How do I convert a numpy.datetime64 object to a datetime.datetime (or Timestamp)?

In the following code, I create a datetime, timestamp and datetime64 objects.

import datetime
import numpy as np
import pandas as pd
dt = datetime.datetime(2012, 5, 1)
# A strange way to extract a Timestamp object, there's surely a better way?
ts = pd.DatetimeIndex([dt])[0]
dt64 = np.datetime64(dt)

In [7]: dt
Out[7]: datetime.datetime(2012, 5, 1, 0, 0)

In [8]: ts
Out[8]: <Timestamp: 2012-05-01 00:00:00>

In [9]: dt64
Out[9]: numpy.datetime64('2012-05-01T01:00:00.000000+0100')

Note: it's easy to get the datetime from the Timestamp:

In [10]: ts.to_datetime()
Out[10]: datetime.datetime(2012, 5, 1, 0, 0)

But how do we extract the datetime or Timestamp from a numpy.datetime64 (dt64)?


Update: a somewhat nasty example in my dataset (perhaps the motivating example) seems to be:

dt64 = numpy.datetime64('2002-06-28T01:00:00.000000000+0100')

which should be datetime.datetime(2002, 6, 28, 1, 0), and not a long (!) (1025222400000000000L)...

  • 3
    you should probably accept @Wes McKinney's answer that is much shorter and should work on recent numpy, pandas versions.
    – jfs
    Commented Apr 20, 2015 at 23:26
  • @J.F.Sebastian Hmmm, does that mean the answer is "don't move from np.datetime to datetime"... just use pd.Timestamp (as it's a subclass of datetime anyway), or if you really must use pd.Timestamp(dt64).to_datetime(). I'm still a little unsatisfied about this, but certainly Wes' is less specific to my old problem (and so better for the world)! Thanks again for taking time to answer it. :) Commented Apr 20, 2015 at 23:50
  • Your question says "or Timestamp" and Timestamp is a datetime (a subclass of) anyway :)
    – jfs
    Commented Apr 20, 2015 at 23:58
  • 7
    For those coming to this question in 2017+, look at my answer below for a detailed tutorial of datetime, datetime64 and Timestamps: stackoverflow.com/a/46921593/3707607
    – Ted Petrou
    Commented Oct 25, 2017 at 0:28
  • For Numpy -> datetime, as of 2020 str conversion is the most elegant option.
    – tejasvi88
    Commented Jul 8, 2020 at 12:50

14 Answers 14


You can just use the pd.Timestamp constructor. The following diagram may be useful for this and related questions.

Conversions between time representations

  • 445
    Just looking at this diagram tells me there's something fundamentally wrong with all this time stuff. Commented Oct 12, 2016 at 23:57
  • 20
    It's very confusing that pd.to_datetime would produce a TimeStamp if given the number of ms or ns, but would produce a datetime.datetime if given a datetime.datetime or a np.datetime64 if given a np.datetime64... Why would anyone think this is reasonable? Commented Feb 1, 2017 at 11:14
  • 6
    For those skimming: pd.Timestamp() changes np.datetime to pd.Timestamp Commented May 5, 2017 at 22:16
  • 30
    @Mr.WorshipMe This diagram needs to be updated. pd.to_datetime converts everything to pd.Timestamp. A pd.Timestamp object has the method to_pydatetime to revert back to a datetime.datetime object and a to_datetime64 method to convert to np.datetime64.
    – Ted Petrou
    Commented Jul 1, 2017 at 14:19
  • 8
    How can I get a higher resolution of this pic? Commented Jan 3, 2018 at 6:39

Welcome to hell.

You can just pass a datetime64 object to pandas.Timestamp:

In [16]: Timestamp(numpy.datetime64('2012-05-01T01:00:00.000000'))
Out[16]: <Timestamp: 2012-05-01 01:00:00>

I noticed that this doesn't work right though in NumPy 1.6.1:


Also, pandas.to_datetime can be used (this is off of the dev version, haven't checked v0.9.1):

In [24]: pandas.to_datetime('2012-05-01T01:00:00.000000+0100')
Out[24]: datetime.datetime(2012, 5, 1, 1, 0, tzinfo=tzoffset(None, 3600))
  • 5
    You should mention that issubclass(pd.Timestamp, datetime) is True. And Timestamp class itself has to_datetime() method.
    – jfs
    Commented Apr 20, 2015 at 23:21
  • 11
    pd.to_datetime('2012-05-01T01:00:00.000000+0100') returns Timestamp('2012-05-01 00:00:00') at least in pandas 0.17.1. Commented Jan 21, 2016 at 10:15
  • 1
    The simple way to convert a datetime64 column to a Timestamp is my_datetime64_column.apply(lambda x: pd.Timestamp(x))
    – John Mark
    Commented Jun 30, 2022 at 20:25

