I am using
spark 1.5.2. I need to run spark streaming job with kafka as the streaming source. I need to read from multiple topics within kafka and process each topic differently.
- Is it a good idea to do this in the same job? If so, should I create a single stream with multiple partitions or different stream for each topic?
- I am using kafka direct steam. As far as I know, spark launches long running receivers for each partition. I have a relatively small cluster, 6 nodes with 4 cores each. If I have lot of topics and partitions in each topic, would the efficiency be impacted as most of the executors are busy with long running receivers? Please correct me if my understanding is wrong here