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I have a data frame with one column and i'd like to split it into two columns, with one column header as 'fips' and the other 'row'

My datFrame df looks like this currently

          row
0    00000 UNITED STATES
1    01000 ALABAMA
2    01001 Autauga County, AL
3    01003 Baldwin County, AL
4    01005 Barbour County, AL

I am new to python and do not understand how using df.row.str[:] would help me achieve my goal of splitting the row cell. I can use df['fips'] = hello to add a new column and populate it with hello. Any ideas?

         fips       row
0    00000 UNITED STATES
1    01000 ALABAMA 
2    01001 Autauga County, AL
3    01003 Baldwin County, AL
4    01005 Barbour County, AL
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how did you load your data into pandas? You might be able to laod the data in your desired format using read_table() or read_fwf() –  zach Feb 7 '13 at 23:29

2 Answers 2

up vote 7 down vote accepted

There might be a better way, but this here's one approach:

In [34]: import pandas as pd

In [35]: df
Out[35]: 
                        row
0       00000 UNITED STATES
1             01000 ALABAMA
2  01001 Autauga County, AL
3  01003 Baldwin County, AL
4  01005 Barbour County, AL

In [36]: df = pd.DataFrame(df.row.str.split(' ',1).tolist(),
                                   columns = ['flips','row'])

In [37]: df
Out[37]: 
   flips                 row
0  00000       UNITED STATES
1  01000             ALABAMA
2  01001  Autauga County, AL
3  01003  Baldwin County, AL
4  01005  Barbour County, AL
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Thank you!!! This is exactly what i was looking for. It worked!! –  a k Feb 7 '13 at 8:18
1  
Be aware that .tolist() will remove any indexes you had, so your new Dataframe will be reindexed from 0 (It doesn't matter in your specific case). –  Crashthatch Mar 27 '13 at 14:59
3  
@Crashthatch -- then again you can just add index = df.index and you are good. –  root Mar 27 '13 at 15:07

You can extract the different parts out quite neatly using a regex pattern:

In [11]: df.row.str.extract('(?P<fips>\d{5})((?P<state>[A-Z ]*$)|(?P<county>.*?), (?P<state_code>[A-Z]{2}$))')
Out[11]: 
    fips                    1           state           county state_code
0  00000        UNITED STATES   UNITED STATES              NaN        NaN
1  01000              ALABAMA         ALABAMA              NaN        NaN
2  01001   Autauga County, AL             NaN   Autauga County         AL
3  01003   Baldwin County, AL             NaN   Baldwin County         AL
4  01005   Barbour County, AL             NaN   Barbour County         AL

[5 rows x 5 columns]

the regex may need a little tweaking...

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