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I know there is a simple implementation to do this but I cannot remember the syntax. Have a simple pandas time series and I want to summarize the data by month. Specifically I want to add data over months and years to get some summary of it. Can write it with slicing, but I remember seeing syntax that does it automatically.

import pandas as pd
df = Series(randn(100), index=pd.date_range('2012-01-01', periods=100))

a Multi-indexed Series with Years and sub endexed to months would be first prize.

Partial Answer:

ds.resample('M', how=sum)  # for calendar monthly
ds.resample('A', how=sum)  # for calendar yearly

Any idea how to elegantly get to multindexed by year sums?

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found answer I think. added to Question –  Joop Jul 3 '13 at 14:17

1 Answer 1

up vote 4 down vote accepted
In [26]: df = Series(randn(500), index=pd.date_range('2012-01-01', periods=500))

In [31]: s2 = df.groupby([lambda x: x.year, lambda x: x.month]).sum()

In [32]: s2
Out[32]: 
2012  1      3.853775
      2      4.259941
      3      4.629546
      4    -10.812505
      5    -16.383818
      6     -5.255475
      7      5.901344
      8     13.375258
      9      1.758670
      10     6.570200
      11     6.299812
      12     7.237049
2013  1     -1.331835
      2      3.399223
      3      2.011031
      4      7.905396
      5      1.127362
dtype: float64
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is there a reason that you are using lamdba instead of using df.index.year and df.index.month (which I would prefer)? Seems to be almost the same in performance. –  bmu Jul 3 '13 at 16:02
2  
they are equivalent, i just used the lambda to indicate a more dynamic computation e.g. you can do just about anything) –  Jeff Jul 3 '13 at 16:17

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