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I am trying get the 10 days aggregate of my data which has NaN values. The sum of 10 days should return a nan values if there are is a NaN value in the 10 day duration.

When I apply the below code pandas is considering NaN as Zero and returing the sum of remaining days.

dateRange = pd.date_range(start_date, periods=len(data), freq='D')
# Creating a data frame so that the timeseries can handle numpy array.
df = pd.DataFrame(data)
base_Series = pd.DataFrame(list(df.values), index=dateRange)
# Converting to aggregated series
agg_series = base_Series.resample('10D', how='sum')
agg_data = agg_series.values 

Sample Data:

2011-06-01  46.520536
2011-06-02   8.988311
2011-06-03   0.133823
2011-06-04   0.274521
2011-06-05   1.283360
2011-06-06   2.556313
2011-06-07   0.027461
2011-06-08   0.001584
2011-06-09   0.079193
2011-06-10   2.389549
2011-06-11        NaN
2011-06-12   0.195844
2011-06-13   0.058720
2011-06-14   6.570925
2011-06-15   0.015107
2011-06-16   0.031066
2011-06-17   0.073008
2011-06-18   0.072198
2011-06-19   0.044534
2011-06-20   0.240080

Ouput :

2011-06-01  62.254651
2011-06-11   7.301481

Any help would be appreciated.

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share|improve this question

This uses numpy sum which will return nan if nan is present in the sum

In [35]: s = Series(randn(100),index=date_range('20130101',periods=100))

In [36]: s.iloc[11] = np.nan

In [37]: s.resample('10D',how=lambda x: x.values.sum())
Out[37]: 
2013-01-01    6.910729
2013-01-11         NaN
2013-01-21   -1.592541
2013-01-31   -2.013012
2013-02-10    1.129273
2013-02-20   -2.054807
2013-03-02    4.669622
2013-03-12    3.489225
2013-03-22    0.390786
2013-04-01   -0.005655
dtype: float64
share|improve this answer
    
Question: Why am I getting 3 values when I do resampling with the suggested data? I get 2011-06-01, 2011-06-11 and 2011-06-21. Pandas 0.12 and the master. Where did it got the 2011-06-21 date? – Viktor Kerkez Aug 29 '13 at 20:21
    
I think if you do closed='left' if wont include the extra data point (right is the default) – Jeff Aug 29 '13 at 21:02
    
Nope, that's the first thing I tried. It looks like a bug. Because even if I change the last timestamp to 2011-06-19 23:59:59 it still gives me the third value for 2011-06-21. – Viktor Kerkez Aug 29 '13 at 21:05
    
yep a bug: github.com/pydata/pandas/issues/4076 ; want to do do a PR? haven't had time to look at this – Jeff Aug 29 '13 at 21:10
    
PR? Sorry :( Not familiar with terminology :) Pull Request? Add a comment to the issue? – Viktor Kerkez Aug 29 '13 at 21:15

to filter out those days which have any NaNs, I propose that you do

noNaN_days_only = s.groupby(lambda x: x.date).filter(lambda x: ~x.isnull().any()

where s is a DataFrame

share|improve this answer
2  
How is this different from s.dropna()? :) The data is already date sampled. – Viktor Kerkez Aug 29 '13 at 21:01

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