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Roadmap on artificial intelligence and big data techniques for superconductivity

Mohammad Yazdani-Asrami, Wenjuan Song, Antonio Morandi, Giovanni De Carne, João Murta-Pina, Anabela Pronto, Roberto Oliveira, Francesco Grilli, Enric Pardo, Michael Parizh, Boyang Shen, Tim Coombs, Tiina Salmi, Di Wu, Éric Coatanéa, Dominic A. Moseley, Rodney A. Badcock, Mengjie Zhang, Vittorio Marinozzi, Nhan Viet Tran, Maciej Wielgosz, Andrzej Skoczeń, Dimitrios Tzelepis, A. P. Sakis Meliopoulos, Nuno Vilhena, Guilherme Gonçalves Sotelo, Zhenan Jiang, V. Große, Tommaso Bagni, Diego Mauro, Carmine Senatore, Alexey Mankevich, V. A. Amelichev, Sergey Samoilenkov, Tiem Leong Yoon, Yao Wang, Renato P. Camata, Cheng-Chien Chen, Ana Madureira, Ajith Abraham

2023Superconductor Science and Technology62 citationsDOIOpen Access PDF

Abstract

Abstract This paper presents a roadmap to the application of AI techniques and big data (BD) for different modelling, design, monitoring, manufacturing and operation purposes of different superconducting applications. To help superconductivity researchers, engineers, and manufacturers understand the viability of using AI and BD techniques as future solutions for challenges in superconductivity, a series of short articles are presented to outline some of the potential applications and solutions. These potential futuristic routes and their materials/technologies are considered for a 10–20 yr time-frame.

Topics & Concepts

SuperconductivityComputer scienceFrame (networking)Big dataSystems engineeringData sciencePhysicsData miningTelecommunicationsEngineeringQuantum mechanicsSuperconducting Materials and ApplicationsPhysics of Superconductivity and MagnetismMachine Learning in Materials Science
Roadmap on artificial intelligence and big data techniques for superconductivity | Litcius