Quantum delocalization on correlation landscape: The key to exponentially fast multipartite entanglement generation
- URL: http://arxiv.org/abs/2404.10973v2
- Date: Wed, 28 Aug 2024 06:46:36 GMT
- Title: Quantum delocalization on correlation landscape: The key to exponentially fast multipartite entanglement generation
- Authors: Yaoming Chu, Xiangbei Li, Jianming Cai,
- Abstract summary: Entanglement, a hallmark of quantum mechanics, is a vital resource for quantum technologies.
We unveil a novel framework for understanding entanglement generation dynamics in Hamiltonian systems.
Our results provide a transformative tool for understanding and harnessing rapid entanglement production in complex quantum systems.
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- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Entanglement, a hallmark of quantum mechanics, is a vital resource for quantum technologies. Generating highly entangled multipartite states is a key goal in current quantum experiments. We unveil a novel framework for understanding entanglement generation dynamics in Hamiltonian systems by quantum delocalization of an effective operator wavefunction on a correlation landscape. Our framework establishes a profound connection between the exponentially fast generation of multipartite entanglement, witnessed by the quantum Fisher information, and the linearly increasing asymptotics of hopping amplitudes governing the delocalization dynamics in Krylov space. We illustrate this connection using the paradigmatic Lipkin-Meshkov-Glick model and highlight potential signatures in chaotic Feingold-Peres tops. Our results provide a transformative tool for understanding and harnessing rapid entanglement production in complex quantum systems, providing a pathway for quantum enhanced technologies by large-scale entanglement.
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