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i have looked for an answer to this question as it seems pretty simple, but have not been able to find anything yet. Apologies if I missed something. I have pandas version 0.10.0 and I have been experimenting with data of the following form:

import pandas
import numpy as np
import datetime
start_date = datetime.datetime(2009,3,1,6,29,59)
r = pandas.date_range(start_date, periods=12)
cols_1 = ['AAPL', 'AAPL', 'GOOG', 'GOOG', 'GS', 'GS']
cols_2 = ['close', 'rate', 'close', 'rate', 'close', 'rate']
dat = np.random.randn(12, 6)
cols = pandas.MultiIndex.from_arrays([cols_1, cols_2], names=['ticker','field'])
dftst = pandas.DataFrame(dat, columns=cols, index=r)
print dftst



ticker                   AAPL                GOOG                  GS          
field                   close      rate     close      rate     close      rate
2009-03-01 06:29:59  1.956255 -2.074371 -0.200568  0.759772 -0.951543  0.514577
2009-03-02 06:29:59  0.069611 -2.684352 -0.310006  0.730205 -0.302949 -0.830452
2009-03-03 06:29:59  2.077130 -0.903784  0.449857 -1.357464 -0.469572 -0.008757
2009-03-04 06:29:59  1.585358 -2.063672  0.600889 -1.741606 -0.299875  0.565253
2009-03-05 06:29:59  0.269123  0.226593  1.132663  0.485035  0.796858 -0.423112
2009-03-06 06:29:59  0.094879 -1.040069  0.613450 -0.175266 -0.065172  3.374658
2009-03-07 06:29:59 -1.255167 -0.326474  0.437053 -0.231594  0.437703 -0.256811
2009-03-08 06:29:59  0.115454 -1.096841 -1.189211 -0.208098 -0.807860  0.158198
2009-03-09 06:29:59  2.142816  0.173878 -0.160932  0.367309 -0.449765 -0.325400
2009-03-10 06:29:59  0.470669 -0.346805  1.152648  0.844632  1.031602 -0.012502
2009-03-11 06:29:59 -1.366954  0.452177  0.010713 -1.331553  0.226781  0.456900
2009-03-12 06:29:59  2.182409  0.890023 -0.627318 -1.516574 -1.565416 -0.694320

As you can see, I am trying to represent 3d timeseries data. So I have a timeseries index and MultiIndex columns. I am pretty comfortable with slicing the data. If I wanted just a trailing mean of the close data, I can do the following:

pandas.rolling_mean(dftst.ix[:,::2], 5)


ticker                   AAPL      GOOG        GS
field                   close     close     close
2009-03-01 06:29:59       NaN       NaN       NaN
2009-03-02 06:29:59       NaN       NaN       NaN
2009-03-03 06:29:59       NaN       NaN       NaN
2009-03-04 06:29:59       NaN       NaN       NaN
2009-03-05 06:29:59  0.410966 -0.412356  0.722951
2009-03-06 06:29:59 -0.103187 -0.497165  0.137731
2009-03-07 06:29:59  0.000194 -0.645375 -0.298504
2009-03-08 06:29:59 -0.074036 -0.541717 -0.035906
2009-03-09 06:29:59 -0.391863 -0.671918 -0.554380
2009-03-10 06:29:59 -0.336397 -0.411845 -0.992615
2009-03-11 06:29:59 -0.251645 -0.289512 -0.458246
2009-03-12 06:29:59 -0.138925  0.244572 -0.230743

What I cannot do is create a new field, like avg_close and assign to it. Ideally I would like to do something like the following:

dftst[:,'avg_close'] = pandas.rolling_mean(dftst.ix[:,::2], 5)

