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'

  • 3
    The problem doesn't seem to be that the NaN is a NaN; any float seems to cause the same problem. I think the float is triggering conversion of all elements to floats. – user2357112 Aug 26 '17 at 20:25
  • Why aren't you using pandas datetime` dtype instead of object dtype? – juanpa.arrivillaga Aug 26 '17 at 20:30
  • 1
    FWIW, I don't think this is a bug. By default, the 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
  • That is probably the case. The NaN arose after doing a left merge. I didn't show the full calculation leading to the NaN. I see that datetime nan's are marked as NaT. Could it be that merge doesn't use the 'proper' nan? – mortysporty Aug 26 '17 at 21:08
  • 1
    @ayhan Corrected answer based on your comment. Thank you. – coldspeed Aug 26 '17 at 21:50
up vote 8 down vote accepted

I would say the best solution is to use the appropriate dtype. Pandas provides a very well integrated datetime dtype. So note, you are using object dtypes...

>>> df
       date_a      date_b
0  2015-01-01  2012-07-01
1  2012-06-01  2013-01-01
2         NaN  2014-03-01
3  2016-06-01  2013-04-01
>>> df.dtypes
date_a    object
date_b    object
dtype: object

But note, the problem disappears when you use

>>> df2 = df.apply(pd.to_datetime)
>>> df2
      date_a     date_b
0 2015-01-01 2012-07-01
1 2012-06-01 2013-01-01
2        NaT 2014-03-01
3 2016-06-01 2013-04-01
>>> df2.min(axis=1)
0   2012-07-01
1   2012-06-01
2   2014-03-01
3   2013-04-01
dtype: datetime64[ns]
  • This seems to be best approach. COLDSPEED's reply sure sheds some light on the issue, but it doesn't really help :| Thanks for helping out. – mortysporty Aug 26 '17 at 20:43

This appears to happen when date objects are mixed with floats (such as NaN) in columns. By default, the numeric_only flag is set because of the single float value. For example, replace your df_nan with this:

df_float = pd.DataFrame({'date_a' : [date(2015, 1, 1), date(2012, 6, 1),
                                    1.023, date(2016, 6, 1)],
                        'date_b' : [date(2012, 7, 1), 3.14, 
                                    date(2014, 3, 1), date(2013, 4, 1)]})

print(df_float.max(1))

0   NaN
1   NaN
2   NaN
3   NaN
dtype: float64

If the flag is manually set to false, this would rightly throw a TypeError because:

print(date(2015, 1, 1) < 1.0)

TypeError                                 Traceback (most recent call last)
<ipython-input-362-ccbf44ddb40a> in <module>()
      1 
----> 2 print(date(2015, 1, 1) < 1.0)

TypeError: unorderable types: datetime.date() < float()

However, pandas seems to coerce everything to NaN. As a workaround, converting to str using df.astype appears to do it:

out = df_nan.astype(str).max(1)
print(out) 
0    2015-01-01
1    2013-01-01
2           nan
3    2016-06-01
dtype: object

In this case, sorting lexicographically yields the same solution as before.

Otherwise, as juan suggests, you can cast to datetime using pd.to_datetime:

out = df_nan.apply(pd.to_datetime, errors='coerce').max(1)
print(out)

0   2015-01-01
1   2013-01-01
2   2014-03-01
3   2016-06-01
dtype: datetime64[ns]
  • I discovered the issue doing a left join. That is where the NaN's came from. I am not sure what the proper nan-type is for dates (it seems to be NaT for datetime), but the merge produced the NaN's. Thanks for answering. – mortysporty Aug 26 '17 at 20:47

The following should work:

>>> df_nan.where(df_nan.T.notnull().all()).max(axis=1)
Out[1]:
0    2015-01-01
1    2013-01-01
2          None
3    2016-06-01
dtype: object

Where:

  1. df_nan.T.notnull().all() computes a mask of row containing no np.nan
  2. df_nan.where() applies the former mask to the dataframe
  3. .max(axis=1) gets the row-wise maximum

This works because the maximum of an array where all values are np.nan is None. It allows to keep track of rows where a value is missing by not showing a maximum.

But this decision is up to you, otherwise the solution of @juanpa.arrivillaga that converts NaN to NaT is what you want.

  • This also works :) Thank you. – mortysporty Aug 26 '17 at 21:27

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.