5

I'm trying to change the format of a datetime column in my Dataframe using lambda and strftime like below

df['Date Column'] = df['Date Column'].map(lambda x: x.strftime('%m/%d/%Y'))

However, since I have null values in some of these fields, this is giving me an error. I cannot drop these null rows because I still need them for the data in the other columns. Is there a way around this error without dropping the nulls.

Perhaps something like

df['Date Column'].map(lambda x: x.strftime('%m/%d/%Y') if x != null else "")

?

The method I've used is to drop the nulls, format the column, then merge it back onto the original dataset, but this seems like a very inefficient method.

  • 1
    "Perhaps something like...." That's what I was about to suggest. Did it work? – tobias_k Feb 18 '16 at 17:15
  • It does not sadly. I've tried different forms of it. .notnull(), != np.nan, != "NaT", != "NaN, but none of them have worked, so I'm wondering if the method is wrong – FortuneFaded Feb 18 '16 at 17:18
5

You should be not checking for nan/nat (un)equality, but .notnull() should work and it does for me:

s = pd.date_range('2000-01-01', periods=5).to_series().reset_index(drop=True)
s[2] = None
s

0   2000-01-01
1   2000-01-02
2          NaT
3   2000-01-04
4   2000-01-05
dtype: datetime64[ns]

s.map(lambda x: x.strftime('%m/%d/%Y') if pd.notnull(x) else '')

0    01/01/2000
1    01/02/2000
2              
3    01/04/2000
4    01/05/2000
dtype: object

This returns the same that the answers by @Alexander and @Batman but is more explicit. It may also be slightly slower for large series.

Alternatively you can use the .dt accesor. The null values will be formatted as NaT.

s.dt.strftime('%m/%d/%Y')

0    01/01/2000
1    01/02/2000
2           NaT
3    01/04/2000
4    01/05/2000
dtype: object
| improve this answer | |
2

Personally I'd just define a small function, and then use that.

def to_string(date):
    if date:
        string = date.strftime('%Y%m%d')
    else:
        string = ""

    return string

Then

df['Date Column'].map(to_string) 

Otherwise

df['Date Column'].map(lambda x: x.strftime('%Y%m%d') if x else "")
| improve this answer | |
  • Sorry. You hadn't answered when I started editing my answer. I prefer the function definition because I think it's easier to read. Which is why I prefaced my answer with "personally". It occurred to me afterwards that they may prefer not to do it that way. – Batman Feb 18 '16 at 17:26
  • Both methods ended up giving me the same error I was getting about null values. Goyo's solution worked for me, so I will be marking that as answer – FortuneFaded Feb 18 '16 at 18:42
1

You can use a conditional assignment (ternary).

df['Date Column'] = df['Date Column'].map(lambda x: x.strftime('%m/%d/%Y') if x else '')
| improve this answer | |
  • For some reason this method is still giving me the same error I was getting about null values. Goyo's solution worked for me, so I will be marking that as answer – FortuneFaded Feb 18 '16 at 18:43
  • 1
    I guess it depends on what you mean by "null values in some of these fields" (None vs. NaT vs. NaN). I assumed None, but using notnull() includes the other cases. Sample data helps to create better solutions that fit your requirements. – Alexander Feb 18 '16 at 18:50
  • Ah you're totally correct. It was NaT because it was in datetime format, I apologize about that. – FortuneFaded Feb 18 '16 at 19:42

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