In my CouchDB database, I have the following models (implemented as documents in the database with different type fields):

  • Team: name, id (has many matches, has many fans)
  • Match: name, team_a, team_b, time (has many teams, has many tweets)
  • Fan: team_id (has many tweets)
  • Tweet: time, sentiment, fan_id

I want to average the tweet sentiment for each team. If I were using SQL I'd do it like this:

SELECT avg(sentiment)
FROM team
    JOIN match on team.id = match.team_a OR team.id = match.team_b
    JOIN fan on fan.team = team.id
    JOIN tweet on (tweet.time BETWEEN match.time AND match.time + interval '1 hour') AND tweet.user = fan.id
GROUP BY team.id

However in CouchDB you can at best do 1 join in a view function, as explained in the docs (by emitting the join field as the key).

How can this be better modelled in CouchDB to allow for this query to work? I don't really want to denormalise too much, but I guess I will if I have to?

It's a bit complex, but I use what I call "tertiary indexes". The goal is to be able to write a view that is applied to another view. Unfortunately, the only way to do this is to use a view to write data to a secondary database and then have another view that works on that database. Doing this requires an outside process - I use a script that listens to the _changes feed of the primary database, and then updates the relevant documents in the secondary database when something changes.

So in your example your secondary database could consist of a single document for each team with all of the (or the latest) match/fan/tweet data in that one document. Then you write a view that extracts the sentiment (or whatever) from that secondary database.

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