The default behavior of mapper()
is to assemble all the columns in
the mapped Table
into mapped object attributes, each of which are
named according to the name of the column itself (specifically, the key
attribute of Column
). This behavior can be
modified in several ways.
A mapping by default shares the same name for a
Column
as that of the mapped attribute - specifically
it matches the Column.key
attribute on Column
, which
by default is the same as the Column.name
.
The name assigned to the Python attribute which maps to
Column
can be different from either Column.name
or Column.key
just by assigning it that way, as we illustrate here in a Declarative mapping:
class User(Base):
__tablename__ = 'user'
id = Column('user_id', Integer, primary_key=True)
name = Column('user_name', String(50))
Where above User.id
resolves to a column named user_id
and User.name
resolves to a column named user_name
.
When mapping to an existing table, the Column
object
can be referenced directly:
class User(Base):
__table__ = user_table
id = user_table.c.user_id
name = user_table.c.user_name
Or in a classical mapping, placed in the properties
dictionary
with the desired key:
mapper(User, user_table, properties={
'id': user_table.c.user_id,
'name': user_table.c.user_name,
})
In the next section we’ll examine the usage of .key
more closely.
In the previous section Naming Columns Distinctly from Attribute Names, we showed how
a Column
explicitly mapped to a class can have a different attribute
name than the column. But what if we aren’t listing out Column
objects explicitly, and instead are automating the production of Table
objects using reflection (e.g. as described in Reflecting Database Objects)?
In this case we can make use of the DDLEvents.column_reflect()
event
to intercept the production of Column
objects and provide them
with the Column.key
of our choice:
@event.listens_for(Table, "column_reflect")
def column_reflect(inspector, table, column_info):
# set column.key = "attr_<lower_case_name>"
column_info['key'] = "attr_%s" % column_info['name'].lower()
With the above event, the reflection of Column
objects will be intercepted
with our event that adds a new “.key” element, such as in a mapping as below:
class MyClass(Base):
__table__ = Table("some_table", Base.metadata,
autoload=True, autoload_with=some_engine)
If we want to qualify our event to only react for the specific MetaData
object above, we can check for it in our event:
@event.listens_for(Table, "column_reflect")
def column_reflect(inspector, table, column_info):
if table.metadata is Base.metadata:
# set column.key = "attr_<lower_case_name>"
column_info['key'] = "attr_%s" % column_info['name'].lower()
A quick approach to prefix column names, typically when mapping
to an existing Table
object, is to use column_prefix
:
class User(Base):
__table__ = user_table
__mapper_args__ = {'column_prefix':'_'}
The above will place attribute names such as _user_id
, _user_name
,
_password
etc. on the mapped User
class.
This approach is uncommon in modern usage. For dealing with reflected tables, a more flexible approach is to use that described in Automating Column Naming Schemes from Reflected Tables.
Options can be specified when mapping a Column
using the
column_property()
function. This function
explicitly creates the ColumnProperty
used by the
mapper()
to keep track of the Column
; normally, the
mapper()
creates this automatically. Using column_property()
,
we can pass additional arguments about how we’d like the Column
to be mapped. Below, we pass an option active_history
,
which specifies that a change to this column’s value should
result in the former value being loaded first:
from sqlalchemy.orm import column_property
class User(Base):
__tablename__ = 'user'
id = Column(Integer, primary_key=True)
name = column_property(Column(String(50)), active_history=True)
column_property()
is also used to map a single attribute to
multiple columns. This use case arises when mapping to a join()
which has attributes which are equated to each other:
class User(Base):
__table__ = user.join(address)
# assign "user.id", "address.user_id" to the
# "id" attribute
id = column_property(user_table.c.id, address_table.c.user_id)
For more examples featuring this usage, see Mapping a Class against Multiple Tables.
Another place where column_property()
is needed is to specify SQL expressions as
mapped attributes, such as below where we create an attribute fullname
that is the string concatenation of the firstname
and lastname
columns:
class User(Base):
__tablename__ = 'user'
id = Column(Integer, primary_key=True)
firstname = Column(String(50))
lastname = Column(String(50))
fullname = column_property(firstname + " " + lastname)
See examples of this usage at SQL Expressions as Mapped Attributes.
sqlalchemy.orm.
column_property
(*columns, **kwargs)¶Provide a column-level property for use with a Mapper.
Column-based properties can normally be applied to the mapper’s
properties
dictionary using the Column
element directly.
Use this function when the given column is not directly present within
the mapper’s selectable; examples include SQL expressions, functions,
and scalar SELECT queries.
Columns that aren’t present in the mapper’s selectable won’t be persisted by the mapper and are effectively “read-only” attributes.
Parameters: |
|
---|
Sometimes, a Table
object was made available using the
reflection process described at Reflecting Database Objects to load
the table’s structure from the database.
For such a table that has lots of columns that don’t need to be referenced
in the application, the include_properties
or exclude_properties
arguments can specify that only a subset of columns should be mapped.
For example:
class User(Base):
__table__ = user_table
__mapper_args__ = {
'include_properties' :['user_id', 'user_name']
}
…will map the User
class to the user_table
table, only including
the user_id
and user_name
columns - the rest are not referenced.
Similarly:
class Address(Base):
__table__ = address_table
__mapper_args__ = {
'exclude_properties' : ['street', 'city', 'state', 'zip']
}
…will map the Address
class to the address_table
table, including
all columns present except street
, city
, state
, and zip
.
When this mapping is used, the columns that are not included will not be
referenced in any SELECT statements emitted by Query
, nor will there
be any mapped attribute on the mapped class which represents the column;
assigning an attribute of that name will have no effect beyond that of
a normal Python attribute assignment.
In some cases, multiple columns may have the same name, such as when
mapping to a join of two or more tables that share some column name.
include_properties
and exclude_properties
can also accommodate
Column
objects to more accurately describe which columns
should be included or excluded:
class UserAddress(Base):
__table__ = user_table.join(addresses_table)
__mapper_args__ = {
'exclude_properties' :[address_table.c.id],
'primary_key' : [user_table.c.id]
}
Note
insert and update defaults configured on individual Column
objects, i.e. those described at Column INSERT/UPDATE Defaults including those
configured by the Column.default
,
Column.onupdate
, Column.server_default
and
Column.server_onupdate
parameters, will continue to function
normally even if those Column
objects are not mapped. This is
because in the case of Column.default
and
Column.onupdate
, the Column
object is still present
on the underlying Table
, thus allowing the default functions to
take place when the ORM emits an INSERT or UPDATE, and in the case of
Column.server_default
and Column.server_onupdate
,
the relational database itself emits these defaults as a server side
behavior.