I would like to rewrite this from R to Pyspark, any nice looking suggestions?

array <- c(1,2,3)
dataset <- filter(!(column %in% array))

8 Answers 8


In pyspark you can do it like this:

array = [1, 2, 3]
dataframe.filter(dataframe.column.isin(array) == False)

Or using the binary NOT operator:

  • 2
    What is the job of the * in *array?
    – Joe
    Commented May 20, 2019 at 12:21
  • 1
    *variable is python syntax for expanding an array to dump it's elements into the function parameters one at a time in order. Commented May 20, 2019 at 13:04
  • Note that dataframe.column is case sensitive! Alternatively, you can use the dictionary syntax dataframe[column], which is not :) Commented Aug 14, 2019 at 20:44
  • 2
    @rjurney No. What the == operator is doing here is calling the overloaded __eq__ method on the Column result returned by dataframe.column.isin(*array). That's overloaded to return another column result to test for equality with the other argument (in this case, False). The is operator tests for object identity, that is, if the objects are actually the same place in memory. If you use is here, it would always fail because the constant False doesn't ever live in the same memory location as a Column. Additionally, you can't overload is. Commented Sep 27, 2019 at 21:23
  • 1
    List splatting with * does not make any difference here. You can just use isin(array) and it works just fine. Commented Aug 4, 2020 at 10:38

Take the operator ~ which means contrary :

df_filtered = df.filter(~df["column_name"].isin([1, 2, 3]))
  • 10
    Everyone here, shouldn't this be the accepted answer? Why use this not-so-evident-to-understand == False when we have ~ specifically for negation? Commented Oct 9, 2019 at 12:50
  • 1
    Also, * was useless
    – ciurlaro
    Commented Apr 6, 2020 at 8:21
df_result = df[df.column_name.isin([1, 2, 3]) == False]

slightly different syntax and a "date" data set:

toGetDates={'2017-11-09', '2017-11-11', '2017-11-12'}
df= df.filter(df['DATE'].isin(toGetDates) == False)

You can use the .subtract() buddy.


df1 = df.select(col(1),col(2),col(3)) 
df2 = df.subtract(df1)

This way, df2 will be defined as everything that is df that is not df1.


* is not needed. So:

list = [1, 2, 3]

You can also use sql functions .col + .isin():

import pyspark.sql.functions as F

array = [1,2,3]
df = df.filter(~F.col(column_name).isin(array))

This might be useful if you are using sql functions and want consistency.


You can also loop the array and filter:

array = [1, 2, 3]
for i in array:
    df = df.filter(df["column"] != i)
  • I wouldn't recommend this in Big Data applications...it means you need to go through the whole dataset tree times...which is huge if you image you have few terrabytes to process
    – Babu
    Commented Jun 18, 2019 at 14:24
  • 2
    No, because Spark internally optimices this filter to make in 1 time this filters. Commented Jun 18, 2019 at 17:26
  • 1
    then it should be ok ... until new breaking change Spark update or framework switch... and 3 rows instead 1 line + hidden optimisation seems still not good pattern for me...no offense, but I still would recommend to avoid it
    – Babu
    Commented Jun 26, 2019 at 13:07

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