76

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")

 ).toDF(
"user_id", "phone_number")

Code:

%pyspark
pandas_df = some_df.toPandas()

Error:

 NameError: name 'some_df' is not defined

Any suggestions.

10
  • 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

105

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()
4
  • 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
39

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

pandas_df = spark_df.select("*").toPandas()
4
  • 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
15

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.

3
  • 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

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