Apache Spark: map vs mapPartitions?
Solution 1:
Imp. TIP :
Whenever you have heavyweight initialization that should be done once for many
RDD
elements rather than once perRDD
element, and if this initialization, such as creation of objects from a third-party library, cannot be serialized (so that Spark can transmit it across the cluster to the worker nodes), usemapPartitions()
instead ofmap()
.mapPartitions()
provides for the initialization to be done once per worker task/thread/partition instead of once perRDD
data element for example : see below.
val newRd = myRdd.mapPartitions(partition => {
val connection = new DbConnection /*creates a db connection per partition*/
val newPartition = partition.map(record => {
readMatchingFromDB(record, connection)
}).toList // consumes the iterator, thus calls readMatchingFromDB
connection.close() // close dbconnection here
newPartition.iterator // create a new iterator
})
Q2. does
flatMap
behave like map or likemapPartitions
?
Yes. please see example 2 of flatmap
.. its self explanatory.
Q1. What's the difference between an RDD's
map
andmapPartitions
map
works the function being utilized at a per element level whilemapPartitions
exercises the function at the partition level.
Example Scenario : if we have 100K elements in a particular RDD
partition then we will fire off the function being used by the mapping transformation 100K times when we use map
.
Conversely, if we use mapPartitions
then we will only call the particular function one time, but we will pass in all 100K records and get back all responses in one function call.
There will be performance gain since map
works on a particular function so many times, especially if the function is doing something expensive each time that it wouldn't need to do if we passed in all the elements at once(in case of mappartitions
).
map
Applies a transformation function on each item of the RDD and returns the result as a new RDD.
Listing Variants
def map[U: ClassTag](f: T => U): RDD[U]
Example :
val a = sc.parallelize(List("dog", "salmon", "salmon", "rat", "elephant"), 3)
val b = a.map(_.length)
val c = a.zip(b)
c.collect
res0: Array[(String, Int)] = Array((dog,3), (salmon,6), (salmon,6), (rat,3), (elephant,8))
mapPartitions
This is a specialized map that is called only once for each partition. The entire content of the respective partitions is available as a sequential stream of values via the input argument (Iterarator[T]). The custom function must return yet another Iterator[U]. The combined result iterators are automatically converted into a new RDD. Please note, that the tuples (3,4) and (6,7) are missing from the following result due to the partitioning we chose.
preservesPartitioning
indicates whether the input function preserves the partitioner, which should befalse
unless this is a pair RDD and the input function doesn't modify the keys.Listing Variants
def mapPartitions[U: ClassTag](f: Iterator[T] => Iterator[U], preservesPartitioning: Boolean = false): RDD[U]
Example 1
val a = sc.parallelize(1 to 9, 3)
def myfunc[T](iter: Iterator[T]) : Iterator[(T, T)] = {
var res = List[(T, T)]()
var pre = iter.next
while (iter.hasNext)
{
val cur = iter.next;
res .::= (pre, cur)
pre = cur;
}
res.iterator
}
a.mapPartitions(myfunc).collect
res0: Array[(Int, Int)] = Array((2,3), (1,2), (5,6), (4,5), (8,9), (7,8))
Example 2
val x = sc.parallelize(List(1, 2, 3, 4, 5, 6, 7, 8, 9,10), 3)
def myfunc(iter: Iterator[Int]) : Iterator[Int] = {
var res = List[Int]()
while (iter.hasNext) {
val cur = iter.next;
res = res ::: List.fill(scala.util.Random.nextInt(10))(cur)
}
res.iterator
}
x.mapPartitions(myfunc).collect
// some of the number are not outputted at all. This is because the random number generated for it is zero.
res8: Array[Int] = Array(1, 2, 2, 2, 2, 3, 3, 3, 3, 3, 3, 3, 3, 3, 4, 4, 4, 4, 4, 4, 4, 5, 7, 7, 7, 9, 9, 10)
The above program can also be written using flatMap as follows.
Example 2 using flatmap
val x = sc.parallelize(1 to 10, 3)
x.flatMap(List.fill(scala.util.Random.nextInt(10))(_)).collect
res1: Array[Int] = Array(1, 2, 3, 3, 3, 4, 4, 4, 4, 4, 4, 4, 4, 4, 5, 5, 6, 6, 6, 6, 6, 6, 6, 6, 7, 7, 7, 8, 8, 8, 8, 8, 8, 8, 8, 9, 9, 9, 9, 9, 10, 10, 10, 10, 10, 10, 10, 10)
Conclusion :
mapPartitions
transformation is faster than map
since it calls your function once/partition, not once/element..
Further reading : foreach Vs foreachPartitions When to use What?
Solution 2:
What's the difference between an RDD's map and mapPartitions method?
The method map converts each element of the source RDD into a single element of the result RDD by applying a function. mapPartitions converts each partition of the source RDD into multiple elements of the result (possibly none).
And does flatMap behave like map or like mapPartitions?
Neither, flatMap works on a single element (as map
) and produces multiple elements of the result (as mapPartitions
).
Solution 3:
Map :
- It processes one row at a time , very similar to map() method of MapReduce.
- You return from the transformation after every row.
MapPartitions
- It processes the complete partition in one go.
- You can return from the function only once after processing the whole partition.
- All intermediate results needs to be held in memory till you process the whole partition.
- Provides you like setup() map() and cleanup() function of MapReduce
Map Vs mapPartitions
http://bytepadding.com/big-data/spark/spark-map-vs-mappartitions/
Spark Map
http://bytepadding.com/big-data/spark/spark-map/
Spark mapPartitions
http://bytepadding.com/big-data/spark/spark-mappartitions/