Spark Version : 1.4.0 Cassandra Version : 2.1.8
I am using the datastax Spark Cassandra connector to bridge both Spark and Cassandra. I am having a 6 nodes in Spark running with 6 different workers. I have 2 Cassandra nodes assisting this.
I tried a sample application to perform the count of number of rows in a column family( CassandraUtil.javaFunctions(sc).cassandraTable("keyspace","columnfamily").count()).
Now , when I dispatch this single job to the master, the job ran in 2 worker nodes in Spark Cluster( Got from the Event Timeline).
Questions
- I dispatched a single job. Why it was done by two workers? Is it like one worker acts like a master here?
- I found the deserialisation time to be very high in one worker. Other worker completed the job pretty fast( 1 took 40 seconds and 2 took 1 second). Can you throw some light on this?
- Both the workers seems to have established a connection with Cassandra and has returned a result. So , in my view, both are doing the same job. Can you throw some light on this?
- I am still wondering where the implementation of RDD will fit in this distributed realm with Cassandra . Can someone throw some light on this? How does multiple workers know which partition of Cassandra they have to work on , if it can , say ,split 10k partitions among 6 workers? Is it like ,fetching is all done by one worker and processing is done by 6 of them? Even in that case, execution logic remains the same in all workers(fetch from Cassandra and process). How does Spark do this?
- Would like to know the real advantage of using Spark with Cassandra. Is it at memory management level or it has some other advantages?
EDIT
I have added the picture of the run. I just have 10 different partitions. This is a simple count operation.
My question still remains a puzzle i guess.
If you see the attachment provided, you will get an idea I suppose. This was for a single job submit to my spark master. Wondering how it runs in two different executors. Both the executors are returning same number of bytes . So , that goes to show that both have fetched the all the 10 partitions from cassandra . If this is the way it happens, what does spark provide me over cassandra? Or , do I have to fetch it in some other way, so that, ten partitions are fetched by two different workers?