3

I want to write a custom Transformer for a pipeline in spark 2.0 in scala. So far it is not really clear for me what the copy or transformSchema methods should return. Is it correct that they return a null? https://github.com/SupunS/play-ground/blob/master/test.spark.client_2/src/main/java/CustomTransformer.java for copy?

As the Transformer extends PipelineStage I conclude, that a fit calls the transformSchema method. Do I understand correctly that transformSchema is similar to sk-learns fit?

As my Transformer should join the dataset with a (very small) second dataset I want to store that one in the serialized pipeline as well. How should I store this in the transformer to properly work with the pipelines serialization mechanism?

How would a simple transformer look like which computes the mean for a single column and fills the nan values + persists this value?

@SerialVersionUID(serialVersionUID) // TODO store ibanList in copy + persist
    class Preprocessor2(someValue: Dataset[SomeOtherValues]) extends Transformer {

      def transform(df: Dataset[MyClass]): DataFrame = {

      }

      override def copy(extra: ParamMap): Transformer = {
      }

      override def transformSchema(schema: StructType): StructType = {
        schema
      }
    }
3

transformSchema should return the schema which is expected after applying Transformer. Example:

  • If transfomer adds column of IntegerType, and output column name is foo:

    import org.apache.spark.sql.types._
    
    override def transformSchema(schema: StructType): StructType = {
       schema.add(StructField("foo", IntegerType))
    }
    

So if the schema is not changed for the dataset as only a name value is filled for mean imputation I should return the original case class as the schema?

It is not possible in Spark SQL (and MLlib, too) since a Dataset is immutable once created. You can only add or "replace" (which is add followed by drop operations) columns.

  • you mean a transformer which drops / adds new columns should be an estimator? This sounds strange. So do I understand correct an sklearn transformer with fit & transform is a spark estimator, a spark transformer can only perform "fixed" transformations which are constant for any input data. As such a mean imputer needs to be an estimator? – Georg Heiler Nov 15 '16 at 20:37
  • As @LostInOverflow said, what you need an estimator and then a transformer -- where the estimator computes the mean from the original column and then the transformer imputes the missing values with the computed mean. Also, missing value imputation is a feature that is currently in the cooking -- JIRA – ShirishT Nov 15 '16 at 23:52
  • Thanks. Ist it correct that any variable in the Estimator's fit which should be stored / persisted will actually be persisted? – Georg Heiler Nov 16 '16 at 6:29
  • Params should be. The rest, I am not sure. – user6022341 Nov 16 '16 at 10:19
2

First of all, I'm not sure you want a Transformer per se (or UnaryTransformer as @LostInOverflow suggested in the answer) as you said:

How would a simple transformer look like which computes the mean for a single column and fills the nan values + persists this value?

For me, it's as if you wanted to apply a aggregate function (aka aggregation) and "join" it with all the columns to produce the final value or NaN.

It looks like you want a groupBy to do aggregation for mean and then join which could be a window aggregation, too.

Anyway, I'd start with a UnaryTransformer which would solve the first issue in your question:

So far it is not really clear for me what the copy or transformSchema methods should return. Is it correct that they return a null?

See the complete project spark-mllib-custom-transformer at GitHub in which I implemented the UnaryTransformer to toUpperCase a string column which for the UnaryTransformer looks as follows:

import org.apache.spark.ml.UnaryTransformer
import org.apache.spark.ml.util.Identifiable
import org.apache.spark.sql.types.{DataType, StringType}

class UpperTransformer(override val uid: String)
  extends UnaryTransformer[String, String, UpperTransformer] {

  def this() = this(Identifiable.randomUID("upp"))

  override protected def createTransformFunc: String => String = {
    _.toUpperCase
  }

  override protected def outputDataType: DataType = StringType
}

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.