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I'm parsing hundreds of millions of JSON records and storing the relevant components from each in a dict. The problem is that because of the number of records I'm processing, python is being forced to increase the size of the dict's underlying hash table several times. This results in a LOT of data having to be rehashed. The sheer amount of rehashing itself seems to cost a lot of time. Therefore, I wonder if there's a way to set a minimum size on the dict's underlying hash table so that the number of resizing operations is minimized.

I have read this on optimizing python's dict, from an answer on this question, but cannot find how to change the initial size of a dict's hash table. If anyone can help me out with this, I'd be very grateful.

Thank you

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1 Answer 1

up vote 2 down vote accepted

If you do this:

a = dict.fromkeys(range(n))

it will force the dictionary size to accomodate n items. It is quite quick after that, but it takes 3s to do so.

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Sure, that gets me the right size. But it doesn't get me the right keys. I'd have to delete all the n many keys and repopulate with the correct ones, as I process each JSON record. Would that not be slow? –  inspectorG4dget Jul 6 '12 at 3:58
It should help with speed. Write a small test that does so. It'll create a dict of a known size with all values defaulting to either None or a value of your choice –  Dominic Bou-Samra Jul 6 '12 at 10:13
Isn't there a neater solution than the artificial blowing the data structure with junk values? :( –  comiventor Jun 11 at 10:19

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