I think a lot of people on here are missing the simplicity of the question. He didn't say anything about creating a rating prediction system. He just wants to compute the similarity between each user's song rating behavior and each other user's song rating behavior. The Pearson correlation coefficient gives exactly that. Yes, you must iterate over every user/user pair.
After thinking about this a little more:
Pearson is great if you want the similarity between two users' tastes, but not their level of "opinionatedness"... one user who rates a series of songs 4, 5, and 6 will correlate perfectly with another user who rates the same songs 3, 6, and 9. In other words, they have the same "taste" (they would rank the songs in the same order), but the second user is much more opinionated. In other other words, the correlation coefficient treats any two rating vectors with a linear relationship as equal.
However, if you want the similarity between the actual ratings the users gave each song, you should use the root mean squared error between the two rating vectors. This is a purely distance based metric (linear relationships do not play into the similarity score), so the 4,5,6 and 3,6,9 users would not have a perfect similarity score.
The decision comes down to what you mean by "similar"...
That is all.