12

I need to create a Pandas DataFrame based on a text file based on the following structure:

Alabama[edit]
Auburn (Auburn University)[1]
Florence (University of North Alabama)
Jacksonville (Jacksonville State University)[2]
Livingston (University of West Alabama)[2]
Montevallo (University of Montevallo)[2]
Troy (Troy University)[2]
Tuscaloosa (University of Alabama, Stillman College, Shelton State)[3][4]
Tuskegee (Tuskegee University)[5]
Alaska[edit]
Fairbanks (University of Alaska Fairbanks)[2]
Arizona[edit]
Flagstaff (Northern Arizona University)[6]
Tempe (Arizona State University)
Tucson (University of Arizona)
Arkansas[edit]

The rows with "[edit]" are States and the rows [number] are Regions. I need to split the following and repeat the State name for each Region Name thereafter.

Index          State          Region Name
0              Alabama        Aurburn...
1              Alabama        Florence...
2              Alabama        Jacksonville...
...
9              Alaska         Fairbanks...
10             Alaska         Arizona...
11             Alaska         Flagstaff...

Pandas DataFrame

I not sure how to split the text file based on "[edit]" and "[number]" or "(characters)" into the respective columns and repeat the State Name for each Region Name. Please can anyone give me a starting point to begin with to accomplish the following.

13
1

You can first read_csv with parameter name for create DataFrame with column Region Name, separator is value which is NOT in values (like ;):

df = pd.read_csv('filename.txt', sep=";", names=['Region Name'])

Then insert new column State with extract rows where text [edit] and replace all values from ( to the end to column Region Name.

df.insert(0, 'State', df['Region Name'].str.extract('(.*)\[edit\]', expand=False).ffill())
df['Region Name'] = df['Region Name'].str.replace(r' \(.+$', '')

Last remove rows where text [edit] by boolean indexing, mask is created by str.contains:

df = df[~df['Region Name'].str.contains('\[edit\]')].reset_index(drop=True)
print (df)
      State   Region Name
0   Alabama        Auburn
1   Alabama      Florence
2   Alabama  Jacksonville
3   Alabama    Livingston
4   Alabama    Montevallo
5   Alabama          Troy
6   Alabama    Tuscaloosa
7   Alabama      Tuskegee
8    Alaska     Fairbanks
9   Arizona     Flagstaff
10  Arizona         Tempe
11  Arizona        Tucson

If need all values solution is easier:

df = pd.read_csv('filename.txt', sep=";", names=['Region Name'])
df.insert(0, 'State', df['Region Name'].str.extract('(.*)\[edit\]', expand=False).ffill())
df = df[~df['Region Name'].str.contains('\[edit\]')].reset_index(drop=True)
print (df)
      State                                        Region Name
0   Alabama                      Auburn (Auburn University)[1]
1   Alabama             Florence (University of North Alabama)
2   Alabama    Jacksonville (Jacksonville State University)[2]
3   Alabama         Livingston (University of West Alabama)[2]
4   Alabama           Montevallo (University of Montevallo)[2]
5   Alabama                          Troy (Troy University)[2]
6   Alabama  Tuscaloosa (University of Alabama, Stillman Co...
7   Alabama                  Tuskegee (Tuskegee University)[5]
8    Alaska      Fairbanks (University of Alaska Fairbanks)[2]
9   Arizona         Flagstaff (Northern Arizona University)[6]
10  Arizona                   Tempe (Arizona State University)
11  Arizona                     Tucson (University of Arizona)
| improve this answer | |
7
0

You could parse the file into tuples first:

import pandas as pd
from collections import namedtuple

Item = namedtuple('Item', 'state area')
items = []

with open('unis.txt') as f: 
    for line in f:
        l = line.rstrip('\n') 
        if l.endswith('[edit]'):
            state = l.rstrip('[edit]')
        else:            
            i = l.index(' (')
            area = l[:i]
            items.append(Item(state, area))

df = pd.DataFrame.from_records(items, columns=['State', 'Area'])

print df

output:

      State          Area
0   Alabama        Auburn
1   Alabama      Florence
2   Alabama  Jacksonville
3   Alabama    Livingston
4   Alabama    Montevallo
5   Alabama          Troy
6   Alabama    Tuscaloosa
7   Alabama      Tuskegee
8    Alaska     Fairbanks
9   Arizona     Flagstaff
10  Arizona         Tempe
11  Arizona        Tucson
| improve this answer | |
4
0

Assuming you have the following DF:

In [73]: df
Out[73]:
                                                 text
0                                       Alabama[edit]
1                       Auburn (Auburn University)[1]
2              Florence (University of North Alabama)
3     Jacksonville (Jacksonville State University)[2]
4          Livingston (University of West Alabama)[2]
5            Montevallo (University of Montevallo)[2]
6                           Troy (Troy University)[2]
7   Tuscaloosa (University of Alabama, Stillman Co...
8                   Tuskegee (Tuskegee University)[5]
9                                        Alaska[edit]
10      Fairbanks (University of Alaska Fairbanks)[2]
11                                      Arizona[edit]
12         Flagstaff (Northern Arizona University)[6]
13                   Tempe (Arizona State University)
14                     Tucson (University of Arizona)
15                                     Arkansas[edit]

you can use Series.str.extract() method:

