I have a list of dictionaries like this:

[{'points': 50, 'time': '5:00', 'year': 2010}, 
{'points': 25, 'time': '6:00', 'month': "february"}, 
{'points':90, 'time': '9:00', 'month': 'january'}, 
{'points_h1':20, 'month': 'june'}]

And I want to turn this into a pandas DataFrame like this:

      month  points  points_h1  time  year
0       NaN      50        NaN  5:00  2010
1  february      25        NaN  6:00   NaN
2   january      90        NaN  9:00   NaN
3      june     NaN         20   NaN   NaN

Note: Order of the columns does not matter.

How can I turn the list of dictionaries into a pandas DataFrame as shown above?

  • The answers here are correct for the most part, but none of them go into depth regarding what methods are more appropriate in different situations. For more information on these methods and others, please take a look at this answer. – coldspeed 19 hours ago
up vote 564 down vote accepted

Supposing d is your list of dicts, simply:

pd.DataFrame(d)
  • 8
    This also works for list of Tuples ! – user602599 Aug 20 '14 at 20:25
  • 1
    How might one use one of the key/value pairs as the index (eg. time)? – CatsLoveJazz Jun 28 '16 at 13:37
  • 3
    @CatsLoveJazz You can just do df = df.set_index('time') afterwards – joris Jun 28 '16 at 13:38
  • 1
    @CatsLoveJazz No, that is not possible when converting from a dict. – joris Jun 29 '16 at 8:16
  • 5
    As of Pandas 0.19.2, there's no mention of this in the documentation, at least not in the docs for pandas.DataFrame – Leo Alekseyev Apr 13 '17 at 22:56

In pandas 16.2, I had to do pd.DataFrame.from_records(d) to get this to work.

  • 1
    the good thing about this approach is that it also works with deque – MBZ Oct 12 '15 at 5:22
  • 3
    works fine with pandas 0.17.1 with @joris solution – Anton Protopopov Jan 19 '16 at 10:14
  • 2
    Usinig 0.14.1 and @joris' solution didn't work but this did – mchen Apr 15 '16 at 10:55
  • 9
    In 0.18.1, one must use from_records if the dictionaries do not all have the same keys. – fredcallaway Oct 24 '16 at 21:49
  • @fredcallaway Actually, in more recent versions of pandas (v0.23 as of writing this), missing keys are not a problem. However, there are some critical differences which I've tried to highlight in my answer here. – coldspeed 18 hours ago

You can also use pd.DataFrame.from_dict(d) as :

In [8]: d = [{'points': 50, 'time': '5:00', 'year': 2010}, 
   ...: {'points': 25, 'time': '6:00', 'month': "february"}, 
   ...: {'points':90, 'time': '9:00', 'month': 'january'}, 
   ...: {'points_h1':20, 'month': 'june'}]

In [12]: pd.DataFrame.from_dict(d)
Out[12]: 
      month  points  points_h1  time    year
0       NaN    50.0        NaN  5:00  2010.0
1  february    25.0        NaN  6:00     NaN
2   january    90.0        NaN  9:00     NaN
3      june     NaN       20.0   NaN     NaN
  • The question is about constructing a data frame from a list of dicts, not from a single dict as you assumed in your answer. – a_guest Jul 6 '17 at 21:54
  • @a_guest check the updated answer. I'am not assuming. – shivsn Jul 7 '17 at 6:03

v0.23+ Answer

The other answers are correct, but not much has been explained in terms of advantages and limitations of these methods. The aim of this post will be to show examples of these methods under different situations, discuss when to use (and when not to use), and suggest alternatives.


pd.DataFrame, pd.DataFrame.from_records, and pd.DataFrame.from_dict

In this section, I will demonstrate examples where all these 3 methods work in an identical fashion, where some of them work better than others, and where some of them don't work at all.

Consider a very contrived example.

np.random.seed(0)
data = pd.DataFrame(
    np.random.choice(10, (3, 4)), columns=list('ABCD')).to_dict('r')

print(data)
[{'A': 5, 'B': 0, 'C': 3, 'D': 3},
 {'A': 7, 'B': 9, 'C': 3, 'D': 5},
 {'A': 2, 'B': 4, 'C': 7, 'D': 6}]

This list consists of "records" with every keys present. This is the simplest case you could encounter.

pd.DataFrame(data)
# pd.DataFrame.from_dict(data)
# pd.DataFrame.from_records(data)

   A  B  C  D
0  5  0  3  3
1  7  9  3  5
2  2  4  7  6

Word on Dictionary Orientations
Before continuing, it is important to make the distinction between the different types of dictionary orientations, and support with pandas. There are two primary types: "columns", and "index".

orient='columns'
Dictionaries with the "columns" orientation will have their keys correspond to columns in the equivalent DataFrame.

For example, data above is in the "columns" orient.

data_c = [
 {'A': 5, 'B': 0, 'C': 3, 'D': 3},
 {'A': 7, 'B': 9, 'C': 3, 'D': 5},
 {'A': 2, 'B': 4, 'C': 7, 'D': 6}]

pd.DataFrame.from_dict(data_c, orient='columns')

   A  B  C  D
0  5  0  3  3
1  7  9  3  5
2  2  4  7  6

Note: If you are using pd.DataFrame.from_records, the orientation is assumed to be "columns" (you cannot specify otherwise), and the dictionaries will be loaded accordingly.

orient='index'
With this orient, keys are assumed to correspond to index values. This kind of data is best suited for pd.DataFrame.from_dict.

data_i ={
 0: {'A': 5, 'B': 0, 'C': 3, 'D': 3},
 1: {'A': 7, 'B': 9, 'C': 3, 'D': 5},
 2: {'A': 2, 'B': 4, 'C': 7, 'D': 6}}

pd.DataFrame.from_dict(data_i, orient='index')

   A  B  C  D
0  5  0  3  3
1  7  9  3  5
2  2  4  7  6

This case is not considered in the OP, but is still useful to know.

