def mapper(tensor):
tensor, idx = tensor
c1 = tensor[0:idx[0]-1, :]
c2 = tensor[idx[0]:idx[1]-1, :]
c3 = tensor[idx[1]:tensor.shape[0], :]
c1r = tf.math.reduce_max(c1, axis=0)
c2r = tf.math.reduce_max(c2, axis=0)
c3r = tf.math.reduce_max(c3, axis=0)
c = tf.stack((c1r, c2r, c3r))
c = tf.transpose(c, perm=[1, 0])
c = tf.reshape(c, [-1])
return c, 0
The input tensor in this case is a 2D matrix whos values are always finite so I'm not sure if any of these calculations could throw up a `-inf`