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I have a DataFrame "df" with (time,ticker) Multiindex and bid/ask/etc data columns:

                          tod    last     bid      ask      volume
    time        ticker                  
    2013-02-01  SPY       1600   149.70   150.14   150.17   1300
                SLV       1600   30.44    30.38    30.43    3892
                GLD       1600   161.20   161.19   161.21   3860

I would like to select a second-level (level=1) cross section using multiple keys. Right now, I can do it using one key, i.e.

    df.xs('SPY', level=1)

which gives me a timeseries of SPY. What is the best way to select a multi-key cross section, i.e. a combined cross-section of both SPY and GLD, something like:

    df.xs(['SPY', 'GLD'], level=1)


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up vote 5 down vote accepted

Convert to a panel, then indexing is direct

In [20]: df = pd.DataFrame(dict(time = pd.Timestamp('20130102'), 
                                A = np.random.rand(3), 

In [21]: df
time       ticker          
2013-01-02 SPY     0.347209
           SLV     0.034832
           GLD     0.280951

In [22]: p = df.to_panel()

In [23]: p
<class 'pandas.core.panel.Panel'>
Dimensions: 1 (items) x 1 (major_axis) x 3 (minor_axis)
Items axis: A to A
Major_axis axis: 2013-01-02 00:00:00 to 2013-01-02 00:00:00
Minor_axis axis: GLD to SPY

In [24]: p.ix[:,:,['SPY','GLD']]
<class 'pandas.core.panel.Panel'>
Dimensions: 1 (items) x 1 (major_axis) x 2 (minor_axis)
Items axis: A to A
Major_axis axis: 2013-01-02 00:00:00 to 2013-01-02 00:00:00
Minor_axis axis: SPY to GLD
share|improve this answer

I couldn't find a more direct way other than using select:

>>> df

       last   tod
A SPY     1  1600
  SLV     2  1600
  GLD     3  1600

>>> df.select(lambda x: x[1] in ['SPY','GLD'])

       last   tod
A SPY     1  1600
  GLD     3  1600
share|improve this answer
Nice, this is probably the simplest way. I wonder if it is the most efficient though, as calling lambda for each row might be slow, but then again I'm not sure if there's a faster way in the current version – joe-ts Mar 19 '13 at 2:56
did u see panel solution above? select if very inefficient for any kind of non-trivial frame – Jeff Mar 19 '13 at 21:49
indeed panel makes more sense, and much faster. thanks! – joe-ts Mar 24 '13 at 20:33

For what it is worth, I did the following:

foo = pd.DataFrame(np.random.rand(12,3), 


This approach is similar to select, but avoids iterating over all rows with a lambda.

However, I compared this to the Panel approach, and it appears the Panel solution is faster (2.91 ms for index/loc vs 1.48 ms for to_panel/to_frame:



In [56]:
100 loops, best of 3: 2.91 ms per loop

In [57]:
foo2 = foo.reset_index()
foo2.loc[foo2.Color.eq('Green') | foo2.Color.eq('Red')].set_index(foo.index.names)
100 loops, best of 3: 2.85 ms per loop

In [58]:
foo2 = foo.reset_index()
100 loops, best of 3: 2.37 ms per loop

In [54]:
1000 loops, best of 3: 1.48 ms per loop
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There are better ways of doing this with more recent versions of Pandas:

regression_df.loc[(slice(None), ['SPY', 'GLD']), :]
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