# Pandas Timedelta in Days

I have a dataframe in pandas called 'munged_data' with two columns 'entry_date' and 'dob' which i have converted to Timestamps using pd.to_timestamp.I am trying to figure out how to calculate ages of people based on the time difference between 'entry_date' and 'dob' and to do this i need to get the difference in days between the two columns ( so that i can then do somehting like round(days/365.25). I do not seem to be able to find a way to do this using a vectorized operation. When I do munged_data.entry_date-munged_data.dob i get the following :

internal_quote_id
2                    15685977 days, 23:54:30.457856
3                    11651985 days, 23:49:15.359744
4                     9491988 days, 23:39:55.621376
7                     11907004 days, 0:10:30.196224
9                    15282164 days, 23:30:30.196224
15                  15282227 days, 23:50:40.261632


However i do not seem to be able to extract the days as an integer so that i can continue with my calculation. Any help appreciated.

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You need 0.11 for this (0.11rc1 is out, final prob next week)

In [9]: df = DataFrame([ Timestamp('20010101'), Timestamp('20040601') ])

In [10]: df
Out[10]:
0
0 2001-01-01 00:00:00
1 2004-06-01 00:00:00

In [11]: df = DataFrame([ Timestamp('20010101'),
Timestamp('20040601') ],columns=['age'])

In [12]: df
Out[12]:
age
0 2001-01-01 00:00:00
1 2004-06-01 00:00:00

In [13]: df['today'] = Timestamp('20130419')

In [14]: df['diff'] = df['today']-df['age']

In [16]: df['years'] = df['diff'].apply(lambda x: float(x.item().days)/365)

In [17]: df
Out[17]:
age               today                diff      years
0 2001-01-01 00:00:00 2013-04-19 00:00:00 4491 days, 00:00:00  12.304110
1 2004-06-01 00:00:00 2013-04-19 00:00:00 3244 days, 00:00:00   8.887671


You need this odd apply at the end because not yet full support for timedelta64[ns] scalars (e.g. like how we use Timestamps now for datetime64[ns], coming in 0.12)

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Thanks Jeff very helpful i did not know abou the item() method. I managed to do it with 0.10 –  luckyfool Apr 19 '13 at 12:59
great! Here's some recipes and a link to new docs (in 0.11), pandas.pydata.org/pandas-docs/dev/cookbook.html#miscellaneous –  Jeff Apr 19 '13 at 13:33

Using the Pandas type Timedelta available since v0.15.0 you also can do:

In[1]: import pandas as pd
In[2]: df = pd.DataFrame([ pd.Timestamp('20150111'),
pd.Timestamp('20150301') ], columns=['date'])
In[3]: df['today'] = pd.Timestamp('20150315')
In[4]: df
Out[4]:
date      today
0 2015-01-11 2015-03-15
1 2015-03-01 2015-03-15

In[5]: (df['today'] - df['date']).dt.days
Out[5]:
0    63
1    14
dtype: int64

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Not sure if you still need it, but in Pandas 0.14 i usually use .astype('timedelta64[X]') method http://pandas.pydata.org/pandas-docs/stable/timeseries.html (frequency conversion)

df = pd.DataFrame([ pd.Timestamp('20010101'), pd.Timestamp('20040605') ])
df.ix[0]-df.ix[1]


Returns:

0   -1251 days
dtype: timedelta64[ns]

(df.ix[0]-df.ix[1]).astype('timedelta64[Y]')


Returns:

  0   -4
dtype: float64


Hope that will help

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This worked great. I switched in D for Y to get days. –  fantabolous Nov 5 '14 at 1:50

To convert any type of data into days just use Timedelta().days:

pd.Timedelta(1985, unit='Y').days
84494

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