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 DataFrame?

import sys
if sys.version_info[0] < 3:
    from StringIO import StringIO
    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

into this

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.

4 Answers 4


You can do this as a post processing step using to_datetime and passing arg unit='ms':

In [5]:
df['UNIXTIME'] = pd.to_datetime(df['UNIXTIME'], unit='ms')

   RUN                UNIXTIME  VALUE
0    1 2015-11-10 13:05:02.320     10
1    2 2015-11-10 13:05:02.364     20
2    3 2015-11-10 13:05:22.364     42
  • 1
    Ah, I completely missed that unit parameter, thanks, that's a nice one! I'll make a pull request to include that in .read_csv too via parse_dates.
    – tamasgal
    Jan 20, 2016 at 6:09
  • This may lead to the wrong time because of timezone issue. Jul 17, 2017 at 12:19
  • @PengjuZhao the OP's question makes no mention of timezone, for that Teudimundo's answer solves that
    – EdChum
    Jul 17, 2017 at 12:20
  • One suggestion is that maybe you can try to add Teudimundo's answer to your answer. It will be useful for newbie like me. Jul 18, 2017 at 0:57
  • @PengjuZhao it's bad practice to cannibalise other users' answers, something I don't do but some others do. I think it's fine for multiple answers so long as they are distinct enough
    – EdChum
    Jul 18, 2017 at 10:20

I use the @EdChum solution, but I add the timezone management:

df['UNIXTIME']=pd.DatetimeIndex(pd.to_datetime(pd['UNIXTIME'], unit='ms'))\
                 .tz_localize('UTC' )\

the tz_localize indicates that timestamp should be considered as regarding 'UTC', then the tz_convert actually moves the date/time to the correct timezone (in this case `America/New_York').

Note that it has been converted to a DatetimeIndex because the tz_ methods works only on the index of the series. Since Pandas 0.15 one can use .dt:

df['UNIXTIME']=pd.to_datetime(df['UNIXTIME'], unit='ms')\
                 .dt.tz_localize('UTC' )\
  • This method works best for yahoo timestamp conversion .The second one not the first one.
    – Marx Babu
    May 24, 2019 at 11:09
  • Agree, second does great job of managing timezone - was getting results for start time and end times that were crossing dates and this fix that issue ('America/Chicago'); watch the syntax, was getting unexpected line ending error. Jan 15, 2020 at 18:38
  • 1
    Every datetime contains a '-05:00' appendix, indicating the difference between timezones in hours. What is the best way to exclude it?
    – peter
    Nov 18, 2020 at 18:18
  • What you see how panda presents the values, the column internally use the datetime type. If you want instead to have a string that represent the datetime in the format you prefer you can use df['UNIXTIME'].dt.strftime(...) (pandas.pydata.org/pandas-docs/stable/reference/api/…), note that the result is a Series of string values. If you assign it to the same column: df['UNIXTIME'] = df['UNIXTIME'].dt.strftime(...) you won't be able to use the values in the column as datetime anymore because they would be string.
    – Teudimundo
    Nov 19, 2020 at 10:09

I came up with a solution I guess:

convert = lambda x: datetime.datetime.fromtimestamp(float(x) / 1e3)

df = pd.read_csv(StringIO(data), parse_dates=['UNIXTIME'], date_parser=convert)

I'm still not sure if this is the best one though.


if you know the timestamp unit, use Series.astype:


0   2015-11-10 13:05:02.320
1   2015-11-10 13:05:02.364
2   2015-11-10 13:05:22.364
Name: UNIXTIME, dtype: datetime64[ns]

To return the entire DataFrame, use

df.astype({'UNIXTIME': 'datetime64[ms]'})

   RUN                UNIXTIME  VALUE
0    1 2015-11-10 13:05:02.320     10
1    2 2015-11-10 13:05:02.364     20
2    3 2015-11-10 13:05:22.364     42

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