Article contents
AI-Driven Simulations and Predictions: Transforming Theoretical and Experimental Physics
Abstract
AI-driven simulations and predictions are revolutionizing both theoretical and experimental physics by enhancing accuracy, efficiency, and the scope of scientific exploration. Machine learning algorithms and deep learning models are increasingly being used to simulate complex physical systems that were once too computationally intensive or mathematically challenging. In theoretical physics, AI helps predict the behavior of quantum systems, model particle interactions, and explore uncharted areas of high-energy physics. For experimental physics, AI optimizes data analysis, automates experiments, and enhances real-time decision-making, allowing for more precise measurements and faster discoveries. AI-based predictive models also enable researchers to anticipate experimental outcomes, reducing trial-and-error approaches and accelerating the research process. This combination of AI’s power to analyze massive datasets and its capacity for generating predictive models is transforming the way physicists approach fundamental questions about the universe, leading to new insights and breakthroughs across multiple subfields.
Article information
Journal
British Journal of Physics Studies
Volume (Issue)
3 (1)
Pages
01-11
Published
Copyright
Copyright (c) 2025 https://creativecommons.org/licenses/by/4.0/
Open access

This work is licensed under a Creative Commons Attribution 4.0 International License.

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