This is a little bit annoying to do, but at least you can remove that annoying
== easily, using sorting (and thats probably your speed killer). Trying more is probably not very useful, though it might be possible if you sort yourself, etc.:
# First sor the whole thing (probably other ways):
sorter = np.argsort(a[:,0]) # sort by class.
a = a[sorter] # sorted version of a
# Now we need to find where there are changes in the class:
w = np.where(a[:-1,0] != a[1:,0]) + 1 # Where the class changes.
# for simplicity, append  and [len(a)] to have full slices...
w = np.concatenate(, w, [len(a)])
result = np.zeros(len(w)-1, dtype=a.dtype)
for i in xrange(0, len(w)-1):
result = np.median(a[w[i]:w[i+1]])
# If the classes are not exactly 1, 2, ..., N we could add class information:
classes = a[w[:-1],0]
If all your classes are the same size, so there are exactly as many 1s, as 2s, etc. There are better ways though.
EDIT: Check Bitwises version for a solution to avoid the last for loop as well (he also hides some of this code into
np.unique which you may prefere, since speed should not matter for that anyways).