Experimenting quantum phenomena on NISQ computers using high level
quantum programming
- URL: http://arxiv.org/abs/2111.02896v2
- Date: Tue, 8 Feb 2022 04:05:26 GMT
- Title: Experimenting quantum phenomena on NISQ computers using high level
quantum programming
- Authors: Duc M. Tran, Duy V. Nguyen, Le Bin Ho, Hung Q. Nguyen
- Abstract summary: We execute the quantum eraser, the Elitzur-Vaidman bomb, and the Hardy's paradox experiment using high-level programming language.
The results align with theoretical predictions of quantum mechanics to high confidence on circuits using up to 3 qubits.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We execute the quantum eraser, the Elitzur-Vaidman bomb, and the Hardy's
paradox experiment using high-level programming language on a generic,
gate-based superconducting quantum processor made publicly available by IBM.
The quantum circuits for these experiments use a mixture of one-qubit and
multi-qubit gates and require high entanglement gate accuracy. The results
aligned with theoretical predictions of quantum mechanics to high confidence on
circuits using up to 3 qubits. The power of quantum computers and high-level
language as a platform for experimenting and studying quantum phenomena is
henceforth demonstrated.
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