This is distributed search engine system processing 50 ~ 100 requests at 1 seconds.
Every search request need to merge sort searched documents among several servers.
There are 1 master server and N slave servers.
Each slave server has document id list with score data (Entry).
Entry is like below.
| docuemnt id (int) | score data (byte) |
Master server has to merge-sort each slave servers entry list and make page data (ex: 5000~5100)
Limitation1) Do not use huge memory. Cannot do merge-sort whole documents in memory at a time. Limitation2) Do not use temp file. Temp file might make search system slow.
If user want N documents start from R ( means rank R ) then ..
Solution-1) 1. Make top R + N sorted list at each slave server and sent it to master server. (use heap structure) 2. Master server merge-sort and make Top R + N 3. Return N documents start from R
Problem-1) 1. Each slave server have to maintain Top R + N documents in memory 2. If master get each slave servers R + N documents in memory, Outofmemory error might be occur.
Solution-2) 1. Each slave server send unsorted document list with score data to master server.(by chunk of data for memory limitation) 2. Master server do n-way merge sort
Problem-2) 1. User need only N document, but slave servers must send whole list of documents.(network transport data getting too large)
Any other good solution for this case?
I think making sorted N document from R need to calculate with every docuemnt list resides among slave servers, is it right?
Which is good? "local sort and remote merge" or "remote whole list" ?
I'm getting stuck last 1 week.
Thanks in advance.