I need to process a huge amount of CSV files where the time stamp is always a string representing the unix timestamp in milliseconds. I could not find a method yet to modify these columns efficiently.
This is what I came up with, however this of course duplicates only the column and I have to somehow put it back to the original dataset. I'm sure it can be done when creating the
import sys if sys.version_info < 3: from StringIO import StringIO else: from io import StringIO import pandas as pd data = 'RUN,UNIXTIME,VALUE\n1,1447160702320,10\n2,1447160702364,20\n3,1447160722364,42' df = pd.read_csv(StringIO(data)) convert = lambda x: datetime.datetime.fromtimestamp(x / 1e3) converted_df = df['UNIXTIME'].apply(convert)
This will pick the column 'UNIXTIME' and change it from
0 1447160702320 1 1447160702364 2 1447160722364 Name: UNIXTIME, dtype: int64
0 2015-11-10 14:05:02.320 1 2015-11-10 14:05:02.364 2 2015-11-10 14:05:22.364 Name: UNIXTIME, dtype: datetime64[ns]
However, I would like to use something like
pd.apply() to get the whole dataset returned with the converted column or as I already wrote, simply create datetimes when generating the DataFrame from CSV.