I wonder if there is a more efficient way in spark to find the most frequent value of a set of columns than using rank() in order to use it as an imputation for missing values.

E.g. in spark-sql I could formulate something similar like how to select the most frequently appearing values? per column. This solution works for a single column using rank. What I am looking for is a) a more efficient variant (as the first answer outlines ) and b) something which is more optimal than using a for loop and the solution of a) to apply for multiple columns.

Do you see any possibility to optimize this in spark?


An example. Here is a small Dataset

case class FooBarGG(foo: Int, bar: String, baz: String, dropme: String)
val df = Seq((0, "first", "A", "dropme"), (1, "second", "A", "dropme2"),
    (0, "first", "B", "foo"),
    (1, "first", "C", "foo"))
    .toDF("foo", "bar", "baz", "dropme").as[FooBarGG]
val columnsFactor = Seq("bar", "baz")
val columnsToDrop = Seq("dropme")
val factorCol= (columnsFactor ++ columnsToDrop).map(c => col(c))

With the query from the answer

df.groupBy(factorCol: _*).count.agg(max(struct($"count" +: factorCol: _*)).alias("mostFrequent")).show
|        mostFrequent|
|-- mostFrequent: struct (nullable = true)
 |    |-- count: long (nullable = false)
 |    |-- bar: string (nullable = true)
 |    |-- baz: string (nullable = true)
 |    |-- dropme: string (nullable = true)

Is the result but for column bar -> first, baz -> A and for drompe -> foo are the single top1 most frequent values, which are different from the returned result.


You can use simple aggregation as long as you fields can be ordered and count is the leading one:

import org.apache.spark.sql.functions._

val df = Seq("John", "Jane", "Eve", "Joe", "Eve").toDF("name")
val grouping = Seq($"name")

df.groupBy(grouping: _*).count.agg(max(struct($"count" +: grouping: _*)))

It is also possible to use a statically typed Dataset:

import org.apache.spark.sql.catalyst.encoders.RowEncoder

df.groupByKey(x => x)(RowEncoder(df.schema)).count.reduce(
  (x, y) => if (x._2 > y._2) x else y

You can adjust grouping columns or key function to handle more complex scenarios.

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