I have an API that returns a single row of data as a Python dictionary. Most of the keys have a single value, but some of the keys have values that are lists (or even lists-of-lists or lists-of-dictionaries).

When I throw the dictionary into pd.DataFrame to try to convert it to a pandas DataFrame, it throws a "Arrays must be the same length" error. This is because it cannot process the keys which have multiple values (i.e. the keys which have values of lists).

How do I get pandas to treat the lists as 'single values'?

As a hypothetical example:

data = { 'building': 'White House', 'DC?': True, 'occupants': ['Barack', 'Michelle', 'Sasha', 'Malia'] }

I want to turn it into a DataFrame like this:

ix   building         DC?      occupants
0    'White House'    True     ['Barack', 'Michelle', 'Sasha', 'Malia']
  • do you know beforehand the structure of the data coming in? – AbtPst Nov 3 '15 at 16:46
  • 1
    In general, yes. In the hypothetical example, the 'building' will always be a single string, and the 'DC?' will always be a single boolean. But the length of the 'occupants' list may change depending on the building that is queried. Does that answer your question? – Conway Nov 3 '15 at 17:01
  • correct, so i was thinking, create a blank dataframe first and then keep adding rows to it. however, note that as Andy points out, this may be ineffcient – AbtPst Nov 3 '15 at 17:03

This works if you pass a list (of rows):

In [11]: pd.DataFrame(data)
    DC?     building occupants
0  True  White House    Barack
1  True  White House  Michelle
2  True  White House     Sasha
3  True  White House     Malia

In [12]: pd.DataFrame([data])
    DC?     building                         occupants
0  True  White House  [Barack, Michelle, Sasha, Malia]
  • 1
    This solution also works with lists-of-lists and lists-of-dictionaries. data = { 'building': 'White House', 'DC?': True, 'occupants': ['Barack', 'Michelle', 'Sasha', 'Malia'] , 'list_of_lists': [[1,2,3], [4,5,6]], 'list_of_dicts': [{'a': 1, 'b': 2}, {'c': 3, 'd': 4}]} – Alexander Nov 3 '15 at 17:10

This turns out to be very trivial in the end

data = { 'building': 'White House', 'DC?': True, 'occupants': ['Barack', 'Michelle', 'Sasha', 'Malia'] }
df = pandas.DataFrame([data])
print df

Which results in:

    DC?     building                         occupants
0  True  White House  [Barack, Michelle, Sasha, Malia]
  • This works for python 3.x. The pandas from_dict behaviour seems to have changed. – BenP Dec 27 '18 at 12:29

Would it be acceptable if instead of having one entry with a list of occupants, you had individual entries for each occupant? If so you could just do

n = len(data['occupants'])
for key, val in data.items():
    if key != 'occupants':
        data[key] = n*[val]

EDIT: Actually, I'm getting this behavior in pandas (i.e. just with pd.DataFrame(data)) even without this pre-processing. What version are you using?


if you know the keys of the dictionary beforehand, why not first create an empty data frame and then keep adding rows?

  • 2
    This is not very efficient as pandas creates a new copy for every insertion (so building up a DataFrame in this way is O(n^2) in number of rows). – Andy Hayden Nov 3 '15 at 16:52

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.