Data-Driven Quantum Simulation of Artificial Quantum Materials with Rydberg Atoms
Abstract
1. Introduction
2. Rydberg Atom Platform
2.1. Large-Scale and Geometry-Programmable Atomic Arrays
2.2. Hamiltonian Engineering and Synthetic Quantum Matter
2.2.1. Resonant Dipolar XY Hamiltonians
2.2.2. Heisenberg XXZ Models from Dipolar Interactions
2.2.3. Toward Hubbard-Type Models
3. Ground-State Engineering: From Optimization to Many-Body Energy Landscapes
3.1. Graph Encodings and Independent-Set Constraints
3.2. Adiabatic Pathways and Spectral Gap Constraints
3.3. Variational and Hybrid Schemes for Landscape Exploration
4. Quantum Simulation and Control of Correlated Quantum Matter
4.1. Quantum Phase Transitions
4.2. Quantum Spin Liquids
4.3. Symmetry-Protected Topological Phase

4.4. Non-Equilibrium Quench Dynamics
5. Data-Driven Approaches to Programmable Quantum Matter
5.1. Quantum Phase Identification from Experimental Snapshots
5.2. Neural Network Quantum States and Variational Modeling
5.3. Hamiltonian Learning and Device Verification
5.4. Quantum Reservoir Computing with Rydberg Atom Arrays
6. Perspective: Toward Closed-Loop Classical–Quantum Hybrid Workflows
7. Conclusions
Funding
Data Availability Statement
Conflicts of Interest
References
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Kim, M. Data-Driven Quantum Simulation of Artificial Quantum Materials with Rydberg Atoms. Materials 2026, 19, 1758. https://doi.org/10.3390/ma19091758
Kim M. Data-Driven Quantum Simulation of Artificial Quantum Materials with Rydberg Atoms. Materials. 2026; 19(9):1758. https://doi.org/10.3390/ma19091758
Chicago/Turabian StyleKim, Minhyuk. 2026. "Data-Driven Quantum Simulation of Artificial Quantum Materials with Rydberg Atoms" Materials 19, no. 9: 1758. https://doi.org/10.3390/ma19091758
APA StyleKim, M. (2026). Data-Driven Quantum Simulation of Artificial Quantum Materials with Rydberg Atoms. Materials, 19(9), 1758. https://doi.org/10.3390/ma19091758

