2026 Roadmap on Artificial Intelligence and Machine Learning for Smart Manufacturing
Jay Lee, Hanqi Su, Marco Macchi, Adalberto Polenghi, Wei Wu, Zhiheng Zhao, George Q.Huang, Kiva Allgood, Devendra Jain, Benedikt Gieger, Vibhor Pandhare, Soumyabrata Bhattacharjee, Ram Mohril, Lingbao Kong, Qiyuan Wang, Xinlan Tang, Sungjong Kim, Chan Hee Park, Byeng D. Youn

TL;DR
This roadmap reviews the current state, challenges, and future directions of AI and ML in smart manufacturing, emphasizing foundational trends, key applications, and emerging non-traditional approaches.
Contribution
It provides a comprehensive overview of AI/ML foundations, applications, and new frontiers in smart manufacturing, guiding future research and industrial adoption.
Findings
AI enhances efficiency, adaptability, and autonomy in manufacturing.
Key applications include digital twins, robotics, and supply chain optimization.
Emerging approaches like physics-informed AI and foundation models open new opportunities.
Abstract
The evolution of artificial intelligence (AI) and machine learning (ML) is reshaping smart manufacturing by providing new capabilities for efficiency, adaptability, and autonomy across industrial value chains. However, the deployment of AI and ML in industrial settings still faces critical challenges, including the complexity of industrial big data, effective data management, integration with heterogeneous sensing and control systems, and the demand for trustworthy, explainable, and reliable operation in high-stakes industrial environments. In this roadmap, we present a comprehensive perspective on the foundations, applications, and emerging directions of AI and ML in smart manufacturing. It is structured in three parts. The first highlights the foundations and trends that frame the evolution of AI in smart manufacturing. The second focuses on key topics where AI is already enabling…
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