I have two apply functions on a dataframe, I do this all in a loop where I continue to shift the start and end time of each row back to satisfy some suitability, then retest the suitabiltiy of each row with a new apply operation. The strangest thing is that each time I perform the third apply, somefunc gets the original, unchanged values from each row, not the updated ones from the previous two apply operations! However, if I print the dataframe directly before the final apply, it will show my the updated times. Any idea what I'm missing here? How can an apply on the updated cur_day dataframe show the original times, when printing cur_day directly before shows them updated?

cur_day.loc[cur_day['start_time'] >= start,'start_time'] = cur_day[cur_day['start_time'] >= start].apply(lambda row: row['start_time'] + timedelta(seconds=duration), axis=1)
cur_day.loc[cur_day['start_time'] >= start,'end_time'] = cur_day[cur_day['start_time'] >= start].apply(lambda row: row['end_time'] + timedelta(seconds=duration), axis=1)

print(cur_day['start_time']) #this prints the column and shows the changed times!

cur_day['unsuitable'] = cur_day.apply(lambda row:  somefunc(row), axis=1)

def somefunc(row)
    print(row['start_time'])# this prints the old starting value!!!
    return 1 #or zero based on the actual function which isnt described here
  • Can you try to make a copy of a dataframe after you use the first apply function. If that does not work, can you show an random dataset illustrating your problem?
    – Jeroen
    Jun 29 at 8:45


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