SchGen introduces a semantic code representation and a human-agent dataset pipeline to train LLMs for PCB schematic generation from text, reporting better wire connectivity and functional correctness than baselines.
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SchGen: PCB Schematic Generation with Semantic-Grounded Code Representations
SchGen introduces a semantic code representation and a human-agent dataset pipeline to train LLMs for PCB schematic generation from text, reporting better wire connectivity and functional correctness than baselines.