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How can I find out -- inside a pipeline -- which records are skipped or dropped from the transformation?

I have a pipeline which is like the following:

  • StringIndexer
  • OneHotEncoderEstimator
  • (repeat above for all categorical cols)
  • VectorAssembler (collecting all encoded and raw numeric cols)
  • LogisticRegression

Then:

model = pipeline.fit(train)
predicted = model.transform(test)

test.count() 
8092
predicted.count()
8091

One record is missing and I'd like to find out which one. thanks

1 Answer 1

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The handleInvalid option of your StringIndexer is likely set to skip.

You can change this option to error and the transform will fail on never seen labels. As of Spark 2.2 you can also use option keep to keep the rows with unknown labels in a separate bucket for them:

string_indexer = StringIndexer(inputCol="label", outputCol="indexed", handleInvalid='keep')

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