A dissipation gradient plus detuning ramp selects a resonant pinned density front in 2D driven-dissipative Bose-Hubbard lattice simulations, producing tunable depinning, pattern locking, and chaos.
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Nonreciprocity combined with open boundaries and symmetry defects produces a domain-wall traveling-wave phase and anomalous chiral relaxation in open quantum systems.
Aligning an exceptional point with a dissipative phase transition in an extended open Dicke model amplifies critical fluctuations and modifies critical exponents through EP-induced Jordan-block dynamics.
Physics-informed quantum neural networks trained on noisy measurements can construct nontrivial decision boundaries to classify quantum states via order parameters and are suited for NISQ hardware due to links with Markovian open many-body systems.
KPZ scaling in arrays of polariton condensates originates from fluctuations of Goldstone modes caused by U(1) symmetry breaking.
citing papers explorer
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Dissipation-Selected Resonant Fronts in a Driven-Dissipative Bose-Hubbard Lattice
A dissipation gradient plus detuning ramp selects a resonant pinned density front in 2D driven-dissipative Bose-Hubbard lattice simulations, producing tunable depinning, pattern locking, and chaos.
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Nonreciprocity-enriched steady phases in open quantum systems
Nonreciprocity combined with open boundaries and symmetry defects produces a domain-wall traveling-wave phase and anomalous chiral relaxation in open quantum systems.
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Enhanced dissipative criticality at an exceptional point
Aligning an exceptional point with a dissipative phase transition in an extended open Dicke model amplifies critical fluctuations and modifies critical exponents through EP-induced Jordan-block dynamics.
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Getting large-scale quantum neural networks ready for quantum hardware
Physics-informed quantum neural networks trained on noisy measurements can construct nontrivial decision boundaries to classify quantum states via order parameters and are suited for NISQ hardware due to links with Markovian open many-body systems.
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The origin of KPZ-scaling in arrays of polariton condensates
KPZ scaling in arrays of polariton condensates originates from fluctuations of Goldstone modes caused by U(1) symmetry breaking.