0

I want to modify the innerjoin-example of the advanced tutorial such that it makes sparse matrix multiplication with mapreduce possible (described by Ullman). Therefore I need a second map-reduce step summing values of equal position in the result matrix.

Unfortunately I don't manage to get the output of the first reduce-function of the class CsvInnerJoin into the map function of SumJob.

import sys
sys.path.append("/home/damian/disco/lib/")
from disco.core import Job, result_iterator
from disco.worker.classic.func import chain_reader
import csv, sys


if __name__ == '__main__':
    input_filename = "input.csv"
    output_filename = "output.csv"
    if len(sys.argv) > 1:
        input_filename = sys.argv[1]
        if len(sys.argv) > 2:
            output_filename = sys.argv[2]

    from CsvInnerJoiner import CsvInnerJoiner
    from SumJob import SumJob

    job = CsvInnerJoiner().run(input=[input_filename])
    job = SumJob().run() (******************)

    with open(output_filename, 'w') as fp:
        writer = csv.writer(fp)
        for url_key, descriptors in result_iterator(job.wait(show=True)):
            writer.writerow([url_key] + descriptors)

CsvInnerJoiner.py is this file:

import sys
sys.path.append("/home/damian/disco/lib/")
from disco.core import Job, result_iterator
from disco.worker.classic.func import chain_reader
import csv, sys
class CsvInnerJoiner(Job):
    partitions = 2
    sort = True

    def map(self, row, params):
        yield row[0], row[1:]

    @staticmethod
    def map_reader(fd, size, url, params):
        reader = csv.reader(fd, delimiter=',')
        for row in reader:
            yield row

    #@staticmethod
def reduce(self, rows_iter, out, params):
    from disco.util import kvgroup
    from itertools import chain
    #for url_key, descriptors in kvgroup(sorted(rows_iter)):
    for url_key, descriptors in kvgroup(rows_iter):
        merged_descriptors = list(chain.from_iterable(descriptors))
        print url_key,"_______",merged_descriptors
        if len(merged_descriptors) > 3:
            Alist = merged_descriptors[:merged_descriptors.index("B")]
            Blist = merged_descriptors[merged_descriptors.index("B"):]
            Alistlength = len(Alist)/3
            Blistlength = len(Blist)/3
            for i in range(Alistlength):
                for j in range(Blistlength):
                    container = int(Alist[3*i+2])*int(Blist[3*j+2])
                    yield [Alist[3*i+1],Blist[3*j+1]],container
                    #out.add(Alist[3*i+1],[Blist[3*j+1],container])        

SumJob.py is this:

import sys
sys.path.append("/home/damian/disco/lib/")
from disco.core import Job, result_iterator
from disco.worker.classic.func import chain_reader
import csv, sys


class SumJob(Job):
    map_reader = staticmethod(chain_reader)

    @staticmethod
    def map(self,key_value, params):
        print "KEY::::::",str(key_value[0])
        print "VAL::::::",str(key_value[1])
        yield key_value[0], key_value[1]
    @staticmethod    
    def reduce(self,key_value,out, params):
        Summe = sum(key_value[1])
        out.add(key_value[0],Summe)

The problem is that I do not know how to change the (**) line such that the second output of the first reduce step is taken as input by the second map-function.

Thank you so much for your help! Damian

1 Answer 1

0

You can use the output of a map/reduce stage as the input of the another (The return from job.wait()).

job1 = SumJob().run(input=[...])
job2 = SumJob().run(input=[...])

output = SomeOtherJob.run(input=[job1.wait(), job2.wait()]).wait(show=True)
for key, value in result_iterator(output):
    print key, value 

I'm not an expert by that chunk of code works for me (I implement the pagerank algorithm which has many stages and several iterations).

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.