I am trying to extract values from a column of dictionaries in pandas and assign them to their respective columns that already exist. I have hardcoded an example below of the data set that I have:
df_have = pd.DataFrame(
{
'value_column':[np.nan, np.nan, np.nan]
,'date':[np.nan, np.nan, np.nan]
,'string_column':[np.nan, np.nan, np.nan]
, 'dict':[[{'value_column':40},{'date':'2017-08-01'}],[{'value_column':30},
{'string_column':'abc'}],[{'value_column':10},{'date':'2016-12-01'}]]
})
df_have
df_want = pd.DataFrame(
{
'value_column':[40, 30, 10]
,'date':['2017-08-01', np.nan, '2016-12-01']
,'string_column':[np.nan, 'abc', np.nan]
,'dict':[[{'value_column':40},{'date':'2017-08-01'}],[{'value_column':30},
{'string_column':'abc'}],[{'value_column':10},{'date':'2016-12-01'}]]})
df_want
I have managed to extract the values out of the dictionaries using loops:
'''
for row in range(len(df_have)):
row_holder = df_have.dict[row]
number_of_dictionaries_in_the_row = len(row_holder)
for dictionary in range(number_of_dictionaries_in_the_row):
variable_holder = df_have.dict[row][dictionary].keys()
variable = list(variable_holder)[0]
value = df_have.dict[row][dictionary].get(variable)
'''
I now need to somehow conditionally turn df_have into df_want. I am happy to take a completely new approach and recreate the whole thing from scratch. We could even assume that I only have a dataframe with the dictionaries and nothing else.