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I'm trying to use Python to loop through a dataframe column which is formatted as follows:

Town 1, AL, USA
Town 2, AL, USA
Town 3, AK, USA
Town 4, CA, USA
Town 5, DE, USA
Town 6, MI, USA

I have been trying to work with the split() method both with the original dataframe (which includes crime description and URL columns) and the column on its own, both as a dataframe and Series object. Neither of those objects have method split() available to them.

The desired output will be another column of just the STATE abbreviation, so I understand that I am trying to find an equivalent of a df.split(', ') and to append the second [1] index from that split for a Series or dataframe. (If I am mistaken, please correct me).

How would I go about doing this?

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4 Answers 4

up vote 5 down vote accepted

You can use vectorized string methods, e.g. df["col"].str.split(", ").str[1]:

>>> df
               col
0  Town 1, AL, USA
1  Town 2, AL, USA
2  Town 3, AK, USA
3  Town 4, CA, USA
4  Town 5, DE, USA
5  Town 6, MI, USA
>>> df["col"].str.split(", ")
0    [Town 1, AL, USA]
1    [Town 2, AL, USA]
2    [Town 3, AK, USA]
3    [Town 4, CA, USA]
4    [Town 5, DE, USA]
5    [Town 6, MI, USA]
Name: col, dtype: object
>>> df["col"].str.split(", ").str[1]
0    AL
1    AL
2    AK
3    CA
4    DE
5    MI
Name: col, dtype: object
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Use .apply() to execute some function on every element in column

import pandas as pd

data=[
    'Town 1, AL, USA',
    'Town 2, AL, USA',
    'Town 3, AK, USA',
    'Town 4, CA, USA',
    'Town 5, DE, USA',
    'Town 6, MI, USA',
]

df = pd.DataFrame( data )

print df

df['state'] = df[0].apply(lambda x: x.split(',')[1])

print df

result

                 0
0  Town 1, AL, USA
1  Town 2, AL, USA
2  Town 3, AK, USA
3  Town 4, CA, USA
4  Town 5, DE, USA
5  Town 6, MI, USA

                 0 state
0  Town 1, AL, USA    AL
1  Town 2, AL, USA    AL
2  Town 3, AK, USA    AK
3  Town 4, CA, USA    CA
4  Town 5, DE, USA    DE
5  Town 6, MI, USA    MI

EDIT:

BTW: I search on internet pandas split column to new columns and you can even split it to 3 new columns this way:

def split_more(x):
    return pd.Series( x.split(',') )

df[ ['town', 'state','country'] ] = df[0].apply(split_more)

print df

result:

                 0    town state country
0  Town 1, AL, USA  Town 1    AL     USA
1  Town 2, AL, USA  Town 2    AL     USA
2  Town 3, AK, USA  Town 3    AK     USA
3  Town 4, CA, USA  Town 4    CA     USA
4  Town 5, DE, USA  Town 5    DE     USA
5  Town 6, MI, USA  Town 6    MI     USA
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can you point me to doc on what exactly the 'lambda' piece is doing? –  Canuckish Aug 9 at 22:35

Series have string methods which are accessible through their str attribute. For example, you could use df['addr'].str.extract:

In [34]: df = pd.read_table('data', sep='-', header=None, names=['addr'])

In [35]: df
Out[35]: 
              addr
0  Town 1, AL, USA
1  Town 2, AL, USA
2  Town 3, AK, USA
3  Town 4, CA, USA
4  Town 5, DE, USA
5  Town 6, MI, USA

In [36]: df[['Town', 'State', 'Country']] = df['addr'].str.extract(r'([^,]+),([^,]+),([^,]+)')

In [38]: del df['addr']

yields

In [39]: df
Out[39]: 
     Town State Country
0  Town 1    AL     USA
1  Town 2    AL     USA
2  Town 3    AK     USA
3  Town 4    CA     USA
4  Town 5    DE     USA
5  Town 6    MI     USA
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Great response. Initially I thought I would only want to retain the State abbr (I am trying to build a chloropleth) but using this method will allow me to drill down to a better level of detail, if and when I do that. –  Canuckish Jul 20 at 19:10

On the basis of comparing different methods with %timeit, I've found when working with strings in columns, list comprehensions are typically the winner.

In [1]: %paste 
import pandas as pd

data=[
    'Town 1, AL, USA',
    'Town 2, AL, USA',
    'Town 3, AK, USA',
    'Town 4, CA, USA',
    'Town 5, DE, USA',
    'Town 6, MI, USA',
]

df = pd.DataFrame(data)
df

## -- End pasted text --
Out[1]: 
                 0
0  Town 1, AL, USA
1  Town 2, AL, USA
2  Town 3, AK, USA
3  Town 4, CA, USA
4  Town 5, DE, USA
5  Town 6, MI, USA

%timeit tests:

In [2]: %timeit df['state'] = [x.split(',')[1] for x in df[0]]
1000 loops, best of 3: 350 µs per loop

In [3]: %timeit df['state'] = df[0].apply(lambda x: x.split(',')[1])
1000 loops, best of 3: 671 µs per loop

In [4]: %timeit df['state'] = df[0].str.split(", ").str[1]
100 loops, best of 3: 1.1 ms per loop
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