I have a nested dictionary of sets of dates, d
d= {"A": {'a': {datetime1, datetime2}, 'b': {datetime3}, 'c':{datetime4},
"B": {'a': datetime5, datetime1, datetime3}}
I want a pandas DataFrame df
dates
A a datetime1
datetime2
b datetime3
...
This might be a duplicate question of Nested dictionary to multiindex dataframe where dictionary keys are column labels
However, I couldn't get the advise given in that question to work here, so I dare to repost the question. (However, I have previously successfully used methods in that question on other nested dictionaries). So, doing something like
df = pd.DataFrame.from_dict({(i, j): d[i][j]
for i in d.keys()
for j in d[i].keys()},
orient='index')
creates a mess of thousands of integers as columns (one for each date maybe?), and tuple (i,j) as a single index (instead of two levels of indexes, i and j). Is the problem simply because here I have only one column in the dataframe? Can't I have a multiindexed series? Or am I missing something very obvious?