I am generating a matrix of similarities between items in order to provide it to a recommender system in Django. (it's n^2 at the end of the day.)
The issue I am having is that either if I use
iterator() or not, my RAM still gets sucked.
I do something like this:
rated_apps_list = Rating.objects.values_list('item_id', flat=True).order_by('-item_id').distinct() rated_apps_iter = MemorySavingQuerysetIterator(rated_apps_list[start:]) for app_above in rated_apps_iter: rated_apps_below_iter = MemorySavingQuerysetIterator(rated_apps_list[i+1:]) for app_below in rated_apps_below_iter: ...
where MemorySavingQuerySetIterator is:
class MemorySavingQuerysetIterator(object): def __init__(self,queryset,max_obj_num=1000): self._base_queryset = queryset self._generator = self._setup() self.max_obj_num = max_obj_num def _setup(self): for i in xrange(0,self._base_queryset.count(),self.max_obj_num): # By making a copy of of the queryset and using that to actually access # the objects we ensure that there are only `max_obj_num` objects in # memory at any given time smaller_queryset = copy.deepcopy(self._base_queryset)[i:i+self.max_obj_num] #logger.debug('Grabbing next %s objects from DB' % self.max_obj_num) for obj in smaller_queryset.iterator(): yield obj def __iter__(self): return self def next(self): return self._generator.next()
At first I tried just with the .iterator() function but then I believe it was the Database Client who was caching the results. The leak continues to be there and I have to reload the script after a while.
I know it doesn't look efficient to create as many iterator as elements because then I would end up having all the elements in memory, how would you guys do it?.
Any thoughts? thanks!