I've got a huge list of date-times like this as strings:

Jun 1 2005  1:33PM
Aug 28 1999 12:00AM

I'm going to be shoving these back into proper datetime fields in a database so I need to magic them into real datetime objects.

This is going through Django's ORM so I can't use SQL to do the conversion on insert.

  • 6
    Unless you're sure one format handles every single date-time (no '', no NaNs, no incompletes, no format mismatches, no trailing characters, timezones, microsecond timestamps, or other text...), the exception-happiness of strptime() will drive you nuts, unless you wrap it. See my answer, based on Or Weis answer to this – smci Dec 15 '17 at 3:00
  • The laziest, most widely usable approach I know is dateparser (check blog.scrapinghub.com/2015/11/09/…). It works even with natural language time expressions in several languages out of the box. I guess it can be slow though. – Armando Nov 1 '19 at 17:23
  • There is a helpful link here: stackabuse.com/converting-strings-to-datetime-in-python – GoingMyWay Jan 4 '20 at 14:37

22 Answers 22


datetime.strptime is the main routine for parsing strings into datetimes. It can handle all sorts of formats, with the format determined by a format string you give it:

from datetime import datetime

datetime_object = datetime.strptime('Jun 1 2005  1:33PM', '%b %d %Y %I:%M%p')

The resulting datetime object is timezone-naive.



  • strptime = "string parse time"
  • strftime = "string format time"
  • Pronounce it out loud today & you won't have to search for it again in 6 months.
  • 8
    '%b', '%p' may fail in non-English locale. – jfs Apr 29 '14 at 10:55
  • 20
    @User You'll have to know ahead of time to exclude that part of the format string, but if you want a date instead of a datetime, going through datetime handles it nicely: datetime.strptime('Jun 1 2005', '%b %d %Y').date() == date(2005, 6, 1) – Izkata Nov 11 '14 at 20:02
  • 14
    If you know the string represents a datetime in UTC, you can get a timezone aware datetime object by adding this line in Python 3: from datetime import timezone; datetime_object = datetime_object.replace(tzinfo=timezone.utc) – Flimm Dec 8 '16 at 10:28
  • 130
    I was looking for "%Y-%m-%d %H:%M:%S" – Martin Thoma Dec 7 '17 at 13:56
  • 4
    @AminahNuraini I got around a similar issue by doing from datetime import datetime instead of just import datetime. – Max Strater Nov 12 '18 at 21:02

Use the third party dateutil library:

from dateutil import parser
parser.parse("Aug 28 1999 12:00AM")  # datetime.datetime(1999, 8, 28, 0, 0)

It can handle most date formats, including the one you need to parse. It's more convenient than strptime as it can guess the correct format most of the time.

It's very useful for writing tests, where readability is more important than performance.

You can install it with:

pip install python-dateutil
  • 91
    Be aware that for large data amounts this might not be the most optimal way to approach the problem. Guessing the format every single time may be horribly slow. – Paweł Polewicz Jul 3 '11 at 0:08
  • 16
    This is nice but it would be nice to have a solution that is built-in rather than having to go to a third party. – brian buck Oct 12 '11 at 20:33
  • 7
    @Reef: 5 times as slow according to my quick and dirty benchmark. Not so horribly slow as I would expect. – Antony Hatchkins Apr 30 '13 at 18:19
  • 2
    Has its own issues - like, for example, silently dropping time zone information from times: try parser.parse('15:55EST') and compare with parser.parse('15.55CST') as an example – F1Rumors May 18 '15 at 15:42
  • 2
    This has a very unfortunate habit of getting confused between US and UK dmy and mdy formats.. But it is handy when you're being lazy or have to juggle many formats. – Oli Apr 12 '16 at 7:20

Check out strptime in the time module. It is the inverse of strftime.

