xarray.core.resample.DataArrayResample

class xarray.core.resample.DataArrayResample(*args, dim=None, resample_dim=None, **kwargs)[source]

DataArrayGroupBy object specialized to time resampling operations over a specified dimension

__init__(*args, dim=None, resample_dim=None, **kwargs)[source]

Create a GroupBy object

Parameters
  • obj (Dataset or DataArray) – Object to group.

  • group (DataArray) – Array with the group values.

  • squeeze (bool, optional) – If “group” is a coordinate of object, squeeze controls whether the subarrays have a dimension of length 1 along that coordinate or if the dimension is squeezed out.

  • grouper (pandas.Grouper, optional) – Used for grouping values along the group array.

  • bins (array-like, optional) – If bins is specified, the groups will be discretized into the specified bins by pandas.cut.

  • restore_coord_dims (bool, default: True) – If True, also restore the dimension order of multi-dimensional coordinates.

  • cut_kwargs (dict, optional) – Extra keyword arguments to pass to pandas.cut

Methods

__init__(*args[, dim, resample_dim])

Create a GroupBy object

all([dim, axis])

Reduce this DataArrayResample’s data by applying all along some dimension(s).

any([dim, axis])

Reduce this DataArrayResample’s data by applying any along some dimension(s).

apply(func[, args, shortcut])

Backward compatible implementation of map

asfreq()

Return values of original object at the new up-sampling frequency; essentially a re-index with new times set to NaN.

assign_coords([coords])

Assign coordinates by group.

backfill([tolerance])

Backward fill new values at up-sampled frequency.

bfill([tolerance])

Backward fill new values at up-sampled frequency.

count([dim, axis])

Reduce this DataArrayResample’s data by applying count along some dimension(s).

ffill([tolerance])

Forward fill new values at up-sampled frequency.

fillna(value)

Fill missing values in this object by group.

first([skipna, keep_attrs])

Return the first element of each group along the group dimension

interpolate([kind])

Interpolate up-sampled data using the original data as knots.

last([skipna, keep_attrs])

Return the last element of each group along the group dimension

map(func[, shortcut, args])

Apply a function to each array in the group and concatenate them together into a new array.

max([dim, axis, skipna])

Reduce this DataArrayResample’s data by applying max along some dimension(s).

mean([dim, axis, skipna])

Reduce this DataArrayResample’s data by applying mean along some dimension(s).

median([dim, axis, skipna])

Reduce this DataArrayResample’s data by applying median along some dimension(s).

min([dim, axis, skipna])

Reduce this DataArrayResample’s data by applying min along some dimension(s).

nearest([tolerance])

Take new values from nearest original coordinate to up-sampled frequency coordinates.

pad([tolerance])

Forward fill new values at up-sampled frequency.

prod([dim, axis, skipna])

Reduce this DataArrayResample’s data by applying prod along some dimension(s).

quantile(q[, dim, interpolation, …])

Compute the qth quantile over each array in the groups and concatenate them together into a new array.

reduce(func[, dim, axis, keep_attrs, shortcut])

Reduce the items in this group by applying func along some dimension(s).

std([dim, axis, skipna])

Reduce this DataArrayResample’s data by applying std along some dimension(s).

sum([dim, axis, skipna])

Reduce this DataArrayResample’s data by applying sum along some dimension(s).

var([dim, axis, skipna])

Reduce this DataArrayResample’s data by applying var along some dimension(s).

where(cond[, other])

Return elements from self or other depending on cond.

Attributes

dims

groups

Mapping from group labels to indices.