7

I have a dataframe that has one of the columns as a dictionary. I want to unpack it into multiple columns (i.e. code, amount are separate columns in the below Raw column format). The following code used to work with pandas v0.22, now (0.23) giving an index error:

pd.DataFrame.from_records(df.col_name.fillna(pd.Series([{'code':'not applicable'}], index=df.index)).values.tolist())

ValueError: Length of passed values is 1, index implies x

I searched google/stack overflow for hours and none of the other solutions previously presented work anymore.

Raw column format:

     dict_codes
0   {'code': 'xx', 'amount': '10.00',...
1   {'code': 'yy', 'amount': '20.00'...
2   {'code': 'bb', 'amount': '30.00'...
3   {'code': 'aa', 'amount': '40.00'...
10  {'code': 'zz', 'amount': '50.00'...
11                            NaN
12                            NaN
13                            NaN

Does anyone have any suggestions?

Thanks

13

Setup

df = pd.DataFrame(dict(
    codes=[
        {'amount': 12, 'code': 'a'},
        {'amount': 19, 'code': 'x'},
        {'amount': 37, 'code': 'm'},
        np.nan,
        np.nan,
        np.nan,
    ]
))

df

                         codes
0  {'amount': 12, 'code': 'a'}
1  {'amount': 19, 'code': 'x'}
2  {'amount': 37, 'code': 'm'}
3                          NaN
4                          NaN
5                          NaN

apply with pd.Series

Make sure to dropna first

df.codes.dropna().apply(pd.Series)

   amount code
0      12    a
1      19    x
2      37    m

df.drop('codes', 1).assign(**df.codes.dropna().apply(pd.Series))

   amount code
0    12.0    a
1    19.0    x
2    37.0    m
3     NaN  NaN
4     NaN  NaN
5     NaN  NaN

tolist and from_records

Same idea but skip the apply

pd.DataFrame.from_records(df.codes.dropna().tolist())

   amount code
0      12    a
1      19    x
2      37    m

df.drop('codes', 1).assign(**pd.DataFrame.from_records(df.codes.dropna().tolist()))

   amount code
0    12.0    a
1    19.0    x
2    37.0    m
3     NaN  NaN
4     NaN  NaN
5     NaN  NaN
5
  • The challenge here is that .dropna() versions basically reset index which means that I loose any positional aspects. My scenario involves concatenating this column with a different one, based on index. – DBa May 24 '18 at 15:28
  • dropna does not reset the index. It only augments the positions. You can reindex with the original index to get back where you were. I indirectly reindexed via the assign method. – piRSquared May 24 '18 at 16:18
  • dropna().tolist() takes out the index for the items as far as I can tell. Can you please detail how I can use reindex to, for example, add back the NaN's in their place? (in your example if NaNs are interspersed - 1 row NaN and 1 Row of actual items) @piRSquared – DBa May 29 '18 at 14:37
  • @DBa pd.DataFrame.from_dict(df.codes.dropna().to_dict(), orient='index').reindex(df.index) – piRSquared May 29 '18 at 14:53
  • Or based on your initial solution: df.drop('codes', 1).assign(**pd.DataFrame.from_records(df.codes.dropna().tolist(), index = df.codes.dropna().index)) . Thanks, I'll add this as the solution! – DBa May 29 '18 at 14:58
3

Setup

                        codes
0  {'amount': 12, 'code': 10}
1    {'amount': 3, 'code': 3}

apply with pd.Series

df.codes.apply(pd.Series)

   amount  code
0      12    10
1       3     3
1
  • 1
    Thanks, it works but gives warning: RuntimeWarning: '<' not supported between instances of 'int' and 'str', sort order is undefined for incomparable objects result = result.union(other) (I believe that's why I didn't use in the first place, although warning was different in previous pandas version) – DBa May 24 '18 at 14:52

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