xarray.core.groupby.DataArrayGroupBy.any#
- DataArrayGroupBy.any(dim=None, *, keep_attrs=None, **kwargs)[source]#
Reduce this DataArray’s data by applying
anyalong some dimension(s).- Parameters:
dim (
str,IterableofHashable,"..."orNone, default:None) – Name of dimension[s] along which to applyany. For e.g.dim="x"ordim=["x", "y"]. If None, will reduce over the GroupBy dimensions. If “…”, will reduce over all dimensions.keep_attrs (
boolorNone, optional) – If True,attrswill be copied from the original object to the new one. If False, the new object will be returned without attributes.**kwargs (
Any) – Additional keyword arguments passed on to the appropriate array function for calculatinganyon this object’s data. These could include dask-specific kwargs likesplit_every.
- Returns:
reduced (
DataArray) – New DataArray withanyapplied to its data and the indicated dimension(s) removed
See also
numpy.any,dask.array.any,DataArray.any- GroupBy: Group and Bin Data
User guide on groupby operations.
Notes
Use the
floxpackage to significantly speed up groupby computations, especially with dask arrays. Xarray will use flox by default if installed. Pass flox-specific keyword arguments in**kwargs. See the flox documentation for more.Examples
>>> da = xr.DataArray( ... np.array([True, True, True, True, True, False], dtype=bool), ... dims="time", ... coords=dict( ... time=("time", pd.date_range("2001-01-01", freq="ME", periods=6)), ... labels=("time", np.array(["a", "b", "c", "c", "b", "a"])), ... ), ... ) >>> da <xarray.DataArray (time: 6)> Size: 6B array([ True, True, True, True, True, False]) Coordinates: * time (time) datetime64[ns] 48B 2001-01-31 2001-02-28 ... 2001-06-30 labels (time) <U1 24B 'a' 'b' 'c' 'c' 'b' 'a'
>>> da.groupby("labels").any() <xarray.DataArray (labels: 3)> Size: 3B array([ True, True, True]) Coordinates: * labels (labels) object 24B 'a' 'b' 'c'