How would I use pandas to calculate a cumulative deviation from a mean monthly rainfall value?

I am given daily rainfall data (e.g. s, below) which I can convert to a pd.Series and resample into monthly periods (sum; e.g. sm, below). But I then want to calculate the difference between each monthly value and the mean for the month. I have added a synthetic example:

```
rng = pd.period_range(20010101, 20131231, freq='D')
s = pd.Series(np.random.normal(2.5,2,size=len(rng)), index=rng)
sm = s.resample('M', how='sum')
```

For example, for January 2010 I would like to calculate the difference between the value for that month and the average monthly rainfall for January (over a long period). Then I want a cumulative sum of that difference.

I have tried to use the groupby function:

```
sm.groupby(lambda x: x.month).mean()
```

But not successfully. I want each monthly value in 'sm' to have the average for all similar months to be subtracted, then a cumulative sum of that series created. This could be in one step I guess.

How could I achieve this efficiently?

Thanks

`sm.groupby(sm.index.month).transform(lambda x: x - x.mean()).cumsum().plot()`

. It will substract the average of all similar months of each value within that group, and then taking the cumulative sum of it, as you are looking for. – joris Dec 28 '13 at 1:37