# What is the difference between combine_first and fillna?

These two functions seem equivalent to me. You can see that they accomplish the same goal in the code below, as columns c and d are equal. So when should I use one over the other?

Here is an example:

``````import pandas as pd
import numpy as np

df = pd.DataFrame(np.random.randint(0, 10, size=(10, 2)), columns=list('ab'))
df.loc[::2, 'a'] = np.nan
``````

Returns:

``````     a  b
0  NaN  4
1  2.0  6
2  NaN  8
3  0.0  4
4  NaN  4
5  0.0  8
6  NaN  7
7  2.0  2
8  NaN  9
9  7.0  2
``````

This is my starting point. Now I will add two columns, one using combine_first and one using fillna, and they will produce the same result:

``````df['c'] = df.a.combine_first(df.b)
df['d'] = df['a'].fillna(df['b'])
``````

Returns:

``````     a  b    c    d
0  NaN  4  4.0  4.0
1  8.0  7  8.0  8.0
2  NaN  2  2.0  2.0
3  3.0  0  3.0  3.0
4  NaN  0  0.0  0.0
5  2.0  4  2.0  2.0
6  NaN  0  0.0  0.0
7  2.0  6  2.0  2.0
8  NaN  4  4.0  4.0
9  4.0  6  4.0  4.0
``````

Credit to this question for the data set: Combine Pandas data frame column values into new column

• I'm not very familiar with pandas, but it appears you have more control with fillna whereas combine_first is a one-and-done deal – Wondercricket Oct 10 '17 at 21:22

`combine_first` is intended to be used when there is exists non-overlapping indices. It will effectively fill in nulls as well as supply values for indices and columns that didn't exist in the first.

``````dfa = pd.DataFrame([[1, 2, 3], [4, np.nan, 5]], ['a', 'b'], ['w', 'x', 'y'])

w    x    y
a  1.0  2.0  3.0
b  4.0  NaN  5.0

dfb = pd.DataFrame([[1, 2, 3], [3, 4, 5]], ['b', 'c'], ['x', 'y', 'z'])

x    y    z
b  1.0  2.0  3.0
c  3.0  4.0  5.0

dfa.combine_first(dfb)

w    x    y    z
a  1.0  2.0  3.0  NaN
b  4.0  1.0  5.0  3.0  # 1.0 filled from `dfb`; 5.0 was in `dfa`; 3.0 new column
c  NaN  3.0  4.0  5.0  # whole new index
``````

Notice that all indices and columns are included in the results

Now if we `fillna`

``````dfa.fillna(dfb)

w    x  y
a  1  2.0  3
b  4  1.0  5  # 1.0 filled in from `dfb`
``````

Notice no new columns or indices from `dfb` are included. We only filled in the null value where `dfa` shared index and column information.

In your case, you use `fillna` and `combine_first` on one column with the same index. These translate to effectively the same thing.