3

I have a Spark DataFrame where I have a column with Vector values. The vector values are all n-dimensional, aka with the same length. I also have a list of column names Array("f1", "f2", "f3", ..., "fn"), each corresponds to one element in the vector.

some_columns... | Features
      ...       | [0,1,0,..., 0]

to

some_columns... | f1 | f2 | f3 | ... | fn

      ...       | 0  | 1  | 0  | ... | 0

What is the best way to achieve this? I thought of one way which is to create a new DataFrame with createDataFrame(Row(Features), featureNameList) and then join with the old one, but it requires spark context to use createDataFrame. I only want to transform the existing data frame. I also know .withColumn("fi", value) but what do I do if n is large?

I'm new to Scala and Spark and couldn't find any good examples for this. I think this can be a common task. My particular case is that I used the CountVectorizer and wanted to recover each column individually for better readability instead of only having the vector result.

10

One way could be to convert the vector column to an array<double> and then using getItem to extract individual elements.

import org.apache.spark.sql.functions._
import org.apache.spark.ml._

val df = Seq( (1 , linalg.Vectors.dense(1,0,1,1,0) ) ).toDF("id", "features")
//df: org.apache.spark.sql.DataFrame = [id: int, features: vector]

df.show
//+---+---------------------+
//|id |features             |
//+---+---------------------+
//|1  |[1.0,0.0,1.0,1.0,0.0]|
//+---+---------------------+

// A UDF to convert VectorUDT to ArrayType
val vecToArray = udf( (xs: linalg.Vector) => xs.toArray )

// Add a ArrayType Column   
val dfArr = df.withColumn("featuresArr" , vecToArray($"features") )

// Array of element names that need to be fetched
// ArrayIndexOutOfBounds is not checked.
// sizeof `elements` should be equal to the number of entries in column `features`
val elements = Array("f1", "f2", "f3", "f4", "f5")

// Create a SQL-like expression using the array 
val sqlExpr = elements.zipWithIndex.map{ case (alias, idx) => col("featuresArr").getItem(idx).as(alias) }

// Extract Elements from dfArr    
dfArr.select(sqlExpr : _*).show
//+---+---+---+---+---+
//| f1| f2| f3| f4| f5|
//+---+---+---+---+---+
//|1.0|0.0|1.0|1.0|0.0|
//+---+---+---+---+---+
  • Thanks for the answer! This is really helpful. Could you please add the last step where the original df gets the new individual columns, aka producing the df with id (actually not just id, should be all other existing columns) and f1, f2... columns together. That way the df is modified in-place. This may be obvious to you but I want to learn the right approach since I'm not quite familiar with Scala yet. – Logan Yang Apr 19 '18 at 17:16
  • 1
    You can use dfArr.select( (col("id") +: sqlExpr) :_*).show(false) This will prepend the column id into the sqlExpr Array and then pass it to the select function. Also, keep in mind that no in-place changes are happening. dfArr.select( (col("id") +: sqlExpr) :_*) will return you a new dataframe. df will still have the original contents since dataframes are immutable. – philantrovert Apr 19 '18 at 17:21
  • Thanks for pointing that out! I also realized there should be no in-place changes. – Logan Yang Apr 19 '18 at 17:24
  • A self-note for completeness: for adding all previous columns, dfArr.select( (col("*") +: sqlExpr) :_*) – Logan Yang Apr 19 '18 at 18:22

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.