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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())
share|improve this question
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

2 Answers 2

up vote 13 down vote accepted

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):

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(d.items())  # or list(d.iteritems()) in python 3
             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(d.items(), columns=['Date', 'DateValue'])
          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')
2012-06-08    388
2012-06-09    388
2012-06-10    388

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

In [23]: s.reset_index
          Date  DateValue
0   2012-06-08        388
1   2012-06-09        388
2   2012-06-10        388
share|improve this answer
exactly I tried that and got the same error. –  anonuser0428 Sep 16 '13 at 21:14
@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
Just double checking that you were meant to have an extra right bracket in the second example? Cheers. –  Chinny84 Jun 24 at 9:13
@Chinny84 good catch, thanks. –  Andy Hayden Jun 24 at 15:56
No worries. I was using your solution for my own problem. –  Chinny84 Jun 24 at 16:46

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.

df = pd.DataFrame(data.items(), columns=['Date', 'DateValue'])
df['Date'] = pd.to_datetime(df['Date'])
share|improve this answer

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