141

My dataframe has a DOB column (example format 1/1/2016) which by default gets converted to pandas dtype 'object': DOB object

Converting this to date format with df['DOB'] = pd.to_datetime(df['DOB']), the date gets converted to: 2016-01-26 and its dtype is: DOB datetime64[ns].

Now I want to convert this date format to 01/26/2016 or in any other general date formats. How do I do it?

Whatever the method I try, it always shows the date in 2016-01-26 format.

1
  • Are you looking for a solution that only works under Jupyter notebook? (in which case use a per-column 'styler') or works in plain Python console and iPython? – smci Apr 20 '20 at 8:44
270

You can use dt.strftime if you need to convert datetime to other formats (but note that then dtype of column will be object (string)):

import pandas as pd

df = pd.DataFrame({'DOB': {0: '26/1/2016', 1: '26/1/2016'}})
print (df)
         DOB
0  26/1/2016 
1  26/1/2016

df['DOB'] = pd.to_datetime(df.DOB)
print (df)
         DOB
0 2016-01-26
1 2016-01-26

df['DOB1'] = df['DOB'].dt.strftime('%m/%d/%Y')
print (df)
         DOB        DOB1
0 2016-01-26  01/26/2016
1 2016-01-26  01/26/2016
12
  • 39
    'strftime' converts the datetime column to unicode for applying the operation on DOB1 we again have to convert it to datetime. Isn't there any other way of formating without losing the data_type? – M.Zaman Nov 24 '17 at 12:02
  • 1
    @jezrael, is there any better solution which retains also the datatype and does not return the dates to an object column? The problem is that if try to convert it after the line 'df['DOB1'] = df['DOB'].dt.strftime('%m/%d/%Y')' as it is suggested at the solution above then the dates return back to their original format. – Outcast Feb 21 '19 at 14:16
  • haha, so how can I do this if I want to use then this column for a .merge on a datetime column of another dataframe? Does it make any sense to convert the other datetime column to an object column to do the .merge? – Outcast Feb 21 '19 at 14:20
  • Yes apparently I agree but by "Not exist :( " you said me that I cannot convert the column to datetime after changing its format without losing its new format. So? – Outcast Feb 21 '19 at 14:24
  • Ok, so as far as I understand, the .merge can be still done correctly if both the columns are datetimes columns even if they do not have the exact same format. Is this right? – Outcast Feb 21 '19 at 14:29
29

Changing the format but not changing the type:

df['date'] = pd.to_datetime(df["date"].dt.strftime('%Y-%m'))
3
  • just remember that df["date"] should be datetime64 before you do this – adhg Jul 18 '19 at 14:59
  • 9
    No! Suppose the original value of some item in the date column is “November 26, 2019”. strftime() means "string from time", so df["date"].dt.strftime('%Y-%m') will be a string "2019-11" for that item. Then, pd.to_datetime() will convert this string back to the datetime64 format, but now as “November 1, 2019”! So the result will be: No format change, but the change of the date value itself! – MarianD Feb 17 '20 at 23:38
  • 5
    @MarianD: all your comments on individual answers are useful, but can you please summarize them in one rollup of "Pitfalls/Don't do these" at the bottom of your answer? Also you need to state clearly what the problem with each of these is: if any of the input dates isn't in the expected format, these will either risk throwing exceptions, or mangle the date. Simply writing "No!" everywhere doesn't convey that. – smci Apr 20 '20 at 8:29
10

The below code worked for me instead of the previous one - try it out !

df['DOB']=pd.to_datetime(df['DOB'].astype(str), format='%m/%d/%Y')
1
  • 4
    No! Your format='%m/%d/%Y' parameter is for parsing a string, i.e. you are supposed to provide the string in such a format (e. g. "5/13/2019"). Nothing more, no format change. It will be still displayed as 2019-05-13 — or it will raise an exception, if df['DOB'].astype(str) contains item(s) not in such a format, e. g. in a format "2019-05-13". – MarianD Feb 18 '20 at 0:04
6

Compared to the first answer, I will recommend to use dt.strftime() first, then pd.to_datetime(). In this way, it will still result in the datetime data type.

For example,

import pandas as pd

df = pd.DataFrame({'DOB': {0: '26/1/2016 ', 1: '26/1/2016 '})
print(df.dtypes)

df['DOB1'] = df['DOB'].dt.strftime('%m/%d/%Y')
print(df.dtypes)

df['DOB1'] = pd.to_datetime(df['DOB1'])
print(df.dtypes)
2
  • 2
    This does not work at least in my case. Specifically, the column is converted to datetime data type but also the values are converted to the original format! – Outcast Feb 21 '19 at 13:58
  • No! Syntax error (missing brace), in my version of Pandas (0.25.1) another syntax error (dt.strftime() — can only use .dt accessor with datetimelike values) - you rely on inherent data type, but in different versions of Pandas the inherent data types may be different), and a strange logic — why to convert datetime to string and then back to datetime? See my comment to rishi jain's answer. – MarianD Feb 18 '20 at 0:27
6

There is a difference between

  • the content of a dataframe cell (a binary value) and
  • its presentation (displaying it) for us, humans.

So the question is: How to reach the appropriate presentation of my datas without changing the data / data types themselves?

Here is the answer:

  • If you use the Jupyter notebook for displaying your dataframe, or
  • if you want to reach a presentation in the form of an HTML file (even with many prepared superfluous id and class attributes for further CSS styling — you may or you may not use them),

use styling. Styling don't change data / data types of columns of your dataframe.

Now I show you how to reach it in the Jupyter notebook — for a presentation in the form of HTML file see the note near the end of the question.

