So, I've reviewed a ton of articles and forums before posting this, but I keep reading conflicting answers. Firstly, OS is not an issue, I can use either Windows or Unix, whatever would be best for my problem. I have a ton of data that I need to use for read-only purposes (not sure why this would matter, but, in case it does, the data structure that I'm going to have to go through is an array of arrays of arrays of hashes whose values are also arrays). I'm essentially comparing a "query" to a ton of different "sentences" and computing their relative similarities. From these quantities (several million), I want to take the top x% and do something with them. I need to parallelize this process. There's just no good way for me to decrease the space--I need to compare over everything to get good results and it will just take too long with some sort of threading/forking. Again, I've seen many conflicting answers and don't know which one to do.
Any help would be appreciated. Thanks in advance.
EDIT: I don't think the amount of memory usage will be an issue, but I don't know (8 GB RAM)