There's a DataFrame in pyspark with data as below:

user_id object_id score
user_1  object_1  3
user_1  object_1  1
user_1  object_2  2
user_2  object_1  5
user_2  object_2  2
user_2  object_2  6

What I expect is returning 2 records in each group with the same user_id, which need to have the highest score. Consequently, the result should look as the following:

user_id object_id score
user_1  object_1  3
user_1  object_2  2
user_2  object_2  6
user_2  object_1  5

I'm really new to pyspark, could anyone give me a code snippet or portal to the related documentation of this problem? Great thanks!


6 Answers 6


I believe you need to use window functions to attain the rank of each row based on user_id and score, and subsequently filter your results to only keep the first two values.

from pyspark.sql.window import Window
from pyspark.sql.functions import rank, col

window = Window.partitionBy(df['user_id']).orderBy(df['score'].desc())

df.select('*', rank().over(window).alias('rank')) 
  .filter(col('rank') <= 2) 
#| user_1| object_1|    3|   1|
#| user_1| object_2|    2|   2|
#| user_2| object_2|    6|   1|
#| user_2| object_1|    5|   2|

In general, the official programming guide is a good place to start learning Spark.


rdd = sc.parallelize([("user_1",  "object_1",  3), 
                      ("user_1",  "object_2",  2), 
                      ("user_2",  "object_1",  5), 
                      ("user_2",  "object_2",  2), 
                      ("user_2",  "object_2",  6)])
df = sqlContext.createDataFrame(rdd, ["user_id", "object_id", "score"])
  • I thinks there's something need to tweak. object_id doesn't have effect on either groupby or top procedure. And what I want is to group by user_id, and in each group, retrieve the first two records with highest score separately, not only the first records. Great thanks!
    – KAs
    Jul 15, 2016 at 14:33
  • 4
    You can use the window function in the filter: df.filter(rank().over(window) <= 2)
    – Wilmerton
    Oct 5, 2016 at 7:56
  • 2
    I'm flabbergasted... I was convinced I used a window function in a filter before. But I indeed couldn't reproduce it (neither in 2 nor in 1.6). I did use it in an exotic way, but I can't remember when or how. Sorry.
    – Wilmerton
    Oct 5, 2016 at 18:17
  • 6
    You might want to consider using row_number instead of rank in case of getting same rank and you still want top n Dec 19, 2018 at 12:49
  • @TomerBenDavid this comment deserves more upvote, thank you sir.
    – rluo
    Feb 13, 2022 at 21:30

Top-n is more accurate if using row_number instead of rank when getting rank equality:

val n = 5
df.select(col('*'), row_number().over(window).alias('row_number')) \
  .where(col('row_number') <= n) \
  .limit(20) \

Note limit(20).toPandas() trick instead of show() for Jupyter notebooks for nicer formatting.

  • 2
    Remember to add from pyspark.sql.functions import row_number for this to work Feb 11, 2020 at 8:51
  • What would be more efficient (fast) to compute?. I suspect that is about the same. Would it be a more efficient way? I am dealing with a 110 GB dataset with 4.7 M categories (to groupBy), with around 4,300 rows each category and its taking for ever on a large cluster. Apr 23, 2020 at 23:01
  • 1
    Here's the best link to describe the difference between rank, row_number, and dense_rank
    – HT.
    Sep 7, 2021 at 22:28

I know the question is asked for pyspark and I was looking for the similar answer in Scala i.e.

Retrieve top n values in each group of a DataFrame in Scala

Here is the scala version of @mtoto's answer.

import org.apache.spark.sql.expressions.Window
import org.apache.spark.sql.functions.rank
import org.apache.spark.sql.functions.col

val window = Window.partitionBy("user_id").orderBy('score desc')
val rankByScore = rank().over(window)
df1.select('*, rankByScore as 'rank).filter(col("rank") <= 2).show() 
# you can change the value 2 to any number you want. Here 2 represents the top 2 values

More examples can be found here.


with Python 3 and Spark 2.4

from pyspark.sql import Window
import pyspark.sql.functions as f

def get_topN(df, group_by_columns, order_by_column, n=1):
    window_group_by_columns = Window.partitionBy(group_by_columns)
    ordered_df = df.select(df.columns + [
    topN_df = ordered_df.filter(f"row_rank <= {n}").drop("row_rank")
    return topN_df

top_n_df = get_topN(your_dataframe, [group_by_columns],[order_by_columns], 1) 

Here is another solution without a window function to get the top N records from pySpark DataFrame.

# Import Libraries
from pyspark.sql.functions import col

# Sample Data
rdd = sc.parallelize([("user_1",  "object_1",  3), 
                      ("user_1",  "object_2",  2), 
                      ("user_2",  "object_1",  5), 
                      ("user_2",  "object_2",  2), 
                      ("user_2",  "object_2",  6)])
df = sqlContext.createDataFrame(rdd, ["user_id", "object_id", "score"])

# Get top n records as Row Objects
row_list = df.orderBy(col("score").desc()).head(5)

# Convert row objects to DF
sorted_df = spark.createDataFrame(row_list)

# Display DataFrame


| user_1| object_2|    2|
| user_2| object_2|    2|
| user_1| object_1|    3|
| user_2| object_1|    5|
| user_2| object_2|    6|

If you are interested in more window functions in Spark you can refer to one of my blogs: https://medium.com/expedia-group-tech/deep-dive-into-apache-spark-window-functions-7b4e39ad3c86

  • Is this one doing less computation than the order by necessary in window?
    – Piotr
    Mar 23, 2023 at 9:00

To Find Nth highest value in PYSPARK SQLquery using ROW_NUMBER() function:

    SELECT e.*, 
    ROW_NUMBER() OVER (ORDER BY col_name DESC) rn 
    FROM Employee e
WHERE rn = N

N is the nth highest value required from the column


[Stage 2:>               (0 + 1) / 1]++++++++++++++++
|col_name   |
|1183395    |

query will return N highest value

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