Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am having lots of issues working with DataFrames with date indexes.

from pandas import DataFrame, date_range
# Create a dataframe with dates as your index
data = [1, 2, 3, 4, 5, 6, 7, 8, 9, 10]
idx = date_range('1/1/2012', periods=10, freq='MS')
df = DataFrame(data, index=idx, columns=['Revenue'])
df['State'] = ['NY', 'NY', 'NY', 'NY', 'FL', 'FL', 'GA', 'GA', 'FL', 'FL'] 

In [6]: df
Out[6]: 
       Revenue   State
2012-01-01   1      NY
2012-02-01   2      NY
2012-03-01   3      NY
2012-04-01   4      NY
2012-05-01   5      FL
2012-06-01   6      FL
2012-07-01   7      GA
2012-08-01   8      GA
2012-09-01   9      FL
2012-10-01   10     FL

I am trying to add an additional column named 'Mean' with the group averages:

I tried this, but it does not work:

df2 = df
df2['Mean'] = df.groupby(['State'])['Revenue'].apply(lambda x: mean(x))

In [9]: df2.head(10)
Out[9]:
       Revenue    State    Mean
2012-01-01   1       NY     NaN
2012-02-01   2       NY     NaN
2012-03-01   3       NY     NaN
2012-04-01   4       NY     NaN
2012-05-01   5       FL     NaN
2012-06-01   6       FL     NaN
2012-07-01   7       GA     NaN
2012-08-01   8       GA     NaN
2012-09-01   9       FL     NaN
2012-10-01   10      FL     NaN

But I am trying to get:

       Revenue    State    Mean
2012-01-01   1       NY     2.5
2012-02-01   2       NY     2.5
2012-03-01   3       NY     2.5
2012-04-01   4       NY     2.5
2012-05-01   5       FL     7.5
2012-06-01   6       FL     7.5
2012-07-01   7       GA     7.5
2012-08-01   8       GA     7.5
2012-09-01   9       FL     7.5
2012-10-01   10      FL     7.5

How can I get this DataFrame?

share|improve this question

2 Answers 2

up vote 6 down vote accepted

You nearly had it! First create the groupby object:

means = df.groupby('State').mean()

In [5]: means
Out[5]: 
       Revenue
State         
FL         7.5
GA         7.5
NY         2.5

Then apply this to each state in the DataFrame:

df['mean'] = df['State'].apply(lambda x: means.ix[x]['Revenue'])

In [7]: df
Out[7]: 
            Revenue State  mean
2012-01-01        1    NY   2.5
2012-02-01        2    NY   2.5
2012-03-01        3    NY   2.5
2012-04-01        4    NY   2.5
2012-05-01        5    FL   7.5
2012-06-01        6    FL   7.5
2012-07-01        7    GA   7.5
2012-08-01        8    GA   7.5
2012-09-01        9    FL   7.5
2012-10-01       10    FL   7.5
share|improve this answer
    
Perfect! thanks. –  DataByDavid Dec 19 '12 at 23:21
    
Nice solution, Hayden. –  Aman Dec 21 '12 at 18:34

Using join or merge works too:

In [68]: revs = df.groupby('State').Revenue.mean()

In [69]: revs.name = 'Mean Revenue'

In [70]: df.join(revs, on='State')
Out[70]: 
            Revenue State  Mean Revenue
2012-01-01        1    NY           2.5
2012-02-01        2    NY           2.5
2012-03-01        3    NY           2.5
2012-04-01        4    NY           2.5
2012-05-01        5    FL           7.5
2012-06-01        6    FL           7.5
2012-07-01        7    GA           7.5
2012-08-01        8    GA           7.5
2012-09-01        9    FL           7.5
2012-10-01       10    FL           7.5
share|improve this answer
1  
elegant solution! –  Tim Stewart Jan 13 '13 at 6:05

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.