I'm struggling to figure out how exactly to begin using SVD with a MovieLens/Netflix type data set for rating predictions. I'd very much appreciate any simple samples in python/java, or basic pseudocode of the process involved. There are a number of papers/posts that summarise the overall concept but I'm not sure how to begin implementing it, even using a number of the suggested libraries.

As far as I understand, I need to convert my initial data set as follows:

Initial data set:

```
user movie rating
1 43 3
1 57 2
2 219 4
```

Need to pivot to be:

```
user 1 2
movie 43 3 0
57 2 0
219 0 4
```

At this point, do I simply need to inject this Matrix into an SVD algorithm as provided by available libraries, and then (somehow) extract results, or is there more work required on my part?

Some information I've read:

http://www.netflixprize.com/community/viewtopic.php?id=1043

http://sifter.org/~simon/journal/20061211.html

http://www.slideshare.net/NYCPredictiveAnalytics/building-a-recommendation-engine-an-example-of-a-product-recommendation-engine

http://www.slideshare.net/bmabey/svd-and-the-netflix-dataset-presentation

.. and a number of other papers

Some libraries:

LingPipe(java)

Jama(java)

Pyrsvd(python)

Any tips at all would be appreciated, especially on a basic data set. Thanks very much, Oli