Reputation: 3040
Using the pandas.date_range(startdate, periods=n, freq=f)
function you can create a range of pandas Timestamp
objects where the freq
optional paramter denotes the frequency (second, minute, hour, day...) in the range.
The documentation does not mention the literals that are expected to be passed in, but after a few minutes you can easily find most of them.
However, none of 'y', 'Y', 'yr', etc. create dates with year as frequency. Does anybody know what to pass in, or if it is possible at all?
Upvotes: 33
Views: 38298
Reputation: 352
You are able to use multiples for the frequency strings. For example:
pd.date_range('01/01/2010',periods=10,freq='365D')
This code will give you a series with 01/01/2010, 01/01/2011, etc., which I think is what you are looking for. Of course, the issue here is that you will run into problems with leap years.
Upvotes: 0
Reputation: 4328
Frequency is freq='A'
for end of year frequency, 'AS'
for start of year. Check the aliases in the documentation.
eg. pd.date_range(start=pd.datetime(2000, 1, 1), periods=4, freq='A')
returns
DatetimeIndex(['2000-12-31', '2001-12-31', '2002-12-31', '2003-12-31'], dtype='datetime64[ns]', freq='A-DEC', tz=None)
If you need it to be annual from a particular time use an anchored offset,
eg. pd.date_range(start=pd.datetime(2000, 1, 1), periods=10, freq='AS-AUG')
returns
DatetimeIndex(['2000-08-01', '2001-08-01', '2002-08-01', '2003-08-01'], dtype='datetime64[ns]', freq='AS-AUG', tz=None)
To index from an arbitrary date, begin the series on that date and use a custom DateOffset
object.
eg. pd.date_range(start=pd.datetime(2000, 9, 10), periods=4, freq=pd.DateOffset(years=1))
returns
DatetimeIndex(['2000-09-10', '2001-09-10', '2002-09-10', '2003-09-10'], dtype='datetime64[ns]', freq='<DateOffset: kwds={'years': 1}>', tz=None)
Upvotes: 58
Reputation: 54340
With all those hacks, there is a clear way:
pd.date_range(start=datetime.datetime.now(),periods=5,freq='A')
A
: Annually.
365D
? Really? What about leap years?
Upvotes: 5
Reputation: 5115
You can use month and then pick every 12th month:
months=pandas.date_range(start=datetime.datetime.now(),periods=120,freq='M')
year=[months[11*i] for i in range(12)]
You can also do:
usingDays=pandas.date_range(start=datetime.datetime.now(),periods=10,freq='365D')
but that won't work so well with leap years.
Upvotes: 1