2024
DOI: 10.69997/sct.184704
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Mining Chemical Process Information from Literature for Generative Process Design: A Perspective

Artur M. Schweidtmann

Abstract: Artificial intelligence (AI) and particularly generative AI led to recent breakthroughs, e.g., in generating text and images. There is also a potential of these technologies in chemical engineering, but the lack of structured big domain-relevant data hinders advancements. I envision an open Chemical Engineering Knowledge Graph (ChemEngKG) that provides big open and linked chemical process information. In this article, I present the concept of �flowsheet mining� as the first step towards the ChemEngKG. Flowshee… Show more

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