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I am getting the following output, in my pandas dataframe; seemingly because of my seldom null values for certain records:

Cannot convert non-finite values (NA or inf) to integer

How can I write a handler or something in python/pandas to convert my seldom N/A record values to 0 - when they are appearing, so my script can continue; for presumably a fix to this?


Below is my code; with attempt of usage of fillna() - this code addition removes the 'Cannot convert non-finite values..' error in dataframe output.

However it still displays the NaT in the pandas data frame output for those seldom records.

for row in excel_data.itertuples():
            mrn = row.MRN

            if mrn in ("", " ", "N/A", None) or math.isnan(mrn):
                print(f"Invalid record: {row}")
                excel_data = excel_data.drop(excel_data.index[row.Index])
                excel_data = excel_data.fillna(0) # attempt
                continue
            else:
                num_valid_records += 1

        print(f"Processing #{num_valid_records} records")

        return self.clean_data_frame(excel_data)
  • Looking for df.fillna(0) ? – mad_ Mar 15 at 17:11
  • 1
    You could drop the NA rows, you could find them with isnan() and replace them, you could use np.nan_to_num, you could... You get the point. Did you research this? – roganjosh Mar 15 at 17:11
  • @roganjosh yes; I would like to find them and replace them with 0. – Peter Gibbons Mar 15 at 17:12
  • for that you might want to look at fillna() else you can create a reproducible example. also take a look @ this – anky_91 Mar 15 at 17:15
2

Here is an example of using fillna():

df = pd.DataFrame([[1, 2, np.nan],
                   [5, np.nan, 7]],
                   columns=list('ABC'))
df

       A    B    C
    0  1  2.0  NaN
    1  5  NaN  7.0

df.fillna(0)

       A    B    C
    0  1  2.0  0.0
    1  5  0.0  7.0

  • Thanks, looks nice; however my records are outputting NaT not NaN in the pandas dataframe. – Peter Gibbons Mar 15 at 17:35
  • @No-Spex both are same. If there is a date, NaN is a NaT – anky_91 Mar 15 at 17:37
  • OK..... I tried your suggestion in my code (above, added to OP), and it removes the pandas 'cannot convert error/output' however records are still outputting in dataframe as NaT. – Peter Gibbons Mar 15 at 17:40
  • If you can provide an example data frame with dates in it that we can use to run your code on and see the error, that will make it easier to help. – Nathaniel Mar 15 at 18:09

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