AI for Better UX in Computer-Aided Engineering: Is Academia Catching Up with Industry Demands? A Multivocal Literature Review
By: Choro Ulan Uulu , Mikhail Kulyabin , Layan Etaiwi and more
Potential Business Impact:
Makes computer design programs easier to use.
Computer-Aided Engineering (CAE) enables simulation experts to optimize complex models, but faces challenges in user experience (UX) that limit efficiency and accessibility. While artificial intelligence (AI) has demonstrated potential to enhance CAE processes, research integrating these fields with a focus on UX remains fragmented. This paper presents a multivocal literature review (MLR) examining how AI enhances UX in CAE software across both academic research and industry implementations. Our analysis reveals significant gaps between academic explorations and industry applications, with companies actively implementing LLMs, adaptive UIs, and recommender systems while academic research focuses primarily on technical capabilities without UX validation. Key findings demonstrate opportunities in AI-powered guidance, adaptive interfaces, and workflow automation that remain underexplored in current research. By mapping the intersection of these domains, this study provides a foundation for future work to address the identified research gaps and advance the integration of AI to improve CAE user experience.
Similar Papers
UXer-AI Collaboration Process for Enhancing Trust
Human-Computer Interaction
Helps designers trust and use AI better.
Toward AI-driven Multimodal Interfaces for Industrial CAD Modeling
Human-Computer Interaction
Helps designers build 3D models faster with AI.
Atlas of Human-AI Interaction (v1): An Interactive Meta-Science Platform for Large-Scale Research Literature Sensemaking
Human-Computer Interaction
Shows how AI design changes people's actions.