GloFAS reforecast

import climetlab as cml
import climetlab_cems_flood as cmf
ps = {'name':'pontelagoscuro','lat':44.886111, 'lon':11.604444}
ref = cml.load_dataset(
            'cems-glofas-reforecast',
            model='lisflood',
            product_type='ensemble_perturbed_reforecasts',
            system_version='version_3_1',
            temporal_filter= '2018 07 01-10',
            leadtime_hour = '24-72',
            variable="river_discharge_in_the_last_24_hours",
            coords= [ps],
            split_on = ['hday'],
            threads = 6
        )
ref.to_xarray()
<xarray.Dataset>
Dimensions:                  (realization: 10, forecast_reference_time: 3,
                              leadtime: 3, lat: 2, lon: 2)
Coordinates:
  * realization              (realization) int64 1 2 3 4 5 6 7 8 9 10
  * forecast_reference_time  (forecast_reference_time) datetime64[ns] 2018-07...
  * leadtime                 (leadtime) timedelta64[ns] 1 days 2 days 3 days
  * lat                      (lat) float64 44.85 44.95
  * lon                      (lon) float64 11.55 11.65
    time                     (forecast_reference_time, leadtime) datetime64[ns] ...
Data variables:
    dis24                    (realization, forecast_reference_time, leadtime, lat, lon) float32 ...
Attributes:
    GRIB_edition:            2
    GRIB_centre:             ecmf
    GRIB_centreDescription:  European Centre for Medium-Range Weather Forecasts
    GRIB_subCentre:          0
    Conventions:             CF-1.7
    institution:             European Centre for Medium-Range Weather Forecasts
    history:                 2023-01-02T10:13 GRIB to CDM+CF via cfgrib-0.9.1...