Github user HyukjinKwon commented on a diff in the pull request:

    https://github.com/apache/spark/pull/16776#discussion_r100997576
  
    --- Diff: 
sql/core/src/main/scala/org/apache/spark/sql/DataFrameStatFunctions.scala ---
    @@ -58,49 +58,52 @@ final class DataFrameStatFunctions private[sql](df: 
DataFrame) {
        * @param probabilities a list of quantile probabilities
        *   Each number must belong to [0, 1].
        *   For example 0 is the minimum, 0.5 is the median, 1 is the maximum.
    -   * @param relativeError The relative target precision to achieve 
(greater or equal to 0).
    +   * @param relativeError The relative target precision to achieve 
(greater than or equal to 0).
        *   If set to zero, the exact quantiles are computed, which could be 
very expensive.
        *   Note that values greater than 1 are accepted but give the same 
result as 1.
        * @return the approximate quantiles at the given probabilities
        *
    -   * @note NaN values will be removed from the numerical column before 
calculation
    +   * @note null and NaN values will be removed from the numerical column 
before calculation. If
    +   *   the dataframe is empty or all rows contain null or NaN, null is 
returned.
        *
        * @since 2.0.0
        */
       def approxQuantile(
           col: String,
           probabilities: Array[Double],
           relativeError: Double): Array[Double] = {
    -    StatFunctions.multipleApproxQuantiles(df.select(col).na.drop(),
    -      Seq(col), probabilities, relativeError).head.toArray
    +    val res = approxQuantile(Array(col), probabilities, relativeError)
    +    Option(res).map(_.head).orNull
       }
     
       /**
        * Calculates the approximate quantiles of numerical columns of a 
DataFrame.
    -   * @see [[DataFrameStatsFunctions.approxQuantile(col:Str* 
approxQuantile]] for
    -   *     detailed description.
        *
    -   * Note that rows containing any null or NaN values values will be 
removed before
    -   * calculation.
        * @param cols the names of the numerical columns
        * @param probabilities a list of quantile probabilities
        *   Each number must belong to [0, 1].
        *   For example 0 is the minimum, 0.5 is the median, 1 is the maximum.
    -   * @param relativeError The relative target precision to achieve (>= 0).
    +   * @param relativeError The relative target precision to achieve 
(greater than or equal to 0).
        *   If set to zero, the exact quantiles are computed, which could be 
very expensive.
        *   Note that values greater than 1 are accepted but give the same 
result as 1.
        * @return the approximate quantiles at the given probabilities of each 
column
        *
    -   * @note Rows containing any NaN values will be removed before 
calculation
    +   * @note Rows containing any null or NaN values will be removed before 
calculation. If
    +   *   the dataframe is empty or all rows contain null or NaN, null is 
returned.
        *
        * @since 2.2.0
        */
       def approxQuantile(
           cols: Array[String],
           probabilities: Array[Double],
           relativeError: Double): Array[Array[Double]] = {
    -    StatFunctions.multipleApproxQuantiles(df.select(cols.map(col): 
_*).na.drop(), cols,
    -      probabilities, relativeError).map(_.toArray).toArray
    +    // TODO: Update NaN/null handling to keep consistent with the 
single-column version
    --- End diff --
    
    I just saw your comment above.


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