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NWM 1km LDAS kerchunked dataset #226

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22 changes: 22 additions & 0 deletions recipes/NWM-1km/meta.yaml
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title: 'NWM-2.1-grid1km-LDAS'
description: LDAS variables at 3-hourly intervals from the US National Water Model Version 2.1 Retrospective (1980-). There are 21 LDAS variables including soil moisture, rain, snow, evapotranspiration
pangeo_forge_version: '0.9.0'
pangeo_notebook_version: '2022.07.13'
recipes:
- id: NWM-2.1-grid1km-LDAS
object: 'recipe:recipe'
provenance:
providers:
- name: 'NOAA Office of Water Prediction'
description: 'US NOAA OWP'
roles:
- provider
- licensor
url: https://water.noaa.gov/about/nwm
license: 'CC0'
maintainers:
- name: 'Rich Signell'
orcid: '0000-0003-0682-9613'
github: rsignell
bakery:
id: 'pangeo-ldeo-nsf-earthcube'
19 changes: 19 additions & 0 deletions recipes/NWM-1km/recipe.py
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import fsspec
import kerchunk

from pangeo_forge_recipes.patterns import pattern_from_file_sequence
from pangeo_forge_recipes.recipes.reference_hdf_zarr import HDFReferenceRecipe

fs = fsspec.filesystem('s3', anon=True)

all_paths = sorted(fs.glob('noaa-nwm-retrospective-2-1-pds/model_output/*/*LDAS*'))

pattern = pattern_from_file_sequence(['s3://' + path for path in all_paths], 'time')


recipe = HDFReferenceRecipe(
pattern,
netcdf_storage_options={'anon': True},
identical_dims=['x', 'y'],
preprocess=kerchunk.combine.drop('reference_time'),
)