$ python
>>> import time
>>> my_time = time.strptime('Jun 1 2005  1:33PM', '%b %d %Y %I:%M%p')
time.struct_time(tm_year=2005, tm_mon=6, tm_mday=1,
                 tm_hour=13, tm_min=33, tm_sec=0,
                 tm_wday=2, tm_yday=152, tm_isdst=-1)

timestamp = time.mktime(my_time)
# convert time object to datetime
from datetime import datetime
my_datetime = datetime.fromtimestamp(timestamp)
# convert time object to date
from datetime import date
my_date = date.fromtimestamp(timestamp)
  • 17
    From what I understand, this answer only outputs time objects, not datetime objects -- which is why the answer would be buried compared to Patrick's answer. – Alexander Bird Sep 7 '10 at 13:08
  • Is there a way to set the default datetime format of the DateTimeField ? – kingpin Jan 22 '13 at 15:50
  • 3
    As Alexander said, this return a struct_time, not a datetime. Of course you can convert it to a datetime, but Patrick's answer is more straight forward if you want a datetime object in the end. – Leandro Alves Mar 9 '13 at 15:20
  • There's nothing like strtotime in the standard python library, but dateutil has a parser that recognizes a lot of best effort date formats. – Geoff Gerrietts Nov 15 '13 at 5:47
  • 1
    @BenBlank: '%b', '%p' may fail in non-English locale. – jfs Apr 29 '14 at 10:54

I have put together a project that can convert some really neat expressions. Check out timestring.

Here are some examples below:

pip install timestring
>>> import timestring
>>> timestring.Date('monday, aug 15th 2015 at 8:40 pm')
<timestring.Date 2015-08-15 20:40:00 4491909392>
>>> timestring.Date('monday, aug 15th 2015 at 8:40 pm').date
datetime.datetime(2015, 8, 15, 20, 40)
>>> timestring.Range('next week')
<timestring.Range From 03/10/14 00:00:00 to 03/03/14 00:00:00 4496004880>
>>> (timestring.Range('next week').start.date, timestring.Range('next week').end.date)
(datetime.datetime(2014, 3, 10, 0, 0), datetime.datetime(2014, 3, 14, 0, 0))
  • 2
    Wow. Wow. Wow. Wow. This is so easy. I've got a datetime string and I just want to pull out the year. As simple as: import timestring timestring.Date('27 Mar 2014 12:32:29 GMT').year This lib made it SO EASY! Thank you. – brandonjp Apr 11 '14 at 5:09
  • Your very welcome. I would love your comments and ideas on improving this package. Let me know, use github issues. Thanks! – Steve Peak Apr 14 '14 at 14:30
  • Hi steve, the module is great. Would be nice to have a weekday string attribute as well. Otherwise not sure if you start from Monday or Sunday – Anake Oct 23 '14 at 10:00
  • 1
    It doesn't convert such as '5 Feb 2017' and '5 February 2017' properly (which are formats popular in some circles, and IMO some of the best date formats for clarity and readability). It stores them as 2017-02-01. Same for 5/Feb/2017 (it does Feb/5/2017 correctly, however); neither of those last two are formats I've ever seen used to my knowledge, but I thought I'd point it out anyway. – Brōtsyorfuzthrāx Aug 10 '17 at 10:13
  • 3
    WARNING: This package doesn't seem to have been maintained or improved at any point over the past 5 years and routinely parses obviously incorrect dates. For example, instantiating Date("20180912") somehow parses a value of 2018-11-21. Use at your own risk. – bsplosion Nov 21 '19 at 17:52

python >= 3.7

to convert YYYY-MM-DD string to datetime object, datetime.fromisoformat could be used.

>>> from datetime import datetime

>>> date_string = "2012-12-12 10:10:10"
>>> print (datetime.fromisoformat(date_string))
>>> 2012-12-12 10:10:10

Remember this and you didn't need to get confused in datetime conversion again.

