8

Given the following DataSet values as inputData:

column0 column1 column2 column3
A       88      text    99
Z       12      test    200
T       120     foo     12

In Spark, what is an efficient way to compute a new hash column, and append it to a new DataSet, hashedData, where hash is defined as the application of MurmurHash3 over each row value of inputData.

Specifically, hashedData as:

column0 column1 column2 column3 hash
A       88      text    99      MurmurHash3.arrayHash(Array("A", 88, "text", 99))
Z       12      test    200     MurmurHash3.arrayHash(Array("Z", 12, "test", 200))
T       120     foo     12      MurmurHash3.arrayHash(Array("T", 120, "foo", 12))

Please let me know if any more specifics are necessary.

Any help is appreciated. Thanks!

10

One way is to use the withColumn function:

import org.apache.spark.sql.functions.hash
dataset.withColumn("hash", hash(dataset.columns.map(col):_*))
  • thanks! But I think that line is passing in the column string names into MurmurHash3 (i.e. Array("column0", "column1", "column2", "column3")). I'll try to find a way to extract the actual row values in the context of the mapping function. – Jesús Zazueta Nov 7 '17 at 17:26
  • 1
    @JesúsZazueta Just stating that I don't think his solution did column names only. Also, there is a neat function for taking multiple columns and generating a new column with their content: df.withColumn("concat", concat(df.columns.map(col):_*)) They have some other methods too, such as for specifying the join separator. – Lo-Tan Sep 18 '18 at 23:03
4

Turns out that Spark already has this implemented as the hash function inside package org.apache.spark.sql.functions

/**
 * Calculates the hash code of given columns, and returns the result as an int column.
 *
 * @group misc_funcs
 * @since 2.0
 */
@scala.annotation.varargs
def hash(cols: Column*): Column = withExpr {
  new Murmur3Hash(cols.map(_.expr))
}

And in my case, applied as:

import org.apache.spark.sql.functions.{col, hash}

val newDs = typedRows.withColumn("hash", hash(typedRows.columns.map(col): _*))

I truly have a lot to learn about Spark sql :(.

Leaving this here in case someone else needs it. Thanks!

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.