# selecting data from pandas panel with MultiIndex

I have a DataFrame with MultiIndex, for example:

``````In [1]: arrays = [['one,'one','one','two','two','two'],[1,2,3,1,2,3]]
In [2]: df = DataFrame(randn(6,2),index=MultiIndex.from_tuples(zip(*arrays)),columns=['A','B'])
In [3]: df
Out [3]:
A         B
one 1 -2.028736 -0.466668
2 -1.877478  0.179211
3  0.886038  0.679528
two 1  1.101735  0.169177
2  0.756676 -1.043739
3  1.189944  1.342415
``````

Now I want to compute the means of elements 2 and 3 (index level 1) for each row (index level 0) and each column. So I need a DataFrame which would look like

``````                                 A                            B
one 1 mean(df['A'].ix['one'][1:3])  mean(df['B'].ix['one'][1:3])
two 1 mean(df['A'].ix['two'][1:3])  mean(df['B'].ix['two'][1:3])
``````

How do I do that without using loops over rows (index level 0) of the original data frame? What if I want to do the same for a Panel? There must be a simple solution with groupby, but I'm still learning it and can't think of an answer.

Thank you!

-

You can use the xs function to select on levels.

Starting with:

``````              A         B
one 1 -2.712137 -0.131805
2 -0.390227 -1.333230
3  0.047128  0.438284
two 1  0.055254 -1.434262
2  2.392265 -1.474072
3 -1.058256 -0.572943
``````

You can then create a new dataframe using:

``````DataFrame({'one':df.xs('one',level=0)[1:3].apply(np.mean), 'two':df.xs('two',level=0)[1:3].apply(np.mean)}).transpose()
``````

which gives the result:

``````            A         B
one -0.171549 -0.447473
two  0.667005 -1.023508
``````

To do the same without specifying the items in the level, you can use groupby:

``````grouped = df.groupby(level=0)
d = {}

for g in grouped:
d[g[0]] = g[1][1:3].apply(np.mean)

DataFrame(d).transpose()
``````

I'm not sure about panels - it's not as well documented, but something similar should be possible

-
John, your solution is very helpful. Although, I would still have to iterate over all rows in level 0 one by one. –  Eugene Redekop Jul 30 '12 at 13:43
Sorry, just re-read the question, added groupby solution –  Matti John Jul 30 '12 at 13:51

I know this is an old question, but for reference who searches and finds this page, the easier solution I think is the `level` keyword in `mean`:

``````In [4]: arrays = [['one','one','one','two','two','two'],[1,2,3,1,2,3]]

In [5]: df = pd.DataFrame(np.random.randn(6,2),index=pd.MultiIndex.from_tuples(z
ip(*arrays)),columns=['A','B'])

In [6]: df
Out[6]:
A         B
one 1 -0.472890  2.297778
2 -2.002773 -0.114489
3 -1.337794 -1.464213
two 1  1.964838 -0.623666
2  0.838388  0.229361
3  1.735198  0.170260

In [7]: df.mean(level=0)
Out[7]:
A         B
one -1.271152  0.239692
two  1.512808 -0.074682
``````

In this case it means that level 0 is kept over axis 0 (the rows, default value for `mean`)

-

Do the following:

``````# Specify the indices you want to work with.
idxs = [("one", elem) for elem in [2,3]] + [("two", elem) for elem in [2,3]]

# Compute grouped mean over only those indices.
df.ix[idxs].mean(level=0)
``````
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