I use pandas.to_datetime to parse the dates in my data. Pandas by default represents the dates with datetime64[ns] even though the dates are all daily only. I wonder whether there is an elegant/clever way to convert the dates to datetime.date or datetime64[D] so that, when I write the data to CSV, the dates are not appended with 00:00:00. I know I can convert the type manually element-by-element:

[dt.to_datetime().date() for dt in df.dates]

But this is really slow since I have many rows and it sort of defeats the purpose of using pandas.to_datetime. Is there a way to convert the dtype of the entire column at once? Or alternatively, does pandas.to_datetime support a precision specification so that I can get rid of the time part while working with daily data?


13 Answers 13


Since version 0.15.0 this can now be easily done using .dt to access just the date component:

df['just_date'] = df['dates'].dt.date

The above returns datetime.date, so object dtype. If you want to keep the dtype as datetime64 then you can just normalize:

df['normalised_date'] = df['dates'].dt.normalize()

This sets the time component to midnight, i.e. 00:00:00, but the display shows just the date value.

  • @edChum any way to format date in MM-DD-YYYY format?
    – Rrptm
    Apr 30, 2021 at 4:50
  • 6
    Can only use .dt accessor with datetimelike values
    – huang
    Jul 3, 2021 at 1:57

Simple Solution:

df['date_only'] = df['date_time_column'].dt.date
  • 58
    Just a warning, this changes the type to object. So you'd need to astype('datetime64') to keep consistency.
    – misantroop
    May 13, 2020 at 1:46

While I upvoted EdChum's answer, which is the most direct answer to the question the OP posed, it does not really solve the performance problem (it still relies on python datetime objects, and hence any operation on them will be not vectorized - that is, it will be slow).

A better performing alternative is:


Strictly speaking, it does not "keep only date part", since it just sets the time to 00:00:00. But it does work as desired by the OP when, for instance:

  • printing to screen
  • saving to csv
  • using the column to groupby

... and it is much more efficient, since the operation is vectorized.

EDIT: in fact, the answer the OP's would have preferred is probably "recent versions of pandas do not write the time to csv if it is 00:00:00 for all observations".

  • 1
    Unfortunately to_json still writes the full 00:00:00.
    – IanS
    May 19, 2017 at 13:40
  • @IanS do you mean when using date_format='iso'?! By default, it just outputs seconds since epoch. May 20, 2017 at 6:40
  • Yes, that's what I meant.
    – IanS
    May 23, 2017 at 8:54
  • This is faster than dt.normalize() on series longer than a few hundred elements.
    – C8H10N4O2
    Jul 21, 2017 at 20:20
  • 1
    On a df of >1 million rows, this was far faster than any of the other options I found, with the exception of normalize which was only slightly slower. In addition, keeping the date pandas-native means it can be saved to hdf stores (datetime.date columns cannot be as of pandas 1.1.4). Nov 30, 2020 at 12:45

Pandas v0.13+: Use to_csv with date_format parameter

Avoid, where possible, converting your datetime64[ns] series to an object dtype series of datetime.date objects. The latter, often constructed using pd.Series.dt.date, is stored as an array of pointers and is inefficient relative to a pure NumPy-based series.

Since your concern is format when writing to CSV, just use the date_format parameter of to_csv. For example:

df.to_csv(filename, date_format='%Y-%m-%d')

See Python's strftime directives for formatting conventions.


This is a simple way to extract the date:

import pandas as pd

d='2015-01-08 22:44:09' 
  • The OP is already using the .date() method in their question, so this solution doesn't answer their question, but I did find it useful to see a simple example of using the date() method just as a reference. Mar 14, 2018 at 22:58
  • 1
    this doesn't seem to work whne used as a lambda function for the date parser i.e. date_parser=lambda col: pd.to_datetime(col, format="%y%m%d").date()
    – rdmtinez
    Feb 25, 2021 at 19:37

Pandas DatetimeIndex and Series have a method called normalize that does exactly what you want.

You can read more about it in this answer.

It can be used as ser.dt.normalize()

df['Column'] = df['Column'].dt.strftime('%m/%d/%Y')

This will give you just the dates and NO TIME at your desired format. You can change format according to your need '%m/%d/%Y'. It will change the data type of the column to 'object'.

If you want just the dates and DO NOT want time in YYYY-MM-DD format use :

df['Column'] = pd.to_datetime(df['Column']).dt.date

The datatype will be 'object'.

For 'datetime64' datatype, use:

df['Column'] = pd.to_datetime(df['Column']).dt.normalize()

Just giving a more up to date answer in case someone sees this old post.

Adding "utc=False" when converting to datetime will remove the timezone component and keep only the date in a datetime64[ns] data type.

pd.to_datetime(df['Date'], utc=False)

You will be able to save it in excel without getting the error "ValueError: Excel does not support datetimes with timezones. Please ensure that datetimes are timezone unaware before writing to Excel."

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  • 1
    This for some reason fails after you apply any aggregate function with the column.
    – RaphX
    Jun 7, 2020 at 6:49
  • 1
    @Katekarin if you try and see df['Date'].values its will still have the time component present in it. Jul 2, 2021 at 5:21

Converting to datetime64[D]:


Though re-assigning that to a DataFrame col will revert it back to [ns].

If you wanted actual datetime.date:

dt = pd.DatetimeIndex(df.dates)
dates = np.array([datetime.date(*date_tuple) for date_tuple in zip(dt.year, dt.month, dt.day)])
  • 3
    If you are using astype('M8[D]') it transforms missing values into the origin date, 1970-1-1. Probably better to just use pandas.to_datetime() nowadays.
    – Stewbaca
    Jul 20, 2016 at 16:05
  • 1
    Note to anyone who routinely includes the datetime module as dt, this answer snipet will overwrite that module! @Dale-Jung, perhaps could change the line to something like dt_index Jul 1, 2019 at 13:46
  • I'm also finding an issue whereby the next time I try and add a new row via the df.loc[date] method, the index reverts back to a timestamp, meaning subsequent comparisons no longer work Jul 1, 2019 at 14:03

I wanted to be able to change the type for a set of columns in a data frame and then remove the time keeping the day. round(), floor(), ceil() all work

df[date_columns] = df[date_columns].apply(pd.to_datetime)
df[date_columns] = df[date_columns].apply(lambda t: t.dt.floor('d'))

On tables of >1000000 rows I've found that these are both fast, with floor just slightly faster:

df['mydate'] = df.index.floor('d')


df['mydate'] = df.index.normalize()

If your index has timezones and you don't want those in the result, do:

df['mydate'] = df.index.tz_localize(None).floor('d')

df.index.date is many times slower; to_datetime() is even worse. Both have the further disadvantage that the results cannot be saved to an hdf store as it does not support type datetime.date.

Note that I've used the index as the date source here; if your source is another column, you would need to add .dt, e.g. df.mycol.dt.floor('d')


This worked for me on UTC Timestamp (2020-08-19T09:12:57.945888)

for di, i in enumerate(df['YourColumnName']):
    df['YourColumnName'][di] = pd.Timestamp(i)

If the column is not already in datetime format:

df['DTformat'] = pd.to_datetime(df['col'])

Once it's in datetime format you can convert the entire column to date only like this:

df['DateOnly'] = df['DTformat'].apply(lambda x: x.date())

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