


How to Create a Pandas DataFrame from a Nested Dictionary with Hierarchical Indexes?
Constructing a Pandas DataFrame from Items in Nested Dictionaries with Hierarchical Indexes
In this scenario, you wish to create a pandas DataFrame from a nested dictionary where the hierarchy consists of:
- Level 1: User ID
- Level 2: Category
- Level 3: Assorted Attributes
The desired DataFrame should have User IDs as the index and categories and attributes as columns.
Leveraging Pandas MultiIndex
One efficient approach utilizes pandas' MultiIndex, which enables the creation of a multi-level index structure. To employ this method:
- Reshape the input dictionary to use tuples as keys, aligning with the desired MultiIndex values.
- Construct the DataFrame using pd.DataFrame.from_dict, specifying orient='index' to align data with the defined tuple keys.
user_dict = {12: {'Category 1': {'att_1': 1, 'att_2': 'whatever'}, 'Category 2': {'att_1': 23, 'att_2': 'another'}}, 15: {'Category 1': {'att_1': 10, 'att_2': 'foo'}, 'Category 2': {'att_1': 30, 'att_2': 'bar'}}} df = pd.DataFrame.from_dict({(i,j): user_dict[i][j] for i in user_dict.keys() for j in user_dict[i].keys()}, orient='index') print(df) att_1 att_2 12 Category 1 1 whatever Category 2 23 another 15 Category 1 10 foo Category 2 30 bar
Method via Concatenation
Alternatively, you can build the DataFrame incrementally through concatenation:
- Extract the User IDs and create an empty list to store component dataframes.
- Iterate through the dictionary, creating a dataframe for each user and adding it to the list.
- Concatenate the component dataframes using pd.concat, indexing by User ID.
user_ids = [] frames = [] for user_id, d in user_dict.iteritems(): user_ids.append(user_id) frames.append(pd.DataFrame.from_dict(d, orient='index')) df = pd.concat(frames, keys=user_ids) print(df) att_1 att_2 12 Category 1 1 whatever Category 2 23 another 15 Category 1 10 foo Category 2 30 bar
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