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I am new to pyspark and pandas and I am using pyspark in a databricks environment, in which I am trying to read data from a parquet file, get the columns which are of type 'double' make some modifications to the dataframe and save it in a table,

I came across the command 'select_dtypes' which lets us select a particular type of fiel from a dataframe. Here is how my query looks:

df = spark.read.parquet("s3://location")
pandasdf = df.toPandas()
for column in pandasdf.select_dtypes(include='double'):
         print(f'"{column}"')

and this query returned:

foo,
bar,
foo1,
bar1

Now when I checked dtype before running the for loop like:

 print(df.dtypes)

the command returned the following result,

[('foo', 'double'),('bar','double'),('foo1','int'),('bar1','int')]

MY Question is :

  1. Why are the int fields being considered as double here?
  2. Should I change the query to exclude the int fields?

pandasdf.select_dtypes(include='double', exclude ='int')

did not work as well

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  • What is the rationale for using toPandas in the first place?
    – BigBen
    Commented May 28 at 19:02
  • I cannot recreate the issue. however in pandas double is not a datatype. Try using float instead
    – iBeMeltin
    Commented May 28 at 19:17
  • @BigBen to use the select_dtypes function
    – Ananya
    Commented May 28 at 19:20
  • @iBeMeltin even float is not working
    – Ananya
    Commented May 28 at 19:21
  • what do you see when you print pandasdf.dtypes?
    – iBeMeltin
    Commented May 28 at 19:31

1 Answer 1

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In pandas, double is not a datatype. You can instead try to use float64 like this:

df.select_dtypes(include=['float64'])
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  • continuing the conversation here if I say pandasdf.dtypes the fields foo1 & bar1 are of type 'float64' as well
    – Ananya
    Commented May 28 at 19:50
  • Something must be happening when you are converting the dataframe that is causing the issue. What is the reason you need pyspark? why not just use pandas from the start?
    – iBeMeltin
    Commented May 28 at 20:08
  • I am using this in a databricks environment and by default it uses pyspark, I was able to get work around for this by just using the dtypes
    – Ananya
    Commented May 28 at 20:14
  • for dtype in df.dtypes: if(dtype[1] == 'double'): print(dtype[0]) I did not convert the dataframe to pandas and it worked
    – Ananya
    Commented May 28 at 20:15

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