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apache spark - Is groupByKey ever preferred over reduceByKey

I always use reduceByKey when I need to group data in RDDs, because it performs a map side reduce before shuffling data, which often means that less data gets shuffled around and I thus get better performance. Even when the map side reduce function collects all values and does not actually reduce the data amount, I still use reduceByKey, because I'm assuming that the performance of reduceByKey will never be worse than groupByKey. However, I'm wondering if this assumption is correct or if there are indeed situations where groupByKey should be preferred??

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I believe there are other aspects of the problem ignored by climbage and eliasah:

  • code readability
  • code maintainability
  • codebase size

If operation doesn't reduce amount of data it has to be one way or another semantically equivalent to GroupByKey. Lets assume we haveRDD[(Int,String)]:

import scala.util.Random
Random.setSeed(1)

def randomString = Random.alphanumeric.take(Random.nextInt(10)).mkString("")

val rdd = sc.parallelize((1 to 20).map(_ => (Random.nextInt(5), randomString)))

and we want to concatenate all strings for a given key. With groupByKey it is pretty simple:

rdd.groupByKey.mapValues(_.mkString(""))

Naive solution with reduceByKey looks like this:

rdd.reduceByKey(_ + _)

It is short and arguably easy to understand but suffers from two issues:

  • is extremely inefficient since it creates a new String object every time*
  • suggests that operation you perform is less expensive than it is in reality, especially if you analyze only DAG or debug string

To deal with the first problem we need a mutable data structure:

import scala.collection.mutable.StringBuilder

rdd.combineByKey[StringBuilder](
    (s: String) => new StringBuilder(s),
    (sb: StringBuilder, s: String) => sb ++= s,
    (sb1: StringBuilder, sb2: StringBuilder) => sb1.append(sb2)
).mapValues(_.toString)

It still suggests something else that is really going on and is quite verbose especially if repeated multiple times in your script. You can of course extract anonymous functions

val createStringCombiner = (s: String) => new StringBuilder(s)
val mergeStringValue = (sb: StringBuilder, s: String) => sb ++= s
val mergeStringCombiners = (sb1: StringBuilder, sb2: StringBuilder) => 
  sb1.append(sb2)

rdd.combineByKey(createStringCombiner, mergeStringValue, mergeStringCombiners)

but at the end of the day it still means additional effort to understand this code, increased complexity and no real added value. One thing I find particularly troubling is explicit inclusion of mutable data structures. Even if Spark handles almost all complexity it means we no longer have an elegant, referentially transparent code.

My point is if you really reduce amount of data by all means use reduceByKey. Otherwise you make your code harder to write, harder to analyze and gain nothing in return.

Note:

This answer is focused on Scala RDD API. Current Python implementation is quite different from its JVM counterpart and includes optimizations which provide significant advantage over naive reduceByKey implementation in case of groupBy-like operations.

For Dataset API see DataFrame / Dataset groupBy behaviour/optimization.


* See Spark performance for Scala vs Python for a convincing example


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