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Autori principali: Zhang, Jun-Jie, Song, Jiahao, Wang, Xiu-Cheng, Li, Fu-Peng, Liu, Zehan, Chen, Jian-Nan, Dang, Haoning, Wang, Shiyao, Zhang, Yiyan, Xu, Jianhui, Shi, Chunxiang, Wang, Fei, Pang, Long-Gang, Cheng, Nan, Zhang, Weiwei, Zhang, Duo, Meng, Deyu
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2412.16234
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author Zhang, Jun-Jie
Song, Jiahao
Wang, Xiu-Cheng
Li, Fu-Peng
Liu, Zehan
Chen, Jian-Nan
Dang, Haoning
Wang, Shiyao
Zhang, Yiyan
Xu, Jianhui
Shi, Chunxiang
Wang, Fei
Pang, Long-Gang
Cheng, Nan
Zhang, Weiwei
Zhang, Duo
Meng, Deyu
author_facet Zhang, Jun-Jie
Song, Jiahao
Wang, Xiu-Cheng
Li, Fu-Peng
Liu, Zehan
Chen, Jian-Nan
Dang, Haoning
Wang, Shiyao
Zhang, Yiyan
Xu, Jianhui
Shi, Chunxiang
Wang, Fei
Pang, Long-Gang
Cheng, Nan
Zhang, Weiwei
Zhang, Duo
Meng, Deyu
contents We uncover a phenomenon largely overlooked by the scientific community utilizing AI: neural networks exhibit high susceptibility to minute perturbations, resulting in significant deviations in their outputs. Through an analysis of five diverse application areas -- weather forecasting, chemical energy and force calculations, fluid dynamics, quantum chromodynamics, and wireless communication -- we demonstrate that this vulnerability is a broad and general characteristic of AI systems. This revelation exposes a hidden risk in relying on neural networks for essential scientific computations, calling further studies on their reliability and security.
format Preprint
id arxiv_https___arxiv_org_abs_2412_16234
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Is AI Robust Enough for Scientific Research?
Zhang, Jun-Jie
Song, Jiahao
Wang, Xiu-Cheng
Li, Fu-Peng
Liu, Zehan
Chen, Jian-Nan
Dang, Haoning
Wang, Shiyao
Zhang, Yiyan
Xu, Jianhui
Shi, Chunxiang
Wang, Fei
Pang, Long-Gang
Cheng, Nan
Zhang, Weiwei
Zhang, Duo
Meng, Deyu
Machine Learning
Computational Physics
We uncover a phenomenon largely overlooked by the scientific community utilizing AI: neural networks exhibit high susceptibility to minute perturbations, resulting in significant deviations in their outputs. Through an analysis of five diverse application areas -- weather forecasting, chemical energy and force calculations, fluid dynamics, quantum chromodynamics, and wireless communication -- we demonstrate that this vulnerability is a broad and general characteristic of AI systems. This revelation exposes a hidden risk in relying on neural networks for essential scientific computations, calling further studies on their reliability and security.
title Is AI Robust Enough for Scientific Research?
topic Machine Learning
Computational Physics
url https://arxiv.org/abs/2412.16234