I have a primitive data model with users that can make inserts that should have a city and a region. To prepare for articles that are connected with several cities (so that for instance a product offering that is the same in two or more cities will become only one article with a list of cities instead of duplicated articles for every single city that the article is connected to).
class Region(db.Model): name = db.StringProperty() countrycode = db.StringProperty() vieworder = db.IntegerProperty() # custom ORDER BY variable to order by population areacode = db.IntegerProperty() areacodes = db.ListProperty(int) class City(db.Model): region = db.ReferenceProperty() name = db.StringProperty() vieworder = db.IntegerProperty() areacode = db.IntegerProperty()
So I could manage to make the storage and the views but the data model is not good.
class Article(db.Model): cities = db.ListProperty(db.Key) regions = db.ListProperty(db.Key)
At the insert it is coded:
if self.request.get('area'): city = model.City.get_by_id(long(self.request.get('area'))) region = model.Region.get(city.region.key()) article.cities.append(city.key()) article.regions.append(region.key()) article.city = unicode(city.name) article.region = unicode(region.name) article.put()
This generates redundancy and is not very pretty (and not in 1NF since it it saved a list in a field).
When building the index for the search API I so far only use one city, but I plan to handle lists of cities and lists of regions (although a city can never be in two regions, so everything but a city list is actually redundand, but I save erdundancy to avoid lengthy lookups at searches and views). I wonder if I used referenceproperties and keys correctly and if I would be better off using the NDB models instead?