A practical guide for building superconducting quantum devices
- URL: http://arxiv.org/abs/2106.06173v2
- Date: Tue, 14 Sep 2021 10:25:21 GMT
- Title: A practical guide for building superconducting quantum devices
- Authors: Yvonne Y. Gao, M. Adriaan Rol, Steven Touzard, Chen Wang
- Abstract summary: We present some of the most crucial building blocks developed by the cQED community in recent years.
We aim to provide a synoptic outline of the core techniques that underlie most cQED experiments and offer a practical guide for a novice experimentalist to design, construct, and characterize their first quantum device.
- Score: 2.7080431315882967
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum computing offers a powerful new paradigm of information processing
that has the potential to transform a wide range of industries. In the pursuit
of the tantalizing promises of a universal quantum computer, a multitude of new
knowledge and expertise has been developed, enabling the construction of novel
quantum algorithms as well as increasingly robust quantum hardware. In
particular, we have witnessed rapid progress in the circuit quantum
electrodynamics (cQED) technology, which has emerged as one of the most
promising physical systems that is capable of addressing the key challenges in
realizing full-stack quantum computing on a large scale. In this article, we
present some of the most crucial building blocks developed by the cQED
community in recent years and a pr\'{e}cis of the latest achievements towards
robust universal quantum computation. More importantly, we aim to provide a
synoptic outline of the core techniques that underlie most cQED experiments and
offer a practical guide for a novice experimentalist to design, construct, and
characterize their first quantum device
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