1

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
Jsoup.parse(content).text()

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"
...
2
  • 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 :)
    – 10465355
    Feb 11, 2019 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).
    – 10465355
    Feb 11, 2019 at 10:25

0

Your Answer

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