pandas stores timedelta data in the numpy timedelta64[ns]
type, but also provides the Timedelta
type to wrap this for more convenience (eg to provide such accessors of the days, hours, .. and other components).
In [41]: timedelta_col = pd.Series(pd.timedelta_range('1 days', periods=5, freq='2 h'))
In [42]: timedelta_col
Out[42]:
0 1 days 00:00:00
1 1 days 02:00:00
2 1 days 04:00:00
3 1 days 06:00:00
4 1 days 08:00:00
dtype: timedelta64[ns]
To access the different components of a full column (series), you have to use the .dt
accessor. For example:
In [43]: timedelta_col.dt.hours
Out[43]:
0 0
1 2
2 4
3 6
4 8
dtype: int64
With timedelta_col.dt.components
you get a frame with all the different components (days to nanoseconds) as different columns.
When accessing one value of the column above, this gives back a Timedelta
, and on this you don't need to use the dt
accessor, but you can access directly the components:
In [45]: timedelta_col[0]
Out[45]: Timedelta('1 days 00:00:00')
In [46]: timedelta_col[0].days
Out[46]: 1L
So the .dt
accessor provides access to the attributes of the Timedelta
scalar, but on the full column. That is the reason you see that df['column_with_times'][0].days
works but df['column_with_times'].days
not.
The reason that df['column_with_times'].apply(lambda x: x.days)
does not work is that apply is given the timedelta64
values (and not the Timedelta
pandas type), and these don't have such attributes.
timedelta64
doesn't have hours, days, or weeks if its units are months, years, or generic, only if they're weeks or smaller. I assume you've already gottimedelta64
values in some relevant unit (usually days, seconds, or milliseconds, or nanoseconds), so this isn't an issue for you, but it's something to be aware of.