I would like to compute the top k words in a Spark-Streaming application, with lines of text collected in a time window.

I ended up with the following code:

val window = stream.window(Seconds(30))

val wc = window
  .flatMap(line => line.split(" "))
  .map(w => (w, 1))
  .reduceByKey(_ + _)

wc.foreachRDD(rdd => {

It seems to work.

Problem: the top k word chart is computed using the foreachRDD function that executes a top+print function on each RDD returned by reduceByKey (the wc variable).

It turns out that reduceByKey returns a DStream with a single RDD, so the above code works but the correct behaviour is not guaranteed by the specs.

Am I wrong, and it works in all circumstances ?

Why there is not, in spark-streaming, a way to consider a DStream as a single RDD, instead of a collection of RDD objects, in order to execute more complex transformations ?

What I mean is a function like: dstream.withUnionRDD(rdd => ...) that allows you making transformation and actions on a single/union RDD. Is there an equivalent way to do such things?


Actually I completely misunderstood the concept of DStream composed of multiple RDDs. A DStream is made by multiple RDDs, but over time.

In the context of a micro-batch, the DStream is made of the current RDD.

So, the code above always works.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.