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I have a Spark DS with the below structure, I want to flatten each and extract all the columns. I tried get_json_object like below but it isn't working.

root
  |-- data: struct (nullable = true)
  |    |-- Level: long (nullable = true)
  |    |-- activityName: string (nullable = true)
  |    |-- activityRunId: string (nullable = true)
  |    |-- activityType: string (nullable = true)
  |    |-- category: string (nullable = true) 
  |    |-- correlationId: string (nullable = true)
  |    |-- effectiveIntegrationRuntime: string (nullable = true)
  |    |-- end: string (nullable = true)
  |    |-- level: string (nullable = true)
  |    |-- location: string (nullable = true)
  |    |-- operationName: string (nullable = true)
  |    |-- pipelineName: string (nullable = true)
  |    |-- pipelineRunId: string (nullable = true)
  |    |-- properties: struct (nullable = true)
  |    |    |-- Annotations: array (nullable = true)
  |    |    |    |-- element: string (containsNull = true)
  |    |    |-- Error: struct (nullable = true)
  |    |    |    |-- errorCode: string (nullable = true)


val DS = logDS.select(get_json_object($"data", "$.Level").alias("level"))

Requirement is I want to extract as separate columns

marked as duplicate by Ramesh Maharjan, user8371915 Jul 6 '18 at 9:43

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  • what do you mean by extract? do you mean you want them in separate columns? if so just use .* notation – Ramesh Maharjan Jul 6 '18 at 5:22
  • yes want them as a separate columns, so that I can store them in any DB. – prady Jul 6 '18 at 5:24
  • 2
    just do val DS = logDS.select($"data.*") and see if it resolves – Ramesh Maharjan Jul 6 '18 at 5:27
  • cool it works but I also want to extract the column "errorcode" which is nested one level further – prady Jul 6 '18 at 5:33
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    I am marking it as duplicate instead as there are a lot of them :) thanks @prady – Ramesh Maharjan Jul 6 '18 at 6:05

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