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# models.py
from django.db import models

class Person(models.Model):
    first_name = models.CharField(max_length=30)
    last_name = models.CharField(max_length=30)
    text_blob = models.CharField(max_length=50000)

# tasks.py
import celery
@celery.task
def my_task(person):
    # example operation: does something to person 
    # needs only a few of the attributes of person
    # and not the entire bulky record
    person.first_name = person.first_name.title()
    person.last_name = person.last_name.title()
    person.save()

In my application somewhere I have something like:

from models import Person
from tasks import my_task
import celery
g = celery.group([my_task.s(p) for p in Person.objects.all()])
g.apply_async()
  • Celery pickles p to send it to the worker right?
  • If the workers are running on multiple machines, would the entire person object (along with the bulky text_blob which is primarily not required) be transmitted over the network? Is there a way to avoid it?
  • How can I efficiently and evenly distribute the Person records to workers running on multiple machines?

  • Could this be a better idea? Wouldn't it overwhelm the db if Person has a few million records?

    # tasks.py
    
    import celery
    from models import Person
    @celery.task
    def my_task(person_pk):
        # example operation that does not need text_blob
        person = Person.objects.get(pk=person_pk)
        person.first_name = person.first_name.title()
        person.last_name = person.last_name.title()
        person.save()
    
    
    #In my application somewhere
    from models import Person
    from tasks import my_task
    import celery
    g = celery.group([my_task.s(p.pk) for p in Person.objects.all()])
    g.apply_async()
    
share|improve this question
    
use task delay and put timer for that –  catherine Feb 26 '13 at 0:43
    
@catherine how would timer help me in this case? –  Anuvrat Parashar Feb 26 '13 at 0:52
    
Sorry for that timer my mistake, it's only task delay. When the person have millions of records the celery will delay the tasks and manage it by sending one by one –  catherine Feb 26 '13 at 0:57
    
@catherine so, based on what I understood from the docs, delay is just a shortcut for apply_async docs.celeryproject.org/en/latest/userguide/calling.html#basics –  Anuvrat Parashar Feb 26 '13 at 1:00
    
yeah, what I mean is like this: my_task.delay(p.pk) –  catherine Feb 26 '13 at 1:08

2 Answers 2

Yes. If there are millions of records in the database then this probably isn't the best approach, but since you have to go through all many millions of the records, then pretty much no matter what you do, your DB is going to get hit pretty hard.

Here are some alternatives, none of which I'd call "better", just different.

  1. Implement a pre_save signal handler for your Person class that does the .title() stuff. That way your first_name/last_names will always get stored correctly in the db and you'll not have to do this again.
  2. Use a management command that takes some kind of paging parameter...perhaps use the first letter of the last name to segment the Persons. So running ./manage.py my_task a would update all the records where the last name starts with "a". Obviously you'd have to run this several times to get through the whole database
  3. Maybe you can do it with some creative sql. I'm not even going to attempt here, but it might be worth investigating.

Keep in mind that the .save() is going to be the harder "hit" to the database then actually selecting the millions of records.

share|improve this answer
    
so the .title() is an example operation here, what I wanted to indicate with its help is that not everything the object has is used by my_task(). –  Anuvrat Parashar Feb 26 '13 at 0:54
    
Saving in batches can reduce the intesity of the 'hit', can't it? But how do I send it in batches efficiently? –  Anuvrat Parashar Feb 26 '13 at 0:57

I believe it is better and safer to pass PK rather than the whole model object. Since PK is just a number, serialization is also much simpler. Most importantly, you can use a safer sarializer (json/yaml instead of pickle) and have a piece of mind that you won't have any problems with serializing your model.

As this article says:

Since Celery is a distributed system, you can't know in which process, or even on what machine the task will run. So you shouldn't pass Django model objects as arguments to tasks, its almost always better to re-fetch the object from the database instead, as there are possible race conditions involved.

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