1

I am trying to clean a column:

df:
+-----+------------------+--------------------+--------------------+--------------+--------------+
|     | league           | home_team          | away_team          | home_score   | away_score   |
+=====+==================+====================+====================+==============+==============+
|   0 | Champions League | APOEL              | Qarabag            | 1            | 2            |
+-----+------------------+--------------------+--------------------+--------------+--------------+
|   1 | Champions League | FC Copenhagen      | TNS                | 1            | 0            |
+-----+------------------+--------------------+--------------------+--------------+--------------+
|   2 | Champions League | AIK                | Maribor            | 3            | 2 ET         |
+-----+------------------+--------------------+--------------------+--------------+--------------+

expected

df:
+-----+------------------+--------------------+--------------------+--------------+--------------+
|     | league           | home_team          | away_team          | home_score   | away_score   |
+=====+==================+====================+====================+==============+==============+
|   0 | Champions League | APOEL              | Qarabag            | 1            | 2            |
+-----+------------------+--------------------+--------------------+--------------+--------------+
|   1 | Champions League | FC Copenhagen      | TNS                | 1            | 0            |
+-----+------------------+--------------------+--------------------+--------------+--------------+
|   2 | Champions League | AIK                | Maribor            | 3            | 2            |
+-----+------------------+--------------------+--------------------+--------------+--------------+

I am trying

df['away_score'] = df['away_score'].astype(str).str.replace('(\s?\w+)$', '', regex=True)

(works on regex101 but not in pandas)

But all the data in column is being replaced.

+-----+------------------+--------------------+--------------------+--------------+--------------+
|     | league           | home_team          | away_team          | home_score   | away_score   |
+=====+==================+====================+====================+==============+==============+
|   0 | Champions League | APOEL              | Qarabag            | 1            |              |
+-----+------------------+--------------------+--------------------+--------------+--------------+
|   1 | Champions League | FC Copenhagen      | TNS                | 1            |              |
+-----+------------------+--------------------+--------------------+--------------+--------------+
|   2 | Champions League | AIK                | Maribor            | 3            | 2            |
+-----+------------------+--------------------+--------------------+--------------+--------------+

What should be the correct regex?

2 Answers 2

2

I tried this regex, and it worked.

df['away_score'] = df['away_score'].astype(str).str.replace('[a-zA-Z]', '', regex=True)
2
  • 1
    I dunno why I am getting downvoted?! Any help how I can ask questions?
    – PyNoob
    Commented Jun 14, 2021 at 4:32
  • Your solution leaves some spaces there, you can use df.to_dict() to check it. See my alternatively way to clean it completely below.
    – SeaBean
    Commented Jun 14, 2021 at 4:55
1

To clean up the text completely (including space), you should use:

df['away_score'] = df['away_score'].astype(str).str.replace('[a-zA-Z\s]', '', regex=True)

This way, you can also clean up the spaces before the alphabets, e.g. the space before ET in ET.

If you want to clean up not only text but also some non-digit including symbols (leaving only digits), you can use:

df['away_score'] = df['away_score'].astype(str).str.replace('\D', '', regex=True)

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