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I'm having a pandas Series object filled with decimal numbers of dtype Decimal. I'd like to use the new pandas 0.8 function to resample the decimal time series like this:

resampled = ts.resample('D', how = 'mean')

When trying this i get an "GroupByError: No numeric types to aggregate" error. I assume the problem is that np.mean is used internaly to resample the values and np.mean expects floats instead of Decimals.

Thanks to the help of this forum i managed to solve a similar question using groupBy and the apply function but i would love to also use the cool resample function.

How use the mean method on a pandas TimeSeries with Decimal type values?

Any idea how to solve this?

Here is the complete ipython session creating the error:

In [37]: from decimal import Decimal

In [38]: from pandas import *

In [39]: rng = date_range('1.1.2012',periods=48, freq='H')

In [40]: rnd = np.random.randn(len(rng))

In [41]: rnd_dec = [Decimal(x) for x in rnd]

In [42]: ts = Series(rnd_dec, index=rng)

In [43]: ts[0:3]

2012-01-01 00:00:00    -0.1020591335576267189022559023214853368699550628
2012-01-01 01:00:00    0.99245713975437366283216533702216111123561859130
2012-01-01 02:00:00    1.80080710727195758558139004890108481049537658691
Freq: H

In [44]: type(ts[0])
Out[44]: decimal.Decimal

In [45]: ts.resample('D', how = 'mean')
GroupByError                              Traceback (most recent call last)
C:\Users\THM\Documents\Python\<ipython-input-45-09c898403ddd> in <module>()
----> 1 ts.resample('D', how = 'mean')

C:\Python27\lib\site-packages\pandas\core\generic.pyc in resample(self, rule, how,     axis, fill_method, closed, label, convention, kind, loffset, l
imit, base)
    187                               fill_method=fill_method, convention=convention,
    188                               limit=limit, base=base)
--> 189         return sampler.resample(self)
    191     def first(self, offset):

C:\Python27\lib\site-packages\pandas\tseries\resample.pyc in resample(self, obj)
     66         if isinstance(axis, DatetimeIndex):
---> 67             rs = self._resample_timestamps(obj)
     68         elif isinstance(axis, PeriodIndex):
     69             offset = to_offset(self.freq)

C:\Python27\lib\site-packages\pandas\tseries\resample.pyc in _resample_timestamps(self, obj)
    184             if len(grouper.binlabels) < len(axlabels) or is not None:
    185                 grouped  = obj.groupby(grouper, axis=self.axis)
--> 186                 result = grouped.aggregate(self._agg_method)
    187             else:
    188                 # upsampling shortcut

C:\Python27\lib\site-packages\pandas\core\groupby.pyc in aggregate(self, func_or_funcs,    *args, **kwargs)
   1215         """
   1216         if isinstance(func_or_funcs, basestring):
-> 1217             return getattr(self, func_or_funcs)(*args, **kwargs)
   1219         if hasattr(func_or_funcs,'__iter__'):

C:\Python27\lib\site-packages\pandas\core\groupby.pyc in mean(self)
    290         """
    291         try:
--> 292             return self._cython_agg_general('mean')
    293         except GroupByError:
    294             raise

C:\Python27\lib\site-packages\pandas\core\groupby.pyc in _cython_agg_general(self, how)
    377         if len(output) == 0:
--> 378             raise GroupByError('No numeric types to aggregate')
    380         return self._wrap_aggregated_output(output, names)

GroupByError: No numeric types to aggregate

Any help is appreciated. Thanks, Thomas

share|improve this question
Just FYI you should try to avoid Series objects with object dtype as much as possible. Is there any particular reason why you need the unlimited precision of Decimal objects? – Phillip Cloud Aug 6 '13 at 14:54

2 Answers 2

up vote 7 down vote accepted

I found the answer by myself. It is possible to provide a function to the 'how' argument of resample:

f = lambda x: Decimal(np.mean(x))
ts.resample('D', how = f)
share|improve this answer

I get the error for object type columns in DataFrame. I got around it by using

df.resample('D', method='ffill', how=lambda c: c[-1])

share|improve this answer

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