Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm looking for a way to make a GROUP BY operation in a query in datastore using MapReduce. AFAIK App Engine doesn't support GROUP BY itself in GQL and a good approach suggested by other developers is use MapReduce.

I downloaded the source code and I'm studying the demo code, and I tryied to implement in my case. But I hadn't success. Here is how I tryied to do it. Maybe everything I did is wrong. So if anyone could help me to do that, I would thank.


What I want to do is: I have a bunch of contacts in the datastore, and each contact have a date. There are a bunch of repeated contacts with the same date. What I want to do is simple the group by, gather the same contacts with the same date.

E.g:

Let's say I have this contacts:

  1. CONTACT_NAME: Foo1 | DATE: 01-10-2012
  2. CONTACT_NAME: Foo2 | DATE: 02-05-2012
  3. CONTACT_NAME: Foo1 | DATE: 01-10-2012

So after the MapReduce operation It would be something like this:

  1. CONTACT_NAME: Foo1 | DATE: 01-10-2012
  2. CONTACT_NAME: Foo2 | DATE: 02-05-2012

For a GROUP BY functionality I think word count does the work.


EDIT

The only thing that is shown in the log is:

/mapreduce/pipeline/run 200

Running GetContactData.WordCountPipeline((u'2012-02-02',), *{})#da26a9b555e311e19b1e6d324d450c1a

END EDIT

If I'm doing something wrong, and if I'm using a wrong approach to do a GROUP BY with MapReduce, help me in how to do that with MapReduce.


Here is my code:

from Contacts import Contacts
from google.appengine.ext import webapp
from google.appengine.ext.webapp import template
from google.appengine.ext.webapp.util import run_wsgi_app
from google.appengine.api import mail
from google.appengine.ext.db import GqlQuery
from google.appengine.ext import db


from google.appengine.api import taskqueue
from google.appengine.api import users

from mapreduce.lib import files
from mapreduce import base_handler
from mapreduce import mapreduce_pipeline
from mapreduce import operation as op
from mapreduce import shuffler

import simplejson, logging, re


class GetContactData(webapp.RequestHandler):

    # Get the calls based on the user id
    def get(self):
        contactId = self.request.get('contactId')
        query_contacts = Contact.all()
        query_contacts.filter('contact_id =', int(contactId))
        query_contacts.order('-timestamp_')
        contact_data = []
        if query_contacts != None:
            for contact in query_contacts:
                    pipeline = WordCountPipeline(contact.date)
                    pipeline.start()
                    record = { "contact_id":contact.contact_id,
                               "contact_name":contact.contact_name,
                               "contact_number":contact.contact_number,
                               "timestamp":contact.timestamp_,
                               "current_time":contact.current_time_,
                               "type":contact.type_,
                               "current_date":contact.date }
                    contact_data.append(record)

        self.response.headers['Content-Type'] = 'application/json'
        self.response.out.write(simplejson.dumps(contact_data)) 

class WordCountPipeline(base_handler.PipelineBase):
  """A pipeline to run Word count demo.

  Args:
    blobkey: blobkey to process as string. Should be a zip archive with
      text files inside.
  """

  def run(self, date):
    output = yield mapreduce_pipeline.MapreducePipeline(
        "word_count",
        "main.word_count_map",
        "main.word_count_reduce",
        "mapreduce.input_readers.DatastoreInputReader",
        "mapreduce.output_writers.BlobstoreOutputWriter",
        mapper_params={
            "date": date,
        },
        reducer_params={
            "mime_type": "text/plain",
        },
        shards=16)
    yield StoreOutput("WordCount", output)

class StoreOutput(base_handler.PipelineBase):
  """A pipeline to store the result of the MapReduce job in the database.

  Args:
    mr_type: the type of mapreduce job run (e.g., WordCount, Index)
    encoded_key: the DB key corresponding to the metadata of this job
    output: the blobstore location where the output of the job is stored
  """

  def run(self, mr_type, output):
      logging.info(output) # here I should append the grouped duration in JSON
share|improve this question
    
If you are getting a 404, the error is not (yet?) in your mapreduce code, but either in app.yaml or handler routing. Please post those first. –  mjibson Feb 13 '12 at 1:14
    
I've fixed app.yaml. Not an 404 error, the pipeline is executed. Check the EDIT to see what is happening. I dont think its being made correctly. If you could help me how to make GROUP by with MapReduce. Thanks! –  rogcg Feb 13 '12 at 1:45

1 Answer 1

up vote 0 down vote accepted

I based on the code @autumngard provided in this question and modified to fit my purpose and it worked.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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