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首页|ResQ: A Novel Framework to Implement Residual Neural Networks on Analog Rydberg Atom Quantum Computers

ResQ: A Novel Framework to Implement Residual Neural Networks on Analog Rydberg Atom Quantum Computers

ResQ: A Novel Framework to Implement Residual Neural Networks on Analog Rydberg Atom Quantum Computers

来源:Arxiv_logoArxiv
英文摘要

Research in quantum machine learning has recently proliferated due to the potential of quantum computing to accelerate machine learning. An area of machine learning that has not yet been explored is neural ordinary differential equation (neural ODE) based residual neural networks (ResNets), which aim to improve the effectiveness of neural networks using the principles of ordinary differential equations. In this work, we present our insights about why analog Rydberg atom quantum computers are especially well-suited for ResNets. We also introduce ResQ, a novel framework to optimize the dynamics of Rydberg atom quantum computers to solve classification problems in machine learning using analog quantum neural ODEs.

Nicholas S. DiBrita、Jason Han、Tirthak Patel

原子能技术应用

Nicholas S. DiBrita,Jason Han,Tirthak Patel.ResQ: A Novel Framework to Implement Residual Neural Networks on Analog Rydberg Atom Quantum Computers[EB/OL].(2025-06-26)[2025-07-16].https://arxiv.org/abs/2506.21537.点此复制

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