I have two tables Foo and Bar. I just added a new column x
to the Bar table which has to be populated using values in Foo
class Foo(Base):
__table__ = 'foo'
id = Column(Integer, primary_key=True)
x = Column(Integer, nullable=False)
class Bar(Base):
__table__ = 'bar'
id = Column(Integer, primary_key=True)
x = Column(Integer, nullable=False)
foo_id = Column(Integer, ForeignKey('foo.id'), nullable=False)
One straightforward way to do it would be iterating over all the rows in Bar and then updating them one-by-one, but it takes a long time (there are more than 100k rows in Foo and Bar)
for b, foo_x in session.query(Bar, Foo.x).join(Foo, Foo.id==Bar.foo_id):
b.x = foo_x
session.flush()
Now I was wondering if this would be right way to do it -
mappings = []
for b, foo_x in session.query(Bar, Foo.x).join(Foo, Foo.id==Bar.foo_id):
info = {'id':b.id, 'x': foo_x}
mappings.append(info)
session.bulk_update_mappings(Bar, mappings)
There are not much examples on bulk_update_mappings
out there. The docs suggest
All those keys which are present and are not part of the primary key are applied to the SET clause of the UPDATE statement; the primary key values, which are required, are applied to the WHERE clause.
So, in this case id
will be used in the WHERE
clause and then that would be updates using the x
value in the dictionary right ?