The Application of Artificial Intelligence in Quantum Mechanics: Challenges and Opportunities

Nguyen Minh Tu (1), Tran Thi Lan (2), Arnes Yuli Vandika (3)
(1) Hanoi University of Science and Technology, Viet Nam,
(2) University of Danang, Viet Nam,
(3) Universitas Bandar Lampung, Indonesia

Abstract

The intersection of artificial intelligence (AI) and quantum mechanics represents a frontier of scientific exploration, offering the potential to revolutionize our understanding of quantum systems. Despite the promise, significant challenges remain in effectively integrating AI techniques within quantum mechanics frameworks. This study aims to investigate the applications of AI in quantum mechanics, identifying both the challenges and opportunities presented by this interdisciplinary approach. The focus is on understanding how AI can enhance quantum simulations, optimize computations, and improve experimental designs. A comprehensive literature review was conducted, analyzing recent advancements in AI algorithms applied to quantum mechanics. Case studies were examined to illustrate successful implementations and the limitations encountered. Key metrics for evaluation included computational efficiency, accuracy, and scalability. Findings indicate that AI techniques, particularly machine learning and neural networks, can significantly expedite quantum simulations and enhance predictive accuracy. However, challenges such as data sparsity, interpretability of AI models, and the integration of AI with quantum algorithms were identified as significant barriers to progress. This research highlights the transformative potential of AI in advancing quantum mechanics while acknowledging the inherent challenges. Addressing these challenges will require collaborative efforts across disciplines, paving the way for innovative solutions that leverage AI to deepen our understanding of quantum phenomena and improve technological applications.

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Authors

Nguyen Minh Tu
nguyenminhtu@gmail.com (Primary Contact)
Tran Thi Lan
Arnes Yuli Vandika
Tu, N. M., Lan, T. T., & Vandika, A. Y. (2024). The Application of Artificial Intelligence in Quantum Mechanics: Challenges and Opportunities. Research of Scientia Naturalis, 1(5), 278–287. https://doi.org/10.70177/scientia.v1i6.1583

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