I have a pandas column of Timestamp data

In [27]: train["Original_Quote_Date"][6] 
Out[27]: Timestamp('2013-12-25 00:00:00')

How can check equivalence of these objects to datetime.date objects of the type

datetime.date(2013, 12, 25)

9 Answers 9


Use the .date method:

In [11]: t = pd.Timestamp('2013-12-25 00:00:00')

In [12]: t.date()
Out[12]: datetime.date(2013, 12, 25)

In [13]: t.date() == datetime.date(2013, 12, 25)
Out[13]: True

To compare against a DatetimeIndex (i.e. an array of Timestamps), you'll want to do it the other way around:

In [21]: pd.Timestamp(datetime.date(2013, 12, 25))
Out[21]: Timestamp('2013-12-25 00:00:00')

In [22]: ts = pd.DatetimeIndex([t])

In [23]: ts == pd.Timestamp(datetime.date(2013, 12, 25))
Out[23]: array([ True], dtype=bool)
  • 2
    For an entire column or series, just use this in conjunction with an apply method and lambda. For example, if t is a series of timestamps: t.apply(lambda x: x.date())
    – Den Thap
    Commented Dec 2, 2019 at 19:41
  • 6
    It is worth to mention that the time part is lost and only date part is kept. For those who need to keep time, use .to_pydatetime() as mentioned by Xavier Ho. Commented Feb 23, 2020 at 8:27
  • There is a corresponding .time() method that drops the date and returns just the datetime.time component Commented Mar 1, 2021 at 16:29

As of pandas 0.20.3, use .to_pydatetime() to convert any pandas.DateTimeIndex instances to Python datetime.datetime.

  • 7
    Worth noting that for large DatetimeIndexs this can be slow / lot of memory. This is because a DatetimeIndex is basically just a light wrapper around an array of int64s, whilst an array of python datetimes is an array of fully-fledged python objects/not compactly laid out. Commented Mar 18, 2018 at 19:45
from datetime import datetime

time = datetime.fromtimestamp(1676266245263 / 1000)

Example Output : 2023-02-13 05:30:45.263000


You can convert a datetime.date object into a pandas Timestamp like this:

#!/usr/bin/env python3
# coding: utf-8

import pandas as pd
import datetime

# create a datetime data object
d_time = datetime.date(2010, 11, 12)

# create a pandas Timestamp object
t_stamp = pd.to_datetime('2010/11/12')

# cast `datetime_timestamp` as Timestamp object and compare
d_time2t_stamp = pd.to_datetime(d_time)

# print to double check

# since the conversion succeds this prints `True`
print(d_time2t_stamp == t_stamp)

Assume time column is in timestamp integer msec format

1 day = 86400000 ms

Here you go:

day_divider = 86400000

df['time'] = df['time'].values.astype(dtype='datetime64[ms]') # for msec format

df['time'] = (df['time']/day_divider).values.astype(dtype='datetime64[D]') # for day format

I've used the way recommended by Filomeno Gonzalez, albeit with a slight twist:

 data['date'] = data['date'].apply(lambda x: x.date())
  • 1
    This returns an error 'int' object has no attribute 'date' Commented Nov 4, 2022 at 15:07
  • @HomBahrani that probably happens because your column type is int, unlike the original user input
    – maynouf
    Commented Sep 27, 2023 at 11:06

So, got this from an IBM coursera tutorial.

data['date'] = data['TimeStamp'].apply(lambda d: datetime.date.fromtimestamp(d))
  • This can also be shortened to data['date'] = data['TimeStamp'].apply(datetime.date.fromtimestamp)
    – Airat K
    Commented Jan 30 at 13:58

If I have a pandas DataFrame with timestamp column (1546300800000, 1546301100000, 1546301400000, 1546301700000, 1546302000000) and I want to convert this into date time format

import datetime

df['date'] = df['date'].apply(lambda x: datetime.datetime.fromtimestamp(x/1000.0))

This will return a column with the format 2019-01-01 00:00:00, 2019-01-01 00:05:00, 2019-01-01 00:10:00, 2019-01-01 00:15:00, 2019-01-01 00:20:00...etc

Dividing by 1000 to convert from ms to s as explained here


In my case, I had the epochs as a normal "column" (i.e. it wasn't a TimeSeries).

I converted it as follows:

import pandas as pd
df['Timestamp'] = pd.to_datetime(df['Timestamp'] / 1000, unit='s')

Time was in milliseconds, so I needed to divide by a thousand. I set the unit='s' to mention that the Timestamp is in seconds (you can, however, use unit='ms' if you don't want to divide by 1000, or depending on your original Timestamp unit).

A sample result

1673885284000 becomes 2023-01-16 4:08:04

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