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I have a data set that contains countries and statistics on economic indicators by year, organized like so:

Country  Metric           2011   2012   2013  2014
  USA     GDP               7      4     0      2
  USA     Pop.              2      3     0      3
  GB      GDP               8      7     0      7
  GB      Pop.              2      6     0      0
  FR      GDP               5      0     0      1
  FR      Pop.              1      1     0      5

How can I use MultiIndex in pandas to create a data frame that only shows GDP by Year for each country?

I tried:

df = data.groupby(['Country', 'Metric'])

but it didn't work properly.

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2 Answers 2

up vote 3 down vote accepted

In this case, you don't actually need a groupby. You also don't have a MultiIndex. You can make one like this:

import pandas
from io import StringIO

datastring = StringIO("""\
Country  Metric           2011   2012   2013  2014
USA     GDP               7      4     0      2
USA     Pop.              2      3     0      3
GB      GDP               8      7     0      7
GB      Pop.              2      6     0      0
FR      GDP               5      0     0      1
FR      Pop.              1      1     0      5
""")
data = pandas.read_table(datastring, sep='\s\s+')
data.set_index(['Country', 'Metric'], inplace=True)

Then data looks like this:

                2011  2012  2013  2014
Country Metric                        
USA     GDP        7     4     0     2
        Pop.       2     3     0     3
GB      GDP        8     7     0     7
        Pop.       2     6     0     0
FR      GDP        5     0     0     1
        Pop.       1     1     0     5

Now to get the GDPs, you can take a cross-section of the dataframe via the xs method:

data.xs('GDP', level='Metric')

         2011  2012  2013  2014
Country                        
USA         7     4     0     2
GB          8     7     0     7
FR          5     0     0     1

It's so easy because your data are already pivoted/unstacked. IF they weren't and looked like this:

data.columns.names = ['Year']
data = data.stack()
data

Country  Metric  Year
USA      GDP     2011    7
                 2012    4
                 2013    0
                 2014    2
         Pop.    2011    2
                 2012    3
                 2013    0
                 2014    3
GB       GDP     2011    8
                 2012    7
                 2013    0
                 2014    7
         Pop.    2011    2
                 2012    6
                 2013    0
                 2014    0
FR       GDP     2011    5
                 2012    0
                 2013    0
                 2014    1
         Pop.    2011    1
                 2012    1
                 2013    0
                 2014    5

You could then use groupby to tell you something about the world as a whole:

data.groupby(level=['Metric', 'Year']).sum()
Metric  Year
GDP     2011    20
        2012    11
        2013     0
        2014    10
Pop.    2011     5
        2012    10
        2013     0
        2014     8

Or get real fancy:

data.groupby(level=['Metric', 'Year']).sum().unstack(level='Metric')
Metric  GDP  Pop.
Year             
2011     20     5
2012     11    10
2013      0     0
2014     10     8
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Any reason why I would use the xs method instead of the solution above? –  Meepl Mar 6 at 16:50
    
@Barnaby Because your data don't need to be aggregated in any way. They're all unique values. For example, groupby would be appropriate for determining the sum of all GDPs, or the median population, etc. All you're looking for is values already available in the dataframe. –  Paul H Mar 6 at 16:53
    
Ahh, okay. That make sense, thank you. –  Meepl Mar 6 at 16:54
    
@Barnaby I added some grouby examples –  Paul H Mar 6 at 16:59
    
Thanks for extending, this is all very helpful. –  Meepl Mar 6 at 17:25

Is this what you are looking for:

df = df.groupby(['Metric'])
df.get_group('GDP')

   Country Metric  2011    2012    2013    2014
0    USA     GDP     7      4       0       2
2    GB      GDP     8      7       0       7
4    FR      GDP     5      0       0       1
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