Is there a way to convert a Spark Df (not RDD) to pandas DF

I tried the following:

var some_df = Seq(
 ("A", "no"),
 ("B", "yes"),
 ("B", "yes"),
 ("B", "no")

"user_id", "phone_number")


pandas_df = some_df.toPandas()


 NameError: name 'some_df' is not defined

Any suggestions.

  • 5
    You don't declare python variables using var Commented Jun 21, 2018 at 0:52
  • @user3483203 yep, I created the data frame in the note book with the Spark and Scala interpreter. and used '%pyspark' while trying to convert the DF into pandas DF. Commented Jun 21, 2018 at 1:04
  • 2
    why are you mixing scala and pyspark. just use one Commented Jun 21, 2018 at 3:06
  • @RameshMaharjan Yep I use scala. But I am trying to build visualizations for the columns in the Spark DF, for which I couldn't find relevant sources. Commented Jun 21, 2018 at 3:24
  • what kind of visualizations? Commented Jun 21, 2018 at 3:31

3 Answers 3


following should work

Sample DataFrame

    some_df = sc.parallelize([
     ("A", "no"),
     ("B", "yes"),
     ("B", "yes"),
     ("B", "no")]
     ).toDF(["user_id", "phone_number"])

Converting DataFrame to Pandas DataFrame

    pandas_df = some_df.toPandas()
  • The toDF(...) of the answer is a red herring and should be removed for clarity, IMO. It's already present in the question. That is why I've updated the below answer instead.
    – ijoseph
    Commented Dec 27, 2019 at 20:43
  • what "sc" stands for in this case?
    – Gabriel
    Commented Apr 26, 2021 at 12:40
  • 2
    @Gabriel it's spark context Commented Apr 26, 2021 at 14:22
  • Thank you for the answer. Have tried applying this to my code on pySpark 3.2.0 and I get an error, that a second parameter, c is now required for function parallelize based on <spark.apache.org/docs/latest/api/python/reference/api/…>. Tried to add a constant c with example_df = sc\ .parallelize([ ("A", "no"), ("B", "yes"), ("B", "yes"), ("B", "no")], c=4)\ .toDF( ["user_id", "phone_number"] ) to get another error: AttributeError: 'list' object has no attribute 'defaultParallelism' Commented Dec 27, 2021 at 10:10

In my case the following conversion from spark dataframe to pandas dataframe worked:

pandas_df = spark_df.select("*").toPandas()
  • 9
    there is no need to put select("*") on df unless you want some specific columns. This is not going to affect the performance as it's lazy execution and not gonna do anything. Commented Aug 13, 2019 at 13:33
  • 2
    For some reason, the solution from @Inna was the only one that worked on my dataframe. No conversion was possible except with selecting all columns beforehand. The data type was the same as usually, but I had previously applied a UDF.
    – DataBach
    Commented Apr 2, 2020 at 11:41
  • I am using this but most of my spark decimal columns are converting to object in pandas instead of float. I have 100+ columns. Is there a way this type casting can be modified? Commented Apr 9, 2021 at 12:01
  • You can write a function and type cast it
    – Scope
    Commented Oct 18, 2021 at 18:29

Converting spark data frame to pandas can take time if you have large data frame. So you can use something like below:

spark.conf.set("spark.sql.execution.arrow.enabled", "true")

pd_df = df_spark.toPandas()

I have tried this in DataBricks.

  • The spark.sql.execution.arrow.enabled option is highly recommended, especially with pyspark.pandas in the upcoming spark 3.2 release.
    – RndmSymbl
    Commented Oct 14, 2021 at 12:13
  • 2
    The SQL config 'spark.sql.execution.arrow.enabled' has been deprecated in Spark v3.0 and may be removed in the future. Use 'spark.sql.execution.arrow.pyspark.enabled' instead of it. Commented Mar 6, 2022 at 4:01
  • 4
    Can you please explain why it makes more efficient?
    – notilas
    Commented Oct 28, 2022 at 3:36

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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