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)
```

`df.fillna(0)`

? – mad_ Mar 15 at 17:11`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`fillna()`

else you can create a reproducible example. also take a look @ this – anky_91 Mar 15 at 17:15