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Lets say that I have a database structure with three tables that look like this:

 - item_id
 - item_handle

 - attribute_id
 - attribute_name

 - item_attribute_id
 - item_id
 - attribute_id
 - attribute_value

I would like to be able to do this in SQLAlchemy:

item = Item('item1') = 'bar'


item1 = session.query(Item).filter_by(handle='item1').one()
print # => 'bar'

I'm new to SQLAlchemy and I found this in the documentation (

j = join(items, item_attributes, items.c.item_id == item_attributes.c.item_id). \
    join(attributes, item_attributes.c.attribute_id == attributes.c.attribute_id)

mapper(Item, j, properties={
    'item_id': [items.c.item_id, item_attributes.c.item_id],
    'attribute_id': [item_attributes.c.attribute_id, attributes.c.attribute_id],

It only adds item_id and attribute_id to Item and its not possible to add attributes to Item object.

Is what I'm trying to achieve possible with SQLAlchemy? Is there a better way to structure the database to get the same behaviour of "dynamic columns"?

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2 Answers 2

up vote 7 down vote accepted

This is called the entity-attribute-value pattern. There is an example about this under the SQLAlchemy examples directory: vertical/.

If you are using PostgreSQL, then there is also the hstore contrib module that can store a string to string mapping. If you are interested then I have some code for a custom type that makes it possible to use that to store extended attributes via SQLAlchemy.

Another option to store custom attributes is to serialize them to a text field. In that case you will lose the ability to filter by attributes.

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Came across this answer (exactly what I was looking for) but the link was broken. See my answer below for one of the example files. – Jesse Vogt May 23 '10 at 4:37
You could've just fixed the link. – Ants Aasma May 24 '10 at 9:59
I had to clone the repo to get the code. I can't access the code via trac anymore. – Jesse Vogt May 24 '10 at 14:23

The link to vertical/ is broken. The example had been renamed to and

I am pasting in the contents of

"""Mapping a vertical table as a dictionary.

This example illustrates accessing and modifying a "vertical" (or
"properties", or pivoted) table via a dict-like interface.  These are tables
that store free-form object properties as rows instead of columns.  For
example, instead of::

  # A regular ("horizontal") table has columns for 'species' and 'size'
  Table('animal', metadata,
        Column('id', Integer, primary_key=True),
        Column('species', Unicode),
        Column('size', Unicode))

A vertical table models this as two tables: one table for the base or parent
entity, and another related table holding key/value pairs::

  Table('animal', metadata,
        Column('id', Integer, primary_key=True))

  # The properties table will have one row for a 'species' value, and
  # another row for the 'size' value.
  Table('properties', metadata
        Column('animal_id', Integer, ForeignKey(''),
        Column('key', UnicodeText),
        Column('value', UnicodeText))

Because the key/value pairs in a vertical scheme are not fixed in advance,
accessing them like a Python dict can be very convenient.  The example below
can be used with many common vertical schemas as-is or with minor adaptations.


class VerticalProperty(object):
    """A key/value pair.

    This class models rows in the vertical table.

    def __init__(self, key, value):
        self.key = key
        self.value = value

    def __repr__(self):
        return '<%s %r=%r>' % (self.__class__.__name__, self.key, self.value)

class VerticalPropertyDictMixin(object):
    """Adds obj[key] access to a mapped class.

    This is a mixin class.  It can be inherited from directly, or included
    with multiple inheritence.

    Classes using this mixin must define two class properties::

      The mapped type of the vertical key/value pair instances.  Will be
      invoked with two positional arugments: key, value

      A string, the name of the Python attribute holding a dict-based
      relationship of _property_type instances.

