchemy.ext.declarative import declarative_base
from sqlalchemy.orm import relationship
Base = declarative_base()
class User(Base):
__tablename__ = 'user'
id = Column(Integer, primary_key=True)
name = Column(String)
addresses = relationship("Address",
primaryjoin="and_(User.id==Address.user_id, "
"Address.email.startswith('tony'))",
back_populates="user")
class Address(Base):
__tablename__ = 'address'
id = Column(Integer, primary_key=True)
email = Column(String)
user_id = Column(Integer, ForeignKey('user.id'))
user = relationship("User")
With the above scenario, appending an Address
object to the .addresses
collection of a User
will always establish the .user
attribute on that
Address
:
>>> u1 = User()
>>> a1 = Address(email='tony')
>>> u1.addresses.append(a1)
>>> a1.user
<__main__.User object at 0x1411850>
However, applying a User
to the .user
attribute of an Address
,
will not append the Address
object to the collection:
>>> a2 = Address(email='mary')
>>> a2.user = u1
>>> a2 in u1.addresses
False
Of course, we’ve disabled some of the usefulness of
relationship.backref
here, in that when we do append an
Address
that corresponds to the criteria of
email.startswith('tony')
, it won’t show up in the
User.addresses
collection until the session is flushed, and the
attributes reloaded after a commit or expire operation. While we
could consider an attribute event that checks this criterion in
Python, this starts to cross the line of duplicating too much SQL
behavior in Python. The backref behavior itself is only a slight
transgression of this philosophy - SQLAlchemy tries to keep these to a
minimum overall.