Physics-Informed AI, Part III: From Post-Hoc Checker to Differentiable Physics Head
Part II checked physics after generation. Part III puts the residual inside the training loop with a language-conditioned numerical head. In Part II, I fine-tuned a small LLM with LoRA to produce…
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Posted on April 20, 2026

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