I am currently working on system that generated product recommendations like those on Amazon : "People who bought this also bought this.."

Current Scenario:

  • Extract the Google Analytics data of the client and insert it in database.

  • On the website of the client, on load of product page the API call is made to get the recommendations of the product being viewed.

  • When API receives the product ID as request it looks in the database and retrieves (using association rules) the recommended product IDs and sends them as response.

  • The list of these product Ids will be processed to get the product details(image,price..) at the client end and displayed on website.

  • Currently I am using PHP and MYSQL with gapi package and REST api storage on AMAZON EC2 .

My Question is: Now, if I have to choose amongst the following, which will be the best choice to implement the above mentioned concept.

  • PHP with SimpleDB or BIGQuery.

  • R language with BIGQuery.

  • RHIPE-(R and hadoop ) with SimpleDB.

  • Apache Mahout.

Plese help!


This isn't so easy to answer, because the constraints are fairly specialized.

The following considerations can be made, though:

  1. BIGQuery is not yet public. Thus, with a small usage base, even if you are in the preview population, it will be harder to get advice on improvement.
  2. Each of your answers asked about a modeling system & a storage system. Apache Mahout is not a storage mechanism, so it won't necessarily work on its own. I used to believe that its machine learning implementations were a a pastiche of a few Google Summer of Code, but I've updated that view on the suggestion of a commenter. It still looks like it has rather uneven and spotty coverage of different algorithms, and it's not particularly clear how the components are supported or maintained. I encourage an evangelist for Mahout to address this.

As a result, this eliminates the 1st, 2nd, and 4th options.

What I don't quite get is the need for a real-time server to utilize Hadoop and RHIPE. That should be done in your batch processing for developing the recommendation models, not in real-time. I suppose you could use RHIPE as a simple one-stop front end for firing off queries.

I'd recommend using RApache instead of RHIPE, because you can get your packages and models pre-loaded. I see no advantage to using Hadoop in the front end, but it would be a very natural back end system for the model fitting.

(Update 1) Other interface options include RServe (http://www.rforge.net/Rserve/) and possibly RStudio in server mode. There are R/PHP interfaces (see comments below), but I suspect it would be better to access R through HTTP or TCP/IP.

(Update 2) Addressing the whole process, the basic idea I see is that you could query the data from PHP and pass to R or, if you wish to query from within R, look at the link in the comments (to the OmegaHat tools) or post a new question about R & SimpleDB - I'm sure someone else on SO would be able to give better insight on this particular connection. RApache would let you instantiate many R processes already prepared with packages loaded and data in RAM; thus you would only need to pass whatever data needs to be used for prediction. If your new data is a small vector then RApache should be fine, and it seems this is correct for the data being processed in real-time.

  • 2
    I can't figure out why you think Mahout is a bunch of GSoC projects, nor somehow not ready for use. Just counting the code I wrote even myself, I can tell you I maintain it, improve it, have done since 2005, and know it's used 'in anger' in production. sorry you may have had some bad impression, but this is flatly wrong. – Sean Owen Aug 20 '11 at 6:11
  • I have two process,1>generating the recommendations from the raw data stored in mysql 2>After processing the data(i.e applying the clustering and recommendation algorithms) store the data in database(SimpleDB or Bigquery).This database will be queried through api request.Now,1>will be processed in batch and 2> needs real time resoponse.Now,as per Seans reply,it seems for 1> I can use Mahout but for 2>I am still not clear about the right combination of the database with mahout.But according to you mahout is not ready for industrial usage.Please help selecting me the right combination. – samridhi Aug 20 '11 at 7:42
  • @Sean: I mean no disrespect - it takes a lot of time to develop good modeling libraries, and working on Mahout is certainly a labor of love. Still, addressing the OP's question, it is still a small project with only a few algorithms and rather spotty coverage across algorithm classes. I realize I may have been wrong about GSoC - in the past it looked like most of Mahout coverage came from one-off projects. – Iterator Aug 20 '11 at 12:05
  • (Continued) I realize that there is adult supervision and am glad that you and others mentor students to teach them about ML and scalability, in addition to your own contributions to the codebase. In light of this, I will update my answer. – Iterator Aug 20 '11 at 12:07
  • @Sean, I've updated my answer. I apologize if my comment about not being ready to be used in production seems insulting. I've come to realize I have a pretty high standard for what is used in production. Mahout is far from alone in not making the cut. That's not to say that others may not use Mahout. I have seen many people do things I would not. – Iterator Aug 20 '11 at 12:15

If you want a real-time API for recommendations based on data in a database, Apache Mahout does this directly. You want to use ReloadFromJDBCDataModel, put on top a GenericItemBasedRecommender, and use the servlet-based wrapper in the examples module. It's probably a day or two of work to get familiar with the code and customize it to your needs, but it's pretty simple.

When you get past about 100M data points you would need to look at distributing the computation Hadoop. That's a fair bit more complex. Mahout has a distributed recommender too which you can customize.

  • 1
    Hey,thanks for responding.Now as per your suggestion and my needs,I need a combination of data processing (R or mahout) and data storage( simpeldb or bigquery) .Is it good to use mahout with SimpleDB?Also,how will hadoop help me here? – samridhi Aug 20 '11 at 7:32
  • Nothing in Mahout uses SimpleDB directly. If you want to use a remote data store, where access is relatively slow, see my article on integrating with Cassandra; you can perhaps reuse that approach (acunu.com/blogs/sean-owen/recommending-cassandra). Hadoop is for distributing a computation to parallelize and scale it. Don't use it unless you need it. If you have less than tens of millions of rows you don't need it. – Sean Owen Aug 20 '11 at 18:06
  • Hey,went through your article,you made it really simple to grasp the concept.Now,correct me if I am wrong,Cassandra's role is to hold the data which in turn acts as input for Mahout,but this is what happens in my case...... – samridhi Aug 21 '11 at 11:40
  • (continued...) I have two process, step-1>generating the recommendations from the raw data stored in MySQL step-2>After processing the data(i.e applying the clustering and recommendation algorithms using Mahout) store the recommendations generated in database and this time in SimpleDB as this database will be queried through api request to return the recommendations (I have mentioned details on API in the question).Now,step-1>will be processed in batch hence using MySQL and step-2> needs real time response hence using SimpleDB. Now here should Cassandra replace SimpleDB? – samridhi Aug 21 '11 at 11:43
  • Hey Sean,it will be great help if can comment on the following architecture : 1> MySQL to store raw data 2>process the data using mahout 3>store the output in SimpleDB(if possible) or Cassandra. – samridhi Aug 23 '11 at 7:18

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