122

I have a Pandas data frame, one of the column contains date strings in the format YYYY-MM-DD

For e.g. '2013-10-28'

At the moment the dtype of the column is object.

How do I convert the column values to Pandas date format?

10 Answers 10

132

Essentially equivalent to @waitingkuo, but I would use pd.to_datetime here (it seems a little cleaner, and offers some additional functionality e.g. dayfirst):

In [11]: df
Out[11]:
   a        time
0  1  2013-01-01
1  2  2013-01-02
2  3  2013-01-03

In [12]: pd.to_datetime(df['time'])
Out[12]:
0   2013-01-01 00:00:00
1   2013-01-02 00:00:00
2   2013-01-03 00:00:00
Name: time, dtype: datetime64[ns]

In [13]: df['time'] = pd.to_datetime(df['time'])

In [14]: df
Out[14]:
   a                time
0  1 2013-01-01 00:00:00
1  2 2013-01-02 00:00:00
2  3 2013-01-03 00:00:00

Handling ValueErrors
If you run into a situation where doing

df['time'] = pd.to_datetime(df['time'])

Throws a

ValueError: Unknown string format

That means you have invalid (non-coercible) values. If you are okay with having them converted to pd.NaT, you can add an errors='coerce' argument to to_datetime:

df['time'] = pd.to_datetime(df['time'], errors='coerce')
9
  • Hi Guys, @AndyHayden can you remove the time part from the date? I don't need that part?
    – yoshiserry
    Mar 14 '14 at 1:31
  • In pandas' 0.13.1 the trailing 00:00:00s aren't displayed. Mar 14 '14 at 1:33
  • and what about in other versions, how do we remove / and or not display them?
    – yoshiserry
    Mar 14 '14 at 1:37
  • I don't think this can be done in a nice way, there is discussion to add date_format like float_format (which you've seen). I recommend upgrading anyway. Mar 14 '14 at 1:39
  • my problem is my date is in this format... 41516.43, and I get this error. I would expect it to return something like 2014-02-03 in the new column?! THE ERROR: #convert date values in the "load_date" column to dates budget_dataset['date_last_load'] = pd.to_datetime(budget_dataset['load_date']) budget_dataset -c:2: SettingWithCopyWarning: A value is trying to be set on a copy of a slice from a DataFrame. Try using .loc[row_index,col_indexer] = value instead
    – yoshiserry
    Mar 14 '14 at 2:07
131

Use astype

In [31]: df
Out[31]: 
   a        time
0  1  2013-01-01
1  2  2013-01-02
2  3  2013-01-03

In [32]: df['time'] = df['time'].astype('datetime64[ns]')

In [33]: df
Out[33]: 
   a                time
0  1 2013-01-01 00:00:00
1  2 2013-01-02 00:00:00
2  3 2013-01-03 00:00:00
7
  • 1
    Nice - thank you - how do I get rid of the 00:00:00 at the end of each date?
    – user7289
    May 31 '13 at 8:39
  • 1
    The pandas timestamp have both date and time. Do you mean convert it into python date object?
    – waitingkuo
    May 31 '13 at 8:42
  • 12
    You can convert it by df['time'] = [time.date() for time in df['time']]
    – waitingkuo
    May 31 '13 at 10:30
  • 4
    what does the [ns] mean, can you make the text string a date and remove the time part of that date?
    – yoshiserry
    Mar 13 '14 at 23:40
  • 1
    @yoshiserry it's nanoseconds, and is the way the dates are stored under the hood once converted properly (epoch-time in nanoseconds). Mar 14 '14 at 1:35
41

I imagine a lot of data comes into Pandas from CSV files, in which case you can simply convert the date during the initial CSV read:

dfcsv = pd.read_csv('xyz.csv', parse_dates=[0]) where the 0 refers to the column the date is in.
You could also add , index_col=0 in there if you want the date to be your index.

See https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.read_csv.html

1
23

Now you can do df['column'].dt.date

Note that for datetime objects, if you don't see the hour when they're all 00:00:00, that's not pandas. That's iPython notebook trying to make things look pretty.

