for columns in [4, 5, 6]:
# mean, std = sm.robust.scale.huber(data[indices,columns],maxiter=100)
try:
huber = sm.robust.scale.Huber(maxiter=100, tol=1e-3)
mean, std = huber(data[indices,columns])
data[indices,columns] -= mean # subtract robust Huber location (='mean')
data[indices,columns+3] = std # Store robust scale (= 'standard deviation')
except ValueError:
data[indices,columns] -= np.median(data[indices,columns])