13

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
15

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

In [11]: pd.DataFrame(data)
Out[11]:
    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])
Out[12]:
    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
4

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
1

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?

0

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

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