41

I have a Pandas dataframe:

type(original)
pandas.core.frame.DataFrame

which includes the series object original['user']:

type(original['user'])
pandas.core.series.Series

original['user'] points to a number of dicts:

type(original['user'].ix[0])
dict

Each dict has the same keys:

original['user'].ix[0].keys()

[u'follow_request_sent',
 u'profile_use_background_image',
 u'profile_text_color',
 u'id',
 u'verified',
 u'profile_location',
 # ... keys removed for brevity
]

Above is (part of) one of the dicts of user fields in a tweet from tweeter API. I want to build a data frame from these dicts.

When I try to make a data frame directly, I get only one column for each row and this column contains the whole dict:

pd.DataFrame(original['user'][:2])
    user
0   {u'follow_request_sent': False, u'profile_use_...
1   {u'follow_request_sent': False, u'profile_use_..

When I try to create a data frame using from_dict() I get the same result:

pd.DataFrame.from_dict(original['user'][:2])

    user
0   {u'follow_request_sent': False, u'profile_use_...
1   {u'follow_request_sent': False, u'profile_use_..

Next I tried a list comprehension which returned an error:

item = [[k, v] for (k,v) in users]
ValueError: too many values to unpack

When I create a data frame from a single row, it nearly works:

df = pd.DataFrame.from_dict(original['user'].ix[0])
df.reset_index()

    index   contributors_enabled    created_at  default_profile     default_profile_image   description     entities    favourites_count    follow_request_sent     followers_count     following   friends_count   geo_enabled     id  id_str  is_translation_enabled  is_translator   lang    listed_count    location    name    notifications   profile_background_color    profile_background_image_url    profile_background_image_url_https  profile_background_tile     profile_image_url   profile_image_url_https     profile_link_color  profile_location    profile_sidebar_border_color    profile_sidebar_fill_color  profile_text_color  profile_use_background_image    protected   screen_name     statuses_count  time_zone   url     utc_offset  verified
0   description     False   Mon May 26 11:58:40 +0000 2014  True    False       {u'urls': []}   0   False   157

It works almost like I want it to, except it sets the description field as the default index.

Each of the dicts has 40 keys but I only need about 10 of them and I have 28734 rows in data frame.

How can I filter out the keys which I do not need?

2
  • 1
    You should use read_json here to get this into a single DataFrame. Using a DataFrame of DataFrames is a bad idea. Apr 16, 2015 at 19:20
  • @andy-hayden, I thought about it but it requires additional querying database. I store data in local mongo db, but I want to reduce interaction between python and mongo.
    – makambi
    Apr 18, 2015 at 6:57

3 Answers 3

46

what I would try to do is the following:

new_df = pd.DataFrame(list(original['user']))

this will convert the series to list then pass it to pandas dataframe and it should take care of the rest.

6
  • It does not work, I get a dataframe with dtype of object(dict), what I expected was that the keys of the dict would be the columns of the dataframe
    – devssh
    May 29, 2018 at 6:46
  • which version of pandas are you using?
    – Eyad Sibai
    Jul 28, 2018 at 20:10
  • mine was pandas 0.23.0 with python 3.6
    – devssh
    Jul 31, 2018 at 6:00
  • 8
    I recommend preserving the original index as well, new_df = pd.DataFrame(original['user'].tolist(), index=original.index) Jul 22, 2020 at 5:12
  • Does not work if the series has also nulls in it!
    – Edu Marín
    Dec 14, 2022 at 22:19
27

df = original['user'].apply(pd.Series)

works well

credit

4
  • 5
    Also this one may be really slow
    – D M
    Oct 17, 2018 at 9:09
  • 1
    This is insanely clever. If you have a Series with dtype object and the objects are identically-keyed dictionaries, do this.
    – JoseOrtiz3
    Apr 11, 2019 at 5:22
  • 3
    Really very slow. On my test of 5000 strings series.apply(pd.Series) is 300 times (!) slower than pd.DataFrame(series.values.tolist()). Seems like constructing Series for each string is costy. Nov 19, 2019 at 8:38
  • Slow but works perfectly when the series of dictionaries has nulls.
    – Edu Marín
    Dec 14, 2022 at 22:19
6

This works:

series_of_dicts = original['user']
df = pd.DataFrame.from_records(
    series_of_dicts.values, index=series_of_dicts.index
)

Or if you have a list or other iterable of dicts, then a simple

pd.DataFrame.from_records(iterable_of_dicts)

works.

Docs for DataFrame.from_records

I haven't timed it, but I'd imagine it should be pretty fast, since it this is exactly what DataFrame.from_records() was made for.

1
  • Also good since this keeps the index if it has meaning.
    – Jason Cook
    May 3, 2022 at 13:41

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