Let's say I have rows of phone call records the format:
[CallingUser, ReceivingUser, Duration]
If I want to know the total amount of time that a given user has been on the phone (sum of Duration where the User was the CallingUser or the ReceivingUser).
Effectively, for a given record, I would like to create 2 pairs
(CallingUser, Duration) and
What is the most efficient way to do this? I can add 2
RDDs together, but I am unclear if this is a good approach:
#Sample Data: callData = sc.parallelize([["User1", "User2", 2], ["User1", "User3", 4], ["User2", "User1", 8] ]) calls = callData.map(lambda record: (record, record)) #The potentially inefficient map in question: calls += callData.map(lambda record: (record, record)) reduce = calls.reduceByKey(lambda a, b: a + b)