To convert numpy.datetime64 to datetime object that represents time in UTC on numpy-1.8:

>>> from datetime import datetime
>>> import numpy as np
>>> dt = datetime.utcnow()
>>> dt
datetime.datetime(2012, 12, 4, 19, 51, 25, 362455)
>>> dt64 = np.datetime64(dt)
>>> ts = (dt64 - np.datetime64('1970-01-01T00:00:00Z')) / np.timedelta64(1, 's')
>>> ts
>>> datetime.utcfromtimestamp(ts)
datetime.datetime(2012, 12, 4, 19, 51, 25, 362455)
>>> np.__version__

The above example assumes that a naive datetime object is interpreted by np.datetime64 as time in UTC.

To convert datetime to np.datetime64 and back (numpy-1.6):

>>> np.datetime64(datetime.utcnow()).astype(datetime)
datetime.datetime(2012, 12, 4, 13, 34, 52, 827542)

It works both on a single np.datetime64 object and a numpy array of np.datetime64.

Think of np.datetime64 the same way you would about np.int8, np.int16, etc and apply the same methods to convert between Python objects such as int, datetime and corresponding numpy objects.

Your "nasty example" works correctly:

>>> from datetime import datetime
>>> import numpy 
>>> numpy.datetime64('2002-06-28T01:00:00.000000000+0100').astype(datetime)
datetime.datetime(2002, 6, 28, 0, 0)
>>> numpy.__version__
'1.6.2' # current version available via pip install numpy

I can reproduce the long value on numpy-1.8.0 installed as:

pip install git+https://github.com/numpy/numpy.git#egg=numpy-dev

The same example:

>>> from datetime import datetime
>>> import numpy
>>> numpy.datetime64('2002-06-28T01:00:00.000000000+0100').astype(datetime)
>>> numpy.__version__

It returns long because for numpy.datetime64 type .astype(datetime) is equivalent to .astype(object) that returns Python integer (long) on numpy-1.8.

To get datetime object you could:

>>> dt64.dtype
>>> ns = 1e-9 # number of seconds in a nanosecond
>>> datetime.utcfromtimestamp(dt64.astype(int) * ns)
datetime.datetime(2002, 6, 28, 0, 0)

To get datetime64 that uses seconds directly:

>>> dt64 = numpy.datetime64('2002-06-28T01:00:00.000000000+0100', 's')
>>> dt64.dtype
>>> datetime.utcfromtimestamp(dt64.astype(int))
datetime.datetime(2002, 6, 28, 0, 0)

The numpy docs say that the datetime API is experimental and may change in future numpy versions.

  • 3
    I'm afraid this doesn't seem to always work: e.g. dt64 = numpy.datetime64('2002-06-28T01:00:00.000000000+0100'), which gives a long (1025222400000000000L) (!) Commented Dec 4, 2012 at 17:49
  • @hayden: try type(dt64). dt64.astype(datetime) == datetime.utcfromtimestamp(dt64.astype(int)*1e-6)
    – jfs
    Commented Dec 4, 2012 at 17:59
  • @JFSebastian type(dt64) is numpy.datetime64 and dt64.astype(datetime) is the same long int... :s Commented Dec 4, 2012 at 18:10
  • @hayden: What is your numpy version? Mine: numpy.__version__ -> '1.6.1'
    – jfs
    Commented Dec 4, 2012 at 18:11
  • Version 1.8.0 (in python 2.7.3), if it works for you it does suggest it is a bug on my system! Commented Dec 4, 2012 at 18:12

I think there could be a more consolidated effort in an answer to better explain the relationship between Python's datetime module, numpy's datetime64/timedelta64 and pandas' Timestamp/Timedelta objects.

