Nanomaterials for Quantum Information Science and Engineering
- URL: http://arxiv.org/abs/2202.03090v1
- Date: Mon, 7 Feb 2022 12:06:34 GMT
- Title: Nanomaterials for Quantum Information Science and Engineering
- Authors: Adam Alfieri, Surendra B. Anantharaman, Huiqin Zhang, Deep Jariwala
- Abstract summary: Quantum information science and engineering (QISE) has dominated condensed matter physics and materials science research in the 21st century.
We consider how nanomaterials (i.e. materials with intrinsic quantum confinement) may offer inherent advantages over conventional materials for QISE.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quantum information science and engineering (QISE) which entails use of
quantum mechanical states for information processing, communications, and
sensing and the area of nanoscience and nanotechnology have dominated condensed
matter physics and materials science research in the 21st century. Solid state
devices for QISE have, to this point, predominantly been designed with bulk
materials as their constituents. In this review, we consider how nanomaterials
(i.e. materials with intrinsic quantum confinement) may offer inherent
advantages over conventional materials for QISE. We identify the materials
challenges for specific types of qubits, and we identify how emerging
nanomaterials may overcome these challenges. Challenges for and progress
towards nanomaterials based quantum devices are identified. We aim to help
close the gap between the nanotechnology and quantum information communities
and inspire research that will lead to next generation quantum devices for
scalable and practical quantum applications.
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