I am new to pyspark. I have list of columns in an array like below.

input_vars = [

Now I want to do something like below using dataframe.

for var in input_vars:

But I'm getting below error when I try to execute above code

AttributeError: 'DataFrame' object has no attribute 'var'


I have tried df[var].isNotNull() as per the suggestion given by 'ernest_k' and the above error got resolved. Now my actual requirement is to rewrite below pandas dataframe code into pyspark dataframe.

for var in input_vars:
    bindt = df2[df2[var].notnull()][var].quantile([0,.1,.2,.3,.4,.5,.6,.7,.8,.9,1]).unique()

    q0 = df2[df2[var].notnull()][var].quantile(0)
    q1 = df2[df2[var].notnull()][var].quantile(0.25)
    q2 = df2[df2[var].notnull()][var].quantile(0.5)
    q3 = df2[df2[var].notnull()][var].quantile(0.75)
    q4 = df2[df2[var].notnull()][var].quantile(1)

Can anyone please help me how to achieve above requirement. Thanks in advance.

  • You can use df[var] – ernest_k Feb 11 at 12:01
  • @ernest_k - Thanks for your reply. When I tried df[var].isNotNull() I'm getting like Column<isnotnull(column1) instead of boolean value. – Valli69 Feb 11 at 12:13
  • Moreover, print(df.var.isNotNull()) doesn't work, what is your requirement here? – Duy Nguyen Hoang Feb 11 at 12:14
  • 1
    @Valli69 Those give you a column object, I suppose. You probably want to try df.filter(df[var].isNotNull()).show() to see the filtered data frame (but doing that in a loop over all columns can be dangerous, unless you're just testing, on a small dataset). – ernest_k Feb 11 at 12:16
  • @DuyNguyenHoang Actually my requirement is I want to calculate quantile of a not null column. In pandas I have calculated like df[df[var].notnull()][var].quantile(0.25) but not sure how to do in pyspark dataframe – Valli69 Feb 11 at 12:21

To get the list of columns from DataFrame, use df.columns and from there, you can process next step.

In Spark 2.0+, you can use (I am not 100% guarantee that approxQuantile(var, [0.5], 0.25) meet your requirement, please change it)

columns = df.columns

for var in input_vars:
    if var in columns:
        print(df.filter('{} is not null'.format(var)).approxQuantile(var, [0.5], 0.25))
        print('Column {} not found'.format(var))

More detail, please prefer to approxQuantile

  • Thanks for your reply but I need it in spark 1.6. Can you please suggest in spark 1.6 – Valli69 Feb 11 at 12:34
  • I am going to check it tomorrow, and tell you later. Honestly, I have never done it before – Duy Nguyen Hoang Feb 11 at 17:01

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.