0

I am trying to dump some data that I have on a Hadoop cluster, usually in HBase, with a custom file format.

What I would like to do is more or less the following:

  • start from a distributed list of records, such as a Scalding pipe or similar
  • group items by some computed function
  • make so that items belonging to the same group reside on the same server
  • on each group, apply a transformation - that involves sorting - and write the result on disk. In fact I need to write a bunch of MapFile - which are essentially sorted SequenceFile, plus an index.

I would like to implement the above with Scalding, but I am not sure how to do the last step.

While of course one cannot write sorted data in a distributed fashion, it should still be doable to split data into chunks and then write each chunk sorted locally. Still, I cannot find any implementation of MapFile output for map-reduce jobs.

I recognize it is a bad idea to sort very large data, and this is the reason even on a single server I plan to split data into chunks.

Is there any way to do something like that with Scalding? Possibly I would be ok with using Cascading directly, or really an other pipeline framework, such as Spark.

0

Using Scalding (and the underlying Map/Reduce) you will need to use the TotalOrderPartitioner, which does pre-sampling to create appropriate buckets/splits of the input data.

Using Spark will speed up due to the faster access paths to the disk data. However it will still require shuffles to disk/hdfs so it will not be like orders of magnitude better.

In Spark you would use a RangePartitioner, which takes the number of partitions and an RDD:

val allData = sc.hadoopRdd(paths)
val partitionedRdd = sc.partitionBy(new RangePartitioner(numPartitions, allData)
val groupedRdd = partitionedRdd.groupByKey(..).
// apply further transforms..

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.