34

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 ?

2
  • 1
    @Chris, I assume this works for you and you just want to make sure that the way is correct from a approach perspective? Mar 24, 2018 at 21:36
  • Yep, exactly ...
    – Chris
    Mar 25, 2018 at 0:53

2 Answers 2

40
+50

The approach is correct in terms of usage. The only thing I would change is something like below

mappings = []
i = 0

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)
    i = i + 1
    if i % 10000 == 0:
        session.bulk_update_mappings(Bar, mappings)
        session.flush()
        session.commit()
        mappings[:] = []

session.bulk_update_mappings(Bar, mappings)

This will make sure you don't have too much data hanging in memory and you don't do a too big insert to the DB at a single time

5
  • Great! I have million data to be updated and there is poor connection between sql and backend. It seems the update process hang forever. Thanks for the suggestion of splitting data. Mar 26, 2018 at 6:01
  • Is there any way to specify where clause as other fields than primary key?
    – Mehrdad
    Aug 17, 2019 at 6:52
  • @Mehrdad, i would suggest to open a new query on the same and post a link here if needed. As the problems are totally different Aug 17, 2019 at 7:02
  • @TarunLalwani Good suggestion, I did that: stackoverflow.com/questions/57534134/…
    – Mehrdad
    Aug 17, 2019 at 7:15
  • 1
    By default, session has autoflush enabled, so there's no need to flush explicitly every 10k records
    – Taras
    Jan 18, 2022 at 5:00
2

Not directly related to this question, but for those searching for more performance when updating/inserting using both methods: bulk_update_mappings and bulk_insert_mappings, just add the fast_executemany to your engine as follows:

engine = create_engine(connection_string, fast_executemany=True)

You can use that parameter in sqlalchemy versions above 1.3. This parameter comes from pyodbc and it will for sure speed up your bulk requests.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.