A LoRA-fine-tuned LLM trained on 536k physics-simulated buildings recommends optimal residential energy retrofits from natural language inputs with 98.9% top-3 accuracy for maximum CO2 reduction.
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Catalyzing Informed Residential Energy Retrofit Decisions via Domain-Specific LLM
A LoRA-fine-tuned LLM trained on 536k physics-simulated buildings recommends optimal residential energy retrofits from natural language inputs with 98.9% top-3 accuracy for maximum CO2 reduction.