Quantum circuit architecture search for variational quantum algorithms
- URL: http://arxiv.org/abs/2010.10217v3
- Date: Mon, 30 May 2022 04:36:16 GMT
- Title: Quantum circuit architecture search for variational quantum algorithms
- Authors: Yuxuan Du and Tao Huang and Shan You and Min-Hsiu Hsieh and Dacheng
Tao
- Abstract summary: We propose a resource and runtime efficient scheme termed quantum architecture search (QAS)
QAS automatically seeks a near-optimal ansatz to balance benefits and side-effects brought by adding more noisy quantum gates.
We implement QAS on both the numerical simulator and real quantum hardware, via the IBM cloud, to accomplish data classification and quantum chemistry tasks.
- Score: 88.71725630554758
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Variational quantum algorithms (VQAs) are expected to be a path to quantum
advantages on noisy intermediate-scale quantum devices. However, both empirical
and theoretical results exhibit that the deployed ansatz heavily affects the
performance of VQAs such that an ansatz with a larger number of quantum gates
enables a stronger expressivity, while the accumulated noise may render a poor
trainability. To maximally improve the robustness and trainability of VQAs,
here we devise a resource and runtime efficient scheme termed quantum
architecture search (QAS). In particular, given a learning task, QAS
automatically seeks a near-optimal ansatz (i.e., circuit architecture) to
balance benefits and side-effects brought by adding more noisy quantum gates to
achieve a good performance. We implement QAS on both the numerical simulator
and real quantum hardware, via the IBM cloud, to accomplish data classification
and quantum chemistry tasks. In the problems studied, numerical and
experimental results show that QAS can not only alleviate the influence of
quantum noise and barren plateaus, but also outperforms VQAs with pre-selected
ansatze.
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