Home

Awesome

ai-models

DISCLAIMER This project is BETA and will be Experimental for the foreseeable future. Interfaces and functionality are likely to change, and the project itself may be scrapped. DO NOT use this software in any project/software that is operational.

The ai-models command is used to run AI-based weather forecasting models. These models need to be installed independently.

Usage

Although the source code ai-models and its plugins are available under open sources licences, some model weights may be available under a different licence. For example some models make their weights available under the CC-BY-NC-SA 4.0 license, which does not allow commercial use. For more informations, please check the license associated with each model on their main home page, that we link from each of the corresponding plugins.

Prerequisites

Before using the ai-models command, ensure you have the following prerequisites:

Installation

To install the ai-models command, run the following command:

pip install ai-models

Available Models

Currently, four models can be installed:

pip install ai-models-panguweather
pip install ai-models-fourcastnet
pip install ai-models-graphcast  # Install details at https://github.com/ecmwf-lab/ai-models-graphcast
pip install ai-models-fourcastnetv2

See ai-models-panguweather, ai-models-fourcastnet, ai-models-fourcastnetv2 and ai-models-graphcast for more details about these models.

Running the models

To run model, make sure it has been installed, then simply run:

ai-models <model-name>

Replace <model-name> with the name of the specific AI model you want to run.

By default, the model will be run for a 10-day lead time (240 hours), using yesterday's 12Z analysis from ECMWF's MARS archive.

To produce a 15 days forecast, use the --lead-time HOURS option:

ai-models --lead-time 360 <model-name>

You can change the other defaults using the available command line options, as described below.

Performances Considerations

The AI models can run on a CPU; however, they perform significantly better on a GPU. A 10-day forecast can take several hours on a CPU but only around one minute on a modern GPU.

:warning: We strongly recommend running these models on a computer equipped with a GPU for optimal performance.

It you see the following message when running a model, it means that the ONNX runtime was not able to find a the CUDA libraries on your system:

[W:onnxruntime:Default, onnxruntime_pybind_state.cc:541 CreateExecutionProviderInstance] Failed to create CUDAExecutionProvider. Please reference https://onnxruntime.ai/docs/reference/execution-providers/CUDA-ExecutionProvider.html#requirements to ensure all dependencies are met.

To fix this issue, we suggest that you install ai-models in a conda environment and install the CUDA libraries in that environment. For example:

conda create -n ai-models python=3.10
conda activate ai-models
conda install cudatoolkit
pip install ai-models
...

Assets

The AI models rely on weights and other assets created during training. The first time you run a model, you will need to download the trained weights and any additional required assets.

To download the assets before running a model, use the following command:

ai-models --download-assets <model-name>

The assets will be downloaded if needed and stored in the current directory. You can provide a different directory to store the assets:

ai-models --download-assets --assets <some-directory> <model-name>

Then, later on, simply use:

ai-models --assets <some-directory>  <model-name>

or

export AI_MODELS_ASSETS=<some-directory>
ai-models <model-name>

For better organisation of the assets directory, you can use the --assets-sub-directory option. This option will store the assets of each model in its own subdirectory within the specified assets directory.

Input data

The models require input data (initial conditions) to run. You can provide the input data using different sources, as described below:

From MARS

By default, ai-models use yesterday's 12Z analysis from ECMWF, fetched from the Centre's MARS archive using the ECMWF WebAPI. You will need an ECMWF account to access that service.

To change the date or time, use the --date and --time options, respectively:

ai-models --date YYYYMMDD --time HHMM <model-name>

From the CDS

You can start the models using ERA5 (ECMWF Reanalysis version 5) data for the Copernicus Climate Data Store (CDS). You will need to create an account on the CDS. The data will be downloaded using the CDS API.

To access the CDS, simply add --input cds on the command line. Please note that ERA5 data is added to the CDS with a delay, so you will also have to provide a date with --date YYYYMMDD.

ai-models --input cds --date 20230110 --time 0000 <model-name>

From a GRIB file

If you have input data in the GRIB format, you can provide the file using the --file option:

ai-models --file <some-grib-file> <model-name>

The GRIB file can contain more fields than the ones required by the model. The ai-models command will automatically select the necessary fields from the file.

To find out the list of fields needed by a specific model as initial conditions, use the following command:

 ai-models --fields <model-name>

Output

By default, the model output will be written in GRIB format in a file called <model-name>.grib. You can change the file name with the option --path <file-name>. If the path you specify contains placeholders between { and }, multiple files will be created based on the eccodes keys. For example:

 ai-models --path 'out-{step}.grib' <model-name>

This command will create a file for each forecasted time step.

If you want to disable writing the output to a file, use the --output none option.

Command line options

It has the following options:

Input

Output

Run

Assets management

Misc. options

License

Copyright 2022, European Centre for Medium Range Weather Forecasts.

Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at

    http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License.

In applying this licence, ECMWF does not waive the privileges and immunities
granted to it by virtue of its status as an intergovernmental organisation
nor does it submit to any jurisdiction.