This is probably a stupid question originating from my ignorance. I have been working on PySpark for a few weeks now and do not have much programming experience to start with.

My understanding is that in Spark, RDDs, Dataframes, and Datasets are all immutable - which, again I understand, means you cannot change the data. If so, why are we able to edit a Dataframe's existing column using withColumn()?

  • 3
    I think when you use withColumn you actually create a new dataframe, not modifying the current dataframe.
    – Ali AzG
    Nov 19, 2018 at 12:11

3 Answers 3


As per Spark Architecture DataFrame is built on top of RDDs which are immutable in nature, Hence Data frames are immutable in nature as well.

Regarding the withColumn or any other operation for that matter, when you apply such operations on DataFrames it will generate a new data frame instead of updating the existing data frame.

However, When you are working with python which is dynamically typed language you overwrite the value of the previous reference. Hence when you are executing below statement

df = df.withColumn()

It will generate another dataframe and assign it to reference "df".

In order to verify the same, you can use id() method of rdd to get the unique identifier of your dataframe.


will give you unique identifier for your dataframe.

I hope the above explanation helps.



  • "when you apply such operations on DataFrames it will generate a new data frame" - it's also possible there is no new copy created, and what's created is just a "view" of the original. We can't really tell, as DataFrames are immutable.
    – flow2k
    Aug 30, 2019 at 21:18

You aren't; the documentation explicitly says

Returns a new Dataset by adding a column or replacing the existing column that has the same name.

If you keep a variable referring to the dataframe you called withColumn on, it won't have the new column.

  • Doesn't something like this work in PySpark? dataframe = dataframe.withColumn("col1", when(col("col1") == "val1", "V").otherwise(col("col1")) Not too sure about the syntax.
    – pallupz
    Nov 19, 2018 at 12:20
  • 2
    You can reassign the variable, but that doesn't mean the original value changes. Any more than integers are mutable because you can write i = i + 1. By contrast, python lists are mutable: stackoverflow.com/questions/24292174/are-python-lists-mutable. Nov 19, 2018 at 12:27

The Core Data structure of Spark, i.e., the RDD itself is immutable. This nature is pretty much similar to a string in Java which is immutable as well. When you concat a string with another literal you are not modifying the original string, you are actually creating a new one altogether. Similarly, either the Dataframe or the Dataset, whenever you alter that RDD by either adding a column or dropping one you are not changing anything in it, instead you are creating a new Dataset/Dataframe.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.