I have an problem representing data in MongoDB. I was using this schema design, where a combination of date and word is unique.
{'date':2-1-2011,
'word':word1'
users = [user1, user2, user3, user4]}
{'date':1-1-2011,
'word':word2'
users = [user1, user2]}
There are a fixed number of dates, approximately 200; potentially 100k+ words for each date; and 100k+ users.
I inserted records with an algorithm like so:
while records exist:
message, user, date = pop a record off a list
words = set(tokenise(message))
for word in words:
collection1.insert({'date':date, 'word':word}, {'user':user})
collection2.insert('something similar')
collection3.insert('something similar again')
collection4.insert('something similar again')
However, this schema resulted in extremely large collections and terrible performance was terrible. I am inserting different information into each of the four collections, so it is an extremely large number of operations on the database.
I'm considering representing the data in a format like so, where the words and users arrays are sets.
{'date':'26-6-2011',
'words': [
'word1': ['user1', 'user2'],
'word2': ['user1']
'word1': ['user1', 'user2', 'user3']]}
The idea behind this was to cut down on the number of database operations. So that for each loop of the algorithm, I perform just one update for each collection. However, I am unsure how to perform an update / upsert on this because with each loop of the algorithm, I may need to insert a new word, user, or both.
Could anyone recommend either a way to update this document, or could anyone suggest an alternative schema?
Thanks