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If I had say 70,000 objects and wanted to do statistics on them, but the statistics didnt need to be 100% accurate, what is the best way to pull out say 1,000 objects, do statistics on those objects and then just scale it to approximate the statistics for the 70,000? I can't quite seem to find an efficient way to get 1000 random objects from a queryset.

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3 Answers 3

You can get random objects with:

objs = list(MyModel.objects().order_by("?")[:1000])

But the underlying order by random that gets generated for the SQL isn't particularly efficient.

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That is exactly what I ran into. The documentation I have read said that .order_by('?') is slow, which doesnt help if I am trying to speed things up by taking a sample set. –  DantheMan Mar 25 '11 at 3:36

I know this isn't the answer you're looking for, but sometimes when doing heavy reporting you need more than Django's ORM can offer. I worked with a guy who used Django for his main application, but for some reporting tools (and a JSON service) he used Flask and SQLAlchemy and was able to accomplish a whole lot more and without having to write SQL.

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there is a great post on the issue of getting random rows from the database (there are few good points in the comments too).

the only thing I would check is to get some objects by "in_bulk" method, because you may be even faster this way.

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