Even if I swap the levels of my MultiIndex, I cannot make it work:

dftst = dftst.swaplevel(1,0,axis=1)
print dftst['close']

ticker                   AAPL      GOOG        GS
2009-03-01 06:29:59  1.178557 -0.505672 -0.336645
2009-03-02 06:29:59  0.234305  0.581429 -0.232252
2009-03-03 06:29:59 -0.734798  0.117810  1.658418
2009-03-04 06:29:59 -1.555033 -0.298322  0.127408
2009-03-05 06:29:59  0.244102 -1.030041 -0.562039
2009-03-06 06:29:59 -0.297454  1.150564 -1.930883
2009-03-07 06:29:59  0.818910 -0.905296  1.219946
2009-03-08 06:29:59  0.586816  0.965242  0.928546
2009-03-09 06:29:59 -0.357693  0.071455  0.072956
2009-03-10 06:29:59  0.651803 -0.685937  0.805779
2009-03-11 06:29:59  0.569802 -0.062447 -1.349261
2009-03-12 06:29:59 -1.886335  0.205778 -0.864273

dftst['avg_close'] = pandas.rolling_mean(dftst['close'], 3)


----> 1 dftst['avg_close'] = pandas.rolling_mean(dftst['close'], 3)

/usr/local/lib/python2.7/dist-packages/pandas/core/frame.pyc in
__setitem__(self, key, value)    2041         else:    2042             # set column

-> 2043             self._set_item(key, value)    2044     2045     def _boolean_set(self, key, value):

/usr/local/lib/python2.7/dist-packages/pandas/core/frame.pyc in
_set_item(self, key, value)    2077         """    2078         value = self._sanitize_column(key, value)
-> 2079         NDFrame._set_item(self, key, value)    2080     2081     def insert(self, loc, column, value):

/usr/local/lib/python2.7/dist-packages/pandas/core/generic.pyc in
_set_item(self, key, value)
    544 
    545     def _set_item(self, key, value):
--> 546         self._data.set(key, value)
    547         self._clear_item_cache()
    548 

/usr/local/lib/python2.7/dist-packages/pandas/core/internals.pyc in set(self, item, value)
    951         except KeyError:
    952             # insert at end

--> 953             self.insert(len(self.items), item, value)
    954 
    955         self._known_consolidated = False

/usr/local/lib/python2.7/dist-packages/pandas/core/internals.pyc in insert(self, loc, item, value)
    963 
    964         # new block

--> 965         self._add_new_block(item, value, loc=loc)
    966 
    967         if len(self.blocks) > 100:

/usr/local/lib/python2.7/dist-packages/pandas/core/internals.pyc in
_add_new_block(self, item, value, loc)
    992             loc = self.items.get_loc(item)
    993         new_block = make_block(value, self.items[loc:loc+1].copy(),
--> 994                                self.items)
    995         self.blocks.append(new_block)
    996 

/usr/local/lib/python2.7/dist-packages/pandas/core/internals.pyc in make_block(values, items, ref_items)
    463         klass = ObjectBlock
    464 
--> 465     return klass(values, items, ref_items, ndim=values.ndim)
    466 
    467 # TODO: flexible with index=None and/or items=None


/usr/local/lib/python2.7/dist-packages/pandas/core/internals.pyc in
__init__(self, values, items, ref_items, ndim)
     30         if len(items) != len(values):
     31             raise AssertionError('Wrong number of items passed (%d vs %d)'
---> 32                                  % (len(items), len(values)))
     33 
     34         self._ref_locs = None

AssertionError: Wrong number of items passed (1 vs 3)

If my columns were not MultiIndex, I could assign doing the following:

start_date = datetime.datetime(2009,3,1,6,29,59)
r = pandas.date_range(start_date, periods=12)
cols = ['AAPL', 'GOOG', 'GS']
dat = np.random.randn(12, 3)
dftst2 = pandas.DataFrame(dat, columns=cols, index=r)
print dftst2

