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Machine learning as a service system for particle accelerator and its application in CSNS

  • Purpose Machine learning, as an advanced technology, has achieved remarkable success across various fields due to its powerful data processing and pattern recognition capabilities. When applied to particle accelerators, it has the potential to optimize performance, enhance operational efficiency, and drive innovation in accelerator technology. However, the adoption of machine learning often necessitates extensive knowledge of algorithms and programming, which can be time-consuming and create barriers to accessibility.
    Methods To overcome these challenges, the development of the machine learning as a service for accelerators (MLaaS4ACC) system is proposed. This system is designed to simplify the use of machine learning tools for accelerator researchers, efficiently perform machine learning tasks, and continuously expand and optimize functionalities tailored to the unique requirements of accelerator systems.
    Results and Conclusion Currently, MLaaS4ACC can effectively perform several straightforward machine learning tasks. Compared to traditional methods, it reduces the time required for actual tasks and simplifies the model training process, while yielding results that are not significantly different. The model already meets the necessary requirements. Looking ahead, it is essential to enhance and expand the system in various aspects to address more complex demands. Improvements in both the performance and functionality of MLaaS4ACC are necessary to ensure it meets these evolving requirements.
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  • Hao Mei, Yuliang Zhang, Na Peng, et al. Machine learning as a service system for particle accelerator and its application in CSNSJ. Radiation Detection Technology and Methods, 2025, 9(3): 475-484. DOI: 10.1007/s41605-025-00527-7
    Citation: Hao Mei, Yuliang Zhang, Na Peng, et al. Machine learning as a service system for particle accelerator and its application in CSNSJ. Radiation Detection Technology and Methods, 2025, 9(3): 475-484. DOI: 10.1007/s41605-025-00527-7

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