5
  • 2
    This one does not work for me, it complains: Can only use .dt accessor with datetimelike values
    – smishra
    May 23 '18 at 15:26
  • 2
    you may have to do df[col] = pd.to_datetime(df[col]) first to convert your column to date time objects.
    – szeitlin
    May 24 '18 at 23:42
  • 2
    The issue with this answer is that it converts the column to dtype = object which takes up considerably more memory than a true datetime dtype in pandas.
    – elPastor
    Jan 10 '19 at 15:19
  • .dt.date absolutely should not be used with any sizable dataset because: (1) It uses dtype object which is very difficult to work with in Pandas if the dataset is large (having 200 million or more rows) (2) It fails to be written to parquet by fastparquet.
    – Asclepius
    Feb 14 at 18:50
  • This person didn't say anything about the size of the dataset, or about parquet.
    – szeitlin
    Feb 17 at 17:41
8

If you want to get the DATE and not DATETIME format:

df["id_date"] = pd.to_datetime(df["id_date"]).dt.date
1
  • .dt.date absolutely should not be used with any sizable dataset because: (1) It uses dtype object which is very difficult to work with in Pandas if the dataset is large (having 200 million or more rows) (2) It fails to be written to parquet by fastparquet.
    – Asclepius
    Feb 14 at 18:50
6

Another way to do this and this works well if you have multiple columns to convert to datetime.

cols = ['date1','date2']
df[cols] = df[cols].apply(pd.to_datetime)
3
  • Question ask for date not datetime. Jul 3 '19 at 14:34
  • @MarkAndersen aslong as you have date only values in your columns, convertion to datetime will retain pertaining information only. If you explicity convert using df['datetime_col'].dt.date that will result to an object dtype; loss in memory management. Aug 10 '20 at 13:33
  • There is no reason to use .apply here, considering a direct use of pd.to_datetime works.
    – Asclepius
    Feb 14 at 18:51
2

It may be the case that dates need to be converted to a different frequency. In this case, I would suggest setting an index by dates.

#set an index by dates
df.set_index(['time'], drop=True, inplace=True)

After this, you can more easily convert to the type of date format you will need most. Below, I sequentially convert to a number of date formats, ultimately ending up with a set of daily dates at the beginning of the month.

#Convert to daily dates
df.index = pd.DatetimeIndex(data=df.index)

#Convert to monthly dates
df.index = df.index.to_period(freq='M')

#Convert to strings
df.index = df.index.strftime('%Y-%m')

#Convert to daily dates
df.index = pd.DatetimeIndex(data=df.index)

For brevity, I don't show that I run the following code after each line above:

print(df.index)
print(df.index.dtype)
print(type(df.index))

This gives me the following output:

Index(['2013-01-01', '2013-01-02', '2013-01-03'], dtype='object', name='time')
object
<class 'pandas.core.indexes.base.Index'>

DatetimeIndex(['2013-01-01', '2013-01-02', '2013-01-03'], dtype='datetime64[ns]', name='time', freq=None)
datetime64[ns]
<class 'pandas.core.indexes.datetimes.DatetimeIndex'>

PeriodIndex(['2013-01', '2013-01', '2013-01'], dtype='period[M]', name='time', freq='M')
period[M]
<class 'pandas.core.indexes.period.PeriodIndex'>

Index(['2013-01', '2013-01', '2013-01'], dtype='object')
object
<class 'pandas.core.indexes.base.Index'>

DatetimeIndex(['2013-01-01', '2013-01-01', '2013-01-01'], dtype='datetime64[ns]', freq=None)
datetime64[ns]
<class 'pandas.core.indexes.datetimes.DatetimeIndex'>
1

For the sake of completeness, another option, which might not be the most straightforward one, a bit similar to the one proposed by @SSS, but using rather the datetime library is:

import datetime
df["Date"] = df["Date"].apply(lambda x: datetime.datetime.strptime(x, '%Y-%d-%m').date())
0
 #   Column          Non-Null Count   Dtype         
---  ------          --------------   -----         
 0   startDay        110526 non-null  object
 1   endDay          110526 non-null  object

import pandas as pd

df['startDay'] = pd.to_datetime(df.startDay)

df['endDay'] = pd.to_datetime(df.endDay)

 #   Column          Non-Null Count   Dtype         
---  ------          --------------   -----         
 0   startDay        110526 non-null  datetime64[ns]
 1   endDay          110526 non-null  datetime64[ns]
1
  • No, this converts it to a 'datetime64[ns]' type not a 'date' type. Those are different things.
    – smci
    Mar 23 at 22:20
-1

Try to convert one of the rows into timestamp using the pd.to_datetime function and then use .map to map the formular to the entire column

0

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