                         AAPL      GOOG        GS
2009-03-01 06:29:59  2.476787  2.386037 -0.777566
2009-03-02 06:29:59 -0.820647  1.006159 -0.590240
2009-03-03 06:29:59  0.433960  0.104458  0.282641
2009-03-04 06:29:59  0.300190 -0.300786 -1.780412
2009-03-05 06:29:59 -0.247919  1.616572  1.145594
2009-03-06 06:29:59 -0.779130  0.695256  0.845819
2009-03-07 06:29:59  0.572073  0.349394 -3.557776
2009-03-08 06:29:59  2.019885  0.358346  1.350812
2009-03-09 06:29:59  0.472328 -0.334223 -0.605862
2009-03-10 06:29:59 -1.570479  0.410808  0.616515
2009-03-11 06:29:59  1.177562 -0.240396 -2.126951
2009-03-12 06:29:59  0.311566 -1.743213  0.382617

To add a field, based on another field, I can do the following:

dftst2['GOOG_avg'] = pandas.rolling_mean(dftst2['GOOG'], 3)
print dftst2


                         AAPL      GOOG        GS  GOOG_avg
2009-03-01 06:29:59  2.476787  2.386037 -0.777566       NaN
2009-03-02 06:29:59 -0.820647  1.006159 -0.590240       NaN
2009-03-03 06:29:59  0.433960  0.104458  0.282641  1.165551
2009-03-04 06:29:59  0.300190 -0.300786 -1.780412  0.269944
2009-03-05 06:29:59 -0.247919  1.616572  1.145594  0.473415
2009-03-06 06:29:59 -0.779130  0.695256  0.845819  0.670347
2009-03-07 06:29:59  0.572073  0.349394 -3.557776  0.887074
2009-03-08 06:29:59  2.019885  0.358346  1.350812  0.467666
2009-03-09 06:29:59  0.472328 -0.334223 -0.605862  0.124506
2009-03-10 06:29:59 -1.570479  0.410808  0.616515  0.144977
2009-03-11 06:29:59  1.177562 -0.240396 -2.126951 -0.054604
2009-03-12 06:29:59  0.311566 -1.743213  0.382617 -0.524267

I have tried using a Panel object, but so far have not found a quick way to add a field where I have MultiIndex columns, ideally the other level of the columns would be broadcast. I apologize if there have been other posts that answer this question. Any suggestions would be much appreciated.

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3 Answers

You could also (as a workaround since there isn't really an API that does exactly what you want ) consider a bit of reshaping-fu if you don't want to use a Panel. I wouldn't recommend it on enormous data sets, though: use a Panel for that.

In [30]: df = dftst.stack(0)

In [31]: df['close_avg'] = pd.rolling_mean(df.close.unstack(), 5).stack()

In [32]: df
Out[32]: 
field                          close      rate  close_avg
                    ticker                               
2009-03-01 06:29:59 AAPL   -0.223042  0.554996        NaN
                    GOOG    0.060127 -0.333992        NaN
                    GS      0.117626 -1.256790        NaN
2009-03-02 06:29:59 AAPL   -0.513743 -0.402661        NaN
                    GOOG    0.059828 -0.125288        NaN
                    GS     -0.336196 -0.510595        NaN
2009-03-03 06:29:59 AAPL    0.142202 -1.038470        NaN
                    GOOG   -1.099251 -0.892581        NaN
                    GS      1.698086  0.885023        NaN
2009-03-04 06:29:59 AAPL   -1.125821  0.413005        NaN
                    GOOG    0.424290  1.106983        NaN
                    GS      0.047158  0.680714        NaN
2009-03-05 06:29:59 AAPL    0.470050  1.845354  -0.250071
                    GOOG    0.132956 -0.488800  -0.084410
                    GS      0.129190  0.208077   0.331173
2009-03-06 06:29:59 AAPL   -0.087360 -2.102512  -0.222934
                    GOOG    0.165100 -0.134886  -0.063415
                    GS      0.167720  0.082480   0.341192
2009-03-07 06:29:59 AAPL   -0.768542 -0.176076  -0.273894
                    GOOG    0.417694  2.257074   0.008158
                    GS     -1.744730 -1.850185   0.059485
2009-03-08 06:29:59 AAPL   -0.297363 -0.633828  -0.361807
                    GOOG   -1.096703 -0.572138   0.008667
                    GS      0.890016 -2.621563  -0.102129
2009-03-09 06:29:59 AAPL    1.038579  0.053330   0.071073
                    GOOG   -0.614050  0.607944  -0.199001
                    GS     -0.882848  0.596801  -0.288130
2009-03-10 06:29:59 AAPL   -0.255226  0.058178  -0.073982
                    GOOG    1.761861  1.841751   0.126780
                    GS     -0.549998 -1.551281  -0.423968
2009-03-11 06:29:59 AAPL    0.413522  0.149089   0.026194
                    GOOG   -2.964163  1.825312  -0.499072
                    GS     -0.373303  1.137001  -0.532173
2009-03-12 06:29:59 AAPL   -0.924776  1.238546  -0.005053
                    GOOG   -0.985956 -0.906590  -0.779802
                    GS     -0.320400  1.239681  -0.247307
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I don't know how to do the broadcasting you want but for strict assignment this should do it:

