I Just Trained a Physics-Based Earthquake Forecasting Model on a $1000 GPU
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Pre-loads all 15GB of training data into RAM at startup Zero disk reads during training (that's the bottleneck everyone hits) Uses only 0.2GB of VRAM somehow Trains 40 epochs in under 3 hours Best validation Brier score: 0.0175
For context, traditional seismic models get Brier scores around 0.05-0.15. Lower is better.
The author trained a physics-based earthquake forecasting model on a $1000 GPU, achieving state-of-the-art results and sparking discussion on the model's potential and limitations.
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Nov 3, 2025 at 7:11 PM EST
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It's the leading indicators that are actually measurable that are missing. You know the ones that allow for evacuations and other protective measures.