String to datetime object = strptime

datetime object to other formats = strftime

Jun 1 2005 1:33PM

is equals to

%b %d %Y %I:%M%p

%b Month as locale’s abbreviated name(Jun)

%d Day of the month as a zero-padded decimal number(1)

%Y Year with century as a decimal number(2015)

%I Hour (12-hour clock) as a zero-padded decimal number(01)

%M Minute as a zero-padded decimal number(33)

%p Locale’s equivalent of either AM or PM(PM)

so you need strptime i-e converting string to

>>> dates = []
>>> dates.append('Jun 1 2005  1:33PM')
>>> dates.append('Aug 28 1999 12:00AM')
>>> from datetime import datetime
>>> for d in dates:
...     date = datetime.strptime(d, '%b %d %Y %I:%M%p')
...     print type(date)
...     print date


<type 'datetime.datetime'>
2005-06-01 13:33:00
<type 'datetime.datetime'>
1999-08-28 00:00:00

What if you have different format of dates you can use panda or dateutil.parse

>>> import dateutil
>>> dates = []
>>> dates.append('12 1 2017')
>>> dates.append('1 1 2017')
>>> dates.append('1 12 2017')
>>> dates.append('June 1 2017 1:30:00AM')
>>> [parser.parse(x) for x in dates]


[datetime.datetime(2017, 12, 1, 0, 0), datetime.datetime(2017, 1, 1, 0, 0), datetime.datetime(2017, 1, 12, 0, 0), datetime.datetime(2017, 6, 1, 1, 30)]
  • %S for Seconds as decimal – optimist Jun 9 '17 at 5:42
  • 1
    Won’t %b break if you parse an English date on a machine that doesn’t have an English locale? – bfontaine May 8 '18 at 9:44

Many timestamps have an implied timezone. To ensure that your code will work in every timezone, you should use UTC internally and attach a timezone each time a foreign object enters the system.

Python 3.2+:

>>> datetime.datetime.strptime(
...     "March 5, 2014, 20:13:50", "%B %d, %Y, %H:%M:%S"
... ).replace(tzinfo=datetime.timezone(datetime.timedelta(hours=-3)))
  • 3
    Why do you keep the ugly and sometimes wrong (mktime() during DST transitions) 1st method if you know the 2nd method (datetime.strptime())? If you want to avoid an exception during a leap second (the 2nd method fails) then you could use calendar.timegm instead: (datetime(1970,1,1)+timedelta(seconds=timegm(time.strptime(..)))).replace(tzinfo=timezone(timedelta(-3))) – jfs Sep 14 '14 at 17:36

Here are two solutions using Pandas to convert dates formatted as strings into datetime.date objects.

import pandas as pd

dates = ['2015-12-25', '2015-12-26']

# 1) Use a list comprehension.
>>> [d.date() for d in pd.to_datetime(dates)]
[datetime.date(2015, 12, 25), datetime.date(2015, 12, 26)]

# 2) Convert the dates to a DatetimeIndex and extract the python dates.
>>> pd.DatetimeIndex(dates).date.tolist()
[datetime.date(2015, 12, 25), datetime.date(2015, 12, 26)]


dates = pd.DatetimeIndex(start='2000-1-1', end='2010-1-1', freq='d').date.tolist()

>>> %timeit [d.date() for d in pd.to_datetime(dates)]
# 100 loops, best of 3: 3.11 ms per loop

>>> %timeit pd.DatetimeIndex(dates).date.tolist()
# 100 loops, best of 3: 6.85 ms per loop

And here is how to convert the OP's original date-time examples:

datetimes = ['Jun 1 2005  1:33PM', 'Aug 28 1999 12:00AM']

>>> pd.to_datetime(datetimes).to_pydatetime().tolist()
[datetime.datetime(2005, 6, 1, 13, 33), 
 datetime.datetime(1999, 8, 28, 0, 0)]

There are many options for converting from the strings to Pandas Timestamps using to_datetime, so check the docs if you need anything special.

