5

I have a list of dictionaries which looks like this :

L=[
{
"timeline": "2014-10", 
"total_prescriptions": 17
}, 
{
"timeline": "2014-11", 
"total_prescriptions": 14
}, 
{
"timeline": "2014-12", 
"total_prescriptions": 8
},
{
"timeline": "2015-1", 
"total_prescriptions": 4
}, 
{
"timeline": "2015-3", 
"total_prescriptions": 10
}, 
{
"timeline": "2015-4", 
"total_prescriptions": 3
} 
]

This basically is the result of a SQL query which when given a start date and an end date gives the count of total prescriptions for each month starting from the start date till the end month.However,for months where the prescriptions count is 0(Feb 2015),it completely skips that month.Is it possible using pandas or numpy to alter this list so that it adds an entry for the missing month with 0 as the total prescription as follows:

[
{
"timeline": "2014-10", 
"total_prescriptions": 17
}, 
{
"timeline": "2014-11", 
"total_prescriptions": 14
}, 
{
"timeline": "2014-12", 
"total_prescriptions": 8
{
"timeline": "2015-1", 
"total_prescriptions": 4
}, 
{
"timeline": "2015-2",   # 2015-2 to be inserted for missing month
"total_prescriptions": 0 # 0 to be inserted for total prescription
}, 
{
"timeline": "2015-3", 
"total_prescriptions": 10
}, 
{
"timeline": "2015-4", 
"total_prescriptions": 3
} 
]
8

What you are talking about is called "Resampling" in Pandas; first convert the your time to a numpy datetime and set as your index:

df = pd.DataFrame(L)
df.index=pd.to_datetime(df.timeline,format='%Y-%m')
df
           timeline  total_prescriptions
timeline                                
2014-10-01  2014-10                   17
2014-11-01  2014-11                   14
2014-12-01  2014-12                    8
2015-01-01   2015-1                    4
2015-03-01   2015-3                   10
2015-04-01   2015-4                    3

Then you can add in your missing months with resample('MS') (MS stands for "month start" I guess), and use fillna(0) to convert null values to zero as in your requirement.

df = df.resample('MS').fillna(0)
df
            total_prescriptions
timeline                       
2014-10-01                   17
2014-11-01                   14
2014-12-01                    8
2015-01-01                    4
2015-02-01                  NaN
2015-03-01                   10
2015-04-01                    3

To convert back to your original format, convert the datetime index back to string using to_native_types, and then export using to_dict('records'):

df['timeline']=df.index.to_native_types()
df.to_dict('records')
[{'timeline': '2014-10-01', 'total_prescriptions': 17.0},
 {'timeline': '2014-11-01', 'total_prescriptions': 14.0},
 {'timeline': '2014-12-01', 'total_prescriptions': 8.0},
 {'timeline': '2015-01-01', 'total_prescriptions': 4.0},
 {'timeline': '2015-02-01', 'total_prescriptions': 0.0},
 {'timeline': '2015-03-01', 'total_prescriptions': 10.0},
 {'timeline': '2015-04-01', 'total_prescriptions': 3.0}]
  • this is really nice..just what i need..would you know how to convert df back to a list of dictionaries once the missing date has been added... – Amistad Aug 27 '15 at 7:34
  • ok..i figured that out ..df.to_dict('records')..thanks a lot for your help on this – Amistad Aug 27 '15 at 7:47
  • ok..i got a bit too excited..when i did that..it just gives me total_prescriptions..how would i get back the original list – Amistad Aug 27 '15 at 7:57
  • ive added instructions for converting back to your original format – maxymoo Aug 27 '15 at 23:52

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