I'm trying to find a memory efficient way to do a paged query to test for an empty collection, but can't seem to figure out how to go about it efficiently on a large database. The table layout uses an Association Object with bi-directional backrefs. It is very similar to the documentation.
class Association(Base): __tablename__ = 'Association' assoc_id = Column(Integer, primary_key=True, nullable=False, unique=True) member_id = Column(Integer, ForeignKey('Member.id')) chunk_id = Column(Integer, ForeignKey('Chunk.id')) extra = Column(Text) chunk = relationship("Chunk", backref=backref("assoc", lazy="dynamic")) class Member(Base): __tablename__ = 'Member' id = Column(Integer, primary_key=True, nullable=False, unique=True) assocs = relationship("Association", backref="member", cascade="all, delete", lazy="dynamic") class Chunk(Base): __tablename__ = 'Chunk' id = Column(Integer, primary_key=True, nullable=False, unique=True) name = Column(Text, unique=True)
If the member is deleted, it will cascade and delete the member's associations. However, the chunk objects will be orphaned in the database. To delete the orphaned chunks, I can test for an empty collection using a query like this:
and then delete the chunks with:
However, if the association and chunk tables are large it seems the query or subquery loads up everything and the memory skyrockets.
I've seen the concept of using a paged query to limit the memory usage of standard queries here:
def page_query(q, count=1000): offset = 0 while True: r = False for elem in q.limit(count).offset(offset): r = True yield elem offset += count if not r: break for chunk in page_query(Session.query(Chunk)): print chunk.name
However this doesn't appear to work with the empty collection query as the memory usage is still high. Is there a way to do a paged query for an empty collection like this?