I'm learning Spark and start understanding how Spark distributes the data and combines the results. I came to the conclusion that using the operation map followed by reduce has an advantage on using just the operation aggregate. This is (at least I believe so) because aggregate uses a sequential operation, which hurts parallelism, while map and reduce can benefit from full parallelism. So when having a choice, isn't it better to use map and reduce than aggregate ? Are there cases where aggregate is preferred ? Or maybe when aggregate can't be replaced by the combination map and reduce ?

As an example - I want to find the string with the max length:

val z = sc.parallelize(List("123","12","345","4567"))
// instead of this aggregate ....
z.aggregate(0)((x, y) => math.max(x, y.length), (x, y) => math.max(x, y))
// .... shouldn't I rather use this map - reduce combination ?
z.map(_.length).reduce((x, y) => math.max(x, y))

I believe I can partially answer my own question. I was wrongly assuming that, because a sequential operation is used, aggregate might be hurt in its parallelism. The data can still be parallelized and the sequential op will be executed on each chunk. This doesn't seem less performing than the map operation. So then the question that remains is: why would you use aggregate as opposed to the map-reduce combination ?


Aggregate operation allows to specify a combiner function (to reduce the amount of data sent through the shuffle), which is different to reducer, with map-reduce combination the same function is used to combine and reduce. I know used old Map Reduce terminology but conceptually all shared nothing shuffle based frameworks do this and if you google for mapreduce combiner you will find a lot of explanations of the concept.

  • Thanks, but I wasn't referring to MapReduce in general, please check my example. I was strictly referring to "aggregate" versus the "map" and "reduce" operations in Spark. In my example, what I could do with aggregate, I could also do with a map and a reduce. I was wondering if there's any clear advantage of one or the other. – Sorin-Alexandru Cristescu Sep 21 '18 at 13:55

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