236

I have a Python dictionary like the following:

{u'2012-06-08': 388,
 u'2012-06-09': 388,
 u'2012-06-10': 388,
 u'2012-06-11': 389,
 u'2012-06-12': 389,
 u'2012-06-13': 389,
 u'2012-06-14': 389,
 u'2012-06-15': 389,
 u'2012-06-16': 389,
 u'2012-06-17': 389,
 u'2012-06-18': 390,
 u'2012-06-19': 390,
 u'2012-06-20': 390,
 u'2012-06-21': 390,
 u'2012-06-22': 390,
 u'2012-06-23': 390,
 u'2012-06-24': 390,
 u'2012-06-25': 391,
 u'2012-06-26': 391,
 u'2012-06-27': 391,
 u'2012-06-28': 391,
 u'2012-06-29': 391,
 u'2012-06-30': 391,
 u'2012-07-01': 391,
 u'2012-07-02': 392,
 u'2012-07-03': 392,
 u'2012-07-04': 392,
 u'2012-07-05': 392,
 u'2012-07-06': 392}

The keys are Unicode dates and the values are integers. I would like to convert this into a pandas dataframe by having the dates and their corresponding values as two separate columns. Example: col1: Dates col2: DateValue (the dates are still Unicode and datevalues are still integers)

     Date         DateValue
0    2012-07-01    391
1    2012-07-02    392
2    2012-07-03    392
.    2012-07-04    392
.    ...           ...
.    ...           ...

Any help in this direction would be much appreciated. I am unable to find resources on the pandas docs to help me with this.

I know one solution might be to convert each key-value pair in this dict, into a dict so the entire structure becomes a dict of dicts, and then we can add each row individually to the dataframe. But I want to know if there is an easier way and a more direct way to do this.

So far I have tried converting the dict into a series object but this doesn't seem to maintain the relationship between the columns:

s  = Series(my_dict,index=my_dict.keys())
  • I have tried converting the dict into a series object with the dates as index but that didn't match up the dates with the corresponding values for some reason. – anonuser0428 Sep 16 '13 at 21:04
  • Please post the code that you attempted. – RyPeck Sep 16 '13 at 21:05
  • the code has been posted. I want to inquire whether there is a way to create a dataframe without creating a dict-of-dicts and then adding each row separately. – anonuser0428 Sep 16 '13 at 21:08
  • 1
    What is a "Unicode date"? Do you mean an ISO 8601 date? – Peter Mortensen Nov 16 '15 at 21:04

15 Answers 15

369

The error here, is since calling the DataFrame constructor with scalar values (where it expects values to be a list/dict/... i.e. have multiple columns):

pd.DataFrame(d)
ValueError: If using all scalar values, you must must pass an index

You could take the items from the dictionary (i.e. the key-value pairs):

In [11]: pd.DataFrame(list(d.items()))  # or list(d.items()) in python 3
Out[11]:
             0    1
0   2012-07-02  392
1   2012-07-06  392
2   2012-06-29  391
3   2012-06-28  391
...

In [12]: pd.DataFrame(list(d.items()), columns=['Date', 'DateValue'])
Out[12]:
          Date  DateValue
0   2012-07-02        392
1   2012-07-06        392
2   2012-06-29        391

But I think it makes more sense to pass the Series constructor:

In [21]: s = pd.Series(d, name='DateValue')
Out[21]:
2012-06-08    388
2012-06-09    388
2012-06-10    388

In [22]: s.index.name = 'Date'

In [23]: s.reset_index()
Out[23]:
          Date  DateValue
0   2012-06-08        388
1   2012-06-09        388
2   2012-06-10        388
  • exactly I tried that and got the same error. – anonuser0428 Sep 16 '13 at 21:14
  • 3
    @user1009091 I realised what the error means now, it's basically saying "What I'm seeing is a Series, so use Series constructor". – Andy Hayden Sep 16 '13 at 21:16
  • 1
    Thanks - very helpful. Could you perhaps explain what's the difference between using this method and using DataFrame.from_dict() ? Your method (which I used) returns type = pandas.core.frame.DataFrame, while the other returns type = class 'pandas.core.frame.DataFrame'. Any chance you could explain the difference and when each method is appropriate? Thanks in advance :) – Optimesh Jan 4 '15 at 10:01
  • 53
    I'm seeing pandas.core.common.PandasError: DataFrame constructor not properly called! from the first example – allthesignals Mar 29 '16 at 17:44
  • 17
    @allthesignals adding list() around d.items works: pd.DataFrame(list(d.items()), columns=['Date', 'DateValue']) – sigurdb Feb 22 '18 at 19:48
106

