I have two tables I would like to join together. One of them has a very bad skew of data. This is causing my spark job to not run in parallel as a majority of the work is done on one partition.

I have heard and read and tried to implement salting my keys to increase the distribution. https://www.youtube.com/watch?v=WyfHUNnMutg at 12:45 seconds is exactly what I would like to do.

Any help or tips would be appreciated. Thanks!

up vote 3 down vote accepted

Yes you should use salted keys on the larger table (via randomization) and then replicate the smaller one / cartesian join it to the new salted one:

Here are a couple of suggestions:

Tresata skew join RDD https://github.com/tresata/spark-skewjoin

python skew join: https://datarus.wordpress.com/2015/05/04/fighting-the-skew-in-spark/

The tresata library looks like this:

import com.tresata.spark.skewjoin.Dsl._  // for the implicits   

// skewjoin() method pulled in by the implicits
rdd1.skewJoin(rdd2, defaultPartitioner(rdd1, rdd2),   
DefaultSkewReplication(1)).sortByKey(true).collect.toLis
  • Is there any scala library that does a skew join? Also in the second link you provided. They are taking the first dataframes key and adding a random number to it. In the second dataframe they are replicating the key n times where n is the range of randomness you added to the first dataframe. This seems manageable when the second dataframe is small. Is this the exact and only way to do my above question? – John Engelhart Aug 15 '16 at 20:16
  • I have successfully imported import com.tresata.spark.skewjoin.Dsl._ But I cannot find the .skewJoin method on my rdd of RDD[(String, row)] – John Engelhart Aug 16 '16 at 15:07
  • I was execute the following: rdd1.skewJoin(rdd2, defaultPartitioner(rdd1, rdd2), DefaultSkewReplication(1)).sortByKey(true).collect.toList But need three imports import com.twitter.algebird.CMSHasherImplicits._ import org.apache.spark.Partitioner.defaultPartitioner import com.tresata.spark.skewjoin.Dsl._ – John Engelhart Aug 16 '16 at 20:02

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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