I recommend using relations and denormalizing only if you have performance issues and only after you confirmed that this bad performance is related to querying the category name. Otherwise it's just adding complexity without a good reason. Keep in mind Donald Knuth's famous quote:
Premature optimization is the root of all evil.
Relational databases are good at joins, because basically that's what they were designed for. In the denormalized design you want, instead of the simplest possible
JOINs you will need complex
UPDATEs. These updates will affect many rows in many (10-20) tables. If you have lot of data in affected tables and often change the category_name it could/will even make the performance worse.
If you're really stuck with the idea of
category_name in 10-20 tables consider using a database trigger. Trigger will be executed when a category table is changed. It can handle all of the updates internally in the database. Without changing anything in your Django project and with less overhead.
So if you're really stuck with the idea of
category_name in 10-20 tables and you can't use triggers there's a mechanism called signals in Django. These are kind of triggers embedded into Django and fired before/after defined event.
from django.db.models import signals
from django.core.exceptions import DatabaseError
def __init__(self, *args, **kwargs):
super(Category, self).__init__(*args, **kwargs)
# Store the initial name
self._name = self.name
name = m.CharField(max_length = 127)
def update_category_name(sender, instance, **kwargs):
""" Callback executed when Category is about to be saved """
old_category = instance._name
new_category = instance.name
if old_category != new_category: # Name changed
# Start a transaction ?
# Update the data:
# Make category_name an db_index, otherwise it will be slooooooooow
# commit transaction ?
except DatabaseError as e:
# rollback transaction ?
# prevent saving the category as database will be inconsistent
# Bind the callback to pre_save singal