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I have a date column in my dataframe that consists of strings like this...'201512' I would like to convert it into a datetime object of just year to do some time series analysis.

I tried...

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

and something similar to

datetime.strptime(Date, "%Y")
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I am not sure how datetime interfaces with pandas dataframes (perhaps somebody will comment if there is special usage), but in general the datetime functions would work like this:

import datetime

date_string = "201512"
date_object = datetime.datetime.strptime(date_string, "%Y%m")
print(date_object)

Getting us:

2015-12-01 00:00:00

Now that the hard part of creating a datetime object is done we simply

print(date_object.year)

Which spits out our desired

2015

More info about the parsing operators (the "%Y%m" bit of my code) is described in the documentation

0

I would look at the module arrow

https://arrow.readthedocs.io/en/latest/

import arrow
date = arrow.now()
#example of text formatting
fdate = date.format('YYYY')

#example of converting text into datetime
date = arrow.get('201905', 'YYYYMM').datetime
0

There is a format option in pd.to_datetime,

df['Date']= pd.to_datetime(df['Date'], format='%Y')

Along with many other useful formatting features as shown in the pandas.to_datetime() documentation

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