I am in the process of evaluating Mahout as a collaborative-filtering-recommendation engine. So far it looks great. We have almost 20M boolean recommendations from 12M different users. According to Mahout's wiki and a few threads by Sean Owen, one machine should sufficient in this case. Because of that I decided to go with MySql as the data-model and skip the overhead of using Hadoop for now.
One thing eludes me though, what are the best practices for continuously updating the recommendations without reading the whole data from scratch? We have tens-of-thousands of new recommendations every day. While I do not expect it to be processed at real-time, I would like to have it processed every 15 minutes or so.
Please elaborate on the approaches for both a Mysql-based and Hadoop-based deployment. Thanks!