Supervised learning depends on exploiting regularities in the data. For example if the data is plotted against the desired output there may be clusters or highly populated surfaces in the space. The various learning algorithms you will learn in class are all ways of exploiting one type of structure or another. If the dataset is random and unconnected to the output desired, then no learning can be done.
RSA is useful cryptographically precisely because it is a non-random process that is exceptionally difficult to distinguish from a random process with no structure. There are no obvious regularities in the data to exploit.
I am reluctant to discourage you from taking a look at this; you never know what it might spark or what you might learn. But in your place I would not want any part of my grade to depend on success. I will say that to succeed in any meaningful sense you will almost have to base the learning on features that no-one has thought of till now. If you are determined to try this I would recommend starting with very small primes and only if you get any traction graduate to larger primes.
Part of the reason for being dubious depends on complexity arguments. If one can solve arbitrary RSA problems based on a composite number then one can factor that number in a reasonable amount of time, however factoring an arbitrary composite number is believed (but not known) to be NP hard, though not NP complete.