I have a huge CSV file I would like to process using Hadoop MapReduce on Amazon EMR (python).
The file has 7 fields, however, I am only looking at the date and quantity field.
"date" "receiptId" "productId" "quantity" "price" "posId" "cashierId"
Firstly, my mapper.py
import sys def main(argv): line = sys.stdin.readline() try: while line: list = line.split('\t') #If date meets criteria, add quantity to express key if int(list[11:13])>=17 and int(list[11:13])<=19: print '%s\t%s' % ("Express", int(list)) #Else, add quantity to non-express key else: print '%s\t%s' % ("Non-express", int(list)) line = sys.stdin.readline() except "end of file": return None if __name__ == "__main__": main(sys.argv)
For the reducer, I will be using the streaming command: aggregate.
Is my code right? I ran it in Amazon EMR but i got an empty output.
So my end result should be: express, XXX and non-express, YYY. Can I have it do a divide operation before returning the result? Just the result of XXX/YYY. Where should i put this code? A reducer??
Also, this is a huge CSV file, so will mapping break it up into a few partitions? Or do I need to explicitly call a FileSplit? If so, how do I do that?