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What is the easiest way to create a DataFrame with hierarchical columns?

I am currently creating a DataFrame from a dict of names -> Series using:

df = pd.DataFrame(data=serieses)

I would like to use the same columns names but add an additional level of hierarchy on the columns. For the time being I want the additional level to have the same value for columns, let's say "Estimates".

I am trying the following but that does not seem to work:

pd.DataFrame(data=serieses,columns=pd.MultiIndex.from_tuples([(x, "Estimates") for x in serieses.keys()]))

All I get is a DataFrame with all NaNs.

For example, what I am looking for is roughly:

l1               Estimates    
l2  one  two  one  two  one  two  one  two
r1   1    2    3    4    5    6    7    8
r2   1.1  2    3    4    5    6    71   8.2

where l1 and l2 are the labels for the MultiIndex

share|improve this question
up vote 4 down vote accepted

This appears to work:

import pandas as pd

data = {'a': [1,2,3,4], 'b': [10,20,30,40],'c': [100,200,300,400]}

df = pd.concat({"Estimates": pd.DataFrame(data)}, axis=1, names=["l1", "l2"])

l1  Estimates         
l2          a   b    c
0           1  10  100
1           2  20  200
2           3  30  300
3           4  40  400
share|improve this answer
Thats very readable, i like it. Ultimately it might be best for Pandas to have better 'level' management, like a simple df.add_level(axis=1). – Rutger Kassies Aug 2 '13 at 6:28

Im not sure but i think the use of a dict as input for your DF and a MulitIndex dont play well together. Using an array as input instead makes it work.

I often prefer dicts as input though, one way is to set the columns after creating the df:

import pandas as pd

data = {'a': [1,2,3,4], 'b': [10,20,30,40],'c': [100,200,300,400]}
df = pd.DataFrame(np.array(data.values()).T, index=['r1','r2','r3','r4'])

tups = zip(*[['Estimates']*len(data),data.keys()])

df.columns = pd.MultiIndex.from_tuples(tups, names=['l1','l2'])

l1          Estimates         
l2          a   c    b
r1          1  10  100
r2          2  20  200
r3          3  30  300
r4          4  40  400

Or when using an array as input for the df:

data_arr = np.array([[1,2,3,4],[10,20,30,40],[100,200,300,400]])

tups = zip(*[['Estimates']*data_arr.shape[0],['a','b','c'])
df = pd.DataFrame(data_arr.T, index=['r1','r2','r3','r4'], columns=pd.MultiIndex.from_tuples(tups, names=['l1','l2']))

Which gives the same result.

share|improve this answer
Is there a risk that the column ordering will be messed up in the dict example? In other words when Pandas makes the DataFrame from a dict, it must pull the keys/values out of the dict which will happen in arbitrary order. I think you assume the same order in the up/list comprehension statement. This seems long term unsafe. I believe that when the columns keyword is set in DataFrame construction, Pandas attemtps to ensure some sort of alignment. – Alex Rothberg Aug 1 '13 at 12:10
Good point, you want to avoid that indeed. Using np.array(data.values()).T together with data.keys() should be fine i guess. – Rutger Kassies Aug 1 '13 at 12:50
According to docs,, that new proposal does in fact seem safe. – Alex Rothberg Aug 1 '13 at 13:19
Is there any concern with calling transpose? For example. are there any cases in which dtypes gets messed up? – Alex Rothberg Aug 1 '13 at 13:21
Do you think that it would make sense to allow creating this by creating a DataFrame of DataFrames? For example: pd.DataFrame({"Extimates":pd.DataFrame(data)}) ? – Alex Rothberg Aug 1 '13 at 23:43

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