I have a large pyspark.sql.dataframe.DataFrame and I want to keep (so filter) all rows where the URL saved in the location column contains a pre-determined string, e.g. 'google.com'.

I have tried:

import pyspark.sql.functions as sf

but this throws a

TypeError: _TypeError: 'Column' object is not callable'

How do I go around and filter my df properly? Many thanks in advance!


3 Answers 3


Spark 2.2 onwards


Spark 2.2 documentation link

Spark 2.1 and before

You can use plain SQL in filter

df.filter("location like '%google.com%'")

or with DataFrame column methods


Spark 2.1 documentation link

  • Hi Srinivas, what if we had to check for two words, let's say google.com and amazon.com using like? How can we do so?
    – cph_sto
    Oct 18, 2018 at 14:48
  • 3
    @cph_bon: There are many ways to do it. SQL df.filter("location like '%google.com%' AND location like '%amazon.com%'") or DataFrame df.filter("location like '%google.com%'").filter("location like '%amazon.com%'")
    – mrsrinivas
    Oct 23, 2018 at 5:33
  • 1
    @mrsrinivas, what is we want to search "like 'ID' " in all columns. For instance, daframe to have all columns that include word "ID"
    – jgtrz
    May 21, 2020 at 18:43
  • For multiple substrings use rlike with a join like so: df.filter(F.col("yourcol").rlike('|'.join(substrings))) where substrings is a list of substrings like substrings = ['google.com','amazon.com']
    – anky
    Mar 17 at 10:19

pyspark.sql.Column.contains() is only available in pyspark version 2.2 and above.

  • how to give more than one string in .contains()
    – Scope
    Mar 14 at 8:45

When filtering a DataFrame with string values, I find that the pyspark.sql.functions lower and upper come in handy, if your data could have column entries like "foo" and "Foo":

import pyspark.sql.functions as sql_fun
result = source_df.filter(sql_fun.lower(source_df.col_name).contains("foo"))

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