The datetime standard library of Python

The datetime standard library has four main objects

  • time - only time, measured in hours, minutes, seconds and microseconds
  • date - only year, month and day
  • datetime - All components of time and date
  • timedelta - An amount of time with maximum unit of days

Create these four objects

>>> import datetime
>>> datetime.time(hour=4, minute=3, second=10, microsecond=7199)
datetime.time(4, 3, 10, 7199)

>>> datetime.date(year=2017, month=10, day=24)
datetime.date(2017, 10, 24)

>>> datetime.datetime(year=2017, month=10, day=24, hour=4, minute=3, second=10, microsecond=7199)
datetime.datetime(2017, 10, 24, 4, 3, 10, 7199)

>>> datetime.timedelta(days=3, minutes = 55)
datetime.timedelta(3, 3300)

>>> # add timedelta to datetime
>>> datetime.timedelta(days=3, minutes = 55) + \
    datetime.datetime(year=2017, month=10, day=24, hour=4, minute=3, second=10, microsecond=7199)
datetime.datetime(2017, 10, 27, 4, 58, 10, 7199)

NumPy's datetime64 and timedelta64 objects

NumPy has no separate date and time objects, just a single datetime64 object to represent a single moment in time. The datetime module's datetime object has microsecond precision (one-millionth of a second). NumPy's datetime64 object allows you to set its precision from hours all the way to attoseconds (10 ^ -18). It's constructor is more flexible and can take a variety of inputs.

Construct NumPy's datetime64 and timedelta64 objects

Pass an integer with a string for the units. See all units here. It gets converted to that many units after the UNIX epoch: Jan 1, 1970

>>> np.datetime64(5, 'ns') 

>>> np.datetime64(1508887504, 's')

You can also use strings as long as they are in ISO 8601 format.

>>> np.datetime64('2017-10-24')

Timedeltas have a single unit

>>> np.timedelta64(5, 'D') # 5 days
>>> np.timedelta64(10, 'h') 10 hours

Can also create them by subtracting two datetime64 objects

>>> np.datetime64('2017-10-24T05:30:45.67') - np.datetime64('2017-10-22T12:35:40.123')

Pandas Timestamp and Timedelta build much more functionality on top of NumPy

A pandas Timestamp is a moment in time very similar to a datetime but with much more functionality. You can construct them with either pd.Timestamp or pd.to_datetime.

>>> pd.Timestamp(1239.1238934) #defaults to nanoseconds
Timestamp('1970-01-01 00:00:00.000001239')

>>> pd.Timestamp(1239.1238934, unit='D') # change units
Timestamp('1973-05-24 02:58:24.355200')

>>> pd.Timestamp('2017-10-24 05') # partial strings work
Timestamp('2017-10-24 05:00:00')

pd.to_datetime works very similarly (with a few more options) and can convert a list of strings into Timestamps.

>>> pd.to_datetime('2017-10-24 05')
Timestamp('2017-10-24 05:00:00')

>>> pd.to_datetime(['2017-1-1', '2017-1-2'])
DatetimeIndex(['2017-01-01', '2017-01-02'], dtype='datetime64[ns]', freq=None)

Converting Python datetime to datetime64 and Timestamp

>>> dt = datetime.datetime(year=2017, month=10, day=24, hour=4, 
                   minute=3, second=10, microsecond=7199)
>>> np.datetime64(dt)

>>> pd.Timestamp(dt) # or pd.to_datetime(dt)
Timestamp('2017-10-24 04:03:10.007199')

Converting numpy datetime64 to datetime and Timestamp

>>> dt64 = np.datetime64('2017-10-24 05:34:20.123456')
>>> unix_epoch = np.datetime64(0, 's')
>>> one_second = np.timedelta64(1, 's')
>>> seconds_since_epoch = (dt64 - unix_epoch) / one_second
>>> seconds_since_epoch

>>> datetime.datetime.utcfromtimestamp(seconds_since_epoch)
>>> datetime.datetime(2017, 10, 24, 5, 34, 20, 123456)

Convert to Timestamp

>>> pd.Timestamp(dt64)
Timestamp('2017-10-24 05:34:20.123456')

Convert from Timestamp to datetime and datetime64

This is quite easy as pandas timestamps are very powerful

>>> ts = pd.Timestamp('2017-10-24 04:24:33.654321')

>>> ts.to_pydatetime()   # Python's datetime
datetime.datetime(2017, 10, 24, 4, 24, 33, 654321)

