I am preparing a pandas df for output, and would like to remove the NaN and NaT in the table, and leave those table locations blank. An example would be


col1    col2     timestamp
a       b        2014-08-14
c       NaN      NaT

would become

col1    col2     timestamp
a       b        2014-08-14

Most of the values are dtypes object, with the timestamp column being datetime64[ns]. In order to fix this, I attempted to use panda's mydataframesample.fillna(' ') to effectively leave a space in the location. However, this doesn't work with the datetime types. In order to get around this, I'm trying to convert the timestamp column back to object or string type.

Is it possible to remove the NaN/NaT without doing the type conversion? If not, how do I do the type conversion (tried str() and astype(str) but difficulty with datetime being the original format)?

  • I don't think you can replace the datetime NaT as you've found, what is the problem with having NaN/NaT's? – EdChum Aug 5 '14 at 14:55
  • 1
    What do you mean by 'output'? In some cases (e.g. saving to CSV) the NaN/NaT will automatically be filled with blanks. – chrisb Aug 5 '14 at 15:18
  • I'm converting to html, and sending it as an e-mail. Will the NaN/NaT still automatically be filled with blanks @chrisb? – user2643394 Aug 5 '14 at 15:19

This won't win any speed awards, but if the DataFrame is not too long, reassignment using a list comprehension will do the job:

df1['date'] = [d.strftime('%Y-%m-%d') if not pd.isnull(d) else '' for d in df1['date']]

import numpy as np
import pandas as pd
Timestamp = pd.Timestamp
nan = np.nan
NaT = pd.NaT
df1 = pd.DataFrame({
    'col1': list('ac'),
    'col2': ['b', nan],
    'date': (Timestamp('2014-08-14'), NaT)

df1['col2'] = df1['col2'].fillna('')
df1['date'] = [d.strftime('%Y-%m-%d') if not pd.isnull(d) else '' for d in df1['date']]



  col1 col2        date
0    a    b  2014-08-14
1    c                 
| improve this answer | |

I had the same issue: This does it all in place using pandas apply function. Should be the fastest method.

import pandas as pd
df['timestamp'] = df['timestamp'].apply(lambda x: x.strftime('%Y-%m-%d')if not pd.isnull(x) else '')

if your timestamp field is not yet in datetime format then:

import pandas as pd
df['timestamp'] = pd.to_datetime(df['timestamp']).apply(lambda x: x.strftime('%Y-%m-%d')if not pd.isnull(x) else '')
| improve this answer | |

@unutbu's answer will work fine, but if you don't want to modify the DataFrame, you could do something like this. to_html takes a parameter for how NaN is represented, to handle the NaT you need to pass a custom formatting function.

date_format = lambda d : pd.to_datetime(d).strftime('%Y-%m-%d') if not pd.isnull(d) else ''

df1.to_html(na_rep='', formatters={'date': date_format})
| improve this answer | |

If all you want to do is convert to a string:

In [37]: df1.to_csv(None,sep=' ')
Out[37]: ' col1 col2 date\n0 a b "2014-08-14 00:00:00"\n1 c  \n'

To replace missing values with a string

In [36]: df1.to_csv(None,sep=' ',na_rep='missing_value')
Out[36]: ' col1 col2 date\n0 a b "2014-08-14 00:00:00"\n1 c missing_value missing_value\n'
| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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