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PyTorch implementation of Ryan Keisler's 2022 "Forecasting Global Weather with Graph Neural Networks" paper (https://arxiv.org/abs/2202.07575)

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Graph Weather

All Contributors

Implementation of the Graph Weather paper (https://arxiv.org/pdf/2202.07575.pdf) in PyTorch. Additionally, an implementation of a modified model that assimilates raw or processed observations into analysis files.

Installation

This library can be installed through

pip install graph-weather

Example Usage

The models generate the graphs internally, so the only thing that needs to be passed to the model is the node features in the same order as the lat_lons.

import torch
from graph_weather import GraphWeatherForecaster
from graph_weather.models.losses import NormalizedMSELoss

lat_lons = []
for lat in range(-90, 90, 1):
    for lon in range(0, 360, 1):
        lat_lons.append((lat, lon))
model = GraphWeatherForecaster(lat_lons)

features = torch.randn((2, len(lat_lons), 78))

out = model(features)
criterion = NormalizedMSELoss(lat_lons=lat_lons, feature_variance=torch.randn((78,)))
loss = criterion(out, features)
loss.backward()

And for the assimilation model, which assumes each lat/lon point also has a height above ground, and each observation is a single value + the relative time. The assimlation model also assumes the desired output grid is given to it as well.

import torch
from graph_weather import GraphWeatherAssimilator
from graph_weather.models.losses import NormalizedMSELoss

obs_lat_lons = []
for lat in range(-90, 90, 7):
    for lon in range(0, 180, 6):
        obs_lat_lons.append((lat, lon, np.random.random(1)))
    for lon in 360 * np.random.random(100):
        obs_lat_lons.append((lat, lon, np.random.random(1)))

output_lat_lons = []
for lat in range(-90, 90, 5):
    for lon in range(0, 360, 5):
        output_lat_lons.append((lat, lon))
model = GraphWeatherAssimilator(output_lat_lons=output_lat_lons, analysis_dim=24)

features = torch.randn((1, len(obs_lat_lons), 2))
lat_lon_heights = torch.tensor(obs_lat_lons)
out = model(features, lat_lon_heights)
assert not torch.isnan(out).all()
assert out.size() == (1, len(output_lat_lons), 24)

criterion = torch.nn.MSELoss()
loss = criterion(out, torch.randn((1, len(output_lat_lons), 24)))
loss.backward()

Pretrained Weights

Coming soon! We plan to train a model on GFS 0.25 degree operational forecasts, as well as MetOffice NWP forecasts. We also plan trying out adaptive meshes, and predicting future satellite imagery as well.

Training Data

Training data will be available through HuggingFace Datasets for the GFS forecasts. The initial set of data is available for GFSv16 forecasts, raw observations, and FNL Analysis files from 2016 to 2022, and for ERA5 Reanlaysis. MetOffice NWP forecasts we cannot redistribute, but can be accessed through CEDA.

Contributors ✨

Thanks goes to these wonderful people (emoji key):

Jacob Bieker
Jacob Bieker

💻
Jack Kelly
Jack Kelly

🤔
byphilipp
byphilipp

🤔
Markus Kaukonen
Markus Kaukonen

💬
MoHawastaken
MoHawastaken

🐛
Mihai
Mihai

💬
Vitus Benson
Vitus Benson

🐛
dongZheX
dongZheX

💬
sabbir2331
sabbir2331

💬

This project follows the all-contributors specification. Contributions of any kind welcome!

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PyTorch implementation of Ryan Keisler's 2022 "Forecasting Global Weather with Graph Neural Networks" paper (https://arxiv.org/abs/2202.07575)

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  • Python 99.6%
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