Likewise, Timestamps have many properties and methods that can be accessed in addition to .date


I personally like the solution using the parser module, which is the second Answer to this question and is beautiful, as you don't have to construct any string literals to get it working. BUT, one downside is that it is 90% slower than the accepted answer with strptime.

from dateutil import parser
from datetime import datetime
import timeit

def dt():
    dt = parser.parse("Jun 1 2005  1:33PM")
def strptime():
    datetime_object = datetime.strptime('Jun 1 2005  1:33PM', '%b %d %Y %I:%M%p')

print(timeit.timeit(stmt=dt, number=10**5))
print(timeit.timeit(stmt=strptime, number=10**5))

As long as you are not doing this a million times over and over again, I still think the parser method is more convenient and will handle most of the time formats automatically.


Something that isn't mentioned here and is useful: adding a suffix to the day. I decoupled the suffix logic so you can use it for any number you like, not just dates.

import time

def num_suffix(n):
    Returns the suffix for any given int
    suf = ('th','st', 'nd', 'rd')
    n = abs(n) # wise guy
    tens = int(str(n)[-2:])
    units = n % 10
    if tens > 10 and tens < 20:
        return suf[0] # teens with 'th'
    elif units <= 3:
        return suf[units]
        return suf[0] # 'th'

def day_suffix(t):
    Returns the suffix of the given struct_time day
    return num_suffix(t.tm_mday)

# Examples
print num_suffix(123)
print num_suffix(3431)
print num_suffix(1234)
print ''
print day_suffix(time.strptime("1 Dec 00", "%d %b %y"))
print day_suffix(time.strptime("2 Nov 01", "%d %b %y"))
print day_suffix(time.strptime("3 Oct 02", "%d %b %y"))
print day_suffix(time.strptime("4 Sep 03", "%d %b %y"))
print day_suffix(time.strptime("13 Nov 90", "%d %b %y"))
print day_suffix(time.strptime("14 Oct 10", "%d %b %y"))​​​​​​​
In [34]: import datetime

In [35]: _now = datetime.datetime.now()

In [36]: _now
Out[36]: datetime.datetime(2016, 1, 19, 9, 47, 0, 432000)

In [37]: print _now
2016-01-19 09:47:00.432000

In [38]: _parsed = datetime.datetime.strptime(str(_now),"%Y-%m-%d %H:%M:%S.%f")

In [39]: _parsed
Out[39]: datetime.datetime(2016, 1, 19, 9, 47, 0, 432000)

In [40]: assert _now == _parsed

Django Timezone aware datetime object example.

import datetime
from django.utils.timezone import get_current_timezone
tz = get_current_timezone()

format = '%b %d %Y %I:%M%p'
date_object = datetime.datetime.strptime('Jun 1 2005  1:33PM', format)
date_obj = tz.localize(date_object)

This conversion is very important for Django and Python when you have USE_TZ = True:

RuntimeWarning: DateTimeField MyModel.created received a naive datetime (2016-03-04 00:00:00) while time zone support is active.

It would do the helpful for converting string to datetime and also with time zone

def convert_string_to_time(date_string, timezone):
    from datetime import datetime
    import pytz
    date_time_obj = datetime.strptime(date_string[:26], '%Y-%m-%d %H:%M:%S.%f')
    date_time_obj_timezone = pytz.timezone(timezone).localize(date_time_obj)

    return date_time_obj_timezone

date = '2018-08-14 13:09:24.543953+00:00'
date_time_obj_timezone = convert_string_to_time(date, TIME_ZONE)

Create a small utility function like:

def date(datestr="", format="%Y-%m-%d"):
    from datetime import datetime
    if not datestr:
        return datetime.today().date()
    return datetime.strptime(datestr, format).date()

This is versatile enough:

  • If you don't pass any arguments it will return today's date.
  • There's a date format as default that you can override.
  • You can easily modify it to return a datetime.
  • 2
    format is a reserved word in python and shouldn't be used as a variable name. – shredding Jan 10 '17 at 9:30

arrow offers many useful functions for dates and times. This bit of code provides an answer to the question and shows that arrow is also capable of formatting dates easily and displaying information for other locales.

