Sign up ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I'm new to Django, but the application that I have in mind might end up having URLs that look like this:


Where "id_1" and "id_2" are identifiers of two distinct Model objects. In the handler for "compare" I'd like to asynchronously, and in parallel, query and retrieve objects id_1 and id_2.

Is there any way to do this using a standard Django syntax? I'm hoping for pseudocode that ends up looking something like this:

import django.async 

# Issue the model query, but set it up asynchronously.  
# The next 2 lines don't actually touch my database 
o1 = Object(id=id_1).async_fetch()
o2 = Object(id=id_2).async_fetch()

# Now that I know what I want to query, fire off a fetch to do them all
# in parallel, and wait for all queries to finish before proceeding. 


# Now the code can use data from o1 and o2 below...
share|improve this question
+1: Interesting question :-) –  Jon Cage May 27 '09 at 23:25
Since everything is cached, I doubt you'd see any gain from this kind of thing. Are your object fetches really the slowest part of your application? –  S.Lott May 27 '09 at 23:26
Everything won't be cached, and this is actually just a simple version of the actual design I'm considering. Imagine something like "fetch all the posts in this thread" for forum software. The number of posts might be very large (1000's) and the access pattern might be such that they're not all cached. –  slacy May 28 '09 at 21:51

1 Answer 1

up vote 10 down vote accepted

There aren't strictly asynchronous operations as you've described, but I think you can achieve the same effect by using django's in_bulk query operator, which takes a list of ids to query.

Something like this for the

urlpatterns = patterns('',
    (r'^compare/(\d+)/(\d+)/$', 'my.compareview'),

And this for the view:

def compareview(request, id1, id2):
    # in_bulk returns a dict: { obj_id1: <MyModel instance>, 
    #                           obj_id2: <MyModel instance> }
    # the SQL pulls all at once, rather than sequentially... arguably
    # better than async as it pulls in one DB hit, rather than two
    # happening at the same time
    comparables = MyModel.objects.in_bulk([id1, id2])
    o1, o2 = (comparables.get(id1), comparables.get(id2))      
share|improve this answer
Does in_bulk use threads to issues the queries in parallel, or are they still serialized? I'm looking to minimize page render latency. –  slacy May 27 '09 at 23:09
In bulk writes a single SQL query, so nothing is either serialized or in parallel... there's just a single DB hit that fetches both instances. –  Jarret Hardie May 27 '09 at 23:09
That's unfortunate. On a fast database, it's likely to be faster to issue N queries in parallel than it is to issue one giant one for all the objects. in_bulk() will reduce latency slightly. I'm hoping for an O(1) page render. –  slacy May 27 '09 at 23:38
I'm afraid I can't agree, slacy. Having to transfer N responses separately over a DB connection, considering network latency, versus one that sends all the information at once, would rarely be faster. Using one query lets the database optimize the work performed as a whole, unless you have tons of joins or functions involved, which your question does not. To S.Lott's point, are you sure that fetching 2 objects is really the bottleneck in your app? Or even fetching 10? If so, Django (or any ORM) may not be for you... ORMs tend to be chatty if you are concerned with queries at a micro level. –  Jarret Hardie May 28 '09 at 0:05
N concurrent queries compete against each other. You have limited connections, limited statement cache, limited data cache and limited access to the underlying files. A single query that fetches multiple rows will (probably) acquire single instances of resources without competing against another similar query. –  S.Lott May 28 '09 at 0:59

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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