Let's say we have a requirement to create a system that consumes a high-volume, real-time data stream of documents, and that matches those documents against a set of user-defined search queries as those documents become available. This is a prospective, as opposed to a retrospective, search service. What would be an appropriate persistence solution?
Suppose that users want to see a live feed of documents that match their queries--think Google Alerts--and that the feed must display certain metadata for each document. Let's assume an indefinite lifespan for matches; i.e., the system will allow the user to see all of the matches for a query from the time when the particular query was created. So the metadata for each document that comes in the stream, and the associations between the document and the user queries that matched that document, must be persisted to a database.
Let's throw in another requirement, that users want to be able to facet on some of the metadata: e.g., the user wants to see only the matching documents for a particular query whose metadata field "result type" equals "blog," and wants a count of the number of blog matches.
Here are some hypothetical numbers:
200,000 new documents in the data stream every day.
-The metadata for every document is persisted.
1000 users with about 5 search queries each: about 5000 total user search queries.
-These queries are simple boolean queries.
-As each new document comes in, it is processed against all 5000 queries to see which queries are a match.
Each feed--one for each user query--is refreshed to the user every minute. In other words, for every feed, a query to the database for the most recent page of matches is performed every minute.
Speed in displaying the feed to the user is of paramount importance. Scalability and high availability are essential as well.
The relationship between users and queries is relational, as is the relationship between queries and matching documents, but the document metadata itself are just key-value pairs. So my initial thought was to keep the relational data in a relational DB like MySQL and the metadata in a NoSQL DB, but can the faceting requirement be achieved in a NoSQL DB? Also, constructing a feed would then require making a call to two separate data stores, which is additional complexity. Or perhaps shove everything into MySQL, but this would entail lots of joins and counts. If we store all the data as key-value pairs in some other kind of data store, again, how would we do the faceting? And there would be a ton of redundant metadata for documents that match more than one search query.
What kind of database(s) would be a good fit for this scenario? I'm aware of tools such as Twitter Storm and Yahoo's S4, which could be used to construct the overall architecture of such a system, but I'd like to focus on the database, given the data storage, volume, and query/faceting requirements.