>>> import arrow
>>> dateStrings = [ 'Jun 1  2005 1:33PM', 'Aug 28 1999 12:00AM' ]
>>> for dateString in dateStrings:
...     dateString
...     arrow.get(dateString.replace('  ',' '), 'MMM D YYYY H:mmA').datetime
...     arrow.get(dateString.replace('  ',' '), 'MMM D YYYY H:mmA').format('ddd, Do MMM YYYY HH:mm')
...     arrow.get(dateString.replace('  ',' '), 'MMM D YYYY H:mmA').humanize(locale='de')
'Jun 1  2005 1:33PM'
datetime.datetime(2005, 6, 1, 13, 33, tzinfo=tzutc())
'Wed, 1st Jun 2005 13:33'
'vor 11 Jahren'
'Aug 28 1999 12:00AM'
datetime.datetime(1999, 8, 28, 0, 0, tzinfo=tzutc())
'Sat, 28th Aug 1999 00:00'
'vor 17 Jahren'

See http://arrow.readthedocs.io/en/latest/ for more.


You can use easy_date to make it easy:

import date_converter
converted_date = date_converter.string_to_datetime('Jun 1 2005  1:33PM', '%b %d %Y %I:%M%p')

If you want only date format then you can manually convert it by passing your individual fields like:

>>> import datetime
>>> date = datetime.date(int('2017'),int('12'),int('21'))
>>> date
datetime.date(2017, 12, 21)
>>> type(date)
<type 'datetime.date'>

You can pass your split string values to convert it into date type like:

selected_month_rec = '2017-09-01'
date_formate = datetime.date(int(selected_month_rec.split('-')[0]),int(selected_month_rec.split('-')[1]),int(selected_month_rec.split('-')[2]))

You will get the resulting value in date format.


You can also check out dateparser

dateparser provides modules to easily parse localized dates in almost any string formats commonly found on web pages.


$ pip install dateparser

This is, I think, the easiest way you can parse dates.

The most straightforward way is to use the dateparser.parse function, that wraps around most of the functionality in the module.

Sample Code:

import dateparser

t1 = 'Jun 1 2005  1:33PM'
t2 = 'Aug 28 1999 12:00AM'

dt1 = dateparser.parse(t1)
dt2 = dateparser.parse(t2)



2005-06-01 13:33:00
1999-08-28 00:00:00

If your string is in ISO8601 format and you have Python 3.7+ you can use the following simple code:

import datetime.date

aDate = datetime.date.fromisoformat('2020-10-04')

for dates and

import datetime.datetime

aDateTime = datetime.datetime.fromisoformat('2020-10-04 22:47:00')

for strings containing date and time. If timestamps are included the function datetime.datetime.isoformat() supports the following format


where * matches any single character. See also here and here


See my answer.

In real-world data this is a real problem: multiple, mismatched, incomplete, inconsistent and multilanguage/region date formats, often mixed freely in one dataset. It's not ok for production code to fail, let alone go exception-happy like a fox.

We need to try...catch multiple datetime formats fmt1,fmt2,...,fmtn and suppress/handle the exceptions (from strptime()) for all those that mismatch (and in particular, avoid needing a yukky n-deep indented ladder of try..catch clauses). From my solution

def try_strptime(s, fmts=['%d-%b-%y','%m/%d/%Y']):
    for fmt in fmts:
            return datetime.strptime(s, fmt)