In [117]: df['State'] = df.loc[df.text.str.contains('[edit]', regex=False), 'text'].str.extract(r'(.*?)\[edit\]', expand=False)

In [118]: df['Region Name'] = df.loc[df.State.isnull(), 'text'].str.extract(r'(.*?)\s*[\(\[]+.*[\n]*', expand=False)

In [120]: df.State = df.State.ffill()

In [121]: df
Out[121]:
                                                 text     State   Region Name
0                                       Alabama[edit]   Alabama           NaN
1                       Auburn (Auburn University)[1]   Alabama        Auburn
2              Florence (University of North Alabama)   Alabama      Florence
3     Jacksonville (Jacksonville State University)[2]   Alabama  Jacksonville
4          Livingston (University of West Alabama)[2]   Alabama    Livingston
5            Montevallo (University of Montevallo)[2]   Alabama    Montevallo
6                           Troy (Troy University)[2]   Alabama          Troy
7   Tuscaloosa (University of Alabama, Stillman Co...   Alabama    Tuscaloosa
8                   Tuskegee (Tuskegee University)[5]   Alabama      Tuskegee
9                                        Alaska[edit]    Alaska           NaN
10      Fairbanks (University of Alaska Fairbanks)[2]    Alaska     Fairbanks
11                                      Arizona[edit]   Arizona           NaN
12         Flagstaff (Northern Arizona University)[6]   Arizona     Flagstaff
13                   Tempe (Arizona State University)   Arizona         Tempe
14                     Tucson (University of Arizona)   Arizona        Tucson
15                                     Arkansas[edit]  Arkansas           NaN

In [122]: df = df.dropna()

In [123]: df
Out[123]:
                                                 text    State   Region Name
1                       Auburn (Auburn University)[1]  Alabama        Auburn
2              Florence (University of North Alabama)  Alabama      Florence
3     Jacksonville (Jacksonville State University)[2]  Alabama  Jacksonville
4          Livingston (University of West Alabama)[2]  Alabama    Livingston
5            Montevallo (University of Montevallo)[2]  Alabama    Montevallo
6                           Troy (Troy University)[2]  Alabama          Troy
7   Tuscaloosa (University of Alabama, Stillman Co...  Alabama    Tuscaloosa
8                   Tuskegee (Tuskegee University)[5]  Alabama      Tuskegee
10      Fairbanks (University of Alaska Fairbanks)[2]   Alaska     Fairbanks
12         Flagstaff (Northern Arizona University)[6]  Arizona     Flagstaff
13                   Tempe (Arizona State University)  Arizona         Tempe
14                     Tucson (University of Arizona)  Arizona        Tucson
| improve this answer | |
2
0

TL;DR
s.groupby(s.str.extract('(?P<State>.*?)\[edit\]', expand=False).ffill()).apply(pd.Series.tail, n=-1).reset_index(name='Region_Name').iloc[:, [0, 2]]


regex = '(?P<State>.*?)\[edit\]'  # pattern to match
print(s.groupby(
    # will get nulls where we don't have "[edit]"
    # forward fill fills in the most recent line
    # where we did have an "[edit]"
    s.str.extract(regex, expand=False).ffill()  
).apply(
    # I still have all the original values
    # If I group by the forward filled rows
    # I'll want to drop the first one within each group
    pd.Series.tail, n=-1
).reset_index(
    # munge the dataframe to get columns sorted
    name='Region_Name'
)[['State', 'Region_Name']])

      State                                        Region_Name
0   Alabama                      Auburn (Auburn University)[1]
1   Alabama             Florence (University of North Alabama)
2   Alabama    Jacksonville (Jacksonville State University)[2]
3   Alabama         Livingston (University of West Alabama)[2]
4   Alabama           Montevallo (University of Montevallo)[2]
5   Alabama                          Troy (Troy University)[2]
6   Alabama  Tuscaloosa (University of Alabama, Stillman Co...
7   Alabama                  Tuskegee (Tuskegee University)[5]
8    Alaska      Fairbanks (University of Alaska Fairbanks)[2]
9   Arizona         Flagstaff (Northern Arizona University)[6]
10  Arizona                   Tempe (Arizona State University)
11  Arizona                     Tucson (University of Arizona)

setup

txt = """Alabama[edit]
Auburn (Auburn University)[1]
Florence (University of North Alabama)
Jacksonville (Jacksonville State University)[2]
Livingston (University of West Alabama)[2]
Montevallo (University of Montevallo)[2]
Troy (Troy University)[2]
Tuscaloosa (University of Alabama, Stillman College, Shelton State)[3][4]
Tuskegee (Tuskegee University)[5]
Alaska[edit]
Fairbanks (University of Alaska Fairbanks)[2]
Arizona[edit]
Flagstaff (Northern Arizona University)[6]
Tempe (Arizona State University)
Tucson (University of Arizona)
Arkansas[edit]"""

s = pd.read_csv(StringIO(txt), sep='|', header=None, squeeze=True)
| improve this answer | |
0
0

You will probably need to perform some additional manipulation on the file before getting it into a dataframe.

A starting point would be to split the file into lines, search for the string [edit] in each line, put the string name as the key of a dictionary when it is there...

I do not think that Pandas has any built in methods that would handle a file in this format.

| improve this answer | |

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