Setting a Custom Index
If you need a custom index on the resultant DataFrame, you can set it using the index=... argument.

pd.DataFrame(data, index=['a', 'b', 'c'])
# pd.DataFrame.from_records(data, index=['a', 'b', 'c'])

   A  B  C  D
a  5  0  3  3
b  7  9  3  5
c  2  4  7  6

This is not supported by pd.DataFrame.from_dict.

Dealing with Missing Keys/Columns
All methods work out-of-the-box when handling dictionaries with missing keys/column values. For example,

data2 = [
     {'A': 5, 'C': 3, 'D': 3},
     {'A': 7, 'B': 9, 'F': 5},
     {'B': 4, 'C': 7, 'E': 6}]

pd.DataFrame(data2)
# pd.DataFrame.from_dict(data2)
# pd.DataFrame.from_records(data2)

     A    B    C    D    E    F
0  5.0  NaN  3.0  3.0  NaN  NaN
1  7.0  9.0  NaN  NaN  NaN  5.0
2  NaN  4.0  7.0  NaN  6.0  NaN

Reading a Subset of Columns
"What if I don't want to read in every single column"? You can easily specify this using the columns=... parameter.

For example, from the example dictionary of data2 above, if you wanted to read only columns "A', 'D', and 'F', you can do so by passing a list:

pd.DataFrame(data2, columns=['A', 'D', 'F'])
# pd.DataFrame.from_records(data2, columns=['A', 'D', 'F'])

     A    D    F
0  5.0  3.0  NaN
1  7.0  NaN  5.0
2  NaN  NaN  NaN

This is not supported by pd.DataFrame.from_dict with the default orient "columns".

pd.DataFrame.from_dict(data2, orient='columns', columns=['A', 'B'])

ValueError: cannot use columns parameter with orient='columns'

Reading a Subset of Rows
Not supported by any of these methods directly. You will have to iterate over your data and perform a reverse delete in-place as you iterate. For example, to extract only the 0th and 2nd rows from data2 above, you can use:

rows_to_select = {0, 2}
for i in reversed(range(len(data2))):
    if i not in rows_to_select:
        del data2[i]

pd.DataFrame(data2)
# pd.DataFrame.from_dict(data2)
# pd.DataFrame.from_records(data2)

     A    B  C    D    E
0  5.0  NaN  3  3.0  NaN
1  NaN  4.0  7  NaN  6.0

The panacea: json_normalize

A strong, robust alternative to the methods outlined above is the json_normalize function which works with lists of dictionaries (records), and in addition can also handle nested dictionaries.

pd.io.json.json_normalize(data)

   A  B  C  D
0  5  0  3  3
1  7  9  3  5
2  2  4  7  6

pd.io.json.json_normalize(data2)

     A    B  C    D    E
0  5.0  NaN  3  3.0  NaN
1  NaN  4.0  7  NaN  6.0

Again, keep in mind that the data passed to json_normalize needs to be in the list-of-dictionaries (records) format.

As mentioned, json_normalize can also handle nested dictionaries. Here's an example taken from the documentation.

data_nested = \
    [{'counties': [{'name': 'Dade', 'population': 12345},
                   {'name': 'Broward', 'population': 40000},
                   {'name': 'Palm Beach', 'population': 60000}],
      'info': {'governor': 'Rick Scott'},
      'shortname': 'FL',
      'state': 'Florida'},
     {'counties': [{'name': 'Summit', 'population': 1234},
                   {'name': 'Cuyahoga', 'population': 1337}],
      'info': {'governor': 'John Kasich'},
      'shortname': 'OH',
      'state': 'Ohio'}]

pd.io.json.json_normalize(data_nested, 
                          record_path='counties', 
                          meta=['state', 'shortname', ['info', 'governor']])

         name  population    state shortname info.governor
0        Dade       12345  Florida        FL    Rick Scott
1     Broward       40000  Florida        FL    Rick Scott
2  Palm Beach       60000  Florida        FL    Rick Scott
3      Summit        1234     Ohio        OH   John Kasich
4    Cuyahoga        1337     Ohio        OH   John Kasich

For more information on the meta and record_path arguments, check out the documentation.


Summarising

Here's a table of all the methods discussed above, along with supported features/functionality.

enter image description here

  • 2
    Woah! Okay this along with Merging SO post belong in the API. You should contribute to the pandas documentations if you haven't already done so. Ted Petrou just posted a LinkedIn article about the popularity of pandas on Stack Overflow and mentions that lack of good documentation contributes to the volume of questions here. – Scott Boston 16 hours ago
  • @ScottBoston You're absolutely right, I've heard that enough times now that I know it is something I should give more serious thought to. I think the documentation can be a great way of helping users, more so than posting on questions that would only reach a fraction of the same audience. – coldspeed 16 hours ago
  • It's particularly problematic because the details of which methods are good for which cases often change, and so having very lengthy, deep dive answers on SO is not only not as useful as having it in the pandas official documentation, but often is even harmful or misleading because some change to the function internals can suddenly make the answer incorrect or factually wrong and it's not clearly linked to the actual source repo to flag for documentation updating. – ely 16 hours ago
  • 1
    it is nice answer , I think it is time for us to re-walk-in those common question under the most current pandas version :-) – W-B 15 hours ago
  • 1
    @W-B Yup, I suggest you take a shot too, you would definitely have some valuable perspectives to offer with your combined R and Pandas expertise! – coldspeed 15 hours ago

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