102

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)
1

9 Answers 9

127

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)
3
  • 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
34

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

1
  • 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
8
from datetime import datetime

time = datetime.fromtimestamp(1676266245263 / 1000)

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

0
7

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
print(d_time)
print(t_stamp)
print(d_time2t_stamp)

# since the conversion succeds this prints `True`
print(d_time2t_stamp == t_stamp)
7

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
6

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

 data['date'] = data['date'].apply(lambda x: x.date())
2
  • 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
3

So, got this from an IBM coursera tutorial.

data['date'] = data['TimeStamp'].apply(lambda d: datetime.date.fromtimestamp(d))
1
  • This can also be shortened to data['date'] = data['TimeStamp'].apply(datetime.date.fromtimestamp)
    – Airat K
    Commented Jan 30 at 13:58
0

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

0
0

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

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.