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Description
What happened?
assign_coords changed its behaviour in v2023.08.0 now, when trying to assign an existing coord, it doesn't do anything...
I was using it to reorder some xarray.DataArrays, keeping the coordinate names, f.e.:
import xarray as xr
a = xr.DataArray([1, 2, 3], {'dim': ['A', 'B', 'C']})
new_order = [1, 0, 2]
a[new_order].assign_coords(a.coords)
returns
<xarray.DataArray (dim: 3)>
array([2, 1, 3])
Coordinates:
* dim (dim) <U1 'B' 'A' 'C'
I also tried to use a copy of the original coords a[new_order].assign_coords(a.coords.copy())
, but it didn't work.
The behaviour is confusing and may lead to wrong results.
What did you expect to happen?
The same code in version v2023.07.0 returned the coordinates as defined and only changed the position of the values:
<xarray.DataArray (dim: 3)>
array([2, 1, 3])
Coordinates:
* dim (dim) <U1 'A' 'B' 'C'
It also works properly passing a dictionary instead of the coords object, a[new_order].assign_coords({'dim': ['A', 'B', 'C']})
.
Minimal Complete Verifiable Example
import xarray as xr
a = xr.DataArray([1, 2, 3], {'dim': ['A', 'B', 'C']})
new_order = [1, 0, 2]
a[new_order].assign_coords(a.coords)
MVCE confirmation
- Minimal example — the example is as focused as reasonably possible to demonstrate the underlying issue in xarray.
- Complete example — the example is self-contained, including all data and the text of any traceback.
- Verifiable example — the example copy & pastes into an IPython prompt or Binder notebook, returning the result.
- New issue — a search of GitHub Issues suggests this is not a duplicate.
Relevant log output
No response
Anything else we need to know?
No response
Environment
INSTALLED VERSIONS
commit: None
python: 3.11.0 | packaged by conda-forge | (main, Jan 14 2023, 12:27:40) [GCC 11.3.0]
python-bits: 64
OS: Linux
OS-release: 5.15.0-83-generic
machine: x86_64
processor: x86_64
byteorder: little
LC_ALL: None
LANG: en_GB.UTF-8
LOCALE: ('en_GB', 'UTF-8')
libhdf5: 1.10.4
libnetcdf: 4.7.3
xarray: 2023.8.0
pandas: 2.1.0
numpy: 1.23.5
scipy: 1.10.0
netCDF4: 1.6.0
pydap: None
h5netcdf: None
h5py: None
Nio: None
zarr: None
cftime: 1.6.2
nc_time_axis: None
PseudoNetCDF: None
iris: None
bottleneck: None
dask: 2023.1.1
distributed: 2023.1.1
matplotlib: None
cartopy: None
seaborn: None
numbagg: None
fsspec: 2023.1.0
cupy: None
pint: None
sparse: None
flox: None
numpy_groupies: None
setuptools: 66.1.1
pip: 22.3.1
conda: None
pytest: 7.2.1
mypy: None
IPython: None
sphinx: None