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I am trying to extract numbers from a column in a dataframe using re.search function to look for numeric characters then transform from "14 mins 16 secs" to 856 (seconds). and I want the output from re.search to be stored in a new column.

This is a subset of the current data frame. The column I want to change is named 'Time taken':

Data Frame

I am trying with re.search and currently it outputs the converted minutes seconds as seconds, but I am not able to store the output in a new column...

MS_REGEX = re.compile('^(\d+)\smins\s(\d+)\ssecs$')
M_REGEX = re.compile('^(\d+)\smins$')
MSEC_REGEX = re.compile('^(\d+)\smins\s(\d+)\ssec$')

def total_seconds(time_col):
        found = MS_REGEX.search(time_col)
        if found:
            return 60 * int(found.group(1)) + int(found.group(2))

        found = M_REGEX.search(time_col)
        if found:
            return 60 * int(found.group(1))


        found = MSEC_REGEX.search(time_col)
        if found:
            return 60 * int(found.group(1)) + int(found.group(2))


for elements in df['Time taken']:
     print(total_seconds(elements))

My output shows the new_column as NaN values...

Output

What I want is something like this: Desired Output

  • 1
    Why are you defining the same variable twice? Both MS_REGEX and MSEC_REGEX are the same. – Jack Moody Jan 13 at 9:09
  • hi, it is not the same, one pattern looks for x mins y secs/ the other looks for x mins y sec (it is missing an s at the end... that is why I created a new pattern) – Gerardo Zavala Jan 13 at 15:55
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Pandas already has a built-in method to parse a series of strings to a series of timedelta objects, pandas.to_timedelta.

However for this to work, you first need to slightly change your strings, so the automatic parser works. "mins" needs to be replaced with "min" and "secs" and "sec" with "s":

import pandas as pd

df = pd.DataFrame({"Time taken": ["14 mins 16 secs", "17 mins 54 secs", "18 mins", "18 mins 1 sec"]})
df["Time taken"] = df["Time taken"].str.replace("mins", "min").str.replace("secs|sec", "s")
df["time"] = pd.to_timedelta(df["Time taken"]).dt.total_seconds()
df
#     Time taken    time
# 0  14 min 16 s   856.0
# 1  17 min 54 s  1074.0
# 2       18 min  1080.0
# 3   18 min 1 s  1081.0
  • 1
    You should replace sec|secs with secs|sec, otherwise you get ss instead of s, and then to_timedelta will raise an exception. – Roland Smith Jan 13 at 10:15
  • @RolandSmith True, I made that change without trying it again, fixed. – Graipher Jan 13 at 10:20
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One of possible options is to extract sequences of digits into a temporary DataFrame:

tm = df['Time taken'].str.extract('(?P<mins>\d+)\D+(?P<secs>\d+)?')\
    .fillna(0).astype('int')

Note that column names are taken from capturing group names.

Fillna is required to change NaN values for missing seconds into zeroes. And finally astype is needed to override the default type of object (extracted sequences are strings).

Then you can set the time column using a numeric formula:

df['time'] = tm.mins * 60 + tm.secs

And finally you should delete the temporary DataFrame using del tm.

The advantage of my solution is that Time taken column is not changed.

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