20

So I am trying to learn Spark using Python (Pyspark). I want to know how the function mapPartitions work. That is what Input it takes and what Output it gives. I couldn't find any proper example from the internet. Lets say, I have an RDD object containing lists, such as below.

[ [1, 2, 3], [3, 2, 4], [5, 2, 7] ] 

And I want to remove element 2 from all the lists, how would I achieve that using mapPartitions.

27

mapPartition should be thought of as a map operation over partitions and not over the elements of the partition. It's input is the set of current partitions its output will be another set of partitions.

The function you pass map must take an individual element of your RDD

The function you pass mapPartition must take an iterable of your RDD type and return and iterable of some other or the same type.

In your case you probably just want to do something like

def filter_out_2(line):
    return [x for x in line if x != 2]

filtered_lists = data.map(filterOut2)

if you wanted to use mapPartition it would be

def filter_out_2_from_partition(list_of_lists):
  final_iterator = []
  for sub_list in list_of_lists:
    final_iterator.append( [x for x in sub_list if x != 2])
  return iter(final_iterator)

filtered_lists = data.mapPartition(filterOut2FromPartion)
  • Why don't you return anything in filterOut2FromPartition function. Secondly, is final some keyword in python? I think you meant to say final.iterator = [] instead of final_iterator. – MetallicPriest Nov 4 '14 at 21:39
  • I tried to implement this but I get the error "list object is not an iterator". Also, I think when you wrote [x for x in line if x != 2], I think you meant [x for x in list if x != 2]. I used list there. – MetallicPriest Nov 5 '14 at 10:27
  • We should return iter(final_iterator) instead of final_iterator. Fixed the answer. Thank you for your help :). – MetallicPriest Nov 5 '14 at 10:59
  • I'm newbie learning spark why below code rdd = sc.parallelize([1,2,3,4,5,6,7,8],2) def f(x): yield len(x) rdd.mapPartitions(f).collect() not working, – subro Sep 28 at 11:42
24

It's easier to use mapPartitions with a generator function using the yield syntax:

def filter_out_2(partition):
    for element in partition:
        if element != 2:
            yield element

filtered_lists = data.mapPartitions(filter_out_2)
  • Is this faster than just returning a list? – cgreen Jan 3 '17 at 22:05
  • 1
    @cgreen the partition contains all of your data. I'm not sure you want to load all of your data into a list. Generators are preferred over lists when you are iterating over data. – Narek Jan 3 '17 at 22:40
  • @cgreen Generators use less memory, since they generate each item as it's needed, instead of initially having to generate an entire list of objects. So it definitely uses less memory, and therefore is probably faster. Here is a good explanation of generators in Python. – Shane Halloran Nov 26 '17 at 22:52
  • This is really helpful but the method is called mapPartitions spark.apache.org/docs/latest/api/python/… – nadre Apr 15 '18 at 10:36
0

Need a final Iter

def filter_out_2(partition):
for element in partition:
    sec_iterator = []
    for i in element:
        if i!= 2:
            sec_iterator.append(i)
    yield sec_iterator

filtered_lists = data.mapPartitions(filter_out_2)
for i in filtered_lists.collect(): print(i)

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