As far as I can tell there is nothing to gain* in this particular case by using
aggregateByKey or a similar function. Since you're building a list there is no "real" reduction and amount of data which has to be shuffled is more or less the same.
To really observe some performance gain you need transformations which actually reduces amount of the transfered data for example counting, computing summary statistics, finding unique elements.
Regarding differences benefits of using
foldByKey() there is an important conceptual difference which is easier to see when you consider Scala API singatures.
foldByKey map from
RDD[(K, V)] to
RDD[(K, V)] while the second one provides additional zero element.
reduceByKey(func: (V, V) ⇒ V): RDD[(K, V)]
foldByKey(zeroValue: V)(func: (V, V) ⇒ V): RDD[(K, V)]
combineByKey (there is no
aggregateByKey, but it is the same type of transformation) transforms from
RDD[(K, V)] to
createCombiner: (V) ⇒ C,
mergeValue: (C, V) ⇒ C,
mergeCombiners: (C, C) ⇒ C): RDD[(K, C)]
Going back to your example only
combineByKey (and in PySpark
aggregateByKey) is really applicable since you are transforming from
RDD[(String, Int)] to
While in a dynamic language like Python it is actually possible to perform such an operation using
reduceByKey it makes semantics of the code unclear and to cite @tim-peters "There should be one-- and preferably only one --obvious way to do it" .
combineByKey is pretty much the same as between
foldByKey so for a list it is mostly a matter of taste:
def merge_value(acc, x):
def merge_combiners(acc1, acc2):
rdd = (sc.parallelize([("a", 7), ("b", 3), ("a", 8)])
lambda x: [x],
lambda u, v: u + [v],
lambda u1,u2: u1+u2))
In practice you should prefer
groupByKey though. PySpark implementation is significantly more optimized compared to naive implementation like the one provided above.
1.Peters, T. PEP 20 -- The Zen of Python. (2004). at https://www.python.org/dev/peps/pep-0020/
* In practice there is actually quite a lot to loose here, especially when using PySpark. Python implementation of
groupByKey is significantly more optimized than naive combine by key. You can check Be Smart About groupByKey, created by me and @eliasah for an additional discussion.