I will suppose that your column DOB already has the type datetime64 (you shown that you know how to reach it). I prepared a simple dataframe (with only one column) to show you some basic styling:

  • Not styled:

       df
    
          DOB
0  2019-07-03
1  2019-08-03
2  2019-09-03
3  2019-10-03
  • Styling it as mm/dd/yyyy:

       df.style.format({"DOB": lambda t: t.strftime("%m/%d/%Y")})
    
          DOB
0  07/03/2019
1  08/03/2019
2  09/03/2019
3  10/03/2019
  • Styling it as dd-mm-yyyy:

       df.style.format({"DOB": lambda t: t.strftime("%d-%m-%Y")}) 
    
          DOB
0  03-07-2019
1  03-08-2019
2  03-09-2019
3  03-10-2019

Be careful!
The returning object is NOT a dataframe — it is an object of the class Styler, so don't assign it back to df:

Don´t do this:

df = df.style.format({"DOB": lambda t: t.strftime("%m/%d/%Y")})    # Don´t do this!

(Every dataframe has its Styler object accessible by its .style property, and we changed this df.style object, not the dataframe itself.)


Questions and Answers:

  • Q: Why your Styler object (or an expression returning it) used as the last command in a Jupyter notebook cell displays your (styled) table, and not the Styler object itself?

  • A: Because every Styler object has a callback method ._repr_html_() which returns an HTML code for rendering your dataframe (as a nice HTML table).

    Jupyter Notebook IDE calls this method automatically to render objects which have it.


Note:

You don't need the Jupyter notebook for styling (i.e. for nice outputting a dataframe without changing its data / data types).

A Styler object has a method render(), too, if you want to obtain a string with the HTML code (e.g. for publishing your formatted dataframe to the Web, or simply present your table in the HTML format):

df_styler = df.style.format({"DOB": lambda t: t.strftime("%m/%d/%Y")})
HTML_string = df_styler.render()
7
  • It's worth pointing out that styler code like this is intended to be run under, and only takes effect under Jupyter notebook, and has absolutely zero effect when run in console or iPython. The OP didn't specify "under Jupyter", so this may or may not be a viable solution depending on their setup. Lots of data science code gets copy-and-pasted, and the Jupyter-specific assumptions don't get explicitly specified, then people wonder why the styler code "doesn't work" when run in their (console) environment. – smci Apr 20 '20 at 8:45
  • @smci, isn't is explicitly mentioned in the second paragraph of my answer? In the form of conditional if, statement so known for every programmer? — In spite of it thanks for your comment, it may be helpful for some people. – MarianD Apr 20 '20 at 8:48
  • no that's very unclear, also buried. The original question supposed nothing about Jupyter, and the OP and some users may not even have Jupyter available to them. Your answer would need to say in boldface its first line "The following approach (styling) only works under Jupyter notebook, and will have no effect whatsoever when run outside Jupyter notebook". (In data science blogs and sites I see on a daily basis people posting Jupyter code into non-Jupyter environments, and wondering why it doesn't work). – smci Apr 20 '20 at 8:52
  • Cool. I also suggest you add all the (many) pitfalls you identified on the other "convert-to-string-with-strftime-then-back-again-with-pd.to_datetime" approaches. At least, need to mention raising and catching exceptions. Also, pd.to_datetime() has the arguments errors='raise'/'coerce'/'ignore', dayfirst, yearfirst, utc, exact to control how precise and exception-happy it is, and whether invalid outputs get coerced to NaT or what. What makes it more complicated in "real-world" datasets is mixed/missing/incomplete formats, times, timezones, etc; exceptions are not necessarily bad things. – smci Apr 20 '20 at 9:14
  • ...or else I can write that as a rollup of pitfalls in the non-Jupyter approaches. – smci Apr 20 '20 at 9:16
2

You can try this it'll convert the date format to DD-MM-YYYY:

df['DOB'] = pd.to_datetime(df['DOB'], dayfirst = True)
1
  • No! dayfirst=True is only the specification of a date parse order, e.g. that ambivalent date string as a "2-1-2019" will be parsed as January 2, 2019, and not as February 1, 2019. Nothing more, no change for output formatting. – MarianD Feb 18 '20 at 0:46
1

Below code changes to 'datetime' type and also formats in the given format string. Works well!

df['DOB']=pd.to_datetime(df['DOB'].dt.strftime('%m/%d/%Y'))
2
  • 2
    change it to this: df['DOB']=pd.to_datetime(df['DOB']).dt.strftime('%m/%d/%Y') – John Doe Aug 20 '19 at 8:59
  • No! - Why to convert datetime to string and then back to datetime? See my comments to other answers. – MarianD Feb 18 '20 at 0:32
1

Below is the code worked for me, And we need to be very careful for format. Below link will be definitely useful for knowing your exiting format and changing into desired format(Follow strftime() and strptime() Format Codes on below link):

https://docs.python.org/3/library/datetime.html#strftime-and-strptime-behavior.

data['date_new_format'] = pd.to_datetime(data['date_to_be_changed'] , format='%b-%y')
4
  • Another confused person and misguided answer. Please read comments to other answers, they may help you understand the point. – MarianD Nov 7 '20 at 4:06
  • The provided link will help in understanding various formats of dates and its useage in python. In no answer I find this. So I posted it for the benifit of others. I don't think there is any confusion here. Kindly be specific about your comments. So that I can plan to change my answer. – Anil Kumar Nov 8 '20 at 17:41
  • I have read all the answer and comments. They are definitely useful. But adding to all this the link provided gives better understanding of different kind of date formats and conversation (*Where ever possible) – Anil Kumar Nov 8 '20 at 17:54
  • Your answer is useful, too. But usefulness is not the same as a correct answer. For example “Use deque for FIFO” is useful, too, but has nothing with the OP question. – MarianD Nov 8 '20 at 18:38

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