When converting a dictionary into a pandas dataframe where you want the keys to be the columns of said dataframe and the values to be the row values, you can do simply put brackets around the dictionary like this:

new_dict = {'key 1': 'value 1', 'key 2': 'value 2', 'key 3': 'value 3'}

In[33]:pd.DataFrame([new_dict])
Out[33]: 
    key 1     key 2     key 3
0   value 1   value 2   value 3

It's saved me some headaches so I hope it helps someone out there!

  • 5
    Yes I also did this but added .T to transpose. – Anton vBR Feb 14 '18 at 20:50
  • It works fine but don't know why we have to do it like this. – hui chen Jun 12 at 13:21
  • Exactly what I needed. Thank you – n00b programmer Jul 29 at 10:21
  • what if i want one these column to be used as index – om tripathi Sep 18 at 11:08
83

As explained on another answer using pandas.DataFrame() directly here will not act as you think.

What you can do is use pandas.DataFrame.from_dict with orient='index':

In[7]: pandas.DataFrame.from_dict({u'2012-06-08': 388,
 u'2012-06-09': 388,
 u'2012-06-10': 388,
 u'2012-06-11': 389,
 u'2012-06-12': 389,
 .....
 u'2012-07-05': 392,
 u'2012-07-06': 392}, orient='index', columns=['foo'])
Out[7]: 
            foo
2012-06-08  388
2012-06-09  388
2012-06-10  388
2012-06-11  389
2012-06-12  389
........
2012-07-05  392
2012-07-06  392
  • 1
    can we chain this with any rename method to also set the names of the index and columns in one go ? – Ciprian Tomoiagă Jan 29 '17 at 16:28
  • 4
    good point. One example would be: ...., orient='index').rename(columns={0:'foobar'}) – ntg Feb 21 '17 at 15:59
  • 1
    You can also specify pandas.DataFrame.from_dict(..., orient = 'index', columns = ['foo', 'bar']), this is from the source listed above. – spen.smith Nov 13 at 17:51
  • good point, this is true from pandas .22 which was after the original answer... Updated my answer... – ntg Nov 14 at 7:18
64

Pass the items of the dictionary to the DataFrame constructor, and give the column names. After that parse the Date column to get Timestamp values.

Note the difference between python 2.x and 3.x:

In python 2.x:

df = pd.DataFrame(data.items(), columns=['Date', 'DateValue'])
df['Date'] = pd.to_datetime(df['Date'])

In Python 3.x: (requiring an additional 'list')

df = pd.DataFrame(list(data.items()), columns=['Date', 'DateValue'])
df['Date'] = pd.to_datetime(df['Date'])
  • 3
    This gives me: PandasError: DataFrame constructor not properly called! – Chris Nielsen Nov 17 '16 at 22:35
  • 18
    @ChrisNielsen You are probably using python3. You should try: df = pd.DataFrame(list(data.items()), columns=['Date', 'DateValue']) – Viktor Kerkez Nov 22 '16 at 11:11
  • This is the better answer because it shows what must be done in Python 3. – ifly6 May 4 '18 at 20:05
9

Pandas have built-in function for conversion of dict to data frame.

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

For your data you can convert it like below:

import pandas as pd
your_dict={u'2012-06-08': 388,
 u'2012-06-09': 388,
 u'2012-06-10': 388,
 u'2012-06-11': 389,
 u'2012-06-12': 389,
 u'2012-06-13': 389,
 u'2012-06-14': 389,
 u'2012-06-15': 389,
 u'2012-06-16': 389,
 u'2012-06-17': 389,
 u'2012-06-18': 390,
 u'2012-06-19': 390,
 u'2012-06-20': 390,
 u'2012-06-21': 390,
 u'2012-06-22': 390,
 u'2012-06-23': 390,
 u'2012-06-24': 390,
 u'2012-06-25': 391,
 u'2012-06-26': 391,
 u'2012-06-27': 391,
 u'2012-06-28': 391,
 u'2012-06-29': 391,
 u'2012-06-30': 391,
 u'2012-07-01': 391,
 u'2012-07-02': 392,
 u'2012-07-03': 392,
 u'2012-07-04': 392,
 u'2012-07-05': 392,
 u'2012-07-06': 392}

your_df_from_dict=pd.DataFrame.from_dict(your_dict,orient='index')
print(your_df_from_dict)
  • 2
    That is really bad solution, since is saves dictionary keys as index. – An economist Aug 24 '18 at 14:55
8

df from lists and dictionaries

p.s. in particular, I've found Row-Oriented examples helpful; since often that how records are stored externally.

