Is there any alternative for df[100, c("column")] in scala spark data frames. I want to select specific row from a column of spark data frame. for example 100th row in above R equivalent code


Firstly, you must understand that DataFrames are distributed, that means you can't access them in a typical procedural way, you must do an analysis first. Although, you are asking about Scala I suggest you to read the Pyspark Documentation, because it has more examples than any of the other documentations.

However, continuing with my explanation, I would use some methods of the RDD API cause all DataFrames have one RDD as attribute. Please, see my example bellow, and notice how I take the 2nd record.

df = sqlContext.createDataFrame([("a", 1), ("b", 2), ("c", 3)], ["letter", "name"])
myIndex = 1
values = (df.rdd.zipWithIndex()
            .filter(lambda ((l, v), i): i == myIndex)
            .map(lambda ((l,v), i): (l, v))

# (u'b', 2)

Hopefully, someone gives another solution with fewer steps.


This is how I achieved the same in Scala. I am not sure if it is more efficient than the valid answer, but it requires less coding

val parquetFileDF = sqlContext.read.parquet("myParquetFule.parquet")

val myRow7th = parquetFileDF.rdd.take(7).last
  • 1
    Will the output change depending on how many nodes the data is clustered across?
    – bshelt141
    Oct 19 '17 at 17:49
  • 1
    the order is not guaranty, so the output might change on each run
    – Juh_
    Jan 23 '20 at 13:59

In PySpark, if your dataset is small (can fit into memory of driver), you can do


where df is the DataFrame object, and n is the Row of interest. After getting said Row, you can do row.myColumn or row["myColumn"] to get the contents, as spelled out in the API docs.


The getrows() function below should get the specific rows you want.

For completeness, I have written down the full code in order to reproduce the output.

# Create SparkSession
from pyspark.sql import SparkSession
spark = SparkSession.builder.master('local').appName('scratch').getOrCreate()

# Create the dataframe
df = spark.createDataFrame([("a", 1), ("b", 2), ("c", 3)], ["letter", "name"])

# Function to get rows at `rownums`
def getrows(df, rownums=None):
    return df.rdd.zipWithIndex().filter(lambda x: x[1] in rownums).map(lambda x: x[0])

# Get rows at positions 0 and 2.
getrows(df, rownums=[0, 2]).collect()

# Output:
#> [(Row(letter='a', name=1)), (Row(letter='c', name=3))]

This Works for me in PySpark


There is a scala way (if you have a enough memory on working machine):

val arr = df.select("column").rdd.collect

If dataframe schema is unknown, and you know actual type of "column" field (for example double), than you can get arr as following:

val arr = df.select($"column".cast("Double")).as[Double].rdd.collect

you can simply do that by using below single line of code

val arr = df.select("column").collect()(99)
  • 1
    more like: .collect()[1][0], in case someone needs the help
    – Fay007
    Jul 7 '20 at 1:18

When you want to fetch max value of a date column from dataframe, just the value without object type or Row object information, you can refer to below code.

table = "mytable"

max_date = df.select(max('date_col')).first()[0]

instead of Row(max(reference_week)=datetime.date(2020, 6, 26))


Following is a Java-Spark way to do it , 1) add a sequentially increment columns. 2) Select Row number using Id. 3) Drop the Column

import static org.apache.spark.sql.functions.*;

ds = ds.withColumn("rownum", functions.monotonically_increasing_id());
ds = ds.filter(col("rownum").equalTo(99));
ds = ds.drop("rownum");

N.B. monotonically_increasing_id starts from 0;

  • 1
    monotonically_increasing_id - The generated ID is guaranteed to be monotonically increasing and unique, but not consecutive.
    – Gowrav
    Mar 12 '20 at 15:07

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