0

This is a small example of the data I am working with:

df = pd.DataFrame({'EntryStreetName': ['Palm Avenue', NaN, 'Peachtree Street'],
    'ExitStreetName': [NaN, 'Palm Avenue', 'Mitchell Street'],
    'Path': ['Palm Avenue_NW_Mitchell Street', 'Mitchell Street_SE_Palm Avenue', 'Peachtree Street_NE_Mitchell Street']})

I am trying to extract the first part of Path to replace the NaN values in EntryStreetName.

I set up the below function (beginner here):

def empty_streets(data):
    for index, row in data.iterrows():
        if row['EntryStreetName'] == np.nan:
            row['EntryStreetName'] = re.match('[^_]*', row['Path'])
    return data

However it returns the following in the cells:

 <re.Match object; span=(0, 38), match='0      ...

Is there a tidier way to do this that will return a string?

1

Would it not be simpler to just split the string on underscore?

df['Path'].str.split('_', 1).str[0]

0         Palm Avenue
1     Mitchell Street
2    Peachtree Street
Name: Path, dtype: object

After this, use fillna for the final step of filling NaNs.

df['EntryStreetName'] = df['EntryStreetName'].fillna(
    df['Path'].str.split('_', 1).str[0]))
df

    EntryStreetName   ExitStreetName                                 Path
0       Palm Avenue              NaN       Palm Avenue_NW_Mitchell Street
1   Mitchell Street      Palm Avenue       Mitchell Street_SE_Palm Avenue
2  Peachtree Street  Mitchell Street  Peachtree Street_NE_Mitchell Street
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1

You are getting a Match object. It has methods that you can call to get the desired parts of it.

Check out .group, it returns a capture group. In regular expressions, the whole match is always group 0, and individual capture groups defined with ( ) are then group 1, 2, etc.

So, you can use .group(0):

row['EntryStreetName'] = re.match('[^_]*', row['Path']).group(0)
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