Questions are at the end, in bold. But first, let's set up some data:

import numpy as np
import pandas as pd
from itertools import product


team_names = ['Yankees', 'Mets', 'Dodgers']
jersey_numbers = [35, 71, 84]
game_numbers = [1, 2]
observer_names = ['Bill', 'John', 'Ralph']
observation_types = ['Speed', 'Strength']

row_indices = list(product(team_names, jersey_numbers, game_numbers, observer_names, observation_types))
observation_values = np.random.randn(len(row_indices))

tns, jns, gns, ons, ots = zip(*row_indices)

data = pd.DataFrame({'team': tns, 'jersey': jns, 'game': gns, 'observer': ons, 'obstype': ots, 'value': observation_values})

data = data.set_index(['team', 'jersey', 'game', 'observer', 'obstype'])
data = data.unstack(['observer', 'obstype'])
data.columns = data.columns.droplevel(0)

this gives: data

I want to pluck out a subset of this DataFrame for subsequent analysis. Say I wanted to slice out the rows where the jersey number is 71. I don't really like the idea of using xs to do this. When you do a cross section via xs you lose the column you selected on. If I run:

data.xs(71, axis=0, level='jersey')

then I get back the right rows, but I lose the jersey column.


Also, xs doesn't seem like a great solution for the case where I want a few different values from the jersey column. I think a much nicer solution is the one found here:

data[[j in [71, 84] for t, j, g in data.index]]


You could even filter on a combination of jerseys and teams:

data[[j in [71, 84] and t in ['Dodgers', 'Mets'] for t, j, g in data.index]]



So the question: how can I do something similar for selecting a subset of columns. For example, say I want only the columns representing data from Ralph. How can I do that without using xs? Or what if I wanted only the columns with observer in ['John', 'Ralph']? Again, I'd really prefer a solution that keeps all the levels of the row and column indices in the result...just like the boolean indexing examples above.

I can do what I want, and even combine selections from both the row and column indices. But the only solution I've found involves some real gymnastics:

data[[j in [71, 84] and t in ['Dodgers', 'Mets'] for t, j, g in data.index]]\
    .T[[obs in ['John', 'Ralph'] for obs, obstype in data.columns]].T


And thus the second question: is there a more compact way to do what I just did above?

  • great methods, but what is your question?
    – MattDMo
    Dec 24, 2013 at 4:15
  • @MattDMo I've bolded the specific questions above. More generally: I think I've shown some powerful but syntactically ugly recipes above. I was hopeful that there would be a more direct way to accomplish what I did up there. Specifically, I am looking for a method that will restrict the rows based on the values in one or more of the row indices and simultaneously restrict the columns based on the values in one or more of the column indices. Very much hoping someone can suggest a more natural approach.
    – 8one6
    Dec 24, 2013 at 4:24
  • 2
    Interesting question. For the one-element filter case, you can pass drop_level=False to avoid losing the Jersey column. And note that instead of the transpositions, you could write data.loc[[j in [71, 84] and t in ['Dodgers', 'Mets'] for t, j, g in data.index], [obs in ['John', 'Ralph'] for obs, obstype in data.columns]].
    – DSM
    Dec 24, 2013 at 5:48
  • @DSM That's also fastest solution so far (just), though loc seems slow here... Seems like this could be good feature request. Dec 24, 2013 at 5:54
  • 1
    @AndyHayden: I wouldn't mind something like df.fx(rows={"jersey": [71], "team": ["Dodgers", "Mets"]}, columns={"observer": ["John", "Ralph"]}) which basically did what's desired here.
    – DSM
    Dec 24, 2013 at 6:01

4 Answers 4


As of Pandas 0.18 (possibly earlier) you can easily slice multi-indexed DataFrames using pd.IndexSlice.

For your specific question, you can use the following to select by team, jersey, and game:

data.loc[pd.IndexSlice[:,[71, 84],:],:] #IndexSlice on the rows

IndexSlice needs just enough level information to be unambiguous so you can drop the trailing colon:

data.loc[pd.IndexSlice[:,[71, 84]],:]

Likewise, you can IndexSlice on columns:

data.loc[pd.IndexSlice[:,[71, 84]],pd.IndexSlice[['John', 'Ralph']]]

Which gives you the final DataFrame in your question.


Here is one approach that uses slightly more built-in-feeling syntax. But it's still clunky as hell:

    (data.index.get_level_values('jersey').isin([71, 84])
     & data.index.get_level_values('team').isin(['Dodgers', 'Mets'])), 
    data.columns.get_level_values('observer').isin(['John', 'Ralph'])

So comparing:

def hackedsyntax():
    return data[[j in [71, 84] and t in ['Dodgers', 'Mets'] for t, j, g in data.index]]\
    .T[[obs in ['John', 'Ralph'] for obs, obstype in data.columns]].T

def uglybuiltinsyntax():
    return data.loc[
        (data.index.get_level_values('jersey').isin([71, 84])
         & data.index.get_level_values('team').isin(['Dodgers', 'Mets'])), 
        data.columns.get_level_values('observer').isin(['John', 'Ralph'])

%timeit hackedsyntax()
%timeit uglybuiltinsyntax()

hackedsyntax() - uglybuiltinsyntax()


1000 loops, best of 3: 395 µs per loop
1000 loops, best of 3: 409 µs per loop


Still hopeful there's a cleaner or more canonical way to do this.


Note: Since Pandas v0.20, ix accessor has been deprecated; use loc or iloc instead as appropriate.

If I've understood the question correctly, it's pretty simple:

To get the column for Ralph:


to get it for two of them, pass in a list:


The ix operator is the power indexing operator. Remember that the first argument is rows, and then columns (as opposed to data[..][..] which is the other way around). The colon acts as a wildcard, so it returns all the rows in axis=0.

In general, to do a look up in a MultiIndex, you should pass in a tuple. e.g.


But if you just pass in a single element, it will treat this as if you're passing in the first element of the tuple and then a wildcard.

Where it gets tricky is if you want to access columns that are not level 0 indices. For example, get all the columns for "speed". Then you'd need to get a bit more creative.. Use the get_level_values method of index/column in combination with boolean indexing:

For example, this gets jersey 71 in the rows, and strength in the columns:

data.ix[data.index.get_level_values("jersey") == 71 , \
        data.columns.get_level_values("obstype") == "Strength"]
  • Yes. I am explicitly asking about how to handle filtering based on the non-leading entry in a multi-index.
    – 8one6
    Dec 24, 2013 at 22:20
  • I updated the answer in response to your comment. But note the examples you gave in your question were all for level-0 indices. i.e. you can have multi-indices both in the column axis as well as the row axis. In your example, Jack is level 0 of the column multi index. Just noticed, it is in fact almost the same as in the answer below.
    – Luciano
    Dec 25, 2013 at 11:41

Note that from what I understand, select is slow. But another approach here would be:

data.select(lambda col: col[0] in ['John', 'Ralph'], axis=1)

you can also chain this with a selection against the rows:

data.select(lambda col: col[0] in ['John', 'Ralph'], axis=1) \
    .select(lambda row: row[1] in [71, 84] and row[2] > 1, axis=0)

The big drawback here is that you have to know the index level number.

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