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This question already has an answer here:

If there was a Spark RDD like such:

id  | data
----------
1   | "a"
1   | "b"
2   | "c"
3   | "d"

How could I output this to separate json textfiles, grouped based on the id? Such that part-0000-1.json would contain rows "a" and "b", part-0000-2.json contains "c", etc.

marked as duplicate by user6910411 apache-spark Dec 8 '18 at 23:57

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

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df.write.partitionBy("col").json(<path_to_file>)

is what you need.

  • Thanks for your reply! I've seen this solution before, but the partionBy() creates a new directory where it collects separate files, whereas I'm looking to collect all rows to a single file. I hope that clarifies – Paul Choi Dec 8 '18 at 23:27
  • Thanks for putting me back on the right track. I've since found the solution and posted my answer. – Paul Choi Dec 8 '18 at 23:41
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Thanks to @thebluephantom, I was able to understand what was going wrong.

I was fundamentally misunderstanding Spark. When I was initially doing df.write.partitionBy("col").json(<path_to_file>) as @thebluephantom suggested, I was confused as to why my output was split into many different files.

I have since added .repartition(1) to collect all data into a single node, and then partitionBy("col") to split the data in here to multiple file outputs. My final code is:

latestUniqueComments
  .repartition(1)
  .write
  .mode(SaveMode.Append)
  .partitionBy("_manual_file_id")
  .format("json")
  .save(outputFile)

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