Large language models derive exact analytical GPU thread mappings for complex 2D/3D domains and fractals via in-context learning, outperforming symbolic regression and enabling up to thousands-fold speedups and energy reductions.
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Leveraging Mathematical Reasoning of LLMs for Efficient GPU Thread Mapping
Large language models derive exact analytical GPU thread mappings for complex 2D/3D domains and fractals via in-context learning, outperforming symbolic regression and enabling up to thousands-fold speedups and energy reductions.