1

I'm trying to create an endpoint that exports user information as a CSV file.

The queryset I'm attempting to export contains more than 250,000 users.

But, this method takes too much time and causes the server to timeout.

In my existing code, I create the CSV file on my server and write the queryset content to it.

for idx, user in enumerate(queryset):
    print('{}/{}'.format(idx+1, total))
    row = [user.first_name, user.last_name, user.email]
    # some logic
    if user.is_vip():
    # .....
    if user.profile and user.profile.phone:
    # .....
    csv_writer.writerow(row)

Once the loop is complete I send the file:

file = open('export_users.csv', 'rb')
response = FileResponse(file, content_type='text/csv')
response['Content-Length'] = os.fstat(file.fileno()).st_size
response['Content-Disposition'] = 'attachment; filename="%s"' % '{}_export_users.csv'.format(date_now.strftime('%Y-%m-%d:%M:%S'))
return response

How can I generate the CSV file and send the response faster so that it doesn't cause a timeout?

2

You can make the response much faster by streaming the content, writing each row to the user as it's generated.

Django has documentation to help with this exact problem: https://docs.djangoproject.com/en/2.2/howto/outputting-csv/#streaming-large-csv-files

import csv

from django.http import StreamingHttpResponse


class Echo:
    def write(self, value):
        return value


def streaming_csv_view(request):
    queryset = User.objects.values_list("first_name", "last_name", "email")
    echo_buffer = Echo()
    csv_writer = csv.writer(echo_buffer)

    # By using a generator expression to write each row in the queryset
    # python calculates each row as needed, rather than all at once.
    # Note that the generator uses parentheses, instead of square
    # brackets – ( ) instead of [ ].
    rows = (csv_writer.writerow(row) for row in queryset)

    response = StreamingHttpResponse(rows, content_type="text/csv")
    response["Content-Disposition"] = 'attachment; filename="users.csv"'
    return response

For more information on the differences between generator expressions and list comprehensions, this python howto is a good resource: https://docs.python.org/3/howto/functional.html#generator-expressions-and-list-comprehensions

Here's the important part:

With a list comprehension, you get back a Python list; ...a list containing the resulting lines, not an iterator. Generator expressions return an iterator that computes the values as necessary, not needing to materialize all the values at once.

To optimize your query, use a values_list query instead of calling all(). With a values_list query, you can still fetch fields through relationships. For example:

User.objects.values_list(
    "first_name",
    "last_name",
    "email",
    "profile__phone",  # get the profile.phone value
)
| improve this answer | |
  • This solution avoided the timeout, I just didn't understand how the generator expression worked with the StreamingHttpResponse. Thank you. But it still takes 10min to loop over all my users. Is there a way to reduce it? USing threads maybe? – Jérémy Octeau Nov 13 '19 at 17:34
  • @JérémyOcteau I don't think there's a way to thread this or make it parallel. Is your queryset optimized? Use a values_list query like the one in my example. Testing locally with 250K users, using a values_list query is 90% faster than using all(). Also look at django's optimization docs for more ideas. – damon Nov 13 '19 at 20:00
  • the thing is I'm using many relationships when exporting my users. I edited the question so you can see what I do. – Jérémy Octeau Nov 13 '19 at 20:06
  • @JérémyOcteau I've added more to my answer. – damon Nov 13 '19 at 20:17
  • But when I use the "profile__phone", I will get the ID of the Object Phone. How can I modify that? The object Phone contains an Object Country (to know the code to use +1, +33....) and a Charfield. – Jérémy Octeau Nov 13 '19 at 23:11

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