CreativEval: Evaluating creativity of LLM-based hardware code generation
Matthew DeLorenzo
Computer science - computation and language
Abstract
Large Language Models (LLMs) have proved effective and efficient in generating code, leading to their utilization within the hardware design process. Prior works evaluating LLMs' abilities for register transfer level code generation solely focus on functional correctness. However, the creativity associated with these LLMs, or the ability to generate novel and unique solutions, is a metric not as well understood, in part due to the challenge of quantifying this quality. To address this research
Relevance Assessment
Research Gap
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Paper ID: 06d88400-7751-4b23-957b-162e91474c15Added: 10/26/2025