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I am working on an open source Django time tracking app, Djime, and I'm trying to come up with a more efficient way to produce statistics. So far, we've had some rather long-winded procedural code that would get all TimeSlices for a period, and collate them together in a huge nested list/dictionary mess.

What I'd like to do is to set up a more efficient system – an object or function that would take a QuerySet of TimeSlices and collate them by user, task, and/or day.

Our model looks like this (simplified):

class TimeSlice(models.Model):
    task = models.ForeignKey(Task)
    user = models.ForeignKey(User)
    begin = models.DateTimeField(default=datetime.datetime.now)
    duration = models.PositiveIntegerField(null=True, blank=True) # Num. of seconds
    note = models.TextField(null=True, blank=True)
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Sounds like you want the aggregation functionality which is coming in Django 1.1. It's already available in recent checkouts from trunk.

See here for an explanation.

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I'm not sure that would be a great way to do it. As I understand it, each aggregate function would cause another query against the data we already have in the QuerySet. I'd much rather have a more Python code than more database requests, since it's easier to scale Python frontends than database servers. – mikl Jun 12 at 11:30

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