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News/Does Your Wildfire Prediction Model Actually Work, or Just Score Well?
arxiv
PublishedMay 25, 2026 at 4:00 AM
—neutral

Does Your Wildfire Prediction Model Actually Work, or Just Score Well?

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arxiv.orgfull article ↗
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Publisher summary· verbatim

arXiv:2605.18911v2 Announce Type: replace-cross Abstract: Wildfire prediction is important for early warning and resource allocation, yet existing Earth foundation models (Earth FMs) are pretrained for general atmospheric and geophysical objectives rather than wildfire forecasting. To address this g

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Mentioned models
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  • 01
    WILDFIRE-FM
Source
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arxiv
Read original ↗All from arxiv →
Tags
04
#wildfire-prediction#earth-foundation-models#machine-learning#evaluation-framework

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Mentioned models
01
  • 01
    WILDFIRE-FM
Source
↗
arxiv
Read original ↗All from arxiv →
Tags
04
#wildfire-prediction#earth-foundation-models#machine-learning#evaluation-framework

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