Noise-adapted recovery circuits for quantum error correction
- URL: http://arxiv.org/abs/2305.11093v2
- Date: Thu, 4 Jul 2024 16:55:43 GMT
- Title: Noise-adapted recovery circuits for quantum error correction
- Authors: Debjyoti Biswas, Gaurav M. Vaidya, Prabha Mandayam,
- Abstract summary: We present quantum circuits for a universal, noise-adapted recovery map, often referred to as the Petz map.
We also present circuits that can directly estimate the fidelity between the encoded state and the recovered state.
The efficacy of our noise-adapted recovery circuits is then demonstrated through ideal and noisy simulations.
- Score: 1.8799303827638123
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Implementing quantum error correction (QEC) protocols is a challenging task in today's era of noisy intermediate-scale quantum devices. We present quantum circuits for a universal, noise-adapted recovery map, often referred to as the Petz map, which is known to achieve close-to-optimal fidelity for arbitrary codes and noise channels. While two of our circuit constructions draw upon algebraic techniques such as isometric extension and block encoding, the third approach breaks down the recovery map into a sequence of two-outcome POVMs. In each of the three cases we improve upon the resource requirements that currently exist in the literature. Apart from Petz recovery circuits, we also present circuits that can directly estimate the fidelity between the encoded state and the recovered state. As a concrete example of our circuit constructions, we implement Petz recovery circuits corresponding to the $4$-qubit QEC code tailored to protect against amplitude-damping noise. The efficacy of our noise-adapted recovery circuits is then demonstrated through ideal and noisy simulations.
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