This question is motivated by an answer I gave a while ago.

Let's say I have a dataframe like this

```
import numpy as np
import pandas as pd
df = pd.DataFrame({'a': [1, 2, np.nan], 'b': [3, np.nan, 10], 'c':[np.nan, 5, 34]})
a b c
0 1.0 3.0 NaN
1 2.0 NaN 5.0
2 NaN 10.0 34.0
```

and I want to replace the `NaN`

by the maximum of the row, I can do

```
df.apply(lambda row: row.fillna(row.max()), axis=1)
```

which gives me the desired output

```
a b c
0 1.0 3.0 3.0
1 2.0 5.0 5.0
2 34.0 10.0 34.0
```

When I, however, use

```
df.apply(lambda row: row.fillna(max(row)), axis=1)
```

for some reason it is replaced correctly only in two of three cases:

```
a b c
0 1.0 3.0 3.0
1 2.0 5.0 5.0
2 NaN 10.0 34.0
```

Indeed, if I check by hand

```
max(df.iloc[0, :])
max(df.iloc[1, :])
max(df.iloc[2, :])
```

Then it prints

```
3.0
5.0
nan
```

When doing

```
df.iloc[0, :].max()
df.iloc[1, :].max()
df.iloc[2, :].max()
```

it prints the expected

```
3.0
5.0
34.0
```

My question is why `max()`

fails in 1 of three cases but not in all 3. Why are the `NaN`

sometimes ignored and sometimes not?

`nan`

is the first entry, while in the other rows it comes later. So maybe it depends on the order in which`max`

handles these values...`max([1,2,np.nan])`

and`max([np.nan,2,3])`

.`np.nanmax()`

exists too and it ignores`np.nan`

altogether.