I have a Scala Spark DataFrame:

id, content
1, "<p>Some paragraph</p>"
2, "<p><li>Some listings</li></p>"

Basically, "content" column contains textual data with html and I would like to strip it. Currently, I'm using a UDF using the Jsoup library (not actual implementation code, but you get the idea):

import org.jsoup.Jsoup

It gets the job done but it's not performant and I've read that UDF is slow, is there any way I can apply the function to the column that optimises concurrency to get the results?

Ideal output:

id, clean_content
1, "Some paragraph"
2, "Some listings"
  • 1
    Unless you experience real latency issues in close-to-realtime pipeline, just use UDF and move on. There huge performance killers in Spark, like joins, window functions, collect_list, f(distinct col) (for different f), coalesce(1) / repartition(1) mapGroups, good old groupByKey` (with all the homegrown variants) and so on - these are the one you should worry about. Sweating over constant overhead here and there (especially if not working in a guest language) doesn't make sense. Just consider that Spark and established packages use UDFs heavily in many places :) – user10465355 Feb 11 at 10:24
  • 2
    And if you just want to strip tags, cleanxml from github.com/databricks/spark-corenlp, might do the trick (and yes, it is yet another UDF). – user10465355 Feb 11 at 10:25

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Browse other questions tagged or ask your own question.