I am a little bit confused with mahout: I have the impression that there are two ways to use it:
- executing a .jar, using the Taste recommender
- using the command line, e.g.
mahout recommenditembased --input input/recommend_data.csv --output output/recommendation --similarityClassname SIMILARITY_PEARSON_CORRELATIONas shown here.
-> Is it correct or is it the same thing ?
My problem is: I have a csv input file with the following format: user_id, item_id, rating. I have 100 000 lines and I need to compute recommendations daily for all my users. I've read that it should be ok without hadoop, but it isn't: the .jar I have created works for small batches but not for the entire input file.
The command line method works in 5 min which is ok, but it's not as flexible as the jar project (above all for the interface with the MySQL database).
Is it possible to use a .jar and benefit from hadoop ? As I am not distributing any computation (hadoop runs on one server), is it normal to have such a difference between the .jar-without-mahout method, and the command-line-with-hadoop method ?
Many thanks for your help!