So the answer is that I was individually inserting each row, and round tripping to the DB for each address check. The address check was the worst part, since it got exponentially slower. I calculated that inserting the original data (1.5 hrs), and then inserting the same data again, would take ~9 hrs!
So this answer will go over what I did to convert to bulk insert statements, as well as some things to watch out for.
- ORM in sqlalchemy will "help"
ORM is great, but realize it doesn't exactly mesh well with bulk inserts. Bulk inserts require using the lower level
execute statements on the session. These don't take ORM objects as inputs, but a list of dictionaries and an
insert object. So if your converting a csv file full of rows into ORM objects, you need to NOT add them to the current session, but instead convert them to dictionaries for later.
return dict((col.name, getattr(obj, col.name))
for col in class_mapper(obj.__class__).mapped_table.c)
currGUID = uuid.uuid4()
currPrintOrMail = printOrMail(rec, id=currGUID)
currStatement = statements(rec, id=currGUID)
currAddress = self.get_or_create(address, rec)
currStatement.address = currAddress
The asdict method comes from here. That gets you dictionaries of the columns in the ORM objects created. They never get added to the session, and drop out of memory shortly thereafter.
- Relationships will bite you
If you have set up an ORM relationship:
__tablename__ = 'statements'
id = id_column()
county = Column(String(50),default='',nullable=False)
address_id = Column(CHAR(36), ForeignKey('address.id'))
address = relationship("address", backref=backref("statements", cascade=""))
printOrMail_id = Column(CHAR(36), ForeignKey('printOrMail.id'))
pom = relationship("printOrMail", backref=backref("statements", cascade=""))
property_id = Column(CHAR(36), ForeignKey('property.id'))
prop = relationship("property", backref=backref("statements", cascade=""))
Make sure cascade is blank in the backref! Otherwise, inserting an object in the relationship into the session will cascade through the rest of the objects. When you try to bulk insert your values later, they will be rejected as duplicates...if you're lucky.
This is important because part of the requirements was getting the address_id for a valid address if it existed, and adding the address if it did not. Since the query round tripping was so slow, I changed
def get_or_create(self, model, rec):
"""Check if current session has address. If not, query DB for it. If no one has the address, create and flush a new one to the session."""
instance = self.session.query(model).get((rec['Name'], rec['Address_Line_One'], rec['Address_Line_Two'], rec['Address_Line_Three'], rec['Address_Line_Four']))
instance = model(rec)
get causes sqlalchemy to check the session first, preventing trips across the network. But, it only works if new addresses are added to the session! Remember the relationship? This was cascading into inserts of the statements. Also, if you don't
flush() or have
get cannot see the newly added objects.
When you create the session, persist your objects!
self.session = sessionmaker(autoflush=False, expire_on_commit=False)
If you don't include
expire_on_commit=False then you lose your addresses, and start round-tripping again.
- ORM objects do have insert
Now we've got a list of dictionaries for the ORM objects to insert. But we also need an insert object.
Buried in the docs, it seems that one can use
classname.__table__ for the necessary table object, required by insert. So on the session, using the ORM class to get the table to get the insert object, run an execute with the list of dictionaries. Don't forget to commit afterwards!
- Don't run out of memory
This will allow you to successfully mix bulk inserting and ORM with relationships and querying for unique entries in sqlalchemy. Just watch out for running out of memory. I had to bulk insert
~30,000 records at a time, otherwise
py2.7(32bit) would crash at around