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I am going to convert a Django QuerySet to a pandas DataFrame as follows:

qs = SomeModel.objects.select_related().filter(date__year=2012)
q = qs.values('date', 'OtherField')
df = pd.DataFrame.from_records(q)

It works, but is there a more efficient way?

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Hi @FrancoMariluis, sorry about this out of topic: are you using pandas into django projects. You show graphics using "Plotting with matplotlib" via django web applications. Is a valid solution for you? Thanks. – danihp Jul 28 '12 at 19:09
Hi, for showing graphics in Django I'm using django-chartit, which works fine, but I'm thinking about using matplotlib, which would give me more flexibility – Franco Mariluis Jul 29 '12 at 0:55
looks like a good way. – Skylar Saveland Aug 14 '12 at 19:15
Looks pretty straightforward, and it works. Any particular concerns? – Dmitry Shevchenko Aug 20 '12 at 5:36
What's wrong with the way you've got it now? Do you have a particular concern? – Burhan Khalid Aug 20 '12 at 5:46
import pandas as pd
import datetime
from myapp.models import BlogPost

df = pd.DataFrame(list(BlogPost.objects.all().values()))
df = pd.DataFrame(list(BlogPost.objects.filter(date__gte=datetime.datetime(2012, 5, 1)).values()))

# limit which fields
df = pd.DataFrame(list(BlogPost.objects.all().values('author', 'date', 'slug')))

The above is how I do the same thing. The most useful addition is specifying which fields you are interested in. If it's only a subset of the available fields you are interested in, then this would give a performance boost I imagine.

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Using 'list()' seems to have been deprecated (I'm on pandas 0.12). Using DataFrame.from_records() works better, i.e. df = pd.DataFrame.from_records(BlogPost.objects.all().values()). – Gregory Goltsov Oct 28 '13 at 1:25

From the Django perspective (I'm not familiar with pandas) this is fine. My only concern is that if you have a very large number of records, you may run into memory problems. If this were the case, something along the lines of this memory efficient queryset iterator would be necessary. (The snippet as written might require some rewriting to allow for your smart use of .values()).

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@GregoryGoltsov's idea to use .from_records() and not using list() will eliminate the memory efficiency concern. – hobs Dec 16 '14 at 22:29
The memory efficiency concern is on the Django side. .values() returns a ValuesQuerySet which caches results, so for a large enough dataset, it's going to be quite memory-intensive. – David Eyk Dec 17 '14 at 22:41
Ahh yes. You'd have to index into the queryset and use .from_records without the list comprehension to eliminate both memory hogs. e.g. pd.DataFrame.from_records(qs[i].__dict__ for i in range(qs.count())). But you're left with that annoying "_state" column when you're done. qs.values()[i] is much faster and cleaner, but I think it caches. – hobs Dec 17 '14 at 23:02

You maybe can use model_to_dict

import datetime
from django.forms import model_to_dict
pallobjs = [ model_to_dict(pallobj) for pallobj in PalletsManag.objects.filter(estado='APTO_PARA_VENTA')] 
df = pd.DataFrame(pallobjs)
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Django Pandas solves this rather neatly: https://github.com/chrisdev/django-pandas/

From the README:

class MyModel(models.Model):
    full_name = models.CharField(max_length=25)
    age = models.IntegerField()
    department = models.CharField(max_length=3)
    wage = models.FloatField()

from django_pandas.io import read_frame
qs = MyModel.objects.all()
df = read_frame(qs)
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