I've exported a client database to a csv file, and tried to import it to Spark using:

  .option("header", "true")
  .option("inferSchema", "true")

After doing some validations, I find out that some ids were null because a column sometimes has a carriage return. And that dislocated all next columns, with a domino effect, corrupting all the data.

What is strange is that when calling printSchema the resulting table structure is good.

How to fix the issue?

  • Please provide a sample of your data (input and output) that highlight your problem – cheseaux Oct 21 '16 at 15:26
  • You'll need to get back to the export source and work from there. Spark cant deal gracefully with that. – eliasah Oct 21 '16 at 15:29

You seemed to have had a lot of luck with inferSchema that it worked fine (since it only reads few records to infer the schema) and so printSchema gives you a correct result.

Since the CSV export file is broken and assuming you want to process the file using Spark (given its size for example) read it using textFile and fix the ids. Save it as CSV format and load it back.

  • Unfortunately you are right, there is no way to solve this issue in the import phase. – Marco Fedele Oct 26 '16 at 8:05

I'm not sure what version of spark you are using, but beginning in 2.2 (I believe), there is a 'multiLine' option that can be used to keep fields together that have line breaks in them. From some other things I've read, you may need to apply some quoting and/or escape character options to get it working just how you want it.

  .option("header", "true")
  .option("inferSchema", "true")
  **.option("multiLine", "true")**

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