dftst[(('GOOG', 'avg_close'))] = 7 

More specifically but still without broadcasting:

for tic in cols_1:
   dftst[(tic, 'avg_close')] = pandas.rolling_mean(dftst[(tic, 'close')],5) 
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thanks for this post, i figured out a way to do it with Panel objects. It seems, however, that there are several key things I am unable to do with Panel objects. I will ask some Panel specific questions in another post. thanks again! –  user1988295 Feb 1 '13 at 5:43
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for this particular problem, it seems like using a Panel object works. I did the following (taking dftst from my original post):

pn = dftst.T.to_panel()
print pn

Out[83]: 
<class 'pandas.core.panel.Panel'>
Dimensions: 12 (items) x 3 (major_axis) x 2 (minor_axis)
Items axis: 2009-03-01 06:29:59 to 2009-03-12 06:29:59
Major_axis axis: AAPL to GS
Minor_axis axis: close to rate

If I move the ('close', 'rate') to the Items by doing the following:

pn = pn.transpose(2,0,1)
print pn

Out[91]: 
<class 'pandas.core.panel.Panel'>
Dimensions: 2 (items) x 12 (major_axis) x 3 (minor_axis)
Items axis: close to rate
Major_axis axis: 2009-03-01 06:29:59 to 2009-03-12 06:29:59
Minor_axis axis: AAPL to GS

Now I can do a time series operation and add it as a field in the Panel object:

pn['avg_close'] = pandas.rolling_mean(pn['close'], 5)
print pn

Out[93]: 
<class 'pandas.core.panel.Panel'>
Dimensions: 3 (items) x 12 (major_axis) x 3 (minor_axis)
Items axis: close to avg_close
Major_axis axis: 2009-03-01 06:29:59 to 2009-03-12 06:29:59
Minor_axis axis: AAPL to GS

print pn['avg_close']

Out[94]: 
ticker                   AAPL      GOOG        GS
2009-03-01 06:29:59       NaN       NaN       NaN
2009-03-02 06:29:59       NaN       NaN       NaN
2009-03-03 06:29:59       NaN       NaN       NaN
2009-03-04 06:29:59       NaN       NaN       NaN
2009-03-05 06:29:59  0.303719 -0.129300 -0.037954
2009-03-06 06:29:59 -0.006839  0.206331  0.336467
2009-03-07 06:29:59  0.128299  0.174935  0.698275
2009-03-08 06:29:59  0.471010 -0.137343  0.671049
2009-03-09 06:29:59 -0.279855 -0.033427  0.848610
2009-03-10 06:29:59 -0.516032  0.260944  0.373046
2009-03-11 06:29:59 -0.456213  0.164710  0.910448
2009-03-12 06:29:59 -0.799156  0.544132  0.862764

I am actually having some other problems with the Panel objects, but I will leave those to another post.

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