I read a csv file containing 150,000 lines into a pandas dataframe. This dataframe has a field, 'Date', with the dates in yyyy-mm-dd format. I want to extract the month, day and year from it and copy into the dataframes' columns, 'Month', 'Day' and 'Year' respectively. For a few hundred records the below two methods work ok, but for 150,000 records both take a ridiculously long time to execute. Is there a faster way to do this for 100,000+ records?
df = pandas.read_csv(filename) for i in xrange(len(df)): df.loc[i,'Day'] = int(df.loc[i,'Date'].split('-'))
df = pandas.read_csv(filename) for i in xrange(len(df)): df.loc[i,'Day'] = datetime.strptime(df.loc[i,'Date'], '%Y-%m-%d').day