I've got an existing database full of objects (I'll use books as an example). When users login to a website I'd like to recommend books to them.
I can recommend books based on other people they follow etc but I'd like to be more accurate so I've collected a set of training data for each user.
The data is collected by repeatedly presenting each user with a book and asking them if they like the look of it or not.
The training data is stored in mongodb, the books are stored in a postgres database.
I've written code to predict wether or not a given user will like a given book based on their training data, but my question is this:
How should I apply the data / probability to query books in the postgres database?
Saving the probability a user likes a book for every user and every book would be inefficient.
Loading all of the books form the database and calculating the probability for each one would also be inefficient.