Building Holographic Entanglement by Measurement
- URL: http://arxiv.org/abs/2601.21065v1
- Date: Wed, 28 Jan 2026 21:41:54 GMT
- Title: Building Holographic Entanglement by Measurement
- Authors: Jonathan Jeffrey, Lucien Gandarias, Monika Schleier-Smith, Brian Swingle,
- Abstract summary: We propose a framework for preparing quantum states with a holographic entanglement structure.<n>The entanglement entropies are governed by minimal surfaces in a chosen bulk geometry.<n>We numerically demonstrate that the resulting entanglement properties approximately reproduce the predictions of the Ryu-Takayanagi formula.
- Score: 1.3316889412446378
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We propose a framework for preparing quantum states with a holographic entanglement structure, in the sense that the entanglement entropies are governed by minimal surfaces in a chosen bulk geometry. We refer to such entropies as holographic because they obey a relation between entropies and bulk minimal surfaces, known as the Ryu-Takayanagi formula, that is a key feature of holographic models of quantum gravity. Typically in such models, the bulk geometry is determined by solving Einstein's equations. Here, we simply choose a bulk geometry, then discretize the geometry into a coupling graph comprising bulk and boundary nodes. Evolving under this graph of interactions and measuring the bulk nodes leaves behind the desired pure state on the boundary. We numerically demonstrate that the resulting entanglement properties approximately reproduce the predictions of the Ryu-Takayanagi formula in the chosen bulk geometry. We consider graphs associated with hyperbolic disk and wormhole geometries, but the approach is general. The minimal ingredients in our proposal involve only Gaussian operations and measurements and are readily implementable in photonic and cold-atom platforms.
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