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Titel:

GenAI-Driven Approach to RISC-V Supply Chain Exploration

Dokumenttyp:
Verschiedenes
Autor(en):
Petrovic, Nenad; Schamschurko, Andre; Xu, Yingjie; Knoll, Alois
Jahr:
2026
Hinweis:
This paper presents an LLM-empowered workflow for RISC-V supply chain analysis, integrating Vision-Language Models (VLMs) and Model-Driven Engineering (MDE) to enable comprehensive, multimodal data-driven insights. The proposed approach addresses the challenges of heterogeneous and unstructured supply chain data by leveraging LLMs for textual understanding and VLMs for extracting information from visual artifacts such as diagrams, tables, and scanned documents. These models collaboratively ident...     »
URL:
https://arxiv.org/abs/2605.15223
Sprache:
de
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