Technically speaking, Hadoop MapReduce treats everything as key-value pairs; you just need to define what the keys are and what the values are. The signatures of map and reduce are
map: (K1 x V1) -> (K2 x V2) list
reduce: (K2 x V2) list -> (K3 x V3) list
with sorting taking place on K2 values in the intermediate shuffle phase between map and reduce.
If your inputs are of the form
Student x (College x GPA)
Then your mapper should do nothing more than get the College values to the key:
map: (s, c, g) -> [(c, s, g)]
with college as the new key, Hadoop will sort by college for you. Your reducer then, is just a plain old "identity reducer."
If you are carrying out a sorting operation in practice (that is, this isn't a homework problem), then check out Hive, or Pig. These systems drastically simplify these kinds of tasks. Sorting on a particular column becomes quite trivial. However, it is always educational to write, say, a hadoop streaming job for tasks like the one you identified here, to give you a better understanding of mappers and reducers.