A sleep-health text generation pipeline using deterministic code for analysis followed by one LLM call achieves lower numeric error, instruction-compliance error, and cost than pure LLM baselines across 280 user-nights and six models.
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Think Fast, Talk Smart: Partitioning Deterministic and Neural Computation for Structured Health Text Generation
A sleep-health text generation pipeline using deterministic code for analysis followed by one LLM call achieves lower numeric error, instruction-compliance error, and cost than pure LLM baselines across 280 user-nights and six models.