I'd like to perform some basic stemming on a Spark Dataframe column by replacing substrings. What's the quickest way to do this?

In my current use case, I have a list of addresses that I want to normalize. For example this dataframe:

id     address
1       2 foo lane
2       10 bar lane
3       24 pants ln

Would become

id     address
1       2 foo ln
2       10 bar ln
3       24 pants ln

3 Answers 3


For Spark 1.5 or later, you can use the functions package:

from pyspark.sql.functions import *
newDf = df.withColumn('address', regexp_replace('address', 'lane', 'ln'))

Quick explanation:

  • The function withColumn is called to add (or replace, if the name exists) a column to the data frame.
  • The function regexp_replace will generate a new column by replacing all substrings that match the pattern.
  • 33
    Just remember that the first parameter of regexp_replace refers to the column being changed, the second is the regex to find and the last is how to replace it.
    – lfvv
    Aug 10, 2018 at 11:12
  • can I use regexp_replace inside a pipeline? Thanks
    – Kailegh
    Nov 8, 2018 at 12:16
  • 4
    Can we change more than one item in this code?
    – user15050871
    Jan 21, 2021 at 10:11
  • @elham you can change any value that fits a regexp expression for one column using this function: spark.apache.org/docs/2.2.0/api/R/regexp_replace.html
    – gbeaven
    Mar 8, 2021 at 20:46
  • 1
    Can this be adapted to replace only if entire string is matched and not substring? i.e., if I wanted to replace 'lane' by 'ln' but keep 'skylane' unchanged?
    – GreenEye
    Nov 8, 2021 at 17:48

For scala

import org.apache.spark.sql.functions.regexp_replace
import org.apache.spark.sql.functions.col
data.withColumn("addr_new", regexp_replace(col("addr_line"), "\\*", ""))

My suggestion is to import the sql function package and make use of withColumn function to modify the existing column in the df. In this case we need to replace address column data having lane as ln.

from pyspark.sql.functions import *

replacedf = df.withColumn('address', regexp_replace('address', 'lane', 'ln'))

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.