If you're not opposed to introducing Redis into the mix, have a look at https://github.com/seatgeek/soulmate -- From the README:
Soulmate is a tool to help solve the common problem of developing a fast autocomplete feature. It uses Redis's sorted sets to build an index of partially completed words and the corresponding top matching items, and provides a simple sinatra app to query them. Soulmate finishes your sentences.
Soulmate was designed to be simple and fast, and offers the following:
- Provide suggestions for multiple types of items in a single query (at SeatGeek we're autocompleting for performers, events, and venues)
- Results are ordered by a user-specified score
- Arbitrary metadata for each item (at SeatGeek we're storing both a url and a subtitle)
An item is a simple JSON object that looks like:
"term": "Citi Field",
"subtitle": "Flushing, NY"
id is a unique identifier (within the specific type),
term is the phrase you wish to provide completions for,
score is a user-specified ranking metric (redis will order things lexicographically for items with the same score), and
data is an optional container for metadata you'd like to return when this item is matched (at SeatGeek we're including a url for the item as well as a subtitle for when we present it in an autocomplete dropdown).
See Soulmate in action at SeatGeek.
If nothing else, maybe it'll give you some ideas on how to structure the data in a way that makes sense.
I did not write or have anything to do with soulmate. It's just a library I discovered when trying to solve a similar problem. Hope it helps!