    return None # or reraise the ValueError if no format matched, if you prefer
  • The question said nothing about "multiple, mismatched, incomplete, inconsistent and multilanguage/region date formats" etc. This may be a real problem, but not relevant here. – RoG Oct 2 '18 at 12:28
  • 1
    @RoG: It never said they weren't, and it implied they were: "huge list... database". In most every database/logfile I've worked on (even small-size), there were multiple date formats, timezone identifiers, MM-DD etc. In production it is unacceptable to write brittle code which hardcodes in formats and crashes with exception when it doesn't get the format it expected (even returning None or '' is more acceptable). Hence a need for multiple formats. Hence this does address the question asked, and I spent a bit of time figuring out the most Pythonic way to handle errors from multiple formats. – smci Oct 2 '18 at 19:38
  • "huge list... database" simply implies that there are a lot of them, not that they are all different formats. It is totally acceptable to write code which reads a single format, if you know that there is a single format in the input. In this case it should crash if it is passed something that is not in the right format. – RoG Oct 3 '18 at 7:28
  • @RoG: it is unacceptable to write production code which crashes on wrong-format/ mangled Unicode/ truncated/ missing/ data, NaNs, M/D/Y vs D/M/Y format, YY vs YYYY, etc. Especially if those exceptions can be avoided with a seven-liner solution as I showed. Most real-world "huge databases" are like that. Just because the OP didn't explicitly say that doesn't mean it's not the typical context. I'm not going to bicker with you. What sort of datasets do you work on and why do you think those assumptions are reasonable? Unless we're only talking about toy code which requires constant intervention. – smci Jun 25 '19 at 19:36
  • 1
    It seems a bit foolish to assume with complete certainty that the OP must have data that never ever has inconsistencies. Yes it's possible to have data like that, but no we cannot assume that's the case here. I thought this answer was useful, certainly to me whose searching for similar answers to a very similar question, where inconsistencies are definitely an issue. – Paul Miller Feb 14 '20 at 16:52
emp = pd.read_csv("C:\\py\\programs\\pandas_2\\pandas\\employees.csv")

it shows "Start Date Time" Column and "Last Login Time" both are "object = strings" in data-frame

<class 'pandas.core.frame.DataFrame'>
RangeIndex: 1000 entries, 0 to 999
Data columns (total 8 columns):
First Name           933 non-null object
Gender               855 non-null object
Start Date           1000 non-null object

Last Login Time      1000 non-null object
Salary               1000 non-null int64
Bonus %              1000 non-null float64
Senior Management    933 non-null object
Team                 957 non-null object
dtypes: float64(1), int64(1), object(6)
memory usage: 62.6+ KB

By using parse_dates option in read_csv mention you can convert your string datetime into pandas datetime format.

emp = pd.read_csv("C:\\py\\programs\\pandas_2\\pandas\\employees.csv", parse_dates=["Start Date", "Last Login Time"])

<class 'pandas.core.frame.DataFrame'>
RangeIndex: 1000 entries, 0 to 999
Data columns (total 8 columns):
First Name           933 non-null object
Gender               855 non-null object
Start Date           1000 non-null datetime64[ns]
Last Login Time      1000 non-null datetime64[ns]
Salary               1000 non-null int64
Bonus %              1000 non-null float64
Senior Management    933 non-null object
Team                 957 non-null object
dtypes: datetime64[ns](2), float64(1), int64(1), object(4)
memory usage: 62.6+ KB

It seems using pandas Timestamp is the fastest

import pandas as pd 

N = 1000

l = ['Jun 1 2005  1:33PM'] * N

list(pd.to_datetime(l, format=format))

%timeit _ = list(pd.to_datetime(l, format=format))
1.58 ms ± 21.6 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

Other solutions

from datetime import datetime
%timeit _ = list(map(lambda x: datetime.strptime(x, format), l))
9.41 ms ± 95.7 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

from dateutil.parser import parse
%timeit _ = list(map(lambda x: parse(x), l))
73.8 ms ± 1.14 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

If the string is ISO8601 string please use csio8601

import ciso8601

l = ['2014-01-09'] * N

%timeit _ = list(map(lambda x: ciso8601.parse_datetime(x), l))
186 µs ± 4.13 µs per loop (mean ± std. dev. of 7 runs, 10000 loops each)

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