I'd like to build a recommendation engine to support a web app which is running on Rails and has its data stored in MySQL... something along the lines where users click on things and their feedback updates the database, which then is processed in some sort of realtime-esque fashion. Order of magnitude I'm thinking probably 10s of interactions a second across all users; 1M datapoints a day.
My question is how do I structure and handle analysis such that things can be quickly processed. Utilizing what I already know, I can use some flavor of Ruby and R (RServe, RSRuby) to run SVD/clustering/ensemble/whatevermodels on the existing dataset, and update the model/formulas via sampling every so often, but that seems like a really clunky way to do things. What is a better way of doing this? Running the math directly in MySQL? Using some cool Ruby library that has great math functions? Use an off-the-shelf recommendation engine package?
(I have a distinct lack of awareness in what's out there, despite looking at all the "similar questions" links suggested. Sweet irony. :( )
PS: My background: numbers guy with a few years of R, but entirely for static/offline data. Newbie programmer in Python, Rails, etc., but I can work on that front.