>>> ts.to_datetime64()
  • 12
    It's crazy how numpy to datetime is still hard/hacky... is there really no better way? This is a good answer, I am thinking about accepting to move it to the top-level I have to read the others more deeply once by a computer. Commented Oct 25, 2017 at 0:42
  • What's so quirky about it? Pandas Timestamps work well and are fairly simple.
    – Ted Petrou
    Commented Oct 25, 2017 at 0:45
  • 4
    Numpy to datetime. Commented Oct 25, 2017 at 1:13
  • 3
    I think this is the best answer I've ever seen. Coming from Excel, VBA, SAS, or SQL, Python seems weird because there's not just "one way" to work with dates/times. As with many things in Python or R, it seems one must choose a favourite method/module/class and stick with it. Commented Mar 15, 2018 at 15:10
  • 1
    Yes, great answer. I finally understand this much better. Apparently there is also matplotlib.dates, why???
    – Santiago
    Commented May 6, 2020 at 12:27
>>> dt64.tolist()
datetime.datetime(2012, 5, 1, 0, 0)

For DatetimeIndex, the tolist returns a list of datetime objects. For a single datetime64 object it returns a single datetime object.

  • 5
    @hayden if you know that its a scalar/0-d array I would rather use .item() which is far more explicit (and nobody can come around and start arguing that it should return a list).
    – seberg
    Commented Dec 4, 2012 at 14:03
  • 3
    I'm afraid this doesn't seem to always work: e.g. dt64 = numpy.datetime64('2002-06-28T01:00:00.000000000+0100'), which gives a long (1025222400000000000L) (!) Commented Dec 4, 2012 at 17:46
  • 5
    @hayden: the type that is returned by .item() (suggested by @seberg), .tolist() depends on what units datetime64 uses e.g., D produces datetime.date(), us (microseconds) produce datetime.datetime(), ns (nanoseconds) produce long. And the units change depending on input values e.g., numpy.datetime64('2012-05-01') uses 'D', numpy.datetime64('2012-05-01T00:00:00.000') uses ms, numpy.datetime64('2012-05-01T00:00:00.000000000') uses ns. You could open an issue if you find it confusing.
    – jfs
    Commented Dec 4, 2012 at 20:51
  • @AndyHayden You could also just add an extra argument, 'us' or 'ms' to ensure the same format is applied resulting in the same datetime element being produced in tolist()
    – N M
    Commented Mar 9, 2018 at 9:06

One option is to use str, and then to_datetime (or similar):

In [11]: str(dt64)
Out[11]: '2012-05-01T01:00:00.000000+0100'

In [12]: pd.to_datetime(str(dt64))
Out[12]: datetime.datetime(2012, 5, 1, 1, 0, tzinfo=tzoffset(None, 3600))

Note: it is not equal to dt because it's become "offset-aware":

In [13]: pd.to_datetime(str(dt64)).replace(tzinfo=None)
Out[13]: datetime.datetime(2012, 5, 1, 1, 0)

This seems inelegant.


Update: this can deal with the "nasty example":

In [21]: dt64 = numpy.datetime64('2002-06-28T01:00:00.000000000+0100')

In [22]: pd.to_datetime(str(dt64)).replace(tzinfo=None)
Out[22]: datetime.datetime(2002, 6, 28, 1, 0)
  • Thanks Andy for sharing this tip. For some reason I am unable to make it work, as I discuss here: stackoverflow.com/questions/22825349/… Commented Apr 3, 2014 at 0:06
  • @user815423426 this was never a very robust solution, I guess you can pass a format to the datetime constructor to work more generally. Not very pandastic though! Commented Apr 3, 2014 at 1:06

If you want to convert an entire pandas series of datetimes to regular python datetimes, you can also use .to_pydatetime().


> [datetime.datetime(2011, 1, 1, 0, 0) datetime.datetime(2011, 1, 1, 1, 0)
   datetime.datetime(2011, 1, 1, 2, 0) datetime.datetime(2011, 1, 1, 3, 0)

It also supports timezones:


[ datetime.datetime(2011, 1, 1, 11, 0, tzinfo=<DstTzInfo 'Australia/Sydney' EST+11:00:00 DST>)
 datetime.datetime(2011, 1, 1, 12, 0, tzinfo=<DstTzInfo 'Australia/Sydney' EST+11:00:00 DST>)

NOTE: If you are operating on a Pandas Series you cannot call to_pydatetime() on the entire series. You will need to call .to_pydatetime() on each individual datetime64 using a list comprehension or something similar:

datetimes = [val.to_pydatetime() for val in df.problem_datetime_column]

This post has been up for 4 years and I still struggled with this conversion problem - so the issue is still active in 2017 in some sense. I was somewhat shocked that the numpy documentation does not readily offer a simple conversion algorithm but that's another story.

