I'm trying to add a column to a dataframe, which will contain hash of another column.

I've found this piece of documentation: https://spark.apache.org/docs/2.3.0/api/sql/index.html#hash
And tried this:

import org.apache.spark.sql.functions._
val df = spark.read.parquet(...)
val withHashedColumn = df.withColumn("hashed", hash($"my_column"))

But what is the hash function used by that hash()? Is that murmur, sha, md5, something else?

The value I get in this column is integer, thus range of values here is probably [-2^(31) ... +2^(31-1)].
Can I get a long value here? Can I get a string hash instead?
How can I specify a concrete hashing algorithm for that?
Can I use a custom hash function?

  • 12
    One of the wonders of open source is that you can look at the source as you can see they use Murmur3. There is also another function sha2. Dec 5, 2018 at 14:44

2 Answers 2


It is Murmur based on the source code:

   * Calculates the hash code of given columns, and returns the result as an int column.
   * @group misc_funcs
   * @since 2.0.0
  def hash(cols: Column*): Column = withExpr {
    new Murmur3Hash(cols.map(_.expr))

If you want a Long hash, in spark 3 there is the xxhash64 function: https://spark.apache.org/docs/3.0.0-preview/api/sql/index.html#xxhash64.

You may want only positive numbers. In this case you may use hash and sum Int.MaxValue as

df.withColumn("hashID", hash($"value").cast(LongType)+Int.MaxValue).show()
  • Hi if I only want positive numbers, how can I achieve this in Python?
    – wawawa
    Aug 22, 2021 at 11:32
  • @Galuoises , can you people provide some more resources where these can be used in spark context how to use in data skewness and other area.
    – Shasu
    Oct 1, 2022 at 19:53
  • 2
    @shasu, sorry but what you are asking is not related to the question of the page. Please open a new stackoverflow question
    – Galuoises
    Oct 4, 2022 at 13:24

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.