I have a dataframe with two columns "date" and "value", how do I add 2 new columns "value_mean" and "value_sd" to the dataframe where "value_mean" is the average of "value" over the last 10 days (including the current day as specified in "date") and "value_sd" is the standard deviation of the "value" over the last 10 days?

  • If data can be naturally partitioned by some (for example year or month) you can use a solution described in stackoverflow.com/q/33207164/1560062 Otherwise this problem is not a good fit for DataFrames. – zero323 Feb 11 '16 at 19:58
  • Thanks! Average (mean) works beautifully over window partitions but not "stddev". Do you know how to do standard deviation on WindowSpec? – May Xue Feb 15 '16 at 18:05
  • Build your own from basic expressions. See: stackoverflow.com/a/31791275/1560062 – zero323 Feb 15 '16 at 22:32

Spark sql provide the various dataframe function like avg,mean,sum etc.

you just have to apply on dataframe column using spark sql column

import org.apache.spark.sql.types._
import org.apache.spark.sql.functions._
import org.apache.spark.sql.Column

Create private method for standard deviation

private def stddev(col: Column): Column = sqrt(avg(col * col) - avg(col) * avg(col))

Now you can create sql Column for average and standard deviation

val value_sd: org.apache.spark.sql.Column = stddev(df.col("value")).as("value_sd")
val value_mean: org.apache.spark.sql.Column = avg(df.col("value").as("value_mean"))

Filter your dataframe for last 10 days or as you want

val filterDF=df.filter("")//put your filter condition 

Now yon can apply the aggregate function on your filterDF

filterDF.agg(stdv, value_mean).show

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.