2

In my dataframe, there is a column of dictionaries:

ID name value stats
{'mean': 154.0, 'median': 154.0, 'std': 0.0}
{'mean': 131.19, 'median': 93.68, 'std': 53.04}

I need to break down that column as new columns

ID name value mean median std
154.0 154.0 0.0
131.19 93.68 53.04

I tried to use pd.json_normalize as follow:

df2 = pd.json_normalize(df['stats'])
df2

But this way I lose the indexes in df2 and can't join them to add new columns to df. How should I do it?

2
  • 1
    Can you copy the index from df1 to df2?
    – shoaib30
    Aug 9, 2021 at 6:44
  • Can you please post a complete example with input dataframes that contain the indexes you want to preverse?
    – timgeb
    Aug 9, 2021 at 6:57

1 Answer 1

1

You can try applying a pd.Series on each dictionary , it would convert as individual dataframe, followed by merging

pd.concat([df, df['col'].apply(pd.Series)], axis=1).drop('col',axis=1)

other approach

df.merge(df['col'].apply(pd.Series), left_index=True, right_index=True, how='outer').drop('col',axis=1)

Example

df = pd.DataFrame()
df['col'] = [{'mean': 154.0, 'median': 154.0, 'std': 0.0},
             {'mean': 131.19, 'median': 93.68, 'std': 53.04}]
df['some'] =1

Prior

    col some
0   {'mean': 154.0, 'median': 154.0, 'std': 0.0}    1
1   {'mean': 131.19, 'median': 93.68, 'std': 53.04} 1

OUt:

    some    mean    median  std
0   1   154.00  154.00  0.00
1   1   131.19  93.68   53.04
3
  • This adds a lot of new rows to my dataframe: goes form shape of (2896, 19) to shape=(15564, 21)
    – Birish
    Aug 9, 2021 at 6:54
  • possibly by index mismatch in merging, would you share snippet of df json data, it would be more clear to apply and check
    – Naga kiran
    Aug 9, 2021 at 6:56
  • I just edited question, can you try checking it
    – Naga kiran
    Aug 9, 2021 at 6:58

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