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?

  • 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. Commented Jul 28, 2012 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 Commented Jul 29, 2012 at 0:55
  • Looks pretty straightforward, and it works. Any particular concerns? Commented Aug 20, 2012 at 5:36
  • What's wrong with the way you've got it now? Do you have a particular concern? Commented Aug 20, 2012 at 5:46
  • This was my first (and only!) approach, but since I am fairly new to pandas, I wanted to see if there was another way, but this seems to be a good one. Commented Aug 21, 2012 at 14:00

5 Answers 5

import pandas as pd
import datetime
from myapp.models import BlogPost

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

# limit which fields
df = pd.DataFrame(
            "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.

  • 70
    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()).
    – gregoltsov
    Commented Oct 28, 2013 at 1:25
  • 2
    It would be more clear if this used the names from OP question. For instance, is BlogPost supposed to be the same as his SomeModel?
    – Hack-R
    Commented Jul 26, 2017 at 18:39
  • Hi, is there a way to exclude a column you don't need in the dataframe?
    – Willower
    Commented Nov 29, 2018 at 22:33
  • Will this work on "fields" that are a @cached_property?
    – hepcat72
    Commented Jul 13, 2021 at 14:07
  • Thank you, by the way it works without converting to list: pd.DataFrame(<QuerySet>) as of now
    – Ersain
    Commented Jan 27, 2022 at 20:48

Convert the queryset on values_list() will be more memory efficient than on values() directly. Since the method values() returns a queryset of list of dict (key:value pairs), values_list() only returns list of tuple (pure data). It will save about 50% memory, just need to set the column information when you call pd.DataFrame().

Method 1:

queryset = models.xxx.objects.values("A", "B", "C", "D")

## consumes much memory
df = pd.DataFrame(list(queryset))

## works, but no much change on memory usage
df = pd.DataFrame.from_records(queryset)

Method 2:

queryset = models.xxx.objects.values_list(
    "A", "B", "C", "D"

## this will save 50% memory
df = pd.DataFrame(
    list(queryset), columns=["A", "B", "C", "D"]

## It does not work. Crashed with datatype is queryset not list.
df = pd.DataFrame.from_records(
    queryset, columns=["A", "B", "C", "D"]

I tested this on my project with >1 million rows data, the peak memory is reduced from 2G to 1G.

  • 1
    I was testing this: if the end result is to dump it in a pandas dataframe, then you lose this efficiency. And in fact, keeping it as ".values_list()" and throwing it into pandas using ".from_records()" is much faster for the same memory
    – Anthony M
    Commented Jul 3, 2022 at 6:10

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)
  • 15
    How does Django Pandas deal with large datasets? github.com/chrisdev/django-pandas/blob/master/django_pandas/… This line scares me, because I think it means the whole dataset will be loaded into memory at once. Commented Nov 4, 2016 at 11:06
  • @Ada To create a DataFrame using specified field names:df = read_frame(qs, fieldnames=['age', 'wage', 'full_name'])
    – Gathide
    Commented May 4, 2020 at 4:26
  • 2
    For those of you in this wonderous future who are wondering wth I was on about, here's a more permanent link to the source at the time: github.com/chrisdev/django-pandas/blob/… Commented May 6, 2020 at 0:15
  • django pandas able to handle many-to-many fields.
    – Gathide
    Commented Jul 13, 2021 at 10:11

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()).

  • @GregoryGoltsov's idea to use .from_records() and not using list() will eliminate the memory efficiency concern.
    – hobs
    Commented Dec 16, 2014 at 22:29
  • 1
    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
    Commented Dec 17, 2014 at 22:41
  • 1
    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
    Commented Dec 17, 2014 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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