How can one write to multiple outputs for each key in an RDD using Python and Spark in one job? I know I can try to use .filter for all the possible keys, but this is a lot of work which will create many jobs.

Similar to this question: Write to multiple outputs by key Spark - one Spark job

However the answer to the above question is in scala. Looking for a how-to using Python.

PATH = os.path.join("s3://asdf/hjkl", 'temp_date', "intermediate_data/")
global current_sport
current_sport = ''
def format_for_output(x):
    current_sport = x[0]
    return json.dumps(x[1])
recommendation2.map(format_for_output).saveAsTextFile(os.path.join(PATH, current_sport))

If you want plain Python solution then you can simply partition RDD by key. First lets create some dumy data:

import numpy as np

keys = [chr(x) for x in xrange(65, 91)]
rdd = sc.parallelize(
    (np.random.choice(keys), np.random.randint(0, 100)) for _ in xrange(10000))

Now lets pretend we don't know anything about the keys. We have to create mapping from key to a partition id:

mapping = sc.broadcast(
    rdd.keys(). # Get keys
        distinct(). # Find unique
        sortBy(lambda x: x). # Sort
        zipWithIndex(). # Add index
        collectAsMap()) # Create dict

Finally we can partition using above mapping and save to text file:

        len(mapping.value) # Number of partitions
        partitionFunc=lambda x: mapping.value.get(x) # Mapping

Lets check if everything works as expected:

import glob

cnts = rdd.countByKey() # Count values by key
fs = sorted(glob.glob("foo/part-*")) # Get output names

assert len(fs) == len(mapping.value) # All keys present

for (k, v) in sorted(mapping.value.items()):
    with open(fs[v]) as fr:
        lines = fr.readlines()
        assert len(lines) == cnts[k] # Number of records as expected
        assert all(k in line for line in lines) # All with the same key

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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