    Using the VerticalProperty class above as an example,::

      class MyObj(VerticalPropertyDictMixin):
          _property_type = VerticalProperty
          _property_mapping = 'props'

      mapper(MyObj, sometable, properties={
        'props': relationship(VerticalProperty,

    Dict-like access to MyObj is proxied through to the 'props' relationship::

      myobj['key'] = 'value'
      # shorthand for:
      myobj.props['key'] = VerticalProperty('key', 'value')

      myobj['key'] = 'updated value']
      # shorthand for:
      myobj.props['key'].value = 'updated value'

      print myobj['key']
      # shorthand for:
      print myobj.props['key'].value


    _property_type = VerticalProperty
    _property_mapping = None

    __map = property(lambda self: getattr(self, self._property_mapping))

    def __getitem__(self, key):
        return self.__map[key].value

    def __setitem__(self, key, value):
        property = self.__map.get(key, None)
        if property is None:
            self.__map[key] = self._property_type(key, value)
            property.value = value

    def __delitem__(self, key):
        del self.__map[key]

    def __contains__(self, key):
        return key in self.__map

    # Implement other dict methods to taste.  Here are some examples:
    def keys(self):
        return self.__map.keys()

    def values(self):
        return [prop.value for prop in self.__map.values()]

    def items(self):
        return [(key, prop.value) for key, prop in self.__map.items()]

    def __iter__(self):
        return iter(self.keys())

if __name__ == '__main__':
    from sqlalchemy import (MetaData, Table, Column, Integer, Unicode,
        ForeignKey, UnicodeText, and_, not_)
    from sqlalchemy.orm import mapper, relationship, create_session
    from sqlalchemy.orm.collections import attribute_mapped_collection

    metadata = MetaData()

    # Here we have named animals, and a collection of facts about them.
    animals = Table('animal', metadata,
                    Column('id', Integer, primary_key=True),
                    Column('name', Unicode(100)))

    facts = Table('facts', metadata,
                  Column('animal_id', Integer, ForeignKey(''),
                  Column('key', Unicode(64), primary_key=True),
                  Column('value', UnicodeText, default=None),)

    class AnimalFact(VerticalProperty):
        """A fact about an animal."""

    class Animal(VerticalPropertyDictMixin):
        """An animal.

        Animal facts are available via the 'facts' property or by using
        dict-like accessors on an Animal instance::

          cat['color'] = 'calico'
          # or, equivalently:
          cat.facts['color'] = AnimalFact('color', 'calico')

        _property_type = AnimalFact
        _property_mapping = 'facts'

        def __init__(self, name):
   = name

        def __repr__(self):
            return '<%s %r>' % (self.__class__.__name__,

    mapper(Animal, animals, properties={
        'facts': relationship(
            AnimalFact, backref='animal',
    mapper(AnimalFact, facts)

    metadata.bind = 'sqlite:///'
    session = create_session()

    stoat = Animal(u'stoat')
    stoat[u'color'] = u'reddish'
    stoat[u'cuteness'] = u'somewhat'

    # dict-like assignment transparently creates entries in the
    # stoat.facts collection:
    print stoat.facts[u'color']


    critter = session.query(Animal).filter( == u'stoat').one()
    print critter[u'color']
    print critter[u'cuteness']

    critter[u'cuteness'] = u'very'

    print 'changing cuteness:'
    metadata.bind.echo = True
    metadata.bind.echo = False

    marten = Animal(u'marten')
    marten[u'color'] = u'brown'
    marten[u'cuteness'] = u'somewhat'

    shrew = Animal(u'shrew')
    shrew[u'cuteness'] = u'somewhat'
    shrew[u'poisonous-part'] = u'saliva'

    loris = Animal(u'slow loris')
    loris[u'cuteness'] = u'fairly'
    loris[u'poisonous-part'] = u'elbows'

    q = (session.query(Animal).
           and_(AnimalFact.key == u'color',
                AnimalFact.value == u'reddish'))))
    print 'reddish animals', q.all()

    # Save some typing by wrapping that up in a function:
    with_characteristic = lambda key, value: and_(AnimalFact.key == key,
                                                  AnimalFact.value == value)

    q = (session.query(Animal).
           with_characteristic(u'color', u'brown'))))
    print 'brown animals', q.all()

    q = (session.query(Animal).
                         with_characteristic(u'poisonous-part', u'elbows')))))
    print 'animals without poisonous-part == elbows', q.all()

    q = (session.query(Animal).
         filter(Animal.facts.any(AnimalFact.value == u'somewhat')))
    print 'any animal with any .value of "somewhat"', q.all()

    # Facts can be queried as well.
    q = (session.query(AnimalFact).
         filter(with_characteristic(u'cuteness', u'very')))
    print 'just the facts', q.all()

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