I'm testing a query in pgAdmin and SQLAlchemy and found that the execution time of both varies substantially (SQLA=0.9sec, pgAdmin=0.090s) . I wonder how this could be?
This is how I profile the SQLA code:
start_time = time.time() result = session.query(Parent).all() # I disabled printing... print 'query execution=', time.time() - start_time, 'seconds'
For pgAdmin, I read the execution speed from the query editor in the bottom right corner.
What can I do to align both? I would expect SQLA to be a bit slower, but not this much...
I tried querying the database using raw SQL via SQLA and it's getting close enough to the pgAdmin query speed. Even if I discounted for the query generation time, I can't get anywhere near the raw SQL performance using the SQLA ORM (still 10x slower).
I profiled the code and found that an awful (relatively speaking) lot of time is spent in
loading.py:_instance:323 of SQLA. As far as I can tell it's building an entity map and creating the row objects. It will take me some time to figure out what exactly happens, but maybe someone knows a way to switch off some of this functionality (I'm not sure if I need all of this, as I'm just loading rows and for instance won't need any tracking of objects -- and god knows what else it does)...
I also ran another test for which I issue the generated query using
connection.execute('select from...'). The performance is phenomenal and the result is a list of tuples. I am thinking of building a (very very simple) 'light-weight' layer to objectify this result. Has anyone tried this before or did anything along these lines?