7

The batches in spark streaming are the batches of RDD .Suppose batch of 3 RDDs.

Also spark documentation says that a block is created every 200ms by reciever , and partition is allotted to the block.

Say in 1 second I have batch of 3 RDDs , with 5 blocks if 200ms is considered.

So how will a RDD get partitioned across worker nodes , is the single RDD that will be partitioned or a complete batch.

I may have taken it in a wrong way . Please guide me

19

One streaming batch corresponds to one RDD. That RDD will have n partitions, where n = batch interval / block interval. Let's say you have the standard 200ms block interval and a batch interval of 2 seconds, then you will have 10 partitions. Blocks are created by a receiver, and each receiver is allocated in a host. So, those 10 partitions are in a single node and are replicated to a second node.

When the RDD is submitted for processing, the hosts running the task will read the data from that host. Tasks executing on the same node will have "NODE_LOCAL" locality, while tasks executing on other nodes will have "ANY" locality and will take longer.

Therefore, to improve parallel processing, it's recommended to allocate several receivers and use union to create a single DStream for further processing. That way data will be consumed and processed by several nodes in parallel.

  • Hey thanks @maasg – dexter Oct 8 '15 at 18:57
  • Thanks @maasg. Just to confirm that, if we have multiple receivers then we have multiple DStreams & each DStream corresponds to one RDD. So, when we union multiple Dstreams then we get a single DStream. This DStream consist of multiple RDD's or single RDD ? – Dinesh Sachdev 108 Jul 22 '17 at 10:37
  • @DineshSachdev108 Bu definition union() will "Return a new DStream that contains the union of the elements in the source DStream and otherDStream" this means the result will be a dStream as well. And by definition a "DStream is represented as a sequence of RDDs. Which means that the result will contain multiple RDDs depending on how many batches your receiver received. – bigdatamann Oct 15 '17 at 5:09
  • @DineshSachdev108 that DStream will 'deliver' a single RDD at each interval of time. The RDD lineage will consist of the union of the RDDs of each participating DStream – maasg Oct 15 '17 at 10:06
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    @datmannz Thanks for bringing this comment-question to my attention. A DStream is represented as a sequence of RDDs over time. At a single point in time, it will contain only one RDD. In the case of union, that particular RDD will be the result of the union of underlying RDDs from the different participating DStreams . – maasg Oct 15 '17 at 10:09
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Is this still applicable in newer version of spark?

I read an article where the scenario with multiple receivers on spark is outdated and instead new direct kafka api (createDirectStream) would take care of pretty much everything for you.

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