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On Tuesday 1 July 2025, a first version of the probabilistic model of the Artificial Intelligence Forecasting System (AIFS) will be released and supported operationally. The model version is AIFS ENS v1, which will replace the current experimental model AIFS ENS DIFF. AIFS ENS data has undergone internal analysis, demonstrating significant skill and highlighting its transformative impact. We encourage users to read this webpage, which outlines outstanding known issues, before considering using the data for operational use/integration in applications. We would welcome any feedback. Please note that this release does not impact users of the IFS and AIFS Single models in any way. The current operational version of IFS was successfully implemented on 12 November 2024. The current operational version of AIFS Single was successfully implemented on 25 February 2025. |
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Join us for the webinar introducing the AIFS ENS model on 9AM UTC! Read more and register here |
Input and output parameters
The table below shows the parameters that will be input and output by AIFS ENS v1.
Control and perturbed forecast products
Field | Level type | Input/Output |
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Geopotential (z) | Pressure level: 50, 100, 150, 200, 250, 300, 400, 500, 600, 700, 850, 925, 1000 | Both ("Prognostic") |
2 metre dewpoint temperature (2d) 2 metre temperature (2t) 10 metre U wind component (10u) 10 metre V wind component (10v) Mean sea level pressure (msl) Skin temperature (skt) Surface pressure (sp) Total column water (tcw) | Surface | Both ("Prognostic") |
Soil temperature (sot), at solid depth 1 and 2 | Soil layer level | Both ("Prognostic") |
Total precipitation (tp) | Surface | Output ("Diagnostic") |
Standard deviation of sub-gridscale orography (sdor) Land-sea mask (lsm), orography, insolation, latitude/longitude, time of day/day of year | Surface | Input ("Forcings") |
Post-processed products
Field | Statistic | Level type |
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2 metre temperature 10 metre wind speed 100 metre wind speed Mean sea level pressure | Ensemble mean and standard deviation | Surface |
Geopotential, temperature, wind speed | Ensemble mean and standard deviation | Pressure level: 250, 300, 500, 850, 1000 |
2 metre temperature less than 273.15 K Total precipitation of less than 0.1 mm 10 metre Wind speed of at least 10 m/s and 15 m/s Total precipitation of at least 1 mm/5 mm/10 mm/20 mm/25 mm/50 mm/100 mm Total precipitation rate less than 1 mm/day Total precipitation rate of at least 3 mm/day Total precipitation rate of at least 5 mm/day | Probabilities | Surface |
More detailed information about the post processed parameters in AIFS ENS v1 is provided in the table below.
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Ensemble mean and (type=em) standard deviation (type=es)
Probabilities (type=ep)
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Technical content
GRIB encoding
Software
To handle the data of AIFS ENS v1, we recommend use of the ECMWF software packages:
ecCodes 2.40.0
CodesUI 1.8.0 (minimum version 1.7.3)
Magics 4.15.4 (minimum version 4.13.0)
Metview 5.22.1
ecmwf-opendata 0.3.19 (model
keyword should explicitly be provided as aifs-ens
)
On the ATOS HPC these versions correspond to ecmwf-toolbox/2025.02.0.0.
Older versions of eccodes and the ecmwf-toolbox will still work in terms of reading the data from AIFS ENS v1.
Availability of AIFS ENS v1 test data
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Please note that test data will not be available via ecCharts or Open Charts. Graphical products from AIFS ENS v1 will be available to the user community on implementation day (1 July 2025). |
Test data in MARS
Test data is available from 01 December 2024 12z run in the MARS archive with experiment version 103. Use the MARS keywords expver=103, class=ai and model=aifs-ens to retrieve this data. Please note that only users registered with access to MARS are able to access these test datasets. The test data must not be used for operational forecasting. Please report any problems you find with this data via the ECMWF Support Portal.
Test data in dissemination
Test data will be made available on Monday 23 June.
Dissemination file naming convention
The test data file names end with '0103', corresponding to the experiment version of the test data (see File naming convention and format for real-time data#Naming-AIFSviadissemination for further details about the AIFS file naming convention).
Dissemination requests
A new MARS keyword "model" is required in dissemination requests with class=ai. The model keyword identifies the AI model that was used to produce the forecast. For AIFS ENS v1, the model keyword is "aifs-ens".
Test data on ECMWF's Open Data platform
Test data on Open Data Platform will be made available soon, before AIFS ENS v1 goes operational on Tuesday, July 1, 2025.
Resources
Webinar
Webinar presenting AIFS-ENS will be held on 10AM BST (11AM CEST). You can register here: https://events.ecmwf.int/event/487/References
- AIFS-CRPS: Ensemble forecasting using a model trained with a loss function based on the continuous ranked probability score, Lang, S., Alexe, M., Clare, M., Roberts, C., Adewoyin, R., Ben Bouallègue, Z., Chantry, M., Dramsch, J., Dueben, P., Hahner, S., Maciel, P., Prieto-Nemesio, A., O’Brien, C., Pinault, F., Polster, J., Raoult, B., Tietsche, S., Leutbecher, M.
- A new tool to understand changes in ensemble forecast skill, Leutbecher, M., Haiden, T., ECMWF Newsletter No 166 - Winter 2021