I have an application that reads a file do some calculation and generates output file in driver machine. Now when i run it with a slave on machine A it takes 6 mins . If i add one more slave on machine B to same cluster and run driver program it takes 13 mins ( with few no route found to host machine B ) . I believe it is due to network latency delay . Least time with 2 workers is always higher than 1 worker . Then too some how i think , that application's work is not executing in distributed manner. Both the slaves are doing whole work independently. Both slaves read input file as a whole and create RDD and send to driver for output. I am wondering then where is the distributed computing for which Apache Spark is known for ? I have a small word count program , that only does computation and no File I/O is involved , if i run that with a huge file with multiple worker nodes , I see execution time decreases with the addition of a worker . I want to know is each worker reads full file and create RDD and no distributed work is happening in the program ?
Thanks much .
--edit PFA the screen shot with various worker nodes . Corresponding colored rectangle shows the execution output. I am wondering why addition of more workers delays the execution time . I see No route to host exception at time in log , but then why it doesn't come when i remove any one of the worker . Any pointers ? -- Thanks in advance.