The authors propose a novel quantum reservoir computing system based on the dynamics of a probed atom in a cavity, showcasing its superior performance with minimal artificial neurons compared to traditional systems.
Quantum Reservoir Computing ermöglicht präzise Vorhersagen mit geringem Ressourcenbedarf.
A novel approach to reservoir computing using random matrices to generate diverse state descriptions for simple quantum systems, enabling effective time-series prediction and data interpolation.
In spin-network quantum reservoir computing, the presence of an entanglement advantage for memory tasks is highly dependent on the input signal frequency and the system's dissipation level, suggesting that quantum memory persistence relative to input signal complexity is crucial for leveraging quantum advantages.
소산이 있는 스핀 네트워크 양자 저장 풀 컴퓨팅 시스템에서 얽힘 이점은 입력 신호 주파수에 따라 달라지며, 양자 메모리가 유지되는 시간 내에 입력 신호의 시간적 특징이 나타날 때 얽힘 이점이 발생합니다.
在具有耗散的自旋網絡量子儲備池計算中,量子糾纏的優勢取決於輸入信號的頻率;當輸入信號的頻率高於系統耗散時間尺度時,量子糾纏對系統性能有積極影響。