When two dataframes are concatenated (using concat) by default concat creates a new dataframe with the union of the columns of both, setting the values of any missing columns in the result with nan. For example...

import pandas as pd
a = pd.DataFrame({'A':range(5), 'B':range(5)})
b = pd.DataFrame({'A':range(5)})
pd.concat([a , b], sort=False)

    A   B
0   0   0.0
1   1   1.0
...
3   3   NaN
4   4   NaN

But if the missing column in one of the dataframes contains timestamps this breaks...

a = pd.DataFrame({'A':range(5), 'B':[pd.Timestamp.utcnow() for _ in range(5)]})
b = pd.DataFrame({'A':range(5)})
pd.concat([a , b], sort=False)

Throws "AttributeError: 'NoneType' object has no attribute '_can_consolidate'".

Python 3.6.5; Pandas 0.23; Windows 7 x64

Is this is known issue?
Are they're any workarounds known?

  • 2
    Yes, I think it was identified and fixed for v0.24 (see this issue: github.com/pandas-dev/pandas/issues/22796). No obvious workarounds. Try converting to string first. – coldspeed Dec 6 at 18:12
  • 3
    manually assigning NaT columns first is a potential workaround, e.g. pd.concat([a, b.assign(B=pd.NaT)], sort=False) – root Dec 6 at 18:13
  • 1
    @root Well, that works! – coldspeed Dec 6 at 18:14
up vote 2 down vote accepted

As explained in the comments, this is a known issue (see GH22796) and is fixed for version 0.24. In the meantime, there are two possible workarounds.

One is to convert to string:

df = pd.concat([a.assign(B=a.B.astype(str)), b], sort=False) 
df['B'] = pd.to_datetime(df['B'], errors='coerce')
df

   A                          B
0  0 2018-12-06 18:21:35.363477
1  1 2018-12-06 18:21:35.363728
2  2 2018-12-06 18:21:35.363740
3  3 2018-12-06 18:21:35.363748
4  4 2018-12-06 18:21:35.363756
0  0                        NaT
1  1                        NaT
2  2                        NaT
3  3                        NaT
4  4                        NaT

The other, as @root mentioned, is to initialise an empty column in b:

pd.concat([a, b.assign(B=pd.NaT)], sort=False)

   A                                 B
0  0  2018-12-06 18:21:35.363477+00:00
1  1  2018-12-06 18:21:35.363728+00:00
2  2  2018-12-06 18:21:35.363740+00:00
3  3  2018-12-06 18:21:35.363748+00:00
4  4  2018-12-06 18:21:35.363756+00:00
0  0                               NaT
1  1                               NaT
2  2                               NaT
3  3                               NaT
4  4                               NaT

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