121

I am working with this Pandas DataFrame in Python.

File    heat    Farheit Temp_Rating
   1    YesQ         75         N/A
   1    NoR         115         N/A
   1    YesA         63         N/A
   1    NoT          83          41
   1    NoY         100          80
   1    YesZ         56          12
   2    YesQ        111         N/A
   2    NoR          60         N/A
   2    YesA         19         N/A
   2    NoT         106          77
   2    NoY          45          21
   2    YesZ         40          54
   3    YesQ         84         N/A
   3    NoR          67         N/A
   3    YesA         94         N/A
   3    NoT          68          39
   3    NoY          63          46
   3    YesZ         34          81

I need to replace all NaNs in the Temp_Rating column with the value from the Farheit column.

This is what I need:

File        heat    Temp_Rating
   1        YesQ             75
   1         NoR            115
   1        YesA             63
   1        YesQ             41
   1         NoR             80
   1        YesA             12
   2        YesQ            111
   2         NoR             60
   2        YesA             19
   2         NoT             77
   2         NoY             21
   2        YesZ             54
   3        YesQ             84
   3         NoR             67
   3        YesA             94
   3         NoT             39
   3         NoY             46
   3        YesZ             81

If I do a Boolean selection, I can pick out only one of these columns at a time. The problem is if I then try to join them, I am not able to do this while preserving the correct order.

How can I only find Temp_Rating rows with the NaNs and replace them with the value in the same row of the Farheit column?

183

Assuming your DataFrame is in df:

df.Temp_Rating.fillna(df.Farheit, inplace=True)
del df['Farheit']
df.columns = 'File heat Observations'.split()

First replace any NaN values with the corresponding value of df.Farheit. Delete the 'Farheit' column. Then rename the columns. Here's the resulting DataFrame:

resulting DataFrame

4
  • how to work with this if both columns datatype are object and instead of N/A, it is empty cell in that row? – ashish Feb 5 '20 at 6:04
  • One possible approach to consider: You could first replace the empty string by NaN (see here) and then use this approach. – edesz Feb 5 '20 at 17:04
  • The answer is perfect. Just if you like to stay more in pandas syntax I'd suggest to delete columns by df.drop("Farheit", axis=1) , but thats probably personal preference – MichaelA Mar 3 '20 at 11:03
  • 1
    @MichaelA Agree drop now preferred to del in Pandas-land. If using a recent Pandas, would recommend df = df.drop(columns='Farheit') over numerical axis numbering. – Jonathan Eunice Mar 3 '20 at 16:02
38

The above mentioned solutions did not work for me. The method I used was:

df.loc[df['foo'].isnull(),'foo'] = df['bar']
1
  • 3
    Did it raise an exception or simply not work? Try isna() instead of isnull(). – RufusVS Sep 24 '18 at 17:02
4

An other way to solve this problem,

import pandas as pd
import numpy as np

ts_df = pd.DataFrame([[1,"YesQ",75,],[1,"NoR",115,],[1,"NoT",63,13],[2,"YesT",43,71]],columns=['File','heat','Farheit','Temp'])


def fx(x):
    if np.isnan(x['Temp']):
        return x['Farheit']
    else:
        return x['Temp']
print(1,ts_df)
ts_df['Temp']=ts_df.apply(lambda x : fx(x),axis=1)

print(2,ts_df)

returns:

(1,    File  heat  Farheit  Temp                                                                                    
0     1  YesQ       75   NaN                                                                                        
1     1   NoR      115   NaN                                                                                        
2     1   NoT       63  13.0                                                                                        
3     2  YesT       43  71.0)                                                                                       
(2,    File  heat  Farheit   Temp                                                                                   
0     1  YesQ       75   75.0                                                                                       
1     1   NoR      115  115.0
2     1   NoT       63   13.0
3     2  YesT       43   71.0)
1

The accepted answer uses fillna() which will fill in missing values where the two dataframes share indices. As explained nicely here, you can use combine_first to fill in missing values, rows and index values for situations where the indices of the two dataframes don't match.

df.Col1 = df.Col1.fillna(df.Col2) #fill in missing values if indices match

#or 
df.Col1 = df.Col1.combine_first(df.Col2) #fill in values, rows, and indices
1
  • Nice answer. In the question here, I didn't expect to have non-overlapping indices in the data so .filna() was sufficient. Actually, the focus here is on a single column (Temp_Rating), where the NaNs occur in the data, so the two approaches - .fillna() and combine_first() - end up producing the equivalent output. Nonetheless, this is a really useful approach. – edesz Feb 5 at 2:02

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