Reinforcement learning-assisted quantum architecture search for variational quantum algorithms
Akash Kundu

TL;DR
This paper introduces a reinforcement learning approach to automate quantum architecture search for variational quantum algorithms, improving circuit design efficiency and robustness on noisy quantum hardware.
Contribution
It develops a tensor-based encoding and a DDQN method for quantum architecture search that accounts for noise, outperforming existing techniques.
Findings
RL-based QAS outperforms existing methods in noiseless scenarios
Proposed methods are effective on noisy quantum hardware
Automated search improves VQA performance and robustness
Abstract
A significant hurdle in the noisy intermediate-scale quantum (NISQ) era is identifying functional quantum circuits. These circuits must also adhere to the constraints imposed by current quantum hardware limitations. Variational quantum algorithms (VQAs), a class of quantum-classical optimization algorithms, were developed to address these challenges in the currently available quantum devices. However, the overall performance of VQAs depends on the initialization strategy of the variational circuit, the structure of the circuit (also known as ansatz), and the configuration of the cost function. Focusing on the structure of the circuit, in this thesis, we improve the performance of VQAs by automating the search for an optimal structure for the variational circuits using reinforcement learning (RL). Within the thesis, the optimality of a circuit is determined by evaluating its depth, the…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography
