Time series data

A major use case for xarray is multi-dimensional time-series data. Accordingly, we’ve copied many of features that make working with time-series data in pandas such a joy to xarray. In most cases, we rely on pandas for the core functionality.

Creating datetime64 data

xarray uses the numpy dtypes datetime64[ns] and timedelta64[ns] to represent datetime data, which offer vectorized (if sometimes buggy) operations with numpy and smooth integration with pandas.

To convert to or create regular arrays of datetime64 data, we recommend using pandas.to_datetime() and pandas.date_range():

In [1]: pd.to_datetime(['2000-01-01', '2000-02-02'])
Out[1]: DatetimeIndex(['2000-01-01', '2000-02-02'], dtype='datetime64[ns]', freq=None)

In [2]: pd.date_range('2000-01-01', periods=365)
Out[2]: 
DatetimeIndex(['2000-01-01', '2000-01-02', '2000-01-03', '2000-01-04',
               '2000-01-05', '2000-01-06', '2000-01-07', '2000-01-08',
               '2000-01-09', '2000-01-10',
               ...
               '2000-12-21', '2000-12-22', '2000-12-23', '2000-12-24',
               '2000-12-25', '2000-12-26', '2000-12-27', '2000-12-28',
               '2000-12-29', '2000-12-30'],
              dtype='datetime64[ns]', length=365, freq='D')

Alternatively, you can supply arrays of Python datetime objects. These get converted automatically when used as arguments in xarray objects:

In [3]: import datetime

In [4]: xr.Dataset({'time': datetime.datetime(2000, 1, 1)})
Out[4]: 
<xarray.Dataset>
Dimensions:  ()
Data variables:
    time     datetime64[ns] 2000-01-01

When reading or writing netCDF files, xarray automatically decodes datetime and timedelta arrays using CF conventions (that is, by using a units attribute like 'days since 2000-01-01').

Note

When decoding/encoding datetimes for non-standard calendars or for dates before year 1678 or after year 2262, xarray uses the netcdftime library. netcdftime was previously packaged with the netcdf4-python package but is now distributed separately. netcdftime is an optional dependency of xarray.

You can manual decode arrays in this form by passing a dataset to decode_cf():

In [5]: attrs = {'units': 'hours since 2000-01-01'}

In [6]: ds = xr.Dataset({'time': ('time', [0, 1, 2, 3], attrs)})

In [7]: xr.decode_cf(ds)
Out[7]: 
<xarray.Dataset>
Dimensions:  (time: 4)
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01 2000-01-01T01:00:00 ...
Data variables:
    *empty*

One unfortunate limitation of using datetime64[ns] is that it limits the native representation of dates to those that fall between the years 1678 and 2262. When a netCDF file contains dates outside of these bounds, dates will be returned as arrays of netcdftime.datetime objects.

Datetime indexing

xarray borrows powerful indexing machinery from pandas (see Indexing and selecting data).

This allows for several useful and suscinct forms of indexing, particularly for datetime64 data. For example, we support indexing with strings for single items and with the slice object:

In [8]: time = pd.date_range('2000-01-01', freq='H', periods=365 * 24)

In [9]: ds = xr.Dataset({'foo': ('time', np.arange(365 * 24)), 'time': time})

In [10]: ds.sel(time='2000-01')
Out[10]: 
<xarray.Dataset>
Dimensions:  (time: 744)
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01 2000-01-01T01:00:00 ...
Data variables:
    foo      (time) int64 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 ...

In [11]: ds.sel(time=slice('2000-06-01', '2000-06-10'))
Out[11]: 
<xarray.Dataset>
Dimensions:  (time: 240)
Coordinates:
  * time     (time) datetime64[ns] 2000-06-01 2000-06-01T01:00:00 ...
Data variables:
    foo      (time) int64 3648 3649 3650 3651 3652 3653 3654 3655 3656 3657 ...

You can also select a particular time by indexing with a datetime.time object:

In [12]: ds.sel(time=datetime.time(12))
Out[12]: 
<xarray.Dataset>
Dimensions:  (time: 365)
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01T12:00:00 2000-01-02T12:00:00 ...
Data variables:
    foo      (time) int64 12 36 60 84 108 132 156 180 204 228 252 276 300 ...

For more details, read the pandas documentation.

Datetime components

Similar to pandas, the components of datetime objects contained in a given DataArray can be quickly computed using a special .dt accessor.

In [13]: time = pd.date_range('2000-01-01', freq='6H', periods=365 * 4)

In [14]: ds = xr.Dataset({'foo': ('time', np.arange(365 * 4)), 'time': time})

In [15]: ds.time.dt.hour
Out[15]: 
<xarray.DataArray 'hour' (time: 1460)>
array([ 0,  6, 12, ...,  6, 12, 18])
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01 2000-01-01T06:00:00 ...

In [16]: ds.time.dt.dayofweek
Out[16]: 
<xarray.DataArray 'dayofweek' (time: 1460)>
array([5, 5, 5, ..., 5, 5, 5])
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01 2000-01-01T06:00:00 ...

The .dt accessor works on both coordinate dimensions as well as multi-dimensional data.

xarray also supports a notion of “virtual” or “derived” coordinates for datetime components implemented by pandas, including “year”, “month”, “day”, “hour”, “minute”, “second”, “dayofyear”, “week”, “dayofweek”, “weekday” and “quarter”:

In [17]: ds['time.month']
Out[17]: 
<xarray.DataArray 'month' (time: 1460)>
array([ 1,  1,  1, ..., 12, 12, 12])
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01 2000-01-01T06:00:00 ...

In [18]: ds['time.dayofyear']
Out[18]: 
<xarray.DataArray 'dayofyear' (time: 1460)>
array([  1,   1,   1, ..., 365, 365, 365])
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01 2000-01-01T06:00:00 ...

For use as a derived coordinate, xarray adds 'season' to the list of datetime components supported by pandas:

In [19]: ds['time.season']
Out[19]: 
<xarray.DataArray 'season' (time: 1460)>
array(['DJF', 'DJF', 'DJF', ..., 'DJF', 'DJF', 'DJF'],
      dtype='<U3')
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01 2000-01-01T06:00:00 ...

In [20]: ds['time'].dt.season
Out[20]: 
<xarray.DataArray 'season' (time: 1460)>
array(['DJF', 'DJF', 'DJF', ..., 'DJF', 'DJF', 'DJF'],
      dtype='<U3')
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01 2000-01-01T06:00:00 ...

The set of valid seasons consists of ‘DJF’, ‘MAM’, ‘JJA’ and ‘SON’, labeled by the first letters of the corresponding months.

You can use these shortcuts with both Datasets and DataArray coordinates.

In addition, xarray supports rounding operations floor, ceil, and round. These operations require that you supply a rounding frequency as a string argument.

In [21]: ds['time'].dt.floor('D')
Out[21]: 
<xarray.DataArray 'floor' (time: 1460)>
array(['2000-01-01T00:00:00.000000000', '2000-01-01T00:00:00.000000000',
       '2000-01-01T00:00:00.000000000', ..., '2000-12-30T00:00:00.000000000',
       '2000-12-30T00:00:00.000000000', '2000-12-30T00:00:00.000000000'], dtype='datetime64[ns]')
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01 2000-01-01T06:00:00 ...

Resampling and grouped operations

Datetime components couple particularly well with grouped operations (see GroupBy: split-apply-combine) for analyzing features that repeat over time. Here’s how to calculate the mean by time of day:

In [22]: ds.groupby('time.hour').mean()
Out[22]: 
<xarray.Dataset>
Dimensions:  (hour: 4)
Coordinates:
  * hour     (hour) int64 0 6 12 18
Data variables:
    foo      (hour) float64 728.0 729.0 730.0 731.0

For upsampling or downsampling temporal resolutions, xarray offers a resample() method building on the core functionality offered by the pandas method of the same name. Resample uses essentially the same api as resample in pandas.

For example, we can downsample our dataset from hourly to 6-hourly:

In [23]: ds.resample(time='6H')
Out[23]: <xarray.core.resample.DatasetResample at 0x7f19dce64cc0>

This will create a specialized Resample object which saves information necessary for resampling. All of the reduction methods which work with Resample objects can also be used for resampling:

In [24]: ds.resample(time='6H').mean()
Out[24]: 
<xarray.Dataset>
Dimensions:  (time: 1460)
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01 2000-01-01T06:00:00 ...
Data variables:
    foo      (time) float64 0.0 1.0 2.0 3.0 4.0 5.0 6.0 7.0 8.0 9.0 10.0 ...

You can also supply an arbitrary reduction function to aggregate over each resampling group:

In [25]: ds.resample(time='6H').reduce(np.mean)
Out[25]: 
<xarray.Dataset>
Dimensions:  (time: 1460)
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01 2000-01-01T06:00:00 ...
Data variables:
    foo      (time) float64 0.0 1.0 2.0 3.0 4.0 5.0 6.0 7.0 8.0 9.0 10.0 ...

For upsampling, xarray provides four methods: asfreq, ffill, bfill, and interpolate. interpolate extends scipy.interpolate.interp1d and supports all of its schemes. All of these resampling operations work on both Dataset and DataArray objects with an arbitrary number of dimensions.

Note

The resample api was updated in version 0.10.0 to reflect similar updates in pandas resample api to be more groupby-like. Older style calls to resample will still be supported for a short period:

In [26]: ds.resample('6H', dim='time', how='mean')
Out[26]: 
<xarray.Dataset>
Dimensions:  (time: 1460)
Coordinates:
  * time     (time) datetime64[ns] 2000-01-01 2000-01-01T06:00:00 ...
Data variables:
    foo      (time) float64 0.0 1.0 2.0 3.0 4.0 5.0 6.0 7.0 8.0 9.0 10.0 ...

For more examples of using grouped operations on a time dimension, see Toy weather data.