When using Kryo, it's generally recommended that you register the classes you intend to serialize so the class name doesn't need to be included in the serialized data.
But in a class hierarchy, the actual implementation class may not be obvious. For example, if I have a Spark dataset that contains Vector objects, those objects' concrete class may be either DenseVector or SparseVector.
When I register the classes with Kryo, should I:
- Register the class according to the dataset's declared type (Vector)
- Register the concrete classes (DenseVector and SparseVector)
- All of the above, just in case?
Bonus question: if the Vector appears as a field in a tuple or case class, would you also need to register the product (Tuple2[Vector, Int] for example)?