Tools : a hadoop cluster (without YARN) with spark 0.9.0.
The ideal situation would be to run a spark program on the namenode over HDFS without communication between the datanodes. The program would do this :
Let's say for the example : on HDFS I have 2 types of data : A and B and my cluster is composed of 3 datanodes.
My goal is to run a program that can work with all the data of A and 1/3B. Datanode1 interact with A and B1 (the first third), Datanode2 with A and B2 (the second third) and Datanode3 with A and B3... So in order to respect the condition "no communication between machines until the end", I will have to have A and B1 in the memory of datanode1, A and B2 in the memory of ...
The results of the program on each datanode will be agregate at the end.
Is there a way to do that with Spark?