https://pbpython.com/pandas-list-dict.html

6
pd.DataFrame({'date' : dict_dates.keys() , 'date_value' : dict_dates.values() })
5

In my case I wanted keys and values of a dict to be columns and values of DataFrame. So the only thing that worked for me was:

data = {'adjust_power': 'y', 'af_policy_r_submix_prio_adjust': '[null]', 'af_rf_info': '[null]', 'bat_ac': '3500', 'bat_capacity': '75'} 

columns = list(data.keys())
values = list(data.values())
arr_len = len(values)

pd.DataFrame(np.array(values, dtype=object).reshape(1, arr_len), columns=columns)
4

You can also just pass the keys and values of the dictionary to the new dataframe, like so:

import pandas as pd

myDict = {<the_dict_from_your_example>]
df = pd.DataFrame()
df['Date'] = myDict.keys()
df['DateValue'] = myDict.values()
3

Accepts a dict as argument and returns a dataframe with the keys of the dict as index and values as a column.

def dict_to_df(d):
    df=pd.DataFrame(d.items())
    df.set_index(0, inplace=True)
    return df
  • 1
    Can you edit to explain how this works please? – durron597 Aug 19 '15 at 19:30
  • take a dict, returns a data frame – firstly Aug 21 '15 at 20:23
3

This is how it worked for me :

df= pd.DataFrame([d.keys(), d.values()]).T
df.columns= ['keys', 'values']  # call them whatever you like

I hope this helps

2

This is what worked for me, since I wanted to have a separate index column

df = pd.DataFrame.from_dict(some_dict, orient="index").reset_index()
df.columns = ['A', 'B']
1
d = {'Date': list(yourDict.keys()),'Date_Values': list(yourDict.values())}
df = pandas.DataFrame(data=d)

If you don't encapsulate yourDict.keys() inside of list() , then you will end up with all of your keys and values being placed in every row of every column. Like this:

Date \ 0 (2012-06-08, 2012-06-09, 2012-06-10, 2012-06-1...
1 (2012-06-08, 2012-06-09, 2012-06-10, 2012-06-1...
2 (2012-06-08, 2012-06-09, 2012-06-10, 2012-06-1...
3 (2012-06-08, 2012-06-09, 2012-06-10, 2012-06-1...
4 (2012-06-08, 2012-06-09, 2012-06-10, 2012-06-1...

But by adding list() then the result looks like this:

Date Date_Values 0 2012-06-08 388 1 2012-06-09 388 2 2012-06-10 388 3 2012-06-11 389 4 2012-06-12 389 ...

0

I have run into this several times and have an example dictionary that I created from a function get_max_Path(), and it returns the sample dictionary:

{2: 0.3097502930247044, 3: 0.4413177909384636, 4: 0.5197224051562838, 5: 0.5717654946470984, 6: 0.6063959031223476, 7: 0.6365209824708223, 8: 0.655918861281035, 9: 0.680844386645206}

To convert this to a dataframe, I ran the following:

df = pd.DataFrame.from_dict(get_max_path(2), orient = 'index').reset_index()

Returns a simple two column dataframe with a separate index:

index 0 0 2 0.309750 1 3 0.441318

Just rename the columns using f.rename(columns={'index': 'Column1', 0: 'Column2'}, inplace=True)

0

I think that you can make some changes in your data format when you create dictionary, then you can easily convert it to DataFrame:

input:

a={'Dates':['2012-06-08','2012-06-10'],'Date_value':[388,389]}

output:

{'Date_value': [388, 389], 'Dates': ['2012-06-08', '2012-06-10']}

input:

aframe=DataFrame(a)

output: will be your DataFrame

You just need to use some text editing in somewhere like Sublime or maybe Excel.

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