I have come across another way to do the conversion that only involves modules numpy and datetime, it does not require pandas to be imported which seems to me to be a lot of code to import for such a simple conversion. I noticed that datetime64.astype(datetime.datetime) will return a datetime.datetime object if the original datetime64 is in micro-second units while other units return an integer timestamp. I use module xarray for data I/O from Netcdf files which uses the datetime64 in nanosecond units making the conversion fail unless you first convert to micro-second units. Here is the example conversion code,

import numpy as np
import datetime

def convert_datetime64_to_datetime( usert: np.datetime64 )->datetime.datetime:
    t = np.datetime64( usert, 'us').astype(datetime.datetime)
return t

Its only tested on my machine, which is Python 3.6 with a recent 2017 Anaconda distribution. I have only looked at scalar conversion and have not checked array based conversions although I'm guessing it will be good. Nor have I looked at the numpy datetime64 source code to see if the operation makes sense or not.

import numpy as np
import pandas as pd 

def np64toDate(np64):
    return pd.to_datetime(str(np64)).replace(tzinfo=None).to_datetime()

use this function to get pythons native datetime object

  • 1
    I got an error saying replace() got an unexpected keyword argument 'tzinfo'
    – wlad
    Commented Oct 4, 2016 at 11:23
  • which pandas version do you use?I have Version: 0.18.1 (pip show pandas)
    – Crystal
    Commented Oct 4, 2016 at 19:09
  • same as you. . .
    – wlad
    Commented Oct 4, 2016 at 20:07
  • I dont know then but it works for me like charm. pix.toile-libre.org/upload/original/1475645621.png
    – Crystal
    Commented Oct 5, 2016 at 5:34

I've come back to this answer more times than I can count, so I decided to throw together a quick little class, which converts a Numpy datetime64 value to Python datetime value. I hope it helps others out there.

from datetime import datetime
import pandas as pd

class NumpyConverter(object):
    def to_datetime(cls, dt64, tzinfo=None):
        Converts a Numpy datetime64 to a Python datetime.
        :param dt64: A Numpy datetime64 variable
        :type dt64: numpy.datetime64
        :param tzinfo: The timezone the date / time value is in
        :type tzinfo: pytz.timezone
        :return: A Python datetime variable
        :rtype: datetime
        ts = pd.to_datetime(dt64)
        if tzinfo is not None:
            return datetime(ts.year, ts.month, ts.day, ts.hour, ts.minute, ts.second, tzinfo=tzinfo)
        return datetime(ts.year, ts.month, ts.day, ts.hour, ts.minute, ts.second)

I'm gonna keep this in my tool bag, something tells me I'll need it again.

  • 3
    You could just do ts.to_pydatetime()
    – Ted Petrou
    Commented Oct 24, 2017 at 23:05

I did like this

import pandas as pd

# Custom function to convert Pandas Datetime to Timestamp
def toTimestamp(data):
    return data.timestamp()

# Read a csv file
df = pd.read_csv("friends.csv")

# Replace the "birthdate" column by:
# 1. Transform to datetime
# 2. Apply the custom function to the column just converted
df["birthdate"] = pd.to_datetime(df["birthdate"]).apply(toTimestamp)

Some solutions work well for me but numpy will deprecate some parameters. The solution that work better for me is to read the date as a pandas datetime and excract explicitly the year, month and day of a pandas object. The following code works for the most common situation.

def format_dates(dates):
    dt = pd.to_datetime(dates)
    try: return [datetime.date(x.year, x.month, x.day) for x in dt]    
    except TypeError: return datetime.date(dt.year, dt.month, dt.day)

Only way I managed to convert a column 'date' in pandas dataframe containing time info to numpy array was as following: (dataframe is read from csv file "csvIn.csv")

import pandas as pd
import numpy as np

df = pd.read_csv("csvIn.csv")
df["date"] = pd.to_datetime(df["date"])
timestamps = np.array([np.datetime64(value) for dummy, value in df["date"].items()])

indeed, all of these datetime types can be difficult, and potentially problematic (must keep careful track of timezone information). here's what i have done, though i admit that i am concerned that at least part of it is "not by design". also, this can be made a bit more compact as needed. starting with a numpy.datetime64 dt_a:



dt_a1 = dt_a.tolist() # yields a datetime object in UTC, but without tzinfo


datetime.datetime(2015, 4, 25, 6, 11, 26, 270000)

# now, make your "aware" datetime:

dt_a2=datetime.datetime(*list(dt_a1.timetuple()[:6]) + [dt_a1.microsecond], tzinfo=pytz.timezone('UTC'))

... and of course, that can be compressed into one line as needed.


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