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I'm developing a Extjs 4 application, I execute a query with parameters sent from the GUI (textboxes, comboboxes values, etc.). The query is built with SQLAlchemy. And I'm using MySQL database on localhost.

The queries I execute are meant to return big data. My problem is when I execute the query directly on HeidiSQL it executes in 0.6 seconds, but with Extjs (on chrome) it produces a time out and no results are shown.

This is the query. When I execute it, it should return 300.000 rows.

FROM bl, `CR`
WHERE `CR`.`Category` IN ('Failure') AND bl.severity_logged IN ('4_minor') AND bl.product_logged = 'x' AND bl.`productRelease_logged` IN ('0.1', '6.2', '6.4', '6.7');

What could be the problem? Is it a browser cache problem?

EDIT : This is my Python script w/ SQLAlchemy.

engine = create_engine(
             isolation_level="READ UNCOMMITTED"
meta = MetaData(bind=engine)
cr =  meta.tables['cr']
bl = meta.tables['bl']

session = create_session(bind=engine)
...#I create filters based on the GUI values
test_query = session.query(metric_table_object,cr).filter(all_filters) #I then create the query
result_dict = [u.__dict__ for u in test_query.all()] #I store the query result into a dict
print result_dict
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Are you sure you are closing all previous sessions? using session.close(), also if you can print your code it will be much easier. –  Kobi K Oct 14 '13 at 8:42
I don't use session.close(), where should I put it? Directly after declaring session = create_session(bind=engine)? –  salamey Oct 14 '13 at 9:07
I have updated my question with the Python code. –  salamey Oct 14 '13 at 9:15
there's a big difference between time it takes for a query to start returning results and for it to return all rows. 300K rows is a lot. It's probably taking a long time and might even be thrashing memory, take a look at RAM usage and all that. –  zzzeek Oct 14 '13 at 17:34
yeah 300K ORM objects in an array, that is an enormous amount of python overhead both in terms of CPU and memory. I'd find a different way to achieve what you want rather than loading 300K rows into memory, are you trying to generate a report file of some kind that you need all those rows at once ? –  zzzeek Oct 14 '13 at 17:35

1 Answer 1

As zzzeek comments, loading 300,000 result objects may be using too much memory. Perhaps you can work with your data in chunks using a tactic like the Windowed Range Query? This post on the SqlAlchemy mailing list also has some useful details on slicing your results into chunks.

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