Engineered Dissipation for Quantum Information Science
- URL: http://arxiv.org/abs/2202.05280v2
- Date: Mon, 30 May 2022 11:52:16 GMT
- Title: Engineered Dissipation for Quantum Information Science
- Authors: Patrick M. Harrington, Erich Mueller, and Kater Murch
- Abstract summary: Dissipation is an essential tool for manipulating quantum information.
Dissipation engineering enables quantum measurement, quantum state preparation, and quantum state stabilization.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum information processing relies on precise control of non-classical
states in the presence of many uncontrolled environmental degrees of freedom --
requiring careful orchestration of how the relevant degrees of freedom interact
with that environment. These interactions are often viewed as detrimental, as
they dissipate energy and decohere quantum states. Nonetheless, when
controlled, dissipation is an essential tool for manipulating quantum
information: Dissipation engineering enables quantum measurement, quantum state
preparation, and quantum state stabilization. The progress of quantum device
technology, marked by improvements of characteristic coherence times and
extensible architectures for quantum control, has coincided with the
development of such dissipation engineering tools which interface quantum and
classical degrees of freedom. This Review presents dissipation as a fundamental
aspect of the measurement and control of quantum devices and highlights the
role of dissipation engineering for quantum error correction and quantum
simulation that enables quantum information processing on a practical scale.
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