I am trying to take the rowwise max (and min) of two columns containing dates

```
from datetime import date
import pandas as pd
import numpy as np
df = pd.DataFrame({'date_a' : [date(2015, 1, 1), date(2012, 6, 1),
date(2013, 1, 1), date(2016, 6, 1)],
'date_b' : [date(2012, 7, 1), date(2013, 1, 1),
date(2014, 3, 1), date(2013, 4, 1)]})
df[['date_a', 'date_b']].max(axis=1)
Out[46]:
0 2015-01-01
1 2013-01-01
2 2014-03-01
3 2016-06-01
```

as expected. However, if the dataframe contains a single NaN value, the whole operation fails

```
df_nan = pd.DataFrame({'date_a' : [date(2015, 1, 1), date(2012, 6, 1),
np.NaN, date(2016, 6, 1)],
'date_b' : [date(2012, 7, 1), date(2013, 1, 1),
date(2014, 3, 1), date(2013, 4, 1)]})
df_nan[['date_a', 'date_b']].max(axis=1)
Out[49]:
0 NaN
1 NaN
2 NaN
3 NaN
dtype: float64
```

What is going on here? I was expecting this result

```
0 2015-01-01
1 2013-01-01
2 NaN
3 2016-06-01
```

How can this be achieved?

## EDIT

Several people have pointed out that the problem is probably that I mix date with np.NaN (which is a float?). The NaN was introduced in my dataframe doing a left merge.

```
df_a = pd.DataFrame({'id' : [1, 1, 1, 1, 2],
'date_from' : [date(2012, 1, 1), date(2012, 6, 1),
date(2013, 1, 1), date(2013, 6, 1),
date(2012, 1, 1)],
'date_to' : [date(2012, 6, 1), date(2013, 1, 1),
date(2013, 6, 1), date(2014, 1, 1),
date(2013, 1, 1)],
'data_a' : [1, 2, 3, 4, 5]})
df_b = pd.DataFrame({'id' : [1, 1],
'date_from' : [date(2012, 8, 1), date(2013, 4,1)],
'date_to' : [date(2013, 4,1), date(2013, 8, 1)],
'data_b' :['A','B']})
df = pd.merge(df_a, df_b, on='id', how='left')
df[['date_from_x', 'date_from_y']].max(axis=1)
Out[65]:
0 NaN
1 NaN
2 NaN
3 NaN
4 NaN
5 NaN
6 NaN
7 NaN
8 NaN
dtype: float64
```

Could it be that the merge is not returning the correct 'nan-type'

`pandas`

datetime` dtype instead of`object`

dtype? – juanpa.arrivillaga Aug 26 '17 at 20:30`numeric_only`

argument is set to None and its value is determinedby the (mixed) dtypes. The single float in your DataFrame sets the`numeric_only`

flag to True and since you don't have any numeric columns your result is all NaNs.`pd.DataFrame({'A': ['a', 'b', 'c']}).max(axis=1, numeric_only=True)`

also returns all NaNs. And`df_nan.max(axis=1, numeric_only=False)`

raises a TypeError as it supposed to do. – user2285236 Aug 26 '17 at 21:03