I would like to access to the min and max of a specific column from my dataframe but I don't have the header of the column, just its number, so I should I do using scala ?

maybe something like this :

val q = nextInt(ncol) //we pick a random value for a column number
col = df(q)
val minimum = col.min()

Sorry if this sounds like a silly question but I couldn't find any info on SO about this question :/


How about getting the column name from the metadata:

val selectedColumnName = df.columns(q) //pull the (q + 1)th column from the columns array
df.agg(min(selectedColumnName), max(selectedColumnName))

You can use pattern matching while assigning variable:

import org.apache.spark.sql.functions.{min, max}
import org.apache.spark.sql.Row

val Row(minValue: Double, maxValue: Double) = df.agg(min(q), max(q)).head

Where q is either a Column or a name of column (String). Assuming your data type is Double.

  • 2
    that is neat, to get the value out directly – Minnie Shi Aug 7 '17 at 14:26

You can use the column number to extract the column names first (by indexing df.columns), then aggregate use the column names:

val df = Seq((2.0, 2.1), (1.2, 1.4)).toDF("A", "B")
// df: org.apache.spark.sql.DataFrame = [A: double, B: double]

df.agg(max(df(df.columns(1))), min(df(df.columns(1)))).show

|   2.1|   1.4|

Here is a direct way to get the min and max from a dataframe with column names:

val df = Seq((1, 2), (3, 4), (5, 6)).toDF("A", "B")

|  A|  B|
|  1|  2|
|  3|  4|
|  5|  6|

df.agg(min("A"), max("A")).show()
|     1|     5|

If you want to get the min and max values as separate variables, then you can convert the result of agg() above into a Row and use Row.getInt(index) to get the column values of the Row.

val min_max = df.agg(min("A"), max("A")).head()
// min_max: org.apache.spark.sql.Row = [1,5]

val col_min = min_max.getInt(0)
// col_min: Int = 1

val col_max = min_max.getInt(1)
// col_max: Int = 5

In Java, we have to explicitly mention org.apache.spark.sql.functions that has implementation for min and max:

datasetFreq.agg(functions.min("Frequency"), functions.max("Frequency")).show();

Using spark functions min and max, you can find min or max values for any column in a data frame.

import org.apache.spark.sql.functions.{min, max}

val df = Seq((5, 2), (10, 1)).toDF("A", "B")

df.agg(max($"A"), min($"B")).show()
|    10|     1|

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.