Imagine you have a very large set (say, 1 million+) set of "tasks", each requiring a small set of "resources" (maybe around 10 from a very large set, say 10,000+).
I'd like to perform a query that takes some sample set of "resources" (again, around 10), and would find all tasks which use these resources. Eventually, I'd like to perform more complex queries on the "tasks", such as:
- Which "tasks" require more "resources" than I have?
- How close is a given "task" to my "resource list"?
I think the problem is quite similar in some ways to a web search, where the "tasks" are web pages and the "resources" are the words on those pages. In the parallel problem, I want to perform queries such as "given these words, show me all the webpages that contain them each a specific number of times".
From what I can tell, this problem is not appropriate for regular databases (and even NoSQL databases!). The list of "resources" needs to be extensible, so it can't be a column in a traditional database. There will also be many of them, so it doesn't seem correct to make a database with 10,000 columns.
What I was imagining was trying to keep all of the data in memory, and just search it sequentially. But that's probably not very scalable and I'd lose all of the data if I lost power...
I'd love any guidance on how to solve problems like this!